- Model loader improvements:
- detect model components on model load fail
- Flux, SD35: force unload model
- Flux: apply
bnb
quant when loading unet/transformer - Flux: all-in-one safetensors
example: https://civitai.com/models/646328?modelVersionId=1040235 - Flux: do not recast quants
- Sampler improvements
- update DPM FlowMatch samplers
- Fixes:
- update
diffusers
- fix README links
- fix sdxl controlnet single-file loader
- relax settings validator
- update
Three weeks is a long time in Generative AI world - and we're back with ~140 commits worth of updates!
What's New?
First, a massive update to docs including new UI top-level info tab with access to changelog and wiki, many updates and new articles AND full built-in documentation search capabilities
- PuLID: Pure and Lightning ID Customization via Contrastive Alignment
- InstantX InstantIR: Blind Image Restoration with Instant Generative Reference
- nVidia Labs ConsiStory: Consistent Image Generation
- MiaoshouAI PromptGen v2.0 VQA captioning
- Native Docker support
- SD3x & Flux.1: more ControlNets, all-in-one-safetensors, DPM samplers, skip-layer-guidance, etc.
- XYZ grid: benchmarking, video creation, etc.
- Enhanced prompt parsing
- UI improvements
- Installer self-healing
venv
And quite a few more improvements and fixes since the last update! For full list and details see changelog...
README | CHANGELOG | WiKi | Discord
-
Docs:
- new top-level info tab with access to changelog and wiki
- UI built-in changelog search
since changelog is the best up-to-date source of info
go to info -> changelog and search/highligh/navigate directly in UI! - UI built-in wiki
go to info -> wiki and search wiki pages directly in UI! - major Wiki and Home updates
- updated API swagger docs for at
/docs
-
Integrations:
- PuLID: Pure and Lightning ID Customization via Contrastive Alignment
- advanced method of face id transfer with better quality as well as control over identity and appearance
try it out, likely the best quality available for sdxl models - select in scripts -> pulid
- compatible with sdxl for text-to-image, image-to-image, inpaint, refine, detailer workflows
- can be used in xyz grid
- note: this module contains several advanced features on top of original implementation
- advanced method of face id transfer with better quality as well as control over identity and appearance
- InstantIR: Blind Image Restoration with Instant Generative Reference
- alternative to traditional
img2img
with more control over restoration process - select in image -> scripts -> instantir
- compatible with sdxl
- note: after used once it cannot be unloaded without reloading base model
- alternative to traditional
- ConsiStory: Consistent Image Generation
- create consistent anchor image and then generate images that are consistent with anchor
- select in scripts -> consistory
- compatible with sdxl
- note: very resource intensive and not compatible with model offloading
- note: changing default parameters can lead to unexpected results and/or failures
- note: after used once it cannot be unloaded without reloading base model
- MiaoshouAI PromptGen v2.0 base and large:
- in process -> visual query
- caption modes:
<GENERATE_TAGS>
generate tags
<CAPTION>
,<DETAILED_CAPTION>
,<MORE_DETAILED_CAPTION>
caption image
<ANALYZE>
image composition
<MIXED_CAPTION>
,<MIXED_CAPTION_PLUS>
detailed caption and tags with optional analyze
- PuLID: Pure and Lightning ID Customization via Contrastive Alignment
-
Model improvements:
- SD35: ControlNets:
- InstantX Canny, Pose, Depth, Tile
- Alimama Inpainting, SoftEdge
- note: that just like with FLUX.1 or any large model, ControlNet are also large and can push your system over the limit
e.g. SD3 controlnets vary from 1GB to over 4GB in size
- SD35: All-in-one safetensors
- SD35: skip-layer-guidance
- enable in scripts -> slg
- allows for granular strength/start/stop control of guidance for each layer of the model
- NoobAI XL ControlNets, thanks @lbeltrame
- SD35: ControlNets:
-
Workflow improvements:
- Native Docker support with pre-defined Dockerfile
- Samplers:
- FlowMatch samplers:
- Applicable to SD 3.x and Flux.1 models
- Complete family: DPM2, DPM2a, DPM2++, DPM2++ 2M, DPM2++ 2S, DPM2++ SDE, DPM2++ 2M SDE, DPM2++ 3M SDE
- Beta and Exponential sigma method enabled for all samplers
- FlowMatch samplers:
- XYZ grid:
- optional time benchmark info to individual images
- optional add params to individual images
- create video from generated grid images
supports all standard video types and interpolation
- Prompt parser:
- support for prompt scheduling
- renamed parser options:
native
,xhinker
,compel
,a1111
,fixed
- parser options are available in xyz grid
- improved caching
- UI:
- better gallery and networks sidebar sizing
- add additional hotkeys
- add show networks on startup setting
- better mapping of networks previews
- optimize networks display load
- Image2image:
- integrated refine/upscale/hires workflow
-
Other:
- Installer:
- Log
venv
and package search paths - Auto-remove invalid packages from
venv/site-packages
e.g. packages starting with~
which are left-over due to windows access violation - Requirements: update
- Log
- Scripts:
- More verbose descriptions for all scripts
- Model loader:
- Report modules included in safetensors when attempting to load a model
- CLI:
- refactor command line params
runwebui.sh
/webui.bat
with--help
to see all options - added
cli/model-metadata.py
to display metadata in any safetensors file - added
cli/model-keys.py
to quicky display content of any safetensors file
- refactor command line params
- Internal:
- Auto pipeline switching coveres wrapper classes and nested pipelines
- Full settings validation on load of
config.json
- Refactor of all params in main processing classes
- Improve API scripts usage resiliency
- Installer:
-
Fixes:
- custom watermark add alphablending
- fix xyz grid include images
- fix xyz skip on interrupted
- fix vqa models ignoring hfcache folder setting
- fix network height in standard vs modern ui
- fix k-diff enum on startup
- fix text2video scripts
- multiple xyz-grid fixes
- dont uninstall flash-attn
- ui css fixes
Smaller release just 3 days after the last one, but with some important fixes and improvements.
This release can be considered an LTS release before we kick off the next round of major updates.
- Other:
- Repo: move screenshots to GH pages
- Update requirements
- Fixes:
- detailer min/max size as fractions of image size
- ipadapter load on-demand
- ipadapter face use correct yolo model
- list diffusers remove duplicates
- fix legacy extensions access to shared objects
- fix diffusers load from folder
- fix lora enum logging on windows
- fix xyz grid with batch count
- move dowwloads of some auxillary models to hfcache instead of models folder
- Support for all SD3.x variants
SD3.0-Medium, SD3.5-Medium, SD3.5-Large, SD3.0-Large-Turbo - Allow quantization using
bitsandbytes
on-the-fly during models load Load any variant of SD3.x or FLUX.1 and apply quantization during load without the need for pre-quantized models - Allow for custom model URL in standard model selector
Can be used to specify any model from HuggingFace or CivitAI - Full support for
torch==2.5.1
- New wiki articles: Gated Access, Quantization, Offloading
Plus tons of smaller improvements and cumulative fixes reported since last release
README | CHANGELOG | WiKi | Discord
- model selector:
- change-in-behavior
- when typing, it will auto-load model as soon as exactly one match is found
- allows entering model that are not on the list which triggers huggingface search
e.g.stabilityai/stable-diffusion-xl-base-1.0
partial search hits are displayed in the log
if exact model is found, it will be auto-downloaded and loaded - allows entering civitai direct download link which triggers model download
e.g.https://civitai.com/api/download/models/72396?type=Model&format=SafeTensor&size=full&fp=fp16
- auto-search-and-download can be disabled in settings -> models -> auto-download
this also disables reference models as they are auto-downloaded on first use as well
- sd3 enhancements:
- allow on-the-fly bnb quantization during load
- report when loading incomplete model
- handle missing model components during load
- handle component preloading
- native lora handler
- support for all sd35 variants: medium/large/large-turbo
- gguf transformer loader (prototype)
- flux.1 enhancements:
- allow on-the-fly bnb quantization during load
- samplers:
- support for original k-diffusion samplers
select via scripts -> k-diffusion -> sampler
- support for original k-diffusion samplers
- ipadapter:
- list available adapters based on loaded model type
- add adapter
ostris consistency
for sd15/sdxl
- detailer:
- add
[prompt]
to refine/defailer prompts as placeholder referencing original prompt
- add
- torch
- use
torch==2.5.1
by default on supported platforms - CUDA set device memory limit
in settings -> compute settings -> torch memory limit
default=0 meaning no limit, if set torch will limit memory usage to specified fraction
note: this is not a hard limit, torch will try to stay under this value
- use
- compute backends:
- OpenVINO: add accuracy option
- ZLUDA: guess GPU arch
- major model load refactor
- wiki: new articles
fixes:
- fix send-to-control
- fix k-diffusion
- fix sd3 img2img and hires
- fix ipadapter supported model detection
- fix t2iadapter auto-download
- fix omnigen dynamic attention
- handle a1111 prompt scheduling
- handle omnigen image placeholder in prompt
A month later and with nearly 300 commits, here is the latest SD.Next update!
- Reprocess: New workflow options that allow you to generate at lower quality and then
reprocess at higher quality for select images only or generate without hires/refine and then reprocess with hires/refine
and you can pick any previous latent from auto-captured history! - Detailer Fully built-in detailer workflow with support for all standard models
- Built-in model analyzer
See all details of your currently loaded model, including components, parameter count, layer count, etc. - Extract LoRA: load any LoRA(s) and play with generate as usual
and once you like the results simply extract combined LoRA for future use!
- New fine-tuned CLiP-ViT-L 1st stage text-encoders used by most models (SD15/SDXL/SD3/Flux/etc.) brings additional details to your images
- New models:
Stable Diffusion 3.5 Large
OmniGen
CogView 3 Plus
Meissonic - Additional integration:
Ctrl+X which allows for control of structure and appearance without the need for extra models,
APG: Adaptive Projected Guidance for optimal guidance control,
LinFusion for on-the-fly distillation of any sd15/sdxl model
- Tons of work on dynamic quantization that can be applied on-the-fly during model load to any model type (you do not need to use pre-quantized models)
Supported quantization engines includeBitsAndBytes
,TorchAO
,Optimum.quanto
,NNCF
compression, and more... - Auto-detection of best available device/dtype settings for your platform and GPU reduces neeed for manual configuration
Note: This is a breaking change to default settings and its recommended to check your preferred settings after upgrade - Full rewrite of sampler options, not far more streamlined with tons of new options to tweak scheduler behavior
- Improved LoRA detection and handling for all supported models
- Several of Flux.1 optimizations and new quantization types
Oh, and we've compiled a full table with list of top-30 (how many have you tried?) popular text-to-image generative models,
their respective parameters and architecture overview: Models Overview
And there are also other goodies like multiple XYZ grid improvements, additional Flux ControlNets, additional Interrogate models, better LoRA tags support, and more...
README | CHANGELOG | WiKi | Discord
-
reprocess
- new top-level button: reprocess latent from your history of generated image(s)
- generate using full-quality:off and then reprocess using full quality decode
- generate without hires/refine and then reprocess with hires/refine
note: you can change hires/refine settings and run-reprocess again! - reprocess using detailer
-
history
- by default, reprocess will pick last latent, but you can select any latent from history!
- history is under networks -> history
each history item includes info on operations that were used, timestamp and metadata - any latent operation during workflow automatically adds one or more items to history
e.g. generate base + upscale + hires + detailer - history size: settings -> execution -> latent history size
memory usage is ~130kb of ram for 1mp image - note list of latents in history is not auto-refreshed, use refresh button
-
model analyzer
- see all details of your currently loaded model, including components, parameter count, layer count, etc.
- in models -> current -> analyze
-
text encoder:
- allow loading different custom text encoders: clip-vit-l, clip-vit-g, t5
will automatically find appropriate encoder in the loaded model and replace it with loaded text encoder
download text encoders into folder set in settings -> system paths -> text encoders
defaultmodels/Text-encoder
folder is used if no custom path is set
finetuned clip-vit-l models: Detailed, Smooth, LongCLIP
reference clip-vit-l and clip-vit-g models: OpenCLIP-Laion2b
note sd/sdxl contain heavily distilled versions of reference models, so switching to reference model produces vastly different results - xyz grid support for text encoder
- full prompt parser now correctly works with different prompts in batch
- allow loading different custom text encoders: clip-vit-l, clip-vit-g, t5
-
detailer:
- replaced face-hires with detailer which can run any number of standard detailing models
- includes face/hand/person/eyes predefined detailer models plus support for manually downloaded models
set path in settings -> system paths -> yolo - select one or more models in detailer menu and thats it!
- to avoid duplication of ui elements, detailer will use following values from refiner:
sampler, steps, prompts - when using multiple detailers and prompt is multi-line, each line is applied to corresponding detailer
- adjustable settings:
strength, max detected objects, edge padding, edge blur, min detection confidence, max detection overlap, min and max size of detected object - image metadata includes info on used detailer models
- note detailer defaults are not save in ui settings, they are saved in server settings
to apply your defaults, set ui values and apply via system -> settings -> apply settings - if using models trained on multiple classes, you can specify which classes you want to detail
e.g. original yolo detection model is trained on coco dataset with 80 predefined classes
if you leave field blank, it will use any class found in the model
you can see classes defined in the model while model itself is loaded for the first time
-
extract lora: extract combined lora from current memory state, thanks @AI-Casanova
load any LoRA(s) and play with generate as usual and once you like the results simply extract combined LoRA for future use!
in models -> extract lora -
sampler options: full rewrite
sampler notes:
- pick a sampler and then pick values, all values have "default" as a choice to make it simpler
- a lot of options are new, some are old but moved around
e.g. karras checkbox is replaced with a choice of different sigma methods - not every combination of settings is valid
- some settings are specific to model types
e.g. sd15/sdxl typically use epsilon prediction - quite a few well-known schedulers are just variations of settings, for example:
- sampler sgm is sampler with trailing spacing and sample prediction type
- dpm 2m or 3m are dpm 1s with orders of 2 or 3
- dpm 2m sde is dpm 2m with sde as solver
- sampler simple is sampler with trailing spacing and linear beta schedule
- xyz grid support for sampler options
- metadata updates for sampler options
- modernui updates for sampler options
- note sampler options defaults are not save in ui settings, they are saved in server settings
to apply your defaults, set ui values and apply via system -> settings -> apply settings
sampler options:
- sigma method: karas, beta, exponential
- timesteps spacing: linspace, leading, trailing
- beta schedule: linear, scaled, cosine
- prediction type: epsilon, sample, v-prediction
- timesteps presents: none, ays-sd15, ays-sdxl
- timesteps override:
- sampler order: 0=default, 1-5
- options: dynamic, low order, rescale
-
- control structure (similar to controlnet) and appearance (similar to ipadapter)
without the need for extra models, all via code feed-forwards! - can run in structure-only or appearance-only or both modes
- when providing structure and appearance input images, its best to provide a short prompts describing them
- structure image can be almost anything: actual photo, openpose-style stick man, 3d render, sketch, depth-map, etc.
just describe what it is in a structure prompt so it can be de-structured and correctly applied - supports sdxl in both txt2img and img2img, simply select from scripts
- control structure (similar to controlnet) and appearance (similar to ipadapter)
-
APG: Adaptive Projected Guidance
- latest algo to provide better guidance for image generation, can be used instead of existing guidance rescale and/or PAG
- in addtion to stronger guidance and reduction of burn at high guidance values, it can also increase image details
- compatible with sd15/sdxl/sc
- select in scripts -> apg
- for low cfg scale, use positive momentum: e.g. cfg=2 => momentum=0.6
- for normal cfg scale, use negative momentum: e.g. cfg=6 => momentum=-0.3
- for high cfg scale, use neutral momentum: e.g. cfg=10 => momentum=0.0
-
- apply liner distillation to during load to any sd15/sdxl model
- can reduce vram use for high resolutions and increase performance
- note: use lower cfg scales as typical for distilled models
-
- see wiki for details on
gguf
- support for
gguf
binary format for loading unet/transformer component - support for
gguf
binary format for loading t5/text-encoder component: requires transformers pr - additional controlnets: JasperAI Depth, Upscaler, Surface, thanks @EnragedAntelope
- additional controlnets: XLabs-AI Canny, Depth, HED
- mark specific unet as unavailable if load failed
- fix diffusers local model name parsing
- full prompt parser will auto-select
xhinker
for flux models - controlnet support for img2img and inpaint (in addition to previous txt2img controlnet)
- allow separate vae load
- support for both kohya and onetrainer loras in native load mode for fp16/nf4/fp4, thanks @AI-Casanova
- support for differential diffusion
- added native load mode for qint8/qint4 models
- avoid unet load if unchanged
- see wiki for details on
-
- Radical new model with pure LLM architecture based on Phi-3
- Select from networks -> models -> reference
- Can be used for text-to-image and image-to-image
- Image-to-image is very different, you need to specify in prompt what do you want to do
and add|image|
placeholder where input image is used!
examples:in |image| remove glasses from face
,using depth map from |image|, create new image of a cute robot
- Params used: prompt, steps, guidance scale for prompt guidance, refine guidance scale for image guidance
Recommended: guidance=3.0, refine-guidance=1.6
-
- New/improved variant of Stable Diffusion 3
- Select from networks -> models -> reference
- Available in standard and turbo variations
- Note: Access to to both variations of SD3.5 model is gated, you must accept the conditions and use HF login
-
- Select from networks -> models -> reference
- resolution width and height can be from 512px to 2048px and must be divisible by 32
- precision: bf16 or fp32
fp16 is not supported due to internal model overflows
-
- Select from networks -> models -> reference
- Experimental as upstream implemenation code is unstable
- Must set scheduler:default, generator:unset
-
- new 8-bit attention implementation on top of SDP that can provide acceleration for some models, thanks @Disty0
- enable in settings -> compute settings -> sdp options -> sage attention
- compatible with DiT-based models: e.g. Flux.1, AuraFlow, CogVideoX
- not compatible with UNet-based models, e.g. SD15, SDXL
-
gpu
- previously
cuda_dtype
in settings defaulted tofp16
if available - now
cuda_type
defaults to Auto which executesbf16
andfp16
tests on startup and selects best available dtype
if you have specific requirements, you can still set to fp32/fp16/bf16 as desired
if you have gpu that incorrectly identifies bf16 or fp16 availablity, let us know so we can improve the auto-detection - support for torch expandable segments
enable in settings -> compute -> torch expandable segments
can provide significant memory savings for some models
not enabled by default as its only supported on latest versions of torch and some gpus
- previously
-
xyz grid full refactor
- multi-mode: selectable-script and alwayson-script
- allow usage combined with other scripts
- allow unet selection
- allow passing model args directly:
allowed params will be checked against models call signature
example:width=768; height=512, width=512; height=768
- allow passing processing args directly:
params are set directly on main processing object and can be known or new params
example:steps=10, steps=20; test=unknown
- enable working with different resolutions
now you can adjust width/height in the grid just as any other param - renamed options to include section name and adjusted cost of each option
- added additional metadata
-
interrogate
- add additional blip models: blip-base, blip-large, blip-t5-xl, blip-t5-xxl, opt-2.7b, opt-6.7b
- change default params for better memory utilization
- lock commits for miaoshouAI-promptgen
- add optional advanced params
- update logging
-
lora auto-apply tags to prompt
- controlled via settings -> networks -> lora_apply_tags
0:disable, -1:all-tags, n:top-n-tags - uses tags from both model embedded data and civitai downloaded data
- if lora contains no tags, lora name itself will be used as a tag
- if prompt contains
_tags_
it will be used as placeholder for replacement, otherwise tags will be appended - used tags are also logged and registered in image metadata
- loras are no longer filtered per detected type vs loaded model type as its unreliable
- loras display in networks now shows possible version in top-left corner
- correct using of
extra_networks_default_multiplier
if not scale is specified - improve lora base model detection
- improve lora error handling and logging
- setting
lora_load_gpu
to load LoRA directly to GPU
default: true unless lovwram
- controlled via settings -> networks -> lora_apply_tags
-
quantization
- new top level settings group as we have quite a few quantization options now!
configure in settings -> quantization - in addition to existing
optimum.quanto
andnncf
, we now havebitsandbytes
andtorchao
- bitsandbytes: fp8, fp4, nf4
- quantization can be applied on-the-fly during model load
- currently supports
transformers
andt5
in sd3 and flux
- torchao: int8, int4, fp8, fp4, fpx
- configure in settings -> quantization
- can be applied to any model on-the-fly during load
- new top level settings group as we have quite a few quantization options now!
-
huggingface:
- force logout/login on token change
- unified handling of cache folder: set via
HF_HUB
orHF_HUB_CACHE
or via settings -> system paths
-
cogvideox:
- add support for image2video (in addition to previous text2video and video2video)
- note: image2video requires separate 5b model variant
-
torch
- due to numerous issues with torch 2.5.0 which was just released as stable, we are sticking with 2.4.1 for now
-
backend=original is now marked as in maintenance-only mode
-
python 3.12 improved compatibility, automatically handle
setuptools
-
control
- persist/reapply units current state on server restart
- better handle size before/after metadata
-
video add option
gradio_skip_video
to avoid gradio issues with displaying generated videos -
add support for manually downloaded diffusers models from huggingface
-
ui
- move checkboxes
full quality, tiling, hidiffusion
to advanced section - hide token counter until tokens are known
- minor ui optimizations
- fix update infotext on image select
- fix imageviewer exif parser
- selectable info view in image viewer, thanks @ZeldaMaster501
- setting to enable browser autolaunch, thanks @brknsoul
- move checkboxes
-
free-u check if device/dtype are fft compatible and cast as necessary
-
rocm
- additional gpu detection and auto-config code, thanks @lshqqytiger
- experimental triton backend for flash attention, thanks @lshqqytiger
- update to rocm 6.2, thanks @Disty0
-
directml
- update
torch
to 2.4.1, thanks @lshqqytiger
- update
-
extensions
- add mechanism to lock-down extension to specific working commit
- added
sd-webui-controlnet
andadetailer
last-known working commits
-
upscaling
- interruptible operations
-
refactor
- general lora apply/unapply process
- modularize main process loop
- massive log cleanup
- full lint pass
- improve inference mode handling
- unify quant lib loading
Major refactor of FLUX.1 support:
- Full ControlNet support, better LoRA support, full prompt attention implementation
- Faster execution, more flexible loading, additional quantization options, and more...
- Added image-to-image, inpaint, outpaint, hires modes
- Added workflow where FLUX can be used as refiner for other models
- Since both Optimum-Quanto and BitsAndBytes libraries are limited in their platform support matrix,
try enabling NNCF for quantization/compression on-the-fly!
Few image related goodies...
- Context-aware resize that allows for img2img/inpaint even at massively different aspect ratios without distortions!
- LUT Color grading apply professional color grading to your images using industry-standard .cube LUTs!
- Auto HDR image create for SD and SDXL with both 16ch true-HDR and 8-ch HDR-effect images ;)
And few video related goodies...
- CogVideoX 2b and 5b variants
with support for text-to-video and video-to-video! - AnimateDiff prompt travel and long context windows!
create video which travels between different prompts and at long video lengths!
Plus tons of other items and fixes - see changelog for details!
Examples:
- Built-in prompt-enhancer, TAESD optimizations, new DC-Solver scheduler, global XYZ grid management, etc.
- Updates to ZLUDA, IPEX, OpenVINO...
Major refactor of FLUX.1 support:
- allow configuration of individual FLUX.1 model components: transformer, text-encoder, vae
model load will load selected components first and then initialize model using pre-loaded components
components that were not pre-loaded will be downloaded and initialized as needed
as usual, components can also be loaded after initial model load
note: use of transformer/unet is recommended as those are flux.1 finetunes
note: manually selecting vae and text-encoder is not recommended
note: mix-and-match of different quantizations for different components can lead to unexpected errors- transformer/unet is list of manually downloaded safetensors
- vae is list of manually downloaded safetensors
- text-encoder is list of predefined and manually downloaded text-encoders
- controlnet support:
support for InstantX/Shakker-Labs models including Union-Pro
note that flux controlnet models are large, up to 6.6GB on top of already large base model!
as such, you may need to use offloading:sequential which is not as fast, but uses far less memory
when using union model, you must also select control mode in the control unit
flux does not yet support img2img so to use controlnet, you need to set contronet input via control unit override - model support loading all-in-one safetensors
not recommended due to massive duplication of components, but added due to popular demand
each such model is 20-32GB in size vs ~11GB for typical unet fine-tune - improve logging, warn when attempting to load unet as base model
- refiner support
FLUX.1 can be used as refiner for other models such as sd/sdxl
simply load sd/sdxl model as base and flux model as refiner and use as usual refiner workflow - img2img, inpaint and outpaint support
note flux may require higher denoising strength than typical sd/sdxl models
note: img2img is not yet supported with controlnet - transformer/unet support fp8/fp4 quantization
this brings supported quants to: nf4/fp8/fp4/qint8/qint4 - vae support fp16
- lora support additional training tools
- face-hires support
- support fuse-qkv projections
can speed up generate
enable via settings -> compute -> fused projections
Other improvements & Fixes:
- CogVideoX
- support for both 2B and 5B variations
- support for both text2video and video2video modes
- simply select in scripts -> cogvideox
- as with any video modules, includes additional frame interpolation using RIFE
- if init video is used, it will be automatically resized and interpolated to desired number of frames
- AnimateDiff:
- prompt travel
create video which travels between different prompts at different steps!
example prompt:0: dog
5: cat
10: bird - support for v3 model (finally)
- support for LCM model
- support for free-noise rolling context window
allow for creation of much longer videos, automatically enabled if frames > 16
- prompt travel
- Context-aware image resize, thanks @AI-Casanova!
based on seam-carving
allows for img2img/inpaint even at massively different aspect ratios without distortions!
simply select as resize method when using img2img or control tabs - HDR high-dynamic-range image create for SD and SDXL
create hdr images from in multiple exposures by latent-space modifications during generation
use via scripts -> hdr
option save hdr images creates images in standard 8bit/channel (hdr-effect) and 16bit/channel (full-hdr) PNG format
ui result is always 8bit/channel hdr-effect image plus grid of original images used to create hdr
grid image can be disabled via settings -> user interface -> show grid
actual full-hdr image is not displayed in ui, only optionally saved to disk - new scheduler: DC Solver
- color grading apply professional color grading to your images
using industry-standard .cube LUTs! enable via scripts -> color-grading - hires workflow now allows for full resize options
not just limited width/height/scale - xyz grid is now availabe as both local and global script!
- prompt enhance: improve quality and/or verbosity of your prompts
simply select in scripts -> prompt enhance uses gokaygokay/Flux-Prompt-Enhance model - decode
- auto-set upcast if first decode fails
- restore dtype on upcast
- taesd configurable number of layers
can be used to speed-up taesd decoding by reducing number of ops
e.g. if generating 1024px image, reducing layers by 1 will result in preview being 512px
set via settings -> live preview -> taesd decode layers - xhinker prompt parser handle offloaded models
- control better handle offloading
- upscale will use resize-to if set to non-zero values over resize-by
applies to any upscale options, including refine workflow - networks add option to choose if mouse-over on network should attempt to fetch additional info
option:extra_networks_fetch
enable/disable in settings -> networks - speed up some garbage collection ops
- sampler settings add dynamic shift
used by flow-matching samplers to adjust between structure and details - sampler settings force base shift
improves quality of the flow-matching samplers - t5 support manually downloaded models
applies to all models that use t5 transformer - modern-ui add override field
- full lint updates
- use
diffusers
from main branch, no longer tied to release - improve diffusers/transformers/huggingface_hub progress reporting
- use unique identifiers for all ui components
- visual query (a.ka vqa or vlm) added support for several models
- modernui update
- zluda update to 3.8.4, thanks @lshqqytiger!
- ipex update to 2.3.110+xpu on linux, thanks @Disty0!
- openvino update to 2024.3.0, thanks @Disty0!
- update
requirements
- fix AuraFlow
- fix handling of model configs if offline config is not available
- fix vae decode in backend original
- fix model path typos
- fix guidance end handler
- fix script sorting
- fix vae dtype during load
- fix all ui labels are unique
Summer break is over and we are back with a massive update!
Support for all of the new models:
What else? Just a bit... ;)
New fast-install mode, new Optimum Quanto and BitsAndBytes based quantization modes, new balanced offload mode that dynamically offloads GPU<->CPU as needed, and more...
And from previous service-pack: new ControlNet-Union all-in-one model, support for DoRA networks, additional VLM models, new AuraSR upscaler
Breaking Changes...
Due to internal changes, you'll need to reset your attention and offload settings!
But...For a good reason, new balanced offload is magic when it comes to memory utilization while sacrificing minimal performance!
New Models...
To use and of the new models, simply select model from Networks -> Reference and it will be auto-downloaded on first use
- Black Forest Labs FLUX.1
FLUX.1 models are based on a hybrid architecture of multimodal and parallel diffusion transformer blocks, scaled to 12B parameters and builing on flow matching
This is a very large model at ~32GB in size, its recommended to use a) offloading, b) quantization
For more information on variations, requirements, options, and how to donwload and use FLUX.1, see Wiki
SD.Next supports:- FLUX.1 Dev and FLUX.1 Schnell original variations
- additional qint8 and qint4 quantized variations
- additional nf4 quantized variation
- AuraFlow
AuraFlow v0.3 is the fully open-sourced largest flow-based text-to-image generation model
This is a very large model at 6.8B params and nearly 31GB in size, smaller variants are expected in the future
Use scheduler: Default or Euler FlowMatch or Heun FlowMatch - AlphaVLLM Lumina-Next-SFT
Lumina-Next-SFT is a Next-DiT model containing 2B parameters, enhanced through high-quality supervised fine-tuning (SFT)
This model uses T5 XXL variation of text encoder (previous version of Lumina used Gemma 2B as text encoder)
Use scheduler: Default or Euler FlowMatch or Heun FlowMatch - Kwai Kolors
Kolors is a large-scale text-to-image generation model based on latent diffusion
This is an SDXL style model that replaces standard CLiP-L and CLiP-G text encoders with a massivechatglm3-6b
encoder supporting both English and Chinese prompting - HunyuanDiT 1.2
Hunyuan-DiT is a powerful multi-resolution diffusion transformer (DiT) with fine-grained Chinese understanding - AnimateDiff
support for additional models: SD 1.5 v3 (Sparse), SD Lightning (4-step), SDXL Beta
New Features...
- support for Balanced Offload, thanks @Disty0!
balanced offload will dynamically split and offload models from the GPU based on the max configured GPU and CPU memory size
model parts that dont fit in the GPU will be dynamically sliced and offloaded to the CPU
see Settings -> Diffusers Settings -> Max GPU memory and Max CPU memory
note: recommended value for max GPU memory is ~80% of your total GPU memory
note: balanced offload will force loading LoRA with Diffusers method
note: balanced offload is not compatible with Optimum Quanto - support for Optimum Quanto with 8 bit and 4 bit quantization options, thanks @Disty0 and @Trojaner!
to use, go to Settings -> Compute Settings and enable "Quantize Model weights with Optimum Quanto" option
note: Optimum Quanto requires PyTorch 2.4 - new prompt attention mode: xhinker which brings support for prompt attention to new models such as FLUX.1 and SD3
to use, enable in Settings -> Execution -> Prompt attention - use PEFT for LoRA handling on all models other than SD15/SD21/SDXL
this improves LoRA compatibility for SC, SD3, AuraFlow, Flux, etc.
Changes & Fixes...
- default resolution bumped from 512x512 to 1024x1024, time to move on ;)
- convert Dynamic Attention SDP into a global SDP option, thanks @Disty0!
note: requires reset of selected attention option - update default CUDA version from 12.1 to 12.4
- update
requirements
- samplers now prefers the model defaults over the diffusers defaults, thanks @Disty0!
- improve xyz grid for lora handling and add lora strength option
- don't enable Dynamic Attention by default on platforms that support Flash Attention, thanks @Disty0!
- convert offload options into a single choice list, thanks @Disty0!
note: requires reset of selected offload option - control module allows reszing of indivudual process override images to match input image
for example: set size->before->method:nearest, mode:fixed or mode:fill - control tab includes superset of txt and img scripts
- automatically offload disabled controlnet units
- prioritize specified backend if
--use-*
option is used, thanks @lshqqytiger - ipadapter option to auto-crop input images to faces to improve efficiency of face-transfter ipadapters
- update IPEX to 2.1.40+xpu on Linux, thanks @Disty0!
- general ROCm fixes, thanks @lshqqytiger!
- support for HIP SDK 6.1 on ZLUDA backend, thanks @lshqqytiger!
- fix full vae previews, thanks @Disty0!
- fix default scheduler not being applied, thanks @Disty0!
- fix Stable Cascade with custom schedulers, thanks @Disty0!
- fix LoRA apply with force-diffusers
- fix LoRA scales with force-diffusers
- fix control API
- fix VAE load refrerencing incorrect configuration
- fix NVML gpu monitoring
This release is primary service release with cumulative fixes and several improvements, but no breaking changes.
New features...
- massive updates to Wiki
with over 20 new pages and articles, now includes guides for nearly all major features
note: this is work-in-progress, if you have any feedback or suggestions, please let us know! thanks @GenesisArtemis! - support for DoRA networks, thanks @AI-Casanova!
- support for uv, extremely fast installer, thanks @Yoinky3000!
to use, simply add--uv
to your command line params - Xinsir ControlNet++ Union
new SDXL all-in-one controlnet that can process any kind of preprocessors! - CogFlorence 2 Large VLM model
to use, simply select in process -> visual query - AuraSR high-quality 4x GAN-style upscaling model
note: this is a large upscaler at 2.5GB
And fixes...
- enable Florence VLM for all platforms, thanks @lshqqytiger!
- improve ROCm detection under WSL2, thanks @lshqqytiger!
- add SD3 with FP16 T5 to list of detected models
- fix executing extensions with zero params
- add support for embeddings bundled in LoRA, thanks @AI-Casanova!
- fix executing extensions with zero params
- fix nncf for lora, thanks @Disty0!
- fix diffusers version detection for SD3
- fix current step for higher order samplers
- fix control input type video
- fix reset pipeline at the end of each iteration
- fix faceswap when no faces detected
- fix civitai search
- multiple ModernUI fixes
Following zero-day SD3 release, a 10 days later heres a refresh with 10+ improvements
including full prompt attention, support for compressed weights, additional text-encoder quantization modes.
But theres more than SD3:
- support for quantized T5 text encoder FP16/FP8/FP4/INT8 in all models that use T5: SD3, PixArt-Σ, etc.
- support for PixArt-Sigma in small/medium/large variants
- support for HunyuanDiT 1.1
- additional NNCF weights compression support: SD3, PixArt, ControlNet, Lora
- integration of MS Florence VLM/VQA Base and Large models
- (finally) new release of Torch-DirectML
- additional efficiencies for users with low VRAM GPUs
- over 20 overall fixes
- SD3: enable tiny-VAE (TAESD) preview and non-full quality mode
- SD3: enable base LoRA support
- SD3: add support for FP4 quantized T5 text encoder
simply select in settings -> model -> text encoder
note for SD3 with T5, set SD.Next to use FP16 precision, not BF16 precision - SD3: add support for INT8 quantized T5 text encoder, thanks @Disty0!
- SD3: enable cpu-offloading for T5 text encoder, thanks @Disty0!
- SD3: simplified loading of model in single-file safetensors format
model load can now be performed fully offline - SD3: full support for prompt parsing and attention, thanks @AI-Casanova!
- SD3: ability to target different prompts to each of text-encoders, thanks @AI-Casanova!
example:dog TE2: cat TE3: bird
- SD3: add support for sampler shift for Euler FlowMatch
see settings -> samplers, also available as param in xyz grid
higher shift means model will spend more time on structure and less on details - SD3: add support for selecting T5 text encoder variant in XYZ grid
- Pixart-Σ: Add small (512px) and large (2k) variations, in addition to existing medium (1k)
- Pixart-Σ: Add support for 4/8bit quantized t5 text encoder
note by default pixart-Σ uses full fp16 t5 encoder with large memory footprint
simply select in settings -> model -> text encoder before or after model load - HunyuanDiT: support for model version 1.1
- MS Florence: integration of Microsoft Florence VLM/VQA Base and Large models
simply select in process -> visual query!
- support FP4 quantized T5 text encoder, in addition to existing FP8 and FP16
- support for T5 text-encoder loader in all models that use T5
example: load FP4 or FP8 quantized T5 text-encoder into PixArt Sigma! - support for
torch-directml
0.2.2, thanks @lshqqytiger!
note: new directml is finally based on moderntorch
2.3.1! - xyz grid: add support for LoRA selector
- vae load: store original vae so it can be restored when set to none
- extra networks: info display now contains link to source url if model if its known
works for civitai and huggingface models - force gc for lowvram users and improve gc logging
- improved google.colab support
- css tweaks for standardui
- css tweaks for modernui
- additional torch gc checks, thanks @Disty0!
Improvements: NNCF, thanks @Disty0!
- SD3 and PixArt support
- moved the first compression step to CPU
- sequential cpu offload (lowvram) support
- Lora support without reloading the model
- ControlNet compression support
- fix unsaturated outputs, force apply vae config on model load
- fix hidiffusion handling of non-square aspect ratios, thanks @ShenZhang-Shin!
- fix control second pass resize
- fix hunyuandit set attention processor
- fix civitai download without name
- fix compatibility with latest adetailer
- fix invalid sampler warning
- fix starting from non git repo
- fix control api negative prompt handling
- fix saving style without name provided
- fix t2i-color adapter
- fix sdxl "has been incorrectly initialized"
- fix api face-hires
- fix api ip-adapter
- fix memory exceptions with ROCm, thanks @Disty0!
- fix face-hires with lowvram, thanks @Disty0!
- fix pag incorrectly resetting pipeline
- cleanup image metadata
- restructure api examples:
cli/api-*
- handle theme fallback when invalid theme is specified
- remove obsolete training code leftovers
First, yes, it is here and supported: StabilityAI Stable Diffusion 3 Medium
for details on how to download and use, see Wiki
A lot of work on state-of-the-art multi-lingual models with both Tenecent HunyuanDiT and MuLan
Plus tons of minor features such as optimized initial install experience, T-Gate and ResAdapter, additional ModernUI themes (both light and dark) and fixes since the last release which was only 2 weeks ago!
- StabilityAI Stable Diffusion 3 Medium
yup, supported!
quote: "Stable Diffusion 3 Medium is a multimodal diffusion transformer (MMDiT) model that features improved performance in image quality, typography, complex prompt understanding, and resource-efficiency"
sdnext also supports switching optional T5 text encoder on-the-fly as well as loading model from either diffusers repo or safetensors single-file
for details, see Wiki - Tenecent HunyuanDiT bilingual english/chinese diffusion transformer model
note: this is a very large model at ~17GB, but can be used with less VRAM using model offloading
simply select from networks -> models -> reference, model will be auto-downloaded on first use
- MuLan Multi-language prompts
write your prompts in ~110 auto-detected languages!
compatible with SD15 and SDXL
enable in scripts -> MuLan and set encoder toInternVL-14B-224px
encoder
note: right now this is more of a proof-of-concept before smaller and/or quantized models are released
model will be auto-downloaded on first use: note its huge size of 27GB
even executing it in FP16 will require ~16GB of VRAM for text encoder alone
examples:- English: photo of a beautiful woman wearing a white bikini on a beach with a city skyline in the background
- Croatian: fotografija lijepe žene u bijelom bikiniju na plaži s gradskim obzorom u pozadini
- Italian: Foto di una bella donna che indossa un bikini bianco su una spiaggia con lo skyline di una città sullo sfondo
- Spanish: Foto de una hermosa mujer con un bikini blanco en una playa con un horizonte de la ciudad en el fondo
- German: Foto einer schönen Frau in einem weißen Bikini an einem Strand mit einer Skyline der Stadt im Hintergrund
- Arabic: صورة لامرأة جميلة ترتدي بيكيني أبيض على شاطئ مع أفق المدينة في الخلفية
- Japanese: 街のスカイラインを背景にビーチで白いビキニを着た美しい女性の写真
- Chinese: 一个美丽的女人在海滩上穿着白色比基尼的照片, 背景是城市天际线
- Korean: 도시의 스카이라인을 배경으로 해변에서 흰색 비키니를 입은 아름 다운 여성의 사진
- T-Gate Speed up generations by gating at which step cross-attention is no longer needed
enable via scripts -> t-gate
compatible with SD15 - PCM LoRAs allow for fast denoising using less steps with standard SD15 and SDXL models
download from https://huggingface.co/Kijai/converted_pcm_loras_fp16/tree/main - ByteDance ResAdapter resolution-free model adapter
allows to use resolutions from 0.5 to 2.0 of original model resolution, compatible with SD15 and SDXL enable via scripts -> resadapter and select desired model - Kohya HiRes Fix allows for higher resolution generation using standard SD15 models
enable via scripts -> kohya-hires-fix
note: alternative to regular hidiffusion method, but with different approach to scaling - additional built-in 4 great custom trained ControlNet SDXL models from Xinsir: OpenPose, Canny, Scribble, AnimePainter
thanks @lbeltrame - add torch full deterministic mode
enable in settings -> compute -> use deterministic mode
typical differences are not large and its disabled by default as it does have some performance impact - new sampler: Euler FlowMatch
- additional modernui themes
- reintroduce prompt attention normalization, disabled by default, enable in settings -> execution
this can drastically help with unbalanced prompts - further work on improving python 3.12 functionality and remove experimental flag
note: recommended version remains python 3.11 for all users, except if you are using directml in which case its python 3.10 - improved installer for initial installs
initial install will do single-pass install of all required packages with correct versions
subsequent runs will check package versions as necessary - add env variable
SD_PIP_DEBUG
to writepip.log
for all pip operations
also improved installer logging - add python version check for
torch-directml
- do not install
tensorflow
by default - improve metadata/infotext parser
addcli/image-exif.py
that can be used to view/extract metadata from images - lower overhead on generate calls
- auto-synchronize modernui and core branches
- add option to pad prompt with zeros, thanks @Disty
- cumulative fixes since the last release
- fix apply/unapply hidiffusion for sd15
- fix controlnet reference enabled check
- fix face-hires with control batch count
- install pynvml on-demand
- apply rollback-vae option to latest torch versions, thanks @Iaotle
- face hires skip if strength is 0
- restore all sampler configuration on sampler change
- fix textual inversion loading
- fix gallery mtime display
- fix extra network scrollable area when using modernui
- fix control prompts list handling
- fix restore variation seed and strength
- fix negative prompt parsing from metadata
- fix stable cascade progress monitoring
- fix variation seed with hires pass
- fix loading models trained with onetrainer
- add variation seed info to metadata
- workaround for scale-by when using modernui
- lock torch-directml version
- improve xformers installer
- improve ultralytics installer (face-hires)
- improve triton installer (compile)
- improve insightface installer (faceip)
- improve mim installer (dwpose)
- add dpm++ 1s and dpm++ 3m aliases for dpm++ 2m scheduler with different orders
New SD.Next release has been baking in dev
for a longer than usual, but changes are massive - about 350 commits for core and 300 for UI...
Starting with the new UI - yup, this version ships with a preview of the new ModernUI
For details on how to enable and use it, see Home and WiKi
ModernUI is still in early development and not all features are available yet, please report issues and feedback
Thanks to @BinaryQuantumSoul for his hard work on this project!
What else?
- PWA SD.Next is now installable as a web-app
- Gallery: extremely fast built-in gallery viewer
List, preview, search through all your images and videos! - HiDiffusion allows generating very-high resolution images out-of-the-box using standard models
- Perturbed-Attention Guidance (PAG) enhances sample quality in addition to standard CFG scale
- LayerDiffuse simply create transparent (foreground-only) images
- IP adapter masking allows to use multiple input images for each segment of the input image
- IP adapter InstantStyle implementation
- Token Downsampling (ToDo) provides significant speedups with minimal-to-none quality loss
- Samplers optimizations that allow normal samplers to complete work in 1/3 of the steps!
Yup, even popular DPM++2M can now run in 10 steps with quality equaling 30 steps using AYS presets - Native wildcards support
- Improved built-in Face HiRes
- Better outpainting
- And much more...
For details of above features and full list, see Changelog
While still waiting for Stable Diffusion 3.0, there have been some significant models released in the meantime:
- PixArt-Σ, high end diffusion transformer model (DiT) capable of directly generating images at 4K resolution
- SDXS, extremely fast 1-step generation consistency model
- Hyper-SD, 1-step, 2-step, 4-step and 8-step optimized models
Note
SD.Next is no longer marked as a fork of A1111 and github project has been fully detached
Given huge number of changes with +3443/-3342 commits diff (at the time of fork detach) over the past year,
a completely different backend/engine and a change of focus, it is time to give credit to original author, and move on!
- Features:
- ModernUI preview of the new ModernUI
- PWA SD.Next is now installable as a web-app and includes verified manifest
- **Gallery
- Gallery: list, preview, search through all your images and videos!
Implemented as infinite-scroll with client-side-caching and lazy-loading while being fully async and non-blocking
Search or sort by path, name, size, width, height, mtime or any image metadata item, also with extended syntax like width > 1000
Settings: optional additional user-defined folders, thumbnails in fixed or variable aspect-ratio - HiDiffusion:
Generate high-resolution images using your standard models without duplicates/distorsions AND improved performance
For example, SD15 can now go up to 2024x2048 and SDXL up to 4k natively Simply enable checkbox in advanced menu and set desired resolution
Additional settings are available in settings -> inference settings -> hidiffusion
And can also be set and used via xyz grid
Note: HiDiffusion resolution sensitive, so if you get error, set resolution to be multiples of 128 - Perturbed-Attention Guidance
PAG enhances sample quality by utilizing self-attention in formation of latent in addition to standard CFG scale
Simply set advanced -> attention guidance and advanced -> adaptive scaling
Additional options are available in settings -> inference settings -> pag
Note: PAG has replaced SAG as attention guidance method in SD.Next - LayerDiffuse
Create transparent images with foreground-only being generated
Simply select from scripts -> apply to current model
All necessary files will be auto-downloaded on first use - IP Adapter Masking:
Powerful method of using masking with ip-adapters
When combined with multiple ip-adapters, it allows for different inputs guidance for each segment of the input image
Hint: to create masks, you can use manually created masks or control->mask module with auto-segment to create masks and later upload them - IP Adapter advanced layer configuration:
Allows for more control over how each layer of ip-adapter is applied, requires a valid dict to be passed as input
See InstantStyle for details - OneDiff: new optimization/compile engine, thanks @aifartist
As with all other compile engines, enable via settings -> compute settings -> compile - ToDo Token Downsampling for Efficient Generation of High-Resolution Images
Newer alternative method to ToMe that can provide speed-up with minimal quality loss
Enable in settings -> inference settings -> token merging
Also available in XYZ grid - Outpaint:
New method of outpainting that uses a combination of auto-masking and edge generation to create seamless transitions between original and generated image
Use on control tab:- input -> denoising strength: 0.5 or higher
- select image -> outpaint -> expand edges or zoom out to desired size
- size -> mode: outpaint, method: nearest
- mask -> inpaint masked only (if you want to keep original image)
- Wildcards:
- native support of standard file-based wildcards in prompt
- enabled by default, can be disabled in settings -> extra networks if you want to use 3rd party extension
- wildcards folder is set in settings -> system paths and can be flat-file list or complex folder structure
- matches strings
"__*__"
in positive and negative prompts - supports filename and path-based wildcards
- supports nested wildcards (wildcard can refer to another wildcard, etc.)
- supports wildcards files in one-choice per line or multiple choices per line separated by
|
format - note: this is in addition to previously released style-based wildcards
- Models:
- Load UNET: ability to override/load external UNET to a selected model
Works similar to how VAE is selected and loaded: Set UNet folder and UNet model in settings
Can be replaced on-the-fly, not just during initial model load
Enables usage of fine-tunes such as DPO-SD15 or DPO-SDXL
Note: if there is aJSON
file with the same name as the model it will be used as Unet config, otherwise Unet config from currently loaded model will be used - PixArt-Σ
pixart-Σ is a high end diffusion Transformer model (DiT) with a T5 encoder/decoder capable of directly generating images at 4K resolution
to use, simply select from networks -> models -> reference -> PixArt-Σ
note: this is a very large model at ~22GB
set parameters: sampler: Default - SDXS
sdxs is an extremely fast 1-step generation consistency model that also uses TAESD as quick VAE out-of-the-box
to use, simply select from networks -> models -> reference -> SDXS
set parameters: sampler: CMSI, steps: 1, cfg_scale: 0.0 - Hyper-SD
sd15 and sdxl 1-step, 2-step, 4-step and 8-step optimized models using lora
set parameters: sampler: TCD or LCM, steps: 1/2/4/8, cfg_scale: 0.0
- Load UNET: ability to override/load external UNET to a selected model
- UI:
- Faster UI load times
- Theme types:
Standard (built-in themes), Modern (experimental nextgen ui), None (used for Gradio and Huggingface 3rd party themes)
Specifying a theme type updates list of available themes
For example, Gradio themes will not appear as available if theme type is set to Standard - Redesign of base txt2img interface
- Minor tweaks to styles: refresh/apply/save
- See details in WiKi
- API:
- Add API endpoint
/sdapi/v1/control
and CLI utilcli/simple-control.py
(in addition to previously added/sdapi/v1/preprocessors
and/sdapi/v1/masking
)
example:simple-control.py --prompt 'woman in the city' --sampler UniPC --steps 20
--input ~/generative/Samples/cutie-512.png --output /tmp/test.png --processed /tmp/proc.png
--control 'Canny:Canny FP16:0.7, OpenPose:OpenPose FP16:0.8' --type controlnet
--ipadapter 'Plus:~/generative/Samples/cutie-512.png:0.5' - Add API endpoint
/sdapi/v1/vqa
and CLI utilcli/simple-vqa.py
- Add API endpoint
- Changes:
- Due to change in Diffusers model loading
initial model load will now fetch config files required for the model
from the Huggingface site instead of using predefined YAML files - Removed built-in extensions: ControlNet and Image-Browser
as both image-browser and controlnet have native built-in equivalents
both can still be installed by user if desired - Different defaults depending on available GPU, thanks @Disty0
- 4GB and below: lowvram
- 8GB and below: medvram
- Cross-attention: Dynamic Attention SDP with medvram or lowvram, otherwise SDP
- VAE Tiling enabled with medvram and lowvram
- Disable Extract EMA by default
- Disable forced VAE Slicing for lowvram
- Upscaler compile disabled by default with OpenVINO backend
- Hypernetwork support disabled by default, can be enabled in settings
- Due to change in Diffusers model loading
- Improvements:
- Faster server startup
- Styles apply wildcards to params
- Face HiRes fully configurable and higher quality when using high-resolution models
- Extra networks persistent sort order in settings
- Add option to make batch generations use fully random seed vs sequential
- Make metadata in full screen viewer optional
- Add VAE civitai scan metadata/preview
- More efficient in-browser callbacks
- Updated all system requirements
- UI log monitor will auto-reconnect to server on server restart
- UI styles includes indicator for active styles
- UI reduce load on browser
- Secondary sampler add option "same as primary"
- Change attention mechanism on-the-fly without model reload, thanks @Disty0
- Update stable-fast with support for torch 2.2.2 and 2.3.0, thanks @Aptronymist
- Add torch cudaMallocAsync in compute options
Can improve memory utilization on compatible GPUs (RTX and newer) - Torch dynamic profiling
You can enable/disable full torch profiling in settings top menu on-the-fly - Prompt caching - if you use the same prompt multiple times, no need to re-parse and encode it
Useful for batches as prompt processing is ~0.1sec on each pass - Enhance
SD_PROMPT_DEBUG
to show actual tokens used - Support controlnet manually downloads models in both standalone and diffusers format
For standalone, simply copy safetensors file tomodels/control/controlnet
folder
For diffusers format, create folder with model name inmodels/control/controlnet/
and copymodel.json
anddiffusion_pytorch_model.safetensors
to that folder
- Samplers
- Add Euler SGM variation (e.g. SGM Uniform), optimized for SDXL-Lightning models
note: you can use other samplers as well with SDXL-Lightning models - Add CMSI sampler, optimized for consistency models
- Add option timestep spacing to sampler settings and sampler section in main ui Note: changing timestep spacing changes behavior of sampler and can help to make any sampler turbo/lightning compatibile
- Add option timesteps to manually set timesteps instead of relying on steps+spacing
Additionally, presets from nVidias align-you-steps reasearch are provided
Result is that perfectly aligned steps can drastically reduce number of steps needed!
For example, AYS preset alows DPM++2M to run in ~10 steps with quality equallying ~30 steps!
- Add Euler SGM variation (e.g. SGM Uniform), optimized for SDXL-Lightning models
- IPEX, thanks @Disty0
- Update to IPEX 2.1.20 on Linux
requires removing the venv folder to update properly - Removed 1024x1024 workaround
- Disable ipexrun by default, set
IPEXRUN=True
if you want to useipexrun
- Update to IPEX 2.1.20 on Linux
- ROCm, thanks @Disty0
- Add support for ROCm 6.1 nighthly builds
- Switch to stable branch of PyTorch
- Compatibility improvenments
- Add MIGraphX torch compile engine
- ZLUDA, thanks @lshqqytiger
- Rewrite ZLUDA installer
- ZLUDA v3.8 updates: Runtime API support
- Add
--reinstall-zluda
(to download the latest ZLUDA)
- Fixes:
- Update requirements
- Installer automatically handle detached git states
- Prompt params parser
- Allowing forcing LoRA loading method for some or all models
- Image save without metadata
- API generate save metadata
- Face/InstantID faults
- CivitAI update model info for all models
- FP16/BF16 test on model load
- Variation seed possible NaNs
- Enumerate diffusers model with multiple variants
- Diffusers skip non-models on enum
- Face-HiRes compatibility with control modules
- Face-HiRes avoid doule save in some scenarios
- Loading safetensors embeddings
- CSS fixes
- Check if attention processor is compatible with model
- SD Upscale when used with control module
- Noise sampler seed, thanks @leppie
- Control module with ADetailer and active ControlNet
- Control module restore button full functionality
- Control improved handling with multiple control units and different init images
- Control add correct metadata to image
- Time embeddings load part of model load
- A1111 update OptionInfo properties
- MOTD exception handling
- Notifications not triggering
- Prompt cropping on copy
New models:
- Stable Cascade Full and Lite
- Playground v2.5
- KOALA 700M
- Stable Video Diffusion XT 1.1
- VGen
New pipelines and features:
- Img2img using LEdit++, context aware method with image analysis and positive/negative prompt handling
- Trajectory Consistency Distillation TCD for processing in even less steps
- Visual Query & Answer using moondream2 as an addition to standard interrogate methods
- Face-HiRes: simple built-in detailer for face refinements
- Even simpler outpaint: when resizing image, simply pick outpaint method and if image has different aspect ratio, blank areas will be outpainted!
- UI aspect-ratio controls and other UI improvements
- User controllable invisibile and visible watermarking
- Native composable LoRA
What else?
- Reference models: Networks -> Models -> Reference: All reference models now come with recommended settings that can be auto-applied if desired
- Styles: Not just for prompts! Styles can apply generate parameters as templates and can be used to apply wildcards to prompts
improvements, Additional API endpoints - Given the high interest in ZLUDA engine introduced in last release weve updated much more flexible/automatic install procedure (see wiki for details)
- Plus Additional Improvements such as: Smooth tiling, Refine/HiRes workflow improvements, Control workflow
Further details:
- For basic instructions, see README
- For more details on all new features see full CHANGELOG
- For documentation, see WiKi
- Discord server
- Stable Cascade Full and Lite
- large multi-stage high-quality model from warp-ai/wuerstchen team and released by stabilityai
- download using networks -> reference
- see wiki for details
- Playground v2.5
- new model version from Playground: based on SDXL, but with some cool new concepts
- download using networks -> reference
- set sampler to DPM++ 2M EDM or Euler EDM
- KOALA 700M
- another very fast & light sdxl model where original unet was compressed and distilled to 54% of original size
- download using networks -> reference
- note to download fp16 variant (recommended), set settings -> diffusers -> preferred model variant
- LEdit++
- context aware img2img method with image analysis and positive/negative prompt handling
- enable via img2img -> scripts -> ledit
- uses following params from standard img2img: cfg scale (recommended ~3), steps (recommended ~50), denoise strength (recommended ~0.7)
- can use postive and/or negative prompt to guide editing process
- positive prompt: what to enhance, strength and threshold for auto-masking
- negative prompt: what to remove, strength and threshold for auto-masking
- note: not compatible with model offloading
- Second Pass / Refine
- independent upscale and hires options: run hires without upscale or upscale without hires or both
- upscale can now run 0.1-8.0 scale and will also run if enabled at 1.0 to allow for upscalers that simply improve image quality
- update ui section to reflect changes
- note: behavior using backend:original is unchanged for backwards compatibilty
- Visual Query visual query & answer in process tab
- go to process -> visual query
- ask your questions, e.g. "describe the image", "what is behind the subject", "what are predominant colors of the image?"
- primary model is moondream2, a tiny 1.86B vision language model
note: its still 3.7GB in size, so not really tiny - additional support for multiple variations of several base models: GIT, BLIP, ViLT, PIX, sizes range from 0.3 to 1.7GB
- Video
- Image2Video
- new module for creating videos from images
- simply enable from img2img -> scripts -> image2video
- model is auto-downloaded on first use
- based on VGen
- Stable Video Diffusion
- updated with SVD 1.0, SVD XT 1.0 and SVD XT 1.1
- models are auto-downloaded on first use
- simply enable from img2img -> scripts -> stable video diffusion
- for svd 1.0, use frames=~14, for xt models use frames=~25
- Image2Video
- Composable LoRA, thanks @AI-Casanova
- control lora strength for each step
for example:
<xxx:0.1@0,0.9@1>
means strength=0.1 for step at 0% and intepolate towards strength=0.9 for step at 100% - note: this is a very experimental feature and may not work as expected
- control lora strength for each step
for example:
- Control
- added refiner/hires workflows
- added resize methods to before/after/mask: fixed, crop, fill
- Styles: styles are not just for prompts!
- new styles editor: networks -> styles -> edit
- styles can apply generate parameters, for example to have a style that enables and configures hires:
parameters=enable_hr: True, hr_scale: 2, hr_upscaler: Latent Bilinear antialias, hr_sampler_name: DEIS, hr_second_pass_steps: 20, denoising_strength: 0.5
- styles can apply wildcards to prompts, for example:
wildcards=movie=mad max, dune, star wars, star trek; intricate=realistic, color sketch, pencil sketch, intricate
- as usual, you can apply any number of styles so you can choose which settings are applied and in which order and which wildcards are used
- UI
- aspect-ratio* add selector and lock to width/height control
allowed aspect ration can be configured via settings -> user interface - interrogate tab is now merged into process tab
- image viewer now displays image metadata
- themes improve on-the-fly switching
- log monitor flag server warnings/errors and overall improve display
- control separate processor settings from unit settings
- aspect-ratio* add selector and lock to width/height control
- Face HiRes
- new face restore option, works similar to well-known adetailer by running an inpaint on detected faces but with just a checkbox to enable/disable
- set as default face restorer in settings -> postprocessing
- disabled by default, to enable simply check face restore in your generate advanced settings
- strength, steps and sampler are set using by hires section in refine menu
- strength can be overriden in settings -> postprocessing
- will use secondary prompt and secondary negative prompt if present in refine
- Watermarking
- SD.Next disables all known watermarks in models, but does allow user to set custom watermark
- see settings -> image options -> watermarking
- invisible watermark: using steganogephy
- image watermark: overlaid on top of image
- Reference models
- additional reference models available for single-click download & run: Stable Cascade, Stable Cascade lite, Stable Video Diffusion XT 1.1
- reference models will now download fp16 variation by default
- reference models will print recommended settings to log if present
- new setting in extra network: use reference values when available
disabled by default, if enabled will force use of reference settings for models that have them
- Samplers
- TCD: Trajectory Consistency Distillation
new sampler that produces consistent results in a very low number of steps (comparable to LCM but without reliance on LoRA)
for best results, use with TCD LoRA: https://huggingface.co/h1t/TCD-SDXL-LoRA - DPM++ 2M EDM and Euler EDM
EDM is a new solver algorithm currently available for DPM++2M and Euler samplers
Note that using EDM samplers with non-EDM optimized models will provide just noise and vice-versa
- TCD: Trajectory Consistency Distillation
- Improvements
- FaceID extend support for LoRA, HyperTile and FreeU, thanks @Trojaner
- Tiling now extends to both Unet and VAE producing smoother outputs, thanks @AI-Casanova
- new setting in image options: include mask in output
- improved params parsing from from prompt string and styles
- default theme updates and additional built-in theme black-gray
- support models with their own YAML model config files
- support models with their own JSON per-component config files, for example:
playground-v2.5_vae.config
- prompt can have comments enclosed with
/*
and*/
comments are extracted from prompt and added to image metadata
- ROCm
- add ROCm 6.0 nightly option to installer, thanks @jicka
- add flash attention support for rdna3, thanks @Disty0
install flash_attn package for rdna3 manually and enable flash attention from compute settings
to install flash_attn, activate the venv and runpip install -U git+https://github.com/ROCm/flash-attention@howiejay/navi_support
- IPEX
- disabled IPEX Optimize by default
- API
- add preprocessor api endpoints
GET:/sdapi/v1/preprocessors
, POST:/sdapi/v1/preprocess
, sample script:cli/simple-preprocess.py
- add masking api endpoints
GET:/sdapi/v1/masking
, POST:/sdapi/v1/mask
, sample script:cli/simple-mask.py
- add preprocessor api endpoints
- Internal
- improved vram efficiency for model compile, thanks @Disty0
- stable-fast compatibility with torch 2.2.1
- remove obsolete textual inversion training code
- remove obsolete hypernetworks training code
- Refiner validated workflows:
- Fully functional: SD15 + SD15, SDXL + SDXL, SDXL + SDXL-R
- Functional, but result is not as good: SD15 + SDXL, SDXL + SD15, SD15 + SDXL-R
- SDXL Lightning models just-work, just makes sure to set CFG Scale to 0
and choose a best-suited sampler, it may not be the one youre used to (e.g. maybe even basic Euler) - Fixes
- improve model cpu offload compatibility
- improve model sequential offload compatibility
- improve bfloat16 compatibility
- improve xformers installer to match cuda version and install triton
- fix extra networks refresh
- fix sdp memory attention in backend original
- fix autodetect sd21 models
- fix api info endpoint
- fix sampler eta in xyz grid, thanks @AI-Casanova
- fix requires_aesthetics_score errors
- fix t2i-canny
- fix differenital diffusion for manual mask, thanks @23pennies
- fix ipadapter apply/unapply on batch runs
- fix control with multiple units and override images
- fix control with hires
- fix control-lllite
- fix font fallback, thanks @NetroScript
- update civitai downloader to handler new metadata
- improve control error handling
- use default model variant if specified variant doesnt exist
- use diffusers lora load override for lcm/tcd/turbo loras
- exception handler around vram memory stats gather
- improve ZLUDA installer with
--use-zluda
cli param, thanks @lshqqytiger
Only 3 weeks since last release, but heres another feature-packed one! This time release schedule was shorter as we wanted to get some of the fixes out faster.
- IP-Adapters & FaceID: multi-adapter and multi-image suport
- New optimization engines: DeepCache, ZLUDA and Dynamic Attention Slicing
- New built-in pipelines: Differential diffusion and Regional prompting
- Big updates to: Outpainting (noised-edge-extend), Clip-skip (interpolate with non-integrer values!), CFG end (prevent overburn on high CFG scales), Control module masking functionality
- All reported issues since the last release are addressed and included in this release
Further details:
- For basic instructions, see README
- For more details on all new features see full CHANGELOG
- For documentation, see WiKi
- Discord server
- Improvements:
- IP Adapter major refactor
- support for multiple input images per each ip adapter
- support for multiple concurrent ip adapters
note: you cannot mix & match ip adapters that use different CLiP models, for exampleBase
andBase ViT-G
- add adapter start/end to settings, thanks @AI-Casanova
having adapter start late can help with better control over composition and prompt adherence
having adapter end early can help with overal quality and performance - unified interface in txt2img, img2img and control
- enhanced xyz grid support
- FaceID now also works with multiple input images!
- Differential diffusion
img2img generation where you control strength of each pixel or image area
can be used with manually created masks or with auto-generated depth-maps uses general denoising strength value
simply enable from img2img -> scripts -> differential diffusion
note: supports sd15 and sdxl models - Regional prompting as a built-in solution
usage is same as original implementation from @hako-mikan
click on title to open docs and see examples of full syntax on how to use it
simply enable from scripts -> regional prompting
note: supports sd15 models only - DeepCache model acceleration
it can produce massive speedups (2x-5x) with no overhead, but with some loss of quality
settings -> compute -> model compile -> deep-cache and settings -> compute -> model compile -> cache interval - ZLUDA experimental support, thanks @lshqqytiger
- ZLUDA is CUDA wrapper that can be used for GPUs without native support
- best use case is AMD GPUs on Windows, see wiki for details
- Outpaint control outpaint now uses new alghorithm: noised-edge-extend
new method allows for much larger outpaint areas in a single pass, even outpaint 512->1024 works well
note that denoise strength should be increased for larger the outpaint areas, for example outpainting 512->1024 works well with denoise 0.75
outpaint can run in img2img mode (default) and inpaint mode where original image is masked (if inpaint masked only is selected) - Clip-skip reworked completely, thanks @AI-Casanova & @Disty0
now clip-skip range is 0-12 where previously lowest value was 1 (default is still 1)
values can also be decimal to interpolate between different layers, for exampleclip-skip: 1.5
, thanks @AI-Casanova - CFG End new param to control image generation guidance, thanks @AI-Casanova
sometimes you want strong control over composition, but you want it to stop at some point
for example, when used with ip-adapters or controlnet, high cfg scale can overpower the guided image - Control
- when performing inpainting, you can specify processing resolution using size->mask
- units now have extra option to re-use current preview image as processor input
- Cross-attention refactored cross-attention methods, thanks @Disty0
- for backend:original, its unchanged: SDP, xFormers, Doggettxs, InvokeAI, Sub-quadratic, Split attention
- for backend:diffuers, list is now: SDP, xFormers, Batch matrix-matrix, Split attention, Dynamic Attention BMM, Dynamic Attention SDP
note: you may need to update your settings! Attention Slicing is renamed to Split attention - for ROCm, updated default cross-attention to Scaled Dot Product
- Dynamic Attention Slicing, thanks @Disty0
- dynamically slices attention queries in order to keep them under the slice rate
slicing gets only triggered if the query size is larger than the slice rate to gain performance
Dynamic Attention Slicing BMM uses Batch matrix-matrix
Dynamic Attention Slicing SDP uses Scaled Dot Product - settings -> compute settings -> attention -> dynamic attention slicing
- dynamically slices attention queries in order to keep them under the slice rate
- ONNX:
- allow specify onnx default provider and cpu fallback
settings -> diffusers - allow manual install of specific onnx flavor
settings -> onnx - better handling of
fp16
models/vae, thanks @lshqqytiger
- allow specify onnx default provider and cpu fallback
- OpenVINO update to
torch 2.2.0
, thanks @Disty0 - HyperTile additional options thanks @Disty0
- add swap size option
- add use only for hires pass option
- add
--theme
cli param to force theme on startup - add
--allow-paths
cli param to add additional paths that are allowed to be accessed via web, thanks @OuticNZ
- IP Adapter major refactor
- Wiki:
- added benchmark notes for IPEX, OpenVINO and Olive
- added ZLUDA wiki page
- Internal
- update dependencies
- refactor txt2img/img2img api
- enhanced theme loader
- add additional debug env variables
- enhanced sdp cross-optimization control
see settings -> compute settings - experimental support for python 3.12
- Fixes:
- add variation seed to diffusers txt2img, thanks @AI-Casanova
- add cmd param
--skip-env
to skip setting of environment parameters during sdnext load - handle extensions that install conflicting versions of packages
onnxruntime
,opencv2-python
- installer refresh package cache on any install
- fix embeddings registration on server startup, thanks @AI-Casanova
- ipex handle dependencies, thanks @Disty0
- insightface handle dependencies
- img2img mask blur and padding
- xyz grid handle ip adapter name and scale
- lazy loading of image may prevent metadata from being loaded on time
- allow startup without valid models folder
- fix interrogate api endpoint
- control fix resize causing runtime errors
- control fix processor override image after processor change
- control fix display grid with batch
- control restore pipeline before running scripts/extensions
- handle pipelines that return dict instead of object
- lora use strict name matching if preferred option is by-filename
- fix inpaint mask only for diffusers
- fix vae dtype mismatch, thanks @Disty0
- fix controlnet inpaint mask
- fix theme list refresh
- fix extensions update information in ui
- fix taesd with bfloat16
- fix model merge manual merge settings, thanks @AI-Casanova
- fix gradio instant update issues for textboxes in quicksettings
- fix rembg missing dependency
- bind controlnet extension to last known working commit, thanks @Aptronymist
- prompts-from-file fix resizable prompt area
Another big release just hit the shelves!
- A lot more functionality in the Control module:
- Inpaint and outpaint support, flexible resizing options, optional hires
- Built-in support for many new processors and models, all auto-downloaded on first use
- Full support for scripts and extensions
- Complete Face module
implements all variations of FaceID, FaceSwap and latest PhotoMaker and InstantID - Much enhanced IPAdapter modules
- Brand new Intelligent masking, manual or automatic
Using ML models (LAMA object removal, REMBG background removal, SAM segmentation, etc.) and with live previews
With granular blur, erode and dilate controls - New models and pipelines:
Segmind SegMoE, Mixture Tiling, InstaFlow, SAG, BlipDiffusion - Massive work integrating latest advances with OpenVINO, IPEX and ONNX Olive
- Full control over brightness, sharpness and color shifts and color grading during generate process directly in latent space
- Documentation! This was a big one, with a lot of new content and updates in the WiKi
Plus welcome additions to UI performance, usability and accessibility and flexibility of deployment as well as API improvements
And it also includes fixes for all reported issues so far
As of this release, default backend is set to diffusers as its more feature rich than original and supports many additional models (original backend does remain as fully supported)
Also, previous versions of SD.Next were tuned for balance between performance and resource usage.
With this release, focus is more on performance.
See Benchmark notes for details, but as a highlight, we are now hitting ~110-150 it/s on a standard nVidia RTX4090 in optimal scenarios!
Further details:
- For basic instructions, see README
- For more details on all new features see full CHANGELOG
- For documentation, see WiKi
- Heavily updated Wiki
- Control:
- new docs:
- Control overview
- Control guide, thanks @Aptronymist
- add inpaint support
applies to both img2img and controlnet workflows - add outpaint support
applies to both img2img and controlnet workflows
note: increase denoising strength since outpainted area is blank by default - new mask module
- granular blur (gaussian), erode (reduce or remove noise) and dilate (pad or expand)
- optional live preview
- optional auto-segmentation using ml models
auto-segmentation can be done using segment-anything models or rembg models
note: auto segmentation will automatically expand user-masked area to segments that include current user mask - optional auto-mask
if you dont provide mask or mask is empty, you can instead use auto-mask to automatically generate mask
this is especially useful if you want to use advanced masking on batch or video inputs and dont want to manually mask each image
note: such auto-created mask is also subject to all other selected settings such as auto-segmentation, blur, erode and dilate - optional object removal using LaMA model
remove selected objects from images with a single click
works best when combined with auto-segmentation to remove smaller objects - masking can be combined with control processors in which case mask is applied before processor
- unmasked part of can is optionally applied to final image as overlay, see settings
mask_apply_overlay
- support for many additional controlnet models
now built-in models include 30+ SD15 models and 15+ SDXL models - allow resize both before and after generate operation
this allows for workflows such as: image -> upscale or downscale -> generate -> upscale or downscale -> output
providing more flexibility and than standard hires workflow
note: resizing before generate can be done using standard upscalers or latent - implicit hires
since hires is only used for txt2img, control reuses existing resize functionality any image size is used as txt2img target size
but if resize scale is also set its used to additionally upscale image after initial txt2img and for hires pass - add support for scripts and extensions
you can now combine control workflow with your favorite script or extension
note extensions that are hard-coded for txt2img or img2img tabs may not work until they are updated - add depth-anything depth map processor and trained controlnet
- add marigold depth map processor
this is state-of-the-art depth estimation model, but its quite heavy on resources - add openpose xl controlnet
- add blip/booru interrogate functionality to both input and output images
- configurable output folder in settings
- auto-refresh available models on tab activate
- add image preview for override images set per-unit
- more compact unit layout
- reduce usage of temp files
- add context menu to action buttons
- move ip-adapter implementation to control tabs
- resize by now applies to input image or frame individually
allows for processing where input images are of different sizes - support controlnets with non-default yaml config files
- implement resize modes for override images
- allow any selection of units
- dynamically install depenencies required by specific processors
- fix input image size
- fix video color mode
- fix correct image mode
- fix batch/folder/video modes
- fix processor switching within same unit
- fix pipeline switching between different modes
- new docs:
- Face module
implements all variations of FaceID, FaceSwap and latest PhotoMaker and InstantID
simply select from scripts and choose your favorite method and model
note: all models are auto-downloaded on first use- FaceID
- faceid guides image generation given the input image
- full implementation for SD15 and SD-XL, to use simply select from Scripts
Base (93MB) uses InsightFace to generate face embeds and OpenCLIP-ViT-H-14 (2.5GB) as image encoder
Plus (150MB) uses InsightFace to generate face embeds and CLIP-ViT-H-14-laion2B (3.8GB) as image encoder
SDXL (1022MB) uses InsightFace to generate face embeds and OpenCLIP-ViT-bigG-14 (3.7GB) as image encoder
- FaceSwap
- face swap performs face swapping at the end of generation
- based on InsightFace in-swapper
- PhotoMaker
- for SD-XL only
- new model from TenencentARC using similar concept as IPAdapter, but with different implementation and
allowing full concept swaps between input images and generated images using trigger words - note: trigger word must match exactly one term in prompt for model to work
- InstantID
- for SD-XL only
- based on custom trained ip-adapter and controlnet combined concepts
- note: controlnet appears to be heavily watermarked
- enable use via api, thanks @trojaner
- FaceID
- IPAdapter
- additional models for SD15 and SD-XL, to use simply select from Scripts:
SD15: Base, Base ViT-G, Light, Plus, Plus Face, Full Face
SDXL: Base SDXL, Base ViT-H SDXL, Plus ViT-H SDXL, Plus Face ViT-H SDXL - enable use via api, thanks @trojaner
- additional models for SD15 and SD-XL, to use simply select from Scripts:
- Segmind SegMoE
- initial support for reference models
download&load via network -> models -> reference -> SegMoE SD 4x2 (3.7GB), SegMoE XL 2x1 (10GB), SegMoE XL 4x2 - note: since segmoe is basically sequential mix of unets from multiple models, it can get large
SD 4x2 is ~4GB, XL 2x1 is ~10GB and XL 4x2 is 18GB - supports lora, thanks @AI-Casanova
- support for create and load custom mixes will be added in the future
- initial support for reference models
- Mixture Tiling
- uses multiple prompts to guide different parts of the grid during diffusion process
- can be used ot create complex scenes with multiple subjects
- simply select from scripts
- Self-attention guidance
- simply select scale in advanced menu
- can drastically improve image coherence as well as reduce artifacts
- note: only compatible with some schedulers
- FreeInit for AnimateDiff
- greatly improves temporal consistency of generated outputs
- all options are available in animateddiff script
- SalesForce BlipDiffusion
- model can be used to place subject in a different context
- requires input image
- last word in prompt and negative prompt will be used as source and target subjects
- sampler must be set to default before loading the model
- InstaFlow
- another take on super-fast image generation in a single step
- set sampler:default, steps:1, cfg-scale:0
- load from networks -> models -> reference
- Improvements
- ui
- check version and update SD.Next via UI
simply go to: settings -> update - globally configurable font size
will dynamically rescale ui depending on settings -> user interface - built-in themes can be changed on-the-fly
this does not work with gradio-default themes as css is created by gradio itself - two new themes: simple-dark and simple-light
- modularized blip/booru interrogate
now appears as toolbuttons on image/gallery output - faster browser page load
- update hints, thanks @brknsoul
- cleanup settings
- check version and update SD.Next via UI
- server
- all move/offload options are disable by default for optimal performance
enable manually if low on vram
- all move/offload options are disable by default for optimal performance
- server startup: performance
- reduced module imports
ldm support is now only loaded when running in backend=original - faster extension load
- faster json parsing
- faster lora indexing
- lazy load optional imports
- batch embedding load, thanks @midcoastal and @AI-Casanova
10x+ faster embeddings load for large number of embeddings, now works for 1000+ embeddings - file and folder list caching, thanks @midcoastal if you have a lot of files and and/or are using slower or non-local storage, this speeds up file access a lot
- add
SD_INSTALL_DEBUG
env variable to trace allgit
andpip
operations
- reduced module imports
- extra networks
- 4x faster civitai metadata and previews lookup
- better display and selection of tags & trigger words
if hashes are calculated, trigger words will only be displayed for actual model version - better matching of previews
- better search, including searching for multiple keywords or using full regex
see wiki page for more details on syntax
thanks @NetroScript - reduce html overhead
- model compression, thanks @Disty0
- using built-in NNCF model compression, you can reduce the size of your models significantly
example: up to 3.4GB of VRAM saved for SD-XL model! - see wiki for details
- using built-in NNCF model compression, you can reduce the size of your models significantly
- embeddings
you can now use sd 1.5 embeddings with your sd-xl models!, thanks @AI-Casanova
conversion is done on-the-fly, is completely transparent and result is an approximation of embedding
to enable: settings->extra networks->auto-convert embeddings - offline deployment: allow deployment without git clone
for example, you can now deploy a zip of the sdnext folder - latent upscale: updated latent upscalers (some are new)
nearest, nearest-exact, area, bilinear, bicubic, bilinear-antialias, bicubic-antialias - scheduler: added
SA Solver
- model load to gpu
new option in settings->diffusers allowing models to be loaded directly to GPU while keeping RAM free
this option is not compatible with any kind of model offloading as model is expected to stay in GPU
additionally, all model-moves can now be traced with env variableSD_MOVE_DEBUG
- xyz grid
- range control
example:5.0-6.0:3
will generate 3 images with values5.0,5.5,6.0
example:10-20:4
will generate 4 images with values10,13,16,20
- continue on error
now you can use xyz grid with different params and test which ones work and which dont - correct font scaling, thanks @nCoderGit
- range control
- hypertile
- enable vae tiling
- add autodetect optimial value
set tile size to 0 to use autodetected value
- cli
sdapi.py
allow manual api invoke
example:python cli/sdapi.py /sdapi/v1/sd-models
image-exif.py
improve metadata parsinginstall-sf
helper script to automatically find best available stable-fast package for the platform
- memory: add ram usage monitoring in addition to gpu memory usage monitoring
- vae: enable taesd batch decode
enable/disable with settings -> diffusers > vae slicing
- ui
- compile
- new option: fused projections
pretty much free 5% performance boost for compatible models
enable in settings -> compute settings - new option: dynamic quantization (experimental)
reduces memory usage and increases performance
enable in settings -> compute settings
best used together with torch compile: inductor
this feature is highly experimental and will evolve over time
requires nightly versions oftorch
andtorchao
pip install -U --pre torch torchvision torchaudio --index-url https://download.pytorch.org/whl/nightly/cu121
pip install -U git+https://github.com/pytorch-labs/ao
- new option: compile text encoder (experimental)
- new option: fused projections
- correction
- new section in generate, allows for image corrections during generataion directly in latent space
- adds brightness, sharpness and color controls, thanks @AI-Casanova
- adds color grading controls, thanks @AI-Casanova
- replaces old hdr section
- IPEX, thanks @disty0
- see wiki for details
- rewrite ipex hijacks without CondFunc
improves compatibilty and performance
fixes random memory leaks - out of the box support for Intel Data Center GPU Max Series
- remove IPEX / Torch 2.0 specific hijacks
- add
IPEX_SDPA_SLICE_TRIGGER_RATE
,IPEX_ATTENTION_SLICE_RATE
andIPEX_FORCE_ATTENTION_SLICE
env variables - disable 1024x1024 workaround if the GPU supports 64 bit
- fix lock-ups at very high resolutions
- OpenVINO, thanks @disty0
- see wiki for details
- quantization support with NNCF
run 8 bit directly without autocast
enable OpenVINO Quantize Models with NNCF from Compute Settings - 4-bit support with NNCF
enable Compress Model weights with NNCF from Compute Settings and set a 4-bit NNCF mode
select both CPU and GPU from the device selection if you want to use 4-bit or 8-bit modes on GPU - experimental support for Text Encoder compiling
OpenVINO is faster than IPEX now - update to OpenVINO 2023.3.0
- add device selection to
Compute Settings
selecting multiple devices will useHETERO
device - remove
OPENVINO_TORCH_BACKEND_DEVICE
env variable - reduce system memory usage after compile
- fix cache loading with multiple models
- Olive support, thanks @lshqqytiger
- fully merged in in wiki, see wiki for details
- as a highlight, 4-5 it/s using DirectML on AMD GPU translates to 23-25 it/s using ONNX/Olive!
- fixes
- civitai model download: enable downloads of embeddings
- ipadapter: allow changing of model/image on-the-fly
- ipadapter: fix fallback of cross-attention on unload
- rebasin iterations, thanks @AI-Casanova
- prompt scheduler, thanks @AI-Casanova
- python: fix python 3.9 compatibility
- sdxl: fix positive prompt embeds
- img2img: clip and blip interrogate
- img2img: sampler selection offset
- img2img: support variable aspect ratio without explicit resize
- cli: add
simple-upscale.py
script - cli: fix cmd args parsing
- cli: add
run-benchmark.py
script - api: add
/sdapi/v1/version
endpoint - api: add
/sdapi/v1/platform
endpoint - api: return current image in progress api if requested
- api: sanitize response object
- api: cleanup error logging
- api: fix api-only errors
- api: fix image to base64
- api: fix upscale
- refiner: fix use of sd15 model as refiners in second pass
- refiner: enable none as option in xyz grid
- sampler: add sampler options info to metadata
- sampler: guard against invalid sampler index
- sampler: add img2img_extra_noise option
- config: reset default cfg scale to 6.0
- hdr: fix math, thanks @AI-Casanova
- processing: correct display metadata
- processing: fix batch file names
- live preview: fix when using
bfloat16
- live preview: add thread locking
- upscale: fix ldsr
- huggingface: handle fallback model variant on load
- reference: fix links to models and use safetensors where possible
- model merge: unbalanced models where not all keys are present, thanks @AI-Casanova
- better sdxl model detection
- global crlf->lf switch
- model type switch if there is loaded submodels
- cleanup samplers use of compute devices, thanks @Disty0
- other
- extensions
sd-webui-controlnet
is locked to commitecd33eb
due to breaking changes - extension
stable-diffusion-webui-images-browser
is locked to commit27fe4a7
due to breaking changes - updated core requirements
- fully dynamic pipelines
pipeline switch is now done on-the-fly and does not require manual initialization of individual components
this allows for quick implementation of new pipelines
seemodules/sd_models.py:switch_pipe
for details - major internal ui module refactoring
this may cause compatibility issues if an extension is doing a direct import fromui.py
in which case, report it so we can add a compatibility layer - major public api refactoring
this may cause compatibility issues if an extension is doing a direct import fromapi.py
ormodels.py
in which case, report it so we can add a compatibility layer
- extensions
To wrap up this amazing year, were releasing a new version of SD.Next, this one is absolutely massive!
- Brand new Control module for text, image, batch and video processing
Native implementation of all control methods for both SD15 and SD-XL
▹ ControlNet | ControlNet XS | Control LLLite | T2I Adapters | IP Adapters
For details, see Wiki documentation: - Support for new models types out-of-the-box
This brings number of supported t2i/i2i model families to 13!
▹ Stable Diffusion 1.5/2.1 | SD-XL | LCM | Segmind | Kandinsky | Pixart-α | Würstchen | aMUSEd | DeepFloyd IF | UniDiffusion | SD-Distilled | BLiP Diffusion | etc. - New video capabilities:
▹ AnimateDiff | SVD | ModelScope | ZeroScope - Enhanced platform support
▹ Windows | Linux | MacOS with nVidia | AMD | IntelArc | DirectML | OpenVINO | ONNX+Olive backends - Better onboarding experience (first install)
with all model types available for single click download & load (networks -> reference) - Performance optimizations!
For comparisment of different processing options and compile backends, see Wiki
As a highlight, were reaching ~100 it/s (no tricks, this is with full features enabled and end-to-end on a standard nVidia RTX4090) - New custom pipelines framework for quickly porting any new pipeline
And others improvements in areas such as: Upscaling (up to 8x now with 40+ available upscalers), Inpainting (better quality), Prompt scheduling, new Sampler options, new LoRA types, additional UI themes, better HDR processing, built-in Video interpolation, parallel Batch processing, etc.
Plus some nifty new modules such as FaceID automatic face guidance using embeds during generation and Depth 3D image to 3D scene
- Control
- native implementation of all image control methods:
ControlNet, ControlNet XS, Control LLLite, T2I Adapters and IP Adapters - top-level Control next to Text and Image generate
- supports all variations of SD15 and SD-XL models
- supports Text, Image, Batch and Video processing
- for details and list of supported models and workflows, see Wiki documentation:
https://github.com/vladmandic/automatic/wiki/Control
- native implementation of all image control methods:
- Diffusers
- Segmind Vega model support
- small and fast version of SDXL, only 3.1GB in size!
- select from networks -> reference
- aMUSEd 256 and aMUSEd 512 model support
- lightweigt models that excel at fast image generation
- note: must select: settings -> diffusers -> generator device: unset
- select from networks -> reference
- Playground v1, Playground v2 256, Playground v2 512, Playground v2 1024 model support
- comparable to SD15 and SD-XL, trained from scratch for highly aesthetic images
- simply select from networks -> reference and use as usual
- BLIP-Diffusion
- img2img model that can replace subjects in images using prompt keywords
- download and load by selecting from networks -> reference -> blip diffusion
- in image tab, select
blip diffusion
script
- DemoFusion run your SDXL generations at any resolution!
- in Text tab select script -> demofusion
- note: GPU VRAM limits do not automatically go away so be careful when using it with large resolutions
in the future, expect more optimizations, especially related to offloading/slicing/tiling,
but at the moment this is pretty much experimental-only
- AnimateDiff
- overall improved quality
- can now be used with second pass - enhance, upscale and hires your videos!
- IP Adapter
- add support for ip-adapter-plus_sd15, ip-adapter-plus-face_sd15 and ip-adapter-full-face_sd15
- can now be used in xyz-grid
- Text-to-Video
- in text tab, select
text-to-video
script - supported models: ModelScope v1.7b, ZeroScope v1, ZeroScope v1.1, ZeroScope v2, ZeroScope v2 Dark, Potat v1
if you know of any other t2v models youd like to see supported, let me know! - models are auto-downloaded on first use
- note: current base model will be unloaded to free up resources
- in text tab, select
- Prompt scheduling now implemented for Diffusers backend, thanks @AI-Casanova
- Custom pipelines contribute by adding your own custom pipelines!
- for details, see fully documented example:
https://github.com/vladmandic/automatic/blob/dev/scripts/example.py
- for details, see fully documented example:
- Schedulers
- add timesteps range, changing it will make scheduler to be over-complete or under-complete
- add rescale betas with zero SNR option (applicable to Euler, Euler a and DDIM, allows for higher dynamic range)
- Inpaint
- improved quality when using mask blur and padding
- UI
- 3 new native UI themes: orchid-dreams, emerald-paradise and timeless-beige, thanks @illu_Zn
- more dynamic controls depending on the backend (original or diffusers)
controls that are not applicable in current mode are now hidden - allow setting of resize method directly in image tab
(previously via settings -> upscaler_for_img2img)
- Segmind Vega model support
- Optional
- FaceID face guidance during generation
- also based on IP adapters, but with additional face detection and external embeddings calculation
- calculates face embeds based on input image and uses it to guide generation
- simply select from scripts -> faceid
- experimental module: requirements must be installed manually:
pip install insightface ip_adapter
- Depth 3D image to 3D scene
- delivered as an extension, install from extensions tab
https://github.com/vladmandic/sd-extension-depth3d - creates fully compatible 3D scene from any image by using depth estimation
and creating a fully populated mesh - scene can be freely viewed in 3D in the UI itself or downloaded for use in other applications
- delivered as an extension, install from extensions tab
- ONNX/Olive
- major work continues in olive branch, see wiki for details, thanks @lshqqytiger
as a highlight, 4-5 it/s using DirectML on AMD GPU translates to 23-25 it/s using ONNX/Olive!
- major work continues in olive branch, see wiki for details, thanks @lshqqytiger
- FaceID face guidance during generation
- General
- new onboarding
- if no models are found during startup, app will no longer ask to download default checkpoint
instead, it will show message in UI with options to change model path or download any of the reference checkpoints - extra networks -> models -> reference section is now enabled for both original and diffusers backend
- if no models are found during startup, app will no longer ask to download default checkpoint
- support for Torch 2.1.2 (release) and Torch 2.3 (dev)
- Process create videos from batch or folder processing
supports GIF, PNG and MP4 with full interpolation, scene change detection, etc. - LoRA
- add support for block weights, thanks @AI-Casanova
example<lora:SDXL_LCM_LoRA:1.0:in=0:mid=1:out=0>
- add support for LyCORIS GLora networks
- add support for LoRA PEFT (Diffusers) networks
- add support for Lora-OFT (Kohya) and Lyco-OFT (Kohaku) networks
- reintroduce alternative loading method in settings:
lora_force_diffusers
- add support for
lora_fuse_diffusers
if using alternative method
use if you have multiple complex loras that may be causing performance degradation
as it fuses lora with model during load instead of interpreting lora on-the-fly
- add support for block weights, thanks @AI-Casanova
- CivitAI downloader allow usage of access tokens for download of gated or private models
- Extra networks new settting -> extra networks -> build info on first access
indexes all networks on first access instead of server startup - IPEX, thanks @disty0
- update to Torch 2.1
if you get file not found errors, setDISABLE_IPEXRUN=1
and run the webui with--reinstall
- built-in MKL and DPCPP for IPEX, no need to install OneAPI anymore
- StableVideoDiffusion is now supported with IPEX
- 8 bit support with NNCF on Diffusers backend
- fix IPEX Optimize not applying with Diffusers backend
- disable 32bit workarounds if the GPU supports 64bit
- add
DISABLE_IPEXRUN
andDISABLE_IPEX_1024_WA
environment variables - performance and compatibility improvements
- update to Torch 2.1
- OpenVINO, thanks @disty0
- 8 bit support for CPUs
- reduce System RAM usage
- update to Torch 2.1.2
- add Directory for OpenVINO cache option to System Paths
- remove Intel ARC specific 1024x1024 workaround
- HDR controls
- batch-aware for enhancement of multiple images or video frames
- available in image tab
- Logging
- additional TRACE logging enabled via specific env variables
see https://github.com/vladmandic/automatic/wiki/Debug for details - improved profiling
use with--debug --profile
- log output file sizes
- additional TRACE logging enabled via specific env variables
- Other
- API several minor but breaking changes to API behavior to better align response fields, thanks @Trojaner
- Inpaint add option
apply_overlay
to control if inpaint result should be applied as overlay or as-is
can remove artifacts and hard edges of inpaint area but also remove some details from original - chaiNNer fix
NaN
issues due to autocast - Upscale increase limit from 4x to 8x given the quality of some upscalers
- Extra Networks fix sort
- reduced default CFG scale from 6 to 4 to be more out-of-the-box compatibile with LCM/Turbo models
- disable google fonts check on server startup
- fix torchvision/basicsr compatibility
- fix styles quick save
- add hdr settings to metadata
- improve handling of long filenames and filenames during batch processing
- do not set preview samples when using via api
- avoid unnecessary resizes in img2img and inpaint
- safe handling of config updates avoid file corruption on I/O errors
- updated
cli/simple-txt2img.py
andcli/simple-img2img.py
scripts - save
params.txt
regardless of image save status - update built-in log monitor in ui, thanks @midcoastal
- major CHANGELOG doc cleanup, thanks @JetVarimax
- major INSTALL doc cleanup, thanks JetVarimax
- new onboarding
Whats new? Native video in SD.Next via both AnimateDiff and Stable-Video-Diffusion - and including native MP4 encoding and smooth video outputs out-of-the-box, not just animated-GIFs.
Also new is support for SDXL-Turbo as well as new Kandinsky 3 models and cool latent correction via HDR controls for any txt2img workflows, best-of-class SDXL model merge using full ReBasin methods and further mobile UI optimizations.
- Diffusers
- IP adapter
- lightweight native implementation of T2I adapters which can guide generation towards specific image style
- supports most T2I models, not limited to SD 1.5
- models are auto-downloaded on first use
- for IP adapter support in Original backend, use standard ControlNet extension
- AnimateDiff
- lightweight native implementation of AnimateDiff models:
AnimateDiff 1.4, 1.5 v1, 1.5 v2, AnimateFace - supports SD 1.5 only
- models are auto-downloaded on first use
- for video saving support, see video support section
- can be combined with IP-Adapter for even better results!
- for AnimateDiff support in Original backend, use standard AnimateDiff extension
- lightweight native implementation of AnimateDiff models:
- HDR latent control, based on article
- in Advanced params
- allows control of latent clamping, color centering and range maximization
- supported by XYZ grid
- SD21 Turbo and SDXL Turbo support
- just set CFG scale (0.0-1.0) and steps (1-3) to a very low value
- compatible with original StabilityAI SDXL-Turbo or any of the newer merges
- download safetensors or select from networks -> reference
- Stable Video Diffusion and Stable Video Diffusion XT support
- download using built-in model downloader or simply select from networks -> reference
support for manually downloaded safetensors models will be added later - for video saving support, see video support section
- go to image tab, enter input image and select script -> stable video diffusion
- download using built-in model downloader or simply select from networks -> reference
- Kandinsky 3 support
- download using built-in model downloader or simply select from networks -> reference
- this model is absolutely massive at 27.5GB at fp16, so be patient
- model params count is at 11.9B (compared to SD-XL at 3.3B) and its trained on mixed resolutions from 256px to 1024px
- use either model offload or sequential cpu offload to be able to use it
- better autodetection of inpaint and instruct pipelines
- support long seconary prompt for refiner
- IP adapter
- Video support
- applies to any model that supports video generation, e.g. AnimateDiff and StableVideoDiffusion
- support for animated-GIF, animated-PNG and MP4
- GIF and PNG can be looped
- MP4 can have additional padding at the start/end as well as motion-aware interpolated frames for smooth playback
interpolation is done using RIFE with native implementation in SD.Next
And its fast - interpolation from 16 frames with 10x frames to target 160 frames results takes 2-3sec - output folder for videos is in settings -> image paths -> video
- General
- redesigned built-in profiler
- now includes both
python
andtorch
and traces individual functions - use with
--debug --profile
- now includes both
- model merge add SD-XL ReBasin support, thanks @AI-Casanova
- further UI optimizations for mobile devices, thanks @iDeNoh
- log level defaults to info for console and debug for log file
- better prompt display in process tab
- increase maximum lora cache values
- fix extra networks sorting
- fix controlnet compatibility issues in original backend
- fix img2img/inpaint paste params
- fix save text file for manually saved images
- fix python 3.9 compatibility issues
- redesigned built-in profiler
New release, primarily focused around three major new features: full LCM support, completely new Model Merge functionality and Stable-fast compile support
Also included are several other improvements and large number of hotfixes - see full changelog for details
- Diffusers
- LCM support for any SD 1.5 or SD-XL model!
- download lcm-lora-sd15 and/or lcm-lora-sdxl
- load for favorite SD 1.5 or SD-XL model (original LCM was SD 1.5 only, this is both)
- load lcm lora (note: lcm lora is processed differently than any other lora)
- set sampler to LCM
- set number of steps to some low number, for SD-XL 6-7 steps is normally sufficient
note: LCM scheduler does not support steps higher than 50 - set CFG to between 1 and 2
- Add
cli/lcm-convert.py
script to convert any SD 1.5 or SD-XL model to LCM model
by baking in LORA and uploading to Huggingface, thanks @Disty0 - Support for Stable Fast model compile on Windows/Linux/WSL2 with CUDA
See Wiki:Benchmark for details and comparison
of different backends, precision modes, advanced settings and compile modes
Hint: 70+ it/s is possible on RTX4090 with no special tweaks - Add additional pipeline types for manual model loads when loading from
safetensors
- Updated logic for calculating steps when using base/hires/refiner workflows
- Improve model offloading for both model and sequential cpu offload when dealing with meta tensors
- Safe model offloading for non-standard models
- Fix DPM SDE scheduler
- Better support for SD 1.5 inpainting models
- Add support for OpenAI Consistency decoder VAE
- Enhance prompt parsing with long prompts and support for BREAK keyword
Change-in-behavior: new line in prompt now means BREAK - Add alternative Lora loading algorithm, triggered if
SD_LORA_DIFFUSERS
is set
- LCM support for any SD 1.5 or SD-XL model!
- Models
- Model merge
- completely redesigned, now based on best-of-class
meh
by @s1dlx
and heavily modified for additional functionality and fully integrated by @AI-Casanova (thanks!) - merge SD or SD-XL models using simple merge (12 methods),
using one of presets (20 built-in presets) or custom block merge values - merge with ReBasin permutations and/or clipping protection
- fully multithreaded for fastest merge possible
- completely redesigned, now based on best-of-class
- Model update
- under UI -> Models - Update
- scan existing models for updated metadata on CivitAI and
provide download functionality for models with available
- Model merge
- Extra networks
- Use multi-threading for 5x load speedup
- Better Lora trigger words support
- Auto refresh styles on change
- General
- Many mobile UI optimizations, thanks @iDeNoh
- Support for Torch 2.1.1 with CUDA 12.1 or CUDA 11.8
- Configurable location for HF cache folder
Default is standard~/.cache/huggingface/hub
- Reworked parser when pasting previously generated images/prompts
includes alltxt2img
,img2img
andoverride
params - Reworked model compile
- Support custom upscalers in subfolders
- Add additional image info when loading image in process tab
- Better file locking when sharing config and/or models between multiple instances
- Handle custom API endpoints when using auth
- Show logged in user in log when accessing via UI and/or API
- Support
--ckpt none
to skip loading a model
- XYZ grid
- Add refiner options to XYZ Grid
- Add option to create only subgrids in XYZ grid, thanks @midcoastal
- Allow custom font, background and text color in settings
- Fixes
- Fix
params.txt
saved before actual image - Fix inpaint
- Fix manual grid image save
- Fix img2img init image save
- Fix upscale in txt2img for batch counts when no hires is used
- More uniform models paths
- Safe scripts callback execution
- Improved extension compatibility
- Improved BF16 support
- Match previews for reference models with downloaded models
- Fix
Another pretty big release, this time with focus on new models (3 new model types), new backends and optimizations Plus quite a few fixes
Also, Wiki has been updated with new content, so check it out!
Some highlights: OpenVINO, IntelArc, DirectML, ONNX/Olive
- Diffusers
- since now SD.Next supports 12 different model types, weve added reference model for each type in
Extra networks -> Reference for easier select & auto-download
Models can still be downloaded manually, this is just a convenience feature & a showcase for supported models - new model type: Segmind SSD-1B
its a distilled model trained at 1024px, this time 50% smaller and faster version of SD-XL!
(and quality does not suffer, its just more optimized)
test shows batch-size:4 with 1k images at full quality used less than 6.5GB of VRAM
and for further optimization, you can use built-in TAESD decoder,
which results in batch-size:16 with 1k images using 7.9GB of VRAM select from extra networks -> reference or download using built-in Huggingface downloader:segmind/SSD-1B
- new model type: Pixart-α XL 2
in medium/512px and large/1024px variations
comparable in quality to SD 1.5 and SD-XL, but with better text encoder and highly optimized training pipeline
so finetunes can be done in as little as 10% compared to SD/SD-XL (note that due to much larger text encoder, it is a large model)
select from extra networks -> reference or download using built-in Huggingface downloader:PixArt-alpha/PixArt-XL-2-1024-MS
- new model type: LCM: Latent Consistency Models
trained at 512px, but with near-instant generate in a as little as 3 steps!
combined with OpenVINO, generate on CPU takes less than 5-10 seconds: https://www.youtube.com/watch?v=b90ESUTLsRo
and absolute beast when combined with HyperTile and TAESD decoder resulting in 28 FPS
(on RTX4090 for batch 16x16 at 512px)
note: set sampler to Default before loading model as LCM comes with its own LCMScheduler sampler
select from extra networks -> reference or download using built-in Huggingface downloader:SimianLuo/LCM_Dreamshaper_v7
- support for Custom pipelines, thanks @disty0
download using built-in Huggingface downloader
think of them as plugins for diffusers not unlike original extensions that modify behavior ofldm
backend
list of community pipelines: https://github.com/huggingface/diffusers/blob/main/examples/community/README.md - new custom pipeline:
Disty0/zero123plus-pipeline
, thanks @disty0
generate 4 output images with different camera positions: front, side, top, back!
for more details, see #2421 - new backend: ONNX/Olive (experimental), thanks @lshqqytiger
for details, see WiKi - extend support for Free-U
improve generations quality at no cost (other than finding params that work for you)
- since now SD.Next supports 12 different model types, weve added reference model for each type in
- General
- attempt to auto-fix invalid samples which occur due to math errors in lower precision
example:RuntimeWarning: invalid value encountered in cast: sample = sample.astype(np.uint8)
begone black images (note: if it proves as working, this solution will need to be expanded to cover all scenarios) - add Lora OFT support, thanks @antis0007 and @ai-casanova
- Upscalers
- compile option, thanks @disty0
- chaiNNer add high quality models from Helaman
- redesigned Progress bar with full details on current operation
- new option: settings -> images -> keep incomplete
can be used to skip vae decode on aborted/skipped/interrupted image generations - new option: settings -> system paths -> models
can be used to set custom base path for all models (previously only as cli option) - remove external clone of items in
/repositories
- Interrogator module has been removed from
extensions-builtin
and fully implemented (and improved) natively
- attempt to auto-fix invalid samples which occur due to math errors in lower precision
- UI
- UI tweaks for default themes
- UI switch core font in default theme to noto-sans
previously default font was simply system-ui, but it lead to too much variations between browsers and platforms - UI tweaks for mobile devices, thanks @iDeNoh
- updated Context menu
right-click on any button in action menu (e.g. generate button)
- Extra networks
- sort by name, size, date, etc.
- switch between gallery and list views
- add tags from user metadata (in addition to tags in model metadata) for lora
- added Reference models for diffusers backend
- faster enumeration of all networks on server startup
- Packages
- updated
diffusers
to 0.22.0,transformers
to 4.34.1 - update openvino, thanks @disty0
- update directml, @lshqqytiger
- updated
- Compute
- OpenVINO:
- updated to mainstream
torch
2.1.0 - support for ESRGAN upscalers
- updated to mainstream
- OpenVINO:
- Fixes
- fix freeu for backend original and add it to xyz grid
- fix loading diffuser models in huggingface format from non-standard location
- fix default styles looking in wrong location
- fix missing upscaler folder on initial startup
- fix handling of relative path for models
- fix simple live preview device mismatch
- fix batch img2img
- fix diffusers samplers: dpm++ 2m, dpm++ 1s, deis
- fix new style filename template
- fix image name template using model name
- fix image name sequence
- fix model path using relative path
- fix safari/webkit layour, thanks @eadnams22
- fix
torch-rocm
andtensorflow-rocm
version detection, thanks @xangelix - fix chainner upscalers color clipping
- fix for base+refiner workflow in diffusers mode: number of steps, diffuser pipe mode
- fix for prompt encoder with refiner in diffusers mode
- fix prompts-from-file saving incorrect metadata
- fix add/remove extra networks to prompt
- fix before-hires step
- fix diffusers switch from invalid model
- force second requirements check on startup
- remove lyco, multiple_tqdm
- enhance extension compatibility for extensions directly importing codeformers
- enhance extension compatibility for extensions directly accessing processing params
- css fixes
- clearly mark external themes in ui
- update
typing-extensions
This is a major release, with many changes and new functionality...
Changelog is massive, but do read through or youll be missing on some very cool new functionality
or even free speedups and quality improvements (regardless of which workflows youre using)!
Note that for this release its recommended to perform a clean install (e.g. fresh git clone
)
Upgrades are still possible and supported, but clean install is recommended for best experience
- UI
- added change log to UI
see System -> Changelog - converted submenus from checkboxes to accordion elements
any ui state including state of open/closed menus can be saved as default!
see System -> User interface -> Set menu states - new built-in theme invoked
thanks @BinaryQuantumSoul - add compact view option in settings -> user interface
- small visual indicator bottom right of page showing internal server job state
- added change log to UI
- Extra networks:
- Details
- new details interface to view and save data about extra networks
main ui now has a single button on each en to trigger details view - details view includes model/lora metadata parser!
- details view includes civitai model metadata!
- new details interface to view and save data about extra networks
- Metadata:
- you can scan civitai
for missing metadata and previews directly from extra networks
simply click on button in top-right corner of extra networks page
- you can scan civitai
- Styles
- save/apply icons moved to extra networks
- can be edited in details view
- support for single or multiple styles per json
- support for embedded previews
- large database of art styles included by default
can be disabled in settings -> extra networks -> show built-in - styles can also be used in a prompt directly:
<style:style_name>
if style if an exact match, it will be used
otherwise it will rotate between styles that match the start of the name
that way you can use different styles as wildcards when processing batches - styles can have extra fields, not just prompt and negative prompt
for example: "Extra: sampler: Euler a, width: 480, height: 640, steps: 30, cfg scale: 10, clip skip: 2"
- VAE
- VAEs are now also listed as part of extra networks
- Image preview methods have been redesigned: simple, approximate, taesd, full
please set desired preview method in settings - both original and diffusers backend now support "full quality" setting
if you desired model or platform does not support FP16 and/or you have a low-end hardware and cannot use FP32
you can disable "full quality" in advanced params and it will likely reduce decode errors (infamous black images)
- LoRA
- LoRAs are now automatically filtered based on compatibility with currently loaded model
note that if lora type cannot be auto-determined, it will be left in the list
- LoRAs are now automatically filtered based on compatibility with currently loaded model
- Refiner
- you can load model from extra networks as base model or as refiner
simply select button in top-right of models page
- you can load model from extra networks as base model or as refiner
- General
- faster search, ability to show/hide/sort networks
- refactored subfolder handling
note: this will trigger model hash recalculation on first model use
- Details
- Diffusers:
- better pipeline auto-detect when loading from safetensors
- SDXL Inpaint
- although any model can be used for inpainiting, there is a case to be made for
dedicated inpainting models as they are tuned to inpaint and not generate - model can be used as base model for img2img or refiner model for txt2img
To download go to Models -> Huggingface:diffusers/stable-diffusion-xl-1.0-inpainting-0.1
(6.7GB)
- although any model can be used for inpainiting, there is a case to be made for
- SDXL Instruct-Pix2Pix
- model can be used as base model for img2img or refiner model for txt2img
this model is massive and requires a lot of resources!
to download go to Models -> Huggingface:diffusers/sdxl-instructpix2pix-768
(11.9GB)
- model can be used as base model for img2img or refiner model for txt2img
- SD Latent Upscale
- you can use SD Latent Upscale models as refiner models
this is a bit experimental, but it works quite well!
to download go to Models -> Huggingface:stabilityai/sd-x2-latent-upscaler
(2.2GB)stabilityai/stable-diffusion-x4-upscaler
(1.7GB)
- you can use SD Latent Upscale models as refiner models
- better Prompt attention
should better handle more complex prompts
for sdxl, choose which part of prompt goes to second text encoder - just addTE2:
separator in the prompt
for hires and refiner, second pass prompt is used if present, otherwise primary prompt is used
new option in settings -> diffusers -> sdxl pooled embeds
thanks @AI-Casanova - better Hires support for SD and SDXL
- better TI embeddings support for SD and SDXL
faster loading, wider compatibility and support for embeddings with multiple vectors
information about used embedding is now also added to image metadata
thanks @AI-Casanova - better Lora handling
thanks @AI-Casanova - better SDXL preview quality (approx method)
thanks @BlueAmulet - new setting: settings -> diffusers -> force inpaint
as some models behave better when in inpaint mode even for normal img2img tasks
- Upscalers:
- pretty much a rewrite and tons of new upscalers - built-in list is now at 42
- fix long outstanding memory leak in legacy code, amazing this went undetected for so long
- more high quality upscalers available by default
SwinIR (2), ESRGAN (12), RealESRGAN (6), SCUNet (2) - if that is not enough, there is new chaiNNer integration:
adds 15 more upscalers from different families out-of-the-box:
HAT (6), RealHAT (2), DAT (1), RRDBNet (1), SPSRNet (1), SRFormer (2), SwiftSR (2)
and yes, you can download and add your own, just place them inmodels/chaiNNer
- two additional latent upscalers based on SD upscale models when using Diffusers backend
SD Upscale 2x, SD Upscale 4x*
note: Recommended usage for SD Upscale is by using second pass instead of upscaler
as it allows for tuning of prompt, seed, sampler settings which are used to guide upscaler - upscalers are available in xyz grid
- simplified settings->postprocessing->upscalers
e.g. all upsamplers share same settings for tiling - allow upscale-only as part of txt2img and img2img workflows
simply set denoising strength to 0 so hires does not get triggered - unified init/download/execute/progress code
- easier installation
- Samplers:
- moved ui options to submenu
- default list for new installs is now all samplers, list can be modified in settings
- simplified samplers configuration in settings
plus added few new ones like sigma min/max which can highly impact sampler behavior - note that list of samplers is now different since keeping a flat-list of all possible
combinations results in 50+ samplers which is not practical
items such as algorithm (e.g. karras) is actually a sampler option, not a sampler itself
- CivitAI:
- civitai model download is now multithreaded and resumable
meaning that you can download multiple models in parallel
as well as resume aborted/incomplete downloads - civitai integration in models -> civitai can now find most
previews AND metadata for most models (checkpoints, loras, embeddings)
metadata is now parsed and saved in [model].json
typical hit rate is >95% for models, loras and embeddings - description from parsed model metadata is used as model description if there is no manual
description file present in format of [model].txt - to enable search for models, make sure all models have set hash values
Models -> Valida -> Calculate hashes
- civitai model download is now multithreaded and resumable
- LoRA
- new unified LoRA handler for all LoRA types (lora, lyco, loha, lokr, locon, ia3, etc.)
applies to both original and diffusers backend
thanks @AI-Casanova for diffusers port - for backend:original, separate lyco handler has been removed
- new unified LoRA handler for all LoRA types (lora, lyco, loha, lokr, locon, ia3, etc.)
- Compute
- CUDA:
- default updated to
torch
2.1.0 with cuda 12.1 - testing moved to
torch
2.2.0-dev/cu122 - check out generate context menu -> show nvml for live gpu stats (memory, power, temp, clock, etc.)
- default updated to
- Intel Arc/IPEX:
- tons of optimizations, built-in binary wheels for Windows
i have to say, intel arc/ipex is getting to be quite a player, especially with openvino
thanks @Disty0 @Nuullll
- tons of optimizations, built-in binary wheels for Windows
- AMD ROCm:
- updated installer to support detect
ROCm
5.4/5.5/5.6/5.7 - support for
torch-rocm-5.7
- updated installer to support detect
- xFormers:
- default updated to 0.0.23
- note that latest xformers are still not compatible with cuda 12.1
recommended to use torch 2.1.0 with cuda 11.8
if you attempt to use xformers with cuda 12.1, it will force a full xformers rebuild on install
which can take a very long time and may/may-not work - added cmd param
--use-xformers
to force usage of exformers
- GC:
- custom garbage collect threshold to reduce vram memory usage, thanks @Disty0
see settings -> compute -> gc
- custom garbage collect threshold to reduce vram memory usage, thanks @Disty0
- CUDA:
- Inference
- new section in settings
- HyperTile: new!
available for diffusers and original backends
massive (up to 2x) speed-up your generations for free :)
note: hypertile is not compatible with any extension that modifies processing parameters such as resolution
thanks @tfernd - Free-U: new!
available for diffusers and original backends
improve generations quality at no cost (other than finding params that work for you)
note: temporarily disabled for diffusers pending release of diffusers==0.22
thanks @ljleb - Token Merging: not new, but updated
available for diffusers and original backends
speed-up your generations by merging redundant tokens
speed up will depend on how aggressive you want to be with token merging - Batch mode
new option settings -> inference -> batch mode
when using img2img process batch, optionally process multiple images in batch in parallel
thanks @Symbiomatrix
- HyperTile: new!
- new section in settings
- NSFW Detection/Censor
- install extension: NudeNet
body part detection, image metadata, advanced censoring, etc...
works for text, image and process workflows
more in the extension notes
- install extension: NudeNet
- Extensions
- automatic discovery of new extensions on github
no more waiting for them to appear in index! - new framework for extension validation
extensions ui now shows actual status of extensions for reviewed extensions
if you want to contribute/flag/update extension status, reach out on github or discord - better overall compatibility with A1111 extensions (up to a point)
- MultiDiffusion
has been removed from list of built-in extensions
you can still install it manually if desired - [LyCORIS]https://github.com/KohakuBlueleaf/a1111-sd-webui-lycoris
has been removed from list of built-in extensions
it is considered obsolete given that all functionality is now built-in
- automatic discovery of new extensions on github
- General
- Startup
- all main CLI parameters can now be set as environment variable as well
for example--data-dir <path>
can be specified asSD_DATADIR=<path>
before starting SD.Next
- all main CLI parameters can now be set as environment variable as well
- XYZ Grid
- more flexibility to use selection or strings
- Logging
- get browser session info in server log
- allow custom log file destination
seewebui --log
- when running with
--debug
flag, log is force-rotated
so eachsdnext.log.*
represents exactly one server run - internal server job state tracking
- Launcher
- new
webui.ps1
powershell launcher for windows (oldwebui.bat
is still valid)
thanks @em411
- new
- API
- add end-to-end example how to use API:
cli/simple-txt2img.js
covers txt2img, upscale, hires, refiner
- add end-to-end example how to use API:
- train.py
- wrapper script around built-in kohyas lora training script
seecli/train.py --help
new support for sd and sdxl, thanks @evshiron
new support for full offline mode (without sdnext server running)
- wrapper script around built-in kohyas lora training script
- Startup
- Themes
- all built-in themes are fully supported:
- black-teal (default), light-teal, black-orange, invoked, amethyst-nightfall, midnight-barbie
- if youre using any gradio default themes or a 3rd party theme or that are not optimized for SD.Next, you may experience issues
default minimal style has been updated for compatibility, but actual styling is completely outside of SD.Next control
- all built-in themes are fully supported:
Started as a mostly a service release with quite a few fixes, but then...
Major changes how hires works as well as support for a very interesting new model Wuerstchen
- tons of fixes
- changes to hires
- enable non-latent upscale modes (standard upscalers)
- when using latent upscale, hires pass is run automatically
- when using non-latent upscalers, hires pass is skipped by default
enabled using force hires option in ui
hires was not designed to work with standard upscalers, but i understand this is a common workflow - when using refiner, upscale/hires runs before refiner pass
- second pass can now also utilize full/quick vae quality
- note that when combining non-latent upscale, hires and refiner output quality is maximum,
but operations are really resource intensive as it includes: base->decode->upscale->encode->hires->refine - all combinations of: decode full/quick + upscale none/latent/non-latent + hires on/off + refiner on/off
should be supported, but given the number of combinations, issues are possible - all operations are captured in image metadata
- diffusers:
- allow loading of sd/sdxl models from safetensors without online connectivity
- support for new model: wuerstchen
its a high-resolution model (1024px+) thats ~40% faster than sd-xl with a bit lower resource requirements
go to models -> huggingface -> search "warp-ai/wuerstchen" -> download
its nearly 12gb in size, so be patient :)
- minor re-layout of the main ui
- updated ui hints
- updated models -> civitai
- search and download loras
- find previews for already downloaded models or loras
- new option inference mode
- default is standard
torch.no_grad
new option istorch.inference_only
which is slightly faster and uses less vram, but only works on some gpus
- default is standard
- new cmdline param
--no-metadata
skips reading metadata from models that are not already cached - updated gradio
- styles support for subfolders
- css optimizations
- clean-up logging
- capture system info in startup log
- better diagnostic output
- capture extension output
- capture ldm output
- cleaner server restart
- custom exception handling
One week later, another large update!
- system:
- full python 3.11 support
note that changing python version does require reinstall
and if youre already on python 3.10, really no need to upgrade
- full python 3.11 support
- themes:
- new default theme: black-teal
- new light theme: light-teal
- new additional theme: midnight-barbie, thanks @nyxia
- extra networks:
- support for tags
show tags on hover, search by tag, list tags, add to prompt, etc. - styles are now also listed as part of extra networks
existingstyles.csv
is converted upon startup to individual styles insidemodels/style
this is stage one of new styles functionality
old styles interface is still available, but will be removed in future - cache file lists for much faster startup
speedups are 50+% for large number of extra networks - ui refresh button now refreshes selected page, not all pages
- simplified handling of descriptions
now shows on-mouse-over without the need for user interaction - metadata and info buttons only show if there is actual content
- support for tags
- diffusers:
- add full support for textual inversions (embeddings)
this applies to both sd15 and sdxl
thanks @ai-casanova for porting compel/sdxl code - mix&match base and refiner models (experimental):
most of those are "because why not" and can result in corrupt images, but some are actually useful
also note that if youre not using actual refiner model, you need to bump refiner steps
as normal models are not designed to work with low step count
and if youre having issues, try setting prompt parser to "fixed attention" as majority of problems
are due to token mismatches when using prompt attention- any sd15 + any sd15
- any sd15 + sdxl-refiner
- any sdxl-base + sdxl-refiner
- any sdxl-base + any sd15
- any sdxl-base + any sdxl-base
- ability to interrupt (stop/skip) model generate
- added aesthetics score setting (for sdxl)
used to automatically guide unet towards higher pleasing images
highly recommended for simple prompts - added force zeros setting
create zero-tensor for prompt if prompt is empty (positive or negative)
- add full support for textual inversions (embeddings)
- general:
rembg
remove backgrounds support for is-net model- settings now show markers for all items set to non-default values
- metadata refactored how/what/when metadata is added to images
should result in much cleaner and more complete metadata - pre-create all system folders on startup
- handle model load errors gracefully
- improved vram reporting in ui
- improved script profiling (when running in debug mode)
Time for a quite a large update that has been leaking bit-by-bit over the past week or so...
Note: due to large changes, it is recommended to reset (delete) your ui-config.json
- diffusers:
- support for distilled sd models
just go to models/huggingface and download a model, for example:
segmind/tiny-sd
,segmind/small-sd
,segmind/portrait-finetuned
those are lower quality, but extremely small and fast
up to 50% faster than sd 1.5 and execute in as little as 2.1gb of vram
- support for distilled sd models
- general:
- redesigned settings
- new layout with separated sections:
settings, ui config, licenses, system info, benchmark, models - system info tab is now part of settings
when running outside of sdnext, system info is shown in main ui - all system and image paths are now relative by default
- add settings validation when performing load/save
- settings tab in ui now shows settings that are changed from default values
- settings tab switch to compact view
- new layout with separated sections:
- update gradio major version
this may result in some smaller layout changes since its a major version change
however, browser page load is now much faster - optimizations:
- optimize model hashing
- add cli param
--skip-all
that skips all installer checks
use at personal discretion, but it can be useful for bulk deployments - add model precompile option (when model compile is enabled)
- extra network folder info caching
results in much faster startup when you have large number of extra networks - faster xyz grid switching
especially when using different checkpoints
- update second pass options for clarity
- models:
- civitai download missing model previews
- add openvino (experimental) cpu optimized model compile and inference
enable with--use-openvino
thanks @disty0 - enable batch img2img scale-by workflows
now you can batch process with rescaling based on each individual original image size - fixes:
- fix extra networks previews
- css fixes
- improved extensions compatibility (e.g. sd-cn-animation)
- allow changing vae on-the-fly for both original and diffusers backend
- redesigned settings
Another release thats been baking in dev branch for a while...
- general:
- caching of extra network information to enable much faster create/refresh operations
thanks @midcoastal
- caching of extra network information to enable much faster create/refresh operations
- diffusers:
- add hires support (experimental)
applies to all model types that support img2img, including sd and sd-xl
also supports all hires upscaler types as well as standard params like steps and denoising strength
when used with sd-xl, it can be used with or without refiner loaded
how to enable - there are no explicit checkboxes other than second pass itself:- hires: upscaler is set and target resolution is not at default
- refiner: if refiner model is loaded
- images save options: before hires, before refiner
- redo
move model to cpu
logic in settings -> diffusers to be more reliable
note that system defaults have also changed, so you may need to tweak to your liking - update dependencies
- add hires support (experimental)
Smaller update, but with some breaking changes (to prepare for future larger functionality)...
- general:
- update all metadata saved with images
see https://github.com/vladmandic/automatic/wiki/Metadata for details - improved amd installer with support for navi 2x & 3x and rocm 5.4/5.5/5.6
thanks @evshiron - fix img2img resizing (applies to original, diffusers, hires)
- config change: main
config.json
no longer contains entire configuration
but only differences from defaults (similar to recent change performed toui-config.json
)
- update all metadata saved with images
- diffusers:
- enable batch img2img workflows
- original:
- new samplers: dpm++ 3M sde (standard and karras variations)
enable in settings -> samplers -> show samplers - expose always/never discard penultimate sigma
enable in settings -> samplers
- new samplers: dpm++ 3M sde (standard and karras variations)
This is a big one thats been cooking in dev
for a while now, but finally ready for release...
- diffusers:
- pipeline autodetect
if pipeline is set to autodetect (default for new installs), app will try to autodetect pipeline based on selected model
this should reduce user errors such as loading sd-xl model when sd pipeline is selected - quick vae decode as alternative to full vae decode which is very resource intensive
quick decode is based ontaesd
and produces lower quality, but its great for tests or grids as it runs much faster and uses far less vram
disabled by default, selectable in txt2img/img2img -> advanced -> full quality - prompt attention for sd and sd-xl
supports bothfull parser
and nativecompel
thanks @ai-casanova - advanced lora load/apply methods
in addition to standard lora loading that was recently added to sd-xl using diffusers, now we have- sequential apply (load & apply multiple loras in sequential manner) and
- merge and apply (load multiple loras and merge before applying to model)
see settings -> diffusers -> lora methods
thanks @hameerabbasi and @ai-casanova
- sd-xl vae from safetensors now applies correct config
result is that 3rd party vaes can be used without washed out colors - options for optimized memory handling for lower memory usage
see settings -> diffusers
- pipeline autodetect
if pipeline is set to autodetect (default for new installs), app will try to autodetect pipeline based on selected model
- general:
- new civitai model search and download
native support for civitai, integrated into ui as models -> civitai - updated requirements
this time its a bigger change so upgrade may take longer to install new requirements - improved extra networks performance with large number of networks
- new civitai model search and download
Another minor update, but it unlocks some cool new items...
- diffusers:
- vaesd live preview (sd and sd-xl)
- fix inpainting (sd and sd-xl)
- general:
- new torch 2.0 with ipex (intel arc)
- additional callbacks for extensions
enables latest comfyui extension
Smaller release, but IMO worth a post...
- diffusers:
- sd-xl loras are now supported!
- memory optimizations: Enhanced sequential CPU offloading, model CPU offload, FP16 VAE
- significant impact if running SD-XL (for example, but applies to any model) with only 8GB VRAM
- update packages
- minor bugfixes
This is a big one, new models, new diffusers, new features and updated UI...
First, SD-XL 1.0 is released and yes, SD.Next supports it out of the box!
Also fresh is new Kandinsky 2.2 model that does look quite nice:
Actual changelog is:
-
general:
- new loading screens and artwork
- major ui simplification for both txt2img and img2img
nothing is removed, but you can show/hide individual sections
default is very simple interface, but you can enable any sections and save it as default in settings - themes: add additional built-in theme,
amethyst-nightfall
- extra networks: add add/remove tags to prompt (e.g. lora activation keywords)
- extensions: fix couple of compatibility items
- firefox compatibility improvements
- minor image viewer improvements
- add backend and operation info to metadata
-
diffusers:
- were out of experimental phase and diffusers backend is considered stable
- sd-xl: support for sd-xl 1.0 official model
- sd-xl: loading vae now applies to both base and refiner and saves a bit of vram
- sd-xl: denoising_start/denoising_end
- sd-xl: enable dual prompts
dual prompt is used if set regardless if refiner is enabled/loaded
if refiner is loaded & enabled, refiner prompt will also be used for refiner pass- primary prompt goes to OpenAI CLIP-ViT/L-14
- refiner prompt goes to OpenCLIP-ViT/bigG-14
- kandinsky 2.2 support
note: kandinsky model must be downloaded using model downloader, not as safetensors due to specific model format - refiner: fix batch processing
- vae: enable loading of pure-safetensors vae files without config
also enable automatic selection to work with diffusers - sd-xl: initial lora support
right now this applies to official lora released by stability-ai, support for kohyas lora is expected soon - implement img2img and inpainting (experimental)
actual support and quality depends on model
it works as expected for sd 1.5, but not so much for sd-xl for now - implement limited stop/interrupt for diffusers works between stages, not within steps
- add option to save image before refiner pass
- option to set vae upcast in settings
- enable fp16 vae decode when using optimized vae
this pretty much doubles performance of decode step (delay after generate is done)
-
original
- fix hires secondary sampler
this now fully obsoletesfallback_sampler
andforce_hr_sampler_name
- fix hires secondary sampler
While were waiting for official SD-XL release, heres another update with some fixes and enhancements...
- global
- image save: option to add invisible image watermark to all your generated images
disabled by default, can be enabled in settings -> image options
watermark information will be shown when loading image such as in process image tab
also additional cli utility/cli/image-watermark.py
to read/write/strip watermarks from images - batch processing: fix metadata saving, also allow to drag&drop images for batch processing
- ui configuration: you can modify all ui default values from settings as usual,
but only values that are non-default will be written toui-config.json
- startup: add cmd flag to skip all
torch
checks - startup: force requirements check on each server start
there are too many misbehaving extensions that change system requirements - internal: safe handling of all config file read/write operations
this allows sdnext to run in fully shared environments and prevents any possible configuration corruptions
- image save: option to add invisible image watermark to all your generated images
- diffusers:
- sd-xl: remove image watermarks autocreated by 0.9 model
- vae: enable loading of external vae, documented in diffusers wiki
and mix&match continues, you can even use sd-xl vae with sd 1.5 models! - samplers: add concept of default sampler to avoid needing to tweak settings for primary or second pass
note that sampler details will be printed in log when running in debug level - samplers: allow overriding of sampler beta values in settings
- refiner: fix refiner applying only to first image in batch
- refiner: allow using direct latents or processed output in refiner
- model: basic support for one more model: UniDiffuser
download using model downloader:thu-ml/unidiffuser-v1
and set resolution to 512x512
Trying to unify settings for both original and diffusers backend without introducing duplicates...
- renamed hires fix to second pass
as that is what it actually is, name hires fix is misleading to start with - actual hires fix and refiner are now options inside second pass section
- obsoleted settings -> sampler -> force_hr_sampler_name
it is now part of second pass options and it works the same for both original and diffusers backend
which means you can use different scheduler settings for txt2img and hires if you want - sd-xl refiner will run if its loaded and if second pass is enabled
so you can quickly enable/disable refiner by simply enabling/disabling second pass - you can mix&match model and refiner
for example, you can generate image using sd 1.5 and still use sd-xl refiner as second pass - reorganized settings -> samplers to show which section refers to which backend
- added diffusers lmsd sampler
Another big one, but now improvements to both diffusers and original backends as well plus ability to dynamically switch between them!
- swich backend between diffusers and original on-the-fly
- you can still use
--backend <backend>
and now that only means in which mode app will start, but you can change it anytime in ui settings - for example, you can even do things like generate image using sd-xl,
then switch to original backend and perform inpaint using a different model
- you can still use
- diffusers backend:
- separate ui settings for refiner pass with sd-xl
you can specify: prompt, negative prompt, steps, denoise start - fix loading from pure safetensors files
now you can load sd-xl from safetensors file or from huggingface folder format - fix kandinsky model (2.1 working, 2.2 was just released and will be soon)
- separate ui settings for refiner pass with sd-xl
- original backend:
- improvements to vae/unet handling as well as cross-optimization heads
in non-technical terms, this means lower memory usage and higher performance
and you should be able to generate higher resolution images without any other changes
- improvements to vae/unet handling as well as cross-optimization heads
- other:
- major refactoring of the javascript code
includes fixes for text selections and navigation - system info tab now reports on nvidia driver version as well
- minor fixes in extra-networks
- installer handles origin changes for submodules
- major refactoring of the javascript code
big thanks to @huggingface team for great communication, support and fixing all the reported issues asap!
Service release with some fixes and enhancements:
- diffusers:
- option to move base and/or refiner model to cpu to free up vram
- model downloader options to specify model variant / revision / mirror
- now you can download
fp16
variant directly for reduced memory footprint - basic img2img workflow (sketch and inpaint are not supported yet)
note that sd-xl img2img workflows are architecturaly different so it will take longer to implement - updated hints for settings
- extra networks:
- fix corrupt display on refesh when new extra network type found
- additional ui tweaks
- generate thumbnails from previews only if preview resolution is above 1k
- image viewer:
- fixes for non-chromium browsers and mobile users and add option to download image
- option to download image directly from image viewer
- general
- fix startup issue with incorrect config
- installer should always check requirements on upgrades
This is a massive update which has been baking in a dev
branch for a while now
- merge experimental diffusers support
TL;DR: Yes, you can run SD-XL model in SD.Next now
For details, see Wiki page: Diffusers
Note this is still experimental, so please follow Wiki
Additional enhancements and fixes will be provided over the next few days
Thanks to @huggingface team for making this possible and our internal @team for all the early testing
Release also contains number of smaller updates:
- add pan & zoom controls (touch and mouse) to image viewer (lightbox)
- cache extra networks between tabs
this should result in neat 2x speedup on building extra networks - add settings -> extra networks -> do not automatically build extra network pages
speeds up app start if you have a lot of extra networks and you want to build them manually when needed - extra network ui tweaks
Small quality-of-life updates and bugfixes:
- add option to disallow usage of ckpt checkpoints
- change lora and lyco dir without server restart
- additional filename template fields:
uuid
,seq
,image_hash
- image toolbar is now shown only when image is present
- image
Zip
button gone and its not optional setting that applies to standardSave
button - folder
Show
button is present only when working on localhost,
otherwise its replaced withCopy
that places image URLs on clipboard so they can be used in other apps
A bit bigger update this time, but contained to specific areas...
- change in behavior
extensions no longer auto-update on startup
using--upgrade
flag upgrades core app as well as all submodules and extensions - live server log monitoring in ui
configurable via settings -> live preview - new extra networks interface
note: if youre using a 3rd party ui extension for extra networks, it will likely need to be updated to work with new interface- display in front of main ui, inline with main ui or as a sidebar
- lazy load thumbnails
drastically reduces load times for large number of extra networks - auto-create thumbnails from preview images in extra networks in a background thread
significant load time saving on subsequent restarts - support for info files in addition to description files
- support for variable aspect-ratio thumbnails
- new folder view
- extensions sort by trending
- add requirements check for training
- new training tab interface
- redesigned preprocess, train embedding, train hypernetwork
- new models tab interface
- new model convert functionality, thanks @akegarasu
- new model verify functionality
- lot of ipex specific fixes/optimizations, thanks @disty0
This one is less relevant for standard users, but pretty major if youre running an actual server
But even if not, it still includes bunch of cumulative fixes since last release - and going by number of new issues, this is probably the most stable release so far...
(next one is not going to be as stable, but it will be fun :) )
- minor improvements to extra networks ui
- more hints/tooltips integrated into ui
- new dedicated api server
- but highly promising for high throughput server
- improve server logging and monitoring with
- server log file rotation
- ring buffer with api endpoint
/sdapi/v1/log
- real-time status and load endpoint
/sdapi/v1/system-info/status
Second stage of a jumbo merge from upstream plus few minor changes...
- simplify token merging
- reorganize some settings
- all updates from upstream: A1111 v1.3.2 [df004be] (latest release)
pretty much nothing major that i havent released in previous versions, but its still a long list of tiny changes- skipped/did-not-port:
add separate hires prompt: unnecessarily complicated and spread over large number of commits due to many regressions
allow external scripts to add cross-optimization methods: dangerous and i dont see a use case for it so far
load extension info in threads: unnecessary as other optimizations ive already put place perform equally good - broken/reverted:
sub-quadratic optimization changes
- skipped/did-not-port:
Just a day later and one bigger update... Both some new functionality as well as massive merges from upstream
- new cache for models/lora/lyco metadata:
metadata.json
drastically reduces disk access on app startup - allow saving/resetting of ui default values
settings -> ui defaults - ability to run server without loaded model
default is to auto-load model on startup, can be changed in settings -> stable diffusion
if disabled, model will be loaded on first request, e.g. when you click generate
useful when you want to start server to perform other tasks like upscaling which do not rely on model - updated
accelerate
andxformers
- huge nubmer of changes ported from A1111 upstream
this was a massive merge, hopefully this does not cause any regressions
and still a bit more pending...
- updated ui labels and hints to improve clarity and provide some extra info
this is 1st stage of the process, more to come...
if you want to join the effort, see #1246 - new localization and hints engine
how hints are displayed can be selected in settings -> ui - reworked installer sequence
as some extensions are loading packages directly from their preload sequence
which was preventing some optimizations to take effect - updated settings tab functionality, thanks @gegell
with real-time monitor for all new and/or updated settings - launcher will now warn if application owned files are modified
you are free to add any user files, but do not modify app files unless youre sure in what youre doing - add more profiling for scripts/extensions so you can see what takes time
this applies both to initial load as well as execution - experimental
sd_model_dict
setting which allows you to load model dictionary
from one model and apply weights from another model specified insd_model_checkpoint
results? who am i to judge :)
Few new features and extra handling for broken extensions
that caused my phone to go crazy with notifications over the weekend...
- added extra networks to xyz grid options
now you can have more fun with all your embeddings and loras :) - new vae decode method to help with larger batch sizes, thanks @bigdog
- new setting -> lora -> use lycoris to handle all lora types
this is still experimental, but the goal is to obsolete old built-in lora module
as it doesnt understand many new loras and built-in lyco module can handle it all - somewhat optimize browser page loading
still slower than id want, but gradio is pretty bad at this - profiling of scripts/extensions callbacks
you can now see how much or pre/post processing is done, not just how long generate takes - additional exception handling so bad exception does not crash main app
- additional background removal models
- some work on bfloat16 which nobody really should be using, but why not 🙂
Some quality-of-life improvements while working on larger stuff in the background...
- redesign action box to be uniform across all themes
- add pause option next to stop/skip
- redesigned progress bar
- add new built-in extension: agent-scheduler
very elegant way to getting full queueing capabilities, thank @artventurdev - enable more image formats
note: not all are understood by browser so previews and images may appear as blank
unless you have some browser extensions that can handle them
but they are saved correctly. and cant beat raw quality of 32-bittiff
orpsd
:) - change in behavior:
xformers
will be uninstalled on startup if they are not active
if you do havexformers
selected as your desired cross-optimization method, then they will be used
reason is that a lot of libaries try to blindly import xformers even if they are not selected or not functional
Another bigger one...And more to come in the next few days...
- new live preview mode: taesd
i really like this one, so its enabled as default for new installs - settings search feature
- new sampler: dpm++ 2m sde
- fully common save/zip/delete (new) options in all tabs
which (again) meant rework of process image tab - system info tab: live gpu utilization/memory graphs for nvidia gpus
- updated controlnet interface
- minor style changes
- updated lora, swinir, scunet and ldsr code from upstream
- start of merge from a1111 v1.3
Some quality-of-life improvements...
- updated README
- created CHANGELOG
this will be the source for all info about new things moving forward
and cross-posted to Discussions#99 as well as discord announcements - optimize model loading on startup
this should reduce startup time significantly - set default cross-optimization method for each platform backend
applicable for new installs onlycuda
=> Scaled-Dot-Productrocm
=> Sub-quadraticdirectml
=> Sub-quadraticipex
=> invokeaismps
=> Doggettxscpu
=> Doggettxs
- optimize logging
- optimize profiling
now includes startup profiling as well ascuda
profiling during generate - minor lightbox improvements
- bugfixes...i dont recall when was a release with at least several of those
other than that - first stage of Diffusers integration is now in master branch
i dont recommend anyone to try it (and dont even think reporting issues for it)
but if anyone wants to contribute, take a look at project page
Major internal work with perhaps not that much user-facing to show for it ;)
- update core repos: stability-ai, taming-transformers, k-diffusion, blip, codeformer
note: to avoid disruptions, this is applicable for new installs only - tested with torch 2.1, cuda 12.1, cudnn 8.9
(production remains on torch2.0.1+cuda11.8+cudnn8.8) - fully extend support of
--data-dir
allows multiple installations to share pretty much everything, not just models
especially useful if you want to run in a stateless container or cloud instance - redo api authentication
now api authentication will use same user/pwd (if specified) for ui and strictly enforce it using httpbasicauth
new authentication is also fully supported in combination with ssl for both sync and async calls
if you want to use api programatically, see examples incli/sdapi.py
- add dark/light theme mode toggle
- redo some
clip-skip
functionality - better matching for vae vs model
- update to
xyz grid
to allow creation of large number of images without creating grid itself - update
gradio
(again) - more prompt parser optimizations
- better error handling when importing image settings which are not compatible with current install
for example, when upscaler or sampler originally used is not available - fixes...amazing how many issues were introduced by porting a1111 v1.20 code without adding almost no new functionality
next one is v1.30 (still in dev) which does bring a lot of new features
This is a massive one due to huge number of changes,
but hopefully it will go ok...
- new prompt parsers
select in UI -> Settings -> Stable Diffusion- Full: my new implementation
- A1111: for backward compatibility
- Compel: as used in ComfyUI and InvokeAI (a.k.a Temporal Weighting)
- Fixed: for really old backward compatibility
- monitor extensions install/startup and
log if they modify any packages/requirements
this is a deep-experimental python hack, but i think its worth it as extensions modifying requirements
is one of most common causes of issues - added
--safe
command line flag mode which skips loading user extensions
please try to use it before opening new issue - reintroduce
--api-only
mode to start server without ui - port all upstream changes from A1111
up to today - commit hash89f9faa
- major work on prompt parsing
this can cause some differences in results compared to what youre used to, but its all about fixes & improvements
- prompt parser was adding commas and spaces as separate words and tokens and/or prefixes
- negative prompt weight using
[word:weight]
was ignored, it was always0.909
- bracket matching was anything but correct. complex nested attention brackets are now working.
- btw, if you run with
--debug
flag, youll now actually see parsed prompt & schedule
- updated all scripts in
/cli
- add option in settings to force different latent sampler instead of using primary only
- add interrupt/skip capabilities to process images
This is mostly about optimizations...
- improved
torch-directml
support
especially interesting for amd users on windows where torch+rocm is not yet available
dont forget to run using--use-directml
or default is cpu - improved compatibility with nvidia rtx 1xxx/2xxx series gpus
- fully working
torch.compile
with torch 2.0.1
usinginductor
compile takes a while on first run, but does result in 5-10% performance increase - improved memory handling
for highest performance, you can also disable aggressive gc in settings - improved performance
especially after generate as image handling has been moved to separate thread - allow per-extension updates in extension manager
- option to reset configuration in settings
- brand new extension manager
this is pretty much a complete rewrite, so new issues are possible - support for
torch
2.0.1
note that if you are experiencing frequent hangs, this may be a worth a try - updated
gradio
to 3.29.0 - added
--reinstall
flag to force reinstall of all packages - auto-recover & re-attempt when
--upgrade
is requested but fails - check for duplicate extensions
Back online with few updates:
- bugfixes. yup, quite a lot of those
- auto-detect some cpu/gpu capabilities on startup
this should reduce need to tweak and tune settings like no-half, no-half-vae, fp16 vs fp32, etc - configurable order of top level tabs
- configurable order of scripts in txt2img and img2img
for both, see sections in ui-> settings -> user interface
Again, few days later...
- reviewed/ported all commits from A1111 upstream
some a few are not applicable as i already have alternative implementations
and very few i choose not to implement (save/restore last-known-good-config is a bad hack)
otherwise, were fully up to date (it doesnt show on fork status as code merges were mostly manual due to conflicts)
but...due to sheer size of the updates, this may introduce some temporary issues - redesigned server restart function
now available and working in ui
actually, since server restart is now a true restart and not ui restart, it can be used much more flexibly - faster model load
plus support for slower devices via stream-load function (in ui settings) - better logging
this includes new--debug
flag for more verbose logging when troubleshooting
Been a bit quieter for last few days as changes were quite significant, but finally here we are...
- Updated core libraries: Gradio, Diffusers, Transformers
- Added support for Intel ARC GPUs via Intel OneAPI IPEX (auto-detected)
- Added support for TorchML (set by default when running on non-compatible GPU or on CPU)
- Enhanced support for AMD GPUs with ROCm
- Enhanced support for Apple M1/M2
- Redesigned command params: run
webui --help
for details - Redesigned API and script processing
- Experimental support for multiple Torch compile options
- Improved sampler support
- Google Colab: https://colab.research.google.com/drive/126cDNwHfifCyUpCCQF9IHpEdiXRfHrLN
Maintained by https://github.com/Linaqruf/sd-notebook-collection - Fixes, fixes, fixes...
To take advantage of new out-of-the-box tunings, its recommended to delete your config.json
so new defaults are applied. its not necessary, but otherwise you may need to play with UI Settings to get the best of Intel ARC, TorchML, ROCm or Apple M1/M2.
a bit shorter list as:
- ive been busy with bugfixing
there are a lot of them, not going to list each here.
but seems like critical issues backlog is quieting down and soon i can focus on new features development. - ive started collaboration with couple of major projects, hopefully this will accelerate future development.
whats new:
- ability to view/add/edit model description shown in extra networks cards
- add option to specify fallback sampler if primary sampler is not compatible with desired operation
- make clip skip a local parameter
- remove obsolete items from UI settings
- set defaults for AMD ROCm
if you have issues, you may want to start with a fresh install so configuration can be created from scratch - set defaults for Apple M1/M2
if you have issues, you may want to start with a fresh install so configuration can be created from scratch
- update process image -> info
- add VAE info to metadata
- update GPU utility search paths for better GPU type detection
- update git flags for wider compatibility
- update environment tuning
- update ti training defaults
- update VAE search paths
- add compatibility opts for some old extensions
- validate script args for always-on scripts
fixes: deforum with controlnet
- identify race condition where generate locks up while fetching preview
- add pulldowns to x/y/z script
- add VAE rollback feature in case of NaNs
- use samples format for live preview
- add token merging
- use Approx NN for live preview
- create default
styles.csv
- fix setup not installing
tensorflow
dependencies - update default git flags to reduce number of warnings
- fix VAE dtype
should fix most issues with NaN or black images - add built-in Gradio themes
- reduce requirements
- more AMD specific work
- initial work on Apple platform support
- additional PR merges
- handle torch cuda crashing in setup
- fix setup race conditions
- fix ui lightbox
- mark tensorflow as optional
- add additional image name templates
- autodetect which system libs should be installed
this is a first pass of autoconfig for nVidia vs AMD environments - fix parse cmd line args from extensions
- only install
xformers
if actually selected as desired cross-attention method - do not attempt to use
xformers
orsdp
if running on cpu - merge tomesd token merging
- merge 23 PRs pending from a1111 backlog (!!)
expect shorter updates for the next few days as ill be partially ooo
- full CUDA tuning section in UI Settings
- improve exif/pnginfo metadata parsing
it can now handle 3rd party images or images edited in external software - optimized setup performance and logging
- improve compatibility with some 3rd party extensions for example handle extensions that install packages directly from github urls
- fix initial model download if no models found
- fix vae not found issues
- fix multiple git issues
note: if you previously had command line optimizations such as --no-half, those are now ignored and moved to ui settings
- fix live preview
- fix model merge
- fix handling of user-defined temp folders
- fix submit benchmark
- option to override
torch
andxformers
installer - separate benchmark data for system-info extension
- minor css fixes
- created initial merge backlog from pending prs on a1111 repo
see #258 for details
- reconnect ui to active session on browser restart
this is one of most frequently asked for items, finally figured it out
works for text and image generation, but not for process as there is no progress bar reported there to start with - force unload
xformers
when not used
improves compatibility with AMD/M1 platforms - add
styles.csv
to UI settings to allow customizing path - add
--skip-git
to cmd flags for power users that want
to skip all git checks and operations and perform manual updates - add
--disable-queue
to cmd flags that disables Gradio queues (experimental) this forces it to use HTTP instead of WebSockets and can help on unreliable network connections - set scripts & extensions loading priority and allow custom priorities
fixes random extension issues:
ScuNet
upscaler disappearing,Additional Networks
not showing up on XYZ axis, etc. - improve html loading order
- remove some
asserts
causing runtime errors and replace with user-friendly messages - update README.md
- themes are now dynamic and discovered from list of available gradio themes on huggingface
its quite a list of 30+ supported themes so far - added option to see theme preview without the need to apply it or restart server
- integrated image info functionality into process image tab and removed separate image info tab
- more installer improvements
- fix urls
- updated github integration
- make model download as optional if no models found
- support for ui themes! to to settings -> user interface -> "ui theme* includes 12 predefined themes
- ability to restart server from ui
- updated requirements
- removed
styles.csv
from repo, its now fully under user control - removed model-keyword extension as overly aggressive
- rewrite of the fastapi middleware handlers
- install bugfixes, hopefully new installer is now ok
i really want to focus on features and not troubleshooting installer
- update default values
- remove
ui-config.json
from repo, its now fully under user control - updated extensions manager
- updated locon/lycoris plugin
- enable quick launch by default
- add multidiffusion upscaler extensions
- add model keyword extension
- enable strong linting
- fix circular imports
- fix extensions updated
- fix git update issues
- update github templates
- handle duplicate extensions
- redo exception handler
- fix generate forever
- enable cmdflags compatibility
- change default css font
- fix ti previews on initial start
- enhance tracebacks
- pin transformers version to last known good version
- fix extension loader
This has been pending for a while, but finally uploaded some massive changes
- New launcher
webui.bat
andwebui.sh
:
Platform specific wrapper scripts that startslaunch.py
in Python virtual environment
Note: Server can run without virtual environment, but it is recommended to use it
This is carry-over from original repo
If youre unsure which launcher to use, this is the one you wantlaunch.py
:
Main startup script
Can be used directly to start server in manually activatedvenv
or to run it withoutvenv
installer.py
:
Main installer, used bylaunch.py
webui.py
:
Main server script
- New logger
- New exception handler
- Built-in performance profiler
- New requirements handling
- Move of most of command line flags into UI Settings