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PyTorch Lightning + Hydra. A very general, feature-rich template for rapid and scalable ML experimentation with best practices. ⚡🔥⚡

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Lightning-Hydra-Template

Python PyTorch Lightning Config: hydra Code style: black

A clean and scalable template to kickstart your deep learning project 🚀⚡🔥
Click on Use this template to initialize new repository.

Suggestions are always welcome!



📌  Introduction

This template tries to be as general as possible - you can easily delete any unwanted features from the pipeline or rewire the configuration, by modifying behavior in src/train.py.

Effective usage of this template requires learning of a couple of technologies: PyTorch, PyTorch Lightning and Hydra. Knowledge of some experiment logging framework like Weights&Biases, Neptune or MLFlow is also recommended.

Why you should use it: it allows you to rapidly iterate over new models/datasets and scale your projects from small single experiments to hyperparameter searches on computing clusters, without writing any boilerplate code. To my knowledge, it's one of the most convenient all-in-one technology stack for Deep Learning research. Good starting point for reproducing papers, kaggle competitions or small-team research projects. It's also a collection of best practices for efficient workflow and reproducibility.

Why you shouldn't use it: Lightning and Hydra are not yet mature, which means you might run into some bugs sooner or later. Also, even though Lightning is very flexible, it's not well suited for every possible deep learning task.

Why PyTorch Lightning?

PyTorch Lightning is a lightweight PyTorch wrapper for high-performance AI research. It makes your code neatly organized and provides lots of useful features, like ability to run model on CPU, GPU, multi-GPU cluster and TPU.

Why Hydra?

Hydra is an open-source Python framework that simplifies the development of research and other complex applications. The key feature is the ability to dynamically create a hierarchical configuration by composition and override it through config files and the command line. It allows you to conveniently manage experiments and provides many useful plugins, like Optuna Sweeper for hyperparameter search, or Ray Launcher for running jobs on a cluster.


Main Ideas Of This Template

  • Predefined Structure: clean and scalable so that work can easily be extended and replicated (see #Project Structure)
  • Rapid Experimentation: thanks to automating pipeline with config files and hydra command line superpowers (see #Your Superpowers)
  • Little Boilerplate: so pipeline can be easily modified (see src/train.py)
  • Main Configuration: main config file specifies default training configuration (see #Main Project Configuration)
  • Experiment Configurations: stored in a separate folder, they can be composed out of smaller configs, override chosen parameters or define everything from scratch (see #Experiment Configuration)
  • Workflow: comes down to 4 simple steps (see #Workflow)
  • Experiment Tracking: many logging frameworks can be easily integrated! (see #Experiment Tracking)
  • Logs: all logs (checkpoints, data from loggers, chosen hparams, etc.) are stored in a convenient folder structure imposed by Hydra (see #Logs)
  • Hyperparameter Search: made easier with Hydra built in plugins like Optuna Sweeper (see #Hyperparameter Search)
  • Tests: unit tests and command based tests (see #Tests)
  • Extra Features: optional utilities to make your life easier (see #Extra Features)
  • Best Practices: a couple of recommended tools, practices and standards for efficient workflow and reproducibility (see #Best Practices)

Project Structure

The directory structure of new project looks like this:

├── bash                    <- Bash scripts
│   ├── setup_conda.sh          <- Setup conda environment
│   └── schedule.sh             <- Schedule execution of many runs
│
├── configs                 <- Hydra configuration files
│   ├── callbacks               <- Callbacks configs
│   ├── datamodule              <- Datamodule configs
│   ├── experiment              <- Experiment configs
│   ├── hparams_search          <- Hyperparameter search configs
│   ├── hydra                   <- Hydra related configs
│   ├── logger                  <- Logger configs
│   ├── model                   <- Model configs
│   ├── trainer                 <- Trainer configs
│   │
│   └── config.yaml             <- Main project configuration file
│
├── data                    <- Project data
│
├── logs                    <- Logs generated by Hydra and PyTorch Lightning loggers
│
├── notebooks               <- Jupyter notebooks. Naming convention is a number (for ordering),
│                              the creator's initials, and a short `-` delimited description, e.g.
│                              `1.0-jqp-initial-data-exploration.ipynb`.
│
├── tests                   <- Tests of any kind
│   ├── helpers                 <- A couple of testing utilities
│   ├── shell                   <- Shell/command based tests
│   └── unit                    <- Unit tests
│
├── src
│   ├── callbacks               <- Lightning callbacks
│   ├── datamodules             <- Lightning datamodules
│   ├── models                  <- Lightning models
│   ├── utils                   <- Utility scripts
│   │
│   └── train.py                <- Training pipeline
│
├── run.py                  <- Run pipeline with chosen experiment configuration
│
├── .env.example            <- Template of the file for storing private environment variables
├── .gitignore              <- List of files/folders ignored by git
├── .pre-commit-config.yaml <- Configuration of automatic code formatting
├── setup.cfg               <- Configurations of linters and pytest
├── Dockerfile              <- File for building docker container
├── requirements.txt        <- File for installing python dependencies
├── LICENSE
└── README.md

🚀  Quickstart

# clone project
git clone https://github.com/ashleve/lightning-hydra-template
cd lightning-hydra-template

# [OPTIONAL] create conda environment
bash bash/setup_conda.sh

# install requirements
pip install -r requirements.txt

Template contains example with MNIST classification.
When running python run.py you should see something like this:

⚡  Your Superpowers

(click to expand)

Override any config parameter from command line

Hydra allows you to easily overwrite any parameter defined in your config.

python run.py trainer.max_epochs=20 model.lr=1e-4

You can also add new parameters with + sign.

python run.py +model.new_param="uwu"
Train on CPU, GPU, multi-GPU and TPU

PyTorch Lightning makes it easy to train your models on different hardware.

# train on CPU
python run.py trainer.gpus=0

# train on 1 GPU
python run.py trainer.gpus=1

# train on TPU
python run.py +trainer.tpu_cores=8

# train with DDP (Distributed Data Parallel) (4 GPUs)
python run.py trainer.gpus=4 +trainer.accelerator='ddp'

# train with DDP (Distributed Data Parallel) (8 GPUs, 2 nodes)
python run.py trainer.gpus=4 +trainer.num_nodes=2 +trainer.accelerator='ddp'
Train with mixed precision
# train with mixed precision (Apex level O1)
python run.py trainer.gpus=1 +trainer.amp_backend="apex" +trainer.precision=16 \
+trainer.amp_level="O1"

# train with mixed precision (Apex level O2)
python run.py trainer.gpus=1 +trainer.amp_backend="apex" +trainer.precision=16 \
+trainer.amp_level="O2"
Train model with any logger available in PyTorch Lightning, like Weights&Biases

PyTorch Lightning provides convenient integrations with most popular logging frameworks. Read more here. Using wandb requires you to setup account first. After that just complete the config as below.
Click here to see example wandb dashboard generated with this template.

# set project and entity names in `configs/logger/wandb`
wandb:
    project: "your_project_name"
    entity: "your_wandb_team_name"
# train model with Weights&Biases
# link to wandb dashboard should appear in the terminal
python run.py logger=wandb
Train model with chosen experiment config

Experiment configurations are placed in configs/experiment/.

python run.py experiment=example_simple
Attach some callbacks to run

Callbacks can be used for things such as as model checkpointing, early stopping and many more.
Callbacks configurations are placed in configs/callbacks/.

python run.py callbacks=default
Use different tricks available in Pytorch Lightning

PyTorch Lightning provides about 40+ useful trainer flags.

# gradient clipping may be enabled to avoid exploding gradients
python run.py +trainer.gradient_clip_val=0.5

# stochastic weight averaging can make your models generalize better
python run.py +trainer.stochastic_weight_avg=true

# run validation loop 4 times during a training epoch
python run.py +trainer.val_check_interval=0.25

# accumulate gradients
python run.py +trainer.accumulate_grad_batches=10

# terminate training after 12 hours
python run.py +trainer.max_time="00:12:00:00"
Easily debug
# run 1 train, val and test loop, using only 1 batch
python run.py debug=true

# print full weight summary of all PyTorch modules
python run.py trainer.weights_summary="full"

# print execution time profiling after training ends
python run.py +trainer.profiler="simple"

# raise exception, if any of the parameters or the loss are NaN or +/-inf
python run.py +trainer.terminate_on_nan=true

# try overfitting to 1 batch
python run.py +trainer.overfit_batches=1 trainer.max_epochs=20

# use only 20% of the data
python run.py +trainer.limit_train_batches=0.2 \
+trainer.limit_val_batches=0.2 +trainer.limit_test_batches=0.2

# log second gradient norm of the model
python run.py +trainer.track_grad_norm=2
Resume training from checkpoint

Checkpoint can be either path or URL. Path should be absolute!

python run.py +trainer.resume_from_checkpoint="/absolute/path/to/ckpt/name.ckpt"

⚠️ Currently loading ckpt in Lightning doesn't resume logger experiment, but it will be supported in future Lightning release.

Create a sweep over hyperparameters
# this will run 6 experiments one after the other,
# each with different combination of batch_size and learning rate
python run.py -m datamodule.batch_size=32,64,128 model.lr=0.001,0.0005

⚠️ Currently sweeps aren't failure resistant (if one job crashes than the whole sweep crashes), but it will be supported in future Hydra release.

Create a sweep over hyperparameters with Optuna

Using Optuna Sweeper plugin doesn't require you to code any boilerplate into your pipeline, everything is defined in a single config file!

# this will run hyperparameter search defined in `configs/hparams_search/mnist_optuna.yaml`
# over chosen experiment config
python run.py -m hparams_search=mnist_optuna experiment=example_simple
Execute all experiments from folder

Hydra provides special syntax for controlling behavior of multiruns. Learn more here. The command below executes all experiments from folder configs/experiment/.

python run.py -m 'experiment=glob(*)'
Execute sweep on a remote AWS cluster

This should be achievable with simple config using Ray AWS launcher for Hydra. Example is not yet implemented in this template.

Execute sweep on a SLURM cluster

This should be achievable with either the right lightning trainer flags or simple config using Submitit launcher for Hydra. Example is not yet implemented in this template.

Use Hydra tab completion

Hydra allows you to autocomplete config argument overrides in shell as you write them, by pressing tab key. Learn more here.


🐳  Docker

First you will need to install Nvidia Container Toolkit to enable GPU support.
To build the container from provided Dockerfile use:

docker build -t <project_name> .

To mount the project to the container use:

docker run -v $(pwd):/workspace/project --gpus all -it --rm <project_name>

Uncomment Apex in Dockerfile for mixed-precision support.


❤️  Contributions

Have a question? Found a bug? Missing a specific feature? Ran into a problem? Feel free to file a new issue or PR with respective title and description. If you already found a solution to your problem, don't hesitate to share it. Suggestions for new best practices and tricks are always welcome!



ℹ️  Guide

How To Get Started


How it works

By design, every run is initialized by run.py file. All PyTorch Lightning modules are dynamically instantiated from module paths specified in config. Example model config:

_target_: src.models.mnist_model.MNISTLitModel
input_size: 784
lin1_size: 256
lin2_size: 256
lin3_size: 256
output_size: 10
lr: 0.001

Using this config we can instantiate the object with the following line:

model = hydra.utils.instantiate(config.model)

This allows you to easily iterate over new models!
Every time you create a new one, just specify its module path and parameters in appriopriate config file.
The whole pipeline managing the instantiation logic is placed in src/train.py.


Main Project Configuration

Location: configs/config.yaml
Main project config contains default training configuration.
It determines how config is composed when simply executing command python run.py.
It also specifies everything that shouldn't be managed by experiment configurations.

Show main project configuration
# specify here default training configuration
defaults:
    - trainer: default.yaml
    - model: mnist_model.yaml
    - datamodule: mnist_datamodule.yaml
    - callbacks: default.yaml  # set this to null if you don't want to use callbacks
    - logger: null  # set logger here or use command line (e.g. `python run.py logger=wandb`)

    - hydra: default.yaml

    - experiment: null
    - hparams_search: null


# path to original working directory
# hydra hijacks working directory by changing it to the current log directory,
# so it's useful to have this path as a special variable
# learn more here: https://hydra.cc/docs/next/tutorials/basic/running_your_app/working_directory
work_dir: ${hydra:runtime.cwd}


# path to folder with data
data_dir: ${work_dir}/data/


# pretty print config at the start of the run using Rich library
print_config: True


# disable python warnings if they annoy you
ignore_warnings: True

Experiment Configuration

Location: configs/experiment
You should store all your experiment configurations in this folder.
Experiment configurations allow you to overwrite parameters from main project configuration.

Simple example

# to execute this experiment run:
# python run.py experiment=example_simple

defaults:
    - override /trainer: default.yaml
    - override /model: mnist_model.yaml
    - override /datamodule: mnist_datamodule.yaml
    - override /callbacks: default.yaml
    - override /logger: null

# all parameters below will be merged with parameters from default configurations set above
# this allows you to overwrite only specified parameters

seed: 12345

trainer:
    max_epochs: 10
    gradient_clip_val: 0.5

model:
    lin1_size: 128
    lin2_size: 256
    lin3_size: 64
    lr: 0.005

datamodule:
    train_val_test_split: [55_000, 5_000, 10_000]
    batch_size: 64
Show advanced example
# to execute this experiment run:
# python run.py experiment=example_full

defaults:
    - override /trainer: null
    - override /model: null
    - override /datamodule: null
    - override /callbacks: null
    - override /logger: null

# we override default configurations with nulls to prevent them from loading at all
# instead we define all modules and their paths directly in this config,
# so everything is stored in one place

seed: 12345

trainer:
    _target_: pytorch_lightning.Trainer
    gpus: 0
    min_epochs: 1
    max_epochs: 10
    gradient_clip_val: 0.5

model:
    _target_: src.models.mnist_model.MNISTLitModel
    lr: 0.001
    weight_decay: 0.00005
    input_size: 784
    lin1_size: 256
    lin2_size: 256
    lin3_size: 128
    output_size: 10

datamodule:
    _target_: src.datamodules.mnist_datamodule.MNISTDataModule
    data_dir: ${data_dir}
    train_val_test_split: [55_000, 5_000, 10_000]
    batch_size: 64
    num_workers: 0
    pin_memory: False

logger:
    wandb:
        _target_: pytorch_lightning.loggers.wandb.WandbLogger
        project: "lightning-hydra-template"
        tags: ["best_model", "uwu"]
        notes: "Description of this model."

Workflow

  1. Write your PyTorch Lightning model (see mnist_model.py for example)
  2. Write your PyTorch Lightning datamodule (see mnist_datamodule.py for example)
  3. Write your experiment config, containing paths to your model and datamodule
  4. Run training with chosen experiment config: python run.py experiment=experiment_name

Logs

Hydra creates new working directory for every executed run.
By default, logs have the following structure:

│
├── logs
│   ├── runs                    # Folder for logs generated from single runs
│   │   ├── 2021-02-15              # Date of executing run
│   │   │   ├── 16-50-49                # Hour of executing run
│   │   │   │   ├── .hydra                  # Hydra logs
│   │   │   │   ├── wandb                   # Weights&Biases logs
│   │   │   │   ├── checkpoints             # Training checkpoints
│   │   │   │   └── ...                     # Any other thing saved during training
│   │   │   ├── ...
│   │   │   └── ...
│   │   ├── ...
│   │   └── ...
│   │
│   └── multiruns               # Folder for logs generated from multiruns (sweeps)
│       ├── 2021-02-15_16-50-49     # Date and hour of executing sweep
│       │   ├── 0                       # Job number
│       │   │   ├── .hydra                  # Hydra logs
│       │   │   ├── wandb                   # Weights&Biases logs
│       │   │   ├── checkpoints             # Training checkpoints
│       │   │   └── ...                     # Any other thing saved during training
│       │   ├── 1
│       │   ├── 2
│       │   └── ...
│       ├── ...
│       └── ...
│

You can change this structure by modifying paths in hydra configuration.

Experiment Tracking

PyTorch Lightning supports the most popular logging frameworks:
Weights&Biases · Neptune · Comet · MLFlow · Aim · Tensorboard

These tools help you keep track of hyperparameters and output metrics and allow you to compare and visualize results. To use one of them simply complete its configuration in configs/logger and run:

python run.py logger=logger_name

You can use many of them at once (see configs/logger/many_loggers.yaml for example).
You can also write your own logger.
Lightning provides convenient method for logging custom metrics from inside LightningModule. Read the docs here or take a look at MNIST example.

Hyperparameter Search

Defining hyperparameter optimization is as easy as adding new config file to configs/hparams_search.

Show example
defaults:
    - override /hydra/sweeper: optuna


# choose metric which will be optimized by Optuna
optimized_metric: "val/acc"


hydra:
    # here we define Optuna hyperparameter search
    # it optimizes for value returned from function with @hydra.main decorator
    # learn more here: https://hydra.cc/docs/next/plugins/optuna_sweeper
    sweeper:
        _target_: hydra_plugins.hydra_optuna_sweeper.optuna_sweeper.OptunaSweeper
        storage: null
        study_name: null
        n_jobs: 1

        # 'minimize' or 'maximize' the objective
        direction: maximize

        # number of experiments that will be executed
        n_trials: 20

        # choose Optuna hyperparameter sampler
        # learn more here: https://optuna.readthedocs.io/en/stable/reference/samplers.html
        sampler:
            _target_: optuna.samplers.TPESampler
            seed: 12345
            consider_prior: true
            prior_weight: 1.0
            consider_magic_clip: true
            consider_endpoints: false
            n_startup_trials: 10
            n_ei_candidates: 24
            multivariate: false
            warn_independent_sampling: true

        # define range of hyperparameters
        search_space:
            datamodule.batch_size:
                type: categorical
                choices: [32, 64, 128]
            model.lr:
                type: float
                low: 0.0001
                high: 0.2
            model.lin1_size:
                type: categorical
                choices: [32, 64, 128, 256, 512]
            model.lin2_size:
                type: categorical
                choices: [32, 64, 128, 256, 512]
            model.lin3_size:
                type: categorical
                choices: [32, 64, 128, 256, 512]

Next, you can execute it with: python run.py -m hparams_search=mnist_optuna
Using this approach doesn't require you to add any boilerplate into your pipeline, everything is defined in a single config file. You can use different optimization frameworks integrated with Hydra, like Optuna, Ax or Nevergrad.

Inference

The following is example of loading model from checkpoint and running predictions.

Show inference example
from PIL import Image
from torchvision import transforms

from src.models.mnist_model import MNISTLitModel


def predict():
    """Example of inference with trained model.
    It loads trained image classification model from checkpoint.
    Then it loads example image and predicts its label.
    """

    # ckpt can be also a URL!
    CKPT_PATH = "last.ckpt"

    # load model from checkpoint
    # model __init__ parameters will be loaded from ckpt automatically
    # you can also pass some parameter explicitly to override it
    trained_model = MNISTLitModel.load_from_checkpoint(checkpoint_path=CKPT_PATH)

    # print model hyperparameters
    print(trained_model.hparams)

    # switch to evaluation mode
    trained_model.eval()
    trained_model.freeze()

    # load data
    img = Image.open("data/example_img.png").convert("L")  # convert to black and white
    # img = Image.open("data/example_img.png").convert("RGB")  # convert to RGB

    # preprocess
    mnist_transforms = transforms.Compose(
        [
            transforms.ToTensor(),
            transforms.Resize((28, 28)),
            transforms.Normalize((0.1307,), (0.3081,)),
        ]
    )
    img = mnist_transforms(img)
    img = img.reshape((1, *img.size()))  # reshape to form batch of size 1

    # inference
    output = trained_model(img)
    print(output)


if __name__ == "__main__":
    predict()

Tests

Template comes with example tests implemented with pytest library.
To execute them simply run:

# run all tests
pytest

# run tests from specific file
pytest tests/shell/test_basic_commands.py

# run all tests except the ones marked as slow
pytest -k "not slow"

I often find myself running into bugs that come out only in edge cases or on some specific hardware/environment. To speed up the development, I usually constantly execute tests that run a couple of quick 1 epoch experiments, like overfitting to 10 batches, training on 25% of data, etc. Those kind of tests don't check for any specific output - they exist to simply verify that executing some commands doesn't end up in throwing exceptions. You can find them implemented in tests/shell folder.

You can easily modify the commands in the scripts for your use case. If even 1 epoch is too much for your model, then you can make it run for a couple of batches instead (by using the right trainer flags).

Callbacks

Template contains example callbacks enabling better Weights&Biases integration, which you can use as a reference for writing your own callbacks (see wandb_callbacks.py).
To support reproducibility:

  • WatchModel
  • UploadCodeAsArtifact
  • UploadCheckpointsAsArtifact

To provide examples of logging custom visualisations with callbacks only:

  • LogConfusionMatrix
  • LogF1PrecRecHeatmap
  • LogImagePredictions

To see the result of all the callbacks attached, take a look at this experiment dashboard.

Multi-GPU Training

Lightning supports multiple ways of doing distributed training.
The most common one is DDP, which spawns separate process for each GPU and averages gradients between them. To learn about other approaches read lightning docs.

You can run DDP on mnist example with 4 GPUs like this:

python run.py trainer.gpus=4 +trainer.accelerator="ddp"

⚠️ When using DDP you have to be careful how you write your models - learn more here.

Extra Features

List of extra utilities available in the template:

  • loading environment variables from .env file
  • pretty printing config with Rich library
  • disabling python warnings
  • debug mode

You can easily remove any of those by modifying run.py and src/train.py.

Best Practices

Use Miniconda for GPU environments

Use miniconda for your python environments (it's usually unnecessary to install full anaconda environment, miniconda should be enough). It makes it easier to install some dependencies, like cudatoolkit for GPU support.
Example installation:

wget https://repo.anaconda.com/miniconda/Miniconda3-latest-Linux-x86_64.sh
bash Miniconda3-latest-Linux-x86_64.sh

Create environment using bash script provided in the template:

bash bash/setup_conda.sh
Use automatic code formatting

Use pre-commit hooks to standardize code formatting of your project and save mental energy.
Simply install pre-commit package with:

pip install pre-commit

Next, install hooks from .pre-commit-config.yaml:

pre-commit install

After that your code will be automatically reformatted on every new commit.
Currently template contains configurations of black (python code formatting), isort (python import sorting), flake8 (python code analysis) and prettier (yaml formating).

To reformat all files in the project use command:

pre-commit run -a
Set private environment variables in .env file

System specific variables (e.g. absolute paths to datasets) should not be under version control or it will result in conflict between different users. Your private keys also shouldn't be versioned since you don't want them to be leaked.

Template contains .env.example file, which serves as an example. Create a new file called .env (this name is excluded from version control in .gitignore). You should use it for storing environment variables like this:

MY_VAR=/home/user/my_system_path

All variables from .env are loaded in run.py automatically.

Hydra allows you to reference any env variable in .yaml configs like this:

path_to_data: ${oc.env:MY_VAR}
Name metrics using '/' character

Depending on which logger you're using, it's often useful to define metric name with / character:

self.log("train/loss", loss)

This way loggers will treat your metrics as belonging to different sections, which helps to get them organised in UI.

Use torchmetrics

Use official torchmetrics library to ensure proper calculation of metrics. This is especially important for multi-GPU training!

For example, instead of calculating accuracy by yourself, you should use the provided Accuracy class like this:

from torchmetrics.classification.accuracy import Accuracy


class LitModel(LightningModule):
    def __init__(self)
        self.train_acc = Accuracy()
        self.val_acc = Accuracy()

    def training_step(self, batch, batch_idx):
        ...
        acc = self.train_acc(predictions, targets)
        self.log("train/acc", acc)
        ...

    def validation_step(self, batch, batch_idx):
        ...
        acc = self.val_acc(predictions, targets)
        self.log("val/acc", acc)
        ...

Make sure to use different metric instance for each step to ensure proper value reduction over all GPU processes.

Torchmetrics provides metrics for most use cases, like F1 score or confusion matrix. Read documentation for more.

Follow PyTorch Lightning style guide

The style guide is available here.

  1. Be explicit in your init. Try to define all the relevant defaults so that the user doesn’t have to guess. Provide type hints. This way your module is reusable across projects!

    class LitModel(LightningModule):
        def __init__(self, layer_size: int = 256, lr: float = 0.001):
  2. Preserve the recommended method order.

    class LitModel(LightningModule):
    
        def __init__():
            ...
    
        def forward():
            ...
    
        def training_step():
            ...
    
        def training_step_end():
            ...
    
        def training_epoch_end():
            ...
    
        def validation_step():
            ...
    
        def validation_step_end():
            ...
    
        def validation_epoch_end():
            ...
    
        def test_step():
            ...
    
        def test_step_end():
            ...
    
        def test_epoch_end():
            ...
    
        def configure_optimizers():
            ...
    
        def any_extra_hook():
            ...
Version control your data and models with DVC

Use DVC to version control big files, like your data or trained ML models.
To initialize the dvc repository:

dvc init

To start tracking a file or directory, use dvc add:

dvc add data/MNIST

DVC stores information about the added file (or a directory) in a special .dvc file named data/MNIST.dvc, a small text file with a human-readable format. This file can be easily versioned like source code with Git, as a placeholder for the original data:

git add data/MNIST.dvc data/.gitignore
git commit -m "Add raw data"
Support installing project as a package

It allows other people to easily use your modules in their own projects. Change name of the src folder to your project name and add setup.py file:

from setuptools import find_packages, setup

setup(
    name="src",  # you should change "src" to your project name
    version="0.0.0",
    description="Describe Your Cool Project",
    author="",
    author_email="",
    # replace with your own github project link
    url="https://github.com/ashleve/lightning-hydra-template",
    install_requires=["pytorch-lightning>=1.2.0", "hydra-core>=1.0.6"],
    packages=find_packages(),
)

Now your project can be installed from local files:

pip install -e .

Or directly from git repository:

pip install git+git://github.com/YourGithubName/your-repo-name.git --upgrade

So any file can be easily imported into any other file like so:

from project_name.models.mnist_model import MNISTLitModel
from project_name.datamodules.mnist_datamodule import MNISTDataModule

Tricks

Automatic activation of virtual environment and tab completion when entering folder

Create a new file called .autoenv (this name is excluded from version control in .gitignore).
You can use it to automatically execute shell commands when entering folder.

To setup this automation for bash, execute the following line:

echo "autoenv() { if [ -x .autoenv ]; then source .autoenv ; echo '.autoenv executed' ; fi } ; cd() { builtin cd \"\$@\" ; autoenv ; } ; autoenv" >> ~/.bashrc

Now you can add any commands to your .autoenv file, e.g. activation of virtual environment and hydra tab completion:

# activate conda environment
conda activate myenv

# activate hydra tab completion for bash
eval "$(python run.py -sc install=bash)"

# enable aliases for debugging
alias test='pytest'
alias debug1='python run.py debug=true'
alias debug2='python run.py trainer.gpus=1 trainer.max_epochs=1'
alias debug3='python run.py trainer.gpus=1 trainer.max_epochs=1 +trainer.limit_train_batches=0.1'
alias debug_wandb='python run.py trainer.gpus=1 trainer.max_epochs=1 logger=wandb logger.wandb.project=tests'

(these commands will be executed whenever you're openning or switching terminal to folder containing .autoenv file)

Lastly add execution previliges to your .autoenv file:

chmod +x .autoenv

Explanation
The mentioned line appends your .bashrc file with 2 commands:

  1. autoenv() { if [ -x .autoenv ]; then source .autoenv ; echo '.autoenv executed' ; fi } - this declares the autoenv() function, which executes .autoenv file if it exists in current work dir and has execution previligies
  2. cd() { builtin cd \"\$@\" ; autoenv ; } ; autoenv - this extends behaviour of cd command, to make it execute autoenv() function each time you change folder in terminal or open new terminal
Accessing datamodule attributes in model

The simplest way is to pass datamodule attribute directly to model on initialization:

datamodule = hydra.utils.instantiate(config.datamodule)

model = hydra.utils.instantiate(config.model, some_param=datamodule.some_param)

This is not a robust solution, since it assumes all your datamodules have some_param attribute available (otherwise the run will crash). A better solution is to add Omegaconf resolver to your datamodule:

from omegaconf import OmegaConf

# you can place this snippet in your datamodule __init__()
resolver_name = "datamodule"
OmegaConf.register_new_resolver(
    resolver_name,
    lambda name: getattr(self, name),
    use_cache=False
)

This way you can reference any datamodule attribute from your config like this:

# this will get 'datamodule.some_param' field
some_parameter: ${datamodule: some_param}

When later accessing this field, say in your lightning model, it will get automatically resolved based on all resolvers that are registered. Remember not to access this field before datamodule is initialized. You also need to set resolve to false in print_config() in run.py method or it will throw errors!

utils.print_config(config, resolve=False)

Other Repositories

Inspirations

This template was inspired by: PyTorchLightning/deep-learninig-project-template, drivendata/cookiecutter-data-science, tchaton/lightning-hydra-seed, Erlemar/pytorch_tempest, lucmos/nn-template.

Useful repositories




DELETE EVERYTHING ABOVE FOR YOUR PROJECT


Your Project Name

PyTorch Lightning Config: Hydra Template
Paper Conference

Description

What it does

How to run

Install dependencies

# clone project
git clone https://github.com/YourGithubName/your-repo-name
cd your-repo-name

# [OPTIONAL] create conda environment
bash bash/setup_conda.sh

# install requirements
pip install -r requirements.txt

Train model with default configuration

# default
python run.py

# train on CPU
python run.py trainer.gpus=0

# train on GPU
python run.py trainer.gpus=1

Train model with chosen experiment configuration from configs/experiment/

python run.py experiment=experiment_name

You can override any parameter from command line like this

python run.py trainer.max_epochs=20 datamodule.batch_size=64

About

PyTorch Lightning + Hydra. A very general, feature-rich template for rapid and scalable ML experimentation with best practices. ⚡🔥⚡

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