Releases: adap/flower
Flower 1.4.0
Thanks to our contributors
We would like to give our special thanks to all the contributors who made the new version of Flower possible (in git shortlog
order):
Adam Narozniak
, Alexander Viala Bellander
, Charles Beauville
, Chenyang Ma (Danny)
, Daniel J. Beutel
, Edoardo
, Gautam Jajoo
, Iacob-Alexandru-Andrei
, JDRanpariya
, Jean Charle Yaacoub
, Kunal Sarkhel
, L. Jiang
, Lennart Behme
, Max Kapsecker
, Michał
, Nic Lane
, Nikolaos Episkopos
, Ragy
, Saurav Maheshkar
, Semo Yang
, Steve Laskaridis
, Steven Hé (Sīchàng)
, Taner Topal
What's new?
-
Introduce support for XGBoost (
FedXgbNnAvg
strategy and example) (#1694, #1709, #1715, #1717, #1763, #1795)XGBoost is a tree-based ensemble machine learning algorithm that uses gradient boosting to improve model accuracy. We added a new
FedXgbNnAvg
strategy, and a code example that demonstrates the usage of this new strategy in an XGBoost project. -
Introduce iOS SDK (preview) (#1621, #1764)
This is a major update for anyone wanting to implement Federated Learning on iOS mobile devices. We now have a swift iOS SDK present under src/swift/flwr that will facilitate greatly the app creating process. To showcase its use, the iOS example has also been updated!
-
Introduce new "What is Federated Learning?" tutorial (#1657, #1721)
A new entry-level tutorial in our documentation explains the basics of Fedetated Learning. It enables anyone who's unfamiliar with Federated Learning to start their journey with Flower. Forward it to anyone who's interested in Federated Learning!
-
Introduce new Flower Baseline: FedProx MNIST (#1513, #1680, #1681, #1679)
This new baseline replicates the MNIST+CNN task from the paper Federated Optimization in Heterogeneous Networks (Li et al., 2018). It uses the
FedProx
strategy, which aims at making convergence more robust in heterogenous settings. -
Introduce new Flower Baseline: FedAvg FEMNIST (#1655)
This new baseline replicates an experiment evaluating the performance of the FedAvg algorithm on the FEMNIST dataset from the paper LEAF: A Benchmark for Federated Settings (Caldas et al., 2018).
-
Introduce (experimental) REST API (#1594, #1690, #1695, #1712, #1802, #1770, #1733)
A new REST API has been introduced as an alternative to the gRPC-based communication stack. In this initial version, the REST API only supports anonymous clients.
Please note: The REST API is still experimental and will likely change significantly over time.
-
Improve the (experimental) Driver API (#1663, #1666, #1667, #1664, #1675, #1676, #1693, #1662, #1794)
The Driver API is still an experimental feature, but this release introduces some major upgrades. One of the main improvements is the introduction of an SQLite database to store server state on disk (instead of in-memory). Another improvement is that tasks (instructions or results) that have been delivered will now be deleted. This greatly improves the memory efficiency of a long-running Flower server.
-
Fix spilling issues related to Ray during simulations (#1698)
While running long simulationa,
ray
was sometimes spilling huge amounts of data that would make the training unable to continue. This is now fixed! 🎉 -
Add new example using
TabNet
and Flower (#1725)TabNet is a powerful and flexible framework for training machine learning models on tabular data. We now have a federated example using Flower: https://github.com/adap/flower/tree/main/examples/tabnet.
-
Add new how-to guide for monitoring simulations (#1649)
We now have a documentation guide to help users monitor their performance during simulations.
-
Add training metrics to
History
object during simulations (#1696)The
fit_metrics_aggregation_fn
can be used to aggregate training metrics, but previous releases did not save the results in theHistory
object. This is now the case! -
General improvements (#1659, #1646, #1647, #1471, #1648, #1651, #1652, #1653, #1659, #1665, #1670, #1672, #1677, #1684, #1683, #1686, #1682, #1685, #1692, #1705, #1708, #1711, #1713, #1714, #1718, #1716, #1723, #1735, #1678, #1750, #1753, #1736, #1766, #1760, #1775, #1776, #1777, #1779, #1784, #1773, #1755, #1789, #1788, #1798, #1799, #1739, #1800, #1804, #1805)
Flower received many improvements under the hood, too many to list here.
Incompatible changes
None
Flower 1.3.0
Thanks to our contributors
We would like to give our special thanks to all the contributors who made the new version of Flower possible (in git shortlog
order):
Adam Narozniak
, Alexander Viala Bellander
, Charles Beauville
, Daniel J. Beutel
, JDRanpariya
, Lennart Behme
, Taner Topal
What's new?
-
Add support for
workload_id
andgroup_id
in Driver API (#1595)The (experimental) Driver API now supports a
workload_id
that can be used to identify which workload a task belongs to. It also supports a newgroup_id
that can be used, for example, to indicate the current training round. Both theworkload_id
andgroup_id
enable client nodes to decide whether they want to handle a task or not. -
Make Driver API and Fleet API address configurable (#1637)
The (experimental) long-running Flower server (Driver API and Fleet API) can now configure the server address of both Driver API (via
--driver-api-address
) and Fleet API (via--fleet-api-address
) when starting:flower-server --driver-api-address "0.0.0.0:8081" --fleet-api-address "0.0.0.0:8086"
Both IPv4 and IPv6 addresses are supported.
-
Add new example of Federated Learning using fastai and Flower (#1598)
A new code example (
quickstart_fastai
) demonstrates federated learning with fastai and Flower. You can find it here: quickstart_fastai. -
Make Android example compatible with
flwr >= 1.0.0
and the latest versions of Android (#1603)The Android code example has received a substantial update: the project is compatible with Flower 1.0 and later, the UI received a full refresh, and the project is updated to be compatible with newer Android tooling.
-
Add new
FedProx
strategy (#1619)This strategy is almost identical to
FedAvg
, but helps users replicate what is described in this paper. It essentially adds a parameter calledproximal_mu
to regularize the local models with respect to the global models. -
Add new metrics to telemetry events (#1640)
An updated event structure allows, for example, the clustering of events within the same workload.
-
Add new custom strategy tutorial section #1623
The Flower tutorial now has a new section that covers implementing a custom strategy from scratch: Open in Colab
-
Add new custom serialization tutorial section (#1622)
The Flower tutorial now has a new section that covers custom serialization: Open in Colab
-
General improvements (#1638, #1634, #1636, #1635, #1633, #1632, #1631, #1630, #1627, #1593, #1616, #1615, #1607, #1609, #1608, #1603, #1590, #1580, #1599, #1600, #1601, #1597, #1595, #1591, #1588, #1589, #1587, #1573, #1581, #1578, #1574, #1572, #1586)
Flower received many improvements under the hood, too many to list here.
-
Updated documentation (#1629, #1628, #1620, #1618, #1617, #1613, #1614)
As usual, the documentation has improved quite a bit. It is another step in our effort to make the Flower documentation the best documentation of any project. Stay tuned and as always, feel free to provide feedback!
Incompatible changes
None
Flower 1.2.0
Thanks to our contributors
We would like to give our special thanks to all the contributors who made the new version of Flower possible (in git shortlog
order):
Adam Narozniak
, Charles Beauville
, Daniel J. Beutel
, Edoardo
, L. Jiang
, Ragy
, Taner Topal
, dannymcy
What's new?
-
Introduce new Flower Baseline: FedAvg MNIST (#1497, #1552)
Over the coming weeks, we will be releasing a number of new reference implementations useful especially to FL newcomers. They will typically revisit well known papers from the literature, and be suitable for integration in your own application or for experimentation, in order to deepen your knowledge of FL in general. Today's release is the first in this series. Read more.
-
Improve GPU support in simulations (#1555)
The Ray-based Virtual Client Engine (
start_simulation
) has been updated to improve GPU support. The update includes some of the hard-earned lessons from scaling simulations in GPU cluster environments. New defaults make running GPU-based simulations substantially more robust. -
Improve GPU support in Jupyter Notebook tutorials (#1527, #1558)
Some users reported that Jupyter Notebooks have not always been easy to use on GPU instances. We listened and made improvements to all of our Jupyter notebooks! Check out the updated notebooks here:
-
Introduce optional telemetry (#1533, #1544, #1584)
After a request for feedback from the community, the Flower open-source project introduces optional collection of anonymous usage metrics to make well-informed decisions to improve Flower. Doing this enables the Flower team to understand how Flower is used and what challenges users might face.
Flower is a friendly framework for collaborative AI and data science. Staying true to this statement, Flower makes it easy to disable telemetry for users that do not want to share anonymous usage metrics. Read more..
-
Introduce (experimental) Driver API (#1520, #1525, #1545, #1546, #1550, #1551, #1567)
Flower now has a new (experimental) Driver API which will enable fully programmable, async, and multi-tenant Federated Learning and Federated Analytics applications. Phew, that's a lot! Going forward, the Driver API will be the abstraction that many upcoming features will be built on - and you can start building those things now, too.
The Driver API also enables a new execution mode in which the server runs indefinitely. Multiple individual workloads can run concurrently and start and stop their execution independent of the server. This is especially useful for users who want to deploy Flower in production.
To learn more, check out the
mt-pytorch
code example. We look forward to you feedback!Please note: The Driver API is still experimental and will likely change significantly over time.
-
Add new Federated Analytics with Pandas example (#1469, #1535)
A new code example (
quickstart_pandas
) demonstrates federated analytics with Pandas and Flower. You can find it here: quickstart_pandas. -
Add new strategies: Krum and MultiKrum (#1481)
Edoardo, a computer science student at the Sapienza University of Rome, contributed a new
Krum
strategy that enables users to easily use Krum and MultiKrum in their workloads. -
Update C++ example to be compatible with Flower v1.2.0 (#1495)
The C++ code example has received a substantial update to make it compatible with the latest version of Flower.
-
General improvements (#1491, #1504, #1506, #1514, #1522, #1523, #1526, #1528, #1547, #1549, #1560, #1564, #1566)
Flower received many improvements under the hood, too many to list here.
-
Updated documentation (#1494, #1496, #1500, #1503, #1505, #1524, #1518, #1519, #1515)
As usual, the documentation has improved quite a bit. It is another step in our effort to make the Flower documentation the best documentation of any project. Stay tuned and as always, feel free to provide feedback!
One highlight is the new first time contributor guide: if you've never contributed on GitHub before, this is the perfect place to start!
Incompatible changes
None
Flower 1.1.0
Thanks to our contributors
We would like to give our special thanks to all the contributors who made the new version of Flower possible (in git shortlog
order):
Akis Linardos
, Christopher S
, Daniel J. Beutel
, George
, Jan Schlicht
, Mohammad Fares
, Pedro Porto Buarque de Gusmão
, Philipp Wiesner
, Rob Luke
, Taner Topal
, VasundharaAgarwal
, danielnugraha
, edogab33
What's new?
-
Introduce Differential Privacy wrappers (preview) (#1357, #1460)
The first (experimental) preview of pluggable Differential Privacy wrappers enables easy configuration and usage of differential privacy (DP). The pluggable DP wrappers enable framework-agnostic and strategy-agnostic usage of both client-side DP and server-side DP. Head over to the Flower docs, a new explainer goes into more detail.
-
New iOS CoreML code example (#1289)
Flower goes iOS! A massive new code example shows how Flower clients can be built for iOS. The code example contains both Flower iOS SDK components that can be used for many tasks, and one task example running on CoreML.
-
New FedMedian strategy (#1461)
The new
FedMedian
strategy implements Federated Median (FedMedian) by Yin et al., 2018. -
Log
Client
exceptions in Virtual Client Engine (#1493)All
Client
exceptions happening in the VCE are now logged by default and not just exposed to the configuredStrategy
(via thefailures
argument). -
Improve Virtual Client Engine internals (#1401, #1453)
Some internals of the Virtual Client Engine have been revamped. The VCE now uses Ray 2.0 under the hood, the value type of the
client_resources
dictionary changed tofloat
to allow fractions of resources to be allocated. -
Support optional
Client
/NumPyClient
methods in Virtual Client EngineThe Virtual Client Engine now has full support for optional
Client
(andNumPyClient
) methods. -
Provide type information to packages using
flwr
(#1377)The package
flwr
is now bundled with apy.typed
file indicating that the package is typed. This enables typing support for projects or packages that useflwr
by enabling them to improve their code using static type checkers likemypy
. -
Updated code example (#1344, #1347)
The code examples covering scikit-learn and PyTorch Lightning have been updated to work with the latest version of Flower.
-
Updated documentation (#1355, #1558, #1379, #1380, #1381, #1332, #1391, #1403, #1364, #1409, #1419, #1444, #1448, #1417, #1449, #1465, #1467)
There have been so many documentation updates that it doesn't even make sense to list them individually.
-
Restructured documentation (#1387)
The documentation has been restructured to make it easier to navigate. This is just the first step in a larger effort to make the Flower documentation the best documentation of any project ever. Stay tuned!
-
Open in Colab button (#1389)
The four parts of the Flower Federated Learning Tutorial now come with a new
Open in Colab
button. No need to install anything on your local machine, you can now use and learn about Flower in your browser, it's only a single click away. -
Improved tutorial (#1468, #1470, #1472, #1473, #1474, #1475)
The Flower Federated Learning Tutorial has two brand-new parts covering custom strategies (still WIP) and the distinction between
Client
andNumPyClient
. The existing parts one and two have also been improved (many small changes and fixes).
Incompatible changes
None
Flower 1.0.0
Highlights
- Stable Virtual Client Engine (accessible via
start_simulation
) - All
Client
/NumPyClient
methods are now optional - Configurable
get_parameters
- Tons of small API cleanups resulting in a more coherent developer experience
Thanks to our contributors
We would like to give our special thanks to all the contributors who made Flower 1.0 possible (in reverse GitHub Contributors order):
@rtaiello, @g-pichler, @rob-luke, @andreea-zaharia, @kinshukdua, @nfnt, @tatiana-s, @TParcollet, @vballoli, @negedng, @RISHIKESHAVAN, @hei411, @SebastianSpeitel, @AmitChaulwar, @Rubiel1, @FANTOME-PAN, @Rono-BC, @lbhm, @sishtiaq, @remde, @Jueun-Park, @architjen, @PratikGarai, @mrinaald, @zliel, @MeiruiJiang, @sandracl72, @gubertoli, @Vingt100, @MakGulati, @cozek, @jafermarq, @sisco0, @akhilmathurs, @CanTuerk, @mariaboerner1987, @pedropgusmao, @tanertopal, @danieljanes.
Incompatible changes
-
All arguments must be passed as keyword arguments (#1338)
Pass all arguments as keyword arguments, positional arguments are not longer supported. Code that uses positional arguments (e.g.,
start_client("127.0.0.1:8080", FlowerClient())
) must add the keyword for each positional argument (e.g.,start_client(server_address="127.0.0.1:8080", client=FlowerClient())
). -
Introduce configuration object
ServerConfig
instart_server
andstart_simulation
(#1317)Instead of a config dictionary
{"num_rounds": 3, "round_timeout": 600.0}
,start_server
andstart_simulation
now expect a configuration object of typeflwr.server.ServerConfig
.ServerConfig
takes the same arguments that as the previous config dict, but it makes writing type-safe code easier and the default parameters values more transparent. -
Rename built-in strategy parameters for clarity (#1334)
The following built-in strategy parameters were renamed to improve readability and consistency with other API's:
fraction_eval
-->fraction_evaluate
min_eval_clients
-->min_evaluate_clients
eval_fn
-->evaluate_fn
-
Update default arguments of built-in strategies (#1278)
All built-in strategies now use
fraction_fit=1.0
andfraction_evaluate=1.0
, which means they select all currently available clients for training and evaluation. Projects that relied on the previous default values can get the previous behaviour by initializing the strategy in the following way:strategy = FedAvg(fraction_fit=0.1, fraction_evaluate=0.1)
-
Add
server_round
toStrategy.evaluate
(#1334)The
Strategy
methodevaluate
now receives the current round of federated learning/evaluation as the first parameter. -
Add
server_round
andconfig
parameters toevaluate_fn
(#1334)The
evaluate_fn
passed to built-in strategies likeFedAvg
now takes three parameters: (1) The current round of federated learning/evaluation (server_round
), (2) the model parameters to evaluate (parameters
), and (3) a config dictionary (config
). -
Rename
rnd
toserver_round
(#1321)Several Flower methods and functions (
evaluate_fn
,configure_fit
,aggregate_fit
,configure_evaluate
,aggregate_evaluate
) receive the current round of federated learning/evaluation as their first parameter. To improve reaability and avoid confusion with random, this parameter has been renamed fromrnd
toserver_round
. -
Move
flwr.dataset
toflwr_baselines
(#1273)The experimental package
flwr.dataset
was migrated to Flower Baselines. -
Remove experimental strategies (#1280)
Remove unmaintained experimental strategies (
FastAndSlow
,FedFSv0
,FedFSv1
). -
Rename
Weights
toNDArrays
(#1258, #1259)flwr.common.Weights
was renamed toflwr.common.NDArrays
to better capture what this type is all about. -
Remove antiquated
force_final_distributed_eval
fromstart_server
(#1258, #1259)The
start_server
parameterforce_final_distributed_eval
has long been a historic artefact, in this release it is finally gone for good. -
Make
get_parameters
configurable (#1242)The
get_parameters
method now accepts a configuration dictionary, just likeget_properties
,fit
, andevaluate
. -
Replace
num_rounds
instart_simulation
with newconfig
parameter (#1281)The
start_simulation
function now accepts a configuration dictionaryconfig
instead of thenum_rounds
integer. This improves the consistency betweenstart_simulation
andstart_server
and makes transitioning between the two easier.
New features
-
Support Python 3.10 (#1320)
The previous Flower release introduced experimental support for Python 3.10, this release declares Python 3.10 support as stable.
-
Make all
Client
andNumPyClient
methods optional (#1260, #1277)The
Client
/NumPyClient
methodsget_properties
,get_parameters
,fit
, andevaluate
are all optional. This enables writing clients that implement, for example, onlyfit
, but no other method. No need to implementevaluate
when using centralized evaluation! -
Enable passing a
Server
instance tostart_simulation
(#1281)Similar to
start_server
,start_simulation
now accepts a fullServer
instance. This enables users to heavily customize the execution of eperiments and opens the door to running, for example, async FL using the Virtual Client Engine. -
Update code examples (#1291, #1286, #1282)
Many code examples received small or even large maintenance updates, among them are
scikit-learn
simulation_pytorch
quickstart_pytorch
quickstart_simulation
quickstart_tensorflow
advanced_tensorflow
-
Remove the obsolete simulation example (#1328)
Removes the obsolete
simulation
example and renamesquickstart_simulation
tosimulation_tensorflow
so it fits withs the naming ofsimulation_pytorch
-
Update documentation (#1223, #1209, #1251, #1257, #1267, #1268, #1300, #1304, #1305, #1307)
One substantial documentation update fixes multiple smaller rendering issues, makes titles more succinct to improve navigation, removes a deprecated library, updates documentation dependencies, includes the
flwr.common
module in the API reference, includes support for markdown-based documentation, migrates the changelog from.rst
to.md
, and fixes a number of smaller details! -
Minor updates
0.19.0
What's new:
-
Flower Baselines (preview): FedOpt, FedBN, FedAvgM (919, 1127, 914)
The first preview release of Flower Baselines has arrived! We're kickstarting Flower Baselines with implementations of FedOpt (FedYogi, FedAdam, FedAdagrad), FedBN, and FedAvgM. Check the documentation on how to use Flower Baselines. With this first preview release we're also inviting the community to contribute their own baselines.
-
C++ client SDK (preview) and code example (1111)
Preview support for Flower clients written in C++. The C++ preview includes a Flower client SDK and a quickstart code example that demonstrates a simple C++ client using the SDK.
-
Add experimental support for Python 3.10 and Python 3.11 (1135)
Python 3.10 is the latest stable release of Python and Python 3.11 is due to be released in October. This Flower release adds experimental support for both Python versions.
-
Aggregate custom metrics through user-provided functions (1144)
Custom metrics (e.g.,
accuracy
) can now be aggregated without having to customize the strategy. Built-in strategies support two new arguments,fit_metrics_aggregation_fn
andevaluate_metrics_aggregation_fn
, that allow passing custom metric aggregation functions. -
User-configurable round timeout (1162)
A new configuration value allows the round timeout to be set for
start_server
andstart_simulation
. If theconfig
dictionary contains around_timeout
key (with afloat
value in seconds), the server will wait at leastround_timeout
seconds before it closes the connection. -
Enable both federated evaluation and centralized evaluation to be used at the same time in all built-in strategies (1091)
Built-in strategies can now perform both federated evaluation (i.e., client-side) and centralized evaluation (i.e., server-side) in the same round. Federated evaluation can be disabled by setting
fraction_eval
to0.0
. -
Two new Jupyter Notebook tutorials (1141)
Two Jupyter Notebook tutorials (compatible with Google Colab) explain basic and intermediate Flower features:
An Introduction to Federated Learning: Open in Colab
Using Strategies in Federated Learning: Open in Colab
-
New FedAvgM strategy (Federated Averaging with Server Momentum) (1076)
The new
FedAvgM
strategy implements Federated Averaging with Server Momentum [Hsu et al., 2019]. -
New advanced PyTorch code example (1007)
A new code example (
advanced_pytorch
) demonstrates advanced Flower concepts with PyTorch. -
New JAX code example (906, 1143)
A new code example (
jax_from_centralized_to_federated
) shows federated learning with JAX and Flower. -
Minor updates
- New option to keep Ray running if Ray was already initialized in
start_simulation
(1177) - Add support for custom
ClientManager
as astart_simulation
parameter (1171) - New documentation for implementing strategies (1097, 1175)
- New mobile-friendly documentation theme (1174)
- Limit version range for (optional)
ray
dependency to include only compatible releases (>=1.9.2,<1.12.0
) (1205)
- New option to keep Ray running if Ray was already initialized in
Incompatible changes:
- Remove deprecated support for Python 3.6 (871)
- Remove deprecated KerasClient (857)
- Remove deprecated no-op extra installs (973)
- Remove deprecated proto fields from
FitRes
andEvaluateRes
(869) - Remove deprecated QffedAvg strategy (replaced by QFedAvg) (1107)
- Remove deprecated DefaultStrategy strategy (1142)
- Remove deprecated support for eval_fn accuracy return value (1142)
- Remove deprecated support for passing initial parameters as NumPy ndarrays (1142)
0.18.0
What's new?
-
Improved Virtual Client Engine compatibility with Jupyter Notebook / Google Colab (866, 872, 833, 1036)
Simulations (using the Virtual Client Engine through
start_simulation
) now work more smoothly on Jupyter Notebooks (incl. Google Colab) after installing Flower with thesimulation
extra (pip install flwr[simulation]
). -
New Jupyter Notebook code example (833)
A new code example (
quickstart_simulation
) demonstrates Flower simulations using the Virtual Client Engine through Jupyter Notebook (incl. Google Colab). -
Client properties (feature preview) (795)
Clients can implement a new method
get_properties
to enable server-side strategies to query client properties. -
Experimental Android support with TFLite (865)
Android support has finally arrived in
main
! Flower is both client-agnostic and framework-agnostic by design. One can integrate arbitrary client platforms and with this release, using Flower on Android has become a lot easier.The example uses TFLite on the client side, along with a new
FedAvgAndroid
strategy. The Android client andFedAvgAndroid
are still experimental, but they are a first step towards a fully-fledged Android SDK and a unifiedFedAvg
implementation that integrated the new functionality fromFedAvgAndroid
. -
Make gRPC keepalive time user-configurable and decrease default keepalive time (1069)
The default gRPC keepalive time has been reduced to increase the compatibility of Flower with more cloud environments (for example, Microsoft Azure). Users can configure the keepalive time to customize the gRPC stack based on specific requirements.
-
New differential privacy example using Opacus and PyTorch (805)
A new code example (
opacus
) demonstrates differentially-private federated learning with Opacus, PyTorch, and Flower. -
New Hugging Face Transformers code example (863)
A new code example (
quickstart_huggingface
) demonstrates usage of Hugging Face Transformers with Flower. -
New MLCube code example (779, 1034, 1065, 1090)
A new code example (
quickstart_mlcube
) demonstrates usage of MLCube with Flower. -
SSL-enabled server and client (842, 844, 845, 847, 993, 994)
SSL enables secure encrypted connections between clients and servers. This release open-sources the Flower secure gRPC implementation to make encrypted communication channels accessible to all Flower users.
-
Updated
FedAdam
andFedYogi
strategies (885, 895)FedAdam
andFedAdam
match the latest version of the Adaptive Federated Optimization paper. -
Initialize
start_simulation
with a list of client IDs (860)start_simulation
can now be called with a list of client IDs (clients_ids
, type:List[str]
). Those IDs will be passed to theclient_fn
whenever a client needs to be initialized, which can make it easier to load data partitions that are not accessible throughint
identifiers. -
Minor updates
- Update
num_examples
calculation in PyTorch code examples in (909) - Expose Flower version through
flwr.__version__
(952) start_server
inapp.py
now returns aHistory
object containing metrics from training (974)- Make
max_workers
(used byThreadPoolExecutor
) configurable (978) - Increase sleep time after server start to three seconds in all code examples (1086)
- Added a new FAQ section to the documentation (948)
- And many more under-the-hood changes, library updates, documentation changes, and tooling improvements!
- Update
Incompatible changes:
-
Removed
flwr_example
andflwr_experimental
from release build (869)The packages
flwr_example
andflwr_experimental
have been deprecated since Flower 0.12.0 and they are not longer included in Flower release builds. The associated extras (baseline
,examples-pytorch
,examples-tensorflow
,http-logger
,ops
) are now no-op and will be removed in an upcoming release.
0.17.0
What's new?
-
Experimental virtual client engine (781 790 791)
One of Flower's goals is to enable research at scale. This release enables a first (experimental) peek at a major new feature, codenamed the virtual client engine. Virtual clients enable simulations that scale to a (very) large number of clients on a single machine or compute cluster. The easiest way to test the new functionality is to look at the two new code examples called
quickstart_simulation
andsimulation_pytorch
.The feature is still experimental, so there's no stability guarantee for the API. It's also not quite ready for prime time and comes with a few known caveats. However, those who are curious are encouraged to try it out and share their thoughts.
-
New built-in strategies (828 822)
- FedYogi - Federated learning strategy using Yogi on server-side. Implementation based on https://arxiv.org/abs/2003.00295
- FedAdam - Federated learning strategy using Adam on server-side. Implementation based on https://arxiv.org/abs/2003.00295
-
New PyTorch Lightning code example (617)
-
New Variational Auto-Encoder code example (752)
-
New scikit-learn code example (748)
-
New experimental TensorBoard strategy (789)
-
Minor updates
Incompatible changes:
-
Disabled final distributed evaluation (800)
Prior behaviour was to perform a final round of distributed evaluation on all connected clients, which is often not required (e.g., when using server-side evaluation). The prior behaviour can be enabled by passing
force_final_distributed_eval=True
tostart_server
. -
Renamed q-FedAvg strategy (802)
The strategy named
QffedAvg
was renamed toQFedAvg
to better reflect the notation given in the original paper (q-FFL is the optimization objective, q-FedAvg is the proposed solver). Note the the original (now deprecated)QffedAvg
class is still available for compatibility reasons (it will be removed in a future release). -
Deprecated and renamed code example
simulation_pytorch
tosimulation_pytorch_legacy
(791)This example has been replaced by a new example. The new example is based on the experimental virtual client engine, which will become the new default way of doing most types of large-scale simulations in Flower. The existing example was kept for reference purposes, but it might be removed in the future.
0.16.0
What's new?
-
New built-in strategies (#549)
- (abstract) FedOpt
- FedAdagrad
-
Custom metrics for server and strategies (#717)
The Flower server is now fully task-agnostic, all remaining instances of task-specific metrics (such as :code:
accuracy
) have been replaced by custom metrics dictionaries. Flower 0.15 introduced the capability to pass a dictionary containing custom metrics from client to server. As of this release, custom metrics replace task-specific metrics on the server.Custom metric dictionaries are now used in two user-facing APIs: they are returned from Strategy methods :code:
aggregate_fit
/:code:aggregate_evaluate
and they enable evaluation functions passed to build-in strategies (via :code:eval_fn
) to return more than two evaluation metrics. Strategies can even return aggregated metrics dictionaries for the server to keep track of.Stratey implementations should migrate their :code:
aggregate_fit
and :code:aggregate_evaluate
methods to the new return type (e.g., by simply returning an empty :code:{}
), server-side evaluation functions should migrate from :code:return loss, accuracy
to :code:return loss, {"accuracy": accuracy}
.Flower 0.15-style return types are deprecated (but still supported), compatibility will be removed in a future release.
-
Migration warnings for deprecated functionality (#690)
Earlier versions of Flower were often migrated to new APIs, while maintaining compatibility with legacy APIs. This release introduces detailed warning messages if usage of deprecated APIs is detected. The new warning messages often provide details on how to migrate to more recent APIs, thus easing the transition from one release to another.
-
MXNet example and documentation
-
FedBN implementation in example PyTorch: From Centralized To Federated (#696, #702, #705)
Incompatible changes:
-
Serialization-agnostic server (#721)
The Flower server is now fully serialization-agnostic. Prior usage of class :code:
Weights
(which represents parameters as deserialized NumPy ndarrays) was replaced by class :code:Parameters
(e.g., in :code:Strategy
). :code:Parameters
objects are fully serialization-agnostic and represents parameters as byte arrays, the :code:tensor_type
attributes indicates how these byte arrays should be interpreted (e.g., for serialization/deserialization).Built-in strategies implement this approach by handling serialization and deserialization to/from :code:
Weights
internally. Custom/3rd-party Strategy implementations should update to the slighly changed Strategy method definitions. Strategy authors can consult PR #721 to see how strategies can easily migrate to the new format. -
Deprecated :code:
flwr.server.Server.evaluate
, use :code:flwr.server.Server.evaluate_round
instead (#717)
0.15.0
What's new?
-
Server-side parameter initialization (#658)
Model parameters can now be initialized on the server-side. Server-side parameter initialization works via a new
Strategy
method calledinitialize_parameters
.Built-in strategies support a new constructor argument called
initial_parameters
to set the initial parameters. Built-in strategies will provide these initial parameters to the server on startup and then delete them to free the memory afterward.# Create model model = tf.keras.applications.EfficientNetB0( input_shape=(32, 32, 3), weights=None, classes=10 ) model.compile("adam", "sparse_categorical_crossentropy", metrics=["accuracy"]) # Create strategy and initilize parameters on the server-side strategy = fl.server.strategy.FedAvg( # ... (other constructor arguments) initial_parameters=model.get_weights(), ) # Start Flower server with the strategy fl.server.start_server("[::]:8080", config={"num_rounds": 3}, strategy=strategy)
If no initial parameters are provided to the strategy, the server will continue to use the current behavior (namely, it will ask one of the connected clients for its parameters and use these as the initial global parameters).
Deprecations
- Deprecate
flwr.server.strategy.DefaultStrategy
(migrate toflwr.server.strategy.FedAvg
, which is equivalent)