This PyTorch framework implements a number of gradient inversion attacks that breach privacy in federated learning scenarios, covering examples with small and large aggregation sizes and examples both in vision and in text domains.
This includes implementations of recent work such as:
- Malicious-model attacks as described in "Robbing The Fed" https://openreview.net/forum?id=fwzUgo0FM9v
- Attacks against transformer architectures described in "Decepticons" https://arxiv.org/abs/2201.12675
- Fishing attacks that breach arbitrary aggregations described in https://arxiv.org/abs/2202.00580
But also a range of implementations of other attacks from optimization attacks (such as "Inverting Gradients" and "See through Gradients") to recent analytic and recursive attacks. Jupyter notebook examples for these attacks can be found in the examples/
folder.
This repository implements two main components. A list of modular attacks under breaching.attacks
and a list of relevant use cases (including server threat model, user setup, model architecture and dataset) under breaching.cases
. All attacks and scenarios are highly modular and can be customized and extended through the configuration at breaching/config
.
Either download this repository (including notebooks and examples) directly using git clone
or install the python package via pip install breaching
for easy access to key functionality.
Because this framework covers several use cases across vision and language, it also accumulates a kitchen-sink of dependencies. The full list of all dependencies can be found at environment.yml
(and installed with conda by calling conda env create --file environment.yml
), but the full list of dependencies not installed by default. Install these as necessary (for example install huggingface packages only if you are interested in language applications).
You can verify your installation by running python simulate_breach.py dryrun=True
. This tests the simplest reconstruction setting with a single iteration.
You can load any use case by
cfg_case = breaching.get_case_config(case="1_single_imagenet")
user, server, model, loss = breaching.cases.construct_case(cfg_case)
and load any attack by
cfg_attack = breaching.get_attack_config(attack="invertinggradients")
attacker = breaching.attacks.prepare_attack(model, loss, cfg_attack)
This is a good spot to print out an overview over the loaded threat model and setting, maybe you would want to change some settings?
breaching.utils.overview(server, user, attacker)
To evaluate the attack, you can then simulate an FL exchange:
shared_user_data, payloads, true_user_data = server.run_protocol(user)
And then run the attack (which consumes only the user update and the server state):
reconstructed_user_data, stats = attacker.reconstruct(payloads, shared_user_data)
For more details, have a look at the notebooks in the examples/
folder, the cmd-line script simulate_breach.py
or the minimal examples in minimal_example.py
and minimal_example_robbing_the_fed.py
.
This framework is modular collections of attacks against federated learning that breach privacy by recovering user data from their updates sent to a central server. The framework covers gradient updates as well as updates from multiple local training steps and evaluates datasets and models in language and vision. Requirements and variations in the threat model for each attack (such as the existence of labels or number of data points) are made explicit. Modern initializations and label recovery strategies are also included.
We especially focus on clarifying the threat model of each attack and constraining the attacker
to only act based on the shared_user_data
objects generated by the user. All attacks should be as use-case agnostic as possible based only on these limited transmissions of data and implementing a new attack should require no knowledge of any use case. Likewise implementing a new use case should be entirely separate from the attack portion. Everything is highly configurable through hydra
configuration syntax.
This framework focuses only on attacks, implementing no defense aside from user-level differential privacy and aggregation. We wanted to focus only on attack evaluations and investigate the questions "where do these attacks work currently", and "where are the limits". Accordingly, the FL simulation is "shallow". No model is actually trained here and we investigate fixed checkpoints (which can be generated somewhere else). Other great repositories, such as https://github.com/Princeton-SysML/GradAttack focus on defenses and their performance during a full simulation of a FL protocol.
A list of all included attacks with references to their original publications can be found at examples/README.md
.
Many examples for vision attacks show ImageNet
examples. For this to work, you need to download the ImageNet ILSVRC2012 dataset manually. However, almost all attacks require only the small validation set, which can be easily downloaded onto a laptop and do not look for the whole training set. If this is not an option for you, then the Birdsnap
dataset is a reasonably drop-in replacement for ImageNet. By default, we further only show examples from ImageNetAnimals
, which are the first 397 classes of the ImageNet dataset. This reduces the number of weird pictures of actual people substantially. Of course CIFAR10
and CIFAR100
are also around.
For these vision datasets there are several options in the literature on how to partition them for a FL simulation. We implement a range of such partitions with data.partition
, ranging from random
(but replicable and with no repetitions of data across users), over balanced
(separate classes equally across users) to unique-class
(every user owns data from a single class). When changing the partition you might also have to adjust the number of expected clients data.default_clients
(for example, for unique_class
there can be only len(classes)
many users).
For language data, you can load wikitext
which we split into separate users on a per-article basis, or the stackoverflow
and shakespeare
FL datasets from tensorflow federated, which are already split into users (installing tensorflow-cpu
is required for these tensorflow-federated datasets).
Further, nothing stops you from skipping the breaching.cases
sub-module and using your own code to load a model and dataset. An example can be found in minimal_example.py
.
We implement a range of metrics which can be queried through breaching.analysis.report
. Several metrics (such as CW-SSIM and R-PSNR) require additional packages to be installed - they will warn about this. For language data we hook into a range of huggingface metrics. Overall though, we note that most of these metrics give only a partial picture of the actual severity of a breach of privacy, and are best handled with care.
A script to benchmark attacks is included as benchmark_breaches.py
. This script will iterate over the first valid num_trials
users, attack each separately and average the resulting metrics. This can be useful for quantitative analysis of these attacks. The default case takes about a day to benchmark on a single GTX2080 GPU for optimization-based attacks, and less than 30 minutes for analytic attacks.
Using the default scripts for benchmarking and cmd-line executes also includes a bunch of convenience based mostly on hydra
. This entails the creation of separate sub-folders for each experiment in outputs/
. These folders contain logs, metrics and optionally recovered data for each run. Summary tables are written to tables/
.
All attacks can be run on both CPU/GPU (any torch.device
actually). However, the optimization-based attacks are very compute intensive and using a GPU is highly advised. The other attacks are cheap enough to be run on CPUs (The Decepticon attack for example does most of the heavy lifting in assignment problems on CPU anyway, for example).
It is probably best to have a look into breaching/config
to see all possible options.
For now, please cite the respective publications for each attack and use case and note in your appendix / supplementary material that you used this framework.
We integrate several snippets of code from other repositories and refer to the licenses included in those files for more info. We're especially thankful for related projects such as https://www.tensorflow.org/federated, https://github.com/NVlabs/DeepInversion, https://github.com/JunyiZhu-AI/R-GAP, https://github.com/facebookresearch/functorch, https://github.com/ildoonet/pytorch-gradual-warmup-lr and https://github.com/nadavbh12/VQ-VAE from which we incorporate components.
For the license of our code, refer to LICENCE.md
.
This framework was built by me (Jonas Geiping), Liam Fowl and Yuxin Wen while working at the University of Maryland, College Park.
If you have an attack that you are interested in implementing in this framework, or a use case that is interesting to you, don't hesitate to contact us or open a pull-request.
If you have any questions, also don't hesitate to open an issue here on github or write us an email.