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hf_public_repos/accelerate/README.md
<!--- Copyright 2021 The HuggingFace Team. All rights reserved. Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0 Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License. --> <p align="center"> <br> <img src="https://raw.githubusercontent.com/huggingface/accelerate/main/docs/source/imgs/accelerate_logo.png" width="400"/> <br> <p> <p align="center"> <!-- Uncomment when CircleCI is set up <a href="https://circleci.com/gh/huggingface/accelerate"> <img alt="Build" src="https://img.shields.io/circleci/build/github/huggingface/transformers/master"> </a> --> <a href="https://github.com/huggingface/accelerate/blob/main/LICENSE"> <img alt="License" src="https://img.shields.io/github/license/huggingface/accelerate.svg?color=blue"> </a> <a href="https://huggingface.co/docs/accelerate/index.html"> <img alt="Documentation" src="https://img.shields.io/website/http/huggingface.co/docs/accelerate/index.html.svg?down_color=red&down_message=offline&up_message=online"> </a> <a href="https://github.com/huggingface/accelerate/releases"> <img alt="GitHub release" src="https://img.shields.io/github/release/huggingface/accelerate.svg"> </a> <a href="https://github.com/huggingface/accelerate/blob/main/CODE_OF_CONDUCT.md"> <img alt="Contributor Covenant" src="https://img.shields.io/badge/Contributor%20Covenant-v2.0%20adopted-ff69b4.svg"> </a> </p> <h3 align="center"> <p>Run your *raw* PyTorch training script on any kind of device </h3> <h3 align="center"> <a href="https://hf.co/course"><img src="https://raw.githubusercontent.com/huggingface/accelerate/main/docs/source/imgs/course_banner.png"></a> </h3> ## Easy to integrate 🤗 Accelerate was created for PyTorch users who like to write the training loop of PyTorch models but are reluctant to write and maintain the boilerplate code needed to use multi-GPUs/TPU/fp16. 🤗 Accelerate abstracts exactly and only the boilerplate code related to multi-GPUs/TPU/fp16 and leaves the rest of your code unchanged. Here is an example: ```diff import torch import torch.nn.functional as F from datasets import load_dataset + from accelerate import Accelerator + accelerator = Accelerator() - device = 'cpu' + device = accelerator.device model = torch.nn.Transformer().to(device) optimizer = torch.optim.Adam(model.parameters()) dataset = load_dataset('my_dataset') data = torch.utils.data.DataLoader(dataset, shuffle=True) + model, optimizer, data = accelerator.prepare(model, optimizer, data) model.train() for epoch in range(10): for source, targets in data: source = source.to(device) targets = targets.to(device) optimizer.zero_grad() output = model(source) loss = F.cross_entropy(output, targets) - loss.backward() + accelerator.backward(loss) optimizer.step() ``` As you can see in this example, by adding 5-lines to any standard PyTorch training script you can now run on any kind of single or distributed node setting (single CPU, single GPU, multi-GPUs and TPUs) as well as with or without mixed precision (fp8, fp16, bf16). In particular, the same code can then be run without modification on your local machine for debugging or your training environment. 🤗 Accelerate even handles the device placement for you (which requires a few more changes to your code, but is safer in general), so you can even simplify your training loop further: ```diff import torch import torch.nn.functional as F from datasets import load_dataset + from accelerate import Accelerator - device = 'cpu' + accelerator = Accelerator() - model = torch.nn.Transformer().to(device) + model = torch.nn.Transformer() optimizer = torch.optim.Adam(model.parameters()) dataset = load_dataset('my_dataset') data = torch.utils.data.DataLoader(dataset, shuffle=True) + model, optimizer, data = accelerator.prepare(model, optimizer, data) model.train() for epoch in range(10): for source, targets in data: - source = source.to(device) - targets = targets.to(device) optimizer.zero_grad() output = model(source) loss = F.cross_entropy(output, targets) - loss.backward() + accelerator.backward(loss) optimizer.step() ``` Want to learn more? Check out the [documentation](https://huggingface.co/docs/accelerate) or have a look at our [examples](https://github.com/huggingface/accelerate/tree/main/examples). ## Launching script 🤗 Accelerate also provides an optional CLI tool that allows you to quickly configure and test your training environment before launching the scripts. No need to remember how to use `torch.distributed.run` or to write a specific launcher for TPU training! On your machine(s) just run: ```bash accelerate config ``` and answer the questions asked. This will generate a config file that will be used automatically to properly set the default options when doing ```bash accelerate launch my_script.py --args_to_my_script ``` For instance, here is how you would run the GLUE example on the MRPC task (from the root of the repo): ```bash accelerate launch examples/nlp_example.py ``` This CLI tool is **optional**, and you can still use `python my_script.py` or `python -m torchrun my_script.py` at your convenience. You can also directly pass in the arguments you would to `torchrun` as arguments to `accelerate launch` if you wish to not run` accelerate config`. For example, here is how to launch on two GPUs: ```bash accelerate launch --multi_gpu --num_processes 2 examples/nlp_example.py ``` To learn more, check the CLI documentation available [here](https://huggingface.co/docs/accelerate/package_reference/cli). ## Launching multi-CPU run using MPI 🤗 Here is another way to launch multi-CPU run using MPI. You can learn how to install Open MPI on [this page](https://www.open-mpi.org/faq/?category=building#easy-build). You can use Intel MPI or MVAPICH as well. Once you have MPI setup on your cluster, just run: ```bash mpirun -np 2 python examples/nlp_example.py ``` ## Launching training using DeepSpeed 🤗 Accelerate supports training on single/multiple GPUs using DeepSpeed. To use it, you don't need to change anything in your training code; you can set everything using just `accelerate config`. However, if you desire to tweak your DeepSpeed related args from your Python script, we provide you the `DeepSpeedPlugin`. ```python from accelerate import Accelerator, DeepSpeedPlugin # deepspeed needs to know your gradient accumulation steps beforehand, so don't forget to pass it # Remember you still need to do gradient accumulation by yourself, just like you would have done without deepspeed deepspeed_plugin = DeepSpeedPlugin(zero_stage=2, gradient_accumulation_steps=2) accelerator = Accelerator(mixed_precision='fp16', deepspeed_plugin=deepspeed_plugin) # How to save your 🤗 Transformer? accelerator.wait_for_everyone() unwrapped_model = accelerator.unwrap_model(model) unwrapped_model.save_pretrained(save_dir, save_function=accelerator.save, state_dict=accelerator.get_state_dict(model)) ``` Note: DeepSpeed support is experimental for now. In case you get into some problem, please open an issue. ## Launching your training from a notebook 🤗 Accelerate also provides a `notebook_launcher` function you can use in a notebook to launch a distributed training. This is especially useful for Colab or Kaggle notebooks with a TPU backend. Just define your training loop in a `training_function` then in your last cell, add: ```python from accelerate import notebook_launcher notebook_launcher(training_function) ``` An example can be found in [this notebook](https://github.com/huggingface/notebooks/blob/main/examples/accelerate_examples/simple_nlp_example.ipynb). [![Open In Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/huggingface/notebooks/blob/main/examples/accelerate_examples/simple_nlp_example.ipynb) ## Why should I use 🤗 Accelerate? You should use 🤗 Accelerate when you want to easily run your training scripts in a distributed environment without having to renounce full control over your training loop. This is not a high-level framework above PyTorch, just a thin wrapper so you don't have to learn a new library. In fact, the whole API of 🤗 Accelerate is in one class, the `Accelerator` object. ## Why shouldn't I use 🤗 Accelerate? You shouldn't use 🤗 Accelerate if you don't want to write a training loop yourself. There are plenty of high-level libraries above PyTorch that will offer you that, 🤗 Accelerate is not one of them. ## Frameworks using 🤗 Accelerate If you like the simplicity of 🤗 Accelerate but would prefer a higher-level abstraction around its capabilities, some frameworks and libraries that are built on top of 🤗 Accelerate are listed below: * [Animus](https://github.com/Scitator/animus) is a minimalistic framework to run machine learning experiments. Animus highlights common "breakpoints" in ML experiments and provides a unified interface for them within [IExperiment](https://github.com/Scitator/animus/blob/main/animus/core.py#L76). * [Catalyst](https://github.com/catalyst-team/catalyst#getting-started) is a PyTorch framework for Deep Learning Research and Development. It focuses on reproducibility, rapid experimentation, and codebase reuse so you can create something new rather than write yet another train loop. Catalyst provides a [Runner](https://catalyst-team.github.io/catalyst/api/core.html#runner) to connect all parts of the experiment: hardware backend, data transformations, model training, and inference logic. * [fastai](https://github.com/fastai/fastai#installing) is a PyTorch framework for Deep Learning that simplifies training fast and accurate neural nets using modern best practices. fastai provides a [Learner](https://docs.fast.ai/learner.html#Learner) to handle the training, fine-tuning, and inference of deep learning algorithms. * [Finetuner](https://github.com/jina-ai/finetuner) is a service that enables models to create higher-quality embeddings for semantic search, visual similarity search, cross-modal text<->image search, recommendation systems, clustering, duplication detection, anomaly detection, or other uses. * [InvokeAI](https://github.com/invoke-ai/InvokeAI) is a creative engine for Stable Diffusion models, offering industry-leading WebUI, terminal usage support, and serves as the foundation for many commercial products. * [Kornia](https://kornia.readthedocs.io/en/latest/get-started/introduction.html) is a differentiable library that allows classical computer vision to be integrated into deep learning models. Kornia provides a [Trainer](https://kornia.readthedocs.io/en/latest/x.html#kornia.x.Trainer) with the specific purpose to train and fine-tune the supported deep learning algorithms within the library. * [Open Assistant](https://projects.laion.ai/Open-Assistant/) is a chat-based assistant that understands tasks, can interact with their party systems, and retrieve information dynamically to do so. * [pytorch-accelerated](https://github.com/Chris-hughes10/pytorch-accelerated) is a lightweight training library, with a streamlined feature set centered around a general-purpose [Trainer](https://pytorch-accelerated.readthedocs.io/en/latest/trainer.html), that places a huge emphasis on simplicity and transparency; enabling users to understand exactly what is going on under the hood, but without having to write and maintain the boilerplate themselves! * [Stable Diffusion web UI](https://github.com/AUTOMATIC1111/stable-diffusion-webui) is an open-source browser-based easy-to-use interface based on the Gradio library for Stable Diffusion. * [torchkeras](https://github.com/lyhue1991/torchkeras) is a simple tool for training pytorch model just in a keras style, a dynamic and beautiful plot is provided in notebook to monitor your loss or metric. * [transformers](https://github.com/huggingface/transformers) as a tool for helping train state-of-the-art machine learning models in PyTorch, Tensorflow, and JAX. (Accelerate is the backend for the PyTorch side). ## Installation This repository is tested on Python 3.8+ and PyTorch 1.10.0+ You should install 🤗 Accelerate in a [virtual environment](https://docs.python.org/3/library/venv.html). If you're unfamiliar with Python virtual environments, check out the [user guide](https://packaging.python.org/guides/installing-using-pip-and-virtual-environments/). First, create a virtual environment with the version of Python you're going to use and activate it. Then, you will need to install PyTorch: refer to the [official installation page](https://pytorch.org/get-started/locally/#start-locally) regarding the specific install command for your platform. Then 🤗 Accelerate can be installed using pip as follows: ```bash pip install accelerate ``` ## Supported integrations - CPU only - multi-CPU on one node (machine) - multi-CPU on several nodes (machines) - single GPU - multi-GPU on one node (machine) - multi-GPU on several nodes (machines) - TPU - FP16/BFloat16 mixed precision - FP8 mixed precision with [Transformer Engine](https://github.com/NVIDIA/TransformerEngine) - DeepSpeed support (Experimental) - PyTorch Fully Sharded Data Parallel (FSDP) support (Experimental) - Megatron-LM support (Experimental) ## Citing 🤗 Accelerate If you use 🤗 Accelerate in your publication, please cite it by using the following BibTeX entry. ```bibtex @Misc{accelerate, title = {Accelerate: Training and inference at scale made simple, efficient and adaptable.}, author = {Sylvain Gugger, Lysandre Debut, Thomas Wolf, Philipp Schmid, Zachary Mueller, Sourab Mangrulkar}, howpublished = {\url{https://github.com/huggingface/accelerate}}, year = {2022} } ```
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hf_public_repos/accelerate/LICENSE
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hf_public_repos
hf_public_repos/accelerate/setup.py
# Copyright 2021 The HuggingFace Team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. from setuptools import setup from setuptools import find_packages extras = {} extras["quality"] = ["black ~= 23.1", "ruff >= 0.0.241", "hf-doc-builder >= 0.3.0", "urllib3 < 2.0.0"] extras["docs"] = [] extras["test_prod"] = ["pytest", "pytest-xdist", "pytest-subtests", "parameterized"] extras["test_dev"] = ["datasets", "evaluate", "transformers", "scipy", "scikit-learn", "deepspeed", "tqdm"] extras["testing"] = extras["test_prod"] + extras["test_dev"] extras["rich"] = ["rich"] extras["test_trackers"] = ["wandb", "comet-ml", "tensorboard"] extras["dev"] = extras["quality"] + extras["testing"] + extras["rich"] extras["sagemaker"] = [ "sagemaker", # boto3 is a required package in sagemaker ] setup( name="accelerate", version="0.22.0.dev0", description="Accelerate", long_description=open("README.md", "r", encoding="utf-8").read(), long_description_content_type="text/markdown", keywords="deep learning", license="Apache", author="The HuggingFace team", author_email="[email protected]", url="https://github.com/huggingface/accelerate", package_dir={"": "src"}, packages=find_packages("src"), entry_points={ "console_scripts": [ "accelerate=accelerate.commands.accelerate_cli:main", "accelerate-config=accelerate.commands.config:main", "accelerate-launch=accelerate.commands.launch:main", ] }, python_requires=">=3.8.0", install_requires=["numpy>=1.17", "packaging>=20.0", "psutil", "pyyaml", "torch>=1.10.0"], extras_require=extras, classifiers=[ "Development Status :: 5 - Production/Stable", "Intended Audience :: Developers", "Intended Audience :: Education", "Intended Audience :: Science/Research", "License :: OSI Approved :: Apache Software License", "Operating System :: OS Independent", "Programming Language :: Python :: 3", "Programming Language :: Python :: 3.8", "Topic :: Scientific/Engineering :: Artificial Intelligence", ], ) # Release checklist # 1. Change the version in __init__.py and setup.py. # 2. Commit these changes with the message: "Release: VERSION" # 3. Add a tag in git to mark the release: "git tag VERSION -m 'Adds tag VERSION for pypi' " # Push the tag to git: git push --tags origin main # 4. Run the following commands in the top-level directory: # python setup.py bdist_wheel # python setup.py sdist # 5. Upload the package to the pypi test server first: # twine upload dist/* -r pypitest # twine upload dist/* -r pypitest --repository-url=https://test.pypi.org/legacy/ # 6. Check that you can install it in a virtualenv by running: # pip install -i https://testpypi.python.org/pypi accelerate # accelerate env # accelerate test # 7. Upload the final version to actual pypi: # twine upload dist/* -r pypi # 8. Add release notes to the tag in github once everything is looking hunky-dory. # 9. Update the version in __init__.py, setup.py to the new version "-dev" and push to master
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hf_public_repos
hf_public_repos/accelerate/pyproject.toml
[tool.black] line-length = 119 target-version = ['py37'] [tool.ruff] # Never enforce `E501` (line length violations). ignore = ["E501", "E741", "W605"] select = ["E", "F", "I", "W"] line-length = 119 # Ignore import violations in all `__init__.py` files. [tool.ruff.per-file-ignores] "__init__.py" = ["E402", "F401", "F403", "F811"] [tool.ruff.isort] lines-after-imports = 2 known-first-party = ["accelerate"]
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hf_public_repos
hf_public_repos/accelerate/setup.cfg
[isort] default_section = FIRSTPARTY ensure_newline_before_comments = True force_grid_wrap = 0 include_trailing_comma = True known_first_party = accelerate line_length = 119 lines_after_imports = 2 multi_line_output = 3 use_parentheses = True [flake8] ignore = E203, E722, E501, E741, W503, W605 max-line-length = 119
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hf_public_repos
hf_public_repos/accelerate/CODE_OF_CONDUCT.md
# Contributor Covenant Code of Conduct ## Our Pledge We as members, contributors, and leaders pledge to make participation in our community a harassment-free experience for everyone, regardless of age, body size, visible or invisible disability, ethnicity, sex characteristics, gender identity and expression, level of experience, education, socio-economic status, nationality, personal appearance, race, religion, or sexual identity and orientation. We pledge to act and interact in ways that contribute to an open, welcoming, diverse, inclusive, and healthy community. ## Our Standards Examples of behavior that contributes to a positive environment for our community include: * Demonstrating empathy and kindness toward other people * Being respectful of differing opinions, viewpoints, and experiences * Giving and gracefully accepting constructive feedback * Accepting responsibility and apologizing to those affected by our mistakes, and learning from the experience * Focusing on what is best not just for us as individuals, but for the overall community Examples of unacceptable behavior include: * The use of sexualized language or imagery, and sexual attention or advances of any kind * Trolling, insulting or derogatory comments, and personal or political attacks * Public or private harassment * Publishing others' private information, such as a physical or email address, without their explicit permission * Other conduct which could reasonably be considered inappropriate in a professional setting ## Enforcement Responsibilities Community leaders are responsible for clarifying and enforcing our standards of acceptable behavior and will take appropriate and fair corrective action in response to any behavior that they deem inappropriate, threatening, offensive, or harmful. Community leaders have the right and responsibility to remove, edit, or reject comments, commits, code, wiki edits, issues, and other contributions that are not aligned to this Code of Conduct, and will communicate reasons for moderation decisions when appropriate. ## Scope This Code of Conduct applies within all community spaces, and also applies when an individual is officially representing the community in public spaces. Examples of representing our community include using an official e-mail address, posting via an official social media account, or acting as an appointed representative at an online or offline event. ## Enforcement Instances of abusive, harassing, or otherwise unacceptable behavior may be reported to the community leaders responsible for enforcement at [email protected]. All complaints will be reviewed and investigated promptly and fairly. All community leaders are obligated to respect the privacy and security of the reporter of any incident. ## Enforcement Guidelines Community leaders will follow these Community Impact Guidelines in determining the consequences for any action they deem in violation of this Code of Conduct: ### 1. Correction **Community Impact**: Use of inappropriate language or other behavior deemed unprofessional or unwelcome in the community. **Consequence**: A private, written warning from community leaders, providing clarity around the nature of the violation and an explanation of why the behavior was inappropriate. A public apology may be requested. ### 2. Warning **Community Impact**: A violation through a single incident or series of actions. **Consequence**: A warning with consequences for continued behavior. No interaction with the people involved, including unsolicited interaction with those enforcing the Code of Conduct, for a specified period of time. This includes avoiding interactions in community spaces as well as external channels like social media. Violating these terms may lead to a temporary or permanent ban. ### 3. Temporary Ban **Community Impact**: A serious violation of community standards, including sustained inappropriate behavior. **Consequence**: A temporary ban from any sort of interaction or public communication with the community for a specified period of time. No public or private interaction with the people involved, including unsolicited interaction with those enforcing the Code of Conduct, is allowed during this period. Violating these terms may lead to a permanent ban. ### 4. Permanent Ban **Community Impact**: Demonstrating a pattern of violation of community standards, including sustained inappropriate behavior, harassment of an individual, or aggression toward or disparagement of classes of individuals. **Consequence**: A permanent ban from any sort of public interaction within the community. ## Attribution This Code of Conduct is adapted from the [Contributor Covenant][homepage], version 2.0, available at https://www.contributor-covenant.org/version/2/0/code_of_conduct.html. Community Impact Guidelines were inspired by [Mozilla's code of conduct enforcement ladder](https://github.com/mozilla/diversity). [homepage]: https://www.contributor-covenant.org For answers to common questions about this code of conduct, see the FAQ at https://www.contributor-covenant.org/faq. Translations are available at https://www.contributor-covenant.org/translations.
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hf_public_repos
hf_public_repos/accelerate/CONTRIBUTING.md
<!--- Copyright 2022 The HuggingFace Team. All rights reserved. Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0 Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License. --> # How to contribute to 🤗 Accelerate? Everyone is welcome to contribute, and we value everybody's contribution. Code is thus not the only way to help the community. Answering questions, helping others, reaching out and improving the documentations are immensely valuable to the community. It also helps us if you spread the word: reference the library from blog posts on the awesome projects it made possible, shout out on Twitter every time it has helped you, or simply star the repo to say "thank you". Whichever way you choose to contribute, please be mindful to respect our [code of conduct](https://github.com/huggingface/accelerate/blob/main/CODE_OF_CONDUCT.md). ## You can contribute in so many ways! Some of the ways you can contribute to Accelerate: * Fixing outstanding issues with the existing code; * Contributing to the examples or to the documentation; * Submitting issues related to bugs or desired new features. ## Submitting a new issue or feature request Do your best to follow these guidelines when submitting an issue or a feature request. It will make it easier for us to come back to you quickly and with good feedback. ### Did you find a bug? The 🤗 Accelerate library is robust and reliable thanks to the users who notify us of the problems they encounter. So thank you for reporting an issue. First, we would really appreciate it if you could **make sure the bug was not already reported** (use the search bar on Github under Issues). Did not find it? :( So we can act quickly on it, please follow these steps: * Include your **OS type and version**, the versions of **Python** and **PyTorch**. * A short, self-contained, code snippet that allows us to reproduce the bug in less than 30s; * Provide the with your Accelerate configuration (located by default in `~/.cache/huggingface/accelerate/default_config.yaml`) ### Do you want a new feature? A good feature request addresses the following points: 1. Motivation first: * Is it related to a problem/frustration with the library? If so, please explain why. Providing a code snippet that demonstrates the problem is best. * Is it related to something you would need for a project? We'd love to hear about it! * Is it something you worked on and think could benefit the community? Awesome! Tell us what problem it solved for you. 2. Write a *full paragraph* describing the feature; 3. Provide a **code snippet** that demonstrates its future use; 4. In case this is related to a paper, please attach a link; 5. Attach any additional information (drawings, screenshots, etc.) you think may help. If your issue is well written we're already 80% of the way there by the time you post it. ## Submitting a pull request (PR) Before writing code, we strongly advise you to search through the existing PRs or issues to make sure that nobody is already working on the same thing. If you are unsure, it is always a good idea to open an issue to get some feedback. You will need basic `git` proficiency to be able to contribute to 🤗 Accelerate. `git` is not the easiest tool to use but it has the greatest manual. Type `git --help` in a shell and enjoy. If you prefer books, [Pro Git](https://git-scm.com/book/en/v2) is a very good reference. Follow these steps to start contributing: 1. Fork the [repository](https://github.com/huggingface/accelerate) by clicking on the 'Fork' button on the repository's page. This creates a copy of the code under your GitHub user account. 2. Clone your fork to your local disk, and add the base repository as a remote. The following command assumes you have your public SSH key uploaded to GitHub. See the following guide for more [information](https://docs.github.com/en/repositories/creating-and-managing-repositories/cloning-a-repository). ```bash $ git clone [email protected]:<your Github handle>/accelerate.git $ cd accelerate $ git remote add upstream https://github.com/huggingface/accelerate.git ``` 3. Create a new branch to hold your development changes, and do this for every new PR you work on. Start by synchronizing your `main` branch with the `upstream/main` branch (ore details in the [GitHub Docs](https://docs.github.com/en/github/collaborating-with-issues-and-pull-requests/syncing-a-fork)): ```bash $ git checkout main $ git fetch upstream $ git merge upstream/main ``` Once your `main` branch is synchronized, create a new branch from it: ```bash $ git checkout -b a-descriptive-name-for-my-changes ``` **Do not** work on the `main` branch. 4. Set up a development environment by running the following command in a conda or a virtual environment you've created for working on this library: ```bash $ pip install -e ".[quality]" ``` (If accelerate was already installed in the virtual environment, remove it with `pip uninstall accelerate` before reinstalling it in editable mode with the `-e` flag.) Alternatively, if you are using [Visual Studio Code](https://code.visualstudio.com/Download), the fastest way to get set up is by using the provided Dev Container. Documentation on how to get started with dev containers is available [here](https://code.visualstudio.com/docs/remote/containers). 5. Develop the features on your branch. As you work on the features, you should make sure that the test suite passes. You should run the tests impacted by your changes like this (see below an explanation regarding the environment variable): ```bash $ pytest tests/<TEST_TO_RUN>.py ``` > For the following commands leveraging the `make` utility, we recommend using the WSL system when running on > Windows. More information [here](https://docs.microsoft.com/en-us/windows/wsl/about). You can also run the full suite with the following command. ```bash $ make test ``` `accelerate` relies on `black` and `ruff` to format its source code consistently. After you make changes, apply automatic style corrections and code verifications that can't be automated in one go with: This target is also optimized to only work with files modified by the PR you're working on. If you prefer to run the checks one after the other, the following command apply the style corrections: ```bash $ make style ``` `accelerate` also uses a few custom scripts to check for coding mistakes. Quality control runs in CI, however you can also run the same checks with: ```bash $ make quality ``` Once you're happy with your changes, add changed files using `git add` and make a commit with `git commit` to record your changes locally: ```bash $ git add modified_file.py $ git commit ``` Please write [good commit messages](https://chris.beams.io/posts/git-commit/). It is a good idea to sync your copy of the code with the original repository regularly. This way you can quickly account for changes: ```bash $ git fetch upstream $ git rebase upstream/main ``` Push the changes to your account using: ```bash $ git push -u origin a-descriptive-name-for-my-changes ``` 6. Once you are satisfied (**and the checklist below is happy too**), go to the webpage of your fork on GitHub. Click on 'Pull request' to send your changes to the project maintainers for review. 7. It's ok if maintainers ask you for changes. It happens to core contributors too! So everyone can see the changes in the Pull request, work in your local branch and push the changes to your fork. They will automatically appear in the pull request. ### Checklist 1. The title of your pull request should be a summary of its contribution; 2. If your pull request addresses an issue, please mention the issue number in the pull request description to make sure they are linked (and people consulting the issue know you are working on it); 3. To indicate a work in progress please prefix the title with `[WIP]`, or mark the PR as a draft PR. These are useful to avoid duplicated work, and to differentiate it from PRs ready to be merged; 4. Make sure existing tests pass; 5. Add high-coverage tests. No quality testing = no merge. See an example of a good PR here: https://github.com/huggingface/accelerate/pull/255 ### Tests An extensive test suite is included to test the library behavior and several examples. Library tests can be found in the [tests folder](https://github.com/huggingface/accelerate/tree/main/tests). We use `pytest` in order to run the tests. From the root of the repository, here's how to run tests with `pytest` for the library: ```bash $ python -m pytest -sv ./tests ``` In fact, that's how `make test` is implemented (sans the `pip install` line)! You can specify a smaller set of tests in order to test only the feature you're working on.
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hf_public_repos
hf_public_repos/accelerate/Makefile
.PHONY: quality style test docs utils check_dirs := tests src examples benchmarks utils # Check that source code meets quality standards extra_quality_checks: python utils/check_copies.py python utils/check_dummies.py python utils/check_repo.py doc-builder style src/accelerate docs/source --max_len 119 # this target runs checks on all files quality: black --required-version 23 --check $(check_dirs) ruff $(check_dirs) doc-builder style src/accelerate docs/source --max_len 119 --check_only # Format source code automatically and check is there are any problems left that need manual fixing style: black --required-version 23 $(check_dirs) ruff $(check_dirs) --fix doc-builder style src/accelerate docs/source --max_len 119 # Run tests for the library test: python -m pytest -s -v ./tests/ --ignore=./tests/test_examples.py $(if $(IS_GITHUB_CI),--report-log "$(PYTORCH_VERSION)_all.log",) test_big_modeling: python -m pytest -s -v ./tests/test_big_modeling.py ./tests/test_modeling_utils.py $(if $(IS_GITHUB_CI),--report-log "$(PYTORCH_VERSION)_big_modeling.log",) test_core: python -m pytest -s -v ./tests/ --ignore=./tests/test_examples.py --ignore=./tests/deepspeed --ignore=./tests/test_big_modeling.py \ --ignore=./tests/fsdp --ignore=./tests/test_cli.py $(if $(IS_GITHUB_CI),--report-log "$(PYTORCH_VERSION)_core.log",) test_cli: python -m pytest -s -v ./tests/test_cli.py $(if $(IS_GITHUB_CI),--report-log "$(PYTORCH_VERSION)_cli.log",) test_deepspeed: python -m pytest -s -v ./tests/deepspeed $(if $(IS_GITHUB_CI),--report-log "$(PYTORCH_VERSION)_deepspeed.log",) test_fsdp: python -m pytest -s -v ./tests/fsdp $(if $(IS_GITHUB_CI),--report-log "$(PYTORCH_VERSION)_fsdp.log",) test_examples: python -m pytest -s -v ./tests/test_examples.py $(if $(IS_GITHUB_CI),--report-log "$(PYTORCH_VERSION)_examples.log",) # Broken down example tests for the CI runners test_integrations: python -m pytest -s -v ./tests/deepspeed ./tests/fsdp $(if $(IS_GITHUB_CI),--report-log "$(PYTORCH_VERSION)_integrations.log",) test_example_differences: python -m pytest -s -v ./tests/test_examples.py::ExampleDifferenceTests $(if $(IS_GITHUB_CI),--report-log "$(PYTORCH_VERSION)_example_diff.log",) test_checkpoint_epoch: python -m pytest -s -v ./tests/test_examples.py::FeatureExamplesTests -k "by_epoch" $(if $(IS_GITHUB_CI),--report-log "$(PYTORCH_VERSION)_checkpoint_epoch.log",) test_checkpoint_step: python -m pytest -s -v ./tests/test_examples.py::FeatureExamplesTests -k "by_step" $(if $(IS_GITHUB_CI),--report-log "$(PYTORCH_VERSION)_checkpoint_step.log",) # Same as test but used to install only the base dependencies test_prod: $(MAKE) test_core test_rest: python -m pytest -s -v ./tests/test_examples.py::FeatureExamplesTests -k "not by_step and not by_epoch" $(if $(IS_GITHUB_CI),--report-log "$(PYTORCH_VERSION)_rest.log",)
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hf_public_repos/accelerate
hf_public_repos/accelerate/examples/requirements.txt
accelerate # used to be installed in Amazon SageMaker environment evaluate datasets==2.3.2
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hf_public_repos/accelerate
hf_public_repos/accelerate/examples/README.md
<!--- Copyright 2021 The HuggingFace Team. All rights reserved. Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0 Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License. --> # In this folder we showcase various full examples using 🤗 Accelerate ## Simple NLP example The [nlp_example.py](./nlp_example.py) script is a simple example to train a Bert model on a classification task ([GLUE's MRPC](https://www.microsoft.com/en-us/download/details.aspx?id=52398)). Prior to running it you should install 🤗 Dataset and 🤗 Transformers: ```bash pip install datasets evaluate transformers ``` The same script can be run in any of the following configurations: - single CPU or single GPU - multi GPUs (using PyTorch distributed mode) - (multi) TPUs - fp16 (mixed-precision) or fp32 (normal precision) To run it in each of these various modes, use the following commands: - single CPU: * from a server without GPU ```bash python ./nlp_example.py ``` * from any server by passing `cpu=True` to the `Accelerator`. ```bash python ./nlp_example.py --cpu ``` * from any server with Accelerate launcher ```bash accelerate launch --cpu ./nlp_example.py ``` - single GPU: ```bash python ./nlp_example.py # from a server with a GPU ``` - with fp16 (mixed-precision) * from any server by passing `mixed_precison=fp16` to the `Accelerator`. ```bash python ./nlp_example.py --mixed_precision fp16 ``` * from any server with Accelerate launcher ```bash accelerate launch --mixed_precision fp16 ./nlp_example.py - multi GPUs (using PyTorch distributed mode) * With Accelerate config and launcher ```bash accelerate config # This will create a config file on your server accelerate launch ./nlp_example.py # This will run the script on your server ``` * With traditional PyTorch launcher (`torch.distributed.launch` can be used with older versions of PyTorch) ```bash python -m torchrun --nproc_per_node 2 --use_env ./nlp_example.py ``` - multi GPUs, multi node (several machines, using PyTorch distributed mode) * With Accelerate config and launcher, on each machine: ```bash accelerate config # This will create a config file on each server accelerate launch ./nlp_example.py # This will run the script on each server ``` * With PyTorch launcher only (`torch.distributed.launch` can be used in older versions of PyTorch) ```bash python -m torchrun --nproc_per_node 2 \ --use_env \ --node_rank 0 \ --master_addr master_node_ip_address \ ./nlp_example.py # On the first server python -m torchrun --nproc_per_node 2 \ --use_env \ --node_rank 1 \ --master_addr master_node_ip_address \ ./nlp_example.py # On the second server ``` - (multi) TPUs * With Accelerate config and launcher ```bash accelerate config # This will create a config file on your TPU server accelerate launch ./nlp_example.py # This will run the script on each server ``` * In PyTorch: Add an `xmp.spawn` line in your script as you usually do. ## Simple vision example The [cv_example.py](./cv_example.py) script is a simple example to fine-tune a ResNet-50 on a classification task ([Ofxord-IIT Pet Dataset](https://www.robots.ox.ac.uk/~vgg/data/pets/)). The same script can be run in any of the following configurations: - single CPU or single GPU - multi GPUs (using PyTorch distributed mode) - (multi) TPUs - fp16 (mixed-precision) or fp32 (normal precision) Prior to running it you should install timm and torchvision: ```bash pip install timm torchvision ``` and you should download the data with the following commands: ```bash wget https://www.robots.ox.ac.uk/~vgg/data/pets/data/images.tar.gz tar -xzf images.tar.gz ``` To run it in each of these various modes, use the following commands: - single CPU: * from a server without GPU ```bash python ./cv_example.py --data_dir path_to_data ``` * from any server by passing `cpu=True` to the `Accelerator`. ```bash python ./cv_example.py --data_dir path_to_data --cpu ``` * from any server with Accelerate launcher ```bash accelerate launch --cpu ./cv_example.py --data_dir path_to_data ``` - single GPU: ```bash python ./cv_example.py # from a server with a GPU ``` - with fp16 (mixed-precision) * from any server by passing `mixed_precison=fp16` to the `Accelerator`. ```bash python ./cv_example.py --data_dir path_to_data --mixed_precison fp16 ``` * from any server with Accelerate launcher ```bash accelerate launch --mixed_precison fp16 ./cv_example.py --data_dir path_to_data - multi GPUs (using PyTorch distributed mode) * With Accelerate config and launcher ```bash accelerate config # This will create a config file on your server accelerate launch ./cv_example.py --data_dir path_to_data # This will run the script on your server ``` * With traditional PyTorch launcher (`torch.distributed.launch` can be used with older versions of PyTorch) ```bash python -m torchrun --nproc_per_node 2 --use_env ./cv_example.py --data_dir path_to_data ``` - multi GPUs, multi node (several machines, using PyTorch distributed mode) * With Accelerate config and launcher, on each machine: ```bash accelerate config # This will create a config file on each server accelerate launch ./cv_example.py --data_dir path_to_data # This will run the script on each server ``` * With PyTorch launcher only (`torch.distributed.launch` can be used with older versions of PyTorch) ```bash python -m torchrun --nproc_per_node 2 \ --use_env \ --node_rank 0 \ --master_addr master_node_ip_address \ ./cv_example.py --data_dir path_to_data # On the first server python -m torchrun --nproc_per_node 2 \ --use_env \ --node_rank 1 \ --master_addr master_node_ip_address \ ./cv_example.py --data_dir path_to_data # On the second server ``` - (multi) TPUs * With Accelerate config and launcher ```bash accelerate config # This will create a config file on your TPU server accelerate launch ./cv_example.py --data_dir path_to_data # This will run the script on each server ``` * In PyTorch: Add an `xmp.spawn` line in your script as you usually do. ### Simple vision example (GANs) - [huggan project](https://github.com/huggingface/community-events/tree/main/huggan) ### Using AWS SageMaker integration - [Examples showcasing AWS SageMaker integration of 🤗 Accelerate.](https://github.com/pacman100/accelerate-aws-sagemaker) ## Simple Multi-GPU Hardware Launcher [multigpu_remote_launcher.py](./multigpu_remote_launcher.py) is a minimal script that demonstrates launching accelerate on multiple remote GPUs, and with automatic hardware environment and dependency setup for reproducibility. You can easily customize the training function used, training arguments, hyperparameters, and type of compute hardware, and then run the script to automatically launch multi GPU training on remote hardware. This script uses [Runhouse](https://github.com/run-house/runhouse) to launch on self-hosted hardware (e.g. in your own cloud account or on-premise cluster) but there are other options for running remotely as well. Runhouse can be installed with `pip install runhouse`, and you can refer to [hardware setup](https://runhouse-docs.readthedocs-hosted.com/en/latest/api/python/cluster.html#hardware-setup) for hardware setup instructions, or this [Colab tutorial](https://colab.research.google.com/drive/1qVwYyLTCPYPSdz9ZX7BZl9Qm0A3j7RJe) for a more in-depth walkthrough. ## Finer Examples While the first two scripts are extremely barebones when it comes to what you can do with accelerate, more advanced features are documented in two other locations. ### `by_feature` examples These scripts are *individual* examples highlighting one particular feature or use-case within Accelerate. They all stem from the [nlp_example.py](./nlp_example.py) script, and any changes or modifications is denoted with a `# New Code #` comment. Read the README.md file located in the `by_feature` folder for more information. ### `complete_*` examples These two scripts contain *every* single feature currently available in Accelerate in one place, as one giant script. New arguments that can be passed include: - `checkpointing_steps`, whether the various states should be saved at the end of every `n` steps, or `"epoch"` for each epoch. States are then saved to folders named `step_{n}` or `epoch_{n}` - `resume_from_checkpoint`, should be used if you want to resume training off of a previous call to the script and passed a `checkpointing_steps` to it. - `with_tracking`, should be used if you want to log the training run using all available experiment trackers in your environment. Currently supported trackers include TensorBoard, Weights and Biases, and CometML.
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hf_public_repos/accelerate
hf_public_repos/accelerate/examples/cv_example.py
# coding=utf-8 # Copyright 2021 The HuggingFace Inc. team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import argparse import os import re import numpy as np import PIL import torch from timm import create_model from torch.optim.lr_scheduler import OneCycleLR from torch.utils.data import DataLoader, Dataset from torchvision.transforms import Compose, RandomResizedCrop, Resize, ToTensor from accelerate import Accelerator ######################################################################## # This is a fully working simple example to use Accelerate # # This example trains a ResNet50 on the Oxford-IIT Pet Dataset # in any of the following settings (with the same script): # - single CPU or single GPU # - multi GPUS (using PyTorch distributed mode) # - (multi) TPUs # - fp16 (mixed-precision) or fp32 (normal precision) # # To run it in each of these various modes, follow the instructions # in the readme for examples: # https://github.com/huggingface/accelerate/tree/main/examples # ######################################################################## # Function to get the label from the filename def extract_label(fname): stem = fname.split(os.path.sep)[-1] return re.search(r"^(.*)_\d+\.jpg$", stem).groups()[0] class PetsDataset(Dataset): def __init__(self, file_names, image_transform=None, label_to_id=None): self.file_names = file_names self.image_transform = image_transform self.label_to_id = label_to_id def __len__(self): return len(self.file_names) def __getitem__(self, idx): fname = self.file_names[idx] raw_image = PIL.Image.open(fname) image = raw_image.convert("RGB") if self.image_transform is not None: image = self.image_transform(image) label = extract_label(fname) if self.label_to_id is not None: label = self.label_to_id[label] return {"image": image, "label": label} def training_function(config, args): # Initialize accelerator accelerator = Accelerator(cpu=args.cpu, mixed_precision=args.mixed_precision) # Sample hyper-parameters for learning rate, batch size, seed and a few other HPs lr = config["lr"] num_epochs = int(config["num_epochs"]) seed = int(config["seed"]) batch_size = int(config["batch_size"]) image_size = config["image_size"] if not isinstance(image_size, (list, tuple)): image_size = (image_size, image_size) # Grab all the image filenames file_names = [os.path.join(args.data_dir, fname) for fname in os.listdir(args.data_dir) if fname.endswith(".jpg")] # Build the label correspondences all_labels = [extract_label(fname) for fname in file_names] id_to_label = list(set(all_labels)) id_to_label.sort() label_to_id = {lbl: i for i, lbl in enumerate(id_to_label)} # Set the seed before splitting the data. np.random.seed(seed) torch.manual_seed(seed) torch.cuda.manual_seed_all(seed) # Split our filenames between train and validation random_perm = np.random.permutation(len(file_names)) cut = int(0.8 * len(file_names)) train_split = random_perm[:cut] eval_split = random_perm[cut:] # For training we use a simple RandomResizedCrop train_tfm = Compose([RandomResizedCrop(image_size, scale=(0.5, 1.0)), ToTensor()]) train_dataset = PetsDataset( [file_names[i] for i in train_split], image_transform=train_tfm, label_to_id=label_to_id ) # For evaluation, we use a deterministic Resize eval_tfm = Compose([Resize(image_size), ToTensor()]) eval_dataset = PetsDataset([file_names[i] for i in eval_split], image_transform=eval_tfm, label_to_id=label_to_id) # Instantiate dataloaders. train_dataloader = DataLoader(train_dataset, shuffle=True, batch_size=batch_size, num_workers=4) eval_dataloader = DataLoader(eval_dataset, shuffle=False, batch_size=batch_size, num_workers=4) # Instantiate the model (we build the model here so that the seed also control new weights initialization) model = create_model("resnet50d", pretrained=True, num_classes=len(label_to_id)) # We could avoid this line since the accelerator is set with `device_placement=True` (default value). # Note that if you are placing tensors on devices manually, this line absolutely needs to be before the optimizer # creation otherwise training will not work on TPU (`accelerate` will kindly throw an error to make us aware of that). model = model.to(accelerator.device) # Freezing the base model for param in model.parameters(): param.requires_grad = False for param in model.get_classifier().parameters(): param.requires_grad = True # We normalize the batches of images to be a bit faster. mean = torch.tensor(model.default_cfg["mean"])[None, :, None, None].to(accelerator.device) std = torch.tensor(model.default_cfg["std"])[None, :, None, None].to(accelerator.device) # Instantiate optimizer optimizer = torch.optim.Adam(params=model.parameters(), lr=lr / 25) # Instantiate learning rate scheduler lr_scheduler = OneCycleLR(optimizer=optimizer, max_lr=lr, epochs=num_epochs, steps_per_epoch=len(train_dataloader)) # Prepare everything # There is no specific order to remember, we just need to unpack the objects in the same order we gave them to the # prepare method. model, optimizer, train_dataloader, eval_dataloader, lr_scheduler = accelerator.prepare( model, optimizer, train_dataloader, eval_dataloader, lr_scheduler ) # Now we train the model for epoch in range(num_epochs): model.train() for step, batch in enumerate(train_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch = {k: v.to(accelerator.device) for k, v in batch.items()} inputs = (batch["image"] - mean) / std outputs = model(inputs) loss = torch.nn.functional.cross_entropy(outputs, batch["label"]) accelerator.backward(loss) optimizer.step() lr_scheduler.step() optimizer.zero_grad() model.eval() accurate = 0 num_elems = 0 for _, batch in enumerate(eval_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch = {k: v.to(accelerator.device) for k, v in batch.items()} inputs = (batch["image"] - mean) / std with torch.no_grad(): outputs = model(inputs) predictions = outputs.argmax(dim=-1) predictions, references = accelerator.gather_for_metrics((predictions, batch["label"])) accurate_preds = predictions == references num_elems += accurate_preds.shape[0] accurate += accurate_preds.long().sum() eval_metric = accurate.item() / num_elems # Use accelerator.print to print only on the main process. accelerator.print(f"epoch {epoch}: {100 * eval_metric:.2f}") def main(): parser = argparse.ArgumentParser(description="Simple example of training script.") parser.add_argument("--data_dir", required=True, help="The data folder on disk.") parser.add_argument( "--mixed_precision", type=str, default=None, choices=["no", "fp16", "bf16", "fp8"], help="Whether to use mixed precision. Choose" "between fp16 and bf16 (bfloat16). Bf16 requires PyTorch >= 1.10." "and an Nvidia Ampere GPU.", ) parser.add_argument( "--checkpointing_steps", type=str, default=None, help="Whether the various states should be saved at the end of every n steps, or 'epoch' for each epoch.", ) parser.add_argument("--cpu", action="store_true", help="If passed, will train on the CPU.") args = parser.parse_args() config = {"lr": 3e-2, "num_epochs": 3, "seed": 42, "batch_size": 64, "image_size": 224} training_function(config, args) if __name__ == "__main__": main()
0
hf_public_repos/accelerate
hf_public_repos/accelerate/examples/complete_nlp_example.py
# coding=utf-8 # Copyright 2021 The HuggingFace Inc. team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import argparse import os import evaluate import torch from datasets import load_dataset from torch.optim import AdamW from torch.utils.data import DataLoader from transformers import AutoModelForSequenceClassification, AutoTokenizer, get_linear_schedule_with_warmup, set_seed from accelerate import Accelerator, DistributedType ######################################################################## # This is a fully working simple example to use Accelerate # # This example trains a Bert base model on GLUE MRPC # in any of the following settings (with the same script): # - single CPU or single GPU # - multi GPUS (using PyTorch distributed mode) # - (multi) TPUs # - fp16 (mixed-precision) or fp32 (normal precision) # # This example also demonstrates the checkpointing and sharding capabilities # # To run it in each of these various modes, follow the instructions # in the readme for examples: # https://github.com/huggingface/accelerate/tree/main/examples # ######################################################################## MAX_GPU_BATCH_SIZE = 16 EVAL_BATCH_SIZE = 32 def training_function(config, args): # Initialize accelerator if args.with_tracking: accelerator = Accelerator( cpu=args.cpu, mixed_precision=args.mixed_precision, log_with="all", project_dir=args.project_dir ) else: accelerator = Accelerator(cpu=args.cpu, mixed_precision=args.mixed_precision) if hasattr(args.checkpointing_steps, "isdigit"): if args.checkpointing_steps == "epoch": checkpointing_steps = args.checkpointing_steps elif args.checkpointing_steps.isdigit(): checkpointing_steps = int(args.checkpointing_steps) else: raise ValueError( f"Argument `checkpointing_steps` must be either a number or `epoch`. `{args.checkpointing_steps}` passed." ) else: checkpointing_steps = None # Sample hyper-parameters for learning rate, batch size, seed and a few other HPs lr = config["lr"] num_epochs = int(config["num_epochs"]) seed = int(config["seed"]) batch_size = int(config["batch_size"]) # We need to initialize the trackers we use, and also store our configuration if args.with_tracking: run = os.path.split(__file__)[-1].split(".")[0] accelerator.init_trackers(run, config) tokenizer = AutoTokenizer.from_pretrained("bert-base-cased") datasets = load_dataset("glue", "mrpc") metric = evaluate.load("glue", "mrpc") def tokenize_function(examples): # max_length=None => use the model max length (it's actually the default) outputs = tokenizer(examples["sentence1"], examples["sentence2"], truncation=True, max_length=None) return outputs # Apply the method we just defined to all the examples in all the splits of the dataset # starting with the main process first: with accelerator.main_process_first(): tokenized_datasets = datasets.map( tokenize_function, batched=True, remove_columns=["idx", "sentence1", "sentence2"], ) # We also rename the 'label' column to 'labels' which is the expected name for labels by the models of the # transformers library tokenized_datasets = tokenized_datasets.rename_column("label", "labels") # If the batch size is too big we use gradient accumulation gradient_accumulation_steps = 1 if batch_size > MAX_GPU_BATCH_SIZE and accelerator.distributed_type != DistributedType.TPU: gradient_accumulation_steps = batch_size // MAX_GPU_BATCH_SIZE batch_size = MAX_GPU_BATCH_SIZE def collate_fn(examples): # On TPU it's best to pad everything to the same length or training will be very slow. max_length = 128 if accelerator.distributed_type == DistributedType.TPU else None # When using mixed precision we want round multiples of 8/16 if accelerator.mixed_precision == "fp8": pad_to_multiple_of = 16 elif accelerator.mixed_precision != "no": pad_to_multiple_of = 8 else: pad_to_multiple_of = None return tokenizer.pad( examples, padding="longest", max_length=max_length, pad_to_multiple_of=pad_to_multiple_of, return_tensors="pt", ) # Instantiate dataloaders. train_dataloader = DataLoader( tokenized_datasets["train"], shuffle=True, collate_fn=collate_fn, batch_size=batch_size ) eval_dataloader = DataLoader( tokenized_datasets["validation"], shuffle=False, collate_fn=collate_fn, batch_size=EVAL_BATCH_SIZE ) set_seed(seed) # Instantiate the model (we build the model here so that the seed also control new weights initialization) model = AutoModelForSequenceClassification.from_pretrained("bert-base-cased", return_dict=True) # We could avoid this line since the accelerator is set with `device_placement=True` (default value). # Note that if you are placing tensors on devices manually, this line absolutely needs to be before the optimizer # creation otherwise training will not work on TPU (`accelerate` will kindly throw an error to make us aware of that). model = model.to(accelerator.device) # Instantiate optimizer optimizer = AdamW(params=model.parameters(), lr=lr) # Instantiate scheduler lr_scheduler = get_linear_schedule_with_warmup( optimizer=optimizer, num_warmup_steps=100, num_training_steps=(len(train_dataloader) * num_epochs) // gradient_accumulation_steps, ) # Prepare everything # There is no specific order to remember, we just need to unpack the objects in the same order we gave them to the # prepare method. model, optimizer, train_dataloader, eval_dataloader, lr_scheduler = accelerator.prepare( model, optimizer, train_dataloader, eval_dataloader, lr_scheduler ) # We need to keep track of how many total steps we have iterated over overall_step = 0 # We also need to keep track of the stating epoch so files are named properly starting_epoch = 0 # Potentially load in the weights and states from a previous save if args.resume_from_checkpoint: if args.resume_from_checkpoint is not None or args.resume_from_checkpoint != "": accelerator.print(f"Resumed from checkpoint: {args.resume_from_checkpoint}") accelerator.load_state(args.resume_from_checkpoint) path = os.path.basename(args.resume_from_checkpoint) else: # Get the most recent checkpoint dirs = [f.name for f in os.scandir(os.getcwd()) if f.is_dir()] dirs.sort(key=os.path.getctime) path = dirs[-1] # Sorts folders by date modified, most recent checkpoint is the last # Extract `epoch_{i}` or `step_{i}` training_difference = os.path.splitext(path)[0] if "epoch" in training_difference: starting_epoch = int(training_difference.replace("epoch_", "")) + 1 resume_step = None else: resume_step = int(training_difference.replace("step_", "")) starting_epoch = resume_step // len(train_dataloader) resume_step -= starting_epoch * len(train_dataloader) # Now we train the model for epoch in range(starting_epoch, num_epochs): model.train() if args.with_tracking: total_loss = 0 if args.resume_from_checkpoint and epoch == starting_epoch and resume_step is not None: # We need to skip steps until we reach the resumed step active_dataloader = accelerator.skip_first_batches(train_dataloader, resume_step) overall_step += resume_step else: # After the first iteration though, we need to go back to the original dataloader active_dataloader = train_dataloader for step, batch in enumerate(active_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) outputs = model(**batch) loss = outputs.loss loss = loss / gradient_accumulation_steps # We keep track of the loss at each epoch if args.with_tracking: total_loss += loss.detach().float() accelerator.backward(loss) if step % gradient_accumulation_steps == 0: optimizer.step() lr_scheduler.step() optimizer.zero_grad() overall_step += 1 if isinstance(checkpointing_steps, int): output_dir = f"step_{overall_step}" if overall_step % checkpointing_steps == 0: if args.output_dir is not None: output_dir = os.path.join(args.output_dir, output_dir) accelerator.save_state(output_dir) model.eval() for step, batch in enumerate(eval_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) with torch.no_grad(): outputs = model(**batch) predictions = outputs.logits.argmax(dim=-1) predictions, references = accelerator.gather_for_metrics((predictions, batch["labels"])) metric.add_batch( predictions=predictions, references=references, ) eval_metric = metric.compute() # Use accelerator.print to print only on the main process. accelerator.print(f"epoch {epoch}:", eval_metric) if args.with_tracking: accelerator.log( { "accuracy": eval_metric["accuracy"], "f1": eval_metric["f1"], "train_loss": total_loss.item() / len(train_dataloader), "epoch": epoch, }, step=epoch, ) if checkpointing_steps == "epoch": output_dir = f"epoch_{epoch}" if args.output_dir is not None: output_dir = os.path.join(args.output_dir, output_dir) accelerator.save_state(output_dir) if args.with_tracking: accelerator.end_training() def main(): parser = argparse.ArgumentParser(description="Simple example of training script.") parser.add_argument( "--mixed_precision", type=str, default=None, choices=["no", "fp16", "bf16", "fp8"], help="Whether to use mixed precision. Choose" "between fp16 and bf16 (bfloat16). Bf16 requires PyTorch >= 1.10." "and an Nvidia Ampere GPU.", ) parser.add_argument("--cpu", action="store_true", help="If passed, will train on the CPU.") parser.add_argument( "--checkpointing_steps", type=str, default=None, help="Whether the various states should be saved at the end of every n steps, or 'epoch' for each epoch.", ) parser.add_argument( "--resume_from_checkpoint", type=str, default=None, help="If the training should continue from a checkpoint folder.", ) parser.add_argument( "--with_tracking", action="store_true", help="Whether to load in all available experiment trackers from the environment and use them for logging.", ) parser.add_argument( "--output_dir", type=str, default=".", help="Optional save directory where all checkpoint folders will be stored. Default is the current working directory.", ) parser.add_argument( "--project_dir", type=str, default="logs", help="Location on where to store experiment tracking logs` and relevent project information", ) args = parser.parse_args() config = {"lr": 2e-5, "num_epochs": 3, "seed": 42, "batch_size": 16} training_function(config, args) if __name__ == "__main__": main()
0
hf_public_repos/accelerate
hf_public_repos/accelerate/examples/multigpu_remote_launcher.py
import argparse import runhouse as rh import torch from nlp_example import training_function from accelerate.utils import PrepareForLaunch, patch_environment def launch_train(*args): num_processes = torch.cuda.device_count() print(f"Device count: {num_processes}") with patch_environment( world_size=num_processes, master_addr="127.0.01", master_port="29500", mixed_precision=args[1].mixed_precision ): launcher = PrepareForLaunch(training_function, distributed_type="MULTI_GPU") torch.multiprocessing.start_processes(launcher, args=args, nprocs=num_processes, start_method="spawn") if __name__ == "__main__": # Refer to https://runhouse-docs.readthedocs-hosted.com/en/main/rh_primitives/cluster.html#hardware-setup # for cloud access setup instructions (if using on-demand hardware), and for API specifications. # on-demand GPU # gpu = rh.cluster(name='rh-cluster', instance_type='V100:1', provider='cheapest', use_spot=False) # single GPU gpu = rh.cluster(name="rh-cluster", instance_type="V100:4", provider="cheapest", use_spot=False) # multi GPU gpu.up_if_not() # on-prem GPU # gpu = rh.cluster( # ips=["ip_addr"], ssh_creds={ssh_user:"<username>", ssh_private_key:"<key_path>"}, name="rh-cluster" # ) # Set up remote function reqs = [ "pip:./", "transformers", "datasets", "evaluate", "tqdm", "scipy", "scikit-learn", "tensorboard", "torch --upgrade --extra-index-url https://download.pytorch.org/whl/cu117", ] launch_train_gpu = rh.function(fn=launch_train, system=gpu, reqs=reqs, name="train_bert_glue") # Define train args/config, run train function train_args = argparse.Namespace(cpu=False, mixed_precision="fp16") config = {"lr": 2e-5, "num_epochs": 3, "seed": 42, "batch_size": 16} launch_train_gpu(config, train_args, stream_logs=True) # Alternatively, we can just run as instructed in the README (but only because there's already a wrapper CLI): # gpu.install_packages(reqs) # gpu.run(['accelerate launch --multi_gpu accelerate/examples/nlp_example.py'])
0
hf_public_repos/accelerate
hf_public_repos/accelerate/examples/complete_cv_example.py
# coding=utf-8 # Copyright 2021 The HuggingFace Inc. team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import argparse import os import re import numpy as np import PIL import torch from timm import create_model from torch.optim.lr_scheduler import OneCycleLR from torch.utils.data import DataLoader, Dataset from torchvision.transforms import Compose, RandomResizedCrop, Resize, ToTensor from accelerate import Accelerator ######################################################################## # This is a fully working simple example to use Accelerate # # This example trains a ResNet50 on the Oxford-IIT Pet Dataset # in any of the following settings (with the same script): # - single CPU or single GPU # - multi GPUS (using PyTorch distributed mode) # - (multi) TPUs # - fp16 (mixed-precision) or fp32 (normal precision) # # To run it in each of these various modes, follow the instructions # in the readme for examples: # https://github.com/huggingface/accelerate/tree/main/examples # ######################################################################## # Function to get the label from the filename def extract_label(fname): stem = fname.split(os.path.sep)[-1] return re.search(r"^(.*)_\d+\.jpg$", stem).groups()[0] class PetsDataset(Dataset): def __init__(self, file_names, image_transform=None, label_to_id=None): self.file_names = file_names self.image_transform = image_transform self.label_to_id = label_to_id def __len__(self): return len(self.file_names) def __getitem__(self, idx): fname = self.file_names[idx] raw_image = PIL.Image.open(fname) image = raw_image.convert("RGB") if self.image_transform is not None: image = self.image_transform(image) label = extract_label(fname) if self.label_to_id is not None: label = self.label_to_id[label] return {"image": image, "label": label} def training_function(config, args): # Initialize accelerator if args.with_tracking: accelerator = Accelerator( cpu=args.cpu, mixed_precision=args.mixed_precision, log_with="all", project_dir=args.project_dir ) else: accelerator = Accelerator(cpu=args.cpu, mixed_precision=args.mixed_precision) # Sample hyper-parameters for learning rate, batch size, seed and a few other HPs lr = config["lr"] num_epochs = int(config["num_epochs"]) seed = int(config["seed"]) batch_size = int(config["batch_size"]) image_size = config["image_size"] if not isinstance(image_size, (list, tuple)): image_size = (image_size, image_size) # Parse out whether we are saving every epoch or after a certain number of batches if hasattr(args.checkpointing_steps, "isdigit"): if args.checkpointing_steps == "epoch": checkpointing_steps = args.checkpointing_steps elif args.checkpointing_steps.isdigit(): checkpointing_steps = int(args.checkpointing_steps) else: raise ValueError( f"Argument `checkpointing_steps` must be either a number or `epoch`. `{args.checkpointing_steps}` passed." ) else: checkpointing_steps = None # We need to initialize the trackers we use, and also store our configuration if args.with_tracking: run = os.path.split(__file__)[-1].split(".")[0] accelerator.init_trackers(run, config) # Grab all the image filenames file_names = [os.path.join(args.data_dir, fname) for fname in os.listdir(args.data_dir) if fname.endswith(".jpg")] # Build the label correspondences all_labels = [extract_label(fname) for fname in file_names] id_to_label = list(set(all_labels)) id_to_label.sort() label_to_id = {lbl: i for i, lbl in enumerate(id_to_label)} # Set the seed before splitting the data. np.random.seed(seed) torch.manual_seed(seed) torch.cuda.manual_seed_all(seed) # Split our filenames between train and validation random_perm = np.random.permutation(len(file_names)) cut = int(0.8 * len(file_names)) train_split = random_perm[:cut] eval_split = random_perm[cut:] # For training we use a simple RandomResizedCrop train_tfm = Compose([RandomResizedCrop(image_size, scale=(0.5, 1.0)), ToTensor()]) train_dataset = PetsDataset( [file_names[i] for i in train_split], image_transform=train_tfm, label_to_id=label_to_id ) # For evaluation, we use a deterministic Resize eval_tfm = Compose([Resize(image_size), ToTensor()]) eval_dataset = PetsDataset([file_names[i] for i in eval_split], image_transform=eval_tfm, label_to_id=label_to_id) # Instantiate dataloaders. train_dataloader = DataLoader(train_dataset, shuffle=True, batch_size=batch_size, num_workers=4) eval_dataloader = DataLoader(eval_dataset, shuffle=False, batch_size=batch_size, num_workers=4) # Instantiate the model (we build the model here so that the seed also control new weights initialization) model = create_model("resnet50d", pretrained=True, num_classes=len(label_to_id)) # We could avoid this line since the accelerator is set with `device_placement=True` (default value). # Note that if you are placing tensors on devices manually, this line absolutely needs to be before the optimizer # creation otherwise training will not work on TPU (`accelerate` will kindly throw an error to make us aware of that). model = model.to(accelerator.device) # Freezing the base model for param in model.parameters(): param.requires_grad = False for param in model.get_classifier().parameters(): param.requires_grad = True # We normalize the batches of images to be a bit faster. mean = torch.tensor(model.default_cfg["mean"])[None, :, None, None].to(accelerator.device) std = torch.tensor(model.default_cfg["std"])[None, :, None, None].to(accelerator.device) # Instantiate optimizer optimizer = torch.optim.Adam(params=model.parameters(), lr=lr / 25) # Instantiate learning rate scheduler lr_scheduler = OneCycleLR(optimizer=optimizer, max_lr=lr, epochs=num_epochs, steps_per_epoch=len(train_dataloader)) # Prepare everything # There is no specific order to remember, we just need to unpack the objects in the same order we gave them to the # prepare method. model, optimizer, train_dataloader, eval_dataloader, lr_scheduler = accelerator.prepare( model, optimizer, train_dataloader, eval_dataloader, lr_scheduler ) # We need to keep track of how many total steps we have iterated over overall_step = 0 # We also need to keep track of the starting epoch so files are named properly starting_epoch = 0 # Potentially load in the weights and states from a previous save if args.resume_from_checkpoint: if args.resume_from_checkpoint is not None or args.resume_from_checkpoint != "": accelerator.print(f"Resumed from checkpoint: {args.resume_from_checkpoint}") accelerator.load_state(args.resume_from_checkpoint) path = os.path.basename(args.resume_from_checkpoint) else: # Get the most recent checkpoint dirs = [f.name for f in os.scandir(os.getcwd()) if f.is_dir()] dirs.sort(key=os.path.getctime) path = dirs[-1] # Sorts folders by date modified, most recent checkpoint is the last # Extract `epoch_{i}` or `step_{i}` training_difference = os.path.splitext(path)[0] if "epoch" in training_difference: starting_epoch = int(training_difference.replace("epoch_", "")) + 1 resume_step = None else: resume_step = int(training_difference.replace("step_", "")) starting_epoch = resume_step // len(train_dataloader) resume_step -= starting_epoch * len(train_dataloader) # Now we train the model for epoch in range(starting_epoch, num_epochs): model.train() if args.with_tracking: total_loss = 0 if args.resume_from_checkpoint and epoch == starting_epoch and resume_step is not None: # We need to skip steps until we reach the resumed step active_dataloader = accelerator.skip_first_batches(train_dataloader, resume_step) overall_step += resume_step else: # After the first iteration though, we need to go back to the original dataloader active_dataloader = train_dataloader for batch in active_dataloader: # We could avoid this line since we set the accelerator with `device_placement=True`. batch = {k: v.to(accelerator.device) for k, v in batch.items()} inputs = (batch["image"] - mean) / std outputs = model(inputs) loss = torch.nn.functional.cross_entropy(outputs, batch["label"]) # We keep track of the loss at each epoch if args.with_tracking: total_loss += loss.detach().float() accelerator.backward(loss) optimizer.step() lr_scheduler.step() optimizer.zero_grad() overall_step += 1 if isinstance(checkpointing_steps, int): output_dir = f"step_{overall_step}" if overall_step % checkpointing_steps == 0: if args.output_dir is not None: output_dir = os.path.join(args.output_dir, output_dir) accelerator.save_state(output_dir) model.eval() accurate = 0 num_elems = 0 for step, batch in enumerate(eval_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch = {k: v.to(accelerator.device) for k, v in batch.items()} inputs = (batch["image"] - mean) / std with torch.no_grad(): outputs = model(inputs) predictions = outputs.argmax(dim=-1) predictions, references = accelerator.gather_for_metrics((predictions, batch["label"])) accurate_preds = predictions == references num_elems += accurate_preds.shape[0] accurate += accurate_preds.long().sum() eval_metric = accurate.item() / num_elems # Use accelerator.print to print only on the main process. accelerator.print(f"epoch {epoch}: {100 * eval_metric:.2f}") if args.with_tracking: accelerator.log( { "accuracy": 100 * eval_metric, "train_loss": total_loss.item() / len(train_dataloader), "epoch": epoch, }, step=overall_step, ) if checkpointing_steps == "epoch": output_dir = f"epoch_{epoch}" if args.output_dir is not None: output_dir = os.path.join(args.output_dir, output_dir) accelerator.save_state(output_dir) if args.with_tracking: accelerator.end_training() def main(): parser = argparse.ArgumentParser(description="Simple example of training script.") parser.add_argument("--data_dir", required=True, help="The data folder on disk.") parser.add_argument("--fp16", action="store_true", help="If passed, will use FP16 training.") parser.add_argument( "--mixed_precision", type=str, default=None, choices=["no", "fp16", "bf16", "fp8"], help="Whether to use mixed precision. Choose" "between fp16 and bf16 (bfloat16). Bf16 requires PyTorch >= 1.10." "and an Nvidia Ampere GPU.", ) parser.add_argument("--cpu", action="store_true", help="If passed, will train on the CPU.") parser.add_argument( "--checkpointing_steps", type=str, default=None, help="Whether the various states should be saved at the end of every n steps, or 'epoch' for each epoch.", ) parser.add_argument( "--output_dir", type=str, default=".", help="Optional save directory where all checkpoint folders will be stored. Default is the current working directory.", ) parser.add_argument( "--resume_from_checkpoint", type=str, default=None, help="If the training should continue from a checkpoint folder.", ) parser.add_argument( "--with_tracking", action="store_true", help="Whether to load in all available experiment trackers from the environment and use them for logging.", ) parser.add_argument( "--project_dir", type=str, default="logs", help="Location on where to store experiment tracking logs` and relevent project information", ) args = parser.parse_args() config = {"lr": 3e-2, "num_epochs": 3, "seed": 42, "batch_size": 64, "image_size": 224} training_function(config, args) if __name__ == "__main__": main()
0
hf_public_repos/accelerate
hf_public_repos/accelerate/examples/nlp_example.py
# coding=utf-8 # Copyright 2021 The HuggingFace Inc. team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import argparse import evaluate import torch from datasets import load_dataset from torch.optim import AdamW from torch.utils.data import DataLoader from transformers import AutoModelForSequenceClassification, AutoTokenizer, get_linear_schedule_with_warmup, set_seed from accelerate import Accelerator, DistributedType ######################################################################## # This is a fully working simple example to use Accelerate # # This example trains a Bert base model on GLUE MRPC # in any of the following settings (with the same script): # - single CPU or single GPU # - multi GPUS (using PyTorch distributed mode) # - (multi) TPUs # - fp16 (mixed-precision) or fp32 (normal precision) # # To run it in each of these various modes, follow the instructions # in the readme for examples: # https://github.com/huggingface/accelerate/tree/main/examples # ######################################################################## MAX_GPU_BATCH_SIZE = 16 EVAL_BATCH_SIZE = 32 def get_dataloaders(accelerator: Accelerator, batch_size: int = 16): """ Creates a set of `DataLoader`s for the `glue` dataset, using "bert-base-cased" as the tokenizer. Args: accelerator (`Accelerator`): An `Accelerator` object batch_size (`int`, *optional*): The batch size for the train and validation DataLoaders. """ tokenizer = AutoTokenizer.from_pretrained("bert-base-cased") datasets = load_dataset("glue", "mrpc") def tokenize_function(examples): # max_length=None => use the model max length (it's actually the default) outputs = tokenizer(examples["sentence1"], examples["sentence2"], truncation=True, max_length=None) return outputs # Apply the method we just defined to all the examples in all the splits of the dataset # starting with the main process first: with accelerator.main_process_first(): tokenized_datasets = datasets.map( tokenize_function, batched=True, remove_columns=["idx", "sentence1", "sentence2"], ) # We also rename the 'label' column to 'labels' which is the expected name for labels by the models of the # transformers library tokenized_datasets = tokenized_datasets.rename_column("label", "labels") def collate_fn(examples): # On TPU it's best to pad everything to the same length or training will be very slow. max_length = 128 if accelerator.distributed_type == DistributedType.TPU else None # When using mixed precision we want round multiples of 8/16 if accelerator.mixed_precision == "fp8": pad_to_multiple_of = 16 elif accelerator.mixed_precision != "no": pad_to_multiple_of = 8 else: pad_to_multiple_of = None return tokenizer.pad( examples, padding="longest", max_length=max_length, pad_to_multiple_of=pad_to_multiple_of, return_tensors="pt", ) # Instantiate dataloaders. train_dataloader = DataLoader( tokenized_datasets["train"], shuffle=True, collate_fn=collate_fn, batch_size=batch_size, drop_last=True ) eval_dataloader = DataLoader( tokenized_datasets["validation"], shuffle=False, collate_fn=collate_fn, batch_size=EVAL_BATCH_SIZE, drop_last=(accelerator.mixed_precision == "fp8"), ) return train_dataloader, eval_dataloader def training_function(config, args): # Initialize accelerator accelerator = Accelerator(cpu=args.cpu, mixed_precision=args.mixed_precision) # Sample hyper-parameters for learning rate, batch size, seed and a few other HPs lr = config["lr"] num_epochs = int(config["num_epochs"]) seed = int(config["seed"]) batch_size = int(config["batch_size"]) metric = evaluate.load("glue", "mrpc") # If the batch size is too big we use gradient accumulation gradient_accumulation_steps = 1 if batch_size > MAX_GPU_BATCH_SIZE and accelerator.distributed_type != DistributedType.TPU: gradient_accumulation_steps = batch_size // MAX_GPU_BATCH_SIZE batch_size = MAX_GPU_BATCH_SIZE set_seed(seed) train_dataloader, eval_dataloader = get_dataloaders(accelerator, batch_size) # Instantiate the model (we build the model here so that the seed also control new weights initialization) model = AutoModelForSequenceClassification.from_pretrained("bert-base-cased", return_dict=True) # We could avoid this line since the accelerator is set with `device_placement=True` (default value). # Note that if you are placing tensors on devices manually, this line absolutely needs to be before the optimizer # creation otherwise training will not work on TPU (`accelerate` will kindly throw an error to make us aware of that). model = model.to(accelerator.device) # Instantiate optimizer optimizer = AdamW(params=model.parameters(), lr=lr) # Instantiate scheduler lr_scheduler = get_linear_schedule_with_warmup( optimizer=optimizer, num_warmup_steps=100, num_training_steps=(len(train_dataloader) * num_epochs) // gradient_accumulation_steps, ) # Prepare everything # There is no specific order to remember, we just need to unpack the objects in the same order we gave them to the # prepare method. model, optimizer, train_dataloader, eval_dataloader, lr_scheduler = accelerator.prepare( model, optimizer, train_dataloader, eval_dataloader, lr_scheduler ) # Now we train the model for epoch in range(num_epochs): model.train() for step, batch in enumerate(train_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) outputs = model(**batch) loss = outputs.loss loss = loss / gradient_accumulation_steps accelerator.backward(loss) if step % gradient_accumulation_steps == 0: optimizer.step() lr_scheduler.step() optimizer.zero_grad() model.eval() for step, batch in enumerate(eval_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) with torch.no_grad(): outputs = model(**batch) predictions = outputs.logits.argmax(dim=-1) predictions, references = accelerator.gather_for_metrics((predictions, batch["labels"])) metric.add_batch( predictions=predictions, references=references, ) eval_metric = metric.compute() # Use accelerator.print to print only on the main process. accelerator.print(f"epoch {epoch}:", eval_metric) def main(): parser = argparse.ArgumentParser(description="Simple example of training script.") parser.add_argument( "--mixed_precision", type=str, default=None, choices=["no", "fp16", "bf16", "fp8"], help="Whether to use mixed precision. Choose" "between fp16 and bf16 (bfloat16). Bf16 requires PyTorch >= 1.10." "and an Nvidia Ampere GPU.", ) parser.add_argument("--cpu", action="store_true", help="If passed, will train on the CPU.") args = parser.parse_args() config = {"lr": 2e-5, "num_epochs": 3, "seed": 42, "batch_size": 16} training_function(config, args) if __name__ == "__main__": main()
0
hf_public_repos/accelerate/examples
hf_public_repos/accelerate/examples/by_feature/README.md
# What are these scripts? All scripts in this folder originate from the `nlp_example.py` file, as it is a very simplistic NLP training example using Accelerate with zero extra features. From there, each further script adds in just **one** feature of Accelerate, showing how you can quickly modify your own scripts to implement these capabilities. A full example with all of these parts integrated together can be found in the `complete_nlp_example.py` script and `complete_cv_example.py` script. Adjustments to each script from the base `nlp_example.py` file can be found quickly by searching for "# New Code #" ## Example Scripts by Feature and their Arguments ### Base Example (`../nlp_example.py`) - Shows how to use `Accelerator` in an extremely simplistic PyTorch training loop - Arguments available: - `mixed_precision`, whether to use mixed precision. ("no", "fp16", or "bf16") - `cpu`, whether to train using only the CPU. (yes/no/1/0) All following scripts also accept these arguments in addition to their added ones. These arguments should be added at the end of any method for starting the python script (such as `python`, `accelerate launch`, `python -m torch.distributed.run`), such as: ```bash accelerate launch ../nlp_example.py --mixed_precision fp16 --cpu 0 ``` ### Checkpointing and Resuming Training (`checkpointing.py`) - Shows how to use `Accelerator.save_state` and `Accelerator.load_state` to save or continue training - **It is assumed you are continuing off the same training script** - Arguments available: - `checkpointing_steps`, after how many steps the various states should be saved. ("epoch", 1, 2, ...) - `output_dir`, where saved state folders should be saved to, default is current working directory - `resume_from_checkpoint`, what checkpoint folder to resume from. ("epoch_0", "step_22", ...) These arguments should be added at the end of any method for starting the python script (such as `python`, `accelerate launch`, `python -m torchrun`), such as: (Note, `resume_from_checkpoint` assumes that we've ran the script for one epoch with the `--checkpointing_steps epoch` flag) ```bash accelerate launch ./checkpointing.py --checkpointing_steps epoch output_dir "checkpointing_tutorial" --resume_from_checkpoint "checkpointing_tutorial/epoch_0" ``` ### Cross Validation (`cross_validation.py`) - Shows how to use `Accelerator.free_memory` and run cross validation efficiently with `datasets`. - Arguments available: - `num_folds`, the number of folds the training dataset should be split into. These arguments should be added at the end of any method for starting the python script (such as `python`, `accelerate launch`, `python -m torchrun`), such as: ```bash accelerate launch ./cross_validation.py --num_folds 2 ``` ### Experiment Tracking (`tracking.py`) - Shows how to use `Accelerate.init_trackers` and `Accelerator.log` - Can be used with Weights and Biases, TensorBoard, or CometML. - Arguments available: - `with_tracking`, whether to load in all available experiment trackers from the environment. These arguments should be added at the end of any method for starting the python script (such as `python`, `accelerate launch`, `python -m torchrun`), such as: ```bash accelerate launch ./tracking.py --with_tracking ``` ### Gradient Accumulation (`gradient_accumulation.py`) - Shows how to use `Accelerator.no_sync` to prevent gradient averaging in a distributed setup. - Arguments available: - `gradient_accumulation_steps`, the number of steps to perform before the gradients are accumulated and the optimizer and scheduler are stepped + zero_grad These arguments should be added at the end of any method for starting the python script (such as `python`, `accelerate launch`, `python -m torchrun`), such as: ```bash accelerate launch ./gradient_accumulation.py --gradient_accumulation_steps 5 ``` ### LocalSGD (`local_sgd.py`) - Shows how to use `Accelerator.no_sync` to prevent gradient averaging in a distributed setup. However, unlike gradient accumulation, this method does not change the effective batch size. Local SGD can be combined with gradient accumulation. These arguments should be added at the end of any method for starting the python script (such as `python`, `accelerate launch`, `python -m torchrun`), such as: ```bash accelerate launch ./local_sgd.py --local_sgd_steps 4 ```
0
hf_public_repos/accelerate/examples
hf_public_repos/accelerate/examples/by_feature/gradient_accumulation.py
# coding=utf-8 # Copyright 2021 The HuggingFace Inc. team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import argparse import os import evaluate import torch from datasets import load_dataset from torch.optim import AdamW from torch.utils.data import DataLoader from transformers import AutoModelForSequenceClassification, AutoTokenizer, get_linear_schedule_with_warmup, set_seed from accelerate import Accelerator, DistributedType ######################################################################## # This is a fully working simple example to use Accelerate # and perform gradient accumulation # # This example trains a Bert base model on GLUE MRPC # in any of the following settings (with the same script): # - single CPU or single GPU # - multi GPUS (using PyTorch distributed mode) # - (multi) TPUs # - fp16 (mixed-precision) or fp32 (normal precision) # # To run it in each of these various modes, follow the instructions # in the readme for examples: # https://github.com/huggingface/accelerate/tree/main/examples # ######################################################################## MAX_GPU_BATCH_SIZE = 16 EVAL_BATCH_SIZE = 32 def get_dataloaders(accelerator: Accelerator, batch_size: int = 16): """ Creates a set of `DataLoader`s for the `glue` dataset, using "bert-base-cased" as the tokenizer. Args: accelerator (`Accelerator`): An `Accelerator` object batch_size (`int`, *optional*): The batch size for the train and validation DataLoaders. """ tokenizer = AutoTokenizer.from_pretrained("bert-base-cased") datasets = load_dataset("glue", "mrpc") def tokenize_function(examples): # max_length=None => use the model max length (it's actually the default) outputs = tokenizer(examples["sentence1"], examples["sentence2"], truncation=True, max_length=None) return outputs # Apply the method we just defined to all the examples in all the splits of the dataset # starting with the main process first: with accelerator.main_process_first(): tokenized_datasets = datasets.map( tokenize_function, batched=True, remove_columns=["idx", "sentence1", "sentence2"], ) # We also rename the 'label' column to 'labels' which is the expected name for labels by the models of the # transformers library tokenized_datasets = tokenized_datasets.rename_column("label", "labels") def collate_fn(examples): # On TPU it's best to pad everything to the same length or training will be very slow. max_length = 128 if accelerator.distributed_type == DistributedType.TPU else None # When using mixed precision we want round multiples of 8/16 if accelerator.mixed_precision == "fp8": pad_to_multiple_of = 16 elif accelerator.mixed_precision != "no": pad_to_multiple_of = 8 else: pad_to_multiple_of = None return tokenizer.pad( examples, padding="longest", max_length=max_length, pad_to_multiple_of=pad_to_multiple_of, return_tensors="pt", ) # Instantiate dataloaders. train_dataloader = DataLoader( tokenized_datasets["train"], shuffle=True, collate_fn=collate_fn, batch_size=batch_size ) eval_dataloader = DataLoader( tokenized_datasets["validation"], shuffle=False, collate_fn=collate_fn, batch_size=EVAL_BATCH_SIZE ) return train_dataloader, eval_dataloader # For testing only if os.environ.get("TESTING_MOCKED_DATALOADERS", None) == "1": from accelerate.test_utils.training import mocked_dataloaders get_dataloaders = mocked_dataloaders # noqa: F811 def training_function(config, args): # For testing only if os.environ.get("TESTING_MOCKED_DATALOADERS", None) == "1": config["num_epochs"] = 2 # New Code # gradient_accumulation_steps = int(args.gradient_accumulation_steps) # Initialize accelerator accelerator = Accelerator( cpu=args.cpu, mixed_precision=args.mixed_precision, gradient_accumulation_steps=gradient_accumulation_steps ) if accelerator.distributed_type == DistributedType.TPU and gradient_accumulation_steps > 1: raise NotImplementedError( "Gradient accumulation on TPUs is currently not supported. Pass `gradient_accumulation_steps=1`" ) # Sample hyper-parameters for learning rate, batch size, seed and a few other HPs lr = config["lr"] num_epochs = int(config["num_epochs"]) seed = int(config["seed"]) batch_size = int(config["batch_size"]) metric = evaluate.load("glue", "mrpc") set_seed(seed) train_dataloader, eval_dataloader = get_dataloaders(accelerator, batch_size) # Instantiate the model (we build the model here so that the seed also control new weights initialization) model = AutoModelForSequenceClassification.from_pretrained("bert-base-cased", return_dict=True) # We could avoid this line since the accelerator is set with `device_placement=True` (default value). # Note that if you are placing tensors on devices manually, this line absolutely needs to be before the optimizer # creation otherwise training will not work on TPU (`accelerate` will kindly throw an error to make us aware of that). model = model.to(accelerator.device) # Instantiate optimizer optimizer = AdamW(params=model.parameters(), lr=lr) # Instantiate scheduler lr_scheduler = get_linear_schedule_with_warmup( optimizer=optimizer, num_warmup_steps=100, num_training_steps=(len(train_dataloader) * num_epochs), ) # Prepare everything # There is no specific order to remember, we just need to unpack the objects in the same order we gave them to the # prepare method. model, optimizer, train_dataloader, eval_dataloader, lr_scheduler = accelerator.prepare( model, optimizer, train_dataloader, eval_dataloader, lr_scheduler ) # Now we train the model for epoch in range(num_epochs): model.train() for step, batch in enumerate(train_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) # New code # # We use the new `accumulate` context manager to perform gradient accumulation # We also currently do not support TPUs nor advise it as bugs were found on the XLA side when running our tests. with accelerator.accumulate(model): output = model(**batch) loss = output.loss accelerator.backward(loss) optimizer.step() lr_scheduler.step() optimizer.zero_grad() model.eval() for step, batch in enumerate(eval_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) with torch.no_grad(): outputs = model(**batch) predictions = outputs.logits.argmax(dim=-1) predictions, references = accelerator.gather_for_metrics((predictions, batch["labels"])) metric.add_batch( predictions=predictions, references=references, ) eval_metric = metric.compute() # Use accelerator.print to print only on the main process. accelerator.print(f"epoch {epoch}:", eval_metric) def main(): parser = argparse.ArgumentParser(description="Simple example of training script.") parser.add_argument( "--mixed_precision", type=str, default=None, choices=["no", "fp16", "bf16", "fp8"], help="Whether to use mixed precision. Choose" "between fp16 and bf16 (bfloat16). Bf16 requires PyTorch >= 1.10." "and an Nvidia Ampere GPU.", ) # New Code # parser.add_argument( "--gradient_accumulation_steps", type=int, default=1, help="The number of minibatches to be ran before gradients are accumulated.", ) parser.add_argument("--cpu", action="store_true", help="If passed, will train on the CPU.") args = parser.parse_args() config = {"lr": 2e-5, "num_epochs": 3, "seed": 42, "batch_size": 16} training_function(config, args) if __name__ == "__main__": main()
0
hf_public_repos/accelerate/examples
hf_public_repos/accelerate/examples/by_feature/memory.py
# Copyright 2022 The HuggingFace Team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import argparse import os # New Code # import evaluate import torch from datasets import load_dataset from torch.optim import AdamW from torch.utils.data import DataLoader from transformers import AutoModelForSequenceClassification, AutoTokenizer, get_linear_schedule_with_warmup, set_seed from accelerate import Accelerator, DistributedType from accelerate.utils import find_executable_batch_size ######################################################################## # This is a fully working simple example to use Accelerate, # specifically showcasing how to ensure out-of-memory errors never # interrupt training, and builds off the `nlp_example.py` script. # # This example trains a Bert base model on GLUE MRPC # in any of the following settings (with the same script): # - single CPU or single GPU # - multi GPUS (using PyTorch distributed mode) # - (multi) TPUs # - fp16 (mixed-precision) or fp32 (normal precision) # # New additions from the base script can be found quickly by # looking for the # New Code # tags # # To run it in each of these various modes, follow the instructions # in the readme for examples: # https://github.com/huggingface/accelerate/tree/main/examples # ######################################################################## MAX_GPU_BATCH_SIZE = 16 EVAL_BATCH_SIZE = 32 def get_dataloaders(accelerator: Accelerator, batch_size: int = 16): """ Creates a set of `DataLoader`s for the `glue` dataset, using "bert-base-cased" as the tokenizer. Args: accelerator (`Accelerator`): An `Accelerator` object batch_size (`int`, *optional*): The batch size for the train and validation DataLoaders. """ tokenizer = AutoTokenizer.from_pretrained("bert-base-cased") datasets = load_dataset("glue", "mrpc") def tokenize_function(examples): # max_length=None => use the model max length (it's actually the default) outputs = tokenizer(examples["sentence1"], examples["sentence2"], truncation=True, max_length=None) return outputs # Apply the method we just defined to all the examples in all the splits of the dataset # starting with the main process first: with accelerator.main_process_first(): tokenized_datasets = datasets.map( tokenize_function, batched=True, remove_columns=["idx", "sentence1", "sentence2"], ) # We also rename the 'label' column to 'labels' which is the expected name for labels by the models of the # transformers library tokenized_datasets = tokenized_datasets.rename_column("label", "labels") def collate_fn(examples): # On TPU it's best to pad everything to the same length or training will be very slow. max_length = 128 if accelerator.distributed_type == DistributedType.TPU else None # When using mixed precision we want round multiples of 8/16 if accelerator.mixed_precision == "fp8": pad_to_multiple_of = 16 elif accelerator.mixed_precision != "no": pad_to_multiple_of = 8 else: pad_to_multiple_of = None return tokenizer.pad( examples, padding="longest", max_length=max_length, pad_to_multiple_of=pad_to_multiple_of, return_tensors="pt", ) # Instantiate dataloaders. train_dataloader = DataLoader( tokenized_datasets["train"], shuffle=True, collate_fn=collate_fn, batch_size=batch_size ) eval_dataloader = DataLoader( tokenized_datasets["validation"], shuffle=False, collate_fn=collate_fn, batch_size=EVAL_BATCH_SIZE ) return train_dataloader, eval_dataloader # For testing only if os.environ.get("TESTING_MOCKED_DATALOADERS", None) == "1": from accelerate.test_utils.training import mocked_dataloaders get_dataloaders = mocked_dataloaders # noqa: F811 def training_function(config, args): # For testing only if os.environ.get("TESTING_MOCKED_DATALOADERS", None) == "1": config["num_epochs"] = 2 # Initialize accelerator accelerator = Accelerator(cpu=args.cpu, mixed_precision=args.mixed_precision) # Sample hyper-parameters for learning rate, batch size, seed and a few other HPs lr = config["lr"] num_epochs = int(config["num_epochs"]) seed = int(config["seed"]) batch_size = int(config["batch_size"]) metric = evaluate.load("glue", "mrpc") # New Code # # We now can define an inner training loop function. It should take a batch size as the only parameter, # and build the dataloaders in there. # It also gets our decorator @find_executable_batch_size(starting_batch_size=batch_size) def inner_training_loop(batch_size): # And now just move everything below under this function # We need to bring in the Accelerator object from earlier nonlocal accelerator # And reset all of its attributes that could hold onto any memory: accelerator.free_memory() # Then we can declare the model, optimizer, and everything else: set_seed(seed) # Instantiate the model (we build the model here so that the seed also control new weights initialization) model = AutoModelForSequenceClassification.from_pretrained("bert-base-cased", return_dict=True) # We could avoid this line since the accelerator is set with `device_placement=True` (default value). # Note that if you are placing tensors on devices manually, this line absolutely needs to be before the optimizer # creation otherwise training will not work on TPU (`accelerate` will kindly throw an error to make us aware of that). model = model.to(accelerator.device) # Instantiate optimizer optimizer = AdamW(params=model.parameters(), lr=lr) train_dataloader, eval_dataloader = get_dataloaders(accelerator, batch_size) # Instantiate scheduler lr_scheduler = get_linear_schedule_with_warmup( optimizer=optimizer, num_warmup_steps=100, num_training_steps=(len(train_dataloader) * num_epochs), ) # Prepare everything # There is no specific order to remember, we just need to unpack the objects in the same order we gave them to the # prepare method. model, optimizer, train_dataloader, eval_dataloader, lr_scheduler = accelerator.prepare( model, optimizer, train_dataloader, eval_dataloader, lr_scheduler ) # Now we train the model for epoch in range(num_epochs): model.train() for step, batch in enumerate(train_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) outputs = model(**batch) loss = outputs.loss accelerator.backward(loss) optimizer.step() lr_scheduler.step() optimizer.zero_grad() model.eval() for step, batch in enumerate(eval_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) with torch.no_grad(): outputs = model(**batch) predictions = outputs.logits.argmax(dim=-1) predictions, references = accelerator.gather_for_metrics((predictions, batch["labels"])) metric.add_batch( predictions=predictions, references=references, ) eval_metric = metric.compute() # Use accelerator.print to print only on the main process. accelerator.print(f"epoch {epoch}:", eval_metric) # New Code # # And call it at the end with no arguments # Note: You could also refactor this outside of your training loop function inner_training_loop() def main(): parser = argparse.ArgumentParser(description="Simple example of training script.") parser.add_argument( "--mixed_precision", type=str, default=None, choices=["no", "fp16", "bf16", "fp8"], help="Whether to use mixed precision. Choose" "between fp16 and bf16 (bfloat16). Bf16 requires PyTorch >= 1.10." "and an Nvidia Ampere GPU.", ) parser.add_argument("--cpu", action="store_true", help="If passed, will train on the CPU.") args = parser.parse_args() config = {"lr": 2e-5, "num_epochs": 3, "seed": 42, "batch_size": 16} training_function(config, args) if __name__ == "__main__": main()
0
hf_public_repos/accelerate/examples
hf_public_repos/accelerate/examples/by_feature/cross_validation.py
# coding=utf-8 # Copyright 2022 The HuggingFace Inc. team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import argparse from typing import List import evaluate import numpy as np import torch from datasets import DatasetDict, load_dataset # New Code # # We'll be using StratifiedKFold for this example from sklearn.model_selection import StratifiedKFold from torch.optim import AdamW from torch.utils.data import DataLoader from transformers import AutoModelForSequenceClassification, AutoTokenizer, get_linear_schedule_with_warmup, set_seed from accelerate import Accelerator, DistributedType ######################################################################## # This is a fully working simple example to use Accelerate, # specifically showcasing how to perform Cross Validation, # and builds off the `nlp_example.py` script. # # This example trains a Bert base model on GLUE MRPC # in any of the following settings (with the same script): # - single CPU or single GPU # - multi GPUS (using PyTorch distributed mode) # - (multi) TPUs # - fp16 (mixed-precision) or fp32 (normal precision) # # To help focus on the differences in the code, building `DataLoaders` # was refactored into its own function. # New additions from the base script can be found quickly by # looking for the # New Code # tags # # To run it in each of these various modes, follow the instructions # in the readme for examples: # https://github.com/huggingface/accelerate/tree/main/examples # ######################################################################## MAX_GPU_BATCH_SIZE = 16 EVAL_BATCH_SIZE = 32 # New Code # # We need a different `get_dataloaders` function that will build dataloaders by index def get_fold_dataloaders( accelerator: Accelerator, dataset: DatasetDict, train_idxs: List[int], valid_idxs: List[int], batch_size: int = 16 ): """ Gets a set of train, valid, and test dataloaders for a particular fold Args: accelerator (`Accelerator`): The main `Accelerator` object train_idxs (list of `int`): The split indices for the training dataset valid_idxs (list of `int`): The split indices for the validation dataset batch_size (`int`): The size of the minibatch. Default is 16 """ tokenizer = AutoTokenizer.from_pretrained("bert-base-cased") datasets = DatasetDict( { "train": dataset["train"].select(train_idxs), "validation": dataset["train"].select(valid_idxs), "test": dataset["validation"], } ) def tokenize_function(examples): # max_length=None => use the model max length (it's actually the default) outputs = tokenizer(examples["sentence1"], examples["sentence2"], truncation=True, max_length=None) return outputs # Apply the method we just defined to all the examples in all the splits of the dataset # starting with the main process first: with accelerator.main_process_first(): tokenized_datasets = datasets.map( tokenize_function, batched=True, remove_columns=["idx", "sentence1", "sentence2"], ) # We also rename the 'label' column to 'labels' which is the expected name for labels by the models of the # transformers library tokenized_datasets = tokenized_datasets.rename_column("label", "labels") def collate_fn(examples): # On TPU it's best to pad everything to the same length or training will be very slow. max_length = 128 if accelerator.distributed_type == DistributedType.TPU else None # When using mixed precision we want round multiples of 8/16 if accelerator.mixed_precision == "fp8": pad_to_multiple_of = 16 elif accelerator.mixed_precision != "no": pad_to_multiple_of = 8 else: pad_to_multiple_of = None return tokenizer.pad( examples, padding="longest", max_length=max_length, pad_to_multiple_of=pad_to_multiple_of, return_tensors="pt", ) # Instantiate dataloaders. train_dataloader = DataLoader( tokenized_datasets["train"], shuffle=True, collate_fn=collate_fn, batch_size=batch_size ) eval_dataloader = DataLoader( tokenized_datasets["validation"], shuffle=False, collate_fn=collate_fn, batch_size=EVAL_BATCH_SIZE ) test_dataloader = DataLoader( tokenized_datasets["test"], shuffle=False, collate_fn=collate_fn, batch_size=EVAL_BATCH_SIZE ) return train_dataloader, eval_dataloader, test_dataloader def training_function(config, args): # New Code # test_predictions = [] # Download the dataset datasets = load_dataset("glue", "mrpc") # Create our splits kfold = StratifiedKFold(n_splits=int(args.num_folds)) # Initialize accelerator accelerator = Accelerator(cpu=args.cpu, mixed_precision=args.mixed_precision) # Sample hyper-parameters for learning rate, batch size, seed and a few other HPs lr = config["lr"] num_epochs = int(config["num_epochs"]) seed = int(config["seed"]) batch_size = int(config["batch_size"]) metric = evaluate.load("glue", "mrpc") # If the batch size is too big we use gradient accumulation gradient_accumulation_steps = 1 if batch_size > MAX_GPU_BATCH_SIZE and accelerator.distributed_type != DistributedType.TPU: gradient_accumulation_steps = batch_size // MAX_GPU_BATCH_SIZE batch_size = MAX_GPU_BATCH_SIZE set_seed(seed) # New Code # # Create our folds: folds = kfold.split(np.zeros(datasets["train"].num_rows), datasets["train"]["label"]) test_references = [] # Iterate over them for i, (train_idxs, valid_idxs) in enumerate(folds): train_dataloader, eval_dataloader, test_dataloader = get_fold_dataloaders( accelerator, datasets, train_idxs, valid_idxs, ) # Instantiate the model (we build the model here so that the seed also control new weights initialization) model = AutoModelForSequenceClassification.from_pretrained("bert-base-cased", return_dict=True) # We could avoid this line since the accelerator is set with `device_placement=True` (default value). # Note that if you are placing tensors on devices manually, this line absolutely needs to be before the optimizer # creation otherwise training will not work on TPU (`accelerate` will kindly throw an error to make us aware of that). model = model.to(accelerator.device) # Instantiate optimizer optimizer = AdamW(params=model.parameters(), lr=lr) # Instantiate scheduler lr_scheduler = get_linear_schedule_with_warmup( optimizer=optimizer, num_warmup_steps=100, num_training_steps=(len(train_dataloader) * num_epochs) // gradient_accumulation_steps, ) # Prepare everything # There is no specific order to remember, we just need to unpack the objects in the same order we gave them to the # prepare method. model, optimizer, train_dataloader, eval_dataloader, lr_scheduler = accelerator.prepare( model, optimizer, train_dataloader, eval_dataloader, lr_scheduler ) # Now we train the model for epoch in range(num_epochs): model.train() for step, batch in enumerate(train_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) outputs = model(**batch) loss = outputs.loss loss = loss / gradient_accumulation_steps accelerator.backward(loss) if step % gradient_accumulation_steps == 0: optimizer.step() lr_scheduler.step() optimizer.zero_grad() model.eval() for step, batch in enumerate(eval_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) with torch.no_grad(): outputs = model(**batch) predictions = outputs.logits.argmax(dim=-1) predictions, references = accelerator.gather_for_metrics((predictions, batch["labels"])) metric.add_batch( predictions=predictions, references=references, ) eval_metric = metric.compute() # Use accelerator.print to print only on the main process. accelerator.print(f"epoch {epoch}:", eval_metric) # New Code # # We also run predictions on the test set at the very end fold_predictions = [] for step, batch in enumerate(test_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) with torch.no_grad(): outputs = model(**batch) predictions = outputs.logits predictions, references = accelerator.gather_for_metrics((predictions, batch["labels"])) fold_predictions.append(predictions.cpu()) if i == 0: # We need all of the test predictions test_references.append(references.cpu()) # Use accelerator.print to print only on the main process. test_predictions.append(torch.cat(fold_predictions, dim=0)) # We now need to release all our memory and get rid of the current model, optimizer, etc accelerator.free_memory() # New Code # # Finally we check the accuracy of our folded results: test_references = torch.cat(test_references, dim=0) preds = torch.stack(test_predictions, dim=0).sum(dim=0).div(int(args.num_folds)).argmax(dim=-1) test_metric = metric.compute(predictions=preds, references=test_references) accelerator.print("Average test metrics from all folds:", test_metric) def main(): parser = argparse.ArgumentParser(description="Simple example of training script.") parser.add_argument( "--mixed_precision", type=str, default=None, choices=["no", "fp16", "bf16", "fp8"], help="Whether to use mixed precision. Choose" "between fp16 and bf16 (bfloat16). Bf16 requires PyTorch >= 1.10." "and an Nvidia Ampere GPU.", ) parser.add_argument("--cpu", action="store_true", help="If passed, will train on the CPU.") # New Code # parser.add_argument("--num_folds", type=int, default=3, help="The number of splits to perform across the dataset") args = parser.parse_args() config = {"lr": 2e-5, "num_epochs": 3, "seed": 42, "batch_size": 16} training_function(config, args) if __name__ == "__main__": main()
0
hf_public_repos/accelerate/examples
hf_public_repos/accelerate/examples/by_feature/automatic_gradient_accumulation.py
# Copyright 2022 The HuggingFace Team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import argparse import os # New Code # import evaluate import torch from datasets import load_dataset from torch.optim import AdamW from torch.utils.data import DataLoader from transformers import AutoModelForSequenceClassification, AutoTokenizer, get_linear_schedule_with_warmup, set_seed from accelerate import Accelerator from accelerate.utils import find_executable_batch_size ######################################################################## # This is a fully working simple example to use Accelerate, # specifically showcasing how to combine both the gradient accumulation # and automatic batch size finder utilities of Accelerate to perfrom # automatic gradient accumulation # # This example trains a Bert base model on GLUE MRPC # in any of the following settings (with the same script): # - single CPU or single GPU # - multi GPUS (using PyTorch distributed mode) # - (multi) TPUs # - fp16 (mixed-precision) or fp32 (normal precision) # # New additions from the base script can be found quickly by # looking for the # New Code # tags # # To run it in each of these various modes, follow the instructions # in the readme for examples: # https://github.com/huggingface/accelerate/tree/main/examples # ######################################################################## EVAL_BATCH_SIZE = 32 def get_dataloaders(accelerator: Accelerator, batch_size: int = 16): """ Creates a set of `DataLoader`s for the `glue` dataset, using "bert-base-cased" as the tokenizer. Args: accelerator (`Accelerator`): An `Accelerator` object batch_size (`int`, *optional*): The batch size for the train and validation DataLoaders. """ tokenizer = AutoTokenizer.from_pretrained("bert-base-cased") datasets = load_dataset("glue", "mrpc") def tokenize_function(examples): # max_length=None => use the model max length (it's actually the default) outputs = tokenizer(examples["sentence1"], examples["sentence2"], truncation=True, max_length=None) return outputs # Apply the method we just defined to all the examples in all the splits of the dataset # starting with the main process first: with accelerator.main_process_first(): tokenized_datasets = datasets.map( tokenize_function, batched=True, remove_columns=["idx", "sentence1", "sentence2"], ) # We also rename the 'label' column to 'labels' which is the expected name for labels by the models of the # transformers library tokenized_datasets = tokenized_datasets.rename_column("label", "labels") def collate_fn(examples): # When using mixed precision we want round multiples of 8/16 if accelerator.mixed_precision == "fp8": pad_to_multiple_of = 16 elif accelerator.mixed_precision != "no": pad_to_multiple_of = 8 else: pad_to_multiple_of = None return tokenizer.pad( examples, padding="longest", pad_to_multiple_of=pad_to_multiple_of, return_tensors="pt", ) # Instantiate dataloaders. train_dataloader = DataLoader( tokenized_datasets["train"], shuffle=True, collate_fn=collate_fn, batch_size=batch_size ) eval_dataloader = DataLoader( tokenized_datasets["validation"], shuffle=False, collate_fn=collate_fn, batch_size=EVAL_BATCH_SIZE ) return train_dataloader, eval_dataloader # For testing only if os.environ.get("TESTING_MOCKED_DATALOADERS", None) == "1": from accelerate.test_utils.training import mocked_dataloaders get_dataloaders = mocked_dataloaders # noqa: F811 def training_function(config, args): # For testing only if os.environ.get("TESTING_MOCKED_DATALOADERS", None) == "1": config["num_epochs"] = 2 # Initialize accelerator accelerator = Accelerator(cpu=args.cpu, mixed_precision=args.mixed_precision) # Sample hyper-parameters for learning rate, batch size, seed and a few other HPs lr = config["lr"] num_epochs = int(config["num_epochs"]) seed = int(config["seed"]) observed_batch_size = int(config["batch_size"]) metric = evaluate.load("glue", "mrpc") # New Code # # We use the `find_executable_batch_size` decorator, passing in the desired observed batch size # to train on. If a CUDA OOM error occurs, it will retry this loop cutting the batch size in # half each time. From this, we can calculate the number of gradient accumulation steps needed # and modify the Accelerator object as a result @find_executable_batch_size(starting_batch_size=int(observed_batch_size)) def inner_training_loop(batch_size): # Since we need to modify the outside accelerator object, we need to bring it # to the local scope nonlocal accelerator # We can calculate the number of gradient accumulation steps based on the current # batch size vs the starting batch size num_gradient_accumulation_steps = observed_batch_size // batch_size # And then set it in the Accelerator directly: accelerator.gradient_accumulation_steps = num_gradient_accumulation_steps # Next we need to free all of the stored model references in the Accelerator each time accelerator.free_memory() # And set the seed so our results are reproducable each reset set_seed(seed) # Instantiate the model (we build the model here so that the seed also control new weights initialization) model = AutoModelForSequenceClassification.from_pretrained("bert-base-cased", return_dict=True) # We could avoid this line since the accelerator is set with `device_placement=True` (default value). # Note that if you are placing tensors on devices manually, this line absolutely needs to be before the optimizer # creation otherwise training will not work on TPU (`accelerate` will kindly throw an error to make us aware of that). model = model.to(accelerator.device) # Instantiate optimizer optimizer = AdamW(params=model.parameters(), lr=lr) train_dataloader, eval_dataloader = get_dataloaders(accelerator, batch_size) # Instantiate scheduler lr_scheduler = get_linear_schedule_with_warmup( optimizer=optimizer, num_warmup_steps=100, num_training_steps=(len(train_dataloader) * num_epochs), ) # Prepare everything # There is no specific order to remember, we just need to unpack the objects in the same order we gave them to the # prepare method. model, optimizer, train_dataloader, eval_dataloader, lr_scheduler = accelerator.prepare( model, optimizer, train_dataloader, eval_dataloader, lr_scheduler ) # Now we train the model for epoch in range(num_epochs): model.train() for step, batch in enumerate(train_dataloader): # And perform gradient accumulation with accelerator.accumulate(model): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) outputs = model(**batch) loss = outputs.loss accelerator.backward(loss) optimizer.step() lr_scheduler.step() optimizer.zero_grad() model.eval() for step, batch in enumerate(eval_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) with torch.no_grad(): outputs = model(**batch) predictions = outputs.logits.argmax(dim=-1) predictions, references = accelerator.gather_for_metrics((predictions, batch["labels"])) metric.add_batch( predictions=predictions, references=references, ) eval_metric = metric.compute() # Use accelerator.print to print only on the main process. accelerator.print(f"epoch {epoch}:", eval_metric) # New Code # # And call it at the end with no arguments # Note: You could also refactor this outside of your training loop function inner_training_loop() def main(): parser = argparse.ArgumentParser(description="Simple example of training script.") parser.add_argument( "--mixed_precision", type=str, default=None, choices=["no", "fp16", "bf16", "fp8"], help="Whether to use mixed precision. Choose" "between fp16 and bf16 (bfloat16). Bf16 requires PyTorch >= 1.10." "and an Nvidia Ampere GPU.", ) parser.add_argument("--cpu", action="store_true", help="If passed, will train on the CPU.") args = parser.parse_args() # New Code # # We modify the starting batch size to be an observed batch size of 256, to guarentee an initial CUDA OOM config = {"lr": 2e-5, "num_epochs": 3, "seed": 42, "batch_size": 256} training_function(config, args) if __name__ == "__main__": main()
0
hf_public_repos/accelerate/examples
hf_public_repos/accelerate/examples/by_feature/deepspeed_with_config_support.py
#!/usr/bin/env python # coding=utf-8 # Copyright 2022 The HuggingFace Inc. team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. """ Fine-tuning the library models for causal language modeling (GPT, GPT-2, CTRL, ...) on a text file or a dataset without using HuggingFace Trainer. Here is the full list of checkpoints on the hub that can be fine-tuned by this script: https://huggingface.co/models?filter=text-generation """ # You can also adapt this script on your own causal language modeling task. Pointers for this are left as comments. import argparse import json import logging import math import os import random from itertools import chain from pathlib import Path import datasets import torch import transformers from datasets import load_dataset from huggingface_hub import Repository from torch.utils.data import DataLoader from tqdm.auto import tqdm from transformers import ( CONFIG_MAPPING, MODEL_MAPPING, AutoConfig, AutoModelForCausalLM, AutoTokenizer, SchedulerType, default_data_collator, get_scheduler, ) from transformers.utils import get_full_repo_name from transformers.utils.versions import require_version from accelerate import Accelerator, DistributedType from accelerate.logging import get_logger from accelerate.utils import DummyOptim, DummyScheduler, set_seed logger = get_logger(__name__) require_version("datasets>=1.8.0", "To fix: pip install -r examples/pytorch/language-modeling/requirements.txt") MODEL_CONFIG_CLASSES = list(MODEL_MAPPING.keys()) MODEL_TYPES = tuple(conf.model_type for conf in MODEL_CONFIG_CLASSES) def parse_args(): parser = argparse.ArgumentParser(description="Finetune a transformers model on a causal language modeling task") parser.add_argument( "--dataset_name", type=str, default=None, help="The name of the dataset to use (via the datasets library).", ) parser.add_argument( "--dataset_config_name", type=str, default=None, help="The configuration name of the dataset to use (via the datasets library).", ) parser.add_argument( "--train_file", type=str, default=None, help="A csv or a json file containing the training data." ) parser.add_argument( "--validation_file", type=str, default=None, help="A csv or a json file containing the validation data." ) parser.add_argument( "--validation_split_percentage", default=5, help="The percentage of the train set used as validation set in case there's no validation split", ) parser.add_argument( "--model_name_or_path", type=str, help="Path to pretrained model or model identifier from huggingface.co/models.", required=False, ) parser.add_argument( "--config_name", type=str, default=None, help="Pretrained config name or path if not the same as model_name", ) parser.add_argument( "--tokenizer_name", type=str, default=None, help="Pretrained tokenizer name or path if not the same as model_name", ) parser.add_argument( "--use_slow_tokenizer", action="store_true", help="If passed, will use a slow tokenizer (not backed by the 🤗 Tokenizers library).", ) parser.add_argument( "--per_device_train_batch_size", type=int, default=8, help="Batch size (per device) for the training dataloader.", ) parser.add_argument( "--per_device_eval_batch_size", type=int, default=8, help="Batch size (per device) for the evaluation dataloader.", ) parser.add_argument( "--learning_rate", type=float, default=5e-5, help="Initial learning rate (after the potential warmup period) to use.", ) parser.add_argument("--weight_decay", type=float, default=0.0, help="Weight decay to use.") parser.add_argument("--num_train_epochs", type=int, default=3, help="Total number of training epochs to perform.") parser.add_argument( "--max_train_steps", type=int, default=None, help="Total number of training steps to perform. If provided, overrides num_train_epochs.", ) parser.add_argument( "--gradient_accumulation_steps", type=int, default=1, help="Number of updates steps to accumulate before performing a backward/update pass.", ) parser.add_argument( "--lr_scheduler_type", type=SchedulerType, default="linear", help="The scheduler type to use.", choices=["linear", "cosine", "cosine_with_restarts", "polynomial", "constant", "constant_with_warmup"], ) parser.add_argument( "--num_warmup_steps", type=int, default=0, help="Number of steps for the warmup in the lr scheduler." ) parser.add_argument("--output_dir", type=str, default=None, help="Where to store the final model.") parser.add_argument("--seed", type=int, default=None, help="A seed for reproducible training.") parser.add_argument( "--model_type", type=str, default=None, help="Model type to use if training from scratch.", choices=MODEL_TYPES, ) parser.add_argument( "--block_size", type=int, default=None, help=( "Optional input sequence length after tokenization. The training dataset will be truncated in block of" " this size for training. Default to the model max input length for single sentence inputs (take into" " account special tokens)." ), ) parser.add_argument( "--preprocessing_num_workers", type=int, default=None, help="The number of processes to use for the preprocessing.", ) parser.add_argument( "--overwrite_cache", type=bool, default=False, help="Overwrite the cached training and evaluation sets" ) parser.add_argument( "--no_keep_linebreaks", action="store_true", help="Do not keep line breaks when using TXT files." ) parser.add_argument("--push_to_hub", action="store_true", help="Whether or not to push the model to the Hub.") parser.add_argument( "--hub_model_id", type=str, help="The name of the repository to keep in sync with the local `output_dir`." ) parser.add_argument("--hub_token", type=str, help="The token to use to push to the Model Hub.") parser.add_argument( "--checkpointing_steps", type=str, default=None, help="Whether the various states should be saved at the end of every n steps, or 'epoch' for each epoch.", ) parser.add_argument( "--resume_from_checkpoint", type=str, default=None, help="If the training should continue from a checkpoint folder.", ) # New Code # # Whether to load the best model at the end of training parser.add_argument( "--load_best_model", action="store_true", help="Whether to load the best model at the end of training", ) parser.add_argument( "--with_tracking", action="store_true", help="Whether to enable experiment trackers for logging.", ) parser.add_argument( "--report_to", type=str, default="all", help=( 'The integration to report the results and logs to. Supported platforms are `"tensorboard"`,' ' `"wandb"` and `"comet_ml"`. Use `"all"` (default) to report to all integrations.' "Only applicable when `--with_tracking` is passed." ), ) args = parser.parse_args() # Sanity checks if args.dataset_name is None and args.train_file is None and args.validation_file is None: raise ValueError("Need either a dataset name or a training/validation file.") else: if args.train_file is not None: extension = args.train_file.split(".")[-1] assert extension in ["csv", "json", "txt"], "`train_file` should be a csv, json or txt file." if args.validation_file is not None: extension = args.validation_file.split(".")[-1] assert extension in ["csv", "json", "txt"], "`validation_file` should be a csv, json or txt file." if args.push_to_hub: assert args.output_dir is not None, "Need an `output_dir` to create a repo when `--push_to_hub` is passed." return args # New Code # def evaluate(args, model, eval_dataloader, accelerator, eval_dataset): model.eval() losses = [] for step, batch in enumerate(eval_dataloader): with torch.no_grad(): outputs = model(**batch) loss = outputs.loss losses.append(accelerator.gather_for_metrics(loss.repeat(args.per_device_eval_batch_size))) losses = torch.cat(losses) try: eval_loss = torch.mean(losses) perplexity = math.exp(eval_loss) except OverflowError: perplexity = float("inf") return perplexity, eval_loss def main(): args = parse_args() # Initialize the accelerator. We will let the accelerator handle device placement for us in this example. # If we're using tracking, we also need to initialize it here and it will by default pick up all supported trackers # in the environment # when using DeepSpeed, the `gradient_accumulation_steps` is properly set from the DeepSpeed plugin/config # or from `accelerate launch` via `--gradient_accumulation_steps` else # defaulting to the passed `args.gradient_accumulation_steps` accelerator = ( Accelerator( log_with=args.report_to, project_dir=args.output_dir, gradient_accumulation_steps=args.gradient_accumulation_steps, ) if args.with_tracking else Accelerator(gradient_accumulation_steps=args.gradient_accumulation_steps) ) # Make one log on every process with the configuration for debugging. logging.basicConfig( format="%(asctime)s - %(levelname)s - %(name)s - %(message)s", datefmt="%m/%d/%Y %H:%M:%S", level=logging.INFO, ) logger.info(accelerator.state, main_process_only=False) if accelerator.is_local_main_process: datasets.utils.logging.set_verbosity_warning() transformers.utils.logging.set_verbosity_info() else: datasets.utils.logging.set_verbosity_error() transformers.utils.logging.set_verbosity_error() # If passed along, set the training seed now. if args.seed is not None: set_seed(args.seed) # Handle the repository creation if accelerator.is_main_process: if args.push_to_hub: if args.hub_model_id is None: repo_name = get_full_repo_name(Path(args.output_dir).name, token=args.hub_token) else: repo_name = args.hub_model_id repo = Repository(args.output_dir, clone_from=repo_name) with open(os.path.join(args.output_dir, ".gitignore"), "w+") as gitignore: if "step_*" not in gitignore: gitignore.write("step_*\n") if "epoch_*" not in gitignore: gitignore.write("epoch_*\n") elif args.output_dir is not None: os.makedirs(args.output_dir, exist_ok=True) accelerator.wait_for_everyone() # Get the datasets: you can either provide your own CSV/JSON/TXT training and evaluation files (see below) # or just provide the name of one of the public datasets available on the hub at https://huggingface.co/datasets/ # (the dataset will be downloaded automatically from the datasets Hub). # # For CSV/JSON files, this script will use the column called 'text' or the first column if no column called # 'text' is found. You can easily tweak this behavior (see below). # # In distributed training, the load_dataset function guarantee that only one local process can concurrently # download the dataset. if args.dataset_name is not None: # Downloading and loading a dataset from the hub. raw_datasets = load_dataset(args.dataset_name, args.dataset_config_name) if "validation" not in raw_datasets.keys(): raw_datasets["validation"] = load_dataset( args.dataset_name, args.dataset_config_name, split=f"train[:{args.validation_split_percentage}%]", ) raw_datasets["train"] = load_dataset( args.dataset_name, args.dataset_config_name, split=f"train[{args.validation_split_percentage}%:]", ) else: data_files = {} dataset_args = {} if args.train_file is not None: data_files["train"] = args.train_file if args.validation_file is not None: data_files["validation"] = args.validation_file extension = args.train_file.split(".")[-1] if extension == "txt": extension = "text" dataset_args["keep_linebreaks"] = not args.no_keep_linebreaks raw_datasets = load_dataset(extension, data_files=data_files, **dataset_args) # If no validation data is there, validation_split_percentage will be used to divide the dataset. if "validation" not in raw_datasets.keys(): raw_datasets["validation"] = load_dataset( extension, data_files=data_files, split=f"train[:{args.validation_split_percentage}%]", **dataset_args, ) raw_datasets["train"] = load_dataset( extension, data_files=data_files, split=f"train[{args.validation_split_percentage}%:]", **dataset_args, ) # See more about loading any type of standard or custom dataset (from files, python dict, pandas DataFrame, etc) at # https://huggingface.co/docs/datasets/loading_datasets.html. # Load pretrained model and tokenizer # # In distributed training, the .from_pretrained methods guarantee that only one local process can concurrently # download model & vocab. if args.config_name: config = AutoConfig.from_pretrained(args.config_name) elif args.model_name_or_path: config = AutoConfig.from_pretrained(args.model_name_or_path) else: config = CONFIG_MAPPING[args.model_type]() logger.warning("You are instantiating a new config instance from scratch.") if args.tokenizer_name: tokenizer = AutoTokenizer.from_pretrained(args.tokenizer_name, use_fast=not args.use_slow_tokenizer) elif args.model_name_or_path: tokenizer = AutoTokenizer.from_pretrained(args.model_name_or_path, use_fast=not args.use_slow_tokenizer) else: raise ValueError( "You are instantiating a new tokenizer from scratch. This is not supported by this script." "You can do it from another script, save it, and load it from here, using --tokenizer_name." ) if args.model_name_or_path: model = AutoModelForCausalLM.from_pretrained( args.model_name_or_path, from_tf=bool(".ckpt" in args.model_name_or_path), config=config, ) else: logger.info("Training new model from scratch") model = AutoModelForCausalLM.from_config(config) model.resize_token_embeddings(len(tokenizer)) # Preprocessing the datasets. # First we tokenize all the texts. column_names = raw_datasets["train"].column_names text_column_name = "text" if "text" in column_names else column_names[0] def tokenize_function(examples): return tokenizer(examples[text_column_name]) with accelerator.main_process_first(): tokenized_datasets = raw_datasets.map( tokenize_function, batched=True, num_proc=args.preprocessing_num_workers, remove_columns=column_names, load_from_cache_file=not args.overwrite_cache, desc="Running tokenizer on dataset", ) if args.block_size is None: block_size = tokenizer.model_max_length if block_size > 1024: logger.warning( f"The tokenizer picked seems to have a very large `model_max_length` ({tokenizer.model_max_length}). " "Picking 1024 instead. You can change that default value by passing --block_size xxx." ) block_size = 1024 else: if args.block_size > tokenizer.model_max_length: logger.warning( f"The block_size passed ({args.block_size}) is larger than the maximum length for the model" f"({tokenizer.model_max_length}). Using block_size={tokenizer.model_max_length}." ) block_size = min(args.block_size, tokenizer.model_max_length) # Main data processing function that will concatenate all texts from our dataset and generate chunks of block_size. def group_texts(examples): # Concatenate all texts. concatenated_examples = {k: list(chain(*examples[k])) for k in examples.keys()} total_length = len(concatenated_examples[list(examples.keys())[0]]) # We drop the small remainder, we could add padding if the model supported it instead of this drop, you can # customize this part to your needs. if total_length >= block_size: total_length = (total_length // block_size) * block_size # Split by chunks of max_len. result = { k: [t[i : i + block_size] for i in range(0, total_length, block_size)] for k, t in concatenated_examples.items() } result["labels"] = result["input_ids"].copy() return result # Note that with `batched=True`, this map processes 1,000 texts together, so group_texts throws away a remainder # for each of those groups of 1,000 texts. You can adjust that batch_size here but a higher value might be slower # to preprocess. # # To speed up this part, we use multiprocessing. See the documentation of the map method for more information: # https://huggingface.co/docs/datasets/package_reference/main_classes.html#datasets.Dataset.map with accelerator.main_process_first(): lm_datasets = tokenized_datasets.map( group_texts, batched=True, num_proc=args.preprocessing_num_workers, load_from_cache_file=not args.overwrite_cache, desc=f"Grouping texts in chunks of {block_size}", ) train_dataset = lm_datasets["train"] eval_dataset = lm_datasets["validation"] # Log a few random samples from the training set: for index in random.sample(range(len(train_dataset)), 3): logger.info(f"Sample {index} of the training set: {train_dataset[index]}.") # DataLoaders creation: train_dataloader = DataLoader( train_dataset, shuffle=True, collate_fn=default_data_collator, batch_size=args.per_device_train_batch_size ) eval_dataloader = DataLoader( eval_dataset, collate_fn=default_data_collator, batch_size=args.per_device_eval_batch_size ) # Optimizer # Split weights in two groups, one with weight decay and the other not. no_decay = ["bias", "LayerNorm.weight"] optimizer_grouped_parameters = [ { "params": [p for n, p in model.named_parameters() if not any(nd in n for nd in no_decay)], "weight_decay": args.weight_decay, }, { "params": [p for n, p in model.named_parameters() if any(nd in n for nd in no_decay)], "weight_decay": 0.0, }, ] # New Code # # Creates Dummy Optimizer if `optimizer` was specified in the config file else creates Adam Optimizer optimizer_cls = ( torch.optim.AdamW if accelerator.state.deepspeed_plugin is None or "optimizer" not in accelerator.state.deepspeed_plugin.deepspeed_config else DummyOptim ) optimizer = optimizer_cls(optimizer_grouped_parameters, lr=args.learning_rate) # On TPU, the tie weights in our model have been disconnected, so we need to restore the ties. if accelerator.distributed_type == DistributedType.TPU: model.tie_weights() # Scheduler and math around the number of training steps. num_update_steps_per_epoch = math.ceil(len(train_dataloader) / accelerator.gradient_accumulation_steps) overrode_max_train_steps = False if args.max_train_steps is None: args.max_train_steps = args.num_train_epochs * num_update_steps_per_epoch overrode_max_train_steps = True else: args.num_train_epochs = math.ceil(args.max_train_steps / num_update_steps_per_epoch) # New Code # # Creates Dummy Scheduler if `scheduler` was specified in the config file else creates `args.lr_scheduler_type` Scheduler if ( accelerator.state.deepspeed_plugin is None or "scheduler" not in accelerator.state.deepspeed_plugin.deepspeed_config ): lr_scheduler = get_scheduler( name=args.lr_scheduler_type, optimizer=optimizer, num_warmup_steps=args.num_warmup_steps, num_training_steps=args.max_train_steps, ) else: lr_scheduler = DummyScheduler( optimizer, total_num_steps=args.max_train_steps, warmup_num_steps=args.num_warmup_steps ) # Prepare everything with our `accelerator`. model, optimizer, train_dataloader, eval_dataloader, lr_scheduler = accelerator.prepare( model, optimizer, train_dataloader, eval_dataloader, lr_scheduler ) # We need to recalculate our total training steps as the size of the training dataloader may have changed. num_update_steps_per_epoch = math.ceil(len(train_dataloader) / accelerator.gradient_accumulation_steps) if overrode_max_train_steps: args.max_train_steps = args.num_train_epochs * num_update_steps_per_epoch # Afterwards we recalculate our number of training epochs args.num_train_epochs = math.ceil(args.max_train_steps / num_update_steps_per_epoch) # Figure out how many steps we should save the Accelerator states checkpointing_steps = args.checkpointing_steps if checkpointing_steps is not None and checkpointing_steps.isdigit(): checkpointing_steps = int(checkpointing_steps) # We need to initialize the trackers we use, and also store our configuration. # The trackers initializes automatically on the main process. if args.with_tracking: experiment_config = vars(args) # TensorBoard cannot log Enums, need the raw value experiment_config["lr_scheduler_type"] = experiment_config["lr_scheduler_type"].value accelerator.init_trackers("clm_no_trainer", experiment_config) # Train! total_batch_size = ( args.per_device_train_batch_size * accelerator.num_processes * accelerator.gradient_accumulation_steps ) logger.info("***** Running training *****") logger.info(f" Num examples = {len(train_dataset)}") logger.info(f" Num Epochs = {args.num_train_epochs}") logger.info(f" Instantaneous batch size per device = {args.per_device_train_batch_size}") logger.info(f" Total train batch size (w. parallel, distributed & accumulation) = {total_batch_size}") logger.info(f" Gradient Accumulation steps = {accelerator.gradient_accumulation_steps}") logger.info(f" Total optimization steps = {args.max_train_steps}") # Only show the progress bar once on each machine. progress_bar = tqdm(range(args.max_train_steps), disable=not accelerator.is_local_main_process) completed_steps = 0 starting_epoch = 0 best_metric = None best_metric_checkpoint = None # Potentially load in the weights and states from a previous save if args.resume_from_checkpoint: accelerator.load_state(args.resume_from_checkpoint) accelerator.print(f"Resumed from checkpoint: {args.resume_from_checkpoint}") path = os.path.basename(args.resume_from_checkpoint) training_difference = os.path.splitext(path)[0] if "epoch" in training_difference: starting_epoch = int(training_difference.replace("epoch_", "")) + 1 resume_step = None completed_steps = starting_epoch * num_update_steps_per_epoch else: resume_step = int(training_difference.replace("step_", "")) starting_epoch = resume_step // num_update_steps_per_epoch resume_step -= starting_epoch * num_update_steps_per_epoch completed_steps = resume_step for epoch in range(starting_epoch, args.num_train_epochs): model.train() if args.with_tracking: total_loss = 0 # skip new `skip_first_batches` to skip the batches when resuming from ckpt if args.resume_from_checkpoint: train_dataloader = accelerator.skip_first_batches(train_dataloader, num_batches=resume_step) for step, batch in enumerate(train_dataloader): # In particular, DeepSpeed handles `gradient_accumulation` via `DeepSpeedEngine`. # Below, we use `accelerator.accumulate` if the user # wants to switch to other approaches such as plain DDP, PyTorch FSDP ... # This avoids having to change any code as things are all handled across different distributed setups. with accelerator.accumulate(model): outputs = model(**batch) loss = outputs.loss accelerator.backward(loss) optimizer.step() lr_scheduler.step() optimizer.zero_grad() if accelerator.sync_gradients: progress_bar.update(1) completed_steps += 1 # We keep track of the loss at each epoch if args.with_tracking: step_loss = accelerator.reduce(loss.detach().clone()).item() total_loss += step_loss if isinstance(checkpointing_steps, int): if completed_steps % checkpointing_steps == 0: output_dir = f"step_{completed_steps}" if args.output_dir is not None: output_dir = os.path.join(args.output_dir, output_dir) accelerator.save_state(output_dir) if completed_steps >= args.max_train_steps: break perplexity, eval_loss = evaluate(args, model, eval_dataloader, accelerator, eval_dataset) logger.info(f"epoch {epoch}: perplexity: {perplexity} eval_loss: {eval_loss}") if args.with_tracking: accelerator.log( { "perplexity": perplexity, "eval_loss": eval_loss, "train_loss": total_loss / len(train_dataloader), "epoch": epoch, "step": completed_steps, }, step=completed_steps, ) if isinstance(checkpointing_steps, str) and checkpointing_steps == "epoch": accelerator.save_state(os.path.join(args.output_dir, f"epoch_{epoch}")) # New Code # # Tracks the best checkpoint and best metric if best_metric is None or best_metric > perplexity: best_metric = perplexity best_metric_checkpoint = os.path.join(args.output_dir, "best_checkpoint") accelerator.save_state(best_metric_checkpoint) accelerator.print(f"New best metric: {best_metric} at epoch {epoch}") accelerator.print(f"best_metric_checkpoint: {best_metric_checkpoint}") # New Code # # Loads the best checkpoint after the training is finished if args.load_best_model: accelerator.load_state(best_metric_checkpoint) # New Code # # Evaluates using the best checkpoint perplexity, eval_loss = evaluate(args, model, eval_dataloader, accelerator, eval_dataset) logger.info(f"Best model metrics: perplexity: {perplexity} eval_loss: {eval_loss}") if perplexity != best_metric: raise AssertionError( f"Best metric {best_metric} does not match the metric {perplexity} of the loaded best model." ) if args.output_dir is not None: accelerator.wait_for_everyone() unwrapped_model = accelerator.unwrap_model(model) # New Code # # Saves the whole/unpartitioned fp16 model when in ZeRO Stage-3 to the output directory if # `stage3_gather_16bit_weights_on_model_save` is True in DeepSpeed Config file or # `zero3_save_16bit_model` is True in DeepSpeed Plugin. # For Zero Stages 1 and 2, models are saved as usual in the output directory. # The model name saved is `pytorch_model.bin` unwrapped_model.save_pretrained( args.output_dir, is_main_process=accelerator.is_main_process, save_function=accelerator.save, state_dict=accelerator.get_state_dict(model), ) if accelerator.is_main_process: tokenizer.save_pretrained(args.output_dir) if args.push_to_hub: repo.push_to_hub(commit_message="End of training", auto_lfs_prune=True) with open(os.path.join(args.output_dir, "all_results.json"), "w") as f: json.dump({"perplexity": perplexity, "eval_loss": eval_loss.item()}, f) if __name__ == "__main__": main()
0
hf_public_repos/accelerate/examples
hf_public_repos/accelerate/examples/by_feature/local_sgd.py
# coding=utf-8 # Copyright 2023 The HuggingFace Inc. team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import argparse import os import evaluate import torch from datasets import load_dataset from torch.optim import AdamW from torch.utils.data import DataLoader from transformers import AutoModelForSequenceClassification, AutoTokenizer, get_linear_schedule_with_warmup, set_seed from accelerate import Accelerator, DistributedType from accelerate.local_sgd import LocalSGD ######################################################################## # This is a fully working simple example to use Accelerate # with LocalSGD, which is a method to synchronize model # parameters every K batches. It is different, but complementary # to gradient accumulation. # # This example trains a Bert base model on GLUE MRPC # in any of the following settings (with the same script): # - single CPU or single GPU # - multi GPUS (using PyTorch distributed mode) # - (multi) TPUs # - fp16 (mixed-precision) or fp32 (normal precision) # # To run it in each of these various modes, follow the instructions # in the readme for examples: # https://github.com/huggingface/accelerate/tree/main/examples # ######################################################################## MAX_GPU_BATCH_SIZE = 16 EVAL_BATCH_SIZE = 32 def get_dataloaders(accelerator: Accelerator, batch_size: int = 16): """ Creates a set of `DataLoader`s for the `glue` dataset, using "bert-base-cased" as the tokenizer. Args: accelerator (`Accelerator`): An `Accelerator` object batch_size (`int`, *optional*): The batch size for the train and validation DataLoaders. """ tokenizer = AutoTokenizer.from_pretrained("bert-base-cased") datasets = load_dataset("glue", "mrpc") def tokenize_function(examples): # max_length=None => use the model max length (it's actually the default) outputs = tokenizer(examples["sentence1"], examples["sentence2"], truncation=True, max_length=None) return outputs # Apply the method we just defined to all the examples in all the splits of the dataset # starting with the main process first: with accelerator.main_process_first(): tokenized_datasets = datasets.map( tokenize_function, batched=True, remove_columns=["idx", "sentence1", "sentence2"], ) # We also rename the 'label' column to 'labels' which is the expected name for labels by the models of the # transformers library tokenized_datasets = tokenized_datasets.rename_column("label", "labels") def collate_fn(examples): # On TPU it's best to pad everything to the same length or training will be very slow. max_length = 128 if accelerator.distributed_type == DistributedType.TPU else None # When using mixed precision we want round multiples of 8/16 if accelerator.mixed_precision == "fp8": pad_to_multiple_of = 16 elif accelerator.mixed_precision != "no": pad_to_multiple_of = 8 else: pad_to_multiple_of = None return tokenizer.pad( examples, padding="longest", max_length=max_length, pad_to_multiple_of=pad_to_multiple_of, return_tensors="pt", ) # Instantiate dataloaders. train_dataloader = DataLoader( tokenized_datasets["train"], shuffle=True, collate_fn=collate_fn, batch_size=batch_size ) eval_dataloader = DataLoader( tokenized_datasets["validation"], shuffle=False, collate_fn=collate_fn, batch_size=EVAL_BATCH_SIZE ) return train_dataloader, eval_dataloader # For testing only if os.environ.get("TESTING_MOCKED_DATALOADERS", None) == "1": from accelerate.test_utils.training import mocked_dataloaders get_dataloaders = mocked_dataloaders # noqa: F811 def training_function(config, args): # For testing only if os.environ.get("TESTING_MOCKED_DATALOADERS", None) == "1": config["num_epochs"] = 2 # New Code # gradient_accumulation_steps = int(args.gradient_accumulation_steps) local_sgd_steps = int(args.local_sgd_steps) # Initialize accelerator accelerator = Accelerator( cpu=args.cpu, mixed_precision=args.mixed_precision, gradient_accumulation_steps=gradient_accumulation_steps ) if accelerator.distributed_type not in [DistributedType.NO, DistributedType.MULTI_CPU, DistributedType.MULTI_GPU]: raise NotImplementedError("LocalSGD is supported only for CPUs and GPUs (no DeepSpeed or MegatronLM)") # Sample hyper-parameters for learning rate, batch size, seed and a few other HPs lr = config["lr"] num_epochs = int(config["num_epochs"]) seed = int(config["seed"]) batch_size = int(config["batch_size"]) metric = evaluate.load("glue", "mrpc") set_seed(seed) train_dataloader, eval_dataloader = get_dataloaders(accelerator, batch_size) # Instantiate the model (we build the model here so that the seed also control new weights initialization) model = AutoModelForSequenceClassification.from_pretrained("bert-base-cased", return_dict=True) # We could avoid this line since the accelerator is set with `device_placement=True` (default value). # Note that if you are placing tensors on devices manually, this line absolutely needs to be before the optimizer # creation otherwise training will not work on TPU (`accelerate` will kindly throw an error to make us aware of that). model = model.to(accelerator.device) # Instantiate optimizer optimizer = AdamW(params=model.parameters(), lr=lr) # Instantiate scheduler lr_scheduler = get_linear_schedule_with_warmup( optimizer=optimizer, num_warmup_steps=100, num_training_steps=(len(train_dataloader) * num_epochs), ) # Prepare everything # There is no specific order to remember, we just need to unpack the objects in the same order we gave them to the # prepare method. model, optimizer, train_dataloader, eval_dataloader, lr_scheduler = accelerator.prepare( model, optimizer, train_dataloader, eval_dataloader, lr_scheduler ) # Now we train the model for epoch in range(num_epochs): model.train() with LocalSGD( accelerator=accelerator, model=model, local_sgd_steps=local_sgd_steps, enabled=local_sgd_steps is not None ) as local_sgd: for step, batch in enumerate(train_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) # New code # # We use the new `accumulate` context manager to perform gradient accumulation # We also currently do not support TPUs nor advise it as bugs were found on the XLA side when running our tests. with accelerator.accumulate(model): output = model(**batch) loss = output.loss accelerator.backward(loss) optimizer.step() lr_scheduler.step() optimizer.zero_grad() # LocalSGD-specific line local_sgd.step() model.eval() for step, batch in enumerate(eval_dataloader): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device) with torch.no_grad(): outputs = model(**batch) predictions = outputs.logits.argmax(dim=-1) predictions, references = accelerator.gather_for_metrics((predictions, batch["labels"])) metric.add_batch( predictions=predictions, references=references, ) eval_metric = metric.compute() # Use accelerator.print to print only on the main process. accelerator.print(f"epoch {epoch}:", eval_metric) def main(): parser = argparse.ArgumentParser(description="Simple example of training script.") parser.add_argument( "--mixed_precision", type=str, default=None, choices=["no", "fp16", "bf16", "fp8"], help="Whether to use mixed precision. Choose" "between fp16 and bf16 (bfloat16). Bf16 requires PyTorch >= 1.10." "and an Nvidia Ampere GPU.", ) # New Code # parser.add_argument( "--gradient_accumulation_steps", type=int, default=1, help="The number of minibatches to be ran before gradients are accumulated.", ) parser.add_argument( "--local_sgd_steps", type=int, default=8, help="Number of local SGD steps or None to disable local SGD" ) parser.add_argument("--cpu", action="store_true", help="If passed, will train on the CPU.") args = parser.parse_args() config = {"lr": 2e-5, "num_epochs": 3, "seed": 42, "batch_size": 16} training_function(config, args) if __name__ == "__main__": main()
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