| How to convert a 🤗 Transformers model to TensorFlow? | |
| Having multiple frameworks available to use with 🤗 Transformers gives you flexibility to play their strengths when | |
| designing your application, but it implies that compatibility must be added on a per-model basis. The good news is that | |
| adding TensorFlow compatibility to an existing model is simpler than adding a new model from scratch! | |
| Whether you wish to have a deeper understanding of large TensorFlow models, make a major open-source contribution, or | |
| enable TensorFlow for your model of choice, this guide is for you. | |
| This guide empowers you, a member of our community, to contribute TensorFlow model weights and/or | |
| architectures to be used in 🤗 Transformers, with minimal supervision from the Hugging Face team. Writing a new model | |
| is no small feat, but hopefully this guide will make it less of a rollercoaster 🎢 and more of a walk in the park 🚶. | |
| Harnessing our collective experiences is absolutely critical to make this process increasingly easier, and thus we | |
| highly encourage that you suggest improvements to this guide! | |
| Before you dive deeper, it is recommended that you check the following resources if you're new to 🤗 Transformers: | |
| - General overview of 🤗 Transformers | |
| - Hugging Face's TensorFlow Philosophy | |
| In the remainder of this guide, you will learn what's needed to add a new TensorFlow model architecture, the | |
| procedure to convert PyTorch into TensorFlow model weights, and how to efficiently debug mismatches across ML | |
| frameworks. Let's get started! | |
| Are you unsure whether the model you wish to use already has a corresponding TensorFlow architecture? | |
| Check the model_type field of the config.json of your model of choice | |
| (example). If the corresponding model folder in | |
| 🤗 Transformers has a file whose name starts with "modeling_tf", it means that it has a corresponding TensorFlow | |
| architecture (example). | |
| Step-by-step guide to add TensorFlow model architecture code | |
| There are many ways to design a large model architecture, and multiple ways of implementing said design. However, | |
| you might recall from our general overview of 🤗 Transformers | |
| that we are an opinionated bunch - the ease of use of 🤗 Transformers relies on consistent design choices. From | |
| experience, we can tell you a few important things about adding TensorFlow models: | |
| Don't reinvent the wheel! More often than not, there are at least two reference implementations you should check: the | |
| PyTorch equivalent of the model you are implementing and other TensorFlow models for the same class of problems. | |
| Great model implementations survive the test of time. This doesn't happen because the code is pretty, but rather | |
| because the code is clear, easy to debug and build upon. If you make the life of the maintainers easy with your | |
| TensorFlow implementation, by replicating the same patterns as in other TensorFlow models and minimizing the mismatch | |
| to the PyTorch implementation, you ensure your contribution will be long lived. | |
| Ask for help when you're stuck! The 🤗 Transformers team is here to help, and we've probably found solutions to the same | |
| problems you're facing. | |
| Here's an overview of the steps needed to add a TensorFlow model architecture: | |
| 1. Select the model you wish to convert | |
| 2. Prepare transformers dev environment | |
| 3. (Optional) Understand theoretical aspects and the existing implementation | |
| 4. Implement the model architecture | |
| 5. Implement model tests | |
| 6. Submit the pull request | |
| 7. (Optional) Build demos and share with the world | |
| 1.-3. Prepare your model contribution | |
| 1. Select the model you wish to convert | |
| Let's start off with the basics: the first thing you need to know is the architecture you want to convert. If you | |
| don't have your eyes set on a specific architecture, asking the 🤗 Transformers team for suggestions is a great way to | |
| maximize your impact - we will guide you towards the most prominent architectures that are missing on the TensorFlow | |
| side. If the specific model you want to use with TensorFlow already has a TensorFlow architecture implementation in | |
| 🤗 Transformers but is lacking weights, feel free to jump straight into the | |
| weight conversion section | |
| of this page. | |
| For simplicity, the remainder of this guide assumes you've decided to contribute with the TensorFlow version of | |
| BrandNewBert (the same example as in the guide to add a new model from scratch). | |
| Before starting the work on a TensorFlow model architecture, double-check that there is no ongoing effort to do so. | |
| You can search for BrandNewBert on the | |
| pull request GitHub page to confirm that there is no | |
| TensorFlow-related pull request. | |
| 2. Prepare transformers dev environment | |
| Having selected the model architecture, open a draft PR to signal your intention to work on it. Follow the | |
| instructions below to set up your environment and open a draft PR. | |
| Fork the repository by clicking on the 'Fork' button on the | |
| repository's page. This creates a copy of the code under your GitHub user account. | |
| Clone your transformers fork to your local disk, and add the base repository as a remote: | |
| git clone https://github.com/[your Github handle]/transformers.git | |
| cd transformers | |
| git remote add upstream https://github.com/huggingface/transformers.git | |
| Set up a development environment, for instance by running the following command: | |
| python -m venv .env | |
| source .env/bin/activate | |
| pip install -e ".[dev]" | |
| Depending on your OS, and since the number of optional dependencies of Transformers is growing, you might get a | |
| failure with this command. If that's the case make sure to install TensorFlow then do: | |
| pip install -e ".[quality]" | |
| Note: You don't need to have CUDA installed. Making the new model work on CPU is sufficient. | |
| Create a branch with a descriptive name from your main branch | |
| git checkout -b add_tf_brand_new_bert | |
| Fetch and rebase to current main | |
| git fetch upstream | |
| git rebase upstream/main | |
| Add an empty .py file in transformers/src/models/brandnewbert/ named modeling_tf_brandnewbert.py. This will | |
| be your TensorFlow model file. | |
| Push the changes to your account using: | |
| git add . | |
| git commit -m "initial commit" | |
| git push -u origin add_tf_brand_new_bert | |
| Once you are satisfied, go to the webpage of your fork on GitHub. Click on “Pull request”. Make sure to add the | |
| GitHub handle of some members of the Hugging Face team as reviewers, so that the Hugging Face team gets notified for | |
| future changes. | |
| Change the PR into a draft by clicking on “Convert to draft” on the right of the GitHub pull request web page. | |
| Now you have set up a development environment to port BrandNewBert to TensorFlow in 🤗 Transformers. | |
| 3. (Optional) Understand theoretical aspects and the existing implementation | |
| You should take some time to read BrandNewBert's paper, if such descriptive work exists. There might be large | |
| sections of the paper that are difficult to understand. If this is the case, this is fine - don't worry! The goal is | |
| not to get a deep theoretical understanding of the paper, but to extract the necessary information required to | |
| effectively re-implement the model in 🤗 Transformers using TensorFlow. That being said, you don't have to spend too | |
| much time on the theoretical aspects, but rather focus on the practical ones, namely the existing model documentation | |
| page (e.g. model docs for BERT). | |
| After you've grasped the basics of the models you are about to implement, it's important to understand the existing | |
| implementation. This is a great chance to confirm that a working implementation matches your expectations for the | |
| model, as well as to foresee technical challenges on the TensorFlow side. | |
| It's perfectly natural that you feel overwhelmed with the amount of information that you've just absorbed. It is | |
| definitely not a requirement that you understand all facets of the model at this stage. Nevertheless, we highly | |
| encourage you to clear any pressing questions in our forum. | |
| 4. Model implementation | |
| Now it's time to finally start coding. Our suggested starting point is the PyTorch file itself: copy the contents of | |
| modeling_brand_new_bert.py inside src/transformers/models/brand_new_bert/ into | |
| modeling_tf_brand_new_bert.py. The goal of this section is to modify the file and update the import structure of | |
| 🤗 Transformers such that you can import TFBrandNewBert and | |
| TFBrandNewBert.from_pretrained(model_repo, from_pt=True) successfully loads a working TensorFlow BrandNewBert model. | |
| Sadly, there is no prescription to convert a PyTorch model into TensorFlow. You can, however, follow our selection of | |
| tips to make the process as smooth as possible: | |
| - Prepend TF to the name of all classes (e.g. BrandNewBert becomes TFBrandNewBert). | |
| - Most PyTorch operations have a direct TensorFlow replacement. For example, torch.nn.Linear corresponds to | |
| tf.keras.layers.Dense, torch.nn.Dropout corresponds to tf.keras.layers.Dropout, etc. If you're not sure | |
| about a specific operation, you can use the TensorFlow documentation | |
| or the PyTorch documentation. | |
| - Look for patterns in the 🤗 Transformers codebase. If you come across a certain operation that doesn't have a direct | |
| replacement, the odds are that someone else already had the same problem. | |
| - By default, keep the same variable names and structure as in PyTorch. This will make it easier to debug, track | |
| issues, and add fixes down the line. | |
| - Some layers have different default values in each framework. A notable example is the batch normalization layer's | |
| epsilon (1e-5 in PyTorch | |
| and 1e-3 in TensorFlow). | |
| Double-check the documentation! | |
| - PyTorch's nn.Parameter variables typically need to be initialized within TF Layer's build(). See the following | |
| example: PyTorch / | |
| TensorFlow | |
| - If the PyTorch model has a #copied from on top of a function, the odds are that your TensorFlow model can also | |
| borrow that function from the architecture it was copied from, assuming it has a TensorFlow architecture. | |
| - Assigning the name attribute correctly in TensorFlow functions is critical to do the from_pt=True weight | |
| cross-loading. name is almost always the name of the corresponding variable in the PyTorch code. If name is not | |
| properly set, you will see it in the error message when loading the model weights. | |
| - The logic of the base model class, BrandNewBertModel, will actually reside in TFBrandNewBertMainLayer, a Keras | |
| layer subclass (example). | |
| TFBrandNewBertModel will simply be a wrapper around this layer. | |
| - Keras models need to be built in order to load pretrained weights. For that reason, TFBrandNewBertPreTrainedModel | |
| will need to hold an example of inputs to the model, the dummy_inputs | |
| (example). | |
| - If you get stuck, ask for help - we're here to help you! 🤗 | |
| In addition to the model file itself, you will also need to add the pointers to the model classes and related | |
| documentation pages. You can complete this part entirely following the patterns in other PRs | |
| (example). Here's a list of the needed manual | |
| changes: | |
| - Include all public classes of BrandNewBert in src/transformers/__init__.py | |
| - Add BrandNewBert classes to the corresponding Auto classes in src/transformers/models/auto/modeling_tf_auto.py | |
| - Add the lazy loading classes related to BrandNewBert in src/transformers/utils/dummy_tf_objects.py | |
| - Update the import structures for the public classes in src/transformers/models/brand_new_bert/__init__.py | |
| - Add the documentation pointers to the public methods of BrandNewBert in docs/source/en/model_doc/brand_new_bert.md | |
| - Add yourself to the list of contributors to BrandNewBert in docs/source/en/model_doc/brand_new_bert.md | |
| - Finally, add a green tick ✅ to the TensorFlow column of BrandNewBert in docs/source/en/index.md | |
| When you're happy with your implementation, run the following checklist to confirm that your model architecture is | |
| ready: | |
| 1. All layers that behave differently at train time (e.g. Dropout) are called with a training argument, which is | |
| propagated all the way from the top-level classes | |
| 2. You have used #copied from whenever possible | |
| 3. TFBrandNewBertMainLayer and all classes that use it have their call function decorated with @unpack_inputs | |
| 4. TFBrandNewBertMainLayer is decorated with @keras_serializable | |
| 5. A TensorFlow model can be loaded from PyTorch weights using TFBrandNewBert.from_pretrained(model_repo, from_pt=True) | |
| 6. You can call the TensorFlow model using the expected input format | |
| 5. Add model tests | |
| Hurray, you've implemented a TensorFlow model! Now it's time to add tests to make sure that your model behaves as | |
| expected. As in the previous section, we suggest you start by copying the test_modeling_brand_new_bert.py file in | |
| tests/models/brand_new_bert/ into test_modeling_tf_brand_new_bert.py, and continue by making the necessary | |
| TensorFlow replacements. For now, in all .from_pretrained() calls, you should use the from_pt=True flag to load | |
| the existing PyTorch weights. | |
| After you're done, it's time for the moment of truth: run the tests! 😬 | |
| NVIDIA_TF32_OVERRIDE=0 RUN_SLOW=1 RUN_PT_TF_CROSS_TESTS=1 \ | |
| py.test -vv tests/models/brand_new_bert/test_modeling_tf_brand_new_bert.py | |
| The most likely outcome is that you'll see a bunch of errors. Don't worry, this is expected! Debugging ML models is | |
| notoriously hard, and the key ingredient to success is patience (and breakpoint()). In our experience, the hardest | |
| problems arise from subtle mismatches between ML frameworks, for which we have a few pointers at the end of this guide. | |
| In other cases, a general test might not be directly applicable to your model, in which case we suggest an override | |
| at the model test class level. Regardless of the issue, don't hesitate to ask for help in your draft pull request if | |
| you're stuck. | |
| When all tests pass, congratulations, your model is nearly ready to be added to the 🤗 Transformers library! 🎉 | |
| 6.-7. Ensure everyone can use your model | |
| 6. Submit the pull request | |
| Once you're done with the implementation and the tests, it's time to submit a pull request. Before pushing your code, | |
| run our code formatting utility, make fixup 🪄. This will automatically fix any formatting issues, which would cause | |
| our automatic checks to fail. | |
| It's now time to convert your draft pull request into a real pull request. To do so, click on the "Ready for | |
| review" button and add Joao (@gante) and Matt (@Rocketknight1) as reviewers. A model pull request will need | |
| at least 3 reviewers, but they will take care of finding appropriate additional reviewers for your model. | |
| After all reviewers are happy with the state of your PR, the final action point is to remove the from_pt=True flag in | |
| .from_pretrained() calls. Since there are no TensorFlow weights, you will have to add them! Check the section | |
| below for instructions on how to do it. | |
| Finally, when the TensorFlow weights get merged, you have at least 3 reviewer approvals, and all CI checks are | |
| green, double-check the tests locally one last time | |
| NVIDIA_TF32_OVERRIDE=0 RUN_SLOW=1 RUN_PT_TF_CROSS_TESTS=1 \ | |
| py.test -vv tests/models/brand_new_bert/test_modeling_tf_brand_new_bert.py | |
| and we will merge your PR! Congratulations on the milestone 🎉 | |
| 7. (Optional) Build demos and share with the world | |
| One of the hardest parts about open-source is discovery. How can the other users learn about the existence of your | |
| fabulous TensorFlow contribution? With proper communication, of course! 📣 | |
| There are two main ways to share your model with the community: | |
| - Build demos. These include Gradio demos, notebooks, and other fun ways to show off your model. We highly | |
| encourage you to add a notebook to our community-driven demos. | |
| - Share stories on social media like Twitter and LinkedIn. You should be proud of your work and share | |
| your achievement with the community - your model can now be used by thousands of engineers and researchers around | |
| the world 🌍! We will be happy to retweet your posts and help you share your work with the community. | |
| Adding TensorFlow weights to 🤗 Hub | |
| Assuming that the TensorFlow model architecture is available in 🤗 Transformers, converting PyTorch weights into | |
| TensorFlow weights is a breeze! | |
| Here's how to do it: | |
| 1. Make sure you are logged into your Hugging Face account in your terminal. You can log in using the command | |
| huggingface-cli login (you can find your access tokens here) | |
| 2. Run transformers-cli pt-to-tf --model-name foo/bar, where foo/bar is the name of the model repository | |
| containing the PyTorch weights you want to convert | |
| 3. Tag @joaogante and @Rocketknight1 in the 🤗 Hub PR the command above has just created | |
| That's it! 🎉 | |
| Debugging mismatches across ML frameworks 🐛 | |
| At some point, when adding a new architecture or when creating TensorFlow weights for an existing architecture, you | |
| might come across errors complaining about mismatches between PyTorch and TensorFlow. You might even decide to open the | |
| model architecture code for the two frameworks, and find that they look identical. What's going on? 🤔 | |
| First of all, let's talk about why understanding these mismatches matters. Many community members will use 🤗 | |
| Transformers models out of the box, and trust that our models behave as expected. When there is a large mismatch | |
| between the two frameworks, it implies that the model is not following the reference implementation for at least one | |
| of the frameworks. This might lead to silent failures, in which the model runs but has poor performance. This is | |
| arguably worse than a model that fails to run at all! To that end, we aim at having a framework mismatch smaller than | |
| 1e-5 at all stages of the model. | |
| As in other numerical problems, the devil is in the details. And as in any detail-oriented craft, the secret | |
| ingredient here is patience. Here is our suggested workflow for when you come across this type of issues: | |
| 1. Locate the source of mismatches. The model you're converting probably has near identical inner variables up to a | |
| certain point. Place breakpoint() statements in the two frameworks' architectures, and compare the values of the | |
| numerical variables in a top-down fashion until you find the source of the problems. | |
| 2. Now that you've pinpointed the source of the issue, get in touch with the 🤗 Transformers team. It is possible | |
| that we've seen a similar problem before and can promptly provide a solution. As a fallback, scan popular pages | |
| like StackOverflow and GitHub issues. | |
| 3. If there is no solution in sight, it means you'll have to go deeper. The good news is that you've located the | |
| issue, so you can focus on the problematic instruction, abstracting away the rest of the model! The bad news is | |
| that you'll have to venture into the source implementation of said instruction. In some cases, you might find an | |
| issue with a reference implementation - don't abstain from opening an issue in the upstream repository. | |
| In some cases, in discussion with the 🤗 Transformers team, we might find that fixing the mismatch is infeasible. | |
| When the mismatch is very small in the output layers of the model (but potentially large in the hidden states), we | |
| might decide to ignore it in favor of distributing the model. The pt-to-tf CLI mentioned above has a --max-error | |
| flag to override the error message at weight conversion time. |