mirror of
https://github.com/hexastack/hexabot
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172 lines
6.3 KiB
Markdown
172 lines
6.3 KiB
Markdown
# Hexabot NLU
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The [Hexabot](https://hexabot.ai/) NLU (Natural Language Understanding) engine is a Python-based project that provides tools for building, training, and evaluating machine learning models for natural language tasks such as intent detection and language recognition. It also includes a REST API for inference, built using FastAPI.
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## Directory Structure
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- **/run.py:** The CLI tool that provides commands for training, evaluating, and managing models.
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- **/models:** Contains the different model definitions and logic for training, testing, and evaluation.
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- **/data:** Placeholder for datasets used during training and evaluation.
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- **/experiments:** Placeholder for stored models generated during training.
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- **/data_loaders:** Classes that define the way to load datasets to be used by the different models.
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- **/main.py:** The FastAPI-based REST API used for inference, exposing endpoints for real-time predictions.
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## Setup
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**No dependencies needed besides Python 3.11.6, virtualenv, and TensorFlow.** Start developing your new model on top of this workflow by cloning this repository:
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```bash
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# Set up a virtualenv
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pip install virtualenv
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python3.11 -m venv venv
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source env.sh
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pip install -r requirements.txt
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```
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## Directory structure
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- `data`: gitignore'd, place datasets here.
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- `experiments`: gitignore'd, trained models written here.
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- `data_loaders`: write your data loaders here.
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- `models`: write your models here.
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## Usage
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**Check `models/mlp.py` and `data_loaders/mnist.py` for fully working examples.**
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You should run `source env.sh` on each new shell session. This activates the virtualenv and creates a nice alias for `run.py`:
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```bash
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$ cat env.sh
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source venv/bin/activate
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alias run='python run.py'
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```
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Most routines involve running a command like this:
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```bash
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# Usage: run [method] [save_dir] [model] [data_loader] [hparams...]
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run fit myexperiment1 mlp mnist --batch_size=32 --learning_rate=0.1
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```
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Examples :
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```bash
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# Intent classification
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run fit intent-classifier-en-30072024 intent_classifier --intent_num_labels=88 --slot_num_labels=17 --language=en
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run predict intent-classifier-fr-30072024 --intent_num_labels=7 --slot_num_labels=2 --language=fr
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# Language classification
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run fit language-classifier-26082023 tflc
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run predict language-classifier-26082023
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run evaluate language-classifier-26082023
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```
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where the `model` and `data_loader` args are the module names (i.e., the file names without the `.py`). The command above would run the Keras model's `fit` method, but it could be any custom as long as it accepts a data loader instance as argument.
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**If `save_dir` already has a model**:
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- Only the first two arguments are required and the data loader may be changed, but respecifying the model is not allowed-- the existing model will always be used.
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- Specified hyperparameter values in the command line WILL override previously used ones
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(for this run only, not on disk).
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### `tfbp.Model`
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Models pretty much follow the same rules as Keras models with very slight differences: the constructor's arguments should not be overriden (since the boilerplate code handles instantiation), and the `save` and `restore` methods don't need any arguments.
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```python
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import tensorflow as tf
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import boilerplate as tfbp
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@tfbp.default_export
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class MyModel(tfbp.Model):
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default_hparams = {
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"batch_size": 32,
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"hidden_size": 512,
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"learning_rate": 0.01,
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}
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# Don't mess with the args and keyword args, `run.py` handles that.
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def __init__(self, *a, **kw):
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super().__init__(*a, **kw)
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self.dense1 = tf.keras.layers.Dense(self.hparams.hidden_size)
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...
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def call(self, x):
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z = self.dense1(x)
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...
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```
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You can also write your own training loops à la pytorch by overriding the `fit` method
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or writing a custom method that you can invoke via `run.py` simply by adding the
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`@tfbp.runnable` decorator. Examples of both are available in `models/mlp.py`.
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### `tfbp.DataLoader`
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Since model methods invoked by `run.py` receive a data loader instance, you may name your data loader methods whatever you wish and call them in your model code. A good practice is to make the data loader handle anything that is specific to a particular dataset, which allows the model to be as general as possible.
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```python
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import tensorflow as tf
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import boilerplate as tfbp
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@tfbp.default_export
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class MyDataLoader(tfbp.DataLoader):
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default_hparams = {
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"batch_size": 32,
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}
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def __call__(self):
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if self.method == "fit":
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train_data = tf.data.TextLineDataset("data/train.txt").shuffle(10000)
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valid_data = tf.data.TextLineDataset("data/valid.txt").shuffle(10000)
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return self.prep_dataset(train_data), self.prep_dataset(valid_data)
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elif self.method == "eval":
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test_data = tf.data.TextLineDataset("data/test.txt")
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return self.prep_dataset(test_data)
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def prep_dataset(self, ds):
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return ds.batch(self.hparams.batch_size).prefetch(1)
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```
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### API
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API is built using FastAPI : https://fastapi.tiangolo.com/
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Run the dev server in standalone with:
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```sh
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ENVIRONMENT=dev uvicorn main:app --host 0.0.0.0 --port 5000 --reload
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```
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Run the project with Docker :
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```sh
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docker compose -f "docker-compose.yml" up -d --build
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```
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## Pushing models to HuggingFace
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Please refer to official HF documentation on how to host models : https://huggingface.co/docs/hub/en/repositories-getting-started
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What is important to note is that big files should be tracked with git-lfs, which you can initialize with:
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```
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git lfs install
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```
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and if your files are larger than 5GB you’ll also need to run:
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```
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huggingface-cli lfs-enable-largefiles .
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```
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## Contributing
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We welcome contributions from the community! Whether you want to report a bug, suggest new features, or submit a pull request, your input is valuable to us.
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Feel free to join us on [Discord](https://discord.gg/rNb9t2MFkG)
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## License
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This software is licensed under the GNU Affero General Public License v3.0 (AGPLv3) with the following additional terms:
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1. The name "Hexabot" is a trademark of Hexastack. You may not use this name in derivative works without express written permission.
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2. All derivative works must include clear attribution to the original creator and software, Hexastack and Hexabot, in a prominent location (e.g., in the software's "About" section, documentation, and README file).
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