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Traingenerator

๐Ÿง™ย  A web app to generate template code for machine learning โœจ

Code style: black



๐ŸŽ‰ Traingenerator is now live! ๐ŸŽ‰

Try it out:
https://traingenerator.streamlitapp.com/


Generate custom template code for PyTorch & sklearn, using a simple web UI built with streamlit. Traingenerator offers multiple options for preprocessing, model setup, training, and visualization (using Tensorboard or comet.ml). It exports to .py, Jupyter Notebook, or Google Colab. The perfect tool to jumpstart your next machine learning project!


For updates, follow me on Twitter.




Adding new templates

You can add your own template in 4 easy steps (see below), without changing any code in the app itself. Your new template will be automatically discovered by Traingenerator and shown in the sidebar. That's it! ๐ŸŽˆ

Want to share your magic? ๐Ÿง™ PRs are welcome! Please have a look at CONTRIBUTING.md.

Some ideas for new templates: Keras/Tensorflow, Pytorch Lightning, object detection, segmentation, text classification, ...

  1. Create a folder under ./templates. The folder name should be the task that your template solves (e.g. Image classification). Optionally, you can add a framework name (e.g. Image classification_PyTorch). Both names are automatically shown in the first two dropdowns in the sidebar (see image). โœจ Tip: Copy the example template to get started more quickly.
  2. Add a file sidebar.py to the folder (see example). It needs to contain a method show(), which displays all template-specific streamlit components in the sidebar (i.e. everything below Task) and returns a dictionary of user inputs.
  3. Add a file code-template.py.jinja to the folder (see example). This Jinja2 template is used to generate the code. You can write normal Python code in it and modify it (through Jinja) based on the user inputs in the sidebar (e.g. insert a parameter value from the sidebar or show different code parts based on the user's selection).
  4. Optional: Add a file test-inputs.yml to the folder (see example). This simple YAML file should define a few possible user inputs that can be used for testing. If you run pytest (see below), it will automatically pick up this file, render the code template with its values, and check that the generated code runs without errors. This file is optional โ€“ but it's required if you want to contribute your template to this repo.

Installation

Note: You only need to install Traingenerator if you want to contribute or run it locally. If you just want to use it, go here.

git clone https://github.com/jrieke/traingenerator.git
cd traingenerator
pip install -r requirements.txt

Optional: For the "Open in Colab" button to work you need to set up a Github repo where the notebook files can be stored (Colab can only open public files if they are on Github). After setting up the repo, create a file .env with content:

GITHUB_TOKEN=<your-github-access-token>
REPO_NAME=<user/notebooks-repo>

If you don't set this up, the app will still work but the "Open in Colab" button will only show an error message.

Running locally

streamlit run app/main.py

Make sure to run always from the traingenerator dir (not from the app dir), otherwise the app will not be able to find the templates.

Deploying to Heroku

First, install heroku and login. To create a new deployment, run inside traingenerator:

heroku create
git push heroku main
heroku open

To update the deployed app, commit your changes and run:

git push heroku main

Optional: If you set up a Github repo to enable the "Open in Colab" button (see above), you also need to run:

heroku config:set GITHUB_TOKEN=<your-github-access-token>
heroku config:set REPO_NAME=<user/notebooks-repo>

Testing

First, install pytest and required plugins via:

pip install -r requirements-dev.txt

To run all tests:

pytest ./tests

Note that this only tests the code templates (i.e. it renders them with different input values and makes sure that the code executes without error). The streamlit app itself is not tested at the moment.

You can also test an individual template by passing the name of the template dir to --template, e.g.:

pytest ./tests --template "Image classification_scikit-learn"

The mage image used in Traingenerator is from Twitter's Twemoji library and released under Creative Commons Attribution 4.0 International Public License.

traingenerator's People

Contributors

gorarakelyan avatar jrieke avatar murthy95 avatar

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traingenerator's Issues

Add Aim integration to traingenerator

Thanks for the great work.
It would be great to add Aim to train generator as an experiment logger option.

Aim is the most advanced open source experiment comparison tool available at the moment.

New template: Image classification with Keras/Tensorflow

Opening up this issue to coordinate work on a new keras/tensorflow template โ€“ @jaymody and @EteimZ have shown interest in this. Guys, please feel free to share here if/how you want to work on this and coordinate :)

The template could probably take a lot of the code from the existing pytorch template and sklearn template for image classification and just train tensorflow models. I guess keras will be the easiest (and most useful) option.

New Template: Semantic Segmentation; Generative Adversarial Networks; Image Caption; Style Transfer;

@jrieke

Hi, everybody, I'm looking forward to contributing this project can I add

  1. Semantic Segmentation
  2. Generative Adversarial Networks
  3. Image Caption
  4. Style Transfer

as I think this would greatly help beginners who are starting out their deep learning journey and want to do interesting things like these.

PS: can I also work on object detection using the YOLO-v5 achritexture.

Thanks a lot please reply as soon as possible

Add mlflow tracking

First of all thanks for the project, it's an interesting way to take a stab at reducing the amount of boilerplate needed even for fairly simple models. Secondly, it would be interesting to implement experiment/run tracking using MLflow.

Have a working example on the Image classification_PyTorch/ template, happy to submit a PR if you consider this of any interest.

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