Like cooking, after you've done some machine learning experiment in your jupyter notebook, you'll leave behind a trial of mess in the kitchen.
See selling points
Forge is originally created to organize the above chaos with minimal extra coding, and parallel access through WebUI/python.
Hopefully, this tracking mechanism will evolve to a way offering clearer sense of managing your AI/Learning tasks.
This framework demands python3.6
or above, preferably anaconda3, to use python api, install the package under the same environment you train your model.
Run the following under the proper environment
(base)$ pip install git+https://github.com/raynardj/forge
Forge offers a Web UI solution for administrative purpose, cleaning up your AI tasks.
forgebox
is a python api that you can add to your python script or jupyter notebook cell. You can train your model happily in the way you like, with very limited addition to your original code.
Then your training trial can be read/checked/reviewed on a clean shaved Web interface.
Ask yourself have you encountered the following:
- Hmmmm.... what hyper-parameter did I change for last epoch?
- I increased this h-param to 64, which yields the F1 score 0.879, wait... what was my F1 before this?
- I'm putting my model to production, I clearly remember the model weight
nlp_binary_cls-v0.2.5.npy
was my best performer, but what was the activation function for its attention mask again? - I think I had a decent translation model in one of those trying, I can use it to build an API!... only if I stored that version of word-to-index mapping relationship 2 days ago