Skip to content
This repository has been archived by the owner on Sep 27, 2024. It is now read-only.

Latest commit

 

History

History
99 lines (67 loc) · 3.64 KB

README.md

File metadata and controls

99 lines (67 loc) · 3.64 KB

Model Card Toolkit

CI PyPI Documentation

The Model Card Toolkit (MCT) streamlines and automates generation of Model Cards [1], machine learning documents that provide context and transparency into a model's development and performance. Integrating the MCT into your ML pipeline enables you to share model metadata and metrics with researchers, developers, reporters, and more.

Some use cases of model cards include:

  • Facilitating the exchange of information between model builders and product developers.
  • Informing users of ML models to make better-informed decisions about how to use them (or how not to use them).
  • Providing model information required for effective public oversight and accountability.

Generated model card image

Installation

The Model Card Toolkit is hosted on PyPI, and requires Python 3.7 or later.

Installing the basic, framework agnostic package:

pip install model-card-toolkit

If you are generating model cards for TensorFlow models, install the optional TensorFlow dependencies to use Model Card Toolkit's TensorFlow utilities:

pip install model-card-toolkit[tensorflow]

You may need to append the --use-deprecated=legacy-resolver flag when running versions of pip starting with 20.3.

See the installation guide for more installation options.

Getting Started

import model_card_toolkit as mct

# Initialize the Model Card Toolkit with a path to store generate assets
model_card_output_path = ...
toolkit = mct.ModelCardToolkit(model_card_output_path)

# Initialize the ModelCard, which can be freely populated
model_card = toolkit.scaffold_assets()
model_card.model_details.name = 'My Model'

# Write the model card data to a proto file
toolkit.update_model_card(model_card)

# Return the model card document as an HTML page
html = toolkit.export_format()

Model Card Generation on TFX

If you are using TensorFlow Extended (TFX), you can incorporate model card generation into your TFX pipeline via the ModelCardGenerator component.

The ModelCardGenerator component has moved to the TFX Addons library and is no longer packaged in Model Card Toolkit from version 2.0.0. Before you can use the component, you will need to install the tfx-addons package:

pip install tfx-addons[model_card_generator]

See the ModelCardGenerator guide and run the case study notebook to learn more about the component.

Schema

Model cards are stored in proto as an intermediate format. You can see the model card JSON schema in the schema directory.

References

[1] https://arxiv.org/abs/1810.03993