TensorFlow Model Remediation
Project description
TensorFlow Model Remediation
TensorFlow Model Remediation is a library that provides solutions for machine learning practitioners working to create and train models in a way that reduces or eliminates user harm resulting from underlying performance biases.
Installation
You can install the package from pip
:
$ pip install tensorflow-model-remediation
Note: Make sure you are using TensorFlow 2.x.
Documentation
This library will ultimately contain a collection of techniques for addressing a wide range of concerns. For now it contains a single technique, MinDiff, which can help reduce performance gaps between example subgroups.
We recommend starting with the overview guide or trying it interactively in our tutorial notebook.
from tensorflow_model_remediation import min_diff
import tensorflow as tf
# Start by defining a Keras model.
original_model = ...
# Set the MinDiff weight and choose a loss.
min_diff_loss = min_diff.losses.MMDLoss()
min_diff_weight = 1.0 # Hyperparamater to be tuned.
# Create a MinDiff model.
min_diff_model = min_diff.keras.MinDiffModel(
original_model, min_diff_loss, min_diff_weight)
# Compile the MinDiff model as you normally would do with the original model.
min_diff_model.compile(...)
# Create a MinDiff Dataset and train the min_diff_model on it.
min_diff_model.fit(min_diff_dataset, ...)
Disclaimers
If you're interested in learning more about responsible AI practices, including fairness, please see Google AI's Responsible AI Practices.
tensorflow/model_remediation
is Apache 2.0 licensed. See the
LICENSE
file.
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