Stay organized with collections
Save and categorize content based on your preferences.
Evaluating a machine learning model responsibly requires doing more than just calculating loss metrics.
Before putting a model into production, it's critical to audit training data and evaluate
predictions for bias.
This module looks at different types of human biases that can manifest in
training data. It then provides strategies to identify them and evaluate their
effects.