Google’s (free) machine learning course for fairness

As ML practitioners build, evaluate, and deploy machine learning models, they should keep fairness considerations (such as how different demographics of people will be affected by a model’s predictions) in the forefront of their minds. Additionally, they should proactively develop strategies to identify and ameliorate the effects of algorithmic bias.

To help practitioners achieve these goals, Google’s engineering education and ML fairness teams developed a 60-minute self-study training module on fairness, which is now available publicly as part of Google’s Machine Learning Crash Course (MLCC).

Read the blog

Related Posts

Previous Post
MIT announces $1bn AI college, Blackstone CEO major contributor
Next Post
Virtu claims exchanges “double-dip” on fees as market data battle heats up

Fill out this field
Fill out this field
Please enter a valid email address.

X

Reset password

Create an account