Building Ethics and Diversity in AI

On Demand

Bias in machine learning is a significant concern as technology gets increasingly ubiquitous across many industries. Some types of bias can be attributed to limits in design and tooling; however, the bias in the training data itself is a general phenomenon. Skewed training data propagates into discriminatory AI models that amplify human prejudices.

Building a data labeling framework that uses a diverse set of crowd workers to collect and label the data can help reduce bias.

Featured Presenters

Event Sponors

Login Or Register

cropped-CogHeadLogo.png

Register to View Event

cropped-CogHeadLogo.png

Get The Building Ethics and Diversity in AI

cropped-CogHeadLogo.png

AI Best Practices

Get the Step By Step Checklist for AI Projects

login

Login to register for events. Don’t have an account? Just register for an event and an account will be created for you!