Most of us have come across a form of bias when we interact with others. These biases can make their way to a machine learning system, leading to unfair decisions. Rachel Thomas, co-founder of fast.ai and researcher in residence at The University of San Francisco explains the origins and implications of bias in machine learning. We also talked about solutions to limit bias.
Rachel also explained the role of linear algebra in machine learning and how to teach it effectively for people working in ML applications. We talked about the fundamental concepts and how they are applied in machine learning.
Educational
Interesting
Funny
Agree
Love
Wow
Are you the creator of this podcast?
and pick the featured episodes for your show.
Connect with listeners
Podcasters use the RadioPublic listener relationship platform to build lasting connections with fans
Yes, let's begin connectingFind new listeners
Understand your audience
Engage your fanbase
Make money