Share Your Content with Us
on TradePub.com for readers like you. LEARN MORE
Responsible AI: How To Mitigate Bias In Your Training Data
Request Your Free White Paper Now:

"Responsible AI: How To Mitigate Bias In Your Training Data"

We’ve created a deep dive piece that explores the four major categories of bias that can affect AI/ML models

Advances in AI are changing how we deliver healthcare services, how companies recruit and hire, how we shop online, how we police and administer justice, and just about everything in between. But the more we use AI to power and automate crucial parts of our daily lives, the more we need to be able to trust that these models are accurate, equitable, and high-performing.

That’s why we’ve created a deep dive piece that explores the four major categories of bias that can affect AI/ML models. In this piece we cover:

  • Distinguish between the four types of bias,
  • Explain the difference between bias in your training data versus bias in your algorithm,
  • Sketch out the basic ways that experienced ML/AI teams work to mitigate these potential sources of bias.


Offered Free by: Alegion
See All Resources from: Alegion

Recommended for Professionals Like You:

Thank you

This download should complete shortly. If the resource doesn't automatically download, please, click here.

Thank you

This download should complete shortly. If the resource doesn't automatically download, please, click here.

Thank you

This download should complete shortly. If the resource doesn't automatically download, please, click here.