Here's how you can address biases in AI algorithms as an AI professional.
As an AI professional, you know that biases in algorithms can lead to unfair outcomes. These biases often stem from the data used to train AI systems, reflecting historical inequalities or incomplete perspectives. To create fairer AI, it's crucial to first recognize these biases and then take deliberate steps to address them. This involves a combination of technical strategies, ethical considerations, and ongoing vigilance. The following sections will guide you through the process of identifying and mitigating biases to ensure your AI systems are as fair and equitable as possible.
-
Nayona RoyPartner at Dentons Link Legal | Technology and Media Law | Ex-Founder in Legal technology
-
Dr. Harsha GurulingappaGlobal Head of AI & Machine Learning Practice @ Merck Data & AI Organization, Merck Group
-
Alina KovalAdvancing Digitalization and AI | Top AI Voice | Integrating Reliable, Scalable Tech Solutions | Driving Efficiency…