Riva's perspective

Here is how you solve bias in AI.


Listen Later

This episode tackles the critical issue of bias in AI, emphasizing the need for diverse and unbiased data to train intelligent systems effectively. We explore various forms of existing biases in AI, such as in image recognition, job applications, sentiment analysis, medical diagnosis, and credit scoring. The discussion underscores the principle of "bad data in, bad data out" and the importance of feeding AI with a wide range of unbiased information. The episode outlines steps to achieve this: opening up AI training to diverse participation, ensuring access to the latest models, and balancing information about AI systems. We call for active engagement in shaping AI development, emphasizing the role of every individual in contributing to a more equitable and representative AI future. This episode is a call to action to help build AI systems that reflect our diverse world and work towards a fairer future.

...more
View all episodesView all episodes
Download on the App Store

Riva's perspectiveBy Riva Kajangu