Embedded AI - Intelligence at the Deep Edge

AI Bias and Fairness: A Contentious Landscape

David Such Season 3 Episode 3

Send us a text

In this episode, we examine the critical issue of bias in artificial intelligence, exploring how biased AI systems can amplify discrimination and perpetuate societal inequalities. We discuss the sources of AI bias, including prejudiced training data, algorithmic design choices, and human decisions during development. We highlight how biased AI impacts areas like recruitment, criminal justice, healthcare, finance, and social media, potentially deepening existing inequalities and undermining public trust.

We also delve into efforts to address AI bias through technical solutions—such as collecting diverse data and using fairness-oriented algorithms—as well as regulatory responses like the EU AI Act and emerging legislation in the United States. Yet, despite these efforts, defining and effectively mitigating AI bias remains a significant challenge. Ultimately, we emphasize the importance of interdisciplinary collaboration and ethical guidelines to ensure AI systems are fair, equitable, and trustworthy.

If you are interested in learning more then please subscribe to the podcast or head over to https://medium.com/@reefwing, where there is lots more content on AI, IoT, robotics, drones, and development. To support us in bringing you this material, you can buy me a coffee or just provide feedback. We love feedback!