Click here to read more.Thios podcast discusses the IBM article by Cole Stryker entitled "How do AI agents learn and adapt over time?"AI agent learning is the process where an artificial intelligence agent improves performance through interaction with its environment and data. While some AI agents are reactive and do not learn, learning agents adapt based on feedback, enhancing decision-making in dynamic situations. Learning agents typically consist of four key components: a performance element, learning element, critic, and problem generator. The process is underpinned by machine learning, with core techniques including supervised, unsupervised, and reinforcement learning, which utilise various feedback mechanisms to refine the agent's behaviour over time. Additionally, the podcast touches upon concepts like continuous learning and multiagent learning, where agents learn collaboratively or competitively.
No persons identified in this episode.
This episode hasn't been transcribed yet
Help us prioritize this episode for transcription by upvoting it.
Popular episodes get transcribed faster
Other recent transcribed episodes
Transcribed and ready to explore now
Eric Larsen on the emergence and potential of AI in healthcare
10 Dec 2025
McKinsey on Healthcare
Reducing Burnout and Boosting Revenue in ASCs
10 Dec 2025
Becker’s Healthcare -- Spine and Orthopedic Podcast
Dr. Erich G. Anderer, Chief of the Division of Neurosurgery and Surgical Director of Perioperative Services at NYU Langone Hospital–Brooklyn
09 Dec 2025
Becker’s Healthcare -- Spine and Orthopedic Podcast
Dr. Nolan Wessell, Assistant Professor and Well-being Co-Director, Department of Orthopedic Surgery, Division of Spine Surgery, University of Colorado School of Medicine
08 Dec 2025
Becker’s Healthcare -- Spine and Orthopedic Podcast
NPR News: 12-08-2025 2AM EST
08 Dec 2025
NPR News Now
NPR News: 12-08-2025 1AM EST
08 Dec 2025
NPR News Now