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In the AI Risk Reward podcast, our host, Alec Crawford (@alec06830), Founder and CEO of Artificial Intelligence Risk, Inc. aicrisk.com , interviews guests about balancing the risk and reward of Artificial Intelligence for you, your business, and society as a whole. Podcast production and sound engineering by Troutman Street Audio. You can find them on LinkedIn.
In this episode, Alec welcomes back Michael Hind, Distinguished Research Staff Member at IBM. This episode is a special deep dive focused exclusively on the evolving field of AI governance. Michael defines AI governance from both enterprise and societal perspectives, highlighting the challenges of managing risk in rapidly evolving AI systems. He shares insights from his recent research, including the development of the AI Risk Atlas and model risk evaluation tools, and discusses the complexities of testing AI models and the importance of accurate benchmarking. The conversation covers the state of regulation, the intersection of insurance and AI risk, the role of transparency and explainability, and emerging technical solutions like entity tagging in LLMs. Alec and Michael conclude by emphasizing the need for industry-driven governance and enhanced transparency through tools such as Granite Guardian and Benchmark Cards.
Summary:
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Copyright © 2025 by Artificial Intelligence Risk, Inc.
By Alec CrawfordIn the AI Risk Reward podcast, our host, Alec Crawford (@alec06830), Founder and CEO of Artificial Intelligence Risk, Inc. aicrisk.com , interviews guests about balancing the risk and reward of Artificial Intelligence for you, your business, and society as a whole. Podcast production and sound engineering by Troutman Street Audio. You can find them on LinkedIn.
In this episode, Alec welcomes back Michael Hind, Distinguished Research Staff Member at IBM. This episode is a special deep dive focused exclusively on the evolving field of AI governance. Michael defines AI governance from both enterprise and societal perspectives, highlighting the challenges of managing risk in rapidly evolving AI systems. He shares insights from his recent research, including the development of the AI Risk Atlas and model risk evaluation tools, and discusses the complexities of testing AI models and the importance of accurate benchmarking. The conversation covers the state of regulation, the intersection of insurance and AI risk, the role of transparency and explainability, and emerging technical solutions like entity tagging in LLMs. Alec and Michael conclude by emphasizing the need for industry-driven governance and enhanced transparency through tools such as Granite Guardian and Benchmark Cards.
Summary:
Companies/Organizations:
Copyright © 2025 by Artificial Intelligence Risk, Inc.