
Sign up to save your podcasts
Or


In this episode, Kim Jones sits down with Eric Nagel, a former CISO with a rare blend of engineering, legal, and patent expertise, to unpack what responsible AI really looks like inside a modern enterprise. Eric breaks down the difference between traditional machine learning and generative AI, why nondeterministic outputs can be both powerful and risky, and how issues like bias, hallucinations, and data leakage demand new safeguards—including AI firewalls.
He also discusses what smaller organizations can do to manage AI risk, how tools like code-generation models change expectations for developers, and the evolving regulatory landscape shaping how companies must deploy AI responsibly.
Want more CISO Perspectives?
Check out a companion blog post by our very own Ethan Cook, where he breaks down key insights, shares behind-the-scenes context, and highlights research that complements this episode.
Learn more about your ad choices. Visit megaphone.fm/adchoices
By N2K Networks4.8
10061,006 ratings
In this episode, Kim Jones sits down with Eric Nagel, a former CISO with a rare blend of engineering, legal, and patent expertise, to unpack what responsible AI really looks like inside a modern enterprise. Eric breaks down the difference between traditional machine learning and generative AI, why nondeterministic outputs can be both powerful and risky, and how issues like bias, hallucinations, and data leakage demand new safeguards—including AI firewalls.
He also discusses what smaller organizations can do to manage AI risk, how tools like code-generation models change expectations for developers, and the evolving regulatory landscape shaping how companies must deploy AI responsibly.
Want more CISO Perspectives?
Check out a companion blog post by our very own Ethan Cook, where he breaks down key insights, shares behind-the-scenes context, and highlights research that complements this episode.
Learn more about your ad choices. Visit megaphone.fm/adchoices

186 Listeners

2,010 Listeners

1,651 Listeners

371 Listeners

372 Listeners

1,533 Listeners

653 Listeners

318 Listeners

418 Listeners

8,078 Listeners

177 Listeners

316 Listeners

194 Listeners

73 Listeners

139 Listeners