The Influencers Podcast: Legal Tech, AI, and the Future of Insurance

Digital Transformation Podcast Series

In this episode of the Influencers, Audrey Taranto, General Counsel of Enstar Group, shares with Hogan Lovells host Leo von Gerlach how her legal team navigates digital transformation in the insurance industry. 

About Enstar: Enstar is a leading global insurance group that delivers innovative insurance solutions through our network of group companies.

Legal Tech, AI, and the Future of Insurance I Audrey Taranto, General Counsel, Enstar Group

Audrey Taranto, General Counsel of Enstar Group, shares with Hogan Lovells host Leo von Gerlach how her legal team navigates digital transformation in the insurance industry. She explores the importance of leveraging existing IT infrastructure and data analytics while emphasizing the critical role of regulatory technology in managing complex compliance issues across multiple jurisdictions. They also explore the evolving impact of AI and Insurtech on risk management and claims processing, providing valuable insights into the future of technology in the insurance industry.

Next steps

Catch our Digital Transformation: The Influencers Podcast on Spotify, Apple Podcasts, or wherever you get your podcasts.

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Authored by Christina Wu.

 

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