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Agentic AI Breaks Traditional Data Security

0:00:00
Key takeaways
  • Runtime AI data security strategies that inspect and de-identify sensitive data before it reaches agents
  • How to apply traditional security principles to modern AI architecture, from securing agents, tools, and external integrations
  • Solutions to common agentic AI blockers, and roadmap from POC to production
Time Stamps
Why Agentic AI Projects Stall?
2:51
Agentic AI must have a Runtime Data Control Layer
12:59
Demo on Various Usecases
17:37
How ServiceNow embeds Skyflow for Agentic Usecases
24:38

Session Description

Why do most agentic AI projects stall before reaching production?

Often, the challenge isn't about better models or smarter agents. It's about building secure agents and implementing data controls at runtime that maintain enterprise security standards.

Agentic AI promises unprecedented automation and efficiency, but it creates new data security and privacy challenges that traditional governance can't solve. New technologies like MCP represent risks that traditional data security isn't prepared for.

In this 30-minute session, we'll cover runtime AI data security fundamentals and share real-world deployment patterns that help enterprises move agentic AI to production without compliance risks.

Speakers

Amruta Moktali
Chief Product Officer, Skyflow
Sam Sternberg
Head of Solutions Engineering, Skyflow

“We were up and running on Skyflow in just hours, rather than the months it would take to build and implement even a fraction of this data privacy rigor.”

Boe Hartman
CTO, Nomi Health (former CTO, Goldman Sachs)

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