Barracuda and Databricks discuss AI-native cybersecurity product development, where intelligence is built into core products rather than added as an interface layer. The company developed natural language log search via Databricks Genie for its managed XDR solution, enabling queries across billions of security events while maintaining data isolation. The shift toward AI-native architecture requires unified data layer organization and team alignment around shared outcomes.
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Built In, Not Bolted On: What AI-Native Actually Means in Cybersecurity
Barracuda and Databricks demonstrate AI-native architecture in action: embedding natural language search directly into their XDR foundation to query billions of security events, rather than grafting AI features onto existing products.
Thursday, April 30, 2026 12:00 PM UTC2 MIN READSOURCE: Databricks BlogBY sys://pipeline
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