
Sign up to save your podcasts
Or


At Google Cloud Next 2026, Fivetran Chief Product Officer Anjan Kundavaram argued that enterprise data systems are unprepared for the scale of AI-driven analytics. Unlike humans, AI agents can generate exponentially more queries, often routing them through the same expensive compute infrastructure. Kundavaram compared it to “using a Lamborghini to mow the lawn.” To address this, Fivetran introduced its “Open Data Infrastructure” vision and a benchmark designed to expose hidden AI workload costs in closed ecosystems.
Kundavaram said agents can optimize for cost instead of speed, choosing cheaper compute engines when appropriate — but only in open architectures with multiple options. Closed systems force every query through high-cost paths. He also warned that fragmented data and weak context create a “triple whammy” of poor AI responses, soaring analytics bills, and wasted compute. While many organizations respond by tightening controls, Kundavaram argued the better path is investing in open infrastructure, interoperability, and strong semantic data practices before AI costs spiral further.
Learn more from The New Stack around the latest in enterprise data systems:
Enterprise AI Success Demands Real-Time Data Platforms
AI Agents Are Morphing Into the 'Enterprise Operating System'
Join our community of newsletter subscribers to stay on top of the news and at the top of your game.
By The New Stack4.3
3131 ratings
At Google Cloud Next 2026, Fivetran Chief Product Officer Anjan Kundavaram argued that enterprise data systems are unprepared for the scale of AI-driven analytics. Unlike humans, AI agents can generate exponentially more queries, often routing them through the same expensive compute infrastructure. Kundavaram compared it to “using a Lamborghini to mow the lawn.” To address this, Fivetran introduced its “Open Data Infrastructure” vision and a benchmark designed to expose hidden AI workload costs in closed ecosystems.
Kundavaram said agents can optimize for cost instead of speed, choosing cheaper compute engines when appropriate — but only in open architectures with multiple options. Closed systems force every query through high-cost paths. He also warned that fragmented data and weak context create a “triple whammy” of poor AI responses, soaring analytics bills, and wasted compute. While many organizations respond by tightening controls, Kundavaram argued the better path is investing in open infrastructure, interoperability, and strong semantic data practices before AI costs spiral further.
Learn more from The New Stack around the latest in enterprise data systems:
Enterprise AI Success Demands Real-Time Data Platforms
AI Agents Are Morphing Into the 'Enterprise Operating System'
Join our community of newsletter subscribers to stay on top of the news and at the top of your game.

32,108 Listeners

228,270 Listeners

16,057 Listeners

9 Listeners

3 Listeners

274 Listeners

9,646 Listeners

1,095 Listeners

624 Listeners

151 Listeners

4 Listeners

25 Listeners

10,177 Listeners

563 Listeners

5,544 Listeners

15,717 Listeners