Agentic AI is not just a model problem. It is exposing gaps in how teams store, share, retrieve, and coordinate context across applications, agents, and people.
In this episode, Amir talks with Karthik Ranganathan, cofounder and co CEO at Yugabyte, about why databases are under new pressure as AI moves from model serving into agentic workflows. They discuss Yugabyte’s evolution, the limits of today’s data infrastructure, and why memory, knowledge, and shared context may become central to how agentic systems actually work.
Practical takeaways
• Agentic workloads push databases beyond simple relational access because agents may need relational, vector, graph, NoSQL, scale, and multi tenant support in the same workflow.
• A query can be optimized inside each data store and still be slow, expensive, or wasteful when the work spans multiple systems.
• Context sounds simple to humans, but it becomes messy when it includes private memory, shared project knowledge, conversation history, team collaboration, and agent actions.
• Human handoffs can erase much of the speed promised by agents when teams have to copy outputs, re explain reasoning, and manually reconcile conflicts.
• Yugabyte is working on Meko as a data infrastructure layer for agents, with a focus on memory, knowledge, context quality, and shared learnings.
Timestamped highlights
00:43
What Yugabyte does and why critical data needs to survive infrastructure change
04:08
How databases evolved from mainframes to internet apps, mobile, cloud native systems, and now AI
09:42
Why agentic workloads create new demands across relational, vector, graph, NoSQL, and multi tenant data
12:29
Why the current agentic data stack is still in the messy middle
15:24
Why context becomes hard when agents, people, teams, and permissions collide
21:50
How agent collaboration can fall back to human speed
24:34
How eeko aims to capture memory, knowledge, learnings, and reasoning across agent workflows
One Line That Stuck
“We have killed the velocity of agentic development and brought it back to human speed.”
Practical signals for teams building with agents
• Do not treat context as one generic blob.
• Decide what should stay private, what should be shared, and what should become reusable project knowledge.
• Watch for hidden cost when agents query across separate systems.
• Pay attention to agent collaboration, not just single agent output.
• Build for memory and knowledge flow before team size makes the gaps harder to fix.
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