Context and Isolation: The Key Primitives for AI Agents in Data Platforms
Modern data platforms use deterministic pipelines for predictable query patterns, but Agentic AI introduces a different execution model where agents dynamically explore data systems by probing schemas, issuing iterative queries, validating hypotheses, and refining their approach based on intermediate results. This creates a new class of workload—agentic workflows over enterprise data systems.
This session examines:
The architectural primitives required to manage these complex, unpredictable agentic workloads over enterprise data systems
The two core building blocks for agentic workflows—isolation mechanisms for safe experimentation and context/memory horizons for enterprise knowledge grounding
Using Apache Iceberg features, including snapshot-based storage and branching semantics, to implement the core primitives
- How Cloudera's data platform, built on the open foundation of Apache Iceberg, combines snapshot-based storage with catalog and governance capabilities to enable safe and scalable agentic interactions with enterprise data.
Speaker Details
Dipankar Mazumdar
Event Topic
Artificial Intelligence, Big Data, ModernizationRelevant Audiences
All State and Local Government, All Federal Government