Total Recall: Agent Memory and Harness Engineering

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In this hands-on workshop you'll build a working autonomous agent from the harness up, in a

notebook, then see it live in a full working web application and leave with one that can write and

run its own automations. You'll implement every surface area yourself: a set of predefined tools,

persistent memory through the Oracle AI Agent Memory package, orchestration with LangChain and

LangGraph, and LLM access through OCI GenAI Service, composing the full set of Oracle primitives

into one harness you understand end to end. Most teams assemble that harness from a dozen

disconnected services: one store for vectors, another for state, a separate reranker, a bolt-on

memory layer. We take the opposite approach, on a single unified memory core. The organizing

principle is optionality by default: you shouldn't have to choose your memory substrate up front.

With Oracle AI Database you get file system and database memory in one place, embedding models and

rerankers running inside the database kernel, and every retrieval strategy an AI workload needs

without leaving the core. And consolidating onto one core is what keeps the whole thing tractable.

You know the drill: a production harness has you holding all those moving parts in your head at

once, and most of your attention goes to keeping them in sync rather than improving the agent. Pull

that sprawl into a single core and the cognitive load drops. You get to think about what the agent

does, not where its state lives. That's the difference between controlling your harness and renting

its pieces.

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