CrabRAG: Why Automated Assistants Need Graph Memory, Not More Tokens
Official Schedule Context
- Date/time: 2026-07-01 · 10:45am-11:05am
- Track/room: Graphs · Track 5
- Speaker(s): Stephen Chin
- Session type/status: sponsor · confirmed
Official Description
Autonomous assistants are easy to demo and hard to make reliable. The problem is usually not tool
access. It is memory. Most assistant architectures still treat memory as a chat log plus vector
retrieval. That is fine for document question answering, but it breaks down when the assistant must
connect conversations, people, tools, and decisions across multiple tool iterations. For an AI
engineer, a single request can depend on a Slack thread, a GitHub PR, a failed CI run, a calendar
event, and prior operating preferences or constraints. These are not isolated pieces of context.
They form a connected state that changes as work progresses and context grows. In this talk, I’ll
show why knowledge graphs, context graphs, and GraphRAG provide a better foundation for OpenClaw-
style assistants. Knowledge graphs capture durable entities and relationships. Context graphs
capture the operational layer assistants usually lose, including actions, decision traces,
provenance, and recency. GraphRAG turns that structure into task-time context by combining graph
traversal, semantic retrieval, and tool use. Attendees will leave with practical patterns for schema
design, retrieval routing, and evaluation, plus a concrete blueprint for assistants that remember
more than the last prompt and retrieve more than the nearest chunk.
Related YouTube Video
Connecting the Dots with Context Graphs — Stephen Chin, Neo4j (speaker-match related prior/adjacent AI Engineer video; captions: English auto-captions).
Transcript Status
Related video transcript availability: English auto-captions. Treat this as supporting context, not a recording of this exact scheduled session unless later confirmed. Not fetched yet.
People
Notes
- Pending transcript synthesis when an official recording or confirmed matching video is available.
Supporting Slides
- youtube eW_vxrjvERk slides — extracted from the related public AI Engineer video.
Slide Evidence
- Slide-only cropped deck: youtube eW_vxrjvERk dense slides (1 viable slide images).
- Related slide/OCR pages:
- youtube eW_vxrjvERk dense slides
- youtube eW_vxrjvERk reconstructed slides
- youtube eW_vxrjvERk slides
- Slide-derived terms:
graph,context,engineer,memory,europe,engineering,future,reasoning,entities,knowledge,relationships,enhance,relevance,domain,care,plans,associated,andrea