CraniMem: Cranial Inspired Gated and Bounded Memory for Agentic Systems
arXiv cs.AI / 3/18/2026
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Key Points
- CraniMem introduces a gated and bounded multi-stage memory design for agentic LLM systems to preserve state across long-running workflows.
- It combines goal-conditioned gating and utility tagging with a bounded episodic buffer for near-term continuity and a structured long-term knowledge graph for durable semantic recall.
- A scheduled consolidation loop replays high-utility traces into the graph while pruning low-utility items, keeping memory growth in check and reducing interference.
- On long-horizon benchmarks with clean inputs and injected noise, CraniMem is more robust than a Vanilla RAG and Mem0 baseline and exhibits smaller performance drops under distraction; code is publicly available on GitHub and PyPI.
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