Compress and summarize conversation history to reduce token usage and manage context limits in long-running agent sessions, preserving key decisions, files, risks, and next actions.
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npx claudepluginhub p/muratcankoylan-muratcankoylan-context-compression-skills-context-compressionThis skill should be used when the user asks to "model agent mental states", "implement BDI architecture", "create belief-desire-intention models", "transform RDF to beliefs", "build cognitive agent", or mentions BDI ontology, mental state modeling, rational agency, or neuro-symbolic AI integration.
This skill should be used when the user asks to "implement agent memory", "persist state across sessions", "build knowledge graph", "track entities", or mentions memory architecture, temporal knowledge graphs, vector stores, entity memory, or cross-session persistence.
This skill should be used when the user asks to "optimize context", "reduce token costs", "improve context efficiency", "implement KV-cache optimization", "partition context", or mentions context limits, observation masking, context budgeting, or extending effective context capacity.
This skill should be used when the user asks to "start an LLM project", "design batch pipeline", "evaluate task-model fit", "structure agent project", or mentions pipeline architecture, agent-assisted development, cost estimation, or choosing between LLM and traditional approaches.
This skill should be used when the user asks to "evaluate agent performance", "build test framework", "measure agent quality", "create evaluation rubrics", or mentions LLM-as-judge, multi-dimensional evaluation, agent testing, or quality gates for agent pipelines.
This skill should be used when the user asks to "optimize context", "reduce token costs", "improve context efficiency", "implement KV-cache optimization", "partition context", or mentions context limits, observation masking, context budgeting, or extending effective context capacity.
The highest-accuracy memory system for AI agents — 100% retrieval on LongMemEval. 14 content-aware summarizers, hybrid search (BM25 + vector + LLM judge), entity intelligence, decision trails. Fully local, zero cost.
Persistent agent memory that survives across sessions — auto-compacting 3-tier memory with hybrid search. Your agent remembers what it learned, decided, and built.
Local-first agent memory + reversible context compression and KV cache, as an MCP server. 20-tool code profile with graph intelligence.
Rolling context compression - old messages get summarized, recent messages stay verbatim. Never hit the context wall.
Lossless context management — DAG-based summarization that preserves every message