paperarXivTrust 82 · PrimaryPublished 4d agoLive · 3d ago
LLM Agents Are Latent Context Managers: Eliciting Self-Managed Context via a Proprioceptive Dashboard
Long-horizon tool agents are bottlenecked by how their context grows toward the limits of the context window. Recent systems make context management agent- or system-controlled, but they either learn a compression policy that discards evidence or manage context in a layer the agent never sees. We argue both leave a more basic gap unaddressed. Frontier language models are proprioceptively blind to their own context. From the prompt alone they cannot see how large, how old, or how used each block is, the signals a keep-or-drop decision needs. We hypothesize that competent context management is a
Lineage graph
Paper → model → repo connections mined from source citations (Tier-1 exact match).
Implements
Related to
Has model
Covers
Covers (incoming)
Implements (incoming)
Related across the graph
newsAI agents need context everywhere they run, even where the cloud can't follownewsI built an open-source memory governance layer for AI assistants - looking for technical feedback [P]repoContext-Engine-AI/Context-Enginerepobonigarcia/context-engineeringrepoa-Fig/Accordionrepothedotmack/claude-memrepoyvgude/lean-ctxmodelAgentCore-8BnewsBreakthrough in long-context efficiency announcedglossary_termContext windowrepoagent-tools
