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Serving Full Context to Multiple Users: The KV Cache Bottleneck

Local LLM servers face a hard constraint: providing each concurrent user with the full context window requires proportional memory, not shared allocation. We examine why and what teams can do about it.

1 min read

Local LLM inference tools like llama.cpp expose a fundamental architectural tension that many operators discover only after deployment. When you want to serve eight concurrent users, each with access to the full 128k context window of a model, you cannot simply divide the context window among them. ...

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Method & sources
Source type
Primary publication (lab/vendor blog) — our analysis + implication
Source link
r/localllama
Published
UTC
Byline
By the gotcontext.ai team (editorial standards)
Correction?
corrections@gotcontext.ai