WFGY/ProblemMap/GlobalFixMap/LocalDeploy_Inference/vllm.md
2025-09-05 11:16:56 +08:00

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vLLM: Guardrails and Fix Patterns

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Field guide for stabilizing vLLM-based local inference pipelines. Use these checks when models serve correctly on API providers but fail under high-throughput GPU serving with vLLM.


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Core acceptance

  • ΔS(question, retrieved) ≤ 0.45
  • Coverage ≥ 0.70 for target section
  • λ remains convergent across 3 paraphrases and 2 seeds
  • Throughput scaling does not shift retrieved citations

Typical vLLM breakpoints and fix

Symptom Likely cause Fix
Works at batch=1 but fails at scale Context window fragmentation / GPU memory swap context-drift.md, entropy-collapse.md
Citations disappear at high load Async batch merge drops offsets retrieval-traceability.md, data-contracts.md
Different answers run-to-run λ flips with batch ordering logic-collapse.md, rerankers.md
Index correct but retrieval unstable Embedding vs metric mismatch in store embedding-vs-semantic.md, vectorstore-fragmentation.md
GPU OOM / crash at warm-up Preload sequence too large, missing fence bootstrap-ordering.md

Fix in 60 seconds

  1. Measure ΔS at batch=1 and batch=32. If ΔS rises >0.60 only at scale → async batching issue.
  2. Probe λ across 3 paraphrases. If flips, apply BBAM.
  3. Enforce contracts: citations must include snippet_id, offsets.
  4. GPU warm-up: preload with a dummy batch before first live call.
  5. Verify throughput stability with replay test (2 seeds, same dataset).

Copy-paste test prompt

I am running vLLM locally.  
Models served with async batching.  
Question: "{user_question}"  

Please return:
1. ΔS at batch=1 and batch=32  
2. λ across 3 paraphrases  
3. Whether citations preserved (snippet_id, offsets)  
4. Minimal structural fix if ΔS ≥ 0.60  

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