Agentic workload PD separation analysis with trace-driven benchmarks
Systematic study of prefill-decode disaggregation for agentic LLM workloads using production GLM-5.1 coder trace (2.1M requests, 71B input tokens). Key findings: - Cache-aware routing improves TPOT p90 by 15% and APC from 20.8% to 44.7% without PD separation, matching PD-Sep's decode isolation benefit - PD separation adds +72% TTFT overhead (KV transfer) with no TPOT gain when using the same cache-aware scheduler - Prefill remains compute-bound even at 95% KV cache reuse (AI >1000x vs decode AI <2), but absolute FLOPs drop 71% from cache hits - For agentic MoE workloads, cache-aware routing > PD separation Infrastructure: - Trace sampler preserving session structure + hash_ids for prefix sharing - Async trace replayer with streaming TTFT/TPOT/E2E measurement - Unified cache-aware + token-level load-balanced global scheduler proxy supporting both PD-colocated and PD-disaggregated (Mooncake/RDMA) modes - vLLM 0.18.1 scheduler patch for KV transfer abort race condition - Roofline analysis tool for prefill/decode compute characterization Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
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