Jinbo Han

h-index15
2papers

2 Papers

64.5DCMar 16
LMetric: Simple is Better - Multiplication May Be All You Need for LLM Request Scheduling

Dingyan Zhang, Jinbo Han, Kaixi Zhang et al.

High-quality LLM request scheduling requires achieving two key objectives: whether the routed instance has KV$ to accelerate the request execution and whether the workload is balanced across instances. Achieving both objectives is challenging because pursuing one objective may compromise the other. Current approaches adopt various combinators (e.g., linear combinations) to compute a scheduling score combining indicators for the two objectives, which are complex in that they either require significant workload-specific hyperparameter tuning or model-hardware-aware simulator development, and could still lead to suboptimal performance. In this paper, we show that using a simple multiplication of two carefully chosen indicators-one for KV$-aware (new prefill tokens if routed to an instance) and one for load balancing-aware (current batch size of the instance)-as the scheduling score can simultaneously achieve both objectives well without any hyperparameter tuning. The key idea is that the multiplied score considers both objectives in a manner similar to a linear combination, with a nice property that the original hyperparameters are canceled out during comparison so we don't need tuning to find the best parameters. The two indicators are chosen based on our analysis of LLM characteristics, and our extensive experiments show that this simple approach can reduce TTFT by 92% and 52%, and TPOT by 21% and 20%, compared to vLLM-v1 and a production scheduler on real-world workloads covering chatbots, API calls, and coding agents. We also mathematically derive the conditions under which multiplication may fail, and find that such conditions are extremely rare in practice and can be detected (and mitigated) beforehand.

DCJun 3, 2025
KVCache Cache in the Wild: Characterizing and Optimizing KVCache Cache at a Large Cloud Provider

Jiahao Wang, Jinbo Han, Xingda Wei et al.

Serving large language models (LLMs) is important for cloud providers, and caching intermediate results (KV\$) after processing each request substantially improves serving throughput and latency. However, there is limited understanding of how LLM serving benefits from KV\$ caching, where system design decisions like cache eviction policies are highly workload-dependent. In this paper, we present the first systematic characterization of the KV\$ workload patterns from one of the leading LLM service providers. We draw observations that were not covered by previous studies focusing on synthetic workloads, including: KV\$ reuses are skewed across requests, where reuses between single-turn requests are equally important as multi-turn requests; the reuse time and probability are diverse considering all requests, but for a specific request category, the pattern tends to be predictable; and the overall cache size required for an ideal cache hit ratio is moderate. Based on the characterization, we further propose a workload-aware cache eviction policy that improves the serving performance under real-world traces, especially with limited cache capacity.