Objectives - Auto LLM inference config tuner Key Results - [9/10] Build the first version auto tuner system - [7/10] Check the current situation of parallelism config optimization - [4/10] Understand the possibility/challenges in LLM inference compute graph arrangement automatically - [0/10] Trace vLLM compute graph and data flow - [3/10] Implement a minimal Rust inference framework - [1/10] Define the IR for automatic optimization - [5/10] Profile different parallelism setup with real trace and analysis their difference - [0/10] Meta-analysis for the theory maximum improvement with heterogenous setup [offtrack] Last Week - Refine the story. Focus on heterogenous workloads are classified by labels or input length, which is not enough. We should define a classification method through the grouping of similar performance under the same config. - Prepare slides to summarize the story and what to do next. - Prepare slides for IPADS group meeting. Next Week - Run benchmark for current workload classification to prove different classes need different configs to max the goodput.