Objectives - Auto LLM inference config tuner Key Results - [6/10] Build the agentic tuner system - [10/10] Build the first version auto tuner system - [2/10] Workload grouping methods - [8/10] Check the current situation of parallelism config optimization - [4/10] Understand the possibility/challenges in LLM inference compute graph arrangement automatically - [1/10] Define the IR for automatic optimization - [5/10] Profile different parallelism setup with real trace and analysis their difference Last Week - [KR1] Update agentic AITuner to support new trace benchmark / new vLLM flags/ objective score. [0a012bdd](https://ipads.se.sjtu.edu.cn:1312/wangjh/auto-tuner/-/commit/0a012bdda53086cd24277962abb0cb559bd313bb) ~ [788da3d8](https://ipads.se.sjtu.edu.cn:1312/wangjh/auto-tuner/-/commit/788da3d8bc546620e8c76800dfb7070372cb3540) - [KR1] Survey the related works. Some works build an agent for LLM training / storage system / ..., a work use BO for LLM inference config tuning. - [misc] Prepare an open-sourced version of new traces (thinking and coder) and update readme. Next Week - Optimize the agentic AITuner. - Test SCOOT as one of the baseline.