# Track B Phase 3 Submission Team: Works on my agent This archive contains the runnable submission for Track B Phase 3. ## Environment Python 3.11 is recommended for the inference runner: ```bash python3.11 -m venv .venv source .venv/bin/activate python -m pip install --upgrade pip python -m pip install -r requirements.txt ``` Our local validation environment used Huawei Ascend 910B hardware. The runner does not require internet access at runtime. It connects only to the local vLLM OpenAI-compatible API and the local Track B sandbox APIs. Default endpoints: ```text vLLM API: http://localhost:8001/v1 Command API: https://localhost:8080/ip/api/agent/execute Device discovery: http://localhost:8080/ip/api/agent/get_devices_list ``` ## Directory Structure ```text . ├── README.md ├── run.sh ├── run.py ├── requirements.txt ├── src/ │ └── track_b_agent/ │ ├── submission_run.py │ ├── submission_io.py │ ├── run_agent.py │ ├── agent/ │ ├── config/ │ ├── generalized/ │ ├── knowledge/ │ ├── prompts/ │ └── tools/ └── models/ ├── deploy.sh ├── config.json ├── tokenizer.json ├── tokenizer_config.json ├── model.safetensors.index.json ├── model-00001-of-00016.safetensors ├── ... └── model-00016-of-00016.safetensors ``` ## Deploy the Model The model files are stored in `models/`. Start the vLLM OpenAI-compatible server with: ```bash bash models/deploy.sh ``` The deployment script serves the model as: ```text Qwen3.5-35B-A3B ``` It uses `models/` as the model path and starts vLLM on port `8001` with `nohup`. Logs are written to: ```text models/Qwen3.5-35B-A3B_vllm_output.log ``` If there are any vLLM-environment-related issues, please contact: ```text 250010135@slai.edu.cn ``` ## Run Inference Run the submission on the provided Track B test file: ```bash bash run.sh --input /path/to/test.json --output result ``` `run.sh` uses `.venv/bin/python` from the local virtual environment created above. The runner uses 5-way scenario concurrency by default. The implementation uses `asyncio` with a 5-worker semaphore rather than the ThreadPoolExecutor shown in the example guide; the effective concurrent dispatch limit is still 5. ## Expected Output The run command writes the required files into the output directory: ```text result/ ├── traces.json ├── results.csv └── runtime.json ``` `results.csv` contains one final prediction per scenario: ```csv scenario_id,prediction ``` `traces.json` contains all generated completions recorded during inference. `runtime.json` contains per-problem runtime in seconds.