# Task Execution and Monitoring ## Launching an Evaluation Task The program entry for the evaluation task is `run.py`. The usage is as follows: ```shell python run.py $EXP {--slurm | --dlc | None} [-p PARTITION] [-q QUOTATYPE] [--debug] [-m MODE] [-r [REUSE]] [-w WORKDIR] [-l] [--dry-run] ``` Task Configuration (`$EXP`): - `run.py` accepts a .py configuration file as task-related parameters, which must include the `datasets` and `models` fields. ```bash python run.py configs/eval_demo.py ``` - If no configuration file is provided, users can also specify models and datasets using `--models MODEL1 MODEL2 ...` and `--datasets DATASET1 DATASET2 ...`: ```bash python run.py --models hf_opt_350m hf_opt_125m --datasets siqa_gen winograd_ppl ``` - For HuggingFace related models, users can also define a model quickly in the command line through HuggingFace parameters and then specify datasets using `--datasets DATASET1 DATASET2 ...`. ```bash python run.py --datasets siqa_gen winograd_ppl \ --hf-path huggyllama/llama-7b \ # HuggingFace model path --model-kwargs device_map='auto' \ # Parameters for constructing the model --tokenizer-kwargs padding_side='left' truncation='left' use_fast=False \ # Parameters for constructing the tokenizer --max-out-len 100 \ # Maximum sequence length the model can accept --max-seq-len 2048 \ # Maximum generated token count --batch-size 8 \ # Batch size --no-batch-padding \ # Disable batch padding and infer through a for loop to avoid accuracy loss --num-gpus 1 # Number of required GPUs ``` Complete HuggingFace parameter descriptions: - `--hf-path`: HuggingFace model path - `--peft-path`: PEFT model path - `--tokenizer-path`: HuggingFace tokenizer path (if it's the same as the model path, it can be omitted) - `--model-kwargs`: Parameters for constructing the model - `--tokenizer-kwargs`: Parameters for constructing the tokenizer - `--max-out-len`: Maximum generated token count - `--max-seq-len`: Maximum sequence length the model can accept - `--no-batch-padding`: Disable batch padding and infer through a for loop to avoid accuracy loss - `--batch-size`: Batch size - `--num-gpus`: Number of GPUs required to run the model Starting Methods: - Running on local machine: `run.py $EXP`. - Running with slurm: `run.py $EXP --slurm -p $PARTITION_name`. - Running with dlc: `run.py $EXP --dlc --aliyun-cfg $AliYun_Cfg` - Customized starting: `run.py $EXP`. Here, $EXP is the configuration file which includes the `eval` and `infer` fields. For detailed configurations, please refer to [Efficient Evaluation](./evaluation.md). The parameter explanation is as follows: - `-p`: Specify the slurm partition; - `-q`: Specify the slurm quotatype (default is None), with optional values being reserved, auto, spot. This parameter may only be used in some slurm variants; - `--debug`: When enabled, inference and evaluation tasks will run in single-process mode, and output will be echoed in real-time for debugging; - `-m`: Running mode, default is `all`. It can be specified as `infer` to only run inference and obtain output results; if there are already model outputs in `{WORKDIR}`, it can be specified as `eval` to only run evaluation and obtain evaluation results; if the evaluation results are ready, it can be specified as `viz` to only run visualization, which summarizes the results in tables; if specified as `all`, a full run will be performed, which includes inference, evaluation, and visualization. - `-r`: Reuse existing inference results, and skip the finished tasks. If followed by a timestamp, the result under that timestamp in the workspace path will be reused; otherwise, the latest result in the specified workspace path will be reused. - `-w`: Specify the working path, default is `./outputs/default`. - `-l`: Enable status reporting via Lark bot. - `--dry-run`: When enabled, inference and evaluation tasks will be dispatched but won't actually run for debugging. Using run mode `-m all` as an example, the overall execution flow is as follows: 1. Read the configuration file, parse out the model, dataset, evaluator, and other configuration information 2. The evaluation task mainly includes three stages: inference `infer`, evaluation `eval`, and visualization `viz`. After task division by Partitioner, they are handed over to Runner for parallel execution. Individual inference and evaluation tasks are abstracted into `OpenICLInferTask` and `OpenICLEvalTask` respectively. 3. After each stage ends, the visualization stage will read the evaluation results in `results/` to generate a table. ## Task Monitoring: Lark Bot Users can enable real-time monitoring of task status by setting up a Lark bot. Please refer to [this document](https://open.feishu.cn/document/ukTMukTMukTM/ucTM5YjL3ETO24yNxkjN?lang=zh-CN#7a28964d) for setting up the Lark bot. Configuration method: 1. Open the `configs/lark.py` file, and add the following line: ```python lark_bot_url = 'YOUR_WEBHOOK_URL' ``` Typically, the Webhook URL is formatted like this: https://open.feishu.cn/open-apis/bot/v2/hook/xxxxxxxxxxxxxxxxx . 2. Inherit this file in the complete evaluation configuration: ```python from mmengine.config import read_base with read_base(): from .lark import lark_bot_url ``` 3. To avoid frequent messages from the bot becoming a nuisance, status updates are not automatically reported by default. You can start status reporting using `-l` or `--lark` when needed: ```bash python run.py configs/eval_demo.py -p {PARTITION} -l ``` ## Run Results All run results will be placed in `outputs/default/` directory by default, the directory structure is shown below: ``` outputs/default/ ├── 20200220_120000 ├── ... ├── 20230220_183030 │ ├── configs │ ├── logs │ │ ├── eval │ │ └── infer │ ├── predictions │ │ └── MODEL1 │ └── results │ └── MODEL1 ``` Each timestamp contains the following content: - configs folder, which stores the configuration files corresponding to each run with this timestamp as the output directory; - logs folder, which stores the output log files of the inference and evaluation phases, each folder will store logs in subfolders by model; - predictions folder, which stores the inferred json results, with a model subfolder; - results folder, which stores the evaluated json results, with a model subfolder. Also, all `-r` without specifying a corresponding timestamp will select the newest folder by sorting as the output directory. ## Introduction of Summerizer (to be updated)