- -q Specify the slurm quotatype (default is auto), with optional values being reserved, auto, spot;
- --debug When enabled, inference and evaluation tasks will run in single-process mode, and output will be echoed in real-time for debugging;
- -m Run 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 there are individual evaluation results in results, it can be specified as viz to only run visualization; if specified as all, both inference and evaluation tasks run at the same time.
- -r Reuse existing inference results. 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.
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 visualization report.
## 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
frommmengine.configimportread_base
withread_base():
from.larkimportlark_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:
dict(role='RESULTS', begin='<|Results|>:', end='兒\n', prompt='None'), # Here we can set the default prompt, which may be overridden by the speicfic dataset