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# Configure Datasets |
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This tutorial mainly focuses on selecting datasets supported by OpenCompass and preparing their configs files. Please make sure you have downloaded the datasets following the steps in [Dataset Preparation](../get_started/installation.md#dataset-preparation). |
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## Directory Structure of Dataset Configuration Files |
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First, let's introduce the structure under the `configs/datasets` directory in OpenCompass, as shown below: |
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``` |
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configs/datasets/ |
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βββ agieval |
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βββ apps |
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βββ ARC_c |
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βββ ... |
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βββ CLUE_afqmc # dataset |
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βΒ Β βββ CLUE_afqmc_gen_901306.py # different version of config |
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βΒ Β βββ CLUE_afqmc_gen.py |
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βΒ Β βββ CLUE_afqmc_ppl_378c5b.py |
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βΒ Β βββ CLUE_afqmc_ppl_6507d7.py |
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βΒ Β βββ CLUE_afqmc_ppl_7b0c1e.py |
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βΒ Β βββ CLUE_afqmc_ppl.py |
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βββ ... |
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βββ XLSum |
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βββ Xsum |
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βββ z_bench |
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``` |
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In the `configs/datasets` directory structure, we flatten all datasets directly, and there are multiple dataset configurations within the corresponding folders for each dataset. |
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The naming of the dataset configuration file is made up of `{dataset name}_{evaluation method}_{prompt version number}.py`. For example, `CLUE_afqmc/CLUE_afqmc_gen_db509b.py`, this configuration file is the `CLUE_afqmc` dataset under the Chinese universal ability, the corresponding evaluation method is `gen`, i.e., generative evaluation, and the corresponding prompt version number is `db509b`; similarly, `CLUE_afqmc_ppl_00b348.py` indicates that the evaluation method is `ppl`, i.e., discriminative evaluation, and the prompt version number is `00b348`. |
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In addition, files without a version number, such as: `CLUE_afqmc_gen.py`, point to the latest prompt configuration file of that evaluation method, which is usually the most accurate prompt. |
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## Dataset Selection |
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In each dataset configuration file, the dataset will be defined in the `{}_datasets` variable, such as `afqmc_datasets` in `CLUE_afqmc/CLUE_afqmc_gen_db509b.py`. |
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```python |
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afqmc_datasets = [ |
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dict( |
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abbr="afqmc-dev", |
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type=AFQMCDataset_V2, |
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path="./data/CLUE/AFQMC/dev.json", |
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reader_cfg=afqmc_reader_cfg, |
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infer_cfg=afqmc_infer_cfg, |
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eval_cfg=afqmc_eval_cfg, |
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), |
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] |
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``` |
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And `cmnli_datasets` in `CLUE_cmnli/CLUE_cmnli_ppl_b78ad4.py`. |
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```python |
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cmnli_datasets = [ |
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dict( |
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type=HFDataset, |
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abbr='cmnli', |
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path='json', |
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split='train', |
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data_files='./data/CLUE/cmnli/cmnli_public/dev.json', |
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reader_cfg=cmnli_reader_cfg, |
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infer_cfg=cmnli_infer_cfg, |
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eval_cfg=cmnli_eval_cfg) |
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] |
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``` |
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Take these two datasets as examples. If users want to evaluate these two datasets at the same time, they can create a new configuration file in the `configs` directory. We use the import mechanism in the `mmengine` configuration to build the part of the dataset parameters in the evaluation script, as shown below: |
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```python |
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from mmengine.config import read_base |
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with read_base(): |
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from .datasets.CLUE_afqmc.CLUE_afqmc_gen_db509b import afqmc_datasets |
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from .datasets.CLUE_cmnli.CLUE_cmnli_ppl_b78ad4 import cmnli_datasets |
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datasets = [] |
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datasets += afqmc_datasets |
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datasets += cmnli_datasets |
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``` |
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Users can choose different abilities, different datasets and different evaluation methods configuration files to build the part of the dataset in the evaluation script according to their needs. |
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For information on how to start an evaluation task and how to evaluate self-built datasets, please refer to the relevant documents. |
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