OpenCompass/configs/api_examples/eval_api_zhipu.py

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from mmengine.config import read_base
from opencompass.models import ZhiPuAI
from opencompass.partitioners import NaivePartitioner
from opencompass.runners.local_api import LocalAPIRunner
from opencompass.tasks import OpenICLInferTask
with read_base():
# from .datasets.collections.chat_medium import datasets
from ..summarizers.medium import summarizer
from ..datasets.ceval.ceval_gen import ceval_datasets
datasets = [
*ceval_datasets,
]
# needs a special postprocessor for all
# except 'gsm8k' and 'strategyqa'
from opencompass.utils import general_eval_wrapper_postprocess
for _dataset in datasets:
if _dataset['abbr'] not in ['gsm8k', 'strategyqa']:
if hasattr(_dataset['eval_cfg'], 'pred_postprocessor'):
_dataset['eval_cfg']['pred_postprocessor']['postprocess'] = _dataset['eval_cfg']['pred_postprocessor']['type']
_dataset['eval_cfg']['pred_postprocessor']['type'] = general_eval_wrapper_postprocess
else:
_dataset['eval_cfg']['pred_postprocessor'] = {'type': general_eval_wrapper_postprocess}
models = [
dict(
abbr='chatglm_pro',
type=ZhiPuAI,
path='chatglm_pro',
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key='xxxxxxxxxxxx',
query_per_second=1,
max_out_len=2048,
max_seq_len=2048,
batch_size=8),
]
infer = dict(
partitioner=dict(type=NaivePartitioner),
runner=dict(
type=LocalAPIRunner,
max_num_workers=2,
concurrent_users=2,
task=dict(type=OpenICLInferTask)),
)
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work_dir = 'outputs/api_zhipu/'