a baseline to practice

Overview

ccks2021_track3_baseline

a baseline to practice 路径可能会有问题,自己改改

torch==1.7.1

pyhton==3.7.1

transformers==4.7.0

cuda==11.0

this is a baseline, you can fix params to improve your score

some useful tricks:

1.https://github.com/alphadl/lookahead.pytorch

2.https://github.com/timgaripov/swa

3.https://github.com/lonePatient/multi-sample_dropout_pytorch

4.https://github.com/lonePatient/albert_pytorch/blob/master/prepare_lm_data_ngram.py

pretrain model download: https://github.com/lonePatient/NeZha_Chinese_PyTorch

address: https://tianchi.aliyun.com/competition/entrance/531901/score

steps:

1.run pretrain_code/run_pretrain.py

2.run run_classify.py

3.run run_predictor.py

4.upload your submit file

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