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@@ -12,7 +12,7 @@ cd egs/aishell/paraformer
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Then you can directly start the recipe as follows:
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```sh
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conda activate funasr
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-. ./run.sh
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+. ./run.sh --CUDA_VISIBLE_DEVICES="0,1" --gpu_num=2
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```
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The training log files are saved in `${exp_dir}/exp/${model_dir}/log/train.log.*`, which can be viewed using the following command:
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@@ -26,16 +26,16 @@ Users can observe the training loss, prediction accuracy and other training info
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... 1epoch:train:801-850batch:850num_updates: ... loss_ctc=107.890, loss_att=87.832, acc=0.029, loss_pre=1.702 ...
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```
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-Also, users can use tensorboard to observe these training information by the following command:
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-```sh
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-tensorboard --logdir ${exp_dir}/exp/${model_dir}/tensorboard/train
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-```
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-
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At the end of each epoch, the evaluation metrics are calculated on the validation set, like follows:
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```text
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... [valid] loss_ctc=99.914, cer_ctc=1.000, loss_att=80.512, acc=0.029, cer=0.971, wer=1.000, loss_pre=1.952, loss=88.285 ...
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```
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+Also, users can use tensorboard to observe these training information by the following command:
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+```sh
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+tensorboard --logdir ${exp_dir}/exp/${model_dir}/tensorboard/train
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+```
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+
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The inference results are saved in `${exp_dir}/exp/${model_dir}/decode_asr_*/$dset`. The main two files are `text.cer` and `text.cer.txt`. `text.cer` saves the comparison between the recognized text and the reference text, like follows:
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```text
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...
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