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Merge pull request #1000 from alibaba-damo-academy/dev_lhn
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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 --CUDA_VISIBLE_DEVICES="0,1" --gpu_num=2
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bash 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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@ -264,4 +264,4 @@ Users can use ModelScope for inference and fine-tuning based on a trained academ
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### Decoding by CPU or GPU
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We support CPU and GPU decoding. For CPU decoding, set `gpu_inference=false` and `njob` to specific the total number of CPU jobs. For GPU decoding, first set `gpu_inference=true`. Then set `gpuid_list` to specific which GPUs for decoding and `njob` to specific the number of decoding jobs on each GPU.
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We support CPU and GPU decoding. For CPU decoding, set `gpu_inference=false` and `njob` to specific the total number of CPU jobs. For GPU decoding, first set `gpu_inference=true`. Then set `gpuid_list` to specific which GPUs for decoding and `njob` to specific the number of decoding jobs on each GPU.
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