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Merge branch 'main' of github.com:alibaba-damo-academy/FunASR
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游雁 3 years ago
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868d373895

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egs_modelscope/asr/paraformer/speech_paraformer-tiny-commandword_asr_nat-zh-cn-16k-vocab544-pytorch/README.md

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+# ModelScope Model
+
+## How to finetune and infer using a pretrained Paraformer-large Model
+
+### Finetune
+
+- Modify finetune training related parameters in `finetune.py`
+    - <strong>output_dir:</strong> # result dir
+    - <strong>data_dir:</strong> # the dataset dir needs to include files: train/wav.scp, train/text; validation/wav.scp, validation/text.
+    - <strong>batch_bins:</strong> # batch size
+    - <strong>max_epoch:</strong> # number of training epoch
+    - <strong>lr:</strong> # learning rate
+
+- Then you can run the pipeline to finetune with:
+```python
+    python finetune.py
+```
+
+### Inference
+
+Or you can use the finetuned model for inference directly.
+
+- Setting parameters in `infer.py`
+    - <strong>data_dir:</strong> # the dataset dir
+    - <strong>output_dir:</strong> # result dir
+
+- Then you can run the pipeline to infer with:
+```python
+    python infer.py
+```

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egs_modelscope/asr/paraformer/speech_paraformer-tiny-commandword_asr_nat-zh-cn-16k-vocab544-pytorch/infer.py

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+import os
+import shutil
+from multiprocessing import Pool
+
+from modelscope.pipelines import pipeline
+from modelscope.utils.constant import Tasks
+
+from funasr.utils.compute_wer import compute_wer
+
+
+def modelscope_infer_core(output_dir, split_dir, njob, idx):
+    output_dir_job = os.path.join(output_dir, "output.{}".format(idx))
+    gpu_id = (int(idx) - 1) // njob
+    if "CUDA_VISIBLE_DEVICES" in os.environ.keys():
+        gpu_list = os.environ['CUDA_VISIBLE_DEVICES'].split(",")
+        os.environ['CUDA_VISIBLE_DEVICES'] = str(gpu_list[gpu_id])
+    else:
+        os.environ['CUDA_VISIBLE_DEVICES'] = str(gpu_id)
+    inference_pipline = pipeline(
+        task=Tasks.auto_speech_recognition,
+        model="damo/speech_paraformer-tiny-commandword_asr_nat-zh-cn-16k-vocab544-pytorch",
+        output_dir=output_dir_job,
+        batch_size=64
+    )
+    audio_in = os.path.join(split_dir, "wav.{}.scp".format(idx))
+    inference_pipline(audio_in=audio_in)
+
+
+def modelscope_infer(params):
+    # prepare for multi-GPU decoding
+    ngpu = params["ngpu"]
+    njob = params["njob"]
+    output_dir = params["output_dir"]
+    if os.path.exists(output_dir):
+        shutil.rmtree(output_dir)
+    os.mkdir(output_dir)
+    split_dir = os.path.join(output_dir, "split")
+    os.mkdir(split_dir)
+    nj = ngpu * njob
+    wav_scp_file = os.path.join(params["data_dir"], "wav.scp")
+    with open(wav_scp_file) as f:
+        lines = f.readlines()
+        num_lines = len(lines)
+        num_job_lines = num_lines // nj
+    start = 0
+    for i in range(nj):
+        end = start + num_job_lines
+        file = os.path.join(split_dir, "wav.{}.scp".format(str(i + 1)))
+        with open(file, "w") as f:
+            if i == nj - 1:
+                f.writelines(lines[start:])
+            else:
+                f.writelines(lines[start:end])
+        start = end
+
+    p = Pool(nj)
+    for i in range(nj):
+        p.apply_async(modelscope_infer_core,
+                      args=(output_dir, split_dir, njob, str(i + 1)))
+    p.close()
+    p.join()
+
+    # combine decoding results
+    best_recog_path = os.path.join(output_dir, "1best_recog")
+    os.mkdir(best_recog_path)
+    files = ["text", "token", "score"]
+    for file in files:
+        with open(os.path.join(best_recog_path, file), "w") as f:
+            for i in range(nj):
+                job_file = os.path.join(output_dir, "output.{}/1best_recog".format(str(i + 1)), file)
+                with open(job_file) as f_job:
+                    lines = f_job.readlines()
+                f.writelines(lines)
+
+    # If text exists, compute CER
+    text_in = os.path.join(params["data_dir"], "text")
+    if os.path.exists(text_in):
+        text_proc_file = os.path.join(best_recog_path, "token")
+        compute_wer(text_in, text_proc_file, os.path.join(best_recog_path, "text.cer"))
+
+
+if __name__ == "__main__":
+    params = {}
+    params["data_dir"] = "./data/test"
+    params["output_dir"] = "./results"
+    params["ngpu"] = 1
+    params["njob"] = 1
+    modelscope_infer(params)