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@@ -5,7 +5,9 @@ The audio data is in streaming, the asr inference process is in offline.
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## Steps
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-Step 1) Prepare server environment (on server). Install modelscope and funasr with pip or with cuda-docker image.
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+Step 1) Prepare server environment (on server).
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+
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+ Install modelscope and funasr with pip or with cuda-docker image.
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Option 1: Install modelscope and funasr with [pip](https://github.com/alibaba-damo-academy/FunASR#installation)
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@@ -23,9 +25,10 @@ cd FunASR/funasr/runtime/python/grpc/
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```
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-Step 2) Optional, generate protobuf file (run on server, the two generated pb file are both used for server and client).
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+Step 2) Optional, generate protobuf file (run on server, the two generated pb files are both used for server and client).
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```
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-# paraformer_pb2.py and paraformer_pb2_grpc.py are already generated, regenerate it only when you make changes to ./proto/paraformer.proto file.
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+# paraformer_pb2.py and paraformer_pb2_grpc.py are already generated,
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+# regenerate it only when you make changes to ./proto/paraformer.proto file.
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python -m grpc_tools.protoc --proto_path=./proto -I ./proto --python_out=. --grpc_python_out=./ ./proto/paraformer.proto
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```
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