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Minor problems encountered in installing the deep learning environment -- the jupyter service is busy
2022-06-11 04:38:00 【TheTop1】
Small problems encountered in installing the deep learning environment –jupyter The service is busy
pytorch Virtual environment installation jupyter, After startup, the new file always shows that the service is busy ( There is no black circle in the upper right corner ) Solutions for :
open cmd, Get into pytorch A virtual environment , Input pip install "pyzmq==17.0.0" "ipykernel==4.8.2" Wait for download , After that, open it again and you can use it normally
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