


Why Doesn't My Cona Command Work After Anaconda Installation?
Troubleshooting Conda Invocation
Despite successfully installing Anaconda and confirming Python availability, you encounter an error when attempting to run the "conda" command. This typically indicates an issue with the path configuration, as evident from the "-bash: conda: command not found" message.
To resolve this, you need to ensure that the Conda executable is accessible from your system's path. Here are the steps to address this issue:
1. Correct Path Configuration:
- For Anaconda 2: Execute export PATH=~/anaconda2/bin:$PATH in the terminal.
- For Anaconda 3: Use export PATH=~/anaconda3/bin:$PATH.
- For Anaconda 4: Launch the Anaconda Prompt, which automatically sets the correct path.
2. Verify Path Modification:
- Run conda --version to confirm that the path modification was successful.
3. Permanent Path Modification:
- To make the path change permanent, open the "~/.bashrc" file using sudo nano ~/.bashrc.
- Add the appropriate path line (e.g., export PATH=~/anaconda3/bin:$PATH).
- Save and close the file.
- Activate the changes with source .bashrc.
4. Install Anaconda Navigator:
- Execute conda install anaconda-navigator.
- If not installed, follow the official Anaconda installation instructions again.
5. Reference Video Tutorial:
- Visit https://youtu.be/Pr25JlaXhpc for additional guidance.
The above is the detailed content of Why Doesn't My Cona Command Work After Anaconda Installation?. For more information, please follow other related articles on the PHP Chinese website!

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