When working on Python projects, it’s essential to create isolated environments to manage dependencies and avoid conflicts. This guide will help you install Anaconda, fix common issues, and set up a virtual environment for your projects.
a) Install Anaconda by following this guide. Ensure that you have added Anaconda to your shell configuration (~/.zshrc or ~/.bashrc).
b) After installation, verify by running:
conda --version
If you encounter errors when running conda activate venv, such as permission issues, follow these steps to fix them:
a) Remove any broken or partially created environment:
conda remove --name venv --all
a) Navigate to your project directory:
mkdir my_project && cd my_project
b) Create a Conda virtual environment named venv with Python 3.10(or different Python x.xx):
You can check python version using python --version
conda create -p venv python==3.10 -y
c) Activate the virtual environment:
conda activate venv
d) To deactivate the environment:
conda deactivate
Install libraries inside the virtual environment to keep them isolated:
pip install langchain openai python-dotenv streamlit
This approach is preferred over global installation, as it avoids conflicts with other projects.
Keeping track of your project's dependencies is crucial for easy collaboration and deployment. Here's how to do it:
You can either:
conda --version
conda remove --name venv --all
This command captures the exact versions of all packages installed in your virtual environment.
mkdir my_project && cd my_project
To recreate the same environment in another system or environment:
conda create -p venv python==3.10 -y
This ensures that all required libraries are installed with the exact versions specified in the file.
With this setup, you’re ready to work on Python projects efficiently using Conda virtual environments. Happy coding!
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