Virtual Environments and
I will add that creating and removing
conda environments is simple with Anaconda.
> conda create --name <envname> python=<version> <optional dependencies>
> conda remove --name <envname> --all
In an activated environment, install packages via
(envname)> conda install <package>
(envname)> pip install <package>
These environments are strongly tied to conda's pip-like package management, so it is simple to create environments and install both Python and non-Python packages.
In addition, installing
ipykernel in an environment adds a new listing in the Kernels dropdown menu of Jupyter notebooks, extending reproducible environments to notebooks. As of Anaconda 4.1, nbextensions were added, adding extensions to notebooks more easily.
In my experience,
conda is faster and more reliable at installing large libraries such as
pandas. Moreover, if you wish to transfer your preserved state of an environment, you can do so by sharing or cloning an env.
A non-exhaustive, quick look at features from each tool:
virtualenv creates project-specific, local environments usually in a
.venv/ folder per project. In contrast,
conda's environments are global and saved in one place.
- PyPI works with both tools through
conda can add additional channels, which can sometimes install faster.
- Sadly neither has an official lock file, so reproducing environments has not been solid with either tool. However, both have a mechanism to create a file of pinned packages.
- Python is needed to install and run
conda already ships with Python.
virtualenv creates environments using the same Python version it was installed with.
conda allows you to create environments with nearly any Python version.
In my experience,
conda fits well in a data science application and serves as a good general env tool. However in software development, dropping in local, ephemeral, lightweight environments with
virtualenv might be convenient.