I have to clarify that
anaconda is just a collection. The real environment manager is
conda. Here is
miniconda. It just contains the necessary parts to manage the environment instead of a full
conda is beyond a simple Python packages manager but is a system-wide package manager. It will help you to install packages without pain. A classic example is installing
numpy on Windows. Without
conda, it is really difficult as it needs a specific C compiler which is difficult to obtain. But with
conda, you can install
numpy with just one command
conda install numpy. It will automatically solve compiler problem and C dependencies.
So back to your question, when you create an env in Pycharm, it will ask you which env do you want to create:
Conda Environment, or
Pipenv Environment. As for me, I usually choose
Pipenv Environment as this env will be bound to the current project and can generate a lock file.
In this case, I think you can understand it now: There isn't an env named "created by PyCharm" or "Anaconda". There are only envs named "created by Virtualenv, Conda or Pipenv". And Pycharm just uses and wraps one of them.
So what is the difference between
Conda Environment and
Pipenv Environment essentially is a
Virtualenv Environment with sophisticated
pip)? The difference comes from their different purposes.
Conda Environment is usually for "Python user". They use Python as a tool to do some other works such as web crawling, data mining, and image processing. They don't know much about Python(as they don't need to know) so
conda is as automatical as possible. And their tasks can be anywhere in the computer so the envs created by
conda are located in user-wide directories. And they sometimes need different Python versions, this can be done in
conda but not
Virtualenv Environment is usually for "Python developer". They use Python to build applications or packages. The envs created by
Virtualenv are usually located in the current project's directory. So you can create an env for every application and manage dependencies easily.
To sum up:
- Manage not only Python packages but also different Python versions and system-wide dependencies.
- Envs are located in user-wide directories.
- Fewer envs.
- Manage Python packages. The main purpose is to separate dependencies for every application.
- Envs are usually located in project-wide directories. (Although
pipenv creates env in user-wide directories by default, many people think in project directories should be the default.)
- Much more envs.(A new env for every application)
For me, I use both of them. I use
conda to manage different Python versions and use
pipenv to manage dependencies for my applications.