I want to access some .NET assemblies written in C# from Python code.
A little research showed I have two choices:
What are the trade-offs between both solutions?
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If you want to mainly base your code on the .NET framework, I'd highly recommend IronPython vs Python.NET. IronPython is pretty much native .NET - so it just works great when integrating with other .NET langauges.
Python.NET is good if you want to just integrate one or two components from .NET into a standard python application.
There are notable differences when using IronPython - but most of them are fairly subtle. Python.NET uses the standard CPython runtime, so this Wiki page is a relevant discussion of the differences between the two implementations. The largest differences occur in the cost of exceptions - so some of the standard python libraries don't perform as well in IronPython due to their implementation.
While agreeing with the answers given by Reed Copsey and Alex Martelli, I'd like to point out one further difference - the Global Interpreter Lock (GIL). While IronPython doesn't have the limitations of the GIL, CPython does - so it would appear that for those applications where the GIL is a bottleneck, say in certain multicore scenarios, IronPython has an advantage over Python.NET.
From the Python.NET documentation:
Important Note for embedders: Python is not free-threaded and uses a global interpreter lock to allow multi-threaded applications to interact safely with the Python interpreter. Much more information about this is available in the Python C API documentation on the
When embedding Python in a managed application, you have to manage the GIL in just the same way you would when embedding Python in a C or C++ application.
Before interacting with any of the objects or APIs provided by the
Python.Runtimenamespace, calling code must have acquired the Python global interpreter lock by calling the
PythonEngine.AcquireLockmethod. The only exception to this rule is the
PythonEngine.Initializemethod, which may be called at startup without having acquired the GIL.
When finished using Python APIs, managed code must call a corresponding
PythonEngine.ReleaseLockto release the GIL and allow other threads to use Python.
ReleaseLockmethods are thin wrappers over the unmanaged
PyGILState_Releasefunctions from the Python API, and the documentation for those APIs applies to the managed versions.
Another issue is IDE support. CPython probably has better IDE support at present than IronPython - so this may be a factor in the choosing of one over the other.
Most of scientific and numerical Python libraries that rely on CPython C-API (numpy, scipy, matplotlib, pandas, cython, etc.) are working mostly under CPython, so in that case your best bet is pythonnet (other names - Python.NET and Python for .NET). The same is true for CPython GUI bindings such as WxWidgets, PyQt/PySide, GTK, Kivy, etc., although both pythonnet and IronPython can use WPF and WinForms.
And finally IronPython does not fully support Python 3 yet.
IronPython is ".NET-native" -- so it will be preferable if you want to fully integrate your Python code with .NET all the way; Python.NET works with Classic Python, so it lets you keep your Python code's "arm's length" away from .NET proper. (Note that with this code you can actually use extensions written for CPython from your IronPython code, so that's not a discriminating condition any more).
IronPython, currently, doesn't support Python 3.6 (only 2.7)
from IronPython 3 "Builds of IronPython 3 are not yet provided."
Ironpython is like C# in turn it relies on static prebuilt libraries while unlike C# is a dynamic language.
Cpython is like C++ like Ironpython is a dynamic language and has access to dynamic libraries which in turn translates to being forced to write everything.
Ironpython is faster than C# in certain areas but not faster than Cpython, however you can link Ironpython to any language thus over coming problems but then again you can do the same with Cpython.
A funny, simple and powerful language regardless what you choose!