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Python compiler with full language support and CPython compatibility

Project description

Overview

This document is the recommended first read if you are interested in using Nuitka, understand its use cases, check what you can expect, license, requirements, credits, etc.

Nuitka is the Python compiler. It is written in Python. It is a seamless replacement or extension to the Python interpreter and compiles every construct that CPython 2.6, 2.7, 3.3, 3.4, 3.5, 3.6, 3.7, 3.8, 3.9 have, when itself run with that Python version.

It then executes uncompiled code and compiled code together in an extremely compatible manner.

You can use all Python library modules and all extension modules freely.

Nuitka translates the Python modules into a C level program that then uses libpython and static C files of its own to execute in the same way as CPython does.

All optimization is aimed at avoiding overhead, where it’s unnecessary. None is aimed at removing compatibility, although slight improvements will occasionally be done, where not every bug of standard Python is emulated, e.g. more complete error messages are given, but there is a full compatibility mode to disable even that.

Usage

Requirements

  • C Compiler: You need a compiler with support for C11 or alternatively for C++03 [1]

    Currently this means, you need to use one of these compilers:

    • The gcc compiler of at least version 5.1, or the g++ compiler of at least version 4.4 as an alternative.

    • The clang compiler on macOS X or FreeBSD.

    • The MinGW64 C11 compiler on Windows, must be based on gcc 8 or higher. It will be automatically downloaded if not found, which is the recommended way of installing it.

    • Visual Studio 2019 or higher on Windows [2], older versions will work but only supported for commercial users. Configure to use the English language pack for best results (Nuitka filters away garbage outputs, but only for that language).

    • On Windows the clang-cl compiler on Windows can be used if provided by the Visual Studion installer.

  • Python: Version 2.6, 2.7 or 3.3, 3.4, 3.5, 3.6, 3.7, 3.8, 3.9

  • Operating System: Linux, FreeBSD, NetBSD, macOS X, and Windows (32/64 bits).

    Others may work as well. The portability is expected to be generally good, but the e.g. Scons usage may have to be adapted. Make sure to match Windows Python and C compiler architecture, or else you will get cryptic error messages.

  • Architectures: x86, x86_64 (amd64), and arm, likely many more

    Other architectures are expected to also work, out of the box, as Nuitka is generally not using any hardware specifics. These are just the ones tested and known to be good. Feedback is welcome. Generally, the architectures that Debian supports can be considered good and tested too.

Command Line

The recommended way of executing Nuitka is <the_right_python> -m nuitka to be absolutely certain which Python interpreter you are using, so it is easier to match with what Nuitka has.

The next best way of executing Nuitka bare that is from a source checkout or archive, with no environment variable changes, most noteworthy, you do not have to mess with PYTHONPATH at all for Nuitka. You just execute the nuitka and nuitka-run scripts directly without any changes to the environment. You may want to add the bin directory to your PATH for your convenience, but that step is optional.

Moreover, if you want to execute with the right interpreter, in that case, be sure to execute <the_right_python> bin/nuitka and be good.

Nuitka has a --help option to output what it can do:

nuitka --help

The nuitka-run command is the same as nuitka, but with a different default. It tries to compile and directly execute a Python script:

nuitka-run --help

This option that is different is --run, and passing on arguments after the first non-option to the created binary, so it is somewhat more similar to what plain python will do.

Installation

For most systems, there will be packages on the download page of Nuitka. But you can also install it from source code as described above, but also like any other Python program it can be installed via the normal python setup.py install routine.

License

Nuitka is licensed under the Apache License, Version 2.0; you may not use it except in compliance with the License.

You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an “AS IS” BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.

Tutorial Setup and build on Windows

This is basic steps if you have nothing installed, of course if you have any of the parts, just skip it.

Setup

Install Python

  • Download and install from https://www.python.org/downloads/windows

  • Select one of Windows x86-64 web-based installer (64 bits Python, recommended) or x86 executable (32 bits Python) installer.

  • Verify using command python --version.

Install Nuitka

  • python -m pip install nuitka

  • Verify using command python -m nuitka --version

Write some code and test

Create a folder for the Python code

  • mkdir HelloWorld

  • make a python file named hello.py

def talk(message):
    return "Talk " + message

def main():
    print( talk("Hello World"))

if __name__ == "__main__":
    main()

Test your program

Do as you normally would. Running Nuitka on code that works incorrectly is not easier to debug.

python hello.py

Build it using

python -m nuitka --mingw64 hello.py

If you like to have full output add --show-progress and --show-scons.

Run it

Execute the hello.exe created near hello.py.

Distribute

To distribute, build with --standalone option, which will not output a single executable, but a whole folder. Copy the resulting hello.dist folder to the other machine and run it.

You may also try --onefile which does create a single file, but make sure that the mere standalone is working, before turning to it, as it will make the debugging only harder, e.g. in case of missing data files.

Use Cases

Use Case 1 - Program compilation with all modules embedded

If you want to compile a whole program recursively, and not only the single file that is the main program, do it like this:

python -m nuitka --follow-imports program.py

In case you have a source directory with dynamically loaded files, i.e. one which cannot be found by recursing after normal import statements via the PYTHONPATH (which would be the recommended way), you can always require that a given directory shall also be included in the executable:

python -m nuitka --follow-imports --include-plugin-directory=plugin_dir program.py

Use Case 2 - Extension Module compilation

If you want to compile a single extension module, all you have to do is this:

python -m nuitka --module some_module.py

The resulting file some_module.so can then be used instead of some_module.py.

Use Case 3 - Package compilation

If you need to compile a whole package and embed all modules, that is also feasible, use Nuitka like this:

python -m nuitka --module some_package --include-package=some_package

Use Case 4 - Program Distribution

For distribution to other systems, there is the standalone mode which produces a folder for which you can specify --standalone.

python -m nuitka --standalone program.py

Follow all imports is default in this mode. You can selectively exclude modules by specifically saying --nofollow-import-to, but then an ImportError will be raised when import of it is attempted at program runtime.

For data files to be included, use the option --include-data-file=<source>=<target> where the source is a file system path, but target has to be specified relative. For standalone you can also copy them manually, but this can do extra checks, and for onefile mode, there is no manual copying possible.

For package data, there is a better way, using --include-package-data which detects data files of packages automatically and copies them over. It even accepts patterns in shell style.

With data files, you are largely on your own. Nuitka keeps track of ones that are needed by popular packages, but it might be incomplete. Raise issues if you encounter something in these.

When that is working, you can use the onefile if you so desire.

python -m nuitka --onefile program.py

This will create a single binary, which on Linux will not even unpack itself, but instead loop back mount its contents as a filesystem and use that.

On Windows, there are two modes, one which is copying it to the AppData of your company specified, to also use it as a cache, and one which does it in the temporary directory. You need to do one this this.

# Create a binary that unpacks into a temporary folder
python -m nuitka --onefile --windows-onefile-tempdir program.py

# Create a binary that unpacks to your company Appdata folder on the system
# and is not deleted, there are more options.
python -m nuitka --onefile --windows-company-name=Change_This --windows-product-version=1.2.3.4 program.py

Typical Problems

Dynamic sys.path

If your script modifies sys.path to e.g. insert directories with source code relative to it, Nuitka will currently not be able to see those. However, if you set the PYTHONPATH to the resulting value, you will be able to compile it.

Missing data files in standalone

If your program fails to file data, it can cause all kinds of different behaviours, e.g. a package might complain it is not the right version, because a VERSION file check defaulted to unknown. The absence of icon files or help texts, may raise strange errors.

Often the error paths for files not being present are even buggy and will reveal programming errors like unbound local variables. Please look carefully at these exceptions keeping in mind that this can be the cause. If you program works without standalone, chances are data files might be cause.

Missing DLLs in standalone

Nuitka has plugins that deal with copying DLLs. For NumPy, SciPy, Tkinter, etc.

These need special treatment to be able to run on other systems. Manually copying them is not enough and will given strange errors. Sometimes newer version of packages, esp. NumPy can be unsupported. In this case you will have to raise an issue, and use the older one.

Dependency creep in standalone

Some packages are a single import, but to Nuitka mean that more than a thousand packages (literally) are to be included. The prime example of Pandas, which does want to plug and use just about everything you can imagine. Multiple frameworks for syntax highlighting everything imaginable take time.

Nuitka will have to learn effective caching to deal with this in the future. Right now, you will have to deal with huge compilation times for these.

Tips

Python command line flags

For passing things like -O or -S to Python, to your compiled program, there is a command line option name --python-flag= which makes Nuitka emulate these options.

The most important ones are supported, more can certainly be added.

Caching compilation results

The C compiler, when invoked with the same input files, will take a long time and much CPU to compile over and over. Make sure you are having ccache installed and configured when using gcc (even on Windows). It will make repeated compilations much faster, even if things are not yet not perfect, i.e. changes to the program can cause many C files to change, requiring a new compilation instead of using the cached result.

On Windows, with gcc Nuitka supports using ccache.exe which it will offer to download from an official source and it automatically. This is the recommended way of using it on Windows, as other versions can e.g. hang.

Nuitka will pick up ccache if it’s in found in system PATH, and it will also be possible to provide if by setting NUITKA_CCACHE_BINARY to the full path of the binary, this is for use in CI systems.

For the Visual Studio compilers, you are just one pip install clcache command away. To make Nuitka use those, set NUITKA_CLCACHE_BINARY to the full path of clcache.exe, which will be in the scripts folder of the Python, you installed it into.

Runners

Avoid running the nuitka binary, doing python -m nuitka will make a 100% sure you are using what you think you are. Using the wrong Python will make it give you SyntaxError for good code or ImportError for installed modules. That is happening, when you run Nuitka with Python2 on Python3 code and vice versa. By explicitly calling the same Python interpreter binary, you avoid that issue entirely.

Fastest C Compilers

The fastest binaries of pystone.exe on Windows with 64 bits Python proved to be significantly faster with MinGW64, roughly 20% better score. So it is recommended for use over MSVC. Using clang-cl.exe of Clang7 was faster than MSVC, but still significantly slower than MinGW64, and it will be harder to use, so it is not recommended.

On Linux for pystone.bin the binary produced by clang6 was faster than gcc-6.3, but not by a significant margin. Since gcc is more often already installed, that is recommended to use for now.

Differences in C compilation times have not yet been examined.

Unexpected Slowdowns

Using the Python DLL, like standard CPython does can lead to unexpected slowdowns, e.g. in uncompiled code that works with Unicode strings. This is because calling to the DLL rather than residing in the DLL causes overhead, and this even happens to the DLL with itself, being slower, than a Python all contained in one binary.

So if feasible, aim at static linking, which is currently only possible with Anaconda Python on non-Windows.

Windows Standalone executables and dependencies

The process of making standalone executables for Windows traditionally involves using an external dependency walker in order to copy necessary libraries along with the compiled executables to the distribution folder.

Using the external dependency walker is quite a time consuming, and may copy some unnecessary libraries along the way (better have too much than missing).

There’s also an experimental alternative internal dependency walker that relies on pefile which analyses PE imports of executables and libraries.

This implementation shall create smaller Standalone distributions since it won’t include Windows’ equivalent of the standard library, and will speed-up first Nuitka compilations by an order of magnitude.

In order to use it, you may enable the internal dependency walker by using the following switch:

python -m nuitka --standalone --windows-dependency-tool=pefile myprogram.py
python -m nuitka --standalone --windows-dependency-tool=pefile --experimental=use_pefile_recurse myprogram.py
python -m nuitka --standalone --windows-dependency-tool=pefile --experimental=use_pefile_recurse --experimental=use_pefile_fullrecurse myprogram.py

Windows errors with resources

On Windows, the Windows Defender tool and the Windows Indexing Service both scan the freshly created binaries, while Nuitka wants to work with it, e.g. adding more resources, and then preventing operations randomly due to holding locks. Make sure to exclude your compilation stage from these services.

Windows standalone program redistribuation

Whether compiling with MingW or MSVC, the standalone programs have external dependencies to Visual C Runtime libraries. Nuitka tries to ship those dependent DLLs by copying them from your system.

Beginning with Microsoft Windows 10, Microsoft ships ucrt.dll (Universal C Runtime libraries) which rehook calls to api-ms-crt-*.dll.

With earlier Windows platforms (and wine/ReactOS), you should consider installing Visual C Runtime libraries before executing a Nuitka standalone compiled program.

Depending on the used C compiler, you’ll need the following redist versions:

Visual C version

Redist Year

CPython

14.2

2019

3.5, 3.6, 3.7, 3.8, 3.9

14.1

2017

3.5, 3.6, 3.7, 3.8

14.0

2015

3.5, 3.6, 3.7, 3.8

10.0

2010

3.3, 3.4

9.0

2008

2.6, 2.7, 3.0, 3.1, 3.2

When using MingGW64, you’ll need the following redist versions:

MingGW64 version

Redist Year

CPython

8.1.0

2015

3.5, 3.6, 3.7, 3.8, 3.9

Once the corresponding runtime libraries are installed on the target system, you may remove all api-ms-crt-*.dll files from your Nuitka compiled dist folder.

Detecting Nuitka at run time

It doesn’t set sys.frozen unlike other tools. For Nuitka, we have the module attribute __compiled__ to test if a specific module was compiled.

Where to go next

Remember, this project is not completed yet. Although the CPython test suite works near perfect, there is still more work needed, esp. to make it do more optimization. Try it out.

Follow me on Twitter

Nuitka announcements and interesting stuff is pointed to on the Twitter account, but obviously with no details. @KayHayen.

I will not answer Nuitka issues via Twitter though, rather make occasional polls, and give important announcements, as well as low-level posts about development ongoing.

Report issues or bugs

Should you encounter any issues, bugs, or ideas, please visit the Nuitka bug tracker and report them.

Best practices for reporting bugs:

  • Please always include the following information in your report, for the underlying Python version. You can easily copy&paste this into your report.

    python -m nuitka --version
  • Try to make your example minimal. That is, try to remove code that does not contribute to the issue as much as possible. Ideally come up with a small reproducing program that illustrates the issue, using print with different results when that programs runs compiled or native.

  • If the problem occurs spuriously (i.e. not each time), try to set the environment variable PYTHONHASHSEED to 0, disabling hash randomization. If that makes the problem go away, try increasing in steps of 1 to a hash seed value that makes it happen every time, include it in your report.

  • Do not include the created code in your report. Given proper input, it’s redundant, and it’s not likely that I will look at it without the ability to change the Python or Nuitka source and re-run it.

  • Do not send screenshots of text, that is bad and lazy. Instead, capture text outputs from the console.

Word of Warning

Consider using this software with caution. Even though many tests are applied before releases, things are potentially breaking. Your feedback and patches to Nuitka are very welcome.

Join Nuitka

You are more than welcome to join Nuitka development and help to complete the project in all minor and major ways.

The development of Nuitka occurs in git. We currently have these 3 branches:

  • master

    This branch contains the stable release to which only hotfixes for bugs will be done. It is supposed to work at all times and is supported.

  • develop

    This branch contains the ongoing development. It may at times contain little regressions, but also new features. On this branch, the integration work is done, whereas new features might be developed on feature branches.

  • factory

    This branch contains unfinished and incomplete work. It is very frequently subject to git rebase and the public staging ground, where my work for develop branch lives first. It is intended for testing only and recommended to base any of your own development on. When updating it, you very often will get merge conflicts. Simply resolve those by doing git reset --hard origin/factory and switch to the latest version.

Donations

Should you feel that you cannot help Nuitka directly, but still want to support, please consider making a donation and help this way.

Unsupported functionality

The co_code attribute of code objects

The code objects are empty for native compiled functions. There is no bytecode with Nuitka’s compiled function objects, so there is no way to provide it.

PDB

There is no tracing of compiled functions to attach a debugger to.

Optimization

Constant Folding

The most important form of optimization is the constant folding. This is when an operation can be fully predicted at compile time. Currently, Nuitka does these for some built-ins (but not all yet, somebody to look at this more closely will be very welcome!), and it does it e.g. for binary/unary operations and comparisons.

Constants currently recognized:

5 + 6     # binary operations
not 7     # unary operations
5 < 6     # comparisons
range(3)  # built-ins

Literals are the one obvious source of constants, but also most likely other optimization steps like constant propagation or function inlining will be. So this one should not be underestimated and a very important step of successful optimizations. Every option to produce a constant may impact the generated code quality a lot.

Constant Propagation

At the core of optimizations, there is an attempt to determine the values of variables at run time and predictions of assignments. It determines if their inputs are constants or of similar values. An expression, e.g. a module variable access, an expensive operation, may be constant across the module of the function scope and then there needs to be none or no repeated module variable look-up.

Consider e.g. the module attribute __name__ which likely is only ever read, so its value could be predicted to a constant string known at compile time. This can then be used as input to the constant folding.

if __name__ == "__main__":
   # Your test code might be here
   use_something_not_use_by_program()

Built-in Name Lookups

Also, built-in exception name references are optimized if they are used as a module level read-only variables:

try:
   something()
except ValueError: # The ValueError is a slow global name lookup normally.
   pass

Built-in Call Prediction

For built-in calls like type, len, or range it is often possible to predict the result at compile time, esp. for constant inputs the resulting value often can be precomputed by Nuitka. It can simply determine the result or the raised exception and replace the built-in call with that value, allowing for more constant folding or code path reduction.

type("string") # predictable result, builtin type str.
len([1, 2])    # predictable result
range(3, 9, 2) # predictable result
range(3, 9, 0) # predictable exception, range raises due to 0.

Sometimes the result of a built-in should not be predicted when the result is big. A range() call e.g. may give too big values to include the result in the binary. Then it is not done.

range( 100000 ) # We do not want this one to be expanded

Conditional Statement Prediction

For conditional statements, some branches may not ever be taken, because of the conditions being possible to predict. In these cases, the branch not taken and the condition check is removed.

This can typically predict code like this:

if __name__ == "__main__":
   # Your test code might be here
   use_something_not_use_by_program()

or

if False:
   # Your deactivated code might be here
   use_something_not_use_by_program()

It will also benefit from constant propagations, or enable them because once some branches have been removed, other things may become more predictable, so this can trigger other optimization to become possible.

Every branch removed makes optimization more likely. With some code branches removed, access patterns may be more friendly. Imagine e.g. that a function is only called in a removed branch. It may be possible to remove it entirely, and that may have other consequences too.

Exception Propagation

For exceptions that are determined at compile time, there is an expression that will simply do raise the exception. These can be propagated upwards, collecting potentially “side effects”, i.e. parts of expressions that were executed before it occurred, and still have to be executed.

Consider the following code:

print(side_effect_having() + (1 / 0))
print(something_else())

The (1 / 0) can be predicted to raise a ZeroDivisionError exception, which will be propagated through the + operation. That part is just Constant Propagation as normal.

The call side_effect_having() will have to be retained though, but the print does not and can be turned into an explicit raise. The statement sequence can then be aborted and as such the something_else call needs no code generation or consideration anymore.

To that end, Nuitka works with a special node that raises an exception and is wrapped with a so-called “side_effects” expression, but yet can be used in the code as an expression having a value.

Exception Scope Reduction

Consider the following code:

try:
    b = 8
    print(range(3, b, 0))
    print("Will not be executed")
except ValueError as e:
    print(e)

The try block is bigger than it needs to be. The statement b = 8 cannot cause a ValueError to be raised. As such it can be moved to outside the try without any risk.

b = 8
try:
    print(range(3, b, 0))
    print("Will not be executed")
except ValueError as e:
    print(e)

Exception Block Inlining

With the exception propagation, it then becomes possible to transform this code:

try:
    b = 8
    print(range(3, b, 0))
    print("Will not be executed!")
except ValueError as e:
    print(e)
try:
    raise ValueError("range() step argument must not be zero")
except ValueError as e:
    print(e)

Which then can be lowered in complexity by avoiding the raise and catch of the exception, making it:

e = ValueError("range() step argument must not be zero")
print(e)

Empty Branch Removal

For loops and conditional statements that contain only code without effect, it should be possible to remove the whole construct:

for i in range(1000):
    pass

The loop could be removed, at maximum, it should be considered an assignment of variable i to 999 and no more.

Another example:

if side_effect_free:
   pass

The condition check should be removed in this case, as its evaluation is not needed. It may be difficult to predict that side_effect_free has no side effects, but many times this might be possible.

Unpacking Prediction

When the length of the right-hand side of an assignment to a sequence can be predicted, the unpacking can be replaced with multiple assignments.

a, b, c = 1, side_effect_free(), 3
a = 1
b = side_effect_free()
c = 3

This is of course only really safe if the left-hand side cannot raise an exception while building the assignment targets.

We do this now, but only for constants, because we currently have no ability to predict if an expression can raise an exception or not.

Built-in Type Inference

When a construct like in xrange() or in range() is used, it is possible to know what the iteration does and represent that so that iterator users can use that instead.

I consider that:

for i in xrange(1000):
    something(i)

could translate xrange(1000) into an object of a special class that does the integer looping more efficiently. In case i is only assigned from there, this could be a nice case for a dedicated class.

Quicker Function Calls

Functions are structured so that their parameter parsing and tp_call interface is separate from the actual function code. This way the call can be optimized away. One problem is that the evaluation order can differ.

def f(a, b, c):
    return a, b, c

f(c = get1(), b = get2(), a = get3())

This will have to evaluate first get1(), then get2() and only then get3() and then make the function call with these values.

Therefore it will be necessary to have a staging of the parameters before making the actual call, to avoid a re-ordering of the calls to get1(), get2(), and get3().

Lowering of iterated Container Types

In some cases, accesses to list constants can become tuple constants instead.

Consider that:

for x in [a, b, c]:
    something(x)

Can be optimized into this:

for x in (a, b, c):
     something(x)

This allows for simpler, faster code to be generated, and fewer checks needed, because e.g. the tuple is clearly immutable, whereas the list needs a check to assert that. This is also possible for sets.

In theory, something similar is also possible for dict. For the later, it will be non-trivial though to maintain the order of execution without temporary values introduced. The same thing is done for pure constants of these types, they change to tuple values when iterated.

Credits

Contributors to Nuitka

Thanks go to these individuals for their much-valued contributions to Nuitka. Contributors have the license to use Nuitka for their own code even if Closed Source.

The order is sorted by time.

  • Li Xuan Ji: Contributed patches for general portability issue and enhancements to the environment variable settings.

  • Nicolas Dumazet: Found and fixed reference counting issues, import packages work, improved some of the English and generally made good code contributions all over the place, solved code generation TODOs, did tree building cleanups, core stuff.

  • Khalid Abu Bakr: Submitted patches for his work to support MinGW and Windows, debugged the issues, and helped me to get cross compile with MinGW from Linux to Windows. This was quite difficult stuff.

  • Liu Zhenhai: Submitted patches for Windows support, making the inline Scons copy actually work on Windows as well. Also reported import related bugs, and generally helped me make the Windows port more usable through his testing and information.

  • Christopher Tott: Submitted patches for Windows, and general as well as structural cleanups.

  • Pete Hunt: Submitted patches for macOS X support.

  • “ownssh”: Submitted patches for built-ins module guarding, and made massive efforts to make high-quality bug reports. Also the initial “standalone” mode implementation was created by him.

  • Juan Carlos Paco: Submitted cleanup patches, creator of the Nuitka GUI, creator of the Ninja IDE plugin for Nuitka.

  • “Dr. Equivalent”: Submitted the Nuitka Logo.

  • Johan Holmberg: Submitted patch for Python3 support on macOS X.

  • Umbra: Submitted patches to make the Windows port more usable, adding user provided application icons, as well as MSVC support for large constants and console applications.

  • David Cortesi: Submitted patches and test cases to make macOS port more usable, specifically for the Python3 standalone support of Qt.

  • Andrew Leech: Submitted github pull request to allow using “-m nuitka” to call the compiler. Also pull request to improve “bist_nuitka” and to do the registration.

  • Paweł K: Submitted github pull request to remove glibc from standalone distribution, saving size and improving robustness considering the various distributions.

  • Orsiris de Jong: Submitted github pull request to implement the dependency walking with pefile under Windows.

  • Jorj X. McKie: Submitted github pull requests with NumPy plugin to retain its accelerating libraries, and Tkinter to include the TCL distribution on Windows.

Projects used by Nuitka

  • The CPython project

    Thanks for giving us CPython, which is the base of Nuitka. We are nothing without it.

  • The GCC project

    Thanks for not only the best compiler suite but also thanks for making it easy supporting to get Nuitka off the ground. Your compiler was the first usable for Nuitka and with very little effort.

  • The Scons project

    Thanks for tackling the difficult points and providing a Python environment to make the build results. This is such a perfect fit to Nuitka and a dependency that will likely remain.

  • The valgrind project

    Luckily we can use Valgrind to determine if something is an actual improvement without the noise. And it’s also helpful to determine what’s actually happening when comparing.

  • The NeuroDebian project

    Thanks for hosting the build infrastructure that the Debian and sponsor Yaroslav Halchenko uses to provide packages for all Ubuntu versions.

  • The openSUSE Buildservice

    Thanks for hosting this excellent service that allows us to provide RPMs for a large variety of platforms and make them available immediately nearly at release time.

  • The MinGW64 project

    Thanks for porting the gcc to Windows. This allowed portability of Nuitka with relatively little effort.

  • The Buildbot project

    Thanks for creating an easy to deploy and use continuous integration framework that also runs on Windows and is written and configured in Python code. This allows running the Nuitka tests long before release time.

  • The isort project

    Thanks for making nice import ordering so easy. This makes it so easy to let your IDE do it and clean up afterward.

  • The black project

    Thanks for making a fast and reliable way for automatically formatting the Nuitka source code.

Updates for this Manual

This document is written in REST. That is an ASCII format which is readable as ASCII, but used to generate PDF or HTML documents.

You will find the current source under: https://nuitka.net/gitweb/?p=Nuitka.git;a=blob_plain;f=README.rst

And the current PDF under: https://nuitka.net/doc/README.pdf

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