Why would you compile a Python script? You can run them directly from the .py file and it works fine, so is there a performance advantage or something?

I also notice that some files in my application get compiled into .pyc while others do not, why is this?

  • You may also note that, including the faster startup of your application, you also gain in security, if you can't share your code if it's a corporate secret. – Please_Dont_Bully_Me_SO_Lords Apr 3 '18 at 14:43
  • @PSyLoCKe You really, really don't. Python bytecode is really readable, because the compiler doesn't need to obfuscate it to optimise it. (Not that it optimises it much...) – wizzwizz4 May 31 '18 at 19:53
  • 1
    The reason some files get compiled automatically is because they are imported; for instance, if you use import mylib.py, Python will compile mylib.py so that future import statements run a little faster. If you later change mylib.py, then it will get re-compiled next time it is imported (Python uses the file date to see that this happens.) – fyngyrz Jul 28 '18 at 6:40

10 Answers 10


It's compiled to bytecode which can be used much, much, much faster.

The reason some files aren't compiled is that the main script, which you invoke with python main.py is recompiled every time you run the script. All imported scripts will be compiled and stored on the disk.

Important addition by Ben Blank:

It's worth noting that while running a compiled script has a faster startup time (as it doesn't need to be compiled), it doesn't run any faster.

| improve this answer | |
  • 267
    It's worth noting that while running a compiled script has a faster startup time (as it doesn't need to be compiled), it doesn't run any faster. – Ben Blank Jan 22 '09 at 23:38
  • 24
    A common misconception. Thanks for sharing. – matpie Jan 23 '09 at 16:49
  • 2
    In addition to not requiring compilation, the .pyc file is almost invariably smaller. Especially if you comment a lot. One of mine is 28419 as .py, but only 17879 as .pyc -- so load time is better as well. Finally, you can precompile top level scripts this way: python -m compileall myscript.py – fyngyrz Apr 23 '14 at 22:20
  • 1
    Is there any difference in memory consumption? I'm testing Python on embedded devices based on mips cpu with only 64MB of RAM, so is there any advantage in memory usage when starting a compiled version of python script? – valentt Sep 14 '14 at 9:44
  • 1
    @valentt: Probably not. I don't know much about the Python internals, but I don't think that parsing to bytecode takes a lot of memory in Python. I cannot think of something that needs a lot of memory to remember some state. – Georg Schölly Sep 16 '14 at 15:26

The .pyc file is Python that has already been compiled to byte-code. Python automatically runs a .pyc file if it finds one with the same name as a .py file you invoke.

"An Introduction to Python" says this about compiled Python files:

A program doesn't run any faster when it is read from a ‘.pyc’ or ‘.pyo’ file than when it is read from a ‘.py’ file; the only thing that's faster about ‘.pyc’ or ‘.pyo’ files is the speed with which they are loaded.

The advantage of running a .pyc file is that Python doesn't have to incur the overhead of compiling it before running it. Since Python would compile to byte-code before running a .py file anyway, there shouldn't be any performance improvement aside from that.

How much improvement can you get from using compiled .pyc files? That depends on what the script does. For a very brief script that simply prints "Hello World," compiling could constitute a large percentage of the total startup-and-run time. But the cost of compiling a script relative to the total run time diminishes for longer-running scripts.

The script you name on the command-line is never saved to a .pyc file. Only modules loaded by that "main" script are saved in that way.

| improve this answer | |
  • 5
    In many cases it's hard to see a difference, but I have a particular python file with over 300,000 lines. (It's a bunch of math calculations generated by another script for testing) It takes 37 seconds to compile, and only 2 seconds to execute. – wojtow Mar 15 '17 at 15:44


First: mild, defeatable obfuscation.

Second: if compilation results in a significantly smaller file, you will get faster load times. Nice for the web.

Third: Python can skip the compilation step. Faster at intial load. Nice for the CPU and the web.

Fourth: the more you comment, the smaller the .pyc or .pyo file will be in comparison to the source .py file.

Fifth: an end user with only a .pyc or .pyo file in hand is much less likely to present you with a bug they caused by an un-reverted change they forgot to tell you about.

Sixth: if you're aiming at an embedded system, obtaining a smaller size file to embed may represent a significant plus, and the architecture is stable so drawback one, detailed below, does not come into play.

Top level compilation

It is useful to know that you can compile a top level python source file into a .pyc file this way:

python -m py_compile myscript.py

This removes comments. It leaves docstrings intact. If you'd like to get rid of the docstrings as well (you might want to seriously think about why you're doing that) then compile this way instead...

python -OO -m py_compile myscript.py

...and you'll get a .pyo file instead of a .pyc file; equally distributable in terms of the code's essential functionality, but smaller by the size of the stripped-out docstrings (and less easily understood for subsequent employment if it had decent docstrings in the first place). But see drawback three, below.

Note that python uses the .py file's date, if it is present, to decide whether it should execute the .py file as opposed to the .pyc or .pyo file --- so edit your .py file, and the .pyc or .pyo is obsolete and whatever benefits you gained are lost. You need to recompile it in order to get the .pyc or .pyo benefits back again again, such as they may be.


First: There's a "magic cookie" in .pyc and .pyo files that indicates the system architecture that the python file was compiled in. If you distribute one of these files into an environment of a different type, it will break. If you distribute the .pyc or .pyo without the associated .py to recompile or touch so it supersedes the .pyc or .pyo, the end user can't fix it, either.

Second: If docstrings are skipped with the use of the -OO command line option as described above, no one will be able to get at that information, which can make use of the code more difficult (or impossible.)

Third: Python's -OO option also implements some optimizations as per the -O command line option; this may result in changes in operation. Known optimizations are:

  • sys.flags.optimize = 1
  • assert statements are skipped
  • __debug__ = False

Fourth: if you had intentionally made your python script executable with something on the order of #!/usr/bin/python on the first line, this is stripped out in .pyc and .pyo files and that functionality is lost.

Fifth: somewhat obvious, but if you compile your code, not only can its use be impacted, but the potential for others to learn from your work is reduced, often severely.

| improve this answer | |

There is a performance increase in running compiled python. However when you run a .py file as an imported module, python will compile and store it, and as long as the .py file does not change it will always use the compiled version.

With any interpeted language when the file is used the process looks something like this:
1. File is processed by the interpeter.
2. File is compiled
3. Compiled code is executed.

obviously by using pre-compiled code you can eliminate step 2, this applies python, PHP and others.

Heres an interesting blog post explaining the differences http://julipedia.blogspot.com/2004/07/compiled-vs-interpreted-languages.html
And here's an entry that explains the Python compile process http://effbot.org/zone/python-compile.htm

| improve this answer | |

As already mentioned, you can get a performance increase from having your python code compiled into bytecode. This is usually handled by python itself, for imported scripts only.

Another reason you might want to compile your python code, could be to protect your intellectual property from being copied and/or modified.

You can read more about this in the Python documentation.

| improve this answer | |
  • 2
    In regards to protecting your code - compiling won't help a whole lot. Compiling obfuscates - but someone with the desire will get your code regardless. – Josh Smeaton Jan 23 '09 at 0:15
  • 1
    @josh that is always possible, if one can access the memory or watch the instructions to the cpu, with enough time and will they can re construct your app. – UnkwnTech Jan 23 '09 at 1:54
  • 5
    Agreed, however as Unkwntech said, that will always be possible, if the person is determined enough. But I'm convinced it will suffice in most situations, where you typically just want to restrict people from "fixing" your code... – Simon B. Jensen Jan 23 '09 at 9:46
  • Languages that are compiled to bytecode are generally not all that hard to reverse-compile unless you take extra steps to obfuscate them - merely compiling generally won't be sufficient. – EJoshuaS - Reinstate Monica Jul 12 '19 at 13:54

Something not touched upon is source-to-source-compiling. For example, nuitka translates Python code to C/C++, and compiles it to binary code which directly runs on the CPU, instead of Python bytecode which runs on the slower virtual machine.

This can lead to significant speedups, or it would let you work with Python while your environment depends on C/C++ code.

| improve this answer | |

There's certainly a performance difference when running a compiled script. If you run normal .py scripts, the machine compiles it every time it is run and this takes time. On modern machines this is hardly noticeable but as the script grows it may become more of an issue.

| improve this answer | |

We use compiled code to distribute to users who do not have access to the source code. Basically to stop inexperienced programers accidentally changing something or fixing bugs without telling us.

| improve this answer | |

Yep, performance is the main reason and, as far as I know, the only reason.

If some of your files aren't getting compiled, maybe Python isn't able to write to the .pyc file, perhaps because of the directory permissions or something. Or perhaps the uncompiled files just aren't ever getting loaded... (scripts/modules only get compiled when they first get loaded)

| improve this answer | |

Beginners assume Python is compiled because of .pyc files. The .pyc file is the compiled bytecode, which is then interpreted. So if you've run your Python code before and have the .pyc file handy, it will run faster the second time, as it doesn't have to re-compile the bytecode

compiler: A compiler is a piece of code that translates the high level language into machine language

Interpreters: Interpreters also convert the high level language into machine readable binary equivalents. Each time when an interpreter gets a high level language code to be executed, it converts the code into an intermediate code before converting it into the machine code. Each part of the code is interpreted and then execute separately in a sequence and an error is found in a part of the code it will stop the interpretation of the code without translating the next set of the codes.

Sources: http://www.toptal.com/python/why-are-there-so-many-pythons http://www.engineersgarage.com/contribution/difference-between-compiler-and-interpreter

| improve this answer | |
  • 9
    Your definition of "compiler" is incorrect. A compiler has never been under to compile to machine code. A compiler is merely a translator from one language to another. This is why we say that Python "compiles" to bytecode, Coffeescript "compiles" to Javascript, and so on and so forth. – Ricky Stewart Jul 25 '14 at 13:48

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.