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.. _differences-from-python: Differences from Python ======================= Mypyc aims to be sufficiently compatible with Python semantics so that migrating code to mypyc often doesn't require major code changes. There are various differences to enable performance gains that you need to be aware of, however. This section documents notable differences from Python. We discuss many of them also elsewhere, but it's convenient to have them here in one place. Running compiled modules ------------------------ You can't use ``python3 <module>.py`` or ``python3 -m <module>`` to run compiled modules. Use ``python3 -c "import <module>"`` instead, or write a wrapper script that imports your module. As a side effect, you can't rely on checking the ``__name__`` attribute in compiled code, like this:: if __name__ == "__main__": # Can't be used in compiled code main() Type errors prevent compilation ------------------------------- You can't compile code that generates mypy type check errors. You can sometimes ignore these with a ``# type: ignore`` comment, but this can result in bad code being generated, and it's considered dangerous. .. note:: In the future, mypyc may reject ``# type: ignore`` comments that may be unsafe. Runtime type checking --------------------- Non-erased types in annotations will be type checked at runtime. For example, consider this function:: def twice(x: int) -> int: return x * 2 If you try to call this function with a ``float`` or ``str`` argument, you'll get a type error on the call site, even if the call site is not being type checked:: twice(5) # OK twice(2.2) # TypeError twice("blah") # TypeError Also, values with *inferred* types will be type checked. For example, consider a call to the stdlib function ``socket.gethostname()`` in compiled code. This function is not compiled (no stdlib modules are compiled with mypyc), but mypyc uses a *library stub file* to infer the return type as ``str``. Compiled code calling ``gethostname()`` will fail with ``TypeError`` if ``gethostname()`` would return an incompatible value, such as ``None``:: import socket # Fail if returned value is not a str name = socket.gethostname() Note that ``gethostname()`` is defined like this in the stub file for ``socket`` (in typeshed):: def gethostname() -> str: ... Thus mypyc verifies that library stub files and annotations in non-compiled code match runtime values. This adds an extra layer of type safety. Casts such as ``cast(str, x)`` will also result in strict type checks. Consider this example:: from typing import cast ... x = cast(str, y) The last line is essentially equivalent to this Python code when compiled:: if not isinstance(y, str): raise TypeError(...) x = y In interpreted mode ``cast`` does not perform a runtime type check. Native classes -------------- Native classes behave differently from Python classes. See :ref:`native-classes` for the details. Primitive types --------------- Some primitive types behave differently in compiled code to improve performance. ``int`` objects use an unboxed (non-heap-allocated) representation for small integer values. A side effect of this is that the exact runtime type of ``int`` values is lost. For example, consider this simple function:: def first_int(x: List[int]) -> int: return x[0] print(first_int([True])) # Output is 1, instead of True! ``bool`` is a subclass of ``int``, so the above code is valid. However, when the list value is converted to ``int``, ``True`` is converted to the corresponding ``int`` value, which is ``1``. Note that integers still have an arbitrary precision in compiled code, similar to normal Python integers. Fixed-length tuples are unboxed, similar to integers. The exact type and identity of fixed-length tuples is not preserved, and you can't reliably use ``is`` checks to compare tuples that are used in compiled code. .. _early-binding: Early binding ------------- References to functions, types, most attributes, and methods in the same :ref:`compilation unit <compilation-units>` use *early binding*: the target of the reference is decided at compile time, whenever possible. This contrasts with normal Python behavior of *late binding*, where the target is found by a namespace lookup at runtime. Omitting these namespace lookups improves performance, but some Python idioms don't work without changes. Note that non-final module-level variables still use late binding. You may want to avoid these in very performance-critical code. Examples of early and late binding:: from typing import Final import lib # "lib" is not compiled x = 0 y: Final = 1 def func() -> None: pass class Cls: def __init__(self, attr: int) -> None: self.attr = attr def method(self) -> None: pass def example() -> None: # Early binding: var = y func() o = Cls() o.x o.method() # Late binding: var = x # Module-level variable lib.func() # Accessing library that is not compiled Monkey patching --------------- Since mypyc function and class definitions are immutable, you can't perform arbitrary monkey patching, such as replacing functions or methods with mocks in tests. .. note:: Each compiled module has a Python namespace that is initialized to point to compiled functions and type objects. This namespace is a regular ``dict`` object, and it *can* be modified. However, compiled code generally doesn't use this namespace, so any changes will only be visible to non-compiled code. Stack overflows --------------- Compiled code currently doesn't check for stack overflows. Your program may crash in an unrecoverable fashion if you have too many nested function calls, typically due to out-of-control recursion. .. note:: This limitation will be fixed in the future. Final values ------------ Compiled code replaces a reference to an attribute declared ``Final`` with the value of the attribute computed at compile time. This is an example of :ref:`early binding <early-binding>`. Example:: MAX: Final = 100 def limit_to_max(x: int) -> int: if x > MAX: return MAX return x The two references to ``MAX`` don't involve any module namespace lookups, and are equivalent to this code:: def limit_to_max(x: int) -> int: if x > 100: return 100 return x When run as interpreted, the first example will execute slower due to the extra namespace lookups. In interpreted code final attributes can also be modified. Unsupported features -------------------- Some Python features are not supported by mypyc (yet). They can't be used in compiled code, or there are some limitations. You can partially work around some of these limitations by running your code in interpreted mode. Operator overloading ******************** Native classes can only use these dunder methods to override operators: * ``__eq__`` * ``__ne__`` * ``__getitem__`` * ``__setitem__`` .. note:: This limitation will be lifted in the future. Generator expressions ********************* Generator expressions are not supported. To make it easier to compile existing code, they are implicitly replaced with list comprehensions. *This does not always produce the same behavior.* To work around this limitation, you can usually use a generator function instead. You can sometimes replace the generator expression with an explicit list comprehension. Descriptors *********** Native classes can't contain arbitrary descriptors. Properties, static methods and class methods are supported. Stack introspection ******************* Frames of compiled functions can't be inspected using ``inspect``. Profiling hooks and tracing *************************** Compiled functions don't trigger profiling and tracing hooks, such as when using the ``profile``, ``cProfile``, or ``trace`` modules. Debuggers ********* You can't set breakpoints in compiled functions or step through compiled functions using ``pdb``. Often you can debug your code in interpreted mode instead.