MLIR Python Bindings

Current status: Under development and not enabled by default

Building

Pre-requisites

  • pybind11 must be installed and able to be located by CMake.
  • A relatively recent Python3 installation

CMake variables

  • MLIR_BINDINGS_PYTHON_ENABLED:BOOL

    Enables building the Python bindings. Defaults to OFF.

  • MLIR_PYTHON_BINDINGS_VERSION_LOCKED:BOOL

    Links the native extension against the Python runtime library, which is optional on some platforms. While setting this to OFF can yield some greater deployment flexibility, linking in this way allows the linker to report compile time errors for unresolved symbols on all platforms, which makes for a smoother development workflow. Defaults to ON.

  • PYTHON_EXECUTABLE:STRING

    Specifies the python executable used for the LLVM build, including for determining header/link flags for the Python bindings. On systems with multiple Python implementations, setting this explicitly to the preferred python3 executable is strongly recommended.

Design

Use cases

There are likely two primary use cases for the MLIR python bindings:

  1. Support users who expect that an installed version of LLVM/MLIR will yield the ability to import mlir and use the API in a pure way out of the box.

  2. Downstream integrations will likely want to include parts of the API in their private namespace or specially built libraries, probably mixing it with other python native bits.

Composable modules

In order to support use case #2, the Python bindings are organized into composable modules that downstream integrators can include and re-export into their own namespace if desired. This forces several design points:

  • Separate the construction/populating of a py::module from PYBIND11_MODULE global constructor.

  • Introduce headers for C++-only wrapper classes as other related C++ modules will need to interop with it.

  • Separate any initialization routines that depend on optional components into its own module/dependency (currently, things like registerAllDialects fall into this category).

There are a lot of co-related issues of shared library linkage, distribution concerns, etc that affect such things. Organizing the code into composable modules (versus a monolithic cpp file) allows the flexibility to address many of these as needed over time. Also, compilation time for all of the template meta-programming in pybind scales with the number of things you define in a translation unit. Breaking into multiple translation units can significantly aid compile times for APIs with a large surface area.

Submodules

Generally, the C++ codebase namespaces most things into the mlir namespace. However, in order to modularize and make the Python bindings easier to understand, sub-packages are defined that map roughly to the directory structure of functional units in MLIR.

Examples:

  • mlir.ir
  • mlir.passes (pass is a reserved word :( )
  • mlir.dialect
  • mlir.execution_engine (aside from namespacing, it is important that “bulky”/optional parts like this are isolated)

In addition, initialization functions that imply optional dependencies should be in underscored (notionally private) modules such as _init and linked separately. This allows downstream integrators to completely customize what is included “in the box” and covers things like dialect registration, pass registration, etc.

Loader

LLVM/MLIR is a non-trivial python-native project that is likely to co-exist with other non-trivial native extensions. As such, the native extension (i.e. the .so/.pyd/.dylib) is exported as a notionally private top-level symbol (_mlir), while a small set of Python code is provided in mlir/__init__.py and siblings which loads and re-exports it. This split provides a place to stage code that needs to prepare the environment before the shared library is loaded into the Python runtime, and also provides a place that one-time initialization code can be invoked apart from module constructors.

To start with the mlir/__init__.py loader shim can be very simple and scale to future need:

from _mlir import *

Limited use of globals

For normal operations, parent-child constructor relationships are realized with constructor methods on a parent class as opposed to requiring invocation/creation from a global symbol.

For example, consider two code fragments:


op = build_my_op() region = mlir.Region(op)

vs


op = build_my_op() region = op.new_region()

For tightly coupled data structures like Operation, the latter is generally preferred because:

  • It is syntactically less possible to create something that is going to access illegal memory (less error handling in the bindings, less testing, etc).

  • It reduces the global-API surface area for creating related entities. This makes it more likely that if constructing IR based on an Operation instance of unknown providence, receiving code can just call methods on it to do what they want versus needing to reach back into the global namespace and find the right Region class.

  • It leaks fewer things that are in place for C++ convenience (i.e. default constructors to invalid instances).

Use the C-API

The Python APIs should seek to layer on top of the C-API to the degree possible. Especially for the core, dialect-independent parts, such a binding enables packaging decisions that would be difficult or impossible if spanning a C++ ABI boundary. In addition, factoring in this way side-steps some very difficult issues that arise when combining RTTI-based modules (which pybind derived things are) with non-RTTI polymorphic C++ code (the default compilation mode of LLVM).

Style

In general, for the core parts of MLIR, the Python bindings should be largely isomorphic with the underlying C++ structures. However, concessions are made either for practicality or to give the resulting library an appropriately “Pythonic” flavor.

Properties vs get*() methods

Generally favor converting trivial methods like getContext(), getName(), isEntryBlock(), etc to read-only Python properties (i.e. context). It is primarily a matter of calling def_property_readonly vs def in binding code, and makes things feel much nicer to the Python side.

For example, prefer:

m.def_property_readonly("context", ...)

Over:

m.def("getContext", ...)

repr methods

Things that have nice printed representations are really great :) If there is a reasonable printed form, it can be a significant productivity boost to wire that to the __repr__ method (and verify it with a doctest).

CamelCase vs snake_case

Name functions/methods/properties in snake_case and classes in CamelCase. As a mechanical concession to Python style, this can go a long way to making the API feel like it fits in with its peers in the Python landscape.

If in doubt, choose names that will flow properly with other PEP 8 style names.

Prefer pseudo-containers

Many core IR constructs provide methods directly on the instance to query count and begin/end iterators. Prefer hoisting these to dedicated pseudo containers.

For example, a direct mapping of blocks within regions could be done this way:

region = ...

for block in region:

  pass

However, this way is preferred:

region = ...

for block in region.blocks:

  pass

print(len(region.blocks))
print(region.blocks[0])
print(region.blocks[-1])

Instead of leaking STL-derived identifiers (front, back, etc), translate them to appropriate __dunder__ methods and iterator wrappers in the bindings.

Note that this can be taken too far, so use good judgment. For example, block arguments may appear container-like but have defined methods for lookup and mutation that would be hard to model properly without making semantics complicated. If running into these, just mirror the C/C++ API.

Provide one stop helpers for common things

One stop helpers that aggregate over multiple low level entities can be incredibly helpful and are encouraged within reason. For example, making Context have a parse_asm or equivalent that avoids needing to explicitly construct a SourceMgr can be quite nice. One stop helpers do not have to be mutually exclusive with a more complete mapping of the backing constructs.

Testing

Tests should be added in the test/Bindings/Python directory and should typically be .py files that have a lit run line.

While lit can run any python module, prefer to lay tests out according to these rules:

  • For tests of the API surface area, prefer doctest.
  • For generative tests (those that produce IR), define a Python module that constructs/prints the IR and pipe it through FileCheck.
  • Parsing should be kept self-contained within the module under test by use of raw constants and an appropriate parse_asm call.
  • Any file I/O code should be staged through a tempfile vs relying on file artifacts/paths outside of the test module.

Sample Doctest

# RUN: %PYTHON %s

"""
  >>> m = load_test_module()
Test basics:
  >>> m.operation.name
  "module"
  >>> m.operation.is_registered
  True
  >>> ... etc ...

Verify that repr prints:
  >>> m.operation
  <operation 'module'>
"""

import mlir

TEST_MLIR_ASM = r"""
func @test_operation_correct_regions() {
  // ...
}
"""

# TODO: Move to a test utility class once any of this actually exists.
def load_test_module():
  ctx = mlir.ir.Context()
  ctx.allow_unregistered_dialects = True
  module = ctx.parse_asm(TEST_MLIR_ASM)
  return module


if __name__ == "__main__":
  import doctest
  doctest.testmod()

Sample FileCheck test

# RUN: %PYTHON %s | mlir-opt -split-input-file | FileCheck

# TODO: Move to a test utility class once any of this actually exists.
def print_module(f):
  m = f()
  print("// -----")
  print("// TEST_FUNCTION:", f.__name__)
  print(m.to_asm())
  return f

# CHECK-LABEL: TEST_FUNCTION: create_my_op
@print_module
def create_my_op():
  m = mlir.ir.Module()
  builder = m.new_op_builder()
  # CHECK: mydialect.my_operation ...
  builder.my_op()
  return m