Factor out thread-safe uniqu'ing backed by vector in MLIRcontext

    Extract common code from getAffineSymbolExpr and getAffineConstantExpr into a
    utility function safeGetOrCreate, similarly to the existing overloads for sets
    and maps.  The position in the vector is used as indexing key.  NFC.

--

PiperOrigin-RevId: 244820859
1 file changed
tree: 4c7fe6493042d8df9721bf167f93f51abf167cc8
  1. bindings/
  2. examples/
  3. g3doc/
  4. include/
  5. lib/
  6. test/
  7. tools/
  8. unittests/
  9. utils/
  10. .clang-format
  11. CMakeLists.txt
  12. CONTRIBUTING.md
  13. LICENSE.TXT
  14. README.md
README.md

Multi-Level Intermediate Representation Overview

The MLIR project aims to define a common intermediate representation (IR) that will unify the infrastructure required to execute high performance machine learning models in TensorFlow and similar ML frameworks. This project will include the application of HPC techniques, along with integration of search algorithms like reinforcement learning. This project aims to reduce the cost to bring up new hardware, and improve usability for existing TensorFlow users.

Note that this repository contains the core of the MLIR framework. The TensorFlow compilers we are building on top of MLIR will be part of the main TensorFlow repository soon.

How to Contribute

We'd love to accept your patches and contributions to this project soon. But we are not yet ready to accept community contributions at this time.

More resources

For more information on MLIR, please see:

Join the MLIR mailing list to hear about announcements and discussions. Please be mindful of the TensorFlow Code of Conduct, which pledges to foster an open and welcoming environment.

What is MLIR for?

MLIR is intended to be a hybrid IR which can support multiple different requirements in a unified infrastructure. For example, this includes:

  • The ability to represent all TensorFlow graphs, including dynamic shapes, the user-extensible op ecosystem, TensorFlow variables, etc.
  • Optimizations and transformations typically done on a TensorFlow graph, e.g. in Grappler.
  • Quantization and other graph transformations done on a TensorFlow graph or the TF Lite representation.
  • Representation of kernels for ML operations in a form suitable for optimization.
  • Ability to host high-performance-computing-style loop optimizations across kernels (fusion, loop interchange, tiling, etc) and to transform memory layouts of data.
  • Code generation “lowering” transformations such as DMA insertion, explicit cache management, memory tiling, and vectorization for 1D and 2D register architectures.
  • Ability to represent target-specific operations, e.g. the MXU on TPUs.

MLIR is a common IR that also supports hardware specific operations. Thus, any investment into the infrastructure surrounding MLIR (e.g. the compiler passes that work on it) should yield good returns; many targets can use that infrastructure and will benefit from it.

MLIR is a powerful representation, but it also has non-goals. We do not try to support low level machine code generation algorithms (like register allocation and instruction scheduling). They are a better fit for lower level optimizers (such as LLVM). Also, we do not intend MLIR to be a source language that end-users would themselves write kernels in (analogous to CUDA C++). While we would love to see a kernel language happen someday, that will be an independent project that compiles down to MLIR.

Compiler infrastructure

We benefitted from experience gained from building other IRs (HLO, LLVM and SIL) when building MLIR. We will directly adopt existing best practices, e.g. writing and maintaining an IR spec, building an IR verifier, providing the ability to dump and parse MLIR files to text, writing extensive unit tests with the FileCheck tool, and building the infrastructure as a set of modular libraries that can be combined in new ways. We plan to use the infrastructure developed by the XLA team for performance analysis and benchmarking.

Other lessons have been incorporated and integrated into the design in subtle ways. For example, LLVM has non-obvious design mistakes that prevent a multithreaded compiler from working on multiple functions in an LLVM module at the same time. MLIR solves these problems by having per-function constant pools and by making references explicit with function_ref.

Getting started with MLIR

The following instructions assume that you have git, ninja, and a working C++ toolchain. In the future, we aim to align on the same level of platform support as LLVM. For now, MLIR has been tested on Linux and macOS, with recent versions of clang and with gcc 7.

git clone https://github.com/llvm/llvm-project.git
git clone https://github.com/tensorflow/mlir llvm-project/llvm/projects/mlir
mkdir llvm-project/build
cd llvm-project/build
cmake -G Ninja ../llvm -DLLVM_BUILD_EXAMPLES=ON -DLLVM_ENABLE_CXX1Y=Y -DLLVM_TARGETS_TO_BUILD="host"
cmake --build . --target check-mlir

As a starter, you may try the tutorial on building a compiler for a Toy language.

MLIR talks