commit | d1aa6caed59a386cf9fad86a8f6ffc00eac53332 | [log] [tgz] |
---|---|---|
author | Natasha Kononenko <natashaknk@google.com> | Wed Mar 03 21:02:04 2021 -0800 |
committer | Copybara-Service <iree-copybara-bot@google.com> | Wed Mar 03 21:03:22 2021 -0800 |
tree | 5615798c88230716748d5411fd8a9d0e6f199b09 | |
parent | 839ac7dc7e4402bf6566107220b4dff5b278e4fa [diff] |
Merge main -> google * beeaaf95c Migrate linalg.conv to linalg.conv_2d_input_nhwc_filter_hwcf in Img2Col. (#4973) * aad57c23d Update vulkan profiling doc. (#4989) * c31cb9d8c Support HLO Text format for the XLA importer. (#4984) * 36d8c903c Fix CUDA C struct initialization for older MSVC. (#4988) * de7cf2175 Integrate MLIR-EmitC at iml130/mlir-emitc@b57346c (#4987) * 8045a2c2a Fix concatenate test due to upstream change. (#4986) * 4f5dd78dc Adapt mhlo.concatenate lowering to Linalg on tensors (#4954) * 205c0b20a HAL CUDA step 3, enable executable. (#4982) * 370e672e8 Fixing bazel-to-cmake regression that broke it on Windows. (#4981) * 5b0375017 Merge google -> main (#4976) * 608299995 Further updates to getting_started_tensorflow.md. * d0af3da7a Correct target name for `iree-tf-import`. * c96d07cc3 Move TF documentation out of Python documentation (#4977) COPYBARA_INTEGRATE_REVIEW=https://github.com/google/iree/pull/4993 from NatashaKnk:main-to-google 38016af097166a43915eeed55ca99ad45daf0311 PiperOrigin-RevId: 360824857
IREE (Intermediate Representation Execution Environment, pronounced as “eerie”) is an MLIR-based end-to-end compiler that lowers ML models to a unified IR optimized for real-time mobile/edge inference against heterogeneous hardware accelerators. IREE also provides flexible deployment solutions for the compiled ML models.
IREE is still in its early phase. We have settled down on the overarching infrastructure and are actively improving various software components as well as project logistics. It is still quite far from ready for everyday use and is made available without any support at the moment. With that said, we welcome any kind of feedback on any communication channels!
Python packages are published on the releases page. See the colab/ directory for examples.
IREE can be built from source using both Bazel and CMake on Windows and Linux. We also have experimental macOS support.
Please see the Getting Started pages on IREE's documentation hub to configure, compile, and run IREE in your favorite development environment!
IREE hosts all its documentation and project status dashboards on GitHub Pages. We are still building up the website; please feel free to create issues for the documentation you'd like to see!
We also have some public talks that explain IREE's concepts and architecture:
IREE adopts a holistic approach towards ML model compilation: the IR produced contains both the scheduling logic, required to communicate data dependencies to low-level parallel pipelined hardware/API like Vulkan, and the execution logic, encoding dense computation on the hardware in the form of hardware/API-specific binaries like SPIR-V.
The architecture of IREE is best illustrated by the following picture:
Being compilation-based means IREE does not have a traditional runtime that dispatches “ops” to their fat kernel implementations. What IREE provides is a toolbox for different deployment scenarios. It scales from running generated code on a particular API (such as emitting C code calling external DSP kernels), to a HAL (Hardware Abstraction Layer) that allows the same generated code to target multiple APIs (like Vulkan and Direct3D 12), to a full VM allowing runtime model loading for flexible deployment options and heterogeneous execution.
IREE aims to
IREE is in the early stages of development and not yet ready for broad adoption. Check out the long-term design roadmap to get a sense of where we're headed.
We plan on a quarterly basis using OKRs. Review our latest objectives to get a sense of what we're up to in the near term.
We use GitHub Projects to track progress on IREE components and specific efforts. We use GitHub Milestones to track the work associated with plans for each quarter.
IREE is licensed under the terms of the Apache license. See LICENSE for more information.