- 11 Jun, 2025 1 commit
-
-
Yu Cheng authored
* [Feature] Added Support for Synchronizing Grids and Persistent Threadblock Transformation - Defined the sync_grid operation in builtin.cc and builtin.h, allowing synchronization of all threads within a grid. - Implemented support for sync_grid in codegen_cuda.cc, ensuring proper handling of this operation in the generated CUDA code. - Added the PersistThreadblock transformation, enabling the conversion of thread blocks to persistent thread blocks, enhancing support for persistent kernels. - Updated relevant documentation and comments to reflect the addition of new features and usage instructions. * [Example] Add MLA Decode With Persistent Threadblock Example * [Feature] Introduce Persistent Loop and Update GEMM Example - Added a new persistent loop construct in the TIR framework, enabling more efficient kernel execution. - Updated the GEMM example to utilize the new persistent primitive, enhancing performance for matrix multiplication. - Introduced a `loop_break` intrinsic for better control flow within persistent loops. - Updated relevant files to support the new features, including changes in code generation and language interface. * lint fix
-
- 27 May, 2025 1 commit
-
-
Yu Cheng authored
* Introduced an `AttrFrame` for warp specialization in the IR, enhancing the handling of warp-specific optimizations. * Refactored the `VisitStmt_` method in `warp_specialized_rewriter.cc` to check for the new warp specialization attribute, improving the detection of warp specialization conditions. * Removed outdated code related to condition checks in `IfThenElseNode`, streamlining the specialization logic.
-
- 09 May, 2025 1 commit
-
-
Lei Wang authored
* [Refactor] Update barrier functions and remove argparse in example_warp_specialize_flashmla.py * Refactored barrier functions to use new signatures for improved clarity and consistency. * Replaced `mbarrier_arrive` and `mbarrier_wait_parity` with `barrier_arrive` and `barrier_wait` respectively. * Removed argparse dependency and replaced it with hardcoded parameters for batch size and dimensions in the main function, simplifying the example script. * [Refactor] Update warp_specialized_rewriter with license change and code cleanup * Replaced Apache License header with MIT License in `warp_specialized_rewriter.cc`. * Removed the `ThreadTagChecker` class to streamline the code, as it was no longer needed. * Added `#include` for `common/collector.h` to support new functionality. * Updated file documentation to reflect the correct filename and purpose. * Improved overall code readability by removing unnecessary comments and sections. * [Feature] Add thread synchronization functions in builtin.py and refine buffer region checks in copy.py * Introduced `sync_threads` and `sync_thread_partial` functions in `builtin.py` for improved thread synchronization capabilities. * Enhanced documentation for new synchronization functions to clarify usage and parameters. * Updated buffer region validation in `copy.py` to ensure type checking for integer values, improving error handling for region extents. * lint fix * [Feature] Introduce TMA barrier injection and related utilities * Added `inject_tma_barrier.cc` to implement TMA barrier rewriting for CUDA GPU (sm90+). * Created `common/attr.h` and `common/collector.h` for attribute checks and information collection from the IR. * Updated `ir.cc` to use a constant for the main block name instead of a hardcoded string. * Cleaned up `warp_specialized_rewriter.cc` by removing unnecessary whitespace. * Enhanced thread tag validation with `ThreadTagChecker` to ensure only `threadIdx.x` is used in TMA barrier contexts. * lint fix
-
- 06 May, 2025 1 commit
-
-
Lei Wang authored
* [Refactor] Update KernelLaunch to clarify CPU and GPU kernel launch logic * Added comments to distinguish between CPU and GPU kernel launch sections for better code readability. * Changed the creation of empty blocks to use a consistent "root" identifier, enhancing clarity in frame management. * [Refactor] Rename operations for consistency in lower_hopper_intrin and related files * Updated function names from CamelCase to snake_case for better consistency across the codebase. * Refactored calls to `CreateTMADescriptorOp`, `CreateListofMBarrierOp`, and similar functions to their new names: `create_tma_descriptor`, `create_list_of_mbarrier`, etc. * Adjusted corresponding test cases to reflect these changes, ensuring compatibility with the new naming conventions. * [Refactor] Rename operations to snake_case for consistency * Updated function names from CamelCase to snake_case across various files, including `CreateTMADescriptorOp` to `create_tma_descriptor`, `GetMBarrierOp` to `get_mbarrier`, and others. * Adjusted corresponding calls and definitions in the codebase to reflect these naming changes, ensuring uniformity and improved readability. * Enhanced layout inference and loop partitioning logic to accommodate the new naming conventions. * [Feature] Introduce Warp Specialization and Eliminate Storage Sync for MBarrier * Added a new example `gemm_ws.py` demonstrating matrix multiplication with warp specialization using TileLang. * Implemented `WarpSpecializeFrame` and `WarpSpecialize` functionality to manage warp group indices in TIR frames. * Introduced `EliminateStorageSyncForMBarrier` transformation to optimize storage synchronization in mbarrier regions. * Enhanced the TileLang API with new methods for retrieving block and thread extents. * Updated the `LowerAndLegalize` and `OptimizeForTarget` functions to incorporate the new transformation. * Improved layout inference and kernel launch logic for better performance and clarity. * [Refactor] Clean up code formatting and improve readability * Added blank lines for better separation of code blocks in `gemm_ws.py`, `phase.py`, `kernel.py`, and `warpgroup.py`. * Reformatted the `tilelang.compile` call in `gemm_ws.py` for improved clarity. * Updated comments in `warpgroup.py` to clarify the availability of the `WarpSpecialize` function for NVIDIA GPUs. * Ensured consistent spacing and formatting across multiple files to enhance overall code readability. * lint fix * [Refactor] Update mbarrier functions for improved clarity and consistency * Refactored `mbarrier_wait_parity` and `mbarrier_arrive` functions in `builtin.py` to accept explicit parameters for better readability. * Updated calls in `gemm_ws.py` to use the new function signatures, enhancing code clarity. * Adjusted `warpgroup.py` to remove unused thread extent variable, streamlining the code. * Added detailed docstrings to clarify usage examples for memory barrier functions. * Added blank lines in `mbarrier_wait_parity` and `mbarrier_arrive` functions in `builtin.py` for improved code readability and separation of logical sections. * [Feature] Add examples for warp specialization and TMA barrier integration * Introduced three new example scripts: `example_warp_specialize_gemm.py`, `example_warp_specialize_gemm_barrier4.py`, and `example_warp_specialize_mla.py` demonstrating matrix multiplication with warp specialization and TMA barriers. * Implemented kernel functions with shared memory allocation and memory barrier synchronization for improved performance. * Enhanced the TileLang API with new methods for compiling and testing kernels in Python using PyTorch. * Updated the `phase.py` to include TMA barrier injection in the optimization process. * Improved documentation and comments for better clarity on usage and functionality. * [Feature] Add example for warp specialization in GEMM with TMA barriers * Introduced a new example script `example_warp_specialize_gemm_stage2.py` demonstrating matrix multiplication using warp specialization and TMA barriers. * Implemented a kernel function with shared memory allocation and memory barrier synchronization for enhanced performance. * Included functionality to compile the kernel into a PyTorch-compatible function and validate its correctness against PyTorch's reference implementation. * Enhanced documentation and comments for clarity on usage and functionality. * lint fix * [Feature] Implement WarpSpecializedDetector for TMA and MBarrier Detection * Added the `WarpSpecializedDetector` class to identify the presence of TMA operations and memory barrier operations within a given TIR statement. * Enhanced the `WarpSpecialized` pass to utilize the detector, allowing for conditional substitution based on the detection results. * Improved code organization by including necessary headers and utilizing the `IRVisitorWithAnalyzer` for analysis. * This addition aims to optimize warp specialization by ensuring that only relevant functions are transformed, enhancing performance and correctness. * lint fix * [Feature] Add new examples for warp specialization and TMA integration * Introduced multiple new example scripts demonstrating warp specialization techniques, including `example_warp_specialize_flashmla.py`, `example_warp_specialize_gemm_barrierpipe_stage2.py`, `example_warp_specialize_gemm_copy_0_gemm_1.py`, `example_warp_specialize_gemm_copy_1_gemm_0.py`, and `example_warp_specialize_gemm_softpipe_stage2.py`. * Each example showcases matrix multiplication with warp specialization and TMA barriers, implementing kernel functions with shared memory allocation and memory barrier synchronization for enhanced performance. * Added a test suite in `test_example_warp_specialize.py` to validate the functionality of the new examples. * Updated the TileLang API to support these examples and improve kernel compilation and testing processes. * Removed outdated example scripts to streamline the codebase and enhance clarity on available functionalities. * lint fix * Remove outdated example scripts for warp specialization and TMA integration to streamline the codebase. This includes `example_warp_specialize_gemm.py`, `example_warp_specialize_gemm_barrier4.py`, `example_warp_specialize_gemm_stage2.py`, and `example_warp_specialize_mla.py`, which are no longer needed following recent updates and improvements in the TileLang API.
-
- 30 Apr, 2025 1 commit
-
-
Lei Wang authored
* [Refactor] Update KernelLaunch to clarify CPU and GPU kernel launch logic * Added comments to distinguish between CPU and GPU kernel launch sections for better code readability. * Changed the creation of empty blocks to use a consistent "root" identifier, enhancing clarity in frame management. * [Refactor] Rename operations for consistency in lower_hopper_intrin and related files * Updated function names from CamelCase to snake_case for better consistency across the codebase. * Refactored calls to `CreateTMADescriptorOp`, `CreateListofMBarrierOp`, and similar functions to their new names: `create_tma_descriptor`, `create_list_of_mbarrier`, etc. * Adjusted corresponding test cases to reflect these changes, ensuring compatibility with the new naming conventions. * [Refactor] Rename operations to snake_case for consistency * Updated function names from CamelCase to snake_case across various files, including `CreateTMADescriptorOp` to `create_tma_descriptor`, `GetMBarrierOp` to `get_mbarrier`, and others. * Adjusted corresponding calls and definitions in the codebase to reflect these naming changes, ensuring uniformity and improved readability. * Enhanced layout inference and loop partitioning logic to accommodate the new naming conventions. * [Feature] Introduce Warp Specialization and Eliminate Storage Sync for MBarrier * Added a new example `gemm_ws.py` demonstrating matrix multiplication with warp specialization using TileLang. * Implemented `WarpSpecializeFrame` and `WarpSpecialize` functionality to manage warp group indices in TIR frames. * Introduced `EliminateStorageSyncForMBarrier` transformation to optimize storage synchronization in mbarrier regions. * Enhanced the TileLang API with new methods for retrieving block and thread extents. * Updated the `LowerAndLegalize` and `OptimizeForTarget` functions to incorporate the new transformation. * Improved layout inference and kernel launch logic for better performance and clarity. * [Refactor] Clean up code formatting and improve readability * Added blank lines for better separation of code blocks in `gemm_ws.py`, `phase.py`, `kernel.py`, and `warpgroup.py`. * Reformatted the `tilelang.compile` call in `gemm_ws.py` for improved clarity. * Updated comments in `warpgroup.py` to clarify the availability of the `WarpSpecialize` function for NVIDIA GPUs. * Ensured consistent spacing and formatting across multiple files to enhance overall code readability. * lint fix * [Refactor] Update mbarrier functions for improved clarity and consistency * Refactored `mbarrier_wait_parity` and `mbarrier_arrive` functions in `builtin.py` to accept explicit parameters for better readability. * Updated calls in `gemm_ws.py` to use the new function signatures, enhancing code clarity. * Adjusted `warpgroup.py` to remove unused thread extent variable, streamlining the code. * Added detailed docstrings to clarify usage examples for memory barrier functions. * Added blank lines in `mbarrier_wait_parity` and `mbarrier_arrive` functions in `builtin.py` for improved code readability and separation of logical sections.
-
- 27 Apr, 2025 1 commit
-
-
Lei Wang authored
* Added comments to distinguish between CPU and GPU kernel launch sections for better code readability. * Changed the creation of empty blocks to use a consistent "root" identifier, enhancing clarity in frame management.
-
- 06 Apr, 2025 1 commit
-
-
Lei Wang authored
* [Refactor] Clean up whitespace in CUDA-related files - Removed unnecessary blank lines in `cuda.py`, `__init__.py`, and `cuda_driver.py` to improve code readability and maintainability. - This change enhances the overall organization of the codebase without altering functionality. * [Benchmark] Add FP8 Matrix Multiplication Benchmark Script - Introduced a new benchmark script for FP8 matrix multiplication in `benchmark/matmul_fp8/benchmark_matmul.py`. - The script includes functions for reference matrix multiplication, configuration generation for autotuning, and an autotuned kernel for performance measurement. - Added command-line argument parsing for matrix dimensions and the option to enable BitBLAS roller for search space exploration. - The benchmark computes and prints the best latency and performance metrics, enhancing the benchmarking capabilities for FP8 operations. * lint fix * Enhance variable creation by associating data types in IR and layout files, and introduce ExpandIndexDataType transformation - Updated variable creation in `ir.cc`, `gemm_layouts.cc`, and `elem.cc` to include data types for better type safety. - Added a new transformation `ExpandIndexDataType` to promote integer types to int64 where necessary, improving compatibility and performance. - Integrated the new transformation into the optimization pipeline in `phase.py`. - Documented the new transformation in `__init__.py` for clarity. * lint fix * Add configuration option for index bitwidth and remove ExpandIndexDataType transformation - Introduced a new pass configuration option `kConfigIndexBitwidth` to allow customization of index bitwidth. - Updated the optimization pipeline in `phase.py` to utilize the new configuration option instead of the removed `ExpandIndexDataType` transformation. - Documented the new configuration option in the JIT compilation function's parameters for clarity. - Removed the `ExpandIndexDataType` transformation implementation from the codebase to streamline the transformation process. * lint fix * Refactor index bitwidth configuration handling - Updated the `ConfigIndexBitwidth` pass to only apply the bitwidth transformation if the configuration option is defined, preventing potential errors with undefined values. - Changed the default value of `tl.config_index_bitwidth` in the JIT compilation function's parameters from 32 to None for better clarity and flexibility. * lint fix * lint fix --------- Co-authored-by:LeiWang1999 <wyatuestc@gmail.com>
-
- 20 Mar, 2025 1 commit
-
-
Lei Wang authored
* remove llvm build * [Refactor] Update kernel compilation and profiling in examples - Replaced `tilelang.lower` with `tilelang.compile` in multiple example scripts to streamline kernel compilation. - Updated profiling calls to utilize the new `get_profiler` method, enhancing performance measurement consistency. - Adjusted assertions and benchmarking methods to align with the new profiling structure across various examples, ensuring correctness and clarity in performance evaluations. * lint fix * License Update * [Refactor] Improve code formatting and documentation in CUDA header and HIP runtime files - Adjusted formatting in `cuda.h` for better readability, including alignment of comments and struct fields. - Cleaned up whitespace and improved comment clarity in `rt_mod_hip.cc` to enhance code maintainability. * [Refactor] Enhance formatting and clarity in CUDA header and HIP runtime files - Improved comment alignment and readability in `cuda.h`. - Cleaned up whitespace and formatting in `rt_mod_hip.cc` to enhance maintainability. * lint fix * lint fix * lint fix * lint fix * fix * License update * [Enhancement] Update JITKernel to use artifact for kernel source - Assigned the generated artifact to `self.artifact` for better management. - Updated kernel source references to use `artifact.kernel_source` for consistency in execution backend handling. * lint fix * Add @tilelang.testing.requires_llvm decorator to vectorization tests * Enhance setup.py and env.py for library management - Added functionality to remove original files after copying in CMakeBuild. - Updated TVM_LIBRARY_PATH in env.py to include the PyPI build library path for better integration. * Refactor TVM_LIBRARY_PATH assignment for improved readability in env.py * Refactor CMakeBuild file handling in setup.py - Added a check to ensure the target library directory exists before copying .so files. - Improved the logic for creating the target directory and copying files to enhance robustness. * bugfix * Rename BuildTLDebug to BuildTileLangCUDAWithoutCompile and update registration. Add @tilelang.testing.requires_llvm decorator to multiple tests for LLVM requirement. * lint fix * Enhance TileLang code generation by adding support for device code generation without compilation. Updated `host_codegen` and `device_codegen` functions to include new transformations and registration for `tilelang_hip_without_compile`. Refactored JIT kernel adapters to accommodate host and device modules, improving overall integration and flexibility. * lint fix * Add support for C target in device code generation - Updated `device_codegen_without_compile` to include handling for the C target by registering the `tilelang_cpp` function. * [Enhancement] Implement auto-clear cache feature based on environment variable * Added TILELANG_CLEAR_CACHE environment variable to control cache clearing. * Updated CI workflow to set TILELANG_CLEAR_CACHE during testing. * Modified cache initialization to clear cache if TILELANG_CLEAR_CACHE is set to true. * [Refactor] Update kernel invocation and import paths in tests and cache * Changed kernel invocation in `test_tilelang_kernel_dequantize_gemm.py` to return the result. * Updated import statements in `test_tilelang_kernel_int4_gemm_mma.py` to use `bitblas` instead of `tilelang`. * Refactored paths for artifact and parameters in `kernel_cache.py` for better maintainability. * [Refactor] Clean up whitespace and improve code formatting in kernel_cache.py * Removed unnecessary blank lines and adjusted spacing for better readability in the KernelCache class. * Enhanced overall code formatting to align with project standards. * [Enhancement] Add bfloat16 test case and improve kernel caching logic * Introduced a new test case for bfloat16 matrix multiplication in `test_tilelang_kernel_gemm_mma_intrinsic.py`. * Updated `KernelCache` to handle multiple kernel source files and improve error handling during saving and loading. * Refactored `JITKernel` to support instantiation from a database, enhancing flexibility in kernel management. * Adjusted `CtypesKernelAdapter` and `CythonKernelAdapter` to utilize the new kernel loading mechanism from the database. * Improved code formatting and readability across several files. * lint fix * Update bfloat16 matrix multiplication test case to use larger dimensions for improved coverage
-
- 10 Mar, 2025 1 commit
-
-
Lei Wang authored
- Introduce `CreateEnvThread` function to generate environment threads for GPU kernel launches - Modify `KernelLaunch` to use `CreateEnvThread` for block and thread indices - Improve thread variable naming with shorter, more descriptive identifiers (bx, by, bz, tx, ty, tz) - Ensure proper thread environment setup within PrimFunc context
-
- 17 Jan, 2025 1 commit
-
-
Lei Wang authored
* README.md fixed * test fix * cpu backend update * cpu test case
-
- 11 Jan, 2025 1 commit
-
-
Lei Wang authored
* Add format.sh script for code formatting and linting * docs update * center align the title * lint fix * add ignore * Add .gitignore for 3rdparty directory * Add requirements-dev.txt, requirements-test.txt, and requirements.txt * 3rdparty * Add gemm.h, CMakeLists.txt, _ffi_api.py, __init__.py, runtime.h, reduce.h, loop_partition.h, utils.h, and loop_vectorize.h * Refactor CMakeLists.txt and include statements - Update CMakeLists.txt to use a newer version of CMake and add project name - Remove unnecessary include directories Fix include paths in layout.cc, codegen.cc, codegen.h, rt_mod.cc, frontend_legalize.cc, inject_pipeline.cc, layout_inference.cc, loop_vectorize.cc, and lower_tile_op.cc - Update include paths to use relative paths instead of absolute paths * Update submodule for 3rdparty/tvm * update * load dll first * Refactor CMakeLists.txt and include statements * Refactor CMakeLists.txt and include statements * git keep update * Refactor CMakeLists.txt and include statements * Refactor CMakeLists.txt and include statements * refactor code structure * Update Readme * CMakeLists Customized * update readme * update README * update readme * update usage * with TVM_IMPORT_PYTHON_PATH to handle own tvm build python import * annotate lower transform global func with `transform` prefix * Migrate Simplify Pass from tilelang tvm branch * enhance system environment handling with __init__ and CMake * Initial commit * CODE_OF_CONDUCT.md committed * LICENSE committed * README.md committed * SECURITY.md committed * SUPPORT.md committed * CODE_OF_CONDUCT Commit * LICENSE Commit * SECURITY Commit * SUPPORT Commit * Modify Support * Update README.md * security ci update * remove examples * Update and implement clang-format * add composable kernel components * Migrate from latest update * submodule update * Test update * Update License * Spell check * lint fix * add clang-tidy to apply static analysis for c source * update tilelang examples * Update Install Docs * Refactor filetree * Enhance Install * conflict resloved * annotate_version * Initial Update * test fix * install * Implement setup.py * lint fix * Separate Init * Separate test * docker file commit * add logo * Update Readme and Examples * update readme * update logo * Implement AMD Installation * Add License * Update AMD MI300x Benchmark * update README * update mi300 benchmark scripts * update ignore * enhance build scirpt * update image * enhance setup.py to remove duplicated libraries * remove debug files * update readme * update image * update gemm examples * update flashattention README * readme update * add cmake into requirements * libinfo fix * auto update submodule * lint fix * Fix AMD Build and Test * Update check for transpose attribute for CDNA Arch * typo fix for amd * Implement Matmul Benchmark * Refactor Code * [TypoFix] Fix GEMM Example * [Docs] Init Linear Attention README * [TYPO] Typo fix * [Lint] Lint Fix * enhance example with intrinsics * [Enhancement] Improve Buffer Collection during IR Parser * [Dev] Introduce Current classmethod to get current frame * submodule update * fake test pass update * support thread_extent_api * code optimize * Add GEMM function implementation for matrix multiplication * Update logging format to reflect TileLang in logger messages * Refactor CMakeLists.txt for improved readability and set default build type to Release * Support Gemm SS Primitives Implementation * [README] Upload Tile Language Logo (#5) * update logo * Update README.md to enhance formatting and center the title --------- Co-authored-by:
microsoft-github-operations[bot] <55726097+microsoft-github-operations[bot]@users.noreply.github.com> Co-authored-by:
Microsoft Open Source <microsoftopensource@users.noreply.github.com> Co-authored-by:
Yu Cheng <yu.cheng@pku.edu.cn>
-