- 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.
-
- 16 Apr, 2025 1 commit
-
-
Lei Wang authored
* Update copyright notice in example_mha_bwd_wgmma_pipelined.py to reflect Tile-AI Corporation ownership. * lint fix
-
- 26 Mar, 2025 1 commit
-
-
Lei Wang authored
* [Refactor] Improve flash attention example and layout comparison logic - Removed unnecessary annotation for `lse_local_split` in the flash attention example to streamline the code. - Updated the handling of `lse_local_split` to utilize parallel processing for better performance. - Refactored kernel compilation and profiling logic to enhance clarity and maintainability in the flash attention example. - Added a condition in `FragmentNode::IsEqual` to handle broadcast cases, improving the robustness of layout comparisons. * lint fix * [Enhancement] Add support for shared memory scope in Fill operation - Introduced handling for `shared.dyn` and `shared` memory scopes in the Fill operation. - Implemented parallel operation and layout inference for improved performance in shared memory scenarios. - Updated thread loop partitioning and vectorization logic to accommodate new memory scope handling. * [Refactor] Remove deprecated decorator and enhance Cython kernel handling - Removed the deprecated decorator from the main module and added a new implementation in the utils module for better organization. - Introduced a pointer map in the Cython kernel adapter to manage pointer arguments, improving runtime shape resolution. - Updated the Cython kernel wrapper to utilize the new pointer map for handling kernel arguments. - Enhanced error checking in the tensor utility functions to ensure static shapes are enforced. - Added a new proxy module for buffer and tensor handling, streamlining the interface for TIR programs. * [Feature] Add matrix multiplication test and kernel implementation - Introduced a new test file `test_tilelang_language_ptr.py` that implements a matrix multiplication function using TileLang's primitives. - The `matmul_test` function defines a kernel for performing tile-level GEMM operations with customizable block sizes and data types. - Added a `run_matmul` function to compile and execute the kernel, along with a test function to validate the implementation. - Updated the `proxy.py` file to enhance type handling for buffer and tensor proxies, ensuring compatibility with TIR programs. - Minor formatting improvements in `deprecated.py` for better readability. * lint fix * [Refactor] Update tensor creation in matrix multiplication test - Replaced `T.Tensor.from_ptr` with `T.make_tensor` in `matmul_test` for improved clarity and consistency. - Updated imports in `__init__.py` to include `make_tensor`. - Added `make_tensor` function in `proxy.py` to streamline tensor creation from pointers. * [Refactor] Update tensor definitions across multiple files - Replaced instances of `T.Tensor` with updated tensor definitions in various benchmark and example files to enhance consistency and clarity. - Adjusted tensor shapes and types in functions related to matrix multiplication, attention mechanisms, and other operations. - Improved documentation in README and example files to reflect changes in tensor usage. * lint fix * [Refactor] Update tensor types in attention and matrix multiplication examples - Replaced instances of `T.Tensor` with `T.SharedTensor` and `T.FragmentTensor` in various attention and matrix multiplication functions to improve consistency and clarity. - Adjusted tensor definitions in benchmark and example files to align with the new tensor types. - Enhanced the overall structure and readability of the code by standardizing tensor usage across multiple files. * lint fix * [Refactor] Update tensor types in GEMM example and test files - Replaced instances of `T.Tensor` with `T.LocalTensor` and `T.Buffer` in the GEMM example and related test functions to improve consistency and clarity. - Enhanced the overall structure of the code by standardizing tensor usage across multiple files, aligning with recent updates in tensor definitions. * [Refactor] Update tensor usage in customize.py - Replaced instances of `T.Tensor` with `T.Buffer` in the `reshape` and `view` functions to enhance consistency with recent tensor definitions. - Improved code clarity by standardizing buffer usage across the file. * [Refactor] Update tensor types in test_tilelang_transform_annotate_device_regions.py - Replaced instances of `T.Tensor` with `T.Buffer` in the `before` and `expected` methods of the `TestAnnotateThreadExtent` and `TestAnnotateDeviceScope` classes to enhance consistency with recent tensor definitions. - Improved code clarity by standardizing buffer usage across the test file. * [Refactor] Update tensor types to SharedBuffer and FragmentBuffer - Replaced instances of `T.SharedTensor` and `T.FragmentTensor` with `T.SharedBuffer` and `T.FragmentBuffer` across multiple benchmark, example, and test files to enhance consistency with recent tensor definitions. - Improved code clarity and structure by standardizing buffer usage in attention and matrix multiplication functions. * [Refactor] Introduce Tensor alias for Buffer in proxy.py - Added a new alias `Tensor` for `Buffer` in `proxy.py` to facilitate JIT compilation, ensuring that inputs and outputs are mapped with `torch.Tensor`. - This change enhances clarity and consistency in tensor usage across the codebase.
-
- 18 Mar, 2025 1 commit
-
-
Yu Cheng authored
* [BugFix] Fix bug of missing MBarrierExpectTX * [Dev] Implement FlashAttention3 Backward - Added a new example for Flash Attention using pipelined WGMMA, including forward and backward pass implementations. - Introduced functions for forward and backward processing, leveraging tilelang for optimized tensor operations. - Enhanced the attention mechanism with support for both causal and non-causal configurations. - Included command-line arguments for batch size, number of heads, context size, and head dimension for flexibility in testing. - Updated GEMM operations to support a new `wg_wait` parameter for improved synchronization in kernel execution.
-
- 09 Mar, 2025 1 commit
-
-
Lei Wang authored
* Add kernel caching mechanism to TileLang - Implement a new `cached` function in `tilelang/cache/__init__.py` to cache and reuse compiled kernels - Expose the `cached` function in the main `tilelang/__init__.py` - Add a test case for cached matrix multiplication in `testing/python/cache/test_tilelang_cache_matmul.py` - Provide a `clear_cache()` function to reset the kernel cache when needed * Refactor kernel caching test and implementation - Simplify the `cached` function in `tilelang/cache/__init__.py` - Update test script `test_tilelang_cache_matmul.py` to use `tilelang.testing.main()` - Remove unnecessary whitespace and improve code formatting * Update import for `cached` function in MHA examples - Modify import statement in `example_mha_bwd.py` and `test_tilelang_kernel_mha_bwd.py` - Change import from `tilelang.profiler import cached` to `tilelang import cached` - Align with recent refactoring of kernel caching mechanism * Refactor `cached` function signature in kernel caching - Update function signature to use keyword-only arguments for `target` and `target_host` - Improve parameter order and readability of the `cached` decorator - Maintain existing functionality while enhancing function definition
-
- 11 Feb, 2025 1 commit
-
-
Yu Cheng authored
* [CI][Test] Add test cases for tilelang transform MultiVersionBuffer and WarpSpecialized * Relax the mismatch ratio restrictions in the flash_linear_attention and mha tests * [Dev] Add mha backward example
-