- 17 Dec, 2025 1 commit
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Lei Wang authored
* [Enhancement] Update examples and tests for improved type handling and functionality - Enhanced various example scripts to support new data types and improve compatibility with PyTorch. - Updated tests across multiple modules to ensure correct functionality with the latest changes in type handling. - Refactored code in examples to streamline operations and improve clarity, particularly in tensor operations and memory management. - Added comprehensive tests for new features and fixed existing issues related to type conversions and buffer handling. * [Refactor] Update accumulation data type to float32 across examples - Changed accumulation data type from "float" to T.float32 in multiple example scripts to ensure consistency and improve numerical stability. - This update affects various modules including flash attention, GEMM analysis, convolution, and deepseek MLA examples, enhancing type handling across the board. * [Refactor] Standardize data type usage across benchmark scripts - Updated data type definitions in benchmark scripts to use T.float16 and T.float32 consistently, enhancing clarity and type handling. - Adjusted dtype assignments in matmul functions and configuration setups to align with the new standard. - Improved overall code consistency and maintainability by ensuring uniform data type usage across various modules. * [Refactor] Standardize data type usage in templates and scripts - Updated data type definitions in various templates and scripts to use string representations (e.g., "float16", "int32") instead of T.float16 and T.int32 for improved consistency and clarity. - Enhanced overall code maintainability by ensuring uniform data type usage across multiple modules, including convolution, elementwise operations, and matrix multiplication templates. - This change aims to streamline type handling and improve compatibility with existing workflows. * [Refactor] Standardize data type usage in examples and benchmarks - Updated data type definitions in various example and benchmark scripts to use T.float16 and T.int32 consistently, enhancing clarity and maintainability. - Adjusted dtype assignments in kernel functions and configuration setups to align with the new standard. - Improved overall code consistency by ensuring uniform data type usage across multiple modules, including attention mechanisms, matrix multiplication, and GEMM examples. * [Refactor] Import dtypes from language.v2 module - Added import statement for dtypes from the language.v2 module to enhance type handling and maintain consistency across the codebase. - This change aims to streamline data type management and improve overall code clarity. * fix * [Refactor] Standardize data type usage across scripts - Updated data type definitions in various scripts to use string representations (e.g., "float16", "int8") instead of T.float16 and T.int8 for improved consistency and clarity. - Adjusted dtype assignments in functions and configuration setups to align with the new standard, enhancing overall code maintainability. - This change affects multiple modules, including benchmark and attention mechanisms, ensuring uniform data type usage throughout the codebase. * [Refactor] Update data type handling for consistency and clarity - Changed string representations of data types in the Hint class to use T.float32 and T.int32 for improved consistency. - Added new data types "int4" and "int16" to the dtypes module, enhancing type support across the codebase. - Updated function signatures and assertions in the lop3 and mxfp modules to utilize the new data types, ensuring uniformity in type handling. - This refactor aims to streamline data type management and improve overall code clarity and maintainability. * [Enhancement] Improve data type handling and error messaging - Introduced a mapping for canonical data types to their display strings, enhancing clarity in type representation. - Updated the dtype creation logic to utilize the new mapping, ensuring more intuitive handling of string inputs. - Refined error messages in the lop3 module to provide clearer feedback on invalid source formats, improving debugging and user experience. * [Fix] Correct boolean flag in GEMM SP test case - Updated the boolean flag in the test_gemm_sp_sm90 function to ensure proper functionality in the test case. - This change enhances the accuracy of the test and aligns it with expected behavior for the GEMM SP implementation. * [Refactor] Standardize data type usage across scripts - Updated data type definitions in various scripts to use T.float16 and T.bfloat16 consistently, enhancing clarity and maintainability. - Adjusted dtype assignments in function signatures and argument parsing to align with the new standard, ensuring uniform data type usage throughout the codebase. - This change affects multiple modules, including benchmarks and examples, improving overall code consistency and readability. * [Refactor] Standardize data type usage in various modules - Updated data type assignments in multiple scripts to utilize T.float32, T.int8, and T.int32 consistently, enhancing clarity and maintainability. - Adjusted function signatures and parameter types across benchmarks, examples, and tests to align with the new standard, ensuring uniform data type usage throughout the codebase. - This change improves overall code consistency and readability, impacting modules related to matrix multiplication, GEMM, and tensor operations. * [Refactor] Update argument parsing for data types in benchmarks - Changed argument parsing for data types in benchmark_matmul_intrinsic.py and benchmark_matmul_sp.py to use string representations ("float16", "int8", "float") instead of T.float16 and T.float. - This update enhances consistency in data type handling across benchmark scripts, improving clarity and maintainability. * [Refactor] Update data type handling in benchmark and example scripts - Changed data type arguments in benchmark and example scripts to use string representations ("float16") instead of T.float16 for improved consistency. - Updated function signatures and argument parsing to align with the new standard, enhancing clarity and maintainability across the codebase. - This change affects multiple modules related to attention mechanisms and tensor operations, ensuring uniform data type usage throughout the examples. * [Refactor] Fix data type conversion in multiple scripts - Corrected the usage of the data type conversion method from dtype..as_torch() to dtype.as_torch() across various benchmark and example scripts. - This change enhances consistency in data type handling and improves code readability, impacting modules related to attention mechanisms and tensor operations. * [Refactor] Update float8 data type usage across multiple scripts - Changed instances of T.float8_e4m3 to T.float8_e4m3fn in various benchmark, example, and test scripts to ensure consistency in data type handling. - This update enhances clarity and maintainability across the codebase, particularly in modules related to matrix multiplication and tensor operations. * [Refactor] Enhance float8 data type handling in CUDA code generation - Updated the handling of float8 data types in the CUDA code generation to include additional float8 variants, improving type conversion logic. - Adjusted conditions to ensure proper type checks for float8 conversions, enhancing clarity and maintainability in the codebase. - Modified layout inference to streamline float8 type checks, ensuring consistency across the implementation. - This change impacts modules related to matrix operations and CUDA code generation, improving overall type handling and conversion accuracy. * [Refactor] Streamline float8 data type handling in CUDA and related modules - Enhanced float8 data type handling in CUDA code generation by refining type conversion logic and ensuring consistent type checks. - Updated layout inference for float8 types to improve clarity and maintainability across the implementation. - This change impacts modules related to matrix operations and CUDA code generation, improving overall type handling and conversion accuracy. * [Refactor] Remove unnecessary cache disabling in float8 example script - Eliminated the call to tilelang.disable_cache() in example_group_per_split_token_cast_to_fp8.py to streamline the code. - This change enhances clarity and maintainability of the example script without affecting its functionality. * [Refactor] Update data type usage in debug print tests - Changed the argument for dtype in the test_debug_print_buffer function from a string representation to the corresponding T.bool type. - This update enhances consistency in data type handling within the test suite, improving clarity and maintainability. * lint fix * Update function parameter types from `str` to `T.dtype` for improved type safety in attention sink and related examples * Refactor `gemv_alloc_reducer` function signature for improved readability by formatting parameters across multiple lines.
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- 12 Dec, 2025 1 commit
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Lei Wang authored
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- 17 Nov, 2025 1 commit
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Tong WU authored
[Enhancement] Keep max score attention across blocks in FlashAttention for better numerical stablity (#1269) * Implement max score retention across blocks in FlashAttention for improved stability * fix manual pipeline parameters * Update examples/flash_attention/example_gqa_fwd_varlen.py Co-authored-by:
coderabbitai[bot] <136622811+coderabbitai[bot]@users.noreply.github.com> * fix typo * more * fix a previous typo --------- Co-authored-by:
coderabbitai[bot] <136622811+coderabbitai[bot]@users.noreply.github.com>
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- 18 Sep, 2025 1 commit
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Lei Wang authored
* [Enhancement] Enable fast math optimization in tilelang JIT configurations - Updated multiple examples and kernel functions to include `pass_configs` for enabling fast math optimization. - Added support for the `TL_ENABLE_FAST_MATH` configuration option in the built-in operations. - Enhanced the `LibraryGenerator` to handle the new fast math configuration, ensuring compatibility with existing settings. - Updated documentation to reflect the changes in fast math handling and deprecation of the `TL_DISABLE_FAST_MATH` option. * lint fix * [Refactor] Introduce deprecated_warning utility for improved deprecation handling - Added a new `deprecated_warning` function to streamline deprecation messages. - Updated the `LibraryGenerator` to utilize the new function for warning about the deprecated `TL_DISABLE_FAST_MATH` configuration. - Enhanced the `deprecated` decorator to support phaseout version messaging, improving clarity for users.
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- 22 Aug, 2025 1 commit
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Lei Wang authored
* [Refactor] Merge bulk copy into copy and refactor layout inference for bulk copy * Deleted the `bulk_copy` operator implementation and its header file as it is no longer needed. * Introduced a new function `cuTensorMapType()` to return the data type for CUDA tensor mapping. * Updated related files to reflect these changes, ensuring that the codebase remains clean and maintainable. * lint fix * Fix typos in intrinsic names and remove unused print statement in block_sparse_attn_tilelang.py. Updated references from `ptx_ldmatirx` to `ptx_ldmatrix` across multiple files for consistency. * remove bulk copy * Refactor copy and atomic add operations to support TMA lower configuration - Updated `GetCopyInst` to accept a `disable_tma_lower` parameter, allowing for conditional usage of TMA in bulk load/store operations. - Modified `Lower` method in `Copy` to incorporate the new TMA configuration. - Refactored `AtomicAdd::Lower` to streamline layout inference and vectorization logic. - Removed unused `disable_tma_lower` field from `LowerArgs` structure for clarity. - Enhanced atomic add vectorization by replacing the buggy implementation with a more robust loop vectorization approach. * Enhance TMA bulk copy logic in `LowerBulkCopy` method - Added a condition to set `desc.swizzle` to `CU_TENSOR_MAP_SWIZZLE_NONE` when `shared_layout` matches `linear_layout`, improving clarity in layout handling. - Updated warning log to provide more detailed information about fallback scenarios, including source and destination buffer names and shapes, enhancing debugging capabilities. * lint fix * Remove fallback logging for non-swizzled global layout in `LowerBulkCopy` method to streamline the bulk copy logic. This change enhances code clarity by eliminating unnecessary warning messages related to inner box dimensions. * Enhance reshape kernel compilation in `run_reshape` and `run_reshape_smem_1d_2_2d` functions - Updated the `tl.compile` method to include `pass_configs` that disable TMA lower and warp specialization, addressing shared memory layout transformation limitations. - Added TODO comments to indicate the need for further improvements in shared memory handling. * Update `native_sparse_attention` function to include TMA configuration options - Added `pass_configs` to the JIT decorator to disable TMA lower and warp specialization, addressing potential issues with shared memory layout transformations. - Updated comments to clarify modifications in tensor shapes for inference, specifically setting `q` sequence length to 1. * Refactor JIT decorator formatting in `native_sparse_attention` function - Improved readability by reformatting the JIT decorator parameters for `native_sparse_attention`, ensuring consistent style across the codebase. - No functional changes were made; this update focuses on code clarity and maintainability. * Enhance thread management and logging in TileLang compilation - Added a method to check if printing is enabled during compilation, improving control over logging behavior. - Updated the JIT kernel class to utilize the new method for logging compilation status, ensuring consistent and clear output. - Added comments to clarify the purpose of changes and improve code readability. * Add warp specialization scope and refactor register management in TileLang - Introduced a new constant `kWarpSpecializationScope` in `builtin.h` for better attribute management. - Removed the `SetMaxNRegCollector` class and its related logic from `warp_specialized_rewriter.cc`, streamlining the warp specialization process. - Added functions `annotate_producer_reg_dealloc` and `annotate_consumer_reg_alloc` in `builtin.py` to facilitate register management. - Implemented `AnnotateWarpGroupRegAlloc` in `__init__.py` to inject register allocation calls into warp-specialized functions, enhancing the overall register handling in the compilation process. * Refactor test for InjectSetMaxNReg pass in TileLang - Improved readability by restructuring conditional checks and assertions in the test cases. - Enhanced clarity in the collection of `set_max_nreg` calls by simplifying the logic. - Ensured consistent formatting and spacing throughout the test functions for better maintainability. * Enhance bulk copy and store checks in `Copy` class - Updated scope validation for source and destination tensors in `CheckBulkLoad` and `CheckBulkStore` methods to include both `shared.dyn` and `shared` as valid options. - Modified `CheckLDSMCopy` and `CheckSTSMCopy` methods to accommodate the new scope validation, ensuring compatibility with shared memory configurations. - Improved logging in `LowerBulkCopy` to provide clearer warnings regarding unsupported swizzle layouts, including source and destination names for better debugging. * lint fix
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- 25 Jun, 2025 1 commit
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Cunxiao Ni authored
* [Example] Update kernel compilation in examples to use @tilelang.jit - Refactored multiple examples to eliminate the use of `tilelang.compile` for kernel creation, directly invoking the functions instead. - Added `@tilelang.jit` decorators with appropriate output indices to enhance performance and maintainability. - Improved code clarity by simplifying the kernel invocation process across various examples, ensuring consistency in how kernels are defined and executed. * format * Update example_tilelang_sparse_gqa_decode_varlen_indice.py * Update example_dequant_gemm_fine_grained.py * Update example_gemm_autotune.py --------- Co-authored-by:Lei Wang <34334180+LeiWang1999@users.noreply.github.com>
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- 16 May, 2025 1 commit
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Yu Cheng authored
* [Refactor] Update example_mla_decode.py and add tests for block_sparse_attn_tilelang * Refactor example_mla_decode.py to define a main function for better structure and clarity. * Introduce test_example_mla_decode.py to validate the functionality of example_mla_decode. * Refactor block_sparse_attn_tilelang.py to define a main function and add test_block_sparse_attn_tilelang.py for testing. * Ensure all new test files are integrated with tilelang testing framework. * [Test] Enhance test_example_mla_decode with argument mocking * Update test_example_mla_decode.py to mock sys.argv for better test isolation. * Ensure the main function of example_mla_decode is called with the correct arguments during testing.
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- 26 Mar, 2025 1 commit
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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.
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- 20 Mar, 2025 1 commit
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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
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- 07 Mar, 2025 1 commit
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Lei Wang authored
* [Refactor] Update BitBLAS Benchmark with TileLang Carver Imports and Roller Hints Generation - Replace BitBLAS imports with TileLang Carver imports in benchmark_matmul.py - Modify roller hints generation using new TileLang Carver template and utility functions - Update get_roller_hints_from_func to handle None cases and improve return logic - Adjust DefaultPolicy to handle different codegen dictionary formats * [Refactor] Update Thread Binding and Import Statements in TileLang Kernels - Replace T.thread_binding() with T.get_thread_binding() across multiple kernel test files - Update import statements for MMA layout and macro generator in dequantize GEMM and FP8 examples - Move map_torch_type utility function to tilelang.utils.tensor - Remove unnecessary imports and improve code organization * Refactor Native Sparse Attention Example with Enhanced Triton Kernel - Update parallel_nsa_fwd_kernel to support more flexible sparse attention computation - Add support for block counts and offsets in the Triton kernel - Modify kernel grid and computation logic for improved performance - Update example script to use naive_nsa_simple reference implementation - Improve type hints and kernel configuration
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- 02 Mar, 2025 1 commit
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Lei Wang authored
* Change default log level from WARNING to INFO in TileLang initialization * Refactor Flash Attention Variable-Length MHA Example with Cython Backend Support - Update `example_mha_fwd_varlen.py` to use Cython backend for kernel compilation - Remove unused imports and simplify function signature - Modify `flashattn` function to handle max sequence length as a separate argument - Update kernel call to include max sequence length parameter - Improve code readability and remove commented-out code - Add print statement to confirm successful assertion * Refactor code formatting in TileLang lowering and example files - Improve line breaks and code formatting in `lower.py`, `wrapper.py`, and `tensor.py` - Simplify line breaks and reduce unnecessary whitespace - Enhance code readability by adjusting indentation and line breaks - Update example MHA forward pass script with cleaner tensor initialization * Update TileLang kernel test with import path changes for MMA layout and macro generator - Modify import statements in test_tilelang_kernel_dequantize_gemm.py - Replace bitblas imports with tilelang.intrinsics imports for MMA-related utilities - Update main function to use tilelang.testing.main() * Add Block Sparse Attention Examples for TileLang and Triton - Implement block sparse attention kernels for both TileLang and Triton - Add utility functions for generating sparse attention masks using top-k and threshold methods - Support causal and variable-length attention scenarios - Include test cases for different sequence length configurations - Demonstrate block-level sparse attention with configurable parameters * Refactor Block Sparse Attention Examples with Code Style Improvements - Improve code formatting in block_sparse_attn_tilelang.py and block_sparse_attn_triton.py - Enhance readability by adjusting line breaks and indentation - Simplify kernel and function calls with better formatting - Add whitespace and line break improvements for better code clarity
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- 23 Feb, 2025 1 commit
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Lei Wang authored
* Remove Torch CPP backend and update execution backend options - Remove TorchCPPKernelAdapter and related code from JIT modules - Update execution backend options in jit/__init__.py, kernel.py, and adapter/__init__.py - Remove "torch_cpp" from supported execution backend literals - Simplify backend validation and remove unused torch_cpp-related code 。 * lint fix * Add block sparse attention implementations for TileLang and Triton - Implement block sparse attention kernels for TileLang and Triton - Add example scripts for block sparse attention with top-k and threshold-based masking - Include utility functions for generating sparse attention masks - Demonstrate causal attention with block-level sparsity - Add test cases to validate sparse attention implementations against PyTorch reference * Bump version to 0.1.1 * Refactor block sparse attention examples for improved code quality - Apply consistent code formatting and style in TileLang and Triton block sparse attention implementations - Add ruff linter ignore comment for specific line in Triton implementation - Improve readability by adjusting indentation and line breaks - Standardize sparse mask generation and test function implementations - Minor optimizations in test case configurations * lint
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- 22 Feb, 2025 1 commit
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Lei Wang authored
* Remove Torch CPP backend and update execution backend options - Remove TorchCPPKernelAdapter and related code from JIT modules - Update execution backend options in jit/__init__.py, kernel.py, and adapter/__init__.py - Remove "torch_cpp" from supported execution backend literals - Simplify backend validation and remove unused torch_cpp-related code 。 * lint fix * Add block sparse attention implementations for TileLang and Triton - Implement block sparse attention kernels for TileLang and Triton - Add example scripts for block sparse attention with top-k and threshold-based masking - Include utility functions for generating sparse attention masks - Demonstrate causal attention with block-level sparsity - Add test cases to validate sparse attention implementations against PyTorch reference
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- 25 Jan, 2025 2 commits
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Yu Cheng authored
* [Dev] Add FlashDecoding example * [CI][Test] Add test cases for tilelang kernel convolution * [CI][Test] Add test cases for tilelang kernel FlashAttention * Reduce the number of stages to ensure the shared memory allocation is valid * Temporarily remove the dim128 case * lint * update einops in requirements-dev.txt * update einops in requirements-test.txt * remove einops in requirements-dev.txt
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Lei Wang authored
* [Doc] Update documentation structure and content: add overview section, revise project name, and change theme to Furo * [Feature] Add device-side debug printing functions and integrate into kernel interface * lint fix * remove debug print * implement test for debug * lint fix * add some comments * Enhance fragment design and assert fragment print * enhance debug print * add test for msg * lint fix * format * add flash decoding exmaples * remove comment * test simplified
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- 11 Jan, 2025 1 commit
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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>
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