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composable_kernel/example/15_grouped_gemm
Illia Silin c24e528481 [rocm-libraries] ROCm/rocm-libraries#7760 (commit a61bc76)
[CK] suppress compiler warnings while building pytorch. (#7760)

## Motivation

Recently added compiler flags that are required to suppress false
warnings by latest staging compiler are not recognized by older compiler
versions and are triggering an avalanche of warnings. Previous attempt
to suppress them by using -Wno-unknown-warning-option flag didn't help,
because that flag wasn't recognized either and just added more warnings.
I've verified that current approach by checking the clang version
actually works as intended and makes the warnings go away.

## Technical Details

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## Test Plan

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## Test Result

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## Submission Checklist

- [ ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-05-27 06:56:58 -07:00
..

Grouped GEMM

Theory

This example demonstrates grouped GEMM: performing multiple independent GEMM operations (with potentially different shapes) in a single kernel launch. Grouped GEMM is used in transformer models (e.g., multi-head attention), mixture-of-experts, and other architectures requiring heterogeneous batched matrix multiplications.

Mathematical Formulation: For G groups, each with its own A_g, B_g, C_g:


C_g = A_g \times B_g \quad \text{for} \quad g = 1, 2, ..., G
  • A_g: [M_g, K_g] input matrix for group g
  • B_g: [K_g, N_g] weight matrix for group g
  • C_g: [M_g, N_g] output matrix for group g

Algorithmic Background:

  • Each group can have different matrix sizes and strides.
  • The kernel launches a grid covering all groups, with each block assigned to a group.
  • Useful for variable-length sequences, multi-head attention, and expert routing.

How to Run

Prerequisites

Please follow the instructions in the main Build Guide section as a prerequisite to building and running this example.

Build and run

cd composable_kernel/example/15_grouped_gemm
mkdir build && cd build
cmake -DCMAKE_CXX_COMPILER=/opt/rocm/bin/hipcc ..
make -j

Run example_grouped_gemm_xdl

#arg1: verification (0=no, 1=yes)
#arg2: initialization (0=no init, 1=integer value, 2=decimal value)
#arg3: run kernel # of times (>1)
./bin/example_grouped_gemm_xdl_fp16 0 1 5

Source Code Structure

Directory Layout

example/15_grouped_gemm/
├── grouped_gemm_xdl.cpp         # Main example: sets up, runs, and verifies grouped GEMM
include/ck/tensor_operation/gpu/device/
│   └── device_grouped_gemm_xdl.hpp       # Device-level grouped GEMM API
include/ck/tensor_operation/gpu/grid/
│   └── gridwise_grouped_gemm_xdl.hpp     # Grid-level grouped GEMM kernel

Key Classes and Functions

  • DeviceGroupedGemmXdl (in device_grouped_gemm_xdl.hpp):
    Device API for grouped GEMM.
  • gridwise_grouped_gemm_xdl (in gridwise_grouped_gemm_xdl.hpp):
    Implements the tiled/blocking grouped GEMM kernel.

This example demonstrates how Composable Kernel supports efficient heterogeneous batched matrix multiplication for advanced AI/ML workloads.