Files
composable_kernel/dispatcher/examples/gemm/python/README.md
Vidyasagar Ananthan 920acd2c12 [rocm-libraries] ROCm/rocm-libraries#5168 (commit 8b5afcb)
[CK] [CK_Tile] Add GroupConv to Kernel Dispatcher

## Motivation

This PR adds CK Tile group convolution (forward, backward-data,
backward-weight) support to the kernel dispatcher, matching and unifying
with the existing dispatcher GEMM infrastructure in architecture and
usability. The dispatcher provides a unified kernel dispatch system with
both C++ and Python frontends, and until now only supported GEMM
operations. This PR enables framework integrators to use the same
declarative kernel workflow for convolutions as they do for GEMM:
declare kernels, build a registry JIT, select kernels within the
registry at runtime, and dispatch to GPU. Future PRs will include
runtime kernel selection heuristics for autotuning of kernel parameters
based on (problem, hardware arch).

## Technical Details

Grouped convolution support has been added to the CK Tile Dispatcher
with generated_conv_backend.hpp enabling dispatcher.run(in, wei, out,
problem) for all 6 conv variants (fwd/bwdd/bwdw x 2D/3D), runtime
heuristic kernel selection, and GroupedConvKernelKey with full
ConvConfigBase fields. Python side adds parallel JIT via
registry.build(max_workers) and heuristic registry.select(). Includes 7
C++ and 6 Python examples covering all directions with CPU reference
validation, and shared infrastructure improvements (BaseRegistry CRTP,
structured exceptions). As a sanity check, JIT compile times for a
single kernel remains the same and for multiple kernels there is better
parallelism:
Kernels | 1 worker | 8 workers
1 | 7.7 s | 7.7 s
2 | 15.9 s | 8.2 s
4 | 33.4 s | 9.7 s
6 | 52.3 s | 10.2 s

## Test Plan

145 ephemeral unit tests have been added to test basic functionality.
All 30 examples/integration tests run end-to-end on gfx950 (MI350): 7
C++ conv, 7 C++ GEMM, 6 Python conv, 10 Python GEMM. CPU reference
validation for forward, backward-data, and backward-weight (2D) in both
C++ and Python examples pass.

## Test Result

30 examples pass. Peak performance: 132 TFLOPS (Batch-32 forward 56x56),
53 TFLOPS (pointwise 1x1). CPU reference accuracy: max_abs_diff < 0.002
for all directions (fp16 vs fp32 reference).

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-04-09 17:39:35 +00:00

8.5 KiB

GEMM Python Examples

CK Tile Dispatcher Python examples for GEMM (General Matrix Multiplication) operations.

Main Documentation: Dispatcher README | Examples Overview

Quick Start

Build Library

cd /path/to/composable_kernel/dispatcher
mkdir -p build && cd build

cmake .. \
  -DCMAKE_PREFIX_PATH=/opt/rocm \
  -DCMAKE_CXX_COMPILER=/opt/rocm/bin/hipcc \
  -DBUILD_DISPATCHER_EXAMPLES=ON

# Build Python library (kernels generated automatically)
make dispatcher_gemm_lib -j$(nproc)

Run Examples

cd /path/to/composable_kernel/dispatcher

python3 examples/gemm/python/01_basic_gemm.py
python3 examples/gemm/python/04_validation.py
python3 examples/gemm/python/07_stress_test.py
python3 examples/gemm/python/08_heuristics.py

Examples

Example Description
01_basic_gemm.py Basic GEMM with multi-kernel support
02_batch_gemm.py Batched GEMM operations
03_benchmark.py Performance benchmarking
04_validation.py CPU reference validation
05_numpy_integration.py NumPy array integration
06_json_export.py Registry JSON export
07_stress_test.py Multi-kernel stress testing
08_heuristics.py Heuristic-based kernel selection
09_multi_registry.py Multiple registries
10_advanced_benchmark.py Advanced benchmark with full control
11_json_import.py Import kernels from JSON

Example Details

01_basic_gemm.py - Basic GEMM

Demonstrates the Python API with multi-kernel support:

from ctypes_utils import KernelConfig, setup_gemm_dispatcher, print_kernel_config_table

# Define multiple kernel configurations
kernels = [
    KernelConfig(
        tile_m=128, tile_n=128, tile_k=32,
        wave_m=2, wave_n=2, wave_k=1,
        warp_tile_m=32, warp_tile_n=32, warp_tile_k=16,
        pipeline="compv3", scheduler="intrawave"
    ),
    KernelConfig(
        tile_m=256, tile_n=256, tile_k=32,
        wave_m=2, wave_n=2, wave_k=1,
        warp_tile_m=32, warp_tile_n=32, warp_tile_k=16,
        pipeline="compv4", scheduler="intrawave"
    ),
]

# Display configurations
print_kernel_config_table(kernels)

# Set up dispatcher with all kernels
lib, dispatcher, registry = setup_gemm_dispatcher(kernels)

# Run GEMM
elapsed_ms = run_gemm(lib, M, N, K, ...)

02_batch_gemm.py - Batch GEMM

Batched matrix multiplication:

  • Multiple independent GEMM operations
  • Batch dimension handling

03_benchmark.py - Benchmarking

Performance measurement:

  • GPU timing
  • TFLOPS calculation
  • Multiple iterations

04_validation.py - Validation

Correctness verification:

  • NumPy reference implementation
  • Tolerance-based validation
  • Error reporting

05_numpy_integration.py - NumPy Integration

Seamless NumPy integration:

  • NumPy arrays to GPU buffers
  • Results back to NumPy
  • Automatic type conversion

06_json_export.py - JSON Export

Registry serialization for tool integration:

  • Export kernel configurations
  • Machine-readable format

07_stress_test.py - Stress Testing

Comprehensive multi-kernel stress testing:

from ctypes_utils import KernelConfig, setup_gemm_dispatcher, print_kernel_config_table

# Define 48 unique kernel configurations
kernels = [
    KernelConfig(tile_m=128, tile_n=128, tile_k=32, pipeline="compv3", ...),
    KernelConfig(tile_m=256, tile_n=256, tile_k=32, pipeline="compv4", ...),
    KernelConfig(tile_m=128, tile_n=256, tile_k=64, pipeline="compv3", ...),
    # ... many more configurations
]

# Test each kernel
for i, kernel in enumerate(kernels):
    lib, dispatcher, registry = setup_gemm_dispatcher([kernel])
    result = run_and_validate(lib, M, N, K, seed=42 + i)  # Different seed per kernel
    print(f"Kernel {i}: {result.max_err:.6e} {'PASS' if result.passed else 'FAIL'}")

Features:

  • 48 unique kernel configurations
  • Various tile sizes, pipelines, and schedulers
  • Per-kernel validation with unique random seeds
  • Performance reporting

08_heuristics.py - Heuristic Selection

Custom kernel selection based on problem characteristics:

# Define kernel pools for different strategies
SMALL_KERNELS = [KernelConfig(tile_m=64, tile_n=64, ...), ...]
LARGE_KERNELS = [KernelConfig(tile_m=256, tile_n=256, ...), ...]
COMPUTE_KERNELS = [KernelConfig(pipeline="compv4", ...), ...]
MEMORY_KERNELS = [KernelConfig(pipeline="compv3", ...), ...]

# Size-based heuristic
def size_based_heuristic(M, N, K):
    if M * N < 512 * 512:
        return SMALL_KERNELS
    else:
        return LARGE_KERNELS

# Strategy-based selection
def compute_strategy():
    return COMPUTE_KERNELS  # Optimized for compute-bound problems

def memory_strategy():
    return MEMORY_KERNELS   # Optimized for memory-bound problems

# Test different strategies
for strategy in [size_based_heuristic, compute_strategy, memory_strategy]:
    kernels = strategy(M, N, K)
    lib, dispatcher, registry = setup_gemm_dispatcher(kernels)
    elapsed_ms = run_gemm(lib, M, N, K, ...)

Features:

  • 24 kernel configurations across 6 categories
  • Size-based heuristic (small vs large)
  • Optimization strategies (compute, memory, latency)
  • Performance comparison across strategies

09_multi_registry.py - Multiple Registries

Separate registries for different workloads:

  • Compute-optimized registry
  • Latency-optimized registry
  • Dynamic registry selection

10_advanced_benchmark.py - Advanced Benchmark

Full control over benchmark parameters:

  • Warmup iterations
  • Benchmark iterations
  • Statistical analysis

11_json_import.py - JSON Import

Import kernel configurations from JSON:

  • External configuration files
  • Dynamic kernel loading

Utility Module: ctypes_utils.py

from ctypes_utils import (
    KernelConfig,              # Single kernel configuration
    setup_gemm_dispatcher,     # Set up dispatcher with kernels
    print_kernel_config_table, # Display kernel configurations
    Dispatcher,                # High-level dispatcher
    Registry,                  # Kernel registry
    Validator,                 # Validation utilities
)

KernelConfig

config = KernelConfig(
    # Tile sizes
    tile_m=256, tile_n=256, tile_k=32,
    # Wave configuration
    wave_m=2, wave_n=2, wave_k=1,
    # Warp tile sizes
    warp_tile_m=32, warp_tile_n=32, warp_tile_k=16,
    # Pipeline and scheduler
    pipeline="compv4",      # "compv3" or "compv4"
    scheduler="intrawave",  # "intrawave" or "interwave"
    # Optional
    epilogue="default",
    padding=True,
    double_buffer=True,
)

setup_gemm_dispatcher

# Single kernel
lib, dispatcher, registry = setup_gemm_dispatcher(config)

# Multiple kernels
lib, dispatcher, registry = setup_gemm_dispatcher([config1, config2, ...])

# With auto-rebuild
lib, dispatcher, registry = setup_gemm_dispatcher(config, auto_rebuild=True)

print_kernel_config_table

kernels = [config1, config2, config3]
print_kernel_config_table(kernels)
# Output:
# +----+-------+-------+-------+--------+-----------+
# | #  | Tile  | Wave  | Warp  | Pipe   | Scheduler |
# +----+-------+-------+-------+--------+-----------+
# | 1  | 128x128x32 | 2x2x1 | 32x32x16 | compv3 | intrawave |
# | 2  | 256x256x32 | 2x2x1 | 32x32x16 | compv4 | intrawave |
# | 3  | 128x256x64 | 2x2x1 | 32x32x16 | compv3 | interwave |
# +----+-------+-------+-------+--------+-----------+

GPU Memory Management

import ctypes
import numpy as np

# Load HIP library
hip = ctypes.CDLL("libamdhip64.so")

# Allocate GPU memory
gpu_ptr = ctypes.c_void_p()
hip.hipMalloc(ctypes.byref(gpu_ptr), size_in_bytes)

# Copy to GPU (1 = hipMemcpyHostToDevice)
hip.hipMemcpy(gpu_ptr, host_array.ctypes.data, size, 1)

# Copy back (2 = hipMemcpyDeviceToHost)
hip.hipMemcpy(host_array.ctypes.data, gpu_ptr, size, 2)

# Free
hip.hipFree(gpu_ptr)

Performance Testing

Test compilation performance with different kernel counts:

# Test with 10 kernels (~15s compile time)
python3 01_basic_gemm.py --num-kernels 10

# Test with 20 kernels (~25s compile time)
python3 01_basic_gemm.py --num-kernels 20

# Test with 48 kernels (~50s compile time)
python3 01_basic_gemm.py --num-kernels 48

Compilation time scales roughly linearly with kernel count.