Files
composable_kernel/dispatcher/examples/gemm/python/01_basic_gemm.py
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

223 lines
7.3 KiB
Python

#!/usr/bin/env python3
# Copyright (c) Advanced Micro Devices, Inc., or its affiliates.
# SPDX-License-Identifier: MIT
"""
Example 01: Basic GEMM with Multiple Kernels
Demonstrates:
1. Building a Registry with multiple kernel configurations
2. Parallel JIT compilation via registry.build()
3. Running each kernel and validating output against NumPy reference
4. Comparing performance across kernels
Usage:
python3 01_basic_gemm.py
python3 01_basic_gemm.py --dtype bf16
python3 01_basic_gemm.py --size 2048
python3 01_basic_gemm.py --num-kernels 4
python3 01_basic_gemm.py --workers 4
"""
import sys
import time
import argparse
from pathlib import Path
from dataclasses import dataclass
sys.path.insert(0, str(Path(__file__).parent.parent.parent.parent / "python"))
import numpy as np
from ctypes_utils import (
KernelConfig,
Registry,
detect_gpu_arch,
)
@dataclass
class KernelSpec:
name: str
tile_m: int
tile_n: int
tile_k: int
pipeline: str = "compv3"
scheduler: str = "intrawave"
KERNEL_SPECS = [
# Small tiles
KernelSpec("small_64x64_k32", 64, 64, 32, "compv3"),
KernelSpec("small_64x64_k64", 64, 64, 64, "compv3"),
KernelSpec("small_64x64_v4_k32", 64, 64, 32, "compv4"),
# Medium tiles
KernelSpec("med_128x128_k32", 128, 128, 32, "compv3"),
KernelSpec("med_128x128_k64", 128, 128, 64, "compv3"),
KernelSpec("med_128x128_v4_k32", 128, 128, 32, "compv4"),
KernelSpec("med_128x128_v4_k64", 128, 128, 64, "compv4"),
# Rectangular tiles
KernelSpec("rect_64x128_k32", 64, 128, 32, "compv3"),
KernelSpec("rect_64x128_k64", 64, 128, 64, "compv3"),
KernelSpec("rect_128x64_k32", 128, 64, 32, "compv3"),
KernelSpec("rect_128x64_k64", 128, 64, 64, "compv3"),
KernelSpec("rect_64x128_v4_k32", 64, 128, 32, "compv4"),
KernelSpec("rect_128x64_v4_k32", 128, 64, 32, "compv4"),
# Large tiles
KernelSpec("large_256x128_k32", 256, 128, 32, "compv3"),
KernelSpec("large_128x256_k32", 128, 256, 32, "compv3"),
KernelSpec("large_256x256_k32", 256, 256, 32, "compv3"),
KernelSpec("large_256x128_v4_k32", 256, 128, 32, "compv4"),
KernelSpec("large_256x256_v4_k32", 256, 256, 32, "compv4"),
# Interwave scheduler
KernelSpec("int_128x128_k32", 128, 128, 32, "compv3", "interwave"),
KernelSpec("int_256x128_k32", 256, 128, 32, "compv3", "interwave"),
]
def spec_to_config(spec: KernelSpec, dtype: str, arch: str) -> KernelConfig:
warp_m, warp_n = (16, 16) if spec.tile_m <= 64 else (32, 32)
return KernelConfig(
dtype_a=dtype,
dtype_b=dtype,
dtype_c=dtype,
dtype_acc="fp32",
layout_a="row",
layout_b="col",
layout_c="row",
tile_m=spec.tile_m,
tile_n=spec.tile_n,
tile_k=spec.tile_k,
wave_m=2,
wave_n=2,
wave_k=1,
warp_m=warp_m,
warp_n=warp_n,
warp_k=16,
pipeline=spec.pipeline,
scheduler=spec.scheduler,
epilogue="cshuffle",
gfx_arch=arch,
)
def main():
parser = argparse.ArgumentParser(description="Basic GEMM with Multiple Kernels")
parser.add_argument("--dtype", default="fp16", choices=["fp16", "bf16"])
parser.add_argument("--arch", default=detect_gpu_arch())
parser.add_argument("--size", type=int, default=512, help="Problem size MxNxK")
parser.add_argument("--num-kernels", type=int, default=0, help="0 = all")
parser.add_argument(
"--workers", type=int, default=0, help="Max parallel JIT workers (0 = auto)"
)
args = parser.parse_args()
print("=" * 70)
print("Example 01: Basic GEMM with Multiple Kernels")
print("=" * 70)
specs = KERNEL_SPECS[: args.num_kernels] if args.num_kernels > 0 else KERNEL_SPECS
# Step 1: Build registry
print(
f"\n {len(specs)} kernel configurations, dtype={args.dtype}, arch={args.arch}"
)
print(f"\n {'#':<3} {'Name':<22} {'Tile':<14} {'Pipeline':<10} {'Scheduler':<12}")
print(" " + "-" * 64)
for i, s in enumerate(specs, 1):
print(
f" {i:<3} {s.name:<22} {s.tile_m}x{s.tile_n}x{s.tile_k:<6} {s.pipeline:<10} {s.scheduler:<12}"
)
reg = Registry(name="basic_gemm")
for s in specs:
reg.register_kernel(spec_to_config(s, args.dtype, args.arch))
# Step 2: Parallel JIT build via registry.build()
workers = args.workers if args.workers > 0 else None
print(
f"\n--- Parallel JIT Build ({len(specs)} kernels{f', workers={workers}' if workers else ''}) ---"
)
t0 = time.perf_counter()
setups = reg.build(verbose=False, max_workers=workers)
jit_build_s = time.perf_counter() - t0
built = sum(1 for s in setups if s.success)
print(f" Built: {built}/{len(specs)} kernels in {jit_build_s:.1f} s")
if built == 0:
print(" ERROR: No kernels built")
return 1
# Step 3: Run each kernel and validate
print(f"\n--- Running Kernels (problem {args.size}x{args.size}x{args.size}) ---")
np_dtype = np.float16 if args.dtype in ["fp16", "bf16"] else np.float32
M = N = K = args.size
np.random.seed(42)
A = (np.random.randn(M, K) * 0.1).astype(np_dtype)
B = (np.random.randn(K, N) * 0.1).astype(np_dtype)
C_ref = np.matmul(A.astype(np.float32), B.astype(np.float32)).astype(np_dtype)
print(
f"\n {'#':<3} {'Name':<22} {'Tile':<14} {'Time(ms)':>10} {'TFLOPS':>10} {'MaxErr':>10} {'Status':<6}"
)
print(" " + "-" * 80)
results = []
for i, (spec, setup) in enumerate(zip(specs, setups), 1):
tile = f"{spec.tile_m}x{spec.tile_n}x{spec.tile_k}"
if not setup.success:
print(
f" {i:<3} {spec.name:<22} {tile:<14} {'---':>10} {'---':>10} {'---':>10} {'SKIP':<6}"
)
results.append((spec.name, False, 0.0, 0.0, 0.0))
continue
disp = setup.dispatcher
if not disp.is_supported(M, N, K):
print(
f" {i:<3} {spec.name:<22} {tile:<14} {'---':>10} {'---':>10} {'---':>10} {'SKIP':<6}"
)
results.append((spec.name, False, 0.0, 0.0, 0.0))
continue
res = disp.run(A, B, M, N, K)
if not res.success:
print(
f" {i:<3} {spec.name:<22} {tile:<14} {'---':>10} {'---':>10} {'---':>10} {'FAIL':<6}"
)
results.append((spec.name, False, 0.0, 0.0, 0.0))
continue
max_err = float(np.max(np.abs(res.output - C_ref)))
ok = max_err < 1e-2
tag = "PASS" if ok else "FAIL"
print(
f" {i:<3} {spec.name:<22} {tile:<14} {res.time_ms:>10.4f} {res.tflops:>10.2f} {max_err:>10.2e} {tag:<6}"
)
results.append((spec.name, ok, res.time_ms, res.tflops, max_err))
# Step 4: Summary
passed = sum(1 for r in results if r[1])
failed = len(results) - passed
valid = [r for r in results if r[1]]
print("\n" + "=" * 70)
print(f" Results: {passed}/{len(results)} passed")
print(f" Problem: {M}x{N}x{K}, dtype={args.dtype}")
print(f" JIT time: {jit_build_s:.1f} s (parallel)")
if valid:
best = max(valid, key=lambda x: x[3])
print(f" Best: {best[0]} ({best[3]:.2f} TFLOPS)")
print(f" Status: {'PASS' if failed == 0 else 'FAIL'}")
print("=" * 70)
return 0 if failed == 0 else 1
if __name__ == "__main__":
sys.exit(main())