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Veera Rajasekhar Reddy Gopu 1eafdc8bd7 [CK][CK_TILE] Fix FMHA codegen group mode dispatch (#6764)
## Motivation

FMHA codegen had incorrect dispatch behavior in group mode. Two root
causes:

1. Wrong field names in dispatch conditions — Used batch-mode fields
(seqlen_q, seqlen_k) instead of group-mode fields (max_seqlen_q,
max_seqlen_k), causing wrong kernel selection at runtime on gfx950.
2. Missing kernel variants — Group mode was overly filtered out from
smaller-tile specializations (bwd) and lacked spatial-padding pipeline
variants on gfx950 (fwd).

gfx942 don't support trload pipeline.

## Technical Details

 fmha_bwd.py:
- max_seq_q_cond and extra_cond now emit t.max_seqlen_q / t.max_seqlen_k
for group mode.
- Relaxed kernel filtering: group mode no longer skips tiles with
max_seq_q != 0.

  fmha_fwd.py:
  - get_bm0_cond emits a.max_seqlen_q for group mode tile-size dispatch.
- Added two qr_async_trload pipeline variants with spatial padding for
gfx950 group mode.

## Test Plan
Triggering AITER CI job:

## Submission Checklist

- [ x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-05-05 19:05:30 +00:00
..

CK Tile Example Suite

This directory contains a comprehensive suite of examples demonstrating the CK Tile programming model for high-performance GPU kernels. Each example illustrates a key deep learning or HPC operation, implemented using tile-based parallelism, modular pipelines, and data movement policy.


What is CK Tile?

CK Tile is a composable GPU programming API that expresses kernels as a composition of "tiles"—rectangular blocks of computation and data movement. The pipeline & policy orchestrates data movement (global <-> LDS <-> registers), computation, and synchronization, enabling high efficiency and flexibility.


Example Index

Example Operation Description
01_fmha Fused Multi-Head Attention Tile-based FMHA with masking, quantization, and epilogue fusion
02_layernorm2d LayerNorm2D Blockwise layer normalization with fusion and quantization
03_gemm GEMM Matrix multiplication with tilewise parallelism
04_img2col im2col Image-to-column transformation for GEMM-based convolution
05_reduce Reduction Tilewise sum, max, mean reductions
06_permute Permute Generic tensor permutation (up to rank-8)
09_topk_softmax TopK-Softmax Rowwise softmax and top-k selection for MoE gating
10_rmsnorm2d RMSNorm2D Root mean square normalization for LLMs
11_add_rmsnorm2d_rdquant Add + RMSNorm2D + RDQuant Fused add, RMSNorm, and rowwise dynamic quantization
12_smoothquant SmoothQuant Per-channel scaling and quantization for int8 inference
13_moe_sorting MoE Sorting Token-to-expert rearrangement for MoE dispatch
14_moe_smoothquant MoE-SmoothQuant Expert-dependent quantization fused with top-k selection
15_fused_moe Fused MoE End-to-end fused MoE block: sorting, group-GEMM, activation, weighting
16_batched_gemm Batched GEMM Parallel computation of multiple GEMMs
17_grouped_gemm Grouped GEMM Multiple independent GEMMs with different shapes
18_flatmm FLATMM Flattened matrix multiplication for packed layouts
19_gemm_multi_d Multi-D GEMM GEMM with multiple side inputs (bias, residual, etc.)
35_batched_transpose Batched Transpose NCHW <-> NHWC and other layout conversions
36_copy Copy Minimal example for tile-based memory movement
37_transpose Block Transpose High-performance tiled transpose for large tensors

Technical Highlights


How to Build & Run

mkdir build && cd build
sh ../script/cmake-ck-dev.sh ../ <arch>
make -j

Each example produces its own executable in build/bin/.


Learning and Extending


References


Back to Composable Kernel Examples