Commit Graph

524 Commits

Author SHA1 Message Date
juuso-oskari
fb0d729fbb Collapse CK-UA traits into single kernel_traits<V, DType, IsMask> template
Replace 4 near-identical *_kernel_traits classes (~400 lines of repeated
shape/policy plumbing) with one templated `unified_attention_kernel_traits`
parameterized by `KernelVariant V`. The 6 dispatch_<variant> helpers in
unified_attention.cpp collapse into a single `dispatch_variant<V>` function
template that fans out over (dtype, mask).

Per-variant compile-time knobs (BlockM, BlockSize, warp count, MFMA shape,
pipeline policy, decode-grid flag) now live in one variant_config<V>
specialization each. "What's different between variants" is readable
top-to-bottom in a single block of code, and each instance .cpp shrinks to
a one-line `INST_UNIFIED_ATTENTION_DISPATCH(V, DTYPE, IS_MASK)` macro.

No behavior change. Correctness suite: 236/240 (same 4 known
num_blocks=32768 + d=128 MHA int32-overflow failures as baseline).

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-05-12 10:35:15 +00:00
juuso-oskari
5bd8f73a28 Delete CK-UA bs32 variant family
The bs32 variants existed because pre-fix the pipeline required
kBlockN <= page_size, so page_size=32 forced a kBlockN=32 kernel
family. The multi-page-tile fix (commit 473869aba) lifted that
constraint and made kBlockN compile-time-independent of the runtime
page size, so the bs32 family is now redundant: every non-bs32 variant
is correct for any page_size.

This was validated in advance by forcing use_bs32=false in the
dispatcher and running the full correctness suite -- 236/240, identical
to baseline (the 4 remaining failures are the pre-existing int32-
overflow case, orthogonal).

Removes:
  * 16 instances/unified_attention_*_bs32_*.cpp files
  * unified_attention_decode_bs32_kernel_traits in unified_attention_impl.hpp
  * 3 _BS32 dispatch macros in unified_attention.cpp
  * 3 _p32 entries from the KernelVariant enum
  * 3 dispatch_*_p32 helper functions and their switch cases
  * the page_blk_size branch in select_config (now a pure tile-tier ladder)

Net: 12 fewer compile units (build time -6s on JIT), 78 fewer dispatcher
lines, and "which kernel runs?" is now driven purely by Q-tile shape.

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-05-12 09:41:41 +00:00
juuso-oskari
fddb0d21cd Add d=128 MHA decode variant (decode_d128_mha_m128)
Until now every d=128 MHA workload took the 8-warp prefill kernel
(kBlockM=256, kBlockQ=256), wasting 255/256 Q rows on pure-decode
shapes where Q is 1. Add a dedicated 4-warp decode variant with
kBlockM=128 (kBlockQ=128) that cuts the Q-tile waste roughly in half.

  * Four new instance files at instances/unified_attention_d128_*_decode.cpp,
    each instantiating unified_attention_decode_kernel_traits<dt, mask, 128, 128, 1>.
  * KernelVariant::decode_d128_mha_m128 wired into select_config: chosen
    when both avg_q and max_seqlen_q fit in 128, else fall back to prefill.

Tests: ua-test-scripts/test_unified_attention_ck_correctness.py stays at
236/240 -- the pure-decode seq_lens pattern in head_config=(16,16,128)
now routes to the new variant and matches the torch reference. The 4
remaining failures are the pre-existing int32-overflow case (orthogonal).

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-05-12 09:34:52 +00:00
juuso-oskari
3ab4df37e2 Refactor CK-UA dispatcher around KernelVariant + select_config
The previous dispatcher was a 4-deep nested-if cascade that picked one
of seven DISPATCH_* macros based on (hdim, num_queries_per_kv, dtype,
mask, tile_tier, use_bs32). The macro names hid both the traits class
and the dispatch path, so reasoning about "what kernel runs for shape
X" required reading the whole file.

Replace it with two named layers:

  1. KernelVariant enum -- a flat list of every compiled instance.
  2. select_config(args) -- the only place runtime decisions live;
     reads the problem and emits a KernelConfig{variant, ...}.

The final switch over the variant calls into per-variant dispatch
helpers that fan out over (dtype, mask) via the existing DISPATCH_*
macros. Behaviour is unchanged: each old (hdim, nqpkv, tier, p32) tuple
maps 1:1 to a KernelVariant, and the same instance is launched.

Follow-up commits in this series will:
  - add a dedicated d=128 MHA decode variant
  - delete the _p32 ("bs32") family now that the multi-page-tile fix
    in the pipeline makes kBlockN independent of page_size

Test: ua-test-scripts/test_unified_attention_ck_correctness.py
      stays at 236/240 (same 4 pre-existing int32-overflow failures).
Co-authored-by: Cursor <cursoragent@cursor.com>
2026-05-12 09:27:59 +00:00
juuso-oskari
25364aa634 Add KV-segment parallelism to CK unified attention pipeline
End-to-end split-KV (FlashDecoding-style) for the CK unified attention
kernel. The host launches a single 3D grid with z == num_splits; each
CTA computes its KV-range slice and writes a normalized (o_acc, lse)
partial to FP32 workspaces, which the caller reduces into the final
output.

Pipeline changes:
- operator() returns ck_tile::make_tuple(o_acc, lse) instead of just
  o_acc. The masked-empty early-exit returns lse = -inf so downstream
  combine weighs the partial as zero.
- LSE is built in the natural-log domain from the pipeline's *unscaled*
  rowmax: lse = (scale_s / log2(e)) * m + log(l). Previously we used
  m / log2(e) + log(l), which dropped the per-head scale and produced
  LSE values ~1/scale too large.
- Fix post-process parity: which SP register is left in the
  alu0-done/alu1-pending state at loop exit depends on the parity of
  the *iteration count* (= num_total_loop - num_blocks_start), not on
  num_total_loop alone. For non-split (num_blocks_start == 0) the two
  parities coincide; for splits starting at an odd tile they don't.
- Fix split-KV page-table offset: num_blocks_start is counted in
  kPageBlockSize-sized tiles, but block_tables is indexed in
  page_size-sized pages — shifting block_table_offset by num_blocks_start
  reads the wrong pages whenever kPageBlockSize != page_size. Replaced
  with split_token_offset = num_blocks_start * kPageBlockSize added to
  logical_token before /page_size, so the page lookup uses the absolute
  token position.

Kernel + dispatcher:
- Drop kargs.i_split; each CTA reads i_split = blockIdx.z.
- GridSize{2D,Decode} now take num_splits and add it as the z-dim
  (defaults to 1, so non-split callers see dim3(..., 1, 1)).
- New write path: when num_splits > 1, the kernel skips the user
  epilogue and instead writes the FP32 (o_acc, lse) tile pair into
  workspace tensors at [head, split, batch_start_token, ...] using
  Default2DEpilogue (UseRawStore=true) for o_acc and store_tile for
  lse. Host strides come from kargs.

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-05-12 08:42:09 +00:00
root
63821af1ff Add split-KV decode tiles (b16x32, b32x32) + fix num_splits heuristic
Decode tiles for split-KV hdim=64: bm0=16/1-warp and bm0=32/2-warp.
Fix num_splits to use num_heads_kv (not num_heads_q) and target 4x SMs.

Performance unchanged (0.056ms) because:
1. Split+combine overhead dominates for short KV (31 pages)
2. Triton 3D's single-kernel split avoids combine kernel entirely

Made-with: Cursor
2026-04-01 18:49:16 +00:00
root
c5600bc8ae Add decode tiles (b16x32, b32x32) to pagedkv_prefill codegen with max_seqlen_q dispatch
Made-with: Cursor
2026-04-01 18:30:06 +00:00
root
65a3f88ad8 Fix CK-UA mixed batch: use max_seqlen_q for tier selection
Decode grid (num_kv_heads, num_seqs) assumes each seq has <= kBlockQ
tokens. For mixed batches (decode + prefill), avg_q is low but some
seqs have hundreds of tokens, causing truncation. Added max_seqlen_q
to args and check it in select_tile_tier to force medium tier (1D
grid with Q tile iteration) for mixed batches.

362/362 no-window shapes now pass.

Made-with: Cursor
2026-04-01 18:09:48 +00:00
root
07ba03bcbf Fix sliding window mask: use window_generic when left >= 0
mask_info::decode('b:left,right,sink') always created mask_bottom_right
(IsLocal=false) which ignores the left window boundary. For sliding
window attention (left >= 0), use window_generic (IsLocal=true) so the
kernel respects the left boundary.

Fixes: CK split-KV producing identical results with and without sliding
window. Now 724/724 shapes pass correctness vs Triton.

Made-with: Cursor
2026-04-01 18:00:19 +00:00
root
e5272603c9 Wire FmhaFwdPagedKV: enable bf16 hdim=64 with bn0=32 for page_block_size=32
Made-with: Cursor
2026-04-01 17:18:41 +00:00
root
10564b0c40 Enable FmhaFwdPagedKV bf16 hdim=64 instances (was commented out)
Made-with: Cursor
2026-04-01 16:49:20 +00:00
root
cd7ba6e2e8 Add unified attention (42_unified_attention)
Squashed from aghamari/unified-attention-decode-opt branch.

CK tile paged-KV attention kernel optimized for decode with 4-tier
dispatch (tiny/small/medium/large), 16x16 MFMA, 2D decode grid,
head-group merging. Supports hdim=64 GQA-8 and hdim=128 MHA with
block_size=32.

Made-with: Cursor
2026-04-01 16:39:15 +00:00
root
cb6fb2802d Split-KV codegen: dual-tile dispatch and head-merge for hdim=64
1. Dual-tile: add both bn0=64 (preferred) and bn0=32 (fallback) for
   hdim=64 on gfx9 and gfx12. The dispatch checks page_block_size %
   bn0 == 0 at runtime to select the optimal tile. bn0=64 halves KV
   iterations when page_block_size >= 64.

2. Tile dict now supports lists per hdim. The codegen loop iterates
   over all tile variants, generating separate kernel instances for
   each. Combine kernels are unaffected (tile-independent).

3. Enable kMergeNumHeadGroupsSeqLenQ for hdim=64 decode (previously
   hdim=128 only). For GQA-8 with max_seqlen_q=1, this packs 8 head
   groups into the M dimension. Only activates for no-mask instances
   (kernel static_assert requires !kHasMask).

4. Add qr (non-async) pipeline for fwd non-bias group mode as
   fallback after qr_async. The async pipeline on this branch has a
   kernel-level bug where fmha_fwd launches but writes no output.

Made-with: Cursor
2026-04-01 16:24:25 +00:00
root
6729989b97 Fix FMHA split-KV for paged-KV with page_block_size < kN0
Cherry-picked from aghamari/unified-attention-decode-opt (fadf0d585).
- block_masking.hpp: 5-param GetTileRangeAlongX for GenericAttentionMask
- fmha_fwd_splitkv.py: bn0=32 for hdim=64

Made-with: Cursor
2026-04-01 16:24:19 +00:00
root
4c5e290378 Add unified attention (42_unified_attention) and topk_softmax_decode
Squashed from aghamari/unified-attention-decode-opt branch.

42_unified_attention: CK tile paged-KV attention kernel optimized for
decode with 4-tier dispatch (tiny/small/medium/large), 16x16 MFMA,
2D decode grid, head-group merging. Supports hdim=64 GQA-8 and
hdim=128 MHA with block_size=32.

topk_softmax_decode: fused topk + softmax kernel for M=1 MoE decode.

Made-with: Cursor
2026-04-01 16:24:04 +00:00
Fu-Cheng Tsai
a502e5a00b [rocm-libraries] ROCm/rocm-libraries#5798 (commit 7acd4e7)
[CK_TILE] Update gfx12 FMHA forward kernel configs
2026-04-01 14:23:38 +00:00
Hosang Yoon
2dcae9d173 [rocm-libraries] ROCm/rocm-libraries#5977 (commit 794bea7)
[CK_TILE] Fix Windows build in FMHA head grouping

## Motivation

This is a follow-up fix for [PR
#5018](https://github.com/ROCm/rocm-libraries/pull/5018).

[PR #5018](https://github.com/ROCm/rocm-libraries/pull/5018) added
LLC-aware FMHA head grouping / head-major scheduling on RDNA, but it
also introduced Linux-only code paths, including `<dirent.h>`, which
break Windows builds. This change fixes that by guarding the
Linux-specific LLC probing logic so non-Linux platforms can still build
correctly.

## Technical Details

- Guard `<dirent.h>` with `#ifdef __linux__`
- Guard KFD sysfs traversal logic with `#if defined(__linux__)`
- On non-Linux platforms, return `0` from
`get_kfd_sysfs_llc_cache_bytes()`
- Preserve existing fallback behavior through:
  - `CK_TILE_FMHA_LLC_CACHE_MB`
  - arch-based default LLC sizes
  - no head grouping when no LLC size can be resolved

## Test Plan

<!-- Explain any relevant testing done to verify this PR. -->

## Test Result

<!-- Briefly summarize test outcomes. -->

## Submission Checklist

- [ ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-30 14:19:19 +00:00
Jeff Huang
7968368d92 [rocm-libraries] ROCm/rocm-libraries#5918 (commit a7e2c67)
[CK][CK_TILE] Add fp8bf16 hdim=256 tile for batch prefill
 (#5918)
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## Motivation
FP8 batch prefill kernels currently only support head_dim=128. Models
with head_dim=256 hit the "invalid argument for batch_prefill" error
because no matching kernel variant exists in the codegen dispatch.

## Technical Details
Add a hdim=256 tile size entry for fp8bf16 in the batch prefill codegen
recipe (`fmha_batch_prefill.py`).

Tile configuration: `FmhaFwdTileSize(128, 128, 32, 256, 32, 256, 4,1,1,
4,1,1, 32,32,32, 32,32,32, -1)`
- bm0=128, bn0=128 (Q/K tile sizes)
- bn1=256, bk0max=256 (V head_dim=256)
- Warp MFMA 32x32x32 (fp8 MFMA instructions)

This mirrors the existing bf16/fp16 hdim=256 tile but uses fp8 warp
sizes.

## Test Plan
Tested on both MI308X (gfx942) and MI355X (gfx950) via aiter batch
prefill test with the following matrix:
- page_size: {1, 16, 1024}
- kv_layout: {linear, vectorized}
- lookup_table: {sglang, vllm}
- causal: {true, false}
- logits_soft_cap: {0.0, 30.0}
- contiguous_kv: {true, false}

## Test Result

**MI308X (gfx942):** 160 passed, 32 skipped (page_size=1 + vectorized
not applicable)
**MI355X (gfx950):** 120 passed, 72 skipped (pre-existing ROCm 7.2
compiler issue with causal + no softcap)

No register spills on either platform.

### Profiling — MI355X (gfx950), FP8 pertensor, hdim=256, seqlen=1024, 8
heads

| page_sz | kv_layout | table | causal | soft_cap | time_us | TFLOPS |
|---------|-----------|-------|--------|----------|---------|--------|
| 1 | linear | sglang | False | 0.00 | 55.01 | 156.16 |
| 1 | linear | vllm | False | 0.00 | 55.12 | 155.84 |
| 1 | linear | sglang | False | 30.00 | 62.63 | 137.16 |
| 1 | linear | vllm | False | 30.00 | 62.16 | 138.20 |
| 1 | linear | sglang | True | 30.00 | 64.09 | 67.01 |
| 1 | linear | vllm | True | 30.00 | 63.85 | 67.27 |
| 16 | linear | sglang | False | 0.00 | 57.00 | 150.69 |
| 16 | vectorized | sglang | False | 0.00 | 57.55 | 149.25 |
| 16 | linear | vllm | False | 0.00 | 56.80 | 151.23 |
| 16 | vectorized | vllm | False | 0.00 | 57.32 | 149.87 |
| 16 | linear | sglang | False | 30.00 | 64.77 | 132.62 |
| 16 | vectorized | vllm | False | 30.00 | 63.54 | 135.18 |
| 16 | linear | sglang | True | 30.00 | 66.84 | 64.26 |
| 16 | vectorized | vllm | True | 30.00 | 66.12 | 64.96 |
| 1024 | linear | sglang | False | 0.00 | 58.25 | 147.46 |
| 1024 | vectorized | sglang | False | 0.00 | 57.53 | 149.31 |
| 1024 | linear | vllm | False | 0.00 | 58.06 | 147.94 |
| 1024 | vectorized | vllm | False | 0.00 | 57.55 | 149.27 |
| 1024 | linear | sglang | False | 30.00 | 65.38 | 131.38 |
| 1024 | vectorized | vllm | False | 30.00 | 63.64 | 134.98 |
| 1024 | linear | sglang | True | 30.00 | 66.85 | 64.25 |
| 1024 | vectorized | vllm | True | 30.00 | 65.26 | 65.81 |

### Profiling — MI308X (gfx942), FP8 pertensor, hdim=256, seqlen=1024, 8
heads

| page_sz | kv_layout | table | causal | soft_cap | time_us | TFLOPS |
|---------|-----------|-------|--------|----------|---------|--------|
| 1 | linear | sglang | False | 0.00 | 110.18 | 77.96 |
| 1 | linear | vllm | True | 30.00 | 134.33 | 31.97 |
| 1 | linear | sglang | True | 30.00 | 134.59 | 31.91 |
| 16 | linear | sglang | False | 0.00 | 115.43 | 74.42 |
| 16 | vectorized | sglang | False | 0.00 | 106.11 | 80.95 |
| 16 | linear | vllm | False | 0.00 | 116.34 | 73.83 |
| 16 | vectorized | vllm | False | 0.00 | 106.17 | 80.91 |
| 16 | linear | sglang | False | 30.00 | 135.61 | 63.34 |
| 16 | vectorized | vllm | False | 30.00 | 122.37 | 70.20 |
| 16 | linear | sglang | True | 0.00 | 117.44 | 36.57 |
| 16 | vectorized | vllm | True | 0.00 | 108.81 | 39.47 |
| 16 | linear | sglang | True | 30.00 | 139.43 | 30.80 |
| 16 | vectorized | vllm | True | 30.00 | 125.87 | 34.12 |
| 1024 | linear | sglang | False | 0.00 | 110.65 | 77.63 |
| 1024 | vectorized | sglang | False | 0.00 | 101.70 | 84.46 |
| 1024 | linear | vllm | False | 0.00 | 111.71 | 76.89 |
| 1024 | vectorized | vllm | False | 0.00 | 101.55 | 84.59 |
| 1024 | linear | sglang | False | 30.00 | 129.33 | 66.42 |
| 1024 | vectorized | vllm | False | 30.00 | 120.95 | 71.02 |
| 1024 | linear | sglang | True | 0.00 | 112.26 | 38.26 |
| 1024 | vectorized | vllm | True | 0.00 | 103.02 | 41.69 |
| 1024 | linear | sglang | True | 30.00 | 133.73 | 32.12 |
| 1024 | vectorized | vllm | True | 30.00 | 124.75 | 34.43 |

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-30 10:21:33 +00:00
Johannes Graner
58475d3f45 [rocm-libraries] ROCm/rocm-libraries#5393 (commit d51b649)
[CK Tile] StreamK support for Bwd Weight grouped convolutions
 (#5393)

## Motivation

Add StreamK work distribution to the CK Tile grouped convolution
backward weight kernel. Split-K divides the K-dimension uniformly across
a fixed `k_batch`, which causes load imbalance when the number of output
tiles doesn't evenly fill the GPU. StreamK distributes total
K-iterations evenly across workgroups, improving utilization on these
shapes.

## Technical Details

StreamK is added as an `if constexpr` branch in the existing kernel,
selected by the `TilePartitioner_` template parameter. Two reduction
strategies are supported:
- **Linear**: tile-starter sequentially accumulates partials from
contributing CTAs
- **Tree**: pairwise binary tree reduction (O(log n) depth, faster for
many contributors)

Both persistent and non-persistent data-parallel (DP) sections are
supported.

Key changes:
- `grouped_convolution_backward_weight_kernel.hpp`: StreamK execution
path with `RunStreamK`/`RunStreamKLoop`, partial store/load via
workspace, flag-based cross-CTA synchronization,
`GridSize`/`MakeKernelArgs`/`GetWorkSpaceSize` extensions
- `streamk_common.hpp`: Shared `StreamKReductionOps` (reduction helpers)
and `StreamKDispatch` (persistent/non-persistent DP dispatch), used by
both GEMM and Conv StreamK kernels
- `streamk_gemm_kernel.hpp`: Refactored to use shared helpers
- Merged split-K and StreamK example invokers via `PartitionerPolicy`
template parameter
- StreamK example binary with `--streamk_reduction=linear|tree` and
`--streamk_persistent=0|1`
- CK Builder integration: `SpecifiesStreamK` concept,
`TilePartitionerType` factory helper, `InstanceTraits` with StreamK
fields
- 30 tests: host-side, GPU end-to-end (Linear + Tree + Persistent DP),
negative, builder regression

### Performance (MI355X, gfx950)

Speedup relative to best split-K (sweep over k_batch={1,2,4,8,16,32}):

| Shape | 16x64 tiles | | 128x128 tiles | |
|---|---|---|---|---|
| | Split-K | StreamK | Split-K | StreamK |
| 1x1 128x128 N=32 28x28 | 1.00x | 0.54x | 1.00x | 0.81x |
| 3x3 128x128 N=32 14x14 | 1.00x | 0.59x | 1.00x | 0.62x |
| 1x1 256x64 N=32 56x56 | 1.00x | 0.83x | 1.00x | 1.83x |
| 3x3 512x512 N=2 7x7 | 1.00x | 1.12x | 1.00x | 0.62x |
| 1x1 1024x1024 N=4 7x7 | 1.00x | 1.09x | 1.00x | 0.60x |
| 3x3 128x128 N=32 28x28 | 1.00x | 0.44x | 1.00x | 0.96x |
| 3x3 256x256 N=32 14x14 | 1.00x | 0.67x | 1.00x | 0.93x |
| 3x3 512x512 N=32 7x7 | 1.00x | 0.98x | 1.00x | 1.16x |

StreamK's value depends on tile config: with larger tiles (fewer output
tiles), StreamK delivers up to 1.83x speedup on bottleneck shapes and up
to 1.16x on typical large-channel convolutions. Tree reduction
consistently outperforms Linear when multiple CTAs contribute to the
same tile (up to 2.87x faster), due to O(log n) reduction depth vs O(n)
sequential accumulation. The table reports the best of Linear and Tree
for each shape.

## Test Plan

```bash
ninja -C build test_ck_tile_grouped_conv_bwd_weight_streamk
./build/bin/test_ck_tile_grouped_conv_bwd_weight_streamk

# Builder tests (requires CK_EXPERIMENTAL_BUILDER=ON)
ninja -C build check-builder
```

30 tests covering:
- Host-side: type traits, kernel args construction, grid size, workspace
size
- GPU end-to-end (Linear + Tree): small/medium shapes, multi-group,
stride>1, pure-DP degeneration, single-tile all-SK, large GemmK, higher
occupancy
- Persistent DP: Linear + Tree with persistent data-parallel dispatch
- Negative: `IsSupportedArgument` rejects unaligned K and C
- Builder: Create (instance string validation) + Execution (reference
comparison) + instance string regression

## Test Result

All 30 conv StreamK tests pass on MI355X (gfx950). 64/64 GEMM StreamK
tests pass. Full `check-builder` suite passes. Tolerances computed
dynamically using `calculate_rtol_atol` pattern (fp16 ULP-aware).

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-27 09:18:14 +00:00
yinglu
a268a2a2e1 [rocm-libraries] ROCm/rocm-libraries#5612 (commit 38c9498)
[CK]fix: remove redundant structured sparsity check in
 run_gemm_example.inc (#5612)

## Motivation

This issue if found via
https://github.com/ROCm/rocm-libraries/pull/4302#discussion_r2958603418
and is introduced via https://github.com/ROCm/rocm-libraries/pull/5323.

## Technical Details

The outer `if` and inner `if constexpr` both checked
GemmConfig::UseStructuredSparsity. Merged into a single `if constexpr`
since both preshuffle and UseStructuredSparsity are compile-time
constants.

## Test Plan

<!-- Explain any relevant testing done to verify this PR. -->

## Test Result

<!-- Briefly summarize test outcomes. -->

## Submission Checklist

- [ ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-20 08:23:07 +00:00
yinglu
d460ab35b6 [rocm-libraries] ROCm/rocm-libraries#4302 (commit e62bd8a)
[CK_TILE] add tf32 support
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## Proposed changes

TF32 is added in CK on gfx942 and gfx950. This PR is to initiate tf32 in
CK_TILE on gfx942 and gfx950.

## Checklist

Please put an into the boxes that apply. You can also fill these out
after creating the PR. If you're not sure, please don't hesitate to ask.

- [ ] I have added tests relevant to the introduced functionality, and
the unit tests are passing locally
- [ ] I have added the test to REGRESSION_TESTS list defined at the top
of CMakeLists.txt in tests/CMakeLists.txt, **IF** the test takes more
than 30 seconds to run.
- [ ] I have added inline documentation which enables the maintainers
with understanding the motivation
- [ ] I have removed the stale documentation which is no longer relevant
after this pull request
- [ ] (If this change is user-facing) I have added release notes which
provide the end users with a brief summary of the improvement from this
pull request
- [x] I have run  on all changed files
- [ ] Any dependent changes have been merged

## Discussion
2026-03-19 09:19:06 +00:00
Thomas Ning
5f90f69795 [rocm-libraries] ROCm/rocm-libraries#5323 (commit 5454e9e)
CK Tile MX GEMM Packing Improvement

## Motivation

Reduce the scale loading size and also has better utilization of MFMA
scale selection.

## Technical Details

Add up the packing of mx scales.

## Test Plan

Use the existing test cases.

## Test Result

<!-- Briefly summarize test outcomes. -->

## Submission Checklist

- [ ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-17 18:58:56 +00:00
Hosang
859acb5ae7 [rocm-libraries] ROCm/rocm-libraries#5018 (commit b32e7e6)
[CK_TILE] Add LLC-aware FMHA head grouping and head-major
 scheduling on RDNA (#5018)
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## Motivation
Long-sequence FMHA can become memory-bound when K/V working sets exceed
Infinity Cache (LLC), causing repeated DRAM traffic across heads.

This PR introduces LLC-aware launch ordering improvements for FMHA
forward, and it is currently enabled only on gfx11 and gfx12. The
approach is inspired by
[`Dao-AILab/flash-attention#2217`](https://github.com/Dao-AILab/flash-attention/pull/2217),
adapted to CK’s kernel/runner structure and layout handling.

In this context, `bshd` is the layout used in Flash-Attention, while
`bhsd` is the default layout used by the CK Tile FMHA example.

## Technical Details
This PR adds two complementary strategies:

- For `bshd` input layout (`i_perm/o_perm=0`), enable explicit LLC-aware
head grouping:
  - Estimate LLC size (env override, KFD sysfs, or arch default).
  - Compute group size from K/V bytes per head vs LLC target.
- Launch FMHA forward repeatedly per head-group by slicing Q/K/V/O (and
related tensors).

- For `bhsd` input layout (`i_perm/o_perm=1`), apply implicit
launch-order adjustment:
  - Keep a single kernel launch.
- Reinterpret block linearization in `GetTileIndex` to make execution
head-major,
     improving temporal locality of per-head K/V reuse.

Additional integration updates:
- Propagate `num_head_q_total` and `head_start` through FMHA args/kargs.
- Use global head indexing for dropout RNG stream mapping so grouped
launches keep
    deterministic/consistent dropout behavior.
- Keep fallback behavior unchanged when grouping is not beneficial or
disabled.

## Test Plan
- `test_ck_tile_fmha`
- `tile_example_fmha_fwd`

## Test Result
- `test_ck_tile_fmha`: all tests passed.
- `tile_example_fmha_fwd`: tested this on gfx1100, gfx1151, and gfx1201,
and all of them show higher performance compared to the baseline. The
improvement is consistent, and performance is well maintained even at
long sequence lengths.

./build/bin/tile_example_fmha_fwd -prec=bf16 -mode=0 -b=1 -h=24 -d=128
-s={seqlen} -s_k={seqlen} -lse=0 -iperm={0/1} -operm={0/1}
- TFLOPs by sequence length target: gfx1100 layout: bhsd

SeqLen | Before | After | Speedup
-- | -- | -- | --
1024 | 56.27 | 61.48 | 1.09x
4096 | 67.10 | 72.27 | 1.08x
8192 | 65.99 | 71.64 | 1.09x
12288 | 61.60 | 76.61 | 1.24x
16384 | 58.99 | 75.74 | 1.28x
20480 | 57.32 | 74.42 | 1.30x
24576 | 56.89 | 74.25 | 1.31x
27280 | 18.93 | 24.48 | 1.29x

- TFLOPs by sequence length target: gfx1201 layout: bshd

SeqLen | Before | After | Speedup
-- | -- | -- | --
1024 | 66.79 | 65.90 | 0.99x
4096 | 85.90 | 86.80 | 1.01x
8192 | 77.06 | 90.29 | 1.17x
12288 | 58.36 | 88.98 | 1.52x
16384 | 52.12 | 88.88 | 1.71x
20480 | 48.11 | 88.42 | 1.84x
24576 | 47.12 | 89.07 | 1.89x
27280 | 49.05 | 50.31 | 1.03x

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-16 21:19:23 +00:00
Enrico Degregori
eb033ef208 [rocm-libraries] ROCm/rocm-libraries#4964 (commit 3271d9a)
[CK Tile] Eight Waves pipeline GEMM

## Motivation

Eight waves pipeline was added for ABQuant. The goal of this PR is to
enable it also for GEMM

## Technical Details

Summary:
 - Block:
- Create block struct for GEMM using eight warps specific distribution
encodings
   - Use this block struct in ABQuant for encodings
 - Pipeline:
- Create impl pipeline for eight waves which can be used by GEMM and
ABQuant as base (and for AQuant and BQuant in the future)
- Create eight waves pipeline for GEMM (this can not be easily
integrated in the existing async pipeline)
 - Pipeline policy:
- Extract GEMM specific parts in the ABQuant policy to define GEMM
policy (then ABQuant use it as base and add Quant specific methods)
- Minor: naming was inconsistent between warp/wave, everything is now
referred to as eight waves

So overall we have:
- block struct directly used by GEMM -> ABQuant derived struct to
implement operator
- Impl base pipeline with general implementation -> GEMM and ABQuant
pipelines use it to avoid code duplication but still define their own
pipelines
- pipeline policy struct directly used by GEMM -> ABQuant derived policy
struct for Quant specific parts

## Test Plan

Added new tests for GEMM pipeline:
`test_ck_tile_gemm_pipeline_comp_async_eight_waves` (only gfx950
supports it).

Note: K padding test is disabled for this pipeline because it's not
implemented yet

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-16 08:31:56 +00:00
Bartłomiej Kocot
b8108662da [rocm-libraries] ROCm/rocm-libraries#5387 (commit 0c259bd)
[CK][CK Tile] Grouped Convolution Backward Weight set of
 fixes (#5387)
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## Motivation

Grouped Convolution Backward Weight split k fixes for CK tile kernels

## Technical Details

- get k batch from kargs to get deduced k batch
- multiply zeroing size by data type size
- disable v6 (producing a incorrect results)

## Test Plan

test_grouped_convnd_bwd_weight_tile

## Test Result

Pass

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-13 16:19:50 +00:00
Yi DING
574c1c121a [rocm-libraries] ROCm/rocm-libraries#5174 (commit a358a21)
[CK_TILE] FMHA BWD Use Persistent Kernels in Deterministic
 Mode (#5174)

## Motivation
This PR enables a persistent-kernel execution path for FMHA backward
(dQ/dK/dV) in deterministic mode, adjusting how dQ accumulation is
split, stored, and converted back to final gradients.

## Technical Details
- Introduces a persistent-kernel grid mapping in deterministic mode and
updates split-count calculation accordingly.
- Extends kernel kargs to carry batch-related info needed for persistent
scheduling and dQ conversion.
- Refactors dQ store conditions and adds mask-type traits/utilities and
runner logging updates.

## Test Plan
- Jenkins
[base](http://micimaster.amd.com/blue/organizations/jenkins/rocm-libraries-folder%2FComposable%20Kernel/detail/PR-5174/10/pipeline)
- Jenkins
[AITER](http://micimaster.amd.com/blue/organizations/jenkins/rocm-libraries-folder%2FComposable%20Kernel/detail/PR-5174/12/pipeline)
- Jenkins
[FMHA](http://micimaster.amd.com/blue/organizations/jenkins/rocm-libraries-folder%2FComposable%20Kernel/detail/PR-5174/11/pipeline)
- local FA tests

## Test Result

<!-- Briefly summarize test outcomes. -->

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-13 06:14:31 +00:00
Aviral Goel
1a4aa7fd89 [rocm-libraries] ROCm/rocm-libraries#5082 (commit 9313659)
ck_tile: add gtest unit tests for MX flatmm (gfx950)
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## Summary

- Add correctness unit tests for the MX-format flatmm kernel
(`example/ck_tile/18_flatmm/mxgemm`) under `test/ck_tile/flatmm/`
- Tests cover all five dtype combinations: FP4×FP4, FP8×FP8, FP6×FP6,
FP8×FP4, FP4×FP8
- Tests cover all four kernel dispatch paths (the `has_hot_loop` ×
`tail_num` product):
  - `has_hot_loop=false, tail=ODD` (K=256, num_loop=1)
  - `has_hot_loop=false, tail=EVEN` (K=512, num_loop=2)
  - `has_hot_loop=true, tail=ODD` (K=768, num_loop=3)
  - `has_hot_loop=true, tail=EVEN` (K=1024, num_loop=4)
- Remove unsupported `-split_k` CLI option from
`tile_example_mx_flatmm`; the pre-shuffled B layout is incompatible with
K-splitting and the option silently produced wrong results

## Changes

**New files (`test/ck_tile/flatmm/`):**
- `CMakeLists.txt` — builds 40 kernel instances as a shared OBJECT
library, links into 5 per-dtype test executables; forwards
`-DCK_TILE_USE_OCP_FP8` when `CK_USE_OCP_FP8` is ON
- `test_mx_flatmm_base.hpp` — base test fixture with
`run_test_with_validation(M, N, K, kbatch=1)`
- `test_mx_flatmm_fixtures.hpp` — concrete `TestMXFlatmm` typed test
class and type aliases
- `test_mx_flatmm_fp{4fp4,8fp8,6fp6,8fp4,4fp8}.cpp` — per-dtype
`TYPED_TEST_SUITE` files

**Modified files:**
- `example/ck_tile/18_flatmm/mxgemm/mx_flatmm_arch_traits.hpp` — moved
`preShuffleWeight` here (was in `mx_flatmm.cpp`) so it is includeable by
both the example and the tests
- `example/ck_tile/18_flatmm/mxgemm/mx_flatmm.cpp` / `run_mx_flatmm.inc`
— removed `-split_k` CLI arg, hardcoded `k_batch=1`, fixed `k_split`
formula, updated call sites after `preShuffleWeight` move
- `test/ck_tile/CMakeLists.txt` — added `add_subdirectory(flatmm)`
2026-03-11 22:47:59 +00:00
Anton Gorenko
2312eef6c3 [rocm-libraries] ROCm/rocm-libraries#4368 (commit 17f7dfc)
[CK_TILE][FMHA] Support microscaling (mxfp8 and mxfp4) on
 gfx950 (#4368)

## Motivation

Microscaling types (mxfp8 and mxfp4) for fwd qr pipeline

## Technical Details

The microscaling is used when quant scale mode is
`BlockAttentionQuantScaleEnum::MX` and `Q/K/P/VDataType` are
fp8/bf8/fp4.

Supported features:
* only "qr" pipeline is implemented
* hdim 128 and 256 (smaller hdim are not possible due to restrictions of
"qr" pipeline, but they can be computed using instances with padding)
 * both 32x32x64 and 16x16x128 scale MFMAs are supported
 * Q and K scales are applied in hdim, V scales - in seqlen dimension
 * column-major V only
 * batch and group mode
 * bias, Alibi (tested but no instances by default, just like fp8)
 * masking etc.

Aiter PR with new API args: https://github.com/ROCm/aiter/pull/2008

## Test Plan

```
ninja test_ck_tile_fmha_fwd_mxfp8 && bin/test_ck_tile_fmha_fwd_mxfp8
ninja test_ck_tile_fmha_fwd_mxfp4 && bin/test_ck_tile_fmha_fwd_mxfp4
```

## Test Result

The tests must pass.

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-11 10:00:52 +00:00
Sami Remes
8f27f65d44 [rocm-libraries] ROCm/rocm-libraries#4594 (commit 1fce4cb)
[CK_TILE] MX GEMM non-preshuffled RCR layout

## Motivation

Implements a GEMM with MX scaling for fp4 and fp8 in non-preshuffled
layouts using async pipeline.

## Technical Details

<!-- Explain the changes along with any relevant GitHub links. -->

## Test Plan

<!-- Explain any relevant testing done to verify this PR. -->

## Test Result

<!-- Briefly summarize test outcomes. -->

## Submission Checklist

- [ ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-10 20:12:43 +00:00
Hosang
c800f88911 [rocm-libraries] ROCm/rocm-libraries#5088 (commit 36ca523)
[CK_TILE] Update gfx11 FMHA forward kernel configs

## Motivation
Tune gfx11 FMHA codegen to recover performance for mainly PSSK (padded
seqlen_q/k) cases.
This tuning is based on heuristic search and improves performance in
most tested shapes.
Performance should be evaluated on top of
[`ROCm/rocm-libraries#5018`](https://github.com/ROCm/rocm-libraries/pull/5018)
(required baseline).

## Technical Details

  - Updated gfx11 codegen heuristic choices for tile size and occupancy.
   - Updated gfx11 pipeline selection:
- Disabled the `npad` (`f,f,f,f`) qr entry because it was consistently
slower than the `pssk` (`t,t,f,f`) path, and kept `pssk` enabled so npad
cases are dispatched to the faster kernel path.`
- Kept gfx12 unchanged: with PSSK support from
[`ROCm/rocm-libraries#4957`](https://github.com/ROCm/rocm-libraries/pull/4957),
existing gfx12 config is already sufficient.
  - Tuning rationale:
    - In some cases, higher `kBlockPerCu` lowers register pressure.
- On RDNA, this generally aligns with better performance when
`waves_per_eu >= 6`.

## Test Plan
- test_ck_tile_fmha
- tile_example_fmha_fwd: tested this on gfx1100 and gfx1151
./build/bin/tile_example_fmha_fwd -prec=bf16 -mode={0/1} -b=1 -h=24
-d=128 -s={seqlen} -s_k={seqlen} -lse=0 -iperm={0/1} -operm={0/1}

## Test Result
- TFLOPs by sequence length target: `gfx1100` layout: `bhsd`
- mode: batch / VGPR usage: 225 vs 214

SeqLen | Baseline | Tuned | Gain
-- | -- | -- | --
1024 | 74.10 | 71.97 | 0.97x
4096 | 66.26 | 77.79 | 1.17x
8192 | 68.18 | 75.88 | 1.11x
12288 | 68.47 | 80.44 | 1.17x
16384 | 59.54 | 79.66 | 1.34x
20480 | 55.78 | 77.91 | 1.40x
24576 | 55.08 | 77.47 | 1.41x
27280 | 47.45 | 77.16 | 1.63x
- mode: group / VGPR usage: 256 vs 214

SeqLen | Baseline | Tuned | Gain
-- | -- | -- | --
1024 | 71.47 | 70.6 | 0.99x
4096 | 64.74 | 77.06 | 1.19x
8192 | 64.68 | 75.47 | 1.17x
12288 | 66.43 | 79.95 | 1.20x
16384 | 56.02 | 79.73 | 1.42x
20480 | 50.21 | 78.15 | 1.56x
24576 | 47.29 | 77.53 | 1.64x
27280 | 46.13 | 77.04 | 1.67x

- TFLOPs by sequence length target: `gfx1151` layout: `bshd`
- mode: batch / VGPR usage: 225 vs 223

Batch | Baseline | Tuned | Gain
-- | -- | -- | --
1024 | 26.85 | 29.17 | 1.09x
4096 | 24.75 | 26.01 | 1.05x
8192 | 25.24 | 25.50 | 1.01x
12288 | 25.18 | 25.00 | 0.99x
16384 | 24.79 | 25.91 | 1.05x
20480 | 25.56 | 25.24 | 0.99x
24576 | 25.13 | 26.20 | 1.04x
27280 | 10.78 | 26.35 | 2.44x
- mode: group / VGPR usage: 256 vs 229

Batch | Baseline | Tuned | Gain
-- | -- | -- | --
1024 | 27.44 | 26.71 | 0.97x
4096 | 21.89 | 23.09 | 1.05x
8192 | 22.85 | 24.49 | 1.07x
12288 | 24.33 | 24.42 | 1.00x
16384 | 20.05 | 24.98 | 1.24x
20480 | 14.70 | 25.15 | 1.71x
24576 | 11.30 | 26.31 | 2.33x
27280 | 10.10 | 26.32 | 2.61x

## Submission Checklist

- [ ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-10 16:47:43 +00:00
kensclin
8c216604d4 [rocm-libraries] ROCm/rocm-libraries#5218 (commit 60156cf)
[CK] Fix the issue of the aiter to call eightwarps pipeline.
 (#5218)

## Motivation

Fix the failure of the aiter to call eightwarp.
Changed Async to the name eightwarps.

## Technical Details

<!-- Explain the changes along with any relevant GitHub links. -->

## Test Plan

Pass

## Test Result

<!-- Briefly summarize test outcomes. -->

## Submission Checklist

- [ ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-09 18:13:07 +00:00
Ville Pietilä
ae4e632c7d [rocm-libraries] ROCm/rocm-libraries#4797 (commit 1a30400)
[CK_TILE] Add CK Tile bwd weight profiler
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## Motivation

To compare old CK and CK Tile, we need to extend the current CK profiler
to support running also CK Tile instance with the same API. In order to
have the same instance coverage in CK Tile compared to the old CK, I've
added code generation from old CK configurations to CK Tile instances
using the CK Builder.

## Technical Details

- The codegen python script for CK Tile fwd convs is extended to support
also bwd weight and bwd data.
- The generated instances are added to the CMake build (target
`device_grouped_conv_bwd_weight_tile_instance`s).
- A new profiler op (`grouped_conv_bwd_weight_tile`) has been added to
the CK Profiler.
2026-03-04 21:50:29 +00:00
Anton Gorenko
782f0a9eed [rocm-libraries] ROCm/rocm-libraries#4957 (commit d2e4eb8)
[CK_TILE][FMHA] Extend pipelines with pssk for gfx11/12
 (#4957)

## Motivation

Build pipelines with seqlen padding only to support vectorized loads in
the hdim dimension.
The existing pipelines have either all dims padded or all dims not
padded.
These pipelines can be used in ComfyUI for slightly better performance.

## Technical Details

Also a fix included for correct FLOPS calculation in
`tile_example_fmha_fwd` when `seqlen_q * seqlen_k` overflows index_t
capacity (signed int32).

## Test Plan

The existing test cases will use the new pipelines when parameters allow
(seqlens - padded, hdims - not padded):
```
ninja test_ck_tile_fmha_fwd

bin/test_ck_tile_fmha_fwd_fp16
bin/test_ck_tile_fmha_fwd_bf16

bin/test_ck_tile_fmha_fwd_fp8bf16 # for gfx12
```

## Test Result

All tests must pass.

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-04 04:50:44 +00:00
Yi DING
b09112bbad [rocm-libraries] ROCm/rocm-libraries#4577 (commit a36922c)
[CK_TILE] FMHA BWD Launcher Interface

## Motivation
Reduce memory usage; Be prepared to implement optimizations of reducing
nsplits in deterministic cases.

## Technical Details
This PR introduces a new launcher interface for the FMHA backward
operation, replacing direct function calls with a more structured
approach. The launcher encapsulates kernel dispatch logic and provides
access to computed metadata like the number of dQ acc splits.

**Changes:**
- Added `fmha_bwd_launcher` class that wraps kernel execution and
exposes `dq_acc_splits`
- Moved `fmha_bwd_traits` construction earlier in the execution flow to
support launcher initialization
- Refactored code generation to produce both legacy API and new launcher
constructor

## Test Plan

<!-- Explain any relevant testing done to verify this PR. -->

## Test Result

<!-- Briefly summarize test outcomes. -->

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-04 01:21:07 +00:00
Brock Hargreaves
2a16d53cce [rocm-libraries] ROCm/rocm-libraries#5045 (commit 64a5502)
[CK] Address a bunch of errors associated with targeting
 gfx1200 on Windows (#5045)
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## Motivation

Still addressing errors that are blocking the merge of TheRock PR:
https://github.com/ROCm/TheRock/actions/runs/22545831304/job/65308264096?pr=3382

## Technical Details

1. There are multiple fmha python scripts that are writing native paths
which are confusing cmake. I addressed one of these in an earlier PR
https://github.com/ROCm/rocm-libraries/pull/4812 and now I'm addressing
more that are exposed with gfx1200 target:

```
[composable_kernel configure] CMake Error at example/ck_tile/50_sparse_attn/CMakeLists.txt:61 (add_library):
[composable_kernel configure]   Syntax error in cmake code when parsing string
[composable_kernel configure]
[composable_kernel configure]     B:\build\ml-libs\composable_kernel\build\example\ck_tile\50_sparse_attn\fmha_jenga_fwd_d128_fp16_batch_b128x128x32x128x32x128_r4x1x1_r4x1x1_w32x32x16_w32x32x16_qr_async_vr_psddv_nlogits_nbias_nmask_nskip_nsquant_ntrload.cpp
[composable_kernel configure]
[composable_kernel configure]   Invalid character escape '\b'.
```

2. In the following compiler error we see gemm_prec_str<ADataType,
BDataType> being passed as a function to concat(...), instead of being
evaluated with the parenthesis operator(), i.e.,
gemm_prec_str<ADataType, BDataType>(). There are multiples instances of
this, I wonder what non-msvc compilers do here:

```
[composable_kernel] FAILED: [code=1] example/ck_tile/38_block_scale_gemm/CMakeFiles/tile_example_gemm_quant.dir/gemm_bquant_quantgrouped_mx_bf16bf8.cpp.obj
[composable_kernel] In file included from E:/TheRock/rocm-libraries/projects/composablekernel/example/ck_tile/38_block_scale_gemm/gemm_bquant_quantgrouped_mx_bf16bf8.cpp:4:
[composable_kernel] In file included from E:/TheRock/rocm-libraries/projects/composablekernel/example/ck_tile/38_block_scale_gemm\run_gemm_quant_example.inc:17:
[composable_kernel] In file included from E:/TheRock/rocm-libraries/projects/composablekernel/include\ck_tile/host.hpp:7:
[composable_kernel] E:/TheRock/rocm-libraries/projects/composablekernel/include\ck_tile/host/concat.hpp:119:21: error: implicit conversion between pointer-to-function and pointer-to-object is a Microsoft extension [-Werror,-Wmicrosoft-cast]
[composable_kernel]   119 |     ((oss << sep << rest), ...);
[composable_kernel]       |                     ^~~~
[composable_kernel] E:/TheRock/rocm-libraries/projects/composablekernel/include\ck_tile/ops/gemm_quant/kernel/gemm_quant_kernel.hpp:248:16: note: in instantiation of function template specialization 'ck_tile::concat<char, char[11], std::basic_string<char> (), std::basic_string<char>>' requested here
[composable_kernel]   248 |         return concat('_', "gemm_quant", gemm_prec_str<ADataType, BDataType>, GemmPipeline::GetName());
[composable_kernel]       |                ^
```

There are plenty of other places where we use gemm_prec_str with the
operator(), so I'm pretty sure these were just typos...but I'd like some
eyes on it.

3. There are 2 tests that fail to build on Windows, which I've excluded
from the build but will open bug tickets for:
    1.  gemm_weight_preshuffle
    2.  grouped_gemm_preshuffle

Here's a sample of the compiler error for these tests:

```
[composable_kernel] [16/19] Building HIP object test/ck_tile/grouped_gemm_preshuffle/CMakeFiles/test_ck_tile_grouped_gemm_preshuffle.dir/test_grouped_gemm_preshuffle.cpp.obj
[composable_kernel] FAILED: [code=1] test/ck_tile/grouped_gemm_preshuffle/CMakeFiles/test_ck_tile_grouped_gemm_preshuffle.dir/test_grouped_gemm_preshuffle.cpp.obj
[composable_kernel] E:\TheRock\build\core\clr\dist\lib\llvm\bin\clang++.exe  -DCK_ENABLE_BF16 -DCK_ENABLE_BF8 -DCK_ENABLE_FP16 -DCK_ENABLE_FP32 -DCK_ENABLE_FP64 -DCK_ENABLE_FP8 -DCK_ENABLE_INT8 -DCK_TILE_USE_WMMA=1 -DCK_TIME_KERNEL=1 -DCK_USE_OCP_FP8 -DCK_USE_WMMA -DCK_USE_WMMA_FP8 -DCK_USE_XDL -DDPP_KERNELS -DUSE_PROF_API=1 -D__HIP_PLATFORM_AMD__=1 -D__HIP_PLATFORM_HCC__=1 -D__HIP_ROCclr__=1 -IE:/TheRock/rocm-libraries/projects/composablekernel/profiler/include -IE:/TheRock/rocm-libraries/projects/composablekernel -IE:/TheRock/rocm-libraries/projects/composablekernel/library/include -IE:/TheRock/rocm-libraries/projects/composablekernel/include -IE:/TheRock/build/ml-libs/composable_kernel/build/include -IE:/TheRock/build/base/half/stage/include -isystem E:/TheRock/build/core/clr/dist/include -isystem E:/TheRock/build/ml-libs/composable_kernel/build/_deps/gtest-src/googletest/include -isystem E:/TheRock/build/ml-libs/composable_kernel/build/_deps/gtest-src/googletest -isystem E:/TheRock/build/ml-libs/composable_kernel/build/_deps/getopt-src/src -O3 -DNDEBUG -std=gnu++20 --offload-arch=gfx1200 -D_DLL -D_MT -Xclang --dependent-lib=msvcrt   -Wall -Wextra -Wcomment -Wendif-labels -Wformat -Winit-self -Wreturn-type -Wsequence-point -Wswitch -Wtrigraphs -Wundef -Wuninitialized -Wunreachable-code -Wunused -Wno-reserved-identifier -Wno-option-ignored -Wsign-compare -Wno-extra-semi-stmt -Wno-unused-template -Wno-missing-field-initializers -Wno-error=deprecated-declarations -Wall -Wextra -Wcomment -Wendif-labels -Wformat -Winit-self -Wreturn-type -Wsequence-point -Wswitch -Wtrigraphs -Wundef -Wuninitialized -Wunreachable-code -Wunused -Wno-reserved-identifier -Wno-option-ignored -Wsign-compare -Wno-extra-semi-stmt -Wno-unused-template -Weverything -Wno-c++98-compat -Wno-c++98-compat-pedantic -Wno-conversion -Wno-double-promotion -Wno-exit-time-destructors -Wno-extra-semi -Wno-float-conversion -Wno-gnu-anonymous-struct -Wno-gnu-zero-variadic-macro-arguments -Wno-missing-prototypes -Wno-nested-anon-types -Wno-padded -Wno-return-std-move-in-c++11 -Wno-shorten-64-to-32 -Wno-sign-conversion -Wno-unknown-warning-option -Wno-unused-command-line-argument -Wno-weak-vtables -Wno-covered-switch-default -Wno-unsafe-buffer-usage -Wno-unused-lambda-capture -Wno-nvcc-compat -Wno-c++20-compat -Wno-bit-int-extension -Wno-pass-failed -Wno-switch-default -Wno-unique-object-duplication -fbracket-depth=1024 -Wno-nrvo -Werror -Weverything -fcolor-diagnostics -Wno-c++20-extensions -Wno-global-constructors -Wno-undef -DCK_TILE_USE_OCP_FP8 -MD -MT test/ck_tile/grouped_gemm_preshuffle/CMakeFiles/test_ck_tile_grouped_gemm_preshuffle.dir/test_grouped_gemm_preshuffle.cpp.obj -MF test\ck_tile\grouped_gemm_preshuffle\CMakeFiles\test_ck_tile_grouped_gemm_preshuffle.dir\test_grouped_gemm_preshuffle.cpp.obj.d -o test/ck_tile/grouped_gemm_preshuffle/CMakeFiles/test_ck_tile_grouped_gemm_preshuffle.dir/test_grouped_gemm_preshuffle.cpp.obj -x hip -c E:/TheRock/rocm-libraries/projects/composablekernel/test/ck_tile/grouped_gemm_preshuffle/test_grouped_gemm_preshuffle.cpp
[composable_kernel] In file included from E:/TheRock/rocm-libraries/projects/composablekernel/test/ck_tile/grouped_gemm_preshuffle/test_grouped_gemm_preshuffle.cpp:8:
[composable_kernel] In file included from E:/TheRock/rocm-libraries/projects/composablekernel/include\ck_tile/host.hpp:6:
[composable_kernel] In file included from E:/TheRock/rocm-libraries/projects/composablekernel/include\ck_tile/host/check_err.hpp:16:
[composable_kernel] In file included from E:/TheRock/rocm-libraries/projects/composablekernel/include\ck_tile/core.hpp:89:
[composable_kernel] E:/TheRock/rocm-libraries/projects/composablekernel/include\ck_tile/core/utility/env.hpp:110:31: warning: 'getenv' is deprecated: This function or variable may be unsafe. Consider using _dupenv_s instead. To disable deprecation, use _CRT_SECURE_NO_WARNINGS. See online help for details. [-Wdeprecated-declarations]
[composable_kernel]   110 |         const char* vp = std::getenv(name);
[composable_kernel]       |                               ^
[composable_kernel] C:\Program Files (x86)\Windows Kits\10\include\10.0.22621.0\ucrt\stdlib.h:1183:20: note: 'getenv' has been explicitly marked deprecated here
[composable_kernel]  1183 |     _Check_return_ _CRT_INSECURE_DEPRECATE(_dupenv_s)
[composable_kernel]       |                    ^
[composable_kernel] C:\Program Files (x86)\Microsoft Visual Studio\2022\BuildTools\VC\Tools\MSVC\14.44.35207\include\vcruntime.h:368:55: note: expanded from macro '_CRT_INSECURE_DEPRECATE'
[composable_kernel]   368 |         #define _CRT_INSECURE_DEPRECATE(_Replacement) _CRT_DEPRECATE_TEXT(    \
[composable_kernel]       |                                                       ^
[composable_kernel] C:\Program Files (x86)\Microsoft Visual Studio\2022\BuildTools\VC\Tools\MSVC\14.44.35207\include\vcruntime.h:358:47: note: expanded from macro '_CRT_DEPRECATE_TEXT'
[composable_kernel]   358 | #define _CRT_DEPRECATE_TEXT(_Text) __declspec(deprecated(_Text))
[composable_kernel]       |                                               ^
[composable_kernel] clang++: error: clang frontend command failed due to signal (use -v to see invocation)
[composable_kernel] AMD clang version 22.0.0git (https://github.com/ROCm/llvm-project.git a2dc42b87c63e686377a69f09ea23aec7550babc+PATCHED:e4d5bf498b7b8626bb9716f1f5a5946d45025918)
[composable_kernel] Target: x86_64-pc-windows-msvc
[composable_kernel] Thread model: posix
[composable_kernel] InstalledDir: E:\TheRock\build\core\clr\dist\lib\llvm\bin
[composable_kernel] clang++: note: diagnostic msg: Error generating preprocessed source(s).
[composable_kernel] ninja: build stopped: subcommand failed.
[composable_kernel FAILED WITH CODE 1 in 238 seconds]
ninja: build stopped: subcommand failed.
```

## Test Plan

Wait for internal CI and make sure build compiles locally.

## Test Result

Waiting on CI

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-03 21:55:14 +00:00
Kiefer van Teutem
b042e1805a [rocm-libraries] ROCm/rocm-libraries#4804 (commit 832dd0e)
Add Tile Distribution Encoding Register Mapping debug utility
 for MFMA / WMMA unification work. (#4804)

## Motivation

This PR adds a small utility that allows you to use Tile Distribution
Encodings to directly map matrix elements to register locations and vice
versa. It can also print forward and backward layout mappings similar to
the Matrix Calculator utility. The utility is not meant for index
calculations in actual kernels, but rather as a debugging tool and
probably for automated verification of the policy structs in the new
WMMA / MFMA unification design.

## Technical Details

Tile Distribution Encodings are a core part of CK Tile which can define
the relationship between register and intrinsic matrix fragment
elements. They allow for any mapping based on unmerge and merge
transformations. Also, they allow for a special "Repeat" dimensions
which acts like an additional matrix dimension and allows for
replication of certain matrix elements. The new mapping utility can deal
with all aspects.

## Test Plan

Since this is a debug utility there is nothing to directly test, but
there is an example file that defines four different Tile Distribution
Encodings and prints their forward and backward mappings, along with
some extra parameters.

## Test Result

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-02 16:42:42 +00:00
Linjun-AMD
78ae3835a6 [rocm-libraries] ROCm/rocm-libraries#4313 (commit 080ac66)
[CK] Fix gptoss sink

## Motivation

This PR removes conditional logic for handling infinity values in the
sink mechanism across multiple FMHA pipeline implementations, defaulting
sink_size to 0 and adding a constraint in the kernel selection logic.

## Technical Details

Changes:

Removed __builtin_isinf_sign(sink_v) checks and conditional
initialization of LSE accumulators across 7 pipeline files
Added default initialization (= 0) for sink_size in 4 argument structs
Added F_sink == "f" constraint to kernel compatibility checking

## Test Plan

Local test

## Test Result

passed

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-02 01:54:46 +00:00
Andriy Roshchenko
b661eab573 [rocm-libraries] ROCm/rocm-libraries#4821 (commit 9456e0f)
[CK TILE] Refactor MX FLATMM example

Refactor the MX FLATMM example to support more pipelines
across different architectures. This work facilitates the NPI team
roadmap.
2026-02-27 23:21:39 +00:00
Aviral Goel
c8a8449eec [rocm-libraries] ROCm/rocm-libraries#4816 (commit 17ff961)
[CK] Add split-K support for ABQuantGrouped in
 block_scale_gemm (#4816)
MIME-Version: 1.0
Content-Type: text/plain; charset=UTF-8
Content-Transfer-Encoding: 8bit

## Changes

### Split-K support in `gemm_quant_kernel.hpp`

- **`SplitKBatchOffset`**: Added `aq_group_offset` and
`aq_k_split_offset` fields (mirroring the existing `bq_*` fields for B)
to track each split-K batch's position within the AQ scale tensor. For
`ABQuantGrouped`, both offsets are computed from `k_id * KRead` divided
by `AQuantGroupSize::kK`.

- **`MakeAQBlockWindow`**: Added an `aq_group_offset` parameter
(defaulting to 0 for non-split-K paths) so the AQ tensor view's K-group
dimension reflects only the remaining K-groups from the split-K offset,
consistent with how `MakeBQBlockWindow` handles the BQ tensor.

- **`RunGemm`**: Threads the `aq_k_split_offset` through to
`MakeAQBlockWindow` when in split-K mode.

### Constraints in `IsSupportedArgument()`

Four constraints gate split-K (`k_batch > 1`) for ABQuantGrouped:

1. **Mode check** — split-K is only allowed for `BQuantGrouped` (no
preshuffle) or `ABQuantGrouped` (no `APreshuffleQuant`). Any other quant
mode with `k_batch > 1` returns `false`.

2. **B quant group alignment** — `KRead` (per-batch K slice) must be
divisible by `BQuantGroupSize::kK`. Each batch must operate on complete
B quantization groups; a partial group would require splitting a scale
value across batches.

3. **A quant group alignment** (new, ABQuantGrouped only) — `KRead` must
also be divisible by `AQuantGroupSize::kK` for the same reason applied
to the AQ scale tensor.

4. **Minimum 2 K-tile iterations per batch** (new) — The
software-pipelined GEMM kernels (CompV3 family) prefetch one tile ahead,
so they require `per_batch_num_loop = KRead / KPerBlock >= 2`. When
`KRead == KPerBlock` (i.e. each batch is exactly one tile), the prefetch
reads into the next batch's memory region and produces incorrect
results. Configurations where `K == k_batch * KPerBlock` are therefore
rejected.

### Example update (`run_gemm_quant_example.inc`)

Updated the comment above the `IsSupportedArgument` call to document
that split-K is now supported for both `BQuantGrouped` (no preshuffle)
and `ABQuantGrouped` (no `APreshuffleQuant`).

## Unit Tests

Two new test files covering decode and prefill tile shapes across a
range of `k_batch` values (2–8), data types (FP8, BF8), and quantization
group sizes (1×1×128 and 1×128×128 for B):

- `test_gemm_quant_abquant_splitk_decode.cpp` — uses the decode tile
shape (M=16, N=64, K_tile=256)
- `test_gemm_quant_abquant_splitk_prefill.cpp` — uses the prefill tile
shape (M=128, N=128, K_tile=128)

Each test calls `run_test_with_validation` which runs the kernel and
checks correctness against a CPU reference. Configurations excluded from
tests are annotated with comments explaining which constraint they
violate (typically the `per_batch_num_loop >= 2` requirement).

## Prerequisites

This PR depends on #4429, which must be merged before this can be
merged.
2026-02-26 23:57:17 +00:00
Brock Hargreaves
c90a363589 [rocm-libraries] ROCm/rocm-libraries#4812 (commit bb5a4dd)
[CK] Use as_posix() instead of str() for paths in
 fmha_fwd_appendkv.py (#4812)

## Motivation

This is causing a failing PR for Windows:
https://github.com/ROCm/TheRock/pull/3382
```

[composable_kernel configure] -- Jenga kernel files to be generated: B:\build\ml-libs\composable_kernel\build\example\ck_tile\50_sparse_attn\fmha_jenga_fwd_d128_fp16_batch_b128x128x32x128x32x128_r4x1x1_r4x1x1_w32x32x16_w32x32x16_qr_async_vr_psddv_nlogits_nbias_nmask_nskip_nsquant_ntrload.cpp;B:\build\ml-libs\composable_kernel\build\example\ck_tile\50_sparse_attn\fmha_jenga_fwd_d128_fp16_batch_b128x128x32x128x32x128_r4x1x1_r4x1x1_w32x32x16_w32x32x16_qr_async_vr_psskddv_nlogits_nbias_nmask_nskip_nsquant_ntrload.cpp;B:\build\ml-libs\composable_kernel\build\example\ck_tile\50_sparse_attn\fmha_jenga_fwd_d128_fp16_batch_b128x128x32x128x32x128_r4x1x1_r4x1x1_w32x32x16_w32x32x16_qr_async_vr_psddv_nlogits_nbias_mask_nskip_nsquant_ntrload.cpp;B:\build\ml-libs\composable_kernel\build\example\ck_tile\50_sparse_attn\fmha_jenga_fwd_d128_fp16_batch_b128x128x32x128x32x128_r4x1x1_r4x1x1_w32x32x16_w32x32x16_qr_async_vr_psskddv_nlogits_nbias_mask_nskip_nsquant_ntrload.cpp;B:\build\ml-libs\composable_kernel\build\example\ck_tile\50_sparse_attn\fmha_jenga_fwd_d128_bf16_batch_b128x128x32x128x32x128_r4x1x1_r4x1x1_w32x32x16_w32x32x16_qr_async_vr_psddv_nlogits_nbias_nmask_nskip_nsquant_ntrload.cpp;B:\build\ml-libs\composable_kernel\build\example\ck_tile\50_sparse_attn\fmha_jenga_fwd_d128_bf16_batch_b128x128x32x128x32x128_r4x1x1_r4x1x1_w32x32x16_w32x32x16_qr_async_vr_psskddv_nlogits_nbias_nmask_nskip_nsquant_ntrload.cpp;B:\build\ml-libs\composable_kernel\build\example\ck_tile\50_sparse_attn\fmha_jenga_fwd_d128_bf16_batch_b128x128x32x128x32x128_r4x1x1_r4x1x1_w32x32x16_w32x32x16_qr_async_vr_psddv_nlogits_nbias_mask_nskip_nsquant_ntrload.cpp;B:\build\ml-libs\composable_kernel\build\example\ck_tile\50_sparse_attn\fmha_jenga_fwd_d128_bf16_batch_b128x128x32x128x32x128_r4x1x1_r4x1x1_w32x32x16_w32x32x16_qr_async_vr_psskddv_nlogits_nbias_mask_nskip_nsquant_ntrload.cpp;B:\build\ml-libs\composable_kernel\build\example\ck_tile\50_sparse_attn\fmha_jenga_fwd_api.cpp
[composable_kernel configure] CMake Error at example/ck_tile/50_sparse_attn/CMakeLists.txt:61 (add_library):
[composable_kernel configure]   Syntax error in cmake code when parsing string
[composable_kernel configure]
[composable_kernel configure]     B:\build\ml-libs\composable_kernel\build\example\ck_tile\50_sparse_attn\fmha_jenga_fwd_d128_fp16_batch_b128x128x32x128x32x128_r4x1x1_r4x1x1_w32x32x16_w32x32x16_qr_async_vr_psddv_nlogits_nbias_nmask_nskip_nsquant_ntrload.cpp
[composable_kernel configure]
[composable_kernel configure]   Invalid character escape '\b'.
```

## Technical Details

The file:
[fmha_fwd_appendkv.py](https://github.com/ROCm/rocm-libraries/compare/users/brockhargreaves-amd/ck/fix-windows-cmake-path-problem?expand=1#diff-bef22bf9ba21eb93c725493ecc7edcb6f2a8f0a9a173dcfca6bda7a9f4eced78)
writes a bunch of paths to a text file which is later parsed by cmake.
When passing a pathlib.Path to str(), str() converts to a native path,
in this case / to \\ on Windows which confuses cmake. In this case we
need to write paths with forward slashes and then pass those onward to
cmake.

## Test Plan

1. Ensure this doesn't impact existing CI.
2. Ensure compilation of Windows pass locally.

## Test Result

1. Passes existing CI
2. This fixes the compilation error locally.

## Submission Checklist

- [ x ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-02-25 16:13:56 +00:00
Brock Hargreaves
abf13bdec1 [rocm-libraries] ROCm/rocm-libraries#4819 (commit b995a0b)
[CK] Fix windows build issues

## Motivation

Full build on Windows is currently broken due to compiler errors, this
PR should help fix that. This is also holding up the following PR in the
TheRock: https://github.com/ROCm/TheRock/pull/3382

## Technical Details

1. I don't see a good reason to be nesting a windows include inside the
ck_tile namespace. It was causing compiler errors too: Windows.h comes
with min and max, which was conflicting with ck_tile::min and
ck_tile::max, so I moved it out. I also defined NOMINMAX to prevent this
inclusion in the future.
2. The TRUE/FALSE macros are already used by Windows.h, which causes an
error. So I've opted for True/False. You can see this pattern in other
rocm-libraries.
3. The M_PI macro isn't available, at least in the WIN32_LEAN_AND_MEAN
context, from \<cmath\> on Windows. We'll be able to use
std::numbers::v_pi\<float\> when we have C++20 support.
4. There was a missing \<chrono\> include.

## Test Plan

Test locally and make sure this doesn't impact existing CI.

## Test Result

Compiles locally and passes existing ci.

## Submission Checklist

- [ x ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-02-25 16:13:13 +00:00
Enrico Degregori
4c626aeaa6 [rocm-libraries] ROCm/rocm-libraries#4267 (commit 3c5d95e)
[CK_TILE] Extend support of mix precision microscaling BQuant
 (#4267)
MIME-Version: 1.0
Content-Type: text/plain; charset=UTF-8
Content-Transfer-Encoding: 8bit

## Proposed changes

Supported types combinations using BQuant=e8m0:
 - A=bf16
 - B=bf16,bf8,fp4

Summary:
- remove usage of `pk_fp4_raw_t`: consistent with other implementations
and avoid taking into account of the packed size explicitly. In general,
the raw type should not be used because CK Tile internally takes care of
the PackedSize, so using the raw type adds unnecessary complexity to the
implementation
- handle microscaling by checking for `e8m0` type for BQuant (previous
implementation was inconsistent)
 - add support for scaling instructions in `DequantPack8`
 - mx pipeline:
   - extend existing pipeline to support different B types
- add support to scale and cast before writing to LDS or after reading
from LDS (this can be defined in the `Problem` by the user)
 - block gemm:
   - mx pipeline is now using block gemm BQuant
- block gemm BQuant can now load from LDS and apply scale and then call
block gemm universal operator. This adds new functionalities and remove
code duplication
 - warp gemm:
- add case to support 128bit ds_read/write for both A and B when A=16bit
and B=8bit
- add examples and tests: note that some tests for bf16/fp4 already
existed but were removed during previous tests refactoring. I added them
again and other relevant tests for new types combinations

## Checklist

Please put an `x` into the boxes that apply. You can also fill these out
after creating the PR. If you're not sure, please don't hesitate to ask.

- [ ] I have added tests relevant to the introduced functionality, and
the unit tests are passing locally
- [ ] I have added the test to REGRESSION_TESTS list defined at the top
of CMakeLists.txt in tests/CMakeLists.txt, **IF** the test takes more
than 30 seconds to run.
- [ ] I have added inline documentation which enables the maintainers
with understanding the motivation
- [ ] I have removed the stale documentation which is no longer relevant
after this pull request
- [ ] (If this change is user-facing) I have added release notes which
provide the end users with a brief summary of the improvement from this
pull request
- [ ] I have run `clang-format` on all changed files
- [ ] Any dependent changes have been merged

## Discussion

If this is a relatively large or complex change, feel free to start a
discussion by explaining why you chose the solution you did and what
alternatives you considered
2026-02-24 17:57:02 +00:00
Emily Martins
fc3180120e [rocm-libraries] ROCm/rocm-libraries#4756 (commit 79bc2ca)
[CK_TILE] Update Stream-K Reduction Strategy Enum

## Motivation

Currently, Stream-K has 3 reduction options: 1) atomics, 2) The
reduction described in the Stream-K paper, and 3) a tree reduction. The
reduction strategy described in the original Stream-K paper has the
starting workgroup of each tile sequentially accumulating partial
results of other contributing workgroups in the tile, which requires a
linear number of steps. Hence, for clarity, this works updates the
naming of the `StreamKReductionStrategy` enum members to better describe
the existing reduction strategy options.

## Technical Details

Prior to this change, the enum is as follows:
```cpp
enum StreamKReductionStrategy : uint32_t
{
    Atomic        = 0u,
    Reduction     = 1u,
    TreeReduction = 2u
};
```
But, the distinction between `Reduction` and `TreeReduction` is not very
clear and has some redundancy.
Hence, the updated enum is as follows:
```cpp
enum StreamKReductionStrategy : uint32_t
{
    Atomic = 0u,
    Linear = 1u,
    Tree   = 2u
};
```
All references to `StreamKReductionStrategy` were updated to reflect
this change.
## Test Plan

No new functionality was added, so no new tests were added; I just
validated existing tests and examples.

## Test Result

All tests passed locally.

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-02-24 06:41:15 +00:00
Anton Gorenko
0d92fffedb [rocm-libraries] ROCm/rocm-libraries#4584 (commit 42efd1d)
[CK_TILE][FMHA] Support gfx11

## Motivation

Add support of gfx11 architectures (RDNA3) to FMHA.

## Technical Details

Distributions (matrix elements to lane registers mapping) of gfx11 WMMA
are completely different from distributions of gfx9 MFMA and gfx12 WMMA.
There are two cases in FMHA where this difference matters:
* usage of results (matrix C) of one GEMM as input (matrix A) of another
GEMM.
* random number generation for dropout (implementation for gfx9 MFMA,
gfx12 WMMA and host validation produce the same results).

Both cases are solved by a special remapping implemented using
`__builtin_amdgcn_permlanex16` and `__builtin_amdgcn_perm`.

Additional changes:
* FMHA tests are now build and run only for those types for which
instances exist (gfx11 supports only fp16 and bf16).
* Two fixes for uninitialized values (`mask.sink` and
`do_fp8_static_quant`): they may contain garbage resulting in incorrect
dispatching logic, sometimes tests report that there are no instance
available for current parameters.
* Small fix to remove expcnt(0) from s_waitcnt instruction on gfx11 when
they are not requested (i.e. every time), likely has no effect on
performance but makes disassembly a bit clearer.

## Test Plan

```
ninja test_ck_tile_fmha

bin/test_ck_tile_fmha_fwd_fp16
bin/test_ck_tile_fmha_fwd_bf16
bin/test_ck_tile_fmha_bwd_fp16
bin/test_ck_tile_fmha_bwd_bf16
```

## Test Result

All tests must pass (some tests may be skipped).

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-02-21 01:15:57 +00:00
Thomas Ning
5cb8109535 [rocm-libraries] ROCm/rocm-libraries#4640 (commit 37b8c81)
Fix the Composable Kernel CI and versions incompatibility
 (#4640)

## Motivation

This PR has 4 patches:
1. Fix the CI error of grouped gemm.
2. Fix the incompatibility of old linux version.
3. Fix the potential errors of flatmm.
4. Address the previous comments of abquant eight warps pipeline
solution.
2026-02-18 15:00:26 +00:00
Cong Ma
d06f35027a [rocm-libraries] ROCm/rocm-libraries#4354 (commit d41f08a)
[CK TILE] fix numerical errors of preshuffle_b

This pull request introduces several improvements and fixes related to
quantized grouped GEMM (General Matrix Multiply) pipelines and their
supporting utilities.

# The numerical issue

## Steps to reproduce
```bash
Run
./bin/tile_example_gemm_weight_preshuffle -prec=fp8
./bin/tile_example_gemm_weight_preshuffle -prec=int4
```

# Solution
The main changes address type correctness, improve data layout and
shuffling logic, and expand test coverage to better validate different
GEMM configurations.

**Key changes include:**

### Data layout and shuffling logic

* Refactored the logic in `shuffle_b_permuteN` to use `constexpr`
variables for `KLane` and `ItemsPerAccess`, simplifying tile view
construction and correcting the permutation order for improved
efficiency and correctness (`tensor_shuffle_utils.hpp`).
* Fixed the calculation of `KLaneBytes` in weight preshuffle pipeline
policies to account for internal data type conversion (e.g., from
`pk_int4_t` to `fp8`), ensuring accurate memory access and alignment in
quantized GEMM policies (`wp_pipeline_agmem_bgmem_creg_base_policy.hpp`,
`gemm_wp_abquant_pipeline_ag_bg_cr_base_policy.hpp`).
[[1]](diffhunk://#diff-93f16cd76e6e24404777e682a5ac8e039913ddd6a438c7efd61fdda42276e4efL274-R275)
[[2]](diffhunk://#diff-9c3d0fc3c014feed435bfd93ba1f8f9fb3e054dcc322deada3addf70bee5a58cL100-R105)

### Test infrastructure enhancements

* Unit tests did not catch this issue since there were no tests for fp8.
Added new configuration structs (`config_mn_16x16`, `config_mn_32x32`)
to support additional GEMM tile shapes and updated tests to run with
these configurations for broader coverage
(`test_gemm_pipeline_util.hpp`).
[[1]](diffhunk://#diff-5a5962b2c4aa7f6a87d1d6201ad383135e30df13b42654e997d870d57420d5b8R86-R103)
[[2]](diffhunk://#diff-5a5962b2c4aa7f6a87d1d6201ad383135e30df13b42654e997d870d57420d5b8L255-R269)

Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
2026-02-11 07:05:46 +00:00
Erwin Terpstra
b41bfece83 [rocm-libraries] ROCm/rocm-libraries#4268 (commit d2fca53)
[CK_TILE]: PreshuffleB + PreshuffleBQuant for ABQuant
 pipeline (#4268)
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## Proposed changes

Implement BQuantPreshuffle option for the ABQuant PreshuffleB pipeline.

## Checklist

Please put an `x` into the boxes that apply. You can also fill these out
after creating the PR. If you're not sure, please don't hesitate to ask.

- [X] I have added tests relevant to the introduced functionality, and
the unit tests are passing locally
- [X] I have added the test to REGRESSION_TESTS list defined at the top
of CMakeLists.txt in tests/CMakeLists.txt, **IF** the test takes more
than 30 seconds to run.
- [X] I have added inline documentation which enables the maintainers
with understanding the motivation
- [X] I have removed the stale documentation which is no longer relevant
after this pull request
- [ ] (If this change is user-facing) I have added release notes which
provide the end users with a brief summary of the improvement from this
pull request
- [X] I have run `clang-format` on all changed files
- [X] Any dependent changes have been merged
2026-02-10 13:59:03 +00:00
Yi DING
d5acfd8d52 [rocm-libraries] ROCm/rocm-libraries#4451 (commit 091bf0f)
[CK_TILE] Blockscale Gemm Fix Multi-Arch Compilation

## Motivation
This PR updates CK_TILE blockscale GEMM-quant kernels and launch helpers
to compile across multiple GPU architectures by introducing compile-time
availability gating and a new attribute tag mechanism for kernel
symbol/attribute specialization.

## Technical Details
- Add an architecture-guarded `kIsAvailable` flag to the gfx950 pipeline
and propagate availability handling into `QuantGemmKernel`.
- Extend `make_kernel`/`kentry` to accept an `Attr` tag enabling
per-kernel compile-time attributes (e.g., `no-packed-fp32-ops`) and
unique symbols.
- Update the blockscale GEMM quant example to pass kernel attributes and
adjust gfx950 gating.

## Test Plan
- CI
- Local test: `cmake .. --preset dev -DGPU_TARGETS='gfx942;gfx950'
-GNinja && ninja tile_example_gemm_quant`
- Local test with ROCm/aiter#1954
## Test Result

<!-- Briefly summarize test outcomes. -->

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-02-10 12:42:19 +00:00
Chinmay Dattanand Kuchinad
0cafa68b6f [rocm-libraries] ROCm/rocm-libraries#4292 (commit b7f1367)
Enable group mode (varlen) kernel generation for PyTorch
 integration (#4292)
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## Proposed changes

This PR enables group mode (variable-length attention) kernel generation
for PyTorch's CK SDPA backend.

## Checklist

Please put an `x` into the boxes that apply. You can also fill these out
after creating the PR. If you're not sure, please don't hesitate to ask.

- [X] I have added tests relevant to the introduced functionality, and
the unit tests are passing locally
- [ ] I have added the test to REGRESSION_TESTS list defined at the top
of CMakeLists.txt in tests/CMakeLists.txt, **IF** the test takes more
than 30 seconds to run.
- [ ] I have added inline documentation which enables the maintainers
with understanding the motivation
- [ ] I have removed the stale documentation which is no longer relevant
after this pull request
- [ ] (If this change is user-facing) I have added release notes which
provide the end users with a brief summary of the improvement from this
pull request
- [X] I have run `clang-format` on all changed files
- [ ] Any dependent changes have been merged

## Discussion

The change is minimal (single line deletion) but enables a significant
feature: variable-length attention support for ROCm users via PyTorch's
torch.nn.attention.varlen API.
2026-02-09 20:59:55 +00:00
kensclin
5b3e527c88 [rocm-libraries] ROCm/rocm-libraries#4280 (commit b7de1e1)
[CK_TILE] Add blockscale GEMM support for EightWarps on
 gfx950 (#4280)
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## Proposed changes

gemm blockscale eightwarps support

## Checklist

Please put an `x` into the boxes that apply. You can also fill these out
after creating the PR. If you're not sure, please don't hesitate to ask.

- [ ] I have added tests relevant to the introduced functionality, and
the unit tests are passing locally
- [ ] I have added the test to REGRESSION_TESTS list defined at the top
of CMakeLists.txt in tests/CMakeLists.txt, **IF** the test takes more
than 30 seconds to run.
- [ ] I have added inline documentation which enables the maintainers
with understanding the motivation
- [ ] I have removed the stale documentation which is no longer relevant
after this pull request
- [ ] (If this change is user-facing) I have added release notes which
provide the end users with a brief summary of the improvement from this
pull request
- [x] I have run `clang-format` on all changed files
- [x] Any dependent changes have been merged

## Discussion

If this is a relatively large or complex change, feel free to start a
discussion by explaining why you chose the solution you did and what
alternatives you considered
2026-02-09 03:55:52 +00:00