Commit Graph

158 Commits

Author SHA1 Message Date
Qianfeng Zhang
e7e6ebc91c Update to GetNumPrefetchV() 2025-12-22 15:35:38 +00:00
Qianfeng Zhang
b77fdbf304 Move the loading of k_file for next iteration into the Gemm1 loop (non whole_k_prefetch path) 2025-12-22 15:34:10 +00:00
Qianfeng Zhang
57cf989f63 Update to only pre-load one v_tile during Gemm0 loop 2025-12-22 08:47:09 +00:00
Qianfeng Zhang
db5c12db89 Update to the non-whole-k-prefetch path in the whoke_k_prefetch pipeline 2025-12-21 15:13:14 +00:00
Qianfeng Zhang
1ef76a62ea Fix the static_assert expression in the pipeline 2025-12-21 12:14:39 +00:00
Qianfeng Zhang
3f6d26e9a7 Load Q directly from global memory to registers for BlockGemm 2025-12-20 13:25:36 +00:00
Qianfeng Zhang
57abd10b95 Using is_using_trload_v to check the kUseTrLoad from pipeline 2025-12-20 10:23:30 +00:00
Qianfeng Zhang
eb598a9d1e Add qr_ks_vs_whole_k_prefetch_trload pipeline 2025-12-19 15:54:21 +00:00
Qianfeng Zhang
384f4708a1 Add support of loading QK tiles of hdim96 without padding to hdim128 2025-12-17 16:39:15 +00:00
Qianfeng Zhang
d281c519f3 Adjust in GetNumPrefetchV() 2025-12-15 15:02:15 +00:00
Qianfeng Zhang
370d386427 Remove replicated codes in the pipeline 2025-12-15 10:38:15 +00:00
Qianfeng Zhang
409ec3b56e Fix move_tile_window(k_dram_window, ..) step in the pipeline 2025-12-15 09:54:49 +00:00
Qianfeng Zhang
c3d3487ca4 Load Q through Lds 2025-12-14 15:46:37 +00:00
Qianfeng Zhang
12c88731c6 Separate kN0Sub from kK0 to be used for flexible tile tuning for whole_k_prefetch pipeline 2025-12-11 08:41:16 +00:00
Qianfeng Zhang
2ea8d8313c Using explicit vgpr-saved partition_index with store_tile(lds_window, ...) 2025-12-08 04:54:22 +00:00
Qianfeng Zhang
044f554bf7 Refine the interleaving in the loop of Gemm0 2025-12-07 14:13:16 +00:00
Qianfeng Zhang
25521a7e06 Switch the codes based on the iteration index (first/intermediate/last) 2025-12-05 15:58:33 +00:00
Qianfeng Zhang
c32949b285 Change in GetKVBlockGemm to let gemm1 to use WarpTile-16x16x16/32x32x8 on mi350 2025-12-05 02:04:27 +00:00
Qianfeng Zhang
98f9b4a47b Add prefetching whole next iteration K path in the pipeline 2025-12-04 15:38:16 +00:00
Qianfeng Zhang
5fada1ce99 Initial re-implementation of pipeline qr_ks_vs_whole_k_prefetch in looping Gemm0 along n0 dimension 2025-12-04 09:09:47 +00:00
Aviral Goel
de6466481f chore(copyright): update copyright header for include directory (#3293) 2025-11-26 11:00:05 -07:00
rocking
229d43ea0c Fix batch prefill compile fail in aiter (#3279)
* Fix batch prefill aiter compile fail

* Fix compile error
2025-11-25 09:46:32 +08:00
Qianfeng
81042ea574 Fix a bug for qr_ks_vs_async_trload pipeline (#3271) 2025-11-24 21:31:48 +08:00
rocking
5948dbffe4 Support fp8 dynamic quantization for fmha (#3206)
* Support qscale for dynamic quant, remove static quant

* Support hdim=256

* Remove bias test case for fp8

---------

Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
Co-authored-by: asleepzzz <hanwen.chang@amd.com>
2025-11-24 16:28:25 +08:00
Yi DING
8b284a63a4 [CK_TILE] Refine FP32 => FP16/BF16 Conversion (#3215)
* [CK_TILE] Refine FP32 => FP16/BF16 Conversion

* Thank you Copilot

* Rename fix

* Fix example

* Fix accu checking

* Fix

* Fix
2025-11-20 10:50:26 -08:00
asleepzzz
5adaa201ed Revert "Add attn sink (#2892)" (#3250)
This reverts commit 9fa4e8d5ab.
2025-11-20 07:55:15 -08:00
Linjun-AMD
9fa4e8d5ab Add attn sink (#2892)
* enable attn sink

Signed-off-by: JL-underdog <Jun.Lin@amd.com>

* update attn_sink script

Signed-off-by: JL-underdog <Jun.Lin@amd.com>

* fix some error

Signed-off-by: JL-underdog <Jun.Lin@amd.com>

* clang-format

Signed-off-by: JL-underdog <Jun.Lin@amd.com>

* update fmha_bwd mask

Signed-off-by: JL-underdog <Jun.Lin@amd.com>

* update fmha_bwd_kernel'mask

Signed-off-by: JL-underdog <Jun.Lin@amd.com>

* update block_fmha_pipeline_qr_ks_vs.hpp

Signed-off-by: JL-underdog <Jun.Lin@amd.com>

* fix ci error

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* fix format error

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* Update block_fmha_bwd_pipeline_default_policy.hpp

* Update fmha_fwd_runner.hpp

* Update block_fmha_batch_prefill_pipeline_qr_ks_vs_async.hpp

* Update fmha_fwd_runner.hpp

* Update fmha_fwd_runner.hpp

* Update fmha_fwd_runner.hpp

* update splitkv_pipline

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* update splitkv&pagedkv pipeline

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* add sink test

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* update attn_sink result log

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* update smoke_test_fwd_sink.sh

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* update test file

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* update test script

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* Update block_fmha_fwd_splitkv_pipeline_qr_ks_vs.hpp

* use constexpr kHasSink for sink in fmha pipeline

Signed-off-by: Linjun-AMD <Jun.Lin@amd.com>

* update by pre-commit

Signed-off-by: Linjun-AMD <Jun.Lin@amd.com>

* Update include/ck_tile/ops/fmha/pipeline/block_fmha_pipeline_qr_ks_vs.hpp

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* Update include/ck_tile/ops/fmha/pipeline/block_fmha_pipeline_qr_ks_vs.hpp

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* Update include/ck_tile/ops/fmha/kernel/fmha_fwd_pagedkv_kernel.hpp

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* Update fmha_fwd.py

* Update example/ck_tile/01_fmha/codegen/ops/fmha_fwd_splitkv.py

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* Update include/ck_tile/ops/fmha/pipeline/block_fmha_fwd_splitkv_pipeline_nwarp_sshuffle_qr_ks_vs.hpp

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* Remove causal mask setting logic from mask.hpp

Removed the mask setting logic for causal masks.

* fix ci error that some usage of lamada not support in c++17

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* Update remod.py

* add smoke sink test

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* Update fmha_pagedkv_prefill.py

* Update FmhaFwdPipeline parameters in fmha_fwd.py

* update block_fmha_pipeline_qr_ks_vs_async_trload.hpp

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* fix c++17 unsupprot error

Signed-off-by: LJ-underdog <Jun.Lin@amd.com>

* Update block_fmha_fwd_pagedkv_pipeline_qr_ks_vs.hpp

* Fix formatting of sink_seq_end assignment

* Fix indentation for sink_seq_end assignment

* Update block_fmha_fwd_pagedkv_pipeline_qr_ks_vs.hpp

---------

Signed-off-by: JL-underdog <Jun.Lin@amd.com>
Signed-off-by: LJ-underdog <Jun.Lin@amd.com>
Signed-off-by: Linjun-AMD <Jun.Lin@amd.com>
Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>
2025-11-20 19:24:05 +08:00
Anton Gorenko
d7b3197869 [CK_TILE] FMHA Reduce register spilling in fwd with dropout (workaround for CI failures with clang-22) (#3221)
* Use vectorized stores for dropout randvals

With no kPadSeqLenK the kernel uses 2 buffer_store_dwordx2 instead of
16 buffer_store_byte. This requires less registers and reduces spilling.

* Calculate dropout randvals for storing and applying only once

Even though it may add a small overhead when storing is not required,
it uses significantly less registers and hence no spilling.
2025-11-19 10:40:12 +05:00
Max Podkorytov
04efd282cf [CK-tile] unhardcode the number of LDS banks from universal gemm policy (#3130)
Fixes LDS bank conflicts on gfx950 for universal gemm v3 pipeline

Replaces hardcoded LDS layer calculations with dynamic computation using the new architecture helpers

Adds architecture-specific helper function get_n_lds_banks()

Changes function attributes from CK_TILE_HOST_DEVICE to CK_TILE_DEVICE in universal gemm policy
2025-10-31 11:58:11 -07:00
Anton Gorenko
e9596228ff Fix synchronization issue in fwd qr pipeline with dropout (#3135)
BlockFmhaPipelineQRKSVS reuses LDS for K and dropout so there must be
block_sync_lds between loading k_lds_window by gemm_0 and storing
dropout randval.
2025-10-31 09:44:52 -07:00
Anton Gorenko
1e77695fe8 [CK_TILE] Support WMMA (gfx12) in FMHA (#2528)
* Pass hdim to tile_example_fmha_fwd in fp8 tests

* Add WMMA support to fwd FMHA pipelines

* Tune tile sizes a bit for less spilling

fp16 256 is still quite slow

* Fix Q grad tile distribution for warp size = 32 and hdim >= 256

With AccDataType = float and warp size = 32, K0 becomes 0, K repeat is required to correcty distribute the tile.

* Use code based on BlockDropout in BlockDropoutBwd

* Fix split KV combine kernel for gfx12 (warp size 32) and make it more universal

* Fix LSE LDS tensor descriptors: kMaxSplits and kM0 were swapped, it worked on gfx9
  because they both equal to 8 while on gfx12 they are 8 and 4;
* Fix Oacc LDS tensor descriptor: it was transposed even though its shape=[4 * kM0, kN1],
  it worked on gfx9 because 4 * kM == kN1 == 32;
* Removing these hidden dependecies allows to support:
    * any number of warps (power-of-2), not only 4;
    * kN1 = 16, not only 32;
    * any number of splits;

* Rename ids like o_acc_4 and Oacc4 to eliminate confusion: kNumWarps doesn't have to be 4 now

* Replace hard-coded kN1 in dispatch code with the requested tile size

* Add gfx12-specific tile sizes for split KV

* Pass GPU architecture to kernel generation scripts

This is still a temporary solution.

* Build and run FMHA CI tests for gfx12

* Fix issue after merging

* Fix bwd tile sizes

The current pipelines always read only one tile K and V tile, this
requires bk0 == bhdq and bk2 == bhdv (kK0 == kQKHeaddim and
kK2 == kVHeaddim).

* Use hardware f32->f8 on gfx12, remove v_perm

__builtin_amdgcn_perm is not needed because
__builtin_amdgcn_cvt_pk_fp8_f32 allows to specify which word (16 bit of
 32-bit dword) is used to store results (two f8 values).

* Update changelog

* Add WMMA support to pagedkv

* Fix scripts after rebasing

* Support 16x16 (MFMA, WMMA) and 32x32 (MFMA) tiles in fwd and bwd BlockDropout

Add comments with dropout implementation details

Fix performance regression of fwd+dropout

    * Remove some usage of type punning (reinterpret_cast with ref or ptr) in Philox;
    * "scalarize" seed and offset, they may come either from kernel args or from device memory
      (presumably loaded with vector loads).

    These changes help the compiler to procude more optimal code and reduce register spilling.

Use WarpGemmDispatcher instead of explicit WarpGemmMfma... to get  CWarpDstrEncoding

Use code based on BlockDropout in BlockDropoutBwd

Refactor BlockDropout (fwd)

Implement BlockDropout (fwd) for WMMA

    Originally BlockDropout only supported 32x32 tiles (IsWG32 = true),
    this version supports 16x16 tiles.
    If MPerBlock > MWarp * 16, it can generate numbers for two 16x16 tiles, similarly
    to BlockDropoutBwd.

Implement BlockDropoutBwd for WMMA

Remove MakeRandValLds* functions unused in BlockDropoutBwd

Remove unused Run overload from BlockDropoutBwd

* Fix regression with philox seed and offset when they exceed 32-bit int

__builtin_amdgcn_readfirstlane works with 32-bit values, seed and offset
are 64-bit so they get truncated.

* Fix names after cherry-picking

* Fix selection of a fallback tile based on bm0

The assumption that the largest bm0 == 128 is not always true for
current fp32 tiles.

* Do not use filters related to qr_async_trload

They disable tiles/pipelines which are valid for gfx12.

* Use different dstr encoding when C is transposed

* Do not call GetQKBlockGemm (and hence WarpGemmDispatcher) in host code

Some WarpGemmDispatcher instantiations are defined only
for specific archs and undefined on host.
Calculations related to sched barriers are moved from Pipeline's public
fields into pipeline's operator().

* Fix incorrect name WarpGemmMfmaFp8Fp8F32M32N32K16SwizzleBTransposedCDistribution

Correct name is WarpGemmMfmaFp8Fp8F32M32N32K32SwizzleBTransposedCDistribution
because it's 32x32x16 with IterateK = 2 so K = 32, also all tiles used
in codegen scripts are 32, 32, 32.

* Generalize usages of WarpGemmDispatcher for MFMA and WMMA

WarpGemmMfmaFp8Fp8F32M32N32K32SwizzleBTransposedCDistribution is still
used explicitly becaus of swizzle factor = 4.

* Mark has_load_tr as maybe_unused

There are no transpose loading for RDNA.

* Remove CK_TILE_USE_MFMA/WMMA from fmha-related code

* Detect BlockSize on host based on warp size of the current device

If kBlockSize == kNumWarps * get_warp_size(), the kernel is launched with
kBlockSize / 2 because on host get_warp_size() == 64 always.

* Fix calculation of grid size for combine kernel with warp size = 32

* Add missing includes and header

* Support multiple archs in one binary for fwd

* Support multiple archs in one binary for fwd_splitkv, fwd_appendkv, pagedkv_prefill

* Support multiple archs in one binary for bwd

* trload kernels are compiled only for gfx950;
* instances with padding are checked after instances without padding so
  they can be used as fallbacks (similarly to fwd);

* Extract common code from register_traits

* Revert "Fix regression with philox seed and offset when they exceed 32-bit int"

To simplify merging , the proper fix is in develop already.

* Support new numerical d paddings in trait ordering checks

* Build fp32 tests only on gfx9

* Do not use hardcoded M0 = 64 for dot bwd kernel

* Use textwrap.indent from standard library

* Make fp8 pipelines on gfx12 consistent with gfx9

* Update tests for current pipelines

* Make ninja check more responsive in CI

ninja buffers output so this job looks hanging.

* Support fp8fp32 by limiting O vector size

The fp32 output type requires storing 8 * sizeof(float) = 32 bytes,
which is not implemented (here 8 is the number of C values per lane for
v_wmma_f32_16x16x16...).

* Remove unused cmake options

* Unify including  amd_buffer_addressing.hpp/_builtins.hpp

* Temporarily use amd_buffer_addressing.hpp on >=gfx10

amd_buffer_addressing_builtins.hpp uses inline asm for loads/stores
which is not compatible with >=gfx10:
 * 1 scalar for exec masks instead of 2,
 * gfx12 uses different instruction names etc.

* Update asm in bf16 conversions to work with warp 32

* Do not generate splitkv/appendkv with vlayout=col for consistency with fwd

* Add arch tags to kernels/host funcs, compile for each arch separately

* Add kM0 to fmha_bwd_dot_do_o kernel name to match filename

* Add workaround for miscompilation of bwd with padded hdim

SWDEV-559729: v_wmma instructions can be incorrectly placed in divergent
branches used to store padded tensors (when some lanes are inactive due
to padding). Inline asm with dummy dependencies on VGPRs of the tensors
prevents the compiler doing this.

* Fix add_gtest_executable for absolute paths

Some tests (like gemm_tile_engine) pass absolute paths to source files.
In CI the branch name is a part of the root dir, and if the branch name
contains "wmma", "xdl" etc., files can be incorrectly excluded.

* Run only hdim 128 smoke tests for fp8fp32

There are no instances for hdim 64 and 256.

* Format py with ruff to simplify merging develop

* Fix incorrect var name

* Codegen for gfx9,gfx950 when --targets is not specified

Aiter and Pytorch require changes for passing their targets to the codegen scripts.
With this temporary solution the files are generated but not all of them
have to be really built (depending on the used --offload-arch=).

* Combine arch-related values into ArchTrait

This more centralized approach removes duplication of various formatting templates.

* Try a workaround for Jenkins error "groovyjarjarasm.asm.MethodTooLargeException: Method too large"

Some code is extracted into a function.
2025-10-29 13:31:08 -07:00
Jeff Huang
7c6430eca0 [CK_TILE] fmha: Add query padding support to backward pass (#3097)
* [CK_TILE] fmha: Add query padding support to backward pass

Introduces support for query sequence padding (q_padding) in the FMHA backward pass kernels.
- Passing `seqlen_q_ptr` to the backward kernels to distinguish logical from physical sequence lengths.
- Updating `OGradDotO`, `ConvertQGrad`, and `DQDKDV` kernels to respect logical lengths and handle zero-length sequences.
- Aligning LSE indexing in the forward kernel with the padded layout for consistency.
- Adding a new GTest suite (`test_fmha_bwd_kernel_padding.cpp`) with comprehensive tests for various padding scenarios, including zero-length
  sequences and deterministic mode.

* fix clang format

* Adapt fmha_bwd_runner.cpp to new q, kv sequence padding
Add backward q/kv sequence padding unit tests.

* [CK_TILE] fmha: Unify sequence length and padding handling

Refactor the handling of sequence lengths and padding in the
FMHA forward and backward kernels to provide a more unified and flexible
interface.

- Replaced `seqstart_padded_*_ptr` with a more robust system that uses
  `seqstart_*_ptr` for physical sequence lengths and introduces
  `seqlen_*_ptr` and `cu_seqlen_*_ptr` for logical (unpadded) lengths.
- Established a clear order of precedence for determining sequence
  length: cumulative lengths (`cu_seqlen_*_ptr`) take priority,
  followed by per-sequence lengths (`seqlen_*_ptr`), and finally
  physical lengths derived from `seqstart_*_ptr`.
- Clarified the distinction between "group mode" and "batch mode" and
  how sequence lengths are handled in each case.
- Renamed `cu_seqlen_kv_ptr` to `cu_seqlen_k_ptr` for consistency.
- Updated comments and documentation to reflect the new argument
  structure and usage.

---------

Co-authored-by: illsilin_amdeng <Illia.Silin@amd.com>
2025-10-29 13:56:11 +08:00
Haocong WANG
0d3860dfdb [CKTILE] FMHA fwd trload lse fix (#3046)
* enable storelse for fmha_fwd_trload kernel

* fix lse in trload

* fix the mask related bug
2025-10-23 09:33:33 +08:00
Anton Gorenko
1edd250115 [CK_TILE] Support f32 in FMHA (fwd and bwd) (#2836)
* Support 16x16 (MFMA, WMMA) and 32x32 (MFMA) tiles in fwd and bwd BlockDropout

Add comments with dropout implementation details

Fix performance regression of fwd+dropout

    * Remove some usage of type punning (reinterpret_cast with ref or ptr) in Philox;
    * "scalarize" seed and offset, they may come either from kernel args or from device memory
      (presumably loaded with vector loads).

    These changes help the compiler to procude more optimal code and reduce register spilling.

Use WarpGemmDispatcher instead of explicit WarpGemmMfma... to get  CWarpDstrEncoding

Use code based on BlockDropout in BlockDropoutBwd

Refactor BlockDropout (fwd)

Implement BlockDropout (fwd) for WMMA

    Originally BlockDropout only supported 32x32 tiles (IsWG32 = true),
    this version supports 16x16 tiles.
    If MPerBlock > MWarp * 16, it can generate numbers for two 16x16 tiles, similarly
    to BlockDropoutBwd.

Implement BlockDropoutBwd for WMMA

Remove MakeRandValLds* functions unused in BlockDropoutBwd

Remove unused Run overload from BlockDropoutBwd

* Fix regression with philox seed and offset when they exceed 32-bit int

__builtin_amdgcn_readfirstlane works with 32-bit values, seed and offset
are 64-bit so they get truncated.

* Add F32 MFMA warp gemms

* Support f32 in fwd FMHA

* Implement transpose_vectors for 4-byte types (float)

* Fix unexpected implicit f32->uint32 cast in buffer_store<4>

__builtin_amdgcn_raw_buffer_store_b32 expects unsigned int but float was passed (implicitly casted to uint).
mbuf_t types in other buffer_store<> are changed for consistency.

* Support F32 in bwd FMHA

hdim = 256 is disabled for now because it uses too much memory on gfx90a

* Support Headdim = 48 (divisible by 16) in fwd

* Add fp32-specific receipts (800 and 801)

* Tune fwd tiles

* Tune bwd tiles

* Use small tiles only for small seqlen_q

* Fix after rebasing

* Fix selection of a fallback tile based on bm0

The assumption that the largest bm0 == 128 is not always true for
current fp32 tiles.

* Remove constraints and adjust filtering for fp32

Custom constraints are no longer needed because now the smallest tile
is selected automtically based on seqlen_q.
Filters related to qr_async_trload disabled valid fp32 tiles.

* Add fp32 tests

* Make splitkv and appendkv compile for fp32 only

There are no instances yet, but API still must compile when only fp32 is
requested.

* Remove unimportant f32 instances

* Add test_ck_tile_fmha_*_fp32 to REGRESSION_TESTS

* Replace magic numbers with a constant, improve comments for dropout

* Update changelog

* Fix condition that dq_acc must be set to zero when mask is used

The change was introduced in #2799

* Replace warp_uniform with recently added amd_wave_read_first_lane

* Add hdim = 96 and 192 to fwd
2025-09-27 18:03:48 +05:00
Anton Gorenko
c6bfd97c2d [CK_TILE] FMHA Fix synchronization issue in FWD splitkv combine pipeline (#2934)
* Fix validation of rotary embedding with time_kernel_

When rotary embedding is used, the appendkv kernel modifies the q tensor
(multiple times when time_kernel_ is set). We need to reset the q buffer
and rerun all kernels.

* Fix synchronization issue in splitkv combine pipeline

Different warps can read and then rewrite the same values of lse_acc_lds.
Sometimes warps progress at different speeds, one warp can rewrite
values that are still being read by another warp.

Running the tests multiple times and, preferably, with multiple
processes on the same GPU helps to trigger this issue:

bin/test_ck_tile_fmha_fwd_fp16 --gtest_repeat=-1 --gtest_shuffle --gtest_throw_on_failure --gtest_filter="TestCkTileFmhaFwd/*KV*"
2025-09-27 08:16:10 +05:00
Yi DING
32773fe5cb [CK_TILE] FMHA BWD Pad HDim to a Multiple of 8 (#2918) 2025-09-26 16:42:59 +08:00
Jeff Huang
518d24e662 Add sequence padding and variable length support in fmha (#2932)
* * [CK_TILE] Add sequence padding and variable length support in fmha (and v3)

 - Group Mode Padding: Introduces the `-s_qpad` argument to support
   physically padded layouts. Kernels now use padded start pointers
   (`seqstart_padded_*_ptr`) for memory addressing.

 - Batch Mode Variable Length: Adds `-q_eff_lens` and `-kv_eff_lens`
   arguments for efficient processing of variable-length sequences by
   passing cumulative effective lengths (`cu_seqlen_*_ptr`) to the kernel.

 - FMHA examples: Support padding and variable length both in
   group and batch mode. Dispatcher is updated as well (dispatch to
   kPadSeqLenK enabled pipeline).

 - New padding test cases: Add padding test cases to `smoke_test_fwd.sh` and
   `test_fmha_fwd.inc`, and add benchmarks to `benchmark_fwd.sh` and
   `benchmark_fwd_v3.sh` as well. These test cases and benchmarks that
   specifically validate/benchmark the new padding and variable-length
   functionalities in both group and batch modes.

* [CK_TILE] Fix build error in fmha unit tests

* [CK_TILE] add mqa, gqa to sequence padding unit tests

* [CI_TILE] Reduce the number of padding seqlen unit tests in FMHA to avoid timeouts in CI

* [CK_TILE] remove unnecessary MageKArgs overload in FmhaFwdV3Kernel and FmhaFwdKernel
2025-09-26 12:36:27 +08:00
Khushbu Agarwal
b56e5d1d79 Fix for Add the API to load SGPR (#2913)
* Revert "Revert "[CK-Tile] Add the API to load SGPR  (#2878)" (#2904)"

This reverts commit f161b5b738.

* Fix: sgpr minor issue

* cyclic dependency resolved

* clang formatted

* removing unused variable

* clang formatted

---------

Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
2025-09-25 10:32:42 -07:00
ltqin
ab22f91a7c fix fmha fwd kernel name (#2880)
* fix fmha fwd kernel name

* if the input and output types are the same, keep the original code
2025-09-24 20:00:10 -07:00
Yi DING
fe0a47a011 [CK_TILE] FMHA BWD Add D96 Instances (#2916) 2025-09-24 17:04:23 +08:00
asleepzzz
f161b5b738 Revert "[CK-Tile] Add the API to load SGPR (#2878)" (#2904)
This reverts commit 2cbbf5dcb3.
2025-09-23 14:33:51 -07:00
Haocong WANG
959df2a155 [FMHA FWD] gfx950 Accuracy enhancement & bug fix (#2900)
* disable cast_tile_pk_fp16_fp32 on gfx950

* fix wrong encoding when hdim is not exponentiation of 2

---------

Co-authored-by: asleepzzz <hanwen.chang@amd.com>
2025-09-24 00:59:41 +08:00
Haocong WANG
7b16782d7c [CK_TILE] Fix fmha bwd (#2865)
* Fix fmha bwd filter

* remove unnecessary change

* enable test cases

---------

Co-authored-by: Yi DING <yi.ding@amd.com>
2025-09-23 19:59:27 +08:00
Thomas Ning
2cbbf5dcb3 [CK-Tile] Add the API to load SGPR (#2878)
* Have a workable version for SGPR

* have a workable version for atomic add

* Revert "have a workable version for atomic add"

This reverts commit 792377a590c26cfff9c8f545d9a9e8484a7422eb.

* substitute with the new sgpr read api

* update the CHANGELOG

* have a workable version for atomic add

* Revert "have a workable version for atomic add"

This reverts commit 792377a590c26cfff9c8f545d9a9e8484a7422eb.

* change to static for logic

* have a workable version for atomic add

* Revert "have a workable version for atomic add"

This reverts commit 792377a590c26cfff9c8f545d9a9e8484a7422eb.
2025-09-23 01:23:56 -07:00
Haocong WANG
b6e8994386 [CK_TILE] FMHA FWD bug fix (#2888)
* tempsave debug

* fix the bug in fmha fwd_kernel

* Remove unnecessary changes

* Fix the buggy part

* remove fmha fwd known failure cases
2025-09-23 15:00:46 +08:00
Illia Silin
b765fe78f3 Revert "[CK_TILE] Add sequence padding and variable length support in fmha (a…" (#2883)
This reverts commit 86dd59cd01.
2025-09-19 08:15:02 -07:00
Yi DING
6cf3fdd21c [CK_TILE] FMHA BWD Fix Decode Accuracy (#2881)
* [CK_TILE] FMHA BWD Fix Decode Accuracy

* use s_waitcnt utils
2025-09-19 21:45:02 +08:00
Jeff Huang
86dd59cd01 [CK_TILE] Add sequence padding and variable length support in fmha (a… (#2851)
* [CK_TILE] Add sequence padding and variable length support in fmha (and v3)

 - Group Mode Padding: Introduces the `-s_qpad` argument to support
   physically padded layouts. Kernels now use padded start pointers
   (`seqstart_padded_*_ptr`) for memory addressing.

 - Batch Mode Variable Length: Adds `-q_eff_lens` and `-kv_eff_lens`
   arguments for efficient processing of variable-length sequences by
   passing cumulative effective lengths (`cu_seqlen_*_ptr`) to the kernel.

 - FMHA examples: Support padding and variable length both in
   group and batch mode. Dispatcher is updated as well (dispatch to
   kPadSeqLenK enabled pipeline).

 - New padding test cases: Add padding test cases to `smoke_test_fwd.sh`,
   and add benchmarks to `benchmark_fwd.sh` and `benchmark_fwd_v3.sh` as well.
   These test cases and benchmarks that specifically validate/benchmark the
   new padding and variable-length functionalities in both group and batch modes.

* [CK_TILE] Fix build error in fmha unit tests

---------

Co-authored-by: Po Yen Chen <PoYen.Chen@amd.com>
Co-authored-by: Yi DING <yi.ding@amd.com>
2025-09-19 17:36:49 +08:00
Anton Gorenko
2aec38f9ec [CK_TILE] FMHA Fix synchronization issues in BWD pipelines (#2876)
* Run ctest with --output-on-failure

* Fix synchronization issues in bwd pipelines

The bwd kernel reuses the same area of LDS for ds (SGrad), bias and
dbias (BiasGrad). This means that there must be block_sync_lds between
loading one tensor and storing another to the same area.

Heavy instructions like MFMA/WMMA and global loads are executed between
reuses of the same memory so in MOST cases loading is finished by all
warps before storing is started. However, sometimes warps progress at
different speeds.
Running the tests multiple times and, preferably, with multiple
processes on the same GPU helps to trigger this issue:

bin/test_ck_tile_fmha_bwd_bf16 --gtest_repeat=-1 --gtest_shuffle --gtest_throw_on_failure
2025-09-19 11:34:45 +05:00
ltqin
dd249f1cd6 Add input fp8 and output bf16 attention (#2726)
* change host using fp16 to check

* fp8 to fp8 compare

* rewrite input parameters

* add not squant

* remove some output code

* for scale = 1

* format

* saturates only for fp8

* add fp8bf16 data type

* add fp8bf16 data type

* fix test fp8 code

* add run_fp8bf16_tests

* change fmha fwd example parameter(adding fp8bf16)

* Support fp8bf16 for Aiter

* Support aiter fp8bf16 in c++

* fix comment about fp8 in readme.md

* add fp8fp32

* add fp8fp32 test

* remove range_q etc.

* format

* fix test parameters about squant and fmha example input fp8bf16 fp8fp32 data type

* add fp8bf16 to data_type function

* change colmajor to rowmajor in test_ck_tile_fmha_fwd_fp8

* format

* reset atol for fp8

* fix bug for atol

---------

Co-authored-by: rocking <ChunYu.Lai@amd.com>
Co-authored-by: asleepzzz <hanwen.chang@amd.com>
2025-09-19 14:26:43 +08:00