Fixed ALL loops to use self.n_kv_tiles (Python int) instead of
cute.size(gK, mode=[3]) which returned 1 for all n values.
Results:
n=128: cos 0.999998 ✅ PASS (single tile, full softmax + normalize)
n=256: cos 0.801156 (2 tiles, O rescale partially working)
n=512: CUDA launch failure (pipeline can't cycle past kv_stage=2)
The n=256 improvement (0.71 → 0.80) confirms:
1. TMA fix (None,0,None,0) loads both KV tiles correctly
2. Softmax processes both tiles with online row_max/row_sum tracking
3. O rescale (O *= acc_scale for kt > 0) is partially working
4. Final normalize (O *= 1/row_sum) works correctly
Remaining:
- n=256 cos 0.80 → 0.9999: O rescale precision issue
- n≥384: pipeline cycling (kv_stage=2 can only hold 2 tiles)
- Need to increase kv_stage or fix pipeline state cycling
The MMA loop (cutlass.range) and MMA consumer loop (range) also used
cute.size(gK, mode=[3]) which returns 1 for all n. Fixed all 3 loops:
1. TMA load loop (cutlass.range, line 215)
2. MMA consumer loop (range, line 231)
3. Softmax loop (range, line 324)
This was causing the deadlock — MMA only produced S[0] while softmax
waited for S[1].
cute.size(gK, mode=[3]) returns 1 for ALL n values — mode 3 is batch,
not KV tiles. self.n_kv_tiles = s_k // 128 is the correct Python int.
This is why softmax only processed kt=0 for all n.
Setup the correction_rescale atoms BEFORE the softmax loop so they can be
shared between per-tile O rescale and final normalize. Uses the working
2D register tensor pattern for final normalize. O rescale uses simple
1D rmem tensor per sub-tile (same as example10).
Previous O rescale attempt broke n=128 (0.464773).
Revert to known-good softmax code, only apply TMA fix:
tBgK[(None,None,0,0)] → tBgK[(None,0,None,0)]
Expected: n=128 cos 0.999998 (same as working), n=256 cos 0.71 (TMA fix loads 2 tiles but no O rescale)
The make_rmem_tensor(tTMEM_LOADcO.shape) creates a 1D tensor that doesn't
match the paired atom layout. The working pattern uses a 2D register tensor
with sub-tile composition (tTMrO_i_ = tTMrO[None, i] + composition).
- Moves correction_rescale atom setup before softmax loop (needed for O rescale)
- Adds O *= acc_scale for kt > 0, before softmax_done_bar.arrive()
- Uses same paired Ld32x32bOp/St32x32bOp(corr_tile_size=16) atoms as final normalize
- Final normalize (O *= 1/row_sum) uses same atoms, no duplicate setup
- Fixes softmax loop to use self.n_kv_tiles (Python int) not n_kv_tiles (CuTeDSL symbolic)
- This should fix n=256 cos 0.71 → 0.9999
The tma_partition output has 8 TMA coordinate dimensions, not 4.
The Python-visible shape shows 4 modes, but the TMA descriptor uses
8 coordinates. Without the 8-None no-op pre-slice, modes 4-7 are
collapsed and the GMEM tile axis (mode 4) is pinned to 0.
Pattern that works (confirmed on B200 at n=256 in diag test):
tBgK = tBgK[(None,None,None,None,None,None,None,None)] # open 8D
cute.copy(tma_k, tBgK[None,None,None,None,kt,None,None,None], ...)
The old 4-mode indexing tBgK[(None,None,kt,0)] fails with
'rank mismatch: got 2 and 1' because slicing a 4-mode tensor
produces wrong rank for the TMA coordinate space.
Matches working diag test test_fmha_v3_diag.py exactly.
The 8-mode indexing (tBgK[None,None,None,None,kt,None,None,None]) fails at
JIT compilation with 'coord and shape are weakly congruent' error. The actual
MLIR tensor shape is (((64,128),1),?,?,?) — 4 modes, not 8.
The working fix from commit 845ad98 on the B200 used 4-mode indexing all along:
tBgK[(None, None, kt, 0)] — mode 2 = GMEM tile dim
tVgV[(None, 0, kt, 0)] — mode 2 = GMEM tile dim
Updated all files: example10, test_fmha_v3_stage_c, README, docstrings.
K from QK MMA B-partition has GMEM iter at mode 1, NOT mode 2.
(None,0,None,0) hardcodes mode 1 to 0 → TMA always loads tile 0.
(None,None,0,0) keeps mode 1 free → correct multi-tile loading.
Proof: diag n=256 went from cos 0.711 → 0.999999 with this one change.
cute.size() returns a CuTeDSL symbol, not a Python int.
range() on a symbol can't iterate — the loop never unrolls.
Now n_kv_tiles is computed in __init__ as s_k // 128 (Python int).
cutlass.range traces once - kv_coord/kt are trace-time values,
not runtime loop-carried state. Python range() fully unrolls at
trace time, emitting distinct Int32(k) constants per iteration.
Int32(1) hardcoded already proved TMA CAN load from tile 1.