- Move Qa[KD][4] into tile loop (reload from sQ per tile)
cutting ~32 resident registers for HEAD_DIM=128
- Replace extern __shared__ with static template-sized smem
(no cudaFuncSetAttribute or dynamic allocation needed)
- Add __launch_bounds__ with MIN_BLOCKS param, dispatch by HEAD_DIM
(hd=128→4, hd=64→6, hd=32→6)
- Remove dynamic smem from scalar kernel and C test
- Result: hd=128 168→128 regs, 25%→33% occupancy
- one query row per group of G=8 lanes, each owning HEAD_DIM/G dims of qreg[]/acc[] in registers
- removes full 32-lane warp_reduce_sum; S dot reduces over only G lanes
- templated on <HEAD_DIM,G,ROWS,P_BC>, block=(G,ROWS)=(8,32)
- per-group shuffle mask so causal loop-bound divergence doesn't deadlock the shuffle
- update pure-C test to the templated launch
- Split .cuh/.cu for gqa_decode_attn and gqa_prefill_attn
- gqa_prefill_attn: tiled shared-memory K/V, fused load, compute-opt, mask support
- Add pure C tests under csrc/tests/ for fast nvcc-only iteration
- Update .gitignore for build artifacts