# DeepGEMM NVFP4 Mega MoE Kernel ## Overview A native NVFP4 mega MoE kernel for DeepGEMM that uses `kind::mxf4nvf4.block_scale.scale_vec::4X` to consume NVFP4 weights (E2M1 + UE4M3 block scales, group_size=16) directly on B200 (SM100a). **HARD RULE: MoE experts stay in NVFP4. Never convert to MXFP4.** ## SM100a (B200) Hardware Support **B200 (SM100a) DOES support `kind::mxf4nvf4` with `scale_vec::4X`** (block16, UE4M3 scales). Documented in PTX ISA 8.7 (CUDA 12.8+), confirmed by NVIDIA/CUTLASS/Colfax. The key requirement: target **`sm_100a`** (not `sm_100`). The `a` suffix enables the FP4 block-scaled instructions including `mxf4nvf4`. Targeting plain `sm_100` will produce "Feature '.scale_vec::4X' not supported on .target 'sm_100f'" errors. ## Kernel Architecture (TARGET) ``` sm100_fp8_nvfp4_mega_moe_impl ├── kGranK = 16 (NVFP4 native block size) ├── kind::mxf4nvf4.block_scale.scale_vec::4X PTX instruction ├── float_ue4m3_t instruction descriptor ├── SF layout: scale_vec::4X, 4 TMEM sub-columns per UMMA atom ├── UTCCP copy: i*8 stride (4X layout, 8 TMEM cols per 128-element group) ├── kNumSFATmemCols = SF_BLOCK_M / 32 * 4 ├── kNumSFBTmemCols = SF_BLOCK_N / 32 * 4 ├── kNumSFUint32 = kHidden / 64 (4 UE4M3 per int32) ├── UE4M3 L1 epilogue (float → cutlass::float_e4m3_t cast, sign bit cleared) └── recipe = (1, 1, 16) ``` ## Weight Transformation Pipeline ``` NVFP4 Checkpoint Kernel Format ┌─────────────────────┐ ┌────────────────────────┐ │ weight: uint8 │────────────────→│ int8 (E2M1, same) │ │ (E2M1, 2 per byte) │ .view(int8) │ packed, interleaved │ ├─────────────────────┤ ├────────────────────────┤ │ weight_scale: │ 1. fold global │ int32 (TMA-aligned │ │ float8_e4m3fn │ 2. pack 4→i32 │ UTCCP layout, │ │ (UE4M3, group=16) │ 3. transpose │ gran_k=16) │ ├─────────────────────┤ 4. TMA-align └────────────────────────┘ │ weight_scale_2: │ │ float32 (global) │──folded into block scales before packing └─────────────────────┘ ``` **NO UE4M3→UE8M0 conversion. NO block16→block32 merge.** The kernel consumes native UE4M3 scales with block16 grouping. ## Key Differences from MXFP4 mega_moe | Parameter | MXFP4 | NVFP4 (this kernel) | |-----------|-------|---------------------| | `kGranK` | 32 | 16 | | PTX instruction | `mxf8f6f4.block_scale` | `mxf4nvf4.block_scale.scale_vec::4X` | | Scale factor type | `float_ue8m0_t` | `float_ue4m3_t` | | SF vector size | block32 / 2X | block16 / 4X | | TMEM SF cols (SFA) | `SF_BLOCK_M / 32` | `SF_BLOCK_M / 32 * 4` | | UTCCP col stride | `i * 4` | `i * 8` | | `kNumSFUint32` | `kHidden / 128` | `kHidden / 64` | | L1 epilogue | UE8M0 (`>> 23`) | UE4M3 (float→e4m3 cast) | | recipe | `(1, 1, 32)` | `(1, 1, 16)` | ## Critical Implementation Details ### scale_format_ constraint The CUTLASS instruction descriptor has a single `scale_format_` bit (0=E4M3, 1=E8M0) that applies to BOTH A and B scale factors. For NVFP4 (E4M3), both activation (SFA) and weight (SFB) scales must use UE4M3. The L1 epilogue outputs UE4M3 activation scales (float → `cutlass::float_e4m3_t` with sign bit cleared). ### Arch flag The JIT compiler MUST target `sm_100a`, not `sm_100`. Without the `a` suffix, the `mxf4nvf4` instruction is unavailable and compilation will fail with "Feature '.scale_vec::4X' not supported on .target 'sm_100f'". ### Weight scale_2 folding The NVFP4 checkpoint has dual-level scaling: per-block UE4M3 + per-tensor float32. The `weight_scale_2` must be folded into the block scales before packing: `effective_scale = block_scale * global_scale`, then re-quantize to UE4M3. ## Build History | Build | Error | Fix | |-------|-------|-----| | 1–6 | Dockerfile/build issues | NVRTC symlink, CPATH, PYTHONPATH | | 7 | `kPackedFP4` type mismatch | uint8→int8 view | | 9 | SF stride assertion | MN-major layout + TMA alignment | | 10 | `transform_sf` no gran_k=16 | C++ fix | | 11 | SF dtype float8_e4m3fn rejected | Pack UE4M3→int32 first | | 12–14 | SF stride layout | Transpose to MN-major | | 15 | SymmBuffer too small | NVFP4-specific SymmBuffer (2× SF) | | 16 | `ImportError` | Python wrapper | | **17** | **NVCC: `scale_vec::4X` not on sm_100f** | **Wrong arch: need `sm_100a`** | | 18 | `scale_vec::2X` also failed | Same — `sm_100a` required | | 19 | kGranK still 16 in C++ binding | Should stay 16 — was wrongly changed to 32 | | 20 | `uint32 >> 23` fails | Cast to int32 first | | 22 | Garbled output | Fell back to mxf8f6f4 — should use mxf4nvf4 on sm_100a | ## Remaining Work - [ ] Fix DeepGEMM JIT to target `sm_100a` instead of `sm_100` - [ ] Add NVFP4 MMA kind enum to DeepGEMM runtime (not just MXFP8FP4 with NVFP4 hat) - [ ] Revert to Build 17's `mxf4nvf4.scale_vec::4X` instruction (was correct, just wrong arch) - [ ] Revert `kGranK` to 16, UE4M3 scales, block16 SF layout - [ ] Add `get_sf_uttcp_aligned_block_sizes` branch for block16 layout - [ ] Remove UE4M3→UE8M0 conversion and block16→block32 merge from Python - [ ] Verify TMEM 4X layout (i*8 stride, 4 sub-columns) - [ ] End-to-end quality test on B200