2026-05-16 03:50:07 +00:00
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# DeepSeek V4 NVFP4 vLLM + CuTeDSL NVFP4 MoE Kernel
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feat: CUTLASS NVFP4 mega_moe kernel — slot-based L1/L2, source-first SF remap
Major changes from initial TileLang prototype:
Kernel:
- CUTLASS NVFP4 block-scaled GEMM (SM100 Blackwell, OpClassBlockScaledTensorOp)
- Slot-based dispatch: L1 GEMM → SiLU+Mul per-slot → L2 GEMM → index_add scatter
- 1D slot_expert_ids passed to both L1 and L2 (no 2D topk_ids rebuild)
- slot_token gathered in cutlass_grouped_nvfp4_gemm when provided
SF Remap (source-first):
- Iterates logical (m, k_sf) source grid, uses layout_sf(make_coord(m, k_sf))
for CUTLASS dest index — no idx2crd/flatten coordinate extraction
- 2D kernel launch: dim3 block(32,8), grid over (K_sf, MN)
- Uses cute::cosize() for physical allocation size (not cute::size)
- SFA: (MN, K_sf) row-major; SFB: (K_sf, MN) row-major (col-major)
Weight transform:
- UE4M3 unpack with bit reinterpret (not value cast)
- Global scale folding (weight_scale_2) for gate/up split
- clamp(0,448) → float8_e4m3fn, transpose (N,K)→(K,N) for CUTLASS
No prepack cache:
- SFB remapped per-call inside CUTLASS (~µs, not the bottleneck)
- See README for why prepack cache must never return (OOM, CUDA graphs,
M-dependent layout, cross-layer collisions)
Stage activation:
- Nearest-neighbor E2M1 quantization (no clamp, no uniform steps)
- Per-tensor global scale → alpha for L2 GEMM
Bug fixes:
- _fold_global_scale: removed broken logical_widths branch
- unpack_ue4m3_u32: int32 for CUDA bitwise, view not to, ND support
- Correct expert param mapping for NVFP4 checkpoint
- SiLU applied per-slot (not after summing expert paths)
2026-05-15 11:38:18 +00:00
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FROM vllm/vllm-openai:nightly-x86_64
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# Remove broken nixl_ep (built against CUDA 12, image is CUDA 13)
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RUN pip uninstall -y nixl-ep; rm -rf /usr/local/lib/python3.12/dist-packages/nixl_ep
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RUN apt-get update && apt-get install -y git screen cmake libcusolver-dev-13-0 libcusparse-dev-13-0 libcublas-dev-13-0 libcurand-dev-13-0 libcufft-dev-13-0 libnvjitlink-dev-13-0 && rm -rf /var/lib/apt/lists/*
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# Remove the broken symlink if it exists
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2026-05-16 03:50:07 +00:00
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RUN rm -f /usr/local/cuda/lib64/libcudrt.so.12
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feat: CUTLASS NVFP4 mega_moe kernel — slot-based L1/L2, source-first SF remap
Major changes from initial TileLang prototype:
Kernel:
- CUTLASS NVFP4 block-scaled GEMM (SM100 Blackwell, OpClassBlockScaledTensorOp)
- Slot-based dispatch: L1 GEMM → SiLU+Mul per-slot → L2 GEMM → index_add scatter
- 1D slot_expert_ids passed to both L1 and L2 (no 2D topk_ids rebuild)
- slot_token gathered in cutlass_grouped_nvfp4_gemm when provided
SF Remap (source-first):
- Iterates logical (m, k_sf) source grid, uses layout_sf(make_coord(m, k_sf))
for CUTLASS dest index — no idx2crd/flatten coordinate extraction
- 2D kernel launch: dim3 block(32,8), grid over (K_sf, MN)
- Uses cute::cosize() for physical allocation size (not cute::size)
- SFA: (MN, K_sf) row-major; SFB: (K_sf, MN) row-major (col-major)
Weight transform:
- UE4M3 unpack with bit reinterpret (not value cast)
- Global scale folding (weight_scale_2) for gate/up split
- clamp(0,448) → float8_e4m3fn, transpose (N,K)→(K,N) for CUTLASS
No prepack cache:
- SFB remapped per-call inside CUTLASS (~µs, not the bottleneck)
- See README for why prepack cache must never return (OOM, CUDA graphs,
M-dependent layout, cross-layer collisions)
Stage activation:
- Nearest-neighbor E2M1 quantization (no clamp, no uniform steps)
- Per-tensor global scale → alpha for L2 GEMM
Bug fixes:
- _fold_global_scale: removed broken logical_widths branch
- unpack_ue4m3_u32: int32 for CUDA bitwise, view not to, ND support
- Correct expert param mapping for NVFP4 checkpoint
- SiLU applied per-slot (not after summing expert paths)
2026-05-15 11:38:18 +00:00
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ENV CUDA_HOME=/usr/local/cuda
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ENV TORCH_CUDA_ARCH_LIST="10.0"
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2026-05-16 03:50:07 +00:00
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# Install CuTeDSL (NVFP4 block-scaled GEMM kernel framework)
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RUN pip install nvidia-cutlass-dsl==4.5.0 nvidia-cutlass-dsl-libs-base==4.5.0
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feat: CUTLASS NVFP4 mega_moe kernel — slot-based L1/L2, source-first SF remap
Major changes from initial TileLang prototype:
Kernel:
- CUTLASS NVFP4 block-scaled GEMM (SM100 Blackwell, OpClassBlockScaledTensorOp)
- Slot-based dispatch: L1 GEMM → SiLU+Mul per-slot → L2 GEMM → index_add scatter
- 1D slot_expert_ids passed to both L1 and L2 (no 2D topk_ids rebuild)
- slot_token gathered in cutlass_grouped_nvfp4_gemm when provided
SF Remap (source-first):
- Iterates logical (m, k_sf) source grid, uses layout_sf(make_coord(m, k_sf))
for CUTLASS dest index — no idx2crd/flatten coordinate extraction
- 2D kernel launch: dim3 block(32,8), grid over (K_sf, MN)
- Uses cute::cosize() for physical allocation size (not cute::size)
- SFA: (MN, K_sf) row-major; SFB: (K_sf, MN) row-major (col-major)
Weight transform:
- UE4M3 unpack with bit reinterpret (not value cast)
- Global scale folding (weight_scale_2) for gate/up split
- clamp(0,448) → float8_e4m3fn, transpose (N,K)→(K,N) for CUTLASS
No prepack cache:
- SFB remapped per-call inside CUTLASS (~µs, not the bottleneck)
- See README for why prepack cache must never return (OOM, CUDA graphs,
M-dependent layout, cross-layer collisions)
Stage activation:
- Nearest-neighbor E2M1 quantization (no clamp, no uniform steps)
- Per-tensor global scale → alpha for L2 GEMM
Bug fixes:
- _fold_global_scale: removed broken logical_widths branch
- unpack_ue4m3_u32: int32 for CUDA bitwise, view not to, ND support
- Correct expert param mapping for NVFP4 checkpoint
- SiLU applied per-slot (not after summing expert paths)
2026-05-15 11:38:18 +00:00
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ARG CACHE_BUSTER=${TIMESTAMP}
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2026-05-16 03:50:07 +00:00
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# Copy the NVFP4 mega_moe Python kernel (no C++ build needed)
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feat: CUTLASS NVFP4 mega_moe kernel — slot-based L1/L2, source-first SF remap
Major changes from initial TileLang prototype:
Kernel:
- CUTLASS NVFP4 block-scaled GEMM (SM100 Blackwell, OpClassBlockScaledTensorOp)
- Slot-based dispatch: L1 GEMM → SiLU+Mul per-slot → L2 GEMM → index_add scatter
- 1D slot_expert_ids passed to both L1 and L2 (no 2D topk_ids rebuild)
- slot_token gathered in cutlass_grouped_nvfp4_gemm when provided
SF Remap (source-first):
- Iterates logical (m, k_sf) source grid, uses layout_sf(make_coord(m, k_sf))
for CUTLASS dest index — no idx2crd/flatten coordinate extraction
- 2D kernel launch: dim3 block(32,8), grid over (K_sf, MN)
- Uses cute::cosize() for physical allocation size (not cute::size)
- SFA: (MN, K_sf) row-major; SFB: (K_sf, MN) row-major (col-major)
Weight transform:
- UE4M3 unpack with bit reinterpret (not value cast)
- Global scale folding (weight_scale_2) for gate/up split
- clamp(0,448) → float8_e4m3fn, transpose (N,K)→(K,N) for CUTLASS
No prepack cache:
- SFB remapped per-call inside CUTLASS (~µs, not the bottleneck)
- See README for why prepack cache must never return (OOM, CUDA graphs,
M-dependent layout, cross-layer collisions)
Stage activation:
- Nearest-neighbor E2M1 quantization (no clamp, no uniform steps)
- Per-tensor global scale → alpha for L2 GEMM
Bug fixes:
- _fold_global_scale: removed broken logical_widths branch
- unpack_ue4m3_u32: int32 for CUDA bitwise, view not to, ND support
- Correct expert param mapping for NVFP4 checkpoint
- SiLU applied per-slot (not after summing expert paths)
2026-05-15 11:38:18 +00:00
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COPY src/ /root/nvfp4-megamoe-kernel/src/
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COPY pyproject.toml /root/nvfp4-megamoe-kernel/pyproject.toml
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RUN cd /root/nvfp4-megamoe-kernel && pip install -e .
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2026-05-16 03:50:07 +00:00
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# Copy the CuTeDSL kernel and bridge layer
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COPY cutedsl/ /root/nvfp4-megamoe-kernel/cutedsl/
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feat: CUTLASS NVFP4 mega_moe kernel — slot-based L1/L2, source-first SF remap
Major changes from initial TileLang prototype:
Kernel:
- CUTLASS NVFP4 block-scaled GEMM (SM100 Blackwell, OpClassBlockScaledTensorOp)
- Slot-based dispatch: L1 GEMM → SiLU+Mul per-slot → L2 GEMM → index_add scatter
- 1D slot_expert_ids passed to both L1 and L2 (no 2D topk_ids rebuild)
- slot_token gathered in cutlass_grouped_nvfp4_gemm when provided
SF Remap (source-first):
- Iterates logical (m, k_sf) source grid, uses layout_sf(make_coord(m, k_sf))
for CUTLASS dest index — no idx2crd/flatten coordinate extraction
- 2D kernel launch: dim3 block(32,8), grid over (K_sf, MN)
- Uses cute::cosize() for physical allocation size (not cute::size)
- SFA: (MN, K_sf) row-major; SFB: (K_sf, MN) row-major (col-major)
Weight transform:
- UE4M3 unpack with bit reinterpret (not value cast)
- Global scale folding (weight_scale_2) for gate/up split
- clamp(0,448) → float8_e4m3fn, transpose (N,K)→(K,N) for CUTLASS
No prepack cache:
- SFB remapped per-call inside CUTLASS (~µs, not the bottleneck)
- See README for why prepack cache must never return (OOM, CUDA graphs,
M-dependent layout, cross-layer collisions)
Stage activation:
- Nearest-neighbor E2M1 quantization (no clamp, no uniform steps)
- Per-tensor global scale → alpha for L2 GEMM
Bug fixes:
- _fold_global_scale: removed broken logical_widths branch
- unpack_ue4m3_u32: int32 for CUDA bitwise, view not to, ND support
- Correct expert param mapping for NVFP4 checkpoint
- SiLU applied per-slot (not after summing expert paths)
2026-05-15 11:38:18 +00:00
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2026-05-16 03:50:07 +00:00
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ENV PYTHONPATH="/root/nvfp4-megamoe-kernel:${PYTHONPATH}"
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