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Triton GPU-only grouped_mm (BF16) matching PyTorch grouped_mm semantics.

Project description

grouped_mm_bf16 (Triton)

Install

  1. Install PyTorch for your system (CUDA / ROCm / CPU): https://pytorch.org/get-started/locally/

  2. Install this package (and Triton):

pip install grouped-mm-bf16[triton]

Usage

import torch
from grouped_mm_bf16 import grouped_mm

dev = "cuda"

# 3D x 3D (batched matmul): [G,M,K] @ [G,K,N] -> [G,M,N]
a = torch.randn((4, 32, 64), device=dev, dtype=torch.bfloat16)
b = torch.randn((4, 64, 48), device=dev, dtype=torch.bfloat16)
out = grouped_mm(a, b)

# 2D x 3D with offsets: [M_total,K] @ [G,K,N] -> [M_total,N]
sizes = torch.tensor([0, 7, 1, 13, 0, 11], device=dev, dtype=torch.int32)
offs = sizes.cumsum(0)  # group end indices along M_total
a = torch.randn((int(offs[-1].item()), 64), device=dev, dtype=torch.bfloat16)
b = torch.randn((sizes.numel(), 64, 48), device=dev, dtype=torch.bfloat16)
out = grouped_mm(a, b, offs=offs)

About

Universal (NVIDIA CUDA + AMD HIP) Triton implementation of torch.nn.functional.grouped_mm semantics for BF16.

This repo provides grouped_mm_bf16.grouped_mm(...), mirroring the private operator signature:

grouped_mm(mat_a, mat_b, offs=None, bias=None, out_dtype=None) -> Tensor

Notes:

  • GPU-only: raises if any inputs are on CPU; never falls back to CPU.
  • Matches PyTorch grouped_mm shape semantics (2D/3D + offs) and dtype rules.
  • bias is rejected, matching current PyTorch behavior (Bias not supported yet).
  • Like PyTorch's current CUDA implementation, inputs must have "valid" (row/column-major) strides and 16-byte alignment; contiguous matrices with odd inner dimensions may need padding.

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