# Causal depthwise conv1d in CUDA with a PyTorch interface Features: - Support fp32, fp16, bf16. - Kernel size 2, 3, 4. ## How to use ``` from causal_conv1d import causal_conv1d_fn ``` ``` def causal_conv1d_fn(x, weight, bias=None, activation=None): """ x: (batch, dim, seqlen) weight: (dim, width) bias: (dim,) activation: either None or "silu" or "swish" out: (batch, dim, seqlen) """ ``` Equivalent to: ``` import torch.nn.functional as F F.conv1d(x, weight.unsqueeze(1), bias, padding=width - 1, groups=dim)[..., :seqlen] ``` ## Additional Prerequisites for AMD cards ### Patching ROCm If you are on ROCm 6.0, run the following steps to avoid errors during compilation. This is not required for ROCm 6.1 onwards. 1. Locate your ROCm installation directory. This is typically found at `/opt/rocm/`, but may vary depending on your installation. 2. Apply the Patch. Run with `sudo` in case you encounter permission issues. ```bash patch /opt/rocm/include/hip/amd_detail/amd_hip_bf16.h < rocm_patch/rocm6_0.patch ```