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Refactor and integrate CK GPU references into ckProfiler. - All convolution layouts and groupings supported for all three directions - Unit tests verifying GPU and CPU reference is the same - Support added to profiler (do_verification = 2 enables GPU reference) - One profiler-based test per direction changed to GPU reference to demonstrate usag Closes AICK-427
N-Dimensional Convolution Forward
Theory
This example demonstrates the N-dimensional convolution forward pass using Composable Kernel. Convolution is a fundamental operation in deep learning, especially in convolutional neural networks (CNNs) for images, audio, and volumetric data.
Mathematical Formulation: Given:
- Input tensor:
X[N, C_{in}, D_1, D_2, ..., D_n] - Weight tensor:
W[C_{out}, C_{in}, K_1, K_2, ..., K_n] - Output tensor:
Y[N, C_{out}, O_1, O_2, ..., O_n]
The convolution computes:
Y[n, c_{out}, o_1, ..., o_n] = \sum_{c_{in}} \sum_{k_1} ... \sum_{k_n} X[n, c_{in}, o_1 + k_1, ..., o_n + k_n] \cdot W[c_{out}, c_{in}, k_1, ..., k_n]
Stride, padding, and dilation parameters control the mapping between input and output indices.
Algorithmic Background:
- Composable Kernel implements convolution as an implicit GEMM (matrix multiplication) for efficiency.
- The input and weight tensors are transformed into matrices, and the convolution is performed as a GEMM.
How to Run
Prerequisites
Please follow the instructions in the main Build Guide section as a prerequisite to building and running this example.
Build and run
cd composable_kernel/example/09_convnd_fwd
mkdir build && cd build
cmake -DCMAKE_CXX_COMPILER=/opt/rocm/bin/hipcc ..
make -j
Run example_convnd_fwd_xdl
#arg1: verification (0=no, 1=yes)
#arg2: initialization (0=no init, 1=integer value, 2=decimal value)
#arg3: run kernel # of times (>1)
#arg4: N spatial dimensions (default 2)
#Following arguments (depending on number of spatial dims):
# N, K, C,
# <filter spatial dimensions>, (ie Y, X for 2D)
# <input image spatial dimensions>, (ie Hi, Wi for 2D)
# <strides>, (ie Sy, Sx for 2D)
# <dilations>, (ie Dy, Dx for 2D)
# <left padding>, (ie LeftPy, LeftPx for 2D)
# <right padding>, (ie RightPy, RightPx for 2D)
./bin/example_convnd_fwd_xdl 0 1 100
Source Code Structure
Directory Layout
example/09_convnd_fwd/
├── convnd_fwd_xdl.cpp # Main example: sets up, runs, and verifies N-D convolution
include/ck/tensor_operation/gpu/device/
│ └── device_convnd_fwd.hpp # Device-level convolution API
include/ck/tensor_operation/gpu/device/impl/
│ └── device_convnd_fwd_xdl.hpp # XDL-based convolution implementation
include/ck/tensor_operation/gpu/grid/
│ └── gridwise_convnd_fwd_xdl.hpp # Grid-level convolution kernel
include/ck/tensor_operation/gpu/block/
└── blockwise_convnd_fwd_xdl.hpp # Block-level convolution
Key Classes and Functions
- DeviceConvNdFwd (in
device_convnd_fwd.hpp):
Device API for N-dimensional convolution. - gridwise_convnd_fwd_xdl (in
gridwise_convnd_fwd_xdl.hpp):
Implements the tiled/blocking convolution kernel. - blockwise_convnd_fwd_xdl (in
blockwise_convnd_fwd_xdl.hpp):
Handles block-level computation and shared memory tiling.
This example demonstrates how Composable Kernel implements efficient N-dimensional convolution using implicit GEMM, supporting a wide range of deep learning applications.