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| ////////////////////////////////////////////////////////////////////////////////////////////////// |
| ////////////////////////////////////////////////////////////////////////////////////////////////// |
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| std::vector<at::Tensor> index_max_kernel( |
| at::Tensor index_vals, // [batch_size, 32, num_block] |
| at::Tensor indices, // [batch_size, num_block], |
| int A_num_block, |
| int B_num_block |
| ) { |
| int batch_size = indices.size(0); |
| int num_block = indices.size(1); |
|
|
| at::Tensor max_vals = at::zeros({batch_size, A_num_block * 32}, index_vals.options()); |
| at::Tensor max_vals_scatter = at::zeros({batch_size, 32, num_block}, index_vals.options()); |
|
|
| dim3 threads(256); |
| dim3 blocks(batch_size); |
| int shared_mem = A_num_block * 32 * sizeof(float); |
|
|
| index_max_cuda_kernel<<<blocks, threads, shared_mem>>>( |
| index_vals.data_ptr<float>(), |
| indices.data_ptr<int>(), |
| max_vals.data_ptr<float>(), |
| max_vals_scatter.data_ptr<float>(), |
| batch_size, |
| A_num_block, |
| B_num_block, |
| num_block |
| ); |
|
|
| return {max_vals, max_vals_scatter}; |
| } |
|
|
| at::Tensor mm_to_sparse_kernel( |
| at::Tensor dense_A, // [batch_size, A_num_block, dim, 32] |
| at::Tensor dense_B, // [batch_size, B_num_block, dim, 32] |
| at::Tensor indices // [batch_size, num_block] |
| ) { |
| int batch_size = dense_A.size(0); |
| int A_num_block = dense_A.size(1); |
| int B_num_block = dense_B.size(1); |
| int dim = dense_A.size(2); |
| int num_block = indices.size(1); |
|
|
| at::Tensor sparse_C = at::zeros({batch_size, num_block, 32, 32}, dense_A.options()); |
|
|
| dim3 threads(64, 4); |
| dim3 blocks(num_block / 4, batch_size); |
|
|
| mm_to_sparse_cuda_kernel<<<blocks, threads>>>( |
| dense_A.data_ptr<float>(), |
| dense_B.data_ptr<float>(), |
| indices.data_ptr<int>(), |
| sparse_C.data_ptr<float>(), |
| batch_size, |
| A_num_block, |
| B_num_block, |
| dim, |
| num_block |
| ); |
|
|
| return sparse_C; |
| } |
|
|
| at::Tensor sparse_dense_mm_kernel( |
| at::Tensor sparse_A, // [batch_size, num_block, 32, 32] |
| at::Tensor indices, // [batch_size, num_block] |
| at::Tensor dense_B, // [batch_size, B_num_block, dim, 32] |
| int A_num_block |
| ) { |
| int batch_size = sparse_A.size(0); |
| int num_block = sparse_A.size(1); |
| int B_num_block = dense_B.size(1); |
| int dim = dense_B.size(2); |
|
|
| at::Tensor dense_C = at::zeros({batch_size, A_num_block, dim, 32}, dense_B.options()); |
|
|
| dim3 threads(128, 2); |
| dim3 blocks(num_block / 2, batch_size); |
|
|
| sparse_dense_mm_cuda_kernel<<<blocks, threads>>>( |
| sparse_A.data_ptr<float>(), |
| indices.data_ptr<int>(), |
| dense_B.data_ptr<float>(), |
| dense_C.data_ptr<float>(), |
| batch_size, |
| A_num_block, |
| B_num_block, |
| dim, |
| num_block |
| ); |
|
|
| return dense_C; |
| } |
|
|
| at::Tensor reduce_sum_kernel( |
| at::Tensor sparse_A, // [batch_size, num_block, 32, 32] |
| at::Tensor indices, // [batch_size, num_block] |
| int A_num_block, |
| int B_num_block |
| ) { |
| int batch_size = sparse_A.size(0); |
| int num_block = sparse_A.size(1); |
|
|
| at::Tensor dense_C = at::zeros({batch_size, A_num_block, 32}, sparse_A.options()); |
|
|
| dim3 threads(32, 4); |
| dim3 blocks(num_block / 4, batch_size); |
|
|
| reduce_sum_cuda_kernel<<<blocks, threads>>>( |
| sparse_A.data_ptr<float>(), |
| indices.data_ptr<int>(), |
| dense_C.data_ptr<float>(), |
| batch_size, |
| A_num_block, |
| B_num_block, |
| num_block |
| ); |
|
|
| return dense_C; |
| } |
|
|
| at::Tensor scatter_kernel( |
| at::Tensor dense_A, // [batch_size, A_num_block, 32] |
| at::Tensor indices, // [batch_size, num_block] |
| int B_num_block |
| ) { |
| int batch_size = dense_A.size(0); |
| int A_num_block = dense_A.size(1); |
| int num_block = indices.size(1); |
|
|
| at::Tensor sparse_C = at::zeros({batch_size, num_block, 32, 32}, dense_A.options()); |
|
|
| dim3 threads(32, 4); |
| dim3 blocks(num_block / 4, batch_size); |
|
|
| scatter_cuda_kernel<<<blocks, threads>>>( |
| dense_A.data_ptr<float>(), |
| indices.data_ptr<int>(), |
| sparse_C.data_ptr<float>(), |
| batch_size, |
| A_num_block, |
| B_num_block, |
| num_block |
| ); |
|
|
| return sparse_C; |
| } |
|
|