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+// This file is part of Eigen, a lightweight C++ template library
+// for linear algebra.
+//
+// Copyright (C) 2014-2015 Benoit Steiner <benoit.steiner.goog@gmail.com>
+// Copyright (C) 2015 Navdeep Jaitly <ndjaitly@google.com>
+// Copyright (C) 2014 Eric Martin <eric@ericmart.in>
+//
+// This Source Code Form is subject to the terms of the Mozilla
+// Public License v. 2.0. If a copy of the MPL was not distributed
+// with this file, You can obtain one at http://mozilla.org/MPL/2.0/.
+
+#ifndef EIGEN_CXX11_TENSOR_TENSOR_CONTRACTION_GPU_H
+#define EIGEN_CXX11_TENSOR_TENSOR_CONTRACTION_GPU_H
+
+#if defined(EIGEN_USE_GPU) && defined(EIGEN_GPUCC)
+
+namespace Eigen {
+
+template<typename Scalar, typename Index, typename LhsMapper,
+ typename RhsMapper, typename OutputMapper, bool needs_edge_check>
+__device__ EIGEN_STRONG_INLINE void
+EigenContractionKernelInternal(const LhsMapper lhs, const RhsMapper rhs,
+ const OutputMapper output, Scalar* lhs_shmem, Scalar* rhs_shmem,
+ const Index m_size, const Index n_size, const Index k_size) {
+
+ const Index m_block_idx = blockIdx.x;
+ const Index n_block_idx = blockIdx.y;
+
+ const Index base_m = 64 * m_block_idx;
+ const Index base_n = 64 * n_block_idx;
+
+ // declare and initialize 64 registers for output 8x8 block
+
+ // prefetch registers
+ Scalar lhs_pf0;
+ Scalar lhs_pf1;
+ Scalar lhs_pf2;
+ Scalar lhs_pf3;
+ Scalar lhs_pf4;
+ Scalar lhs_pf5;
+ Scalar lhs_pf6;
+ Scalar lhs_pf7;
+
+ Scalar rhs_pf0;
+ Scalar rhs_pf1;
+ Scalar rhs_pf2;
+ Scalar rhs_pf3;
+ Scalar rhs_pf4;
+ Scalar rhs_pf5;
+ Scalar rhs_pf6;
+ Scalar rhs_pf7;
+
+ // shared memory is formatted
+ // (contract idx in block, nocontract idx in block, block idx)
+ // where block idx is column major. This transposition limits the number of
+ // bank conflicts when reading the LHS. The core idea is that since the contracting
+ // index is shared by both sides, then the contracting index should be in threadIdx.x.
+
+ // On the LHS, we pad each row inside of each block with an extra element. This makes
+ // each block 8 rows of 9 elements, which is 72 elements. This gives no bank conflicts
+ // on writes and very few 2-way conflicts on reads. There is an 8x8 grid of these blocks.
+
+ // On the RHS we just add 8 padding elements to the end of each block. This gives no bank
+ // conflicts on writes and also none on reads.
+
+ // storage indices
+ const Index lhs_store_idx_base = threadIdx.y * 72 + threadIdx.x * 9 + threadIdx.z;
+ const Index rhs_store_idx_base = threadIdx.y * 72 + threadIdx.z * 8 + threadIdx.x;
+
+ const Index lhs_store_idx_0 = lhs_store_idx_base + 576 * 0;
+ const Index lhs_store_idx_1 = lhs_store_idx_base + 576 * 1;
+ const Index lhs_store_idx_2 = lhs_store_idx_base + 576 * 2;
+ const Index lhs_store_idx_3 = lhs_store_idx_base + 576 * 3;
+ const Index lhs_store_idx_4 = lhs_store_idx_base + 576 * 4;
+ const Index lhs_store_idx_5 = lhs_store_idx_base + 576 * 5;
+ const Index lhs_store_idx_6 = lhs_store_idx_base + 576 * 6;
+ const Index lhs_store_idx_7 = lhs_store_idx_base + 576 * 7;
+
+ const Index rhs_store_idx_0 = rhs_store_idx_base + 576 * 0;
+ const Index rhs_store_idx_1 = rhs_store_idx_base + 576 * 1;
+ const Index rhs_store_idx_2 = rhs_store_idx_base + 576 * 2;
+ const Index rhs_store_idx_3 = rhs_store_idx_base + 576 * 3;
+ const Index rhs_store_idx_4 = rhs_store_idx_base + 576 * 4;
+ const Index rhs_store_idx_5 = rhs_store_idx_base + 576 * 5;
+ const Index rhs_store_idx_6 = rhs_store_idx_base + 576 * 6;
+ const Index rhs_store_idx_7 = rhs_store_idx_base + 576 * 7;
+
+ // in the loading code, the following variables are important:
+ // threadIdx.x: the vertical position in an 8x8 block
+ // threadIdx.y: the vertical index of the 8x8 block in the grid
+ // threadIdx.z: the horizontal position in an 8x8 block
+ // k: the horizontal index of the 8x8 block in the grid
+ //
+ // The k parameter is implicit (it was the loop counter for a loop that went
+ // from 0 to <8, but now that loop is unrolled in the below code.
+
+ const Index load_idx_vert = threadIdx.x + 8 * threadIdx.y;
+ const Index lhs_vert = base_m + load_idx_vert;
+
+#define prefetchIntoRegisters(base_k) \
+ { \
+ lhs_pf0 = conv(0); \
+ lhs_pf1 = conv(0); \
+ lhs_pf2 = conv(0); \
+ lhs_pf3 = conv(0); \
+ lhs_pf4 = conv(0); \
+ lhs_pf5 = conv(0); \
+ lhs_pf6 = conv(0); \
+ lhs_pf7 = conv(0); \
+ \
+ rhs_pf0 = conv(0); \
+ rhs_pf1 = conv(0); \
+ rhs_pf2 = conv(0); \
+ rhs_pf3 = conv(0); \
+ rhs_pf4 = conv(0); \
+ rhs_pf5 = conv(0); \
+ rhs_pf6 = conv(0); \
+ rhs_pf7 = conv(0); \
+ \
+ if (!needs_edge_check || lhs_vert < m_size) { \
+ const Index lhs_horiz_0 = base_k + threadIdx.z + 0 * 8; \
+ const Index lhs_horiz_1 = base_k + threadIdx.z + 1 * 8; \
+ const Index lhs_horiz_2 = base_k + threadIdx.z + 2 * 8; \
+ const Index lhs_horiz_3 = base_k + threadIdx.z + 3 * 8; \
+ const Index lhs_horiz_4 = base_k + threadIdx.z + 4 * 8; \
+ const Index lhs_horiz_5 = base_k + threadIdx.z + 5 * 8; \
+ const Index lhs_horiz_6 = base_k + threadIdx.z + 6 * 8; \
+ const Index lhs_horiz_7 = base_k + threadIdx.z + 7 * 8; \
+ \
+ if (!needs_edge_check || lhs_horiz_7 < k_size) { \
+ lhs_pf0 = lhs(lhs_vert, lhs_horiz_0); \
+ lhs_pf1 = lhs(lhs_vert, lhs_horiz_1); \
+ lhs_pf2 = lhs(lhs_vert, lhs_horiz_2); \
+ lhs_pf3 = lhs(lhs_vert, lhs_horiz_3); \
+ lhs_pf4 = lhs(lhs_vert, lhs_horiz_4); \
+ lhs_pf5 = lhs(lhs_vert, lhs_horiz_5); \
+ lhs_pf6 = lhs(lhs_vert, lhs_horiz_6); \
+ lhs_pf7 = lhs(lhs_vert, lhs_horiz_7); \
+ } else if (lhs_horiz_6 < k_size) { \
+ lhs_pf0 = lhs(lhs_vert, lhs_horiz_0); \
+ lhs_pf1 = lhs(lhs_vert, lhs_horiz_1); \
+ lhs_pf2 = lhs(lhs_vert, lhs_horiz_2); \
+ lhs_pf3 = lhs(lhs_vert, lhs_horiz_3); \
+ lhs_pf4 = lhs(lhs_vert, lhs_horiz_4); \
+ lhs_pf5 = lhs(lhs_vert, lhs_horiz_5); \
+ lhs_pf6 = lhs(lhs_vert, lhs_horiz_6); \
+ } else if (lhs_horiz_5 < k_size) { \
+ lhs_pf0 = lhs(lhs_vert, lhs_horiz_0); \
+ lhs_pf1 = lhs(lhs_vert, lhs_horiz_1); \
+ lhs_pf2 = lhs(lhs_vert, lhs_horiz_2); \
+ lhs_pf3 = lhs(lhs_vert, lhs_horiz_3); \
+ lhs_pf4 = lhs(lhs_vert, lhs_horiz_4); \
+ lhs_pf5 = lhs(lhs_vert, lhs_horiz_5); \
+ } else if (lhs_horiz_4 < k_size) { \
+ lhs_pf0 = lhs(lhs_vert, lhs_horiz_0); \
+ lhs_pf1 = lhs(lhs_vert, lhs_horiz_1); \
+ lhs_pf2 = lhs(lhs_vert, lhs_horiz_2); \
+ lhs_pf3 = lhs(lhs_vert, lhs_horiz_3); \
+ lhs_pf4 = lhs(lhs_vert, lhs_horiz_4); \
+ } else if (lhs_horiz_3 < k_size) { \
+ lhs_pf0 = lhs(lhs_vert, lhs_horiz_0); \
+ lhs_pf1 = lhs(lhs_vert, lhs_horiz_1); \
+ lhs_pf2 = lhs(lhs_vert, lhs_horiz_2); \
+ lhs_pf3 = lhs(lhs_vert, lhs_horiz_3); \
+ } else if (lhs_horiz_2 < k_size) { \
+ lhs_pf0 = lhs(lhs_vert, lhs_horiz_0); \
+ lhs_pf1 = lhs(lhs_vert, lhs_horiz_1); \
+ lhs_pf2 = lhs(lhs_vert, lhs_horiz_2); \
+ } else if (lhs_horiz_1 < k_size) { \
+ lhs_pf0 = lhs(lhs_vert, lhs_horiz_0); \
+ lhs_pf1 = lhs(lhs_vert, lhs_horiz_1); \
+ } else if (lhs_horiz_0 < k_size) { \
+ lhs_pf0 = lhs(lhs_vert, lhs_horiz_0); \
+ } \
+ } \
+ \
+ const Index rhs_vert = base_k + load_idx_vert; \
+ if (!needs_edge_check || rhs_vert < k_size) { \
+ const Index rhs_horiz_0 = base_n + threadIdx.z + 0 * 8; \
+ const Index rhs_horiz_1 = base_n + threadIdx.z + 1 * 8; \
+ const Index rhs_horiz_2 = base_n + threadIdx.z + 2 * 8; \
+ const Index rhs_horiz_3 = base_n + threadIdx.z + 3 * 8; \
+ const Index rhs_horiz_4 = base_n + threadIdx.z + 4 * 8; \
+ const Index rhs_horiz_5 = base_n + threadIdx.z + 5 * 8; \
+ const Index rhs_horiz_6 = base_n + threadIdx.z + 6 * 8; \
+ const Index rhs_horiz_7 = base_n + threadIdx.z + 7 * 8; \
+ \
+ if (rhs_horiz_7 < n_size) { \
+ rhs_pf0 = rhs(rhs_vert, rhs_horiz_0); \
+ rhs_pf1 = rhs(rhs_vert, rhs_horiz_1); \
+ rhs_pf2 = rhs(rhs_vert, rhs_horiz_2); \
+ rhs_pf3 = rhs(rhs_vert, rhs_horiz_3); \
+ rhs_pf4 = rhs(rhs_vert, rhs_horiz_4); \
+ rhs_pf5 = rhs(rhs_vert, rhs_horiz_5); \
+ rhs_pf6 = rhs(rhs_vert, rhs_horiz_6); \
+ rhs_pf7 = rhs(rhs_vert, rhs_horiz_7); \
+ } else if (rhs_horiz_6 < n_size) { \
+ rhs_pf0 = rhs(rhs_vert, rhs_horiz_0); \
+ rhs_pf1 = rhs(rhs_vert, rhs_horiz_1); \
+ rhs_pf2 = rhs(rhs_vert, rhs_horiz_2); \
+ rhs_pf3 = rhs(rhs_vert, rhs_horiz_3); \
+ rhs_pf4 = rhs(rhs_vert, rhs_horiz_4); \
+ rhs_pf5 = rhs(rhs_vert, rhs_horiz_5); \
+ rhs_pf6 = rhs(rhs_vert, rhs_horiz_6); \
+ } else if (rhs_horiz_5 < n_size) { \
+ rhs_pf0 = rhs(rhs_vert, rhs_horiz_0); \
+ rhs_pf1 = rhs(rhs_vert, rhs_horiz_1); \
+ rhs_pf2 = rhs(rhs_vert, rhs_horiz_2); \
+ rhs_pf3 = rhs(rhs_vert, rhs_horiz_3); \
+ rhs_pf4 = rhs(rhs_vert, rhs_horiz_4); \
+ rhs_pf5 = rhs(rhs_vert, rhs_horiz_5); \
+ } else if (rhs_horiz_4 < n_size) { \
+ rhs_pf0 = rhs(rhs_vert, rhs_horiz_0); \
+ rhs_pf1 = rhs(rhs_vert, rhs_horiz_1); \
+ rhs_pf2 = rhs(rhs_vert, rhs_horiz_2); \
+ rhs_pf3 = rhs(rhs_vert, rhs_horiz_3); \
+ rhs_pf4 = rhs(rhs_vert, rhs_horiz_4); \
+ } else if (rhs_horiz_3 < n_size) { \
+ rhs_pf0 = rhs(rhs_vert, rhs_horiz_0); \
+ rhs_pf1 = rhs(rhs_vert, rhs_horiz_1); \
+ rhs_pf2 = rhs(rhs_vert, rhs_horiz_2); \
+ rhs_pf3 = rhs(rhs_vert, rhs_horiz_3); \
+ } else if (rhs_horiz_2 < n_size) { \
+ rhs_pf0 = rhs(rhs_vert, rhs_horiz_0); \
+ rhs_pf1 = rhs(rhs_vert, rhs_horiz_1); \
+ rhs_pf2 = rhs(rhs_vert, rhs_horiz_2); \
+ } else if (rhs_horiz_1 < n_size) { \
+ rhs_pf0 = rhs(rhs_vert, rhs_horiz_0); \
+ rhs_pf1 = rhs(rhs_vert, rhs_horiz_1); \
+ } else if (rhs_horiz_0 < n_size) { \
+ rhs_pf0 = rhs(rhs_vert, rhs_horiz_0); \
+ } \
+ } \
+ } \
+
+#define writeRegToShmem(_) \
+ lhs_shmem[lhs_store_idx_0] = lhs_pf0; \
+ rhs_shmem[rhs_store_idx_0] = rhs_pf0; \
+ \
+ lhs_shmem[lhs_store_idx_1] = lhs_pf1; \
+ rhs_shmem[rhs_store_idx_1] = rhs_pf1; \
+ \
+ lhs_shmem[lhs_store_idx_2] = lhs_pf2; \
+ rhs_shmem[rhs_store_idx_2] = rhs_pf2; \
+ \
+ lhs_shmem[lhs_store_idx_3] = lhs_pf3; \
+ rhs_shmem[rhs_store_idx_3] = rhs_pf3; \
+ \
+ lhs_shmem[lhs_store_idx_4] = lhs_pf4; \
+ rhs_shmem[rhs_store_idx_4] = rhs_pf4; \
+ \
+ lhs_shmem[lhs_store_idx_5] = lhs_pf5; \
+ rhs_shmem[rhs_store_idx_5] = rhs_pf5; \
+ \
+ lhs_shmem[lhs_store_idx_6] = lhs_pf6; \
+ rhs_shmem[rhs_store_idx_6] = rhs_pf6; \
+ \
+ lhs_shmem[lhs_store_idx_7] = lhs_pf7; \
+ rhs_shmem[rhs_store_idx_7] = rhs_pf7; \
+
+ // declare and initialize result array
+#define res(i, j) _res_##i##j
+#define initResultRow(i) \
+ Scalar res(i, 0) = conv(0); \
+ Scalar res(i, 1) = conv(0); \
+ Scalar res(i, 2) = conv(0); \
+ Scalar res(i, 3) = conv(0); \
+ Scalar res(i, 4) = conv(0); \
+ Scalar res(i, 5) = conv(0); \
+ Scalar res(i, 6) = conv(0); \
+ Scalar res(i, 7) = conv(0); \
+
+ internal::scalar_cast_op<int, Scalar> conv;
+ initResultRow(0);
+ initResultRow(1);
+ initResultRow(2);
+ initResultRow(3);
+ initResultRow(4);
+ initResultRow(5);
+ initResultRow(6);
+ initResultRow(7);
+#undef initResultRow
+
+ for (Index base_k = 0; base_k < k_size; base_k += 64) {
+ // wait for previous iteration to finish with shmem. Despite common sense,
+ // the code is a bit faster with this here then at bottom of loop
+ __syncthreads();
+
+ prefetchIntoRegisters(base_k);
+ writeRegToShmem();
+
+ #undef prefetchIntoRegisters
+ #undef writeRegToShmem
+
+ // wait for shared mem packing to be done before starting computation
+ __syncthreads();
+
+ // compute 8x8 matrix product by outer product. This involves packing one column
+ // of LHS and one row of RHS into registers (takes 16 registers).
+
+#define lcol(i) _lcol##i
+ Scalar lcol(0);
+ Scalar lcol(1);
+ Scalar lcol(2);
+ Scalar lcol(3);
+ Scalar lcol(4);
+ Scalar lcol(5);
+ Scalar lcol(6);
+ Scalar lcol(7);
+
+#define rrow(j) _rrow##j
+ Scalar rrow(0);
+ Scalar rrow(1);
+ Scalar rrow(2);
+ Scalar rrow(3);
+ Scalar rrow(4);
+ Scalar rrow(5);
+ Scalar rrow(6);
+ Scalar rrow(7);
+
+ // Now x corresponds to k, y to m, and z to n
+ const Scalar* lhs_block = &lhs_shmem[threadIdx.x + 9 * threadIdx.y];
+ const Scalar* rhs_block = &rhs_shmem[threadIdx.x + 8 * threadIdx.z];
+
+#define lhs_element(i, j) lhs_block[72 * ((i) + 8 * (j))]
+#define rhs_element(i, j) rhs_block[72 * ((i) + 8 * (j))]
+
+#define loadData(i, j) \
+ lcol(0) = lhs_element(0, j); \
+ rrow(0) = rhs_element(i, 0); \
+ lcol(1) = lhs_element(1, j); \
+ rrow(1) = rhs_element(i, 1); \
+ lcol(2) = lhs_element(2, j); \
+ rrow(2) = rhs_element(i, 2); \
+ lcol(3) = lhs_element(3, j); \
+ rrow(3) = rhs_element(i, 3); \
+ lcol(4) = lhs_element(4, j); \
+ rrow(4) = rhs_element(i, 4); \
+ lcol(5) = lhs_element(5, j); \
+ rrow(5) = rhs_element(i, 5); \
+ lcol(6) = lhs_element(6, j); \
+ rrow(6) = rhs_element(i, 6); \
+ lcol(7) = lhs_element(7, j); \
+ rrow(7) = rhs_element(i, 7); \
+
+#define computeCol(j) \
+ res(0, j) += lcol(0) * rrow(j); \
+ res(1, j) += lcol(1) * rrow(j); \
+ res(2, j) += lcol(2) * rrow(j); \
+ res(3, j) += lcol(3) * rrow(j); \
+ res(4, j) += lcol(4) * rrow(j); \
+ res(5, j) += lcol(5) * rrow(j); \
+ res(6, j) += lcol(6) * rrow(j); \
+ res(7, j) += lcol(7) * rrow(j); \
+
+#define computePass(i) \
+ loadData(i, i); \
+ \
+ computeCol(0); \
+ computeCol(1); \
+ computeCol(2); \
+ computeCol(3); \
+ computeCol(4); \
+ computeCol(5); \
+ computeCol(6); \
+ computeCol(7); \
+
+ computePass(0);
+ computePass(1);
+ computePass(2);
+ computePass(3);
+ computePass(4);
+ computePass(5);
+ computePass(6);
+ computePass(7);
+
+#undef lcol
+#undef rrow
+#undef lhs_element
+#undef rhs_element
+#undef loadData
+#undef computeCol
+#undef computePass
+ } // end loop over k
+
+ // we've now iterated over all of the large (ie width 64) k blocks and
+ // accumulated results in registers. At this point thread (x, y, z) contains
+ // the sum across all big k blocks of the product of little k block of index (x, y)
+ // with block of index (y, z). To compute the final output, we need to reduce
+ // the 8 threads over y by summation.
+#if defined(EIGEN_HIPCC) || (defined(EIGEN_CUDA_SDK_VER) && EIGEN_CUDA_SDK_VER < 90000)
+#define shuffleInc(i, j, mask) res(i, j) += __shfl_xor(res(i, j), mask)
+#else
+#define shuffleInc(i, j, mask) res(i, j) += __shfl_xor_sync(0xFFFFFFFF, res(i, j), mask)
+#endif
+
+#define reduceRow(i, mask) \
+ shuffleInc(i, 0, mask); \
+ shuffleInc(i, 1, mask); \
+ shuffleInc(i, 2, mask); \
+ shuffleInc(i, 3, mask); \
+ shuffleInc(i, 4, mask); \
+ shuffleInc(i, 5, mask); \
+ shuffleInc(i, 6, mask); \
+ shuffleInc(i, 7, mask); \
+
+#define reduceMatrix(mask) \
+ reduceRow(0, mask); \
+ reduceRow(1, mask); \
+ reduceRow(2, mask); \
+ reduceRow(3, mask); \
+ reduceRow(4, mask); \
+ reduceRow(5, mask); \
+ reduceRow(6, mask); \
+ reduceRow(7, mask); \
+
+ // actually perform the reduction, now each thread of index (_, y, z)
+ // contains the correct values in its registers that belong in the output
+ // block
+ reduceMatrix(1);
+ reduceMatrix(2);
+ reduceMatrix(4);
+
+#undef shuffleInc
+#undef reduceRow
+#undef reduceMatrix
+
+ // now we need to copy the 64 values into main memory. We can't split work
+ // among threads because all variables are in registers. There's 2 ways
+ // to do this:
+ // (1) have 1 thread do 64 writes from registers into global memory
+ // (2) have 1 thread do 64 writes into shared memory, and then 8 threads
+ // each do 8 writes into global memory. We can just overwrite the shared
+ // memory from the problem we just solved.
+ // (2) is slightly faster than (1) due to less branching and more ILP
+
+ // TODO: won't yield much gain, but could just use currently unused shared mem
+ // and then we won't have to sync
+ // wait for shared mem to be out of use
+ __syncthreads();
+
+#define writeResultShmem(i, j) \
+ lhs_shmem[i + 8 * threadIdx.y + 64 * threadIdx.z + 512 * j] = res(i, j); \
+
+#define writeRow(i) \
+ writeResultShmem(i, 0); \
+ writeResultShmem(i, 1); \
+ writeResultShmem(i, 2); \
+ writeResultShmem(i, 3); \
+ writeResultShmem(i, 4); \
+ writeResultShmem(i, 5); \
+ writeResultShmem(i, 6); \
+ writeResultShmem(i, 7); \
+
+ if (threadIdx.x == 0) {
+ writeRow(0);
+ writeRow(1);
+ writeRow(2);
+ writeRow(3);
+ writeRow(4);
+ writeRow(5);
+ writeRow(6);
+ writeRow(7);
+ }
+#undef writeResultShmem
+#undef writeRow
+
+ const int max_i_write = numext::mini((int)((m_size - base_m - threadIdx.y + 7) / 8), 8);
+ const int max_j_write = numext::mini((int)((n_size - base_n - threadIdx.z + 7) / 8), 8);
+
+ if (threadIdx.x < max_i_write) {
+ if (max_j_write == 8) {
+ // TODO: can i trade bank conflicts for coalesced writes?
+ Scalar val0 = lhs_shmem[threadIdx.x + 8 * threadIdx.y + 64 * threadIdx.z + 512 * 0];
+ Scalar val1 = lhs_shmem[threadIdx.x + 8 * threadIdx.y + 64 * threadIdx.z + 512 * 1];
+ Scalar val2 = lhs_shmem[threadIdx.x + 8 * threadIdx.y + 64 * threadIdx.z + 512 * 2];
+ Scalar val3 = lhs_shmem[threadIdx.x + 8 * threadIdx.y + 64 * threadIdx.z + 512 * 3];
+ Scalar val4 = lhs_shmem[threadIdx.x + 8 * threadIdx.y + 64 * threadIdx.z + 512 * 4];
+ Scalar val5 = lhs_shmem[threadIdx.x + 8 * threadIdx.y + 64 * threadIdx.z + 512 * 5];
+ Scalar val6 = lhs_shmem[threadIdx.x + 8 * threadIdx.y + 64 * threadIdx.z + 512 * 6];
+ Scalar val7 = lhs_shmem[threadIdx.x + 8 * threadIdx.y + 64 * threadIdx.z + 512 * 7];
+
+ output(base_m + threadIdx.y + 8 * threadIdx.x, base_n + threadIdx.z + 8 * 0) = val0;
+ output(base_m + threadIdx.y + 8 * threadIdx.x, base_n + threadIdx.z + 8 * 1) = val1;
+ output(base_m + threadIdx.y + 8 * threadIdx.x, base_n + threadIdx.z + 8 * 2) = val2;
+ output(base_m + threadIdx.y + 8 * threadIdx.x, base_n + threadIdx.z + 8 * 3) = val3;
+ output(base_m + threadIdx.y + 8 * threadIdx.x, base_n + threadIdx.z + 8 * 4) = val4;
+ output(base_m + threadIdx.y + 8 * threadIdx.x, base_n + threadIdx.z + 8 * 5) = val5;
+ output(base_m + threadIdx.y + 8 * threadIdx.x, base_n + threadIdx.z + 8 * 6) = val6;
+ output(base_m + threadIdx.y + 8 * threadIdx.x, base_n + threadIdx.z + 8 * 7) = val7;
+ } else {
+#pragma unroll 7
+ for (int j = 0; j < max_j_write; j++) {
+ Scalar val = lhs_shmem[threadIdx.x + 8 * threadIdx.y + 64 * threadIdx.z + 512 * j];
+ output(base_m + threadIdx.y + 8 * threadIdx.x, base_n + threadIdx.z + 8 * j) = val;
+ }
+ }
+ }
+#undef res
+}
+
+
+template<typename Scalar, typename Index, typename LhsMapper,
+ typename RhsMapper, typename OutputMapper>
+__global__ void
+#if defined(EIGEN_HIPCC)
+__launch_bounds__(512, 1)
+#else
+__launch_bounds__(512)
+#endif
+EigenContractionKernel(const LhsMapper lhs, const RhsMapper rhs,
+ const OutputMapper output,
+ const Index m_size, const Index n_size, const Index k_size) {
+ __shared__ Scalar lhs_shmem[72 * 64];
+ __shared__ Scalar rhs_shmem[72 * 64];
+
+ const Index m_block_idx = blockIdx.x;
+ const Index n_block_idx = blockIdx.y;
+
+ const Index base_m = 64 * m_block_idx;
+ const Index base_n = 64 * n_block_idx;
+
+ if (base_m + 63 < m_size && base_n + 63 < n_size) {
+ EigenContractionKernelInternal<Scalar, Index, LhsMapper, RhsMapper, OutputMapper, false>(lhs, rhs, output, lhs_shmem, rhs_shmem, m_size, n_size, k_size);
+ } else {
+ EigenContractionKernelInternal<Scalar, Index, LhsMapper, RhsMapper, OutputMapper, true>(lhs, rhs, output, lhs_shmem, rhs_shmem, m_size, n_size, k_size);
+ }
+}
+
+
+template<typename Index, typename LhsMapper,
+ typename RhsMapper, typename OutputMapper, bool CHECK_LHS_BOUNDARY,
+ bool CHECK_RHS_BOUNDARY>
+__device__ __forceinline__ void
+EigenFloatContractionKernelInternal16x16(const LhsMapper lhs, const RhsMapper rhs,
+ const OutputMapper output, float2 lhs_shmem2[][16],
+ float2 rhs_shmem2[][8], const Index m_size,
+ const Index n_size, const Index k_size,
+ const Index base_m, const Index base_n) {
+
+ // prefetch registers
+ float4 lhs_pf0, rhs_pf0;
+
+ float4 results[4];
+ for (int i=0; i < 4; i++) {
+ results[i].x = results[i].y = results[i].z = results[i].w = 0;
+ }
+
+#define prefetch_lhs(reg, row, col) \
+ if (!CHECK_LHS_BOUNDARY) { \
+ if (col < k_size) { \
+ reg =lhs.template loadPacket<float4,Unaligned>(row, col); \
+ } \
+ } else { \
+ if (col < k_size) { \
+ if (row + 3 < m_size) { \
+ reg =lhs.template loadPacket<float4,Unaligned>(row, col); \
+ } else if (row + 2 < m_size) { \
+ reg.x =lhs(row + 0, col); \
+ reg.y =lhs(row + 1, col); \
+ reg.z =lhs(row + 2, col); \
+ } else if (row + 1 < m_size) { \
+ reg.x =lhs(row + 0, col); \
+ reg.y =lhs(row + 1, col); \
+ } else if (row < m_size) { \
+ reg.x =lhs(row + 0, col); \
+ } \
+ } \
+ } \
+
+ Index lhs_vert = base_m+threadIdx.x*4;
+
+ for (Index k = 0; k < k_size; k += 16) {
+
+ lhs_pf0 = internal::pset1<float4>(0);
+ rhs_pf0 = internal::pset1<float4>(0);
+
+ Index lhs_horiz = threadIdx.y+k;
+ prefetch_lhs(lhs_pf0, lhs_vert, lhs_horiz)
+
+ Index rhs_vert = k+(threadIdx.x%4)*4;
+ Index rhs_horiz0 = (threadIdx.x>>2)+threadIdx.y*4+base_n;
+
+ if (!CHECK_RHS_BOUNDARY) {
+ if ((rhs_vert + 3) < k_size) {
+ // just CHECK_RHS_BOUNDARY
+ rhs_pf0 = rhs.template loadPacket<float4,Unaligned>(rhs_vert, rhs_horiz0);
+ } else if (rhs_vert + 2 < k_size) {
+ // just CHECK_RHS_BOUNDARY
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ rhs_pf0.y = rhs(rhs_vert + 1, rhs_horiz0);
+ rhs_pf0.z = rhs(rhs_vert + 2, rhs_horiz0);
+ } else if (rhs_vert + 1 < k_size) {
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ rhs_pf0.y = rhs(rhs_vert + 1, rhs_horiz0);
+ } else if (rhs_vert < k_size) {
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ }
+ } else {
+ if (rhs_horiz0 < n_size) {
+ if ((rhs_vert + 3) < k_size) {
+ rhs_pf0 = rhs.template loadPacket<float4,Unaligned>(rhs_vert, rhs_horiz0);
+ } else if ((rhs_vert + 2) < k_size) {
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ rhs_pf0.y = rhs(rhs_vert + 1, rhs_horiz0);
+ rhs_pf0.z = rhs(rhs_vert + 2, rhs_horiz0);
+ } else if ((rhs_vert + 1) < k_size) {
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ rhs_pf0.y = rhs(rhs_vert + 1, rhs_horiz0);
+ } else if (rhs_vert < k_size) {
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ }
+ }
+ }
+ float x1, x2 ;
+ // the following can be a bitwise operation..... some day.
+ if((threadIdx.x%8) < 4) {
+ x1 = rhs_pf0.y;
+ x2 = rhs_pf0.w;
+ } else {
+ x1 = rhs_pf0.x;
+ x2 = rhs_pf0.z;
+ }
+ #if defined(EIGEN_HIPCC) || (defined(EIGEN_CUDA_SDK_VER) && EIGEN_CUDA_SDK_VER < 90000)
+ x1 = __shfl_xor(x1, 4);
+ x2 = __shfl_xor(x2, 4);
+ #else
+ x1 = __shfl_xor_sync(0xFFFFFFFF, x1, 4);
+ x2 = __shfl_xor_sync(0xFFFFFFFF, x2, 4);
+ #endif
+ if((threadIdx.x%8) < 4) {
+ rhs_pf0.y = x1;
+ rhs_pf0.w = x2;
+ } else {
+ rhs_pf0.x = x1;
+ rhs_pf0.z = x2;
+ }
+
+ // We have 64 features.
+ // Row 0 -> times (0, 4, 8, 12, 1, 5, 9, 13) for features 0, 1.
+ // Row 1 -> times (0, 4, 8, 12, 1, 5, 9, 13) for features 2, 3.
+ // ...
+ // Row 31 -> times (0, 4, 8, 12, 1, 5, 9, 13) for features 62, 63
+ // Row 32 -> times (2, 6, 10, 14, 3, 7, 11, 15) for features 0, 1
+ // ...
+ rhs_shmem2[(threadIdx.x>>3)+ threadIdx.y*2][threadIdx.x%8] = make_float2(rhs_pf0.x, rhs_pf0.y);
+ rhs_shmem2[(threadIdx.x>>3)+ threadIdx.y*2+32][threadIdx.x%8] = make_float2(rhs_pf0.z, rhs_pf0.w);
+
+ // Row 0 (time 0) -> features (0, 1), (4, 5), .. (28, 29), (32, 33), .. (60, 61)
+ // Row 1 (time 1) -> features (0, 1), (4, 5), .. (28, 29), (32, 33), .. (60, 61)
+ // ...
+ // Row 15 (time 15) -> features (0, 1), (4, 5), .. (28, 29), (32, 33), .. (60, 61)
+ // Row 16 (time 0) -> features (2, 3), (6, 7), .. (30, 31), (34, 35), .. (62, 63)
+ // ...
+
+ lhs_shmem2[threadIdx.y][threadIdx.x] = make_float2(lhs_pf0.x, lhs_pf0.y);
+ lhs_shmem2[threadIdx.y+16][threadIdx.x] = make_float2(lhs_pf0.z, lhs_pf0.w);
+
+
+#define add_vals(fl1, fl2, fr1, fr2)\
+ results[0].x += fl1.x * fr1.x;\
+ results[0].y += fl1.y * fr1.x;\
+ results[0].z += fl2.x * fr1.x;\
+ results[0].w += fl2.y * fr1.x;\
+\
+ results[1].x += fl1.x * fr1.y;\
+ results[1].y += fl1.y * fr1.y;\
+ results[1].z += fl2.x * fr1.y;\
+ results[1].w += fl2.y * fr1.y;\
+\
+ results[2].x += fl1.x * fr2.x;\
+ results[2].y += fl1.y * fr2.x;\
+ results[2].z += fl2.x * fr2.x;\
+ results[2].w += fl2.y * fr2.x;\
+\
+ results[3].x += fl1.x * fr2.y;\
+ results[3].y += fl1.y * fr2.y;\
+ results[3].z += fl2.x * fr2.y;\
+ results[3].w += fl2.y * fr2.y;\
+
+ __syncthreads();
+
+ // Do the multiplies.
+ #pragma unroll
+ for (int koff = 0; koff < 16; koff ++) {
+ // 32 x threads.
+ float2 fl1 = lhs_shmem2[koff][threadIdx.x];
+ float2 fl2 = lhs_shmem2[koff + 16][threadIdx.x];
+
+ int start_feature = threadIdx.y * 4;
+ float2 fr1 = rhs_shmem2[(start_feature>>1) + 32*((koff%4)/2)][koff/4 + (koff%2)*4];
+ float2 fr2 = rhs_shmem2[(start_feature>>1) + 1 + 32*((koff%4)/2)][koff/4 + (koff%2)*4];
+
+ add_vals(fl1, fl2, fr1, fr2)
+ }
+ __syncthreads();
+ }
+
+#undef prefetch_lhs
+#undef add_vals
+
+ Index horiz_base = threadIdx.y*4+base_n;
+ if (!CHECK_LHS_BOUNDARY && !CHECK_RHS_BOUNDARY) {
+ for (int i = 0; i < 4; i++) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ output(lhs_vert + 2, horiz_base + i) = results[i].z;
+ output(lhs_vert + 3, horiz_base + i) = results[i].w;
+ }
+ } else if (!CHECK_RHS_BOUNDARY) {
+ // CHECK LHS
+ if (lhs_vert + 3 < m_size) {
+ for (int i = 0; i < 4; i++) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ output(lhs_vert + 2, horiz_base + i) = results[i].z;
+ output(lhs_vert + 3, horiz_base + i) = results[i].w;
+ }
+ } else if (lhs_vert + 2 < m_size) {
+ for (int i = 0; i < 4; i++) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ output(lhs_vert + 2, horiz_base + i) = results[i].z;
+ }
+ } else if (lhs_vert + 1 < m_size) {
+ for (int i = 0; i < 4; i++) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ }
+ } else if (lhs_vert < m_size) {
+ for (int i = 0; i < 4; i++) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ }
+ }
+ } else if (!CHECK_LHS_BOUNDARY) {
+ // CHECK RHS
+ /*
+ int ncols_rem = fminf(n_size- horiz_base, 4);
+ for (int i = 0; i < ncols_rem; i++) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ output(lhs_vert + 2, horiz_base + i) = results[i].z;
+ output(lhs_vert + 3, horiz_base + i) = results[i].w;
+ }*/
+ for (int i = 0; i < 4; i++) {
+ if (horiz_base+i < n_size) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ output(lhs_vert + 2, horiz_base + i) = results[i].z;
+ output(lhs_vert + 3, horiz_base + i) = results[i].w;
+ }
+ }
+ } else {
+ // CHECK both boundaries.
+ for (int i = 0; i < 4; i++) {
+ if (horiz_base+i < n_size) {
+ if (lhs_vert < m_size)
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ if (lhs_vert + 1 < m_size)
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ if (lhs_vert + 2 < m_size)
+ output(lhs_vert + 2, horiz_base + i) = results[i].z;
+ if (lhs_vert + 3 < m_size)
+ output(lhs_vert + 3, horiz_base + i) = results[i].w;
+ }
+ }
+ }
+}
+
+
+template<typename Index, typename LhsMapper,
+ typename RhsMapper, typename OutputMapper, bool CHECK_LHS_BOUNDARY,
+ bool CHECK_RHS_BOUNDARY>
+__device__ __forceinline__ void
+EigenFloatContractionKernelInternal(const LhsMapper lhs, const RhsMapper rhs,
+ const OutputMapper output, float2 lhs_shmem2[][32],
+ float2 rhs_shmem2[][8], const Index m_size,
+ const Index n_size, const Index k_size,
+ const Index base_m, const Index base_n) {
+
+ // prefetch registers
+ float4 lhs_pf0, lhs_pf1, lhs_pf2, lhs_pf3;
+ float4 rhs_pf0, rhs_pf1;
+
+ float4 results[8];
+ for (int i=0; i < 8; i++) {
+ results[i].x = results[i].y = results[i].z = results[i].w = 0;
+ }
+
+ Index lhs_vert = base_m+threadIdx.x*4+(threadIdx.y%4)*32;
+ for (Index k = 0; k < k_size; k += 32) {
+ lhs_pf0 = internal::pset1<float4>(0);
+ lhs_pf1 = internal::pset1<float4>(0);
+ lhs_pf2 = internal::pset1<float4>(0);
+ lhs_pf3 = internal::pset1<float4>(0);
+
+ rhs_pf0 = internal::pset1<float4>(0);
+ rhs_pf1 = internal::pset1<float4>(0);
+
+ if (!CHECK_LHS_BOUNDARY) {
+ if ((threadIdx.y/4+k+24) < k_size) {
+ lhs_pf0 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k));
+ lhs_pf1 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k+8));
+ lhs_pf2 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k+16));
+ lhs_pf3 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k+24));
+ } else if ((threadIdx.y/4+k+16) < k_size) {
+ lhs_pf0 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k));
+ lhs_pf1 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k+8));
+ lhs_pf2 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k+16));
+ } else if ((threadIdx.y/4+k+8) < k_size) {
+ lhs_pf0 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k));
+ lhs_pf1 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k+8));
+ } else if ((threadIdx.y/4+k) < k_size) {
+ lhs_pf0 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k));
+ }
+ } else {
+ // just CHECK_LHS_BOUNDARY
+ if (lhs_vert + 3 < m_size) {
+ if ((threadIdx.y/4+k+24) < k_size) {
+ lhs_pf0 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k));
+ lhs_pf1 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k+8));
+ lhs_pf2 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k+16));
+ lhs_pf3 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k+24));
+ } else if ((threadIdx.y/4+k+16) < k_size) {
+ lhs_pf0 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k));
+ lhs_pf1 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k+8));
+ lhs_pf2 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k+16));
+ } else if ((threadIdx.y/4+k+8) < k_size) {
+ lhs_pf0 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k));
+ lhs_pf1 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k+8));
+ } else if ((threadIdx.y/4+k) < k_size) {
+ lhs_pf0 =lhs.template loadPacket<float4,Unaligned>(lhs_vert, (threadIdx.y/4+k));
+ }
+ } else if (lhs_vert + 2 < m_size) {
+ if ((threadIdx.y/4+k+24) < k_size) {
+ lhs_pf0.x =lhs(lhs_vert + 0, (threadIdx.y/4+k));
+ lhs_pf0.y =lhs(lhs_vert + 1, (threadIdx.y/4+k));
+ lhs_pf0.z =lhs(lhs_vert + 2, (threadIdx.y/4+k));
+ lhs_pf1.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+8));
+ lhs_pf1.y =lhs(lhs_vert + 1, (threadIdx.y/4+k+8));
+ lhs_pf1.z =lhs(lhs_vert + 2, (threadIdx.y/4+k+8));
+ lhs_pf2.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+16));
+ lhs_pf2.y =lhs(lhs_vert + 1, (threadIdx.y/4+k+16));
+ lhs_pf2.z =lhs(lhs_vert + 2, (threadIdx.y/4+k+16));
+ lhs_pf3.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+24));
+ lhs_pf3.y =lhs(lhs_vert + 1, (threadIdx.y/4+k+24));
+ lhs_pf3.z =lhs(lhs_vert + 2, (threadIdx.y/4+k+24));
+ } else if ((threadIdx.y/4+k+16) < k_size) {
+ lhs_pf0.x =lhs(lhs_vert + 0, (threadIdx.y/4+k));
+ lhs_pf0.y =lhs(lhs_vert + 1, (threadIdx.y/4+k));
+ lhs_pf0.z =lhs(lhs_vert + 2, (threadIdx.y/4+k));
+ lhs_pf1.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+8));
+ lhs_pf1.y =lhs(lhs_vert + 1, (threadIdx.y/4+k+8));
+ lhs_pf1.z =lhs(lhs_vert + 2, (threadIdx.y/4+k+8));
+ lhs_pf2.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+16));
+ lhs_pf2.y =lhs(lhs_vert + 1, (threadIdx.y/4+k+16));
+ lhs_pf2.z =lhs(lhs_vert + 2, (threadIdx.y/4+k+16));
+ } else if ((threadIdx.y/4+k+8) < k_size) {
+ lhs_pf0.x =lhs(lhs_vert + 0, (threadIdx.y/4+k));
+ lhs_pf0.y =lhs(lhs_vert + 1, (threadIdx.y/4+k));
+ lhs_pf0.z =lhs(lhs_vert + 2, (threadIdx.y/4+k));
+ lhs_pf1.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+8));
+ lhs_pf1.y =lhs(lhs_vert + 1, (threadIdx.y/4+k+8));
+ lhs_pf1.z =lhs(lhs_vert + 2, (threadIdx.y/4+k+8));
+ } else if ((threadIdx.y/4+k) < k_size) {
+ lhs_pf0.x =lhs(lhs_vert + 0, (threadIdx.y/4+k));
+ lhs_pf0.y =lhs(lhs_vert + 1, (threadIdx.y/4+k));
+ lhs_pf0.z =lhs(lhs_vert + 2, (threadIdx.y/4+k));
+ }
+ } else if (lhs_vert + 1 < m_size) {
+ if ((threadIdx.y/4+k+24) < k_size) {
+ lhs_pf0.x =lhs(lhs_vert + 0, (threadIdx.y/4+k));
+ lhs_pf0.y =lhs(lhs_vert + 1, (threadIdx.y/4+k));
+ lhs_pf1.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+8));
+ lhs_pf1.y =lhs(lhs_vert + 1, (threadIdx.y/4+k+8));
+ lhs_pf2.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+16));
+ lhs_pf2.y =lhs(lhs_vert + 1, (threadIdx.y/4+k+16));
+ lhs_pf3.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+24));
+ lhs_pf3.y =lhs(lhs_vert + 1, (threadIdx.y/4+k+24));
+ } else if ((threadIdx.y/4+k+16) < k_size) {
+ lhs_pf0.x =lhs(lhs_vert + 0, (threadIdx.y/4+k));
+ lhs_pf0.y =lhs(lhs_vert + 1, (threadIdx.y/4+k));
+ lhs_pf1.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+8));
+ lhs_pf1.y =lhs(lhs_vert + 1, (threadIdx.y/4+k+8));
+ lhs_pf2.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+16));
+ lhs_pf2.y =lhs(lhs_vert + 1, (threadIdx.y/4+k+16));
+ } else if ((threadIdx.y/4+k+8) < k_size) {
+ lhs_pf0.x =lhs(lhs_vert + 0, (threadIdx.y/4+k));
+ lhs_pf0.y =lhs(lhs_vert + 1, (threadIdx.y/4+k));
+ lhs_pf1.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+8));
+ lhs_pf1.y =lhs(lhs_vert + 1, (threadIdx.y/4+k+8));
+ } else if ((threadIdx.y/4+k) < k_size) {
+ lhs_pf0.x =lhs(lhs_vert + 0, (threadIdx.y/4+k));
+ lhs_pf0.y =lhs(lhs_vert + 1, (threadIdx.y/4+k));
+ }
+ } else if (lhs_vert < m_size) {
+ if ((threadIdx.y/4+k+24) < k_size) {
+ lhs_pf0.x =lhs(lhs_vert + 0, (threadIdx.y/4+k));
+ lhs_pf1.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+8));
+ lhs_pf2.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+16));
+ lhs_pf3.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+24));
+ } else if ((threadIdx.y/4+k+16) < k_size) {
+ lhs_pf0.x =lhs(lhs_vert + 0, (threadIdx.y/4+k));
+ lhs_pf1.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+8));
+ lhs_pf2.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+16));
+ } else if ((threadIdx.y/4+k+8) < k_size) {
+ lhs_pf0.x =lhs(lhs_vert + 0, (threadIdx.y/4+k));
+ lhs_pf1.x =lhs(lhs_vert + 0, (threadIdx.y/4+k+8));
+ } else if ((threadIdx.y/4+k) < k_size) {
+ lhs_pf0.x =lhs(lhs_vert + 0, (threadIdx.y/4+k));
+ }
+ }
+ }
+ __syncthreads();
+ Index rhs_vert = k+threadIdx.x*4;
+ Index rhs_horiz0 = threadIdx.y*2+base_n;
+ Index rhs_horiz1 = threadIdx.y*2+1+base_n;
+ if (!CHECK_RHS_BOUNDARY) {
+ if ((rhs_vert + 3) < k_size) {
+ // just CHECK_RHS_BOUNDARY
+ rhs_pf0 = rhs.template loadPacket<float4,Unaligned>(rhs_vert, rhs_horiz0);
+ rhs_pf1 = rhs.template loadPacket<float4,Unaligned>(rhs_vert, rhs_horiz1);
+ } else if (rhs_vert + 2 < k_size) {
+ // just CHECK_RHS_BOUNDARY
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ rhs_pf0.y = rhs(rhs_vert + 1, rhs_horiz0);
+ rhs_pf0.z = rhs(rhs_vert + 2, rhs_horiz0);
+ rhs_pf1.x = rhs(rhs_vert, rhs_horiz1);
+ rhs_pf1.y = rhs(rhs_vert + 1, rhs_horiz1);
+ rhs_pf1.z = rhs(rhs_vert + 2, rhs_horiz1);
+ } else if (rhs_vert + 1 < k_size) {
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ rhs_pf0.y = rhs(rhs_vert + 1, rhs_horiz0);
+ rhs_pf1.x = rhs(rhs_vert, rhs_horiz1);
+ rhs_pf1.y = rhs(rhs_vert + 1, rhs_horiz1);
+ } else if (rhs_vert < k_size) {
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ rhs_pf1.x = rhs(rhs_vert, rhs_horiz1);
+ }
+ } else {
+ if (rhs_horiz1 < n_size) {
+ if ((rhs_vert + 3) < k_size) {
+ // just CHECK_RHS_BOUNDARY
+ rhs_pf0 = rhs.template loadPacket<float4,Unaligned>(rhs_vert, rhs_horiz0);
+ rhs_pf1 = rhs.template loadPacket<float4,Unaligned>(rhs_vert, rhs_horiz1);
+ } else if (rhs_vert + 2 < k_size) {
+ // just CHECK_RHS_BOUNDARY
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ rhs_pf0.y = rhs(rhs_vert + 1, rhs_horiz0);
+ rhs_pf0.z = rhs(rhs_vert + 2, rhs_horiz0);
+ rhs_pf1.x = rhs(rhs_vert, rhs_horiz1);
+ rhs_pf1.y = rhs(rhs_vert + 1, rhs_horiz1);
+ rhs_pf1.z = rhs(rhs_vert + 2, rhs_horiz1);
+ } else if (k+threadIdx.x*4 + 1 < k_size) {
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ rhs_pf0.y = rhs(rhs_vert + 1, rhs_horiz0);
+ rhs_pf1.x = rhs(rhs_vert, rhs_horiz1);
+ rhs_pf1.y = rhs(rhs_vert + 1, rhs_horiz1);
+ } else if (k+threadIdx.x*4 < k_size) {
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ rhs_pf1.x = rhs(rhs_vert, rhs_horiz1);
+ }
+ } else if (rhs_horiz0 < n_size) {
+ if ((rhs_vert + 3) < k_size) {
+ // just CHECK_RHS_BOUNDARY
+ rhs_pf0 = rhs.template loadPacket<float4,Unaligned>(rhs_vert, rhs_horiz0);
+ } else if ((rhs_vert + 2) < k_size) {
+ // just CHECK_RHS_BOUNDARY
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ rhs_pf0.y = rhs(rhs_vert + 1, rhs_horiz0);
+ rhs_pf0.z = rhs(rhs_vert + 2, rhs_horiz0);
+ } else if ((rhs_vert + 1) < k_size) {
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ rhs_pf0.y = rhs(rhs_vert + 1, rhs_horiz0);
+ } else if (rhs_vert < k_size) {
+ rhs_pf0.x = rhs(rhs_vert, rhs_horiz0);
+ }
+ }
+ }
+ __syncthreads();
+ // Loaded. Do computation
+ // Row 0 -> times (0, 4, 8, .. 28) for features 0, 1.
+ // Row 1 -> times (0, 4, 8, .. 28) for features 2, 3.
+ // ..
+ // Row 31 -> times (0, 4, 8, .. 28) for features 62, 63
+ rhs_shmem2[threadIdx.y][threadIdx.x] = make_float2(rhs_pf0.x, rhs_pf1.x);
+ // Row 32 -> times (1, 5, 9, .. 29) for features 0, 1.
+ // Row 33 -> times (1, 5, 9, .. 29) for features 2, 3.
+ // ..
+ rhs_shmem2[threadIdx.y+32][threadIdx.x] = make_float2(rhs_pf0.y, rhs_pf1.y);
+ // Row 64 -> times (2, 6, 10, .. 30) for features 0, 1.
+ // Row 65 -> times (2, 6, 10, .. 30) for features 2, 3.
+ rhs_shmem2[threadIdx.y+64][threadIdx.x] = make_float2(rhs_pf0.z, rhs_pf1.z);
+ // Row 96 -> times (3, 7, 11, .. 31) for features 0, 1.
+ // Row 97 -> times (3, 7, 11, .. 31) for features 2, 3.
+ rhs_shmem2[threadIdx.y+96][threadIdx.x] = make_float2(rhs_pf0.w, rhs_pf1.w);
+
+ // LHS.
+ // Row 0 (time 0) -> features (0, 1), (4, 5), .. (28, 29), (32, 33), .. (60, 61) .. (124, 125)
+ // Row 1 (time 1) -> features (0, 1), (4, 5), .. (28, 29), (32, 33), .. (60, 61) .. (124, 125)
+ // ...
+ // Row 8 (time 0) -> features (2, 3), (6, 7), .. (30, 31), (34, 35), .. (62, 63) .. (126, 127)
+ // Row 15 (time 7) -> features (2, 3), (6, 7), .. (30, 31), (34, 35), .. (62, 63) .. (126, 127)
+
+
+#define add_vals(a_feat1, a_feat2, f1, f2, f3, f4)\
+ results[0].x += a_feat1.x * f1.x;\
+ results[1].x += a_feat1.x * f1.y;\
+ results[2].x += a_feat1.x * f2.x;\
+ results[3].x += a_feat1.x * f2.y;\
+ results[4].x += a_feat1.x * f3.x;\
+ results[5].x += a_feat1.x * f3.y;\
+ results[6].x += a_feat1.x * f4.x;\
+ results[7].x += a_feat1.x * f4.y;\
+\
+ results[0].y += a_feat1.y * f1.x;\
+ results[1].y += a_feat1.y * f1.y;\
+ results[2].y += a_feat1.y * f2.x;\
+ results[3].y += a_feat1.y * f2.y;\
+ results[4].y += a_feat1.y * f3.x;\
+ results[5].y += a_feat1.y * f3.y;\
+ results[6].y += a_feat1.y * f4.x;\
+ results[7].y += a_feat1.y * f4.y;\
+\
+ results[0].z += a_feat2.x * f1.x;\
+ results[1].z += a_feat2.x * f1.y;\
+ results[2].z += a_feat2.x * f2.x;\
+ results[3].z += a_feat2.x * f2.y;\
+ results[4].z += a_feat2.x * f3.x;\
+ results[5].z += a_feat2.x * f3.y;\
+ results[6].z += a_feat2.x * f4.x;\
+ results[7].z += a_feat2.x * f4.y;\
+\
+ results[0].w += a_feat2.y * f1.x;\
+ results[1].w += a_feat2.y * f1.y;\
+ results[2].w += a_feat2.y * f2.x;\
+ results[3].w += a_feat2.y * f2.y;\
+ results[4].w += a_feat2.y * f3.x;\
+ results[5].w += a_feat2.y * f3.y;\
+ results[6].w += a_feat2.y * f4.x;\
+ results[7].w += a_feat2.y * f4.y;\
+
+ lhs_shmem2[threadIdx.y/4][threadIdx.x+(threadIdx.y%4)*8] = make_float2(lhs_pf0.x, lhs_pf0.y);
+ lhs_shmem2[threadIdx.y/4+8][threadIdx.x+(threadIdx.y%4)*8] = make_float2(lhs_pf1.x, lhs_pf1.y);
+ lhs_shmem2[threadIdx.y/4+16][threadIdx.x+(threadIdx.y%4)*8] = make_float2(lhs_pf2.x, lhs_pf2.y);
+ lhs_shmem2[threadIdx.y/4+24][threadIdx.x+(threadIdx.y%4)*8] = make_float2(lhs_pf3.x, lhs_pf3.y);
+
+ lhs_shmem2[threadIdx.y/4 + 32][threadIdx.x+(threadIdx.y%4)*8] = make_float2(lhs_pf0.z, lhs_pf0.w);
+ lhs_shmem2[threadIdx.y/4 + 40][threadIdx.x+(threadIdx.y%4)*8] = make_float2(lhs_pf1.z, lhs_pf1.w);
+ lhs_shmem2[threadIdx.y/4 + 48][threadIdx.x+(threadIdx.y%4)*8] = make_float2(lhs_pf2.z, lhs_pf2.w);
+ lhs_shmem2[threadIdx.y/4 + 56][threadIdx.x+(threadIdx.y%4)*8] = make_float2(lhs_pf3.z, lhs_pf3.w);
+
+ __syncthreads();
+
+ // Do the multiplies.
+ #pragma unroll
+ for (int koff = 0; koff < 32; koff ++) {
+ float2 a3 = lhs_shmem2[koff][threadIdx.x + (threadIdx.y % 4) * 8];
+ float2 a4 = lhs_shmem2[koff + 32][threadIdx.x + (threadIdx.y % 4) * 8];
+
+ // first feature is at (threadIdx.y/4) * 8 last is at start + 8.
+ int start_feature = (threadIdx.y / 4) * 8;
+
+ float2 br1 = rhs_shmem2[start_feature/2 + (koff % 4) * 32][koff/4];
+ float2 br2 = rhs_shmem2[start_feature/2 + 1 + (koff % 4) * 32][koff/4];
+ float2 br3 = rhs_shmem2[start_feature/2 + 2 + (koff % 4) * 32][koff/4];
+ float2 br4 = rhs_shmem2[start_feature/2 + 3 + (koff % 4) * 32][koff/4];
+
+ add_vals(a3, a4, br1, br2, br3, br4)
+ }
+ __syncthreads();
+ } // end loop over k
+
+ __syncthreads();
+ Index horiz_base = (threadIdx.y/4)*8+base_n;
+ if (!CHECK_LHS_BOUNDARY && !CHECK_RHS_BOUNDARY) {
+ for (int i = 0; i < 8; i++) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ output(lhs_vert + 2, horiz_base + i) = results[i].z;
+ output(lhs_vert + 3, horiz_base + i) = results[i].w;
+ }
+ } else if (!CHECK_RHS_BOUNDARY) {
+ if (lhs_vert + 3 < m_size) {
+ for (int i = 0; i < 8; i++) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ output(lhs_vert + 2, horiz_base + i) = results[i].z;
+ output(lhs_vert + 3, horiz_base + i) = results[i].w;
+ }
+ } else if (lhs_vert + 2 < m_size) {
+ for (int i = 0; i < 8; i++) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ output(lhs_vert + 2, horiz_base + i) = results[i].z;
+ }
+ } else if (lhs_vert + 1 < m_size) {
+ for (int i = 0; i < 8; i++) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ }
+ } else if (lhs_vert < m_size) {
+ for (int i = 0; i < 8; i++) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ }
+ }
+ } else if (!CHECK_LHS_BOUNDARY) {
+ // CHECK BOUNDARY_B
+ for (int i = 0; i < 8; i++) {
+ if (horiz_base + i < n_size) {
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ output(lhs_vert + 2, horiz_base + i) = results[i].z;
+ output(lhs_vert + 3, horiz_base + i) = results[i].w;
+ }
+ }
+ } else {
+ // CHECK both boundaries.
+ for (int i = 0; i < 8; i++) {
+ if (horiz_base + i < n_size) {
+ if (lhs_vert < m_size)
+ output(lhs_vert, horiz_base + i) = results[i].x;
+ if (lhs_vert + 1 < m_size)
+ output(lhs_vert + 1, horiz_base + i) = results[i].y;
+ if (lhs_vert + 2 < m_size)
+ output(lhs_vert + 2, horiz_base + i) = results[i].z;
+ if (lhs_vert + 3 < m_size)
+ output(lhs_vert + 3, horiz_base + i) = results[i].w;
+ }
+ }
+ }
+}
+
+
+template<typename Index, typename LhsMapper,
+ typename RhsMapper, typename OutputMapper>
+__global__ void
+#if defined(EIGEN_HIPCC)
+__launch_bounds__(256, 1)
+#else
+__launch_bounds__(256)
+#endif
+EigenFloatContractionKernel(const LhsMapper lhs, const RhsMapper rhs,
+ const OutputMapper output,
+ const Index m_size, const Index n_size, const Index k_size) {
+ __shared__ float2 lhs_shmem[64*32];
+ __shared__ float2 rhs_shmem[128*8];
+
+ typedef float2 LHS_MEM[64][32];
+ typedef float2 RHS_MEM[128][8];
+
+ const Index m_block_idx = blockIdx.x;
+ const Index n_block_idx = blockIdx.y;
+
+ const Index base_m = 128 * m_block_idx;
+ const Index base_n = 64 * n_block_idx;
+
+ bool check_rhs = (base_n + 63) >= n_size;
+ bool check_lhs128 = (base_m + 127) >= m_size;
+
+ if (!check_rhs) {
+ if (!check_lhs128) {
+ // >= 128 rows left
+ EigenFloatContractionKernelInternal<Index, LhsMapper, RhsMapper, OutputMapper, false, false>(
+ lhs, rhs, output, *((LHS_MEM *) lhs_shmem), *((RHS_MEM *) rhs_shmem), m_size, n_size, k_size, base_m, base_n);
+ } else {
+ EigenFloatContractionKernelInternal<Index, LhsMapper, RhsMapper, OutputMapper, true, false>(
+ lhs, rhs, output, *((LHS_MEM *) lhs_shmem), *((RHS_MEM *) rhs_shmem), m_size, n_size, k_size, base_m, base_n);
+ }
+ } else {
+ if (!check_lhs128) {
+ // >= 128 rows left
+ EigenFloatContractionKernelInternal<Index, LhsMapper, RhsMapper, OutputMapper, false, true>(
+ lhs, rhs, output, *((LHS_MEM *) lhs_shmem), *((RHS_MEM *) rhs_shmem), m_size, n_size, k_size, base_m, base_n);
+ } else {
+ EigenFloatContractionKernelInternal<Index, LhsMapper, RhsMapper, OutputMapper, true, true>(
+ lhs, rhs, output, *((LHS_MEM *) lhs_shmem), *((RHS_MEM *) rhs_shmem), m_size, n_size, k_size, base_m, base_n);
+ }
+ }
+}
+
+template<typename Index, typename LhsMapper,
+ typename RhsMapper, typename OutputMapper>
+__global__ void
+#if defined(EIGEN_HIPCC)
+__launch_bounds__(256, 1)
+#else
+__launch_bounds__(256)
+#endif
+EigenFloatContractionKernel16x16(const LhsMapper lhs, const RhsMapper rhs,
+ const OutputMapper output,
+ const Index m_size, const Index n_size, const Index k_size) {
+ __shared__ float2 lhs_shmem[32][16];
+ __shared__ float2 rhs_shmem[64][8];
+
+ const Index m_block_idx = blockIdx.x;
+ const Index n_block_idx = blockIdx.y;
+
+ const Index base_m = 64 * m_block_idx;
+ const Index base_n = 64 * n_block_idx;
+
+ if (base_m + 63 < m_size) {
+ if (base_n + 63 < n_size) {
+ EigenFloatContractionKernelInternal16x16<Index, LhsMapper, RhsMapper, OutputMapper, false, false>(lhs, rhs, output, lhs_shmem, rhs_shmem, m_size, n_size, k_size, base_m, base_n);
+ } else {
+ EigenFloatContractionKernelInternal16x16<Index, LhsMapper, RhsMapper, OutputMapper, false, true>(lhs, rhs, output, lhs_shmem, rhs_shmem, m_size, n_size, k_size, base_m, base_n);
+ }
+ } else {
+ if (base_n + 63 < n_size) {
+ EigenFloatContractionKernelInternal16x16<Index, LhsMapper, RhsMapper, OutputMapper, true, false>(lhs, rhs, output, lhs_shmem, rhs_shmem, m_size, n_size, k_size, base_m, base_n);
+ } else {
+ EigenFloatContractionKernelInternal16x16<Index, LhsMapper, RhsMapper, OutputMapper, true, true>(lhs, rhs, output, lhs_shmem, rhs_shmem, m_size, n_size, k_size, base_m, base_n);
+ }
+ }
+}
+
+
+template<typename Indices, typename LeftArgType, typename RightArgType, typename OutputKernelType>
+struct TensorEvaluator<const TensorContractionOp<Indices, LeftArgType, RightArgType, OutputKernelType>, GpuDevice> :
+ public TensorContractionEvaluatorBase<TensorEvaluator<const TensorContractionOp<Indices, LeftArgType, RightArgType, OutputKernelType>, GpuDevice> > {
+
+ typedef GpuDevice Device;
+
+ typedef TensorEvaluator<const TensorContractionOp<Indices, LeftArgType, RightArgType, OutputKernelType>, Device> Self;
+ typedef TensorContractionEvaluatorBase<Self> Base;
+
+ typedef TensorContractionOp<Indices, LeftArgType, RightArgType, OutputKernelType> XprType;
+ typedef typename internal::remove_const<typename XprType::Scalar>::type Scalar;
+ typedef typename XprType::Index Index;
+ typedef typename XprType::CoeffReturnType CoeffReturnType;
+ typedef typename PacketType<CoeffReturnType, GpuDevice>::type PacketReturnType;
+
+ enum {
+ Layout = TensorEvaluator<LeftArgType, Device>::Layout,
+ };
+
+ // Most of the code is assuming that both input tensors are ColMajor. If the
+ // inputs are RowMajor, we will "cheat" by swapping the LHS and RHS:
+ // If we want to compute A * B = C, where A is LHS and B is RHS, the code
+ // will pretend B is LHS and A is RHS.
+ typedef typename internal::conditional<
+ static_cast<int>(Layout) == static_cast<int>(ColMajor), LeftArgType, RightArgType>::type EvalLeftArgType;
+ typedef typename internal::conditional<
+ static_cast<int>(Layout) == static_cast<int>(ColMajor), RightArgType, LeftArgType>::type EvalRightArgType;
+
+ static const int LDims =
+ internal::array_size<typename TensorEvaluator<EvalLeftArgType, Device>::Dimensions>::value;
+ static const int RDims =
+ internal::array_size<typename TensorEvaluator<EvalRightArgType, Device>::Dimensions>::value;
+ static const int ContractDims = internal::array_size<Indices>::value;
+
+ typedef array<Index, LDims> left_dim_mapper_t;
+ typedef array<Index, RDims> right_dim_mapper_t;
+
+ typedef array<Index, ContractDims> contract_t;
+ typedef array<Index, LDims - ContractDims> left_nocontract_t;
+ typedef array<Index, RDims - ContractDims> right_nocontract_t;
+
+ static const int NumDims = LDims + RDims - 2 * ContractDims;
+
+ typedef DSizes<Index, NumDims> Dimensions;
+
+ // typedefs needed in evalTo
+ typedef typename internal::remove_const<typename EvalLeftArgType::Scalar>::type LhsScalar;
+ typedef typename internal::remove_const<typename EvalRightArgType::Scalar>::type RhsScalar;
+
+ typedef TensorEvaluator<EvalLeftArgType, Device> LeftEvaluator;
+ typedef TensorEvaluator<EvalRightArgType, Device> RightEvaluator;
+
+ typedef typename LeftEvaluator::Dimensions LeftDimensions;
+ typedef typename RightEvaluator::Dimensions RightDimensions;
+
+ TensorEvaluator(const XprType& op, const Device& device) :
+ Base(op, device)
+ {
+ EIGEN_STATIC_ASSERT( (internal::is_same<OutputKernelType, const NoOpOutputKernel>::value),
+ GPU_TENSOR_CONTRACTION_DOES_NOT_SUPPORT_OUTPUT_KERNELS);
+ }
+
+ // We need to redefine this method to make nvcc happy
+ EIGEN_STRONG_INLINE bool evalSubExprsIfNeeded(Scalar* data) {
+ this->m_leftImpl.evalSubExprsIfNeeded(NULL);
+ this->m_rightImpl.evalSubExprsIfNeeded(NULL);
+ if (data) {
+ evalTo(data);
+ return false;
+ } else {
+ this->m_result = static_cast<Scalar *>(this->m_device.allocate(this->dimensions().TotalSize() * sizeof(Scalar)));
+ evalTo(this->m_result);
+ return true;
+ }
+ }
+
+ void evalTo(Scalar* buffer) const {
+ if (this->m_lhs_inner_dim_contiguous) {
+ if (this->m_rhs_inner_dim_contiguous) {
+ if (this->m_rhs_inner_dim_reordered) {
+ evalTyped<true, true, true, Unaligned>(buffer);
+ }
+ else {
+ evalTyped<true, true, false, Unaligned>(buffer);
+ }
+ }
+ else {
+ if (this->m_rhs_inner_dim_reordered) {
+ evalTyped<true, false, true, Unaligned>(buffer);
+ }
+ else {
+ evalTyped<true, false, false, Unaligned>(buffer);
+ }
+ }
+ }
+ else {
+ if (this->m_rhs_inner_dim_contiguous) {
+ if (this->m_rhs_inner_dim_reordered) {
+ evalTyped<false, true, true, Unaligned>(buffer);
+ }
+ else {
+ evalTyped<false, true, false, Unaligned>(buffer);
+ }
+ }
+ else {
+ if (this->m_rhs_inner_dim_reordered) {
+ evalTyped<false, false, true, Unaligned>(buffer);
+ }
+ else {
+ evalTyped<false, false, false, Unaligned>(buffer);
+ }
+ }
+ }
+ }
+
+ template <typename LhsScalar, typename RhsScalar, typename Index, typename LhsMapper, typename RhsMapper, typename OutputMapper> struct LaunchKernels {
+ static void Run(const LhsMapper& lhs, const RhsMapper& rhs, const OutputMapper& output, Index m, Index n, Index k, const GpuDevice& device) {
+ const Index m_blocks = (m + 63) / 64;
+ const Index n_blocks = (n + 63) / 64;
+ const dim3 num_blocks(m_blocks, n_blocks, 1);
+ const dim3 block_size(8, 8, 8);
+ LAUNCH_GPU_KERNEL((EigenContractionKernel<Scalar, Index, LhsMapper, RhsMapper, OutputMapper>), num_blocks, block_size, 0, device, lhs, rhs, output, m, n, k);
+ }
+ };
+
+ template <typename Index, typename LhsMapper, typename RhsMapper, typename OutputMapper> struct LaunchKernels<float, float, Index, LhsMapper, RhsMapper, OutputMapper> {
+ static void Run(const LhsMapper& lhs, const RhsMapper& rhs, const OutputMapper& output, Index m, Index n, Index k, const GpuDevice& device) {
+ if (m < 768 || n < 768) {
+ const Index m_blocks = (m + 63) / 64;
+ const Index n_blocks = (n + 63) / 64;
+ const dim3 num_blocks(m_blocks, n_blocks, 1);
+ const dim3 block_size(16, 16, 1);
+ LAUNCH_GPU_KERNEL((EigenFloatContractionKernel16x16<Index, LhsMapper, RhsMapper, OutputMapper>), num_blocks, block_size, 0, device, lhs, rhs, output, m, n, k);
+ } else {
+ const Index m_blocks = (m + 127) / 128;
+ const Index n_blocks = (n + 63) / 64;
+ const dim3 num_blocks(m_blocks, n_blocks, 1);
+ const dim3 block_size(8, 32, 1);
+ LAUNCH_GPU_KERNEL((EigenFloatContractionKernel<Index, LhsMapper, RhsMapper, OutputMapper>), num_blocks, block_size, 0, device, lhs, rhs, output, m, n, k);
+ }
+ }
+ };
+
+ template <bool lhs_inner_dim_contiguous, bool rhs_inner_dim_contiguous, bool rhs_inner_dim_reordered, int Alignment>
+ void evalTyped(Scalar* buffer) const {
+ // columns in left side, rows in right side
+ const Index k = this->m_k_size;
+ EIGEN_UNUSED_VARIABLE(k)
+
+ // rows in left side
+ const Index m = this->m_i_size;
+
+ // columns in right side
+ const Index n = this->m_j_size;
+
+ // zero out the result buffer (which must be of size at least m * n * sizeof(Scalar)
+ this->m_device.memset(buffer, 0, m * n * sizeof(Scalar));
+
+ typedef internal::TensorContractionInputMapper<LhsScalar, Index, internal::Lhs,
+ LeftEvaluator, left_nocontract_t,
+ contract_t, 4,
+ lhs_inner_dim_contiguous,
+ false, Unaligned> LhsMapper;
+
+ typedef internal::TensorContractionInputMapper<RhsScalar, Index, internal::Rhs,
+ RightEvaluator, right_nocontract_t,
+ contract_t, 4,
+ rhs_inner_dim_contiguous,
+ rhs_inner_dim_reordered, Unaligned> RhsMapper;
+
+ typedef internal::blas_data_mapper<Scalar, Index, ColMajor> OutputMapper;
+
+
+ // initialize data mappers
+ LhsMapper lhs(this->m_leftImpl, this->m_left_nocontract_strides, this->m_i_strides,
+ this->m_left_contracting_strides, this->m_k_strides);
+
+ RhsMapper rhs(this->m_rightImpl, this->m_right_nocontract_strides, this->m_j_strides,
+ this->m_right_contracting_strides, this->m_k_strides);
+
+ OutputMapper output(buffer, m);
+
+#if defined(EIGEN_USE_HIP)
+ setGpuSharedMemConfig(hipSharedMemBankSizeEightByte);
+#else
+ setGpuSharedMemConfig(cudaSharedMemBankSizeEightByte);
+#endif
+
+ LaunchKernels<LhsScalar, RhsScalar, Index, LhsMapper, RhsMapper, OutputMapper>::Run(lhs, rhs, output, m, n, k, this->m_device);
+ }
+};
+
+} // end namespace Eigen
+
+#endif // EIGEN_USE_GPU and EIGEN_GPUCC
+#endif // EIGEN_CXX11_TENSOR_TENSOR_CONTRACTION_GPU_H