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// This file is part of Eigen, a lightweight C++ template library
// for linear algebra.
//
// Copyright (C) 2014 Benoit Steiner <benoit.steiner.goog@gmail.com>
//
// 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/.
#include "main.h"
#include <limits>
#include <numeric>
#include <Eigen/CXX11/Tensor>
using Eigen::Tensor;
template <int DataLayout>
static void test_trivial_reductions() {
{
Tensor<float, 0, DataLayout> tensor;
tensor.setRandom();
array<ptrdiff_t, 0> reduction_axis;
Tensor<float, 0, DataLayout> result = tensor.sum(reduction_axis);
VERIFY_IS_EQUAL(result(), tensor());
}
{
Tensor<float, 1, DataLayout> tensor(7);
tensor.setRandom();
array<ptrdiff_t, 0> reduction_axis;
Tensor<float, 1, DataLayout> result = tensor.sum(reduction_axis);
VERIFY_IS_EQUAL(result.dimension(0), 7);
for (int i = 0; i < 7; ++i) {
VERIFY_IS_EQUAL(result(i), tensor(i));
}
}
{
Tensor<float, 2, DataLayout> tensor(2, 3);
tensor.setRandom();
array<ptrdiff_t, 0> reduction_axis;
Tensor<float, 2, DataLayout> result = tensor.sum(reduction_axis);
VERIFY_IS_EQUAL(result.dimension(0), 2);
VERIFY_IS_EQUAL(result.dimension(1), 3);
for (int i = 0; i < 2; ++i) {
for (int j = 0; j < 3; ++j) {
VERIFY_IS_EQUAL(result(i, j), tensor(i, j));
}
}
}
}
template <typename Scalar,int DataLayout>
static void test_simple_reductions() {
Tensor<Scalar, 4, DataLayout> tensor(2, 3, 5, 7);
tensor.setRandom();
// Add a little offset so that the product reductions won't be close to zero.
tensor += tensor.constant(Scalar(0.5f));
array<ptrdiff_t, 2> reduction_axis2;
reduction_axis2[0] = 1;
reduction_axis2[1] = 3;
Tensor<Scalar, 2, DataLayout> result = tensor.sum(reduction_axis2);
VERIFY_IS_EQUAL(result.dimension(0), 2);
VERIFY_IS_EQUAL(result.dimension(1), 5);
for (int i = 0; i < 2; ++i) {
for (int j = 0; j < 5; ++j) {
Scalar sum = Scalar(0.0f);
for (int k = 0; k < 3; ++k) {
for (int l = 0; l < 7; ++l) {
sum += tensor(i, k, j, l);
}
}
VERIFY_IS_APPROX(result(i, j), sum);
}
}
{
Tensor<Scalar, 0, DataLayout> sum1 = tensor.sum();
VERIFY_IS_EQUAL(sum1.rank(), 0);
array<ptrdiff_t, 4> reduction_axis4;
reduction_axis4[0] = 0;
reduction_axis4[1] = 1;
reduction_axis4[2] = 2;
reduction_axis4[3] = 3;
Tensor<Scalar, 0, DataLayout> sum2 = tensor.sum(reduction_axis4);
VERIFY_IS_EQUAL(sum2.rank(), 0);
VERIFY_IS_APPROX(sum1(), sum2());
}
reduction_axis2[0] = 0;
reduction_axis2[1] = 2;
result = tensor.prod(reduction_axis2);
VERIFY_IS_EQUAL(result.dimension(0), 3);
VERIFY_IS_EQUAL(result.dimension(1), 7);
for (int i = 0; i < 3; ++i) {
for (int j = 0; j < 7; ++j) {
Scalar prod = Scalar(1.0f);
for (int k = 0; k < 2; ++k) {
for (int l = 0; l < 5; ++l) {
prod *= tensor(k, i, l, j);
}
}
VERIFY_IS_APPROX(result(i, j), prod);
}
}
{
Tensor<Scalar, 0, DataLayout> prod1 = tensor.prod();
VERIFY_IS_EQUAL(prod1.rank(), 0);
array<ptrdiff_t, 4> reduction_axis4;
reduction_axis4[0] = 0;
reduction_axis4[1] = 1;
reduction_axis4[2] = 2;
reduction_axis4[3] = 3;
Tensor<Scalar, 0, DataLayout> prod2 = tensor.prod(reduction_axis4);
VERIFY_IS_EQUAL(prod2.rank(), 0);
VERIFY_IS_APPROX(prod1(), prod2());
}
reduction_axis2[0] = 0;
reduction_axis2[1] = 2;
result = tensor.maximum(reduction_axis2);
VERIFY_IS_EQUAL(result.dimension(0), 3);
VERIFY_IS_EQUAL(result.dimension(1), 7);
for (int i = 0; i < 3; ++i) {
for (int j = 0; j < 7; ++j) {
Scalar max_val = std::numeric_limits<Scalar>::lowest();
for (int k = 0; k < 2; ++k) {
for (int l = 0; l < 5; ++l) {
max_val = (std::max)(max_val, tensor(k, i, l, j));
}
}
VERIFY_IS_APPROX(result(i, j), max_val);
}
}
{
Tensor<Scalar, 0, DataLayout> max1 = tensor.maximum();
VERIFY_IS_EQUAL(max1.rank(), 0);
array<ptrdiff_t, 4> reduction_axis4;
reduction_axis4[0] = 0;
reduction_axis4[1] = 1;
reduction_axis4[2] = 2;
reduction_axis4[3] = 3;
Tensor<Scalar, 0, DataLayout> max2 = tensor.maximum(reduction_axis4);
VERIFY_IS_EQUAL(max2.rank(), 0);
VERIFY_IS_APPROX(max1(), max2());
}
reduction_axis2[0] = 0;
reduction_axis2[1] = 1;
result = tensor.minimum(reduction_axis2);
VERIFY_IS_EQUAL(result.dimension(0), 5);
VERIFY_IS_EQUAL(result.dimension(1), 7);
for (int i = 0; i < 5; ++i) {
for (int j = 0; j < 7; ++j) {
Scalar min_val = (std::numeric_limits<Scalar>::max)();
for (int k = 0; k < 2; ++k) {
for (int l = 0; l < 3; ++l) {
min_val = (std::min)(min_val, tensor(k, l, i, j));
}
}
VERIFY_IS_APPROX(result(i, j), min_val);
}
}
{
Tensor<Scalar, 0, DataLayout> min1 = tensor.minimum();
VERIFY_IS_EQUAL(min1.rank(), 0);
array<ptrdiff_t, 4> reduction_axis4;
reduction_axis4[0] = 0;
reduction_axis4[1] = 1;
reduction_axis4[2] = 2;
reduction_axis4[3] = 3;
Tensor<Scalar, 0, DataLayout> min2 = tensor.minimum(reduction_axis4);
VERIFY_IS_EQUAL(min2.rank(), 0);
VERIFY_IS_APPROX(min1(), min2());
}
reduction_axis2[0] = 0;
reduction_axis2[1] = 1;
result = tensor.mean(reduction_axis2);
VERIFY_IS_EQUAL(result.dimension(0), 5);
VERIFY_IS_EQUAL(result.dimension(1), 7);
for (int i = 0; i < 5; ++i) {
for (int j = 0; j < 7; ++j) {
Scalar sum = Scalar(0.0f);
int count = 0;
for (int k = 0; k < 2; ++k) {
for (int l = 0; l < 3; ++l) {
sum += tensor(k, l, i, j);
++count;
}
}
VERIFY_IS_APPROX(result(i, j), sum / Scalar(count));
}
}
{
Tensor<Scalar, 0, DataLayout> mean1 = tensor.mean();
VERIFY_IS_EQUAL(mean1.rank(), 0);
array<ptrdiff_t, 4> reduction_axis4;
reduction_axis4[0] = 0;
reduction_axis4[1] = 1;
reduction_axis4[2] = 2;
reduction_axis4[3] = 3;
Tensor<Scalar, 0, DataLayout> mean2 = tensor.mean(reduction_axis4);
VERIFY_IS_EQUAL(mean2.rank(), 0);
VERIFY_IS_APPROX(mean1(), mean2());
}
{
Tensor<int, 1> ints(10);
std::iota(ints.data(), ints.data() + ints.dimension(0), 0);
TensorFixedSize<bool, Sizes<> > all_;
all_ = ints.all();
VERIFY(!all_());
all_ = (ints >= ints.constant(0)).all();
VERIFY(all_());
TensorFixedSize<bool, Sizes<> > any;
any = (ints > ints.constant(10)).any();
VERIFY(!any());
any = (ints < ints.constant(1)).any();
VERIFY(any());
}
}
template <int DataLayout>
static void test_reductions_in_expr() {
Tensor<float, 4, DataLayout> tensor(2, 3, 5, 7);
tensor.setRandom();
array<ptrdiff_t, 2> reduction_axis2;
reduction_axis2[0] = 1;
reduction_axis2[1] = 3;
Tensor<float, 2, DataLayout> result(2, 5);
result = result.constant(1.0f) - tensor.sum(reduction_axis2);
VERIFY_IS_EQUAL(result.dimension(0), 2);
VERIFY_IS_EQUAL(result.dimension(1), 5);
for (int i = 0; i < 2; ++i) {
for (int j = 0; j < 5; ++j) {
float sum = 0.0f;
for (int k = 0; k < 3; ++k) {
for (int l = 0; l < 7; ++l) {
sum += tensor(i, k, j, l);
}
}
VERIFY_IS_APPROX(result(i, j), 1.0f - sum);
}
}
}
template <int DataLayout>
static void test_full_reductions() {
Tensor<float, 2, DataLayout> tensor(2, 3);
tensor.setRandom();
array<ptrdiff_t, 2> reduction_axis;
reduction_axis[0] = 0;
reduction_axis[1] = 1;
Tensor<float, 0, DataLayout> result = tensor.sum(reduction_axis);
VERIFY_IS_EQUAL(result.rank(), 0);
float sum = 0.0f;
for (int i = 0; i < 2; ++i) {
for (int j = 0; j < 3; ++j) {
sum += tensor(i, j);
}
}
VERIFY_IS_APPROX(result(0), sum);
result = tensor.square().sum(reduction_axis).sqrt();
VERIFY_IS_EQUAL(result.rank(), 0);
sum = 0.0f;
for (int i = 0; i < 2; ++i) {
for (int j = 0; j < 3; ++j) {
sum += tensor(i, j) * tensor(i, j);
}
}
VERIFY_IS_APPROX(result(), sqrtf(sum));
}
struct UserReducer {
static const bool PacketAccess = false;
UserReducer(float offset) : offset_(offset) {}
void reduce(const float val, float* accum) { *accum += val * val; }
float initialize() const { return 0; }
float finalize(const float accum) const { return 1.0f / (accum + offset_); }
private:
const float offset_;
};
template <int DataLayout>
static void test_user_defined_reductions() {
Tensor<float, 2, DataLayout> tensor(5, 7);
tensor.setRandom();
array<ptrdiff_t, 1> reduction_axis;
reduction_axis[0] = 1;
UserReducer reducer(10.0f);
Tensor<float, 1, DataLayout> result = tensor.reduce(reduction_axis, reducer);
VERIFY_IS_EQUAL(result.dimension(0), 5);
for (int i = 0; i < 5; ++i) {
float expected = 10.0f;
for (int j = 0; j < 7; ++j) {
expected += tensor(i, j) * tensor(i, j);
}
expected = 1.0f / expected;
VERIFY_IS_APPROX(result(i), expected);
}
}
template <int DataLayout>
static void test_tensor_maps() {
int inputs[2 * 3 * 5 * 7];
TensorMap<Tensor<int, 4, DataLayout> > tensor_map(inputs, 2, 3, 5, 7);
TensorMap<Tensor<const int, 4, DataLayout> > tensor_map_const(inputs, 2, 3, 5,
7);
const TensorMap<Tensor<const int, 4, DataLayout> > tensor_map_const_const(
inputs, 2, 3, 5, 7);
tensor_map.setRandom();
array<ptrdiff_t, 2> reduction_axis;
reduction_axis[0] = 1;
reduction_axis[1] = 3;
Tensor<int, 2, DataLayout> result = tensor_map.sum(reduction_axis);
Tensor<int, 2, DataLayout> result2 = tensor_map_const.sum(reduction_axis);
Tensor<int, 2, DataLayout> result3 =
tensor_map_const_const.sum(reduction_axis);
for (int i = 0; i < 2; ++i) {
for (int j = 0; j < 5; ++j) {
int sum = 0;
for (int k = 0; k < 3; ++k) {
for (int l = 0; l < 7; ++l) {
sum += tensor_map(i, k, j, l);
}
}
VERIFY_IS_EQUAL(result(i, j), sum);
VERIFY_IS_EQUAL(result2(i, j), sum);
VERIFY_IS_EQUAL(result3(i, j), sum);
}
}
}
template <int DataLayout>
static void test_static_dims() {
Tensor<float, 4, DataLayout> in(72, 53, 97, 113);
Tensor<float, 2, DataLayout> out(72, 97);
in.setRandom();
Eigen::IndexList<Eigen::type2index<1>, Eigen::type2index<3> > reduction_axis;
out = in.maximum(reduction_axis);
for (int i = 0; i < 72; ++i) {
for (int j = 0; j < 97; ++j) {
float expected = -1e10f;
for (int k = 0; k < 53; ++k) {
for (int l = 0; l < 113; ++l) {
expected = (std::max)(expected, in(i, k, j, l));
}
}
VERIFY_IS_EQUAL(out(i, j), expected);
}
}
}
template <int DataLayout>
static void test_innermost_last_dims() {
Tensor<float, 4, DataLayout> in(72, 53, 97, 113);
Tensor<float, 2, DataLayout> out(97, 113);
in.setRandom();
// Reduce on the innermost dimensions.
// This triggers the use of packets for ColMajor.
Eigen::IndexList<Eigen::type2index<0>, Eigen::type2index<1> > reduction_axis;
out = in.maximum(reduction_axis);
for (int i = 0; i < 97; ++i) {
for (int j = 0; j < 113; ++j) {
float expected = -1e10f;
for (int k = 0; k < 53; ++k) {
for (int l = 0; l < 72; ++l) {
expected = (std::max)(expected, in(l, k, i, j));
}
}
VERIFY_IS_EQUAL(out(i, j), expected);
}
}
}
template <int DataLayout>
static void test_innermost_first_dims() {
Tensor<float, 4, DataLayout> in(72, 53, 97, 113);
Tensor<float, 2, DataLayout> out(72, 53);
in.setRandom();
// Reduce on the innermost dimensions.
// This triggers the use of packets for RowMajor.
Eigen::IndexList<Eigen::type2index<2>, Eigen::type2index<3>> reduction_axis;
out = in.maximum(reduction_axis);
for (int i = 0; i < 72; ++i) {
for (int j = 0; j < 53; ++j) {
float expected = -1e10f;
for (int k = 0; k < 97; ++k) {
for (int l = 0; l < 113; ++l) {
expected = (std::max)(expected, in(i, j, k, l));
}
}
VERIFY_IS_EQUAL(out(i, j), expected);
}
}
}
template <int DataLayout>
static void test_reduce_middle_dims() {
Tensor<float, 4, DataLayout> in(72, 53, 97, 113);
Tensor<float, 2, DataLayout> out(72, 53);
in.setRandom();
// Reduce on the innermost dimensions.
// This triggers the use of packets for RowMajor.
Eigen::IndexList<Eigen::type2index<1>, Eigen::type2index<2>> reduction_axis;
out = in.maximum(reduction_axis);
for (int i = 0; i < 72; ++i) {
for (int j = 0; j < 113; ++j) {
float expected = -1e10f;
for (int k = 0; k < 53; ++k) {
for (int l = 0; l < 97; ++l) {
expected = (std::max)(expected, in(i, k, l, j));
}
}
VERIFY_IS_EQUAL(out(i, j), expected);
}
}
}
template <typename ScalarType, int num_elements, int max_mean>
void test_sum_accuracy() {
Tensor<double, 1> double_tensor(num_elements);
Tensor<ScalarType, 1> tensor(num_elements);
for (double prescribed_mean = 0; prescribed_mean <= max_mean; prescribed_mean = numext::maxi(1.0, prescribed_mean*3.99)) {
// FIXME: NormalRandomGenerator doesn't work in bfloat and half.
double_tensor.setRandom<Eigen::internal::NormalRandomGenerator<double>>();
double_tensor += double_tensor.constant(prescribed_mean);
tensor = double_tensor.cast<ScalarType>();
Tensor<ScalarType, 0> sum;
sum = tensor.sum();
// Compute the reference value in double precsion.
double expected_sum = 0.0;
double abs_sum = 0.0;
for (int i = 0; i < num_elements; ++i) {
expected_sum += static_cast<double>(tensor(i));
abs_sum += static_cast<double>(numext::abs(tensor(i)));
}
// Test against probabilistic forward error bound. In reality, the error is much smaller
// when we use tree summation.
double err = Eigen::numext::abs(static_cast<double>(sum()) - expected_sum);
double tol = numext::sqrt(num_elements) * NumTraits<ScalarType>::epsilon() * static_cast<ScalarType>(abs_sum);
VERIFY_LE(err, tol);
}
}
EIGEN_DECLARE_TEST(cxx11_tensor_reduction) {
CALL_SUBTEST(test_trivial_reductions<ColMajor>());
CALL_SUBTEST(test_trivial_reductions<RowMajor>());
CALL_SUBTEST(( test_simple_reductions<float,ColMajor>() ));
CALL_SUBTEST(( test_simple_reductions<float,RowMajor>() ));
CALL_SUBTEST(( test_simple_reductions<Eigen::half,ColMajor>() ));
CALL_SUBTEST(( test_simple_reductions<Eigen::bfloat16,ColMajor>() ));
CALL_SUBTEST(test_reductions_in_expr<ColMajor>());
CALL_SUBTEST(test_reductions_in_expr<RowMajor>());
CALL_SUBTEST(test_full_reductions<ColMajor>());
CALL_SUBTEST(test_full_reductions<RowMajor>());
CALL_SUBTEST(test_user_defined_reductions<ColMajor>());
CALL_SUBTEST(test_user_defined_reductions<RowMajor>());
CALL_SUBTEST(test_tensor_maps<ColMajor>());
CALL_SUBTEST(test_tensor_maps<RowMajor>());
CALL_SUBTEST(test_static_dims<ColMajor>());
CALL_SUBTEST(test_static_dims<RowMajor>());
CALL_SUBTEST(test_innermost_last_dims<ColMajor>());
CALL_SUBTEST(test_innermost_last_dims<RowMajor>());
CALL_SUBTEST(test_innermost_first_dims<ColMajor>());
CALL_SUBTEST(test_innermost_first_dims<RowMajor>());
CALL_SUBTEST(test_reduce_middle_dims<ColMajor>());
CALL_SUBTEST(test_reduce_middle_dims<RowMajor>());
CALL_SUBTEST((test_sum_accuracy<float,10*1024*1024,8*1024>()));
CALL_SUBTEST((test_sum_accuracy<Eigen::bfloat16,10*1024*1024,8*1024>()));
// The range of half is limited to 65519 when using round-to-even,
// so we are severely limited in the size and mean of the tensors
// we can reduce without overflow.
CALL_SUBTEST((test_sum_accuracy<Eigen::half,4*1024,16>()));
CALL_SUBTEST((test_sum_accuracy<Eigen::half,10*1024*1024,0>()));
}