1c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath// This file is part of Eigen, a lightweight C++ template library
2c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath// for linear algebra.
3c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath//
4c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath// Copyright (C) 2009 Gael Guennebaud <gael.guennebaud@inria.fr>
5c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath//
6c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath// This Source Code Form is subject to the terms of the Mozilla
7c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath// Public License v. 2.0. If a copy of the MPL was not distributed
8c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath// with this file, You can obtain one at http://mozilla.org/MPL/2.0/.
9c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
10c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath#include "main.h"
11c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
12c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamathtemplate<typename T> bool isNotNaN(const T& x)
13c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath{
14c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  return x==x;
15c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath}
16c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
17c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath// workaround aggressive optimization in ICC
18c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamathtemplate<typename T> EIGEN_DONT_INLINE  T sub(T a, T b) { return a - b; }
19c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
20c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamathtemplate<typename T> bool isFinite(const T& x)
21c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath{
22c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  return isNotNaN(sub(x,x));
23c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath}
24c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
25c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamathtemplate<typename T> EIGEN_DONT_INLINE T copy(const T& x)
26c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath{
27c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  return x;
28c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath}
29c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
30c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamathtemplate<typename MatrixType> void stable_norm(const MatrixType& m)
31c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath{
32c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  /* this test covers the following files:
33c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath     StableNorm.h
34c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  */
35c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  typedef typename MatrixType::Index Index;
36c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  typedef typename MatrixType::Scalar Scalar;
37c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  typedef typename NumTraits<Scalar>::Real RealScalar;
38c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
39c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  // Check the basic machine-dependent constants.
40c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  {
41c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    int ibeta, it, iemin, iemax;
42c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
43c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    ibeta = std::numeric_limits<RealScalar>::radix;         // base for floating-point numbers
44c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    it    = std::numeric_limits<RealScalar>::digits;        // number of base-beta digits in mantissa
45c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    iemin = std::numeric_limits<RealScalar>::min_exponent;  // minimum exponent
46c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    iemax = std::numeric_limits<RealScalar>::max_exponent;  // maximum exponent
47c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
48c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    VERIFY( (!(iemin > 1 - 2*it || 1+it>iemax || (it==2 && ibeta<5) || (it<=4 && ibeta <= 3 ) || it<2))
49c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath           && "the stable norm algorithm cannot be guaranteed on this computer");
50c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  }
51c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
52c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
53c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  Index rows = m.rows();
54c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  Index cols = m.cols();
55c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
56c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  Scalar big = internal::random<Scalar>() * ((std::numeric_limits<RealScalar>::max)() * RealScalar(1e-4));
57c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  Scalar small = internal::random<Scalar>() * ((std::numeric_limits<RealScalar>::min)() * RealScalar(1e4));
58c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
59c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  MatrixType  vzero = MatrixType::Zero(rows, cols),
60c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath              vrand = MatrixType::Random(rows, cols),
61c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath              vbig(rows, cols),
62c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath              vsmall(rows,cols);
63c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
64c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  vbig.fill(big);
65c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  vsmall.fill(small);
66c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
67c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_MUCH_SMALLER_THAN(vzero.norm(), static_cast<RealScalar>(1));
68c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vrand.stableNorm(),      vrand.norm());
69c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vrand.blueNorm(),        vrand.norm());
70c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vrand.hypotNorm(),       vrand.norm());
71c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
72c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  RealScalar size = static_cast<RealScalar>(m.size());
73c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
74c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  // test isFinite
75c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY(!isFinite( std::numeric_limits<RealScalar>::infinity()));
76c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY(!isFinite(internal::sqrt(-internal::abs(big))));
77c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
78c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  // test overflow
79c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY(isFinite(internal::sqrt(size)*internal::abs(big)));
80c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_NOT_APPROX(internal::sqrt(copy(vbig.squaredNorm())),   internal::abs(internal::sqrt(size)*big)); // here the default norm must fail
81c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vbig.stableNorm(), internal::sqrt(size)*internal::abs(big));
82c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vbig.blueNorm(),   internal::sqrt(size)*internal::abs(big));
83c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vbig.hypotNorm(),  internal::sqrt(size)*internal::abs(big));
84c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
85c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  // test underflow
86c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY(isFinite(internal::sqrt(size)*internal::abs(small)));
87c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_NOT_APPROX(internal::sqrt(copy(vsmall.squaredNorm())),   internal::abs(internal::sqrt(size)*small)); // here the default norm must fail
88c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vsmall.stableNorm(), internal::sqrt(size)*internal::abs(small));
89c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vsmall.blueNorm(),   internal::sqrt(size)*internal::abs(small));
90c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vsmall.hypotNorm(),  internal::sqrt(size)*internal::abs(small));
91c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
92c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath// Test compilation of cwise() version
93c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vrand.colwise().stableNorm(),      vrand.colwise().norm());
94c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vrand.colwise().blueNorm(),        vrand.colwise().norm());
95c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vrand.colwise().hypotNorm(),       vrand.colwise().norm());
96c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vrand.rowwise().stableNorm(),      vrand.rowwise().norm());
97c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vrand.rowwise().blueNorm(),        vrand.rowwise().norm());
98c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  VERIFY_IS_APPROX(vrand.rowwise().hypotNorm(),       vrand.rowwise().norm());
99c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath}
100c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
101c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamathvoid test_stable_norm()
102c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath{
103c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  for(int i = 0; i < g_repeat; i++) {
104c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    CALL_SUBTEST_1( stable_norm(Matrix<float, 1, 1>()) );
105c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    CALL_SUBTEST_2( stable_norm(Vector4d()) );
106c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    CALL_SUBTEST_3( stable_norm(VectorXd(internal::random<int>(10,2000))) );
107c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    CALL_SUBTEST_4( stable_norm(VectorXf(internal::random<int>(10,2000))) );
108c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    CALL_SUBTEST_5( stable_norm(VectorXcd(internal::random<int>(10,2000))) );
109c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  }
110c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath}
111