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 Thomas Capricelli <orzel@freehackers.org>
5c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
6c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath#include <stdio.h>
7c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
8c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath#include "main.h"
9c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath#include <unsupported/Eigen/NumericalDiff>
10c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
11c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath// Generic functor
12c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamathtemplate<typename _Scalar, int NX=Dynamic, int NY=Dynamic>
13c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamathstruct Functor
14c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath{
15c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  typedef _Scalar Scalar;
16c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  enum {
17c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    InputsAtCompileTime = NX,
18c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    ValuesAtCompileTime = NY
19c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  };
20c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  typedef Matrix<Scalar,InputsAtCompileTime,1> InputType;
21c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  typedef Matrix<Scalar,ValuesAtCompileTime,1> ValueType;
22c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  typedef Matrix<Scalar,ValuesAtCompileTime,InputsAtCompileTime> JacobianType;
23c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
24c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  int m_inputs, m_values;
25c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
26c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  Functor() : m_inputs(InputsAtCompileTime), m_values(ValuesAtCompileTime) {}
27c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  Functor(int inputs, int values) : m_inputs(inputs), m_values(values) {}
28c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
29c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  int inputs() const { return m_inputs; }
30c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath  int values() const { return m_values; }
31c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
32c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath};
33c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
34c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamathstruct my_functor : Functor<double>
35c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath{
36c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    my_functor(void): Functor<double>(3,15) {}
37c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    int operator()(const VectorXd &x, VectorXd &fvec) const
38c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    {
39c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath        double tmp1, tmp2, tmp3;
40c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath        double y[15] = {1.4e-1, 1.8e-1, 2.2e-1, 2.5e-1, 2.9e-1, 3.2e-1, 3.5e-1,
41c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath            3.9e-1, 3.7e-1, 5.8e-1, 7.3e-1, 9.6e-1, 1.34, 2.1, 4.39};
42c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
43c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath        for (int i = 0; i < values(); i++)
44c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath        {
45c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath            tmp1 = i+1;
46c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath            tmp2 = 16 - i - 1;
47c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath            tmp3 = (i>=8)? tmp2 : tmp1;
48c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath            fvec[i] = y[i] - (x[0] + tmp1/(x[1]*tmp2 + x[2]*tmp3));
49c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath        }
50c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath        return 0;
51c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    }
52c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
53c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    int actual_df(const VectorXd &x, MatrixXd &fjac) const
54c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    {
55c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath        double tmp1, tmp2, tmp3, tmp4;
56c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath        for (int i = 0; i < values(); i++)
57c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath        {
58c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath            tmp1 = i+1;
59c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath            tmp2 = 16 - i - 1;
60c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath            tmp3 = (i>=8)? tmp2 : tmp1;
61c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath            tmp4 = (x[1]*tmp2 + x[2]*tmp3); tmp4 = tmp4*tmp4;
62c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath            fjac(i,0) = -1;
63c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath            fjac(i,1) = tmp1*tmp2/tmp4;
64c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath            fjac(i,2) = tmp1*tmp3/tmp4;
65c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath        }
66c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath        return 0;
67c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    }
68c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath};
69c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
70c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamathvoid test_forward()
71c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath{
72c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    VectorXd x(3);
73c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    MatrixXd jac(15,3);
74c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    MatrixXd actual_jac(15,3);
75c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    my_functor functor;
76c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
77c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    x << 0.082, 1.13, 2.35;
78c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
79c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    // real one
80c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    functor.actual_df(x, actual_jac);
81c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath//    std::cout << actual_jac << std::endl << std::endl;
82c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
83c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    // using NumericalDiff
84c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    NumericalDiff<my_functor> numDiff(functor);
85c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    numDiff.df(x, jac);
86c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath//    std::cout << jac << std::endl;
87c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
88c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    VERIFY_IS_APPROX(jac, actual_jac);
89c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath}
90c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
91c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamathvoid test_central()
92c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath{
93c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    VectorXd x(3);
94c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    MatrixXd jac(15,3);
95c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    MatrixXd actual_jac(15,3);
96c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    my_functor functor;
97c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
98c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    x << 0.082, 1.13, 2.35;
99c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
100c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    // real one
101c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    functor.actual_df(x, actual_jac);
102c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
103c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    // using NumericalDiff
104c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    NumericalDiff<my_functor,Central> numDiff(functor);
105c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    numDiff.df(x, jac);
106c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
107c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    VERIFY_IS_APPROX(jac, actual_jac);
108c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath}
109c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath
110c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamathvoid test_NumericalDiff()
111c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath{
112c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    CALL_SUBTEST(test_forward());
113c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath    CALL_SUBTEST(test_central());
114c981c48f5bc9aefeffc0bcb0cc3934c2fae179ddNarayan Kamath}
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