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1 /* |
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2 * Copyright (c) 2002, 2015, Oracle and/or its affiliates. All rights reserved. |
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3 * DO NOT ALTER OR REMOVE COPYRIGHT NOTICES OR THIS FILE HEADER. |
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4 * |
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5 * This code is free software; you can redistribute it and/or modify it |
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6 * under the terms of the GNU General Public License version 2 only, as |
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7 * published by the Free Software Foundation. |
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8 * |
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9 * This code is distributed in the hope that it will be useful, but WITHOUT |
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10 * ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or |
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11 * FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public License |
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12 * version 2 for more details (a copy is included in the LICENSE file that |
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13 * accompanied this code). |
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14 * |
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15 * You should have received a copy of the GNU General Public License version |
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16 * 2 along with this work; if not, write to the Free Software Foundation, |
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17 * Inc., 51 Franklin St, Fifth Floor, Boston, MA 02110-1301 USA. |
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18 * |
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19 * Please contact Oracle, 500 Oracle Parkway, Redwood Shores, CA 94065 USA |
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20 * or visit www.oracle.com if you need additional information or have any |
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21 * questions. |
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22 * |
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23 */ |
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24 |
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25 #include "precompiled.hpp" |
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26 #include "gc/shared/gcUtil.hpp" |
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27 |
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28 // Catch-all file for utility classes |
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29 |
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30 float AdaptiveWeightedAverage::compute_adaptive_average(float new_sample, |
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31 float average) { |
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32 // We smooth the samples by not using weight() directly until we've |
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33 // had enough data to make it meaningful. We'd like the first weight |
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34 // used to be 1, the second to be 1/2, etc until we have |
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35 // OLD_THRESHOLD/weight samples. |
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36 unsigned count_weight = 0; |
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37 |
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38 // Avoid division by zero if the counter wraps (7158457) |
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39 if (!is_old()) { |
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40 count_weight = OLD_THRESHOLD/count(); |
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41 } |
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42 |
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43 unsigned adaptive_weight = (MAX2(weight(), count_weight)); |
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44 |
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45 float new_avg = exp_avg(average, new_sample, adaptive_weight); |
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46 |
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47 return new_avg; |
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48 } |
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49 |
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50 void AdaptiveWeightedAverage::sample(float new_sample) { |
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51 increment_count(); |
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52 |
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53 // Compute the new weighted average |
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54 float new_avg = compute_adaptive_average(new_sample, average()); |
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55 set_average(new_avg); |
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56 _last_sample = new_sample; |
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57 } |
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58 |
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59 void AdaptiveWeightedAverage::print() const { |
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60 print_on(tty); |
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61 } |
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62 |
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63 void AdaptiveWeightedAverage::print_on(outputStream* st) const { |
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64 guarantee(false, "NYI"); |
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65 } |
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66 |
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67 void AdaptivePaddedAverage::print() const { |
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68 print_on(tty); |
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69 } |
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70 |
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71 void AdaptivePaddedAverage::print_on(outputStream* st) const { |
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72 guarantee(false, "NYI"); |
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73 } |
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74 |
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75 void AdaptivePaddedNoZeroDevAverage::print() const { |
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76 print_on(tty); |
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77 } |
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78 |
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79 void AdaptivePaddedNoZeroDevAverage::print_on(outputStream* st) const { |
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80 guarantee(false, "NYI"); |
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81 } |
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82 |
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83 void AdaptivePaddedAverage::sample(float new_sample) { |
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84 // Compute new adaptive weighted average based on new sample. |
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85 AdaptiveWeightedAverage::sample(new_sample); |
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86 |
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87 // Now update the deviation and the padded average. |
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88 float new_avg = average(); |
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89 float new_dev = compute_adaptive_average(fabsd(new_sample - new_avg), |
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90 deviation()); |
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91 set_deviation(new_dev); |
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92 set_padded_average(new_avg + padding() * new_dev); |
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93 _last_sample = new_sample; |
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94 } |
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95 |
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96 void AdaptivePaddedNoZeroDevAverage::sample(float new_sample) { |
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97 // Compute our parent classes sample information |
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98 AdaptiveWeightedAverage::sample(new_sample); |
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99 |
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100 float new_avg = average(); |
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101 if (new_sample != 0) { |
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102 // We only create a new deviation if the sample is non-zero |
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103 float new_dev = compute_adaptive_average(fabsd(new_sample - new_avg), |
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104 deviation()); |
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105 |
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106 set_deviation(new_dev); |
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107 } |
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108 set_padded_average(new_avg + padding() * deviation()); |
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109 _last_sample = new_sample; |
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110 } |
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111 |
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112 LinearLeastSquareFit::LinearLeastSquareFit(unsigned weight) : |
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113 _sum_x(0), _sum_x_squared(0), _sum_y(0), _sum_xy(0), |
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114 _intercept(0), _slope(0), _mean_x(weight), _mean_y(weight) {} |
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115 |
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116 void LinearLeastSquareFit::update(double x, double y) { |
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117 _sum_x = _sum_x + x; |
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118 _sum_x_squared = _sum_x_squared + x * x; |
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119 _sum_y = _sum_y + y; |
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120 _sum_xy = _sum_xy + x * y; |
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121 _mean_x.sample(x); |
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122 _mean_y.sample(y); |
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123 assert(_mean_x.count() == _mean_y.count(), "Incorrect count"); |
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124 if ( _mean_x.count() > 1 ) { |
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125 double slope_denominator; |
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126 slope_denominator = (_mean_x.count() * _sum_x_squared - _sum_x * _sum_x); |
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127 // Some tolerance should be injected here. A denominator that is |
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128 // nearly 0 should be avoided. |
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129 |
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130 if (slope_denominator != 0.0) { |
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131 double slope_numerator; |
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132 slope_numerator = (_mean_x.count() * _sum_xy - _sum_x * _sum_y); |
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133 _slope = slope_numerator / slope_denominator; |
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134 |
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135 // The _mean_y and _mean_x are decaying averages and can |
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136 // be used to discount earlier data. If they are used, |
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137 // first consider whether all the quantities should be |
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138 // kept as decaying averages. |
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139 // _intercept = _mean_y.average() - _slope * _mean_x.average(); |
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140 _intercept = (_sum_y - _slope * _sum_x) / ((double) _mean_x.count()); |
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141 } |
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142 } |
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143 } |
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144 |
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145 double LinearLeastSquareFit::y(double x) { |
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146 double new_y; |
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147 |
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148 if ( _mean_x.count() > 1 ) { |
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149 new_y = (_intercept + _slope * x); |
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150 return new_y; |
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151 } else { |
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152 return _mean_y.average(); |
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153 } |
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154 } |
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155 |
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156 // Both decrement_will_decrease() and increment_will_decrease() return |
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157 // true for a slope of 0. That is because a change is necessary before |
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158 // a slope can be calculated and a 0 slope will, in general, indicate |
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159 // that no calculation of the slope has yet been done. Returning true |
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160 // for a slope equal to 0 reflects the intuitive expectation of the |
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161 // dependence on the slope. Don't use the complement of these functions |
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162 // since that intuitive expectation is not built into the complement. |
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163 bool LinearLeastSquareFit::decrement_will_decrease() { |
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164 return (_slope >= 0.00); |
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165 } |
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166 |
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167 bool LinearLeastSquareFit::increment_will_decrease() { |
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168 return (_slope <= 0.00); |
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169 } |