Tue, 09 Oct 2012 10:09:34 -0700
7197424: update copyright year to match last edit in jdk8 hotspot repository
Summary: Update copyright year to 2012 for relevant files
Reviewed-by: dholmes, coleenp
1 /*
2 * Copyright (c) 2002, 2012, Oracle and/or its affiliates. All rights reserved.
3 * DO NOT ALTER OR REMOVE COPYRIGHT NOTICES OR THIS FILE HEADER.
4 *
5 * This code is free software; you can redistribute it and/or modify it
6 * under the terms of the GNU General Public License version 2 only, as
7 * published by the Free Software Foundation.
8 *
9 * This code is distributed in the hope that it will be useful, but WITHOUT
10 * ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or
11 * FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public License
12 * version 2 for more details (a copy is included in the LICENSE file that
13 * accompanied this code).
14 *
15 * You should have received a copy of the GNU General Public License version
16 * 2 along with this work; if not, write to the Free Software Foundation,
17 * Inc., 51 Franklin St, Fifth Floor, Boston, MA 02110-1301 USA.
18 *
19 * Please contact Oracle, 500 Oracle Parkway, Redwood Shores, CA 94065 USA
20 * or visit www.oracle.com if you need additional information or have any
21 * questions.
22 *
23 */
25 #ifndef SHARE_VM_GC_IMPLEMENTATION_SHARED_GCUTIL_HPP
26 #define SHARE_VM_GC_IMPLEMENTATION_SHARED_GCUTIL_HPP
28 #include "memory/allocation.hpp"
29 #include "runtime/timer.hpp"
30 #include "utilities/debug.hpp"
31 #include "utilities/globalDefinitions.hpp"
32 #include "utilities/ostream.hpp"
34 // Catch-all file for utility classes
36 // A weighted average maintains a running, weighted average
37 // of some float value (templates would be handy here if we
38 // need different types).
39 //
40 // The average is adaptive in that we smooth it for the
41 // initial samples; we don't use the weight until we have
42 // enough samples for it to be meaningful.
43 //
44 // This serves as our best estimate of a future unknown.
45 //
46 class AdaptiveWeightedAverage : public CHeapObj<mtGC> {
47 private:
48 float _average; // The last computed average
49 unsigned _sample_count; // How often we've sampled this average
50 unsigned _weight; // The weight used to smooth the averages
51 // A higher weight favors the most
52 // recent data.
53 bool _is_old; // Has enough historical data
55 const static unsigned OLD_THRESHOLD = 100;
57 protected:
58 float _last_sample; // The last value sampled.
60 void increment_count() {
61 _sample_count++;
62 if (!_is_old && _sample_count > OLD_THRESHOLD) {
63 _is_old = true;
64 }
65 }
67 void set_average(float avg) { _average = avg; }
69 // Helper function, computes an adaptive weighted average
70 // given a sample and the last average
71 float compute_adaptive_average(float new_sample, float average);
73 public:
74 // Input weight must be between 0 and 100
75 AdaptiveWeightedAverage(unsigned weight, float avg = 0.0) :
76 _average(avg), _sample_count(0), _weight(weight), _last_sample(0.0),
77 _is_old(false) {
78 }
80 void clear() {
81 _average = 0;
82 _sample_count = 0;
83 _last_sample = 0;
84 _is_old = false;
85 }
87 // Useful for modifying static structures after startup.
88 void modify(size_t avg, unsigned wt, bool force = false) {
89 assert(force, "Are you sure you want to call this?");
90 _average = (float)avg;
91 _weight = wt;
92 }
94 // Accessors
95 float average() const { return _average; }
96 unsigned weight() const { return _weight; }
97 unsigned count() const { return _sample_count; }
98 float last_sample() const { return _last_sample; }
99 bool is_old() const { return _is_old; }
101 // Update data with a new sample.
102 void sample(float new_sample);
104 static inline float exp_avg(float avg, float sample,
105 unsigned int weight) {
106 assert(0 <= weight && weight <= 100, "weight must be a percent");
107 return (100.0F - weight) * avg / 100.0F + weight * sample / 100.0F;
108 }
109 static inline size_t exp_avg(size_t avg, size_t sample,
110 unsigned int weight) {
111 // Convert to float and back to avoid integer overflow.
112 return (size_t)exp_avg((float)avg, (float)sample, weight);
113 }
115 // Printing
116 void print_on(outputStream* st) const;
117 void print() const;
118 };
121 // A weighted average that includes a deviation from the average,
122 // some multiple of which is added to the average.
123 //
124 // This serves as our best estimate of an upper bound on a future
125 // unknown.
126 class AdaptivePaddedAverage : public AdaptiveWeightedAverage {
127 private:
128 float _padded_avg; // The last computed padded average
129 float _deviation; // Running deviation from the average
130 unsigned _padding; // A multiple which, added to the average,
131 // gives us an upper bound guess.
133 protected:
134 void set_padded_average(float avg) { _padded_avg = avg; }
135 void set_deviation(float dev) { _deviation = dev; }
137 public:
138 AdaptivePaddedAverage() :
139 AdaptiveWeightedAverage(0),
140 _padded_avg(0.0), _deviation(0.0), _padding(0) {}
142 AdaptivePaddedAverage(unsigned weight, unsigned padding) :
143 AdaptiveWeightedAverage(weight),
144 _padded_avg(0.0), _deviation(0.0), _padding(padding) {}
146 // Placement support
147 void* operator new(size_t ignored, void* p) { return p; }
148 // Allocator
149 void* operator new(size_t size) { return CHeapObj<mtGC>::operator new(size); }
151 // Accessor
152 float padded_average() const { return _padded_avg; }
153 float deviation() const { return _deviation; }
154 unsigned padding() const { return _padding; }
156 void clear() {
157 AdaptiveWeightedAverage::clear();
158 _padded_avg = 0;
159 _deviation = 0;
160 }
162 // Override
163 void sample(float new_sample);
165 // Printing
166 void print_on(outputStream* st) const;
167 void print() const;
168 };
170 // A weighted average that includes a deviation from the average,
171 // some multiple of which is added to the average.
172 //
173 // This serves as our best estimate of an upper bound on a future
174 // unknown.
175 // A special sort of padded average: it doesn't update deviations
176 // if the sample is zero. The average is allowed to change. We're
177 // preventing the zero samples from drastically changing our padded
178 // average.
179 class AdaptivePaddedNoZeroDevAverage : public AdaptivePaddedAverage {
180 public:
181 AdaptivePaddedNoZeroDevAverage(unsigned weight, unsigned padding) :
182 AdaptivePaddedAverage(weight, padding) {}
183 // Override
184 void sample(float new_sample);
186 // Printing
187 void print_on(outputStream* st) const;
188 void print() const;
189 };
191 // Use a least squares fit to a set of data to generate a linear
192 // equation.
193 // y = intercept + slope * x
195 class LinearLeastSquareFit : public CHeapObj<mtGC> {
196 double _sum_x; // sum of all independent data points x
197 double _sum_x_squared; // sum of all independent data points x**2
198 double _sum_y; // sum of all dependent data points y
199 double _sum_xy; // sum of all x * y.
200 double _intercept; // constant term
201 double _slope; // slope
202 // The weighted averages are not currently used but perhaps should
203 // be used to get decaying averages.
204 AdaptiveWeightedAverage _mean_x; // weighted mean of independent variable
205 AdaptiveWeightedAverage _mean_y; // weighted mean of dependent variable
207 public:
208 LinearLeastSquareFit(unsigned weight);
209 void update(double x, double y);
210 double y(double x);
211 double slope() { return _slope; }
212 // Methods to decide if a change in the dependent variable will
213 // achive a desired goal. Note that these methods are not
214 // complementary and both are needed.
215 bool decrement_will_decrease();
216 bool increment_will_decrease();
217 };
219 class GCPauseTimer : StackObj {
220 elapsedTimer* _timer;
221 public:
222 GCPauseTimer(elapsedTimer* timer) {
223 _timer = timer;
224 _timer->stop();
225 }
226 ~GCPauseTimer() {
227 _timer->start();
228 }
229 };
231 #endif // SHARE_VM_GC_IMPLEMENTATION_SHARED_GCUTIL_HPP