8137082: Factor out G1 prediction code from G1CollectorPolicy and clean up
Summary: Factor out G1 prediction code from G1CollectorPolicy into its own class, constify methods of G1CollectorPolicy and move more implementations to the cpp file.
Reviewed-by: jmasa, sangheki, ecaspole, kbarrett
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#include "precompiled.hpp"
#include "gc/g1/g1Predictions.hpp"
#ifndef PRODUCT
void G1Predictions::test() {
double const epsilon = 1e-6;
{
// Some basic formula tests with confidence = 0.0
G1Predictions predictor(0.0);
TruncatedSeq s;
double p0 = predictor.get_new_prediction(&s);
assert(p0 < epsilon, "Initial prediction of empty sequence must be 0.0 but is %f", p0);
s.add(5.0);
double p1 = predictor.get_new_prediction(&s);
assert(fabs(p1 - 5.0) < epsilon, "Prediction should be 5.0 but is %f", p1);
for (int i = 0; i < 40; i++) {
s.add(5.0);
}
double p2 = predictor.get_new_prediction(&s);
assert(fabs(p2 - 5.0) < epsilon, "Prediction should be 5.0 but is %f", p1);
}
{
// The following tests checks that the initial predictions are based on the
// average of the sequence and not on the stddev (which is 0).
G1Predictions predictor(0.5);
TruncatedSeq s;
s.add(1.0);
double p1 = predictor.get_new_prediction(&s);
assert(p1 > 1.0, "First prediction must be larger than average, but avg is %f and prediction %f", s.davg(), p1);
s.add(1.0);
double p2 = predictor.get_new_prediction(&s);
assert(p2 < p1, "First prediction must be larger than second, but they are %f %f", p1, p2);
s.add(1.0);
double p3 = predictor.get_new_prediction(&s);
assert(p3 < p2, "Second prediction must be larger than third, but they are %f %f", p2, p3);
s.add(1.0);
s.add(1.0); // Five elements are now in the sequence.
double p5 = predictor.get_new_prediction(&s);
assert(p5 < p3, "Fifth prediction must be smaller than third, but they are %f %f", p3, p5);
assert(fabs(p5 - 1.0) < epsilon, "Prediction must be 1.0+epsilon, but is %f", p5);
}
{
// The following tests checks that initially prediction based on the average is
// used, that gets overridden by the stddev prediction at the end.
G1Predictions predictor(0.5);
TruncatedSeq s;
s.add(0.5);
double p1 = predictor.get_new_prediction(&s);
assert(p1 > 0.5, "First prediction must be larger than average, but avg is %f and prediction %f", s.davg(), p1);
s.add(0.2);
double p2 = predictor.get_new_prediction(&s);
assert(p2 < p1, "First prediction must be larger than second, but they are %f %f", p1, p2);
s.add(0.5);
double p3 = predictor.get_new_prediction(&s);
assert(p3 < p2, "Second prediction must be larger than third, but they are %f %f", p2, p3);
s.add(0.2);
s.add(2.0);
double p5 = predictor.get_new_prediction(&s);
assert(p5 > p3, "Fifth prediction must be bigger than third, but they are %f %f", p3, p5);
}
}
void TestPredictions_test() {
G1Predictions::test();
}
#endif