criterion performance measurements

overview

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slow

lower bound estimate upper bound
OLS regression xxx xxx xxx
R² goodness-of-fit xxx xxx xxx
Mean execution time 5.717383255644568e-3 5.744948361724262e-3 5.799211993114374e-3
Standard deviation 6.387915903574814e-5 1.1162257579632155e-4 2.1011030513961906e-4

Outlying measurements have slight (2.498356344510215e-2%) effect on estimated standard deviation.

greedy

lower bound estimate upper bound
OLS regression xxx xxx xxx
R² goodness-of-fit xxx xxx xxx
Mean execution time 2.5162795168858937e-6 2.5363645864407884e-6 2.5686771069283725e-6
Standard deviation 5.130888552804702e-8 7.824660049829945e-8 1.3147062583626312e-7

Outlying measurements have moderate (0.4018213755366276%) effect on estimated standard deviation.

understanding this report

In this report, each function benchmarked by criterion is assigned a section of its own. The charts in each section are active; if you hover your mouse over data points and annotations, you will see more details.

Under the charts is a small table. The first two rows are the results of a linear regression run on the measurements displayed in the right-hand chart.

We use a statistical technique called the bootstrap to provide confidence intervals on our estimates. The bootstrap-derived upper and lower bounds on estimates let you see how accurate we believe those estimates to be. (Hover the mouse over the table headers to see the confidence levels.)

A noisy benchmarking environment can cause some or many measurements to fall far from the mean. These outlying measurements can have a significant inflationary effect on the estimate of the standard deviation. We calculate and display an estimate of the extent to which the standard deviation has been inflated by outliers.