# Copyright 2016 the V8 project authors. All rights reserved. # Use of this source code is governed by a BSD-style license that can be # found in the LICENSE file. # Do statistical tests on benchmark results # This script requires the libraries rjson, R.utils, ggplot2 and data.table # Install them prior to running # To use the script, first get some benchmark results, for example via # tools/run_perf.py ../v8-perf/benchmarks/Octane2.1/Octane2.1-TF.json # --outdir=out/x64.release-on --outdir-secondary=out/x64.release-off # --json-test-results=results-on.json # --json-test-results-secondary=results-off.json # then run this script # Rscript statistics-for-json.R results-on.json results-off.json ~/SVG # to produce graphs (and get stdio output of statistical tests). suppressMessages(library("rjson")) # for fromJson suppressMessages(library("R.utils")) # for printf suppressMessages(library("ggplot2")) # for plotting suppressMessages(library("data.table")) # less broken than data.frame # Clear all variables from environment rm(list=ls()) args <- commandArgs(TRUE) if (length(args) != 3) { printf(paste("usage: Rscript %%this_script patched-results.json", "unpatched-results.json\n")) } else { patch <- fromJSON(file=args[1]) nopatch <- fromJSON(file=args[2]) outputPath <- args[3] df <- data.table(L = numeric(), R = numeric(), E = numeric(), p.value = numeric(), yL = character(), p.value.sig = logical()) for (i in seq(1, length(patch$traces))) { testName <- patch$traces[[i]]$graphs[[2]] printf("%s\n", testName) nopatch_res <- as.integer(nopatch$traces[[i]]$results) patch_res <- as.integer(patch$traces[[i]]$results) if (length(nopatch_res) > 0) { patch_norm <- shapiro.test(patch_res); nopatch_norm <- shapiro.test(nopatch_res); # Shaprio-Wilk test indicates whether data is not likely to # come from a normal distribution. The p-value is the probability # to obtain the sample from a normal distribution. This means, the # smaller p, the more likely the sample was not drawn from a normal # distribution. See [wikipedia:Shapiro-Wilk-Test]. printf(" Patched scores look %s distributed (W=%.4f, p=%.4f)\n", ifelse(patch_norm$p.value < 0.05, "not normally", "normally"), patch_norm$statistic, patch_norm$p.value); printf(" Unpatched scores look %s distributed (W=%.4f, p=%.4f)\n", ifelse(nopatch_norm$p.value < 0.05, "not normally", "normally"), nopatch_norm$statistic, nopatch_norm$p.value); hist <- ggplot(data=data.frame(x=as.integer(patch_res)), aes(x)) + theme_bw() + geom_histogram(bins=50) + ylab("Points") + xlab(patch$traces[[i]]$graphs[[2]]) ggsave(filename=sprintf("%s/%s.svg", outputPath, testName), plot=hist, width=7, height=7) hist <- ggplot(data=data.frame(x=as.integer(nopatch_res)), aes(x)) + theme_bw() + geom_histogram(bins=50) + ylab("Points") + xlab(patch$traces[[i]]$graphs[[2]]) ggsave(filename=sprintf("%s/%s-before.svg", outputPath, testName), plot=hist, width=7, height=7) # The Wilcoxon rank-sum test mww <- wilcox.test(patch_res, nopatch_res, conf.int = TRUE, exact=TRUE) printf(paste(" Wilcoxon U-test W=%.4f, p=%.4f,", "confidence interval [%.1f, %.1f],", "est. effect size %.1f \n"), mww$statistic, mww$p.value, mww$conf.int[1], mww$conf.int[2], mww$estimate); df <-rbind(df, list(mww$conf.int[1], mww$conf.int[2], unname(mww$estimate), unname(mww$p.value), testName, ifelse(mww$p.value < 0.05, TRUE, FALSE))) # t-test t <- t.test(patch_res, nopatch_res, paired=FALSE) printf(paste(" Welch t-test t=%.4f, df = %.2f, p=%.4f,", "confidence interval [%.1f, %.1f], mean diff %.1f \n"), t$statistic, t$parameter, t$p.value, t$conf.int[1], t$conf.int[2], t$estimate[1]-t$estimate[2]); } } df2 <- cbind(x=1:nrow(df), df[order(E),]) speedup <- ggplot(df2, aes(x = x, y = E, colour=p.value.sig)) + geom_errorbar(aes(ymax = L, ymin = R), colour="black") + geom_point(size = 4) + scale_x_discrete(limits=df2$yL, name=paste("Benchmark, n=", length(patch_res))) + theme_bw() + geom_hline(yintercept = 0) + ylab("Est. Effect Size in Points") + theme(axis.text.x = element_text(angle = 90, hjust = 1, vjust=0.5)) + theme(legend.position = "bottom") + scale_colour_manual(name="Statistical Significance (MWW, p < 0.05)", values=c("red", "green"), labels=c("not significant", "significant")) + theme(legend.justification=c(0,1), legend.position=c(0,1)) print(speedup) ggsave(filename=sprintf("%s/speedup-estimates.svg", outputPath), plot=speedup, width=7, height=7) }