library(ggplot2) library(sqldf) library(plyr) library(dplyr) library(cowplot) d <- read.csv("../../donar-res/tmp_light/window3.csv") d <- d %>% mutate (window = window / 1000) d$strat <- as.factor(d$strat) d$window <- as.factor(d$window) #d$decile <- factor(d$decile, levels = c("MIN", "D0.1", "D1", "D25", "D50", "D75", "D99", "D99.9")) d$percentile <-factor(d$percentile,levels=c("MAX", "P99.9", "P99", "P75", "P50", "P25", "P1", "P0.1", "MIN")) d$strat <- revalue(d$strat, c("1"="T", "0"="D")) d <- d %>% mutate (lat = latency / 1000) gd <- ggplot(sqldf("select * from d where percentile != 'MAX' and percentile != 'P1' and percentile != 'P0.1'") %>% arrange(percentile), aes(x=strat:window,y=lat,group=percentile,fill=percentile)) + geom_bar(stat='identity', position='identity') + scale_fill_grey() + ylab("Latency (ms)") + xlab("Strategy:Window (sec)") + labs(fill="Percentile") + coord_cartesian(ylim=c(0,600)) + geom_hline(yintercept = 200) + geom_hline(yintercept = 400) + theme_classic() e <- read.csv("../../donar-res/tmp_light/links3.csv") e$strat <- as.factor(e$strat) e$links <- as.factor(e$links) e$strat <- revalue(e$strat, c("1"="T", "0"="D")) e$percentile <-factor(e$percentile,levels=c("MAX", "P99.9", "P99", "P75", "P50", "P25", "P1", "P0.1", "MIN")) e <- e %>% mutate (lat = latency / 1000) ge <- ggplot(sqldf("select * from e where percentile != 'MAX' and percentile != 'P1' and percentile != 'P0.1' and links != 6 and links != 4") %>% arrange(percentile), aes(x=strat:links,y=lat,group=percentile,fill=percentile)) + geom_bar(stat='identity', position='identity') + scale_fill_grey() + ylab("Latency (ms)") + xlab("Strategy:Links") + labs(fill="Percentile") + geom_hline(yintercept = 200) + geom_hline(yintercept = 400) + coord_cartesian(ylim=c(0,600)) + theme_classic() f <- read.csv("../../donar-res/tmp_light/fast3.csv") f$strat <- as.factor(f$strat) f$strat <- revalue(f$strat, c("1"="T", "0"="D")) f$fast_count <- as.factor(f$fast_count) f$percentile <-factor(f$percentile,levels=c("MAX", "P99.9", "P99", "P75", "P50", "P25", "P1", "P0.1", "MIN")) f <- f %>% mutate (lat = latency / 1000) gf <- ggplot(sqldf("select * from f where percentile != 'MAX' and percentile != 'D1' and percentile != 'D0.1'") %>% arrange(percentile), aes(x=strat:fast_count,y=lat,group=percentile,fill=percentile)) + geom_bar(stat='identity', position='identity') + scale_fill_grey() + geom_hline(yintercept = 200) + geom_hline(yintercept = 400) + coord_cartesian(ylim=c(0,600)) + ylab("Latency (ms)") + xlab("Strategy:Fast Links") + labs(fill="Percentile") + theme_classic() plot_grid(gd, ge, gf, ncol=1) + ggsave("light_config.png", dpi=300, dev='png', height=17, width=15, units="cm") g <- read.csv("../../donar-res/tmp_light/guards.csv") g$strat <- as.factor(g$strat) g$strat <- revalue(g$strat, c("1"="T", "0"="D")) g$guard <- as.factor(g$guard) g$guard <- revalue(g$guard, c("guard_1"="1", "guard_3"="3", "guard_5"="5", "guard_7"="7", "guard_9"="9", "guard_11"="11", "simple"="inf")) g$guard <- factor(g$guard, levels=c("1", "3", "5", "7", "9", "11", "inf")) g$percentile <-factor(g$percentile,levels=c("MAX", "P99.9", "P99", "P75", "P50", "P25", "P1", "P0.1", "MIN")) g <- g %>% mutate (lat = latency / 1000) gg <- ggplot(sqldf("select * from g where percentile != 'MAX' and percentile != 'P1' and percentile != 'P0.1' ") %>% arrange(percentile), aes(x=strat:guard,y=lat,group=percentile,fill=percentile)) + geom_bar(stat='identity', position='identity') + scale_fill_grey() + geom_hline(yintercept = 200) + geom_hline(yintercept = 400) + coord_cartesian(ylim=c(0,600)) + ylab("Latency (ms)") + xlab("Strategy:Guards") + theme_classic() gg + ggsave("light_guards.png", dpi=300, dev='png', height=7, width=15, units="cm")