blob: c7f5ebb88b6019cae3ff94bb3c2e82d063c1db06 [file] [log] [blame]
# To run this script run the command 'python3 scripts/generate_plots_flow_flatten_merge.py' in the /benchmarks folder
import pandas as pd
import sys
import locale
import matplotlib.pyplot as plt
from matplotlib.ticker import FormatStrFormatter
input_file = "build/reports/jmh/results.csv"
output_file = "out/flow-flatten-merge.svg"
# Please change the value of this variable according to the FlowFlattenMergeBenchmarkKt.ELEMENTS
elements = 100000
benchmark_name = "benchmarks.flow.FlowFlattenMergeBenchmark.flattenMerge"
csv_columns = ["Benchmark", "Score", "Unit", "Param: concurrency", "Param: flowsNumberStrategy"]
rename_columns = {"Benchmark": "benchmark", "Score" : "score", "Unit" : "unit",
"Param: concurrency" : "concurrency", "Param: flowsNumberStrategy" : "flows"}
markers = ['.', 'v', '^', '1', '2', '8', 'p', 'P', 'x', 'D', 'd', 's']
colours = ['red', 'gold', 'sienna', 'olivedrab', 'lightseagreen', 'navy', 'blue', 'm', 'crimson', 'yellow', 'orangered', 'slateblue', 'aqua', 'black', 'silver']
def next_colour():
i = 0
while True:
yield colours[i % len(colours)]
i += 1
def next_marker():
i = 0
while True:
yield markers[i % len(markers)]
i += 1
def draw(data, plt):
plt.xscale('log', basex=2)
plt.gca().xaxis.set_major_formatter(FormatStrFormatter('%0.f'))
plt.grid(linewidth='0.5', color='lightgray')
if data.unit.unique()[0] != "ops/s":
print("Unexpected time unit: " + data.unit.unique()[0])
sys.exit(1)
plt.ylabel("elements / ms")
plt.xlabel('concurrency')
plt.xticks(data.concurrency.unique())
colour_gen = next_colour()
marker_gen = next_marker()
for flows in data.flows.unique():
gen_colour = next(colour_gen)
gen_marker = next(marker_gen)
res = data[(data.flows == flows)]
# plt.plot(res.concurrency, res.score*elements/1000, label="flows={}".format(flows), color=gen_colour, marker=gen_marker)
plt.errorbar(x=res.concurrency, y=res.score*elements/1000, yerr=res.score_error*elements/1000, solid_capstyle='projecting',
label="flows={}".format(flows), capsize=4, color=gen_colour, linewidth=2.2)
langlocale = locale.getdefaultlocale()[0]
locale.setlocale(locale.LC_ALL, langlocale)
dp = locale.localeconv()['decimal_point']
if dp == ",":
csv_columns.append("Score Error (99,9%)")
rename_columns["Score Error (99,9%)"] = "score_error"
elif dp == ".":
csv_columns.append("Score Error (99.9%)")
rename_columns["Score Error (99.9%)"] = "score_error"
else:
print("Unexpected locale delimeter: " + dp)
sys.exit(1)
data = pd.read_csv(input_file, sep=",", decimal=dp)
data = data[csv_columns].rename(columns=rename_columns)
data = data[(data.benchmark == benchmark_name)]
plt.rcParams.update({'font.size': 15})
plt.figure(figsize=(12.5, 10))
draw(data, plt)
plt.legend(loc='upper center', borderpad=0, bbox_to_anchor=(0.5, 1.3), ncol=2, frameon=False, borderaxespad=2, prop={'size': 15})
plt.tight_layout(pad=12, w_pad=2, h_pad=1)
plt.savefig(output_file, bbox_inches='tight')