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perf: allow profiling of more than one run...
perf: allow profiling of more than one run By default, we still profile the first run only. However profiling more run help to understand side effect from one run to the other. So we add an option to be able to do so.

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perf-revlog-write-plot.py
125 lines | 3.2 KiB | text/x-python | PythonLexer
/ contrib / perf-utils / perf-revlog-write-plot.py
#!/usr/bin/env python3
#
# Copyright 2018 Paul Morelle <Paul.Morelle@octobus.net>
#
# This software may be used and distributed according to the terms of the
# GNU General Public License version 2 or any later version.
#
# This script use the output of `hg perfrevlogwrite -T json --details` to draw
# various plot related to write performance in a revlog
#
# usage: perf-revlog-write-plot.py details.json
import json
import re
import numpy as np
import scipy.signal
from matplotlib import (
pyplot as plt,
ticker as mticker,
)
def plot(data, title=None):
items = {}
re_title = re.compile(r'^revisions #\d+ of \d+, rev (\d+)$')
for item in data:
m = re_title.match(item['title'])
if m is None:
continue
rev = int(m.group(1))
items[rev] = item
min_rev = min(items.keys())
max_rev = max(items.keys())
ary = np.empty((2, max_rev - min_rev + 1))
for rev, item in items.items():
ary[0][rev - min_rev] = rev
ary[1][rev - min_rev] = item['wall']
fig = plt.figure()
comb_plt = fig.add_subplot(211)
other_plt = fig.add_subplot(212)
comb_plt.plot(
ary[0], np.cumsum(ary[1]), color='red', linewidth=1, label='comb'
)
plots = []
p = other_plt.plot(ary[0], ary[1], color='red', linewidth=1, label='wall')
plots.append(p)
colors = {
10: ('green', 'xkcd:grass green'),
100: ('blue', 'xkcd:bright blue'),
1000: ('purple', 'xkcd:dark pink'),
}
for n, color in colors.items():
avg_n = np.convolve(ary[1], np.full(n, 1.0 / n), 'valid')
p = other_plt.plot(
ary[0][n - 1 :],
avg_n,
color=color[0],
linewidth=1,
label='avg time last %d' % n,
)
plots.append(p)
med_n = scipy.signal.medfilt(ary[1], n + 1)
p = other_plt.plot(
ary[0],
med_n,
color=color[1],
linewidth=1,
label='median time last %d' % n,
)
plots.append(p)
formatter = mticker.ScalarFormatter()
formatter.set_scientific(False)
formatter.set_useOffset(False)
comb_plt.grid()
comb_plt.xaxis.set_major_formatter(formatter)
comb_plt.legend()
other_plt.grid()
other_plt.xaxis.set_major_formatter(formatter)
leg = other_plt.legend()
leg2plot = {}
for legline, plot in zip(leg.get_lines(), plots):
legline.set_picker(5)
leg2plot[legline] = plot
def onpick(event):
legline = event.artist
plot = leg2plot[legline]
visible = not plot[0].get_visible()
for l in plot:
l.set_visible(visible)
if visible:
legline.set_alpha(1.0)
else:
legline.set_alpha(0.2)
fig.canvas.draw()
if title is not None:
fig.canvas.set_window_title(title)
fig.canvas.mpl_connect('pick_event', onpick)
plt.show()
if __name__ == '__main__':
import sys
if len(sys.argv) > 1:
print('reading from %r' % sys.argv[1])
with open(sys.argv[1], 'r') as fp:
plot(json.load(fp), title=sys.argv[1])
else:
print('reading from stdin')
plot(json.load(sys.stdin))