[0bb691b1] | 1 | #!/usr/bin/python3 |
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| 2 | """ |
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| 3 | Python Script to plot values obtained by the rmit.py script |
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| 4 | Runs a R.I.P.L. |
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| 5 | |
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| 6 | ./plot.py |
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| 7 | -t trials |
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| 8 | -o option:values |
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| 9 | """ |
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| 10 | |
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| 11 | import argparse |
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| 12 | import itertools |
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| 13 | import json |
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| 14 | import math |
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| 15 | import numpy |
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[c0458be3] | 16 | import os |
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[0bb691b1] | 17 | import re |
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[57af3f3] | 18 | import statistics |
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[0bb691b1] | 19 | import sys |
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[41a6a78] | 20 | import time |
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[0bb691b1] | 21 | |
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[41a6a78] | 22 | import matplotlib |
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[0bb691b1] | 23 | import matplotlib.pyplot as plt |
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[41a6a78] | 24 | from matplotlib.ticker import EngFormatter, ScalarFormatter |
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| 25 | |
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| 26 | def fmtDur( duration ): |
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| 27 | if duration : |
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| 28 | hours, rem = divmod(duration, 3600) |
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| 29 | minutes, rem = divmod(rem, 60) |
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| 30 | seconds, millis = divmod(rem, 1) |
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| 31 | return "%2d:%02d.%03d" % (minutes, seconds, millis * 1000) |
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| 32 | return " n/a" |
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[0bb691b1] | 33 | |
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[44706d1] | 34 | class Field: |
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[c0458be3] | 35 | def __init__(self, unit, _min, _log, _name=None, _factor=1.0): |
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[44706d1] | 36 | self.unit = unit |
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| 37 | self.min = _min |
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[e9c5db2] | 38 | self.log = _log |
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[76f5e9f] | 39 | self.name = _name |
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[c0458be3] | 40 | self.factor = _factor |
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[44706d1] | 41 | |
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| 42 | field_names = { |
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[e9c5db2] | 43 | "ns per ops" : Field('ns' , 0, False), |
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[41a6a78] | 44 | "Number of processors" : Field('' , 1, "exact"), |
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[e9c5db2] | 45 | "Ops per procs" : Field('Ops' , 0, False), |
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| 46 | "Ops per threads" : Field('Ops' , 0, False), |
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[41a6a78] | 47 | "ns per ops/procs" : Field('' , 0, False, _name = "ns $\\times$ (Processor $/$ Total Ops)" ), |
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[3b5dcfa] | 48 | "Number of threads" : Field('' , 1, False), |
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[e9c5db2] | 49 | "Total Operations(ops)" : Field('Ops' , 0, False), |
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| 50 | "Ops/sec/procs" : Field('Ops' , 0, False), |
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| 51 | "Total blocks" : Field('Blocks', 0, False), |
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[c0458be3] | 52 | "Ops per second" : Field('' , 0, False), |
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[e9c5db2] | 53 | "Cycle size (# thrds)" : Field('thrd' , 1, False), |
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| 54 | "Duration (ms)" : Field('ms' , 0, False), |
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[3b5dcfa] | 55 | "Target QPS" : Field('' , 0, False), |
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| 56 | "Actual QPS" : Field('' , 0, False), |
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[e5e2334] | 57 | "Average Read Latency" : Field('s' , 0, False, _factor = 0.000001), |
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[c0458be3] | 58 | "Median Read Latency" : Field('s' , 0, True, _factor = 0.000001), |
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| 59 | "Tail Read Latency" : Field('s' , 0, True, _factor = 0.000001), |
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| 60 | "Average Update Latency": Field('s' , 0, True, _factor = 0.000001), |
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| 61 | "Median Update Latency" : Field('s' , 0, True, _factor = 0.000001), |
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| 62 | "Tail Update Latency" : Field('s' , 0, True, _factor = 0.000001), |
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[e5e2334] | 63 | "Update Ratio" : Field('%' , 0, False), |
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[c0458be3] | 64 | "Request Rate" : Field('req/s' , 0, False), |
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| 65 | "Data Rate" : Field('b/s' , 0, False, _factor = 1000 * 1000, _name = "Response Throughput"), |
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[e5e2334] | 66 | "Errors" : Field('%' , 0, False), |
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[44706d1] | 67 | } |
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[0bb691b1] | 68 | |
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[c0458be3] | 69 | def plot(in_data, x, y, options, prefix): |
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[0bb691b1] | 70 | fig, ax = plt.subplots() |
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[8fca132] | 71 | colors = itertools.cycle(['#006cb4','#0aa000','#ff6600','#8510a1','#0095e3','#fd8f00','#e30002','#8f00d6','#4b009a','#ffff00','#69df00','#fb0300','#b13f00']) |
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| 72 | markers = itertools.cycle(['x', '+', '1', '2', '3', '4']) |
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| 73 | series = {} # scatter data for each individual data point |
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| 74 | groups = {} # data points for x value |
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[e9c5db2] | 75 | |
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| 76 | print("Preparing Data") |
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| 77 | |
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[57af3f3] | 78 | for entry in in_data: |
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| 79 | name = entry[0] |
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[41a6a78] | 80 | if options.filter and not name.startswith(options.filter): |
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| 81 | continue |
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| 82 | |
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[57af3f3] | 83 | if not name in series: |
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| 84 | series[name] = {'x':[], 'y':[]} |
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| 85 | |
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| 86 | if not name in groups: |
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| 87 | groups[name] = {} |
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[0bb691b1] | 88 | |
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| 89 | if x in entry[2] and y in entry[2]: |
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[57af3f3] | 90 | xval = entry[2][x] |
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[c0458be3] | 91 | yval = entry[2][y] * field_names[y].factor |
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[57af3f3] | 92 | series[name]['x'].append(xval) |
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| 93 | series[name]['y'].append(yval) |
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| 94 | |
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| 95 | if not xval in groups[name]: |
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| 96 | groups[name][xval] = [] |
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| 97 | |
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| 98 | groups[name][xval].append(yval) |
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| 99 | |
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[e9c5db2] | 100 | print("Preparing Lines") |
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| 101 | |
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[57af3f3] | 102 | lines = {} # lines from groups with min, max, median, etc. |
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| 103 | for name, data in groups.items(): |
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| 104 | if not name in lines: |
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| 105 | lines[name] = { 'x': [], 'min':[], 'max':[], 'med':[], 'avg':[] } |
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| 106 | |
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| 107 | for xkey in sorted(data): |
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| 108 | ys = data[xkey] |
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| 109 | lines[name]['x'] .append(xkey) |
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| 110 | lines[name]['min'].append(min(ys)) |
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| 111 | lines[name]['max'].append(max(ys)) |
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| 112 | lines[name]['med'].append(statistics.median(ys)) |
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| 113 | lines[name]['avg'].append(statistics.mean(ys)) |
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| 114 | |
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[e9c5db2] | 115 | print("Making Plots") |
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| 116 | |
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[1f4fde5] | 117 | for name, data in sorted(series.items()): |
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[57af3f3] | 118 | _col = next(colors) |
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[8fca132] | 119 | _mrk = next(markers) |
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| 120 | plt.scatter(data['x'], data['y'], color=_col, label=name[len(prefix):], marker=_mrk) |
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| 121 | plt.plot(lines[name]['x'], lines[name]['min'], ':', color=_col) |
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[57af3f3] | 122 | plt.plot(lines[name]['x'], lines[name]['max'], '--', color=_col) |
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| 123 | plt.plot(lines[name]['x'], lines[name]['med'], '-', color=_col) |
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[0bb691b1] | 124 | |
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[e9c5db2] | 125 | print("Calculating Extremums") |
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| 126 | |
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[0bb691b1] | 127 | mx = max([max(s['x']) for s in series.values()]) |
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| 128 | my = max([max(s['y']) for s in series.values()]) |
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| 129 | |
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[e9c5db2] | 130 | print("Finishing Plots") |
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| 131 | |
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[76f5e9f] | 132 | plt.ylabel(field_names[y].name if field_names[y].name else y) |
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[e9c5db2] | 133 | # plt.xticks(range(1, math.ceil(mx) + 1)) |
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[76f5e9f] | 134 | plt.xlabel(field_names[x].name if field_names[x].name else x) |
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[0bb691b1] | 135 | plt.grid(b = True) |
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[44706d1] | 136 | ax.xaxis.set_major_formatter( EngFormatter(unit=field_names[x].unit) ) |
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[76f5e9f] | 137 | if options.logx: |
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| 138 | ax.set_xscale('log') |
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| 139 | elif field_names[x].log: |
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[e9c5db2] | 140 | ax.set_xscale('log') |
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[41a6a78] | 141 | if field_names[x].log == "exact": |
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| 142 | xvals = set() |
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| 143 | for s in series.values(): |
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| 144 | xvals |= set(s['x']) |
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| 145 | ax.set_xticks(sorted(xvals)) |
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| 146 | ax.get_xaxis().set_major_formatter(ScalarFormatter()) |
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| 147 | plt.xticks(rotation = 45) |
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[e9c5db2] | 148 | else: |
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| 149 | plt.xlim(field_names[x].min, mx + 0.25) |
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| 150 | |
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[76f5e9f] | 151 | if options.logy: |
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| 152 | ax.set_yscale('log') |
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| 153 | elif field_names[y].log: |
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[e9c5db2] | 154 | ax.set_yscale('log') |
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| 155 | else: |
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[76f5e9f] | 156 | plt.ylim(field_names[y].min, options.MaxY if options.MaxY else my*1.2) |
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[e9c5db2] | 157 | |
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[c0458be3] | 158 | ax.yaxis.set_major_formatter( EngFormatter(unit=field_names[y].unit) ) |
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| 159 | |
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[44706d1] | 160 | plt.legend(loc='upper left') |
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[e9c5db2] | 161 | |
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| 162 | print("Results Ready") |
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[41a6a78] | 163 | start = time.time() |
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[76f5e9f] | 164 | if options.out: |
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| 165 | plt.savefig(options.out, bbox_inches='tight') |
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[f34f95c] | 166 | else: |
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| 167 | plt.show() |
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[41a6a78] | 168 | end = time.time() |
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| 169 | print("Took {}".format(fmtDur(end - start))) |
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[0bb691b1] | 170 | |
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| 171 | |
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| 172 | if __name__ == "__main__": |
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| 173 | # ================================================================================ |
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| 174 | # parse command line arguments |
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[e9c5db2] | 175 | parser = argparse.ArgumentParser(description='Python Script to draw R.M.I.T. results') |
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| 176 | parser.add_argument('-f', '--file', nargs='?', type=argparse.FileType('r'), default=sys.stdin, help="Input file") |
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| 177 | parser.add_argument('-o', '--out', nargs='?', type=str, default=None, help="Output file") |
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| 178 | parser.add_argument('-y', nargs='?', type=str, default="", help="Which field to use as the Y axis") |
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| 179 | parser.add_argument('-x', nargs='?', type=str, default="", help="Which field to use as the X axis") |
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[76f5e9f] | 180 | parser.add_argument('--logx', action='store_true', help="if set, makes the x-axis logscale") |
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| 181 | parser.add_argument('--logy', action='store_true', help="if set, makes the y-axis logscale") |
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| 182 | parser.add_argument('--MaxY', nargs='?', type=int, help="maximum value of the y-axis") |
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[41a6a78] | 183 | parser.add_argument('--filter', nargs='?', type=str, default="", help="if not empty, only print series that start with specified filter") |
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[e9c5db2] | 184 | |
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| 185 | options = parser.parse_args() |
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[0bb691b1] | 186 | |
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[41a6a78] | 187 | # if not options.out: |
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| 188 | # matplotlib.use('SVG') |
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| 189 | |
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[0bb691b1] | 190 | # ================================================================================ |
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| 191 | # load data |
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| 192 | try : |
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| 193 | data = json.load(options.file) |
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| 194 | except : |
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| 195 | print('ERROR: could not read input', file=sys.stderr) |
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| 196 | parser.print_help(sys.stderr) |
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| 197 | sys.exit(1) |
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| 198 | |
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| 199 | # ================================================================================ |
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| 200 | # identify the keys |
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| 201 | |
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| 202 | series = set() |
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| 203 | fields = set() |
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| 204 | |
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| 205 | for entry in data: |
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| 206 | series.add(entry[0]) |
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| 207 | for label in entry[2].keys(): |
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| 208 | fields.add(label) |
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| 209 | |
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[41a6a78] | 210 | # filter out the series if needed |
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| 211 | if options.filter: |
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| 212 | series = set(filter(lambda elem: elem.startswith(options.filter), series)) |
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| 213 | |
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| 214 | # find the common prefix on series for removal (only if no filter) |
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[c0458be3] | 215 | prefix = os.path.commonprefix(list(series)) |
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| 216 | |
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[f34f95c] | 217 | if not options.out : |
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| 218 | print(series) |
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[e9c5db2] | 219 | print("fields: ", ' '.join(fields)) |
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[f34f95c] | 220 | |
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[e9c5db2] | 221 | wantx = "Number of processors" |
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| 222 | wanty = "ns per ops" |
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| 223 | |
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| 224 | if options.x: |
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| 225 | if options.x in field_names.keys(): |
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| 226 | wantx = options.x |
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| 227 | else: |
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| 228 | print("Could not find X key '{}', defaulting to '{}'".format(options.x, wantx)) |
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| 229 | |
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| 230 | if options.y: |
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| 231 | if options.y in field_names.keys(): |
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| 232 | wanty = options.y |
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| 233 | else: |
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| 234 | print("Could not find Y key '{}', defaulting to '{}'".format(options.y, wanty)) |
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| 235 | |
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| 236 | |
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[c0458be3] | 237 | plot(data, wantx, wanty, options, prefix) |
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