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himcm question A plot generator
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""" | |
categories: pro, premier, open. | |
cly --> strong men | |
ath --> strong women | |
swim, t1, bike, t2, run, total | |
where t1 and t2 refer to the times needed for the transition between the modes of exercise. | |
""" | |
import matplotlib.pyplot as plt | |
import numpy as np | |
import datetime | |
f = open('HiMCM_TriDataSet.csv', 'r') | |
people = [] | |
class person(): | |
def __init__(self): | |
self.id = 0 | |
self.age = 0 | |
self.gender = "" | |
self.cat = "" | |
self.timings = [] | |
self.speeds = [] | |
def processTimings(self): | |
newtimings = [] | |
speeds = [] | |
for i in self.timings: | |
#print int(i.split(':')[1]) * 60 | |
t = int(i.split(':')[0]) * 3600 + int(i.split(':')[1]) * 60 + int(i.split(':')[2].strip()) | |
newtimings.append(t) | |
self.speeds.append(1.0/t) | |
self.timings = newtimings | |
for line in f: | |
if line[:1] == "#": | |
continue | |
if len(line) == 0: | |
continue | |
a = person() | |
data = line.strip().split(",") | |
a.id = int(data[0]) | |
a.age = int(data[1]) | |
a.gender = data[2] | |
a.cat = data[3] | |
a.timings = data[4:] | |
a.processTimings() | |
people.append(a) | |
male_open_totaltiming = [] | |
female_open_totaltiming = [] | |
def genHistPlot(cats, timingindex, filename, fn = None): # category, timings index | |
_data = [] | |
if fn == None: | |
for i in cats: | |
_data.append([person.timings[timingindex] for person in people if person.cat == i]) | |
else: | |
for i in cats: | |
_data.append([fn(person.timings[timingindex]) for person in people if person.cat == i]) | |
with plt.style.context('fivethirtyeight'): | |
plt.gcf().subplots_adjust(bottom=0.15) | |
plt.gcf().subplots_adjust(left=0.17) | |
plt.grid('off') | |
for i in _data: | |
plt.hist(i, normed=1,alpha = 0.5) | |
plt.xlabel("Total time [s]", fontsize=16) | |
plt.ylabel("Normalised frequency [#]", fontsize=16) | |
plt.savefig(filename+'.pdf') | |
plt.clf() | |
plt.cla() | |
plt.close() | |
genHistPlot(["M OPEN", "F OPEN"], 5, "open_gender_timing_distribution") | |
genHistPlot(["M OPEN", "F OPEN"], 5, "open_gender_speed_distribution", fn = lambda x: 1.0/x) | |
genHistPlot(["M PREMIER", "M PRO", "CLY"], 1, "male_non-open_swimtime_distribution") |
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