# Plotting Dates from Numpy Array Problems

I'm plotting a CSV file of weather data, and I got it to import just fine in my code, but i'm trying to plot it. Here's a sample of the CSV data:

``````12:00am,171,6,7,52,76,77.1,63.7,28.74,0.00,0.00,0.0,0,63.7,78.1,67.4,56.0,29.96
12:01am,192,4,6,52,76,77.1,63.7,28.74,0.00,0.00,0.0,0,63.7,78.1,67.4,56.0,29.96
12:02am,197,3,6,52,76,77.1,63.7,28.74,0.00,0.00,0.0,0,63.7,78.1,67.4,56.0,29.96
12:03am,175,3,6,52,76,77.1,63.7,28.73,0.00,0.00,0.0,0,63.7,78.1,67.4,56.0,29.96
12:04am,194,4,6,52,76,77.1,63.7,28.73,0.00,0.00,0.0,0,63.7,78.1,67.4,56.0,29.96
12:05am,148,5,6,52,76,77.1,63.7,28.73,0.00,0.00,0.0,0,63.7,78.1,67.4,56.0,29.96
``````

Anyway, I'd like the time to be on the X axis, but I can't get it to plot using matplotlib. I tried a method using xticks, and it plotted my y values, but that was it. It just gave me a thick solid line on my X axis.

``````import matplotlib as mpl
import numpy as np
import matplotlib.pyplot as plt
import matplotlib.cbook as cbook
from matplotlib.dates import date2num
import datetime as DT
import re

data = np.genfromtxt('FILE.csv', delimiter=',', dtype=None, skip_header=3)
length = len(data)

x = data['f0']
y = data['f7']

fig = plt.figure()
ax1 = fig.add_subplot(111)
ax1.set_title("Temperature")
ax1.set_xlabel('Time')
ax1.set_ylabel('Degrees')

#plt.plot_date(x, y)
plt.show()
leg = ax1.legend()

plt.show()
``````

I'm missing a few crucial parts because I honestly don't know where to go from here. I checked the data type of my numpy array, and it kept saying numpy.ndarray, and I can't find a way to convert it to a string or an int value to plot. It's a 24 hour CSV file, and I would like tick marks every 30 minutes or so. Any ideas?

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This question is possible related. –  Cody Piersall Jul 4 '13 at 20:26
Tried that, but I got a bunch of errors and it never plotted or output data. I tried this: stackoverflow.com/questions/6974847/… and I got just a solid black line on the x axis, probably because there is a good 600 tick marks. How would I change that? –  user2551677 Jul 4 '13 at 20:49
I've had success with giving plt.plot() a list of datetime objects for the x coordinates and then a list of floats for the y values. I'm not sure what a convenient way to get that out of a numpy array would be, or how to really control the tick marks, but that might at least give you a chart. –  seaotternerd Jul 4 '13 at 21:14
pandas is pretty good at importing csv data, Parsing good and has some basic plotting functionality. After examining data can go back to pure matplotlib functionality. –  Joop Jul 4 '13 at 21:16
I've posted an answer. I tested it, and it works on my computer (always gotta have that disclaimer). –  Cody Piersall Jul 4 '13 at 21:42

## 2 Answers

Well, this is not very elegant, but it works. The key is to change the times stored in `x`, which are just strings, to datetime objects so that matploblib can plot them. I have made a function that does the conversion and called it `get_datetime_from_string`.

** Edited code to be compatible with Python 2.7 and work with times with single digit hours **

``````import matplotlib as mpl
import numpy as np
import matplotlib.pyplot as plt
import matplotlib.cbook as cbook
from matplotlib.dates import date2num
import datetime as DT
import re

def get_datetime_from_string(time_string):
''' Returns a datetime.datetime object

Args
time_string: a string of the form 'xx:xxam'
'''

# there's got to be a better way to do this.
# Convert it to utf-8 so string slicing works as expected.
time_string = unicode(time_string, 'utf-8')

# period is either am or pm
colon_position = time_string.find(':')
period = time_string[-2:]
hour = int(time_string[:colon_position])
if period.lower() == 'pm':
hour += 12

minute = int(time_string[colon_position + 1:colon_position + 3])

return DT.datetime(1,1,1,hour, minute)

data = np.genfromtxt('test.csv', delimiter=',', dtype=None, skip_header=3)
length=len(data)

x=data['f0']
y=data['f7']

datetimes = [get_datetime_from_string(t) for t in x]

fig = plt.figure()

ax1 = fig.add_subplot(111)

ax1.set_title("Temperature")
ax1.set_xlabel('Time')
ax1.set_ylabel('Degrees')

plt.plot(datetimes, y)
leg = ax1.legend()

plt.show()
``````

I kept getting tripped up because I was trying to do string slicing on `time_string` before converting it to `utf-8`. Before it was giving me the ASCII values or something. I'm not sure why converting it helped, but it did.

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When I add that to my code, I get the error:File "metogram.py", line 22, in get_datetime_from_string hour = int(time_string[:2]) ValueError: invalid literal for int() with base 10: '1:' –  user2551677 Jul 4 '13 at 21:44
Realized I made a small mistake in adapting that to mine, and now the new error is Traceback (most recent call last): File "metogram.py", line 36, in <module> datetimes = [get_datetime_from_string(t) for t in x] File "metogram.py", line 20, in get_datetime_from_string time_string = str(time_string, 'utf-8') TypeError: str() takes at most 1 argument (2 given) –  user2551677 Jul 4 '13 at 21:51
Try it without the conversion. In other words, try it without the line `time_string = str(time_string, 'utf-8')`. –  Cody Piersall Jul 4 '13 at 22:34
By the way, the reason that breaks for you and not for me is that I'm using Python version 3.3, and you're not :-). –  Cody Piersall Jul 4 '13 at 22:36
Your code works with the snippet of csv I provided, but not with the whole CSV since it breaks when it gets to times like 1:30am with one number in the hour column. –  user2551677 Jul 5 '13 at 1:37

`pandas` is a very useful library for time series analysis and has some plotting features based on matplotlib.

Pandas uses `dateutil` internally to parse dates, however the problem is, that the date isn't included in your file. In the code below I assume, that you will know the date before parsing the file (from the file name?)

``````In [125]: import pandas as pd
In [126]: pd.options.display.mpl_style = 'default'
In [127]: import matplotlib.pyplot as plt

In [128]: class DateParser():
.....:     def __init__(self, datestring):
.....:         self.datestring = datestring
.....:     def get_datetime(self, time):
.....:         return dateutil.parser.parse(' '.join([self.datestring, time]))
.....:

In [129]: dp = DateParser('2013-01-01')

In [130]: df = pd.read_csv('weather_data.csv', sep=',', index_col=0, header=None,
parse_dates={'datetime':[0]}, date_parser=dp.get_datetime)

In [131]: df.ix[:, :12] # show the first columns
Out[131]:
1   2   3   4   5     6     7      8   9   10  11  12
datetime
2013-01-01 00:00:00  171   6   7  52  76  77.1  63.7  28.74   0   0   0   0
2013-01-01 00:01:00  192   4   6  52  76  77.1  63.7  28.74   0   0   0   0
2013-01-01 00:02:00  197   3   6  52  76  77.1  63.7  28.74   0   0   0   0
2013-01-01 00:03:00  175   3   6  52  76  77.1  63.7  28.73   0   0   0   0
2013-01-01 00:04:00  194   4   6  52  76  77.1  63.7  28.73   0   0   0   0
2013-01-01 00:05:00  148   5   6  52  76  77.1  63.7  28.73   0   0   0   0

In [132]: ax = df.ix[:,1:3].plot(secondary_y=1)

In [133]: ax.margins(0.04)

In [134]: plt.tight_layout()

In [135]: plt.savefig('weather_data.png')
``````

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