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I have a ever growing csv file that looks like:

143100, 2012-05-21 09:52:54.165852
125820, 2012-05-21 09:53:54.666780
109260, 2012-05-21 09:54:55.144712
116340, 2012-05-21 09:55:55.642197
125640, 2012-05-21 09:56:56.094999
122820, 2012-05-21 09:57:56.546567
124770, 2012-05-21 09:58:57.046050
103830, 2012-05-21 09:59:57.497299
114120, 2012-05-21 10:00:58.000978
-31549410, 2012-05-21 10:01:58.063470
90390, 2012-05-21 10:02:58.108794
81690, 2012-05-21 10:03:58.161329
80940, 2012-05-21 10:04:58.227664
102180, 2012-05-21 10:05:58.289882
99750, 2012-05-21 10:06:58.322063
87000, 2012-05-21 10:07:58.391256
92160, 2012-05-21 10:08:58.442438
80130, 2012-05-21 10:09:58.506494

The negative numbers occur when the service that generates the file has an API connection failure. I'm already using matplotlib to graph the data, however the artificial negative numbers screw the graph greatly. I would like to locate all negative entries and remove the corresponding lines. At no point is a negative number actually representative of any real data.

In Bash I would do something like:

awk '{print $1}' original.csv | sed '/-/d' > new.csv

but that's messy and tends to be slow, and I don't really want to embed bash commands in my python graphing script if I can help it.

Can anyone point me in the right direction?


Here's the code I'm using to read/plot the data:

import matplotlib
from matplotlib.mlab import csv2rec                           
import matplotlib.pyplot as plt                               
import matplotlib.dates as mdates                              
from pylab import *                                         


data = csv2rec('counter.log', names=['packets', 'time'])   
rcParams['figure.figsize'] = 10, 5                              
rcParams['font.size'] = 8                                       

fig = plt.figure()                                              

plt.plot(data['packets'], data['time'])                      

ax = fig.add_subplot(111)                                       
ax.plot(data['time'], data['tweets'])                         
hours = mdates.HourLocator()                                    
fmt = mdates.DateFormatter('%D - %H:%M')                       


plt.title("Packet Log: Packets Per Minute")         

fig.autofmt_xdate(bottom=0.2, rotation=90, ha='left')         

share|improve this question
How is your python script reading the data? It could be as simple as skipping lines that begin with - in your loops, but you show no code. –  Wooble May 21 '12 at 15:54
That awk '{print $1}' is unnecessary, you could just use sed '/-/d' original.csv > new.csv –  Niklas B. May 21 '12 at 15:54
@wooble I've added the plotting code in response to your comment –  secumind May 21 '12 at 18:55

3 Answers 3

up vote 8 down vote accepted

The Python idiom would be to use a generator expression to filter the lines:

sys.stdout.writelines(line for line in sys.stdin if not line.startswith('-'))

Or in a processing context:

filtered = (line for line in sys.stdin if not line.startswith('-'))
for line in filtered:
    # ...
share|improve this answer
Isn't here another pair of round brackets () missing in the writelines argument in order to make the list comprehension create a generator? –  Jan-Philip Gehrcke May 21 '12 at 15:57
@Jan: No, it's not a list comprehension, it's a generator expression. The pair of parens is unnecessary if it is the only argument to a function. –  Niklas B. May 21 '12 at 15:58
@Niklas B. By itself it's probably not faster than sed, but since he'll already be iterating in Python, it would make sense to filter there as well. –  Steven Rumbalski May 21 '12 at 16:16
I'm using csv2rec in my plot script: data = csv2rec(counter.log, names=['packets', 'time']) am I to deduce that it would look something like: filtered = (line for line in 'tpm_counter.log' if not line.startswith('-')) for line in filtered: data = csv2rec(line, names=['packets', 'time']) –  secumind May 21 '12 at 17:40
@secumind: If you are talking about matplotlib, then no, csv2rec takes a filename or file-like object, not a string. You could use stringio for that as in from cStringIO import StringIO; f = StringIO(''.join(filtered)); data = csv2rec(f, ...) but that would require you to load the whole file into memory. The easiest solution would be to actually pre-process the file beforehand using sed or Python and write it to a new location (possibly on a RAM disk) –  Niklas B. May 21 '12 at 17:46

Instead of rewriting the files, I would filter the data on read, i.e. just before plotting.

share|improve this answer
This would be a good approach, especially because it allows you to hold on to potentially important information. No need to delete it from the file, just so you can plot it correctly. –  Joel Cornett May 21 '12 at 16:13
@Jan-Philip I've added my plotting code, and I agree that that would be the ideal way, I'm just not sure how when using csv2rec to do that. –  secumind May 21 '12 at 19:14

This program opens your csv file, removes the lines starting with negative integers, and saves it to a different file. If you want, you can overwrite this on the same file with slight modification.

with open('data.csv', 'r') as f:
    with open('data2.csv', 'w') as g:
        for row in f:
            if row[0] != '-':
share|improve this answer
This seems to be unnecessarily complex for the OP's purpose. Why are you splitting the rows up, only to join them together again at the end? –  Joel Cornett May 21 '12 at 16:00
-1 for not using csv module, for reading entire file into memory, and for modifying a list you are iterating over (which is an error). Also, the with statement has been out for some time and you do not use it. –  Steven Rumbalski May 21 '12 at 16:03
@JoelCornett, fixed. That was stupid. I was looking for negative integers, I could just look for a minus sign. –  Abhranil Das May 21 '12 at 16:05
@JoelCornett, thanks a lot. I didn't know you could iterate over a file, or anything about with and write. Picked up a lot of things from this question :-) –  Abhranil Das May 21 '12 at 16:17
You can also use with open('data.csv', 'r') as f, open('data2.csv', 'w') as g: to avoid the nesting –  Niklas B. May 21 '12 at 17:39

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