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My data looks like this:

TEST
2012-05-01 00:00:00.203 OFF 0
2012-05-01 00:00:11.203 OFF 0
2012-05-01 00:00:22.203 ON 1
2012-05-01 00:00:33.203 ON 1
2012-05-01 00:00:44.203 OFF 0
TEST
2012-05-02 00:00:00.203 OFF 0
2012-05-02 00:00:11.203 OFF 0
2012-05-02 00:00:22.203 OFF 0
2012-05-02 00:00:33.203 ON 1
2012-05-02 00:00:44.203 ON 1
2012-05-02 00:00:55.203 OFF 0

Ultimately, I want to be able to downsample data like this to individual days, using, mean, min, max -values, for example. I cannot get it to work for my data and get this error:

TypeError: unhashable type: 'list'

Perhaps it has something to do with the date format in the data frame since an index line looks like this:

[datetime.datetime(2012, 5, 1, 0, 0, 0, 203000)]   OFF  0

Can anyone help. My code so far is this:

import time
import dateutil.parser
from pandas import *
from pandas.core.datetools import *



t0 = time.clock()

filename = "testdata.dat"

index = []
data = []

with open(filename) as f:
    for line in f:
        if not line.startswith('TEST'):
            line_content =  line.split(' ')

            mydatetime =  dateutil.parser.parse(line_content[0] +  " " + line_content[1])

            del line_content[0] # delete the date
            del line_content[0] # delete the time so that only values remain

            index_row = [mydatetime]
            data_row = []
            for item in line_content:
                data_row.append(item)

            index.append(index_row)
            data.append(data_row)


df = DataFrame(data, index = index)
print df.head()
print df.tail()

print
date_from =  index[0] # first datetime entry in data frame
print date_from
date_to =  index[len(index)-1] #last datetime entry in date frame
print date_to

print date_to[0] - date_from[0]
dayly= DateRange(date_from[0], date_to[0], offset=datetools.DateOffset())
print dayly

grouped = df.groupby(dayly.asof)
#print grouped.mean()
#df2 = df.groupby(daily.asof).agg({'2':np_mean})


time2 = time.clock() - t0
print time2
share|improve this question
1  
Dear user1412286, please provide error output to get efficient help –  Alexis May 30 '12 at 13:16

2 Answers 2

up vote 0 down vote accepted

You'd better leave all the date-time interpolation to pandas and just feed it with a clean input stream. Then you can separate fields using read_fwf (for fixed-width formatted lines). For example:

import pandas
import StringIO

buf = StringIO.StringIO()
buf.write(''.join(line
    for line in open('f.txt')
    if not line.startswith('TEST')))
buf.seek(0)

df = pandas.read_fwf(buf, [(0, 24), (24, 27), (27, 30)],
        index_col=0, names=['switch', 'value'])
print df

Output:

                        switch  value
2012-05-01 00:00:00.203    OFF      0
2012-05-01 00:00:11.203    OFF      0
2012-05-01 00:00:22.203     ON      1
2012-05-01 00:00:33.203     ON      1
2012-05-01 00:00:44.203    OFF      0
2012-05-02 00:00:00.203    OFF      0
2012-05-02 00:00:11.203    OFF      0
2012-05-02 00:00:22.203    OFF      0
2012-05-02 00:00:33.203     ON      1
2012-05-02 00:00:44.203     ON      1
2012-05-02 00:00:55.203    OFF      0
share|improve this answer
    
The data does not necessarily always come with the same number of columns and I wanted to avoid, if possible, having to manually adjust the code every time a new file is read. –  user1412286 May 31 '12 at 5:47
    
You don't need to. Just use read_table or read_csv or read_fwf, depending on what format you expect. If the files you are receiving have no format, then I hardly see a way to automate the parsing! –  lbolla May 31 '12 at 7:31
    
They do have a format in that the timestamp is always there but the number of data columns can vary. So far I haven't been able to read the timestamp correctly with read_csv, probably because there is a space between date and time and thus no distinction to the other columns. Or let me more specific: I have been able to read the time stamp correctly by creating a list out of each line and then appending it to another list, but I haven't managed to get the timestamps as the index of the dataframe. –  user1412286 May 31 '12 at 8:18
    
Again, read_table can be used, for example: pandas.read_table(buf, sep=' ', index_col=[0,1], header=None) will create a table with multiple columns and a multiindex made of 2 levels: first level the year-month-day, second level the time. If you wish, you can then merge the multiindex in a normal index (for example: df.index = ['%s %s' % (a, b) for a, b in zip(df.index.get_level_values(0), df.index.get_level_values(1))].) –  lbolla May 31 '12 at 8:25
    
Thanks, works great! –  user1412286 May 31 '12 at 9:17

I do not have any experience with pandas but from what I can make out from your code,

df = DataFrame(data, index = index)

and the error, it seems that the index is not supposed to be a mutable object like python lists. Maybe this will work:

df = DataFrame(data, index = tuple(index))

Also it doesn't seem obvious that your index_row & data_row are lists themselves & you are appending them in index & data lists.

share|improve this answer
    
No, that does not work.Originally, all columns were in one list "data" which was then converted to a dataframe. Then, the date and time were displayed correctly. But for the downsampling to work they need to be in the index. –  user1412286 May 31 '12 at 5:47

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