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As part of trying to learn pandas I'm trying to reshape a spreadsheet. After removing non zero values I need to get some data from a single column.

For the sample columns below, I want to find the most effective way of finding the row and column index of the cell that contains the value date and get the value next to it. (e.g. here it would be 38477.

In practice this would be a much bigger DataFrame and the date row could change and it may not always be in the first column.

What is the best way to find out where date is in the array and return the value in the adjacent cell?


<bound method DataFrame.head of             0         1         2         4         5         7         8         10  \
1   some title                                                                         
2         date     38477                                                               
5                   cat1                cat2                cat3                cat4   
6                      a         b         c         d         e         f         g   
8            Z  167.9404  151.1389   346.197  434.3589  336.7873  80.52901  269.1486   
9            X   220.683   56.0029  73.73679  428.8939  483.7445  251.1877  243.7918   
10           C  433.0189  390.1931  251.6636  418.6703  12.21859   113.093    136.28   
12           V  226.0135  418.1141  310.2038  153.9018  425.7491  73.08073  277.5065   
13           W   295.146  173.2747  2.187459  401.6453  51.47293   175.387  397.2021   
14           S  306.9325  157.2772  464.1394   216.248  478.3903   173.948  328.9304   
15           A  19.86611  73.11554   320.078  199.7598  467.8272  234.0331  141.5544   
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can you give some more context? Why would you load this into a dataframe first, instead of parsing it as text, etc? –  Jeff Tratner May 26 '13 at 2:53
Hi @JeffTratner thanks for the response. I'm a complete n00b at python so I don't know why I would except that its what I would do in R. Would be pleased to hear that there is a better way. I use something like [i for i in p if any(j == 'date' for j in p[i])] and [i for i in p.index if any(j == 'date' for j in p.ix(i)] at the moment but it feels unwieldy. This is actually a series of daily update spreadsheets that come in from various sources that The date and sometitle information need to be converted to additional fields in that database. –  Tahnoon Pasha May 26 '13 at 3:01
For example, do you need the rest of the spreadsheet, or are you just looking to pull out the date from this? –  Jeff Tratner May 26 '13 at 3:02
hi @JeffTratner, yes I do need the rest of the spreadsheet. –  Tahnoon Pasha May 26 '13 at 3:04

1 Answer 1

up vote 2 down vote accepted

This really just reformats a lot of the iteration you are doing to make it clearer and take advantage of pandas ability to easily select, etc.

First, we need a dummy dataframe (with date in the last row and explicitly ordered the way you have in your setup)

import pandas as pd
df = pd.DataFrame({"A": [1,2,3,4,np.NaN], 
                   "B":[5, 3, np.NaN, 3, "date"],
                   "C":[np.NaN,2, 1,3, 634]})[["A","B","C"]]

A clear way to do it is to find the row and then enumerate over the row to find date:

row = df[df.apply(lambda x: (x == "date").any(), axis=1)].values[0] # will be an array
for i, val in enumerate(row):
    if val == "date":
        print row[i + 1]

If your spreadsheet only has a few non-numeric columns, you could go by column, check for date and get a row and column index (this may be faster because it searches by column rather than by row, though I'm not sure)

# gives you column labels, which are `True` if at least one entry has `date` in it
# have to check `kind` otherwise you get an error.
col_result = df.apply(lambda x: x.dtype.kind == "O" and (x == "date").any())

# select only columns where True (this should be one entry) and get their index (for the label)
column = col_result[col_result].index[0]
col_index = df.columns.get_loc(column)

# will be True if it contains date
row_selector = df.icol(col_index) == "date"

print df[row_selector].icol(col_index + 1).values
share|improve this answer
thanks @JeffTratner. I'll give this one a go.. although it sounds like your applymap solution could work too. –  Tahnoon Pasha May 26 '13 at 8:06

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