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I have a DataFrame with 4 columns of which 2 contain string values. I was wondering if there was a way to select rows based on a partial string match against a particular column?

In other words, a function or lambda function that would do something like

re.search(pattern, cell_in_question) 

returning a boolean. I am familiar with the syntax of df[df['A'] == "hello world"] but can't seem to find a way to do the same with a partial string match say 'hello'.

Would someone be able to point me in the right direction?

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5 Answers 5

Based on github issue #620, it looks like you'll soon be able to do the following:


Update: vectorized string methods (i.e., Series.str) are available in pandas 0.8.1 and up.

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This is implemented now –  Wes McKinney Aug 8 '12 at 1:57
How do we go about "Hello" and "Britain" if I want to find them with "OR" condition. –  LonelySoul Jun 27 '13 at 16:41
Since str.* methods treat the input pattern as a regular expression, you can use df[df['A'].str.contains("Hello|Britain")] –  Garrett Jun 27 '13 at 19:20

I am using pandas 0.14.1 on macos in ipython notebook. I tried the proposed line above:


and got an error:

"cannot index with vector containing NA / NaN values"

but it worked perfectly when an "==True" condition was added, like this:

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Or you can do: df[df['A'].str.contains("Hello|Britain", na=False)] –  Josh yesterday

Quick note: if you want to do selection based on a partial string contained in the index, try the following:

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You can just df[df.index.to_series().str.contains('LLChit')] –  megabyde May 8 at 21:27

Here's what I ended up doing for partial string matches. If anyone has a more efficient way of doing this please let me know.

def stringSearchColumn_DataFrame(df, colName, regex):
    newdf = DataFrame()
    for idx, record in df[colName].iteritems():

        if re.search(regex, record):
            newdf = concat([df[df[colName] == record], newdf], ignore_index=True)

    return newdf
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Should be 2x to 3x faster if you compile regex before loop: regex = re.compile(regex) and then if regex.search(record) –  PHPGAE Apr 10 '14 at 13:56

Say you have the following DataFrame:

>>> df = pd.DataFrame([['hello', 'hello world'], ['abcd', 'defg']], columns=['a','b'])
>>> df
       a            b
0  hello  hello world
1   abcd         defg

You can always use the in operator in a lambda expression to create your filter.

>>> df.apply(lambda x: x['a'] in x['b'], axis=1)
0     True
1    False
dtype: bool

The trick here is to use the axis=1 option in the apply to pass elements to the lambda function row by row, as opposed to column by column.

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