I'm wondering if there's a more general way to do the below? I'm wondering if there's a way to create the st function so that I can search a non-predefined number of strings?

So for instance, being able to create a generalized st function, and then type st('Governor', 'Virginia', 'Google)

here's my current function, but it predefines two words you can use. (df is a pandas DataFrame)

def search(word1, word2, word3 df):
    allows you to search an intersection of three terms
    return df[df.Name.str.contains(word1) & df.Name.str.contains(word2) & df.Name.str.contains(word3)]

st('Governor', 'Virginia', newauthdf)

str.contains can take regex. so you can use '|'.join(words) as the pattern; to be safe map to re.escape as well:

>>> df
0                Test
1            Virginia
2              Google
3  Google in Virginia
4               Apple

[5 rows x 1 columns]
>>> words = ['Governor', 'Virginia', 'Google']

'|'.join(map(re.escape, words)) would be the search pattern:

>>> import re
>>> pat = '|'.join(map(re.escape, words))
>>> df.Name.str.contains(pat)
0    False
1     True
2     True
3     True
4    False
Name: Name, dtype: bool
  • This is helpful! I like both answers, but i chose the one below because it allows you to input an arbitrarily long list of answers with *words, which i didn't know about. I also didn't know regex worked in str.contains, so that's very useful. Mar 25 '14 at 13:46
  • Is it possible to run contains on multiple fields without using the and operator? pseudo:'df['Name', 'AnotherField'].str.contains(pattern)
    – radtek
    Apr 23 '17 at 6:35

You could use np.logical_and.reduce:

import pandas as pd
import numpy as np
def search(df, *words):  #1
    Return a sub-DataFrame of those rows whose Name column match all the words.
    return df[np.logical_and.reduce([df['Name'].str.contains(word) for word in words])]   # 2

df = pd.DataFrame({'Name':['Virginia Google Governor',
                           'Governor Virginia',
                           'Governor Virginia Google']})
print(search(df, 'Governor', 'Virginia', 'Google'))


0  Virginia Google Governor
2  Governor Virginia Google

  1. The * in def search(df, *words) allows search to accept an unlimited number of positional arguments. It will collect all the arguments (after the first) and place them in a list called words.
  2. np.logical_and.reduce([X,Y,Z]) is equivalent to X & Y & Z. It allows you to handle an arbitrarily long list, however.
  • 1
    sorry is there an equivalent for 'OR'? if I also wanted to mix in or and and searches, how would i do that? Mar 25 '14 at 14:03
  • There are two ways to handle OR. You could combine the the regex patterns with |, as behzad.nouri shows, or you could use np.logical_or.reduce. It might be easiest, however, to allow the user to enter regex (which might contain |), and just use search to combine the regex with np.logical_and.reduce.
    – unutbu
    Mar 25 '14 at 14:07

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