I have been using Pandas for more than 3 months and I have an fair idea about the dataframes accessing and querying etc.

I have got an requirement wherein I wanted to query the dataframe using LIKE keyword (LIKE similar to SQL) in pandas.query().

i.e: Am trying to execute pandas.query("column_name LIKE 'abc%'") command but its failing.

I know an alternative approach which is to use str.contains("abc%") but this doesn't meet our requirement.

We wanted to execute LIKE inside pandas.query(). How can I do so?

  • 1
    It's been a while since this question was posted: has a solution to this been found or is this still only obtainable through str.contains()? – user1717828 Dec 4 '17 at 18:26

Super late to this post, but for anyone that comes across it. You can use boolean indexing by making your search criteria based on a string method check str.contains.

Example:

dataframe[dataframe.summary.str.contains('Windows Failed Login', case=False)]

In the code above, the snippet inside the brackets refers to the summary column of the dataframe and uses the .str.contains method to search for 'Windows Failed Login' within every value of that Series. Case sensitive can be set to true or false. This will return boolean index which is then used to return the dataframe your looking for. You can use .fillna() with this in the brackets as well if you run into any Nan errors.

Hope this helps!

  • This is a great answer !! – sushmit May 25 '17 at 15:44
  • I didn't have a summary column, so for a random column name one can use new_df = df[df['Column'].str.contains('something')] – arie64 Jun 15 '17 at 17:53

If you have to use df.query(), the correct syntax is:

pandas.query('column_name.str.contains("abc")')

You can easily combine this with other conditions:

pandas.query('column_a.str.contains("abc") or column_b.str.contains("xyz") and column_c>100')

It is not a full equivalent of SQL Like, however, but can be useful nevertheless.

Not using query(), but this will give you what you're looking for:

df[df.col_name.str.startswith('abc')]


df
Out[93]: 
  col_name
0     this
1     that
2     abcd

df[df.col_name.str.startswith('abc')]
Out[94]: 
  col_name
2     abcd

Query uses the pandas eval() and is limited in what you can use within it. If you want to use pure SQL you could consider pandasql where the following statement would work for you:

sqldf("select col_name from df where col_name like 'abc%';", locals())

Or alternately if your problem with the pandas str methods was that your column wasn't entirely of string type you could do the following:

df[df.col_name.str.startswith('abc').fillna(False)]
  • I have tried SQLDF, this is solving my problem however i am seeing huge performance issue with it. I added 95lakhs of records with regular df.query() i could get the result in 1min. but if i use SQLDF its taking minimum 10mins. – Pradeep M Jul 22 '15 at 18:12
  • SQLDF creates and tears down an sqlite database hence the performance hit. Is there a reason you can't use startswith()? – khammel Jul 23 '15 at 0:09

@volodymyr is right, but the thing he forgets is that you need to set engine='python' to expression to work.

Example: >>> pd_df.query('column_name.str.contains("abc")', engine='python')

Here is more information on default engine ('numexpr') and 'python' engine. Also, have in mind that 'python' is slower on big data.

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