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I have a DataFrame of 83k rows and a column "Text" of text that i have to search for ~200 masks. Is there a way to pass a column to .str.contains()? I'm able to do it like this:

start = time.time()
[a["Text"].str.contains(m).sum() for m in \
b["mask"].values]
print time.time() - start

But it's taking 34.013s. Is there any faster way?

Edit: b["mask"] looks like:

'PR347856|P5478'

'BS7623|B5763'

and i want the count of occurances for each mask, so i can't join them.

Edit:

a["text"] contains strings of the size of ~ 3 sentences

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  • You could try something like a["Text"].str.contains("|".join(b["mask"].values)) where the "|" is the regex OR operator. – pault May 1 '18 at 15:02
  • A minimal reproducible example would be helpful here. You're using a list comp to get a list of ints (the sums) yet you're asking about passing a column to str.contains(). I'm not sure what your desired output is. – pault May 1 '18 at 15:04
  • "so i can't join them.", well, technically you can, as long as you escape those pipe characters (use re.escape or the like) and you can get it done. Although I'd recommend trying what I've outlined in my answer below, and then revisiting the regex if that is too slow for you. – cs95 May 1 '18 at 15:11
  • Note: There is a solution described by @unutbu which is more efficient than using pd.Series.str.contains. If performance is an issue, then this may be worth investigating. – jpp May 6 '18 at 22:09
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Maybe you can vectorize the containment operation.

text_contains = a['Text'].str.contains
b['mask'].map(lambda m: text_contains(m).sum())
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  • Thanks, this is what i want but it takes 32seconds – TobSta May 1 '18 at 15:46
  • There may not be a magic bullet solution to the problem you have. Large data sets take a long time to process. – BallpointBen May 1 '18 at 17:25
  • @TobSta See my edit to remove repeated computation of a['Text'].str.contains – BallpointBen May 7 '18 at 0:04

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