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I have a function that looks through tweets and extracts only popular hashtags and handles. The problem is that I have a large data set and this takes 10 or more minute to finish. I'm looking for a way to "vectorize" this function to make it run faster.

I already have a list of popular hashtags

def get_popular_hashes(myString):
   myList = myString.split(' ')
   newStr = ''
   for x in myList:
      if x in popular_tags_list:
         newStr+=' '+x
   return newStr  

tweets2["popularHandles"] = tweets2.HashesAndHandles.apply(get_popular_hashes)

If I can discover a way to do this without the .apply(), that's even better.

For example:

["I'm hungry. let's eat! #curlyfries @jackinthebox",
 "I got a 4.0 last semester! #scholarship #hardwork #stackoverflow"]

might turn into:

["@jackinthebox",
"#stackoverflow"
]

Thanks so much you guys!

  • If popular_tags_list is a list of significant length, replacing it with a set would work. – Ken Y-N Mar 4 at 4:42
  • Also, you could optimize construction of newStr a bit: newStr = ' '.join(filter(popular_tags_set.__contains__, myList)) or newStr = ' '.join(x for x in myList if x in popular_tags_set) – Paul Panzer Mar 4 at 4:51
  • get_popular_hashtags has a length of 14 thousand. – HippoMano Mar 4 at 6:11
  • That actually worked really well you two! – HippoMano Mar 4 at 7:37
  • What is the purpose of '.__contains__' here? – HippoMano Mar 4 at 22:17
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This is a solution based on the your comments. Its working great and MUCH MUCH faster! So exciting! 10-15 mins down to like 3 seconds - (not even joking).

def trim_unpopular_hashes_vectorized(myStr):
   myList = myStr.split(' ')
   newStr = ' '.join(filter(popular_tags_set.__contains__, myList))
   return newStr     



popular_tags_set=set(popular_tags_list)

tweets2["popularHandles"] = tweets2.HashesAndHandles.apply(trim_unpopular_hashes_vectorized)

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