1

There is a LOT of documentation of this yet I can not figure this out.

Here is a list I need to check if one of these values in my column values. if so, replace entire cell with list value.

active_crews = ["CREW #101", "CREW #102", "CREW #203", "CREW #301", "CREW #404", "CREW #501", "CREW #406", "CREW #304", "CREW #701", "CREW #702", "CREW #703", "CREW #704", "CREW #705", "CREW #706",
                "CREW #707" "CREW #708", "CREW #801", "CREW #802", "CREW #803", "CREW #805"]

Example of the data i want to replace. and yes formatting has slight differences as well:

Debris Crew WO# 
REFER TO IAP 12/16 TO 12/19 CREW #405
REFER TO IAP 06/02 TO 06/05 CREW #406
REFER TO IAP 03/24TO 03/27 CREW # 803

Expected out put

Debris Crew WO#
CREW #405
CREW #406
CREW #803

My issue is that I do not know how to tell python to search a column value with a the list to look for a match. and if that list value is in that column value. replace the current column value with the list value

Codes I have tried:

1)

df.loc[df['Debris Crew WO#'] == active_crews, 'Debris Crew WO#']
# doesn't work. This was done before research lol I get the following error, which makes sense
# ValueError: ('Lengths must match to compare', (2216,), (19,))
df.loc[:, ['Place Holder']] = df.loc[:, 'Debris Crew WO#'].str[28:]
# this code "works" but due to different formatting i get data back like this:
8   REW #406
9   CREW #406
# not very effective and can not be relied on. I hate hard coding anything.
df.loc[:, ['Place Holder']] = df.loc[:, 'Debris Crew WO#'].str[26:]
df.loc[:, ['Place Holder']] = df[['Place Holder']].str.split().join(" ")
# tried this due to I have this filter for specials characters with a for loop in a different code and yet I get this error and I have no clue why. Works on my other codes with no problems

#AttributeError: 'DataFrame' object has no attribute 'str'

# even if I use .loc I get the same error:
df.loc[:, ['Place Holder']] = df.loc[:, 'Debris Crew WO#'].str[26:]
df.loc[:, ['Place Holder']] = df.loc[:, ['Place Holder']].str.split().join(" ")
#plus its still hard coding (gross)

Next I'm going to work with RE. I have been told it is great for a "CTRL find" style like type of filtering and is a key tool in data science. So going down that rabbit hole for the next week+ starting with the RE Documentation and practice it on this problem. Will edit with updates as I progress

That said. I have been learning python for almost a full two month now. Please forgive any "noob" styles/coding just trying and experimenting so I can make my life, and others around me a whole lot better. Any help would be apricated. Thanks in advance

2
  • 1
    Crew #405 is not in your list. and Crew #803 is formatted differently like # 803 instead of #803? Are these typos? Jun 18 at 22:50
  • Yes I only gave a short snippet but everything in that list are actually in the bigger data frame. there is about 2,500 rows with info like this, and that list are the crews I need to audit as of now. If needed I'll add/takeaway from that list as need
    – JQTs
    Jun 18 at 22:54
1

Method #1 referring to a list:

You can use str.extract() with the capture group being a joined list with join('|'). The | symbol is for OR and allows you to search multiple values simultaneously for each row. Capture groups require parentheses around them which is why I add parentheses as strings before and after.

active_crews = ["CREW #101", "CREW #102", "CREW #203", "CREW #301", "CREW #404", "CREW #501", 
                "CREW #406", "CREW #304", "CREW #701", "CREW #702", "CREW #703", "CREW #704", 
                "CREW #705", "CREW #706", "CREW #707" "CREW #708", "CREW #801", "CREW #802", 
                "CREW #803", "CREW #805"]

df['Debris Crew WO#'] = df['Debris Crew WO#'].str.extract('(' + '|'.join(active_crews) + ')')
df

#You  can also use a formatted string like this:
df['Debris Crew WO#'] = df['Debris Crew WO#'].str.extract(f'({"|".join(active_crews)})')

Out[1]: 
  Debris Crew WO#
0             NaN
1       CREW #406
2             NaN

Method #2 Extracting based off a regex pattern and ignoring the list. A ? after a space means that the space is optional. Instead of a space you can also do \s or \s+ for multiple spaces. \d+ means consecutive numbers. If there are commas in the numbers, the regex is slightly different:

df['Debris Crew WO#'] = df['Debris Crew WO#'].str.extract('(CREW ?# ?\d+)')

Out[2]: 
  Debris Crew WO#
0            #405
1            #406
2           # 803
4
  • WOW that was fast and it worked. It left out crew but who cares really. Its not for presentation but instead for my to groupby() that crew number. I always feel like I over think these things at the moment. Thank you for helping me out. and I will go loo at the extract documentation right now.
    – JQTs
    Jun 18 at 23:00
  • 1
    @JQTS it left out a crew because of the space. Also see my other option so that you don't have to manually update a list if your goal is just to get all of the Crews. Jun 18 at 23:01
  • 1
    YES! RE just looks so much more "clean" to me. I do not understand it at all yet, haven't started reading the documentation yet but wow again. Now I have an example to practice with at home after work. You're the bomb . com!
    – JQTs
    Jun 18 at 23:04
  • 1
    str.extract, str.replace, str.findall, are some popular vectorized methods where you can use regex. Some of them you might need to add a flag for regex=True. Jun 18 at 23:05

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.