1

This question already has an answer here:

I have the following DataFrame (this is a condensed version - it goes back a long time)

Week Commencing     A1    A2    A3      A4
2016-01-03          28    1375  1999    1345
2016-01-10          48    1552  2428    1337
2016-01-17          43    1895  2615    1420
2016-01-24          29    1950  2568    1385
2016-01-31          41    1912  2577    1277
2016-02-07          29    2176  2771    1403
2016-02-14          50    2229  3013    1450
2016-02-21          60    2271  3029    1489
2016-02-28          43    2140  3133    1594
2016-03-06          51    2080  3140    1498

I want to create a new column that specifies a label based on a specific period in time. IE: if row is before a certain date, return a word.

I have tried the following:

def action(x):
    if x == "True":
        return "Before Migration"
    if x == "False":
        return "After Migration"

df.index.apply(action, axis=1)

I get the following error: "AttributeError: 'DatetimeIndex' object has no attribute 'apply'".

I have changed this to a string, tried resetting the index so I can apply to a column rather than index and it doesn't work.

I have also tried this:

if df.index < '2016-02-14':
    df["Migration_Type"] = "Before Migration"
else:
    df["Migration_Type"] = "After Migration"

Error: ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()

Any suggestions on better ways are also appreciated.

marked as duplicate by C8H10N4O2, Community Feb 22 '18 at 2:37

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • I used this and it worked - thanks for this. Sometimes hard knowing what to search for. Happy for you to remove if need be. Apologies for this – AdrianC Feb 22 '18 at 2:34
2

Try something like this:

# First, initialize a new column, set it to before migration by default
df = df.assign(Migration_Type = "Before Migration")
# Then, assign "after migration" to all rows after your chosen date
df.loc[df.index >= '2016-02-14', 'Migration_Type'] = "After Migration"
  • This worked really well. Nice and simple too. More for my own learning, but was there anything wrong with my approach? Can you get a similar result? – AdrianC Feb 22 '18 at 2:34
  • It's actually very similar to what you were trying to do with your second attempt (the loop), but in a more pandas-like (vectorized) fashion. As far as your apply method, you were calling .apply as a method on the index of your dataframe, which doesn't have such a method. .apply is good for applying a simple function to a dataframe or series, where the arguments can be implied easily. Your function was just returning "Before Migration" if x is True, but there wasn't even any indication of what x was, nor where the "Before Migration" was meant to be returned to. – sacuL Feb 22 '18 at 2:40
  • Thank you very much for taking the time to help me. If it isn't too much trouble, can you show me how you would do this with a for loop (but the right way) - you've already helped me enough so don't feel obliged. – AdrianC Feb 22 '18 at 2:42
  • This would work (if you can imply the indentation), but is not recommended... would be slow and clunky. df['Migration_Type'] = "" for i, row in df.iterrows(): if i >= '2016-02-14': row['Migration_Type'] = "After Migration" else: row['Migration_Type'] = "Before Migration" – sacuL Feb 22 '18 at 2:46
2
df.assign(
    Migration_Type=np.where(
        df.index < '2016-02-14',
       'Before Migration',
       'After Migration'
    )
)


                 A1    A2    A3    A4    Migration_Type
Week Commencing                                        
2016-01-03       28  1375  1999  1345  Before Migration
2016-01-10       48  1552  2428  1337  Before Migration
2016-01-17       43  1895  2615  1420  Before Migration
2016-01-24       29  1950  2568  1385  Before Migration
2016-01-31       41  1912  2577  1277  Before Migration
2016-02-07       29  2176  2771  1403  Before Migration
2016-02-14       50  2229  3013  1450   After Migration
2016-02-21       60  2271  3029  1489   After Migration
2016-02-28       43  2140  3133  1594   After Migration
2016-03-06       51  2080  3140  1498   After Migration
  • This is also a great way of doing - this worked as well. Thank you – AdrianC Feb 22 '18 at 2:43
  • You are welcome – piRSquared Feb 22 '18 at 2:44

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