9

Say I have the following DataFrame which has a 0/1 entry depending on whether something happened/didn't happen within a certain month.

Y = [0,0,1,1,0,0,0,0,1,1,1]
X = pd.date_range(start = "2010", freq = "MS", periods = len(Y))

df = pd.DataFrame({'R': Y},index = X)



            R
2010-01-01  0
2010-02-01  0
2010-03-01  1
2010-04-01  1
2010-05-01  0
2010-06-01  0
2010-07-01  0
2010-08-01  0
2010-09-01  1
2010-10-01  1
2010-11-01  1

What I want is to create a 2nd column that lists the # of months until the next occurrence of a 1.

That is, I need:

            R  F
2010-01-01  0  2
2010-02-01  0  1
2010-03-01  1  0
2010-04-01  1  0
2010-05-01  0  4
2010-06-01  0  3
2010-07-01  0  2
2010-08-01  0  1
2010-09-01  1  0
2010-10-01  1  0
2010-11-01  1  0

What I've tried: I haven't gotten far, but I'm able to fill the first bit

A = list(df.index)
T = df[df['R']==1]

a = df.index[0]
b = T.index[0]
c = A.index(b) - A.index(a)

df.loc[a:b, 'F'] = np.linspace(c,0,c+1)

            R    F
2010-01-01  0  2.0
2010-02-01  0  1.0
2010-03-01  1  0.0
2010-04-01  1  NaN
2010-05-01  0  NaN
2010-06-01  0  NaN
2010-07-01  0  NaN
2010-08-01  0  NaN
2010-09-01  1  NaN
2010-10-01  1  NaN
2010-11-01  1  NaN

EDIT Probably would have been better to provide an original example that spanned multiple years.

Y = [0,0,1,1,0,0,0,0,1,1,1,0,0,1,1,1,0,1,1,1]
X = pd.date_range(start = "2010", freq = "MS", periods = len(Y))

df = pd.DataFrame({'R': Y},index = X)
6

Here is my way

s=df.R.cumsum()
df.loc[df.R==0,'F']=s.groupby(s).cumcount(ascending=False)+1
df.F.fillna(0,inplace=True)

df
Out[12]: 
            R    F
2010-01-01  0  2.0
2010-02-01  0  1.0
2010-03-01  1  0.0
2010-04-01  1  0.0
2010-05-01  0  4.0
2010-06-01  0  3.0
2010-07-01  0  2.0
2010-08-01  0  1.0
2010-09-01  1  0.0
2010-10-01  1  0.0
2010-11-01  1  0.0
4

Create a series containing your dates, mask this series when your R series is not equal to 1, bfill, and subtract!


u = df.index.to_series()

ii = u.where(df.R.eq(1)).bfill()

12 * (ii.dt.year - u.dt.year) + (ii.dt.month - u.dt.month)

2010-01-01    2
2010-02-01    1
2010-03-01    0
2010-04-01    0
2010-05-01    4
2010-06-01    3
2010-07-01    2
2010-08-01    1
2010-09-01    0
2010-10-01    0
2010-11-01    0
Freq: MS, dtype: int64
  • @measure_theory fixed! – user3483203 Aug 9 at 14:22
2

Here is a way that worked for me, not as elegant as @user3483203 but it does the job.

df['F'] = 0 
for i in df.index: 
     j = i 
     while df.loc[j, 'R'] == 0: 
         df.loc[i, 'F'] =df.loc[i, 'F'] + 1 
         j=j+1                                                                                                                      
df  
################
Out[39]: 
        index  R  F
0  2010-01-01  0  2
1  2010-02-01  0  1
2  2010-03-01  1  0
3  2010-04-01  1  0
4  2010-05-01  0  4
5  2010-06-01  0  3
6  2010-07-01  0  2
7  2010-08-01  0  1
8  2010-09-01  1  0
9  2010-10-01  1  0
10 2010-11-01  1  0

In [40]:   
  • This actually works if the DataFrame spans multiple years – measure_theory Aug 9 at 14:19
1

My take

s = (df.R.diff().ne(0) | df.R.eq(1)).cumsum()
s.groupby(s).transform(lambda s: np.arange(len(s),0,-1) if len(s)>1 else 0)

2010-01-01    2
2010-02-01    1
2010-03-01    0
2010-04-01    0
2010-05-01    4
2010-06-01    3
2010-07-01    2
2010-08-01    1
2010-09-01    0
2010-10-01    0
2010-11-01    0
Freq: MS, Name: R, dtype: int64

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.