2

i have a data frame with XY's and distances. what i am trying to do is store the distance as a variable and subtract it from the next distance if X or Y has a value greater than 0

here is a sample df

dist     x      y
  0    12.93   99.23
200     0        0
400     0        0
600     0        0
800     0        0
1000    12.46   99.14
1200     0        0
1400     0        0
1600     0        0
1800     0        0
2000    12.01   99.07

and this is new df

dist     x      y
  0    12.93   99.23
200     0        0
400     0        0
600     0        0
800     0        0
  0    12.46   99.14
 200     0        0
 400     0        0
 600     0        0
 800     0        0
2000    12.01   99.07 

the last value doesn't matter, but technically, it would be 0.

the idea is that at every know XY, assign the distance as 0 and subtract that distance until the next known XY in the above example, the distances are rounded numbers, but in reality, they could be like

132.05
19.999
1539.65

and so on

3

Check with transform

df.dist-=df.groupby(df.x.ne(0).cumsum())['dist'].transform('first')
df
Out[769]: 
    dist      x      y
0      0  12.93  99.23
1    200   0.00   0.00
2    400   0.00   0.00
3    600   0.00   0.00
4    800   0.00   0.00
5      0  12.46  99.14
6    200   0.00   0.00
7    400   0.00   0.00
8    600   0.00   0.00
9    800   0.00   0.00
10     0  12.01  99.07
3

You can use groupby and apply, using a custom grouper calculated as follows:

grouper = (df['x'].ne(0) | df['y'].ne(0)).cumsum()
df['dist'].groupby(grouper).apply(lambda x: x - x.values[0])

0       0
1     200
2     400
3     600
4     800
5       0
6     200
7     400
8     600
9     800
10      0
Name: dist, dtype: int64

Where,

grouper

0     1
1     1
2     1
3     1
4     1
5     2
6     2
7     2
8     2
9     2
10    3
dtype: int64

The idea is to mark all rows that must be subtracted from the first non-zero value of that corresponding group.

3

With where + ffill

df['dist'] = df.dist - df.where(df.x.gt(0) | df.y.gt(0)).dist.ffill()

     dist      x      y
0     0.0  12.93  99.23
1   200.0   0.00   0.00
2   400.0   0.00   0.00
3   600.0   0.00   0.00
4   800.0   0.00   0.00
5     0.0  12.46  99.14
6   200.0   0.00   0.00
7   400.0   0.00   0.00
8   600.0   0.00   0.00
9   800.0   0.00   0.00
10    0.0  12.01  99.07

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