2

I have a following data frame:

       id        subid        a
    1  1         1            2 
    2  1         1            10 
    3  1         1            20
    4  1         2            30
    5  1         2            35 
    6  1         2            36 
    7  1         2            40
    8  2         2            20
    9  2         2            29
    10 2         2            30

I want to apply say for example pandas diff() function on column "a", but the function should be reapplied whenever either "id" or "subid" is being changed, and want to store the values in a new column.

Below is the df I expect.

        id        subid        a      difference
    1  1         1            2       NaN
    2  1         1            10      8
    3  1         1            20      10
    4  1         2            30      NaN
    5  1         2            35      5
    6  1         2            36      1
    7  1         2            40      4
    8  2         2            20      NaN
    9  2         2            29      9
    10 2         2            30      1

As it can be observed at Row-4, and Row-8 either "id" or "subid" is changing, so NaN values are present and diff is calculated in successive rows.

Have used

    df["difference"] = df["a"].diff()

which is obviously applied to the whole column, and not the way expected. I have tried using groupby, but it's somehow giving extra rows.

Thanks for any suggestions in advance.

3 Answers 3

2

This is a tricky one. According to your exact wording, you want to reset at every point in which either 'id' or 'subid' change. That means even if they change back and forth.

Also, the diff calculation doesn't make a difference if done within a groupby context, so I'll calculate it up front and mask when things change.

i = df.id.values
s = df.subid.values
i_chg = np.append(False, i[:-1] != i[1:])
s_chg = np.append(False, s[:-1] != s[1:])

df.assign(difference=df.a.diff().mask(i_chg | s_chg))

    id  subid   a  difference
1    1      1   2         NaN
2    1      1  10         8.0
3    1      1  20        10.0
4    1      2  30         NaN
5    1      2  35         5.0
6    1      2  36         1.0
7    1      2  40         4.0
8    2      1  20         NaN
9    2      1  29         9.0
10   2      1  30         1.0
3
  • Yeo Sure, will do that.
    – Liza
    May 6, 2017 at 0:39
  • Can you please just have a look at this [link] (stackoverflow.com/questions/14631776/…) I am trying to implement the verified answer on a df. What has been illustrated is on a single trajectory where coordinates are in np array, I have a df with thousands of trajectories, each with no of (x,y) coord, and they can be uniquely identified by “id” and “subid” combo (as above). Can you please suggest me a way for applying "directions" and "angle" functions on the df. Or you want me to create a question for this ?
    – Liza
    May 6, 2017 at 2:12
  • Please can you have a look to the problem here
    – Liza
    May 7, 2017 at 2:17
2

try this:

In [97]: df['difference'] = df.groupby(['id','subid'])['a'].diff()

In [98]: df
Out[98]:
    id  subid   a  difference
1    1      1   2         NaN
2    1      1  10         8.0
3    1      1  20        10.0
4    1      2  30         NaN
5    1      2  35         5.0
6    1      2  36         1.0
7    1      2  40         4.0
8    2      1  20         NaN
9    2      1  29         9.0
10   2      1  30         1.0
1
  • This probably won't work if you have a 11th row such as '11 1 1 2'
    – Allen Qin
    May 4, 2017 at 23:37
2

Setup

df = pd.DataFrame({'a': {1: 2, 2: 10, 3: 20, 4: 30, 5: 35, 6: 36, 7: 40, 8: 20, 9: 29, 10: 30},
 'id': {1: 1, 2: 1, 3: 1, 4: 1, 5: 1, 6: 1, 7: 1, 8: 2, 9: 2, 10: 2},
 'subid': {1: 1, 2: 1, 3: 1, 4: 2, 5: 2, 6: 2, 7: 2, 8: 1, 9: 1, 10: 1}})

Solution

#Check for each row if the id-subid pair has changed with previous row and then calculate diff accordingly    
df['difference'] = df.apply(lambda x: x.a - df.ix[x.name-1].a 
  if (x.name>1 and x[['id','subid']].equals(df.ix[x.name-1][['id','subid']])) 
  else np.nan, axis=1)

df
Out[368]: 
     a  id  subid  difference
1    2   1      1         NaN
2   10   1      1         8.0
3   20   1      1        10.0
4   30   1      2         NaN
5   35   1      2         5.0
6   36   1      2         1.0
7   40   1      2         4.0
8   20   2      1         NaN
9   29   2      1         9.0
10  30   2      1         1.0

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