-1

I would like to find a pandas solution for the following problem (the dataframe is very long in reality, therefore performance really is an important topic):

I have an input dataframe df and need to build a new dataframe dfNew, where I need to derive the output in column 'rs' from the values of the other columns.

And the needed logics is the following:

  • t is always increasing steadily from 0 to its maximum value. Afterwards its starts again with 0.
  • whenever we are in the range from t = 0 and the next upcoming pt = 'X' (including), the value of column td should be taken for the result column rs, else the value of column md should be taken for column rs.

How would a pandas based solution to derive rs from the other columns look like?

td = ['td0','td1','td2','td3','td4','td5','td6','td7','td8','td9','td10','td11','td12']
md = ['md0','md1','md2','md3','md4','md5','md6','md7','md8','md9','md10','md11','md12']
t =  [   0 ,   1 ,   2 ,   3 ,   0 ,   1 ,   2 ,   3 ,   4 ,   5 ,    0 ,    1 ,    2 ]
pt = [  'n',  'n',  'X',  'n',  'n',  'n',  'n',  'X',  'n',  'n',   'n',   'X',   'n']
df = pd.DataFrame({'td': td, 'md': md, 't': t, 'pt': pt}, columns=['td', 'md', 't', 'pt'])
df
      td    md  t pt
0    td0   md0  0  n
1    td1   md1  1  n
2    td2   md2  2  X
3    td3   md3  3  n
4    td4   md4  0  n
5    td5   md5  1  n
6    td6   md6  2  n
7    td7   md7  3  X
8    td8   md8  4  n
9    td9   md9  5  n
10  td10  md10  0  n
11  td11  md11  1  X
12  td12  md12  2  n  
dfNew
      td    md  t pt    rs
0    td0   md0  0  n   td0
1    td1   md1  1  n   td1
2    td2   md2  2  X   td2
3    td3   md3  3  n   md3
4    td4   md4  0  n   td4
5    td5   md5  1  n   td5
6    td6   md6  2  n   td6
7    td7   md7  3  X   td7
8    td8   md8  4  n   md8
9    td9   md9  5  n   md9
10  td10  md10  0  n  td10
11  td11  md11  1  X  td11
12  td12  md12  2  n  md12
1

Here's my take with groupby and cumsum

# df.t.eq(0).cumsum() marks the range of t
# similarly x.shift().eq('X').cumsum() marks the X range
pt_range = (df.groupby(df.t.eq(0).cumsum())
                  .pt.apply(lambda x: x.shift().eq('X').cumsum()))

df['rs'] = np.where(pt_range, df.md, df.td)

Output:

+-----+-------+-------+----+-----+------+
|     | td    | md    | t  | pt  | rs   |
+-----+-------+-------+----+-----+------+
|  0  | td0   | md0   | 0  | n   | td0  |
|  1  | td1   | md1   | 1  | n   | td1  |
|  2  | td2   | md2   | 2  | X   | td2  |
|  3  | td3   | md3   | 3  | n   | md3  |
|  4  | td4   | md4   | 0  | n   | td4  |
|  5  | td5   | md5   | 1  | n   | td5  |
|  6  | td6   | md6   | 2  | n   | td6  |
|  7  | td7   | md7   | 3  | X   | td7  |
|  8  | td8   | md8   | 4  | n   | md8  |
|  9  | td9   | md9   | 5  | n   | md9  |
| 10  | td10  | md10  | 0  | n   | td10 |
| 11  | td11  | md11  | 1  | X   | td11 |
| 12  | td12  | md12  | 2  | n   | md12 |
+-----+-------+-------+----+-----+------+
  • This looks like a genious work to me. Honestly :-) But unfortunately, I am not yet able to understand, how the groupby and apply(lambda... work together. Do you see any possibility to explain this a little bit? – user7468395 May 3 '19 at 19:20
  • 1
    groupby gathers all the record sharing the same property together. here df.groupby(some_series) will group the records with same values of the series. Then df.groupby(some_series).pt only looks at the pt column of each group, which is the series x in apply. – Quang Hoang May 3 '19 at 19:24
  • Thanks, that was already helpful, yes. I think my major difficulty is still understanding how df.groupby(some_series).pt combined with the apply leads to the proper pt_range as a result. – user7468395 May 3 '19 at 19:57
  • print df.t.eq(0).cumsum() out to see what it looks like. – Quang Hoang May 3 '19 at 19:59
  • 1
    First, make sure you understand what each of the above segment is (they are consecutive segments between zeros of t). Now, back to the apply(lambda x: function, it actually takes each abc[0][1] and pass it to the lambda. – Quang Hoang May 3 '19 at 20:13
1

I have build an algorithm to break the series after each X. But not sure how efficient it will be.

# store pt to list
pt_list = df.pt.tolist()

# iterate through the list to get the index of each n after each X
md_map = {}
for idx, item in enumerate(pt_list):
        if item == "X" and idx != df.index.max():
            key = idx+1
            value = "md"
            md_map[key] = value

# map it with data frame
df["td_md"] = df.index.map(md_map)

# fill the na with td
df["td_md"] = df.td_md.fillna("td")

# create rs column from index and td_md
df["rs"] = df.td_md + df.index.astype(str)

I did not think abut each and every condition. But you have to build something like that.

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.