# Pandas difference between first and last grouped by consecutive events

I have a dataframe containing open/close, candle color and number of consecutive candles.

``````    date open close color  run
00:01:00  100   102     g    1
00:02:00  102   104     g    2
00:03:00  104   106     g    3
00:04:00  106   105     r    1
00:05:00  105   101     r    2
00:06:00  101   102     g    1
00:06:00  102   103     g    2
``````

I'm trying to calculate the absolute value of the difference between the open of the first candle in the run and the close of the last candle in the run and apply the difference to each line. The result would look like

``````    date open close color  run  run_length
00:01:00  100   102     g    1      2        # abs(100 - 102)
00:02:00  102   104     g    2      4        # abs(100 - 104)
00:03:00  104   106     g    3      6        # abs(100 - 106)
00:04:00  106   105     r    1      1        # abs(106 - 105)
00:05:00  105   101     r    2      5        # abs(106 - 101)
00:06:00  101   102     g    1      1        # abs(101 - 102)
00:06:00  102   103     g    2      2        # abs(101 - 103)
``````

I have read two other posts that come close but don't quite get to the solution I'm looking for:

get first and last values in a groupby

Pandas number of consecutive occurrences in previous rows

I'm using `df.groupby((df['color'] != df['color'].shift()).cumsum())` to group the rows by the color of the candle (this is how I calculated the color and the run count) and I can get the first and last values of the group using `.agg(['first', 'last']).stack()` but this doesn't allow me to apply the difference per line of the original dataframe.

Are you looking for a `groupby`? For more robustness, follow @Wen's suggestion in the comments, perform a `groupby` using the `cumsum` trick:

``````df['run_length'] = df.groupby(
df['color'].ne(df['color'].shift()).cumsum()
).open.transform('first').sub(df.close).abs()

df
date  open  close color  run  run_length
0  00:01:00   100    102     g    1           2
1  00:02:00   102    104     g    2           4
2  00:03:00   104    106     g    3           6
3  00:04:00   106    105     r    1           1
4  00:05:00   105    101     r    2           5
5  00:06:00   101    102     g    1           1
6  00:06:00   102    103     g    2           2
``````
• `(df['color'] != df['color'].shift()).cumsum()` groupby this : -)
– BENY
May 3, 2018 at 19:15
• @Wen Awesome, didn't think of that, thank you so much!
– cs95
May 3, 2018 at 19:18