I have a pandas dataframe containing the following data:

matchID    server    court    speed
1          1         A         100
1          2         D         200
1          3         D         300
1          4         A         100
1          1         A         120
1          2         A         250
1          3         D         110
1          4         D         100
2          1         A         100
2          2         D         200
2          3         D         300
2          4         A         100
2          1         A         120
2          2         A         250
2          3         D         110
2          4         D         100

I would like to add two new columns containing the mean based on two conditions. The column meanSpeedCourtA13 shall contain the mean speed of servers 1 and 3 where court = A. This would bee (100 + 120) / 2 = 110. The second column named meanSpeedCourtD13 shall contain the mean speed of servers 1 and 3 where court = D. This would be (300 + 110) / 2 = 205.

Please note that this should be done for each matchID, hence, a groupby is also required. this means that solutions containing iloc() cannot be used.

The resulting dataframe should look as follows:

matchID    server    court     speed    meanSpeedCourtA13   meanSpeedCourtD13
1          1         A         100      110                 205
1          2         D         200      110                 205
1          3         D         300      110                 205
1          4         A         100      110                 205
1          1         A         120      110                 205
1          2         A         250      110                 205
1          3         D         110      110                 205
1          4         D         100      110                 205
2          1         A         100      110                 205        
2          2         D         200      110                 205        
2          3         D         300      110                 205        
2          4         A         100      110                 205        
2          1         A         120      110                 205        
2          2         A         250      110                 205        
2          3         D         110      110                 205        
2          4         D         100      110                 205        
  • Can you make another example to help clarify the intended results? This is because elements in matchID 1 is exactly the same as with matchID 2. This might not be the case you are dealing with. And this is why you want to group it by matchID. – Tai Dec 31 '17 at 7:37

Ok this got a bit more complicated. Normally I'd try something with transform but I'd be glad if someone had something better than the following:

Use groupby and send df to func where df.loc is used, lastly use pd.concat to glue the dataframe together again:

import pandas as pd

data = {'matchID': {0: 1, 1: 1, 2: 1, 3: 1, 4: 1, 5: 1, 6: 1, 7: 1, 8: 2, 9: 2, 10: 2, 
                    11: 2, 12: 2, 13: 2, 14: 2, 15: 2}, 
'court': {0: 'A', 1: 'D', 2: 'D', 3: 'A', 4: 'A', 5: 'A', 6: 'D', 7: 'D', 8: 'A',
          9: 'D', 10: 'D', 11: 'A', 12: 'A', 13: 'A', 14: 'D', 15: 'D'}, 
'speed': {0: 100, 1: 200, 2: 300, 3: 100, 4: 120, 5: 250, 6: 110, 7: 100, 8: 100, 
          9: 200, 10: 300, 11: 100, 12: 120, 13: 250, 14: 110, 15: 100}, 
'server': {0: 1, 1: 2, 2: 3, 3: 4, 4: 1, 5: 2, 6: 3, 7: 4, 8: 1, 9: 2, 10: 3, 
           11: 4, 12: 1, 13: 2, 14: 3, 15: 4}}

df = pd.DataFrame(data)

def func(dfx):
    dfx['meanSpeedCourtA13'],dfx['meanSpeedCourtD13'] = \
     (dfx.loc[(dfx.server.isin((1,3))) & (dfx.court == 'A'),'speed'].mean(),
      dfx.loc[(dfx.server.isin((1,3))) & (dfx.court == 'D'),'speed'].mean())
    return dfx

newdf = pd.concat(func(dfx) for _, dfx in df.groupby('matchID'))

print(newdf)

Returns

   court  matchID  server  speed  meanSpeedCourtA13  meanSpeedCourtD13
0      A        1       1    100             110.00             205.00
1      D        1       2    200             110.00             205.00
2      D        1       3    300             110.00             205.00
3      A        1       4    100             110.00             205.00
4      A        1       1    120             110.00             205.00
5      A        1       2    250             110.00             205.00
6      D        1       3    110             110.00             205.00
7      D        1       4    100             110.00             205.00
8      A        2       1    100             110.00             205.00
9      D        2       2    200             110.00             205.00
10     D        2       3    300             110.00             205.00
11     A        2       4    100             110.00             205.00
12     A        2       1    120             110.00             205.00
13     A        2       2    250             110.00             205.00
14     D        2       3    110             110.00             205.00
15     D        2       4    100             110.00             205.00
  • I would also need it in combination with a groupBy. Then the solution does not work: df.groupby('matchId').loc((df['court'] == 'A') & (df['server'].isin([1,3])), ['speed']).mean(). this yields the following error: AttributeError: Cannot access callable attribute 'loc' of 'DataFrameGroupBy' objects, try using the 'apply' method – beta Dec 31 '17 at 0:28
  • I haven't seen groupby being used with loc. This isn't in the original question. Can you update with more data, what you want? – Anton vBR Dec 31 '17 at 0:29
  • see my edit. i added the column matchID. – beta Dec 31 '17 at 0:32
  • 1
    @beta ok, I'll have alook – Anton vBR Dec 31 '17 at 0:46
  • @beta Sorry couldn't figure a correct way to do this. I will leave something that should work but hopefully someone could find a better way. – Anton vBR Dec 31 '17 at 1:16

You can get the mean by groupby and assign the values by getting the item() i.e

vals = df[df['server'].isin([1,3])].groupby(['court'])['speed'].mean().to_frame()


df['A13'],df['D13'] = vals.query("court=='A'")['speed'].item(), vals.query("court=='D'")['speed'].item()

    matchID  server court  speed    A13    D13
0         1       1     A    100  110.0  205.0
1         1       2     D    200  110.0  205.0
2         1       3     D    300  110.0  205.0
3         1       4     A    100  110.0  205.0
4         1       1     A    120  110.0  205.0
5         1       2     A    250  110.0  205.0
6         1       3     D    110  110.0  205.0
7         1       4     D    100  110.0  205.0
8         2       1     A    100  110.0  205.0
9         2       2     D    200  110.0  205.0
10        2       3     D    300  110.0  205.0
11        2       4     A    100  110.0  205.0
12        2       1     A    120  110.0  205.0
13        2       2     A    250  110.0  205.0
14        2       3     D    110  110.0  205.0
15        2       4     D    100  110.0  205.0

With groupby, we can still use loc to select the intended parts that we want to replace but put the whole computation within a for loop from df.groupby("matchID").

for id, subg in df.groupby("matchID"):       
    df.loc[df.matchID==id, "meanSpeedCourtA13"] = (subg
              .where(subg.server.isin([1,3])).where(subg.court == "A").speed.mean())
    df.loc[df.matchID==id, "meanSpeedCourtD13"] = (subg
              .where(subg.server.isin([1,3])).where(subg.court == "D").speed.mean())

Specail thanks to @Dark to point it out that I was hard coding groupby.

For loc, it can be used to select values based on information from 2 axes: rows and columns. By convention on the documentation, the sequence to put information is rows first and columns second. For example, in df.loc[df.matchID==id, "meanSpeedCourtD13"], df.matchID==id is about selecting rows that have matchID being id and that "meanSpeedCourtD13" specifies a column we want to look into.

Side notes about calculating mean:

  • for each group subg
  • where(subg.server.isin([1,3])) then filter out server not in [1 ,3].
  • where(subg.court == "A") further to do filtering on court.
  • finally call mean to compute mean from speed.

As an alternative, you can use np.where to assign values to each matchID in [1, 2]. This works only for binary matchID. It is roughly the same speed with the groupby method above tested on my computer. To save space, we only demonstrate with "meanSpeedCourtA13" column.

# First we calculate the means
# Calculate mean for Group with mathcID being 1
meanSpeedCourtA13_ID1 = (df[df.matchID==1].
                 where(df.server.isin([1,3])).where(df.court == "A").speed.mean())    
# Calculate mean for Group with matchID being 2
meanSpeedCourtA13_ID2 = (df[df.matchID==2].
                 where(df.server.isin([1,3])).where(df.court == "A").speed.mean())
# Use np.where to allocate values to each matchID in [1, 2]
df["meanSpeedCourtA13"] = np.where(df.matchID == 1,
                                   meanSpeedCourtA13_ID1, meanSpeedCourtA13_ID2)

For np.where(condition, x, y), it will return x if condition is met, y otherwise. See np.where for documentation.

  • You are hard coding groupby, passing matchID as another column to groupby would have been sufficient. – Dark Dec 31 '17 at 8:37
  • @Dark Thanks. I think I know what you mean. Will modify now. – Tai Dec 31 '17 at 8:39

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