347

How do I find all rows in a pandas data frame which have the max value for count column, after grouping by ['Sp','Mt'] columns?

Example 1: the following dataFrame, which I group by ['Sp','Mt']:

   Sp   Mt Value   count
0  MM1  S1   a     **3**
1  MM1  S1   n       2
2  MM1  S3   cb    **5**
3  MM2  S3   mk    **8**
4  MM2  S4   bg    **10**
5  MM2  S4   dgd     1
6  MM4  S2   rd      2
7  MM4  S2   cb      2
8  MM4  S2   uyi   **7**

Expected output: get the result rows whose count is max between the groups, like:

0  MM1  S1   a      **3**
2  MM1  S3   cb     **5**
3  MM2  S3   mk     **8**
4  MM2  S4   bg     **10** 
8  MM4  S2   uyi    **7**

Example 2: this dataframe, which I group by ['Sp','Mt']:

   Sp   Mt   Value  count
4  MM2  S4   bg     10
5  MM2  S4   dgd    1
6  MM4  S2   rd     2
7  MM4  S2   cb     8
8  MM4  S2   uyi    8

For the above example, I want to get all the rows where count equals max, in each group e.g :

MM2  S4   bg     10
MM4  S2   cb     8
MM4  S2   uyi    8
5

13 Answers 13

471
In [1]: df
Out[1]:
    Sp  Mt Value  count
0  MM1  S1     a      3
1  MM1  S1     n      2
2  MM1  S3    cb      5
3  MM2  S3    mk      8
4  MM2  S4    bg     10
5  MM2  S4   dgd      1
6  MM4  S2    rd      2
7  MM4  S2    cb      2
8  MM4  S2   uyi      7

In [2]: df.groupby(['Mt'], sort=False)['count'].max()
Out[2]:
Mt
S1     3
S3     8
S4    10
S2     7
Name: count

To get the indices of the original DF you can do:

In [3]: idx = df.groupby(['Mt'])['count'].transform(max) == df['count']

In [4]: df[idx]
Out[4]:
    Sp  Mt Value  count
0  MM1  S1     a      3
3  MM2  S3    mk      8
4  MM2  S4    bg     10
8  MM4  S2   uyi      7

Note that if you have multiple max values per group, all will be returned.

Update

On a hail mary chance that this is what the OP is requesting:

In [5]: df['count_max'] = df.groupby(['Mt'])['count'].transform(max)

In [6]: df
Out[6]:
    Sp  Mt Value  count  count_max
0  MM1  S1     a      3          3
1  MM1  S1     n      2          3
2  MM1  S3    cb      5          8
3  MM2  S3    mk      8          8
4  MM2  S4    bg     10         10
5  MM2  S4   dgd      1         10
6  MM4  S2    rd      2          7
7  MM4  S2    cb      2          7
8  MM4  S2   uyi      7          7
5
  • @Zelazny7, is there a way to adopt this answer to apply to grouping by a column and then looking at 2 columns and doing a max of them to get a greater of the two? I can't get that to work. What I currently have is:def Greater(Merge, maximumA, maximumB): a = Merge[maximumA] b = Merge[maximumB] return max(a, b) Merger.groupby("Search_Term").apply(Greater,"Ratio_x","Ratio_y") Nov 15 '17 at 20:35
  • 4
    @Zelazny7 I'm using the second, idx approach. But, I can only afford to a single maximum for each group (and my data has a few duplicate-max's). is there a way to get around this with your solution?
    – 3pitt
    Jan 3 '18 at 20:36
  • actually, that does not work for me. I can not track the problem, because dataframe if quit big, but the solution by @Rani works good Feb 18 '18 at 18:09
  • Hi Zealzny, If I want to take top 3 maximum row instead of one max value, How can I tweak your code?
    – Zephyr
    Nov 13 '18 at 15:51
  • transform method may have pool performance when the data set is large enough, get the max value first then merge the dataframes will be better.
    – Woods Chen
    Apr 10 '19 at 2:54
229

You can sort the dataFrame by count and then remove duplicates. I think it's easier:

df.sort_values('count', ascending=False).drop_duplicates(['Sp','Mt'])
7
  • 7
    Very nice! Fast with largish frames (25k rows) Sep 27 '17 at 18:23
  • 3
    For those who are somewhat new with Python, you will need to assign this to a new variable, it doesn't change the current df variable.
    – Tyler
    Dec 27 '18 at 17:14
  • 2
    @Samir or use inplace = True as an argument to drop_duplicates
    – TMrtSmith
    Feb 4 '19 at 13:11
  • 10
    This is a great answer when need only one of rows with the same max values, however it wont work as expected if I need all the rows with max values.
    – Woods Chen
    Apr 10 '19 at 2:50
  • 2
    I mean if the dataframe is pd.DataFrame({'sp':[1, 1, 2], 'mt':[1, 1, 2], 'value':[2, 2, 3]}, then there will be 2 rows with the same max value 2 in the group where sp==1 and mt==2. @Rani
    – Woods Chen
    Apr 11 '19 at 9:37
83

Easy solution would be to apply : idxmax() function to get indices of rows with max values. This would filter out all the rows with max value in the group.

In [365]: import pandas as pd

In [366]: df = pd.DataFrame({
'sp' : ['MM1', 'MM1', 'MM1', 'MM2', 'MM2', 'MM2', 'MM4', 'MM4','MM4'],
'mt' : ['S1', 'S1', 'S3', 'S3', 'S4', 'S4', 'S2', 'S2', 'S2'],
'val' : ['a', 'n', 'cb', 'mk', 'bg', 'dgb', 'rd', 'cb', 'uyi'],
'count' : [3,2,5,8,10,1,2,2,7]
})

In [367]: df                                                                                                       
Out[367]: 
   count  mt   sp  val
0      3  S1  MM1    a
1      2  S1  MM1    n
2      5  S3  MM1   cb
3      8  S3  MM2   mk
4     10  S4  MM2   bg
5      1  S4  MM2  dgb
6      2  S2  MM4   rd
7      2  S2  MM4   cb
8      7  S2  MM4  uyi


### Apply idxmax() and use .loc() on dataframe to filter the rows with max values:
In [368]: df.loc[df.groupby(["sp", "mt"])["count"].idxmax()]                                                       
Out[368]: 
   count  mt   sp  val
0      3  S1  MM1    a
2      5  S3  MM1   cb
3      8  S3  MM2   mk
4     10  S4  MM2   bg
8      7  S2  MM4  uyi

### Just to show what values are returned by .idxmax() above:
In [369]: df.groupby(["sp", "mt"])["count"].idxmax().values                                                        
Out[369]: array([0, 2, 3, 4, 8])
2
  • 10
    The questioner here specified "I want to get ALL the rows where count equals max in each group", while idxmax Return[s] index of first occurrence of maximum over requested axis" according to the docs (0.21).
    – Max Power
    Dec 19 '17 at 11:55
  • 5
    This is a great solution, but for a different problem Oct 27 '19 at 18:40
39

Having tried the solution suggested by Zelazny on a relatively large DataFrame (~400k rows) I found it to be very slow. Here is an alternative that I found to run orders of magnitude faster on my data set.

df = pd.DataFrame({
    'sp' : ['MM1', 'MM1', 'MM1', 'MM2', 'MM2', 'MM2', 'MM4', 'MM4', 'MM4'],
    'mt' : ['S1', 'S1', 'S3', 'S3', 'S4', 'S4', 'S2', 'S2', 'S2'],
    'val' : ['a', 'n', 'cb', 'mk', 'bg', 'dgb', 'rd', 'cb', 'uyi'],
    'count' : [3,2,5,8,10,1,2,2,7]
    })

df_grouped = df.groupby(['sp', 'mt']).agg({'count':'max'})

df_grouped = df_grouped.reset_index()

df_grouped = df_grouped.rename(columns={'count':'count_max'})

df = pd.merge(df, df_grouped, how='left', on=['sp', 'mt'])

df = df[df['count'] == df['count_max']]
6
  • 1
    indeed this is much faster. transform seems to be slow for large dataset.
    – goh
    Jul 11 '14 at 6:30
  • 1
    Can you add comments to explain what each line does? Mar 26 '17 at 0:47
  • 1
    fwiw: I found the more elegant-looking solution from @Zelazny7 took a long time to execute for my set of ~100K rows, but this one ran pretty quickly. (I'm running a now way-obsolete 0.13.0, which might account for slowness).
    – Roland
    May 4 '17 at 21:25
  • 3
    But doing this df[df['count'] == df['count_max']] will lose NaN rows, as well as the answers above.
    – Qy Zuo
    Jul 20 '17 at 7:38
  • I highly suggest to use this approach, for bigger data frames it is much faster to use .appy() or .agg().
    – Gerard
    Sep 18 '18 at 5:37
39

You may not need to do with group by , using sort_values+ drop_duplicates

df.sort_values('count').drop_duplicates(['Sp','Mt'],keep='last')
Out[190]: 
    Sp  Mt Value  count
0  MM1  S1     a      3
2  MM1  S3    cb      5
8  MM4  S2   uyi      7
3  MM2  S3    mk      8
4  MM2  S4    bg     10

Also almost same logic by using tail

df.sort_values('count').groupby(['Sp', 'Mt']).tail(1)
Out[52]: 
    Sp  Mt Value  count
0  MM1  S1     a      3
2  MM1  S3    cb      5
8  MM4  S2   uyi      7
3  MM2  S3    mk      8
4  MM2  S4    bg     10
3
  • Not only is this an order of magnitude faster than the other solutions (at least for my use case), it has the added benefit of simply chaining as part of the construction of the original dataframe.
    – Clay
    Aug 9 '19 at 13:49
  • When you see this answer, you realize that all the others are wrong. This is clearly the way to do it. Thanks.
    – Hunaphu
    Feb 25 at 15:32
  • One should add na_position="first" to sort_values in order to ignore NaNs.
    – Antoine
    Aug 20 at 10:57
9

Use groupby and idxmax methods:

  1. transfer col date to datetime:

    df['date']=pd.to_datetime(df['date'])
    
  2. get the index of max of column date, after groupyby ad_id:

    idx=df.groupby(by='ad_id')['date'].idxmax()
    
  3. get the wanted data:

    df_max=df.loc[idx,]
    

Out[54]:

ad_id  price       date
7     22      2 2018-06-11
6     23      2 2018-06-22
2     24      2 2018-06-30
3     28      5 2018-06-22
8

For me, the easiest solution would be keep value when count is equal to the maximum. Therefore, the following one line command is enough :

df[df['count'] == df.groupby(['Mt'])['count'].transform(max)]
6

Try using "nlargest" on the groupby object. The advantage of using nlargest is that it returns the index of the rows where "the nlargest item(s)" were fetched from. Note: we slice the second(1) element of our index since our index in this case consist of tuples(eg.(s1, 0)).

df = pd.DataFrame({
'sp' : ['MM1', 'MM1', 'MM1', 'MM2', 'MM2', 'MM2', 'MM4', 'MM4','MM4'],
'mt' : ['S1', 'S1', 'S3', 'S3', 'S4', 'S4', 'S2', 'S2', 'S2'],
'val' : ['a', 'n', 'cb', 'mk', 'bg', 'dgb', 'rd', 'cb', 'uyi'],
'count' : [3,2,5,8,10,1,2,2,7]
})

d = df.groupby('mt')['count'].nlargest(1) # pass 1 since we want the max

df.iloc[[i[1] for i in d.index], :] # pass the index of d as list comprehension

enter image description here

5

Realizing that "applying" "nlargest" to groupby object works just as fine:

Additional advantage - also can fetch top n values if required:

In [85]: import pandas as pd

In [86]: df = pd.DataFrame({
    ...: 'sp' : ['MM1', 'MM1', 'MM1', 'MM2', 'MM2', 'MM2', 'MM4', 'MM4','MM4'],
    ...: 'mt' : ['S1', 'S1', 'S3', 'S3', 'S4', 'S4', 'S2', 'S2', 'S2'],
    ...: 'val' : ['a', 'n', 'cb', 'mk', 'bg', 'dgb', 'rd', 'cb', 'uyi'],
    ...: 'count' : [3,2,5,8,10,1,2,2,7]
    ...: })

## Apply nlargest(1) to find the max val df, and nlargest(n) gives top n values for df:
In [87]: df.groupby(["sp", "mt"]).apply(lambda x: x.nlargest(1, "count")).reset_index(drop=True)
Out[87]:
   count  mt   sp  val
0      3  S1  MM1    a
1      5  S3  MM1   cb
2      8  S3  MM2   mk
3     10  S4  MM2   bg
4      7  S2  MM4  uyi
4

Summarizing, there are many ways, but which one is faster?

import pandas as pd
import numpy as np
import time

df = pd.DataFrame(np.random.randint(1,10,size=(1000000, 2)), columns=list('AB'))

start_time = time.time()
df1idx = df.groupby(['A'])['B'].transform(max) == df['B']
df1 = df[df1idx]
print("---1 ) %s seconds ---" % (time.time() - start_time))

start_time = time.time()
df2 = df.sort_values('B').groupby(['A']).tail(1)
print("---2 ) %s seconds ---" % (time.time() - start_time))

start_time = time.time()
df3 = df.sort_values('B').drop_duplicates(['A'],keep='last')
print("---3 ) %s seconds ---" % (time.time() - start_time))

start_time = time.time()
df3b = df.sort_values('B', ascending=False).drop_duplicates(['A'])
print("---3b) %s seconds ---" % (time.time() - start_time))

start_time = time.time()
df4 = df[df['B'] == df.groupby(['A'])['B'].transform(max)]
print("---4 ) %s seconds ---" % (time.time() - start_time))

start_time = time.time()
d = df.groupby('A')['B'].nlargest(1)
df5 = df.iloc[[i[1] for i in d.index], :]
print("---5 ) %s seconds ---" % (time.time() - start_time))

And the winner is...

  • --1 ) 0.03337574005126953 seconds ---
  • --2 ) 0.1346898078918457 seconds ---
  • --3 ) 0.10243558883666992 seconds ---
  • --3b) 0.1004343032836914 seconds ---
  • --4 ) 0.028397560119628906 seconds ---
  • --5 ) 0.07552886009216309 seconds ---
2
df = pd.DataFrame({
'sp' : ['MM1', 'MM1', 'MM1', 'MM2', 'MM2', 'MM2', 'MM4', 'MM4','MM4'],
'mt' : ['S1', 'S1', 'S3', 'S3', 'S4', 'S4', 'S2', 'S2', 'S2'],
'val' : ['a', 'n', 'cb', 'mk', 'bg', 'dgb', 'rd', 'cb', 'uyi'],
'count' : [3,2,5,8,10,1,2,2,7]
})

df.groupby(['sp', 'mt']).apply(lambda grp: grp.nlargest(1, 'count'))
2

If you sort your DataFrame that ordering will be preserved in the groupby. You can then just grab the first or last element and reset the index.

df = pd.DataFrame({
    'sp' : ['MM1', 'MM1', 'MM1', 'MM2', 'MM2', 'MM2', 'MM4', 'MM4','MM4'],
    'mt' : ['S1', 'S1', 'S3', 'S3', 'S4', 'S4', 'S2', 'S2', 'S2'],
    'val' : ['a', 'n', 'cb', 'mk', 'bg', 'dgb', 'rd', 'cb', 'uyi'],
    'count' : [3,2,5,8,10,1,2,2,7]
})

df.sort_values("count", ascending=False).groupby(["sp", "mt"]).first().reset_index()
1

I've been using this functional style for many group operations:

df = pd.DataFrame({
   'Sp' : ['MM1', 'MM1', 'MM1', 'MM2', 'MM2', 'MM2', 'MM4', 'MM4', 'MM4'],
   'Mt' : ['S1', 'S1', 'S3', 'S3', 'S4', 'S4', 'S2', 'S2', 'S2'],
   'Val' : ['a', 'n', 'cb', 'mk', 'bg', 'dgb', 'rd', 'cb', 'uyi'],
   'Count' : [3,2,5,8,10,1,2,2,7]
})

df.groupby('Mt')\
  .apply(lambda group: group[group.Count == group.Count.max()])\
  .reset_index(drop=True)

    sp  mt  val  count
0  MM1  S1    a      3
1  MM4  S2  uyi      7
2  MM2  S3   mk      8
3  MM2  S4   bg     10

.reset_index(drop=True) gets you back to the original index by dropping the group-index.

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