1

I have 2 csv files as below, I want to find if an individual performance (in df1) is above/below class average (in df2) using come compare function after finding their values.

df1:
 Name    Class    Test1    Test2    Test3
 John       9A       75       83       77
David       9B       65       67       55
Peter       9A       85       90       88
  Tom       9C       74       92       78

df2:
Class    Test1    Test2    Test3
   9A       80       82       84
   9B       84       75       77
   9C       75       78       80

Here's my method, feel free to correct/guide me if I'm wrong. I first find the Class of an individual in df1, e.g., John is 9A, then return the other columns such as Test1 or Test2 in df2 based on 9A

target_class = df1.loc[df1['Name'] == 'John', 'Class']
print(target_class)
>>>>9A
Test1_avg = df2.loc[df2['Class'] == target_class, 'Test1']
# ideally it should return 80

And I got this ValueError: Can only compare identically-labeled Series objects

Or simply, how would you compare John's Test1 in df1 vs Class 9A's Test1 in df2? Is there any easier method than mine? Thanks for your help!

Update: I'll then use a compare function like this to return a score if it fulfills the criteria

def comparison(a, b):
    return 2 if a > b else 1 if a == b else -1

1 Answer 1

1

This is one way via pandas.merge.

# rename df2 columns
df2 = df2.rename(columns={'Test'+str(x): 'AvgTest'+str(x) for x in range(1, 4)})

# left merge df1 on df2
res = pd.merge(df1, df2, how='left', on=['Class'])

# calculate comparison results
comparison = pd.DataFrame(res.loc[:, res.columns.str.startswith('Test')].values  >= \
                          res.loc[:, res.columns.str.startswith('AvgTest')].values,
                          columns=['Comp'+str(x) for x in range(1, 4)])

# join results to dataframe
res = res.join(comparison)

print(res)

#     Name Class  Test1  Test2  Test3  AvgTest1  AvgTest2  AvgTest3  Comp1  \
# 0   John    9A     75     83     77        80        82        84  False   
# 1  David    9B     65     67     55        84        75        77  False   
# 2  Peter    9A     85     90     88        80        82        84   True   
# 3    Tom    9C     74     92     78        75        78        80  False   

#    Comp2  Comp3  
# 0   True  False  
# 1  False  False  
# 2   True   True  
# 3   True  False  
1
  • Thank you! I never thought about merging 2 dfs into 1. Just a quick question, what if I want to the compare function to return a number instead of boolean, say if Test1>AvgTest1, then return a number/int like 2, if Test1=AvgTest1, return 1, if Test1<AvgTest1, return -1? What would you do? I just updated my answer, but how do I implement your loc to it? Thanks.
    – Karma
    Apr 9, 2018 at 0:23

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