3

I am working with 3 data frames, out of which 2 data frames contains additional bin number assigned to column data based on the range in which they belong (in separate columns).

df_1

A   B

5   6

8   1

6   7

4   9

1   3

9   2

2   5

df_2

A   B   A_bin   B_bin

5   6   2     2

8   1   1     1

6   7   3     2

4   9   3     3

1   3   1     1

9   2   1     1

2   5   2     2

df_3

A   B   C   D   A_bin   B_bin   C_bin   D_bin

5   6   2   6    2     2     1     2

8   1   6   4    1     1     2     2    

6   7   3   1    3     2     1     1    

4   9   1   9    3     3     1     3    

1   3   8   7    1     1     3     3    

9   2   4   8    1     1     2     3    

2   5   9   2    2     2     3     1

df_1 contain just two columns, df_2 have additional column which contain the bin assigned to column A and B according to the range in which the belong, similarly, df_3 contains columns with values and additional column with bin number assigned.

I want to extract the rows from df_3 such that it only extract data where df_2 columns have bin value "2" for each column respectively in a separate data frame.

The Main problem i am facing is to do it WITHOUT mentioning the column names anywhere in the code.

expected output

df_output_1 (where bin values for column 'A' in df_2 is 2)

A   B   C   D  

5   6   2   6

2   5   9   2

df_output_2 (where bin values for column 'B' in df_2 is 2)

A   B   C   D  

5   6   2   6

6   7   3   1

2   5   9   2

  • Do you use some code for create df_2 and df_3 ? Can you share it? – jezrael Oct 29 '18 at 8:09
  • import numpy as np def binner(df_1,num_bins): for c in df_1.columns: cbins = np.linspace(min(df_1[c]),max(df_1[c]),num_bins) df_1[c + '_binn'] = np.digitize(df_1[c],cbins) return df_1 df_2=binner(df_1,3) @jezrael this is how i converted df_1 to df_2 – Shashank Singh Yadav Oct 30 '18 at 5:37
2

using merging (right or left) we can filter the data fame.

    for bin_name in (column_name + "_bin" for column_name in df_1_columns):
      print(bin_name)
      df_3_joined = pd.merge(df_3[df_3_op_columns], df_2[df_2[bin_name] == 2][df_1_columns], how='right', on=df_1_columns, suffixes=['_l', ''])
      print(df_3_joined)

Complete example is

import pandas as pd

df_1 = pd.DataFrame(columns = ['A', 'B'])
df_1.loc[len(df_1)] = [5,6]
df_1.loc[len(df_1)] = [8, 1]
df_1.loc[len(df_1)] = [6, 7]
df_1.loc[len(df_1)] = [4, 9]
df_1.loc[len(df_1)] = [1, 3]
df_1.loc[len(df_1)] = [9, 2]
df_1.loc[len(df_1)] = [2, 5]

df_2 = pd.DataFrame(columns = ['A', 'B', 'A_bin', 'B_bin'])
df_2.loc[len(df_2)] = [5, 6, 2, 2]
df_2.loc[len(df_2)] = [8, 1, 1, 1]
df_2.loc[len(df_2)] = [6, 7, 3, 2]
df_2.loc[len(df_2)] = [4, 9, 3, 3]
df_2.loc[len(df_2)] = [1, 3, 1, 1]
df_2.loc[len(df_2)] = [9, 2, 1, 1]
df_2.loc[len(df_2)] = [2, 5, 2, 2]

df_3 = pd.DataFrame(columns = ['A', 'B', 'C', 'D', 'A_bin', 'B_bin', 'C_bin', 'D_bin'])
df_3.loc[len(df_3)] = [5, 6, 2, 6, 2, 2, 1, 2]
df_3.loc[len(df_3)] = [8, 1, 6, 4, 1, 1, 2, 2]
df_3.loc[len(df_3)] = [6, 7, 3, 1, 3, 2, 1, 1]
df_3.loc[len(df_3)] = [4, 9, 1, 9, 3, 3, 1, 3]
df_3.loc[len(df_3)] = [1, 3, 8, 7, 1, 1, 3, 3]
df_3.loc[len(df_3)] = [9, 2, 4, 8, 1, 1, 2, 3]
df_3.loc[len(df_3)] = [2, 5, 9, 2, 2, 2, 3, 1]

results = {}
df_1_columns = list(df_1.columns)
df_3_op_columns = [cname for cname in list(df_3.columns) if not cname.endswith("_bin")]
for bin_name in (column_name + "_bin" for column_name in df_1_columns):
    df_3_joined = pd.merge(df_3[df_3_op_columns], df_2[df_2[bin_name] == 2][df_1_columns], how='right', on=df_1_columns)
    results[bin_name] = df_3_joined

for binName, result in results.iteritems():
    print(binName)
    print(result)

If you know the bin names, then retrieve the result as follows.

A_bin_df = results['A_bin']
print(A_bin_df)
B_bin_df = results['B_bin']
print(B_bin_df)
  • Thanks, it helped a lot. But, when applying to a larger data set it is causing confusion. This is printing A_bin and B_bin below each other. And when printing df_3_joined outside the function ,it is only printing according to only 2nd column (B_bins). Is there a way to store rows of a each data column with bin=2 in a separate data frame respectively? @Xpeditions – Shashank Singh Yadav Oct 29 '18 at 13:11
  • 1
    Yes, we can. One option is use a dictionary and store the results into it. results = {} and in for loop results[bin_name] = df_3_joined – Prince Francis Oct 29 '18 at 13:55
  • I updated the sample, please try it. – Prince Francis Oct 29 '18 at 13:57
  • @ Xpeditions dictionary is the right way and even it canframe be converted into a data frame, but is can we retrieve binName with its result separately in the form of a dictionary or a data frame ,so that each dataframe can be used individually .Here, while retrieving result it displays the most recent stored value i.e b_bin and using append didn't worked well for me. @ Xpeditions – Shashank Singh Yadav Oct 30 '18 at 7:08
  • 1
    All are separate dataframes, If you know the bin names, then you can get it A_bin_df = results['A_bin'] print(A_bin_df) B_bin_df = results['B_bin'] print(B_bin_df) I have updated the example also. – Prince Francis Oct 30 '18 at 11:25
1

Use df.columns and column index to prevent using column names.

You can use all_cols = df_2.columns to get a list of column names. Then, use all_cols[i] to get column names.

For example, you can get column B with df_2[all_cols[1]] and get column B_bin with df_2[all_cols[1 + len(all_cols) / 2]]. If you want to get another column and its corresponding _bin column, just change the "1" to other dataframe column index.

  • i am trying to make a template code such that it can run on a data frame even it has 100 columns , to make a template code for any random data frame, a data frame may have any number of column and we might not be aware of the column index. Thus, i guess an iterative approach is to be applied. @高佳翔 – Shashank Singh Yadav Oct 30 '18 at 5:35

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