How can one go about finding the last occurring non zero element in every column of a dataframe?
Input
A B
0 0 1
1 0 2
2 9 0
3 10 0
4 0 0
5 0 0
Output
A B
0 10 2
How can one go about finding the last occurring non zero element in every column of a dataframe?
Input
A B
0 0 1
1 0 2
2 9 0
3 10 0
4 0 0
5 0 0
Output
A B
0 10 2
Here's one approach using ndarray.argmax
and advanced indexing:
first_max = df.values[df.ne(0).values.argmax(0), range(df.shape[1])]
out = pd.DataFrame([first_max], columns=df.columns)
df = pd.DataFrame({'A': [0,0,0,10,0,0] , 'B': [0,2,0,0,0,0]})
first_max = df.values[df.ne(0).values.argmax(0), range(df.shape[1])]
# array([10, 2])
pd.DataFrame([first_max], columns=df.columns)
A B
0 10 2
Update
In order to find the last nonzero:
row_ix = df.shape[0]-df.ne(0).values[::-1].argmax(0)-1
first_max = df.values[row_ix, range(df.shape[1])]
out = pd.DataFrame([first_max], columns=df.columns)
You can convert 0
to missing values, use forward filling and select last row by indexing, last cast to integer:
df = df.mask(df==0).ffill().iloc[[-1]].astype(int)
print (df)
A B
5 10 2
Something like:
results = {}
for column in df.columns:
results[column] = df.loc[df[column]!=0, column].iloc[-1]
This will make a dictionary with all columns as keys and they last non-zero values as values.
EDIT: If you want it in a dataframe, plus dict comprehension for one-liner:
results = pd.DataFrame({column:[df.loc[df[column]!=0, column].iloc[-1]] for column in df.columns})
Loop over the columns then the rows and store the last non zero variable
list = []* number_of_columns
for i in range(len(df)):
dfcolumn = df[:,i]
for item in dfcolumn:
if item != 0:
list[i] = [i, item]
print(list)
Using itertools.dropwhile
Given
import itertools as it
import pandas as pd
df = pd.DataFrame(
{"A": [0, 0, 9, 10, 0, 0],
"B": [1, 2, 0, 0, 0, 0]}
)
Code
#3 2 1
[next(it.dropwhile(lambda x: x == 0, reversed(col))) for _, col in df.iteritems()]
Output
[10, 2]
Details
With each column in the DataFrame, we want to
[0, 0, 10, 9, 0, 0]
[10, 9, 0, 0]
10