# How can I find and store how many columns it takes to reach a value greater than the first value in each row?

``````import pandas as pd
df = {'a': [3,4,5], 'b': [1,2,3], 'c': [4,3,3], 'd': [1,5,4], 'e': [9,4,6]}
df1 = pd.DataFrame(df, columns = ['a', 'b', 'c', 'd', 'e'])
dg = {'b': [2,3,4]}
df2 = pd.DataFrame(dg, columns = ['b'])
``````

Original dataframe is df1. For each row, I want to find the first time a value is bigger than the value in the first column and store it in a new dataframe.

``````df1
a   b   c   d   e
0   3   1   4   1   9
1   4   2   3   5   4
2   5   3   3   4   6
``````

df2 is the resulting dataframe. For example, for df1 row 1; the first value is 3 and the first value bigger than 3 is 4 (column c). Hence in df2 row 1, we store 2 (there are two columns from column a to c). For df1 row 2, the first value is 4 and the first value bigger than 4 is 5 (column d). Hence in df2 row 2, we store 3 (there are three columns from column a to d). For df1 row 3, the first value is 5 and the first value bigger than 5 is 6 (column e). Hence in df2 row 3, we store 4 (there are four columns from column a to e).

``````df2

b
0   2
1   3
2   4
``````

I would appreciate the help.

• You seem to have more than one problem here: (a) designing your algorithm -- which you've mostly done; (b) converting the algorithm steps to Python / PANDAS; (c) making it work well, using data frame operations. Just where in this process are you stuck? Please focus on that question, supplying code and results up to that point. – Prune May 23 at 23:00

In your case we can do `sub` , if the value `gt` than 0 , we get the id with `idxmax`

``````s=df1.columns.get_indexer(df1.drop('a',1).sub(df1.a,0).ge(0).idxmax(1))
array([1, 1, 3])
df['New']=s
``````
• @user13599745 check the update ? also use your update information – YOBEN_S May 24 at 0:15

You can get the column names by comparing the entire DataFrame index wise against the first columns, replacing false values with NaNs and applying first_valid_index row wise, eg:

``````names = (
df1.gt(df1.iloc[:, 0], axis=0)
.replace(False, pd.NA) # or use np.nan
.apply(pd.Series.first_valid_index, axis=1)
)
``````

That'll give you:

``````0    c
1    d
2    e
``````

Then you can convert those to offsets:

``````offsets = df1.columns.get_indexer(names)
#  array([2, 3, 4])
``````