I am building a multy purpose User Interface, and I am adding Pandas to it. For this, I need to form expressions by components (stored in variables) which are defined by users choices.
All seems to work fine, but I got into a dead end. I want the user to be able to pick several expressions, and then concatenate them to form the new dataframe. If I only use one expression, everything will work:
from pandas import read_csv df = read_csv("SomeCsv.csv") b= df[r'ID'] a=(b==r'p') Value=df[a] #Works,returning the rows in df whichs column 'ID' equals r'p'
But if I want to include more expressions:
from pandas import read_csv df = read_csv("SomeCsv.csv") b= df[r'ID'] c=(b==r'p') d=(b==r'ul') a=c or d #Breaks at this line Value=df[a] #Doesnt work. I would expect the rows in df whichs column 'ID' equals r'p' or 'ID' equals r'ul'
And throws the following error:
ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()
Before asking, I tried all the .any and .all combinations of the expressions I could think of, and all of them failed.
How to filter this dataframe by columns matching more than one expression stored in variables?