I have a pandas dataframe and I want to filter the whole df based on the value of two columns in the data frame. I want to get back all rows and columns where IBRD or IMF != 0.

alldata_balance = alldata[(alldata[IBRD] !=0) or (alldata[IMF] !=0)]

but this gives me a ValueError

ValueError: The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all().

So I know I am not using the or statement correctly, is there a way to do this?


From the docs:

Another common operation is the use of boolean vectors to filter the data. The operators are: | for or, & for and, and ~ for not. These must be grouped by using parentheses.



alldata_balance = alldata[(alldata[IBRD] !=0) | (alldata[IMF] !=0)]
  • Thank you, that worked great. I should have read that part of the docs. – Josh Apr 5 '15 at 19:35

You can do like below to achieve your result:

import seaborn as sns
import matplotlib.pyplot as plt
import pandas as pd
import numpy as np
#use filter with plot
fg=sns.factorplot('Retailer country', data=df1[(df1['Retailer country']=='United States') | (df1['Retailer country']=='France')], kind='count')

fg.set_xlabels('Retailer country')

fg=sns.factorplot('Retailer country', data=df1[(df1['Retailer country']=='United States') & (df1['Year']=='2013')], kind='count')

fg.set_xlabels('Retailer country')
  • 1
    Is this an answer to the question it is posted under? If so, why are you going explaining seaborn along with it? Also, please take a look at how to format your answers – sacuL Jul 5 '18 at 0:51

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