I have this large dataframe I've imported into pandas and I want to chop it down via a filter. Here is my basic sample code:

import pandas as pd
import numpy as np
from pandas import Series, DataFrame

df = DataFrame({'A':[12345,0,3005,0,0,16455,16454,10694,3005],'B':[0,0,0,1,2,4,3,5,6]})

df2= df[df["A"].map(lambda x: x > 0) & (df["B"] > 0)]

Basically this displays bottom 4 results which is semi-correct. But I need to display everything BUT these results. So essentially, I'm looking for a way to use this filter but in a "not" version if that's possible. So if column A is greater than 0 AND column B is greater than 0 then we want to disqualify these values from the dataframe. Thanks

  • 5
    Read the documentation on boolean masking here : pandas.pydata.org/pandas-docs/stable/…. You can use ~ as "not" df2= df[~df["A"].map(lambda x: x > 0) & (df["B"] > 0)]
    – Thtu
    May 27 '16 at 23:38
  • this is a step in the right direction but it leaves me only with 2 records instead of 5
    – staten12
    May 27 '16 at 23:42
  • 2
    Sorry, the snippet I posted needs to be applied to the entire mask, not just the first one. df[~(df["A"].map(lambda x: x > 0) & (df["B"] > 0))]
    – Thtu
    May 27 '16 at 23:43
  • Why can't you then do the reverse? if column A is less than 0 or column b is less then 0 May 28 '16 at 0:24
  • @Thomas Tu that works thank you!!
    – staten12
    May 28 '16 at 1:06

No need for map function call on Series "A".

Apply De Morgan's Law:

"not (A and B)" is the same as "(not A) or (not B)"

df2 = df[~(df.A > 0) | ~(df.B > 0)]

There is no need for the map implementation. You can just reverse the arguments like ...


Or use boolean indexing without ix:



df2 = df[df["A"].map(lambda x: x <= 0) | (df["B"] <= 0)]

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