12

I use pandas 0.13.1 Python 2.7:

I have some values in the risk column that are neither, Small, Medium or High. I want to delete the rows with the value not being Small, Medium and High. I tried the following:

df = df[(df.risk == "Small") | (df.risk == "Medium") | (df.risk == "High")]

But this returns an empty data frame. How can I filter them correctly?

11
  • 1
    I've tried to create a dataframe with such data, and your string of code works properly. Could you give more information about what contains in dataframe and how do you generate it? – Mikhail Elizarev Apr 27 '14 at 14:39
  • You requirement is a little unclear, if all your values can ever be small, mediu, or high and you want to drop rows that are any of these values then this will result in now rows so could you explain clearer what you require – EdChum Apr 27 '14 at 14:49
  • Hmm.. your code is correct so I think you need to post data and code that reproduces your problem – EdChum Apr 27 '14 at 15:04
  • For example, it would be useful to see what df.risk.value_counts() returns. – DSM Apr 27 '14 at 15:17
  • @EdChum. Your previous (now deleted post) had df = df[df.risk.isin(['Small','Medium','High'])]. That gave the desired result ! – ArtDijk Apr 27 '14 at 16:40
17

I think you want:

df = df[(df.risk.isin(["Small","Medium","High"]))]

Example:

In [5]:
import pandas as pd
df = pd.DataFrame({'risk':['Small','High','Medium','Negligible', 'Very High']})
df

Out[5]:

         risk
0       Small
1        High
2      Medium
3  Negligible
4   Very High

[5 rows x 1 columns]

In [6]:

df[df.risk.isin(['Small','Medium','High'])]

Out[6]:

     risk
0   Small
1    High
2  Medium

[3 rows x 1 columns]
3
  • 1
    Aren't these logical statements equivalent to the one provided by author? – Mikhail Elizarev Apr 27 '14 at 14:42
  • I've tryed your example with author's slicing - it works correctly – Mikhail Elizarev Apr 27 '14 at 14:44
  • @MikhailElizarev it is slightly different but the OP's question is a little unclear as what they are doing would result in no results – EdChum Apr 27 '14 at 14:48
0

Another nice and readable approach is the following:

small_risk = df["risk"] == "Small"
medium_risk = df["risk"] == "Medium"
high_risk = df["risk"] == "High"

Then you can use it like this:

df[small_risk | medium_risk | high_risk]

or

df[small_risk & medium_risk]

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