# Python: replacing outliers values with median values

I have a python data-frame in which there are some outlier values. I would like to replace them with the median values of the data, had those values not been there.

``````id         Age
10236    766105
11993       288
9337        205
38189        88
35555        82
39443        75
10762        74
33847        72
21194        70
39450        70
``````

So, I want to replace all the values > 75 with the median value of the dataset of the remaining dataset, i.e., the median value of `70,70,72,74,75`.

I'm trying to do the following:

1. Replace with 0, all the values that are greater than 75
2. Replace the 0s with median value.

But somehow, the below code not working

``````df['age'].replace(df.age>75,0,inplace=True)
``````

I think this is what you are looking for, you can use loc to assign value . Then you can fill the nan

``````median = df.loc[df['Age']<75, 'Age'].median()
df.loc[df.Age > 75, 'Age'] = np.nan
df.fillna(median,inplace=True)
``````

You can also use np.where in one line

``````df["Age"] = np.where(df["Age"] >75, median,df['Age'])
``````

You can also use .mask i.e

``````df["Age"] = df["Age"].mask(df["Age"] >75, median)
``````
• change to `Age > 75`. +1 Jul 29, 2017 at 8:28
• Glad to help @user4943236 Jul 29, 2017 at 8:55

A more general solution I've tried lately: replace 75 with the median of the whole column and then follow a solution similar to what Bharath suggested:

``````median = float(df['Age'].median())
df["Age"] = np.where(df["Age"] > median, median, df['Age'])
``````
• But the median value which is used as a threshold will be influenced by all the values(including the outliers) in this case. Jun 7, 2020 at 5:04

you code is almost right , but their is a gap.
use:

``````df['age']=df['age'].replace(df.age>75,0,inplace=True)
``````

Actually, this is not an efficient way to deal with outliers in data.