df = pd.read_csv(file, sep=',', encoding='ISO-8859-1') 

column_names = list(df.columns)
col_mapping = {'Sex ':'Sex', 'Fatal (Y/N)': 'Fatal', 'Species ' : 'Species'}
df = df.rename(columns=col_mapping, copy=False)

I've transformed the data as that the values from df['Age'] column that contains letter or other symbols take the value NaN

df['Age'] = np.where(pd.to_numeric(df['Age'], 'coerce').notnull(), df['Age'], NaN)

I've tried to use df.dropna(df.Age) to clean the NaN values but it gives me: TypeError: 'Series' objects are mutable, thus they cannot be hashed

I want to know how to set this problem and how to group and count the resulting values bu range (i.e 18 - 25 years : 215, 25 - 50 : 300) for future ploting

  • 1
    In order to help with the grouping, you need to show some sample data and give a better description of what you want to see. see this post for guidance stackoverflow.com/help/mcve – piRSquared Oct 22 '16 at 13:58
up vote 0 down vote accepted

you want to use the parameter subset

df = df.dropna(subset=['Age'])
  • It doesn't work, any changes, when I print out the df['Age'] there are still NaN values – Sinchetru Oct 22 '16 at 13:58
  • you must assign it – piRSquared Oct 22 '16 at 13:59
  • It works!!! Thank you! – Sinchetru Oct 22 '16 at 14:01
  • how can I group the values by range? – Sinchetru Oct 22 '16 at 14:01
  • There is an easy answer but in order to show you, I need to see an example of you data. Also, you need to provide a better description of what you want the output to look like. – piRSquared Oct 22 '16 at 14:03

I found the answer four grouping question:

Grouped_Age = pd.cut(df.Age,[5, 10, 20, 50, 100], right=True)
Age_counts = Grouped_Age.value_counts()

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