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Trying to answer this question Get List of Unique String per Column we ran into a different problem from my dataset. When I import this CSV file to the dataframe every column is OBJECT type, we need to convert the columns that are just number to real (number) dtype and those that are not number to String dtype.

Is there a way to achieve this?

Download the data sample from here

I have tried following code from following article Pandas: change data type of columns but did not work.

df = pd.DataFrame(a, columns=['col1','col2','col3'])

As always thanks for your help

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  • Automatic conversion of all columns to object type usually happens when there are commas or other non-numeric characters in the otherwise numeric columns. You could try something like df.replace(",", "",regex=True).astype(np.int64) to remove the characters and convert data into to some numeric type Sep 30, 2016 at 22:37

1 Answer 1

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Option 1
use pd.to_numeric in an apply

df.apply(pd.to_numeric, errors='ignore')

Option 2
use pd.to_numeric on df.values.ravel

cvrtd = pd.to_numeric(df.values.ravel(), errors='coerce').reshape(-1, len(df.columns))
pd.DataFrame(np.where(np.isnan(cvrtd), df.values, cvrtd), df.index, df.columns)

Note
These are not exactly the same. For some column that contains mixed values, option 2 converts what it can while option 2 leaves everything in that column an object. Looking at your file, I'd choose option 1.


Timing

df = pd.read_csv('HistorianDataSample/HistorianDataSample.csv', skiprows=[1, 2])

enter image description here

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  • @Jeff how do I apply pd.numeric to an entire dataframe? That's what I'm trying to do here. Further, I could've stacked df first, but each column may be different. The errors='ignore' will stop the conversion if any element in the stacked series doesn't convert. If I use errors='coerce' it will nan any values not numeric. I can only think of using apply to operate on each column separately. It will still be vectorized for each column.
    – piRSquared
    Sep 30, 2016 at 23:04
  • use .ravel() and reshape
    – Jeff
    Sep 30, 2016 at 23:17
  • @Jeff using apply in this case still seems a better option.
    – piRSquared
    Sep 30, 2016 at 23:50
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    @SebMa apply takes pd.to_numeric and applies it to each column of the dataframe. When you pass the dataframe to the function pd.to_numeric(df) it doesn't know what to do. In the example above, I force the dataframe to be one dimensional with ravel and then reshape the results back to the same dimensions as df. The point is, pd.to_numeric(my_dataframe) is not expected to work. pd.to_numeric will work on a singleton value of a 1-dimensional thing. pd.to_numeric(pd.Series(['1', '2'])), pd.to_numeric('3') both work. But pd.to_numeric([['1', '2'], ['3', '4']]) Does not.
    – piRSquared
    Jul 9, 2018 at 17:52
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    @SebMa, Jeff is the man! I suspect he missed that I was applying over a dataframe of columns and he thought I was applying over elements of a series. In the case of a series, pd.Series(['1', '2']).apply(pd.to_numeric) is absolutely silly. In this specific case, when we apply, it gets used over each column in a vectorized way. The results would be different if we had 100's or 1000's of columns.
    – piRSquared
    Jul 9, 2018 at 18:02

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