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Create a DataFrame, print info on it append a row, print info again. The dtype of all the columns changes to object. Why?

myData = np.array([134.29, 136.97, 250.31, 312.28])
mySeries = pd.Series(myData,index=['IBM','P&G','Microsoft','Home Depot'], name="Stock Price")
myData1 = np.array(['120.573B', '336.72B', '1.885T' , '335.974B'])
mySeries1 = pd.Series(myData1, index=['IBM','P&G','Microsoft','Home Depot'], name="Market Cap")
myData2 = np.array([120_573_000_000, 336_720_000_000, 1_885_000_000_000 , 335_974_000_000])
mySeries2 = pd.Series(myData2, index=['IBM','P&G','Microsoft','Home Depot'], name="Market Cap Raw")

myDataFrame = pd.concat([mySeries, mySeries1, mySeries2], axis=1)
#print(myDataFrame)
print(myDataFrame.info())

# After adding the row below, the dtype of numeric types change to object

myData = np.array([20.99, '100M', 100000000 ])
mySeries = pd.Series(myData, index = myDataFrame.columns, name = 'HML')
myDataFrame = myDataFrame.append(mySeries, ignore_index=False)
#print(myDataFrame)
print(myDataFrame.info())


<class 'pandas.core.frame.DataFrame'>
Index: 4 entries, IBM to Home Depot
Data columns (total 3 columns):
 #   Column          Non-Null Count  Dtype  
---  ------          --------------  -----  
 0   Stock Price     4 non-null      float64
 1   Market Cap      4 non-null      object 
 2   Market Cap Raw  4 non-null      int64  
dtypes: float64(1), int64(1), object(1)
memory usage: 128.0+ bytes
None
<class 'pandas.core.frame.DataFrame'>
Index: 5 entries, IBM to HML
Data columns (total 3 columns):
 #   Column          Non-Null Count  Dtype 
---  ------          --------------  ----- 
 0   Stock Price     5 non-null      object
 1   Market Cap      5 non-null      object
 2   Market Cap Raw  5 non-null      object
dtypes: object(3)
memory usage: 160.0+ bytes
None
3
  • I understand the problem now, based on the comments in the answer below. My big mistake is not asking the question properly because I need to learn how to fix it.
    – nicomp
    Feb 4 at 15:40
  • haha...well, consider accepting this answer and asking a new question then, because I've been under the impression the whole time that you're just curious why :)
    – user17242583
    Feb 4 at 15:40
  • That's a mostly fair assumption, I guess.
    – nicomp
    Feb 4 at 15:41

2 Answers 2

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When you create a Series object containing objects of different incompatible types, the dtype of that Series becomes object.

When you create myData and mySeries the second time, that's exactly what's happening:

>>> myData = np.array([20.99, '100M', 100000000 ])
>>> mySeries = pd.Series(myData, index = myDataFrame.columns, name = 'HML')
>>> mySeries.dtype
dtype('O')

Right after that, you append that Series (of dtype object) to the dataframe. Since the object type is more general than the dtypes of the various columns of the dataframe, those columns get converted to the more general object dtype.

7
  • I didn't do that. I appended a Series identical to the original Series' used to create the DF. There are no incompatible types.
    – nicomp
    Feb 4 at 15:22
  • 1
    The second myData is np.array([20.99, '100M', 100000000 ]). There are different datatypes in that array. Then, you created a series from it (mySeries). So mySeries (the second one) is a dtype of object, right?
    – user17242583
    Feb 4 at 15:25
  • The second series uses the identical syntax as the first. How are they different?
    – nicomp
    Feb 4 at 15:35
  • The data that it's containing is different, @nicomp. myData, myData1, and myData2 (in the first part of your example) are collectively of different dtypes, but each individual series has the same dtype within itself, i.e. myData only contains floats, myData1 only contains strings, and myData3 only contains ints.
    – user17242583
    Feb 4 at 15:36
  • But myData in the second part of your example contains different dtypes, some of which can't be automatically converted to any others. So, the lowest common denominator among them all is object, which is what they're converted to. Because a Series object can have only one dtype.
    – user17242583
    Feb 4 at 15:37
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I figure out how to fix it:

tmpSeries = pd.to_numeric(myDataFrame['Stock Price'])
myDataFrame['Stock Price'] = tmpSeries

This changes the column to float64 from object. to_numeric can also be used to convert to other numeric types.

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