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How is Pandas Series different from Numpy Array?
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How is Pandas Series different from Numpy Array?
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Answer:
The essential difference is the presence of the index: while the Numpy Array has an implicitly defined integer index used to access the values, the Pandas Series has an explicitly defined index associated with the values.
Explanation:
Unlike NumPy library which provides objects for multi-dimensional arrays, Pandas provides in-memory 2d table object called Dataframe. It is like a spreadsheet with column names and row labels. Some commonly used data structures in pandas are: Series objects: 1D array, similar to a column in a spreadsheet.
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Answer:
The essential difference is the presence of the index: while the Numpy Array has an implicitly defined integer index used to access the values, the Pandas Series has an explicitly defined index associated with the values