I have three constraints, and, as usual, I can only figure out how to satisfy any two of them at the same time:
- Multi-dimensional array
- Named columns
- Different columns include different data types (so everything in col 1 is a string, but col 2 is all Decimal, etc.)
I'm currently using numpy ndarrays to store my data with different types in each column. I've initialized the array so it can store multiple data types:
norm = numpy.empty((79, len(header)), dtype=numpy.object)
I've been using a header (a list of string names) as a proxy for column names (and then looking up the index of the values in the header) but this seems really cludgy.
I've looked around but as far as I can tell, when you initialize an array with column names (and types) you have to fill the array with values as you do so, as in: Store NumPy Row and Column Headers
Because when I try something like this:
n=numpy.empty((5,2), dtype=[("sub", "str"), ("words", Decimal)]) n = ['06', Decimal(10)]
I get this error:
Traceback (most recent call last): File "<string>", line 1, in <fragment> ValueError: Setting void-array with object members using buffer.