I can't post the data being imported, because it's too much. But, it has both number and string fields and is 5543 rows and 137 columns. I import data with this code (ndnames and ndtypes holds the column names and column datatypes):
npArray2 = np.genfromtxt(fileName, delimiter="|", skip_header=1, dtype=(ndtypes), names=ndnames, usecols=np.arange(0,137) )
This works and the resulting variable type is "void7520" with size (5543,). But this is really a 1D array of 5543 rows, where each element holds a sub-array that has 137 elements. I want to convert this into a normal numpy array of 5543 rows and 137 columns. How can this be done?
I have tried the following (using Pandas):
pdArray = pd.read_csv(fileName, sep=ndelimiter, index_col=False, skiprows=1, names=ndnames ) npArray = pd.DataFrame.as_matrix(pdArray)
But, the resulting npArray is type Object with size (5543,137) which, at first, looks promising. But, because it's type Object, there are other functions that can't be performed on it. Can this Object array be converted into a normal numpy array?
Edit: ndtypes look like... [int,int,...,int,'|U50',int,...,int,'|U50',int,...,int] That is, 135 number fields with two string-type fields in the middle somewhere.