How can I use the csv module reader to store a parsed row in a numpy array? I want to use the csv module because it supports a quotechar and my data has many embedded commas. I have a very wide file of heterogeneous data. I have stored the column names and numpy data types in a list of tuples.
I would like to use the csv reader to read each row of a file into a list of string data, and then load that list of strings into a numpy array coercing the values based on the data types. Is this even possible? I have found a couple mentions of people using the csv module and numpy/scipy together, but I have yet to see an actual implementation.
This is what I have so far:
Here is a sample of my dtypes array:
In : np_dtypes[20:30] Out: [('out_sec_range', dtype('S16')), ('out_p_city_name', dtype('S16')), ('out_st', dtype('S16')), ('out_z5', dtype('S16')), ('out_zip4', dtype('S16')), ('out_lat', dtype('S16')), ('out_long', dtype('S16')), ('out_county', dtype('S16')), ('out_geo_blk', dtype('S16')), ('out_addr_type', dtype('S16'))]
And this is the function I'm working on to import the data:
def import_csv(f, dtypes): with open(f, 'r') as csvfile: reader = csv.reader(csvfile, delimiter=',', quotechar='"') next(reader, None) for row in reader: # this fails data = np.array(row, dtype=dtypes) print data
My main goal is to be able to import a csv file with embedded commas into a numpy data structure.