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I saw that with sklearn we can use some predefined datasets, for example mydataset = datasets.load_digits() the we can get an array (a numpy array?) of the dataset and an array of the corresponding labels However I want to load my own dataset to be able to use it with sklearn. How and in which format should I load my data ? My file have the following format (each line is a data-point):

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up vote 5 down vote accepted

You can use numpy's genfromtext function (

import numpy as np
mydata = np.genfromtext(filename, delimiter=",")

However, if you have textual columns, using genfromtxt is trickier, since you need to specify the data types.

It will be much easier with the excellent Pandas library (

import pandas as pd
mydata = pd.read_csv(filename)
target = mydata["Label"]  #provided your csv has header row, and the label column is named "Label"

#select all but the last column as data
data = mydata.ix[:,:-1]
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How can I get the labels (which are straings) and the data (float values) using the first mathod np.genfromtxt ? – shn Feb 27 '13 at 13:45
I guess that this is what I want, right ? labels = np.genfromtxt(filename, delimiter=',', usecols=-1, dtype=str) data = np.genfromtxt(filename, delimiter=',')[:,:-1] – shn Feb 27 '13 at 14:04
First of all, you should use numeric labels if you want to use numpy matrices. With that said, you can use something like mydata = np.genfromtxt(filename, delimiter = ",", dtype=[('A', float), ... ,('F', float), ('Label', 'S6')]). Then you can access data and labels as mydata[["A", ...,"F"]], and mydata["Label"] – Ando Saabas Feb 27 '13 at 15:15
If you have 1000 colums you should specify all these types explicitly ?! – shn Feb 27 '13 at 15:39
Yes, if you are mixing string and float columns. If all types are numeric, then no, you don't need to specify the types. Similarly, if you are using Pandas and read_csv, you don't need to specify types. – Ando Saabas Feb 27 '13 at 17:20

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