swh:1:snp:f50ab94432af916b5fb8b4ad831e8dddded77084
Raw File
Tip revision: f98f2f35c525881a4b5e773066d384e3fff2ef1a authored by Eldar Akchurin on 20 October 2017, 10:12:27 UTC
Fixing UD randomizer initialization
Tip revision: f98f2f3
create_data.py
# -*- coding: utf-8 -*-
"""
Copyright (c) Microsoft. All rights reserved.
Licensed under the MIT license. See LICENSE file in the project root for full license information.

"""

import numpy as np
from sklearn.utils import shuffle

# number of dimensions
Dim = 2

# number of samples
N_train = 1000
N_test = 500

def generate(N, mean, cov, diff):   
    #import ipdb;ipdb.set_trace()
    num_classes = len(diff)
    samples_per_class = int(N/2)

    X0 = np.random.multivariate_normal(mean, cov, samples_per_class)
    Y0 = np.zeros(samples_per_class)
    
    for ci, d in enumerate(diff):
        X1 = np.random.multivariate_normal(mean+d, cov, samples_per_class)
        Y1 = (ci+1)*np.ones(samples_per_class)
    
        X0 = np.concatenate((X0,X1))
        Y0 = np.concatenate((Y0,Y1))

    X, Y = shuffle(X0, Y0)
    
    return X,Y

def create_data_files(num_classes, diff, train_filename, test_filename, regression):
    print("Outputting %s and %s"%(train_filename, test_filename))
    mean = np.random.randn(num_classes)
    cov = np.eye(num_classes)      
    
    for filename, N in [(train_filename, N_train), (test_filename, N_test)]:
        X, Y = generate(N, mean, cov, diff)
        
        # output in CNTK Text format
        with open(filename, "w") as dataset:
            num_labels = int((1 + np.amax(Y)))
            for i in range(N):
                dataset.write("|features ")
                for d in range(Dim):
                    dataset.write("%f " % X[i,d])
                if (regression): 
                    dataset.write("|labels %f\n" % Y[i])
                else:
                    labels = ['0'] * num_labels;
                    labels[int(Y[i])] = '1'
                    dataset.write("|labels %s\n" % " ".join(labels))

def main():
    # random seed (create the same data)
    np.random.seed(10)

    create_data_files(Dim, [3.0], "Train_cntk_text.txt", "Test_cntk_text.txt", True)
    create_data_files(Dim, [[3.0], [3.0, 0.0]], "Train-3Classes_cntk_text.txt", "Test-3Classes_cntk_text.txt", False)
    
if __name__ == '__main__':
    main()
back to top