Deep Learning

Assignment 1

The objective of this assignment is to learn about simple data curation practices, and familiarize you with some of the data we'll be reusing later.

This notebook uses the notMNIST dataset to be used with python experiments. This dataset is designed to look like the classic MNIST dataset, while looking a little more like real data: it's a harder task, and the data is a lot less 'clean' than MNIST.


In [1]:
# These are all the modules we'll be using later. Make sure you can import them
# before proceeding further.
from __future__ import print_function
import matplotlib.pyplot as plt
import numpy as np
import os
import sys
import tarfile
from IPython.display import display, Image
from scipy import ndimage
from sklearn.linear_model import LogisticRegression
from six.moves.urllib.request import urlretrieve
from six.moves import cPickle as pickle

# Config the matlotlib backend as plotting inline in IPython
%matplotlib inline

First, we'll download the dataset to our local machine. The data consists of characters rendered in a variety of fonts on a 28x28 image. The labels are limited to 'A' through 'J' (10 classes). The training set has about 500k and the testset 19000 labelled examples. Given these sizes, it should be possible to train models quickly on any machine.


In [2]:
url = 'http://commondatastorage.googleapis.com/books1000/'

def maybe_download(filename, expected_bytes, force=False):
  """Download a file if not present, and make sure it's the right size."""
  if force or not os.path.exists(filename):
    filename, _ = urlretrieve(url + filename, filename)
  statinfo = os.stat(filename)
  if statinfo.st_size == expected_bytes:
    print('Found and verified', filename)
  else:
    raise Exception(
      'Failed to verify ' + filename + '. Can you get to it with a browser?')
  return filename

train_filename = maybe_download('notMNIST_large.tar.gz', 247336696)
test_filename = maybe_download('notMNIST_small.tar.gz', 8458043)


Found and verified notMNIST_large.tar.gz
Found and verified notMNIST_small.tar.gz

Extract the dataset from the compressed .tar.gz file. This should give you a set of directories, labelled A through J.


In [3]:
num_classes = 10
np.random.seed(133)

def maybe_extract(filename, force=False):
  root = os.path.splitext(os.path.splitext(filename)[0])[0]  # remove .tar.gz
  if os.path.isdir(root) and not force:
    # You may override by setting force=True.
    print('%s already present - Skipping extraction of %s.' % (root, filename))
  else:
    print('Extracting data for %s. This may take a while. Please wait.' % root)
    tar = tarfile.open(filename)
    sys.stdout.flush()
    tar.extractall()
    tar.close()
  data_folders = [
    os.path.join(root, d) for d in sorted(os.listdir(root))
    if os.path.isdir(os.path.join(root, d))]
  if len(data_folders) != num_classes:
    raise Exception(
      'Expected %d folders, one per class. Found %d instead.' % (
        num_classes, len(data_folders)))
  print(data_folders)
  return data_folders
  
train_folders = maybe_extract(train_filename, force=False)
test_folders = maybe_extract(test_filename, force=False)

print('-> train_filename', train_filename)
print('-> test_filename', test_filename)
print('-> train_folders', train_folders)
print('-> test_folders', test_folders)


notMNIST_large already present - Skipping extraction of notMNIST_large.tar.gz.
['notMNIST_large/A', 'notMNIST_large/B', 'notMNIST_large/C', 'notMNIST_large/D', 'notMNIST_large/E', 'notMNIST_large/F', 'notMNIST_large/G', 'notMNIST_large/H', 'notMNIST_large/I', 'notMNIST_large/J']
notMNIST_small already present - Skipping extraction of notMNIST_small.tar.gz.
['notMNIST_small/A', 'notMNIST_small/B', 'notMNIST_small/C', 'notMNIST_small/D', 'notMNIST_small/E', 'notMNIST_small/F', 'notMNIST_small/G', 'notMNIST_small/H', 'notMNIST_small/I', 'notMNIST_small/J']
-> train_filename notMNIST_large.tar.gz
-> test_filename notMNIST_small.tar.gz
-> train_folders ['notMNIST_large/A', 'notMNIST_large/B', 'notMNIST_large/C', 'notMNIST_large/D', 'notMNIST_large/E', 'notMNIST_large/F', 'notMNIST_large/G', 'notMNIST_large/H', 'notMNIST_large/I', 'notMNIST_large/J']
-> test_folders ['notMNIST_small/A', 'notMNIST_small/B', 'notMNIST_small/C', 'notMNIST_small/D', 'notMNIST_small/E', 'notMNIST_small/F', 'notMNIST_small/G', 'notMNIST_small/H', 'notMNIST_small/I', 'notMNIST_small/J']

Problem 1

Let's take a peek at some of the data to make sure it looks sensible. Each exemplar should be an image of a character A through J rendered in a different font. Display a sample of the images that we just downloaded. Hint: you can use the package IPython.display.


Now let's load the data in a more manageable format. Since, depending on your computer setup you might not be able to fit it all in memory, we'll load each class into a separate dataset, store them on disk and curate them independently. Later we'll merge them into a single dataset of manageable size.

We'll convert the entire dataset into a 3D array (image index, x, y) of floating point values, normalized to have approximately zero mean and standard deviation ~0.5 to make training easier down the road.

A few images might not be readable, we'll just skip them.


In [4]:
image_size = 28  # Pixel width and height.
pixel_depth = 255.0  # Number of levels per pixel.

def load_letter(folder, min_num_images):
  """Load the data for a single letter label."""
  image_files = os.listdir(folder)
  dataset = np.ndarray(shape=(len(image_files), image_size, image_size),
                         dtype=np.float32)
  print(folder)
  for image_index, image in enumerate(image_files):
    image_file = os.path.join(folder, image)
    try:
      image_data = (ndimage.imread(image_file).astype(float) - 
                    pixel_depth / 2) / pixel_depth
      if image_data.shape != (image_size, image_size):
        raise Exception('Unexpected image shape: %s' % str(image_data.shape))
      dataset[image_index, :, :] = image_data
    except IOError as e:
      print('Could not read:', image_file, ':', e, '- it\'s ok, skipping.')
    
  num_images = image_index + 1
  dataset = dataset[0:num_images, :, :]
  if num_images < min_num_images:
    raise Exception('Many fewer images than expected: %d < %d' %
                    (num_images, min_num_images))
    
  print('Full dataset tensor:', dataset.shape)
  print('Mean:', np.mean(dataset))
  print('Standard deviation:', np.std(dataset))
  return dataset
        
def maybe_pickle(data_folders, min_num_images_per_class, force=False):
  dataset_names = []
  for folder in data_folders:
    set_filename = folder + '.pickle'
    dataset_names.append(set_filename)
    if os.path.exists(set_filename) and not force:
      # You may override by setting force=True.
      print('%s already present - Skipping pickling.' % set_filename)
    else:
      print('Pickling %s.' % set_filename)
      dataset = load_letter(folder, min_num_images_per_class)
      try:
        with open(set_filename, 'wb') as f:
          pickle.dump(dataset, f, pickle.HIGHEST_PROTOCOL)
      except Exception as e:
        print('Unable to save data to', set_filename, ':', e)
  
  return dataset_names

train_datasets = maybe_pickle(train_folders, 45000)
test_datasets = maybe_pickle(test_folders, 1800)
print('=> train_datasets:', train_datasets)
print('=> test_datasets:', test_datasets)


notMNIST_large/A.pickle already present - Skipping pickling.
notMNIST_large/B.pickle already present - Skipping pickling.
notMNIST_large/C.pickle already present - Skipping pickling.
notMNIST_large/D.pickle already present - Skipping pickling.
notMNIST_large/E.pickle already present - Skipping pickling.
notMNIST_large/F.pickle already present - Skipping pickling.
notMNIST_large/G.pickle already present - Skipping pickling.
notMNIST_large/H.pickle already present - Skipping pickling.
notMNIST_large/I.pickle already present - Skipping pickling.
notMNIST_large/J.pickle already present - Skipping pickling.
notMNIST_small/A.pickle already present - Skipping pickling.
notMNIST_small/B.pickle already present - Skipping pickling.
notMNIST_small/C.pickle already present - Skipping pickling.
notMNIST_small/D.pickle already present - Skipping pickling.
notMNIST_small/E.pickle already present - Skipping pickling.
notMNIST_small/F.pickle already present - Skipping pickling.
notMNIST_small/G.pickle already present - Skipping pickling.
notMNIST_small/H.pickle already present - Skipping pickling.
notMNIST_small/I.pickle already present - Skipping pickling.
notMNIST_small/J.pickle already present - Skipping pickling.
=> train_datasets: ['notMNIST_large/A.pickle', 'notMNIST_large/B.pickle', 'notMNIST_large/C.pickle', 'notMNIST_large/D.pickle', 'notMNIST_large/E.pickle', 'notMNIST_large/F.pickle', 'notMNIST_large/G.pickle', 'notMNIST_large/H.pickle', 'notMNIST_large/I.pickle', 'notMNIST_large/J.pickle']
=> test_datasets: ['notMNIST_small/A.pickle', 'notMNIST_small/B.pickle', 'notMNIST_small/C.pickle', 'notMNIST_small/D.pickle', 'notMNIST_small/E.pickle', 'notMNIST_small/F.pickle', 'notMNIST_small/G.pickle', 'notMNIST_small/H.pickle', 'notMNIST_small/I.pickle', 'notMNIST_small/J.pickle']

Problem 2

Let's verify that the data still looks good. Displaying a sample of the labels and images from the ndarray. Hint: you can use matplotlib.pyplot.



In [5]:
print(os.getcwd())
with open('notMNIST_large/A.pickle', 'r') as f:
    a_train_ds = pickle.load(f)
    print(len(a_train_ds))


/Users/jarias/mywork/deep-learning-ud
52912

In [6]:
print('a_train_ds shape:', np.shape(a_train_ds))
print('image shape:', np.shape(a_train_ds[0]))

import random
i = random.randint(0,len(a_train_ds)-1)
print("Displayed train entry {:d} labelled {:s}.".format(i, 'A'))

plt.imshow(a_train_ds[i])
plt.show()


a_train_ds shape: (52912, 28, 28)
image shape: (28, 28)
Displayed train entry 30031 labelled A.

Problem 3

Another check: we expect the data to be balanced across classes. Verify that.



In [7]:
label_names = ['A', 'B', 'C', 'D', 'E', 'F', 'G', 'H', 'I', 'J']
for label in label_names:
    fname = 'notMNIST_large/{}.pickle'.format(label)
    with open(fname, 'r') as f:
        train_ds = pickle.load(f)
        print('label: {}, elems: {}'.format(label, len(train_ds)))


label: A, elems: 52912
label: B, elems: 52912
label: C, elems: 52912
label: D, elems: 52912
label: E, elems: 52912
label: F, elems: 52912
label: G, elems: 52912
label: H, elems: 52912
label: I, elems: 52912
label: J, elems: 52911

Merge and prune the training data as needed. Depending on your computer setup, you might not be able to fit it all in memory, and you can tune train_size as needed. The labels will be stored into a separate array of integers 0 through 9.

Also create a validation dataset for hyperparameter tuning.


In [8]:
def make_arrays(nb_rows, img_size):
  if nb_rows:
    dataset = np.ndarray((nb_rows, img_size, img_size), dtype=np.float32)
    labels = np.ndarray(nb_rows, dtype=np.int32)
  else:
    dataset, labels = None, None
  return dataset, labels

def merge_datasets(pickle_files, train_size, valid_size=0):
  num_classes = len(pickle_files)
  valid_dataset, valid_labels = make_arrays(valid_size, image_size)
  train_dataset, train_labels = make_arrays(train_size, image_size)
  vsize_per_class = valid_size // num_classes
  tsize_per_class = train_size // num_classes
    
  start_v, start_t = 0, 0
  end_v, end_t = vsize_per_class, tsize_per_class
  end_l = vsize_per_class+tsize_per_class
  for label, pickle_file in enumerate(pickle_files):       
    try:
      with open(pickle_file, 'rb') as f:
        letter_set = pickle.load(f)
        # let's shuffle the letters to have random validation and training set
        np.random.shuffle(letter_set)
        if valid_dataset is not None:
          valid_letter = letter_set[:vsize_per_class, :, :]
          valid_dataset[start_v:end_v, :, :] = valid_letter
          valid_labels[start_v:end_v] = label
          start_v += vsize_per_class
          end_v += vsize_per_class
                    
        train_letter = letter_set[vsize_per_class:end_l, :, :]
        train_dataset[start_t:end_t, :, :] = train_letter
        train_labels[start_t:end_t] = label
        start_t += tsize_per_class
        end_t += tsize_per_class
    except Exception as e:
      print('Unable to process data from', pickle_file, ':', e)
      raise
    
  return valid_dataset, valid_labels, train_dataset, train_labels
            
            
train_size = 200000
valid_size = 10000
test_size = 10000

valid_dataset, valid_labels, train_dataset, train_labels = merge_datasets(
  train_datasets, train_size, valid_size)
_, _, test_dataset, test_labels = merge_datasets(test_datasets, test_size)

print('Training:', train_dataset.shape, train_labels.shape)
print('Validation:', valid_dataset.shape, valid_labels.shape)
print('Testing:', test_dataset.shape, test_labels.shape)


Training: (200000, 28, 28) (200000,)
Validation: (10000, 28, 28) (10000,)
Testing: (10000, 28, 28) (10000,)

Next, we'll randomize the data. It's important to have the labels well shuffled for the training and test distributions to match.


In [9]:
def randomize(dataset, labels):
  permutation = np.random.permutation(labels.shape[0])
  shuffled_dataset = dataset[permutation,:,:]
  shuffled_labels = labels[permutation]
  return shuffled_dataset, shuffled_labels
train_dataset, train_labels = randomize(train_dataset, train_labels)
test_dataset, test_labels = randomize(test_dataset, test_labels)
valid_dataset, valid_labels = randomize(valid_dataset, valid_labels)

Problem 4

Convince yourself that the data is still good after shuffling!



In [10]:
for _ in xrange(10):
    i = random.randint(0,len(train_dataset)-1)
    print("Displayed train entry {:d} labelled {}.".format(i, label_names[train_labels[i]]))

    plt.imshow(train_dataset[i])
    plt.show()


Displayed train entry 130177 labelled A.
Displayed train entry 85082 labelled H.
Displayed train entry 115747 labelled B.
Displayed train entry 74475 labelled I.
Displayed train entry 108105 labelled A.
Displayed train entry 191563 labelled B.
Displayed train entry 13793 labelled I.
Displayed train entry 26113 labelled E.
Displayed train entry 107126 labelled F.
Displayed train entry 2602 labelled G.

Finally, let's save the data for later reuse:


In [11]:
pickle_file = 'notMNIST.pickle'

try:
  f = open(pickle_file, 'wb')
  save = {
    'train_dataset': train_dataset,
    'train_labels': train_labels,
    'valid_dataset': valid_dataset,
    'valid_labels': valid_labels,
    'test_dataset': test_dataset,
    'test_labels': test_labels,
    }
  pickle.dump(save, f, pickle.HIGHEST_PROTOCOL)
  f.close()
except Exception as e:
  print('Unable to save data to', pickle_file, ':', e)
  raise

In [12]:
statinfo = os.stat(pickle_file)
print('Compressed pickle size:', statinfo.st_size)


Compressed pickle size: 690800441

Problem 5

By construction, this dataset might contain a lot of overlapping samples, including training data that's also contained in the validation and test set! Overlap between training and test can skew the results if you expect to use your model in an environment where there is never an overlap, but are actually ok if you expect to see training samples recur when you use it. Measure how much overlap there is between training, validation and test samples.

Optional questions:

  • What about near duplicates between datasets? (images that are almost identical)
  • Create a sanitized validation and test set, and compare your accuracy on those in subsequent assignments.


In [13]:
### Problem 5: overlapping between datasets 
import hashlib

def np_arr_to_hashed_set_md5(np_arr):
    # md5 is much much faster than builtin hash func
    return set((hashlib.md5(x).hexdigest() for x in np_arr))

def overlapping(set1, set2):
    return set1.intersection(set2)

set_tr_md5 = np_arr_to_hashed_set_md5(train_dataset)
set_tst_md5 = np_arr_to_hashed_set_md5(test_dataset)
set_val_md5 = np_arr_to_hashed_set_md5(valid_dataset)

print(len(overlapping(set_tr_md5, set_tst_md5)))
print(len(overlapping(set_tr_md5, set_val_md5)))
print(len(overlapping(set_tst_md5, set_val_md5)))


1153
952
57

Problem 6

Let's get an idea of what an off-the-shelf classifier can give you on this data. It's always good to check that there is something to learn, and that it's a problem that is not so trivial that a canned solution solves it.

Train a simple model on this data using 50, 100, 1000 and 5000 training samples. Hint: you can use the LogisticRegression model from sklearn.linear_model.

Optional question: train an off-the-shelf model on all the data!



In [ ]:


In [22]:
from os import path
from sklearn.cross_validation import train_test_split
from sklearn.linear_model import LogisticRegression


def convert_3to2D(arr):
    d1, d2, d3 = arr.shape
    return np.reshape(arr, (d1, d2*d3))


def maybe_fit_logistic_reg(size=50, force=False):
    fname = 'notmnist_log_reg_'+str(size)+'_clf.pickle'
    if path.exists(fname) and not force:
        print('{} with fitted clf for test_size={} already exists... Loading'.format(fname, size))
        with open(fname, 'r') as f:
            clf = pickle.load(f)
            return clf
    else:
        train_sub_dataset, _, train_sub_labels, _ = train_test_split(train_dataset, train_labels, train_size=size, random_state=17)
        train_sub_ds_2d = convert_3to2D(train_sub_dataset)
        print('-- LEN train_sub_ds_2d:::', len(train_sub_ds_2d))
        
        clf = LogisticRegression()
        print('Fitting clf for test_size={}... hold on!'.format(size))
        %time clf.fit(train_sub_ds_2d, train_sub_labels)

        with open(fname, 'w') as f:
            pickle.dump(clf, f, pickle.HIGHEST_PROTOCOL)
        return clf

clf_50 = maybe_fit_logistic_reg(size=50)
clf_100 = maybe_fit_logistic_reg(size=100)
clf_1000 = maybe_fit_logistic_reg(size=1000)
clf_5000 = maybe_fit_logistic_reg(size=5000)
clf_all = maybe_fit_logistic_reg(size=len(train_dataset)-1)
test_ds_2d = convert_3to2D(test_dataset)
print('Predicting...')
%time pred = clf_1000.predict(test_ds_2d)


notmnist_log_reg_50_clf.pickle with fitted clf for test_size=50 already exists... Loading
notmnist_log_reg_100_clf.pickle with fitted clf for test_size=100 already exists... Loading
notmnist_log_reg_1000_clf.pickle with fitted clf for test_size=1000 already exists... Loading
notmnist_log_reg_5000_clf.pickle with fitted clf for test_size=5000 already exists... Loading
-- LEN train_sub_ds_2d::: 199999
Fitting clf for test_size=199999... hold on!
CPU times: user 37min 18s, sys: 22.2 s, total: 37min 40s
Wall time: 1h 47min 45s
Predicting...
CPU times: user 88.2 ms, sys: 109 ms, total: 197 ms
Wall time: 163 ms

In [23]:
from sklearn.metrics import accuracy_score

for n, clf in enumerate([clf_50, clf_100, clf_1000, clf_5000, clf_all]):
    pred = clf.predict(test_ds_2d)
    acc = accuracy_score(test_labels, pred)
    print('prediction nr: {} acc: {}'.format(n, acc))


prediction nr: 0 acc: 0.6343
prediction nr: 1 acc: 0.788
prediction nr: 2 acc: 0.8339
prediction nr: 3 acc: 0.8577
prediction nr: 4 acc: 0.8939

In [25]:
### checking some of the predictions
for _ in xrange(20):
    i = random.randint(0,len(pred))
    print("Check letter number={} is={} prediction={}.".format(i, label_names[test_labels[i]], label_names[pred[i]]))

    plt.imshow(test_dataset[i])
    plt.show()


Check letter number=2866 is=C prediction=C.
Check letter number=1248 is=F prediction=F.
Check letter number=2095 is=H prediction=H.
Check letter number=5107 is=F prediction=F.
Check letter number=1785 is=D prediction=D.
Check letter number=2900 is=H prediction=H.
Check letter number=7762 is=H prediction=H.
Check letter number=6348 is=A prediction=A.
Check letter number=5731 is=C prediction=C.
Check letter number=1390 is=I prediction=I.
Check letter number=4613 is=A prediction=A.
Check letter number=7890 is=C prediction=C.
Check letter number=1088 is=B prediction=B.
Check letter number=5086 is=J prediction=J.
Check letter number=5435 is=D prediction=D.
Check letter number=292 is=B prediction=B.
Check letter number=433 is=J prediction=J.
Check letter number=615 is=I prediction=I.
Check letter number=3281 is=F prediction=F.
Check letter number=6166 is=F prediction=G.

In [ ]: