|
|
0
|
|
0 B
|
|
|
001 AI, Machine Learning and Deep Learning.en.srt
|
SRT
|
5.7 KB
|
|
|
001 AI, Machine Learning and Deep Learning.mp4
|
MP4
|
16.2 MB
|
|
|
001 BONUS.html
|
HTML
|
30.2 KB
|
|
|
001 Data Frame Attributes and Methods Part – I.en.srt
|
SRT
|
16.2 KB
|
|
|
001 Data Frame Attributes and Methods Part – I.mp4
|
MP4
|
79.8 MB
|
|
|
001 Data Types in Python.en.srt
|
SRT
|
14.1 KB
|
|
|
001 Data Types in Python.mp4
|
MP4
|
41.1 MB
|
|
|
001 Data Visualization with Python Masterclass.mp4
|
MP4
|
17.9 MB
|
|
|
1
|
|
102.4 B
|
|
|
001 Data Visualization with Python Masterclass.en.srt
|
SRT
|
3.7 KB
|
|
|
001 Installing Anaconda Distribution and Python.en.srt
|
SRT
|
4.8 KB
|
|
|
001 Installing Anaconda Distribution and Python.mp4
|
MP4
|
37.5 MB
|
|
|
001 Introduction to Deep Learning with Python.en.srt
|
SRT
|
5.9 KB
|
|
|
001 Introduction to Deep Learning with Python.mp4
|
MP4
|
14.5 MB
|
|
|
001 Logic of OOP.en.srt
|
SRT
|
5.3 KB
|
|
|
001 Logic of OOP.mp4
|
MP4
|
16.4 MB
|
|
|
001 Project - 1.en.srt
|
SRT
|
20.9 KB
|
|
|
001 Project - 1.mp4
|
MP4
|
101.6 MB
|
|
|
001 Understanding RNN and LSTM Networks.en.srt
|
SRT
|
15.1 KB
|
|
|
001 Understanding RNN and LSTM Networks.mp4
|
MP4
|
50.8 MB
|
|
|
001 What is Artificial Neural Network (ANN)_.en.srt
|
SRT
|
8.4 KB
|
|
|
001 What is Artificial Neural Network (ANN)_.mp4
|
MP4
|
23 MB
|
|
|
001 What is CNN_.en.srt
|
SRT
|
17.9 KB
|
|
|
001 What is CNN_.mp4
|
MP4
|
72.4 MB
|
|
|
001 What is Geoplotlib_.en.srt
|
SRT
|
10.6 KB
|
|
|
001 What is Geoplotlib_.mp4
|
MP4
|
32.2 MB
|
|
|
001 What is Numpy_.en.srt
|
SRT
|
7.6 KB
|
|
|
001 What is Numpy_.mp4
|
MP4
|
26.7 MB
|
|
|
001 What is Pandas_.en.srt
|
SRT
|
6.5 KB
|
|
|
001 What is Pandas_.mp4
|
MP4
|
22.3 MB
|
|
|
001 What is Seaborn_.en.srt
|
SRT
|
5.2 KB
|
|
|
001 What is Seaborn_.mp4
|
MP4
|
12.9 MB
|
|
|
001 What is Transfer Learning.en.srt
|
SRT
|
19.4 KB
|
|
|
001 What is Transfer Learning.mp4
|
MP4
|
85.3 MB
|
|
|
002 Anatomy of Neural Network.en.srt
|
SRT
|
10.7 KB
|
|
|
002 Anatomy of Neural Network.mp4
|
MP4
|
42.3 MB
|
|
|
002 Constructor.en.srt
|
SRT
|
7.2 KB
|
|
|
002 Constructor.mp4
|
MP4
|
33.9 MB
|
|
|
002 Controlling Figure Aesthetics.en.srt
|
SRT
|
11.2 KB
|
|
|
002 Controlling Figure Aesthetics.mp4
|
MP4
|
39.2 MB
|
|
|
002 Data Frame attributes and Methods Part – II.en.srt
|
SRT
|
11.9 KB
|
|
|
002 Data Frame attributes and Methods Part – II.mp4
|
MP4
|
57 MB
|
|
|
002 Example - 1.en.srt
|
SRT
|
10 KB
|
|
|
002 Example - 1.mp4
|
MP4
|
36.4 MB
|
|
|
2
|
|
73.1 KB
|
|
|
002 History of Machine Learning.en.srt
|
SRT
|
8.1 KB
|
|
|
002 History of Machine Learning.mp4
|
MP4
|
23.9 MB
|
|
|
002 Operators in Python.en.srt
|
SRT
|
11.1 KB
|
|
|
002 Operators in Python.mp4
|
MP4
|
29.6 MB
|
|
|
002 Overview of Jupyter Notebook and Google Colab.en.srt
|
SRT
|
6 KB
|
|
|
002 Overview of Jupyter Notebook and Google Colab.mp4
|
MP4
|
25.4 MB
|
|
|
002 Project - 2.en.srt
|
SRT
|
21.6 KB
|
|
|
002 Project - 2.mp4
|
MP4
|
169.3 MB
|
|
|
002 Project Files and Course Documents.html
|
HTML
|
1.2 KB
|
|
|
002 Series and Features.en.srt
|
SRT
|
19.5 KB
|
|
|
002 Series and Features.mp4
|
MP4
|
83.5 MB
|
|
|
002 Using Matplotlib.en.srt
|
SRT
|
7.9 KB
|
|
|
002 Using Matplotlib.mp4
|
MP4
|
26.5 MB
|
|
|
002 Why Numpy_.en.srt
|
SRT
|
5 KB
|
|
|
002 Why Numpy_.mp4
|
MP4
|
13.6 MB
|
|
|
003 Array and features.en.srt
|
SRT
|
11.9 KB
|
|
|
003 Array and features.mp4
|
MP4
|
47.9 MB
|
|
|
003 Conditionals.en.srt
|
SRT
|
10 KB
|
|
|
003 Conditionals.mp4
|
MP4
|
34.6 MB
|
|
|
003 Creating a Simple ANN.en.srt
|
SRT
|
15.1 KB
|
|
|
003 Creating a Simple ANN.mp4
|
MP4
|
79.5 MB
|
|
|
3
|
|
617.1 KB
|
|
|
003 Data Frame attributes and Methods Part – III.en.srt
|
SRT
|
9.8 KB
|
|
|
003 Data Frame attributes and Methods Part – III.mp4
|
MP4
|
48.1 MB
|
|
|
003 Example - 2.en.srt
|
SRT
|
19.3 KB
|
|
|
003 Example - 2.mp4
|
MP4
|
76.3 MB
|
|
|
003 Example.en.srt
|
SRT
|
10 KB
|
|
|
003 Example.mp4
|
MP4
|
51.3 MB
|
|
|
003 Methods.en.srt
|
SRT
|
4.3 KB
|
|
|
003 Methods.mp4
|
MP4
|
23.6 MB
|
|
|
003 Project - 3.en.srt
|
SRT
|
15.5 KB
|
|
|
003 Project - 3.mp4
|
MP4
|
82.3 MB
|
|
|
003 Pyplot – Pylab - Matplotlib.en.srt
|
SRT
|
7.5 KB
|
|
|
003 Pyplot – Pylab - Matplotlib.mp4
|
MP4
|
26.6 MB
|
|
|
003 Turing Machine and Turing Test.en.srt
|
SRT
|
13.8 KB
|
|
|
003 Turing Machine and Turing Test.mp4
|
MP4
|
40.9 MB
|
|
|
004 Array’s Operators.en.srt
|
SRT
|
4.4 KB
|
|
|
004 Array’s Operators.mp4
|
MP4
|
17.6 MB
|
|
|
004 Color Palettes.en.srt
|
SRT
|
15.1 KB
|
|
|
004 Color Palettes.mp4
|
MP4
|
45.4 MB
|
|
|
004 Example - 3.en.srt
|
SRT
|
11.8 KB
|
|
|
004 Example - 3.mp4
|
MP4
|
47.8 MB
|
|
|
004 Figure, Subplot and Axes.en.srt
|
SRT
|
18.2 KB
|
|
|
004 Figure, Subplot and Axes.mp4
|
MP4
|
65.7 MB
|
|
|
004 Inheritance.en.srt
|
SRT
|
7 KB
|
|
|
004 Inheritance.mp4
|
MP4
|
32.6 MB
|
|
|
004 Loops.en.srt
|
SRT
|
12.4 KB
|
|
|
004 Loops.mp4
|
MP4
|
49.1 MB
|
|
|
004 Multi index.en.srt
|
SRT
|
12.5 KB
|
|
|
004 Multi index.mp4
|
MP4
|
50.8 MB
|
|
|
004 Project - 4.en.srt
|
SRT
|
15.2 KB
|
|
|
4
|
|
458.5 KB
|
|
|
004 Project - 4.mp4
|
MP4
|
72.3 MB
|
|
|
004 Tensor Operations.en.srt
|
SRT
|
11.4 KB
|
|
|
004 Tensor Operations.mp4
|
MP4
|
62.1 MB
|
|
|
004 What is Deep Learning.en.srt
|
SRT
|
7.4 KB
|
|
|
004 What is Deep Learning.mp4
|
MP4
|
20.5 MB
|
|
|
005 Basic Plots in Seaborn.mp4
|
MP4
|
92.8 MB
|
|
|
005 Figure Customization.en.srt
|
SRT
|
14.5 KB
|
|
|
005 Figure Customization.mp4
|
MP4
|
59.1 MB
|
|
|
005 Groupby Operations.en.srt
|
SRT
|
12.8 KB
|
|
|
005 Groupby Operations.mp4
|
MP4
|
52.6 MB
|
|
|
005 Learning representations from data.en.srt
|
SRT
|
13.9 KB
|
|
|
005 Learning representations from data.mp4
|
MP4
|
34.9 MB
|
|
|
005 Lists, Tuples, Dictionaries and Sets.en.srt
|
SRT
|
18.2 KB
|
|
|
005 Lists, Tuples, Dictionaries and Sets.mp4
|
MP4
|
66.3 MB
|
|
|
005 Numpy Functions.en.srt
|
SRT
|
19.9 KB
|
|
|
005 Numpy Functions.mp4
|
MP4
|
78.5 MB
|
|
|
005 Overriding and Overloading.en.srt
|
SRT
|
9.7 KB
|
|
|
005 Overriding and Overloading.mp4
|
MP4
|
58.8 MB
|
|
|
005 Tensor Operations 2.en.srt
|
SRT
|
8.3 KB
|
|
|
5
|
|
455.3 KB
|
|
|
005 Tensor Operations 2.mp4
|
MP4
|
29.8 MB
|
|
|
6
|
|
217.8 KB
|
|
|
006 Data Type Operators and Methods.en.srt
|
SRT
|
9.3 KB
|
|
|
006 Data Type Operators and Methods.mp4
|
MP4
|
40.5 MB
|
|
|
006 Indexing and Slicing.en.srt
|
SRT
|
9 KB
|
|
|
006 Indexing and Slicing.mp4
|
MP4
|
40.4 MB
|
|
|
006 Keras API.en.srt
|
SRT
|
8.3 KB
|
|
|
006 Keras API.mp4
|
MP4
|
23.3 MB
|
|
|
006 Missing Data and Data Munging Part I.en.srt
|
SRT
|
22.9 KB
|
|
|
006 Missing Data and Data Munging Part I.mp4
|
MP4
|
79.3 MB
|
|
|
006 Multi-Plots in Seaborn.en.srt
|
SRT
|
11.1 KB
|
|
|
006 Multi-Plots in Seaborn.mp4
|
MP4
|
40.9 MB
|
|
|
006 Plot Customization.en.srt
|
SRT
|
6.9 KB
|
|
|
006 Plot Customization.mp4
|
MP4
|
25.8 MB
|
|
|
006 Workflow of Machine Learning.en.srt
|
SRT
|
11.1 KB
|
|
|
006 Workflow of Machine Learning.mp4
|
MP4
|
31.7 MB
|
|
|
007 Grid, Spines, Ticks.en.srt
|
SRT
|
8.5 KB
|
|
|
007 Optimizers.en.srt
|
SRT
|
12.4 KB
|
|
|
7
|
|
57.1 KB
|
|
|
007 Grid, Spines, Ticks.mp4
|
MP4
|
22.4 MB
|
|
|
007 Machine Learning Methods.en.srt
|
SRT
|
16.6 KB
|
|
|
007 Machine Learning Methods.mp4
|
MP4
|
45.5 MB
|
|
|
007 Missing Data and Data Munging Part II.en.srt
|
SRT
|
11.2 KB
|
|
|
007 Missing Data and Data Munging Part II.mp4
|
MP4
|
40.8 MB
|
|
|
007 Modules in Python.en.srt
|
SRT
|
5.5 KB
|
|
|
007 Modules in Python.mp4
|
MP4
|
21.1 MB
|
|
|
007 Numpy Exercises.en.srt
|
SRT
|
15.4 KB
|
|
|
007 Numpy Exercises.mp4
|
MP4
|
74.2 MB
|
|
|
007 Optimizers.mp4
|
MP4
|
42.3 MB
|
|
|
007 Regression Plots and Squarify.en.srt
|
SRT
|
16.1 KB
|
|
|
007 Regression Plots and Squarify.mp4
|
MP4
|
56.5 MB
|
|
|
008 Basic Plots in Matplotlib I.en.srt
|
SRT
|
31.5 KB
|
|
|
008 Basic Plots in Matplotlib I.mp4
|
MP4
|
104.4 MB
|
|
|
8
|
|
693.9 KB
|
|
|
008 Dealing with Missing Data.en.srt
|
SRT
|
16.3 KB
|
|
|
008 Dealing with Missing Data.mp4
|
MP4
|
69.2 MB
|
|
|
008 Functions in Python.en.srt
|
SRT
|
9.3 KB
|
|
|
008 Functions in Python.mp4
|
MP4
|
26.1 MB
|
|
|
008 Supervised Machine Learning Methods - 1.en.srt
|
SRT
|
10.8 KB
|
|
|
008 Supervised Machine Learning Methods - 1.mp4
|
MP4
|
30.9 MB
|
|
|
008 Using Numpy in Linear Algebra.en.srt
|
SRT
|
31.9 KB
|
|
|
008 Using Numpy in Linear Algebra.mp4
|
MP4
|
112.2 MB
|
|
|
008 Using Numpy in Linear Algebra.mp4.vtx
|
VTX
|
442.5 KB
|
|
|
008 What is TensorFlow.en.srt
|
SRT
|
20.8 KB
|
|
|
008 What is TensorFlow.mp4
|
MP4
|
62.6 MB
|
|
|
009 Basic Plots in Matplotlib II.en.srt
|
SRT
|
16.2 KB
|
|
|
009 Basic Plots in Matplotlib II.mp4
|
MP4
|
51.5 MB
|
|
|
9
|
|
855 KB
|
|
|
009 Combining Data Frames Part – I.en.srt
|
SRT
|
18 KB
|
|
|
009 Combining Data Frames Part – I.mp4
|
MP4
|
103.6 MB
|
|
|
009 Exercise Analyse.en.srt
|
SRT
|
2.3 KB
|
|
|
009 Exercise Analyse.mp4
|
MP4
|
5.7 MB
|
|
|
009 NumExpr Guide.en.srt
|
SRT
|
8 KB
|
|
|
009 NumExpr Guide.mp4
|
MP4
|
42.2 MB
|
|
|
009 Supervised Machine Learning Methods - 2.en.srt
|
SRT
|
15.8 KB
|
|
|
009 Supervised Machine Learning Methods - 2.mp4
|
MP4
|
55.4 MB
|
|
|
010 Combining Data Frames Part – II.en.srt
|
SRT
|
18.1 KB
|
|
|
010 Combining Data Frames Part – II.mp4
|
MP4
|
84.2 MB
|
|
|
010 Exercise Solution.en.srt
|
SRT
|
6.6 KB
|
|
|
010 Exercise Solution.mp4
|
MP4
|
47.7 MB
|
|
|
010 Supervised Machine Learning Methods - 3.en.srt
|
SRT
|
16.4 KB
|
|
|
010 Supervised Machine Learning Methods - 3.mp4
|
MP4
|
56.1 MB
|
|
|
011 Supervised Machine Learning Methods - 4.en.srt
|
SRT
|
19.5 KB
|
|
|
011 Supervised Machine Learning Methods - 4.mp4
|
MP4
|
70.3 MB
|
|
|
011 Work with Dataset Files.en.srt
|
SRT
|
12.1 KB
|
|
|
011 Work with Dataset Files.mp4
|
MP4
|
70.7 MB
|
|
|
012 Unsupervised Machine Learning Methods.en.srt
|
SRT
|
27.6 KB
|
|
|
012 Unsupervised Machine Learning Methods.mp4
|
MP4
|
87.9 MB
|
|
|
013 Gathering data.en.srt
|
SRT
|
5.9 KB
|
|
|
013 Gathering data.mp4
|
MP4
|
17.6 MB
|
|
|
014 Data pre-processing.en.srt
|
SRT
|
6.5 KB
|
|
|
014 Data pre-processing.mp4
|
MP4
|
26 MB
|
|
|
015 Choosing the right algorithm and model.en.srt
|
SRT
|
9.2 KB
|
|
|
015 Choosing the right algorithm and model.mp4
|
MP4
|
149 MB
|
|
|
016 Training and testing the model.en.srt
|
SRT
|
6.5 KB
|
|
|
016 Training and testing the model.mp4
|
MP4
|
83.9 MB
|
|
|
017 Evaluation.en.srt
|
SRT
|
7.7 KB
|
|
|
017 Evaluation.mp4
|
MP4
|
24.4 MB
|
|
|
TutsNode.com.txt
|
TXT
|
102.4 B
|
|
|
[TGx]Downloaded from torrentgalaxy.to .txt
|
TXT
|
614.4 B
|
|
|
10
|
|
116 KB
|
|
|
11
|
|
464.8 KB
|
|
|
12
|
|
673.4 KB
|
|
|
13
|
|
252.4 KB
|
|
|
14
|
|
529.4 KB
|
|
|
15
|
|
667.3 KB
|
|
|
16
|
|
493.6 KB
|
|
|
17
|
|
742.8 KB
|
|
|
18
|
|
836.2 KB
|
|
|
19
|
|
582.2 KB
|
|
|
20
|
|
758.5 KB
|
|
|
21
|
|
274.2 KB
|
|
|
22
|
|
710.2 KB
|
|
|
23
|
|
788.8 KB
|
|
|
24
|
|
668.7 KB
|
|
|
25
|
|
349 KB
|
|
|
26
|
|
398.4 KB
|
|
|
27
|
|
905.7 KB
|
|
|
28
|
|
963.3 KB
|
|
|
29
|
|
185.4 KB
|
|
|
30
|
|
26.4 KB
|
|
|
31
|
|
508.6 KB
|
|
|
32
|
|
956.1 KB
|
|
|
33
|
|
654.5 KB
|
|
|
34
|
|
414.8 KB
|
|
|
35
|
|
493.4 KB
|
|
|
36
|
|
700.4 KB
|
|
|
37
|
|
153.7 KB
|
|
|
38
|
|
207.7 KB
|
|
|
39
|
|
917 KB
|
|
|
40
|
|
970.2 KB
|
|
|
41
|
|
91.7 KB
|
|
|
42
|
|
197.2 KB
|
|
|
43
|
|
315.4 KB
|
|
|
44
|
|
462 KB
|
|
|
45
|
|
589.1 KB
|
|
|
46
|
|
694.6 KB
|
|
|
47
|
|
737 KB
|
|
|
48
|
|
826 KB
|
|
|
49
|
|
946.2 KB
|
|
|
50
|
|
59.5 KB
|
|
|
51
|
|
106.2 KB
|
|
|
52
|
|
212.7 KB
|
|
|
53
|
|
553.8 KB
|
|
|
54
|
|
628.5 KB
|
|
|
55
|
|
825.6 KB
|
|
|
56
|
|
467.3 KB
|
|
|
57
|
|
615 KB
|
|
|
58
|
|
103.1 KB
|
|
|
59
|
|
374.4 KB
|
|
|
60
|
|
111.8 KB
|
|
|
61
|
|
378.6 KB
|
|
|
62
|
|
806.9 KB
|
|
|
63
|
|
338.4 KB
|
|
|
64
|
|
56.5 KB
|
|
|
65
|
|
230.2 KB
|
|
|
66
|
|
392.4 KB
|
|
|
67
|
|
270.8 KB
|
|
|
68
|
|
409.6 KB
|
|
|
69
|
|
476.7 KB
|
|
|
70
|
|
959.6 KB
|
|
|
71
|
|
32.9 KB
|
|
|
72
|
|
252.8 KB
|
|
|
73
|
|
640.5 KB
|
|
|
74
|
|
642.5 KB
|
|
|
75
|
|
148.9 KB
|
|
|
76
|
|
367.5 KB
|
|
|
77
|
|
715.4 KB
|
|
|
79
|
|
621.1 KB
|
|
|
80
|
|
693.6 KB
|
|
|
81
|
|
966.5 KB
|
|
|
82
|
|
477.2 KB
|
|
|
83
|
|
127.8 KB
|
|
|
84
|
|
399.9 KB
|
|
|
85
|
|
434.4 KB
|
|
|
86
|
|
633.3 KB
|
|
|
87
|
|
787.7 KB
|
|
|
88
|
|
499.5 KB
|
|
|
89
|
|
364.6 KB
|
|
|
90
|
|
112.4 KB
|