[ FreeCourseWeb ] Udemy - Finally GET Deep Learning

seeders: 0 leechers: 0
Added 4 years ago by freecoursewb in Other
Downloaded 2 times.
1337x.to
[ FreeCourseWeb ] Udemy - Finally GET Deep Learning

Torrent Contents Size: 2.3 GB

[ FreeCourseWeb ] Udemy - Finally GET Deep Learning
▼ show more 135 files
001 Introduction.en.srt
SRT
7 KB
001 Introduction.mp4
MP4
72 MB
001 Linear regression and MSE loss.en.srt
SRT
11.4 KB
001 Linear regression and MSE loss.mp4
MP4
18 MB
001 Setting up a coding environment using Anaconda and Jupyter Notebook in Vscode.en.srt
SRT
7.8 KB
001 Setting up a coding environment using Anaconda and Jupyter Notebook in Vscode.mp4
MP4
33.6 MB
001 The back propagation algorithm.en.srt
SRT
8.4 KB
001 The back propagation algorithm.mp4
MP4
14.4 MB
001 Vanishing gradient problem.en.srt
SRT
21.7 KB
001 Vanishing gradient problem.mp4
MP4
38.3 MB
002 Calculus detour.en.srt
SRT
18.4 KB
002 Calculus detour.mp4
MP4
37.1 MB
002 Numerical analysis - a.k.a. “trial-and-error”.en.srt
SRT
10.9 KB
002 Numerical analysis - a.k.a. “trial-and-error”.mp4
MP4
18.8 MB
002 Train an MNIST model from scratch in plain PyTorch I.en.srt
SRT
20.4 KB
002 Train an MNIST model from scratch in plain PyTorch I.mp4
MP4
96.2 MB
002 Vanishing gradient solutions I.en.srt
SRT
18 KB
002 Vanishing gradient solutions I.mp4
MP4
22.4 MB
002 What is Machine Learning exactly_.en.srt
SRT
8.3 KB
002 What is Machine Learning exactly_.mp4
MP4
12.4 MB
002 lecture1.pdf
PDF
351 KB
003 Calculus detour II.en.srt
SRT
10.5 KB
003 Calculus detour II.mp4
MP4
15.9 MB
003 Different types of machine learning_ supervised, unsupervised, and reinforcement.en.srt
SRT
17.8 KB
003 Different types of machine learning_ supervised, unsupervised, and reinforcement.mp4
MP4
25.9 MB
003 Network view.en.srt
SRT
17.8 KB
003 Network view.mp4
MP4
45.3 MB
003 Train an MNIST model from scratch in plain PyTorch II.en.srt
SRT
17.4 KB
003 Train an MNIST model from scratch in plain PyTorch II.mp4
MP4
96.3 MB
003 Vanishing gradient solutions II.en.srt
SRT
10.3 KB
003 Vanishing gradient solutions II.mp4
MP4
17.5 MB
003 lecture2.pdf
PDF
1.3 MB
004 Gradient descent.en.srt
SRT
24.5 KB
004 Gradient descent.mp4
MP4
101 MB
004 Perceptrons.en.srt
SRT
10.2 KB
004 Perceptrons.mp4
MP4
15.5 MB
004 Stochastic and mini-batch gradient descent.en.srt
SRT
22.7 KB
004 Stochastic and mini-batch gradient descent.mp4
MP4
39.6 MB
004 The big picture.en.srt
SRT
7.4 KB
004 The big picture.mp4
MP4
24.3 MB
004 Train an MNIST model from scratch in plain PyTorch III.en.srt
SRT
23.5 KB
004 Train an MNIST model from scratch in plain PyTorch III.mp4
MP4
102 MB
004 lecture2_2.pdf
PDF
88.9 KB
005 Calculus detour - partial derivatives and gradient descent.en.srt
SRT
11.7 KB
005 Calculus detour - partial derivatives and gradient descent.mp4
MP4
42.1 MB
005 Deep neural network as features and weights.en.srt
SRT
12 KB
005 Deep neural network as features and weights.mp4
MP4
32.7 MB
005 Other optimizers I.en.srt
SRT
13.7 KB
005 Other optimizers I.mp4
MP4
33.3 MB
005 The “Deep” in deep learning.en.srt
SRT
12 KB
005 The “Deep” in deep learning.mp4
MP4
25.1 MB
005 Train an MNIST model from scratch in plain PyTorch IV.en.srt
SRT
23 KB
005 Train an MNIST model from scratch in plain PyTorch IV.mp4
MP4
75.6 MB
005 lecture2_3.pdf
PDF
486.3 KB
006 Activation Function.en.srt
SRT
12 KB
006 Activation Function.mp4
MP4
17.5 MB
006 Calculus detour - the Chain Rule.en.srt
SRT
21 KB
006 Calculus detour - the Chain Rule.mp4
MP4
38.2 MB
006 Loss functions and training vs inference.en.srt
SRT
12.3 KB
006 Loss functions and training vs inference.mp4
MP4
35.8 MB
006 Other optimizers II.en.srt
SRT
7.8 KB
006 Other optimizers II.mp4
MP4
11.6 MB
006 Train an MNIST model using PyTorch's nn module I.en.srt
SRT
22.1 KB
006 Train an MNIST model using PyTorch's nn module I.mp4
MP4
84.9 MB
007 Calculus detour - the Chain Rule II.en.srt
SRT
22 KB
007 Calculus detour - the Chain Rule II.mp4
MP4
36.4 MB
007 Hyperparameter tuning strategies.en.srt
SRT
12.5 KB
007 Hyperparameter tuning strategies.mp4
MP4
27.8 MB
007 Overparameterization and overfitting.en.srt
SRT
10.9 KB
007 Overparameterization and overfitting.mp4
MP4
20 MB
007 Train an MNIST model using PyTorch's nn module II.en.srt
SRT
23.6 KB
007 Train an MNIST model using PyTorch's nn module II.mp4
MP4
102.1 MB
007 Why deep learning is unintuitive and how to get good at it.en.srt
SRT
10.6 KB
007 Why deep learning is unintuitive and how to get good at it.mp4
MP4
14.1 MB
007 lecture2_5.pdf
PDF
760.1 KB
008 Batch normalization.en.srt
SRT
14 KB
008 Batch normalization.mp4
MP4
43.9 MB
008 Computational graph I - forward pass.en.srt
SRT
9 KB
008 Computational graph I - forward pass.mp4
MP4
15.1 MB
008 How to make neural networks feel intuitive.en.srt
SRT
8.6 KB
008 How to make neural networks feel intuitive.mp4
MP4
18.3 MB
008 Linear Algebra detour.en.srt
SRT
19.7 KB
008 Linear Algebra detour.mp4
MP4
33.1 MB
008 Train an MNIST model using PyTorch Lightning I.en.srt
SRT
16.9 KB
008 Train an MNIST model using PyTorch Lightning I.mp4
MP4
83 MB
008 lecture2_6.pdf
PDF
1.5 MB
009 Computational graph II - backward pass.en.srt
SRT
14.1 KB
009 Computational graph II - backward pass.mp4
MP4
48.1 MB
009 Course overview.en.srt
SRT
10 KB
009 Course overview.mp4
MP4
13.8 MB
009 Overfitting I - problem and solution overview.en.srt
SRT
17.9 KB
009 Overfitting I - problem and solution overview.mp4
MP4
31.2 MB
009 Train an MNIST model using PyTorch Lightning II.en.srt
SRT
23.5 KB
009 Train an MNIST model using PyTorch Lightning II.mp4
MP4
118.4 MB
009 Vectorization (= parallelization).en.srt
SRT
14.3 KB
009 Vectorization (= parallelization).mp4
MP4
29.3 MB
009 lecture2_7.pdf
PDF
931.7 KB
010 Computational graph III - backward pass II.en.srt
SRT
15.1 KB
010 Computational graph III - backward pass II.mp4
MP4
63.5 MB
010 Next steps.en.srt
SRT
29.5 KB
010 Next steps.mp4
MP4
110.6 MB
010 Overfitting II - regularization and drop out.en.srt
SRT
15 KB
010 Overfitting II - regularization and drop out.mp4
MP4
25.4 MB
010 Scalability and emergent properties.en.srt
SRT
13.3 KB
010 Scalability and emergent properties.mp4
MP4
25.4 MB
010 lecture3.pdf
PDF
1.3 MB
011 Computational graph IV - backward pass III.en.srt
SRT
24.4 KB
011 Computational graph IV - backward pass III.mp4
MP4
82.7 MB
011 Recap of the forward pass and brief introduction to backward pass.en.srt
SRT
6.7 KB
011 Recap of the forward pass and brief introduction to backward pass.mp4
MP4
11.3 MB
011 Softmax activation.en.srt
SRT
13.4 KB
011 Softmax activation.mp4
MP4
28.8 MB
011 lecture4.pdf
PDF
751.9 KB
012 Forward and backward pass recap and wrap up.en.srt
SRT
13.6 KB
012 Forward and backward pass recap and wrap up.mp4
MP4
46 MB
012 Loss functions.en.srt
SRT
8.7 KB
012 Loss functions.mp4
MP4
11.6 MB
012 lecture5.pdf
PDF
863.8 KB
013 Cross entropy loss.en.srt
SRT
15.8 KB
013 Cross entropy loss.mp4
MP4
26 MB
013 lecture6.pdf
PDF
934.7 KB
014 lecture7.pdf
PDF
1.2 MB
015 lecture8.pdf
PDF
899.8 KB
016 lecture9.pdf
PDF
988.9 KB
017 lecture10.pdf
PDF
838.4 KB
019 lecture12.pdf
PDF
846.3 KB
020 lecture13.pdf
PDF
525.4 KB
022 lecture15.pdf
PDF
1.3 MB
023 lecture15_2.pdf
PDF
844.1 KB
024 lecture16.pdf
PDF
929.5 KB
025 lecture17.pdf
PDF
1.3 MB
026 lecture18.pdf
PDF
1.4 MB
027 lecture18_2.pdf
PDF
1.2 MB
028 lecture19.pdf
PDF
503.6 KB
029 lecture20.pdf
PDF
592.6 KB
030 lecture20_2.pdf
PDF
578.1 KB
031 lecture21.pdf
PDF
1.1 MB
032 lecture22.pdf
PDF
1.2 MB
033 lecture23.pdf
PDF
1.6 MB
034 lecture24.pdf
PDF
1.1 MB
035 lecture24_2.pdf
PDF
764.2 KB
036 lecture25.pdf
PDF
1.2 MB
037 lecture26.pdf
PDF
537.4 KB
038 lecture26_2.pdf
PDF
305.2 KB
039 lecture27.pdf
PDF
720.8 KB
040 lecture28.pdf
PDF
952.4 KB
041 lecture29.pdf
PDF
1.5 MB
042 lecture30.pdf
PDF
1.4 MB
Bonus Resources.txt
TXT
307.2 B
Get Bonus Downloads Here.url
URL
204.8 B

Description

Related Torrents

Location

Trackers

Tracker name
udp://tracker.torrent.eu.org:451/announce
udp://tracker.tiny-vps.com:6969/announce
http://tracker.foreverpirates.co:80/announce
udp://tracker.cyberia.is:6969/announce
udp://exodus.desync.com:6969/announce
udp://explodie.org:6969/announce
udp://tracker.opentrackr.org:1337/announce
udp://9.rarbg.to:2780/announce
udp://tracker.internetwarriors.net:1337/announce
udp://ipv4.tracker.harry.lu:80/announce
udp://open.stealth.si:80/announce
udp://9.rarbg.to:2900/announce
udp://9.rarbg.me:2720/announce
udp://opentor.org:2710/announce
udp://tracker.zer0day.to:1337/announce
udp://tracker.leechers-paradise.org:6969/announce
udp://coppersurfer.tk:6969/announce
Torrent hash: