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Deep Learning - Plain Version 2020 (QHD 1920)
Prof. Dr. Andreas Maier
65 episodes
9 months ago

 

Deep Learning (DL) has attracted much interest in a wide range of applications such as image recognition, speech recognition, and artificial intelligence, both from academia and industry. This lecture introduces the core elements of neural networks and deep learning, it comprises:
  • (multilayer) perceptron, backpropagation, fully connected neural networks

  • loss functions and optimization strategies

  • convolutional neural networks (CNNs)

  • activation functions

  • regularization strategies

  • common practices for training and evaluating neural networks

  • visualization of networks and results

  • common architectures, such as LeNet, Alexnet, VGG, GoogleNet

  • recurrent neural networks (RNN, TBPTT, LSTM, GRU)

  • deep reinforcement learning

  • unsupervised learning (autoencoder, RBM, DBM, VAE)

  • generative adversarial networks (GANs)

  • weakly supervised learning

  • applications of deep learning (segmentation, object detection, speech recognition, ...)

The accompanying exercises will provide a deeper understanding of the workings and architecture of neural networks.

 

Show more...
Education
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All content for Deep Learning - Plain Version 2020 (QHD 1920) is the property of Prof. Dr. Andreas Maier and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.

 

Deep Learning (DL) has attracted much interest in a wide range of applications such as image recognition, speech recognition, and artificial intelligence, both from academia and industry. This lecture introduces the core elements of neural networks and deep learning, it comprises:
  • (multilayer) perceptron, backpropagation, fully connected neural networks

  • loss functions and optimization strategies

  • convolutional neural networks (CNNs)

  • activation functions

  • regularization strategies

  • common practices for training and evaluating neural networks

  • visualization of networks and results

  • common architectures, such as LeNet, Alexnet, VGG, GoogleNet

  • recurrent neural networks (RNN, TBPTT, LSTM, GRU)

  • deep reinforcement learning

  • unsupervised learning (autoencoder, RBM, DBM, VAE)

  • generative adversarial networks (GANs)

  • weakly supervised learning

  • applications of deep learning (segmentation, object detection, speech recognition, ...)

The accompanying exercises will provide a deeper understanding of the workings and architecture of neural networks.

 

Show more...
Education
Episodes (20/65)
Deep Learning - Plain Version 2020 (QHD 1920)
63 - Deep Learning - Known Operator Learning Part 2 2020
5 years ago
10 minutes 58 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
60 - Deep Learning - Graph Deep Learning Part 1 2020
5 years ago
11 minutes 7 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
65 - Deep Learning - Known Operator Learning Part 4 2020
5 years ago
24 minutes 50 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
61 - Deep Learning - Graph Deep Learning Part 2 2020
5 years ago
10 minutes 45 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
64 - Deep Learning - Known Operator Learning Part 3 2020
5 years ago
16 minutes 52 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
62 - Deep Learning - Known Operator Learning Part 1 2020
5 years ago
7 minutes 57 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
57 - Deep Learning - Weakly and Self-Supervised Learning Part 2 2020
5 years ago
4 minutes 40 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
58 - Deep Learning - Weakly and Self-Supervised Learning Part 3 2020
5 years ago
15 minutes 55 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
56 - Deep Learning - Weakly and Self-Supervised Learning Part 1 2020
5 years ago
12 minutes 13 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
59 - Deep Learning - Weakly and Self-Supervised Learning Part 4 2020
5 years ago
15 minutes 17 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
54 - Deep Learning - Segmentation and Object Detection Part 4 2020
5 years ago
8 minutes 11 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
52 - Deep Learning - Segmentation and Object Detection Part 2 2020
5 years ago
14 minutes 24 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
53 - Deep Learning - Segmentation and Object Detection Part 3 2020
5 years ago
13 minutes 52 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
55 - Deep Learning - Segmentation and Object Detection Part 5 2020
5 years ago
7 minutes 13 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
51 - Deep Learning - Segmentation and Object Detection Part 1 2020
5 years ago
14 minutes 16 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
48 - Deep Learning - Unsupervised Learning Part 3 2020
5 years ago
11 minutes 26 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
46 - Deep Learning - Unsupervised Learning Part 1 2020
5 years ago
17 minutes 36 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
49 - Deep Learning - Unsupervised Learning Part 4 2020
5 years ago
9 minutes 5 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
47 - Deep Learning - Unsupervised Learning Part 2 2020
5 years ago
19 minutes 50 seconds

Deep Learning - Plain Version 2020 (QHD 1920)
50 - Deep Learning - Unsupervised Learning Part 5 2020
5 years ago
18 minutes 9 seconds

Deep Learning - Plain Version 2020 (QHD 1920)

 

Deep Learning (DL) has attracted much interest in a wide range of applications such as image recognition, speech recognition, and artificial intelligence, both from academia and industry. This lecture introduces the core elements of neural networks and deep learning, it comprises:
  • (multilayer) perceptron, backpropagation, fully connected neural networks

  • loss functions and optimization strategies

  • convolutional neural networks (CNNs)

  • activation functions

  • regularization strategies

  • common practices for training and evaluating neural networks

  • visualization of networks and results

  • common architectures, such as LeNet, Alexnet, VGG, GoogleNet

  • recurrent neural networks (RNN, TBPTT, LSTM, GRU)

  • deep reinforcement learning

  • unsupervised learning (autoencoder, RBM, DBM, VAE)

  • generative adversarial networks (GANs)

  • weakly supervised learning

  • applications of deep learning (segmentation, object detection, speech recognition, ...)

The accompanying exercises will provide a deeper understanding of the workings and architecture of neural networks.