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Lead Kwanghee Choi
Team LearningMachine
Microsoft Student Partners
Lead Kwanghee Choi
Team LearningMachine
Microsoft Student Partners
Copyright
Coursera | Machine Learning
by Andrew Ng
Copyright
Coursera | Machine Learning
by Andrew Ng
Copyright
Coursera | Machine Learning
by Andrew Ng
Copyright
Coursera | Machine Learning
by Andrew Ng
Copyright
Coursera | Machine Learning
by Andrew Ng
Copyright
Coursera | Machine Learning
by Andrew Ng
Copyright
Coursera | Machine Learning
by Andrew Ng
Copyright
Coursera | Machine Learning
by Andrew Ng
Copyright
Coursera | Machine Learning
by Andrew Ng
Copyright
Coursera | Machine Learning
by Andrew Ng
Microsoft CNTK
https://cntk.ai
Microsoft CNTK
https://cntk.ai
Microsoft CNTK
https://cntk.ai
Microsoft CNTK
https://cntk.ai
Microsoft CNTK
https://cntk.ai
Microsoft CNTK
https://cntk.ai
Microsoft CNTK
https://cntk.ai
Microsoft CNTK
https://cntk.ai
Microsoft CNTK
https://cntk.ai
Sunghun Kim (HKUST)
https://hunkim.github.io/ml/
Sunghun Kim (HKUST)
https://hunkim.github.io/ml/
Sunghun Kim (HKUST)
https://hunkim.github.io/ml/
Lead Kwanghee Choi
Team LearningMachine
Microsoft Student Partners
Lead Kwanghee Choi
Team LearningMachine
Microsoft Student Partners
Lead Kwanghee Choi
Team LearningMachine
Microsoft Student Partners
Lead Kwanghee Choi
Team LearningMachine
Microsoft Student Partners
Collaboration with Sogang Univ. Release
Promotions & Venue supported
Collaboration with Sogang Univ. Release
Promotions & Venue supported
Collaboration with Sogang Univ. Release
Promotions & Venue supported
Collaboration with Sogang Univ. Release
Promotions & Venue supported
Phase1
Theory
Lecture
• Definition of ML
• Issues in ML
• ML Applications
- Regression
- Binary Classification
- Multi-label Classification
• ML Algorithms
- Linear & Logistic Regression
- Activation Function: Sigmoid
- Softmax Classifier
Phase2
Theory
Lecture
• Real-world Issues in ML
- Overfitting
- Regularization
- Evaluation
• Rise and Fall of AI: The AI Winter
- Perceptrons
- Back Propagation
- Vanishing Gradients
- Activation Function: ReLU
- Restricted Boltzmann Machine
• Recent Breakthroughs
CNTK
in practice
• Environment Setup
• Logistic Regression
• Softmax Classifier
• MNIST Dataset
CNTK
in practice
• MNIST with Deep NN
- Train, Test & Evaluation
- Stochastic Gradient Descent
Homework • MNIST Multilayer Softmax Classifier Hackathon
• Dataset Preparation
• Image Preprocessing
• Binary Image Classification
Curriculum
Before & After AI Winter
Phase1
Theory
Lecture
• Definition of ML
• Issues in ML
• ML Applications
- Regression
- Binary Classification
- Multi-label Classification
• ML Algorithms
- Linear & Logistic Regression
- Activation Function: Sigmoid
- Softmax Classifier
Phase2
Theory
Lecture
• Real-world Issues in ML
- Overfitting
- Regularization
- Evaluation
• Rise and Fall of AI: The AI Winter
- Perceptrons
- Back Propagation
- Vanishing Gradients
- Activation Function: ReLU
- Restricted Boltzmann Machine
• Recent Breakthroughs
CNTK
in practice
• Environment Setup
• Logistic Regression
• Softmax Classifier
• MNIST Dataset
CNTK
in practice
• MNIST with Deep NN
- Train, Test & Evaluation
- Stochastic Gradient Descent
Homework • MNIST Multilayer Softmax Classifier Hackathon
• Dataset Preparation
• Image Preprocessing
• Binary Image Classification
Curriculum
Before & After AI Winter
Phase1
Theory
Lecture
• Definition of ML
• Issues in ML
• ML Applications
- Regression
- Binary Classification
- Multi-label Classification
• ML Algorithms
- Linear & Logistic Regression
- Activation Function: Sigmoid
- Softmax Classifier
Phase2
Theory
Lecture
• Real-world Issues in ML
- Overfitting
- Regularization
- Evaluation
• Rise and Fall of AI: The AI Winter
- Perceptrons
- Back Propagation
- Vanishing Gradients
- Activation Function: ReLU
- Restricted Boltzmann Machine
• Recent Breakthroughs
CNTK
in practice
• Environment Setup
• Logistic Regression
• Softmax Classifier
• MNIST Dataset
CNTK
in practice
• MNIST with Deep NN
- Train, Test & Evaluation
- Stochastic Gradient Descent
Homework • MNIST Multilayer Softmax Classifier Hackathon
• Dataset Preparation
• Image Preprocessing
• Binary Image Classification
Curriculum
Before & After AI Winter
Phase1
Theory
Lecture
• Definition of ML
• Issues in ML
• ML Applications
- Regression
- Binary Classification
- Multi-label Classification
• ML Algorithms
- Linear & Logistic Regression
- Activation Function: Sigmoid
- Softmax Classifier
Phase2
Theory
Lecture
• Real-world Issues in ML
- Overfitting
- Regularization
- Evaluation
• Rise and Fall of AI: The AI Winter
- Perceptrons
- Back Propagation
- Vanishing Gradients
- Activation Function: ReLU
- Restricted Boltzmann Machine
• Recent Breakthroughs
CNTK
in practice
• Environment Setup
• Logistic Regression
• Softmax Classifier
• MNIST Dataset
CNTK
in practice
• MNIST with Deep NN
- Train, Test & Evaluation
- Stochastic Gradient Descent
Homework • MNIST Multilayer Softmax Classifier Hackathon
• Dataset Preparation
• Image Preprocessing
• Binary Image Classification
Curriculum
Before & After AI Winter
Phase1
Theory
Lecture
• Definition of ML
• Issues in ML
• ML Applications
- Regression
- Binary Classification
- Multi-label Classification
• ML Algorithms
- Linear & Logistic Regression
- Activation Function: Sigmoid
- Softmax Classifier
Phase2
Theory
Lecture
• Real-world Issues in ML
- Overfitting
- Regularization
- Evaluation
• Rise and Fall of AI: The AI Winter
- Perceptrons
- Back Propagation
- Vanishing Gradients
- Activation Function: ReLU
- Restricted Boltzmann Machine
• Recent Breakthroughs
CNTK
in practice
• Environment Setup
• Logistic Regression
• Softmax Classifier
• MNIST Dataset
CNTK
in practice
• MNIST with Deep NN
- Train, Test & Evaluation
- Stochastic Gradient Descent
Homework • MNIST Multilayer Softmax Classifier Hackathon
• Dataset Preparation
• Image Preprocessing
• Binary Image Classification
Curriculum
Before & After AI Winter
Phase1
Theory
Lecture
• Definition of ML
• Issues in ML
• ML Applications
- Regression
- Binary Classification
- Multi-label Classification
• ML Algorithms
- Linear & Logistic Regression
- Activation Function: Sigmoid
- Softmax Classifier
Phase2
Theory
Lecture
• Real-world Issues in ML
- Overfitting
- Regularization
- Evaluation
• Rise and Fall of AI: The AI Winter
- Perceptrons
- Back Propagation
- Vanishing Gradients
- Activation Function: ReLU
- Restricted Boltzmann Machine
• Recent Breakthroughs
CNTK
in practice
• Environment Setup
• Logistic Regression
• Softmax Classifier
• MNIST Dataset
CNTK
in practice
• MNIST with Deep NN
- Train, Test & Evaluation
- Stochastic Gradient Descent
Homework • MNIST Multilayer Softmax Classifier Hackathon
• Dataset Preparation
• Image Preprocessing
• Binary Image Classification
Curriculum
Before & After AI Winter
Theory Lectures
Before & After AI Winter
Theory Lectures
Before & After AI Winter
CNTK in practice
Before & After AI Winter
CNTK in practice
Before & After AI Winter
Phase1
Theory
Lecture
• Definition of ML
• Issues in ML
• ML Applications
- Regression
- Binary Classification
- Multi-label Classification
• ML Algorithms
- Linear & Logistic Regression
- Activation Function: Sigmoid
- Softmax Classifier
Phase2
Theory
Lecture
• Real-world Issues in ML
- Overfitting
- Regularization
- Evaluation
• Rise and Fall of AI: The AI Winter
- Perceptrons
- Back Propagation
- Vanishing Gradients
- Activation Function: ReLU
- Restricted Boltzmann Machine
• Recent Breakthroughs
CNTK
in practice
• Environment Setup
• Logistic Regression
• Softmax Classifier
• MNIST Dataset
CNTK
in practice
• MNIST with Deep NN
- Train, Test & Evaluation
- Stochastic Gradient Descent
Homework • MNIST Multilayer Softmax Classifier Hackathon
• Dataset Preparation
• Image Preprocessing
• Binary Image Classification
Curriculum
Before & After AI Winter
Phase1
Theory
Lecture
• Definition of ML
• Issues in ML
• ML Applications
- Regression
- Binary Classification
- Multi-label Classification
• ML Algorithms
- Linear & Logistic Regression
- Activation Function: Sigmoid
- Softmax Classifier
Phase2
Theory
Lecture
• Real-world Issues in ML
- Overfitting
- Regularization
- Evaluation
• Rise and Fall of AI: The AI Winter
- Perceptrons
- Back Propagation
- Vanishing Gradients
- Activation Function: ReLU
- Restricted Boltzmann Machine
• Recent Breakthroughs
CNTK
in practice
• Environment Setup
• Logistic Regression
• Softmax Classifier
• MNIST Dataset
CNTK
in practice
• MNIST with Deep NN
- Train, Test & Evaluation
- Stochastic Gradient Descent
Homework • MNIST Multilayer Softmax Classifier Hackathon
• Dataset Preparation
• Image Preprocessing
• Binary Image Classification
Curriculum
Before & After AI Winter
Phase1
Theory
Lecture
• Definition of ML
• Issues in ML
• ML Applications
- Regression
- Binary Classification
- Multi-label Classification
• ML Algorithms
- Linear & Logistic Regression
- Activation Function: Sigmoid
- Softmax Classifier
Phase2
Theory
Lecture
• Real-world Issues in ML
- Overfitting
- Regularization
- Evaluation
• Rise and Fall of AI: The AI Winter
- Perceptrons
- Back Propagation
- Vanishing Gradients
- Activation Function: ReLU
- Restricted Boltzmann Machine
• Recent Breakthroughs
CNTK
in practice
• Environment Setup
• Logistic Regression
• Softmax Classifier
• MNIST Dataset
CNTK
in practice
• MNIST with Deep NN
- Train, Test & Evaluation
- Stochastic Gradient Descent
Homework • MNIST Multilayer Softmax Classifier Hackathon
• Dataset Preparation
• Image Preprocessing
• Binary Image Classification
Curriculum
Before & After AI Winter
Phase1
Theory
Lecture
• Definition of ML
• Issues in ML
• ML Applications
- Regression
- Binary Classification
- Multi-label Classification
• ML Algorithms
- Linear & Logistic Regression
- Activation Function: Sigmoid
- Softmax Classifier
Phase2
Theory
Lecture
• Real-world Issues in ML
- Overfitting
- Regularization
- Evaluation
• Rise and Fall of AI: The AI Winter
- Perceptrons
- Back Propagation
- Vanishing Gradients
- Activation Function: ReLU
- Restricted Boltzmann Machine
• Recent Breakthroughs
CNTK
in practice
• Environment Setup
• Logistic Regression
• Softmax Classifier
• MNIST Dataset
CNTK
in practice
• MNIST with Deep NN
- Train, Test & Evaluation
- Stochastic Gradient Descent
Homework • MNIST Multilayer Softmax Classifier Hackathon
• Dataset Preparation
• Image Preprocessing
• Binary Image Classification
Curriculum
Before & After AI Winter
Phase1
Theory
Lecture
• Definition of ML
• Issues in ML
• ML Applications
- Regression
- Binary Classification
- Multi-label Classification
• ML Algorithms
- Linear & Logistic Regression
- Activation Function: Sigmoid
- Softmax Classifier
Phase2
Theory
Lecture
• Real-world Issues in ML
- Overfitting
- Regularization
- Evaluation
• Rise and Fall of AI: The AI Winter
- Perceptrons
- Back Propagation
- Vanishing Gradients
- Activation Function: ReLU
- Restricted Boltzmann Machine
• Recent Breakthroughs
CNTK
in practice
• Environment Setup
• Logistic Regression
• Softmax Classifier
• MNIST Dataset
CNTK
in practice
• MNIST with Deep NN
- Train, Test & Evaluation
- Stochastic Gradient Descent
Homework • MNIST Multilayer Softmax Classifier Hackathon
• Dataset Preparation
• Image Preprocessing
• Binary Image Classification
Curriculum
Before & After AI Winter
The AI Winter Hackathon: PotatoHunter
Normal Potato v. Sweet Potato
The AI Winter Hackathon: PotatoHunter
Normal Potato v. Sweet Potato
The AI Winter Hackathon: PotatoHunter
Normal Potato v. Sweet Potato
The AI Winter Hackathon: PotatoHunter
Normal Potato v. Sweet Potato
The AI Winter Hackathon: PotatoHunter
Normal Potato v. Sweet Potato
The AI Winter Hackathon: PotatoHunter
Normal Potato v. Sweet Potato
The AI Winter Hackathon: PotatoHunter
@ Sinchon Dreamtop Cafe
The AI Winter Hackathon: PotatoHunter
@ Sinchon Dreamtop Cafe
The AI Winter Hackathon: PotatoHunter
@ Sinchon Dreamtop Cafe
The AI Winter Hackathon: PotatoHunter
Results
0%
5%
10%
15%
20%
25%
30%
35%
40%
45%
50%
Given Example 1st Place Winner
Train Error (200 Images) Test Error (20 Images)
The AI Winter Hackathon: PotatoHunter
Results
0%
5%
10%
15%
20%
25%
30%
35%
40%
45%
50%
Given Example 1st Place Winner
Train Error (200 Images) Test Error (20 Images)
The AI Winter Hackathon: PotatoHunter
Results
0%
5%
10%
15%
20%
25%
30%
35%
40%
45%
50%
Given Example 1st Place Winner
Train Error (200 Images) Test Error (20 Images)
The AI Winter Hackathon: PotatoHunter
Results
0%
5%
10%
15%
20%
25%
30%
35%
40%
45%
50%
Given Example 1st Place Winner
Train Error (200 Images) Test Error (20 Images)
The AI Winter Hackathon: PotatoHunter
Results
0%
5%
10%
15%
20%
25%
30%
35%
40%
45%
50%
Given Example 1st Place Winner
Train Error (200 Images) Test Error (20 Images)
The AI Winter Hackathon: PotatoHunter
Results
0%
5%
10%
15%
20%
25%
30%
35%
40%
45%
50%
Given Example 1st Place Winner
Train Error (200 Images) Test Error (20 Images)
ML Curriculum Before & After AI Winter
ML Curriculum Before & After AI Winter

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ML Curriculum Before & After AI Winter

  • 1. Lead Kwanghee Choi Team LearningMachine Microsoft Student Partners
  • 2. Lead Kwanghee Choi Team LearningMachine Microsoft Student Partners
  • 3. Copyright Coursera | Machine Learning by Andrew Ng
  • 4. Copyright Coursera | Machine Learning by Andrew Ng
  • 5. Copyright Coursera | Machine Learning by Andrew Ng
  • 6. Copyright Coursera | Machine Learning by Andrew Ng
  • 7. Copyright Coursera | Machine Learning by Andrew Ng
  • 8. Copyright Coursera | Machine Learning by Andrew Ng
  • 9. Copyright Coursera | Machine Learning by Andrew Ng
  • 10. Copyright Coursera | Machine Learning by Andrew Ng
  • 11. Copyright Coursera | Machine Learning by Andrew Ng
  • 12. Copyright Coursera | Machine Learning by Andrew Ng
  • 22.
  • 23.
  • 24.
  • 25.
  • 26.
  • 27.
  • 31. Lead Kwanghee Choi Team LearningMachine Microsoft Student Partners
  • 32. Lead Kwanghee Choi Team LearningMachine Microsoft Student Partners
  • 33. Lead Kwanghee Choi Team LearningMachine Microsoft Student Partners
  • 34. Lead Kwanghee Choi Team LearningMachine Microsoft Student Partners
  • 35. Collaboration with Sogang Univ. Release Promotions & Venue supported
  • 36. Collaboration with Sogang Univ. Release Promotions & Venue supported
  • 37. Collaboration with Sogang Univ. Release Promotions & Venue supported
  • 38. Collaboration with Sogang Univ. Release Promotions & Venue supported
  • 39. Phase1 Theory Lecture • Definition of ML • Issues in ML • ML Applications - Regression - Binary Classification - Multi-label Classification • ML Algorithms - Linear & Logistic Regression - Activation Function: Sigmoid - Softmax Classifier Phase2 Theory Lecture • Real-world Issues in ML - Overfitting - Regularization - Evaluation • Rise and Fall of AI: The AI Winter - Perceptrons - Back Propagation - Vanishing Gradients - Activation Function: ReLU - Restricted Boltzmann Machine • Recent Breakthroughs CNTK in practice • Environment Setup • Logistic Regression • Softmax Classifier • MNIST Dataset CNTK in practice • MNIST with Deep NN - Train, Test & Evaluation - Stochastic Gradient Descent Homework • MNIST Multilayer Softmax Classifier Hackathon • Dataset Preparation • Image Preprocessing • Binary Image Classification Curriculum Before & After AI Winter
  • 40. Phase1 Theory Lecture • Definition of ML • Issues in ML • ML Applications - Regression - Binary Classification - Multi-label Classification • ML Algorithms - Linear & Logistic Regression - Activation Function: Sigmoid - Softmax Classifier Phase2 Theory Lecture • Real-world Issues in ML - Overfitting - Regularization - Evaluation • Rise and Fall of AI: The AI Winter - Perceptrons - Back Propagation - Vanishing Gradients - Activation Function: ReLU - Restricted Boltzmann Machine • Recent Breakthroughs CNTK in practice • Environment Setup • Logistic Regression • Softmax Classifier • MNIST Dataset CNTK in practice • MNIST with Deep NN - Train, Test & Evaluation - Stochastic Gradient Descent Homework • MNIST Multilayer Softmax Classifier Hackathon • Dataset Preparation • Image Preprocessing • Binary Image Classification Curriculum Before & After AI Winter
  • 41. Phase1 Theory Lecture • Definition of ML • Issues in ML • ML Applications - Regression - Binary Classification - Multi-label Classification • ML Algorithms - Linear & Logistic Regression - Activation Function: Sigmoid - Softmax Classifier Phase2 Theory Lecture • Real-world Issues in ML - Overfitting - Regularization - Evaluation • Rise and Fall of AI: The AI Winter - Perceptrons - Back Propagation - Vanishing Gradients - Activation Function: ReLU - Restricted Boltzmann Machine • Recent Breakthroughs CNTK in practice • Environment Setup • Logistic Regression • Softmax Classifier • MNIST Dataset CNTK in practice • MNIST with Deep NN - Train, Test & Evaluation - Stochastic Gradient Descent Homework • MNIST Multilayer Softmax Classifier Hackathon • Dataset Preparation • Image Preprocessing • Binary Image Classification Curriculum Before & After AI Winter
  • 42. Phase1 Theory Lecture • Definition of ML • Issues in ML • ML Applications - Regression - Binary Classification - Multi-label Classification • ML Algorithms - Linear & Logistic Regression - Activation Function: Sigmoid - Softmax Classifier Phase2 Theory Lecture • Real-world Issues in ML - Overfitting - Regularization - Evaluation • Rise and Fall of AI: The AI Winter - Perceptrons - Back Propagation - Vanishing Gradients - Activation Function: ReLU - Restricted Boltzmann Machine • Recent Breakthroughs CNTK in practice • Environment Setup • Logistic Regression • Softmax Classifier • MNIST Dataset CNTK in practice • MNIST with Deep NN - Train, Test & Evaluation - Stochastic Gradient Descent Homework • MNIST Multilayer Softmax Classifier Hackathon • Dataset Preparation • Image Preprocessing • Binary Image Classification Curriculum Before & After AI Winter
  • 43. Phase1 Theory Lecture • Definition of ML • Issues in ML • ML Applications - Regression - Binary Classification - Multi-label Classification • ML Algorithms - Linear & Logistic Regression - Activation Function: Sigmoid - Softmax Classifier Phase2 Theory Lecture • Real-world Issues in ML - Overfitting - Regularization - Evaluation • Rise and Fall of AI: The AI Winter - Perceptrons - Back Propagation - Vanishing Gradients - Activation Function: ReLU - Restricted Boltzmann Machine • Recent Breakthroughs CNTK in practice • Environment Setup • Logistic Regression • Softmax Classifier • MNIST Dataset CNTK in practice • MNIST with Deep NN - Train, Test & Evaluation - Stochastic Gradient Descent Homework • MNIST Multilayer Softmax Classifier Hackathon • Dataset Preparation • Image Preprocessing • Binary Image Classification Curriculum Before & After AI Winter
  • 44. Phase1 Theory Lecture • Definition of ML • Issues in ML • ML Applications - Regression - Binary Classification - Multi-label Classification • ML Algorithms - Linear & Logistic Regression - Activation Function: Sigmoid - Softmax Classifier Phase2 Theory Lecture • Real-world Issues in ML - Overfitting - Regularization - Evaluation • Rise and Fall of AI: The AI Winter - Perceptrons - Back Propagation - Vanishing Gradients - Activation Function: ReLU - Restricted Boltzmann Machine • Recent Breakthroughs CNTK in practice • Environment Setup • Logistic Regression • Softmax Classifier • MNIST Dataset CNTK in practice • MNIST with Deep NN - Train, Test & Evaluation - Stochastic Gradient Descent Homework • MNIST Multilayer Softmax Classifier Hackathon • Dataset Preparation • Image Preprocessing • Binary Image Classification Curriculum Before & After AI Winter
  • 45. Theory Lectures Before & After AI Winter
  • 46. Theory Lectures Before & After AI Winter
  • 47. CNTK in practice Before & After AI Winter
  • 48. CNTK in practice Before & After AI Winter
  • 49. Phase1 Theory Lecture • Definition of ML • Issues in ML • ML Applications - Regression - Binary Classification - Multi-label Classification • ML Algorithms - Linear & Logistic Regression - Activation Function: Sigmoid - Softmax Classifier Phase2 Theory Lecture • Real-world Issues in ML - Overfitting - Regularization - Evaluation • Rise and Fall of AI: The AI Winter - Perceptrons - Back Propagation - Vanishing Gradients - Activation Function: ReLU - Restricted Boltzmann Machine • Recent Breakthroughs CNTK in practice • Environment Setup • Logistic Regression • Softmax Classifier • MNIST Dataset CNTK in practice • MNIST with Deep NN - Train, Test & Evaluation - Stochastic Gradient Descent Homework • MNIST Multilayer Softmax Classifier Hackathon • Dataset Preparation • Image Preprocessing • Binary Image Classification Curriculum Before & After AI Winter
  • 50. Phase1 Theory Lecture • Definition of ML • Issues in ML • ML Applications - Regression - Binary Classification - Multi-label Classification • ML Algorithms - Linear & Logistic Regression - Activation Function: Sigmoid - Softmax Classifier Phase2 Theory Lecture • Real-world Issues in ML - Overfitting - Regularization - Evaluation • Rise and Fall of AI: The AI Winter - Perceptrons - Back Propagation - Vanishing Gradients - Activation Function: ReLU - Restricted Boltzmann Machine • Recent Breakthroughs CNTK in practice • Environment Setup • Logistic Regression • Softmax Classifier • MNIST Dataset CNTK in practice • MNIST with Deep NN - Train, Test & Evaluation - Stochastic Gradient Descent Homework • MNIST Multilayer Softmax Classifier Hackathon • Dataset Preparation • Image Preprocessing • Binary Image Classification Curriculum Before & After AI Winter
  • 51. Phase1 Theory Lecture • Definition of ML • Issues in ML • ML Applications - Regression - Binary Classification - Multi-label Classification • ML Algorithms - Linear & Logistic Regression - Activation Function: Sigmoid - Softmax Classifier Phase2 Theory Lecture • Real-world Issues in ML - Overfitting - Regularization - Evaluation • Rise and Fall of AI: The AI Winter - Perceptrons - Back Propagation - Vanishing Gradients - Activation Function: ReLU - Restricted Boltzmann Machine • Recent Breakthroughs CNTK in practice • Environment Setup • Logistic Regression • Softmax Classifier • MNIST Dataset CNTK in practice • MNIST with Deep NN - Train, Test & Evaluation - Stochastic Gradient Descent Homework • MNIST Multilayer Softmax Classifier Hackathon • Dataset Preparation • Image Preprocessing • Binary Image Classification Curriculum Before & After AI Winter
  • 52. Phase1 Theory Lecture • Definition of ML • Issues in ML • ML Applications - Regression - Binary Classification - Multi-label Classification • ML Algorithms - Linear & Logistic Regression - Activation Function: Sigmoid - Softmax Classifier Phase2 Theory Lecture • Real-world Issues in ML - Overfitting - Regularization - Evaluation • Rise and Fall of AI: The AI Winter - Perceptrons - Back Propagation - Vanishing Gradients - Activation Function: ReLU - Restricted Boltzmann Machine • Recent Breakthroughs CNTK in practice • Environment Setup • Logistic Regression • Softmax Classifier • MNIST Dataset CNTK in practice • MNIST with Deep NN - Train, Test & Evaluation - Stochastic Gradient Descent Homework • MNIST Multilayer Softmax Classifier Hackathon • Dataset Preparation • Image Preprocessing • Binary Image Classification Curriculum Before & After AI Winter
  • 53. Phase1 Theory Lecture • Definition of ML • Issues in ML • ML Applications - Regression - Binary Classification - Multi-label Classification • ML Algorithms - Linear & Logistic Regression - Activation Function: Sigmoid - Softmax Classifier Phase2 Theory Lecture • Real-world Issues in ML - Overfitting - Regularization - Evaluation • Rise and Fall of AI: The AI Winter - Perceptrons - Back Propagation - Vanishing Gradients - Activation Function: ReLU - Restricted Boltzmann Machine • Recent Breakthroughs CNTK in practice • Environment Setup • Logistic Regression • Softmax Classifier • MNIST Dataset CNTK in practice • MNIST with Deep NN - Train, Test & Evaluation - Stochastic Gradient Descent Homework • MNIST Multilayer Softmax Classifier Hackathon • Dataset Preparation • Image Preprocessing • Binary Image Classification Curriculum Before & After AI Winter
  • 54. The AI Winter Hackathon: PotatoHunter Normal Potato v. Sweet Potato
  • 55. The AI Winter Hackathon: PotatoHunter Normal Potato v. Sweet Potato
  • 56. The AI Winter Hackathon: PotatoHunter Normal Potato v. Sweet Potato
  • 57. The AI Winter Hackathon: PotatoHunter Normal Potato v. Sweet Potato
  • 58. The AI Winter Hackathon: PotatoHunter Normal Potato v. Sweet Potato
  • 59. The AI Winter Hackathon: PotatoHunter Normal Potato v. Sweet Potato
  • 60. The AI Winter Hackathon: PotatoHunter @ Sinchon Dreamtop Cafe
  • 61. The AI Winter Hackathon: PotatoHunter @ Sinchon Dreamtop Cafe
  • 62. The AI Winter Hackathon: PotatoHunter @ Sinchon Dreamtop Cafe
  • 63. The AI Winter Hackathon: PotatoHunter Results 0% 5% 10% 15% 20% 25% 30% 35% 40% 45% 50% Given Example 1st Place Winner Train Error (200 Images) Test Error (20 Images)
  • 64. The AI Winter Hackathon: PotatoHunter Results 0% 5% 10% 15% 20% 25% 30% 35% 40% 45% 50% Given Example 1st Place Winner Train Error (200 Images) Test Error (20 Images)
  • 65. The AI Winter Hackathon: PotatoHunter Results 0% 5% 10% 15% 20% 25% 30% 35% 40% 45% 50% Given Example 1st Place Winner Train Error (200 Images) Test Error (20 Images)
  • 66. The AI Winter Hackathon: PotatoHunter Results 0% 5% 10% 15% 20% 25% 30% 35% 40% 45% 50% Given Example 1st Place Winner Train Error (200 Images) Test Error (20 Images)
  • 67. The AI Winter Hackathon: PotatoHunter Results 0% 5% 10% 15% 20% 25% 30% 35% 40% 45% 50% Given Example 1st Place Winner Train Error (200 Images) Test Error (20 Images)
  • 68. The AI Winter Hackathon: PotatoHunter Results 0% 5% 10% 15% 20% 25% 30% 35% 40% 45% 50% Given Example 1st Place Winner Train Error (200 Images) Test Error (20 Images)