Skip to content

Latest commit

 

History

History
51 lines (38 loc) · 5.33 KB

README.md

File metadata and controls

51 lines (38 loc) · 5.33 KB

Deep Learning Specialization on Coursera

This is my personal projects for the course. The course covers deep learning from begginer level to advanced. Highly recommend anyone wanting to break into AI.

Instructor: Andrew Ng, DeepLearning.ai

  1. Week1 - Introduction to deep learning
  2. Week2 - Neural Networks Basics
  3. Week3 - Shallow neural networks
  4. Week4 - Deep Neural Networks
  1. Week1 - Practical aspects of Deep Learning - Setting up your Machine Learning Application - Regularizing your neural network - Setting up your optimization problem
  2. Week2 - Optimization algorithms
  3. Week3 - Hyperparameter tuning, Batch Normalization and Programming Frameworks
  1. Week1 - Introduction to ML Strategy - Setting up your goal - Comparing to human-level performance
  2. Week2 - ML Strategy (2) - Error Analysis - Mismatched training and dev/test set - Learning from multiple tasks - End-to-end deep learning
  1. Week1 - Foundations of Convolutional Neural Networks
  2. Week2 - Deep convolutional models: case studies - Papers for read: ImageNet Classification with Deep Convolutional Neural Networks, Very Deep Convolutional Networks For Large-Scale Image Recognition
  3. Week3 - Object detection - Papers for read: You Only Look Once: Unified, Real-Time Object Detection, YOLO
  4. Week4 - Special applications: Face recognition & Neural style transfer - Papers for read: DeepFace, FaceNet

Course 5. Sequence Models

  1. Week1 - Recurrent Neural Networks
  2. Week2 - Natural Language Processing & Word Embeddings
  3. Week3 - Sequence models & Attention mechanism

*************************************************************************************************************************************