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Course Outline

  • Limitations of traditional Machine Learning
  • Machine Learning and non-linear mappings
  • Neural Networks
  • Non-linear optimization techniques, including Stochastic and Mini-Batch Gradient Descent
  • Back Propagation algorithms
  • Deep Sparse Coding
  • Sparse Autoencoders (SAE)
  • Convolutional Neural Networks (CNNs)
  • Practical Successes: Descriptor Matching
  • Stereo-based Obstacle Detection
  • Obstacle Avoidance for Robotics
  • Pooling mechanisms and invariance
  • Visualization and Deconvolutional Networks
  • Recurrent Neural Networks (RNNs) and their optimization
  • Applications in Natural Language Processing (NLP)
  • Continued exploration of RNNs
  • Hessian-Free Optimization
  • Language analysis: word and sentence vectors, parsing, sentiment analysis, and more
  • Probabilistic Graphical Models
  • Hopfield Nets and Boltzmann Machines
  • Deep Belief Networks and Stacked Restricted Boltzmann Machines (RBMs)
  • Applications in NLP, as well as pose and activity recognition in videos
  • Recent Advances in the field
  • Large-Scale Learning
  • Neural Turing Machines

Requirements

A solid comprehension of foundational Machine Learning concepts is required. Additionally, candidates should possess at least theoretical knowledge regarding Deep Learning principles.

 28 Hours

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