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Course Outline

Deep Learning vs. Machine Learning vs. Other Approaches

  • Scenarios where Deep Learning is appropriate
  • Constraints and limitations of Deep Learning
  • Comparing the accuracy and cost-efficiency of various methods

Methods Overview

  • Nets and Layers
  • Forward and Backward Propagation: The fundamental computations of layered compositional models.
  • Loss: The learning task is defined by the loss function.
  • Solver: The mechanism that coordinates model optimization.
  • Layer Catalogue: The layer serves as the basic unit of modeling and computation.
  • Convolution

Methods and Models

  • Backpropagation and modular models
  • Logsum module
  • RBF Net
  • MAP/MLE loss
  • Parameter Space Transforms
  • Convolutional Module
  • Gradient-Based Learning
  • Energy for inference
  • Objective for learning
  • PCA; NLL
  • Latent Variable Models
  • Probabilistic LVM
  • Loss Function
  • Detection using Fast R-CNN
  • Sequences with LSTMs and Vision + Language integration with LRCN
  • Pixelwise prediction with FCNs
  • Framework design and future directions

Tools

  • Caffe
  • Tensorflow
  • R
  • Matlab
  • Others

Requirements

Proficiency in any programming language is required. While prior knowledge of Machine Learning is not mandatory, it is advantageous.

 21 Hours

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