Get in Touch

Course Outline

Deep Learning vs. Machine Learning vs. Other Methods

  • When Deep Learning is the appropriate choice
  • Limits of Deep Learning
  • Comparing accuracy and cost across different methods

Overview of Methods

  • Nets and Layers
  • Forward and Backward propagation: the essential computations of layered compositional models.
  • Loss: the task to be learned is defined by the loss function.
  • Solver: the solver coordinates model optimization.
  • Layer Catalogue: the layer serves as the fundamental unit of modeling and computation
  • Convolution

Methods and Models

  • Backpropagation, 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 with Fast R-CNN
  • Sequences with LSTMs and Vision + Language with LRCN
  • Pixelwise prediction with FCNs
  • Framework design and future directions

Tools

  • Caffe
  • Tensorflow
  • R
  • Matlab
  • Others...

Requirements

Knowledge of any programming language is required. Familiarity with Machine Learning is not mandatory but is advantageous.

 21 Hours

Number of participants


Price per participant

Testimonials (3)

Upcoming Courses

Related Categories