Get in Touch

Course Outline

Current State of Technology

  • Technologies currently in use
  • Potential future technologies

Rules-based AI

  • Simplifying decision-making processes

Machine Learning

  • Classification
  • Clustering
  • Neural Networks
  • Types of Neural Networks
  • Presentation of working examples and discussion

Deep Learning

  • Core terminology
  • Guidelines for when to use or avoid Deep Learning
  • Estimating computational resources and associated costs
  • Essential theoretical background on Deep Neural Networks

Practical Deep Learning (primarily using TensorFlow)

  • Data preparation
  • Selecting loss functions
  • Choosing the appropriate neural network architecture
  • Balancing accuracy with speed and resource constraints
  • Training neural networks
  • Measuring efficiency and error rates

Sample Applications

  • Anomaly detection
  • Image recognition
  • Advanced Driver Assistance Systems (ADAS)

Requirements

Participants are expected to possess a background in engineering and have programming experience in any language. However, coding tasks are not required during the course.

 14 Hours

Related Categories