Get in Touch

Course Outline

Machine Learning and Recursive Neural Networks (RNN) Fundamentals

  • NN and RNN
  • Backpropagation
  • Long short-term memory (LSTM)

TensorFlow Fundamentals

  • Creating, initializing, saving, and restoring TensorFlow variables
  • Feeding, reading, and preloading TensorFlow data
  • Leveraging TensorFlow infrastructure to scale model training
  • Visualizing and evaluating models using TensorBoard

TensorFlow Mechanics 101

  • Preparing the Data
    • Download
    • Inputs and Placeholders
  • Constructing the Graph
    • Inference
    • Loss
    • Training
  • Training the Model
    • The Graph
    • The Session
    • Training Loop
  • Evaluating the Model
    • Constructing the Evaluation Graph
    • Evaluation Output

Advanced Applications

  • Threading and Queues
  • Distributed TensorFlow
  • Documentation and Model Sharing
  • Customizing Data Readers
  • Utilizing GPUs¹
  • Manipulating TensorFlow Model Files

TensorFlow Serving

  • Introduction
  • Basic Serving Tutorial
  • Advanced Serving Tutorial
  • Serving Inception Model Tutorial

¹ The Advanced Usage topic, “Utilizing GPUs,” is not available in remote course formats. This module can be offered during classroom-based sessions, subject to prior agreement, and only if both the instructor and all participants possess laptops with supported NVIDIA GPUs and 64-bit Linux installed (hardware not provided by NobleProg). NobleProg cannot guarantee the availability of instructors with the necessary equipment.

Requirements

  • Statistics
  • Python
  • (Optional) A laptop equipped with an NVIDIA GPU supporting CUDA 8.0 and cuDNN 5.1, running a 64-bit Linux operating system
 21 Hours

Number of participants


Price per participant

Testimonials (2)

Upcoming Courses

Related Categories