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
Testimonials (2)
The training was organized and well-planned out, and I come out of it with systematized knowledge and a good look at topics we looked at
Magdalena - Samsung Electronics Polska Sp. z o.o.
Course - Deep Learning with TensorFlow 2
Tomasz really know the information well and the course was well paced.