Neural Networks Fundamentals using TensorFlow as Exemple Certificate for Jordan BELISSARD
Certificate ID:
527653
Authentication Code:
624ac
Certified Person Name:
Jordan BELISSARD
Trainer Name:
Christopher Hallsworth
Duration Days:
4
Duration Hours:
28
Course Name:
Neural Networks Fundamentals using TensorFlow as Exemple
Course Date:
2017-05-22 09:30 to 2017-05-23 16:30
Course Outline:
TensorFlow Basics
- Creation, Initializing, Saving, and Restoring TensorFlow variables
- Feeding, Reading and Preloading TensorFlow Data
- How to use TensorFlow infrastructure to train models at scale
- Visualizing and Evaluating models with TensorBoard
TensorFlow Mechanics
- Inputs and Placeholders
- Build the GraphS
- Inference
- Loss
- Training
- Train the Model
- The Graph
- The Session
- Train Loop
- Evaluate the Model
- Build the Eval Graph
- Eval Output
The Perceptron
- Activation functions
- The perceptron learning algorithm
- Binary classification with the perceptron
- Document classification with the perceptron
- Limitations of the perceptron
From the Perceptron to Support Vector Machines
- Kernels and the kernel trick
- Maximum margin classification and support vectors
Artificial Neural Networks
- Nonlinear decision boundaries
- Feedforward and feedback artificial neural networks
- Multilayer perceptrons
- Minimizing the cost function
- Forward propagation
- Back propagation
- Improving the way neural networks learn
Convolutional Neural Networks
- Goals
- Model Architecture
- Principles
- Code Organization
- Launching and Training the Model
- Evaluating a Model
Course Name Eng:
Neural Networks Fundamentals using TensorFlow as Example