Course Outline
Introduction
- Chainer vs Caffe vs Torch
- Overview of Chainer features and components
Getting Started
- Understanding the trainer structure
- Installing Chainer, CuPy, and NumPy
- Defining functions on variables
Training Neural Networks in Chainer
- Constructing a computational graph
- Running MNIST dataset examples
- Updating parameters using an optimizer
- Processing images to evaluate results
Working with GPUs in Chainer
- Implementing recurrent neural networks
- Using multiple GPUs for parallelization
Implementing Other Neural Network Models
- Defining RNN models and running examples
- Generating images with Deep Convolutional GAN
- Running Reinforcement Learning examples
Troubleshooting
Summary and Conclusion
Requirements
- An understanding of artificial neural networks
- Familiarity with deep learning frameworks (Caffe, Torch, etc.)
- Python programming experience
Audience
- AI Researchers
- Developers
Testimonials (5)
Great contact with participants, practical knowledge which is highly valued. Adjustment of pace / speed. A huge plus, a mega-positive instructor, it's a shame that the training lasted only 2 days.
Marcin Mikielewicz - TECNOBIT SLU
Course - Introduction Deep Learning & Réseaux de neurones pour l’ingénieur
Machine Translated
The trainer was a professional in the subject field and related theory with application excellently
Fahad Malalla - Tatweer Petroleum
Course - Applied AI from Scratch in Python
The instructors have extensive theoretical and practical knowledge. The instructors are communicative. During the course, participants could ask questions and receive satisfying answers.
Kamil Kurek - ING Bank Slaski S.A.; Kamil Kurek Programowanie
Course - Understanding Deep Neural Networks
Machine Translated
I liked the new insights in deep machine learning.
Josip Arneric
Course - Neural Network in R
Trainer explained complex and advanced topics very clearly.
Leszek K
Course - Artificial Intelligence Overview
Machine Translated