Course/Event Essentials
Training Content and Scope
Other Information
This course gives a practical introduction to deep learning, convolutional and recurrent neural networks, transformer models, GPU computing, and tools to train and apply deep neural networks for natural language processing, images, and other applications.
The course consists of lectures and hands-on exercises. TensorFlow, Keras, and PyTorch will be used in the exercise sessions. CSC's Notebooks environment (https://notebooks.csc.fi/) will be used on the first day of the course, and the GPU-accelerated LUMI or Puhti supercomputers on the second day. An optional day 3 about LUMI by AMD is currently being planned. More details coming later.
The course will be held in hybrid mode, so both online and on-site participation are possible. Lunch and coffee is included for on-site participants.
Learning outcome
After the course the participants should have the skills and knowledge needed to begin applying deep learning for different tasks and utilizing the GPU resources available at CSC for training and deploying their own neural networks.
Prerequisites
The participants are assumed to have working knowledge of Python and suitable background in data analysis, machine learning, or a related field. Previous experience in deep learning is not required, but the fundamentals of machine learning are not covered on this course. Basic knowledge of a Linux/Unix environment will be assumed.
Tentative agenda
Day 1, Wednesday 3.5.
- Introduction to deep learning and to Notebooks
- Multi-layer perceptrons
- Image data and convolutional neural networks
- Text data and recurrent and transformers neural networks
Day 2, Thursday 4.5.
- Deep learning frameworks, GPUs, batch jobs
- Image classification exercises
- Attention and text categorization exercises
- Cloud, using multiple GPUs
Day 3, Friday 5.5. (optional, planned)
- LUMI by AMD