Accelerated Machine Learning and Deep Learning with Intel
from
Wednesday 25 October 2023 (09:30)
to
Thursday 26 October 2023 (16:00)
Monday 23 October 2023
Tuesday 24 October 2023
Wednesday 25 October 2023
09:30
Welcome and Introduction
Welcome and Introduction
09:30 - 09:35
Agenda and speakers' presentation
09:35
Hardware acceleration for AI and Intel® oneAPI AI Analytics Toolkit
-
Séverine Habert
(
Intel
)
Hardware acceleration for AI and Intel® oneAPI AI Analytics Toolkit
Séverine Habert
(
Intel
)
09:35 - 10:00
In this session, we will first introduce the hardware features that are powering AI on Intel, we will then get a first glance at the software stack harnessing them, namely the Intel® oneAPI AI Analytics Toolkit.
10:00
How to accelerate Classical Machine Learning on Intel Architecture
-
Vladimir Kilyazov
(
Intel
)
How to accelerate Classical Machine Learning on Intel Architecture
Vladimir Kilyazov
(
Intel
)
10:00 - 10:30
In this session, we will cover the Intel-optimized libraries for Machine Learning. Python is currently ranked as the most popular programming language and is widely used in Data Science and Machine Learning. We will begin by covering the Intel® Distribution for Python and its optimizations. We will then cover the optimizations for ML Python packages such as Modin, Intel® Extension for Scikit-learn and XGBoost. The presentations will be accompanied with demos to showcase the performance speedup.
10:30
Hands-on
Hands-on
10:30 - 10:50
10:50
Break
Break
10:50 - 11:00
11:00
Hands-on
Hands-on
11:00 - 12:00
12:00
Lunch break
Lunch break
12:00 - 13:00
13:00
A introduction to GenAI and its application to Science
-
Séverine Habert
(
Intel
)
A introduction to GenAI and its application to Science
Séverine Habert
(
Intel
)
13:00 - 13:45
This session offers an introductory exploration into Transformers and Large Language Models (LLMs). We will delve into the fundamental concepts of Transformers, shedding light on their architecture and capabilities. Following this introduction, the focus shifts to the exciting intersection of LLMs with scientific domains such as biology and physics.
13:45
Optimize Deep Learning on Intel !
-
Akash Dhamasia
(
Intel
)
Optimize Deep Learning on Intel !
Akash Dhamasia
(
Intel
)
13:45 - 14:30
In this session, we present to you what is behind the scenes of Deep Learning with the highly-optimized Intel® oneDNN library in order to get the best-in-class performance on Intel hardware. We then show you Intel® oneDNN in action in DL frameworks such as the Intel-optimized TensorFlow, Intel-optimized PyTorch and the Intel® Extension for PyTorch (IPEX) and Tensorflow (ITEX).
14:30
Break
Break
14:30 - 14:40
14:40
Hands-on
Hands-on
14:40 - 15:40
15:40
Closure day 1
Closure day 1
15:40 - 15:45
Thursday 26 October 2023
09:30
Previously on Intel workshop: a recap of Deep Learning
Previously on Intel workshop: a recap of Deep Learning
09:30 - 09:40
09:40
Deep Learning at Scale with Distributed Training
-
Nikolai Solmsdorf
(
Intel
)
Akash Dhamasia
(
Intel
)
Deep Learning at Scale with Distributed Training
Nikolai Solmsdorf
(
Intel
)
Akash Dhamasia
(
Intel
)
09:40 - 10:40
In this presentation, we discuss how Distributed Training addresses the need to efficiently train large and complex deep learning models, including LLM. Join us as we break down the key ideas behind distributed training, data parallelism, model parallelism, understand its advantages, and gain insights into how it is used to train and inference LLM.
10:40
Break
Break
10:40 - 10:50
10:50
Latent Diffusion Model in practice: an example with Stable Diffusion
Latent Diffusion Model in practice: an example with Stable Diffusion
10:50 - 11:30
11:30
TBA
TBA
11:30 - 12:00
12:00
Lunch
Lunch
12:00 - 13:00
13:00
Introduction to Neural Network Compression Techniques
-
Nikolai Solmsdorf
(
Intel
)
Introduction to Neural Network Compression Techniques
Nikolai Solmsdorf
(
Intel
)
13:00 - 13:35
In this session, we will explain various network compression techniques in Deep Learning—such as quantization, pruning, and knowledge distillation—, their benefits in terms of performance speed-up, and finally we will showcase you the Intel tools that help you compress your model, like the Intel® Neural Compressor.
13:35
Hands-on
Hands-on
13:35 - 14:20
14:20
Break
Break
14:20 - 14:30
14:30
Physics simulation using 3D-GAN
-
Massoud Rezavand
(
Intel
)
Physics simulation using 3D-GAN
Massoud Rezavand
(
Intel
)
14:30 - 15:00
15:00
Easily speed up Deep Learning inference – Write once deploy anywhere
-
Vladimir Kilyazov
(
Intel
)
Easily speed up Deep Learning inference – Write once deploy anywhere
Vladimir Kilyazov
(
Intel
)
15:00 - 15:45
In this session, we will showcase the Intel® Distribution of OpenVINO™ Toolkit that allows you to optimize for high-performance inference models that you trained with TensorFlow* or with PyTorch*. We will demonstrate how to use it to write once and deploy on multiple Intel hardware.
15:45
Closure day 2
Closure day 2
15:45 - 16:00