VDSG event

Pie & AI: Vienna - Maximizing Inferencing Efficiency with Model Quantization

Welcome to our fifth online Pie & AI event!

Pie & AI is a series of deeplearning.ai meetups independently hosted by community groups. This event is hosted by the Vienna Data Science Group.

Make sure you also register for the Webinar through this link:

https://event.webinarjam.com/channel/5thViennaPieAndAI Access to the meetup stream will be provided via email upon WebinarJam registration.

DESCRIPTION

Maximizing Inferencing Efficiency with Model Quantization

Google’s first-generation of TPUs, Tesla’s Full-Self-Driving hardware, and NVIDIA’s latest GPU architectures have one thing in common: they rely on few-bit integer operations to maximize the efficiency of inferencing a trained neural network. This talk will explore how network quantization translates a standard floating-point network into one that runs with integer-only computations. We will discuss what this means for the accuracy and other properties of the network. Finally, we will examine what we can already do during training to avoid a loss in accuracy when running a network with integer operations.

SPEAKER

Mathias Lechner is a third-year PhD student at IST Austria working with Prof. Thomas Henzinger. His research lies at the intersection of deep learning, trustworthy AI, and verification. The results of his research work have been published at pioneer AI venues, including NeurIPS, ICLR, ICML, and Nature Machine Intelligence. Before joining IST Austria, he has interned at MIT CSAIL, Daniela Rus’ Lab. He received his MSc. and BSc. in Computer Engineering from the Vienna University of Technology (TU Wien), Austria, where his MSc. thesis received the Distinguished Young Alumnus-Award, at TU Wien’s Faculty of Informatics.

https://mlech26l.github.io/pages/about/ https://www.linkedin.com/in/mathias-lechner-4008b0154/

AGENDA

17:00 - Introduction and Greeting Video 17:15 - Main Talk 17:45 - Q&A