59. Philip Winter - VRVis - Continual Learning

59. Philip Winter - VRVis - Continual Learning

Author: Manuel Pasieka August 7, 2024 Duration: 1:06:23

Today I am talking to Philip Winter, researcher at the Medical Imaging group of the VRVis, a research center for virtual realities and visualizations.


Philip will explain the benefits and challenges in continual learning and will present his recent paper "PARMESAN: Parameter-Free Memory Search and Transduction for Dense Prediction Tasks". Where he and his colleagues have developed a system that uses a frozen hierarchical feature extractor to build a memory database out of the labeled training data. During inference the system identified training examples similar to the test data and prediction is performed through a combination of parameter-free correspondence matching and message passing based on the closes training datapoints.


I hope you enjoy this episode and will find it useful.


## AAIP Community

Join our discord server and ask guest directly or discuss related topics with the community.

https://discord.gg/5Pj446VKNU


## TOC

00:00:00 Beginning

00:03:04 Guest Introduction

00:06:50 What is continual learning?

00:15:38 Catastrophic forgetting

00:27:36 Paper: Parmesan

00:40:14 Composing Ensembles

00:46:12 How to build memory over time

00:55:37 Limitations of Parmesan


### References

Philip Winter - https://www.linkedin.com/in/philip-m-winter-msc-b15679129/

VRVIS - https://www.vrvis.at/

PARMESAN: Parameter-Free Memory Search and Transduction for Dense Prediction Tasks - https://arxiv.org/abs/2403.11743

Continual Learning Survey: https://arxiv.org/pdf/1909.08383


Hosted by Manuel Pasieka, the Austrian Artificial Intelligence Podcast offers a grounded, local perspective on a global phenomenon. Instead of abstract theorizing, each conversation focuses on the tangible impact and practical applications of AI within Austria's unique ecosystem. You'll hear from a diverse range of guests-researchers, entrepreneurs, policymakers, and creatives-who are actively shaping this landscape, discussing both the remarkable opportunities and the nuanced challenges specific to the region. The discussions delve into how these technologies are being integrated into Austrian industry, academia, and society, moving beyond hype to examine real-world implementation and ethical considerations. This podcast serves as an essential audio forum for anyone in Austria, or with an interest in the European tech scene, looking to understand how artificial intelligence is evolving right here. It’s about the people behind the algorithms and the local stories within a global revolution. For those engaged with the content, questions and suggestions are always welcome at the provided email address.
Author: Language: English Episodes: 73

Austrian Artificial Intelligence Podcast
Podcast Episodes
9. Frank Benda: Teaching ML from programming to company strategy [not-audio_url] [/not-audio_url]

Duration: 59:40
In this episode, Frank is sharing his experience in teaching about AI over the years at different institutions to students from all backgrounds, ranging from businesses focused questions about digitalisation to CEO's, or…
8. Sanja Jovanovic: On AI services in azure and women in AI [not-audio_url] [/not-audio_url]

Duration: 49:56
What kind of AI related services does azure cloud offer? What are some common reasons companies move into the cloud, and what are common first mistakes that companies encounter? If those are questions that interest you,…
7. Tanja Zinkl: On hiring for an AI Startup [not-audio_url] [/not-audio_url]

Duration: 45:55
What are the challenges hiring for an AI startups? How do you hire today, but be prepared for continously changing requirements of tomorrow? Or how do you convince the HR department of your talent and motivation? If thos…
5. Lukas Fischer: On the Software Competence Center Hagenberg (SCCH) [not-audio_url] [/not-audio_url]

Duration: 1:05:44
The field of AI and Machine learning is moving with an ever increasing pace, and for most small and medium companies that cannot afford their own research labs, keeping up new scientific papers and software frameworks is…