ΑΙhub.org
 

Behind the scenes at #ICML2024

by
12 August 2024



share this:
ICML logo

This year’s International Conference on Machine Learning (ICML) took place in Vienna, Austria from 21-27 July 2024. The organisers introduced a new feature, in the form of “behind the scenes” chats with members of the conference committee. Hosted by Amin Karbasi, this series takes a look at how decisions are made at ICML, and other interesting AI-related topics.

Behind the Scenes ICML 2024 Day 1

In this video, Amin Karbasi talks to co-programme chair Katherine Heller.

Behind the Scenes ICML 2024 Day 2

One day two, Amin spoke to co-workshop chair Andrew Gordon Wilson.

Behind the Scenes ICML 2024 Day 3

Day three saw two chats. The first was with Zico Kolter, co-programme chair, and Nicholas Carlini. They talked about why we should all care about AI safety and security.

In part two, Amin talked to Kiri Wagstaff, chair of the position paper track.


You can find our ICML 2024 coverage here.



tags: , ,


Lucy Smith is Senior Managing Editor for AIhub.
Lucy Smith is Senior Managing Editor for AIhub.




            AIhub is supported by:


Related posts :



The Turing Lectures: Can we trust AI? – with Abeba Birhane

Abeba covers biases in data, the downstream impact on AI systems and our daily lives, how researchers are tackling the problem, and more.
21 November 2024, by

Dynamic faceted search: from haystack to highlight

The authors develop and compare three distinct methods for dynamic facet generation (DFG).
20 November 2024, by , and

Identification of hazardous areas for priority landmine clearance: AI for humanitarian mine action

In close collaboration with the UN and local NGOs, we co-develop an interpretable predictive tool to identify hazardous clusters of landmines.
19 November 2024, by

On the Road to Gundag(AI): Ensuring rural communities benefit from the AI revolution

We need to help regional small businesses benefit from AI while avoiding the harmful aspects.
18 November 2024, by

Making it easier to verify an AI model’s responses

By allowing users to clearly see data referenced by a large language model, this tool speeds manual validation to help users spot AI errors.
15 November 2024, by




AIhub is supported by:






©2024 - Association for the Understanding of Artificial Intelligence


 












©2021 - ROBOTS Association