AIware 2024
Mon 15 - Tue 16 July 2024 Porto de Galinhas, Brazil, Brazil
co-located with FSE 2024

This program is tentative and subject to change.

The inaugural ACM International Conference on AI-powered Software introduced the AIware Challenge, prompting researchers to explore AI-driven tools for optimizing conference programs through constrained optimization. We investigate the use of Large Language Models (LLMs) for program scheduling, focusing on zero-shot learning and integer programming to measure paper similarity.

Our study reveals that LLMs, even under zero-shot settings, create reasonably good first drafts of conference schedules. When clustering papers, using only titles as LLM inputs produces results closer to human categorization than using titles and abstracts with TFIDF. The code can be found here.

This program is tentative and subject to change.

Tue 16 Jul

Displayed time zone: Brasilia, Distrito Federal, Brazil change

16:00 - 18:00
Industry Talk5 + AIware challenge + Day2 ClosingIndustry Statements and Demo Track / Challenge Track / Main Track at Mandacaru (Baobá 1)
16:00
20m
Industry talk
AI-Based Digital Twins: A Tale of Innovation in Norwegian Public Sectors
Industry Statements and Demo Track
Shaukat Ali Simula Research Laboratory and Oslo Metropolitan University
16:20
5m
Other
Challenge Introduction
Challenge Track

16:25
10m
Talk
Investigating the Potential of Using Large Language Models for Scheduling
Challenge Track
Deddy Jobson Mercari, Li Yilin Mercari
DOI
16:35
10m
Talk
Automated Scheduling for Thematic Coherence in Conferences
Challenge Track
Mahzabeen Emu Queen’s University, Tasnim Ahmed Queen’s University, Salimur Choudhury Queen’s University
DOI
16:45
10m
Talk
Conference Program Scheduling using Genetic Algorithms
Challenge Track
Rucha Deshpande Purdue University, USA, Aishwarya Devi Akila Pandian Purdue University, Vigneshwaran Dharmalingam Purdue University
DOI
16:55
15m
Awards
Challenge Q&A, discussions, and winner announcement
Challenge Track

17:10
20m
Day closing
Day 2 closing
Main Track