AIware 2024
Mon 15 - Tue 16 July 2024 Porto de Galinhas, Brazil, Brazil
co-located with FSE 2024
Mon 15 Jul 2024 11:20 - 11:30 at Mandacaru - Industry Talk1 + SE for AIware Chair(s): Andreas Zeller

The development of digital twins (DTs) for physical systems increasingly leverages artificial intelligence (AI), particularly for combining data from different sources or for creating computationally efficient, reduced-dimension models. Indeed, even in very different application domains, twinning employs common techniques such as model order reduction and modelization with hybrid data (that is, data sourced from both physics-based models and sensors). Despite this apparent generality, current development practices are ad-hoc, making the design of AI pipelines for digital twinning complex and time-consuming. Here we propose Function+Data Flow (FDF), a domain-specific language (DSL) to describe AI pipelines within DTs. FDF aims to facilitate the design and validation of digital twins. Specifically, FDF treats functions as first-class citizens, enabling effective manipulation of models learned with AI. We illustrate the benefits of FDF on two concrete use cases from different domains: predicting the plastic strain of a structure and modeling the electromagnetic behavior of a bearing.

Mon 15 Jul

Displayed time zone: Brasilia, Distrito Federal, Brazil change

11:00 - 12:30
Industry Talk1 + SE for AIwareLate Breaking Arxiv Track / Industry Statements and Demo Track / Main Track at Mandacaru
Chair(s): Andreas Zeller CISPA Helmholtz Center for Information Security
11:00
20m
Industry talk
Agents for Data Science: From Raw Data to AI-generated Notebooks Using LLMs and Code Execution
Industry Statements and Demo Track
Jiahao Cai Google
11:20
10m
Paper
Function+Data Flow: A Framework to Specify Machine Learning Pipelines for Digital Twinning
Main Track
Eduardo de Conto Nanyang Technological University; CNRS@CREATE, Blaise Genest IPAL - CNRS - CNRS@CREATE, Arvind Easwaran Nanyang Technological University
DOI Pre-print
11:30
10m
Paper
Green AI in Action: Strategic Model Selection for Ensembles in Production
Main Track
Nienke Nijkamp Delft University of Technology, June Sallou Delft University of Technology, Niels van der Heijden University of Amsterdam, Luís Cruz Delft University of Technology
DOI Pre-print
11:40
5m
Paper
Towards Responsible AI in the Era of Generative AI: A Reference Architecture for Designing Foundation Model based Systems
Late Breaking Arxiv Track
Qinghua Lu Data61, CSIRO, Liming Zhu CSIRO’s Data61, Xiwei (Sherry) Xu Data61, CSIRO, Zhenchang Xing CSIRO’s Data61; Australian National University, Jon Whittle CSIRO's Data61 and Monash University
Pre-print
11:45
5m
Paper
Towards Responsible Generative AI: A Reference Architecture for Designing Foundation Model based Agents
Late Breaking Arxiv Track
Qinghua Lu Data61, CSIRO, Liming Zhu CSIRO’s Data61, Xiwei (Sherry) Xu Data61, CSIRO, Zhenchang Xing CSIRO’s Data61; Australian National University, Stefan Harrer CSIRO's Data61, Jon Whittle CSIRO's Data61 and Monash University
Pre-print
11:50
5m
Paper
Agent Design Pattern Catalogue: A Collection of Architectural Patterns for Foundation Model based Agents
Late Breaking Arxiv Track
Yue Liu Data61, CSIRO, Sin Kit Lo CSIRO Data61, Qinghua Lu Data61, CSIRO, Liming Zhu CSIRO’s Data61, Dehai Zhao CSIRO's Data61, Xiwei (Sherry) Xu Data61, CSIRO, Stefan Harrer CSIRO's Data61, Jon Whittle CSIRO's Data61 and Monash University
Pre-print
11:55
35m
Live Q&A
Session Q&A and topic discussions
Main Track