diff --git a/content/program/workshops/rddps.md b/content/program/workshops/rddps.md index 9e65127..881348a 100644 --- a/content/program/workshops/rddps.md +++ b/content/program/workshops/rddps.md @@ -1,18 +1,18 @@ --- title: "RDDPS" -date: 2023-02-03T23:10:17+01:00 +date: 2024-02-02T08:33:17+01:00 draft: false --- # Workshop on Reliable Data-Driven Planning and Scheduling ICAPS'23 Workshop on Reliable Data-Driven Planning and Scheduling (RDDPS) \ -Prague, Czech Republic \ -July 9-10, 2023 +Banff, Alberta, Canada \ +June 2-3, 2024 ## Aim and Scope of the Workshop -Data-driven AI is the dominating trend in AI at this time. From a planning and scheduling perspective – and for sequential decision making in general – this is manifested in two major kinds of technical artifacts that are rapidly gaining importance. The first are planning models that are (partially) learned from data (e.g., a weather forecast in a model of flight actions). The second are action-decision components learned from data, in particular, action policies or planning-control knowledge for making decisions in dynamic environments (e.g., manufacturing processes under resource-availability and job-length fluctuations). Given the nature of such data-driven artifacts, reliability is a key concern, prominently including safety, robustness, and fairness in various forms, but possibly other concerns as well. Arguably, this is one of the grand challenges in AI for the foreseeable future. +Data-driven AI is the dominating trend in AI at this time. From a planning and scheduling perspective – and for sequential decision making in general – this is manifested in two major kinds of technical artifacts that are rapidly gaining importance. The first are planning models that are (partially) learned from data (e.g., a weather forecast in a model of flight actions). The second are action-decision components learned from data, in particular, action policies or planning-control knowledge for making decisions in dynamic environments (e.g., manufacturing processes under resource-availability and job-length fluctuations). Given the nature of such data-driven artifacts, reliability is a key concern, prominently including safety, robustness, and fairness in various forms, but possibly other concerns as well. Arguably, this is one of the grand challenges in AI for the foreseeable future. ## Topics of Interest @@ -28,19 +28,19 @@ Given this, the workshop welcomes contributions to any topic that roughly falls ## Important Dates - - Submission Deadline: ~~March 24, 2023~~ **March 31, 2023 (AoE)** - - Author Notification: April 28, 2023 - - Camera-Ready Deadline: June 10, 2023 (AoE) - - ICAPS 2023 Workshops: July 9-10, 2023 + - Submission Deadline: March 29, 2024 (AoE) + - Author Notification: April 29, 2024 + - Camera-Ready Deadline: May 15, 2024 (AoE) + - ICAPS 2024 Workshops: June 2-3, 2024 ## Submission Details -All papers must be formatted according to the [AAAI formatting guidelines](https://www.aaai.org/Publications/Templates/AuthorKit23.zip). Submitted papers should be *anonymous* for double-blind reviewing. Paper submission is via [EasyChair](https://easychair.org/conferences/?conf=rddps23). +All papers must be formatted like at the main conference [(ICAPS author kit)](https://icaps24.icaps-conference.org/files/icaps-author-kit.zip). Submitted papers should be *anonymous* for double-blind reviewing. Paper submission is via [EasyChair](https://easychair.org/conferences/?conf=rddps24). We call for two kinds of submissions: Technical papers, of length up to 8 pages plus references. The workshop is meant to be an open and inclusive forum, and we encourage papers that report on work in progress. -Position papers, of length up to 4 pages plus references. Given that reliability of data-driven planning and scheduling is rather new at ICAPS, we encourage authors to submit positions on what they believe are important challenges, questions to be considered, approaches that may be promising. We will include any position relevant to discussing the workshop topic. We expect to group position paper presentations into a dedicated session, followed by a panel discussion. +Position papers, of length up to 4 pages plus references. Given that reliability of data-driven planning and scheduling is rather new at ICAPS, we encourage authors to submit positions on what they believe are important challenges, questions to be considered, approaches that may be promising. We will include any position relevant to discussing the workshop topic. We expect to group position paper presentations into a dedicated session, followed by an open discussion. Every submission will be reviewed by members of the program committee according to the usual criteria such as relevance to the workshop, significance of the contribution, and technical quality. @@ -49,36 +49,30 @@ At least one author of each accepted paper must attend the workshop in order to ### Policy on Previously Published Materials -Please do not submit papers that are already accepted for the ICAPS main conference. All other submissions, e.g. papers under review for IJCAI'23, are welcome. Authors submitting papers rejected from the ICAPS main conference, please ensure you do your utmost to address the comments given by ICAPS reviewers. Also, it is your responsibility to ensure that other venues your work is submitted to allow for papers to be already published in "informal" ways (e.g. on proceedings or websites without associated ISSN/ISBN). +Please do not submit papers that are already accepted for the ICAPS main conference. All other submissions, e.g. papers under review for IJCAI'24, are welcome. Authors submitting papers rejected from the ICAPS main conference, please ensure you do your utmost to address the comments given by ICAPS reviewers. Also, it is your responsibility to ensure that other venues your work is submitted to allow for papers to be already published in "informal" ways (e.g. on proceedings or websites without associated ISSN/ISBN). -## Workshop Committee +## Organizing Committee -Organizing and Program Committee: - - - Sara Bernardini, Royal Holloway University of London, UK - - Jesse Davis, KU Leuven, Belgium - - Alan Fern, Oregon State University, USA - Daniel Höller, Saarland University, Germany + - Timo P. Gros, German Research Center for Artificial Intelligence, Germany + - Marcel Steinmetz, University of Toulouse, France + - Eyal Weiss, Bar-Ilan University, Israel - Jörg Hoffmann, Saarland University, Germany - - Michael Katz, IBM Research, USA - - Michele Lombardi, DISI, University of Bologna, Italy - - Scott Sanner, University of Toronto, Canada - - Marcel Steinmetz, Saarland University, Germany - Sylvie Thiebaux, University of Toulouse, France, and Australian National University, Australia - - Eyal Weiss, Bar-Ilan University, Israel +## Program Committee + +TBA ## List of Accepted Papers - - Argaman Mordoch, Roni Stern, Enrico Scala and Brendan Juba: **Safe Learning of PDDL Domains with Conditional Effects** - - Xandra Schuler, Jan Eisenhut, Daniel Höller, Daniel Fišer and Joerg Hoffmann: **Action Policy Testing with Heuristic-Based Bias Functions** - - Yuta Takata and Alex Fukunaga: **Plausibility-Based Heuristics for Latent Space Classical Planning** - - Marcel Vinzent, Min Wu, Haoze Wu and Joerg Hoffmann: **Policy-Specific Abstraction Predicate Selection in Neural Policy Safety Verification** - - Eyal Weiss, Ariel Felner and Gal Kaminka: **A Generalization of the Shortest Path Problem to Graphs with Multiple Edge-Cost Estimates** +TBA ## Workshop Schedule -TBD +TBA +## Affiliated Projects +tuples.ai diff --git a/static/img/tuples.png b/static/img/tuples.png new file mode 100644 index 0000000..844d361 Binary files /dev/null and b/static/img/tuples.png differ