ADASS the Planning and Scheduling Perspective Roadmap: - How planning and scheduling fits in at ADASS - ADASS planning and scheduling posters and presentations.

Slides:



Advertisements
Similar presentations
Fighting Malaria With The Grid. Computing on The Grid The Internet allows users to share information across vast geographical distances. Using similar.
Advertisements

Multi-Objective Planning and Scheduling with Astronomical Applications Mark Giuliano – Space Telescope Science Institute.
EInfrastructures (Internet and Grids) US Resource Centers Perspective: implementation and execution challenges Alan Blatecky Executive Director SDSC.
Geographical Information Systems and Science Longley P A, Goodchild M F, Maguire D J, Rhind D W (2001) John Wiley and Sons Ltd 1. Systems, Science and.
Structural Genomics – an example of transdisciplinary research at Stanford Goal of structural and functional genomics is to determine and analyze all possible.
Spring, 2013C.-S. Shieh, EC, KUAS, Taiwan1 Heuristic Optimization Methods Pareto Multiobjective Optimization Patrick N. Ngatchou, Anahita Zarei, Warren.
GridFlow: Workflow Management for Grid Computing Kavita Shinde.
Vertically Integrated Analysis and Transformation for Embedded Software John Regehr University of Utah.
Identifying "Good" Architectural Design Alternatives with Multi-Objective Optimization Strategies By Lars Grunske Presented by Robert Dannels.
Geographic Information Systems and Science SECOND EDITION Paul A. Longley, Michael F. Goodchild, David J. Maguire, David W. Rhind © 2005 John Wiley and.
Slide 1 Sterling Software Peter Sharer Sterling Software.
Senior Review Evaluations (1 of 5) Proposals due: 6 March 2015 Panel evaluations: Week of 22 April 2015 Performance factors to be evaluated will include.
Science and Engineering Practices
Providing Access for US Astronomers to the Next Generation of Large Ground Based OIR Telescopes 1.Scientific Potential 2.Current Design Efforts 3.Complementarity.
1 Universities Space Research Association AAS January 7, 2008 Early Science Workshop Range of E&PO Office Responsibilities Public Affairs (Public Information,
Update on the NASA/NOAA/DOE Collaboration on the Utilization of ROA/UAV/UAS for Global Climate Change and Weather Research Will Bolton Sandia National.
Annual SERC Research Review, October 5-6, By Jennifer Bayuk Annual SERC Research Review October 5-6, 2011 University of Maryland Marriott Inn and.
. Center TRACON Automation System (CTAS) Traffic Management Advisor (TMA) Transportation authorities around the globe are working to keep air traffic moving.
LSST Scheduler status Francisco Delgado Sr. Software Engineer Telescope & Site.
Inquiry-based Learning and Digital Libraries in Undergraduate Science Education Xornam Apedoe Learning & Instruction University of San Francisco November.
CRESCENDO Full virtuality in design and product development within the extended enterprise Naples, 28 Nov
At A Glance VOLT is a freeware, platform independent tool set that coordinates cross-mission observation planning and scheduling among one or more space.
A Scheduling Algorithm with Dynamic Priorities Status Presentation Matias Mora Klein UTFSM Computer Systems Research.
Lecture 9: Chapter 9 Architectural Design
ANTs PI Meeting, Nov. 29, 2000W. Zhang, Washington University1 Flexible Methods for Multi-agent distributed resource Allocation by Exploiting Phase Transitions.
100% of B-TOS architectures have cost increase under restrictive launch policy for a minimum cost decision maker Space Systems, Policy, and Architecture.
Summary of distributed tools of potential use for JRA3 Dugan Witherick HPC Programmer for the Miracle Consortium University College.
1 MH513 Earth & Space Science Unit 8 Science In Social & Personal Perspective Unit 9 Science & Technology William Caten C-Track March 2011 William Caten.
E-Science for the SKA WF4Ever: Supporting Reuse and Reproducibility in Experimental Science Lourdes Verdes-Montenegro* AMIGA and Wf4Ever teams Instituto.
Future Space Exploration A Summary of “The Global Exploration Roadmap”, International Space Exploration Coordination Group, August 2013 Summarized by:
Doug Tody E2E Perspective EVLA Advisory Committee Meeting December 14-15, 2004 EVLA Software E2E Perspective.
01/0000 HEO and Daylight Ranging “Reality and Wishes” Ramesh Govind ILRS Fall Workshop, 4 th October 2005.
MURI: Integrated Fusion, Performance Prediction, and Sensor Management for Automatic Target Exploitation 1 Dynamic Sensor Resource Management for ATE MURI.
US BENEFITS. It Addresses Priorities The US and Canada have common scientific, economic and strategic interests in arctic observing: marine and air transportation.
DSL Distributed Systems Laboratory ATC 23 August Model Mission: Magnetospheric Multiscale (MMS) Mission Goal “To study the microphysics of three.
NA-MIC National Alliance for Medical Image Computing UCSD: Engineering Core 2 Portal and Grid Infrastructure.
LSST Scheduler construction plan Francisco Delgado Sr. Software Engineer Telescope & Site.
Common Archive Observation Model (CAOM) What is it and why does JWST care?
Nov Common Archive Observation Model What is CAOM and why should MAST use it? Brian McLean.
Space Operations as a Guide for a Real-World Scheduling Competition Eduardo Romero Marcelo Oglietti
Advanced Technologies in Education Virtual Observatory 1 Virtual Observatory: D-Space Project Athens, 14 November 2004 Elena Tavlaki Head of Research Programs.
Digital Intuition Cluster, Smart Geometry 2013, Stylianos Dritsas, Mirco Becker, David Kosdruy, Juan Subercaseaux Welcome Notes Overview 1. Perspective.
March 2004 At A Glance NASA’s GSFC GMSEC architecture provides a scalable, extensible ground and flight system approach for future missions. Benefits Simplifies.
On-board Timeline Validation and Repair: A Feasibility Study Maria Fox, Derek Long University of Strathclyde, Glasgow, UK Les Baldwin, Graham Wilson, Mark.
Science Team Objectives K. Jezek and J. Richter-Menge Science Team Co-leads.
August 2003 At A Glance The IRC is a platform independent, extensible, and adaptive framework that provides robust, interactive, and distributed control.
Aura HDF-EOS File Format Guidelines: Overview and Status Cheryl Craig.
Astronomy 1010-H Planetary Astronomy Fall_2015 Day-24.
Mission Development: Putting It All Together ASEN 6008 Interplanetary Mission Design.
Advances In Software Inspection
Introduction: Goals for JWST Transit Meeting C. Beichman Jonathan Lunine March 11, 2014.
March 2004 At A Glance Advanced Mission Design (AMD) researches and develops innovative trajectories and the mathematical methods used for optimal designs.
1 The PISCES Project Don J. Pearson JSC/DM Flight Design & Dynamics Division May 2002
Evolutionary Computing Chapter 12. / 26 Chapter 12: Multiobjective Evolutionary Algorithms Multiobjective optimisation problems (MOP) -Pareto optimality.
Scheduling with Uncertain Resources Eugene Fink, Jaime G. Carbonell, Ulas Bardak, Alex Carpentier, Steven Gardiner, Andrew Faulring, Blaze Iliev, P. Matthew.
Fitness Guided Fault Localization with Coevolutionary Automated Software Correction Case Study ISC Graduate Student: Josh Wilkerson, Computer Science ISC.
Michael J. Voss and Rudolf Eigenmann PPoPP, ‘01 (Presented by Kanad Sinha)
+ UVIS Data Visualization UVIS Team Meeting Braunschweig, Deutschland June 18, 2012.
Resource Optimization for Publisher/Subscriber-based Avionics Systems Institute for Software Integrated Systems Vanderbilt University Nashville, Tennessee.
Decision Support Systems
JWST Science Policy & Science Parallels
User Preparation for new Satellite generations
Big Data in Earth Observation
Preface to the special issue on context-aware recommender systems
Heuristic Optimization Methods Pareto Multiobjective Optimization
Multi-Objective Optimization
Systems Engineering for Mission-Driven Modeling
CHAPTER 10 METHODOLOGIES FOR CUSTOM SOFTWARE DEVELOPMENT
Maria Teresa Capria December 15, 2009 Paris – VOPlaneto 2009
Multiobjective Optimization
Presentation transcript:

ADASS the Planning and Scheduling Perspective Roadmap: - How planning and scheduling fits in at ADASS - ADASS planning and scheduling posters and presentations - Invited talk I gave on scheduling research I am doing with Mark Johnston

Planning and Scheduling ADASS = Astronomical Data Analysis and Software Systems –Main focus of the conference is on post observation data handling and processing –How does planning and scheduling fit in? Many of the people who attend ADASS operate telescopes –Realize that planning and scheduling impacts their lives Lots of people were interested in planning and scheduling issues. –ADASS = Astronomical (Data Analysis and Software Systems) ADASS planning and scheduling papers give the “ ” as opposed to the “state of the art”. –Papers describe what missions are doing as opposed to the latest developments in planning and scheduling. –For the state of the art in planning and scheduling try the International Conference on Automated Planning and Scheduling (ICAPS) or IWPSS ADASS = Astronomical Data Analysis and Software Systems –Main focus of the conference is on post observation data handling and processing –How does planning and scheduling fit in? Many of the people who attend ADASS operate telescopes –Realize that planning and scheduling impacts their lives Lots of people were interested in planning and scheduling issues. –ADASS = Astronomical (Data Analysis and Software Systems) ADASS planning and scheduling papers give the “ ” as opposed to the “state of the art”. –Papers describe what missions are doing as opposed to the latest developments in planning and scheduling. –For the state of the art in planning and scheduling try the International Conference on Automated Planning and Scheduling (ICAPS) or IWPSS

Posters and Presentations The GBT Dynamic Scheduling System: A New Scheduling Paradigm –Ground based system that dynamically schedules observers a few days in advance based on long term constraints and predicted weather –Papers discussed how this worked with users and technical approaches (e.g. knapsack problem) Planning and Executing Airborne Astronomy Missions on SOFIA –Telescope mounted on the side of an airplane –Have worked on scheduling techniques for individual missions –Interested in long range planning techniques Mission Science Operations at the Southwest Research Institute in Boulder, Colorado Planning and scheduling within the WSO-UV observatory –How to adapt an existing plan –Mixed mode automated planning and realtime operations

Invited Talk Summary Research in multi-objective multi-participant scheduling. Goal: to increase science return Provide tools which allow operators to make tradeoffs between competing objectives Work done with Mark Johnston at JPL multi-objective optimizer multiple participants missions objectives constraints compromises decisions alternatives tradeoffs optimized schedules science and resource optimized schedules

Cartoon Example of what can go wrong in the scheduling process. Our goal is to provide decision support tools that enable multiple participants to optimize schedules in a collaborative manner. Tools do not support collaboration between participants Scheduling input given in isolation. Schedules do not meet users needs Participants collaborate to create schedules that meet their needs Tools enable participants to work together Scheduler

Multi-Objective Scheduling- Issues Effective scheduling of missions requires the ability to make trade-offs between competing objectives: –Time on target, minimizing use of consumables, minimizing the use of critical mechanisms, preferring the higher priority science Objectives are often competing in that improving one objective means making another objective worse. Objectives have different constituents lobbying for them –e.g. Mission science community versus Engineering The traditional approach is to combine the weighted average of separate objectives –(Obj 1 * wt 1 + Obj 2 * W 2 …. + Obj n * W n ) / n –Combining objectives loses information and pre-determines trade-offs between objectives.

Multi-Objective - Solutions Multi-Objective Scheduling: –Explicitly maintain and exploit multiple objectives during scheduling - Don’t combine objectives –Algorithms build up approximate Pareto optimal frontier i.e. “non-dominated” solutions, such that no other candidate is better, considering all objectives. Utilizing evolutionary algorithms (e.g. GDE3)

Multi-Participant The Pareto frontier gives participants an optimal trade-off space Still need to agree on a particular candidate schedule Multi-participant tools will provide distributed decision support –Mixed-initiative planning – support the end user in making trade offs Automate when possible but leave final control with the user –Graphical internet-based tools that support multiple participants –Challenges include: human factors, non-simultaneous users, domain-specific scheduling GUIs Proposed model: threaded news/mail reader + schedule viewer

JWST Scheduling Results - Pareto Optimal surfaces for each pair of objectives - Evaluated alternative search evolutionary approaches

Cassini Saturn orbiter + Titan lander –launched 1997 –arrived at Saturn 2004 Science instruments include 6 for optical and microwave remote sensing, and 6 for fields/particles/waves investigations Spectacular scientific success –260 scientists from 17 countries participating –science objectives coordinated by 6 science discipline-oriented teams: Rings, Atmospheres, Titan, Icy Satellites, Magnetosphere, and Cross-Discipline (everything else) ~1 Gigabyte per day science data returned Prime mission completed; currently in first 2 year extension of prime mission: a second 2 year extension is expected

Multi-Objective Cassini Science Planning: Example

Future Work Develop multi-participant capabilities –Threaded model –DSN scheduling as an application New capabilities in framework –Parallel evaluation of evolutionary algorithms Apply framework to other applications –Planning HST phase 1 observations? –JWST long range planning?