1 / 17

ILOG Solver Directions

ILOG Solver Directions. Laurent Perron ILOG SA. Outline. Constraint Programming, a powerful technology The CP suite in ILOG CP faces new challenges Recent Technical Advances. Constraint Programming, a Powerful Technology. I hope this will be demonstrated by the workshop

studs
Télécharger la présentation

ILOG Solver Directions

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. ILOG Solver Directions Laurent Perron ILOG SA

  2. Outline • Constraint Programming, a powerful technology • The CP suite in ILOG • CP faces new challenges • Recent Technical Advances

  3. Constraint Programming, a Powerful Technology • I hope this will be demonstrated by the workshop • CP is a robust technology with a past of successful applications • Some famous academics success in the OR community (10 teams problem closed easily) • A large collection of deployed industrial applications based on Constraint Programming

  4. CP Strengths • A high level modeling language allows for a rich and accurate representation of the model • Domain expertise is captured through a rich search language • Special techniques (decomposition, LNS, repair…) allows the tackling of large and difficult problems • “A clever tool for clever people”

  5. CP weaknesses • A high level modeling language allows for a rich and accurate representation of the model • Domain expertise is captured through a rich search language • Special techniques (decomposition, LNS, repair…) allows the tackling of large and difficult problems • You need clever people to use this clever tool

  6. ILOG CP Suite • ILOG Solver • Generic CP System • ILOG Scheduler • Detailed Scheduling Specialization • ILOG Dispatcher • Vehicule Routing and Disptaching Specialization • ILOG Configurator • Configuration System

  7. ILOG CP Market • ILOG CP Market is defined by • ILOG Consultants • Big ISV • Specialized Solution Vendors • Technical Consulting Companies • Big Companies with Dedicated R&D • This is not a huge market • We want to enlarge our market

  8. CP Meets New Challenges • To reach our goals, CP should be improved • At the evaluation phase • Easier to use tools • Rapid results • Low coding effort • At the implementation phase • Low technology profile • At the maintenance phase • The application should improve with time

  9. New Rules for Tools Evaluation • People are not very technical • Maybe one week of training • They may have a limited OR background • The know basic OR rules about modeling • They may not be Computer Science experts • The cp system should be easily integrated/documented • Maybe not keen with compilers and library

  10. News Rules for Evaluation (2) • Evaluation Phase is Limited in time • IT is made against other competing techniques • And sometimes against internal tools • We need to achieve something soon • Even if the problem is over-constrained • Even if the data are dirty • Even if the model is naive

  11. New Rules for Application Development • The IT guy is not the OR Expert • The code will not evolve • The time devoted to Optimization is usually limited • Users will need guidance • Why this doesn’t work? • Users expect performance to improve with time • Without code evolution

  12. Usability • To be effective, a CP solution consists of • A good model • A clever search part • We would like to remove the need for search part • At least for small problems, typically the one encountered in the evaluation phase

  13. Robustness • Different logically equivalent formulations can lead to different runtime performances • Expand a global constraint into smaller subparts • This imply that getting a good model is an art • We do not believe this cannot be • The CP Solver should detect these cases and reformulate the model • Users do not know about different level of propagation

  14. Evolution of the Code • In the past, to use a new technology, a new constraint or a new search construct was implemented • Users had to rewrite their code in order to benefit from it • And new users had to learn more each time

  15. Interactivity • Users want Explanation • And useful explanations • Users want Solutions • Even with over-constrained problems • Along with explanations of why some constraints are not part of the solution

  16. ILOG Solver Directions • Default Search • Model Reinforcement • Constraint Aggregation • Various work on robustness • Better constraints (without filtering levels) • No pathological cases • No slow propagation • Explanations and Solver Anyway

  17. ILOG CP Directions • There is a new suite of optimization tools in ILOG • ILOG Plant Power Ops for production planning and scheduling • ILOG Transport Power Ops for routing and dispatching • ILOG Fab Power Ops for semi conductor industry

More Related