We are interested in learning and optimization questions related to systems within the Natural Sciences. Our group is especially interested in Machine/Statistical Learning and Global Optimization aspects of experimental domains, that is, practical physical-, life- and agro-sciences search-problems whose simulated models are unavailable and thus require real-world experimentation.
Principal Researcher
Prof. Ofer Shir
Computational Intelligence
972-4-6489923
The advent of modern laboratory and field experiments, as well as of computerized systems, enables researchers to control experiments and analyze their big-data in high-speed rates.
Team
Michal Horovitz
Ph.D. 2017, Technion, Israel
Postdoctoral Research Associate

Martin Feder
M.Sc. 2015, Technion, Israel
Research associate

Assaf Israeli
M.Sc. 2020, Tel-Hai College. Israel
Research assistant and Ph.D. candidate

Collaborations
Funding
Latest Publications
Avoiding Redundant Restarts in Multimodal Global Optimization
In M. Affenzeller M., et al. Rds.), Parallel Problem Solving from Nature: Lecture Notes in Computer Science. Springer, Cham
2024
Multi-objective mixed-integer quadratic models: A study on mathematical programming and evolutionary computation
IEEE Trans. Evol. Comp. doi: 10.1109/TEVC.2024.3374519
2024
Multi-Objective Mixed-Integer Quadratic Models: A Study on Mathematical Programming and Evolutionary Computation
This paper appears in: IEEE Transactions on Evolutionary Computation On page(s): 1-15 Print ISSN: 1089-778X Online ISSN: 1941-0026 Digital Object Identifier: 10.1109/TEVC.2024.3374519
2024
Towards AI Research Agents in the Chemical Sciences
ChemRxiv. Cambridge: Cambridge Open Engage; 2024
2024
Contact Information
Research Group Leader
Prof. Ofer Shir
972-4-7700527
ofers@migal.org.il