Prof. Ofer Shir, Michal Horovitz : Computational Intelligence

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.
Overview

We are primarily interested in Operational Research and Machine Learning aspects of experimental domains, that is, algorithmic design for practical physical- and life-sciences problems whose computerized models are unavailable or too expensive to be executed, and thus require real-world measurements when applying search/learning.

We foresee Computational Intelligence algorithms as facilitators that will assist experimental scientists in achieving optimal behavior of their systems and in identifying targeted phenomena. Our long-term research plan is to establish algorithmically-guided discovery tools for bio-systems. A primary pathway, adhering to this plan, is actively to devise specific algorithms for experimental optimization and learning of specific bio-systems.

Enlisted below are ongoing research projects at the Shir group:

  • Benchmarking Quantum Computers on Combinatorial Optimization Problems (with Alberto Moraglio)
  • Experimental Combinatorial Optimization of Postharvest Technology (Dan Gamrasni)
  • Mixed-Integer Evolution Strategies (with Thomas Bäck and Michael Emmerich) 
Prof. Ofer Shir

Prof. Ofer Shir

Research Group Leader
Computational Intelligence
Head of
Principal Investigator
Tel-Hai College
Associate Professor of Computer Science
Academic Degree
PhD
972-4-6489923
,
Michal Horovitz

Michal Horovitz

Head of
Postdoctoral Research Associate
Academic Degree
Ph.D. 2017, Technion, Israel