| |||||||||||||||
OL2A 2024 : 4th International Conference on Optimization, Learning Algorithms and Applications | |||||||||||||||
Link: https://ol2a.ipb.pt/ | |||||||||||||||
| |||||||||||||||
Call For Papers | |||||||||||||||
The 4th edition of the International Conference on Optimization, Learning Algorithms and Applications (OL2A 2024) will provide a forum where academic scientists, researchers and research scholars will have the opportunity to exchange and share their experiences and research results on the challenges of optimization and learning methods and their applications.
OL2A 2024 offers the international research community in optimization and learning an opportunity to present and debate the most recent results, trends and concerns as well as practical challenges that have been faced and solutions adopted in all fields of optimization and learning, as well as new high-impact applications such as 4th industrial revolution, multi-objective optimization, optimization for machine learning, machine learning for optimization, computer vision, machine learning speech recognition, natural language processing, machine learning for predictive analytics, machine learning for data analytics, and others. Participants can attend the conference on-site, at University of La Laguna (San Cristóbal de La Laguna - Tenerife, Spain), or online (all OL2A sessions will be streamed live). All submitted papers will pass through a multiple peer-review process and will carefully be evaluated based on originality, significance, technical soundness, and clarity of exposition. Conference proceedings will be published in SCOPUS indexed Springer-Verlag Book Series, Communications in Computer and Information Science (CCIS). Topics Considering the two goals of the OL2A Conference – optimization and learning algorithms – the topics are the following (but not limited to) Learning theory Optimization theory Linear optimization algorithms Nonlinear optimization algorithms Population-based algorithms Evolutionary-based algorithms Metaheuristic optimization Multi-objective Optimization Mixed-integer optimization Integer programing Semi-infinite programming Dynamic programming Stochastic programming Uncertain programming Optimization in control systems Big data and AI Learning algorithms Machine learning and soft computing Deep learning algorithms Clustering and classification algorithms Prediction algorithms Prediction mathematical models Engineering (or other) applications using learning or optimization methods Engineering education using learning or optimization methods |
|