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MLCI conference seeks original, high-quality submissions which improve and further the knowledge related to all aspects of robotics and automation engineering, with an emphasis on implementations and experimental results.



MLCI 2026 Flyer
Track 1: Foundations of Machine Learning

Supervised learning algorithms
Unsupervised learning techniques
Reinforcement learning frameworks and applications
Model selection, validation, and evaluation metrics
Probabilistic models and Bayesian methods
Optimization algorithms for machine learning

Track 2: Computational Intelligence Methods

Evolutionary computation
Fuzzy logic and fuzzy systems
Artificial neural networks
Swarm intelligence algorithms
Hybrid intelligent systems combining multiple computational intelligence techniques
Applications of computational intelligence in complex system modeling and optimization

Track 3: Advanced Machine Learning Systems

Deep learning architectures
Transfer learning and domain adaptation
Few-shot learning and meta-learning
Model deployment and scalability
Efficient training techniques
Applications in computer vision, natural language processing, and speech recognition

Track 4: Interdisciplinary Applications of ML and CI

Ethical considerations in AI and machine learning
Fairness, accountability, and transparency in algorithms
Explainable AI (XAI) and interpretability of machine learning models
Legal frameworks and regulations for AI
Future trends in machine learning and computational intelligence
Societal impact and sustainable development of AI technologies