Application of artificial intelligence in big data technologies  

Attention is being paid to basic artificial intelligence domains – search, representation, uncertainty. Discussed are approaches, techniques, representation techniques and basic algorithms. Besides classical algorithms search topic considers heuristics and approximation as modelling strategies. The representation topic covers constraint satisfaction, logical formalism and effective algorithms for logical inference. The uncertainty topic refers to probabilistic inference, formalisms for decision processes and approaches for uncertainty modeling. Algorithms used in practical artificial intelligence are presented. Application of investigated artificial intelligence models in natural language processing, vision, machine learning and robotics is discussed. Outcome: Equipped with theoretical knowledge and practical skills the students will be able to select the algorithm that fits best for inference in a specific domain; to implement and tune artificial intelligence algorithms; to select the appropriate representation of artificial intelligence problem or domain model, as well as to design models with desired representation.
Presential
English
Application of artificial intelligence in big data technologies
English

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