*Result*: Psychological Analysis and Career Decision-Making of College Students Based on Cognitive Algorithms on Distributed Platforms.
*Further Information*
*This research uses cognitive analytics on a distributed computer system to investigate how students' decision-making behaviors relate to their personality traits. The goal of the research is to improve our knowledge of the variables affecting students' professional choices and to offer a solid, expandable framework for individualized career counseling. The investigation examines a range of psychological characteristics, such as personality characteristics, cognitive capacities, passions, and socioeconomic status, by utilizing cognitive algorithms. Massive databases may be processed more easily thanks to the distributed system, which also ensures effective computing and analyses in real time. The approach entails gathering information from a heterogeneous student body, then analyzing it and extracting features to find meaningful trends. Neural networks and combination techniques are examples of sophisticated algorithms for machine learning that are used to create models of prediction that help with career suggestions. The results show how well cognitive computers capture the intricate interactions between variables that influence career choices. The flexibility of the distributed platform guarantees the system's suitability for big colleges and universities, offering students individualized career counseling on a broad scale. This study offers a fresh method for comprehending and assisting students in their professional choices, which makes a significant contribution to the fields of data mining for education and career planning. [ABSTRACT FROM AUTHOR]
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