Intelligent Computing for Wireless Sensor Networks: A Survey
Associate Professor, Institute of Innovation in Technology and Management
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Keywords: Wireless Sensor Network, Computational Intelligence, Clustering Algorithms
Abstract: The massive rise of AI in different domains, including financial institutions such as banks, stock exchange market, is empowering stakeholders to make informed decisions based on AI-driven tools & technologies. Employing AI in stock trading is not a new term, but it has certainly covered a long journey. These days Artificial intelligence trading strategies are playing a crucial role in market analysis, price prediction, stock selection, investment planning, portfolio management, etc. This paper is an attempt to explore the role of AI in stock trading with various types of trading options and portfolio management using AI based tool. It also throws light on recent developments in this field.
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