Abstract In the data-driven age today, organizations generate enormous volumes of structured and unstructured data day after day. It is one of the largest challenges to identify useful information from these extensive and complicated sets of data. Conventional analytics packages are likely to deliver descriptive and diagnostic analysis and won't be in a position to offer timely, contextual, and actionable insights. Human data analysis is time-consuming prone to mistake, and influenced by human partiality, and hence incapable of properly enabling proper decision-making. The research aims to develop intelligent systems based on Artificial Intelligence (AI) and sophisticated data analytics methods to enable the independence of insight generation. With the help of machine learning, natural language processing, and advanced visualization technology, these systems can analyze heterogenous data sources, carry out real-time or near-real-time analysis, and produce accurate, comprehensible, and actionable insights. The research foresees the requirement for elastic, scalable, and strong frameworks that can handle shifting data patterns and offer predictive and prescriptive analytics. The suggested methodology will close the loop between raw data and sound decision-making such that companies will be in a position to gain faster, better-informed insights. With AI-based analytics, organizations and scientists will be able to make strategic, operational and tactical choices more optimal and minimize dependence on human interpretation. Keywords: Artificial Intelligence, Data Analytics, Automated Insight Generation, Machine Learning, Natural Language Processing, Data Visualization, Predictive Analytics.
Garg et al. (Thu,) studied this question.
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