International Journal of Innovative Research in Computer and Communication Engineering

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TITLE AI-Driven Automated Data Analysis Platform
ABSTRACT This project presents an AI-Driven Automated Data Analysis Platform that streamlines intelligent analytics through end-to-end automation. The system autonomously ingests structured or unstructured data, performs machine-learning–based preprocessing, and detects meaningful patterns to generate actionable insights. Using advanced data-processing frameworks and AI models, the platform integrates automated data ingestion, anomaly detection, statistical analysis, visualization dashboards, and a responsive query interface. Once a data source is connected, the system validates schema consistency, cleans and normalizes data, analyzes correlations and predictive trends, and automatically produces visual reports and interpretation summaries. Anomalous or irregular data segments are flagged for review, improving reliability and reducing analytical errors. By emphasizing automation, scalability, interpretability, and operational efficiency, the platform supports data-driven decision-making across domains such as business intelligence, healthcare, industrial automation, research, and smart city systems.
AUTHOR BHAGYASHRI DONGARE, SHANTANU G. BHURE, ARYAN M. NANDESHWAR, VISHWAJIT R. KATRE, SARANG P. RAHANGDALE, ASHIK P. KATRE Assistant Professor, Department of Artificial Intelligence & Data Science, Wainganga College of Engineering and Management(WCEM), Dongargaon, Nagpur, India Department of Artificial Intelligence & Data Science, Wainganga College of Engineering and Management (WCEM), Dongargaon, Nagpur, India
VOLUME 181
DOI DOI: 10.15680/IJIRCCE.2026.1402011
PDF pdf/11_AI-Driven Automated Data Analysis Platform.pdf
KEYWORDS
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