LEVERAGING NATURAL LANGUAGE PROCESSING FOR AUTOMATED LEGAL CONSULTATION
Abstract
Juris AI is an advanced artificial intelligence–driven legal assistant designed to streamline legal research, case analysis, and decision-making processes. It leverages natural language processing (NLP) and machine learning (ML) techniques to interpret legal documents, extract key information, and provide accurate legal insights. The system can analyze statutes, case laws, and legal precedents to assist lawyers, judges, and students in preparing arguments or understanding complex legal issues efficiently. Juris AI also employs predictive analytics to forecast possible case outcomes based on historical data, enhancing the accuracy and reliability of legal decision support. By automating repetitive legal tasks and offering intelligent recommendations, Juris AI significantly reduces research time, minimizes human error, and promotes greater access to justice. Its scalable architecture and user-friendly interface make it suitable for integration into legal firms, educational institutions, and judicial systems.
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