Saudi Journal of Engineering and Technology (SJEAT)
Volume-10 | Issue-06 | 277-282
Original Research Article
Enhancing Research Productivity Through Agentic AI Workflows: A Multi-Agent Framework for Intelligent Research Assistance
Layla A. A. Sultan, Sheikha Sultan, Mona Kaddura
Published : June 17, 2025
Abstract
The exponential growth of academic literature presents significant challenges for researchers in conducting comprehensive literature reviews and maintaining current knowledge in their fields. Traditional research methodologies often prove inadequate for processing the vast volumes of information available across multiple databases and repositories (Chen et al., 2024; Rodriguez & Kim, 2023). This study introduces a novel agentic artificial intelligence framework designed to enhance research productivity through intelligent automation of literature discovery and report generation processes. The proposed system employs a dual-agent architecture comprising a specialized Search Agent responsible for multi-database literature discovery and source quality assessment, and a Drafting Agent focused on content analysis, synthesis, and coherent report generation (Thompson & Williams, 2024). Through empirical evaluation involving 150 research tasks across 15 academic domains, our framework demonstrated substantial improvements over traditional research methods: 55% reduction in time requirements (from 18.7 to 8.3 days average), 23% improvement in source coverage (from 77% to 100%), 60% reduction in cost per literature review (from ,847 to ,139), and 28% increase in user satisfaction scores (from 3.2 to 4.1 out of 5.0). The system maintains high quality standards with an average quality score of 4.2/5.0 compared to 3.9/5.0 for traditional methods (Anderson et al., 2024). Domain-specific analysis reveals varying effectiveness, with interdisciplinary research showing the highest performance gains (68% time savings, 91% user satisfaction), followed by STEM disciplines (62% time savings, 94% satisfaction). The framework addresses critical challenges in academic research including information overload, source verification, and synthesis complexity while maintaining scholarly rigor and citation accuracy (Martinez & Lee, 2023). Implementation results demonstrate the practical viability of agentic AI systems in academic research contexts, providing a scalable solution for institutions seeking to enhance research productivity and quality.