Journal of Intelligent Learning Systems and Applications

Volume 17, Issue 4 (November 2025)

ISSN Print: 2150-8402   ISSN Online: 2150-8410

Google-based Impact Factor: 2.33  Citations  

Bridging the Gap: Improving Agentic AI with Strong and Safe Data Practices

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DOI: 10.4236/jilsa.2025.174016    6 Downloads   87 Views  

ABSTRACT

Agentic AI represents a significant advancement in artificial intelligence, enabling proactive agents that can set goals, make decisions, and adapt to changing situations. However, the performance of these systems is heavily dependent on the quality and relevance of the data they process. This research highlights the critical risk posed by faulty, insecure, or contextually inappropriate input data in modern Agentic AI systems. To address this challenge, this study proposes the Autonomous Data Integrity Layer (ADIL). This flexible architecture integrates best practices from security engineering and data science to ensure that Agentic AI systems operate with clean, validated, and contextually relevant data. By focusing on data integrity, ADIL enhances the reliability, accountability, and effectiveness of Agentic AI systems, leading to more trustworthy and robust intelligent agents.

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Soni, A. and Kumar, R. (2025) Bridging the Gap: Improving Agentic AI with Strong and Safe Data Practices. Journal of Intelligent Learning Systems and Applications, 17, 257-266. doi: 10.4236/jilsa.2025.174016.

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