Jurnal Penelitian Sains Teknologi
Vol. 2, No. 2, September 2026

An AI-Driven Policy Intelligence Framework for Transforming National Data into Evidence-Based Public Policy

Deva Yohand Pangestu (Faculty of Communication and Informatics, Universitas Muhammadiyah Surakarta)
Laizza Natta Fatdaja (Faculty of Communication and Informatics, Universitas Muhammadiyah Surakarta)
Hery Siswanto (Faculty of Science and Technology, Universitas Muhammadiyah PKU Surakarta)
Dzikrina Aqsha Mahardika (Faculty of Law, Social, and Political Sciences, Universitas Muhammadiyah Karaganyar)



Article Info

Publish Date
18 Apr 2026

Abstract

The increasing complexity of national development requires public policies that are adaptive, data-driven, and evidence-based. However, many governments, particularly in developing countries, still face significant challenges in utilizing national data effectively due to data fragmentation, limited analytical capabilities of information systems, and the underutilization of Artificial Intelligence (AI). These limitations hinder the formulation of accurate and proactive public policies. This study aims to propose a conceptual framework that integrates national data, Information Systems, and AI to support intelligent policymaking. This research adopts a Design Science Research (DSR) approach to develop an artifact in the form of the National AI-Driven Policy Intelligence Framework (NAPIF). The framework is designed using a layered architecture consisting of data, processing, and output layers, supported by AI capabilities such as pattern recognition, predictive analytics, and policy recommendation generation. The proposed model transforms fragmented data into actionable insights through an integrated system that supports decision-making processes. The results indicate that the proposed framework enhances data integration, improves analytical capabilities, and enables predictive and adaptive policymaking. Compared to conventional systems, the framework provides more comprehensive decision support and supports continuous policy improvement through a feedback-driven mechanism. The study contributes theoretically by integrating the domains of Information Systems, AI, and public policy into a unified framework, and practically by offering a strategic approach for governments to implement data-driven governance aligned with long-term development goals. This study is limited by its conceptual nature; therefore, future research is recommended to validate the framework through empirical implementation and real-world case studies.

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Journal Info

Abbrev

saintek

Publisher

Subject

Biochemistry, Genetics & Molecular Biology Chemistry Computer Science & IT Control & Systems Engineering Earth & Planetary Sciences Electrical & Electronics Engineering Engineering Industrial & Manufacturing Engineering Library & Information Science Materials Science & Nanotechnology Mechanical Engineering Physics Transportation

Description

Jurnal Penelitian Sains Teknologi is a peer-reviewed scientific journal dedicated to publishing high-quality, original, and methodologically rigorous research in the fields of science and technology. The journal aims to serve as a scholarly forum for the dissemination of theoretical and applied ...