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Peer Reviewed Article

Vol. 7 (2020)

Automating SAP GTS Compliance through AI-Powered Reciprocal Symmetry Models

Submitted
6 December 2024
Published
13-06-2020

Abstract

This research automates and optimizes trade compliance operations using SAP Global Trade Services (GTS) and AI-powered reciprocal symmetry models. The paper examines how reciprocal symmetry models may increase compliance efficiency, regulatory adaptation, and risk management in global trade operations. AI model scalability and predictiveness in SAP GTS are secondary goals. This secondary data-based evaluation examines current research and case studies to determine if AI can change trade compliance systems. Significant results show that AI models boost operational efficiency by automating compliance duties, proactively recognizing hazards, and rapidly adapting to regulatory changes. These models improve complicated trade data management decision support and scalability. Data quality, system integration, and the high cost of AI implementation were noted as issues. Policy implications underline the need for explicit AI use norms in trade compliance, data security, privacy, and human monitoring to assure responsibility. The study found that incorporating reciprocal symmetry models into SAP GTS transforms trade compliance, allowing organizations to remain compliant while improving operational agility. Still, sustainable deployment requires continual policy creation and research.

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