Autonomous AI-Driven Decision Systems for Enterprise Resource Planning Optimization
Abstract
Enterprise Resource Planning (ERP) systems integrate essential business functions through a centralized database, but cannot respond autonomously to data updates. Optimizing these systems requires frequent, expert-level decisions. Recent advancements in AI—particularly optimization algorithms, reinforcement learning, planning, constraint satisfaction, and learning-to-plan techniques—enable autonomous, data-driven decisions. Such decisions enhance efficiency, adaptability, resilience, and profitability. AI agents can specialize in distinct aspects of ERP decision making and cooperate in planning and orchestration. These developments should reposition ERP systems as a foundation for business processes: decentralized ecosystems with emergent behavior, analogous to the transportation and aviation industries, rather than a monolithic backbone. Demand forecasting drives tailored inventory policies that determine order quantities and reorder points. Production planning incorporates capacity constraints, product sequencing preferences, lead times, resource bottlenecks, and sales forecasts to align supply with demand. Decision-makers expect immediate operational support, so these plans require timely updates based on unplanned events.
Three complementary perspectives are relevant in validating decision systems. Temporal accuracy quantifies how well decisions track changes in the real-world environment. Latency assesses the responsiveness of a decision system from the external environment to end results. Throughput accounts for processing demand across the entire planning horizon. Autonomous decision support offers substantial performance improvements; however, scrutiny of the results is essential. Two important facets of quality control relate to total cost of ownership and return on investment of the independent decision-making system or agent.
Article Information
Journal |
International Journal of Science, Research and Technology |
|---|---|
Volume (Issue) |
Vol. 8 No. 6 (2025): International Journal of Science, Research and Technology (IJSRAT) |
DOI |
|
Pages |
15312-15328 |
Published |
December 10, 2025 |
| Copyright |
All rights reserved |
Open Access |
This work is licensed under a Creative Commons Attribution 4.0 International License. |
How to Cite |
Dhanaraj Sathiri (%2025). Autonomous AI-Driven Decision Systems for Enterprise Resource Planning Optimization. International Journal of Science, Research and Technology , Vol. 8 No. 6 (2025): International Journal of Science, Research and Technology (IJSRAT) , pp. 15312-15328. https://doi.org/10.15662/IJSRAT.2025.0806005 |
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