RevenuePilot: Operationalizing Agentic AI for Airline Revenue Management at Scale

Authors

  • Sandeep Nutakki Independent Researcher, Seattle, Washington, USA. Author

DOI:

https://doi.org/10.63282/3050-9246.IJETCSIT-V7I1P135

Keywords:

Airline Revenue Management, Agentic AI, Large Language Models, Dynamic Pricing, Inventory Control, Demand Forecasting, Multi-Agent Systems, EMSR, Real-Time Optimization

Abstract

Airline revenue management (RM) represents one of the most complex real-time optimization challenges in commercial operations, requiring simultaneous decisions across pricing, inventory allocation, and demand forecasting under significant uncertainty. Traditional RM systems, while mathematically sophisticated, struggle to adapt to rapidly changing market conditions, competitive dynamics, and emerging disruptions. This paper presents RevenuePilot, an agentic AI system that operationalizes large language model capabilities for airline revenue management at scale. RevenuePilot employs a multi-agent architecture with specialized agents for dynamic pricing optimization, inventory control, demand forecasting, and overbooking management, coordinated through a central orchestration layer. We evaluate RevenuePilot on a major airline’s domestic network, demonstrating a 4.2% improvement in revenue per available seat mile (RASM), 12% reduction in spoilage, and 8% decrease in denied boardings compared to the incumbent Expected Marginal Seat Revenue (EMSR) system. Our results show that agentic AI can effectively augment traditional optimization approaches while providing explainability and adaptability critical for operational deployment.

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References

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Published

2026-03-01

Issue

Section

Articles

How to Cite

1.
Nutakki S. RevenuePilot: Operationalizing Agentic AI for Airline Revenue Management at Scale. IJETCSIT [Internet]. 2026 Mar. 1 [cited 2026 Mar. 7];7(1):230-6. Available from: https://ijetcsit.org/index.php/ijetcsit/article/view/614

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