An AI-powered Smart Routing Solution for Payment Systems
Ramya Bygari, Aayush Gupta, Shashwat Raghuvanshi, Aakanksha Bapna,, Birendra Sahu

TL;DR
This paper presents an AI-driven routing pipeline for payment gateways that improves transaction success rates by dynamically predicting the best terminals using machine learning, leading to enhanced system resilience and revenue.
Contribution
The paper introduces a novel real-time adaptive pipeline combining static rules, feature engineering, and machine learning to optimize payment terminal selection in online payment systems.
Findings
Achieved a 4-6% increase in success rate across various payment methods.
Implemented a real-time adaptive feature update mechanism.
Enhanced system resilience and merchant trust through improved routing.
Abstract
In the current era of digitization, online payment systems are attracting considerable interest. Improving the efficiency of a payment system is important since it has a substantial impact on revenues for businesses. A gateway is an integral component of a payment system through which every transaction is routed. In an online payment system, payment processors integrate with these gateways by means of various configurations such as pricing, methods, risk checks, etc. These configurations are called terminals. Each gateway can have multiple terminals associated with it. Routing a payment transaction through the best terminal is crucial to increase the probability of a payment transaction being successful. Machine learning (ML) and artificial intelligence (AI) techniques can be used to accurately predict the best terminals based on their previous performance and various payment-related…
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Taxonomy
MethodsLogistic Regression
