Building a Scalable, Effective, and Steerable Search and Ranking Platform
Marjan Celikik, Jacek Wasilewski, Ana Peleteiro Ramallo, Alexey, Kurennoy, Evgeny Labzin, Danilo Ascione, Tural Gurbanov, G\'eraud Le Falher,, Andrii Dzhoha, Ian Harris

TL;DR
This paper introduces a scalable, personalized, and adaptable ranking platform for e-commerce that leverages transformer models to improve relevance and customer experience in real-time, large-scale environments.
Contribution
It presents a novel, reusable ranking system employing transformer-based models capable of handling millions of items and customers under heavy load, with proven real-world effectiveness.
Findings
Outperforms existing systems in customer experience and revenue
Handles thousands of requests per second with high scalability
Successfully integrates complex customer behavior patterns
Abstract
Modern e-commerce platforms offer vast product selections, making it difficult for customers to find items that they like and that are relevant to their current session intent. This is why it is key for e-commerce platforms to have near real-time scalable and adaptable personalized ranking and search systems. While numerous methods exist in the scientific literature for building such systems, many are unsuitable for large-scale industrial use due to complexity and performance limitations. Consequently, industrial ranking systems often resort to computationally efficient yet simplistic retrieval or candidate generation approaches, which overlook near real-time and heterogeneous customer signals, which results in a less personalized and relevant experience. Moreover, related customer experiences are served by completely different systems, which increases complexity, maintenance, and…
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Taxonomy
TopicsData Mining Algorithms and Applications · Big Data and Business Intelligence · Cloud Computing and Resource Management
