Indian Institute of Technology, Kanpur, India.
World Journal of Advanced Research and Reviews, 2025, 26(03), 1097-1102
Article DOI: 10.30574/wjarr.2025.26.3.2050
Received on 31 March 2025; revised on 08 June 2025; accepted on 10 June 2025
Recommender systems form the backbone of digital platforms, facilitating content discovery in increasingly crowded online ecosystems. Large social media platforms face the dual challenge of processing vast data volumes while maintaining relevance across diverse user preferences. The cold-start problem—effectively recommending content with minimal historical data—remains a persistent challenge in these environments. This article examines major platforms' architecture and optimization techniques to address these challenges. The multi-stage recommendation architecture combines diverse candidate generation methods with deep neural ranking, supported by sophisticated caching and feature retrieval systems. For cold-start scenarios, specialized techniques, including exploration pipelines, freshness boosting, and contextual matching, have significantly improved engagement. Real-world implementations show that properly designed recommender systems can improve relevance metrics while reducing computational latency. Integrating robust system design with cold-start optimization provides a blueprint for recommendation systems that maintain high relevance from a user's first interaction onward, balancing the competing demands of scale, speed, and personalization quality.
Recommender Systems; Cold-Start Problem; Multi-Stage Architecture; Real-Time Feature Engineering; Personalization Acceleration; Content Exploration
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Aniruddha Zalani. Designing Recommender Systems at Scale: Multi-Stage Architecture and Cold-Start Optimization. World Journal of Advanced Research and Reviews, 2025, 26(3), 1097-1102. Article DOI: https://doi.org/10.30574/wjarr.2025.26.3.2050