Back to Search Start Over

Semantic Retrieval at Walmart

Authors :
Magnani, Alessandro
Liu, Feng
Chaidaroon, Suthee
Yadav, Sachin
Suram, Praveen Reddy
Puthenputhussery, Ajit
Chen, Sijie
Xie, Min
Kashi, Anirudh
Lee, Tony
Liao, Ciya
Publication Year :
2024

Abstract

In product search, the retrieval of candidate products before re-ranking is more critical and challenging than other search like web search, especially for tail queries, which have a complex and specific search intent. In this paper, we present a hybrid system for e-commerce search deployed at Walmart that combines traditional inverted index and embedding-based neural retrieval to better answer user tail queries. Our system significantly improved the relevance of the search engine, measured by both offline and online evaluations. The improvements were achieved through a combination of different approaches. We present a new technique to train the neural model at scale. and describe how the system was deployed in production with little impact on response time. We highlight multiple learnings and practical tricks that were used in the deployment of this system.<br />Comment: 9 page, 2 figures, 10 tables, KDD 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.04637
Document Type :
Working Paper