美團搜尋多業務商品排序探索與實踐

美團技術團隊發表於2021-11-20
隨著美團零售商品類業務的不斷髮展,美團搜尋在多業務商品排序場景上面臨著諸多的挑戰。本文介紹了美團搜尋在商品多業務排序上相關的探索以及實踐,希望能對從事相關工作的同學有所幫助或者啟發。

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作者簡介

曹越、瑤鵬、詩曉、李想、家琪、可依、曉江、肖垚、培浩、達遙、陳勝、雲森、利前均來自美團平臺搜尋與 NLP 部。

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