RetailOperations

How Etsy Uses Gemini and Vertex AI to Personalize 90 Million Shopping Experiences

Etsy, the global marketplace for handcrafted and vintage goods, serves nearly 90 million buyers across more than 130 million listings from 5 million sellers. Using Vertex AI, BigQuery, Dataflow, and Gemini, the company built a personalized search and discovery platform it calls “algotorial curation” — increasing listings per theme by 80x, driving a 5% lift in SEO-driven visits, and delivering a 3% conversion improvement for sellers.

Outcomes

~80xListings per theme increase via algotorial curation
5%SEO-driven visits increase
3%Seller conversion lift from SEO optimization
Nearly 90 millionBuyers served with personalized experiences

Tools & Technologies

1GV
Google Vertex AI
Google Cloud unified ML platform for building, deploying, and scaling AI models and generative AI applications.
2GG
Google Gemini
Google multimodal AI model family
3GB
Google BigQuery
Serverless enterprise data warehouse for analytics
4GD
Google Dataflow
Managed streaming data pipeline service by Google for processing large-scale batch and real-time data.

AI Categories

Challenge

With 130 million listings from 5 million sellers, Etsy needed a way to deeply understand its constantly changing inventory, determine individual buyer intent, and deliver personalized discovery experiences at scale — something that traditional keyword-based approaches and manual curation could not accomplish.

Solution

Etsy deployed Gemini, Vertex AI, BigQuery, and Dataflow to enrich listing metadata at scale, amplify human-curated collections by 80x through semantic similarity models, and deliver individualized buyer feeds and search experiences across nearly 90 million shoppers.

Full Story

Etsy exists to make human-to-human commerce work at scale. Every item on the platform is made, handpicked, or designed by a real person, and the marketplace’s core promise is that buyers can find something genuinely special rather than mass-produced. With more than 130 million listings from 5 million sellers and a buyer base approaching 90 million people, that promise becomes an engineering challenge: how do you surface the right item for each specific buyer out of a constantly changing, enormously varied inventory?

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Source

GOOGLE
March 2026
Original case study

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