How is

Pintrest

Using AI?

Increased product discovery and conversion by surfacing long-tail content.

Novelty Rating:

4

/5

Project Overview

Using multimodal gen AI to automatically generate contextual shopping collections aligned with how users search.

Layman's Explanation

Instead of relying on users to search using exact words, this AI system looks at all available products and content, understands them deeply using images and text, and creates curated shopping pages that match natural user queries like “summer wedding outfit in Italy.”

Analogy

It’s like a personal shopper at a department store who understands the style, season, and occasion you're dressing for, and instantly assembles racks of options for you—even before you ask.

Details

PinLanding addresses the semantic mismatch between how users search (using contextual, occasion-driven phrases) and how e-commerce catalogs are organized (using static categories and tags). By using a combination of vision-language models (VLMs), CLIP, and large language models (LLMs), PinLanding interprets product images and descriptions and proactively creates “collections”—ready-to-serve landing pages centered around real-life search contexts. These AI-generated collections are scalable to millions of products and cost-efficient to run, enabling platforms to expose their long-tail inventory in meaningful, discoverable ways. This effectively shifts from reactive to proactive content discovery, bridging the intent gap in e-commerce and social platforms.

More Use Cases in

Technology

Project Estimates

Estimated Tech Stack

  • Kafka
  • Apache Spark
  • Apache Beam
  • Apache Airflow
  • Argo
  • PyTorch
  • CLIP
  • SigLIP
  • BLIP-2
  • IDEFICS
  • Llama 3.1
  • FAISS
  • Milvus
  • Kubernetes
  • NVIDIA Triton
  • TorchServe
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