Catalog Intelligence

Engine

Launched a shopping copilot that interprets product attributes, boosting add-to-cart rates by 12% and enhancing the overall customer experience.

Project Details

Catalog Engine Intelligence is an AI-powered platform designed to optimize and scale product catalog management for e-commerce and retail businesses. It enables automated understanding, enrichment, and standardization of product data by extracting key attributes such as size, color, material, and specifications from unstructured sources. Leveraging natural language processing, computer vision, and machine learning, the system classifies products into accurate categories and ensures consistency across large catalogs. It also identifies missing, duplicate, or inconsistent entries, improving overall data quality. The platform integrates seamlessly with product information management (PIM) systems, marketplaces, and internal catalog tools, enabling real-time synchronization across channels.

Key features include automated tagging, attribute extraction, data cleaning, and embedding-based similarity matching. It supports intelligent search, filtering, and recommendation use cases by structuring product data effectively. The system is built to handle high-volume catalogs while maintaining performance and accuracy. By reducing manual intervention and improving catalog consistency, it helps businesses deliver better product discovery and shopping experiences.

DELIVERABLES

Data cleaning

Embeddings

INDUSTRY

Ecommerce/Retail

Abstract shapes with gradients of red, black, and white.
Abstract shapes with gradients of red, black, and white.

Project Research

The research behind Catalog Engine Intelligence focused on addressing the challenges of managing large-scale, unstructured, and inconsistent product data in e-commerce environments. Studies revealed that poor catalog quality directly impacts search accuracy, recommendations, and conversion rates. The solution was designed using a combination of natural language processing, computer vision, and embedding-based techniques to extract and structure product attributes effectively. Research emphasized the importance of standardizing attributes across different vendors and formats to ensure uniformity in catalogs. Machine learning models were trained to identify duplicates, detect anomalies, and enrich missing information using contextual understanding. Embedding models were incorporated to enable semantic similarity, improving product matching and recommendations.

Integration with PIM systems and marketplaces was explored to ensure seamless adoption without disrupting existing workflows. Continuous learning mechanisms allow the system to improve accuracy over time based on new data and interactions. The approach ensures scalability, enabling businesses to manage growing catalogs efficiently while maintaining high data quality. Overall, the research shaped a solution that enhances catalog intelligence, improves discoverability, and drives better customer experiences.

Project Results

The implementation of Catalog Engine Intelligence led to a 12% increase in add-to-cart rates by improving product discoverability and relevance. Automated data cleaning and attribute extraction significantly reduced manual effort and inconsistencies in the catalog. Enhanced product tagging and embeddings improved search accuracy and recommendation quality. The system enabled faster onboarding of new products while maintaining data consistency. Overall, it improved catalog efficiency, user engagement, and conversion performance for e-commerce platforms.

Smartphone and accessories arranged on a surface.
Smartphone and accessories arranged on a surface.
A red room with a white floor and a red wall
A red room with a white floor and a red wall

Testimonials

What Our Clients Says

The Squad Shipping Your AI

  • We shipped our first copilot in 7 weeks and cut support tickets by 31%. The eval dashboards made every decision obvious.

    Elena Ruiz

    Cantos SaaS’s VP Product

    01

    /03

  • We shipped our first copilot in 7 weeks and cut support tickets by 31%. The eval dashboards made every decision obvious.

    Elena Ruiz

    Cantos SaaS’s VP Product

    02

    /03

  • We shipped our first copilot in 7 weeks and cut support tickets by 31%. The eval dashboards made every decision obvious.

    Elena Ruiz

    Cantos SaaS’s VP Product

    03

    /03

  • We shipped our first copilot in 7 weeks and cut support tickets by 31%. The eval dashboards made every decision obvious.

    Elena Ruiz

    Cantos SaaS’s VP Product

    01

    /03

  • We shipped our first copilot in 7 weeks and cut support tickets by 31%. The eval dashboards made every decision obvious.

    Elena Ruiz

    Cantos SaaS’s VP Product

    02

    /03

  • We shipped our first copilot in 7 weeks and cut support tickets by 31%. The eval dashboards made every decision obvious.

    Elena Ruiz

    Cantos SaaS’s VP Product

    03

    /03

  • We shipped our first copilot in 7 weeks and cut support tickets by 31%. The eval dashboards made every decision obvious.

    Elena Ruiz

    Cantos SaaS’s VP Product

    01

    /03

  • We shipped our first copilot in 7 weeks and cut support tickets by 31%. The eval dashboards made every decision obvious.

    Elena Ruiz

    Cantos SaaS’s VP Product

    02

    /03

  • We shipped our first copilot in 7 weeks and cut support tickets by 31%. The eval dashboards made every decision obvious.

    Elena Ruiz

    Cantos SaaS’s VP Product

    03

    /03

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