Locoshop
Locoshop
Locoshop
Montreal, Quebec, Canada
Company website
https://www.locoshop.io
Number of employees
2 - 10 employees
Description

Locoshop is the world's first global search engine dedicated to helping shoppers locate the brand name products they want in the closest nearby stores, boutiques and shopping centers.

Categories
Cloud technologies Market research Advertising Machine learning Artificial intelligence
Industries
Marketing & advertising Retail Technology

Socials

Recent projects

Quick browse template for e-commerce websites

Project Overview:The goal of this project is to develop a web application that generates mobile-friendly templates for easier browsing of e-commerce websites on mobile devices. The app will allow users to enter the URL of an e-commerce website, extract product data, and use this data to populate a mobile-optimized template to browse the entire product catalog. This template can then be shared on social media or embedded in other websites as a quick-browse option.Project Objectives:To design and implement a user-friendly web app.To facilitate easier mobile browsing for any e-commerce website.To provide a seamless registration and login experience.To enhance online shopping user engagement through optimized mobile presentation.

Admin Daniel Facciolo
Matches 0
Category Databases + 4
Open

Product matching algorithm for Locoshop

Locoshop aggregates product data from millions of e-commerce websites globally, enabling consumers to efficiently find the products they seek.However, we face a significant challenge: accurately matching identical products when the product information varies across different stores.Currently, we utilize Elasticsearch with keyword fuzziness to match products. This method depends heavily on the similarity of product information entered by different stores, leading to limitations in accuracy.To enhance our capability to match identical products with high certainty, we need to develop more sophisticated matching techniques. This is crucial, especially under the following conditions:Product descriptions vary significantly from store to store.Product images differ across stores.UPC (or Manufacturer Product ID) codes are not consistently available.We are exploring advanced solutions, including machine learning algorithms that can analyze images and text to recognize products regardless of description variability, and data enrichment techniques to compensate for missing information like UPC codes. This will enable us to meet our desired use cases with the required accuracy.

Admin Daniel Facciolo
Matches 0
Category Artificial intelligence + 4
Open

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