Clothes AI

Clothes AI

Side Project

Consumer App, AI | Full Stack Developer | 800 users

Flutter

Next.js

Node.js

Firebase

Clothes AIClothes AIClothes AIClothes AIClothes AI

About

Clothes AI is an innovative fashion app that uses artificial intelligence to revolutionize how users discover and try on outfits. Users can upload their photos and virtually try on trending outfits from a curated library, get personalized daily outfit suggestions, and stay updated with weekly fashion trend analysis powered by data from TikTok and Google. The app combines cutting-edge AI outfit generation technology with real-time fashion insights to help users explore their style effortlessly and discover what's trending in the fashion world.

Features

  • A library of trending outfits for inspiration
  • Try on outfits wit your own photos
  • Try on an outfit from your photo library
  • View your history of outfits and try them on again
  • Daily outfit suggestions and weekly fashion trends analysis

Challenges

  • Setting up the backend system for outfit generation and integrating with existing AI models
  • Implementing real-time app analytics to track and understand how users interact with the app
  • Setting up push notifications for weekly fashion trend research aggregated from TikTok and Google data

Approach

  • Built a robust Node.js backend system that integrates with AI models for outfit generation, creating a seamless pipeline for processing user photos and generating virtual try-on experiences
  • Implemented real-time analytics using Firebase Analytics and custom event tracking to monitor user behavior, feature usage, and engagement patterns across the mobile app
  • Developed an automated system that aggregates fashion trend data from TikTok and Google, processes and ranks trends by relevance, and delivers weekly push notifications to keep users informed about the latest fashion movements

Results

  • Reached 800+ active users on Android and iOS platforms
  • Generated over $1,000 in total revenue
  • Achieved less than 3% failure rate with AI try-on feature