Skip to content

Latest commit

Β 

History

History
82 lines (59 loc) Β· 5.46 KB

File metadata and controls

82 lines (59 loc) Β· 5.46 KB

Home

MaggotIn - Maggot Phase Identification App

Team ID: C242-PS339

Welcome to our GitHub page! We are a team dedicated to advancing technology in the following areas:

  • πŸ“± Mobile Development
  • πŸ€– Machine Learning
  • ☁️ Cloud Computing

Overview

This application is designed for the identification of maggot phases, providing recommendations based on the analysis of each phase using machine learning technology. It efficiently classifies and interprets the various stages of maggot development, offering insights and recommendations to optimize processes related to maggot-based applications.


Features

  • Maggot Phase Identification:
    Accurate detection of maggot phases using trained machine learning models.
  • Recommendations:
    Tailored recommendations for each maggot phase.
  • Mobile-First Design:
    Seamless functionality on Android devices.
  • Cloud Integration:
    Real-time data synchronization and cloud storage.

Screenshots

Home Analyze Analyze Result
Home Analyze Result

Tech Stack

Category Technology/Tools Purpose
Programming Languages Python, Kotlin, JavaScript - Python: Machine Learning Model Training
- Kotlin: Android App Development
- JavaScript: Backend/Cloud Functionality
Machine Learning TensorFlow, MobileNetV2 - Optimized Model Creation for Maggot Phase Identification Using MobileNetV2 Transfer Learning
Mobile Development Android SDK, Retrofit, Room - Android SDK: Core tools for building Android apps
- Retrofit: Networking library for API integration
- Room: Database library for local data persistence
Backend Node.js, Express.js, Python, Flask - API development and integration with machine learning services
Database Cloud SQL, MySQL - Cloud SQL: Managed relational database for storing user data and model outputs
- MySQL: Underlying database engine for Cloud SQL
Cloud Services Google Cloud Storage, Cloud Run - Google Cloud Storage: Cloud storage for model files and images
- Cloud Run: Serverless deployment platform for backend services

Contributors

  • (ML) M443B4KY3611 | Rafsamjani Anugrah – Universitas Islam Riau LinkedIn GitHub

  • (ML) M443B4KY2336 | M. Dzaky Efendi – Universitas Islam Riau LinkedIn GitHub

  • (ML) M180B4KX2210 | Khaula Sayyidatunadia – Universitas Airlangga LinkedIn GitHub

  • (CC) C296B4KY2742 | Muhammad Arizaldi Eka Prasetya – UPN Veteran Jawa Timur LinkedIn GitHub

  • (CC) C296B4KX0841 | Berlian Viga Septiani – UPN Veteran Jawa Timur LinkedIn GitHub

  • (MD) A193B4KY3414 | Nur Azis Saputra – Universitas Bina Sarana Informatika LinkedIn GitHub

  • (MD) A204B4KX0650 | Arina Saffanah Zakiyyah – Universitas Esa Unggul LinkedIn GitHub