Nylo: MVC Framework for Flutter

Nylo: MVC Framework for Flutter

Table of Content

Nylo is a micro-framework for Flutter which is designed to help simplify developing apps. Every project provides a simple boilerplate and MVC pattern to help you build apps easier.

Features

  • Easy to install
  • Comes with a powerful strong CLI tool (Metro CLI tool)
  • Minimal configuration
  • Simple and complex routing
  • Secure storage
  • Simple and effortless API networking
  • Theming and styling
  • Easy page setup and navigation
  • Built-in route guards
  • Advanced rote data, and query parameters
  • Auth page
  • Page transition
  • Multiple navigation types
  • Set theme colors, styles, base style, define themes, fonts and designs
  • Text extensions

Metro CLI tool

Nylo provides a CLI tool called Metro. It's been built, so you can run commands in the terminal to create things. With Metro, you can create the following in your project:

  • Models
  • Controllers
  • Pages
  • Stateful widgets and stateless widgets
  • Events
  • Providers
  • API Services
  • Themes
  • Route Guards

License

  • MIT License

Resources

Nylo - Powerful Flutter Micro-Framework | Nylo
Nylo is an open-source micro-framework for Flutter that makes building apps a breeze. It provides all the basic building blocks to create a modern application.
GitHub - nylo-core/nylo: Nylo project for Flutter developers
Nylo project for Flutter developers. Contribute to nylo-core/nylo development by creating an account on GitHub.







Open-source Apps

9,500+

Medical Apps

500+

Lists

450+

Dev. Resources

900+

Read more

Bias in Healthcare AI: How Open-Source Collaboration Can Build Fairer Algorithms for Better Patient Care

Bias in Healthcare AI: How Open-Source Collaboration Can Build Fairer Algorithms for Better Patient Care

The integration of artificial intelligence (AI), particularly large language models (LLMs) and machine learning algorithms, into healthcare has transformed the industry dramatically. These technologies enhance various aspects of patient care, from diagnostics and treatment recommendations to continuous patient monitoring. However, the application of AI in healthcare is not without challenges.