Why Material UI ?

DEV CommunityMonday, November 3, 2025 at 8:31:51 AM
Why Material UI ?
Material UI, also known as MUI, is a powerful open-source React UI framework that simplifies the development process by providing a library of customizable components based on Google's Material Design. This makes it easier for developers to create visually appealing and functional applications quickly. Its popularity stems from its ease of use and the flexibility it offers, making it a go-to choice for many in the tech community.
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