Hapticlabs Features

Hapticlabs is a no-code toolkit that enables designers, developers and researchers to easily design, prototype and deploy immersive haptic interactions across devices without coding.
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Key Features of Hapticlabs

Hapticlabs is a no-code toolkit that enables users to design, prototype, and deploy haptic feedback experiences across different devices. It combines Hapticlabs Studio software with a hardware DevKit and Mobile App, allowing users to create custom haptic interactions without coding knowledge. The platform supports real-time testing, parametric adjustments, and easy deployment for iOS and Android devices, making haptic design accessible to designers, engineers, and researchers.
No-Code Design Interface: Create custom haptic patterns and effects through an intuitive interface without writing any code, featuring parametric adjustments and dynamic effects
Real-time Testing & Playback: Instantly experience and evaluate haptic designs through the DevKit or iOS Player App, enabling rapid iteration and refinement
Cross-device Deployment: Export haptic patterns for implementation across iOS and Android devices, with support for audio synchronization and multiple actuator control
Hardware Integration: DevKit allows augmentation of any physical object with haptic feedback, enabling prototyping of tangible interactions

Use Cases of Hapticlabs

Product Development: Enable product teams to rapidly prototype and implement haptic feedback in new products, reducing development time from months to days
Education & Research: Support academic institutions in teaching haptic technology and conducting research without extensive technical setup
Mobile App Development: Allow app developers to create and implement custom haptic feedback patterns for enhanced user experience
DIY & Maker Projects: Enable hobbyists and makers to incorporate haptic feedback into their projects without requiring advanced technical knowledge

Pros

No coding knowledge required for creating haptic experiences
Rapid prototyping and testing capabilities
Comprehensive ecosystem from design to deployment

Cons

iOS mobile features are more extensive than Android support
Hardware DevKit required for physical prototyping

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