Reson Studio: An AI Integrated Digital Audio Workstation for Intelligent and Collaborative Music Production
Abstract
Reson Studio is a browser-oriented Digital Audio
Workstation that integrates artificial intelligence to support modern
music creation workflows. Conventional audio production
tools often require expensive licenses, powerful hardware, and
complex installation procedures, restricting access to students
and independent creators. Reson Studio addresses these challenges
by offering a web-based platform that combines realtime
audio and MIDI processing with AI-assisted composition
features. The system supports multitrack recording, live audio
effects, intelligent melody and chord generation, and collaborative
project management through cloud services. Performance
analysis demonstrates low-latency audio processing and reliable
AI-generated musical assistance, indicating that Reson Studio is
a practical, scalable, and accessible solution for contemporary
digital music production.
Keywords:
Digital Audio Workstation, Artificial Intelligence, Music Generation, Web Audio API, MIDI Processing, Audio EngineeringPublished
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