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Hauptverfasser: Benetatos, Christodoulos, Cwitkowitz, Frank, Pruyne, Nathan, Garcia, Hugo Flores, O'Reilly, Patrick, Duan, Zhiyao, Pardo, Bryan
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2503.02977
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author Benetatos, Christodoulos
Cwitkowitz, Frank
Pruyne, Nathan
Garcia, Hugo Flores
O'Reilly, Patrick
Duan, Zhiyao
Pardo, Bryan
author_facet Benetatos, Christodoulos
Cwitkowitz, Frank
Pruyne, Nathan
Garcia, Hugo Flores
O'Reilly, Patrick
Duan, Zhiyao
Pardo, Bryan
contents HARP 2.0 brings deep learning models to digital audio workstation (DAW) software through hosted, asynchronous, remote processing, allowing users to route audio from a plug-in interface through any compatible Gradio endpoint to perform arbitrary transformations. HARP renders endpoint-defined controls and processed audio in-plugin, meaning users can explore a variety of cutting-edge deep learning models without ever leaving the DAW. In the 2.0 release we introduce support for MIDI-based models and audio/MIDI labeling models, provide a streamlined pyharp Python API for model developers, and implement numerous interface and stability improvements. Through this work, we hope to bridge the gap between model developers and creatives, improving access to deep learning models by seamlessly integrating them into DAW workflows.
format Preprint
id arxiv_https___arxiv_org_abs_2503_02977
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle HARP 2.0: Expanding Hosted, Asynchronous, Remote Processing for Deep Learning in the DAW
Benetatos, Christodoulos
Cwitkowitz, Frank
Pruyne, Nathan
Garcia, Hugo Flores
O'Reilly, Patrick
Duan, Zhiyao
Pardo, Bryan
Audio and Speech Processing
Machine Learning
HARP 2.0 brings deep learning models to digital audio workstation (DAW) software through hosted, asynchronous, remote processing, allowing users to route audio from a plug-in interface through any compatible Gradio endpoint to perform arbitrary transformations. HARP renders endpoint-defined controls and processed audio in-plugin, meaning users can explore a variety of cutting-edge deep learning models without ever leaving the DAW. In the 2.0 release we introduce support for MIDI-based models and audio/MIDI labeling models, provide a streamlined pyharp Python API for model developers, and implement numerous interface and stability improvements. Through this work, we hope to bridge the gap between model developers and creatives, improving access to deep learning models by seamlessly integrating them into DAW workflows.
title HARP 2.0: Expanding Hosted, Asynchronous, Remote Processing for Deep Learning in the DAW
topic Audio and Speech Processing
Machine Learning
url https://arxiv.org/abs/2503.02977