tamlablinz/RAVE_PCA
Interactive Performance, Analysis and Visualization of RAVE Latent Spaces via PCA and OSC Integration
This tool helps sound artists and researchers explore the "latent space" of audio generated by a RAVE model. You input audio files and a pre-trained RAVE model, and it outputs an interactive visual map (2D or 3D) of how your sounds relate to each other. It's designed for someone experimenting with sound synthesis, analysis, and real-time audio manipulation.
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Use this if you want to visually understand and interact with the underlying characteristics (latent vectors) of a collection of sounds processed by a RAVE model, and then send those characteristics in real-time to external sound synthesis software.
Not ideal if you are looking for a general-purpose audio analysis tool or if you do not work with RAVE models and OSC-enabled sound applications.
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Python
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Last pushed
Jul 15, 2025
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