Kuassa have released NAM Loader, available as a FREE download.
NAM Loader is a module for Amplifikation 360. It’s powered by the open-source Neural Amp Modeler (NAM) project and brings deep learning-based guitar tone modeling directly into the Amplifikation 360 ecosystem.
NAM Loader is a powerful addition to your Amplifikation 360 modular rig.
It utilizes the Neural Amp Modeler (NAM) engine — an open-source deep learning framework designed to replicate real-world guitar amps, preamps, distortion pedals, and more with an astonishing level of realism and nuance.
Whether you’re chasing the elusive feel of a rare vintage amp or experimenting with complex pedalboard tones, NAM Loader brings a whole new world of tone possibilities into your A360 environment.
This isn’t just another amp sim. By harnessing deep learning; specifically, neural network models trained on actual gear behavior, and NAM Loader offers an authentic and dynamic tonal response with different to component-based modeling (which we are an expert of). It’s like having the best of both worlds of Guitar Amp Simulation, now seamlessly integrated behavior, Amplifikation 360 for your modular convenience.
Features include:
- Powered by Neural Amp Modeler (NAM): A revolutionary deep learning tech that replicates the feel and behavior of real gear.
- FREE and Exclusive: Only available to full Amplifikation 360 Bundle owners or those using “Complete My A360 Bundle.”
- Seamless Integration: Works natively inside Amplifikation 360’s modular environment—drag, drop, and route as you would with any Kuassa module.
- Open-Source Flexibility: Load your own .nam models or download from the ever-growing community sharing NAM captures.
NAM Loader is not available for individual purchase — it’s a free exclusive for full Amplifikation 360 Bundle owners only
For more information and to download Kuassa NAM Loader and Amplifikation 360, click here:
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