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    • Dan KorneffD
      Dan Korneff @ccbl
      last edited by Dan Korneff

      @ccbl Just did the same thing here. Used this script and it crashes HISE when I select the model:
      https://github.com/GuitarML/Automated-GuitarAmpModelling
      It's my first attempt, so I'm obviously doing something wrong. @Christoph-Hart is there a guide to train a model with audio files?
      Also, is there a way to implement parameterized models?

      Dan Korneff - Producer / Mixer / Audio Nerd

      orangeO 1 Reply Last reply Reply Quote 0
      • orangeO
        orange @Dan Korneff
        last edited by

        The Neural node is a promising feature.

        It would be great to see an example guitar amp model (the most used case right now) with parameters.

        develop Branch / XCode 13.1
        macOS Monterey / M1 Max

        A 1 Reply Last reply Reply Quote 0
        • A
          aaronventure @orange
          last edited by

          @orange yeah actually being able to model amps would be magnificent. I have a project in the pipeline where it would save literal gigabytes (no need to deliver processed signals).

          There was also talk in another thread, I think it was the Nam (Neural AMP modeller)

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          • Dan KorneffD
            Dan Korneff
            last edited by

            When I debug, I get failure here:
            Screenshot 2024-09-14 072013.png
            Screenshot 2024-09-14 072306.png

            Is this caused by a key mismatch in the JSON?
            @Christoph-Hart would you be able to take a quick look at this and see where it's muffed?

            TestModel.json

            Dan Korneff - Producer / Mixer / Audio Nerd

            Christoph HartC 1 Reply Last reply Reply Quote 0
            • Christoph HartC
              Christoph Hart @Dan Korneff
              last edited by

              @Dan-Korneff Sure I'll check if I find some time tomorrow, but I suspect there is a channel mismatch between how many channels you feed it and how many it expects.

              Dan KorneffD 2 Replies Last reply Reply Quote 1
              • Dan KorneffD
                Dan Korneff @Christoph Hart
                last edited by

                @Christoph-Hart That would be awesome.
                The json keys look like this:

                {"model_data": {"model": "SimpleRNN", "input_size": 1, "skip": 1, "output_size": 1, "unit_type": "LSTM", "num_layers": 1, "hidden_size": 40, "bias_fl": true}, "state_dict": {"rec.weight_ih_l0": 
                

                Dan Korneff - Producer / Mixer / Audio Nerd

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                • Dan KorneffD
                  Dan Korneff @Christoph Hart
                  last edited by

                  @Christoph-Hart Don't wanna load you up with too many requests, but it would be super rad if we could get this model working in scriptnode. :beaming_face_with_smiling_eyes:

                  Dan Korneff - Producer / Mixer / Audio Nerd

                  Christoph HartC 1 Reply Last reply Reply Quote 0
                  • Christoph HartC
                    Christoph Hart @Dan Korneff
                    last edited by

                    @Dan-Korneff The model just doesn't load (and the crash is because there are no layers to process so it's a trivial out-of-bounds error.

                    Is it a torch or tensorflow model?

                    resonantR Dan KorneffD 2 Replies Last reply Reply Quote 0
                    • resonantR
                      resonant @Christoph Hart
                      last edited by resonant

                      @Christoph-Hart

                      In the homepage: https://github.com/GuitarML/Automated-GuitarAmpModelling

                      It says:

                      Using this repository requires a python environment with the 'pytorch', 'scipy', 'tensorboard' and 'numpy' packages installed.

                      Regarding the Neural node, parameterized FX example such as Distortion or Saturation is required which is currently only Sinus synth example is available on the snippet browser.

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                      • Dan KorneffD
                        Dan Korneff @Christoph Hart
                        last edited by

                        @Christoph-Hart it should be a pytorch model.
                        This is the training script I'm testing with. It uses RTneural as a backend as well:
                        https://github.com/GuitarML/Automated-GuitarAmpModelling

                        Dan Korneff - Producer / Mixer / Audio Nerd

                        Christoph HartC 3 Replies Last reply Reply Quote 0
                        • Christoph HartC
                          Christoph Hart @Dan Korneff
                          last edited by

                          @Dan-Korneff Ah I see, I think the Pytorch loader in HISE expects the output from this script:

                          Link Preview Image
                          RTNeural/python/model_utils.py at main · jatinchowdhury18/RTNeural

                          Real-time neural network inferencing. Contribute to jatinchowdhury18/RTNeural development by creating an account on GitHub.

                          favicon

                          GitHub (github.com)

                          which seems to have a different formatting.

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                          • Christoph HartC
                            Christoph Hart @Dan Korneff
                            last edited by

                            parameterized FX example such as Distortion or Saturation is required which is currently only Sinus synth example is available on the snippet browser.

                            The parameters need to be additional inputs to the neural network. So if you have stereo processing and 3 parameters, the network needs 5 inputs and 2 outputs. The neural network will then analyze how many channels it needs depending on the processing context and use the remaining inputs as parameters.

                            So far is the theory but yeah, it would be good to have a model that we can use to check if it actually works :) I'm a bit out of the loop when it comes to model creation, so let's hope we find a model that uses this structure and can be loaded into HISE.

                            Dan KorneffD 1 Reply Last reply Reply Quote 1
                            • Dan KorneffD
                              Dan Korneff @Christoph Hart
                              last edited by

                              @Christoph-Hart said in Simple ML neural network:

                              I'm a bit out of the loop when it comes to model creation, so let's hope we find a model that uses this structure and can be loaded into HISE.

                              That'll be my homework for the day. Thanks for taking a look.

                              Dan Korneff - Producer / Mixer / Audio Nerd

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                              • C
                                ccbl
                                last edited by

                                I realise we already hashed this discussion out, and people might be sick of it. But IMO the NAM trainer has a really intuitive GUI trainer which allows for different sized networks, at various sample rates. It also has a very defined output model format, which seems to be a sticking point with RTNeural.

                                Given the existence of the core C++ library https://github.com/sdatkinson/NeuralAmpModelerCore

                                Might it be easier to implement this instead, given many people want to use ML Networks for non-linnear processing for the most part?

                                C 1 Reply Last reply Reply Quote 1
                                • P
                                  Phelan Kane
                                  last edited by Phelan Kane

                                  I'll just leave these here:

                                  Link Preview Image
                                  Introduction — Introduction to Audio Synthesizer Programming

                                  favicon

                                  (intro2ddsp.github.io)

                                  Link Preview Image
                                  GitHub - aisynth/diffmoog

                                  Contribute to aisynth/diffmoog development by creating an account on GitHub.

                                  favicon

                                  GitHub (github.com)

                                  https://archives.ismir.net/ismir2021/paper/000053.pdf

                                  Link Preview Image
                                  Efficient neural networks for real-time modeling of analog dynamic range compression

                                  favicon

                                  (csteinmetz1.github.io)

                                  I'm convinced Parameter Inference and TCNs will be the future of audio plug-ins. CNN's will take over circuit modelling as the next fad. Training NN so we can map weights to params to make any sound source will take over. Just have a look at Synth Plant 2.

                                  Having access to trained models from PyTorch in HISE would be awesome. A few VSTs devs are using ONNX Runtime in the cloud to store the weights and the VST calls back to perform the inferences.

                                  P

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                                  • C
                                    ccbl @ccbl
                                    last edited by

                                    @ccbl for instance, how I plan to use HISE is to create plugins where I use a NN to model various non-linear components such as transformers, tubes, fet preamps etc, and then use the regular DSP in between. I'm just a hobbiest who plans to release everything FOSS though, so I'll have to wait and see what you much more clever folks come up with.

                                    Christoph HartC 1 Reply Last reply Reply Quote 1
                                    • Christoph HartC
                                      Christoph Hart @ccbl
                                      last edited by

                                      I realise we already hashed this discussion out, and people might be sick of it. But IMO the NAM trainer has a really intuitive GUI trainer which allows for different sized networks, at various sample rates.

                                      The current state is that I will not add another neural network engine to HISE because of bloat but try to add compatibility of NAM files to RTNeural as suggested in this issue:

                                      Link Preview Image
                                      Add support for NAM files · Issue #143 · jatinchowdhury18/RTNeural

                                      Hi Jatin, how hard would it be to add support for parsing the NAM file format? https://github.com/sdatkinson/NeuralAmpModelerCore Just from a quick peek at both sources the required layers are almost there (except for the wavenet layer w...

                                      favicon

                                      GitHub (github.com)

                                      There seems to be some motivation by other developers to make this happen but it‘s not my best area of expertise and I have a few other priorities at the moment.

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                                      • Christoph HartC
                                        Christoph Hart @Dan Korneff
                                        last edited by

                                        @Dan-Korneff said in Simple ML neural network:

                                        @Christoph-Hart it should be a pytorch model.
                                        This is the training script I'm testing with. It uses RTneural as a backend as well:
                                        https://github.com/GuitarML/Automated-GuitarAmpModelling

                                        Have you tried running it through this script?

                                        Link Preview Image
                                        Automated-GuitarAmpModelling/simple_modelToKeras.py at next · AidaDSP/Automated-GuitarAmpModelling

                                        Contribute to AidaDSP/Automated-GuitarAmpModelling development by creating an account on GitHub.

                                        favicon

                                        GitHub (github.com)

                                        Dan KorneffD 2 Replies Last reply Reply Quote 0
                                        • Dan KorneffD
                                          Dan Korneff @Christoph Hart
                                          last edited by

                                          @Christoph-Hart I just read the thread and found the link. Gonna give this a go first thing this morning.

                                          Dan Korneff - Producer / Mixer / Audio Nerd

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                                          • Dan KorneffD
                                            Dan Korneff @Christoph Hart
                                            last edited by

                                            @Christoph-Hart
                                            https://github.com/AidaDSP/Automated-GuitarAmpModelling

                                            There is already a script in Automated-GuitarAmpModelling named modelToKeras.
                                            "a way to export models generated here in a format compatible with RTNeural"

                                            I'll give both a try and report back.

                                            I'm seeing that there is also a script to convert NAM dataset.

                                            "NAM Dataset
                                            Since I've received a bunch of request from the NAM community, I leave some infos here. Since the NAM models at the moment are not compatible with the inference engine used by rt-neural-generic (RTNeural), you can't use them with our plugin directly. But you can still use our training script and the NAM Dataset, so that you will be able to use the amplifiers that you are using on NAM with our plugin. In the end, training is 10mins on a Laptop with CUDA."

                                            Dan Korneff - Producer / Mixer / Audio Nerd

                                            C 1 Reply Last reply Reply Quote 0
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