Simple ML neural network
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@Lindon said in Simple ML neural network:
-especially as I have no idea what STFT is
Short-Time Fourier Transform, basically a series of FFT's across the length of the signal to see how the frequency response changes over time, "multi-resolution" STFT means to create multiple STFT's of the same signal using different settings, which helps solve the frequency-time resolution issue
or dilated convolutions
if i'm remembering correctly, dilated convolutions basically refers to a layer in the network "skipping" a certain number of values and relying on other layers to process them, this means the resolution for that single layer might be lower, and therefore less computationally intensive which means you can have a larger receptive field (how far back in time the model can look)
Green: No dilation
Red: Skips 1
Blue: Skips 2or how to build a model using them
both Torch & Tensorflow have built-in dilation parameters for layers:
tf.keras.layers.Conv1D(dilation_rate=1)
torch.nn.Conv1d(dilation=1))
Hmm, this is getting more complex the more I look at it.
Yep, the cool part of ML is how automated it is, the uncool part is the massive amount of prerequisite work needed to be able to create robust models that do all the work for you
if you're wondering if I think you should do ML or old school blackbox modelling for your specific project, I'd lean towards the latter, especially if you already have experience in the field, even hiring someone to consult on an ML project would be tricky because the field is very new and there's still a lot of problems to be solved
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@iamlamprey yep I am beginning to see the magnitude of the problem space,
This is an interesting interview;
https://www.youtube.com/watch?v=WLTzbEKTxhk (starts at min 12)
For those who dont know Neural DSP are the new kids on the block and I guess are the reason for all the fuss about neural net based guitar amp sims.
I looked up how they were funded, they got E5.9 Million in 3 Round of funding... and a lot of them arrived at work day 1 with PhDs in this field, and it still took them from 2018 to 2022 to get anything out the door...so to be in their league -= a lot of money + a lot of research+ a lot of time.
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@Lindon Let me know if you want my IR script :D
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@d-healey said in Simple ML neural network:
@Lindon Let me know if you want my IR script :D
My that made me laugh out loud.....
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Sorry to hijack this thread potentially. I wonder if it would be worth implementing https://github.com/sdatkinson/NeuralAmpModelerCore
NAM has been gathering a lot of steam recently, the training process for new models is really easy to do and IMO it produces the best sounding models of gear to date, at least gear without time constants. It would be a great way to produce amp sims, or even just add a really accurate post sound processing option in synths and virtual instruments. Imagine an E-piano or organ etc with a great tube amp drive processor.
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@ccbl So when I was looking at using ML to do Amp Sims I looked at the implementation you point at.
The important thing to remember when looking at this stuff is to realise that nearly every implementation(including the one you point at) are "snapshots" of an amp in a given state (controls set to a given position), yes they tend to do the non-linearities better than say an IR would, but what they dont do is allow you to meaningfully change settings on the amp sim (pre-amp, treble boost, mid, bass, etc. etc.) and get back the non-linearities associated with that combination of control settings.
What they do is post-process(or pre-process) the signal with eq etc. Now this is fine, but.... what you get are the non-linearities of a given snapshot with some post-processing on it. This can sound acceptable, but its not actually correct. Those Neural DSP guys have some deep, gnarly and secret approaches/algos for doing the sim correctly... But if you uncover what those approaches are then feel free to post them here :beaming_face_with_smiling_eyes:
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@Lindon The audio signal does not have to be the only inputs into the network - you can train it with additional parameters as input and if the training is successful, it will mimic the parameters in the 1-dimensional space that you gave it.
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@Lindon I'm well aware of how NAM works. It is possible to make a parameterized model. But the thing is with the right DSP surrounding it you don't really need to and you drastically cut down the number of input output pairs you need to make. For instance, you can split the pre-amp and poweramp and just do digital EQ in between given that the EQ tends to be after the non-linear gain, and the EQ itself behaves linearly. But those eq inputs feed into the power amp model.
A lot of the time for what you want to do, a single snapshot is actually fine, just varying the input gain alters the amount of saturation, say in a tube mic pre or something like that. So given NAM is the best out there right now it would make it a really useful module I think in HISE.
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@ccbl said in Simple ML neural network:
A lot of the time for what you want to do, a single snapshot is actually fine, just varying the input gain alters the amount of saturation, say in a tube mic pre or something like that. So given NAM is the best out there right now it would make it a really useful module I think in HISE.
What does that offer that cannot be achieved with the current neural network inference framework in HISE (RT Neural)?
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@Christoph-Hart A few things I guess. The number of NAM captures currently dwarfs all the other that are supported by RTNeural (I have used guitar ML in the past for instance) and it's only growing (here for example https://tonehunt.org/). Not just 1000s of amp snap shots but people are really getting into studio gear captures too. There's a huge group of people for support in generating good captures and technical training support. And of course it is probably the best sounding in terms of accuracy right now.
I'm interested enough in using a neural net that I'm willing to use RTNeural, it's still a great system. NAM is becoming a defacto standard in a lot of NN capture spaces currently though. So for the future it seems like a good addition to the code base. And on a personal level I've already created over 1000 NAM models.
Maybe once I've learned more of the basics, if someone is willing to help me with it I would appreciate it.
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@ccbl And can't you just convert the models to work in RTNeural? In the end it's just running maths and I'm not super interested in adding the same thing but in 5 variations.
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@Christoph-Hart but....
This would require the developer(s) to convert each from the NAM model, and if HISE loaded/played NAM models natively - then the end user could load any model they wanted...so 1,000s of models....instantly available.
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@ccbl This looks great, the colab notebook for training is super simple as well (you reamp the test signal and upload it, then wait).
Someone already implemented it into a pedal and it's selling for β¬500.
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@Lindon it would rather be a converter built into HISE that takes the model files and create parameters for a RTNeural network.
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@Christoph-Hart Doesn't that warrant a whole user-facing workflow for implementation?
Having a NAM loader directly lets the end user load .nam files as if they were IRs for the convolution module.
I mean the whole thing does feel like a ConvolutionPlus, because it can properly model nonlinearities but doesn't have parameter options.
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@aaronventure the api will be the smallest issue here the question is rather whether I should add that entire framework or modify RTneural to load the NAM files. From a quick peek at the source code itβs mostly there and there are just a few layer types missing.
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@Christoph-Hart is performance the same?
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I'd love to implement Neural Amp Modeller into HISE.
What are the chances of that???
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@aaronventure no idea but I would guess that the performance is pretty much the same as they do the same calculations.
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I think the only issue with conversion will be that most NAM models are wavenet which is not currently supported by RTNeural.
NAM has been tuned specifically around this architecture which is one of the reasons it's currently considered the most realistic.
Whether or not this poses a barrier to conversion, and if in conversion you will loose some of the realism that has been achieved I'm not sure. I think as stated real time performance will likely be the same. NAM currently operates with zero latency, which I think RTNeural also does from memory, it's really about CPU utilisation.