mirror of
https://github.com/mikeoliphant/neural-amp-modeler-lv2.git
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Merge branch 'main' of https://github.com/mikeoliphant/neural-amp-modeler-lv2
This commit is contained in:
@@ -0,0 +1,57 @@
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name: Release
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on:
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workflow_dispatch:
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env:
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BUILD_TYPE: Release
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jobs:
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create_release:
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name: Create release
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runs-on: ubuntu-latest
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outputs:
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upload_url: ${{steps.create_release.outputs.upload_url}}
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steps:
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- name: Check out repository
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uses: actions/checkout@v4
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with:
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submodules: recursive
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- name: Create release
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id: create_release
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uses: actions/create-release@v1
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env:
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GITHUB_TOKEN: ${{secrets.GITHUB_TOKEN}}
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with:
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draft: true
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tag_name: ${{github.ref}}
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release_name: Release ${{github.ref}}
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build-windows:
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name: Build Windows
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needs: create_release
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runs-on: windows-latest
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steps:
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- uses: actions/checkout@v3.3.0
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with:
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submodules: recursive
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- name: Build Plugin
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working-directory: ${{github.workspace}}/build
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run: |
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cmake.exe -G "Visual Studio 17 2022" -A x64 -T ClangCL ..
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cmake --build . --config=release -j4
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- name: Add LV2 Archive
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run: Compress-Archive -Path ${{github.workspace}}\build\neural_amp_modeler.lv2 -Destination neural_amp_modeler.lv2.zip
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- name: Upload Plugin Asset
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uses: actions/upload-release-asset@v1
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env:
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GITHUB_TOKEN: ${{ secrets.GITHUB_TOKEN }}
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with:
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upload_url: ${{ needs.create_release.outputs.upload_url }}
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asset_path: ./neural_amp_modeler.lv2.zip
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asset_name: neural_amp_modeler.lv2.zip
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asset_content_type: application/zip
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@@ -4,6 +4,8 @@ https://github.com/sdatkinson/NeuralAmpModelerCore
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https://gitlab.com/libeigen/eigen
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https://github.com/jatinchowdhury18/RTNeural
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https://github.com/lv2/lv2
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In addition, the CMake structure and LV2 plugin structure are based on code from https://github.com/Dougal-s/Aether.
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@@ -1,8 +1,8 @@
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# neural-amp-modeler-lv2
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Bare-bones implementation of [Neural Amp Modeler](https://github.com/sdatkinson/neural-amp-modeler) (NAM) models in an LV2 plugin.
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LV2 plugin for using neural network machine learning amp models.
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**There is no user interface**. Setting the model to use requires that your LV2 host supports atom:Path parameters. Reaper does as of v6.82. Carla and Ardour do. If your favorite LV2 host does not support atom:Path, let them know you want it.
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**There is no custom plugin user interface**. Setting the model to use requires that your LV2 host supports atom:Path parameters. Reaper does as of v6.82. Carla and Ardour do. If your favorite LV2 host does not support atom:Path, let them know you want it.
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If you are looking for a GUI version, @brummer10 [has one here](https://github.com/brummer10/neural-amp-modeler-ui) that works for Linux and Windows. You may also be interested in the the version shipped with the [MOD Desktop App](https://github.com/moddevices/mod-desktop-app), or my digital pedalboard app [Stompbox](https://github.com/mikeoliphant/StompboxUI).
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To get the intended behavior, **you must run your audio host at the same sample rate the model was trained at** (usually 48kHz) - no resampling is done by the plugin.
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@@ -11,13 +11,15 @@ For amp-only models (the most typical), **you will need to run an impulse repons
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### Models and Performance
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The plugin supports both [Neural Amp Modeler (NAM)](https://github.com/sdatkinson/neural-amp-modeler) models and [RTNeural keras json models](https://github.com/jatinchowdhury18/RTNeural) (like those used by [Aida-X](https://github.com/AidaDSP/AIDA-X)).
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The best source of models is [ToneHunt](https://tonehunt.org/).
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NAM models are generally quite expensive to run. This isn't (much of) an issue on modern PCs, but you may have trouble running on less powerful hardware.
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NAM WaveNet models are generally quite expensive to run. This isn't (much of) an issue on modern PCs, but you may have trouble running on less powerful hardware.
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A Raspberry Pi 4 running a 64bit OS can run "standard" NAM models with a bit of room to spare for a cabinet IR and some lightweight effects.
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If you are having trouble running a "standard" model, try looking for "feather" (the least expensive) models. You can find a list of ["feather"-tagged models on ToneHunt](https://tonehunt.org/?tags=feather-mdl). Note that tagging models is up to the submitter, so not all "feather" models are tagged as such - you should be able to find more if you dig around.
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If you are having trouble running a "standard" model, try looking for "feather", or even "nano" (the least expensive) models. You can find a list of ["feather"-tagged models on ToneHunt](https://tonehunt.org/models?tags%5B0%5D=feather-mdl). Note that tagging models is up to the submitter, so not all "feather" models are tagged as such - you should be able to find more if you dig around.
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### Building
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