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Quickly generate PyTorch/Brevitas Scaled Dot-Product Attention dummy operators for exploring QONNX and FINN graph transformations

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iksnagreb/attention-dummy

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attention-dummy

Quickly generate PyTorch/Brevitas Scaled Dot-Product Attention dummy operators for exploring QONNX and FINN graph transformations

Setup

Install the dependencies listed in the requirements.txt, for example via pip (these are mostly for debugging and orchestrating the builds, FINN comes with its own dependencies bundled in a docker image):

pip install -r requirements.txt

Clone and checkout the feature branch of FINN combining all necessary additions and modifications to FINN related to the attention feature and remember the path you cloned into:

git clone https://github.com/iksnagreb/[email protected]/merge/attention

Add the attention-hlslib dependency manually to your FINN installation (note that this is a private repository for now, you may have to request access):

cd <path-to-finn>/deps/
git clone https://github.com/iksnagreb/attention-hlslib.git

Running FINN Builds

The whole export, build and evaluation pipeline is managed by dvc and is executed as follows (see dvc.yaml and params.yaml for configuration options and stage dependencies):

FINN=<path-to-finn> dvc repro

It is possible to specify all FINN related environment variables (e.g. the FINN_HOST_BUILD_DIR) as usual. It might be necessary to pull existing model and build artifacts into the local dvc cache first, though dvc should try to reproduce these if not available:

dvc pull

All output artifacts, i.e., the exported model ONNX files, verification inputs, FINN build logs, reports and the generated bitstream and driver script can be found in the build directory.

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Quickly generate PyTorch/Brevitas Scaled Dot-Product Attention dummy operators for exploring QONNX and FINN graph transformations

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