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arxiv:2412.11943

autrainer: A Modular and Extensible Deep Learning Toolkit for Computer Audition Tasks

Published on Apr 10, 2025
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Abstract

autrainer is a PyTorch-based deep learning framework designed for computer audition tasks that enables rapid, reproducible, and extensible training with low-code implementation and diverse neural network support.

AI-generated summary

This work introduces the key operating principles for autrainer, our new deep learning training framework for computer audition tasks. autrainer is a PyTorch-based toolkit that allows for rapid, reproducible, and easily extensible training on a variety of different computer audition tasks. Concretely, autrainer offers low-code training and supports a wide range of neural networks as well as preprocessing routines. In this work, we present an overview of its inner workings and key capabilities.

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