A Scalable Model Specialization Framework for Training and Inference using Submodels and its Application to Speech Model Personalization
Fadi Biadsy, Youzheng Chen, Xia Zhang, Oleg Rybakov, Andrew Rosenberg,, Pedro J. Moreno

TL;DR
This paper presents a scalable framework using Submodels for efficient training and inference, demonstrated on speech personalization, achieving high throughput and reduced data needs.
Contribution
It introduces a modular Submodel framework with parallel training methods, enabling scalable model personalization and inference for multiple domains.
Findings
128x Submodel throughput without accuracy loss
Scalable speaker-embedding space reduces training data
Framework applicable to real-time speech personalization
Abstract
Model fine-tuning and adaptation have become a common approach for model specialization for downstream tasks or domains. Fine-tuning the entire model or a subset of the parameters using light-weight adaptation has shown considerable success across different specialization tasks. Fine-tuning a model for a large number of domains typically requires starting a new training job for every domain posing scaling limitations. Once these models are trained, deploying them also poses significant scalability challenges for inference for real-time applications. In this paper, building upon prior light-weight adaptation techniques, we propose a modular framework that enables us to substantially improve scalability for model training and inference. We introduce Submodels that can be quickly and dynamically loaded for on-the-fly inference. We also propose multiple approaches for training those…
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Taxonomy
TopicsSpeech Recognition and Synthesis · Topic Modeling · Natural Language Processing Techniques
