talk-data.com
Scaling Background Noise Filtration for AI Voice Agents
Speakers
Topics
Description
In the world of AI voice agents, especially in sensitive contexts like healthcare, audio clarity is everything. Background noise—a barking dog, a TV, street sounds—degrades transcription accuracy, leading to slower, clunkier, and less reliable AI responses. But how do you solve this in real-time without breaking the bank?
This talk chronicles our journey at a health-tech startup to ship background noise filtration at scale. We'll start with the core principles of noise reduction and our initial experiments with open-source models, then dive deep into the engineering architecture required to scale a compute-hungry ML service using Python and Kubernetes. You'll learn about the practical, operational considerations of deploying third-party models and, most importantly, how to measure their true impact on the product.