
Sign up to save your podcasts
Or


This episode is brought to you by Hyperbolic and the MLflow team. Check out more information at hyperbolic.ai and MLflow.org.
What does it actually take to build voice AI at a billion-interaction scale? This episode features an ex-Amazon voice AI engineer who built customer support systems handling 2 billion+ interactions โ now working on next-gen voice agent platforms. Anurag digs deep into the real engineering tradeoffs, design patterns, and use cases that separate production-grade voice agents from demos.
Voice Agent Use Cases // MLOps Podcast #372 with Anurag Beniwal, Member of the Technical Staff at ElevenLabs
๐๏ธ Topics covered:
๐น Cascaded vs. speech-to-speech โ Why cascaded systems still win in production, and how to make them feel natural without sacrificing control
๐น Latency masking โ Foreground/background model architecture and how to buy yourself time while deep retrieval runs
๐น Constellation of models โ Using Haiku for tool calling, fine-tuned smaller models for response generation, and why "one model for everything" breaks at scale
๐น Turn-taking & ASR challenges โ Why voice is harder than chat: accents, noise, silence detection, and domain-specific fine-tuning
๐น Level 1 vs Level 2 customer support โ Why today's agents max out at Level 1 and what it takes to capture Level 2 expert judgment
๐น Inbound vs. outbound sales agents โ Where voice agents are already winning, and why inbound lead qualification beats cold outbound
๐น Booking, reservations & concierge โ The clearest near-term wins for voice agents across hospitality, home services, and SMBs
๐น Continual learning from natural language feedback โ How to build agents that improve from real operator feedback without ML expertise
๐น Conversational TTS โ Why passing full conversation history to your TTS model changes everything for tone consistency
๐น User tiers for voice platforms โ Non-technical business owners vs. developers vs. enterprise: why one interface doesn't fit all.
If you're building production voice agents, evaluating voice AI vendors, or scaling AI-first customer support โ this episode is packed with hard-won lessons from someone who's done it at Amazon scale.
๐ Links & Resources:
MLOps.community: https://mlops.communityGoogle Scholar: https://scholar.google.com/citations?user=g_QB5WgAAAAJ&hl=en&o
Amazon science page: https://www.amazon.science/author/anurag-beniwal
Join the Community: https://go.mlops.community/YTJoinIn
Get the newsletter: https://go.mlops.community/YTNewsletter
MLOps GPU Guide: https://go.mlops.community/gpuguide
โฑ๏ธ Timestamps
[00:00] Cascaded Systems Control Challenge
[05:35] Voice vs Chat Complexity
[14:16] MLflow's open source platform
[15:03] AI Model Constellations
[23:00] Model Constellations Use Cases
[31:40] Voice vs Text Context
[33:54] Voice as Thought Capture
[42:11] Cascaded vs Speech-to-Speech Debate
[50:02] Wrap up
By Demetrios4.6
2323 ratings
This episode is brought to you by Hyperbolic and the MLflow team. Check out more information at hyperbolic.ai and MLflow.org.
What does it actually take to build voice AI at a billion-interaction scale? This episode features an ex-Amazon voice AI engineer who built customer support systems handling 2 billion+ interactions โ now working on next-gen voice agent platforms. Anurag digs deep into the real engineering tradeoffs, design patterns, and use cases that separate production-grade voice agents from demos.
Voice Agent Use Cases // MLOps Podcast #372 with Anurag Beniwal, Member of the Technical Staff at ElevenLabs
๐๏ธ Topics covered:
๐น Cascaded vs. speech-to-speech โ Why cascaded systems still win in production, and how to make them feel natural without sacrificing control
๐น Latency masking โ Foreground/background model architecture and how to buy yourself time while deep retrieval runs
๐น Constellation of models โ Using Haiku for tool calling, fine-tuned smaller models for response generation, and why "one model for everything" breaks at scale
๐น Turn-taking & ASR challenges โ Why voice is harder than chat: accents, noise, silence detection, and domain-specific fine-tuning
๐น Level 1 vs Level 2 customer support โ Why today's agents max out at Level 1 and what it takes to capture Level 2 expert judgment
๐น Inbound vs. outbound sales agents โ Where voice agents are already winning, and why inbound lead qualification beats cold outbound
๐น Booking, reservations & concierge โ The clearest near-term wins for voice agents across hospitality, home services, and SMBs
๐น Continual learning from natural language feedback โ How to build agents that improve from real operator feedback without ML expertise
๐น Conversational TTS โ Why passing full conversation history to your TTS model changes everything for tone consistency
๐น User tiers for voice platforms โ Non-technical business owners vs. developers vs. enterprise: why one interface doesn't fit all.
If you're building production voice agents, evaluating voice AI vendors, or scaling AI-first customer support โ this episode is packed with hard-won lessons from someone who's done it at Amazon scale.
๐ Links & Resources:
MLOps.community: https://mlops.communityGoogle Scholar: https://scholar.google.com/citations?user=g_QB5WgAAAAJ&hl=en&o
Amazon science page: https://www.amazon.science/author/anurag-beniwal
Join the Community: https://go.mlops.community/YTJoinIn
Get the newsletter: https://go.mlops.community/YTNewsletter
MLOps GPU Guide: https://go.mlops.community/gpuguide
โฑ๏ธ Timestamps
[00:00] Cascaded Systems Control Challenge
[05:35] Voice vs Chat Complexity
[14:16] MLflow's open source platform
[15:03] AI Model Constellations
[23:00] Model Constellations Use Cases
[31:40] Voice vs Text Context
[33:54] Voice as Thought Capture
[42:11] Cascaded vs Speech-to-Speech Debate
[50:02] Wrap up

1,296 Listeners

288 Listeners

1,105 Listeners

626 Listeners

583 Listeners

306 Listeners

343 Listeners

212 Listeners

551 Listeners

512 Listeners

150 Listeners

101 Listeners

228 Listeners

688 Listeners

34 Listeners