Staff Machine Learning Engineer, Voice AI

Together AI Together AI · Data AI · San Francisco, CA · Engineering

Staff ML Engineer focused on optimizing the model serving layer for voice AI applications, including speech-to-text and text-to-speech models, with a focus on latency, throughput, and GPU utilization using inference engines like TRT-LLM and SGLang. The role involves building evaluation frameworks, supporting model partners, and shaping the architecture for next-generation voice models.

What you'd actually do

  1. Own the voice inference roadmap end-to-end — define and execute the technical strategy for optimizing STT, TTS, and speech-to-speech models across Together's infrastructure, with a clear-eyed view of where the field is heading and how to position the platform ahead of it.
  2. Drive best-in-class inference performance — architect and implement systems targeting leading TTFB, throughput, and GPU utilization for voice workloads; set the performance bar others in the industry measure against, not just catch up to.
  3. Lead productionization of voice models at scale — design the serving architecture for serverless and dedicated endpoints, including batching strategies, streaming inference pipelines, and memory management tailored to real-time audio; own reliability and latency SLAs.
  4. Build the voice evaluation platform — design a rigorous, extensible evaluation framework covering WER across accents, languages, and noise conditions for STT; naturalness, latency, and pronunciation fidelity for TTS; establish the internal benchmark methodology that informs model selection and roadmap decisions.
  5. Shape the architecture for next-generation model support — anticipate and enable emerging model paradigms — audio-native LLMs, codec-based architectures (SNAC, Encodec), and end-to-end speech-to-speech systems — before they're mainstream, not after.

Skills

Required

  • 8+ years of ML engineering experience
  • demonstrated focus on model serving, inference optimization, or ML infrastructure at production scale
  • Deep, practical expertise in LLM serving engines (vLLM, SGLang, TensorRT-LLM, or equivalent)
  • Expert-level Python and PyTorch proficiency
  • strong command of GPU optimization — CUDA kernels, memory hierarchies, profiling toolchains
  • Proven system design judgment
  • Strong technical leadership
  • Sharp product intuition for developer tooling
  • Proven ability to move fast in ambiguous environments
  • Strong foundation in speech and audio ML (ASR/TTS architectures, audio signal processing)

Nice to have

  • Familiarity with audio

What the JD emphasized

  • production-grade, real-time voice agents and applications
  • best-in-class latency and reliability
  • drive the model serving layer for voice workloads
  • optimize how we serve models like Whisper, Parakeet, Orpheus, and Kokoro — pushing latency and throughput to the frontier
  • profile GPU utilization, design batching strategies for streaming audio
  • ensure new model architectures can go from research to production quickly
  • foundational hire on a small, high-impact team
  • Voice inference has unique challenges — streaming audio, tokenization, real-time latency budgets — that require dedicated ML engineering focus
  • shape how Together serves voice models as the industry moves from pipeline architectures (ASR → LLM → TTS) toward end-to-end speech-to-speech
  • Own the model serving stack that powers Together's voice platform across STT, TTS, and speech-to-speech
  • Work directly with state-of-the-art accelerators (H100s, H200s, B200s) to optimize voice model inference
  • Collaborate with model partners (Cartesia, Deepgram, Rime, and others) to bring their models to production on Together's infrastructure
  • Build quality evaluation frameworks that guide model selection for customers and inform the roadmap
  • Join a small, early-stage team with outsized impact on a fast-growing product area
  • Own the voice inference roadmap end-to-end
  • define and execute the technical strategy for optimizing STT, TTS, and speech-to-speech models across Together's infrastructure, with a clear-eyed view of where the field is heading and how to position the platform ahead of it
  • Drive best-in-class inference performance
  • architect and implement systems targeting leading TTFB, throughput, and GPU utilization for voice workloads; set the performance bar others in the industry measure against, not just catch up to
  • Lead productionization of voice models at scale
  • design the serving architecture for serverless and dedicated endpoints, including batching strategies, streaming inference pipelines, and memory management tailored to real-time audio; own reliability and latency SLAs
  • Build the voice evaluation platform
  • design a rigorous, extensible evaluation framework covering WER across accents, languages, and noise conditions for STT; naturalness, latency, and pronunciation fidelity for TTS; establish the internal benchmark methodology that informs model selection and roadmap decisions
  • Shape the architecture for next-generation model support
  • anticipate and enable emerging model paradigms — audio-native LLMs, codec-based architectures (SNAC, Encodec), and end-to-end speech-to-speech systems — before they're mainstream, not after
  • Serve as the technical DRI for model partner integrations
  • lead deep collaboration with partners such as Cartesia, Deepgram, and Rime
  • own the full lifecycle from integration to optimization to ongoing performance accountability
  • Diagnose and resolve the hardest performance problems in the stack
  • conduct systematic profiling and root-cause analysis from GPU kernel behavior to framework-level bottlenecks
  • drive shipped improvements with documented, measurable impact
  • Influence platform architecture across the organization
  • partner with platform engineering leadership to ensure the serving layer is built for the latency and reliability demands of real-time voice APIs
  • your technical decisions should raise the ceiling for the whole team
  • Define and scale voice fine-tuning capabilities
  • lead the technical direction for enabling customers to fine-tune STT and TTS models on Together's infrastructure, establishing the primitives for differentiated voice experiences
  • Lay technical foundations for a category-defining product surface
  • architect systems with enough foresight that they support multiple new voice products with minimal rework
  • think in terms of platforms, not point solutions
  • 8+ years of ML engineering experience, with a demonstrated focus on model serving, inference optimization, or ML infrastructure at production scale — including systems you've owned from design through live traffic
  • Deep, practical expertise in LLM serving engines (vLLM, SGLang, TensorRT-LLM, or equivalent) — you've modified engine internals, debugged edge cases under load, and contributed improvements back; you don't stop at the API surface
  • Expert-level Python and PyTorch proficiency, with a strong command of GPU optimization — CUDA kernels, memory hierarchies, profiling toolchains — and a track record of turning that knowledge into shipped latency or throughput wins
  • Proven system design judgment — you've made architectural decisions that held up at scale and influenced how a team or platform evolved; you can articulate the tradeoffs you made and why
  • Strong technical leadership — you operate with high autonomy, define the right problems before solving them, and raise the bar for engineering quality around you without requiring process overhead
  • Sharp product intuition for developer tooling — you understand what voice application developers actually need to ship great products, and you let that shape your technical priorities, not just the other way around
  • Proven ability to move fast in ambiguous environments — you've thrived on early-stage or platform teams where scope is wide, ownership is deep, and the roadmap you build is the one you execute
  • Strong foundation in speech and audio ML (ASR/TTS architectures, audio signal processing) — directly relevant experience is strongly preferred; exceptional ML engineering fundamentals with genuine curiosity about the domain is also considered

Other signals

  • building inference infrastructure for voice applications
  • optimize model serving for speech-to-text and text-to-speech models
  • drive model serving layer for voice workloads
  • optimize inference engines like TRT-LLM and SGLang
  • push latency and throughput to the frontier
  • profile GPU utilization
  • design batching strategies for streaming audio
  • ensure new model architectures can go from research to production quickly
  • foundational hire on a small, high-impact team
  • voice inference has unique challenges
  • streaming audio, tokenization, real-time latency budgets
  • shape how Together serves voice models
  • industry moves from pipeline architectures toward end-to-end speech-to-speech
  • Own the model serving stack that powers Together's voice platform across STT, TTS, and speech-to-speech
  • Work directly with state-of-the-art accelerators (H100s, H200s, B200s) to optimize voice model inference
  • Collaborate with model partners (Cartesia, Deepgram, Rime, and others) to bring their models to production on Together's infrastructure
  • Build quality evaluation frameworks that guide model selection for customers and inform the roadmap
  • Join a small, early-stage team with outsized impact on a fast-growing product area
  • Own the voice inference roadmap end-to-end
  • define and execute the technical strategy for optimizing STT, TTS, and speech-to-speech models across Together's infrastructure
  • clear-eyed view of where the field is heading and how to position the platform ahead of it
  • Drive best-in-class inference performance
  • architect and implement systems targeting leading TTFB, throughput, and GPU utilization for voice workloads
  • set the performance bar others in the industry measure against, not just catch up to
  • Lead productionization of voice models at scale
  • design the serving architecture for serverless and dedicated endpoints
  • batching strategies, streaming inference pipelines, and memory management tailored to real-time audio
  • own reliability and latency SLAs
  • Build the voice evaluation platform
  • design a rigorous, extensible evaluation framework covering WER across accents, languages, and noise conditions for STT; naturalness, latency, and pronunciation fidelity for TTS
  • establish the internal benchmark methodology that informs model selection and roadmap decisions
  • Shape the architecture for next-generation model support
  • anticipate and enable emerging model paradigms — audio-native LLMs, codec-based architectures (SNAC, Encodec), and end-to-end speech-to-speech systems — before they're mainstream, not after
  • Serve as the technical DRI for model partner integrations
  • lead deep collaboration with partners such as Cartesia, Deepgram, and Rime
  • own the full lifecycle from integration to optimization to ongoing performance accountability
  • Diagnose and resolve the hardest performance problems in the stack
  • conduct systematic profiling and root-cause analysis from GPU kernel behavior to framework-level bottlenecks
  • drive shipped improvements with documented, measurable impact
  • Influence platform architecture across the organization
  • partner with platform engineering leadership to ensure the serving layer is built for the latency and reliability demands of real-time voice APIs
  • your technical decisions should raise the ceiling for the whole team
  • Define and scale voice fine-tuning capabilities
  • lead the technical direction for enabling customers to fine-tune STT and TTS models on Together's infrastructure
  • establishing the primitives for differentiated voice experiences
  • Lay technical foundations for a category-defining product surface
  • architect systems with enough foresight that they support multiple new voice products with minimal rework
  • think in terms of platforms, not point solutions
  • 8+ years of ML engineering experience
  • demonstrated focus on model serving, inference optimization, or ML infrastructure at production scale
  • systems you've owned from design through live traffic
  • Deep, practical expertise in LLM serving engines (vLLM, SGLang, TensorRT-LLM, or equivalent)
  • modified engine internals, debugged edge cases under load, and contributed improvements back
  • don't stop at the API surface
  • Expert-level Python and PyTorch proficiency
  • strong command of GPU optimization — CUDA kernels, memory hierarchies, profiling toolchains
  • track record of turning that knowledge into shipped latency or throughput wins
  • Proven system design judgment
  • made architectural decisions that held up at scale and influenced how a team or platform evolved
  • can articulate the tradeoffs you made and why
  • Strong technical leadership
  • operate with high autonomy, define the right problems before solving them, and raise the bar for engineering quality around you without requiring process overhead
  • Sharp product intuition for developer tooling
  • understand what voice application developers actually need to ship great products
  • let that shape your technical priorities, not just the other way around
  • Proven ability to move fast in ambiguous environments
  • thrived on early-stage or platform teams where scope is wide, ownership is deep, and the roadmap you build is the one you execute
  • Strong foundation in speech and audio ML (ASR/TTS architectures, audio signal processing)
  • directly relevant experience is strongly preferred
  • exceptional ML engineering fundamentals with genuine curiosity about the domain is also considered
  • Familiarity with audio