Senior Machine Learning Engineer, Voice AI

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

Senior ML Engineer focused on optimizing the model serving layer for voice AI workloads, including speech-to-text and text-to-speech models. The role involves hands-on work with inference engines, GPU optimization, batching strategies, and ensuring new model architectures can be productionized efficiently. The goal is to achieve best-in-class latency and reliability for real-time voice applications.

What you'd actually do

  1. Optimize inference performance for voice models (STT, TTS, speech-to-speech) — targeting best-in-class TTFB, throughput, and GPU utilization across our curated model set.
  2. Productionize voice models on serverless and dedicated endpoints, including batching strategies, streaming inference, and memory management tailored to audio workloads.
  3. Build and maintain a voice model evaluation framework — measuring WER across accents, languages, and noise conditions for STT; naturalness, latency, and pronunciation accuracy for TTS.
  4. Enable new model architectures in our serving stack as the field evolves, including audio-native LLMs, codec-based models (SNAC), and speech-to-speech systems.
  5. Collaborate with model partners to integrate and optimize their models (Cartesia, Deepgram, Rime, and others) running on Together's infrastructure.

Skills

Required

  • 5+ years of experience in ML engineering, with a focus on model serving, inference optimization, or ML infrastructure.
  • Hands-on experience with LLM serving engines (vLLM, SGLang, TensorRT-LLM, or similar) — comfortable reading and modifying engine internals, not just using APIs.
  • Strong proficiency in Python and PyTorch; experience with GPU profiling and optimization (CUDA, memory management, kernel-level debugging).
  • Track record of shipping ML systems to production with measurable performance improvements.
  • Strong product sense — you think about what developers building voice apps actually need, not just what's technically interesting.
  • Comfort working on a small, early-stage team where you'll wear multiple hats and move fast.

Nice to have

  • Experience with speech and audio ML (ASR, TTS architectures, audio signal processing) is a strong plus but not required — you can learn this quickly if you have strong ML engineering fundamentals.
  • Familiarity with audio codecs and tokenization schemes (SNAC, Encodec, DAC) is a plus.
  • Experience training or fine-tuning speech models is a plus.

What the JD emphasized

  • production-grade
  • real-time
  • streaming audio
  • tokenization
  • real-time latency budgets
  • production
  • production
  • production
  • production
  • production

Other signals

  • inference infrastructure
  • voice AI
  • real-time
  • low-latency
  • production-grade