Phonic is a product and research lab focused on powering the most realistic, human-like voice AI conversations. We've re-thought the entire stack in pursuit of this goal, from models to product, to create voice agents that feel like they truly understand you, respond emotionally and perform agentic tasks with frontier intelligence.
Our team includes top-tier AI researchers, international olympiad medalists, and former founders.
Our customers include companies that are building voice-native AI products in industries such as customer support, healthcare, and logistics. We have raised over $30M from tier 1 VCs.
About the TeamPhonic has a very talent-dense and close-knit team. We collaborate with high trust and are constantly trying to improve how we work to deliver world-class research and product. Everyone takes ownership in what they do and they aren’t afraid to dive in headfirst into new problems. Our team includes top-tier AI researchers, international olympiad medalists, and former founders and we’re fully in-person in our SF office.
About The RoleAs a Research Scientist at Phonic, you'll drive original research that pushes the boundary of what's possible in voice AI. You'll own research directions end-to-end - from identifying the right problems to designing experiments, developing novel methods, and seeing results through to production impact. Your work will directly shape the models at the core of Phonic's product.
You'll be working alongside a team of world-class researchers and engineers who move fast and hold a high bar. This isn't a role focused on incremental improvements, we're looking for someone with the taste to identify what matters, the rigor to pursue it correctly, and the drive to ship it. You'll be fully in-person in our SF office.
What You’ll DoIdentify high-leverage research problems across the voice AI stac: synthesis, modeling, alignment, perception, and take full ownership of driving them forward
Design and run rigorous experiments, then translate what works into shipped improvements to our models and product
Work directly with research engineers to move fast from prototype to production
Help set the scientific direction of the team and raise the bar on how we do research
A track record of original research - you've found a real problem, developed a novel approach, and seen it through
Deep expertise in at least one of: speech synthesis, ASR, audio modeling, language modeling, or multimodal learning
Fluency in the math, probability, optimization, linear algebra, and the ability to reason about model behavior from first principles
You move fluidly between ideas and implementation; you don't just write papers, you build things
Clear, precise written and verbal communication
Publications at top venues (NeurIPS, ICML, ICLR, Interspeech, ICASSP, ACL, etc.)
Experience with generative modeling, diffusion, flow matching, codec-based audio, or autoregressive models
Familiarity with RLHF or preference optimization
You are a former founder
💸 Top-tier compensation: in order to get the best talent, we provide salary and equity that recognize your skillset
🥗 Meals: free breakfast, lunch, and dinner provided in the office
🩺 Healthcare: Comprehensive health, dental, and vision
🤝 We have regular off-sites and team celebrations
👵 401(k) – Let us help you plan for the future. We’ve got you covered.
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