Spun out of MIT CSAIL, we build general-purpose AI systems that run efficiently across deployment targets, from data center accelerators to on-device hardware, ensuring low latency, minimal memory usage, privacy, and reliability. We partner with enterprises across consumer electronics, automotive, life sciences, and financial services. We are scaling rapidly and need exceptional people to help us get there. The Opportunity This is a rare chance to own applied post-training work end-to-end for audio workloads, adapting Liquid Foundation Models for customers who need speech and audio capabilities that run on-device under real-time constraints. You will act as the technical bridge between customer requirements and model delivery for audio tasks. You will lead engagements from scoping through evaluation, with full ownership over how audio models are adapted and shipped. Between engagements, you will build reusable applied workflows and tooling that accelerate future delivery. If you care about audio data quality, speech model evaluation, and making audio models actually work in production for real customers, this is the role. What We’re Looking For We need someone who: Takes ownership: Owns customer post-training projects end-to-end for audio workloads, from requirements through delivery and evaluation. Thinks end-to-end: Can reason across audio data pipelines, speech-text alignment, model adaptation, and evaluation as a connected system. Is pragmatic: Optimizes for model quality and customer outcomes over publications or theory. Thrives under constraints: On-device, low-latency, memory-limited audio systems excite you. You see constraints as design parameters, not blockers.
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Job Type
Full-time
Career Level
Mid Level
Education Level
No Education Listed