About the role
About Liquid AI
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
Our Audio team is building frontier speech-language models that handle STT, TTS, and speech-to-speech in a single architecture. This role sits at the center of applied audio model development, working directly with the technical lead to ship production systems that run on-device under real-time constraints. You will own critical workstreams across data pipelines, evaluation systems, and customer deployments. If you want high ownership on rare technical problems in a small, elite team where your code ships, this is the role.
What We're Looking For
We need someone who:
Builds first, theorizes later: You ship working systems, not just notebooks. Production-grade code is your default, not a stretch goal.
Owns outcomes end-to-end: From data pipelines to customer deployments, you take responsibility for the full stack without waiting for someone else to handle the hard parts.
Thrives under constraints: On-device, low-latency, memory-limited systems excite you. You see constraints as design parameters, not blockers.
Ramps quickly on new territory: Gaps in specific subdomains are fine if you close them fast. You seek out feedback and stay focused on what moves the needle.
The Work
Build and scale data pipelines for audio model training, including preprocessing, augmentation, and quality filtering at scale
Design, implement, and maintain evaluation systems that measure multimodal performance across internal and public benchmarks
Fine-tune and adapt audio models for customer-specific use cases, owning delivery from requirements through deployment
Contribute production code to the core audio repository, collaborating with infrastructure and research teams
Support experimentation under real hardware constraints, shifting between customer work and core development as priorities evolve
Desired Experience
Must-have:
Strong programming fundamentals with demonstrated ability to write clean, maintainable, production-grade code
Experience building and shipping production ML systems beyond model training (data pipelines, evals, serving infrastructure)
Proficiency in PyTorch and familiarity with distributed training frameworks (DeepSpeed, FSDP, or similar)
Track record of collaborating effectively in shared codebases with high engineering standards
Nice-to-have:
Direct experience with audio/speech models (ASR, TTS, vocoders, diarization, or speech-to-speech systems)
Experience designing and running large-scale training experiments on distributed GPU clusters
Open-source contributions that demonstrate code quality and engineering judgment
What Success Looks Like (Year One)
Within 6 months, you independently deliver production-ready data pipelines or evaluation systems and own at least one customer workstream end-to-end
Your PRs to the core audio repo are accepted without heavy rework, demonstrating strong judgment in system design
By year end, you operate as a second pillar to the technical lead, unblocking parallel workstreams and raising overall team velocity
What We Offer
Rare technical problems: Work on audio-to-audio frontier systems with real ownership in a team small enough that your contributions ship directly to production.
Compensation: Competitive base salary with equity in a unicorn-stage company
Health: We pay 100% of medical, dental, and vision premiums for employees and dependents
Financial: 401(k) matching up to 4% of base pay
Time Off: Unlimited PTO plus company-wide Refill Days throughout the year
Aplyr's read
Liquid AI is at the forefront of AI innovation, attracting diverse talent to redefine industry standards in decision-making and operational efficiency.
What's promising
- •Liquid AI's focus on cutting-edge AI solutions attracts top-tier technical talent.
- •The company is involved in diverse industries, offering varied career paths.
- •Recent hiring trends indicate growth and investment in specialized AI roles.
What to watch
- •Rapid industry changes may challenge long-term job security.
- •High specialization in roles may limit cross-functional mobility.
- •Limited public information about company culture and work-life balance.
Why Liquid AI
- •Liquid AI emphasizes multi-modal AI applications, setting it apart in the tech landscape.
- •The company invests heavily in post-training applied roles, highlighting a commitment to practical AI deployment.
- •Liquid Labs fosters innovation through dedicated research engineering positions.
Aplyr’s read is generated by AI from public sources. Was it useful?
About Liquid AI
Liquid AI is a technology company focused on developing advanced artificial intelligence solutions for various industries, enhancing decision-making and operational efficiency.