
We build efficient general-purpose AI at every scale.
Founded: MIT CSAIL spinout (Dec 2023)
Founders: Ramin Hasani; Mathias Lechner; Alexander Amini; Daniela Rus
Product focus: Efficient, general-purpose 'liquid' neural-network foundation models for edge-to-cloud
Notable funding: $37.5M seed announced Dec 2023; later raises reported including a $250M raise
Employee count: 111
Efficient AI for edge and embedded systems; low-latency, hardware-aware foundation models.
2023
Artificial intelligence / Machine learning
$37.5M
Two-stage seed reported; named participants included OSS Capital, The Pags Group, Automattic, Samsung Next, Bold Capital Partners, ISAI Cap Venture and angel investors.
$250M
Company blog post announced a $250M raise to scale their models; details on timing and lead investors provided in company announcement.
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About Liquid Labs Research has been core to Liquid AI from the beginning.
Liquid Labs gives that work a formal home; an internal research accelerator driving fundamental breakthroughs in the science of building intelligent, personalized, and adaptive machines.
Our origins trace back to MIT CSAIL, where the foundational work on Liquid Neural Networks defined a new class of dynamical, efficient sequence-processing architectures. That research became the basis for Liquid Foundation Models (LFMs). Scalable, multimodal models built for real-world deployment in resource-constrained environments.
At Liquid Labs, we extend that lineage - pushing forward the frontier of efficient, adaptive intelligence through both fundamental research and practical engineering.
We work hand-in-hand with Liquid’s core foundation model and systems teams to translate theory into deployed capability — defining a new generation of intelligent systems that are both powerful and efficient.
About The Role As a Research Engineer, you’ll join a small, high-context team exploring the limits of adaptive intelligence. You’ll design and implement novel architectures, training methods, and inference strategies to redefine what efficient AI can do.
You’ll operate at the intersection of research and engineering — translating scientific ideas into working systems, publishing where it drives the field forward, and deploying where it changes what’s possible.
While San Francisco and Boston are preferred, we are open to other locations in the United States. This Role Is For You If
Open Science and Impact Liquid Labs reinforces our commitment to transparent, reproducible, open research.
We publish through technical reports, architectural deep dives, ablations, and model releases, advancing the broader science of efficient AI while translating breakthroughs into production-ready systems.
Why Liquid Labs Liquid Labs is for researchers who build.
Those who care about lasting impact more than publication count, but who hold themselves to the same scientific standard.
We don’t chase benchmarks; we redefine them.
We move fast, think deeply, and measure success by the systems that endure.
There is no application deadline. We review candidates on a rolling basis.
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