
Liquid AI
Liquid AI is a technology company.
Financial History
Liquid AI has raised $294.0M across 3 funding rounds.
Frequently Asked Questions
How much funding has Liquid AI raised?
Liquid AI has raised $294.0M in total across 3 funding rounds.

Liquid AI is a technology company.
Liquid AI has raised $294.0M across 3 funding rounds.
Liquid AI has raised $294.0M in total across 3 funding rounds.
Liquid AI is a Boston-based foundation model company spun out of MIT, specializing in high-performance, efficient AI systems optimized for compute-constrained environments like smartphones, laptops, vehicles, and embedded devices.[1][2] It builds Liquid Foundation Models (LFMs)—small language models and general-purpose models that process complex sequential and multimodal data (text, audio, video, time series, signals) with superior speed, memory efficiency, and reliability, serving enterprises, startups, and developers needing on-device AI for privacy, latency, and security-critical applications.[1][3] The company solves the problem of deploying powerful AI in real-world edge settings where traditional transformer models falter due to high compute demands, offering custom solutions via proprietary device-aware architecture search and tools like the LEAP developer platform and Apollo app.[3] Growth momentum includes rapid releases like the LFM2 family (e.g., 350M to 1.6B parameters across modalities) and a startup program providing full-stack access with engineering guidance.[3]
Liquid AI was founded in 2023 as an MIT CSAIL spin-out by four experts: Ramin Hasani, Mathias Lechner, Alexander Amini, and Daniela Rus, who brought deep backgrounds in dynamical systems, signal processing, numerical linear algebra, and robotics.[2] The idea emerged from their MIT research on "liquid neural networks"—dynamic, adaptive architectures inspired by biological systems, designed for efficiency and interpretability in resource-limited settings.[1][2] Early traction came from leveraging this first-principles approach to create white-box models that outperform transformers in edge deployment, quickly attracting enterprise partners and investors as collaborators in scaling production-ready AI.[1][2]
Liquid AI stands out through its foundational innovations and deployment focus:
Liquid AI rides the edge AI wave, capitalizing on exploding demand for on-device intelligence amid rising data privacy regulations (e.g., GDPR), 5G/6G latency needs, and hardware like NPUs in phones/cars.[1][3] Timing is ideal as transformer scaling hits compute walls—Liquid's efficient models enable AI ubiquity without cloud dependency, influencing robotics, wearables, and autonomous systems.[1] Market forces like chip shortages and energy costs favor its approach, while its MIT roots and open tools democratize high-capability AI, accelerating adoption across industries and fostering a developer community for specialized deployments.[2][3]
Liquid AI is poised to dominate efficient foundation models, with LFM3+ iterations expanding multimodal capabilities and enterprise integrations, potentially capturing edge AI market share as devices ship with built-in NPU support.[3] Trends like federated learning, regulatory pushes for transparent AI, and hybrid cloud-edge computing will propel it, evolving its influence from model provider to full-stack enabler for trustworthy, scalable intelligence.[1][2] As edge constraints tighten, Liquid's "flowing" adaptability positions it to redefine general-purpose AI, bringing advanced capabilities directly where they're needed most—efficient, private, and reliable at every scale.[1]
Liquid AI has raised $294.0M in total across 3 funding rounds.
Liquid AI's investors include Bain Capital, Foundation Capital, Founders Fund, NextView Ventures, Plug & Play Ventures, RET Ventures, Bill Ackman, Marc Baghadjian, 7BC Venture Capital, Accel, Audrey Capital, Awesome Ventures.
Liquid AI has raised $294.0M across 3 funding rounds. Most recently, it raised $250.0M Series A in December 2024.