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Building the fastest, most compute-efficient, and capable foundation models so intelligence can live anywhere.

Est. 2023

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  • Liquid Foundation Models
  • LFM2 VL
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News/All

News and Updates

AllModelsCase studiesCompany newsResearch
LFM2.5-230M: Built to Run Anywhere
JUN 25, 2026Models

LFM2.5-230M: Built to Run Anywhere

06.18
06.18Models

LFM2.5 Retrievers: Bi-directional LFMs for Fast Multilingual Search

JUN 18, 2026Models

LFM2.5 Retrievers: Bi-directional LFMs for Fast Multilingual Search

05.28
05.28Models

LFM2.5-8B-A1B: An Even Better On-Device Mixture of Experts

MAY 28, 2026Models

LFM2.5-8B-A1B: An Even Better On-Device Mixture of Experts

04.23
04.23Press

Liquid AI and Mercedes-Benz partner to scale embedded in-car intelligence

APR 23, 2026Press

Liquid AI and Mercedes-Benz partner to scale embedded in-car intelligence

  • 06.18.2026Models
    06.18.2026ModelsLFM2.5 Retrievers: Bi-directional LFMs for Fast Multilingual Search
  • 05.28.2026Models
    05.28.2026ModelsLFM2.5-8B-A1B: An Even Better On-Device Mixture of Experts
  • 04.23.2026Press
    04.23.2026PressLiquid AI and Mercedes-Benz partner to scale embedded in-car intelligence
  • 04.08.2026Models
    04.08.2026ModelsLFM2.5-VL-450M: Structured Visual Intelligence, Edge to Cloud
  • 03.31.2026Models
    03.31.2026ModelsLFM2.5-350M: No Size Left Behind
  • 03.26.2026Publications
    03.26.2026PublicationsThe Key to State Reduction in Linear Attention: A Rank-based Perspective
  • 03.16.2026External article
    03.16.2026External articleWhy Bigger Isn’t Always Better in AI
  • 03.05.2026Models
    03.05.2026ModelsNo Cloud, No Waiting: Tool-Calling Agents on Consumer Hardware with LFM2-24B-A2B
  • 03.03.2026Press
    03.03.2026PressLiquid AI and Insilico Medicine Announce Strategic Partnership Delivering Lightweight Scientific Foundation Models for Drug Discovery
  • 03.02.2026Publications
    03.02.2026PublicationsAlphaQ: Calibration-Free Bit Allocation for Mixture-of-Experts Quantization
  • 03.02.2026Publications
    03.02.2026PublicationsLow-Pass Flow Matching
  • 02.24.2026News
    02.24.2026NewsFrom Cloud to AI PC: Launching Liquid’s Largest LFM2 Model Alongside Our Growing Partner Ecosystem
  • 02.24.2026Models
    02.24.2026ModelsLFM2-24B-A2B: Scaling Up the LFM2 Architecture
  • 01.26.2026Publications
    01.26.2026PublicationsZero-Overhead Introspection for Adaptive Test-Time Compute
  • 01.26.2026Publications
    01.26.2026PublicationsLearning residue level protein dynamics with multiscale Gaussians