Liquid AI

Liquid AI

Build efficient general-purpose AI models with smaller memory footprint and faster inference.

Liquid AI specializes in developing efficient general-purpose AI models known as Liquid Foundation Models (LFMs). These models achieve state-of-the-art performance across various scales while reducing memory usage and improving inference efficiency. Inspired by biological neural systems, LFMs use liquid neural networks to handle complex, sequential, and multimodal data with superior reasoning capabilities. The platform includes tools like LEAP for edge AI deployment and Apollo for local AI interaction, offering customizable solutions for businesses and developers to optimize AI workflows without cloud dependencies.

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How to use Liquid AI?

Liquid AI can be used by developers and businesses to deploy AI models on edge devices or in the cloud. Users can access models through APIs, integrate them into applications for tasks like natural language processing, computer vision, or multimodal data analysis. It solves problems related to high computational costs and latency by providing efficient inference, making it ideal for real-time applications in IoT, mobile devices, or enterprise systems. Simply use the provided tools or APIs to tailor models to specific hardware and tasks.

Liquid AI 's Core Features

  • Liquid Foundation Models (LFMs) offer state-of-the-art performance with reduced memory footprint, enabling efficient deployment on various devices from edge to cloud environments.
  • LEAP (Liquid Edge AI Platform) provides a full-stack toolkit for customizing AI architectures, optimizing data, policy, and hardware for seamless high-performance deployment.
  • Apollo allows secure and local interaction with AI models, enabling users to run AI directly on their devices without internet connectivity for enhanced privacy and speed.
  • Compute efficiency is maximized through optimized inference techniques beyond traditional transformers, delivering faster AI with lower power consumption.
  • Customizable models empower engineers to tailor LFMs for specific business needs, including architecture adjustments and multimodal data processing.
  • Inspired by biological neural systems, the networks adapt and learn in real-time, offering flexibility and improved efficiency compared to static AI models.
  • Support for small language models and vision-language models ensures versatility for a wide range of applications, from text generation to image analysis.
  • Liquid AI 's Use Cases

  • Developers building mobile apps can use Apollo to integrate on-device AI for tasks like language translation or image recognition, reducing latency and ensuring data privacy without relying on cloud services, thus improving user experience and app performance.
  • IoT companies deploying edge devices leverage LEAP to run efficient AI models for real-time data processing in smart homes or industrial settings, cutting down on cloud costs and enhancing reliability in low-connectivity environments.
  • Enterprises with large-scale data workflows utilize LFMs through APIs to handle complex sequential data analysis, such as financial forecasting or customer sentiment analysis, optimizing compute resources and speeding up decision-making processes.
  • Researchers in AI and machine learning employ Liquid AI's models for experiments involving multimodal data, benefiting from the flexible architecture to test new algorithms and achieve faster iterations in model development.
  • Startups focusing on AI-driven products use the customizable features of LFMs to quickly adapt models to niche markets, such as healthcare diagnostics or autonomous systems, reducing time-to-market and operational costs.
  • Educational institutions integrate Liquid AI into curricula for teaching AI concepts, allowing students to experiment with efficient models on personal devices, fostering hands-on learning without expensive infrastructure.
  • Liquid AI 's FAQ

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