Project cooperationUpdated on 2 July 2025

Intelligence at the Edge

Klaus Buchheim

Business Development at Klepsydra Technologies AG

Zug, Switzerland

About

Edge AI refers to the deployment of artificial intelligence algorithms directly on edge devices, such as smartphones, IoT devices, and other local hardware, rather than relying on centralized cloud servers. This approach offers several advantages:

  1. Reduced Latency: Processing data locally minimizes the delay in decision-making, which is crucial for real-time applications like autonomous vehicles and industrial automation.

  2. Enhanced Privacy: Since data is processed on the device itself, sensitive information doesn't need to be transmitted to the cloud, thereby improving data security and privacy.

  3. Lower Bandwidth Usage: Edge AI reduces the need for constant data transmission to and from the cloud, saving bandwidth and reducing costs.

  4. Improved Reliability: Local processing ensures that AI applications can continue to function even if the device loses connectivity to the cloud.

Edge AI is increasingly being used in a variety of systems to increase autonomy, reduce reaction time, reduce operational cost and secure privacy.

Klepsydra is supporting the development of Intelligent Edge Systems by providing a highly efficient SW framework to deploy Intelligent to a variety of embedded Systems. Enabling a modular approach, increased flexibility and a hardware and model agnostic performance, Klepsydra is a key element in advancing Intelligence at the edge.

We are looking for partners that are integrating or developing Edge AI applications for their Systems (being it sensors, edgecomputers, instruments, ...)

Topic

  • Data technologies | (AI based) process and system control technologies
  • Enabling technologies | Industry 4.0 technologies (IoT, big data analytics) for monitoring and managing circular value chains
  • Enabling technologies | (Advanced/smart) Sensors, e.g., enabling materials, components and product flows measurement
  • Enabling technologies | Robotic / handling - and assistance systems

Type

  • Expertise offered

Organisation

Klepsydra Technologies AG

Company (SME)

Zug, Switzerland

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    Klaus Buchheim

    Business Development at Klepsydra Technologies AG

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