Please fill in the form below, so we can support you in your request.
Please fill in the form below, so we can support you in your request.


    ASICAMD (Xilinx)AchronixIntel (Altera)LatticeMicrochip (MicroSemi)Other

    X
    CONTACT MLE
    CONTACT MLE
    We are glad that you preferred to contact us. Please fill our short form and one of our friendly team members will contact you back.


      ASICAMD (Xilinx)AchronixIntel (Altera)LatticeMicrochip (MicroSemi)Other

      X
      CONTACT MLE

      Analog Devices and MLE Showcases “High-Performance Analog Meets AI at Embedded World 2025

      ADI Data Extraction Infrastructure

      At Embedded World 2025 in Nuremberg Exhibition from March 11-13 in Nuremberg, Germany, Analog Devices (ADI: Hall 4A: Stand 360) and Missing Link Electronics (MLE: Hall 5: Stand 140) will be sharing solutions that are redefining high-speed Ethernet connectivity. Together, they are paving the way for the next generation of embedded applications across various markets ranging from automotive to industrial automation to IoT.

      Mark your calendar to make a stop at the ADI booth to see the “High-Performance Analog Meets AI” demo. This demo dives into the shift from traditional signal processing to AI-driven flows and speaks to the trend of extracting data from high-performance, high-data-rate analog signal chains for AI model training and real-time inference.

      The demo shows how ADI’s data extraction framework, built on top of open-source software, open-source FPGA infrastructure, and scalable host-side data management flows, can be used in conjunction with ADI’s high-performance transceivers and converters to streamline the development and deployment of AI-capable and intelligent edge systems.

      MLE helps ADI implement Corundum – an open-source, high-performance FPGA-based NIC and platform – on the ADRV9009-ZU11EG System on Module. Via Linux NAPI, the standard open source Linux network stack, data is captured in system memory and then streamed to the Nvidia IGX/Host PC for AI processing.

      Learn more about how MLE enables high performance analog for AI processing and at ADI’s EZ Blog.