Accelerating Machine Learning on i.MX 8 Microprocessors & Crossover MCUs

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Accelerating Machine Learning on i.MX 8 Microprocessors & Crossover MCUs

Accelerating Machine Learning on i.MX 8 Microprocessors & Crossover MCUs

TensorFlow® Lite, ArmNN, and GLOW are popular open-source machine learning inference frameworks for mobile and IoT devices. In this session, you’ll learn how to use TensorFlow Lite, and ArmNN on NXP i.MX 8 MPU-class devices in Linux, and how to take advantage of not only Arm® Cortex®-A CPU cores, but also dedicated on-chip GPU and NPU accelerators. For NXP i.MX RT MCU-class devices we will introduce two approaches: 1)TensorFlow Lite for Microcontrollers with CMSIS-NN kernel implementation optimized for Cortex-M cores, and 2) GLOW, a neural network compiler, which generates code “Ahead of Time” for Cortex-M cores and DSP.

Presenter:

Robert Kalmar, Machine Learning SW Engineer, NXP

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Last update:
‎04-08-2021 11:43 AM
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