Practical MCU Intelligence: From TinyML Deployment to Performance Optimization

Practical MCU Intelligence: From TinyML Deployment to Performance Optimization

Click the blue text above to follow me Recently, while debugging a predictive maintenance system for an industrial client, I encountered an interesting problem: how to stably run a real-time inference system on an MCU like STM32H743, which has a frequency of 480MHz and 1MB of RAM? Today, I will share with you the technical … Read more

TinyML: Is FPGA the Best Application for AI?

TinyML: Is FPGA the Best Application for AI?

TinyML is a type of machine learning characterized by shrinking deep learning networks for use in micro hardware, primarily applied in smart devices. Ultra-low power embedded devices are “invading” our world, further promoting the proliferation of AI-driven IoT devices with the help of new embedded machine learning frameworks. FPGA has been applied across various fields … Read more

Applications of TinyML in Power Management Systems

Applications of TinyML in Power Management Systems

Today,the data processing architecture exhibits a “split” characteristic. The focus has shifted to “cloud” computing, which boasts massive scale and computational power, while “edge” computing places the processing right at the “front line”, connecting electronic devices with the real world. In the cloud, the volume of data stored is enormous, and processing must be queued … Read more

Getting Started with TinyML: A Comprehensive Guide

Getting Started with TinyML: A Comprehensive Guide

This article is contributed by the community, Author Wang Yucheng, ML & IoT Google Developers Expert, Chief Engineer of the Smart Lock Research Institute at Wenzhou University.Learn more: https://blog.csdn.net/wfing Introduction to TinyML 1. Overview Pete Warden and Daniel Situnayake co-authored a book introducing how to run ML on Arduino and ultra-low-power microcontrollers, TinyML: Machine Learning … Read more

TinyML and AI on Edge Devices: A New Paradigm for Ubiquitous AI

TinyML and AI on Edge Devices: A New Paradigm for Ubiquitous AI

Many innovations in today’s edge technology began with consumer electronics and mobile devices. The smartphones, tablets, cameras, smart speakers, drones, and other devices we use in our daily lives are actually various forms of AI edge devices. These devices are embedded with many different operating systems and optimizations for specific chips to enable them to … Read more

TinyML Research And Learning With Wio Terminal

TinyML Research And Learning With Wio Terminal

Produced by 21ic Forum jinglixixi Website: bbs.21ic.com The Wio Terminal development board is a compact and exquisite product. This is because it differs significantly from the evaluation products we commonly see. Firstly, most MCU evaluation boards do not come with peripherals or have very simple peripherals, consisting only of LEDs and buttons; secondly, for those … Read more

Getting Started with TinyML: Step-by-Step Guide

Getting Started with TinyML: Step-by-Step Guide

This article is from a community submission, Author: Wang Yucheng, ML&IoT Google Developers Expert, Chief Engineer at Wenzhou University Smart Lock Research Institute.Learn more: https://blog.csdn.net/wfing In last week’s community sharing section, we introduced Getting Started with TinyML (Part 1), and this week we will continue our learning. Hello World — The Place Where Dreams Begin … Read more

TinyML: Edge Voice Recognition Technology

TinyML: Edge Voice Recognition Technology

1. Introduction Voice recognition technology (Automatic Speech Recognition) is a technology that converts human speech into text. For example, voice assistants like “Hey, Siri” and “Hi Alexa” are applications of voice recognition technology. Through voice assistants, users can directly control home appliances such as air conditioners, TVs, curtains, and lights using their voice, making device … Read more

Understanding LLM, SLM, and TinyML in AI

Understanding LLM, SLM, and TinyML in AI

LLM (Large Language Model) Definition: Large Language Models are AI models designed to understand and generate natural language text. They are typically based on deep learning techniques and trained on vast amounts of text data. Examples: GPT-3, GPT-4 (provided by OpenAI) BERT (provided by Google) T5 (provided by Google) Application Scenarios: Text generation Translation Sentiment … Read more

Efficient Intelligent Driving Application Using BEVFusion

Efficient Intelligent Driving Application Using BEVFusion

Click the card below to follow the “LiteAI” public account Hi, everyone, I am Lite. Recently, I shared the Efficient Large Model Full-Stack Technology Articles One to Nineteen, covering topics like large model quantization and fine-tuning, efficient inference for LLMs, quantum computing, and generative AI acceleration. The content links are as follows: Efficient Large Model … Read more