TinyML: Implementing Machine Learning on Edge Devices

TinyML: Implementing Machine Learning on Edge Devices

Machine Learning (ML) is a vibrant and powerful field of computer science that permeates almost all digital devices we interact with, whether it’s social media, mobile phones, cars, or even household appliances. Artificial Intelligence (AI) is rapidly moving from the “cloud” to the “edge,” entering increasingly smaller IoT devices. The machine learning processes implemented on … Read more

TinyML Gesture Recognition Workshop

TinyML Gesture Recognition Workshop

TinyML Gesture Recognition TinyML Hands-On Workshop Have you ever visited the Harry Potter area in Universal Studios Beijing? Do you remember the magical interactive window display that became an instant hit when it opened? Many tourists lined up in Diagon Alley with wands in hand to experience the thrill of casting spells! Flowers bloom! Lights … Read more

Practical TinyML: Harnessing Machine Learning on Edge Devices

Practical TinyML: Harnessing Machine Learning on Edge Devices

Learn how to deploy complex machine learning models on single-board computers, mobile phones, and microcontrollers. Main Features ● Comprehensive understanding of the core concepts of TinyML. ● Learn how to design your own TinyML applications from scratch. ● Explore cutting-edge models, hardware, and software platforms for developing TinyML. Description TinyML is an innovative technology that … Read more

Efficient CNN Algorithms and System Co-Design in TinyML

Efficient CNN Algorithms and System Co-Design in TinyML

Click belowcard, follow the “LiteAI” public account Hi, everyone, I am Lite. Recently, I shared the Efficient Large Model Full-Stack Technology Articles 1 to 19, which includes content on large model quantization and fine-tuning, efficient inference of LLMs, quantum computing, generative AI acceleration, etc. The content link is as follows: Efficient Large Model Full-Stack Technology … Read more

Implementing Weakly Supervised Human Localization with ESP32

Implementing Weakly Supervised Human Localization with ESP32

1. Introduction Weakly Supervised Object Localization is used to discover the location of target objects within images. Traditional object detection methods typically require precise bounding box annotations for each training sample, which can be time-consuming and labor-intensive for large-scale datasets. To address this issue, weakly supervised object localization solves the problem by using simpler annotation … Read more

Implementing Offline Command Recognition with TFLite Micro on ESP32

Implementing Offline Command Recognition with TFLite Micro on ESP32

1. Introduction Voice recognition, as an important method of human-computer interaction, is gradually becoming one of the core functions of smart devices. However, traditional voice recognition systems often rely on cloud servers for audio data processing and analysis, which brings issues such as latency and privacy. TensorFlow Lite provides an efficient and fast solution for … Read more

Efficient LLM Inference with Block Sparse Attention

Efficient LLM Inference with Block Sparse Attention

Click the card below to follow the “LiteAI” public account Hi, everyone, I am Lite. A while ago, I shared the Efficient Large Model Full-Stack Technology from Part 1 to Part 19, which includes content on large model quantization and fine-tuning, efficient LLM inference, quantum computing, generative AI acceleration, etc. The content links are as … Read more

The Role of TinyML in the Industry

The Role of TinyML in the Industry

Editor’s Note: The author, Jose Vicente Sáez Ibáñez, is a senior ML and software development engineer with international experience. He has been dedicated to researching the intersection of artificial intelligence and the Internet of Things (AIoT). Over the past few years, he has been deeply involved in the smart city industry across China, Spain, and … Read more

Getting Started with TinyML Voice Recognition Using Zilltek Microphone

Getting Started with TinyML Voice Recognition Using Zilltek Microphone

Click the blue text to follow us Introduction In today’s Internet of Things era, the application of voice recognition technology is becoming increasingly widespread. This article will introduce how to deploy a TinyML voice recognition system and detail the process from data collection to model deployment. Getting Started with TinyML: Implementing TinyML Voice Recognition Using … Read more

Learning TinyML From Scratch: Optimization Techniques

Learning TinyML From Scratch: Optimization Techniques

This article is contributed by the community, author Wang Yucheng, ML&IoT Google Developers Expert, Chief Engineer of the Intelligent Lock Research Institute at Wenzhou University. Learn more: https://blog.csdn.net/wfing After discussing the previous chapters, we have understood the concept of TinyML, completed the simplest TinyML model and ran it on a microcontroller, yielding the most basic … Read more