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A GNU/Linux daemon script that searches for a USB drive and connects to wifi networks by a config file. Useful for Raspberry Pi, BeagleBone and any other SBCs. Also usable for computer systems without screen.
ConnWifiMaster is a GUI & CLI application for managing WiFi connections on Arch Linux using ConnMan. It allows users to view saved networks, configure auto-connect settings, and manage network connections.
An app to scan or create QR codes, open source and easy to use. Can handle raw text, URLs and WLAN info via QR codes, and things more than QR codes, including bar, PDF417, UPC, RSS, etc.
This project is an RFID-based Attendance System using ESP8266, designed to track attendance efficiently. It uses RFID tags to identify users, displays attendance status on an LCD, logs data to ThingSpeak, and controls a servo motor for access. Features include WiFi connectivity, real-time data monitoring, and buzzer alerts for feedback.
PlantMaster is an ESP32-based IoT system for monitoring and watering plants. It tracks soil moisture, room humidity, and temperature, and controls a water pump for automatic irrigation. With WiFi and MQTT, it allows for remote monitoring and control.
This repository contains a simple example demonstrating how to connect an ESP32 microcontroller to a Wi-Fi network using the Arduino IDE. The code connects to a Wi-Fi network, monitors the connection progress, and retrieves the ESP32's IP address along with the router's gateway IP.
Temperature Control System with multiple ESP8266 (master - slave communication method). Utilizes multiple slave(s), and PID control algorithm. to Achieve precise temperature regulation and monitoring.
The Arduino Robot Project, a versatile set of Arduino code and hardware configurations for creating autonomous, remote-controlled, line-following, and obstacle-avoidance robots.
A stationary retinal imaging system that reduces motion artifacts to capture clearer images and uses machine learning to classify the severity of diabetic retinopathy.