Most Viewed Projects on Seeed Project Hub in September

Highlight Projects from the Community~

Moderators: lily.li, violet

Post Reply
User avatar
lily.li
Staff
Staff
Posts: 31
Joined: Fri Mar 23, 2018 10:23 am

Most Viewed Projects on Seeed Project Hub in September

Post by lily.li » Wed Oct 09, 2019 1:45 pm

Hey Friends of the Seeed Community,
Here is a new entry of the Most Viewed Projects on Seeed Project Hub column. If you're new here, it is a monthly wrap-up of top 5 projects with most number of views and likes that have been uploaded to Seeed Project Hub, a platform that we collaborated with Hackster.io for all Seeed users to share cool projects with the whole community.
So, let's head to the top 5 viewed projects in September to see what type of cool tinkerings were popular on Seeed Project Hub!

Arduino LIXIE Clock
Image
The Arduino LIXIE Clock is a digital clock built based on the Lixie display method. It uses LEDs to light up laser engraved numbers to create a low-cost and cool dazzling clock that is sure to impress.
Learn more details about the project here.

Mooomba - The Cow Roomba

A small robot cow that you can bring for adventuring in the park, presenting to you a Roomba-sized cow- The Mooomba!
Learn more details about the project here.

Outdoor Weather Monitoring System
Image
This outdoor weather monitoring system project is a demonstration of a real-life prototype of smart cities weather monitoring system. Using Google Data Studio to manipulate the data from the sensors, it is even able to give future predictions and other current weather statistics like Maximum, Minimum, Average.
Learn more details about the project here.

Smart Home
Image
A smart home project that incorporates various sensors, this device allows you to save energy and maximize security of your household.
Learn more details about the project here.

Object Detection with Sipeed MaiX Boards (Kendryte K210)

Using racoon detection as an example, this project demonstrates how to use the Kendryte K210 to add computer vision and machine learning to your project with an object recognition model.
Learn more details about the project here.

Post Reply