Arduino Tiny Machine Learning Kit AKX00028

(1 customer review)
Availability:

In stock


SKU: 957160
  1. Powerful Arduino Nano 33 BLE Sense LITE Board inside
  2. 32-bit ARM Cortex-M4 CPU running at 64 MHz
  3. Microcontroller: nRF52840
  4. Security: ECC608 crypto chip
  5. High-quality OV7675camera module inside

 

 

For bulk orders or B2B inquiries, email us: sales@robu.in

 5,299.00 (Incl. GST)

In stock

Purchase this product now and earn 53 Robu Points!

Free Delivery above ₹499
Free Delivery
above ₹499
1 Year Warranty
1 Year Warranty
Cash On delivery
Cash on Delivery*

Didn’t find what you are looking for?

Brand: Arduino
Category: Official Arduino Kits
Tags: Tiny Machine learning, Nano 33 BLE Sense, OV7675 Camera, Tiny Machine Learning Shield

The Tiny Machine Learning Kit, combined with the exciting TinyML Applications and Deploying TinyML on Microcontrollers courses that are part of the Tiny Machine Learning (TinyML) specialization from EdX will equip you with all the tools you need to bring your ML visions to life!

The kit consists of a powerful board equipped with a microcontroller and a wide variety of sensors (Arduino Nano 33 BLE Sense LITE). The board can sense movement, acceleration, rotation, temperature, humidity, barometric pressure, sounds, gestures, proximity, color, and light intensity.

The kit also includes a camera module (OV7675) and a custom Arduino shield to make it easy to attach your components and create your very own unique TinyML project. You will be able to explore practical ML use cases using classical algorithms as well as deep neural networks powered by TensorFlow Lite Micro. The possibilities are limited only by your imagination!

With this kit combined with the power of Tiny Machine Learning (TinyML) you can build a small intelligent device that reacts to sounds like a keyword being spoken, recognizes gestures like waving a magic wand, or even recognize faces.

Note:  To explore more about this kit, you need ML examples. Please go to the Attachment section to download the library. 

Arduino MicrosoftTeams image 1

 


Features:

  1. It Brings a Machine learning vision to your life.
  2. Equipped with a powerful microcontroller board.
  3. Equipped with a wide variety of sensors.
  4. Easy to attach your components and create your very own unique TinyML project.
  5. The board can sense movement, acceleration, rotation, temperature, humidity, barometric pressure, sounds, gestures, proximity, color, and light intensity, etc.

Useful Link:

https://blog.arduino.cc/2023/05/22/these-projects-from-cmu-incorporate-the-arduino-nano-33-ble-sense-in-clever-ways/


Package Includes:

1 x Arduino Nano 33 BLE Sense LITE board

1 x OV7675 Camera

1 x Arduino Tiny Machine Learning Kit AKX00028

1 x USB A to Micro USB Cable

 

 

Item Type:

Kit

Model Type

Machine Learning Kit

Model No.:

AKX00028

Model

Arduino Nano 33 BLE Sense LITE

Length (mm):

45

Width (mm):

18

Height (mm):

4

Weight (g):

5

Shipping Weight 0.794 kg
Shipping Dimensions 18 × 3 × 23 cm
1 Year Warranty

This item is covered with a supplier warranty of 1 year from the time of delivery against manufacturing defects only. In case of manufacturing defects or issues, we will replace the part after warranty confirmation by our technical team, but we won’t offer refunds or replace the entire product.


What voids the warranty:

If the product is subject to misuse, tampering, static discharge, accident, water or fire damage, use of chemicals & soldered or altered in any way.

Based on 1 review

5.0 overall
1
0
0
0
0

Add a review

  1. Aarush Roy (verified owner)

    Very Good Kit

    Aarush Roy

Harvard TinyMLx library

Datasheet

Questions and answers of the customers

    Does this Kit have any User Guide/Study Guide/Tuto... Read more
  1. 0 votes
    Q Does this Kit have any User Guide/Study Guide/Tutorial ? answer now
    Asked by apal113521 on January 9, 2024 12:38 pm
    A Sorry, the User Guide/Study Guide/Tutorial are not... Read more
Only registered users are eligible to enter questions
Country Of Origin: Italy