Orders are typically delivered to Hong Kong within 3-4 days depending on location.
Free delivery to Hong Kong on orders of HK$330 or more. A delivery charge of HK$125 will be billed on all orders less than HK$330.
UPS, FedEx or DHL freight pre-paid: CPT (Duty, customs, and taxes due at time of delivery)
Credit account for qualified institutions and businesses
Payment in Advance by Wire Transfer
More Products From Fully Authorized Partners
Average Time to Ship 1-3 Days, extra ship charges may apply. Please see product page, cart, and checkout for actual ship speed.
Incoterms: CPT (Duty, customs, and applicable VAT/Tax due at time of delivery)
For more information visit Help & Support
Machine learning has come to the 'edge' - small microcontrollers that can run a very miniature version of TensorFlow Lite to do ML computations.
Learn how to perform machine learning model training on a computer and then run the created inference on a 32-bit processor.
We show how to configure TensorFlow with Keras on a PC and build a simple linear regression model use a NVIDIA GPU to take advantage of parallel processing.
In this tutorial, we will introduce the concept of Mel Frequency Cepstral Coefficients (MFCC) and how to compute them using Python libraries.
In this tutorial, we will briefly go over how a convolutional neural network (CNN) works and how to train one using TensorFlow and Keras.
This guide goes through how to train micro speech models on your own.
In this tutorial we will develop a Python program that reads the TensorFlow Lite model file and uses it to perform wake word recognition in real time.
n this tutorial, we’ll walk through installing TensorFlow Lite and using it to perform object detection with a pre-trained Single Shot MultiBox Detector model.
In this tutorial, we will load our model in Arduino using the TensorFlow Lite library and use it to run inference to generate an approximation of a sinewave.
We will create a neural network that is capable of predicting the output of the sine function, convert this model to TensorFlow Lite and examine it using Netron
The Coral line of TPU development boards features the Google Edge TPU for running TensorFlow Lite models efficiently for various machine learning tasks.
This week on Maker Update, windshield wipers with rhythm, the Arduino IDE goes pro, TensorFlow goes tiny, Bob’s flip-top workshop, Pi goes cyberpunk, butt joints and blow torches.
Co-Browse
By using the Co-Browse feature, you are agreeing to allow a support representative from DigiKey to view your browser remotely. When the Co-Browse window opens, give the session ID that is located in the toolbar to the representative.
DigiKey respects your right to privacy. For more information please see our Privacy Notice and Cookie Notice.
Yes, Continue to Co-BrowseGet fast and accurate answers from DigiKey's Technicians and Experienced Engineers on our TechForum.
Please visit the Help & Support area of our website to find information regarding ordering, shipping, delivery and more.
Registered users can track orders from their account dropdown, or click here. *Order Status may take 12 hours to update after initial order is placed.
Users can begin the returns process by starting with our Returns Page.
Quotes can be created by registered users in myLists.
Visit the Registration Page and enter the required information. You will receive an email confirmation when your registration is complete.
Orders are typically delivered to Hong Kong within 3-4 days depending on location.
Free delivery to Hong Kong on orders of HK$330 or more. A delivery charge of HK$125 will be billed on all orders less than HK$330.
UPS, FedEx or DHL freight pre-paid: CPT (Duty, customs, and taxes due at time of delivery)
Credit account for qualified institutions and businesses
Payment in Advance by Wire Transfer
More Products From Fully Authorized Partners
Average Time to Ship 1-3 Days, extra ship charges may apply. Please see product page, cart, and checkout for actual ship speed.
Incoterms: CPT (Duty, customs, and applicable VAT/Tax due at time of delivery)
For more information visit Help & Support
Thank you!
Keep an eye on your inbox for news and updates from DigiKey!
Please enter an email address