AzureFunBytes Episode 34 - Intro to @Azure Machine Learning with @hboelman!

Jay Gordon - Mar 11 '21 - - Dev Community

AzureFunBytes is a weekly opportunity to learn more about the fundamentals and foundations that make up Azure. It's a chance for me to understand more about what people across the Azure organization do and how they do it.

As a person who's been in the Ops world for most of his career machine learning and predictive services are still very new to me. An entire world of data analysis is capable of providing greater insight into what customers want, live chat bots, and make decisions. Is machine learning just one big search on a database? What are models? How do I integrate AI services into applications I am currently building? These questions have been top of mind for me when thinking about Artificial Intelligence and Machine Learning.

We go through a great demo that asks the question to Azure Machine Learning, "is this a cat or a llama?" Henk provides code, information, and helps me get a better understanding of exactly what ML is!

To help me get a better understanding of these services and how they work, I've enlisted Cloud Advocate Henk Boelman to come on the show. Henk and I have been in places across the world helping people understand Azure, but I certainly know that there are things I need a ton more help to understand. This week Henk will take some of the mystery out of using ML and AI.

Learn about Azure fundamentals with me!

Live stream is available on Twitch at 2 pm EST Thursday. You can also find the recordings here as well:

https://twitch.tv/azurefunbytes
https://twitter.com/azurefunbytes
https://aka.ms/jaygordononyoutube
Azure DevOps YouTube Channel

Useful Docs:

Get $200 in free Azure Credit
Azure Machine Learning
What is machine learning?
Tutorial: Create a classification model with automated ML in Azure Machine Learning
Example pipelines & datasets for Azure Machine Learning designer
Microsoft Learn: Create machine learning models
Microsoft Learn: Explore and analyze data with Python
Deploy a model to an Azure Kubernetes Service cluster
Machine learning operations (MLOps)
Llama or Cat Pytorch demo

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