Shivam Sharma
TechScalable
LEARN, CONNECT, BUILD
Ready to get started with AI and the latest technologies? Microsoft Reactor provides events, training, and community resources to help developers, entrepreneurs and startups build on AI technology and more. Join us!
LEARN, CONNECT, BUILD
Ready to get started with AI and the latest technologies? Microsoft Reactor provides events, training, and community resources to help developers, entrepreneurs and startups build on AI technology and more. Join us!
19 April, 2022 | 12:30 PM - 1:30 PM (UTC) Coordinated Universal Time
Topic: Cloud Development
Language: English
In machine learning, inferencing refers to the use of a trained model to predict labels for new data on which the model has not been trained. Often, the model is deployed as part of a service that enables applications to request immediate, or real-time, predictions for individual, or small numbers of data observations. In this session you will learn how to deploy a real time inferencing pipeline.
The session will focus on Azure services and related products like Azure Machine Learning Servic, Azure Machine Learning SDK,Azure Kubernetes Service &Azure Container Instance.
What will you learn from the session :
a) Deploy a model as a real-time inferencing service.
b) Consume a real-time inferencing service.
c) Troubleshoot service deployment
Further Learning : https://aka.ms/MachineLearningServices
Speaker : Shivam Sharma
Speaker BIO- Shivam is an author, cloud architect, speaker, and Co-Founder at TechScalable. Being passionate about ever evolving technology he works on Azure, GCP, Machine Learning, Kubernetes & DevOps. He is also a Microsoft Certified Trainer. He architects’ solutions on Cloud as well on-premises using wide array of platforms/technologies.
Social Handle
LinkedIn - https://www.linkedin.com/in/shivam-sharma-9828a536/
Twitter - https://twitter.com/ShivamSharma_TS
Facebook - https://www.facebook.com/TSshivamsharma/
Knowledge of Python
Speakers
For questions please contact us at reactor@microsoft.com