Learn how to manage machine learning solutions at the cloud scale using Azure Machine Learning. In this training, you will learn how to use your existing Python and machine learning skills to manage data ingestion, model training, model deployment, and monitoring of machine learning solutions in Microsoft Azure.
This course is intended for data scientists who want to develop and manage machine learning solutions in the Cloud and who already have some familiarity with Python and machine learning frameworks like Scikit-Learn, PyTorch, and Tensorflow.
Successful Azure Data Scientists begin this position with a basic understanding of cloud computing concepts and experience with various machine learning and general data science tools and techniques.
Specifically:
Azure container management Please finish Microsoft Azure AI Fundamentals before continuing if you are entirely new to data science and machine learning.
Learn how to create, publish, and use batch inference pipelines with Azure Machine Learning.
Learn to use Azure Machine Learning hyperparameter tuning experiments to optimize model performance.
Learn how to explain models by calculating and interpreting feature importance.
Learn how to monitor data drift in Azure Machine Learning.
Learn how to use Azure Application Insights to monitor a deployed Azure Machine Learning model.
Most recently, Microsoft announced new technology designed to accelerate machine learning algorithms to real-time, which is known as Project Brainwave, and it uses programmable processors known as FPGAs and use to run sophisticated and compute-hungry algorithms. Microsoft is also developing industry-specific AI applications.
Microsoft replaced this unsatisfactory handwork by humans with a piece of AI-enhanced technology called FastStart.
An AI Platform is a framework that is designed to function more efficiently and intelligently than traditional frameworks. An AI Platform can also provide Data Governance, ensuring the use of best practices by a team of AI scientists and ML engineers.
Azure is 4-12% cheaper than AWS and offers some different properties, making it better than AWS. PaaS Capabilities mainly include both Azure and AWS are similar in providing PaaS capabilities for virtual networking, storage, and machines.
To attend the training session, you should have operational Desktops or Laptops with the required specification and a good internet connection to access the labs.
We would always recommend you attend the live session to practice & clarify the doubts instantly and get more value from your investment. However, if, due to some contingency, you have to skip the class, Radiant Techlearning will help you with the recorded session of that particular day. However, those recorded sessions are not meant only for personal consumption and NOT for distribution or any commercial use.
Radiant Techlearning has a data center containing a Virtual Training environment for participant hand-on-practice.
Participants can easily access these labs over Cloud with the help of a remote desktop connection.
Radiant virtual labs allow you to learn from anywhere and in any time zone.
The learners will be enthralled as we engage them the real-world and industry Oriented projects during the training program. These projects will improve your skills and knowledge and give you a better experience. These real-time projects will help you greatly in future tasks and assignments.