![MLOps Fundamentals: CI/CD/CT Pipelines of ML with Azure Demo]()
Genre: eLearning | MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 848 MB | Duration: 2h 53m
Basics of MLOps, benefits and its implementation.
What you'll learn
Challenges faced by teams in the current way of handling Machine learning projects.
Importance of MLOps principles in Machine learning projects.
Standards and principles followed in MLOps culture.
What is continuous integration, continuous delivery and continuous training in MLOps space.
Various maturity levels associated with MLOps.
MLOps tools stack and various MLOps platforms comparison.
Run an end-to-end D MLOps pipeline using Azure DevOps & Azure Machine learning.
Description
Important Note: The intention of this
course is to teach MLOps fundamentals, core idea, its principles, standards etc and NOT Azure ML. Azure demo section is just included as a proof to show the working of an end-to-end MLOps project.
"MLOps is a culture with set of principles, guidelines defined in a machine learning world for smooth implementation and productionization of Machine learning models."
Data scientists have been expenting with machine learning models from long , but to provide the real business value, it must be operationalized i.e. push the models to production and measure their performance against business goals. Unfortunately, due to the current challenges and an non systemization in ML lifecycle 80% of the models never make it to production and remain stagnated as an acad expent only.
Machine Learning Operations (MLOps), emerged as a solution to the problem, is a new culture in the market and a rapidly growing space that encompasses everything required to deploy a machine learning model into production, and is a crucial aspect to delivering this sought after value.
As per the tech talks in market, 2021 is the year of MLOps and would become the mandate skill set for Enterprise ML projects.
What's included in the course
MLOps core basics and fundamentals.
What were the challenges in the traditional machine learning lifecycle management.
How MLOps is addressing those issues while providing more flexibility and automation in the ML process.
Standards and principles on which MLOps is based upon.
Continuous integration (CI), Continuous delivery (CD) and Continuous training (CT) pipelines in MLOps.
Various maturity levels associated with MLOps.
MLOps tools stack and MLOps platforms comparisons.
Quick crash course on Azure Machine learning components.
Run an end-to-end D MLOps pipeline for a case study in Azure using Azure DevOps & Azure Machine learning.
Who this course is for:
Data scientists
Data eeers
ML eeers
Devops eeers
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