MLOps Simplified
Last updated 01/2023
Duration: 1h 38m | Video: .MP4, 1280x720 30 fps | Audio: AAC, 48 kHz, 2ch | Size: 570 MB
Genre: eLearning | Language: English[Auto]
It's not a course, it's all the best courses in one
What you'll learn
Understand the fundamental concepts of MLOps and its importance in the machine learning lifecycle
Learn how to deploy machine learning models in production using various MLOps tools and frameworks
Learn how to monitor and manage machine learning models in production
Understand the role of DevOps in MLOps and how to integrate the two practices
Learn how to implement best practices for MLOps, including version control, testing, and documentation
Requirements
Basic understanding of machine learning concepts
Familiarity with Python and Linux
Description
Our courses bring together the best resources from leading universities, companies, entrepreneurs and academics around the world to deliver a truly unparalleled learning experience.
Don't waste your money, our team of expert curators offers carefully curated education, providing the highest quality educational resources from the most respected institutions and industry leaders to create the ultimate MLOps Simplified course, an opportunity to acquire the best knowledge and skills in the field, providing the most efficient and effective types of objects.
THIS IS A EBOOK COURSE, A COMPILATION OF THE BEST EDUCATIONAL RESOURCES OF THE WORLD.
IT INCLUDES TEXTS, CODING EXAMPLES, CASE STUDIES AND OPTIONAL EVALUATIONS.
Course Description
MLOps, or Machine Learning Operations, is the practice of combining machine learning and operations to improve the speed and quality of deploying machine learning models in production. This course covers the latest techniques and tools used in MLOps, including model deployment, monitoring, and management.
Course Objectives
Understand the fundamental concepts of MLOps and its importance in the machine learning lifecycle
Learn how to deploy machine learning models in production using various MLOps tools and frameworks
Learn how to monitor and manage machine learning models in production
Understand the role of DevOps in MLOps and how to integrate the two practices
Learn how to implement best practices for MLOps, including version control, testing, and documentation
Course Outline
Week 1: Introduction to MLOps
Introduction to MLOps and its importance in the machine learning lifecycle
Overview of the machine learning lifecycle and the role of MLOps in each stage
Week 2: Model Deployment
Introduction to model deployment
Techniques for deploying machine learning models in production
Hands-on deployment using various MLOps tools and frameworks
Week 3: Model Monitoring and Management
Introduction to model monitoring and management
Techniques for monitoring and managing machine learning models in production
Hands-on monitoring and management using various MLOps tools and frameworks
Week 4: DevOps and MLOps Integration
Introduction to DevOps and its importance in MLOps
Techniques for integrating DevOps and MLOps practices
Hands-on integration using various MLOps tools and frameworks
Week 5: MLOps Best Practices
Introduction to best practices for MLOps
Implementing version control, testing, and documentation in MLOps
Hands-on implementation using various MLOps tools and frameworks
Week 6: Capstone Project
Students will work on a capstone project to apply the skills and knowledge learned in the course
Students will present their projects to the class
Who this course is for
The course would be beneficial for anyone interested in learning more about MLOps and its importance in the machine learning lifecycle.
Download link
rapidgator.net:
Kod:
https://rapidgator.net/file/222c50790fb3697214b11ca969d6a46c/blqco.MLOps.Simplified.rar.html
uploadgig.com:
Kod:
https://uploadgig.com/file/download/b758E56c437c0078/blqco.MLOps.Simplified.rar
nitroflare.com:
Kod:
https://nitroflare.com/view/1A629E35FC8E6FD/blqco.MLOps.Simplified.rar
ddownload.com:
Kod:
https://ddownload.com/odd4orxsyygk/blqco.MLOps.Simplified.rar
Konuyu Favori Sayfanıza Ekleyin