Companies Home Search Profile

MLOps Essentials: Model Development and Integration

Focused View

Kumaran Ponnambalam

1:30:47

125 View
  • 01 - Getting started with MLOps.mp4
    01:04
  • 02 - Scope and prerequisites.mp4
    03:37
  • 01 - Machine learning life cycle.mp4
    02:16
  • 02 - Unique challenges with ML.mp4
    03:29
  • 03 - What is DevOps.mp4
    02:01
  • 04 - What is MLOps.mp4
    03:59
  • 05 - Principles of MLOps.mp4
    02:33
  • 06 - When to start MLOps.mp4
    03:40
  • 01 - Selecting ML projects.mp4
    02:38
  • 02 - Creating requirements.mp4
    04:13
  • 03 - Designing the ML workflow.mp4
    02:46
  • 04 - Assembling the team.mp4
    02:48
  • 05 - Choosing tools and technologies.mp4
    02:04
  • 01 - Managed data pipelines.mp4
    04:05
  • 02 - Automated data validation.mp4
    02:01
  • 03 - Managed feature stores.mp4
    02:33
  • 04 - Data versioning.mp4
    02:21
  • 05 - Data governance.mp4
    03:36
  • 06 - Tools and technologies for data processing.mp4
    01:06
  • 01 - Managed training pipelines.mp4
    03:42
  • 02 - Creating data labels.mp4
    03:20
  • 03 - Experiment tracking.mp4
    02:56
  • 04 - AutoML.mp4
    04:16
  • 05 - Tools and technologies for training.mp4
    00:53
  • 01 - Model versioning.mp4
    01:22
  • 02 - Model registry.mp4
    02:21
  • 03 - Benchmarking models.mp4
    03:37
  • 04 - Model life cycle management.mp4
    02:54
  • 05 - Tools and technologies for model management.mp4
    01:12
  • 01 - Solution integration pipelines.mp4
    02:03
  • 02 - Notebook to software.mp4
    04:01
  • 03 - Solution integration patterns.mp4
    03:30
  • 04 - Best practices for solution integration.mp4
    01:02
  • 01 - Continuing on with MLOps.mp4
    00:48
  • Description


    Machine Learning Operations (MLOps) is a fast-growing domain the field of AI. As more models are deployed in production, the need for a structured, agile, end-to-end ML lifecycle with automation has grown multifold. MLOps provides structure to machine learning projects and help them succeed over the long run. In this course, instructor Kumaran Ponnambalam focuses on the key concepts of MLOps and helps you apply these concepts to your day-to-day ML work. Kumaran introduces you to the machine learning life cycle and explains unique challenges with ML, as well as important definitions and principles. He walks you through the requirements and design for ML projects, then dives into data processing and management. Kumaran explains various tools and technologies that you can use in the automation and management of continuous training. He covers best practices for model management, then offers detailed instruction on continuous integration.

    More details


    User Reviews
    Rating
    0
    0
    0
    0
    0
    average 0
    Total votes0
    Focused display
    Kumaran Ponnambalam
    Kumaran Ponnambalam
    Instructor's Courses
    A seasoned veteran in everything data, with a reputation for delivering high performance database and SaaS applications and currently specializing in leading Big Data Science and Engineering efforts
    LinkedIn Learning is an American online learning provider. It provides video courses taught by industry experts in software, creative, and business skills. It is a subsidiary of LinkedIn. All the courses on LinkedIn fall into four categories: Business, Creative, Technology and Certifications. It was founded in 1995 by Lynda Weinman as Lynda.com before being acquired by LinkedIn in 2015. Microsoft acquired LinkedIn in December 2016.
    • language english
    • Training sessions 34
    • duration 1:30:47
    • Release Date 2022/12/11