MLOps Foundation Certification

Posted by

Limited Time Offer!

For Less Than the Cost of a Starbucks Coffee, Access All DevOpsSchool Videos on YouTube Unlimitedly.
Master DevOps, SRE, DevSecOps Skills!

Enroll Now

Introduction to MLOps Foundation Certification

The MLOps Foundation Certification program is designed to equip professionals with the fundamental skills and knowledge to implement Machine Learning Operations (MLOps) practices effectively. Introduced by DevOpsSchool, this course provides a deep understanding of the concepts, tools, and methodologies that streamline the development and deployment of machine learning models in production. Rajesh Kumar, a renowned DevOps and MLOps expert from www.RajeshKumar.xyz, leads the course, offering valuable insights and hands-on training.


Why MLOps is Important?

MLOps (Machine Learning Operations) bridges the gap between data scientists and operations teams, ensuring a seamless process for model deployment, monitoring, and management. As the demand for machine learning in production environments increases, so does the need for an efficient process to maintain and scale these models. MLOps ensures automation, collaboration, and monitoring, making it crucial for any organization leveraging AI or machine learning models.


Course Features

  • Expert Training: Led by Rajesh Kumar, a leading DevOps and MLOps trainer with years of experience in the field.
  • Hands-On Labs: Practical sessions with real-world applications of MLOps tools and methodologies.
  • Certification: Participants will receive the MLOps Foundation Certification upon successful completion.
  • Interactive Sessions: Engaging classes that encourage questions, discussions, and collaboration.
  • Comprehensive Study Material: All participants will have access to detailed resources, tools, and study guides.

Training Objectives

By the end of the MLOps Foundation Certification, participants will:

  • Understand the key principles and practices of MLOps.
  • Learn how to automate ML pipelines using MLOps tools like Kubeflow, MLflow, and more.
  • Develop skills to monitor and manage machine learning models in production environments.
  • Gain hands-on experience in deploying machine learning models using industry-standard platforms.
  • Understand how to handle version control and CI/CD for machine learning projects.
  • Acquire knowledge of how to integrate machine learning workflows with DevOps practices.

Who Should Attend?

This certification is ideal for:

  • Data Scientists looking to streamline their ML models’ deployment and operations.
  • DevOps Engineers who want to specialize in machine learning model operations.
  • Software Engineers interested in integrating machine learning models into production pipelines.
  • AI/ML Enthusiasts aiming to understand the lifecycle of ML models in production.
  • IT Professionals responsible for managing AI infrastructure.

Course Agenda

The course agenda is designed to offer a comprehensive overview of MLOps, from the basics to more advanced topics.

Day 1: Introduction to MLOps

  • What is MLOps and Why it Matters?
  • Key Differences Between MLOps, DevOps, and DataOps.
  • Overview of the Machine Learning Lifecycle.
  • Challenges in Machine Learning Model Deployment.

Day 2: MLOps Tools and Frameworks

  • Introduction to MLOps Tooling: Kubeflow, MLflow, Airflow, and more.
  • Setting Up Your MLOps Environment.
  • Managing Experimentation with MLflow.
  • Version Control for Machine Learning Models.

Day 3: CI/CD Pipelines for Machine Learning

  • Introduction to Continuous Integration and Deployment (CI/CD) for ML.
  • Building End-to-End Pipelines for ML Models.
  • Automating Model Training and Deployment.
  • Implementing CI/CD Pipelines Using Kubeflow.

Day 4: Model Monitoring and Management

  • Model Monitoring: Why Itโ€™s Crucial?
  • Tools for Monitoring ML Models in Production.
  • Managing Model Drift and Data Drift.
  • Retraining Models in a Production Environment.

Day 5: Hands-On Lab and Certification Exam

  • Practical Labs on Deploying and Monitoring Machine Learning Models.
  • Final Review of Key Topics and Concepts.
  • Certification Exam to Test the Learner’s Knowledge and Practical Skills.

Training Methodology

The course follows a blended learning approach combining theory, practical sessions, and interactive discussions. The participants will work through real-world scenarios, gaining practical experience using MLOps tools and platforms. Each session will include guided labs and take-home assignments to reinforce learning.


Certification Program

Upon completing the course, participants will be awarded the MLOps Foundation Certification. This certification demonstrates the individualโ€™s proficiency in implementing MLOps practices and tools in a production environment. The certification exam is structured to assess both theoretical understanding and practical application of the concepts covered in the course.


Lab Setup Requirements

Participants are required to have access to:

  • A Laptop/PC with at least 8GB RAM.
  • Internet Connectivity for cloud-based labs and tools.
  • Virtualization Software (VMware, VirtualBox) for setting up a local MLOps environment (optional but recommended).

Detailed setup instructions will be provided prior to the start of the course.


Trainer: Rajesh Kumar

Rajesh Kumar is a seasoned expert in DevOps and MLOps with over 15 years of experience. Having worked with various top-tier organizations, Rajesh brings extensive hands-on experience in automating and optimizing AI/ML workflows. His practical insights and in-depth knowledge of DevOps and MLOps make him one of the most sought-after trainers in the industry.

For more information about Rajesh Kumar, visit www.RajeshKumar.xyz.


FAQ

Q: What is MLOps?
A: MLOps stands for Machine Learning Operations, a set of practices to automate the deployment, monitoring, and management of machine learning models in production.

Q: Who should attend this course?
A: This course is for data scientists, DevOps engineers, software engineers, AI/ML enthusiasts, and IT professionals responsible for deploying and managing machine learning models.

Q: What tools will be covered in this course?
A: Tools such as Kubeflow, MLflow, Airflow, and other popular MLOps frameworks will be covered during the training.

Q: Is prior knowledge of machine learning necessary?
A: A basic understanding of machine learning and DevOps concepts will be helpful but not mandatory.

Subscribe
Notify of
guest
0 Comments
Inline Feedbacks
View all comments
0
Would love your thoughts, please comment.x
()
x