MLOps: Deploying & Managing Machine Learning Models Training Course

 

MLOps: Deploying & Managing Machine Learning Models Training Course

Introduction

The journey of a Machine Learning (ML) model doesn't end with training; it truly begins when it's deployed and managed in production. This MLOps: Deploying & Managing Machine Learning Models Training Course is crucial for ML engineers, data scientists, DevOps engineers, data engineers, and technical leads aiming to bridge the gap between experimental ML development and reliable, scalable operational systems. MLOps (Machine Learning Operations) is a discipline that integrates development (Dev), ML (Machine Learning), and operations (Ops) to ensure the continuous and efficient delivery of ML models.

Participants will gain practical expertise in establishing robust MLOps pipelines, automating the entire ML lifecycle from data ingestion to model deployment and monitoring. The curriculum covers essential practices such as data and model versioning, continuous integration/delivery (CI/CD) for ML, efficient model serving, and comprehensive model monitoring to detect drift and performance degradation. By mastering these principles and tools, you will be able to build, deploy, and manage production-grade ML systems that deliver continuous value and ensure the reliability and reproducibility of your AI solutions.

Target Audience

  • Machine Learning Engineers
  • Data Scientists with an interest in productionizing models
  • DevOps Engineers looking to specialize in ML systems
  • Data Engineers involved in ML data pipelines
  • MLOps Practitioners
  • Technical Leads and Architects overseeing AI/ML initiatives

Duration

10 days

Course Objectives

  1. Understand the core principles of MLOps and its importance in the machine learning lifecycle.
  2. Design and implement robust data versioning and validation strategies for ML datasets.
  3. Establish continuous integration (CI) and continuous delivery (CD) pipelines tailored for machine learning models.
  4. Master techniques for efficient model serving, inference, and scalable deployment strategies.
  5. Implement comprehensive model monitoring systems to detect performance degradation, data drift, and concept drift.
  6. Ensure reproducibility and auditability of ML experiments and deployed models.
  7. Develop strategies for model retraining automation and continuous model improvement.
  8. Navigate common MLOps tools and platforms to build and manage production-ready ML systems.

Physical Training Schedule

Start & End Date

Location

Fee (USD)

Register

Jan 5- Jan 16, 2026

Kigali

3,950

Jan 19-Jan 30, 2026

Nairobi

2,450

Feb 2- Feb 13, 2026

Mombasa

3,250

Feb 16- Feb 27, 2026

Nairobi

2,450

Mar 2- Mar 13, 2026

Kigali

3,950

Mar 16- Mar 27, 2026

Nairobi

2,450

Apr 6- Apr 17, 2026

Dar es Salaam

3,950

Apr 13- Apr 24, 2026

Nairobi

2,450

May 4- May 15, 2026

Pretoria

4,000

May 18- May 29, 2026

Nairobi

2,450

June 1- June 12, 2026

Mombasa

3,240

June 15- June 26, 2026

Nairobi

2,450

July 6- July 17, 2026

Nairobi

2,450

July 20- July 31, 2026

Dar es Salaam

3,950

Aug 3- Aug 14, 2026

Nairobi

2,450

Aug 17- Aug 28, 2026

Kigali

3,950

Sep 7- Sept 18, 2026

Nairobi

2,450

Sep 14- Sept 25, 2026

Pretoria

4,000

Oct 5- Oct 16, 2026

Nairobi

2,450

Oct 19- Oct 30, 2026

Mombasa

3,250

Nov 2- Nov 13, 2026

Nairobi

2,450

Nov 16- Nov 27, 2026

Kigali

3,950

Dec 7 – Dec 18, 2026

Nairobi

2,450

Online Training Schedule

Start & End Date

Fee (USD)

Register

Jan 5-Jan 16, 2026

1,200

Feb 2- Feb 13, 2026

1,200

Mar 2- Mar 13, 2026

1,200

Apr 6 – Apr 17, 2026

1,200

May 4 – May 15 , 2026

1,200

Jun 1 – Jun 12, 2026

1,200

July 6 – July 17, 2026

1,200

Aug 3 – Aug 14, 2026

1,200

Sept 7 – Sept 18, 2026

1,200

Oct 5 – Oct 16, 2026

1,200

Nov 2 – Nov 13, 2026

1,200

Dec 7 – Dec 18, 2026

1,200

Related Courses