MLOps Mastery Course

USD $249.00

The MLOps Mastery Course is a complete hands-on training designed to help you transform machine learning models into scalable, production-ready systems. Instead of focusing only on model building, this course teaches the real-world skills companies need: deploying models, automating workflows, monitoring performance, and maintaining reliable ML pipelines.

Attribute
Details
Format
Online workshop with hands-on labs
Level
Intermediate to Advanced
Duration
6–8 weeks, self-paced + live labs
Mode
Online, cloud-based labs
Tools Used
Git, Docker, Kubernetes, MLflow, DVC, AWS, FastAPI, Prometheus, Grafana
Hands-On Component
Real industry project: end-to-end MLOps system
Target Audience
Data Scientists, ML Engineers, Software/DevOps Engineers, Cloud Professionals
Domain Relevance
Production ML, AI Infrastructure, Cloud MLOps

About the Course
This workshop addresses the full lifecycle of machine learning in production, from version control to automated pipelines, containerized deployment, CI/CD, orchestration, and system observability. While data science often emphasizes model accuracy, real-world impact depends on operational stability, reproducibility, and scalability.
Participants gain hands-on experience with modern MLOps practices, including automated workflows, experiment tracking, container orchestration with Kubernetes, cloud-native deployment on AWS, and monitoring live ML systems. The course bridges the persistent gap between machine learning experimentation and industrial application.
“By completing this workshop, learners can confidently design, implement, and maintain production-ready ML systems that are reliable, scalable, and aligned with industry standards.”

Why This Topic Matters
Deploying ML models is significantly more complex than building them. Organizations struggle with:

  • Reproducibility: Ensuring experiments can be rerun and audited.
  • Scalability: Supporting millions of requests while maintaining model performance.
  • Automation: Reducing human error in CI/CD pipelines for model deployment.
  • Observability: Monitoring drift, latency, and system health in production.
As cloud adoption and AI workloads expand, demand for professionals who can operationalize machine learning is growing rapidly. Knowledge of MLOps tools, infrastructure, and deployment strategies is no longer optional—it’s the baseline for production ML roles.

What Participants Will Learn
• Design reproducible ML workflows using DVC and modular pipelines
• Implement experiment tracking and manage model versions with MLflow
• Containerize ML applications with Docker and deploy APIs via FastAPI
• Automate deployment pipelines using GitHub Actions and CI/CD strategies
• Orchestrate scalable workloads with Kubernetes on AWS EKS
• Monitor production ML systems using Prometheus and Grafana
• Develop an end-to-end industry-grade ML system, from ingestion to live deployment

Course Structure

Module 1 — Version Control & Collaboration
  • Git workflows for ML projects
  • Collaborative coding with GitHub
  • Repository management automation

Module 2 — Data & Pipeline Versioning
  • Building reproducible pipelines with DVC
  • Integrating remote storage (Amazon S3)
  • Parameterized and modular ML workflows

Module 3 — Experiment Tracking & Model Management
  • End-to-end tracking using MLflow
  • Model registry versioning
  • Integration with collaborative platforms (Dagshub)

Module 4 — Containerization & ML Deployment
  • Docker fundamentals and optimization
  • Building ML APIs with FastAPI
  • Publishing images to Docker Hub & Amazon ECR

Module 5 — Real Industry Project: End-to-End MLOps System
  • Vehicle insurance claim prediction system
  • Automated pipelines, model tracking, containerized deployment
  • CI/CD integration and Kubernetes production rollout
  • [Visual Note: Insert workflow diagram for course progression]

Tools, Techniques, or Platforms Covered
Git, GitHub
DVC, Amazon S3
MLflow, Dagshub
Docker, FastAPI, AWS ECR, EC2
Kubernetes, AWS EKS
GitHub Actions
Prometheus, Grafana

Real-World Applications
Production ML pipelines in finance, healthcare, and insurance; cloud ML system deployment and scaling; experiment tracking and model versioning for collaborative teams; monitoring AI systems for drift, latency, and reliability; portfolio-level project experience demonstrating industry-ready skills.

Who Should Attend
  • Data Scientists: Transition from experimentation to production ML systems
  • Machine Learning Engineers: Expand deployment and scaling expertise
  • Software/DevOps Engineers: Integrate AI into cloud-native systems
  • Cloud Professionals: Operate ML workloads on AWS & Kubernetes
  • Students/Professionals: Aspiring MLOps engineers or ML-focused career movers

Prerequisites or Recommended Background: Basic machine learning knowledge and Python programming. Familiarity with data structures, APIs, and cloud concepts recommended. No prior experience with Kubernetes or CI/CD required; workshop guides step-by-step.

Why This Course Stands Out
End-to-End Production Focus, Industry-Grade Tool Exposure, Applied Learning with real projects, Balanced Curriculum combining theory and practice, and Expert-Led Guidance from ML engineering professionals.
Category

E-LMS, E-LMS+Video, E-LMS+Video+Live Lectures

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What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

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Feedbacks

Carbon Fiber Reinforced Plastics (CFRPs)

mentor is highly skillful with indepth knowledge about the subject


LAXMI K : 11/19/2024 at 1:16 pm

R Programming for Biologists: Beginners Level

I think the instructor did a good job of getting us going with R. Useful would be a link sent to More advise us where to best download R in advance of the workshop, and also having any extra files necessary in advance.
Angela Riveroll : 03/02/2024 at 1:18 am

Power BI and Advanced SQL Mastery Integration Workshop, CRISPR-Cas Genome Editing: Workflow, Tools and Techniques

Good! Thank you


Silvia Santopolo : 12/05/2023 at 4:01 pm

Scientific Paper Writing: Tools and AI for Efficient and Effective Research Communication

Mam explained very well but since for me its the first time to know about these softwares and More journal papers littile bit difficult I found at first. Then after familiarising with Journal papers and writing it .Mentors guidance found most useful.
DEEPIKA R : 06/10/2024 at 10:48 am

The Green NanoSynth Workshop: Sustainable Synthesis of NiO Nanoparticles and Renewable Hydrogen Production from Bioethanol

Though he explained all things nicely, my suggestion is to include some more examples related to More hydrogen as fuel, and the necessary action required for its safety and wide use.
Pushpender Kumar Sharma : 02/27/2025 at 9:29 pm

Scientific Paper Writing: Tools and AI for Efficient and Effective Research Communication

All facilities have explained everything nicely.


Veenu Choudhary : 05/19/2024 at 4:14 pm

Protein Structure Prediction and Validation in Structural Biology

The mentor was good, I think a great improvement to the lectures could be gained by a better, More non-ambiguous use of words and terminology.
Ciotei Cristian : 02/09/2024 at 2:04 pm

We would like to have a copy of the presentations/lectures slides.


Khaled Alotaibi : 04/09/2025 at 2:35 am