MLOps Pipeline Design and Implementation Course by Surekha Kanwar
Duration:2 months
Batch Type:Weekend and Weekdays
Languages:English, Hindi
Class Type:Online and Offline
Address:H.P.Housing Board Colony, Solan
Course Fee:
Course Content
The MLOps Pipeline Design and Implementation Course is a comprehensive program designed to help learners understand how machine learning models move from experimentation to real-world production environments. While many professionals learn how to build models, deploying and managing them efficiently at scale requires specialized knowledge — and this course focuses exactly on that critical stage of the machine learning lifecycle.
This course is suitable for a wide range of participants, including data scientists, machine learning engineers, software developers, DevOps professionals, business analysts, and project managers. It provides a structured pathway to mastering the tools, processes, and strategies needed to operationalize machine learning solutions effectively.
Through a combination of conceptual learning and practical insights, students will develop the skills needed to build robust, scalable, and automated MLOps pipelines that support collaboration, efficiency, and long-term model performance.
What Students Will Learn
Participants will gain in-depth knowledge and hands-on understanding of:
Fundamentals of MLOps and its role in modern data science
Machine learning lifecycle management
Designing end-to-end ML pipelines
Data versioning and workflow orchestration
Model training, validation, and evaluation processes
Continuous integration and continuous deployment (CI/CD) for ML
Model deployment strategies in production environments
Monitoring model performance and drift detection
Automation of ML workflows
Collaboration between data science, engineering, and business teams
Teaching Method
The course is delivered through live online interactive sessions, making it accessible to working professionals and learners worldwide. The teaching methodology includes:
Clear theoretical explanations of MLOps concepts
Real-world examples of deployment workflows
Step-by-step pipeline design walkthroughs
Practical case discussions and implementation strategies
Interactive sessions to encourage participation
Doubt-clearing support and guided learning
The focus is on bridging the gap between machine learning development and real-world deployment.
Why This Tutor
The course is guided by a tutor who emphasizes practical understanding and real-world application of machine learning operations. The teaching approach focuses on simplifying complex technical workflows, ensuring learners can confidently apply MLOps principles in professional environments. The training encourages active engagement and promotes structured learning for both beginners and experienced professionals.
Benefits & Outcomes
By completing this course, learners will:
Understand the complete lifecycle of machine learning deployment
Learn to design scalable and efficient MLOps pipelines
Gain confidence in operationalizing ML models
Improve collaboration between technical and business teams
Enhance career opportunities in data science and AI operations
Develop skills required for industry-ready ML deployment workflows
This course helps participants move beyond model building and gain expertise in delivering production-ready machine learning solutions.
Skills
Machine Learning, Model Deployment, Mlops (machine Learning Operations), Data Science
Tutor
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10 Years Experience
#5/226 Radha Krishan gali, Shamsherpur, PAONTA SAHIB








