Machine Learning Operations
Production ML: Model Serving, Monitoring, Feature Stores, and End-to-End MLOps Pipelines 40+ hours of hands-on training.

40+
Hours
5
Modules
20
Topics
Beginner-Friendly
Level
New
Batches weekly
About Machine Learning Operations
Production ML: Model Serving, Monitoring, Feature Stores, and End-to-End MLOps Pipelines
In this course, you will: Design end-to-end MLOps pipelines from data ingestion through model serving and monitoring; Package, version, and register ML models using MLflow, DVC, and model registries; Deploy models as REST APIs and batch jobs using BentoML, TorchServe, and KServe.
What This Training Covers
The Machine Learning Operations programme at Tutorsbot spans 40+ hours across 5 structured modules. Every module is built around hands-on projects and real-world scenarios — not slide-heavy theory. Your instructor walks you through each concept with live demonstrations, code reviews, and practical exercises so you can apply what you learn from day one. The curriculum is aligned with current Technology Training industry expectations and hiring patterns.
Enrollment & Training Quality
Machine Learning Operations is available in 2 flexible learning modes — choose online live classes, classroom, hybrid, self-paced, or one-on-one depending on your schedule. Every batch is limited in size to ensure each learner receives personal attention, code-level feedback, and doubt resolution. Career support and certification are included with every enrolment. Tutorsbot instructors are working professionals who teach from delivery experience, and the training standard stays consistent across all modes and batches.
Course Curriculum
5 modules · 20 topics · 40 hrs
01MLOps Foundations
10 topics
MLOps Foundations
10 topics
- MLOps definition: the intersection of DevOps, DataOps, and ModelOps for ML in production
- ML lifecycle: problem definition, data, training, evaluation, deployment, and monitoring
- MLOps maturity levels 0 through 3: manual, automated, and fully automated ML pipelines
- Hidden technical debt in ML systems: data dependencies, configuration, and feedback loops
- MLOps platforms comparison: MLflow, Weights and Biases, SageMaker, Vertex AI, Azure ML
- ML project structure: cookiecutter-ml, src layout, notebooks vs scripts, and reproducibility
- Environment management: conda, poetry, Docker, and pinning dependencies for reproducibility
- Data versioning with DVC: dvc init, dvc add, dvc push, and remote storage configuration
- Git + DVC workflow: tracking code in Git and data in DVC with synchronized versions
- MLOps roles: ML engineer, data engineer, data scientist, and platform engineer responsibilities
02Experiment Tracking and Model Registry
10 topics
Experiment Tracking and Model Registry
10 topics
- MLflow tracking: experiments, runs, parameters, metrics, artifacts, and autologging
- MLflow UI: comparing runs, querying experiments, and visualizing metric histories
- Weights and Biases: runs, sweeps, artifacts, reports, and team collaboration features
- Hyperparameter optimization: Optuna, Ray Tune, and W&B Sweeps for automated HPO
- Model evaluation metrics: classification, regression, ranking, and NLP metric selection
- Model registry concepts: model versions, stage transitions, and promoting to production
- MLflow Model Registry: registering models, staging, production, and archiving lifecycle
- Model metadata: tagging models with dataset version, training code SHA, and performance
- Comparing model versions: A/B testing offline evaluation and champion-challenger patterns
- Model cards: documenting model purpose, performance, limitations, and ethical considerations
Feature Engineering and Feature Stores
0 topics
2 more modules available
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Enrol in This Course
Same curriculum & certification across all formats. Updated Apr 2026.
Online Live
Save ₹2,500Live instructor-led sessions from anywhere, with recordings for catch-up.
EMI from ₹2,083/mo
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What You Get After Completion
Every graduate receives a verified certificate, a portfolio of real projects, and dedicated career support.
Verified Certificate
Digitally signed with a permanent shareable link — not just for attendance.
LinkedIn-importable·Permanent URL·PDF download
Project Portfolio
Real, deployable projects reviewed by your instructor — ready for interviews.
Instructor-reviewed·GitHub-hosted·Interview-ready
Career Support
Résumé review, mock interviews, LinkedIn guidance, and employer introductions.
1-on-1 coaching·Mock interviews·Employer connect
Meet Your Instructor
Every Machine Learning Operations batch is led by a practitioner who teaches from production experience, not textbooks.
Industry Expert
Senior Technology Professional
Senior professionals with substantial hands-on delivery experience at top companies, bringing real-world projects, industry insights, and best practices.
How We Teach
- Concepts start with a real problem so theory lands in context
- Projects reviewed the way a senior colleague reviews pull requests
- Every topic includes the kind of questions you'll face in interviews
Hire Machine Learning Operations Talent from Tutorsbot
Companies hiring Machine Learning Operations talent from Tutorsbot receive pre-assessed profiles backed by project work, instructor review, and interview-ready candidates who can explain what they built and why.
Why hire from us
Project repositories with documented technical decisions
Assessment outcomes backed by instructor context
Candidate readiness shaped by interview-style practice
Project-based portfolios available
Frequently Asked Questions
Everything you need to know about Machine Learning Operations, answered by our training experts
1Who should take Machine Learning Operations?
2Does Machine Learning Operations include a certificate?
3Is placement support included with Machine Learning Operations?
4How long does Machine Learning Operations take to complete?
5What is the mode of delivery for Machine Learning Operations?
6Can I get a free demo class for Machine Learning Operations?
7What kind of projects will I work on in Machine Learning Operations?
8What if I miss a class?
9Is Machine Learning Operations worth it for experienced professionals?
10What is the refund policy for Machine Learning Operations?
11Do you offer corporate or group training?
12How are the instructors selected at Tutorsbot?
13Will I get lifetime access to Machine Learning Operations materials?
14Can I switch between batch timings?
15What support do I get after completing the course?
Still have questions?
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