Home >Courses >Advanced MLOps: ModelOps, DataOps & Monitoring

NSTC Logo
Home >Courses >Advanced MLOps: ModelOps, DataOps & Monitoring

Advanced MLOps: ModelOps, DataOps & Monitoring

Streamline ML Workflows from Data to Deployment with Advanced MLOps Practices.

Register NowExplore Details

Early access to the e-LMS platform is included

  • Mode: Online/ e-LMS
  • Type: Mentor Based
  • Level: Moderate
  • Duration: 3 Weeks

About This Course

Advanced MLOps: ModelOps, DataOps & Monitoring is a comprehensive program designed to bridge the gap between data science and engineering operations. It equips AI/ML professionals with the tools, practices, and infrastructure knowledge necessary to automate and optimize every stage of the ML lifecycle — from data ingestion to deployment, model retraining, and performance monitoring.

The course addresses the practical challenges of managing ML pipelines in production environments, with a strong focus on version control, reproducibility, automation, scalability, governance, and compliance in enterprise AI systems.

Aim

To provide in-depth expertise in operationalizing machine learning models by mastering ModelOps, DataOps, and Monitoring for scalable, reliable, and production-ready AI systems.

Program Objectives

  • Provide hands-on exposure to modern MLOps tools and platforms

  • Instill best practices in ModelOps and DataOps pipelines

  • Enhance skills in monitoring and maintaining ML systems post-deployment

  • Empower participants to manage ML lifecycle at scale in the cloud

  • Foster deployment-readiness for enterprise AI systems

Program Structure

🗓️ Week 1: Foundations & DataOps Practices
Module 1: MLOps Evolution & Architecture

  • Chapter 1.1: From DevOps to MLOps: How Models Shift the Stack

  • Chapter 1.2: Core Pillars: ModelOps, DataOps, ML Observability

  • Chapter 1.3: MLOps Tools Landscape: MLflow, TFX, Kubeflow

Module 2: Implementing DataOps for ML

  • Chapter 2.1: Data Versioning with DVC & LakeFS

  • Chapter 2.2: Data Validation and Schema Testing

  • Chapter 2.3: Feature Store Setup: Feast & Vertex AI

  • Chapter 2.4: Data Lineage Tracking for Audits

  • Chapter 2.5: Automating Data Quality Monitoring

🗓️ Week 2: ModelOps – Deployment, Drift & Feedback
Module 3: Model Lifecycle Management

  • Chapter 3.1: Model Packaging: Docker, BentoML

  • Chapter 3.2: Deployment Strategies: Canary, Shadow, A/B

  • Chapter 3.3: Model Registry: Versioning, Approval, Governance

  • Chapter 3.4: Serving Models with FastAPI, Seldon, and KServe

  • Chapter 3.5: Feedback Loop Architecture and Data Capture

Module 4: ML Drift & Retraining Strategy

  • Chapter 4.1: Concept vs. Data Drift – Definitions and Detection

  • Chapter 4.2: Metric Monitoring – Accuracy, Latency, Bias

  • Chapter 4.3: Triggering Retraining Pipelines Automatically

  • Chapter 4.4: CI/CD for ML – GitHub Actions, Argo Workflows

🗓️ Week 3: Monitoring, Observability & Responsible AI Ops
Module 5: ML Observability & Incident Response

  • Chapter 5.1: Setting Up Model Monitoring (Evidently, Prometheus)

  • Chapter 5.2: Alerting & RCA in Production Pipelines

  • Chapter 5.3: ML Logging & Tracing: OpenTelemetry, ML metadata

  • Chapter 5.4: Monitoring Multi-Model Systems

Module 6: Governance, Ethics & Scaling Ops

  • Chapter 6.1: Explainability Tools: SHAP, LIME, Captum

  • Chapter 6.2: Privacy Preservation & Differential Privacy

  • Chapter 6.3: Policy-as-Code & Compliance-as-Code

  • Chapter 6.4: Organizational Maturity & Cross-Functional MLOps Teams

  • Chapter 6.5: Industry Case Studies: Banking, Healthcare, Retail

Who Should Enrol?

  • ML Engineers and Data Scientists

  • DevOps & Data Engineers transitioning to MLOps

  • Software Engineers building ML-enabled systems

  • AI/ML Researchers in applied domains

  • Cloud Engineers and Platform Architects

  • Final-year students and postgraduates in AI, ML, or Data Engineering

Program Outcomes

  • Build and scale robust MLOps pipelines for production environments

  • Automate ML model training, testing, deployment, and monitoring

  • Version and track data, models, and experiments effectively

  • Implement observability frameworks for real-time insights

  • Manage governance, model explainability, and audit trails

Fee Structure

Discounted: ₹21499 | $249

We accept 20+ global currencies. View list →

What You’ll Gain

  • Full access to e-LMS
  • Real-world dry lab projects
  • One-on-one project guidance
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate & e-Marksheet

Join Our Hall of Fame!

Take your research to the next level with NanoSchool.

Publication Opportunity

Get published in a prestigious open-access journal.

Centre of Excellence

Become part of an elite research community.

Networking & Learning

Connect with global researchers and mentors.

Global Recognition

Worth ₹20,000 / $1,000 in academic value.

Need Help?

We’re here for you!


(+91) 120-4781-217

★★★★★
🌱 AI-Powered Life Cycle Assessment Dashboards

Thanks for the points raised, the only suggestion is to involve more interactive parts into the course.

Javad
★★★★★
AI-Assisted Composite Materials Design

Excellent Presentation and Guidance in AI assisted design of composite materials by the mentor.

RAJKUMAR GUNTI rajkumar.gunti@gmail.com
★★★★★
Forecasting patient survival in cases of heart failure and determining the key risk factors using Machine Learning (ML), Predictive Modelling of Heart Failure Risk and Survival

The mentor was very clear and engaging, providing practical examples that made complex topics easier to understand.

Federico Cortese
★★★★★
Generative AI and GANs

Good workshop

Noelia Campillo Tamarit

View All Feedbacks →

Stay Updated


Join our mailing list for exclusive offers and course announcements

Ai Subscriber