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Virtual Workshop

Advanced MLOps: ModelOps, DataOps & Monitoring

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

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Early access to e-LMS 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
  • 1:1 project guidance
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate & e-Marksheet

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