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GenAI Deployment & Governance Specialization

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Coursera

GenAI Deployment & Governance Specialization

Enterprise GenAI Deployment & Governance. Build, deploy, monitor, and govern production-ready GenAI systems with enterprise-grade reliability.

Harshita Gulati
Hurix Digital
John Whitworth

Instructors: Harshita Gulati

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Get in-depth knowledge of a subject
Intermediate level

Recommended experience

4 weeks to complete
at 10 hours a week
Flexible schedule
Learn at your own pace
Get in-depth knowledge of a subject
Intermediate level

Recommended experience

4 weeks to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Deploy, orchestrate, and automate GenAI systems using MLOps best practices and cloud platforms

  • Design governance frameworks and monitoring systems ensuring responsible AI at enterprise scale

  • Optimize GenAI performance through data architecture and continuous validation pipelines

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Taught in English
Recently updated!

December 2025

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Specialization - 7 course series

What you'll learn

  • Performance monitoring is essential for maintaining AI system reliability and fairness across diverse user populations

  • Technical architecture decisions (fine-tuning vs RAG) require systematic evaluation of costs, capabilities, and maintenance requirements

  • Effective AI governance requires proactive policy creation, technical guardrails, and cross-functional collaboration to ensure responsible deployment

  • Sustainable AI operations depend on establishing measurable quality benchmarks and continuous feedback loops

Skills you'll gain

Category: Quality Assessment
Category: Responsible AI
Category: Performance Metric
Category: Model Evaluation
Category: System Monitoring
Category: Risk Management
Category: Governance
Category: Compliance Management
Category: Performance Analysis
Category: Gap Analysis
Category: Prompt Engineering
Category: Governance Risk Management and Compliance
Category: Cost Benefit Analysis
Category: AI Security
Category: Content Performance Analysis
Category: Generative AI
Category: Retrieval-Augmented Generation
Category: Large Language Modeling
Category: Data-Driven Decision-Making
Category: Cross-Functional Team Leadership

What you'll learn

  • Proactive compatibility analysis prevents runtime failures and lowers operational overhead through dependency checks.

  • Data-driven release decisions synthesize test metrics, system performance, and business impact assessments

  • Automated deployment with canary releases and rollback mechanisms reduces production risk in continuous delivery.

  • Sustainable deployment relies on reproducible workflows that scale effectively across teams and environments.

Skills you'll gain

Category: Application Deployment
Category: CI/CD
Category: Application Performance Management
Category: Cloud Deployment
Category: Continuous Deployment
Category: Data-Driven Decision-Making
Category: System Requirements
Category: Regression Testing
Category: Dependency Analysis
Category: Model Evaluation
Category: Kubernetes
Category: AI Orchestration
Category: Continuous Delivery
Category: MLOps (Machine Learning Operations)
Category: Verification And Validation
Category: Generative AI
Category: Model Deployment
Category: Release Management
Category: Software Technical Review
Category: Site Reliability Engineering

What you'll learn

  • Reliable MLOps depends on systematic diagnosis: performance issues are solved by log analysis and pipeline investigation, not guesswork.

  • Governance must be automated into deployment—responsible AI needs CI/CD checks for fairness, explainability, and safe rollbacks, not manual reviews.

  • Adaptive systems need intelligent automation—production models should monitor drift and trigger retraining automatically to stay accurate.

  • Operational excellence requires end-to-end visibility, strong monitoring, versioning and audit trails enable fast debugging and long-term reliability

Skills you'll gain

Category: CI/CD
Category: Responsible AI
Category: Continuous Delivery
Category: Continuous Integration
Category: Performance Analysis
Category: Continuous Deployment
Category: Continuous Monitoring
Category: Model Deployment
Category: Cloud Platforms
Category: MLOps (Machine Learning Operations)
Category: Model Evaluation
Category: Data Pipelines
Category: Performance Tuning
Category: Automation
Category: Data Governance

What you'll learn

  • Effective alerting uses historical data to tune thresholds, reducing false alarms while catching issues before SLA breaches

  • Great performance monitoring unifies user metrics and backend KPIs to show how system health impacts user experience.

  • Modern observability relies on logs, metrics, and traces to assess health and diagnose issues in distributed AI systems.

  • Sustainable GenAI operations use data-driven monitoring to balance early detection with long-term operational efficiency.

Skills you'll gain

Category: Real Time Data
Category: Site Reliability Engineering
Category: Service Level
Category: Performance Metric
Category: MLOps (Machine Learning Operations)
Category: System Monitoring
Category: Distributed Computing
Category: Application Performance Management
Category: Service Level Agreement
Category: Incident Management
Category: Continuous Monitoring
Category: Event Monitoring
Category: Performance Tuning
Category: Data Integration
Category: Business Metrics
Category: Analysis
Category: Generative AI
Category: Dashboard

What you'll learn

  • Data lineage is key for AI reliability, helping quickly diagnose model performance drops and data quality issues.

  • Storage architecture affects costs and AI performance; evaluating access patterns and tiering ensures sustainable scaling.

  • Unified data processing reduces complexity by integrating streaming and batch workflows for real-time and analytical AI use.

  • Enterprise GenAI systems need proactive planning of data quality, cost, and platform integration to avoid technical debt.

Skills you'll gain

Category: Apache Kafka
Category: Real Time Data
Category: Data Storage
Category: Cloud Storage
Category: Failure Analysis
Category: Data Pipelines
Category: Root Cause Analysis
Category: Data Infrastructure
Category: Data Integration
Category: Dataflow
Category: Enterprise Architecture
Category: Dependency Analysis
Category: Solution Architecture
Category: Data Processing
Category: Generative AI
Category: Data Architecture
Category: Data Quality
Category: Software Architecture

What you'll learn

  • Effective RBAC uses real usage patterns, not assumptions, to ensure access controls match actual workflows and security needs.

  • Governance maturity assessment with frameworks like DAMA-DMBOK provides benchmarks to guide progress and investment decisions

  • Sustainable data stewardship succeeds with clear ownership, quality standards, and documented procedures that enable accountability

  • GenAI data governance balances rapid innovation with enterprise security and compliance requirements for responsible adoption

Skills you'll gain

Category: Identity and Access Management
Category: AI Security
Category: Data Security
Category: SQL
Category: Quality Assurance and Control
Category: Generative AI
Category: Role-Based Access Control (RBAC)
Category: Data Management
Category: Benchmarking
Category: Governance
Category: Data Quality
Category: Data Governance
Category: Data Access
Category: Responsible AI
Category: Metadata Management

What you'll learn

  • Systematic metadata analysis maintains data quality and helps control storage costs in large-scale AI environments.

  • Effective data retention balances regulatory compliance, business requirements, and long-term cost optimization.

  • Automated data onboarding ensures consistency, quality, and scalability as enterprise data volumes increase.

  • Proactive data governance prevents downstream issues and accelerates AI development and deployment cycles

Skills you'll gain

Category: Information Privacy
Category: Data Cleansing
Category: Data Quality
Category: Data Management
Category: Metadata Management
Category: Data Preprocessing
Category: Data Strategy
Category: Data Maintenance
Category: Data Processing
Category: Expense Management
Category: Regulatory Requirements
Category: Data Storage Technologies
Category: Compliance Management
Category: Data Governance
Category: Data Architecture
Category: MLOps (Machine Learning Operations)
Category: Data Integration
Category: Extract, Transform, Load
Category: General Data Protection Regulation (GDPR)
Category: Data Storage

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Instructors

Harshita Gulati
Coursera
3 Courses96 learners
Hurix Digital
Coursera
154 Courses3,613 learners
John Whitworth
Coursera
1 Course5 learners

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