Coursera

Building Trustworthy AI Specialization

Coursera

Building Trustworthy AI Specialization

Build Secure, Ethical, and Governed AI Systems. Learn AI security, ethics, and governance to deploy trustworthy systems in production.

Starweaver
Ritesh Vajariya
Brian Newman

Instructors: Starweaver

Access provided by ExxonMobil

Get in-depth knowledge of a subject

from 7 reviews of courses in this program

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

from 7 reviews of courses in this program

Intermediate level

Recommended experience

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

What you'll learn

  • Identify and mitigate AI-specific security threats across the MLOps lifecycle using industry frameworks like MITRE ATLAS

  • Design and implement ethical AI systems with explainability, fairness metrics, and comprehensive governance frameworks

  • Create enterprise-grade risk management and monitoring systems for continuous AI validation and regulatory compliance

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Taught in English
Recently updated!

January 2026

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Specialization - 10 course series

What you'll learn

  • Identify and classify various classes of attacks targeting AI systems.

  • Analyze the AI/ML development lifecycle to pinpoint stages vulnerable to attack.

  • Apply threat mitigation strategies and security controls to protect AI systems in development and production.

Skills you'll gain

Category: AI Security
Category: Secure Coding
Category: Model Deployment
Category: Artificial Intelligence and Machine Learning (AI/ML)
Category: Threat Detection
Category: Security Testing
Category: Cybersecurity
Category: Vulnerability Assessments
Category: Threat Modeling
Category: MITRE ATT&CK Framework
Category: MLOps (Machine Learning Operations)
Category: Application Lifecycle Management
Category: Responsible AI
Category: Security Controls
Category: Data Security

What you'll learn

  • Analyze and evaluate AI inference threat models, identifying attack vectors and vulnerabilities in machine learning systems.

  • Design and implement comprehensive security test cases for AI systems including unit tests, integration tests, and adversarial robustness testing.

  • Integrate AI security testing into CI/CD pipelines for continuous security validation and monitoring of production deployments.

Skills you'll gain

Category: Security Testing
Category: Threat Modeling
Category: AI Security
Category: MITRE ATT&CK Framework
Category: DevSecOps
Category: Continuous Monitoring
Category: MLOps (Machine Learning Operations)
Category: Scripting
Category: Secure Coding
Category: Continuous Integration
Category: Threat Detection
Category: Test Case
Category: Unit Testing
Category: System Monitoring
Category: Integration Testing
Category: CI/CD
Category: Application Security
Category: DevOps
Category: Prompt Engineering

What you'll learn

  • Create comprehensive documentation and conduct ethical evaluations of large language model systems to ensure responsible AI deployment.

Skills you'll gain

Category: Auditing
Category: Model Evaluation
Category: Accountability
Category: Data Ethics
Category: Case Studies
Category: Compliance Auditing
Category: Business Ethics
Category: Mitigation
Category: Responsible AI
Category: Compliance Management
Category: Technical Documentation
Category: Model Deployment
Category: Data Quality
Category: Project Documentation
Category: MLOps (Machine Learning Operations)
Category: Ethical Standards And Conduct

What you'll learn

  • Ethical AI needs proactive bias measurement and fairness checks across demographics to prevent reinforcing societal inequalities.

  • AI success relies on mapping technical initiatives to business goals, continuously assessing ROI and feasibility.

  • Scalable AI operations require governance structures, best practices, clear accountability, and cross-functional collaboration

  • Responsible AI deployment balances innovation with ethics using technical guardrails and evolving organizational frameworks

Skills you'll gain

Category: Governance
Category: Decision Making
Category: Organizational Strategy
Category: Technology Roadmaps
Category: Ethical Standards And Conduct
Category: Risk Mitigation
Category: Responsible AI
Category: Artificial Intelligence and Machine Learning (AI/ML)
Category: Strategic Leadership
Category: Data Ethics
Category: Data Governance
Category: Artificial Intelligence
Category: Scalability
Category: Cross-Functional Collaboration
Category: Business Ethics
Category: Enterprise Architecture
Category: Business Management

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

What you'll learn

  • Learners will apply reinforcement learning to design and validate reward functions while analyzing ethical and societal implications of AI decisions.

Skills you'll gain

Category: Policy Analysis
Category: Due Diligence
Category: Risk Analysis
Category: Policy Development
Category: Regulatory Compliance
Category: Artificial Intelligence and Machine Learning (AI/ML)
Category: Algorithms
Category: Reinforcement Learning

What you'll learn

  • Cross-modal evaluation requires specialized metrics that assess semantic alignment and joint reasoning capabilities across different data modalities.

  • Ethical AI assessment is a systematic process involving quantitative bias measurement and interpretability analysis using standardized frameworks.

  • Enterprise AI deployment success depends on balancing performance optimization with ethical governance and continuous monitoring.

  • Model interpretability through LIME and SHAP analysis provides transparency essential for responsible AI system deployment.

What you'll learn

  • Identify common sources of bias in AI systems and apply tools to assess and mitigate them.

  • Implement explainability methods, such as SHAP and LIME, to interpret and effectively communicate model behavior.

  • Develop a responsible AI checklist aligned with transparency and fairness principles and apply it to AI projects to ensure ethical compliance.

  • Evaluate AI projects for potential ethical risks and ensure alignment with compliance frameworks, such as the NIST AI RMF.

Skills you'll gain

Category: Model Evaluation
Category: Responsible AI
Category: Ethical Standards And Conduct
Category: Risk Mitigation
Category: OpenAI
Category: AI Enablement
Category: Data Ethics
Category: Auditing
Category: Risk Management Framework
Category: Compliance Management
Category: Mitigation
Category: Governance
Category: Artificial Intelligence
AI Model Risk Management

AI Model Risk Management

Course 9 2 hours

What you'll learn

Skills you'll gain

Category: Compliance Management
Category: Governance Risk Management and Compliance
Category: Responsible AI
Category: Key Performance Indicators (KPIs)
Category: Business Risk Management
Category: Compliance Auditing
Category: Auditing
Category: Risk Analysis
Category: Risk Mitigation
Category: Verification And Validation
Category: Risk Management
Category: Model Evaluation
Category: Risk Control
Category: Process Validation
Category: AI Security
Category: Regulatory Requirements
Category: Governance
Category: Gap Analysis
Govern Your GenAI Data Safely

Govern Your GenAI Data Safely

Course 10 2 hours

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

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Instructors

Starweaver
Coursera
545 Courses 985,465 learners
Ritesh Vajariya
Coursera
27 Courses 14,922 learners
Brian Newman
Coursera
5 Courses 1,441 learners

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Coursera

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