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Course Outline
Module 1: Context, Scope and Delivery Challenges
- Differentiating between autocomplete and autonomous multi-step execution
- Addressing common AI misconceptions in software delivery
- Understanding why superior prompts alone are insufficient
- Identifying participant tooling, pain points, and objectives
- Selecting the appropriate AI operating model for engineering teams
Module 2: Specification Ingestion and Structured Decomposition
- Creating a structural inventory of stakeholder documents
- Techniques for requirement extraction
- Chunking strategies: structural, semantic, and sliding-window methods
- Preserving dependencies and cross-references
- Working with tables, diagrams, flowcharts, and mixed input formats
- Effective management of context windows
Module 3: Human Judgment Boundaries
- Identifying areas where human decision-making remains critical
- Recognizing hallucinated dependencies
- Detecting fabricated constraints and inverted logic
- Avoiding unsafe "helpful" defaults
- Implementing validation frameworks for traceability, consistency, and completeness
Module 4: From Requirements to Code with Agentic Tools
- Adopting an architecture-first delivery model
- Defining component mapping and service boundaries
- Utilizing API contracts as delivery anchors
- Applying persistent rules and constraints within AI tools
- Linking task instructions to specific requirements
- Comparing minimal prompting versus constrained prompting approaches
- Implementing contract-first generation for backend and frontend components
Module 5: Agentic Iteration Loop
- Navigating the self-correction spiral
- Executing controlled iterative delivery cycles
- Reviewing diffs and code modifications
- Identifying scope creep and unauthorized changes
- Managing limited context memory
- Leveraging iteration history for continuous improvement
Module 6: Code Quality Enforcement
- Defining prompt constraints for edge cases
- Treating rules documents as living governance artifacts
- Implementing automated gates with linting and static analysis
- Conducting security scans on AI-generated code
- Verifying dependency and architecture conformance
- Establishing human review protocols for AI outputs
Module 7: Feedback Loops and Continuous Improvement
- Feeding structured failures back into AI workflows
- Setting bounded iterations and stop criteria
- Logging cycles and outcomes for analysis
- Refining rules documents over time
- Building reusable engineering intelligence
Module 8: Security Anti-Patterns in AI Delivery
- Identifying common security risks in generated code
- Reviewing technology-specific security rule appendices
- Implementing pre-commit security scanning
- Establishing Secure SDLC controls for AI-assisted development
- Clarifying human accountability in secure delivery processes
Module 9: Testing Anchored to Specifications
- Generating test specifications from requirements
- Designing tests using domain-specific language
- Safely generating test implementations
- Understanding mutation testing concepts
- Validating specification coverage
- Reviewing assertion strength
- Utilizing diagnostic questioning models
Module 10: Maintaining the System
- Managing living artifacts: contracts, maps, rules, and test specifications
- Evolving constraints over time
- Establishing AI governance for long-term maintainability
- Preventing technical debt using AI controls
- Defining an operating model for sustainable AI engineering teams
Requirements
Participants should possess:
- Experience in software development projects
- A solid understanding of application architecture fundamentals
- Familiarity with APIs, backend/frontend systems, or full-stack delivery
- Basic knowledge of Agile or iterative software delivery methodologies
- Awareness of software testing concepts
- Exposure to AI coding tools is beneficial but not mandatory
- This course is suitable for mid-level to senior technical professionals
14 Hours