- 5 Sections
- 30 Lessons
- 1 Day
Expand all sectionsCollapse all sections
- The Future of Software Architecture in the AI EraObjectives: Redefine the architect’s role from a static documenter to a dynamic system orchestrator leveraging continuous, AI-assisted reasoning.6
- 1.11. The evolving role of the software architect: From blueprint author to platform governor.
- 1.22. AI as an agentic collaborator: Moving beyond simple code-completion to architectural reasoning.
- 1.33. Shifting paradigms: Moving from documentation-centric to real-time, decision-centric architecture.
- 1.44. Striking the balance: Human engineering judgment vs. non-deterministic AI recommendations.
- 1.55. Continuous and living architecture: Tracking architectural drift at development velocity.
- 1.66. Operational guardrails: Navigating the limits, hallucination profiles, and data privacy boundaries of LLMs in engineering.
- Specification-Driven Architecture & Knowledge EngineeringObjectives: Learn to build structural, machine-readable specifications that serve as the ground truth for AI-driven automation and cross-artifact consistency7
- 2.11. Knowledge engineering: Constructing contextual context windows for architectural reasoning.
- 2.22. AI-assisted specification authoring, automated validation, and cross-artifact alignment.
- 2.33. Maintaining semantic consistency across rapidly evolving multi-service specifications.
- 2.44. Structuring API and event-driven specs (OpenAPI, AsyncAPI, Avro schemas) for AI ingestion.
- 2.55. Codifying Quality Attribute Specifications (QAS) and service-level objectives.
- 2.66. Designing machine-readable business capability and functional specifications.
- 2.77. Core principles of Specification-Driven Architecture (SDA).
- AI-Assisted Architectural Design & System DecompositionObjectives: Use structured AI orchestration to tackle complex system decomposition and trade-off analysis while preserving engineering rigor.6
- 3.11. Domain & Service Decomposition: Separating monoliths into microservices, bounded contexts, and modular monoliths.
- 3.22. Handling Non-Determinism: Overcoming LLM structural variability using deterministic guardrails and graph-based orchestration (e.g., LangGraph, Pydantic AI).
- 3.33. Event-Driven Patterns: Designing for high-volume streaming, decoupling systems, and applying the Claim-Check pattern to scale payload handling.
- 3.44. Automating Trade-off Analysis: Using AI to simulate architectural alternatives and generate multi-variable engineering matrixes.
- 3.55. Structured Documentation: Automating Architecture Decision Record (ADR) generation, capturing design rationale, and mapping architectural lineage.
- 3.66. Running AI-supported, multi-variant architectural review sessions.
- AI-Assisted Architecture Governance & Policy-as-CodeObjectives: Move from subjective manual reviews to automated compliance, using AI to bridge human policies with executable code guardrails.5
- 4.11. Policy-as-Code Automation:
- 4.22. Automated architecture compliance assessment and review workflows.
- 4.33. Programmatic architecture fitness functions and automated architectural drift detection.
- 4.44. Technical debt analysis, security posture validation, and regulatory compliance mapping via static analysis combined with LLMs.
- 4.56. Constructing continuous architecture quality scorecards and automated feedback loops for development teams.
- Architecture Evaluation, Evolution, and ModernizationObjectives: Leverage AI to continuously audit, optimize, and safely plan the evolution of complex, legacy enterprise systems.6
- 5.11. Methodology for continuous, AI-assisted architecture evaluation.
- 5.22. Quantitative analysis of performance, scalability, resilience, and multi- region failover.
- 5.33. Cost and operational impact modeling: Simulating cloud spend and infrastructure optimization.
- 5.44. Legacy Modernization: Combining Abstract Syntax Tree (AST) parsing with LLMs to reverse-engineer, map, and safely refactor legacy monoliths.
- 5.55. Maintaining self-healing, living architecture artifacts and reverse- generating documentation from runtime state.
- 5.66. Interactive Closing Discussion: How AI reshapes architecture team topology, cross-functional processes, and long-term enterprise stewardship.
2. Handling Non-Determinism: Overcoming LLM structural variability using deterministic guardrails and graph-based orchestration (e.g., LangGraph, Pydantic AI).
Prev
4. Automating Trade-off Analysis: Using AI to simulate architectural alternatives and generate multi-variable engineering matrixes.
Next
About Us
We’re all about making technology training exciting, impactful, and truly worth your time. Our programs are crafted by expert SMEs and delivered with precision to help you master the skills that matter. Established in 2004, Colossal has been on a mission to transform tech learning. We’re here to give you the tools to unlock real business value and stay ahead in the fast-paced digital game.
2026 © Colossal Software Technologies PVT LTD
