AI-Augmented SDLC for .NET Systems with Measurable Outcomes
Description
This course provides a practical and structured approach to integrating AI into the Software Development Life Cycle (SDLC) for .NET-based systems, focusing on controlled adoption, governance, and measurable impact. Participants will explore how AI assistants and coding agents can accelerate development, testing, and operations while maintaining quality, security, and compliance. The course emphasizes real-world use cases in ASP.NET Core, SQL Server, and DevOps pipelines, combined with KPI-driven measurement of productivity and ROI. Through hands-on exercises, learners will implement AI-augmented workflows and evaluate their effectiveness in a controlled engineering environment.
🕒 Duration: 8 hours
👥 Target Audience:
- Roles: Software Engineers/ Architects (.NET, Backend, Full stack), DevOps / SRE Engineers, CTOs / Engineering Managers
- Seniority: Mid-Senior
Webinar Content
| Module 1: SDLC Reality & AI Opportunity Friction Points in .NET Systems Role-based AI Adoption | Current SDLC bottlenecks and AI opportunities |
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| Module 2: AI in .NET Development ASP.NET Core Acceleration Test Generation & Refactoring | AI-assisted backend development |
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| Module 3: Controlled Adoption & Governance Secure AI Usage SDLC Integration | Governance and enterprise-safe AI adoption |
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| Module 4: Measurement, KPIs & ROI Coding Agents Overview AI-Augmented Workflow | Measuring value and introducing agents |
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Learning Objectives:
After attending this webinar participants will be able to:
- Integrate AI into .NET SDLC phases with structured governance
- Use AI to accelerate API development, testing, and debugging
- Define and track productivity KPIs and engineering metrics
- Apply secure and controlled AI usage within enterprise environments
- Evaluate ROI and business impact of AI adoption
Prerequisite Knowledge
- Basic experience with .NET (ASP.NET Core) and SQL Server
- Familiarity with software development workflows (Git, APIs, testing)

