/AI-assisted SDLC (SMW Project)

Organization-wide initiative to integrate Agentic AI workflows into the Software Development Lifecycle.

Workflow AutomationLLM IntegrationWindsurf

Overview

The SMW Project is a strategic initiative to transform the traditional Software Development Lifecycle (SDLC) by integrating AI-assisted tools. As the Technical Lead, I defined the AI adoption framework, aiming to improve delivery speed, estimation accuracy, and code quality across the organization.

1. Key Innovation: Full-Cycle Agentic AI

End-to-End Agentic AI Workflow (SRS -> Testing)

We moved beyond simple code completion to a comprehensive Full-Cycle Agentic AI workflow that handles:

  1. Requirement Gathering: Generating SRS documents from raw inputs.
  2. Data Modeling: Automating backend schema generation.
  3. Frontend Generation: Producing production-ready Next.js code.
  4. Quality Assurance: Autonomously generating and executing test cases.

2. Tooling Ecosystem

  • Windsurf: For IDE-integrated coding assistance.
  • Antigravity: For autonomous agentic tasks and complex refactoring.
  • GitHub Copilot: For rapid code suggestion and boilerplate generation.

3. Workflow Integration

  • Defined operating models for AI-aided estimation and SRS documentation.
  • Established governance and quality control for AI-generated outputs.
  • Built custom Agent Skills to adapt business logic specific to our domain.

4. Impact

"We didn't just write code faster; we thought about problems differently."

  • +30% Productivity: Verified improvement across pilot teams.
  • Reduced Effort: Significant reduction in technical documentation and estimation time.
  • Consistency: Improved onboarding speed for new engineers via standardized AI prompts/contexts.

5. Technology Stack

  • AI Tools: Windsurf, Antigravity, GitHub Copilot
  • Infrastructure: AKS, Azure DevOps, Airbase