Repository-native AI-assisted SDLC

Turn AI usage into a measurable software delivery system.

ADLC helps engineering organizations design and run repository-native AI-assisted workflows with governance, human control, and measurable delivery metrics built directly into the software development lifecycle.

Built for CTOs, VP Engineering, and delivery leaders who want AI adoption without losing control.

Active Workflow Visualizer
Detailed ADLC Workflow Visualization
SYSTEM_SYNC_ACTIVE
v2.4.0-stable

Not a separate platform

The workflow lives inside the repository, versioned with the codebase, and travels with the project.

Human-governed by design

AI supports execution, but architecture choices, commits, pull requests, and release decisions remain human-controlled.

Measured delivery flow

Throughput, WIP, cycle time, blocked work, and delivery flow become visible so teams can improve with evidence.

The Problem

Most engineers still use AI assistants like chat tools instead of integrating AI directly into the development workflow.

In many teams, engineers still copy and paste code into chat windows, ask for fixes, request explanations, or troubleshoot errors manually. AI is often treated as a separate assistant conversation instead of becoming part of the actual engineering workflow inside the repository and delivery process.

ADLC changes the focus from individual AI productivity to the performance of the entire delivery system.

Proven Workflow

Proven in a real enterprise software project with delivery metrics

ADLC was implemented in real production engineering environments, not a demo. The first full implementation supported a U.S.-based company in the insurance sector across three projects, becoming a repository-native AI-assisted delivery workflow and later evolving into a broader operational model for scaling engineering execution.

15

Workflow Steps

10

Specialized Agents

5

MCP Integrations

Throughput Progression (Items/Day)

~0.80
day before ADLC

Baseline throughput before the structured AI-assisted workflow was introduced.

~1.42
day after ADLC

Throughput increased after the workflow became part of daily engineering execution.

~1.46
day after team split

Delivery remained high even after part of the team was redeployed, suggesting flow efficiency rather than staffing effect.

Throughput (Delivery Pace)

28-day rolling average of accepted work and completed work from the source dashboard.

In Development arrivals In PO Review departures
Throughput Delivery Pace Chart Rolling average arrivals and departures from 2025-04-30 to 2026-05-19. 0 0.5 1 1.5 2 May 25 Jul 25 Sep 25 Nov 25 Jan 26 Mar 26 May 26 Claude started Team divided Date Items/day
28d Avg Arrivals 28d Avg Departures
HOW ADLC WORKS

A framework for defining governed engineering workflows.

ADLC is not a single hardcoded workflow. It is a framework for defining and evolving repository-native engineering workflows with AI-assisted execution, governance, delivery metrics, and human approval gates.

The workflow shown here is one example: a path from ticket to reviewed and tested code ready for commit.

1

Assessment & AI readiness

Review repository structure, local execution, test reliability, backlog quality, delivery flow, and engineering constraints.

2

Workflow definition

Define project-specific workflows, commands, agents, responsibilities, governance gates, tool integrations, and engineering conventions.

3

Repository-native implementation

Configure the workflow inside the repository so it is versioned, transparent, and aligned with the team's codebase.

4

Human-in-the-loop execution

Developers choose approaches, review changes, approve commits, and keep accountability for what ships.

5

Metrics and delivery visibility

Track throughput, WIP, cycle time, blocked work, and delivery patterns across sprints.

6

Optimization and scaling

Refine workflow based on data, expand to additional teams, and introduce cost and quality metrics over time.

Performance Monitoring

Metrics and delivery visibility

Throughput

Track completed work over time and compare delivery before and after ADLC adoption.

Cycle time

Understand whether delivery is becoming more predictable and where delays appear.

WIP stability

Keep flow healthy as implementation speed increases, without creating uncontrolled multitasking.

Next metrics direction

Extend measurement toward cost efficiency, defect trends, rework, test validation, and review consistency.

Strict Constraints

  • No autonomous commits
  • Credentials blocked by default
  • Human-in-the-loop architecture approval
  • Mandatory manual PR review
Governance

AI acceleration without uncontrolled automation.

We believe AI should act as a high-throughput capability multiplier, not an autonomous agent running wild in your repository.

ADLC enforces strict system boundaries. Your engineers remain the final arbiters of code quality, architecture direction, and deployment readiness.

Enterprise delivery experience

Built by teams already trusted in production delivery environments.

ADLC is not created by AI consultants experimenting in isolation. It is built by engineering leaders and delivery teams with experience supporting enterprise software initiatives, senior resource delivery, QA automation, and production project execution.

This matters because AI-assisted SDLC adoption only works when the underlying engineering delivery discipline is strong: clear ownership, reliable communication, senior talent, and predictable execution.

Senior delivery capacity

Rapidly adding experienced engineers and QA specialists into demanding enterprise environments when internal hiring capacity is limited.

Operational trust

Working inside client delivery structures with proactive reporting, transparent communication, and strong ownership of outcomes.

Production discipline

Practical software delivery experience across enterprise platforms, QA automation, Azure/.NET ecosystems, and distributed engineering teams.

Selected delivery proof

Prometheus Group — enterprise engineering support

Prometheus Group logo

A separate 9-month enterprise delivery engagement with Prometheus Group demonstrates the team’s ability to provide senior engineering and QA talent, integrate into client teams quickly, and maintain delivery momentum under real operational constraints. This is proof of engineering and delivery maturity behind the ADLC offering.

Supported enterprise asset management software delivery from August 2025 to April 2026.

Embedded senior QA automation and software engineering specialists into active delivery teams.

Supported QA automation, .NET/C#, Xamarin mobile, Playwright, CI/CD, Docker, GitLab, SAP and Oracle Primavera P6 integrations.

Provided CTO-level progress visibility, proactive escalation, and structured coordination across multiple teams.

Keith Davies

“Clever Spark proved to be a reliable partner during our engagement. Their engineers onboarded quickly, adapted to our environment, and supported both QA automation and development work effectively.”

— Keith Davies, CTO, Prometheus Group

LOW-RISK ROLLOUT

Start with a controlled pilot, then scale 
what works.

Phase 1

Assessment

We map your current delivery pipeline, identify AI readiness, and define the highest-ROI entry point for ADLC integration.

Phase 2

Implementation

We co-build the repository-native workflow with your team, establishing templates, governance rules, and agent orchestration.

Phase 3

Run, Measure, Optimize

Your team runs the workflow. We track throughput metrics and iteratively refine the agents and prompts to maximize flow.

ADLC is not a single AI workflow. It is a system for building AI workflows.

Stop waiting for individual developer productivity to magically translate into software delivery. Engineer your AI lifecycle today.

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