Tier 2

>AI-First Delivery Transformation

Redesign specs, review, and delivery workflows so teams ship faster with AI and fewer handoff failures.

VP Engineering, Engineering Directors·4–8 months

>The Problem

GitHub Copilot is deployed, developers are using it, and sprint velocity has barely moved. The problem is structural: AI coding tools require AI-native specifications, AI-native review processes, and AI-native team topologies to deliver their potential. When PRDs are written for humans, when code review treats AI-generated code the same as hand-written code, and when the sprint process was designed for a pre-AI world, no tool will compensate. Teams feel the friction but can't name the root cause, and leadership sees the spend without the return.

>Our Approach

We redesign the parts of delivery that determine whether AI helps or hurts: specification quality, review criteria, testing workflows, and team coordination. The result is simpler inputs, clearer expectations, and an execution system where AI-assisted work ships faster without increasing downstream cleanup.

Step 1

Process Audit & Baseline

We map your current spec-to-deploy workflow, measure the velocity and quality baseline, and identify exactly where AI tools are failing to deliver their potential.

Step 2

PRP Framework Rollout

We introduce the Product Requirements Prompt format, build a template library for your most common feature types, and run workshops with PMs and tech leads to make it stick.

Step 3

AI-Native Review & Testing

We redesign the code review process with AI-specific criteria and deploy the AI-assisted testing framework, running a two-sprint pilot to validate the quality improvement.

Step 4

Team Topology & Metrics

We define the AI Orchestrator structure, support the first role transitions or hires, and deploy the velocity and quality dashboard for ongoing leadership visibility.

>What You Get

  • PRP (Product Requirements Prompt) specification format and a library of 20+ role-specific templates
  • AI-native code review guidelines and checklist
  • AI-assisted testing framework with prompt-driven test generation patterns
  • Sprint workflow redesign documentation and facilitated team rollout
  • AI Orchestrator team structure definition and hiring/promotion criteria
  • Velocity and quality metrics dashboard

>Benchmark Targets

MetricBaselineTargetWorld Class
Sprint VelocityCurrent baseline (pre-AI-first process)1.5–2x baseline within 3 months2.5x+ baseline sustained over two quarters
Defect Escape RateCurrent production defect rate30% reduction within 4 months50%+ reduction with AI-assisted test coverage
PRP Adoption0% of specs written in PRP format>50% of new features use PRP format100% adoption with template library fully in use
Related Case Study

Transforming Infrastructure and Performance for a Growing Marketplace

Pillar B in action: modernizing delivery infrastructure for AI-ready architecture while maintaining zero downtime.

Read the full case study →

Ready to get started?