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AI Transition Strategist

AI makes
teams faster.
Not always
better.

I help technology organizations close the gap between AI-accelerated output and measurable business value — through strategy sprints, embedded advisory, and governance frameworks that hold under pressure.

78K+
Tech layoffs in Q1 2026 — 47.9% AI-attributed. The transition is not theoretical.
4-week
AI Strategy Sprint to board-ready clarity on priorities, risks, and governance.
ECPU
Proprietary metric: Engineering Cost per Unit of Delivered Value. Velocity vs. value — measured.
"When AI accelerates everything, measuring nothing becomes the default."

Every engineering team is adopting AI tooling. Velocity metrics are up. Boards are asking whether the investment is working. Most organizations cannot answer that question with confidence.

The standard productivity proxies — story points, velocity, lines of code — were inadequate before AI. Under AI acceleration, they become actively misleading. Teams optimize for the metric, not the outcome.

The result: AI-generated technical debt, workforce decisions made on false efficiency signals, and strategy documents that describe transformation without measuring it.

How I Work

Three ways to engage

Each engagement is defined-scope with visible deliverables. CXOs buy outcomes, not retainers with open edges.

Fast-close · 4 weeks

AI Strategy Sprint

A structured 4-week engagement that maps your AI adoption landscape, identifies measurement gaps, and produces a board-ready strategy document. One deliverable, finite timeline, no open-ended commitment.

Weeks 1–4Start here →
Retainer · 3-month min

Fractional Chief AI Officer

Embedded 2 days per week as your AI strategy lead. Practical governance, team capability build, and executive alignment — without the full-time hire cost or a 6-month onboarding cycle.

Monthly retainerInquire →
Governance Framework · Phase 2

ECPU + RIS Engineering Governance

A proprietary framework measuring Engineering Cost per Unit of Delivered Value (ECPU) alongside a Revenue Impact Score (RIS). Prevents AI-accelerated teams from drifting away from business value while increasing output velocity. Includes headcount decision guardrails, anti-illusion controls, and innovation override protocols.

90-day implementationSee methodology →
ECPUCost per verified production change event
RISRevenue impact score, lagged 60–120 days
VPCSVerified production change events — binary, business-weighted
System rule:ECPU improvement alone is NOT sufficient for headcount decisions. RIS must be stable or improving over the same window.
Program Design · Corporate

AI Workforce Transition Programs

Structured retraining and transition program design for organizations navigating AI-driven role displacement. Covers readiness assessment, role reclassification frameworks, retraining curricula, and change management architecture. Delivered for HR/L&D budget with CHRO sponsorship.

Custom scopeDiscuss scope →

Methodology

The ECPU/RIS Framework

A governance system for AI-accelerated engineering organizations. Not a productivity dashboard. Not a tooling recommendation.

Core Formula
ECPU = Total Engineering Cost ÷ Verified Production Change Events
Each VPCS carries a business weighting factor (0.1–1.0) tied to revenue linkage — preventing metric inflation via low-value engineering activity.
System Success Condition
ECPU ↓ AND RIS ↑ or stable
Efficiency without effectiveness is decay. If ECPU improves but RIS is flat or declining, engineering is optimizing internally without business alignment.

Download the free ECPU Assessment Template to run a baseline measurement on your team — no engagement required.

Get the free template →
  1. 01
    Baseline current ECPU
    Map all engineering costs against verified production change events over the prior 90 days. Classify each VPCS by type and assign business weighting factors. This is the measurement baseline — not the optimization target.
  2. 02
    Install the anti-illusion layer
    Implement PR complexity guardrails, mandatory integration tests for AI-assisted code, AI-generated code tagging, and rework tracking as first-class metrics. Block false velocity signals before they compound.
  3. 03
    Run 30-day measurement cycles
    Track ECPU and RIS across three consecutive 30-day cycles before any structural decisions. Headcount adjustments require ECPU improvement persisting for three cycles AND stable or improving RIS over the same window.
  4. 04
    Govern the Innovation Velocity ratio
    Monitor Innovation Velocity vs. Maintenance Velocity. If maintenance outpaces new capability delivery, trigger the Innovation Override Protocol — time-bound, externally anchored, post-override audited.
  5. 05
    Establish governance structure
    ECPU tracked by Engineering + Finance. RIS tracked by Product + Revenue. Metrics integrity under independent audit. Innovation Override requires CPO + CTO joint approval.

About

Senior, opinionated, and direct.

I've spent the past three decades working with engineering organizations across Europe and North America — helping them close the gap between technical execution and business outcomes. The AI transition has made that gap wider and more expensive to ignore.

The ECPU/RIS framework is the result of working inside organizations where the productivity signals were consistently optimistic and the business outcomes were not. I built the measurement system I kept wishing my clients already had.

My engagements are direct, time-bound, and output-defined. I don't do indefinite advisory relationships or bespoke strategies that require six months to validate. You will know exactly what you're getting, when you're getting it, and how to measure whether it worked.

Based in Nagpur, India. Working globally — primarily with organizations in the US, Europe, and India's tier-1 tech sector.

Client context — roles worked with

Managing DirectorsChief Product OfficersChief Technology OfficersEngineering Tech LeadsApplied AI TeamsBusiness OperationsSenior DirectorsNSE-listed CEOs
⚙️
Engineering GovernanceProprietary ECPU/RIS framework for AI-accelerated teams. Headcount decision guardrails. Anti-illusion controls for AI-generated code.
🌐
Global PracticeActive client relationships in Finland, USA, and India. Cross-cultural delivery. CXO-level communication.
🔄
Workforce TransitionAI displacement readiness assessments. Role reclassification frameworks. Retraining program design for mid-size IT organizations.
Fast-Close EngagementsAll engagements are fixed-scope with defined deliverables. Sprint-based delivery from first call to final output.

Free Resources

Start measuring before you engage

Free Download — No Email Required

ECPU Assessment Template

A structured spreadsheet to run a baseline ECPU measurement on your engineering organization. Classify production events, assign weighting factors, and surface your actual cost-per-outcome — before any engagement, at no cost.

Download from GitHub

What's included

VPCS classification guide (4 event types)
Business weighting factor table
90-day ECPU baseline calculator
RIS input template (60–120 day lag)
Efficiency vs. effectiveness divergence rules

Contact

Ready to close the
measurement gap?

A 30-minute call is enough to establish whether there's a fit. No pitch deck. Direct conversation about your situation and whether I can help.

Response within 24 hours for all first-contact inquiries.
For referred introductions: mention your contact's name in your first message.