Fractional AI Adoption Strategist & Discovery Architect
It will fail — like 80–95% of enterprise AI projects do — because nobody mapped your processes, interviewed your people, or documented what you actually have before the vendor showed up. That foundational work is exactly what I do, for healthcare organizations who can't afford to get it wrong.
of enterprise AI projects
fail to deliver measurable value
Sources: RAND Corp 2024 · MIT NANDA 2025 · BCG 2025
S&P Global 2025 · Pertama Partners 2026
The Problem
MIT, RAND, McKinsey, and BCG all point to the same root causes. The failure isn't the AI. It's everything that should have been done before the AI.
Organizations deploy AI into workflows they've never formally documented. The result is automating the wrong things — or automating chaos. You can't improve what you haven't mapped.
Healthcare leaders know they need AI. But Gartner's research shows 85% of AI models fail due to poor data quality and unclear problem framing — before a single model is trained.
Clinical staff, IT teams, and administrators all have different pain points, data sources, and workflows. Without structured interviews and requirements gathering, no AI implementation can reconcile them.
Successful AI resource allocation follows a specific pattern: 10% algorithms, 20% technology and data infrastructure, and 70% people and processes. Organizations that invert this ratio — investing primarily in technology while neglecting process design and change management — consistently fail.
SOURCE: MIT / INDUSTRY BEST PRACTICE 2025 · REPORTED IN TALYX ENTERPRISE AI ANALYSISHealthcare Focus
The use cases below are where Discovery, process mapping, and governance documentation deliver the most direct ROI — and where the absence of that foundational work causes the most expensive failures.
The highest-volume administrative burden in healthcare. Discovery maps current auth workflows, identifies payer-specific rules, and documents the integration specs EHR-connected AI tools need to function correctly.
53% of healthcare AI implementations in clinical documentation are considered successful — the highest success rate in the sector. Success depends on workflow mapping and staff adoption documentation.
No-show rates cost hospitals millions annually. Discovery maps scheduling workflows, EHR integration points, and patient communication pathways — the foundation AI scheduling tools require to deliver the projected 20–40% no-show reduction.
CMS penalty exposure for readmissions is measurable and urgent. AI risk stratification requires clean data pipelines and governance frameworks — exactly what Discovery and blueprint documentation provides.
Healthcare data is fragmented across EHRs, labs, and imaging systems. AI-ready data requires documented integration specs, data dictionaries, and governance frameworks before any model touches it.
FDA, CMS, HIPAA, SOC 2, and NIST all create compliance obligations for clinical AI. I build the policy documentation, audit frameworks, and oversight protocols that make your AI initiatives defensible to regulators.
Services
I deliver the blueprint your implementation team needs to actually succeed — because the 70% of AI success that depends on people and process requires the kind of rigorous, professional systems and processes Discovery and comprehensive Requirements Gathering work that most organizations skip entirely.
A comprehensive examination of your organization's current state — every department, every workflow, every data system, and every pain point — documented and illustrated before a single AI vendor is engaged.
Structured elicitation of your target "To-Be" state — where you want to go, what risks need to be considered and mitigated, what the gaps are between there and here, and what the realistic path looks like at every level of the organization.
The complete architectural blueprint your cloud developers and AI vendors need to actually build what you need — without the guesswork that derails 80% of projects.
Healthcare AI carries regulatory exposure that other industries don't. I build the governance frameworks, audit trails, DevSecOps, and policy documentation that keep your AI initiatives compliant and defensible.
How We Work Together
Every engagement begins with a structured exploratory assessment — so both of us can confirm the fit before committing to a longer engagement. No long-term lock-in until you've seen what I deliver.
A structured preliminary discovery: stakeholder interviews, current systems review, pain point identification at a high level, and a written summary of where AI could realistically help your organization. Both of us evaluate fit before going further.
Ongoing fractional engagement with agreed deliverables — deep dive full Discovery, requirements gathering, pain point details, bottlenecks, blueprinting, governance documentation, and stakeholder alignment, on your schedule and budget. Typically no more than 2–5 clients at any one time.
A complete, professional documentation package your internal teams or cloud developers can use to execute. You own everything I produce. No vendor dependency, no lock-in, no black box.
Portfolio & Proof
Over 30 years of enterprise engagements across Fortune 500 clients — producing exactly the kind of documentation, architecture, and discovery work that healthcare AI adoption requires.
Comprehensive departmental IT discovery across all of Con Edison Customer Operations — systems, business processes, UML diagrams, runbooks, data dictionaries, and data dependencies. The exact model for healthcare AI readiness discovery.
Catalogued an organization's entire ecosystem of agentic automations — APIs, inputs, outputs, departments, and frequencies. In today's language, this is an AI asset inventory — the essential first step before any AI adoption.
Prior DOH, Medicare and Medicaid work, including UML entity relationship diagram for a healthcare organization in star schema — demonstrating direct familiarity with HIPAA, HL7, ADA Section 508, and healthcare data architecture and how clinical data supports AI-ready reporting structures.
Full BRD and FRD for a major system replacement at Con Edison — showing structured requirements gathering from SMEs, use case modeling, and sign-off framework across multiple stakeholders.
End-to-end Visio process flow for a multi-step regulatory workflow with automated reporting, each step cross-referenced to detailed documentation — directly transferable to clinical workflow mapping and AI-assisted process automation planning.
Azure cloud-based C# dashboard with GIS incident mapping; automated VBA statistical reporting with month-over-month trending. Demonstrates ability to design monitoring frameworks for AI initiative performance.
Complete documentation of a major DW/BI system including ETL mapping, OLAP cube entity relationships, data dictionaries, bus matrices, and SSIS packages — the data architecture skills essential to healthcare AI data readiness.
Developer integration guide for a Java/JSON/SSL financial API platform — demonstrating the API documentation skills critical for healthcare EHR/EMR integration specifications and HL7 FHIR interface documentation.
Used UML use case project blueprint modeling with development time estimations to demonstrate that a client's proposed project was impossible in their timeline and budget — preventing a costly failure before it started. A client saved is a reputation earned.
"Ray's contributions to our organization have been nothing short of outstanding. He has gone above and beyond by creating automations and data processing tools that not only streamline the workflows, but also ensure the safe and encrypted transmission of critical data."Eugene Finas, Section Manager — Con Edison
"Ray's documentation has been of the highest quality, and rapidly produced. He is a versatile team-player of many talents, and would be an asset to any organization."Orlando Hernandez, Department Manager, Customer Operations — Con Edison
"The quality of his documentation was over-the-top, and Ray's skill at working efficiently with our developers was the icing on the cake."Tyrone Paige, Manager of IT Development — JetBlue Airways (now Azure Solution Architect, Microsoft)
"Ray's broad skillset and flexibility proved invaluable as project timelines changed. He is a true utility player — in our very dynamic project environment, it was a welcome change to have the same resource be able to wear so many hats."Brandon Palatt, Sr. Manager PMO/IS — Coach Inc. (now independent IT Consultant)
Credentials
Formal AI certifications from the platforms your cloud team will deploy on — plus the institutional education and 30-year track record that gives them meaning.
Issued June 12, 2026 · Valid through June 12, 2029
Validation: 20c6c45324a545dca4788a1b548742ac
Issued April 20, 2026 · Valid through April 20, 2028
Signed by Greg Estes, VP — NVIDIA
MIT Sloan School of Management · January 2020
Certificate #1520168829
Unsolicited Letters of Recommendation from 11 organizations spanning 30 years —
including three independent letters from Con Edison alone, spanning different departments and
different years of an 11-year engagement. Con Edison, JetBlue Airways, Coach Inc., Thomson Reuters,
IBM, RiverRock Systems, Yokogawa, VAC, Image2Web, GTESS, Mirus, and ValueWise.
The consistent theme across every letter: self-initiative, highest-quality deliverables,
and expanding beyond the original brief.
About Ray
I've spent 30 years walking into complex organizations, reverse-engineering what they have, interviewing the people who run it, and producing documentation so clear and thorough that my clients keep me far longer than they originally planned. Con Edison engaged me for 6 weeks. I stayed 11 years.
My career has spanned the roles of Enterprise & Solutions Architect, Senior Technical Writer, Business & Systems Analyst, Programmer, and QA Supervisor — across Fortune 500 clients including Con Edison, GE Vernova, JetBlue Airways, United Airlines, Coach Inc., Sony Music, Thomson Reuters, Bank of America, Deutsche Bank on Wall Street, and IBM.
I don't pretend to be an AI vendor. I don't sell a platform or a widget. What I offer is the rigorous, professional Discovery work that makes every other piece of an AI adoption project possible to execute correctly — the 70% of success that MIT identifies as people and process, delivered with the same standard that generated 14 letters of recommendation across 30 years.
I am also the inventor of Felician Randomized Encryption (FRE)™, a non-deterministic encryption method with two U.S. patents, particularly relevant to HIPAA-compliant data security planning.
Most recently, I served as Enterprise Architect for the NYS Office of Information Technology Services (ITS), teaching them DevSecOps methodology, and co-leading their AI adoption initiative for the NY Department of Transportation — identifying AI inventory, use cases, and agentic AI integration under NIST compliance.
The exploratory assessment is low-risk by design — a few weeks, a clear deliverable, and a decision point for both of us. If it's a fit, we build the blueprint together. If it's not, you walk away with a clearer picture of your AI readiness than you had before.
[email protected] · (518) 275-2114 · Delmar, NY (Albany County) · Remote Engagements Welcome