The Ontology Decision Layer

Deterministic AI For Regulated Healthcare

We build ontology-driven decision layers that stay explainable under audit. Powering the next generation of compliance infrastructure for providers and payers.

Infrastructure for Zero Trust
Environments

In regulated sectors, you cannot afford "black box" decisions. Intelligence Factory builds systems where every output is traceable to a specific rule, policy, or clinical guideline.
Flat icon of a phone with a checklist and question mark, representing call-based surveys, phone support inquiries, or data collection over voice calls. Ideal for customer service, telephonic assessments, or troubleshooting scenarios.
Ontology Driven
We map complex regulatory policies into deterministic logic graphs, not probabilistic guesses.
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Hallucination Free
Our retrieval architecture (OGAR) validates every LLM output against strict ground-truth data.
A flat icon of a yellow folder containing documents, with a green checkmark symbol—representing organized files, successful documentation, completed audits, or verified records.
Fully Auditable
Every decision comes with a complete reasoning trace, ready for payer audits or compliance review.
Flat icon of a secure document with a padlock and shield checkmark, symbolizing data protection, privacy compliance, or encrypted records. Perfect for illustrating HIPAA, cybersecurity, or secure information handling.
System Agnostic
Deploys on top of your existing EHR or data lake. Data sovereignty remains with you.
The Commercial Proof
We don't just build theory. Our technology powers FairPath , processing millions in remote care claims with 98% payment success. We proved the stack works so you don't have to guess.
Core Technologies

The Intelligence Factory Stack

We expose our internal engineering stack for partners and enterprise teams building next-generation healthcare compliance tools.At Intelligence Factory, we harness cutting-edge AI to solve healthcare's toughest challenges. Our solutions streamline billing, enhance patient engagement, and ensure compliance, all powered by hallucination-free technology designed for your success.
FairPath
Flagship Commercial Application
What It Is:
The end-to-end OS for remote care programs. FairPath uses the Intelligence Factory stack to automate billing, eligibility, and clinical necessity checks without human error.

For:
Medical Practices, RPM/RTM Providers.
Go to FairPath.ai →
Buffaly
Ontology Engine
What It Is:
A medical-grade ontology engine that transforms messy notes and alerts into clean, structured compliance data. It handles the logic mapping between ICD-10, CPT, and payer rules.

For:
Developers & Data Architects.
Learn More →
OGAR
Retrieval Validation Protocol
What It Is:
Ontology-Guided Augmented Retrieval. A methodology for forcing LLMs to validate their outputs against a known truth-graph before responding.

For:
AI Safety & Compliance Teams.
Learn More →
The intelligence factory difference

What makes Intelligence Factory different?

Not all AI is created equal. In an era where everyone claims to be "AI-powered," thetechnology beneath the surface matters more than ever. We've spent nearly two decadesbuilding AI that doesn't just sound intelligent—it delivers reliable, transparent, andactionable results in environments where mistakes aren't acceptable.At Intelligence Factory, we harness cutting-edge AI to solve healthcare's toughest challenges. Our solutions streamline billing, enhance patient engagement, and ensure compliance, all powered by hallucination-free technology designed for your success.
Battle-tested acrossindustries for 16 years
Since 2009, we've been solvingcomplex problems with AI—intransportation systems, clinicalenvironments, aviation operations,supply chain monitoring, and beyond.This cross-industry experiencemeans our platform has been stress-tested against diverse requirements,from split-second logistics decisionsto life-critical healthcare protocols.We've weathered the entire evolutionof AI technology and emerged withsolutions that actually work in the realworld.
Not an LLM wrapper complete technical independence
The AI boom made access tolanguage models widespread, andwith it came a flood of 'AI solutions'that are really just promptengineering on top of ChatGPT orsimilar platforms. We'refundamentally different. Our entire AIstack is proprietary, built from theground up by our team. No promptengineering shortcuts. Nodependency on OpenAI, Google, orany third-party AI provider.
Explainable, auditable, hallucination free AI
Generic LLMs operate as black boxesthat generate plausible-sounding text—sometimes accurate, sometimesfabricated. Our Buffaly OntologyEngine takes a fundamentallydifferent approach using OGAR(Ontology-Guided AugmentedRetrieval): structured domainknowledge that the AI navigates withprecision rather than statisticalpattern matching.
This gives you:
Data sovereignty
Your proprietary information never leaves your infrastructure ortouches external AI services

Security assurance
No exposure to third-party vulnerabilities, policy changes, orservice outages

Performance optimization
Technology tuned to your specific domain, not trained on generalinternet knowledge

Future-proof architecture
You're not locked into someone else's technology roadmap orpricing model
The practical difference:
Zero hallucinations
The system can only draw from your curated, validatedknowledge base

Complete transparency
Every output includes the reasoning and sources behind it

Regulatory compliance
Audit trails and documentation that satisfy even the strictestrequirements

Expert control
Your domain specialists define what the AI knows and how itapplies that knowledge
When your teams can trace exactly how the AI reached each conclusion, adoption acceleratesand trust builds naturally.
Case Studies

Deep Tech in Action

How we apply ontology-driven decision making to real-world chaos.
Turning Medical Chaos into Structure
Ontology-driven integration across 30+ EHR systems.
We used Buffaly to normalize inputs from Epic, eClinicalWorks, and legacy databases into a single coherent model for eligibility checks.
Read Case Study →
Multi-Armed Bandits for Care
Allocating clinical time using adaptive algorithms.
Using reinforcement learning to help clinicians prioritize patients based on risk and compliance probability, not just alphabetically.
Read Case Study →
Scalable Eligibility Engines
High-volume coverage checks without the fees.
Our ontology-driven engine delivers high-accuracy checks across insurers and program types—fully auditable and designed for underserved providers.
Read Case Study →

Build with Intelligence Factory

We partner with enterprise healthcare organizations and compliance teams to build explainable AI infrastructure.

Looking for the FairPath product? Go here.
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Recent Updates

Voice AI in healthcare is usually framed as a replacement problem. Replace the call center. Replace the nurse. Replace the routine check-in.

After operating voice systems across millions of patient interactions, we found that framing misses the operational reality.

Voice AI works in limited contexts. The real question is where it belongs, where it fails, and which failures are unacceptable in regulated care.

This misframing often comes from technically strong implementers who optimize for headcount reduction rather than clinical and compliance operations. Teams can usually ship an 80 percent solution quickly. The remaining 20 percent is where scaling and compliance fail.

The First Mistake: Treating Voice as a Cost Problem

Most early implementations, including our own experiments, start from a cost-reduction mindset. If routine calls can be automated, staffing pressure goes down and scale improves.

That logic can hold in consumer domains such as ordering a pizza or checking a flight. It breaks in healthcare.

Clinical voice interactions are regulated events. Privacy, verification, consent, documentation, and escalation are absolute requirements. A system with near-correct behavior remains unsafe in regulated care.

In healthcare, the downside of failure is larger than the upside of marginal efficiency gains.

Why "Mostly Correct" Fails Under HIPAA

  • Civil monetary penalties can reach tens of thousands of dollars per violation.
  • Violations often surface later during audits or reviews, not at the moment of failure.
  • Risk is asymmetric. One mistake can outweigh many small efficiency gains.

What Worked Less Than Expected

Several uses of voice AI looked promising on paper but delivered limited value in practice.

  • Outbound voice outreach did not outperform simple SMS or recorded messages. Patients responded to clarity and responsiveness more than conversational sophistication.
  • Fully autonomous conversational agents performed well in common cases but failed in edge cases with outsized risk. In healthcare, those edge cases arrive with certainty at scale.
  • Model-driven compliance was unworkable. Even low error rates are unacceptable when one mistake can create regulatory exposure.

Many systems worked about 80 percent of the time. The remaining 20 percent contained the highest-impact failures.

Closing that final gap is structurally hard. Deterministic enforcement, escalation logic, and human handoffs must be added. Those controls reduce risk, but they rebuild much of the call center function and erase replacement economics.

Latency Is Not a Technical Metric

One counterintuitive lesson was that latency is not primarily an engineering metric.

Humans are highly sensitive to conversational timing. Small delays introduced by coordination, verification, or background checks change behavior. People repeat themselves, interrupt, or shift phrasing mid-response.

Once that happens, conversational systems degrade quickly. People also identify automation early in a call, and their answers become shorter, less precise, and less candid.

Better models improve some margins. They do not remove this constraint because the root issue is human behavior.

Where Voice AI Actually Helped

  • Overflow handling during surge scenarios.
  • Joining live calls as a translator.
  • Joining live calls as a subject matter explainer.
  • Never as the primary clinical actor.

The Non-Negotiable Boundary: Compliance by Construction

HIPAA drove the most important architectural decision.

We could not rely on probabilistic systems such as LLMs to enforce compliance. That required a hard boundary between language generation and regulated operations.

Identity verification, consent, and access to protected information had to be handled deterministically outside the conversational layer. Even after verification, medical information could not flow directly through prompts.

This introduced coordination and latency overhead. It also removed entire classes of catastrophic failure. In regulated systems, that tradeoff is mandatory.

The Real Win: Automating the Work Humans Should Never Have Been Doing

The largest durable gains did not come from automating conversations. They came from automating the work around them. In RPM and CCM, reimbursement is minute-based. Administrative time consumes reimbursable clinical minutes, so reducing documentation and review load has direct financial impact.

Documentation, extraction, compliance checks, and quality review quietly consume large amounts of clinical time.

This is where AI paid for itself.

Instead of speaking to patients, AI:

  1. Verified that required steps actually occurred.
  2. Checked that care plans were followed consistently.
  3. Extracted structured information from conversations back into records.
  4. Surfaced negative or problematic interactions that required attention.
  5. Enabled search and review across large volumes of calls.
  6. Reduced training time for new clinicians by enforcing process automatically.

This eliminated entire categories of manual work and prevented failures that otherwise surface weeks or months later.

What Changed Operationally

  • Reduced wasted administrative time by approximately 53 percent.
  • Measured across a clinical team of roughly 20 nurses.
  • Achieved without reducing patient-facing time.

Quality Does Not Scale by Trust

Breakdowns start earlier than most teams expect. Once you move beyond one or two experienced clinicians, turnover and training load increase risk quickly.

At small scale, strong clinicians can compensate for weak processes. As teams grow, that buffer disappears.

  • Turnover increases.
  • Training time expands.
  • Practices drift.
  • Small omissions compound.

Failures become harder to detect and more expensive when they appear, often as audits, denials, or patient complaints.

Replacing humans with voice agents introduces new risks. Using AI to enforce consistency, detect gaps, and surface issues early reduces risk.

The Mental Model That Holds

Voice AI succeeds in healthcare when it is constrained.

  • Humans remain the primary actors.
  • AI enforces guardrails, extracts signal, and reduces failure paths.
  • Compliance is architectural, not inferential.
  • Efficiency gains remain secondary to risk reduction.

The systems that work are not the most autonomous. They are the most disciplined.

The Lesson

In regulated healthcare, credibility comes from what teams refuse to automate.

Voice AI is powerful when placed where its failure modes are acceptable. Used that way, it becomes infrastructure. Used carelessly, it remains a demo.

The boundary is what determines the outcome.

Independent pharmacy owners are being asked to run a real business on economics that do not behave like a real business.

Your top line can grow while your gross profit shrinks. Your workload can rise while your control over reimbursement falls. And even when you execute perfectly, you can still lose money on the wrong scripts, the wrong fees, or the wrong contract structure.

Industry benchmarks have made the pattern hard to ignore: gross profit has been pushed to decade lows even as average annual sales climb. That is not a sustainable operating equation for any owner.

So diversification is no longer a “nice to have.” It is the only durable path to control your own outcomes.

But diversification fails when it is treated as a collection of add-on services instead of a business model.

The owners who win the next cycle will build a second operating engine that is:

  1. recurring, not one-off
  2. operationally repeatable, not hero-driven
  3. defensible under scrutiny, not reconstructed at month-end
  4. structured as a clean clinic-partner model, not an “I hope this is allowed” gray zone

This article is about that model, and how to operationalize it safely.

Why Dispensing-Only Is Now A Throughput Trap

Dispensing revenue is exposed to forces you do not control: PBM reimbursement mechanics, retroactive performance adjustments, network participation leverage, and increasingly complex patient financial dynamics.

The result is a familiar reality:

  • You work harder to dispense more.
  • Your cost to dispense rises.
  • Your margin per script gets thinner.
  • Your stress goes up, not down.

When the core business behaves like a treadmill, the answer is not “run faster.” The answer is “add a second engine that behaves differently.”

That second engine needs three characteristics:

  • it produces predictable monthly revenue
  • it strengthens retention and outcomes for your existing patients
  • it is built on operational evidence, not promises

The Most Powerful Diversification Move Is a Clinical Services Arm, But Only If It’s Structured Correctly

Many pharmacies already provide pieces of clinical value: adherence support, medication reviews, care coordination touchpoints, and ongoing patient education.

What is changing is the business framing.

Instead of “extra tasks,” the opportunity is to become a structured clinical coordination partner to local clinics and providers who want these programs run consistently without building a new internal department.

This is where programs like CCM, RPM, RTM, and APCM fit. Not as a pharmacy billing play, and not as a staffing play, but as a clinic-partnered operating model.

Here is the compliance-safe way to say it:

  • In most models, the clinic bills under the provider NPI and retains clinical oversight.
  • The pharmacy is compensated through a services agreement with the clinic for defined services delivered and documented.
  • The billing entity is responsible for the claim.
  • The operational risk is not “doing the work.” The risk is failing to prove the work in a defensible way.

That last point is the entire game.

The Business Model That Works (And Why Most Fail)

Think of pharmacy-led clinical services as a three-party model:

  1. The clinic/provider (billing + oversight)
    They control billing under the provider NPI, clinical decision-making, and program governance.
  2. The pharmacy (operations + patient execution)
    You provide consistent patient outreach, coordination tasks, medication-related support, and operational follow-through as defined by the agreement.
  3. The system of record (evidence + workflow control)
    This is what makes the model scalable and defensible. It turns daily work into structured proof.

Most attempts fail because #3 is missing.

Without an evidence operating system, the program becomes:

  • spreadsheets, disconnected notes, and “we’ll fix it later”
  • a month-end scramble to reconstruct interactions and time
  • unclear responsibility between clinic and pharmacy
  • partner frustration when claims get denied or documentation gets challenged

In other words: it becomes chaos with a compliance tail.

Why “Evidence” Is Now The Difference Between Profit and Liability

Remote care programs are in an oversight cycle. It is not theoretical.

OIG has repeatedly flagged the types of patterns that create fraud, waste, and abuse risk in RPM, and it has a formal audit of Medicare Part B RPM services on its Work Plan (Audit ID: OAS-25-05-008). Separate OIG reporting has highlighted measurable red flags such as billing for patients with no prior relationship to the practice and billing for multiple devices in a month for an enrollee.

You do not need to be doing anything unethical to get pulled into a review.
You only need to have weak evidence, inconsistent workflow, or a model where responsibilities are unclear.

That is why “diversification” cannot mean “buy software and hope.”
It must mean “run a program that stays billing-ready while the month is running.”

What FairPath Changes In This Model

FairPath is a workflow + evidence operating system that runs remote-care programs (CCM, RPM, RTM, APCM) as an active control layer.

The practical difference is simple:
Most teams discover missing requirements at month-end.
FairPath surfaces missing requirements before month-end, while you can still fix them.

FairPath is designed to:

  • monitor eligibility and program rules as the month runs
  • keep billing readiness visible in real time
  • enforce documentation requirements through workflow
  • produce audit-ready artifacts (consent, interaction logs, time/activity tracking, care plan evidence, and supporting notes)

And just as important, it is positioned correctly:

  • FairPath is operational software.
  • Intelligence Factory does not bill Medicare.
  • Intelligence Factory does not provide clinical staffing.
  • In clinic-partner models, the clinic remains the billing entity and clinical oversight owner.

So you are not “outsourcing responsibility.”
You are building a defensible operating system for your model.

The Safest Way To Start (Model-First, Not Feature-First)

If you want this to work, do not start with a demo. Start with a model check.

Here are the three questions that determine whether this is real or a distraction:

  1. Operational capacity
    Can you reliably protect scheduled time each week for patient outreach and coordination, or will this be “when we get a minute”?
  2. Clear ownership
    Is there a named operations owner for clinical coordination, or is it going to be shared across everyone?
  3. Clinic partner path
    Do you already have a clinic/provider partner where clinical oversight and billing are defined, or does that need to be built?

If any answer is weak, you do not need a platform yet.
You need to stabilize the operating model first.

If all three are strong, the right next step is a short workflow fit check with a binary outcome:

  • proceed to a pilot scope call, or
  • pause and revisit later

A Note On “Proof” and ROI Claims

If someone promises you guaranteed revenue, be careful.

In a clinic-partnered model, the clinic’s claims are billed under the clinic/provider NPI, and pharmacy compensation is determined by the services agreement. Those terms vary. That means “revenue” has to be discussed with precision:

  • clinic-side reimbursement is not the same as pharmacy take-home
  • one partnership example is not a guarantee
  • outcomes depend on operating discipline, cohort selection, and clean evidence

We can share a de-identified partnership snapshot on request that reflects clinic-side claims/revenue billed under clinic/provider NPI(s). It does not show pharmacy compensation and it is not presented as a guarantee.

2026 Belongs To The Pharmacies That Build A Second Engine With Control

The owners who win will not be the ones who find the cleverest add-on service.

They will be the ones who build a repeatable clinical coordination model that clinics trust, that staff can run without burnout, and that produces evidence strong enough to withstand scrutiny.

If you are serious about building this as a business model, not a side project, schedule a walkthrough. We will confirm your operating model, show the day-to-day workflow, and give you a clear recommendation for the simplest path to start.

Schedule a Walkthrough: https://fairpath.ai/contact

FAQ:

Q: Can my pharmacy bill Medicare directly for CCM/RPM/APCM?
A: In most models we discuss, the clinic bills under the provider NPI and retains clinical oversight. The pharmacy is compensated through a services agreement with the clinic. Your counsel should confirm the right structure for your state and partners.

Q: What creates audit risk in these programs?
A: Month-end reconstruction, missing consent or required elements, weak time/activity integrity, unclear clinic vs pharmacy responsibility, and enrollment patterns that don’t align to requirements. The billing entity is responsible for the claim, so evidence has to be clean.

Q: Is FairPath a billing service or staffing vendor?
A: No. FairPath is operational software that runs workflow and produces audit-ready evidence artifacts. Intelligence Factory does not bill Medicare and does not provide clinical staffing.

Q: What’s the best way to start?
A: Confirm operational capacity, clear ownership, and a defined clinic-partner billing path. Then run a narrow pilot with measurable go/no-go criteria.

We have an entire suite of reference material if you need more information:

How FairPath Works: https://fairpath.ai/how-it-works
Start a Pilot: https://fairpath.ai/pilot
Resources Library: https://fairpath.ai/resources
APCM Guide: https://fairpath.ai/resources/apcm-guide
RPM Guide (2026 Update): https://fairpath.ai/resources/rpm-guide
RTM Guide (Jan 2026): https://fairpath.ai/resources/rtm-guide
2025 OIG Audit Survival Checklist: https://fairpath.ai/resources/2025-oig-audit-survival-checklist.html
OIG RPM Audit Work Plan Overview: https://oig.hhs.gov/reports/work-plan/browse-

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The Great Code Shift: Turning the ICD-11 Mandate into a Competitive Advantage

6/25/25

The healthcare industry still has scars from the ICD-9 to ICD-10 transition. The stories are legendary in Health IT circles: coder productivity plummeting, claim denials surging, and revenue cycles seizing up for months. It was a painful lesson in underestimation....

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Beyond the Box: Finding the Signal in RPM's Next Chapter

6/19/25

In my work with healthcare organizations across the country, I see two distinct patient profiles coming into focus. They represent the past and future of remote care, and every successful practice must now build a bridge between them. The first is the patient for whom technology…...

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The Living Echo: How Digital Twins Are Reshaping Personalized Healthcare and Operational Excellence

6/11/25

The healthcare landscape is continuously evolving, and among the most profound shifts emerging is the concept of the Digital Twin for Patients. This technology isn't merely an abstract idea; it represents a fundamental change in how we approach individual health and broader heal…...

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Why the MIPS MVP Model is the Future—and How Your Practice Can Win

6/2/25

Change is inevitable in healthcare. Often, it feels overwhelming—but occasionally, a new shift arrives that genuinely makes things simpler. The upcoming CMS shift toward the MIPS Value Pathways (MVPs) represents precisely that kind of beneficial change....

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Does RPM Miss What Patients Really Need?

5/27/25

It starts with a data spike… a sudden drop in movement, a rise in reported pain. The alert pings the provider dashboard, hinting at deterioration. But what if that signal isn’t telling the whole truth?...

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Transforming Chronic Pain: The Power of RPM, RTM, and CCM

5/19/25

Chronic pain isn’t just a condition, it’s a thief. It steals time, joy, and freedom from over 51 million Americans, according to the CDC, costing the economy $560 billion a year. As someone passionate about healthcare innovation, I’ve seen how this silent struggle affects patien…...

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Introduction: Demystifying Ontology—Returning to the Roots

5/16/25

In the tech industry today, we frequently toss around sophisticated terms like "ontology" , often treating them like magic words that instantly confer depth and meaning. Product managers, software engineers, data scientists—everyone seems eager to invoke "ontology" to sound info…...

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APCM Codes: The Quiet Revolution in Primary Care

5/13/25

Picture Mary, 62, balancing a job and early diabetes. Her doctor, Dr. Patel, is her anchor—reviewing labs, coordinating with a nutritionist, tweaking her care plan. But until 2025, Dr. Patel wasn’t paid for this invisible work. It was just “what doctors do.” If you’re in healthc…...

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It Always Starts Small: Lessons from the Front Lines of Healthcare Audits

4/28/25

In healthcare, most of the time, trouble doesn't announce itself with sirens and red flags. It starts quietly. A free dinner here. A paid talk there. An event that feels more like networking than education....

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Unveiling RPM Fraud Risks—A Technical Dive into OIG Findings and FairPath’s AI Fix

4/24/25

The Office of Inspector General’s (OIG) 2024 report, Additional Oversight of Remote Patient Monitoring in Medicare Is Needed (OEI-02-23-00260) , isn't just an alert—it's a detailed playbook exposing critical vulnerabilities in Medicare’s Remote Patient Monitoring (RPM) system. R…...

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The Cost of Shortcuts: Lessons From a $4.9 Million Mistake

4/21/25

When the Department of Justice announces settlements, many of us glance at the headlines and move on. Yet, behind those headlines are real stories about real decisions, choices that felt minor at the time but led to serious consequences. Like the recent settlement involving Live…...

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One Biller, One Gap: How a Missing Piece Reshapes Everything

4/14/25

There’s a quiet agreement most of us make in business. It’s not in a contract. It’s not written on a whiteboard. But it runs everything: trust. ‍ We trust that what worked yesterday will still work tomorrow. We trust that people we’ve known for years will keep showing up the way…...

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The System Is Rigged: How AI Helps Independent Docs Fight Back

4/10/25

Feeling like you’re drowning in regulations designed by giants, for giants? If you're running a small practice in today's healthcare hellscape, it damn sure feels that way. And maybe "feeling" isn't the right word – maybe it's just reality....

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Trust Is the Real Technology: A Lesson in Healthcare Partnerships

4/7/25

When people ask me what Intelligence Factory does, they often expect to hear about AI, automation, or billing systems. And while we do all those things—we do them well—I’ve come to believe something deeper: we’re in the business of trust. And in healthcare, that’s the most valua…...

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Million Dollar Surprise

4/3/25

“They’re going to put me out of business. They want over a million dollars. I don’t have a million dollars”, his voice cracked over the phone....

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Unlocking AI: A Practical Guide for IT Companies Ready to Make the Leap

12/22/24

Artificial intelligence isn’t just a buzzword anymore—it’s a transformative force reshaping industries worldwide. Yet for many IT companies, the question isn’t whether to adopt AI but how . If you're scratching your head wondering where to start, you're not alone. For businesses…...

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Agentic RAG: Separating Hype from Reality

12/18/24

Agentic AI is rapidly gaining traction as a transformative technology with the potential to revolutionize how we interact with and utilize artificial intelligence. Unlike traditional AI systems that passively respond to commands, agentic AI systems operate autonomously, making d…...

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From Black Boxes to Clarity: Buffaly's Transparent AI Framework

11/27/24

Large Language Models (LLMs) have ushered in a new era of artificial intelligence, enabling systems to generate human-like text and engage in complex conversations. However, their extraordinary capabilities come with significant limitations, particularly when it comes to predict…...

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Bridging the Gap Between Language and Action: How Buffaly is Revolutionizing AI

11/26/24

The rapid advancement of Large Language Models (LLMs) has brought remarkable progress in natural language processing, empowering AI systems to understand and generate text with unprecedented fluency. Yet, these systems face a critical limitation: while they excel at processing l…...

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When Retrieval Augmented Generation (RAG) Fails

11/25/24

Retrieval Augmented Generation (RAG) sounds like a dream come true for anyone working with AI language models. The idea is simple: enhance models like ChatGPT with external data so they can provide answers based on information beyond their original training. Need your AI to answ…...

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SemDB: Solving the Challenges of Graph RAG

11/21/24

In the beginning there was keyword search . Eventually word embeddings came along and we got Vector Databases and Retrieval Augmented Generation (RAG) . They were good for writing blog posts about topics that sounded smart, but didn’t actually work well in the real world. Fast f…...

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Metagraphs and Hypergraphs with ProtoScript and Buffaly

11/20/24

In Volodymyr Pavlyshyn's article , the concepts of Metagraphs and Hypergraphs are explored as a transformative framework for developing relational models in AI agents’ memory systems. The article highlights how these metagraphs can act as a semantic backbone, enabling AI to reta…...

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Chunking Strategies for Retrieval-Augmented Generation (RAG): A Deep Dive into SemDB’s Approach

11/19/24

In the ever-evolving landscape of AI and natural language processing, Retrieval-Augmented Generation (RAG) has emerged as a cornerstone technology. RAG systems allow large language models (LLMs) to access vast knowledge bases by retrieving relevant snippets of information, or "c…...

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Is Your AI a Toy or a Tool? Here’s How to Tell (And Why It Matters)

11/7/24

As artificial intelligence (AI) becomes a powerful part of our daily lives, it’s amazing to see how many directions the technology is taking. From creative tools to customer service automation, AI can be both a powerhouse and, at times, a bit of a playground. At Intelligence Fac…...

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Stop Going Solo: Why Tech Founders Need a Business-Savvy Co-Founder (And How to Find Yours)

10/24/24

Hey everyone, Justin Brochetti here, Co-founder of Intelligence Factory. We're all about building cutting-edge AI solutions, but I'm not here to talk about that today. Instead, I want to share some hard-earned wisdom about a challenge that I see many tech founders facing: findin…...

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Why OGAR is the Future of AI-Driven Data Retrieval

9/26/24

When it comes to data retrieval, most organizations today are exploring AI-driven solutions like Retrieval-Augmented Generation (RAG) paired with Large Language Models (LLM) . These systems have certainly made strides in helping businesses pull information from large datasets an…...

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The AI Mirage: How Broken Systems Are Undermining the Future of Business Innovation

9/18/24

You’ve heard the pitch: AI will revolutionize your operations, cut costs, and deliver results you didn’t even know you needed. But after the vendor leaves, and the system is plugged in, reality hits hard. Companies are discovering that AI solutions too often fail to live up to t…...

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A Sales Manager’s Perspective on AI: Boosting Efficiency and Saving Time

8/14/24

AI-driven call routing can analyze incoming calls in real time and direct them to the most appropriate agent based on skill set, availability, and past interactions. This ensures customers are connected with the right person quickly, improving satisfaction and reducing wait time…...

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Prioritizing Patients for Clinical Monitoring Through Exploration

7/1/24

RPM (Remote Patient Monitoring) CPT codes are a way for healthcare providers to get reimbursed for monitoring patients' health remotely using digital devices. Think of it like having a virtual nurse keeping an eye on you between doctor visits. These codes cover the time spent se…...

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10X Your Outbound Sales Productivity with Intelligence Factory's AI for Twilio: A VP of Sales Perspective

6/28/24

As VP of Sales, I'm constantly on the lookout for ways to empower my team and maximize their productivity. In today's competitive B2B landscape, every interaction counts. That's why I'm here to share a game-changer: integrating Intelligence Factory's AI package with our existing…...

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Practical Application of AI in Business

6/24/24

In the rapidly evolving tech landscape, the excitement around AI is palpable. But beyond the hype, practical application is where true value lies. As someone who relishes in crafting customized solutions for clients and building internal tools, I've found immense value in creati…...

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AI: What the Heck is Going On?

6/19/24

We all grew up with movies of AI and it always seemed to be decades off. Then ChatGPT was announced and suddenly it's everywhere....

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SQL for JSON

4/22/24

Everything old is new again. A few years back, the world was on fire with key-value storage systems. I think it was Google's introduction of MapReduce that set the fire. It's funny because I remember reading in the '90s that the debate had been settled and that relational databa…...

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Telemedicine App Ends Gender Preference Issues with AWS Powered AI

4/19/24

Mount Dora, Florida, 2019: AWS machine learning enhances MEDEK telemedicine solution to ease gender bias for sensitive online doctor visits. Visiting a doctor is personal, and now Medek Health Health Systems (MEDEK) along with Amazon Web Services (AWS) is using AI to make it a b…...

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