LUNARC AI · lunarc-twin
AI BRAIN · LIVE · SYDNEY 🇦🇺

One brain.
The whole business.

Your CRM doesn't talk to your accounting. Your meetings don't talk to your invoices. Your follow-ups live in someone's head. lunarc-twin connects all of it into one living model — a digital twin your AI can read, reason over, and act on. Safely.

See how it works ↓ Try the trust layer
READsync everything
MODELthe digital twin
REASONask anything
ACTgated + audited
↺ …and every action writes back into the twin. The loop never stops learning.
The problem

A business is a conversation
its own systems never have.

Every growing business runs on disconnected islands. Each one is fine on its own. Together they hide the answers that matter.

CRM / field serviceXero / MYOB Outlook · TeamsWhatsApp threads spreadsheetssomeone's memory
"Which clients are overdue, and what did we last promise them?" — no single system in your business can answer that sentence. The twin exists to answer exactly that kind of sentence.
The engine

The loop: readmodelreasonact

Four stages, running continuously. This is the same closed loop documented at Palantir, Glean and JPMorgan — shrunk to fit a real SMB.

STAGE 01

READ

Collectors sync every source on a schedule. No retyping, no exports.

fireflies → meetings
invoice tracker → invoices
client files → organisations
STAGE 02

MODEL

Facts become connected objects: the digital twin. Links are the magic.

invoice ↦ organisation
meeting ↦ organisation
follow-up ↦ engagement
STAGE 03

REASON

Claude reads the twin through MCP — every query filtered by who's asking.

"who's overdue + what did
we last discuss?" → one
answer, joined live
STAGE 04

ACT

The AI proposes. A human approves. The action writes back. Audited, always.

log_followup(confirm=true)
→ follow_ups + audit_log
ACT
writes back into MODEL — the twin updates itself
Under the hood

Eight layers. Each one boring.
Together, a brain.

The verified reference architecture — every layer annotated with who provably runs it at enterprise scale, and what the twin uses at SMB scale.

🏢

ABusiness Systems

Where work already happens. Untouched — the twin reads them, it doesn't replace them.

Job/CRM system · Xero
M365 · WhatsApp
🔌

BIntegration

Connectors read from — and write back to — every system. MCP is the standard plug (Linux Foundation, adopted by OpenAI, Google, Microsoft).

MCP servers · APIs
as: Glean's 100+ connectors
🗄️

CData Foundation

One queryable store for everything the collectors bring home.

Postgres (Supabase Sydney)
as: Palantir Foundry datasets
🧠

DKnowledge — the Digital Twin

Objects + links + permissions. Customer ↔ Job ↔ Invoice ↔ Meeting. The ontology IS the product.

8-table ontology + pgvector
as: Palantir Ontology · Glean graph
💡

EReasoning

LLMs retrieve from the twin (semantic + relational) and think with full context.

Claude + MCP · hybrid RAG
as: JPMorgan LLM Suite
⚙️

FOrchestration

Schedules, triggers, and the human approval gates that keep autonomy earned, not assumed.

n8n · Temporal (later)
as: Klarna's agent on LangGraph
💬

GExperience

Where humans meet the brain: chat, a morning brief, a dashboard. No new app to learn.

Claude / Teams / Slack
briefs/YYYY-MM-DD.md
🛡️

HGovernance

Every question and action logged. Roles enforced by the database itself. Trust you can show, not claim.

audit_log · RLS · evals
as: Palantir AIP Evals
The part that sells it

Same twin. Same question.
Different clearance.

Permissions live in the database, not in a prompt. Flip the role and watch what the AI is even able to see. Try it:

OrganisationEngagementValueLast meetingInvoiceStatus
Summit Build GroupStage 2 — Extension works$18,400Variation approved · Tue OVERDUE 12d
Coastline ElectricalFit-out — 3 sites$7,250Site walkthrough · Thu SENT
Harbourview CafeRefurb — final stage$4,900Handover call · last wk PAID
ERROR 42501 — permission denied for table invoices
// Postgres itself refused. Not the app. Not the prompt. The database.

Why this matters: even a prompt-injected AI can't leak rows the database won't serve. The viewer still sees organisations, engagements and meetings — the business keeps moving — but money is structurally invisible. Column-level too: staff see an engagement's name and stage, never its value.

Running right now

We run one ourselves —
live, on LUNARC's own business.

We eat our own cooking first. LUNARC AI is tenant #1; every client install is a re-instantiation of this pipeline with a different ontology. And the ontology grows with the business — our latest extension (a complete program-roster of 15 people, meetings auto-linked) was designed, reviewed and shipped in one afternoon.

LIVE
📥

Sources

client files
invoices · pipeline
Fireflies API

LIVE
🗄️

Twin DB

Supabase Sydney
8 tables + RLS
schema committed

LIVE
🌱

Seed + Collect

16 meetings · 2 invoices
15 docs embedded
idempotent, proven

LIVE
🔌

MCP Server

7 tools · 2 roles
audit on every call
✓ Connected

LIVE
📄

Daily Brief

Haiku, ~½¢/run
facts-only rules
first brief 13 Jul

LIVE
🎬

Live walkthrough

ask for the 15 minutes —
see it running on
a real business

The install journey

Value proven at every phase —
or the next phase doesn't start.

Most AI projects fail because they're built hype-first. A twin installs value-first: each phase must show measurable results before more is built. That discipline is the product.

1

Audit & ontology sketch WEEK 1

We sit with each department and map your world: what are the things, what do you track about them, how do they connect, who may see what. No software yet — just the questions that decide everything.

A one-page map of your business as objects + links, signed off by you
2

Foundation WEEKS 2–3

Your twin stands up in YOUR own cloud account (Australian region) — you own the data and the keys, permanently. Collectors connect your existing systems. Nothing gets replaced.

Your data flowing in daily, permission walls tested live
3

The read-only brain WEEKS 4–6

Ask your business anything in plain English. A morning brief per director. No automation yet — first, the connected view nobody in your company has ever had.

Your team answers real questions from the twin, unaided
4

Gated actions FROM WEEK 6

One process at a time: the twin proposes, a human approves, the action executes and writes back. Follow-ups, chasers, scheduling — each earns its place.

Measurable hours returned per week, on paper
5

Earned autonomy ONGOING

Where an agent's accuracy is proven over time, gates loosen — deliberately, one task at a time, with the audit trail as referee. The twin grows as your business does.

Not our opinion

The pattern, proven by people
with more money than us.

Palantir
+121%

US commercial growth YoY — driven by AIP, the ontology "brain" product.

Q3 2025 filings
Glean
$300M

ARR reading whole companies into one permissions-aware graph.

TechCrunch, May 2026
JPMorgan
230,000

staff on LLM Suite; ~$2B reported annual savings, 3–6 hrs/wk each.

CNBC · Forbes (press)
Klarna
700 FTE

of workload handled by one assistant; resolution 11 min → under 2.

OpenAI case study
Meuze
1 vertical

"Company brain" for F&B — same loop, same LangGraph, same bespoke installs. Proof at start-up scale.

meuze.ai (stack self-disclosed)
PwC · 4,454 CEOs
56%

got nothing from bolt-on AI. Embedded, foundations-first firms: 3× likelier to see returns. That's the whole thesis.

29th Global CEO Survey, 2026
Speak the language

Eight terms, no mystery left.

ONTOLOGY

The list of things your business is made of (customers, jobs, invoices) and how they link. Designing it is the consulting skill; tables + foreign keys is all it is.

DIGITAL TWIN

A live copy of your business's facts, structured so a machine can walk the relationships the way you do in your head.

MCP

Model Context Protocol — the USB-C of AI. A standard plug that lets any AI client use your twin's tools. Linux Foundation standard; OpenAI, Google, Microsoft all adopted it.

EMBEDDINGS

Text turned into number-coordinates so "similar meaning" is findable. Powers "where did the client mention the variation?" without exact words. Pennies per document.

RLS

Row-Level Security — the database itself decides who sees which rows and columns. Un-promptable, un-jailbreakable, because it never reaches the AI.

IDEMPOTENT

Safe to run twice. Collectors upsert on natural keys (a meeting's transcript ID), so re-runs can never duplicate data.

HUMAN GATE

The AI proposes, a person approves, only then does anything execute — and the audit log remembers forever. Autonomy is earned per-task, later, with eval scores.

PROOF GATE

A phase-exit test that must pass before more money or ambition flows in. Our immune system against becoming a Gartner statistic.

The next step

See yours in 15 minutes.

Built by Tika Rijal — 15 years inside Melbourne supply chains.

Book a time with Tika →