Technology

CAGE-IN. One engine, literature to drill targets.

CAGE-IN is AiRE’s flagship targeting platform — the engine proven on live programs and behind every result on this site. It isn’t a list of products; it’s one exploration workflow that takes a project from “what does the science say?” to “drill here, and here’s why.”

What CAGE-IN does

Four steps. One engine. One defensible verdict.

The same platform carries a project end to end — each step feeds the next, and every output traces back to cited science. The core is the multi-evidence scoring engine; the steps around it get your data in and your decisions out.

STEP 1

Research intelligence

Pre-field planning

What the published literature says about your terrane, your commodity, your deposit style — before a dollar is spent on the ground.

STEP 2

Regional reconnaissance

Satellite screening

Satellite-driven regional scanning — spectral screening over large areas to shortlist ground worth the full treatment.

STEP 3 · THE CORE

Multi-evidence AI scoring

The CAGE-IN engine

The flagship engine. Multi-sensor ingestion and spectral processing across six satellite platforms, GPU-accelerated — imagery, geophysics, geochemistry and drilling scored together by literature-calibrated deposit models, with ensemble fusion.

STEP 4

3D delivery

Outputs you can act on

Ranked target maps, sections, interactive single-file 3D deposit viewers your whole board can open, and prospectus-ready reporting.

Use cases

Wherever your project is, CAGE-IN plugs in.

From grassroots ground to a producing mine, the same engine solves a different problem at each stage of the exploration lifecycle.

Grassroots groundProducing mine

01 · Reconnaissance

Grassroots · any commodity

Find the ground worth chasing.

With only a few layers of data, CAGE-IN ranks where a mineral system is most likely to occur across a large area — so scarce budget goes to the ground that deserves it.

Minimal data in · any commodity

02 · Targeting

Early-stage exploration

Drill targets in three dimensions.

From 3D ground geophysics, CAGE-IN places ranked drill targets in 3D — not just where to drill, but how deep, and why each one scores where it does.

~2× the conventional hit rate*

03 · Optimisation

Active drill program

Fewer holes, better placed.

For a program already turning the rig, CAGE-IN re-scores against every new intercept to optimise where the next holes go — maximising return on every metre drilled.

Maximise ROI per metre

04 · Resource expansion

Advanced projects & operating mines

Make the discovery bigger.

CAGE-IN reintegrates and reinterprets all existing data to find extensions and repeats around a known deposit — adding tonnes and extending life-of-mine.

Bigger discoveries · longer mine life

*Typical of AiRE programs — prioritized targets drill-tested at roughly double the hit rate of conventional targeting. The comparison basis is available to qualified parties under NDA.

Inside the CAGE-IN engine

Three independent engines. One honest verdict.

CAGE-IN never trusts a single method. Two fundamentally different scoring engines run independently, and a third weighs their agreement — so methodological disagreement is surfaced to you, not averaged away.

A

Method A — Geological reasoning

Weighted evidence scoring through twelve deposit models calibrated to peer-reviewed literature, with a consistency veto filter that kills geologically incoherent scores.

B

Method B — Machine learning

A supervised classifier trained with spatial-block cross-validation — the discipline that stops spatial autocorrelation from flattering the accuracy numbers.

A+B

Ensemble fusion

Dempster-Shafer evidence theory merges the two, surfacing high-confidence agreement zones and flagging where the methods disagree — disagreement is information.

Open the full method detail — evidence layers, deposit models, citation trace

Every run fuses a multi-evidence stack — remote sensing, geophysics, geochemistry, geology and structure, terrain and drilling — and each layer enters the deposit model with its own model-specific, citation-locked weight, then de-conflicts into one ranked verdict. Whatever your project doesn’t have is disclosed as a dark layer, never quietly ignored.

Deposit models — literature-calibrated, citation-locked

Porphyry Cu-Au-MoEpithermal Au-AgIOCGSkarnIntrusion-related AuLaterite NiNi sulphideSEDEX polymetallicOrogenic AuMetamorphic graphiteVMSKimberlite (diamond)

One worked trace

Two contributing parameters from a literature-calibrated model, with their published sources:

ParameterWeightCited source
Ferric-iron alteration indexcontributingSabins (1999)
Clay / sericite (SWIR) ratiocontributingCrosta & Moore (1989); Hunt (1977)

Engineering facts

220+ regression tests run on every release2-5 min per 100 km² processedGPU-adaptive tiling with CPU fallbackDesktop-deployed — your data stays on your machinesPer-run sidecar — inputs, versions & parameters recorded

Platform maturity

What’s proven, what’s expanding.

CAGE-IN is one platform with several capabilities. We label each one’s maturity honestly — the same discipline we apply to your geology.

CapabilityWhat it doesStatus
Multi-evidence AI targeting The core CAGE-IN engine — unified multi-sensor imagery + multi-evidence scoring Operational on live client programs
3D prospectivity & deposit visualisation Ranked maps, sections and interactive single-file 3D deposit viewers Production
Legacy data ingestion Legacy archives → working GIS project, fast Production
Regional satellite reconnaissance Large-area spectral screening to shortlist ground On the roadmap — expanding
Pre-field research intelligence Literature-driven planning before fieldwork begins On the roadmap — expanding

See CAGE-IN on your ground.

The Prospect Brief tells you which capabilities your data can feed today — and what it would take to light up the rest.

Get the 48-Hour Prospect Brief