An intelligence
that governs intelligence.

Adaptive orchestration of AI models — for calibrated, auditable decisions.

The method
Patent-pending architectureField-validated with CNR-IACAudit by design
Validated and built with CNR · National Research Council Sapienza University of Rome EUSPA · EU Agency for the Space Programme FAO Mountain Partnership
The method, in one line

Many models.
One that governs them.

It chooses which models to trust, assembles the pipeline, calibrates its confidence, and leaves an audit trail.

Orchestrate many models  ·  select the best subset  ·  fuse the evidence  ·  prove the decision.

~100 modelsGATE~8 selectedproof chain

From model sprawl to governed intelligence — many models in, the optimal subset out, every decision proved.

Select
Gating keeps only the models that earn their compute.
Compose
The chosen models form one pipeline — in series and in parallel.
Fuse
Evidence is merged, with calibrated confidence.
Prove
Every decision is hashed and chained — retraceable.
calibrated · auditable · human-governed
The system, in numbers

What it delivers.

~100
models orchestrated · gating ignites ~8 per decision
−80/90%
compute vs run-everything (up to) · accuracy within ~1pp
5 + 2
L1–L5 layers · ML6/ML7 meta-layers · dynamic gating
proof
a tamper-evident proof-chain, by design
2
patents pending · Geo-Driven + Bio-Driven
from 2019Plant-driven pipelinesfirst models on real crops
PlantiverseBio-Driven systemsvalidated on the field
todayMeta-Intelligencethe general architecture
01 · The problem

AI is everywhere.
Almost no one can answer five questions.

Most AI systems answer. Few can explain why that model, why now, and why anyone should trust the result. A model is easy to buy and hard to govern — before trusting a number to a board, a regulator or a field, five questions decide everything, and most organisations cannot answer one of them.

Q1

Which model?

And is it the best one for this decision, not just the one already installed?
Q2

All the signal?

Is every useful source captured and harmonised, or only the convenient ones?
Q3

Out of the black box?

Can the reasoning be opened and read, or is trust an act of faith?
Q4

Efficiency and error?

How much compute, how much uncertainty — measured, not assumed?
Q5

Can it be proven?

Would the conclusion survive a third party retracing it, end to end?

Meta-Intelligence is built to answer each one by construction — it chooses among models, gathers the signal, opens the reasoning, quantifies efficiency and error, and leaves a proof. Not a promise: an architecture.

02 · The architecture

Not one model.
A network of networks.

It reads a problem, composes its own pipeline, runs only the subset that earns its compute, and proves the result. A patent-pending gating step weighs accuracy, latency, energy and robustness.

The evolution of mixture-of-experts — generalised and governed:

Mixture-of-expertsneural experts · all resident · one objective · per-token routing · no proof
Meta-Intelligenceany kind of model · only the optimal subset runs · multi-objective gating · calibrated & proved
03 · The five levels

Five levels. Two meta-layers.
One closed, provable chain.

From raw signal to a proved decision — each level does one job, and the two meta-layers learn across them.

A multi-objective score weighs accuracy against latency, energy and robustness — and runs only the optimal subset.PATENT-PENDING
04 · The reasoning pipeline

The same intelligence,
as a reasoning pipeline.

Watch one reasoning act, step by step: every engine fires, then the gating composes the pipeline, meta-fusion merges the evidence, and the decision hub emits a proved result. Change the objective — the pipeline recomposes.

data → engines → gate → fusion → decision → proof

Hover a node. Lit nodes are the engines the gating selected for the objective; the dim ones stand by below the gating threshold. The travelling particles are evidence moving toward the decision hub.

−80/90%

Sharper by doing less

The gating keeps a small dynamic subset active. Compute and energy fall up to 80–90% against running every model, with accuracy held within about one point.

calibrated

Calibrated, not guaranteed

Every output carries a confidence band whose coverage is measured and tracked across regimes — exported as a governance metric, not asserted.

proof

Nothing without proof

Each decision is hashed and chained at the selection step. A third party retraces it end-to-end, without privileged access. Tamper-evident, not a black box.

05 · Decision simulator · one engine, many worlds

See how a decision is composed.

Pick a world. The gating composes a pipeline from ~100 engines, ignites only the subset that serves the objective, fuses the evidence, and returns a calibrated decision with a verifiable receipt. An interactive simulation: living systems is a validated track; the other worlds are pilot compositions, with target figures, not measured ones.

selectedstand-bynot selected by gate
engines composed8
compute saved−88%
coverage0.90
latency0.9 s
Decision

calibrated confidence0.90
    decision receipt #1
    decision id
    timestamp
    objective
    selected
    engines
    confidence
    pipeline
    prev hash
    decision hash · SHA-256

    The receipt is the product — selected engines, evidence, confidence, action, and a verifiable hash.

    Scope this pipeline on your data →
    Validated track (living systems): 661 plants · 18,663 acquisitions · 78 indices · multispectral, thermal and bioelectric signals, on the Plantiverse platform. Pilot tracks use target figures until measured on client data.
    06 · One engine, many domains

    One grammar. Many worlds.

    The same architecture reads any heterogeneous reality once each signal is brought to a common form: value, unit, provenance, uncertainty, time. Two proven roots, and a widening set of applications.

    Bio-Driven · Plantiverse

    Living systems

    A hard measurable domain: noisy, heterogeneous, time-dependent. Multispectral, electro-physiological and contextual signals fused into calibrated indices, validated on the field with research institutions. Where the method earned its proof.

    Plantiverse SRL · agritech · field-validated · patent pending · ESA BIC · CNR · Sapienza · FAO
    Geo-Driven · EcoBubble

    Territory & risk

    Satellite, GNSS, seismic and territorial data fused for monitoring, prediction and mitigation of geo-environmental risk — from a single site to an entire basin. Patent pending.

    EcoBubble SRL · transferred · patent pending

    Agriculture & natural systems

    Stress, yield, water and carbon as measured, defensible quantities.

    Validated on the field

    Territory & geo-risk

    Fire, drought, subsidence and seismic early-warning with stated lead time.

    Transferred · patent pending

    Energy & infrastructure

    Portfolio governance, reliability and decision support, with disclosure-ready output.

    Pilot-ready

    AI infrastructure & model governance

    Orchestration and compliance for fleets of models, with audit by design.

    Pilot-ready

    Natural capital & forestry

    Carbon and biodiversity made measurable and auditable for disclosure.

    Pilot-ready

    Industry in transition

    Distress early-warning and cash radar, with defensible controls for boards and lenders.

    Pilot-ready

    Digital assets & treasury

    Multi-model risk intelligence for volatile assets, treasury exposure and governance reporting.

    Pilot-ready

    Note. Application domains are shown without client names. Engagements are confidential.

    07 · Proof & moat

    Validated first where measurement is hard:
    living systems.

    The method was proven on living systems before any other domain — because that domain forced the architecture to handle noisy, heterogeneous, time-dependent signals, the same shape every other domain takes. The platform is a working reduction to practice, not a slide.

    661
    plants monitored · 18,663 acquisitions · 78 indices per acquisition
    >85%
    pre-symptomatic stress detection (field-validated, ESA BIC)
    −25% / +15%
    water use / yield, on validated deployments
    ~90
    engines computing live in the platform · up to −80/90% compute saving vs run-everything, calibrated coverage

    Figures refer to field deployments and platform measurements; pilot tracks are re-measured on client data.

    Research & field partners: Sapienza · Orto Botanico di Roma · CNR-IAC · ESA BIC Lazio · EUSPA · FAO Mountain Partnership · ENEA.

    Intellectual property. Two patents pending protect the method — the five-level architecture with multi-objective gating and the ML6/ML7 meta-layers: Geo-Driven (EcoBubble S.R.L., filed July 2025) and Bio-Driven (Plantiverse SRL, filed 2025) — with further technical extensions under preparation. The defensible advantage is the combination: a governed, calibrated, tamper-evident orchestration of heterogeneous models, validated on living systems.
    08 · The boundaries

    It measures and proves.
    People decide.

    Meta-Intelligence produces measures, estimates, early warnings and disclosures, each with explicit uncertainty and a proof chain. It does not allocate capital, prescribe treatment or replace judgement.

    The platform does

    the operating measurement layer
    • Composes the right pipeline per objective, automatically
    • Ignites the optimal model subset; cuts compute 80–90%
    • Calibrated confidence, tracked and exported as governance
    • A tamper-evident proof chain on every emitted decision
    • Disclosure packages aligned to the standards reporting requires
    boundary

    People keep

    the experts and the governing bodies
    • The decision, supervised by domain experts
    • Capital allocation, strategy and operations
    • Accountability and fiduciary judgement
    • Ownership and governance of the data
    • Real, simulated and estimated, distinguished by structure
    09 · The team

    Built by physicists and builders.

    Built across physics, geoscience, AI, platform and disclosure — each person owns a layer of the architecture, and the whole was shipped on the field through Plantiverse and EcoBubble.

    Nicola Nescatelli
    Nicola Nescatelli
    Founder & CEO
    MSc Physics · open-innovation · inventor of the architecture
    Architecture · IP
    Andrea Procaccini
    Andrea Procaccini
    AI & Modelling
    PhD Physics · engines, gating, meta-learning
    L3–L4 · Engines & gating
    Leonardo Giannini
    Leonardo Giannini
    Geospatial & EO
    PhD Geology · Sentinel-2 / Galileo, geo-risk
    L1 · Geo-signal
    Fabio Pallini
    Fabio Pallini
    Engineering & Platform
    Full-stack · DevOps · the running platform
    L5 · Platform
    Federico Di Vincenzo
    Federico Di Vincenzo
    Design & Experience
    UI/UX · interfaces and disclosure
    Interface · proof

    Founding team. Mario Santoro (CNR) contributes as scientific advisor.

    From here

    Start with one decision.

    Deployment starts with one decision scoped on your data. Pick an intent, or book a call directly.

    Book a 30-min session →
    HQ · Rome, Italy
    EcoBubble S.r.l. & Plantiverse
    Strict NDA on enterprise pilot discussions.

    Submissions reach the team at info@ecobubble.it. No data is processed beyond responding to your request.

    Thank you — the team will be in touch shortly.
    Pilot scoping Board-ready decision receipt Model governance assessment Portfolio intelligence review Natural capital measurement pilot AI orchestration audit Investor deep dive