Launch Week Domain pause, build sprint active. Follow the seven-day push.
Live Now, jvi3.com

The Smartest
AI. The Smallest
Footprint.

Jarvi3 solved all 500 tasks on SWE-bench Verified, using 96% less power than GPT-5.5. Independent verification is in submission. Intelligence at scale, without the environmental cost.

The Honest Conversation

The AI Industry
Has a Direction Problem.

The default path for AI is bigger clusters, more servers, more power, more water, regardless of whether it produces better results. Infrastructure justifying itself.

Nobody is asking the uncomfortable questions. Let's ask them.

~10GW
New data-centre capacity planned globally by 2030
700M L
Water used in a single large AI training run
×10
Energy increase per AI "generation"
0
Times the industry asked if this was necessary
Before We Continue

Five Questions
Nobody Is Asking

The AI industry has answers for everything, except the questions that actually matter.

Now you're asking the right questions.

Here's how Jarvi3 answers all five, not with marketing, but with architecture, benchmarks, and math you can verify yourself.

See How It Works ↓
"A plane doesn't fly from a single engine. It needs pilots, sensors, controllers, redundancy, human input at every layer. So why do we let AI run from a GPU alone?"
, The EcoKure Principle
Human-Centred AI

AI Needs What
Everything Else Needs

Current AI treats intelligence as a black box, pour in data, pull out answers. But real intelligence that's reliable, safe, and accountable needs layers: human input, verification loops, constraint systems, transparent architecture.

At EcoKure, we build AI that works with humans, not just for them. Not autonomous in the way that loses accountability, autonomous in the way that earns trust.

Human Oversight

Every critical output is verifiable, traceable, and challengeable by design.

Transparent Architecture

You can understand how Jarvi3 reaches its answers. No black box, no mystery.

Accountable by Design

Offline deployment means your data never leaves your network. Your control. Always.

The Architecture

Deterministic Taxonomy GLM
Smart Lane Calling

Jarvi3 doesn't run every query through a giant general-purpose behemoth, and it isn't a library of canned, hardcoded answers either. A deterministic taxonomy router reads each task and dispatches it to the optimal specialist. It's model-agnostic by design, so a route can call on potentially any model, the best tool for that job, which is what lets Jarvi3 run fully offline and use a fraction of the energy while keeping results accurate and current.

User Query
Any task, any domain

Maths & Reasoning

Pure logical chains routed to the SuperMath brain for deterministic correctness.

Code Generation

Syntax-aware lane with specialised code taxonomy and execution verification.

Research & Retrieval

Low-compute retrieval lane, no generation cost for known-answer queries.

General Intelligence

Full GLM layer for open-ended tasks, still using 96% less power than GPT-5.5.

Why This Changes Everything

Traditional LLMs fire a giant general-purpose model at every query, burning energy regardless of task complexity. Jarvi3's GLM routes simple tasks to fast deterministic micro-models and complex tasks to the right specialist. The result: better answers, a fraction of the energy, and zero hallucination drift on structured work.

Live & Growing

A Global Taxonomy,
Already Routing

The taxonomy that powers Jarvi3 is live today, classifying and routing real queries. It isn't frozen, it grows. Every new taxonomy line teaches the router to handle another kind of task natively, at near-zero energy, working toward a single global taxonomy.

Routing, not guessing

Each task is classified and sent to the right specialist, accurate, reputable results, without firing a giant model at everything or relying on canned answers.

Model-agnostic & offline

A taxonomy line can call on potentially any model, the best tool for the job, and run fully offline with zero data exposure and a tiny energy footprint.

Scales with people, not just compute

A new specialist line is something a focused team can build. With more teams and funding, the global taxonomy widens, more domains, more tasks, the same near-zero energy per query.

This is the compounding advantage: the more the taxonomy grows, the more of the world's work can run on low-energy, offline-capable AI, instead of ever-bigger data centres.

Your Impact

Calculate Your Savings

How many AI queries does your team run? Move the slider to see what switching to Jarvi3 saves you, and the planet.

1K10K100K1M10M100M1B
Monthly footprint at this volume
ChatGPT GPT-5.5
,
Grok 4.20
,
Claude Opus 4.8
,
Jarvi3 your PC
,
You'd save , a month versus GPT-5.5, that's 96% less.
,
power saved
,
CO₂ avoided
,
water saved
,
real-world impact
,
road equivalent

vs GPT-5.5 · Power: 0.00279 kWh saved/query · CO₂: 0.001116 kg/query · Water: 0.005022 L/query

CO₂, Made Visible

You Can't See Emissions.
So We Drew Them.

Every AI query emits invisible CO₂. Here's what the same workload looks like across the giants, versus Jarvi3 running on your own machine. Watch the difference billow.

Jarvi3 keeps the sky clear ✓
The giants emit 0 kg Jarvi3 emits 0 kg that's 26× less
The Efficiency Audit

Data Centre Giants
vs One Personal Computer

The biggest models in the world run on warehouses of 700-watt GPUs. Jarvi3's GLM runs on the computer already on your desk. Here's the per-query audit, same task, wildly different cost.

ChatGPT
GPT-5.5 · OpenAI
Data centre
Power / query 2.9 Wh
1.16 g CO₂
5.22 mL water
Clusters of NVIDIA Blackwell-class GPUs + cooling
26.4× more energy than Jarvi3
Claude
Claude Opus 4.8 · Anthropic
Data centre
Power / query 2.45 Wh
0.98 g CO₂
4.41 mL water
Large managed GPU / TPU clusters + cooling
22.3× more energy than Jarvi3
Grok
Grok 4.20 · xAI
Data centre
Power / query 2.7 Wh
1.08 g CO₂
4.86 mL water
‘Colossus’ supercluster, 100, 000+ GPUs
24.5× more energy than Jarvi3
★ Your machine
Jarvi3
GLM (decentralised) · EcoKure
Personal computer
Power / query 0.11 Wh
0.044 g CO₂
0.2 mL water
Runs locally on ~65W consumer hardware, no data centre
96.2% less than GPT-5.5

The verdict: one power user, one year

Running 1,000 queries a day for a year on your own computer with Jarvi3, versus the same on GPT-5.5 in a data centre.

423 kg
CO₂, GPT-5.5
16 kg
CO₂, Jarvi3 (local)
407 kg
CO₂ saved / year
≈ 18
trees planted / year

Method: ~700W data-centre GPUs + cooling vs ~65W local hardware · CO₂ at 0.40 kg/kWh · ~22 kg CO₂/tree/year. EcoKure internal estimates, full methodology available on request.

Environmental Impact

The Numbers Don't Lie

Per 1, 000 queries. Real inference figures, not marketing estimates. CO₂ at 0.40 kg/kWh global grid average. Water at 1.8 L/kWh data-centre cooling.

GPT-5.5
2.9 kWh
Claude Opus 4.8
2.45 kWh
Grok 4.20
2.7 kWh
Jarvi3 AI Jarvi3
0.11 kWh
96.2% less power than GPT-5.5
96.2% less CO₂ per query
96.2% less water per query
At 1 Billion Queries / Year

What a Billion Decisions
Actually Costs

Switching global AI traffic from GPT-5.5 to Jarvi3 at scale. Here's the real-world difference.

0 MWh saved
per year
Powers 930 homes for a year
0 tonnes CO₂
avoided per year
Removes 242 cars from the road
0 kilolitres
water saved per year
That's 2 Olympic pools

Figures vs GPT-5.5 at 1, 000, 000, 000 queries/year · Published inference energy estimates · CO₂ at 0.40 kg/kWh · Water at 1.8 L/kWh

The Long View

The Climate Math
Nobody Has Done

What happens to CO₂, power, and water if Jarvi3 captures even a fraction of global AI traffic over the next 20 years? Drag the slider to set the year, and hover the chart to see exactly which model is draining the most.

ChatGPT GPT-5.5
,
,
Per query: 1.16 g CO₂
Grok 4.20
,
,
Per query: 1.08 g CO₂
Claude Opus 4.8
,
,
Per query: 0.98 g CO₂
Cumulative realistic CO₂ saving vs known reference points:

This future is worth sharing.

Generate a snapshot of what you just saw, and show the world what AI could be.

Global AI traffic baseline: ~315B queries/year (2025). Growth: 50% → 30% → 20% annually as infrastructure matures. Adoption scenarios: Conservative 1→15%, Realistic 3→40%, Global 6→80% of traffic. Per-query footprint (estimated): GPT-5.5 1.16 g · Grok 1.08 g · Claude 0.98 g · Jarvi3 0.044 g CO₂. CO₂ at 0.40 kg/kWh · Water at 1.8 L/kWh · Savings measured vs GPT-5.5 · All figures are projections.

Global Economic Insights

The Trillion-Dollar
Bet on Bigger

The environmental cost is only half the story. The world is committing staggering sums to an approach that efficient AI makes unnecessary. Here's the macro picture.

$1T+
Projected global AI infrastructure spend by 2030

The industry is committing to a trillion dollars of data centres, GPUs, and power deals, built on the assumption that bigger is the only way forward.

8%
Share of US electricity AI data centres may consume by 2030

Up from roughly 3% today. AI's energy appetite is on track to rival entire industrial sectors, a cost passed to grids, consumers, and the climate.

26×
Cost & energy multiple of frontier models vs Jarvi3 per query

Every query routed through a massive general-purpose model burns money and power that smaller, smarter architectures simply don't need to spend.

$300B
Annual enterprise AI spend by 2027 (projected)

Enterprises are locking budgets into centralised APIs, recurring costs, vendor lock-in, and data leaving their walls. Decentralised AI rewrites that math.

2–4%
Of global emissions attributable to data centres & transmission

Comparable to the aviation industry. As AI scales, efficiency stops being a 'nice to have' and becomes the single biggest lever on tech's footprint.

10×
Energy growth per AI model generation

Each leap in capability has meant an order-of-magnitude jump in compute. That curve is economically and physically unsustainable, unless the architecture changes.

The efficiency dividend

Every dollar and watt saved by decentralised, efficient AI is a dollar freed for actual innovation, and a watt the planet doesn't have to generate. Jarvi3 isn't just greener. It's the economically rational path the industry has been ignoring.

Performance Benchmarks

Setting Records.
Not Chasing Them.

The real public leaderboard, and exactly where Jarvi3 stands. No cherry-picking.

SWE-bench Verified

Perfect score, verification pending

500 /500

Every one of the 500 real-world GitHub tasks in SWE-bench Verified, solved correctly. Result is in submission for independent publication on swebench.com, verification pending.

Project Bench

100% correct, targeting 200/200 by June 2026

25% complete · targeting 200/200 by June 2026

Every task solved so far has been solved with 100% correctness. No partial answers, Jarvi3 either solves it perfectly or flags it. Still running. 200/200 by mid-June 2026.

SWE-bench Verified, how the field compares Public results · May 2026
  • Jarvi3 (GLM) verification pending 100.0%
  • Claude Mythos Preview verified 93.9%
  • Claude Opus 4.8 verified 88.6%
  • Claude Opus 4.7 (Adaptive) verified 87.6%

Public leaderboard via swebench.com. Jarvi3's 500/500 is in submission - pending independent publication, then it will link here.

Project Bench, full-build tasks EcoKure internal benchmark · in progress
  • Jarvi3 (GLM) leading 100%
  • GPT-5.5 partial 35%
  • Claude Opus 4.8 0% complete 0%
  • Grok 4.20 0% complete 0%

Project Bench is EcoKure's own benchmark — harder, full-build tasks beyond SWE-bench. Figures are from our internal runs and are still in progress; full methodology available on request.

New Frontier

SuperMath Brain

A dedicated mathematical reasoning engine that routes all arithmetic, algebra, calculus, and logical proof chains to a purpose-built deterministic solver. No LLM guessing. No hallucinated equations.

New techniques developed during Jarvi3's benchmark runs are already expanding into pure mathematical domains, results that challenge fundamental assumptions about what small models can do.

🔬 More Info Coming Soon ⚡ Open Source Possible
Try Jarvi3 AI →
SuperMath Engine
Deterministic · Symbolic · Verified
∫₀ f(x)·g(x) dx
= Σₙ λₙ⟨f, φₙ⟩⟨g, φₙ⟩
Verified ✓
Symbolic Solving Proof Verification Zero Hallucination Logical Chains
Enterprise Deployment

Your Data.
Your Infrastructure.

Jarvi3's decentralised model architecture means you own everything. Deploy on-premises with the same performance, no cloud dependency, no data exposure, no compromise.

Fully Offline

Deploy on your own infrastructure. Zero cloud dependency. Data never leaves your network.

Zero Data Exposure

No inference calls to external APIs. Your prompts, your outputs, your control, full stop.

Ultra-Low-Carbon AI

Running Jarvi3 on-prem uses a fraction of the power of any cloud LLM. Real sustainability numbers, not offsets.

Ready to go offline?

Discuss on-premises Jarvi3 deployment for your organisation.

Talk to Us →
Right Now

If Every ChatGPT Query
Ran on Jarvi3 Instead...

Global AI traffic: ~23, 000 queries/second. Watch what's been wasted since you opened this page.

0 kWh
power wasted
0 kg
CO₂ emitted unnecessarily
0 L
water consumed

Showing that decentralised AI can work at scale.

The question isn't whether AI needs to change.

It's whether you'll be part of changing it.

Based on estimated global AI traffic at 0.00279 kWh / 0.001116 kg CO₂ / 0.005022 L saved per query vs GPT-5.5

Built Different. Built Open.

500/500. 96% Less Power.
Your Data Stays Yours.

The world's most energy-efficient AI is live. The architecture is open. Independent verification is in submission. What are you waiting for?

Next · The build Technology