top of page
Vibrant forest representing ECOZE carbon footprint reduction impact.
ecozeAI AI-chip icon symbolising intelligent carbon calculations

ecozeAI - The Next Step for Sustainability

Innovative PCFs Powered by Deep Research & Analytics

Automate cradle-to-grave product footprints with supply-chain emissions mapping, slash assurance costs, and de‑risk CSRD compliance - without supplier questionnaires or spreadsheets.

6 Leaf Background.png

The Future of A.I. for Sustainability

Data analysis-bro.png

Organisations

Finance, procurement & sustainability teams that must disclose Scope 3 Cat 1 Purchased Goods & Services under CSRD / ISSB. Get audit-grade factors for thousands of SKUs - fast, with zero supplier surveys or spreadsheets.

Manufacturing Process-bro.png

Manufacturers

Product  & LCA teams racing to publish ISO 14067- compliant PCFs and full LCAs. Generate cradle-to-grave footprints for entire portfolios in < 1 hour each, slash consultancy fees, and keep uncertainty ≤ 15 %.

Modern flat design of green mountains and forest, reflecting tranquility and the natural world.

One Click Footprints

ecozeAI converts a product name into a footprint in under an hour. It maps the whole supply chain - Tier 1 to Tier N - capturing data on every supplier, material and process, and compresses thousands of datapoints into one clear figure. Most outputs hit ≤ 15 % uncertainty with zero manual follow‑up. No supplier surveys. No spreadsheets.

Laptop mock-up showing ecozeAI One Click Footprints dashboard with 812 SKUs analysed
Desktop monitor displaying ecozeAI Audit Proof Results page with traceable PCF database

Audit Proof Results

Every factor arrives with pedigree scores, Monte‑Carlo uncertainty, licence verification and hashed evidence links, so auditors sign off without endless sampling. Each datapoint is time‑stamped, source‑hashed and fully traceable in a single click, giving finance and sustainability teams total confidence the numbers will withstand any assurance drill.

Modern flat design of green mountains and forest, reflecting tranquility and the natural world.

Simplify Scope‑3 Accounting

Our A.I. delivers footprints aligned with CSRD, ISSB and GHG Protocol Cat 1, auto‑filling 92 % of the datapoints auditors demand while keeping uncertainty at or below 15 % for most products. The platform packages every figure into the right category codes, eliminating spreadsheet merges and last‑minute rework.

Laptop mock-up illustrating ecozeAI detailed LCA breakdown used to simplify Scope-3 accounting
Browser stats-bro.png

Seamless Data Plug-In

Bring your own numbers. ecozeAI ingests ERP exports, utility files and supplier-submitted PCFs before it runs the PCF and supply-chain-mapping engines, so every calculation is built on your primary evidence from day one. No spreadsheets, no manual mapping.

Modern flat design of green mountains and forest, reflecting tranquility and the natural world.

Emission Hot-Spots

Connect your purchasing data feed (SAP, Coupa, Ariba, Oracle or even a plain CSV) and ecozeAI pinpoints the products and services with the biggest CO₂e impact, giving your team a clear action list for reduction initiatives.

Group 929 (1).png

Save Significant Time and Cost

Slash Manual Overheads

Building and assuring footprints the traditional way costs large companies £1.3–1.6 million a year and ties up 7,000 hours in data wrangling, external consultants, licences and assurance fees.

Reclaim Resources

With ecozeAI a single product name delivers a cradle‑to‑grave footprint in under an hour instead of 4–12 weeks, cutting at least 50 % of that annual drag and freeing £400 k–750 k.

7,000+

Staff Hours Saved Per Year

Over £400k

Saved Annually

< 1 Hour

Turnaround Per Footprint

Modern flat design of green mountains and forest, reflecting tranquility and the natural world.

Join the Waitlist

Ready to watch a full footprint materialise in under an hour? Join our early‑access waitlist now, secure priority access to upcoming pilots, and be the first to test ecozeAI in a live demo.

ecozeAIJoinWaitlist
bottom of page