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Regional CO₂ Analytics & Benchmarking (C2D)

Purpose of the Algorithm

This algorithm aggregates CO₂ measurements at the regional level to create a statistically robust environmental fingerprint per region. It enables comparison across regions while preserving the confidentiality of individual sensors and farms.

All processing occurs inside a secure Compute‑to‑Data pod.

What the Algorithm Does

Regional aggregation

  • Groups CO₂ measurements by region
  • Computes global first‑order statistics:
    • mean, median
    • min / max
    • P05 / P95 percentiles
    • standard deviation

Temporal coverage

  • Identifies measurement date ranges per region
  • Detects gaps and irregular coverage

Variability & stability

  • Measures dispersion and volatility of CO₂ values
  • Identifies unusually stable or unstable regions

Cross‑region comparison (future‑ready)

  • Normalized outputs allow comparison as more regions are added
  • Enables benchmarking and clustering

Value in a Compute‑to‑Data Workflow

  • Enables multi‑region analytics without data leakage
  • Creates reusable regional environmental KPIs
  • Supports anonymized benchmarking products

Industry Value

Useful for:

  • Environmental monitoring platforms
  • Regulatory reporting
  • Location selection and impact assessment
  • Marketplace‑ready regional CO₂ datasets