Last Updated: November 2025. All calculations are transparent and based on peer-reviewed research and industry reports.
Core Methodology
- Energy Calculation: Annual kWh = Daily Prompts × 365 × Energy per Prompt × Scale × Regional Multiplier
- CO₂ Calculation: Annual CO₂ (kg) = Annual kWh × 0.48 kg CO₂/kWh (global grid average)
- Water Calculation: Annual Litres = Annual kWh × 2 L/kWh (data center cooling + embedded generation)
- Trees Needed: Annual CO₂ (kg) ÷ 21 kg CO₂/tree/year
What is a Prompt?
A prompt is every message you send to an AI system that produces a response. Each reply from the model requires a new inference, so a single conversation often contains many prompts.
Energy Per Prompt (Wh)
- Combined Average: 0.21 Wh (weighted average across model types and usage patterns)
- Smaller Models: 0.12 Wh (GPT-4o-mini, Claude Haiku, Gemini Flash)
- Frontier Models: 0.30 Wh (GPT-4, Claude Opus/Sonnet, Gemini Pro)
- Sources: Based on computational requirements, GPU power consumption and inference efficiency studies from academic research (ML Carbon Calculator, Green AI papers) and industry reports (Hugging Face, Stanford AI Index).
Carbon Intensity
- Global Grid Average: 0.48 kg CO₂ per kWh
- Source: IEA (International Energy Agency) reports 0.445 kg CO₂/kWh for 2024. We use 0.48 kg to provide a conservative margin that accounts for regional variation and legacy infrastructure.
- Note: Actual data center carbon footprints vary significantly based on location and renewable energy procurement. This calculator uses global average for broad applicability.
Water Usage
- Data Center Cooling: 2 litres per kWh (industry average)
- Includes: Direct evaporative cooling in data centers + embedded water in electricity generation (thermal power plants)
- Sources: Data center efficiency reports (ASHRAE, Uptime Institute), water consumption studies, and lifecycle water use analyses.
- Note: Modern hyperscale data centers (Google, Microsoft, AWS) use advanced cooling that may be more efficient, but legacy infrastructure and embedded generation water remain significant.
Tree Carbon Absorption
- Absorption Rate: 21 kg CO₂ per tree per year (mature temperate forest tree)
- Source: European Environment Agency, USDA Forest Service carbon sequestration data
- Note: Actual absorption varies by species, age, location and climate. Young trees absorb less; some tropical species absorb more. This uses a conservative temperate forest average.
Regional Grid Multipliers
- Global Average: 1.0× (baseline, 0.48 kg CO₂/kWh)
- North America: 1.2× (higher fossil fuel reliance in grid mix)
- Europe: 0.8× (cleaner grid with higher renewable penetration)
- Asia-Pacific: 1.1× (varied mix, significant coal use in some regions)
- Source: IEA regional electricity carbon intensity data 2024
User Population Projections
- 250M Users (2025): Current global monthly active LLM users. ChatGPT and Microsoft Copilot together serve 500+ million monthly users as of November 2024, with widespread adoption across productivity, educational and personal tools. 250M represents approximately half of current active user base for conservative daily usage estimates.
- 1B Users (2027): Projected global monthly LLM users by mid-2027. Based on 70-100% compound annual growth rate observed 2023-2024, and industry projections as AI becomes embedded in default workplace, educational and consumer applications worldwide.
- Sources: Company earnings reports (OpenAI, Microsoft), industry analyst reports (Gartner, IDC), and adoption tracking data.
Comparison Benchmarks
- England Energy: 280 TWh/year total electricity consumption (UK DESNZ 2024)
- England Homes: 25.4 million dwellings (UK DLUHC 2024)
- London Water: 1.3 billion litres/day (9M people × 144L/person/day, Greater London Authority 2024)
- Ullswater: 223 billion litres total volume - England's 2nd largest lake (Lake District, Cumbria)
- Cardiff Energy: 1.9 TWh/year city consumption (UK BEIS data)
- London Energy: ~35 TWh/year city consumption (UK BEIS data)
- UK Airports: Heathrow T5 65 GWh/day × 6.5 terminals equivalent (CAA energy data)
- UK Cars: 34.36 million cars, ~2,500 kWh/year per car (UK DVLA June 2025, average EV consumption)
- Olympic Pool: 2.5 million litres (50m × 25m × 2m, FINA standard)
- Wood & Housing: 0.56 m³ wood per tree, 50 m³ timber per average home (Forestry Commission, construction industry averages)
What This Calculator Includes
- ✓ Inference energy (running the model to generate responses)
- ✓ Data center infrastructure overhead (cooling, networking, storage)
- ✓ Grid carbon intensity for electricity generation
- ✓ Water for cooling and embedded in electricity generation
- ✓ Regional variations in grid carbon intensity
What This Calculator Does NOT Include
- ✗ Model training energy (one-time, amortized across billions of inferences)
- ✗ Embodied carbon in hardware manufacturing
- ✗ Network transmission energy (user device to data center)
- ✗ User device energy (your computer/phone)
- ✗ Downstream emissions from AI-generated code, content, or decisions
Limitations & Caveats
- Estimates based on average conditions; actual footprints vary by provider, data center location, model architecture and prompt complexity
- Energy per prompt assumes ~500 token average response; longer responses increase footprint proportionally
- Does not account for future efficiency improvements (better chips, algorithms, renewable energy procurement)
- Population projections are estimates based on current growth trends
- Carbon offset through trees requires appropriate forest management and decades of growth
Transparency & Verification
All calculations are performed client-side in your browser. You can view the complete calculation logic by inspecting this page's source code. The methodology is designed to be conservative (not worst-case, not best-case) and representative of current real-world conditions.
Academic Foundation: This calculator synthesizes findings from peer-reviewed research on AI carbon footprint (Strubell et al. 2019, Patterson et al. 2021), data center efficiency studies, and authoritative energy statistics from IEA, EIA, and national statistical agencies.
This calculator provides order-of-magnitude estimates for public awareness and education. For precise carbon accounting, consult with energy auditing specialists and use provider-specific data where available.