Taap·AI How good is this data center for your area?
Srijit Paul, Ucchas Muhury
Every wave of AI is built on a physical foundation that almost nobody sees: enormous buildings full of computers that drink water, draw power, and throw off heat. Taap·AI answers one question for anyone, in seconds, from open data: how good is this data center for your area? It gives developers, regulators, and ordinary residents the same honest, inspectable facts so the people who live beside this infrastructure are no longer the last to know. Every wave of AI is built on a physical foundation that almost nobody sees: enormous buildings full of computers that drink water, draw power, and throw off heat. Taap·AI answers one question for anyone, in seconds, from open data: how good is this data center for your area? It gives developers, regulators, and ordinary residents the same honest, inspectable facts so the people who live beside this infrastructure are no longer the last to know.
Taap·AI offers a highly novel framing of AI safety by expanding the definition to include physical, environmental, and civic infrastructure impacts. By bridging the gap between open-source GIS data and accessible public analysis, the tool addresses a critical real-world friction point in data center development.The implementation effectively aggregates reliable open signals (like OpenStreetMap and WRI Aqueduct) into an intuitive, transparent scoring mechanism rather than a complex black-box algorithm. The inclusion of automated EIA report exports adds direct utility for local governments and community organizers.
Suggestions for improvement:
Expand indicator granularities, as regional or state-level data averages can obscure local realities.Introduce basic predictive templates for future climate scenarios rather than relying purely on historical reanalysis baseline data
Informative project, clear methodologies.
For data, most places show "led by grid proximity (no data)"
Authors should have more than 1 source of data for each dimension to check data quality.
The dimensions are rather still simple: Siting suitability - grid proximity (30%), free-cooling potential (25%), grid carbon (20%), renewable potential (15%), water availability (10%).
Community cost - basin water stress (45%), population nearby (35%), local grid emissions (20%).
More frameworks should be incorporated regarding health, economic, social costs (and benefits).
The physical footprint of AI infrastructure is an important and under-discussed part of AI safety, especially for countries in the global south where building compute/ data center capacity is part of 'sovereignty'. The project is also practical and usable.
Cite this work
@misc {
title={
(HckPrj) Taap·AI How good is this data center for your area?
},
author={
Srijit Paul, Ucchas Muhury
},
date={
},
organization={Apart Research},
note={Research submission to the research sprint hosted by Apart.},
howpublished={https://apartresearch.com}
}


