sample_id stringlengths 11 19 | source_job_tag stringlengths 11 19 | weather_id stringclasses 48
values | building_id int64 17 10.9k | energy_file stringlengths 18 26 | n_steps int64 8.76k 8.76k | n_spaces int64 2 132 |
|---|---|---|---|---|---|---|
00017__Anchorage | 00017__Anchorage | Anchorage | 17 | 00/00017__Anchorage.npz | 8,760 | 32 |
00017__Chicago | 00017__Chicago | Chicago | 17 | 00/00017__Chicago.npz | 8,760 | 32 |
00017__Jakarta | 00017__Jakarta | Jakarta | 17 | 00/00017__Jakarta.npz | 8,760 | 32 |
00017__Mexicocity | 00017__Mexicocity | Mexicocity | 17 | 00/00017__Mexicocity.npz | 8,760 | 32 |
00079__Accra | 00079__Accra | Accra | 79 | 00/00079__Accra.npz | 8,760 | 22 |
00079__Delhi | 00079__Delhi | Delhi | 79 | 00/00079__Delhi.npz | 8,760 | 22 |
00079__Johannesburg | 00079__Johannesburg | Johannesburg | 79 | 00/00079__Johannesburg.npz | 8,760 | 22 |
00079__Kolkata | 00079__Kolkata | Kolkata | 79 | 00/00079__Kolkata.npz | 8,760 | 22 |
00094__Kualalumpur | 00094__Kualalumpur | Kualalumpur | 94 | 00/00094__Kualalumpur.npz | 8,760 | 15 |
00094__Moscow | 00094__Moscow | Moscow | 94 | 00/00094__Moscow.npz | 8,760 | 15 |
00094__Oslo | 00094__Oslo | Oslo | 94 | 00/00094__Oslo.npz | 8,760 | 15 |
00094__Reykjavik | 00094__Reykjavik | Reykjavik | 94 | 00/00094__Reykjavik.npz | 8,760 | 15 |
00480__Chicago | 00480__Chicago | Chicago | 480 | 00/00480__Chicago.npz | 8,760 | 18 |
00480__Hongkong | 00480__Hongkong | Hongkong | 480 | 00/00480__Hongkong.npz | 8,760 | 18 |
00480__Saopaulo | 00480__Saopaulo | Saopaulo | 480 | 00/00480__Saopaulo.npz | 8,760 | 18 |
00480__Vancouver | 00480__Vancouver | Vancouver | 480 | 00/00480__Vancouver.npz | 8,760 | 18 |
00556__Accra | 00556__Accra | Accra | 556 | 00/00556__Accra.npz | 8,760 | 28 |
00556__Beijing | 00556__Beijing | Beijing | 556 | 00/00556__Beijing.npz | 8,760 | 28 |
00556__Nairobi | 00556__Nairobi | Nairobi | 556 | 00/00556__Nairobi.npz | 8,760 | 28 |
00556__Seoul | 00556__Seoul | Seoul | 556 | 00/00556__Seoul.npz | 8,760 | 28 |
00653__Anchorage | 00653__Anchorage | Anchorage | 653 | 00/00653__Anchorage.npz | 8,760 | 25 |
00653__Beijing | 00653__Beijing | Beijing | 653 | 00/00653__Beijing.npz | 8,760 | 25 |
00653__Berlin | 00653__Berlin | Berlin | 653 | 00/00653__Berlin.npz | 8,760 | 25 |
00653__Quito | 00653__Quito | Quito | 653 | 00/00653__Quito.npz | 8,760 | 25 |
00694__Hongkong | 00694__Hongkong | Hongkong | 694 | 00/00694__Hongkong.npz | 8,760 | 25 |
00694__Kualalumpur | 00694__Kualalumpur | Kualalumpur | 694 | 00/00694__Kualalumpur.npz | 8,760 | 25 |
00694__Lagos | 00694__Lagos | Lagos | 694 | 00/00694__Lagos.npz | 8,760 | 25 |
00694__Vancouver | 00694__Vancouver | Vancouver | 694 | 00/00694__Vancouver.npz | 8,760 | 25 |
01251__Jakarta | 01251__Jakarta | Jakarta | 1,251 | 01/01251__Jakarta.npz | 8,760 | 28 |
01251__Kolkata | 01251__Kolkata | Kolkata | 1,251 | 01/01251__Kolkata.npz | 8,760 | 28 |
01251__Mexicocity | 01251__Mexicocity | Mexicocity | 1,251 | 01/01251__Mexicocity.npz | 8,760 | 28 |
01251__Seoul | 01251__Seoul | Seoul | 1,251 | 01/01251__Seoul.npz | 8,760 | 28 |
01304__Accra | 01304__Accra | Accra | 1,304 | 01/01304__Accra.npz | 8,760 | 20 |
01304__Istanbul | 01304__Istanbul | Istanbul | 1,304 | 01/01304__Istanbul.npz | 8,760 | 20 |
01304__Johannesburg | 01304__Johannesburg | Johannesburg | 1,304 | 01/01304__Johannesburg.npz | 8,760 | 20 |
01304__Lagos | 01304__Lagos | Lagos | 1,304 | 01/01304__Lagos.npz | 8,760 | 20 |
01341__Anchorage | 01341__Anchorage | Anchorage | 1,341 | 01/01341__Anchorage.npz | 8,760 | 10 |
01341__Athens | 01341__Athens | Athens | 1,341 | 01/01341__Athens.npz | 8,760 | 10 |
01341__Kolkata | 01341__Kolkata | Kolkata | 1,341 | 01/01341__Kolkata.npz | 8,760 | 10 |
01341__Tokyo | 01341__Tokyo | Tokyo | 1,341 | 01/01341__Tokyo.npz | 8,760 | 10 |
01362__Anchorage | 01362__Anchorage | Anchorage | 1,362 | 01/01362__Anchorage.npz | 8,760 | 11 |
01362__Chicago | 01362__Chicago | Chicago | 1,362 | 01/01362__Chicago.npz | 8,760 | 11 |
01362__Kualalumpur | 01362__Kualalumpur | Kualalumpur | 1,362 | 01/01362__Kualalumpur.npz | 8,760 | 11 |
01362__Vancouver | 01362__Vancouver | Vancouver | 1,362 | 01/01362__Vancouver.npz | 8,760 | 11 |
01791__Manila | 01791__Manila | Manila | 1,791 | 01/01791__Manila.npz | 8,760 | 19 |
01791__Mumbai | 01791__Mumbai | Mumbai | 1,791 | 01/01791__Mumbai.npz | 8,760 | 19 |
01791__Saopaulo | 01791__Saopaulo | Saopaulo | 1,791 | 01/01791__Saopaulo.npz | 8,760 | 19 |
01791__Warsaw | 01791__Warsaw | Warsaw | 1,791 | 01/01791__Warsaw.npz | 8,760 | 19 |
01796__Beijing | 01796__Beijing | Beijing | 1,796 | 01/01796__Beijing.npz | 8,760 | 2 |
01796__Berlin | 01796__Berlin | Berlin | 1,796 | 01/01796__Berlin.npz | 8,760 | 2 |
01796__Delhi | 01796__Delhi | Delhi | 1,796 | 01/01796__Delhi.npz | 8,760 | 2 |
01796__Warsaw | 01796__Warsaw | Warsaw | 1,796 | 01/01796__Warsaw.npz | 8,760 | 2 |
02001__Accra | 02001__Accra | Accra | 2,001 | 02/02001__Accra.npz | 8,760 | 23 |
02001__Chicago | 02001__Chicago | Chicago | 2,001 | 02/02001__Chicago.npz | 8,760 | 23 |
02001__Delhi | 02001__Delhi | Delhi | 2,001 | 02/02001__Delhi.npz | 8,760 | 23 |
02001__Nairobi | 02001__Nairobi | Nairobi | 2,001 | 02/02001__Nairobi.npz | 8,760 | 23 |
02131__Anchorage | 02131__Anchorage | Anchorage | 2,131 | 02/02131__Anchorage.npz | 8,760 | 23 |
02131__Auckland | 02131__Auckland | Auckland | 2,131 | 02/02131__Auckland.npz | 8,760 | 23 |
02131__Karachi | 02131__Karachi | Karachi | 2,131 | 02/02131__Karachi.npz | 8,760 | 23 |
02131__Mexicocity | 02131__Mexicocity | Mexicocity | 2,131 | 02/02131__Mexicocity.npz | 8,760 | 23 |
02225__Anchorage | 02225__Anchorage | Anchorage | 2,225 | 02/02225__Anchorage.npz | 8,760 | 8 |
02225__Delhi | 02225__Delhi | Delhi | 2,225 | 02/02225__Delhi.npz | 8,760 | 8 |
02225__Lagos | 02225__Lagos | Lagos | 2,225 | 02/02225__Lagos.npz | 8,760 | 8 |
02225__Saopaulo | 02225__Saopaulo | Saopaulo | 2,225 | 02/02225__Saopaulo.npz | 8,760 | 8 |
02276__Anchorage | 02276__Anchorage | Anchorage | 2,276 | 02/02276__Anchorage.npz | 8,760 | 14 |
02276__Auckland | 02276__Auckland | Auckland | 2,276 | 02/02276__Auckland.npz | 8,760 | 14 |
02276__Kolkata | 02276__Kolkata | Kolkata | 2,276 | 02/02276__Kolkata.npz | 8,760 | 14 |
02276__Seoul | 02276__Seoul | Seoul | 2,276 | 02/02276__Seoul.npz | 8,760 | 14 |
02571__Amsterdam | 02571__Amsterdam | Amsterdam | 2,571 | 02/02571__Amsterdam.npz | 8,760 | 13 |
02571__Capetown | 02571__Capetown | Capetown | 2,571 | 02/02571__Capetown.npz | 8,760 | 13 |
02571__Moscow | 02571__Moscow | Moscow | 2,571 | 02/02571__Moscow.npz | 8,760 | 13 |
02571__Vancouver | 02571__Vancouver | Vancouver | 2,571 | 02/02571__Vancouver.npz | 8,760 | 13 |
02577__Lagos | 02577__Lagos | Lagos | 2,577 | 02/02577__Lagos.npz | 8,760 | 12 |
02577__Tokyo | 02577__Tokyo | Tokyo | 2,577 | 02/02577__Tokyo.npz | 8,760 | 12 |
02577__Toronto | 02577__Toronto | Toronto | 2,577 | 02/02577__Toronto.npz | 8,760 | 12 |
02577__Vancouver | 02577__Vancouver | Vancouver | 2,577 | 02/02577__Vancouver.npz | 8,760 | 12 |
02965__Berlin | 02965__Berlin | Berlin | 2,965 | 02/02965__Berlin.npz | 8,760 | 33 |
02965__Karachi | 02965__Karachi | Karachi | 2,965 | 02/02965__Karachi.npz | 8,760 | 33 |
02965__Lagos | 02965__Lagos | Lagos | 2,965 | 02/02965__Lagos.npz | 8,760 | 33 |
02965__Manila | 02965__Manila | Manila | 2,965 | 02/02965__Manila.npz | 8,760 | 33 |
03113__Athens | 03113__Athens | Athens | 3,113 | 03/03113__Athens.npz | 8,760 | 25 |
03113__Berlin | 03113__Berlin | Berlin | 3,113 | 03/03113__Berlin.npz | 8,760 | 25 |
03113__Reykjavik | 03113__Reykjavik | Reykjavik | 3,113 | 03/03113__Reykjavik.npz | 8,760 | 25 |
03113__Warsaw | 03113__Warsaw | Warsaw | 3,113 | 03/03113__Warsaw.npz | 8,760 | 25 |
03152__Beijing | 03152__Beijing | Beijing | 3,152 | 03/03152__Beijing.npz | 8,760 | 38 |
03152__Delhi | 03152__Delhi | Delhi | 3,152 | 03/03152__Delhi.npz | 8,760 | 38 |
03152__Nairobi | 03152__Nairobi | Nairobi | 3,152 | 03/03152__Nairobi.npz | 8,760 | 38 |
03152__Tokyo | 03152__Tokyo | Tokyo | 3,152 | 03/03152__Tokyo.npz | 8,760 | 38 |
03298__Anchorage | 03298__Anchorage | Anchorage | 3,298 | 03/03298__Anchorage.npz | 8,760 | 27 |
03298__Manila | 03298__Manila | Manila | 3,298 | 03/03298__Manila.npz | 8,760 | 27 |
03298__Nairobi | 03298__Nairobi | Nairobi | 3,298 | 03/03298__Nairobi.npz | 8,760 | 27 |
03298__Saopaulo | 03298__Saopaulo | Saopaulo | 3,298 | 03/03298__Saopaulo.npz | 8,760 | 27 |
03466__Kolkata | 03466__Kolkata | Kolkata | 3,466 | 03/03466__Kolkata.npz | 8,760 | 30 |
03466__Moscow | 03466__Moscow | Moscow | 3,466 | 03/03466__Moscow.npz | 8,760 | 30 |
03466__Prague | 03466__Prague | Prague | 3,466 | 03/03466__Prague.npz | 8,760 | 30 |
03466__Warsaw | 03466__Warsaw | Warsaw | 3,466 | 03/03466__Warsaw.npz | 8,760 | 30 |
03588__Berlin | 03588__Berlin | Berlin | 3,588 | 03/03588__Berlin.npz | 8,760 | 21 |
03588__Karachi | 03588__Karachi | Karachi | 3,588 | 03/03588__Karachi.npz | 8,760 | 21 |
03588__Prague | 03588__Prague | Prague | 3,588 | 03/03588__Prague.npz | 8,760 | 21 |
03588__Reykjavik | 03588__Reykjavik | Reykjavik | 3,588 | 03/03588__Reykjavik.npz | 8,760 | 21 |
End of preview. Expand in Data Studio
ArchEGraph-demo
ArchEGraph-demo is a compact demo package of the ArchEGraph building-energy dataset for graph-based and weather-conditioned learning.
Dataset Summary
- Total cases in
manifest.csv: 300 - Unique buildings: 75
- Unique weather IDs: 48
n_steps: always 8,760n_spacesrange: 2 to 132
This package currently stores:
manifest.csv(index of all demo cases)building/(75 files)geometry/(75 files)weather/(48 files)energy/(300 files)split/(demo split CSV files)
Data Layout
Each row in manifest.csv contains:
sample_id: case ID (building__weatherstyle)source_job_tag: source identifierweather_id: weather/location keybuilding_id: building keyenergy_file: relative path to energy npz file underenergy/n_steps: number of time stepsn_spaces: number of spaces/zones
Included Split Files
split/split_demo.csv(300 rows)split/split_demo_mesh.csv(300 rows)
split/split_demo.csv uses these columns:
case_id,sample_id,building_id,weather_id,subset,split,scenario
split/split_demo_mesh.csv uses these columns:
building_id,split
Quick Start
import pandas as pd
from pathlib import Path
root = Path(".") # dataset root
manifest = pd.read_csv(root / "manifest.csv")
row = manifest.iloc[0]
energy_path = root / "energy" / row["energy_file"]
building_path = root / "building" / f"{row['building_id']}.npz"
weather_path = root / "weather" / f"{row['weather_id']}.npz"
print(row["sample_id"])
print(energy_path, building_path, weather_path)
Notes
- This repository is the demo package, not the full PACK release.
- Energy files in this demo package are referenced by
energy_filefrommanifest.csv. split/split_demo.csvandsplit/split_demo_mesh.csvprovide ready-to-use predefined splits for the packaged demo samples.
Citation
If you use this dataset, please cite your project/paper and this Hugging Face dataset page.
- Downloads last month
- 80