Building and Urban Data Science (BUDS) Group (@buds-lab)

Top repositories

1

the-building-data-genome-project

A collection of non-residential buildings for performance analysis and algorithm benchmarking
Jupyter Notebook
182
star
2

building-data-genome-project-2

Whole building non-residential hourly energy meter data from the Great Energy Predictor III competition
Jupyter Notebook
166
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3

ashrae-great-energy-predictor-3-solution-analysis

Analysis of top give winning solutions of the ASHRAE Great Energy Predictor III competition
Jupyter Notebook
71
star
4

python-for-building-analysts

Jupyter notebook tutorials to teach scripting to building performance analysis experts
Jupyter Notebook
61
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5

building-prediction-benchmarking

An array of open source ML models applied to long-term hourly energy prediction for institutional buildings
Jupyter Notebook
25
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6

simple-building

Simplified Building Simulation Engine
Python
25
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7

data-science-for-construction-edx-course-notebooks

Jupyter/Colab Notebooks for Data Science for Construction, Architecture and Engineering
Jupyter Notebook
23
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8

google-trends-for-buildings

Data and Code for the Paper "Using Google Trends to Predict Building Energy"
Jupyter Notebook
18
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9

temporal-features-for-nonres-buildings-library

Jupyter notebooks for the Energy and Buildings Publication
Jupyter Notebook
17
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10

buds-lab.github.io

BUDS Lab Website
SCSS
14
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11

build2vec-thermal-comfort

code for Build2Vec 1.0 reproducibility
Jupyter Notebook
12
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12

united-world-college-open-data

An IPython notebook analysis of the UWC Tampines commercial building dataset
Jupyter Notebook
11
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13

LEAD-1st-solution

1st winning solution in Large-scale Energy Anomaly Detection (LEAD) competition
Jupyter Notebook
10
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14

humans-as-a-sensor-for-buildings

Implementation of the Humans-as-a-Sensor for Buildings paper.
Jupyter Notebook
9
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15

forensic-analysis-of-building-energy-data

Example Dataset from SimAUD 2015 Paper
HTML
9
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16

energystar-plus-plus

Using Gradient Boosting Trees and Explainable ML for Commericial Building Benchmarking
HTML
8
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17

psychrometric-chart-makeover

Adding more dimension to the psychrometric chart
Python
8
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18

ComfortLearn

This repository is the official implementation of ComfortLearn: Enabling agent-based occupant-centric building controls
Jupyter Notebook
8
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19

building-data-directory

Python
7
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20

ashrae-great-energy-predictor-3-overview-analysis

Paper in Science and Technology for the Built Environment about the GEPIII Competition
Jupyter Notebook
7
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21

aldiplusplus

This repository is the official implementation of ALDI++: Automatic and parameter-less discorddetection for daily load energy profiles
Jupyter Notebook
6
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22

enerNOC-100-building-open-dataset-analysis

An IPython notebook overview of EnerNOC's open dataset
Jupyter Notebook
6
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23

comfortGAN

This repository is the official implementation of Balancing thermal comfort datasets: We GAN, but should we?
Jupyter Notebook
6
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24

longitudinal-personal-thermal-comfort

Official repository for Dataset: Longitudinal personal thermal comfort preference data in the wild
Jupyter Notebook
6
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25

ccm

This repository is the official implementation of Cohort comfort models - Using occupants’ similarity to predict personal thermal preference with less data
Jupyter Notebook
5
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26

day-filter

Automated daily pattern filtering of measured building performance data
Jupyter Notebook
5
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27

elastic-buildings

Jupyter Notebook
4
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28

data-driven-greenmark

Dataset on Singapore's Green Mark Buildings
Jupyter Notebook
4
star
29

jupyter-data-science-meetup

NUS Data Science Meetup - Data Science Workflow Tutorial in Jupyter
Jupyter Notebook
4
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30

ashrae-great-energy-predictor-3-error-analysis

Analysis of the Time Series Residuals of the Great Energy Predictor III competition
Jupyter Notebook
3
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31

review-unsupervised-visualanalytics-for-buildings

A review of unsupervised statistical learning and visual analytics techniques applied to performance analysis of non-residential buildings
Jupyter Notebook
3
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32

generative-methods-for-human-comfort

Human comfort datasets are widely used for multiple scenarios in smart buildings. From thermal comfort prediction to personalized indoor environments, labelled subjective responses from participants in a experiment are required to feed different machine learning models. However, many of these dataset are small in samples per participants, number of participants, or suffer from a class-imbalanced of its subjective responses. In this work we explore the use of Generative Adversarial Networks to generate synthetic samples to be used in combination with real ones for data-driven applications in the built environment.
Jupyter Notebook
3
star
33

ema-for-occupant-wellness-and-privacy

Cozie deployment for Indoor Air 2022 Paper on Occupant Wellness and Privacy
HTML
2
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34

buildsys22-energy-forecasting-tutorial

Jupyter Notebook
2
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35

project-iris-dataset

Jupyter Notebook
2
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36

twenty-years-of-bldgsim-textmining

Text mining the email repository of the BLDG-SIM list serv
Jupyter Notebook
2
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37

island-of-misfit-buildings

Detecting mixed-use or primary-space-use outliers using load shape clustering
Jupyter Notebook
1
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38

style-guide

The budslab style guide
1
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39

spacematch-paper

spacematch paper repo
TeX
1
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40

learning-trail-scroller-demo

Scrollytelling Demo for Learning Trail Stations
JavaScript
1
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41

iob

Internet of Buildings Center
CSS
1
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42

nus-pf1103-digital-construction

Data for NUS PF1103 Digital Construction Module
1
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43

abm-demo

OpenAI workshop for occupant-centric applications
Jupyter Notebook
1
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44

cozie-examples

Repository of example scripts to interface with the cozie app
Python
1
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45

Filling-time-series-gaps-using-image-techniques

Jupyter Notebook
1
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