Datasets:
Update README.md
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README.md
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data_files:
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- split: train
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path: Dataset_V0.0/Synthetic-Energy-Load-Profiles/15min/SynD/*.parquet
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- config_name: Synthetic-SDG-Hourly
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data_files:
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- split: train
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data_files:
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- split: train
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path: Dataset_V0.0/Synthetic-Energy-Load-Profiles/Hourly/SynD/*.parquet
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---
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A open-source large-scale energy meter dataset designed to support a variety of energy analytics applications, including load profile analysis, and load forecasting.
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It compiles over 60 detailed electricity consumption datasets encompassing approximately **78,000** real buildings representing the global building stock, offering insights into the temporal and spatial variations in energy consumption.
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The buildings are classified into two categories: **Commercial**, which includes **2,900** buildings, and **Residential**, which includes **75,100** buildings, with a total of 65,000 building-days of time-series data.
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These buildings span diverse geographies, climatic zones, and operational profiles, providing a broad spectrum of usage patterns.
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All processed datasets contain hourly data, with some offering additional 15-minute and 30-minute resolution. To ensure efficient storage, we saved the datasets in Parquet format rather than CSV.
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For datasets involving a large number of buildings, we partitioned the data into multiple Parquet files.
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Metadata of each datasets are provided in [metadata](https://huggingface.co/datasets/ai-iot/EnergyBench/tree/main/Dataset_V0.0/metadata).
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Table 1: Summary of EnergBench dataset
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| Category | # Datasets | # Buildings | # Days | # Hourly Obs |
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|-------------|-------------|--------------|---------|--------|
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| Commercial | 20 | 2,916 | 16,706 | 62M |
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| Residential | 47 | 75,121 | 43,852 | 1.2B |
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data_files:
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- split: train
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path: Dataset_V0.0/Synthetic-Energy-Load-Profiles/15min/SynD/*.parquet
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- config_name: Synthetic-Buildings-900K-Commercial-15min
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data_files:
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- split: train
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path: Dataset_V0.0/Synthetic-Energy-Load-Profiles/15min/Buildings-900K/comstock_amy2018_release_2/*/*.parquet
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- config_name: Synthetic-Buildings-900K-Residential-15min
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data_files:
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- split: train
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path: Dataset_V0.0/Synthetic-Energy-Load-Profiles/15min/Buildings-900K/resstock_amy2018_release_2/*/*.parquet
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- config_name: Synthetic-SDG-Hourly
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data_files:
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- split: train
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data_files:
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- split: train
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path: Dataset_V0.0/Synthetic-Energy-Load-Profiles/Hourly/SynD/*.parquet
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- config_name: Synthetic-Buildings-900K-Commercial-Hourly
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data_files:
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- split: train
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path: Dataset_V0.0/Synthetic-Energy-Load-Profiles/Hourly/Buildings-900K/comstock_amy2018_release_2/*/*.parquet
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- config_name: Synthetic-Buildings-900K-Residential-Hourly
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data_files:
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- split: train
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path: Dataset_V0.0/Synthetic-Energy-Load-Profiles/Hourly/Buildings-900K/resstock_amy2018_release_2/*/*.parquet
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- config_name: Synthetic-HRSA-Residential-Hourly
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data_files:
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- split: train
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path: Dataset_V0.0/Synthetic-Energy-Load-Profiles/Hourly/HRSA/*/*.parquet
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---
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A open-source large-scale energy meter dataset designed to support a variety of energy analytics applications, including load profile analysis, and load forecasting.
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It compiles over 60 detailed electricity consumption datasets encompassing approximately **78,000** real buildings representing the global building stock, offering insights into the temporal and spatial variations in energy consumption.
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The buildings are classified into two categories: **Commercial**, which includes **2,900** buildings, and **Residential**, which includes **75,100** buildings, with a total of 65,000 building-days of time-series data.
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These buildings span diverse geographies, climatic zones, and operational profiles, providing a broad spectrum of usage patterns. Additional to the real buildings, it also
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includes synthetic and simulated buildings electricity consumption data.
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All processed datasets contain hourly data, with some offering additional 15-minute and 30-minute resolution. To ensure efficient storage, we saved the datasets in Parquet format rather than CSV.
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For datasets involving a large number of buildings, we partitioned the data into multiple Parquet files.
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Metadata of each datasets are provided in [metadata](https://huggingface.co/datasets/ai-iot/EnergyBench/tree/main/Dataset_V0.0/metadata).
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Table 1: Summary of EnergBench dataset (Real Buildings)
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| Category | # Datasets | # Buildings | # Days | # Hourly Obs |
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|-------------|-------------|--------------|---------|--------|
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| Commercial | 20 | 2,916 | 16,706 | 62M |
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| Residential | 47 | 75,121 | 43,852 | 1.2B |
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Table 2: Summary of EnergBench dataset (Synthetic and Simulated Buildings)
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| Category | # Datasets | # Buildings | # Days | # Hourly Obs |
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|-------------|-------------|--------------|---------|--------|
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| Commercial | 1 | 207,559 | 365 | ~1.7B |
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| Residential | 4 | 31M | 966 | ~718.7B |
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