Datasets:
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README.md
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@@ -57,20 +57,15 @@ This magnetic field simulation dataset was generated by the webXOS MAGNET DATASE
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/generator/ folder so that users can create similar datasets. This dataset contains simulated magnetic field measurements
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for various magnet configurations.
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### Supported Tasks and Leaderboards
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- Magnetic field prediction
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- Physics simulation
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- Scientific machine learning
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- Sensor calibration
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### Languages
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English
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### Data Instances
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Each instance contains:
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- timestamp: Generation timestamp
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- type: Magnet type (dipole, solenoid, etc.)
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- position: [x, y, z] coordinates in meters
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Synthetic data generated using physics-based simulations.
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### Annotations
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No annotations, only raw simulation data.
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### Personal and Sensitive Information
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None.
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### Social Impact of Dataset
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This dataset enables research in electromagnetic field prediction and physics-informed machine learning.
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### Discussion of Biases
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The data is synthetic and evenly distributed across magnet types.
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### Other Known Limitations
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Data is simulated and may not match real-world measurements exactly.
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### Dataset Curator
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webXOS
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### Licensing Information
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Apache 2.0
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/generator/ folder so that users can create similar datasets. This dataset contains simulated magnetic field measurements
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for various magnet configurations.
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- Magnetic field prediction
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- Physics simulation
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- Scientific machine learning
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- Sensor calibration
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### Data Instances
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Each instance contains:
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- timestamp: Generation timestamp
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- type: Magnet type (dipole, solenoid, etc.)
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- position: [x, y, z] coordinates in meters
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Synthetic data generated using physics-based simulations.
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### Licensing Information
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Apache 2.0
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