formula stringlengths 2 15 | target float64 43.9 2.11k |
|---|---|
Zr1 | 268.987 |
K2Mg5Sn3 | 194.685 |
C1In1La3 | 248.043 |
Al3B2Ru4 | 536.231 |
Au1Ho1Pb1 | 174.85 |
F2Xe1 | 121.56 |
Dy1S2 | 327.586 |
Nb3Te4 | 252.974 |
Rb2Te1 | 119.013 |
Sb2Tb1 | 209.205 |
Hf1Pd5 | 290.738 |
O3Pb1Zr1 | 417.509 |
Ag1Al1Se2 | 213.309 |
Pd1Sb1Tb1 | 218.792 |
Ga1La1Zn1 | 298.434 |
Ag1As1S1 | 179.214 |
Ca1Pd1 | 239.886 |
Cd2Yb1 | 180.449 |
K1Li1Se1 | 262.784 |
Al2N1Nb3 | 560.437 |
Pt7Sb1 | 168.261 |
Ag1Er1 | 194.442 |
Ca2O4Pb1 | 401.37 |
Cl4K2Pd1 | 177.39 |
P1Ru1Zr1 | 440.648 |
As1Li1Mg1 | 429.918 |
Au1Ga1Zr1 | 280.281 |
In2Li1Rh1 | 261.367 |
Ca3Ge13Ir4 | 304.608 |
Ba1Mg4Si3 | 441.897 |
Mo3P1 | 431.5 |
Ni1Zr2 | 186.771 |
As1Hf1Ru1 | 335.638 |
Co2Ge1Zn1 | 177.644 |
N1Ni2W3 | 437.29 |
B6K1 | 997.505 |
Lu1Pb2 | 107.714 |
Au1Dy1 | 173.744 |
Pt3Sn1 | 216.151 |
Sn1Zr3 | 248.565 |
Bi1 | 70.1777 |
In1P1Pd5 | 293.09 |
In2O3 | 406.181 |
C1Sc3Tl1 | 438.646 |
Al1Pd1Y1 | 267.734 |
Ho1In3 | 203.247 |
Dy1Rh2Si2 | 417.538 |
Al2Y1 | 472.956 |
Pu1Se1 | 198.162 |
Co1Y1 | 201.353 |
Al4Er1Ni1 | 424.062 |
Er5Si3 | 306.544 |
As1Hf1 | 290.455 |
Be2Re1 | 593.266 |
Al1Ge1Sc1 | 423.378 |
C1Pb1Pd3 | 218.246 |
Cu2In1Y1 | 270.653 |
Hf1Pt1 | 162.128 |
As3La4 | 231.622 |
Al16Hf6Pd7 | 403.516 |
Ba1Os2P2 | 274.343 |
B6Os1Y2 | 746.739 |
Ho1In1 | 170.363 |
Er1Ru2Si2 | 390.134 |
Au1Be5 | 630.03 |
Rh2Si2Y1 | 456.646 |
Ce1Ga1Ni1 | 273.716 |
Au1Ca1Cd1 | 169.827 |
Ga12Lu4Pd1 | 316.029 |
O6Os2Rb1 | 438.488 |
Dy1Ga1Pt1 | 189.692 |
Pt1Sb2 | 247.753 |
La1Rh2 | 260.816 |
Er1Ge2Rh2 | 316.732 |
F6K2Mn1 | 217.996 |
Ho2Rh3Sn5 | 228.839 |
Cl6Cs2Te1 | 121.03 |
Ni2Si2Zr1 | 480.417 |
P1Rh2 | 399.457 |
Au1Pb4Rb3 | 91.9333 |
N1Ru2Zr4 | 374.553 |
Ca1O3Ti1 | 749.293 |
As1Fe1Nb1 | 349.755 |
Au1Cu4Tb1 | 157.576 |
Ir5Th1 | 294.768 |
P2Zn3 | 365.797 |
In1Pd2 | 221.119 |
As2Cu1Er1 | 314.693 |
Al1F3 | 730.728 |
C2Ir1 | 424.387 |
Cu4O3 | 266.444 |
Ir2S3Sn3 | 233.51 |
Si136 | 492.719 |
Ce2Pd21Si6 | 267.622 |
O4Sb1V1 | 616.724 |
In1Pt2Tb1 | 200.711 |
Sr1Tl2 | 140.184 |
Ca1O3Rh1 | 523.085 |
Ba1O3Ti1 | 512.805 |
Re1Si1Ti1 | 483.243 |
End of preview. Expand
in Data Studio
Benchmark AFLOW Data Sets for Machine Learning (Debye Temperature)
Dataset containing calculated Debye temperatures of 4896 materials
Dataset Information
- Source: Foundry-ML
- DOI: 10.18126/33r4-8t58
- Year: 2020
- Authors: Clement, Conrad L., Kauwe, Steven K., Sparks, Taylor D.
- Data Type: tabular
Fields
| Field | Role | Description | Units |
|---|---|---|---|
| formula | input | Material composition | |
| target | target | Debye Temperature | K |
Splits
- train: train
Usage
With Foundry-ML (recommended for materials science workflows)
from foundry import Foundry
f = Foundry()
dataset = f.get_dataset("10.18126/33r4-8t58")
X, y = dataset.get_as_dict()['train']
With HuggingFace Datasets
from datasets import load_dataset
dataset = load_dataset("Dataset_debyeT_aflow")
Citation
@misc{https://doi.org/10.18126/33r4-8t58
doi = {10.18126/33r4-8t58}
url = {https://doi.org/10.18126/33r4-8t58}
author = {Clement, Conrad L. and Kauwe, Steven K. and Sparks, Taylor D.}
title = {Benchmark AFLOW Data Sets for Machine Learning (Debye Temperature)}
keywords = {machine learning, foundry}
publisher = {Materials Data Facility}
year = {root=2020}}
License
other
This dataset was exported from Foundry-ML, a platform for materials science datasets.
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