CHILI: Chemically-Informed Large-scale Inorganic Nanomaterials Dataset for Advancing Graph Machine Learning

Publikation: Working paperPreprintForskning

Standard

CHILI : Chemically-Informed Large-scale Inorganic Nanomaterials Dataset for Advancing Graph Machine Learning. / Friis-Jensen, Ulrik; Johansen, Frederik L.; Anker, Andy S.; Dam, Erik B.; Jensen, Kirsten M. Ø.; Selvan, Raghavendra.

arxiv.org, 2024.

Publikation: Working paperPreprintForskning

Harvard

Friis-Jensen, U, Johansen, FL, Anker, AS, Dam, EB, Jensen, KMØ & Selvan, R 2024 'CHILI: Chemically-Informed Large-scale Inorganic Nanomaterials Dataset for Advancing Graph Machine Learning' arxiv.org. <https://arxiv.org/abs/2402.13221>

APA

Friis-Jensen, U., Johansen, F. L., Anker, A. S., Dam, E. B., Jensen, K. M. Ø., & Selvan, R. (2024). CHILI: Chemically-Informed Large-scale Inorganic Nanomaterials Dataset for Advancing Graph Machine Learning. arxiv.org. https://arxiv.org/abs/2402.13221

Vancouver

Friis-Jensen U, Johansen FL, Anker AS, Dam EB, Jensen KMØ, Selvan R. CHILI: Chemically-Informed Large-scale Inorganic Nanomaterials Dataset for Advancing Graph Machine Learning. arxiv.org. 2024.

Author

Friis-Jensen, Ulrik ; Johansen, Frederik L. ; Anker, Andy S. ; Dam, Erik B. ; Jensen, Kirsten M. Ø. ; Selvan, Raghavendra. / CHILI : Chemically-Informed Large-scale Inorganic Nanomaterials Dataset for Advancing Graph Machine Learning. arxiv.org, 2024.

Bibtex

@techreport{f75812537def4a53b1d56049553c36ea,
title = "CHILI: Chemically-Informed Large-scale Inorganic Nanomaterials Dataset for Advancing Graph Machine Learning",
abstract = "Advances in graph machine learning (ML) have been driven by applications in chemistry as graphs have remained the most expressive representations of molecules. While early graph ML methods focused primarily on small organic molecules, recently, the scope of graph ML has expanded to include inorganic materials. Modelling the periodicity and symmetry of inorganic crystalline materials poses unique challenges, which existing graph ML methods are unable to address. Moving to inorganic nanomaterials increases complexity as the scale of number of nodes within each graph can be broad ($10$ to $10^5$). The bulk of existing graph ML focuses on characterising molecules and materials by predicting target properties with graphs as input. However, the most exciting applications of graph ML will be in their generative capabilities, which is currently not at par with other domains such as images or text. We invite the graph ML community to address these open challenges by presenting two new chemically-informed large-scale inorganic (CHILI) nanomaterials datasets: A medium-scale dataset (with overall >6M nodes, >49M edges) of mono-metallic oxide nanomaterials generated from 12 selected crystal types (CHILI-3K) and a large-scale dataset (with overall >183M nodes, >1.2B edges) of nanomaterials generated from experimentally determined crystal structures (CHILI-100K). We define 11 property prediction tasks and 6 structure prediction tasks, which are of special interest for nanomaterial research. We benchmark the performance of a wide array of baseline methods and use these benchmarking results to highlight areas which need future work. To the best of our knowledge, CHILI-3K and CHILI-100K are the first open-source nanomaterial datasets of this scale -- both on the individual graph level and of the dataset as a whole -- and the only nanomaterials datasets with high structural and elemental diversity.",
keywords = "cs.LG, stat.ML",
author = "Ulrik Friis-Jensen and Johansen, {Frederik L.} and Anker, {Andy S.} and Dam, {Erik B.} and Jensen, {Kirsten M. {\O}.} and Raghavendra Selvan",
note = "16 pages, 15 figures, 8 tables. Dataset is available at https://github.com/UlrikFriisJensen/CHILI",
year = "2024",
language = "English",
publisher = "arxiv.org",
type = "WorkingPaper",
institution = "arxiv.org",

}

RIS

TY - UNPB

T1 - CHILI

T2 - Chemically-Informed Large-scale Inorganic Nanomaterials Dataset for Advancing Graph Machine Learning

AU - Friis-Jensen, Ulrik

AU - Johansen, Frederik L.

AU - Anker, Andy S.

AU - Dam, Erik B.

AU - Jensen, Kirsten M. Ø.

AU - Selvan, Raghavendra

N1 - 16 pages, 15 figures, 8 tables. Dataset is available at https://github.com/UlrikFriisJensen/CHILI

PY - 2024

Y1 - 2024

N2 - Advances in graph machine learning (ML) have been driven by applications in chemistry as graphs have remained the most expressive representations of molecules. While early graph ML methods focused primarily on small organic molecules, recently, the scope of graph ML has expanded to include inorganic materials. Modelling the periodicity and symmetry of inorganic crystalline materials poses unique challenges, which existing graph ML methods are unable to address. Moving to inorganic nanomaterials increases complexity as the scale of number of nodes within each graph can be broad ($10$ to $10^5$). The bulk of existing graph ML focuses on characterising molecules and materials by predicting target properties with graphs as input. However, the most exciting applications of graph ML will be in their generative capabilities, which is currently not at par with other domains such as images or text. We invite the graph ML community to address these open challenges by presenting two new chemically-informed large-scale inorganic (CHILI) nanomaterials datasets: A medium-scale dataset (with overall >6M nodes, >49M edges) of mono-metallic oxide nanomaterials generated from 12 selected crystal types (CHILI-3K) and a large-scale dataset (with overall >183M nodes, >1.2B edges) of nanomaterials generated from experimentally determined crystal structures (CHILI-100K). We define 11 property prediction tasks and 6 structure prediction tasks, which are of special interest for nanomaterial research. We benchmark the performance of a wide array of baseline methods and use these benchmarking results to highlight areas which need future work. To the best of our knowledge, CHILI-3K and CHILI-100K are the first open-source nanomaterial datasets of this scale -- both on the individual graph level and of the dataset as a whole -- and the only nanomaterials datasets with high structural and elemental diversity.

AB - Advances in graph machine learning (ML) have been driven by applications in chemistry as graphs have remained the most expressive representations of molecules. While early graph ML methods focused primarily on small organic molecules, recently, the scope of graph ML has expanded to include inorganic materials. Modelling the periodicity and symmetry of inorganic crystalline materials poses unique challenges, which existing graph ML methods are unable to address. Moving to inorganic nanomaterials increases complexity as the scale of number of nodes within each graph can be broad ($10$ to $10^5$). The bulk of existing graph ML focuses on characterising molecules and materials by predicting target properties with graphs as input. However, the most exciting applications of graph ML will be in their generative capabilities, which is currently not at par with other domains such as images or text. We invite the graph ML community to address these open challenges by presenting two new chemically-informed large-scale inorganic (CHILI) nanomaterials datasets: A medium-scale dataset (with overall >6M nodes, >49M edges) of mono-metallic oxide nanomaterials generated from 12 selected crystal types (CHILI-3K) and a large-scale dataset (with overall >183M nodes, >1.2B edges) of nanomaterials generated from experimentally determined crystal structures (CHILI-100K). We define 11 property prediction tasks and 6 structure prediction tasks, which are of special interest for nanomaterial research. We benchmark the performance of a wide array of baseline methods and use these benchmarking results to highlight areas which need future work. To the best of our knowledge, CHILI-3K and CHILI-100K are the first open-source nanomaterial datasets of this scale -- both on the individual graph level and of the dataset as a whole -- and the only nanomaterials datasets with high structural and elemental diversity.

KW - cs.LG

KW - stat.ML

M3 - Preprint

BT - CHILI

PB - arxiv.org

ER -

ID: 383560376