Machine Learning Force Fields
- URL: http://arxiv.org/abs/2010.07067v2
- Date: Tue, 12 Jan 2021 14:57:54 GMT
- Title: Machine Learning Force Fields
- Authors: Oliver T. Unke, Stefan Chmiela, Huziel E. Sauceda, Michael Gastegger,
Igor Poltavsky, Kristof T. Sch\"utt, Alexandre Tkatchenko, Klaus-Robert
M\"uller
- Abstract summary: Machine Learning (ML) has enabled numerous advances in computational chemistry.
One of the most promising applications is the construction of ML-based force fields (FFs)
This review gives an overview of applications of ML-FFs and the chemical insights that can be obtained from them.
- Score: 54.48599172620472
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In recent years, the use of Machine Learning (ML) in computational chemistry
has enabled numerous advances previously out of reach due to the computational
complexity of traditional electronic-structure methods. One of the most
promising applications is the construction of ML-based force fields (FFs), with
the aim to narrow the gap between the accuracy of ab initio methods and the
efficiency of classical FFs. The key idea is to learn the statistical relation
between chemical structure and potential energy without relying on a
preconceived notion of fixed chemical bonds or knowledge about the relevant
interactions. Such universal ML approximations are in principle only limited by
the quality and quantity of the reference data used to train them. This review
gives an overview of applications of ML-FFs and the chemical insights that can
be obtained from them. The core concepts underlying ML-FFs are described in
detail and a step-by-step guide for constructing and testing them from scratch
is given. The text concludes with a discussion of the challenges that remain to
be overcome by the next generation of ML-FFs.
Related papers
- Recent Advances on Machine Learning for Computational Fluid Dynamics: A Survey [51.87875066383221]
This paper introduces fundamental concepts, traditional methods, and benchmark datasets, then examine the various roles Machine Learning plays in improving CFD.
We highlight real-world applications of ML for CFD in critical scientific and engineering disciplines, including aerodynamics, combustion, atmosphere & ocean science, biology fluid, plasma, symbolic regression, and reduced order modeling.
We draw the conclusion that ML is poised to significantly transform CFD research by enhancing simulation accuracy, reducing computational time, and enabling more complex analyses of fluid dynamics.
arXiv Detail & Related papers (2024-08-22T07:33:11Z) - FactorLLM: Factorizing Knowledge via Mixture of Experts for Large Language Models [50.331708897857574]
We introduce FactorLLM, a novel approach that decomposes well-trained dense FFNs into sparse sub-networks without requiring any further modifications.
FactorLLM achieves comparable performance to the source model securing up to 85% model performance while obtaining over a 30% increase in inference speed.
arXiv Detail & Related papers (2024-08-15T16:45:16Z) - Knowledge Editing for Large Language Models: A Survey [51.01368551235289]
One major drawback of large language models (LLMs) is their substantial computational cost for pre-training.
Knowledge-based Model Editing (KME) has attracted increasing attention, which aims to precisely modify the LLMs to incorporate specific knowledge.
arXiv Detail & Related papers (2023-10-24T22:18:13Z) - Deep learning applied to computational mechanics: A comprehensive
review, state of the art, and the classics [77.34726150561087]
Recent developments in artificial neural networks, particularly deep learning (DL), are reviewed in detail.
Both hybrid and pure machine learning (ML) methods are discussed.
History and limitations of AI are recounted and discussed, with particular attention at pointing out misstatements or misconceptions of the classics.
arXiv Detail & Related papers (2022-12-18T02:03:00Z) - Forces are not Enough: Benchmark and Critical Evaluation for Machine
Learning Force Fields with Molecular Simulations [5.138982355658199]
Molecular dynamics (MD) simulation techniques are widely used for various natural science applications.
We benchmark a collection of state-of-the-art (SOTA) ML FF models and illustrate, in particular, how the commonly benchmarked force accuracy is not well aligned with relevant simulation metrics.
arXiv Detail & Related papers (2022-10-13T17:59:03Z) - Putting Density Functional Theory to the Test in
Machine-Learning-Accelerated Materials Discovery [2.7810723668216575]
We describe the advances needed in accuracy, efficiency, and approach beyond what is typical in conventional DFT-based machine learning (ML)
For DFT to be trusted for a given data point in a high- throughput screen, it must pass a series of tests.
For DFT to be trusted for a given data point in a high- throughput screen, it must pass a series of tests.
arXiv Detail & Related papers (2022-05-06T00:34:50Z) - Quantum Machine Learning for Chemistry and Physics [2.786820702277084]
Machine learning (ML) and its close cousin deep learning (DL) have ushered unprecedented developments in all areas of physical sciences especially chemistry.
In this review we shall explicate a subset of such topics and delineate the contributions made by both classical and quantum computing enhanced machine learning algorithms over the past few years.
arXiv Detail & Related papers (2021-11-01T11:38:47Z) - An Extensible Benchmark Suite for Learning to Simulate Physical Systems [60.249111272844374]
We introduce a set of benchmark problems to take a step towards unified benchmarks and evaluation protocols.
We propose four representative physical systems, as well as a collection of both widely used classical time-based and representative data-driven methods.
arXiv Detail & Related papers (2021-08-09T17:39:09Z) - SpookyNet: Learning Force Fields with Electronic Degrees of Freedom and
Nonlocal Effects [1.5845117761091052]
Machine-learned force fields (ML-FFs) have gained increasing popularity in the field of computational chemistry.
This work introduces SpookyNet, a deep neural network for constructing ML-FFs with explicit treatment of electronic degrees of freedom and quantum nonlocality.
SpookyNet improves upon the current state-of-the-art (or achieves similar performance) on popular quantum chemistry data sets.
arXiv Detail & Related papers (2021-05-01T17:06:40Z) - Machine Learning for Condensed Matter Physics [0.0]
Condensed Matter Physics (CMP) seeks to understand the microscopic interactions of matter at the quantum and atomistic levels.
CMP overlaps with many other important branches of science, such as Chemistry, Materials Science, Statistical Physics, and High-Performance Computing.
Modern Machine Learning (ML) technology has created a compelling new area of research at the intersection of both fields.
arXiv Detail & Related papers (2020-05-28T18:44:55Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.