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Paper

Approaching coupled cluster accuracy with a general-purpose neural network potential through transfer learning

by Independent / Community 0010848c4044122dd79c12e3612091ac545a6e88
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Computational modeling of chemical and biological systems at atomic resolution is a crucial tool in the chemist’s toolset. The use of computer simulations requires a balance between cost and accuracy: quantum-mechanical methods provide high accuracy but are computationally expensive and scale poorly to large systems, while classical force fields are cheap and scalable, but lack transferability to new systems. Machine learning can be used to achieve the best of both approaches. Here we train a...

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Registry ID 0010848c4044122dd79c12e3612091ac545a6e88
License ArXiv
Provider semantic_scholar
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BibTeX
@misc{0010848c4044122dd79c12e3612091ac545a6e88,
  author = {Unknown},
  title = {Approaching coupled cluster accuracy with a general-purpose neural network potential through transfer learning Paper},
  year = {2026},
  howpublished = {\url{https://api.semanticscholar.org/0010848c4044122dd79c12e3612091ac545a6e88}},
  note = {Accessed via Free2AITools Knowledge Fortress}
}
APA Style
Unknown. (2026). Approaching coupled cluster accuracy with a general-purpose neural network potential through transfer learning [Paper]. Free2AITools. https://api.semanticscholar.org/0010848c4044122dd79c12e3612091ac545a6e88

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Semantic (S) 50

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Authority (A) 91
Popularity (P) 70
Recency (R) 100
Quality (Q) 65

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FNI V2.0 for Approaching coupled cluster accuracy with a general-purpose neural network potential through transfer learning: Authority (A:91), Popularity (P:70), Recency (R:100), Quality (Q:65). Semantic (S) is a query-time baseline scored live at search.

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📝 Executive Summary

"Computational modeling of chemical and biological systems at atomic resolution is a crucial tool in the chemist’s toolset. The use of computer simulations requires a balance between cost and accuracy: quantum-mechanical methods provide high accuracy but are computationally expensive and scale poorly to large systems, while classical force fields are cheap and scalable, but lack transferability to new systems. Machine learning can be used to achieve the best of both approaches. Here we train a..."

Cite Node

@article{Unknown2026Approaching,
  title={Approaching coupled cluster accuracy with a general-purpose neural network potential through transfer learning},
  author={},
  note={Indexed by Free2AITools},
  year={2026}
}

Abstract & Analysis

Computational modeling of chemical and biological systems at atomic resolution is a crucial tool in the chemist’s toolset. The use of computer simulations requires a balance between cost and accuracy: quantum-mechanical methods provide high accuracy but are computationally expensive and scale poorly to large systems, while classical force fields are cheap and scalable, but lack transferability to new systems. Machine learning can be used to achieve the best of both approaches. Here we train a general-purpose neural network potential (ANI-1ccx) that approaches CCSD(T)/CBS accuracy on benchmarks for reaction thermochemistry, isomerization, and drug-like molecular torsions. This is achieved by training a network to DFT data then using transfer learning techniques to retrain on a dataset of gold standard QM calculations (CCSD(T)/CBS) that optimally spans chemical space. The resulting potential is broadly applicable to materials science, biology, and chemistry, and billions of times faster than CCSD(T)/CBS calculations. Computational modelling of chemical systems requires a balance between accuracy and computational cost. Here the authors use transfer learning to develop a general purpose neural network potential that approaches quantum-chemical accuracy for reaction thermochemistry, isomerization, and drug-like molecular torsions.

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semantic_scholar
author
Unknown
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ArXiv
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paper, research, academic

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