Главная
Study mode:
on
1
Intro
2
Project overview
3
Step by step
4
First step
5
Second step
6
Mapping orbital densities
7
Local decomposition
8
Invariance
9
Power spectrum
10
Retrogression
11
Equipments workflow
12
Testing the model
13
Results
14
Mean model
15
Training results
16
Baseline model
17
Test results
18
Conclusions
19
Questions
Description:
Explore an advanced Quantum ESPRESSO tutorial focusing on accelerating the calculation of Koopmans screening parameters using machine learning. Delve into the intricacies of Hubbard and Koopmans functionals from linear response, covering topics such as project overview, step-by-step processes, mapping orbital densities, local decomposition, invariance, power spectrum, and retrogression. Learn about the equipment workflow, model testing, and analysis of results, including mean model, training outcomes, baseline model comparisons, and test findings. Gain valuable insights into this cutting-edge approach for computational materials science and engage with the material through a comprehensive syllabus designed to enhance understanding of complex quantum mechanical calculations.

Accelerating the Calculation of Koopmans Screening Parameters Using Machine Learning

Materials Cloud
Add to list