Back to the main page of this manual | Input reference of CP2K version 9.1 |
CP2K_INPUT /
FORCE_EVAL /
DFT /
LS_SCF /
PAO /
MACHINE_LEARNING
DESCRIPTOR {Keyword} |
|
Descriptor used as input for machine learning. | |
This keyword cannot be repeated and it expects precisely one keyword. | |
Default value:
POTENTIAL |
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List of valid keywords:
|
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This keyword cites the following reference: [Zhu2016] |
GP_NOISE_VAR {Real} |
|
Variance of noise used for Gaussian Process machine learning. | |
This keyword cannot be repeated and it expects precisely one real. | |
Default value:
1.00000000E-001 |
GP_SCALE {Real} |
|
Length scale used for Gaussian Process machine learning. | |
This keyword cannot be repeated and it expects precisely one real. | |
Default value:
5.00000000E-002 |
METHOD {Keyword} |
|
Machine learning scheme used to predict PAO basis sets. | |
This keyword cannot be repeated and it expects precisely one keyword. | |
Default value:
GAUSSIAN_PROCESS |
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List of valid keywords:
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PRIOR {Keyword} |
|
Prior used for predictions. | |
This keyword cannot be repeated and it expects precisely one keyword. | |
Default value:
ZERO |
|
List of valid keywords:
|
TOLERANCE {Real} |
|
Maximum variance tolerated when making predictions. | |
This keyword cannot be repeated and it expects precisely one real. | |
Default value:
1.00000000E-002 |
Back to the main page of this manual or the CP2K home page | (Last update: 31.12.2021) |