deepmd.tf.loss#
Submodules#
Classes#
Loss function for DeepDOS models. | |
The abstract class for the loss function. | |
The abstract class for the loss function. | |
Standard loss function for DP models. | |
Loss function for tensorial properties. |
Package Contents#
- class deepmd.tf.loss.DOSLoss(starter_learning_rate: float, numb_dos: int = 500, start_pref_dos: float = 1.0, limit_pref_dos: float = 1.0, start_pref_cdf: float = 1000, limit_pref_cdf: float = 1.0, start_pref_ados: float = 0.0, limit_pref_ados: float = 0.0, start_pref_acdf: float = 0.0, limit_pref_acdf: float = 0.0, protect_value: float = 1e-08, log_fit: bool = False, **kwargs)[source]#
Bases:
deepmd.tf.loss.loss.LossLoss function for DeepDOS models.
- starter_learning_rate#
- numb_dos = 500#
- protect_value = 1e-08#
- log_fit = False#
- start_pref_dos = 1.0#
- limit_pref_dos = 1.0#
- start_pref_cdf = 1000#
- limit_pref_cdf = 1.0#
- start_pref_ados = 0.0#
- limit_pref_ados = 0.0#
- start_pref_acdf = 0.0#
- limit_pref_acdf = 0.0#
- has_dos#
- has_cdf#
- has_ados#
- has_acdf#
- build(learning_rate, natoms, model_dict, label_dict, suffix)[source]#
Build the loss function graph.
- Parameters:
- Returns:
- property label_requirement: list[deepmd.utils.data.DataRequirementItem]#
Return data label requirements needed for this loss calculation.
- class deepmd.tf.loss.EnerDipoleLoss(starter_learning_rate: float, start_pref_e: float = 0.1, limit_pref_e: float = 1.0, start_pref_ed: float = 1.0, limit_pref_ed: float = 1.0)[source]#
Bases:
deepmd.tf.loss.loss.LossThe abstract class for the loss function.
- starter_learning_rate#
- start_pref_e = 0.1#
- limit_pref_e = 1.0#
- start_pref_ed = 1.0#
- limit_pref_ed = 1.0#
- build(learning_rate, natoms, model_dict, label_dict, suffix)[source]#
Build the loss function graph.
- Parameters:
- Returns:
- property label_requirement: list[deepmd.utils.data.DataRequirementItem]#
Return data label requirements needed for this loss calculation.
- class deepmd.tf.loss.EnerSpinLoss(starter_learning_rate: float, start_pref_e: float = 0.02, limit_pref_e: float = 1.0, start_pref_fr: float = 1000, limit_pref_fr: float = 1.0, start_pref_fm: float = 10000, limit_pref_fm: float = 10.0, start_pref_v: float = 0.0, limit_pref_v: float = 0.0, start_pref_ae: float = 0.0, limit_pref_ae: float = 0.0, start_pref_pf: float = 0.0, limit_pref_pf: float = 0.0, relative_f: float | None = None, enable_atom_ener_coeff: bool = False, use_spin: list | None = None)[source]#
Bases:
deepmd.tf.loss.loss.LossThe abstract class for the loss function.
- starter_learning_rate#
- start_pref_e = 0.02#
- limit_pref_e = 1.0#
- start_pref_fr = 1000#
- limit_pref_fr = 1.0#
- start_pref_fm = 10000#
- limit_pref_fm = 10.0#
- start_pref_v = 0.0#
- limit_pref_v = 0.0#
- start_pref_ae = 0.0#
- limit_pref_ae = 0.0#
- start_pref_pf = 0.0#
- limit_pref_pf = 0.0#
- relative_f = None#
- enable_atom_ener_coeff = False#
- use_spin = None#
- has_e#
- has_fr#
- has_fm#
- has_v#
- has_ae#
- build(learning_rate, natoms, model_dict, label_dict, suffix)[source]#
Build the loss function graph.
- Parameters:
- Returns:
- property label_requirement: list[deepmd.utils.data.DataRequirementItem]#
Return data label requirements needed for this loss calculation.
- class deepmd.tf.loss.EnerStdLoss(starter_learning_rate: float, start_pref_e: float = 0.02, limit_pref_e: float = 1.0, start_pref_f: float = 1000, limit_pref_f: float = 1.0, start_pref_v: float = 0.0, limit_pref_v: float = 0.0, start_pref_ae: float = 0.0, limit_pref_ae: float = 0.0, start_pref_pf: float = 0.0, limit_pref_pf: float = 0.0, relative_f: float | None = None, enable_atom_ener_coeff: bool = False, start_pref_gf: float = 0.0, limit_pref_gf: float = 0.0, numb_generalized_coord: int = 0, **kwargs)[source]#
Bases:
deepmd.tf.loss.loss.LossStandard loss function for DP models.
- Parameters:
- starter_learning_rate
float The learning rate at the start of the training.
- start_pref_e
float The prefactor of energy loss at the start of the training.
- limit_pref_e
float The prefactor of energy loss at the end of the training.
- start_pref_f
float The prefactor of force loss at the start of the training.
- limit_pref_f
float The prefactor of force loss at the end of the training.
- start_pref_v
float The prefactor of virial loss at the start of the training.
- limit_pref_v
float The prefactor of virial loss at the end of the training.
- start_pref_ae
float The prefactor of atomic energy loss at the start of the training.
- limit_pref_ae
float The prefactor of atomic energy loss at the end of the training.
- start_pref_pf
float The prefactor of atomic prefactor force loss at the start of the training.
- limit_pref_pf
float The prefactor of atomic prefactor force loss at the end of the training.
- relative_f
float If provided, relative force error will be used in the loss. The difference of force will be normalized by the magnitude of the force in the label with a shift given by relative_f
- enable_atom_ener_coeffbool
if true, the energy will be computed as sum_i c_i E_i
- start_pref_gf
float The prefactor of generalized force loss at the start of the training.
- limit_pref_gf
float The prefactor of generalized force loss at the end of the training.
- numb_generalized_coord
int The dimension of generalized coordinates.
- **kwargs
Other keyword arguments.
- starter_learning_rate
- starter_learning_rate#
- start_pref_e = 0.02#
- limit_pref_e = 1.0#
- start_pref_f = 1000#
- limit_pref_f = 1.0#
- start_pref_v = 0.0#
- limit_pref_v = 0.0#
- start_pref_ae = 0.0#
- limit_pref_ae = 0.0#
- start_pref_pf = 0.0#
- limit_pref_pf = 0.0#
- relative_f = None#
- enable_atom_ener_coeff = False#
- start_pref_gf = 0.0#
- limit_pref_gf = 0.0#
- numb_generalized_coord = 0#
- has_e#
- has_f#
- has_v#
- has_ae#
- has_pf#
- has_gf#
- build(learning_rate, natoms, model_dict, label_dict, suffix)[source]#
Build the loss function graph.
- Parameters:
- Returns:
- property label_requirement: list[deepmd.utils.data.DataRequirementItem]#
Return data label requirements needed for this loss calculation.
- class deepmd.tf.loss.TensorLoss(jdata, **kwarg)[source]#
Bases:
deepmd.tf.loss.loss.LossLoss function for tensorial properties.
- tensor_name#
- tensor_size#
- label_name#
- local_weight#
- global_weight#
- build(learning_rate, natoms, model_dict, label_dict, suffix)[source]#
Build the loss function graph.
- Parameters:
- Returns:
- property label_requirement: list[deepmd.utils.data.DataRequirementItem]#
Return data label requirements needed for this loss calculation.