| from dataclasses import dataclass |
| from enum import Enum, IntEnum, auto, unique |
|
|
| import numpy as np |
|
|
| from jax.tree_util import register_pytree_node_class |
|
|
| from typing import TypeVar, Tuple, Any, Type, NoReturn |
|
|
| T_VariPEPS_Config = TypeVar("T_VariPEPS_Config", bound="VariPEPS_Config") |
|
|
|
|
| @unique |
| class Optimizing_Methods(IntEnum): |
| STEEPEST = auto() |
| CG = auto() |
| BFGS = auto() |
| L_BFGS = auto() |
|
|
|
|
| @unique |
| class Line_Search_Methods(IntEnum): |
| SIMPLE = auto() |
| ARMIJO = auto() |
| WOLFE = auto() |
| HAGERZHANG = auto() |
|
|
|
|
| @unique |
| class Projector_Method(IntEnum): |
| HALF = auto() |
| FULL = auto() |
| FISHMAN = auto() |
| HALF_FISHMAN = auto() |
|
|
|
|
| @unique |
| class Wavevector_Type(IntEnum): |
| TWO_PI_POSITIVE_ONLY = auto() |
| TWO_PI_SYMMETRIC = auto() |
|
|
|
|
| @unique |
| class Grad_Fixed_Point_Method(IntEnum): |
| ITERATIVE = auto() |
| LINEAR_SOLVER = ( |
| auto() |
| ) |
| EIGEN_SOLVER = ( |
| auto() |
| ) |
|
|
|
|
| @unique |
| class Slurm_Restart_Mode(IntEnum): |
| DISABLED = ( |
| auto() |
| ) |
| WRITE_NEED_RESTART_FILE = ( |
| auto() |
| ) |
| WRITE_RESTART_SCRIPT = ( |
| auto() |
| ) |
| AUTOMATIC_RESTART = auto() |
|
|
|
|
| @dataclass |
| @register_pytree_node_class |
| class VariPEPS_Config: |
| """ |
| Config class for varipeps module. Normally only the blow created instance |
| :obj:`config` is used. |
| |
| Parameters: |
| ad_use_custom_vjp (:obj:`bool`): |
| Use custom VJP rule for the CTMRG routine during AD calculation. |
| ad_custom_print_steps (:obj:`bool`): |
| Print steps of fix-point iteration in custom VJP function. |
| ad_custom_verbose_output (:obj:`bool`): |
| Print verbose output in custom VJP function. |
| ad_custom_convergence_eps (:obj:`float`): |
| Convergence criterion for the custom VJP function. |
| ad_custom_max_steps (:obj:`int`): |
| Maximal number of steps for fix-pointer iteration of the custom VJP |
| function. |
| ad_custom_fixed_point_method (:obj:`~varipeps.config.Grad_Fixed_Point_Method`): |
| Select method how the gradient of the CTMRG fixed point routine is |
| calculated. |
| checkpointing_ncon (:obj:`bool`): |
| Enable AD checkpointing for the ncon calls. |
| checkpointing_projectors (:obj:`bool`): |
| Enable AD checkpointing for the the calculation of the proejctors. |
| ctmrg_convergence_eps (:obj:`float`): |
| Convergence criterion for the CTMRG routine. |
| ctmrg_enforce_elementwise_convergence (:obj:`bool`): |
| Enforce elementwise convergence of the CTM tensors instead of only |
| convergence of the singular values of the corners. |
| ctmrg_max_steps (:obj:`int`): |
| Maximal number of steps for fix-pointer iteration of the CTMRG routine. |
| ctmrg_print_steps (:obj:`bool`): |
| Print steps of fix-point iteration in CTMRG routine. |
| ctmrg_verbose_output (:obj:`bool`): |
| Print verbose output in CTMRG routine. |
| ctmrg_truncation_eps (:obj:`float`): |
| Value for cut off of the singular values compared to the |
| biggest one. Used in the calculation of the CTMRG projectors. |
| ctmrg_fail_if_not_converged (:obj:`bool`): |
| Flag if the CTMRG routine should fail with an error if no convergence |
| can be reached within the maximal number of steps. |
| If disabled, the result converged so far is returned. |
| ctmrg_full_projector_method (:obj:`~varipeps.config.Projector_Method`): |
| Set which projector method should be used as default (full) projector |
| method during the CTMRG routine. Sensible values are |
| :obj:`~varipeps.config.Projector_Method.FULL` or |
| :obj:`~varipeps.config.Projector_Method.FISHMAN`. |
| ctmrg_increase_truncation_eps (:obj:`bool`): |
| Flag if the CTMRG routine should try higher truncation thresholds for |
| the SVD based projector methods if the routine does not converge in the |
| maximum number of steps. |
| ctmrg_increase_truncation_eps_factor (:obj:`float`): |
| Factor by which the truncation threshold should be increased. |
| ctmrg_increase_truncation_eps_max_value (:obj:`float`): |
| Maximal value for the truncation threshold. Do not increase higher than |
| this value. |
| ctmrg_heuristic_increase_chi (:obj:`bool`): |
| Flag if the CTMRG routine should try higher environment bond dimension |
| for if the routine found singular values above a threshold during the |
| projector calculation of the last absorption step. |
| ctmrg_heuristic_increase_chi_threshold (:obj:`float`): |
| Threshold for the heuristic environment bond dimension increase. |
| ctmrg_heuristic_increase_chi_step_size (:obj:`int`): |
| Step size for the heuristic environment bond dimension increase. |
| ctmrg_heuristic_decrease_chi (:obj:`bool`): |
| Flag if the CTMRG routine should try lower environment bond dimension |
| for if the routine found singular values below the SVD threshold during |
| the projector calculation of the last absorption step. |
| ctmrg_heuristic_decrease_chi_step_size (:obj:`int`): |
| Step size for the heuristic environment bond dimension decrease. |
| triangular_ctmrg_use_split (:obj:`bool`): |
| Flag if the split projector method should be used in the |
| triangular CTMRG. |
| svd_sign_fix_eps (:obj:`float`): |
| Value for numerical stability threshold in sign-fixed SVD. |
| svd_ad_use_lorentz_broadening (:obj:`bool`): |
| Enable Lorentz broadening in the AD rule for the SVD. |
| svd_ad_lorentz_broadening_eps (:obj:`float`): |
| Numerical stabilization constant in the Lorentz broadening in the |
| AD rule for the SVD. |
| optimizer_method (:obj:`Optimizing_Methods`): |
| Method used for variational optimization of the PEPS network. |
| optimizer_max_steps (:obj:`int`): |
| Maximal number of steps for fix-pointer iteration in optimization routine. |
| optimizer_convergence_eps (:obj:`float`): |
| Convergence criterion for the optimization routine. |
| optimizer_ctmrg_preconverged_eps (:obj:`float`): |
| Convergence criterion for the optimization routine using the gradient |
| calculations with the preconverged environment. |
| optimizer_fail_if_no_step_size_found (:obj:`bool`): |
| Flag if the optimizer routine should fail with an error if no step size |
| can be found before the gradient norm is below the convergence |
| threshold. If disabled, the result converged so far is returned. |
| optimizer_l_bfgs_maxlen (:obj:`int`): |
| Maximal number of previous steps used for the L-BFGS method. |
| optimizer_preconverge_with_half_projectors (:obj:`bool`): |
| Flag if the optimizer should use only CTM half projectors for the steps |
| till some converge is reached. |
| optimizer_preconverge_with_half_projectors_eps (:obj:`float`): |
| Convergence criterion for the preconvergence with only the half |
| CTM projectors. |
| optimizer_autosave_step_count (:obj:`int`): |
| Step count after which the optimizer result is automatically saved. |
| optimizer_random_noise_eps (:obj:`float`): |
| Optimizer should try best state sofar with some random noise if |
| gradient norm is below this threshold. |
| optimizer_random_noise_max_retries (:obj:`int`): |
| Maximal retries for optimization with random noise. |
| optimizer_random_noise_relative_amplitude (:obj:`float`): |
| Relative amplitude used for random noise. |
| optimizer_reuse_env_eps (:obj:`float`): |
| Reuse CTMRG environment of previous step if norm of gradient is below |
| this threshold. |
| optimizer_use_preconditioning (:obj:`bool`): |
| Use (local) preconditioning method as described in |
| https://arxiv.org/abs/2511.09546. |
| optimizer_precond_gmres_krylov_subspace_size (:obj:`int`): |
| Size of Krylov subspace built up during GMRES method for the inversion |
| of the preconditioner. |
| optimizer_precond_gmres_maxiter (:obj:`int`): |
| Maximal number of outer iterations inside the GMRES method for the |
| inversion of the preconditioner. |
| line_search_method (:obj:`Line_Search_Methods`): |
| Method used for the line search routine. |
| line_search_initial_step_size (:obj:`float`): |
| Initial step size for the line search routine. |
| line_search_reduction_factor (:obj:`float`): |
| Reduction factor between two line search steps. |
| line_search_max_steps (:obj:`int`): |
| Maximal number of steps in the line search routine. |
| line_search_armijo_const (:obj:`float`): |
| Constant used in Armijo line search method. |
| line_search_wolfe_const (:obj:`float`): |
| Constant used in Wolfe line search method. |
| line_search_use_last_step_size (:obj:`bool`): |
| Flag if the line search should start from the step size of the |
| previous optimizer step. |
| line_search_hager_zhang_quad_step (:obj:`bool`): |
| Use QuadStep method in Hager-Zhang line search to find initial |
| step size. |
| line_search_hager_zhang_delta (:obj:`float`): |
| Constant used in Hager-Zhang line search method. |
| line_search_hager_zhang_sigma (:obj:`float`): |
| Constant used in Hager-Zhang line search method. |
| line_search_hager_zhang_psi_0 (:obj:`float`): |
| Constant used in Hager-Zhang line search method. |
| line_search_hager_zhang_psi_1 (:obj:`float`): |
| Constant used in Hager-Zhang line search method. |
| line_search_hager_zhang_psi_2 (:obj:`float`): |
| Constant used in Hager-Zhang line search method. |
| line_search_hager_zhang_eps (:obj:`float`): |
| Constant used in Hager-Zhang line search method. |
| line_search_hager_zhang_theta (:obj:`float`): |
| Constant used in Hager-Zhang line search method. |
| line_search_hager_zhang_gamma (:obj:`float`): |
| Constant used in Hager-Zhang line search method. |
| line_search_hager_zhang_rho (:obj:`float`): |
| Constant used in Hager-Zhang line search method. |
| line_search_hager_zhang_eps_use_grad_norm (:obj:`bool`): |
| Use norm of gradient multiplied by |
| :obj:`VariPEPS_Config.line_search_hager_zhang_eps_grad_norm_factor` to |
| calculate eps value in Hager-Zhang line search. If disabled, the fixed |
| value from config parameter |
| :obj:`VariPEPS_Config.line_search_hager_zhang_eps` is used. |
| line_search_hager_zhang_eps_grad_norm_factor (:obj:`float`): |
| Factor used for gradient based eps calculation. See parameter |
| :obj:`VariPEPS_Config.line_search_hager_zhang_eps_use_grad_norm` |
| for details. |
| basinhopping_niter (:obj:`int`): |
| Value for parameter `niter` of :obj:`scipy.optimize.basinhopping`. |
| See this function for details. |
| basinhopping_T (:obj:`int`): |
| Value for parameter `T` of :obj:`scipy.optimize.basinhopping`. |
| See this function for details. |
| basinhopping_niter_success (:obj:`int`): |
| Value for parameter `niterniter_success` of |
| :obj:`scipy.optimize.basinhopping`. See this function for details. |
| spiral_wavevector_type (:obj:`Wavevector_Type`): |
| Type of wavevector to be used (only positive/symmetric interval/...). |
| slurm_restart_mode (:obj:`Slurm_Restart_Mode`): |
| Mode of operation to restart slurm job if maximal runtime is reached. |
| jax_compilation_cache_memory_factor (:obj:`float`): |
| Limit the jax compilation cache to maximal this factor times the total |
| available memory. |
| """ |
|
|
| |
| ad_use_custom_vjp: bool = True |
| ad_custom_print_steps: bool = False |
| ad_custom_verbose_output: bool = False |
| ad_custom_convergence_eps: float = 1e-7 |
| ad_custom_max_steps: int = 75 |
| ad_custom_fixed_point_method: Grad_Fixed_Point_Method = ( |
| Grad_Fixed_Point_Method.LINEAR_SOLVER |
| ) |
| checkpointing_ncon: bool = False |
| checkpointing_projectors: bool = False |
|
|
| |
| ctmrg_convergence_eps: float = 1e-8 |
| ctmrg_enforce_elementwise_convergence: bool = True |
| ctmrg_max_steps: int = 75 |
| ctmrg_print_steps: bool = False |
| ctmrg_verbose_output: bool = False |
| ctmrg_truncation_eps: float = 1e-12 |
| ctmrg_fail_if_not_converged: bool = True |
| ctmrg_full_projector_method: Projector_Method = Projector_Method.FISHMAN |
| ctmrg_increase_truncation_eps: bool = True |
| ctmrg_increase_truncation_eps_factor: float = 100.0 |
| ctmrg_increase_truncation_eps_max_value: float = 1e-6 |
| ctmrg_heuristic_increase_chi: bool = True |
| ctmrg_heuristic_increase_chi_threshold: float = 1e-6 |
| ctmrg_heuristic_increase_chi_step_size: int = 2 |
| ctmrg_heuristic_decrease_chi: bool = True |
| ctmrg_heuristic_decrease_chi_step_size: int = 1 |
|
|
| |
| triangular_ctmrg_use_split: bool = False |
|
|
| |
| svd_sign_fix_eps: float = 1e-1 |
| svd_ad_use_lorentz_broadening: bool = False |
| svd_ad_lorentz_broadening_eps: float = 1e-13 |
|
|
| |
| optimizer_method: Optimizing_Methods = Optimizing_Methods.L_BFGS |
| optimizer_max_steps: int = 300 |
| optimizer_convergence_eps: float = 1e-5 |
| optimizer_ctmrg_preconverged_eps: float = 1e-5 |
| optimizer_fail_if_no_step_size_found: bool = False |
| optimizer_l_bfgs_maxlen: int = 15 |
| optimizer_preconverge_with_half_projectors: bool = False |
| optimizer_preconverge_with_half_projectors_eps: float = 1e-3 |
| optimizer_autosave_step_count: int = 2 |
| optimizer_random_noise_eps: float = 1e-4 |
| optimizer_random_noise_max_retries: int = 5 |
| optimizer_random_noise_relative_amplitude: float = 1e-1 |
| optimizer_reuse_env_eps: float = 1e-3 |
| optimizer_use_preconditioning: bool = True |
| optimizer_precond_gmres_krylov_subspace_size: int = 30 |
| optimizer_precond_gmres_maxiter: int = 3 |
|
|
| |
| line_search_method: Line_Search_Methods = Line_Search_Methods.HAGERZHANG |
| line_search_initial_step_size: float = 1.0 |
| line_search_reduction_factor: float = 0.5 |
| line_search_max_steps: int = 40 |
| line_search_armijo_const: float = 1e-4 |
| line_search_wolfe_const: float = 0.9 |
| line_search_use_last_step_size: bool = False |
|
|
| line_search_hager_zhang_quad_step: bool = True |
| line_search_hager_zhang_delta: float = 0.1 |
| line_search_hager_zhang_sigma: float = 0.9 |
| line_search_hager_zhang_psi_0: float = 0.01 |
| line_search_hager_zhang_psi_1: float = 0.1 |
| line_search_hager_zhang_psi_2: float = 2.0 |
| line_search_hager_zhang_eps: float = 1e-6 |
| line_search_hager_zhang_theta: float = 0.5 |
| line_search_hager_zhang_gamma: float = 0.66 |
| line_search_hager_zhang_rho: float = 5 |
| line_search_hager_zhang_eps_use_grad_norm: bool = True |
| line_search_hager_zhang_eps_grad_norm_factor: float = 1e-2 |
|
|
| |
| basinhopping_niter: int = 20 |
| basinhopping_T: float = 0.001 |
| basinhopping_niter_success: int = 5 |
|
|
| |
| spiral_wavevector_type: Wavevector_Type = Wavevector_Type.TWO_PI_POSITIVE_ONLY |
|
|
| |
| slurm_restart_mode: Slurm_Restart_Mode = Slurm_Restart_Mode.WRITE_NEED_RESTART_FILE |
|
|
| |
| jax_compilation_cache_memory_factor: float = 0.5 |
|
|
| def update(self, name: str, value: Any) -> NoReturn: |
| self.__setattr__(name, value) |
|
|
| def __setattr__(self, name: str, value: Any) -> NoReturn: |
| try: |
| field = self.__dataclass_fields__[name] |
| except KeyError as e: |
| raise KeyError(f"Unknown config option '{name}'.") from e |
|
|
| if not type(value) is field.type: |
| if field.type is float and type(value) is int: |
| value = float(value) |
| elif ( |
| field.type is float |
| and hasattr(value, "dtype") |
| and ( |
| np.issubdtype(value.dtype, np.floating) |
| or np.issubdtype(value.dtype, np.integer) |
| ) |
| and value.size == 1 |
| ): |
| if value.ndim > 0: |
| value = value.reshape(-1)[0] |
| value = float(value) |
| elif ( |
| field.type is int |
| and hasattr(value, "dtype") |
| and np.issubdtype(value.dtype, np.integer) |
| and value.size == 1 |
| ): |
| if value.ndim > 0: |
| value = value.reshape(-1)[0] |
| value = int(value) |
| elif ( |
| field.type is bool |
| and hasattr(value, "dtype") |
| and np.isdtype(value.dtype, np.bool) |
| and value.size == 1 |
| ): |
| if value.ndim > 0: |
| value = value.reshape(-1)[0] |
| value = bool(value) |
| else: |
| raise TypeError( |
| f"Type mismatch for option '{name}', got '{type(value)}', expected '{field.type}'." |
| ) |
|
|
| super().__setattr__(name, value) |
|
|
| def update_from_config_dict(self, new_config): |
| for k in self.__dataclass_fields__: |
| setattr(self, k, new_config[k]) |
|
|
| def update_from_config_object(self, new_config): |
| for k in self.__dataclass_fields__: |
| setattr(self, k, getattr(new_config, k)) |
|
|
| def tree_flatten(self) -> Tuple[Tuple[Any, ...], Tuple[Any, ...]]: |
| aux_data = ( |
| {name: getattr(self, name) for name in self.__dataclass_fields__.keys()}, |
| ) |
|
|
| return ((), aux_data) |
|
|
| @classmethod |
| def tree_unflatten( |
| cls: Type[T_VariPEPS_Config], |
| aux_data: Tuple[Any, ...], |
| children: Tuple[Any, ...], |
| ) -> T_VariPEPS_Config: |
| (data_dict,) = aux_data |
|
|
| return cls(**data_dict) |
|
|
|
|
| config = VariPEPS_Config() |
|
|
|
|
| class ConfigModuleWrapper: |
| __slots__ = { |
| "Optimizing_Methods", |
| "Line_Search_Methods", |
| "Projector_Method", |
| "Wavevector_Type", |
| "Grad_Fixed_Point_Method", |
| "Slurm_Restart_Mode", |
| "VariPEPS_Config", |
| "config", |
| } |
|
|
| def __init__(self): |
| for e in self.__slots__: |
| setattr(self, e, globals()[e]) |
|
|
| def __getattr__(self, name: str) -> Any: |
| if name.startswith("__") or name in self.__slots__: |
| return super().__getattr__(name) |
| else: |
| return getattr(self.config, name) |
|
|
| def __setattr__(self, name: str, value: Any) -> NoReturn: |
| if not name.startswith("__") and name not in self.__slots__: |
| setattr(self.config, name, value) |
| elif not hasattr(self, name): |
| super().__setattr__(name, value) |
| else: |
| raise AttributeError(f"Attribute '{name}' is write-protected.") |
|
|
|
|
| wrapper = ConfigModuleWrapper() |
|
|