credit.ensemble.bred_vector#
Attributes#
Functions#
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Generate bred vectors and initialize initial conditions for the given batch. |
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Generate bred vectors and initialize initial conditions for the given batch. |
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Clones a PyTorch Dataset by creating a deep copy. |
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Adjusts the start times by subtracting 24 hours. |
Module Contents#
- credit.ensemble.bred_vector.generate_bred_vectors(x_batch, model, num_cycles=5, perturbation_std=0.15, epsilon=1.0, flag_clamp=False, clamp_min=None, clamp_max=None)#
Generate bred vectors and initialize initial conditions for the given batch.
- Parameters:
x_batch (torch.Tensor) – The input batch.
batch (dict) – A dictionary containing additional batch data.
model (nn.Module) – The model used for predictions.
num_cycles (int) – Number of perturbation cycles.
perturbation_std (float) – Magnitude of initial perturbations.
epsilon (float) – Scaling factor for bred vectors.
flag_clamp (bool, optional) – Whether to clamp inputs. Defaults to False.
clamp_min (float, optional) – Minimum clamp value. Required if flag_clamp is True.
clamp_max (float, optional) – Maximum clamp value. Required if flag_clamp is True.
- Returns:
List of initial conditions generated using bred vectors.
- Return type:
list[torch.Tensor]
- credit.ensemble.bred_vector.generate_bred_vectors_cycle(initial_condition, dataset, model, num_cycles=5, perturbation_std=0.15, epsilon=1.0, flag_clamp=False, clamp_min=None, clamp_max=None, device='cuda', history_len=1, varnum_diag=None, static_dim_size=None, post_conf={})#
Generate bred vectors and initialize initial conditions for the given batch.
- Parameters:
x_batch (torch.Tensor) – The input batch.
batch (dict) – A dictionary containing additional batch data.
model (nn.Module) – The model used for predictions.
num_cycles (int) – Number of perturbation cycles.
perturbation_std (float) – Magnitude of initial perturbations.
epsilon (float) – Scaling factor for bred vectors.
flag_clamp (bool, optional) – Whether to clamp inputs. Defaults to False.
clamp_min (float, optional) – Minimum clamp value. Required if flag_clamp is True.
clamp_max (float, optional) – Maximum clamp value. Required if flag_clamp is True.
- Returns:
List of initial conditions generated using bred vectors.
- Return type:
list[torch.Tensor]
- credit.ensemble.bred_vector.clone_dataset(dataset)#
Clones a PyTorch Dataset by creating a deep copy.
- Parameters:
dataset (torch.utils.data.Dataset) – The original dataset.
- Returns:
A cloned dataset.
- Return type:
torch.utils.data.Dataset
- credit.ensemble.bred_vector.adjust_start_times(time_ranges, hours=24)#
Adjusts the start times by subtracting 24 hours.
- Parameters:
time_ranges (list of lists) – Each sublist contains [start_time, end_time] as strings.
- Returns:
Adjusted time ranges [[start_time - 24hrs, start_time], …]
- Return type:
list of lists
- credit.ensemble.bred_vector.logger#