636 lines
28 KiB
Python
636 lines
28 KiB
Python
import csv
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import datetime
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import glob
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import html
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import os
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import sys
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import traceback
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import inspect
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import modules.textual_inversion.dataset
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import torch
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import tqdm
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from einops import rearrange, repeat
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from ldm.util import default
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from modules import devices, processing, sd_models, shared, sd_samplers
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from modules.textual_inversion import textual_inversion
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from modules.textual_inversion.learn_schedule import LearnRateScheduler
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from torch import einsum
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from torch.nn.init import normal_, xavier_normal_, xavier_uniform_, kaiming_normal_, kaiming_uniform_, zeros_
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from collections import defaultdict, deque
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from statistics import stdev, mean
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optimizer_dict = {optim_name : cls_obj for optim_name, cls_obj in inspect.getmembers(torch.optim, inspect.isclass) if optim_name != "Optimizer"}
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class HypernetworkModule(torch.nn.Module):
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multiplier = 1.0
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activation_dict = {
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"linear": torch.nn.Identity,
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"relu": torch.nn.ReLU,
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"leakyrelu": torch.nn.LeakyReLU,
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"elu": torch.nn.ELU,
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"swish": torch.nn.Hardswish,
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"tanh": torch.nn.Tanh,
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"sigmoid": torch.nn.Sigmoid,
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}
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activation_dict.update({cls_name.lower(): cls_obj for cls_name, cls_obj in inspect.getmembers(torch.nn.modules.activation) if inspect.isclass(cls_obj) and cls_obj.__module__ == 'torch.nn.modules.activation'})
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def __init__(self, dim, state_dict=None, layer_structure=None, activation_func=None, weight_init='Normal',
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add_layer_norm=False, use_dropout=False, activate_output=False, last_layer_dropout=False):
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super().__init__()
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assert layer_structure is not None, "layer_structure must not be None"
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assert layer_structure[0] == 1, "Multiplier Sequence should start with size 1!"
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assert layer_structure[-1] == 1, "Multiplier Sequence should end with size 1!"
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linears = []
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for i in range(len(layer_structure) - 1):
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# Add a fully-connected layer
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linears.append(torch.nn.Linear(int(dim * layer_structure[i]), int(dim * layer_structure[i+1])))
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# Add an activation func except last layer
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if activation_func == "linear" or activation_func is None or (i >= len(layer_structure) - 2 and not activate_output):
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pass
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elif activation_func in self.activation_dict:
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linears.append(self.activation_dict[activation_func]())
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else:
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raise RuntimeError(f'hypernetwork uses an unsupported activation function: {activation_func}')
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# Add layer normalization
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if add_layer_norm:
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linears.append(torch.nn.LayerNorm(int(dim * layer_structure[i+1])))
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# Add dropout except last layer
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if use_dropout and (i < len(layer_structure) - 3 or last_layer_dropout and i < len(layer_structure) - 2):
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linears.append(torch.nn.Dropout(p=0.3))
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self.linear = torch.nn.Sequential(*linears)
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if state_dict is not None:
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self.fix_old_state_dict(state_dict)
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self.load_state_dict(state_dict)
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else:
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for layer in self.linear:
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if type(layer) == torch.nn.Linear or type(layer) == torch.nn.LayerNorm:
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w, b = layer.weight.data, layer.bias.data
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if weight_init == "Normal" or type(layer) == torch.nn.LayerNorm:
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normal_(w, mean=0.0, std=0.01)
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normal_(b, mean=0.0, std=0)
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elif weight_init == 'XavierUniform':
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xavier_uniform_(w)
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zeros_(b)
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elif weight_init == 'XavierNormal':
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xavier_normal_(w)
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zeros_(b)
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elif weight_init == 'KaimingUniform':
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kaiming_uniform_(w, nonlinearity='leaky_relu' if 'leakyrelu' == activation_func else 'relu')
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zeros_(b)
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elif weight_init == 'KaimingNormal':
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kaiming_normal_(w, nonlinearity='leaky_relu' if 'leakyrelu' == activation_func else 'relu')
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zeros_(b)
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else:
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raise KeyError(f"Key {weight_init} is not defined as initialization!")
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self.to(devices.device)
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def fix_old_state_dict(self, state_dict):
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changes = {
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'linear1.bias': 'linear.0.bias',
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'linear1.weight': 'linear.0.weight',
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'linear2.bias': 'linear.1.bias',
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'linear2.weight': 'linear.1.weight',
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}
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for fr, to in changes.items():
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x = state_dict.get(fr, None)
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if x is None:
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continue
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del state_dict[fr]
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state_dict[to] = x
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def forward(self, x):
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return x + self.linear(x) * self.multiplier
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def trainables(self):
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layer_structure = []
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for layer in self.linear:
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if type(layer) == torch.nn.Linear or type(layer) == torch.nn.LayerNorm:
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layer_structure += [layer.weight, layer.bias]
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return layer_structure
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def apply_strength(value=None):
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HypernetworkModule.multiplier = value if value is not None else shared.opts.sd_hypernetwork_strength
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class Hypernetwork:
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filename = None
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name = None
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def __init__(self, name=None, enable_sizes=None, layer_structure=None, activation_func=None, weight_init=None, add_layer_norm=False, use_dropout=False, activate_output=False, **kwargs):
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self.filename = None
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self.name = name
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self.layers = {}
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self.step = 0
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self.sd_checkpoint = None
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self.sd_checkpoint_name = None
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self.layer_structure = layer_structure
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self.activation_func = activation_func
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self.weight_init = weight_init
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self.add_layer_norm = add_layer_norm
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self.use_dropout = use_dropout
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self.activate_output = activate_output
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self.last_layer_dropout = kwargs['last_layer_dropout'] if 'last_layer_dropout' in kwargs else True
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self.optimizer_name = None
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self.optimizer_state_dict = None
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for size in enable_sizes or []:
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self.layers[size] = (
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HypernetworkModule(size, None, self.layer_structure, self.activation_func, self.weight_init,
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self.add_layer_norm, self.use_dropout, self.activate_output, last_layer_dropout=self.last_layer_dropout),
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HypernetworkModule(size, None, self.layer_structure, self.activation_func, self.weight_init,
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self.add_layer_norm, self.use_dropout, self.activate_output, last_layer_dropout=self.last_layer_dropout),
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)
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self.eval_mode()
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def weights(self):
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res = []
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for k, layers in self.layers.items():
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for layer in layers:
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res += layer.parameters()
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return res
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def train_mode(self):
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for k, layers in self.layers.items():
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for layer in layers:
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layer.train()
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for param in layer.parameters():
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param.requires_grad = True
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def eval_mode(self):
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for k, layers in self.layers.items():
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for layer in layers:
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layer.eval()
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for param in layer.parameters():
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param.requires_grad = False
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def save(self, filename):
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state_dict = {}
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optimizer_saved_dict = {}
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for k, v in self.layers.items():
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state_dict[k] = (v[0].state_dict(), v[1].state_dict())
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state_dict['step'] = self.step
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state_dict['name'] = self.name
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state_dict['layer_structure'] = self.layer_structure
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state_dict['activation_func'] = self.activation_func
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state_dict['is_layer_norm'] = self.add_layer_norm
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state_dict['weight_initialization'] = self.weight_init
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state_dict['use_dropout'] = self.use_dropout
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state_dict['sd_checkpoint'] = self.sd_checkpoint
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state_dict['sd_checkpoint_name'] = self.sd_checkpoint_name
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state_dict['activate_output'] = self.activate_output
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state_dict['last_layer_dropout'] = self.last_layer_dropout
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if self.optimizer_name is not None:
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optimizer_saved_dict['optimizer_name'] = self.optimizer_name
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torch.save(state_dict, filename)
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if shared.opts.save_optimizer_state and self.optimizer_state_dict:
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optimizer_saved_dict['hash'] = sd_models.model_hash(filename)
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optimizer_saved_dict['optimizer_state_dict'] = self.optimizer_state_dict
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torch.save(optimizer_saved_dict, filename + '.optim')
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def load(self, filename):
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self.filename = filename
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if self.name is None:
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self.name = os.path.splitext(os.path.basename(filename))[0]
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state_dict = torch.load(filename, map_location='cpu')
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self.layer_structure = state_dict.get('layer_structure', [1, 2, 1])
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print(self.layer_structure)
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self.activation_func = state_dict.get('activation_func', None)
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print(f"Activation function is {self.activation_func}")
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self.weight_init = state_dict.get('weight_initialization', 'Normal')
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print(f"Weight initialization is {self.weight_init}")
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self.add_layer_norm = state_dict.get('is_layer_norm', False)
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print(f"Layer norm is set to {self.add_layer_norm}")
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self.use_dropout = state_dict.get('use_dropout', False)
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print(f"Dropout usage is set to {self.use_dropout}" )
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self.activate_output = state_dict.get('activate_output', True)
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print(f"Activate last layer is set to {self.activate_output}")
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self.last_layer_dropout = state_dict.get('last_layer_dropout', False)
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optimizer_saved_dict = torch.load(self.filename + '.optim', map_location = 'cpu') if os.path.exists(self.filename + '.optim') else {}
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self.optimizer_name = optimizer_saved_dict.get('optimizer_name', 'AdamW')
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print(f"Optimizer name is {self.optimizer_name}")
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if sd_models.model_hash(filename) == optimizer_saved_dict.get('hash', None):
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self.optimizer_state_dict = optimizer_saved_dict.get('optimizer_state_dict', None)
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else:
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self.optimizer_state_dict = None
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if self.optimizer_state_dict:
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print("Loaded existing optimizer from checkpoint")
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else:
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print("No saved optimizer exists in checkpoint")
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for size, sd in state_dict.items():
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if type(size) == int:
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self.layers[size] = (
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HypernetworkModule(size, sd[0], self.layer_structure, self.activation_func, self.weight_init,
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self.add_layer_norm, self.use_dropout, self.activate_output, last_layer_dropout=self.last_layer_dropout),
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HypernetworkModule(size, sd[1], self.layer_structure, self.activation_func, self.weight_init,
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self.add_layer_norm, self.use_dropout, self.activate_output, last_layer_dropout=self.last_layer_dropout),
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)
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self.name = state_dict.get('name', self.name)
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self.step = state_dict.get('step', 0)
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self.sd_checkpoint = state_dict.get('sd_checkpoint', None)
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self.sd_checkpoint_name = state_dict.get('sd_checkpoint_name', None)
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def list_hypernetworks(path):
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res = {}
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for filename in sorted(glob.iglob(os.path.join(path, '**/*.pt'), recursive=True)):
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name = os.path.splitext(os.path.basename(filename))[0]
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# Prevent a hypothetical "None.pt" from being listed.
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if name != "None":
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res[name + f"({sd_models.model_hash(filename)})"] = filename
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return res
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def load_hypernetwork(filename):
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path = shared.hypernetworks.get(filename, None)
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# Prevent any file named "None.pt" from being loaded.
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if path is not None and filename != "None":
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print(f"Loading hypernetwork {filename}")
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try:
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shared.loaded_hypernetwork = Hypernetwork()
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shared.loaded_hypernetwork.load(path)
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except Exception:
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print(f"Error loading hypernetwork {path}", file=sys.stderr)
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print(traceback.format_exc(), file=sys.stderr)
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else:
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if shared.loaded_hypernetwork is not None:
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print(f"Unloading hypernetwork")
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shared.loaded_hypernetwork = None
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def find_closest_hypernetwork_name(search: str):
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if not search:
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return None
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search = search.lower()
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applicable = [name for name in shared.hypernetworks if search in name.lower()]
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if not applicable:
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return None
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applicable = sorted(applicable, key=lambda name: len(name))
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return applicable[0]
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def apply_hypernetwork(hypernetwork, context, layer=None):
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hypernetwork_layers = (hypernetwork.layers if hypernetwork is not None else {}).get(context.shape[2], None)
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if hypernetwork_layers is None:
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return context, context
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if layer is not None:
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layer.hyper_k = hypernetwork_layers[0]
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layer.hyper_v = hypernetwork_layers[1]
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context_k = hypernetwork_layers[0](context)
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context_v = hypernetwork_layers[1](context)
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return context_k, context_v
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def attention_CrossAttention_forward(self, x, context=None, mask=None):
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h = self.heads
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q = self.to_q(x)
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context = default(context, x)
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context_k, context_v = apply_hypernetwork(shared.loaded_hypernetwork, context, self)
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k = self.to_k(context_k)
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v = self.to_v(context_v)
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q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> (b h) n d', h=h), (q, k, v))
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sim = einsum('b i d, b j d -> b i j', q, k) * self.scale
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if mask is not None:
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mask = rearrange(mask, 'b ... -> b (...)')
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max_neg_value = -torch.finfo(sim.dtype).max
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mask = repeat(mask, 'b j -> (b h) () j', h=h)
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sim.masked_fill_(~mask, max_neg_value)
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# attention, what we cannot get enough of
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attn = sim.softmax(dim=-1)
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out = einsum('b i j, b j d -> b i d', attn, v)
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out = rearrange(out, '(b h) n d -> b n (h d)', h=h)
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return self.to_out(out)
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def stack_conds(conds):
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if len(conds) == 1:
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return torch.stack(conds)
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# same as in reconstruct_multicond_batch
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token_count = max([x.shape[0] for x in conds])
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for i in range(len(conds)):
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if conds[i].shape[0] != token_count:
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last_vector = conds[i][-1:]
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last_vector_repeated = last_vector.repeat([token_count - conds[i].shape[0], 1])
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conds[i] = torch.vstack([conds[i], last_vector_repeated])
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return torch.stack(conds)
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def statistics(data):
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if len(data) < 2:
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std = 0
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else:
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std = stdev(data)
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total_information = f"loss:{mean(data):.3f}" + u"\u00B1" + f"({std/ (len(data) ** 0.5):.3f})"
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recent_data = data[-32:]
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if len(recent_data) < 2:
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std = 0
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else:
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std = stdev(recent_data)
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recent_information = f"recent 32 loss:{mean(recent_data):.3f}" + u"\u00B1" + f"({std / (len(recent_data) ** 0.5):.3f})"
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return total_information, recent_information
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def report_statistics(loss_info:dict):
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keys = sorted(loss_info.keys(), key=lambda x: sum(loss_info[x]) / len(loss_info[x]))
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for key in keys:
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try:
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print("Loss statistics for file " + key)
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info, recent = statistics(list(loss_info[key]))
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print(info)
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print(recent)
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except Exception as e:
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print(e)
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def train_hypernetwork(hypernetwork_name, learn_rate, batch_size, gradient_step, data_root, log_directory, training_width, training_height, steps, shuffle_tags, tag_drop_out, latent_sampling_method, create_image_every, save_hypernetwork_every, template_file, preview_from_txt2img, preview_prompt, preview_negative_prompt, preview_steps, preview_sampler_index, preview_cfg_scale, preview_seed, preview_width, preview_height):
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# images allows training previews to have infotext. Importing it at the top causes a circular import problem.
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from modules import images
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save_hypernetwork_every = save_hypernetwork_every or 0
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create_image_every = create_image_every or 0
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textual_inversion.validate_train_inputs(hypernetwork_name, learn_rate, batch_size, gradient_step, data_root, template_file, steps, save_hypernetwork_every, create_image_every, log_directory, name="hypernetwork")
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path = shared.hypernetworks.get(hypernetwork_name, None)
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shared.loaded_hypernetwork = Hypernetwork()
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shared.loaded_hypernetwork.load(path)
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shared.state.textinfo = "Initializing hypernetwork training..."
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shared.state.job_count = steps
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hypernetwork_name = hypernetwork_name.rsplit('(', 1)[0]
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filename = os.path.join(shared.cmd_opts.hypernetwork_dir, f'{hypernetwork_name}.pt')
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log_directory = os.path.join(log_directory, datetime.datetime.now().strftime("%Y-%m-%d"), hypernetwork_name)
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unload = shared.opts.unload_models_when_training
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if save_hypernetwork_every > 0:
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hypernetwork_dir = os.path.join(log_directory, "hypernetworks")
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os.makedirs(hypernetwork_dir, exist_ok=True)
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else:
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hypernetwork_dir = None
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if create_image_every > 0:
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images_dir = os.path.join(log_directory, "images")
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os.makedirs(images_dir, exist_ok=True)
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else:
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images_dir = None
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hypernetwork = shared.loaded_hypernetwork
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checkpoint = sd_models.select_checkpoint()
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initial_step = hypernetwork.step or 0
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if initial_step >= steps:
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shared.state.textinfo = f"Model has already been trained beyond specified max steps"
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return hypernetwork, filename
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scheduler = LearnRateScheduler(learn_rate, steps, initial_step)
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# dataset loading may take a while, so input validations and early returns should be done before this
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shared.state.textinfo = f"Preparing dataset from {html.escape(data_root)}..."
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pin_memory = shared.opts.pin_memory
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ds = modules.textual_inversion.dataset.PersonalizedBase(data_root=data_root, width=training_width, height=training_height, repeats=shared.opts.training_image_repeats_per_epoch, placeholder_token=hypernetwork_name, model=shared.sd_model, cond_model=shared.sd_model.cond_stage_model, device=devices.device, template_file=template_file, include_cond=True, batch_size=batch_size, gradient_step=gradient_step, shuffle_tags=shuffle_tags, tag_drop_out=tag_drop_out, latent_sampling_method=latent_sampling_method)
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latent_sampling_method = ds.latent_sampling_method
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dl = modules.textual_inversion.dataset.PersonalizedDataLoader(ds, latent_sampling_method=latent_sampling_method, batch_size=ds.batch_size, pin_memory=pin_memory)
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if unload:
|
|
shared.sd_model.cond_stage_model.to(devices.cpu)
|
|
shared.sd_model.first_stage_model.to(devices.cpu)
|
|
|
|
weights = hypernetwork.weights()
|
|
hypernetwork.train_mode()
|
|
|
|
# Here we use optimizer from saved HN, or we can specify as UI option.
|
|
if hypernetwork.optimizer_name in optimizer_dict:
|
|
optimizer = optimizer_dict[hypernetwork.optimizer_name](params=weights, lr=scheduler.learn_rate)
|
|
optimizer_name = hypernetwork.optimizer_name
|
|
else:
|
|
print(f"Optimizer type {hypernetwork.optimizer_name} is not defined!")
|
|
optimizer = torch.optim.AdamW(params=weights, lr=scheduler.learn_rate)
|
|
optimizer_name = 'AdamW'
|
|
|
|
if hypernetwork.optimizer_state_dict: # This line must be changed if Optimizer type can be different from saved optimizer.
|
|
try:
|
|
optimizer.load_state_dict(hypernetwork.optimizer_state_dict)
|
|
except RuntimeError as e:
|
|
print("Cannot resume from saved optimizer!")
|
|
print(e)
|
|
|
|
scaler = torch.cuda.amp.GradScaler()
|
|
|
|
batch_size = ds.batch_size
|
|
gradient_step = ds.gradient_step
|
|
# n steps = batch_size * gradient_step * n image processed
|
|
steps_per_epoch = len(ds) // batch_size // gradient_step
|
|
max_steps_per_epoch = len(ds) // batch_size - (len(ds) // batch_size) % gradient_step
|
|
loss_step = 0
|
|
_loss_step = 0 #internal
|
|
# size = len(ds.indexes)
|
|
# loss_dict = defaultdict(lambda : deque(maxlen = 1024))
|
|
# losses = torch.zeros((size,))
|
|
# previous_mean_losses = [0]
|
|
# previous_mean_loss = 0
|
|
# print("Mean loss of {} elements".format(size))
|
|
|
|
steps_without_grad = 0
|
|
|
|
last_saved_file = "<none>"
|
|
last_saved_image = "<none>"
|
|
forced_filename = "<none>"
|
|
|
|
pbar = tqdm.tqdm(total=steps - initial_step)
|
|
try:
|
|
for i in range((steps-initial_step) * gradient_step):
|
|
if scheduler.finished:
|
|
break
|
|
if shared.state.interrupted:
|
|
break
|
|
for j, batch in enumerate(dl):
|
|
# works as a drop_last=True for gradient accumulation
|
|
if j == max_steps_per_epoch:
|
|
break
|
|
scheduler.apply(optimizer, hypernetwork.step)
|
|
if scheduler.finished:
|
|
break
|
|
if shared.state.interrupted:
|
|
break
|
|
|
|
with devices.autocast():
|
|
x = batch.latent_sample.to(devices.device, non_blocking=pin_memory)
|
|
if tag_drop_out != 0 or shuffle_tags:
|
|
shared.sd_model.cond_stage_model.to(devices.device)
|
|
c = shared.sd_model.cond_stage_model(batch.cond_text).to(devices.device, non_blocking=pin_memory)
|
|
shared.sd_model.cond_stage_model.to(devices.cpu)
|
|
else:
|
|
c = stack_conds(batch.cond).to(devices.device, non_blocking=pin_memory)
|
|
loss = shared.sd_model(x, c)[0] / gradient_step
|
|
del x
|
|
del c
|
|
|
|
_loss_step += loss.item()
|
|
scaler.scale(loss).backward()
|
|
# go back until we reach gradient accumulation steps
|
|
if (j + 1) % gradient_step != 0:
|
|
continue
|
|
# print(f"grad:{weights[0].grad.detach().cpu().abs().mean().item():.7f}")
|
|
# scaler.unscale_(optimizer)
|
|
# print(f"grad:{weights[0].grad.detach().cpu().abs().mean().item():.15f}")
|
|
# torch.nn.utils.clip_grad_norm_(weights, max_norm=1.0)
|
|
# print(f"grad:{weights[0].grad.detach().cpu().abs().mean().item():.15f}")
|
|
scaler.step(optimizer)
|
|
scaler.update()
|
|
hypernetwork.step += 1
|
|
pbar.update()
|
|
optimizer.zero_grad(set_to_none=True)
|
|
loss_step = _loss_step
|
|
_loss_step = 0
|
|
|
|
steps_done = hypernetwork.step + 1
|
|
|
|
epoch_num = hypernetwork.step // steps_per_epoch
|
|
epoch_step = hypernetwork.step % steps_per_epoch
|
|
|
|
pbar.set_description(f"[Epoch {epoch_num}: {epoch_step+1}/{steps_per_epoch}]loss: {loss_step:.7f}")
|
|
if hypernetwork_dir is not None and steps_done % save_hypernetwork_every == 0:
|
|
# Before saving, change name to match current checkpoint.
|
|
hypernetwork_name_every = f'{hypernetwork_name}-{steps_done}'
|
|
last_saved_file = os.path.join(hypernetwork_dir, f'{hypernetwork_name_every}.pt')
|
|
hypernetwork.optimizer_name = optimizer_name
|
|
if shared.opts.save_optimizer_state:
|
|
hypernetwork.optimizer_state_dict = optimizer.state_dict()
|
|
save_hypernetwork(hypernetwork, checkpoint, hypernetwork_name, last_saved_file)
|
|
hypernetwork.optimizer_state_dict = None # dereference it after saving, to save memory.
|
|
|
|
textual_inversion.write_loss(log_directory, "hypernetwork_loss.csv", hypernetwork.step, steps_per_epoch, {
|
|
"loss": f"{loss_step:.7f}",
|
|
"learn_rate": scheduler.learn_rate
|
|
})
|
|
|
|
if images_dir is not None and steps_done % create_image_every == 0:
|
|
forced_filename = f'{hypernetwork_name}-{steps_done}'
|
|
last_saved_image = os.path.join(images_dir, forced_filename)
|
|
hypernetwork.eval_mode()
|
|
shared.sd_model.cond_stage_model.to(devices.device)
|
|
shared.sd_model.first_stage_model.to(devices.device)
|
|
|
|
p = processing.StableDiffusionProcessingTxt2Img(
|
|
sd_model=shared.sd_model,
|
|
do_not_save_grid=True,
|
|
do_not_save_samples=True,
|
|
)
|
|
|
|
if preview_from_txt2img:
|
|
p.prompt = preview_prompt
|
|
p.negative_prompt = preview_negative_prompt
|
|
p.steps = preview_steps
|
|
p.sampler_name = sd_samplers.samplers[preview_sampler_index].name
|
|
p.cfg_scale = preview_cfg_scale
|
|
p.seed = preview_seed
|
|
p.width = preview_width
|
|
p.height = preview_height
|
|
else:
|
|
p.prompt = batch.cond_text[0]
|
|
p.steps = 20
|
|
p.width = training_width
|
|
p.height = training_height
|
|
|
|
preview_text = p.prompt
|
|
|
|
processed = processing.process_images(p)
|
|
image = processed.images[0] if len(processed.images) > 0 else None
|
|
|
|
if unload:
|
|
shared.sd_model.cond_stage_model.to(devices.cpu)
|
|
shared.sd_model.first_stage_model.to(devices.cpu)
|
|
hypernetwork.train_mode()
|
|
if image is not None:
|
|
shared.state.current_image = image
|
|
last_saved_image, last_text_info = images.save_image(image, images_dir, "", p.seed, p.prompt, shared.opts.samples_format, processed.infotexts[0], p=p, forced_filename=forced_filename, save_to_dirs=False)
|
|
last_saved_image += f", prompt: {preview_text}"
|
|
|
|
shared.state.job_no = hypernetwork.step
|
|
|
|
shared.state.textinfo = f"""
|
|
<p>
|
|
Loss: {loss_step:.7f}<br/>
|
|
Step: {steps_done}<br/>
|
|
Last prompt: {html.escape(batch.cond_text[0])}<br/>
|
|
Last saved hypernetwork: {html.escape(last_saved_file)}<br/>
|
|
Last saved image: {html.escape(last_saved_image)}<br/>
|
|
</p>
|
|
"""
|
|
except Exception:
|
|
print(traceback.format_exc(), file=sys.stderr)
|
|
finally:
|
|
pbar.leave = False
|
|
pbar.close()
|
|
hypernetwork.eval_mode()
|
|
#report_statistics(loss_dict)
|
|
|
|
filename = os.path.join(shared.cmd_opts.hypernetwork_dir, f'{hypernetwork_name}.pt')
|
|
hypernetwork.optimizer_name = optimizer_name
|
|
if shared.opts.save_optimizer_state:
|
|
hypernetwork.optimizer_state_dict = optimizer.state_dict()
|
|
save_hypernetwork(hypernetwork, checkpoint, hypernetwork_name, filename)
|
|
del optimizer
|
|
hypernetwork.optimizer_state_dict = None # dereference it after saving, to save memory.
|
|
shared.sd_model.cond_stage_model.to(devices.device)
|
|
shared.sd_model.first_stage_model.to(devices.device)
|
|
|
|
return hypernetwork, filename
|
|
|
|
def save_hypernetwork(hypernetwork, checkpoint, hypernetwork_name, filename):
|
|
old_hypernetwork_name = hypernetwork.name
|
|
old_sd_checkpoint = hypernetwork.sd_checkpoint if hasattr(hypernetwork, "sd_checkpoint") else None
|
|
old_sd_checkpoint_name = hypernetwork.sd_checkpoint_name if hasattr(hypernetwork, "sd_checkpoint_name") else None
|
|
try:
|
|
hypernetwork.sd_checkpoint = checkpoint.hash
|
|
hypernetwork.sd_checkpoint_name = checkpoint.model_name
|
|
hypernetwork.name = hypernetwork_name
|
|
hypernetwork.save(filename)
|
|
except:
|
|
hypernetwork.sd_checkpoint = old_sd_checkpoint
|
|
hypernetwork.sd_checkpoint_name = old_sd_checkpoint_name
|
|
hypernetwork.name = old_hypernetwork_name
|
|
raise
|