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Update bnk_adv_encode.py
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@@ -1,10 +1,10 @@
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import torch
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import numpy as np
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import itertools
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from math import gcd
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#from math import gcd
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from comfy import model_management
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from comfy.sdxl_clip import SDXLClipModel, SDXLRefinerClipModel, SDXLClipG
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from comfy.sdxl_clip import SDXLClipModel
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def _grouper(n, iterable):
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it = iter(iterable)
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@@ -235,11 +235,10 @@ def prepareXL(embs_l, embs_g, pooled, clip_balance):
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return torch.cat([embs_l * l_w, embs_g * g_w], dim=-1), pooled
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else:
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return embs_g, pooled
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#=====================
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def advanced_encode(clip, text, token_normalization, weight_interpretation, w_max=1.0, clip_balance=.5, apply_to_pooled=True):
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tokenized = clip.tokenize(text, return_word_ids=True)
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if isinstance(clip.cond_stage_model, (SDXLClipModel, SDXLRefinerClipModel, SDXLClipG)):
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if isinstance(tokenized, dict):
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embs_l = None
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embs_g = None
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pooled = None
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@@ -273,32 +272,6 @@ def advanced_encode(clip, text, token_normalization, weight_interpretation, w_ma
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lambda x: (clip.encode_from_tokens(x), None),
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w_max=w_max)
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#=====================
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def advanced_encode_XL(clip, text1, text2, token_normalization, weight_interpretation, w_max=1.0, clip_balance=.5, apply_to_pooled=True):
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tokenized1 = clip.tokenize(text1, return_word_ids=True)
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tokenized2 = clip.tokenize(text2, return_word_ids=True)
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embs_l, _ = advanced_encode_from_tokens(tokenized1['l'],
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token_normalization,
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weight_interpretation,
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lambda x: encode_token_weights(clip, x, encode_token_weights_l),
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w_max=w_max,
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return_pooled=False)
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embs_g, pooled = advanced_encode_from_tokens(tokenized2['g'],
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token_normalization,
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weight_interpretation,
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lambda x: encode_token_weights(clip, x, encode_token_weights_g),
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w_max=w_max,
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return_pooled=True,
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apply_to_pooled=apply_to_pooled)
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gcd_num = gcd(embs_l.shape[1], embs_g.shape[1])
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repeat_l = int((embs_g.shape[1] / gcd_num) * embs_l.shape[1])
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repeat_g = int((embs_l.shape[1] / gcd_num) * embs_g.shape[1])
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return prepareXL(embs_l.expand((-1,repeat_l,-1)), embs_g.expand((-1,repeat_g,-1)), pooled, clip_balance)
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########################################################################################################################
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from nodes import MAX_RESOLUTION
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