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import base64
import re
import time
from dataclasses import dataclass
from functools import partial
from io import BytesIO
import gradio as gr
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import CLIPImageProcessor, CLIPVisionModel
from modules import shared
from modules.extensions import apply_extensions
from modules.text_generation import encode, get_max_prompt_length
params = {
"add_all_images_to_prompt": False,
# device to run CLIP on
"clip_device": None,
# bits to load clip in either 32 or 16 (it doesn't support 8-bit)
"clip_bits": 32,
# clip repository
"clip_repo": "openai/clip-vit-large-patch14",
# device to run projector on
"projector_device": None,
# projector bits, either 32 or 16
"projector_bits": 32,
# projector repository
"projector_repo": "liuhaotian/LLaVA-13b-delta-v0",
# file with the projector weights
"projector_file": "mm_projector.bin"
}
# If 'state' is True, will hijack the next chat generation
input_hijack = {
'state': False,
'value': ["", ""]
}
# initialized in ui, so that params are loaded from settings
llava_embedder = None
@dataclass
class Token:
token: str
id: int
class LLaVAEmbedder:
IM_PATCH = Token("<im_patch>", 32000)
IM_START = Token("<im_start>", 32001)
IM_END = Token("<im_end>", 32002)
def __init__(self):
self.clip_device = self._get_device("clip_device")
self.clip_dtype = self._get_dtype("clip_bits")
self.projector_device = self._get_device("projector_device")
self.projector_dtype = self._get_dtype("projector_bits")
self.image_processor, self.vision_tower, self.mm_projector = self._load_models()
def _get_device(self, setting_name):
if params[setting_name] is None:
return torch.device("cuda:0" if torch.cuda.is_available() else "cpu")
return torch.device(params[setting_name])
def _get_dtype(self, setting_name):
return torch.float32 if int(params[setting_name]) == 32 else torch.float16
def _load_models(self):
start_ts = time.time()
print(f"LLaVA - Loading CLIP from {params['clip_repo']} as {self.clip_dtype} on {self.clip_device}...")
image_processor = CLIPImageProcessor.from_pretrained(params["clip_repo"], torch_dtype=self.clip_dtype)
vision_tower = CLIPVisionModel.from_pretrained(params["clip_repo"], torch_dtype=self.clip_dtype).to(self.clip_device)
print(f"LLaVA - Loading projector from {params['projector_repo']} as {self.projector_dtype} on {self.projector_device}...")
projector_path = hf_hub_download(params["projector_repo"], params["projector_file"])
mm_projector = torch.nn.Linear(1024, 5120)
projector_data = torch.load(projector_path)
mm_projector.weight = torch.nn.Parameter(projector_data['model.mm_projector.weight'].to(dtype=self.projector_dtype), False)
mm_projector.bias = torch.nn.Parameter(projector_data['model.mm_projector.bias'].to(dtype=self.projector_dtype), False)
mm_projector = mm_projector.to(self.projector_device)
print(f"LLaVA supporting models loaded, took {time.time() - start_ts:.2f} seconds")
return image_processor, vision_tower, mm_projector
def _update_prompt(self, prompt, images):
for _ in images:
# replace the image token with the image patch token in the prompt (each occurrence)
replace_token = LLaVAEmbedder.IM_PATCH.token * 256
replace_token = LLaVAEmbedder.IM_START.token + replace_token + LLaVAEmbedder.IM_END.token
prompt = re.sub(r'<img src="data:image/jpeg;base64,([A-Za-z0-9+/=]+)">', replace_token, prompt, 1)
return prompt
def _extract_image_features(self, images):
images = self.image_processor(images, return_tensors='pt')['pixel_values']
images = images.to(self.clip_device, dtype=self.clip_dtype)
with torch.no_grad():
image_forward_outs = self.vision_tower(images, output_hidden_states=True)
select_hidden_state_layer = -2
select_hidden_state = image_forward_outs.hidden_states[select_hidden_state_layer]
image_features = select_hidden_state[:, 1:].to(self.projector_device, dtype=self.projector_dtype)
image_features = self.mm_projector(image_features)
return image_features
def forward(self, prompt, images, state):
prompt = self._update_prompt(prompt, images)
input_ids = encode(prompt, add_bos_token=state['add_bos_token'], truncation_length=get_max_prompt_length(state))[0]
input_embeds = shared.model.model.embed_tokens(input_ids).to(self.projector_device)
if input_ids[0] == LLaVAEmbedder.IM_PATCH.id:
# prompt got truncated in the middle of an image, remove the image data
im_end = torch.where(input_ids == LLaVAEmbedder.IM_END.id)[0][0]
input_ids = input_ids[im_end+1:]
input_embeds = input_embeds[im_end+1:]
leftover_images = torch.where(input_ids == LLaVAEmbedder.IM_START.id)[0].shape[0]
print(f"LLaVA - WARNING: removed {len(images) - leftover_images} image(s) from prompt. The generation might be broken, try decreasing max_new_tokens")
images = images[-leftover_images:]
if len(images) == 0:
return prompt, input_ids, input_embeds, 0
total_embedded = 0
image_features = self._extract_image_features(images).to(self.projector_device)
image_start_tokens = torch.where(input_ids == LLaVAEmbedder.IM_START.id)[0]
if not torch.any(input_ids == LLaVAEmbedder.IM_PATCH.id) or len(image_start_tokens) == 0:
# multimodal LLM, but the current prompt is not multimodal/truncated
return prompt, input_ids, input_embeds, total_embedded
cur_image_idx = 0
if not params['add_all_images_to_prompt']:
image_start_tokens = [image_start_tokens[-1]]
cur_image_idx = -1
for image_start_token_pos in image_start_tokens:
cur_image_features = image_features[cur_image_idx]
num_patches = cur_image_features.shape[0]
input_embeds = torch.cat((input_embeds[:image_start_token_pos+1], cur_image_features, input_embeds[image_start_token_pos + num_patches + 1:]), dim=0)
cur_image_idx += 1
total_embedded += 1
return prompt, input_ids, input_embeds, total_embedded
@staticmethod
def len_in_tokens(text):
images = re.findall(r'<img src="data:image/jpeg;base64,[A-Za-z0-9+/=]+">', text)
image_tokens = 0
for _ in images:
image_tokens += 258
return len(encode(re.sub(r'<img src="data:image/jpeg;base64,[A-Za-z0-9+/=]+">', '', text))[0]) + image_tokens
def add_chat_picture(picture, text, visible_text):
# resize the image, so that shortest edge is at least 224 (size for CLIP), and at most 300 (to keep history manageable)
max_hw, min_hw = max(picture.size), min(picture.size)
aspect_ratio = max_hw / min_hw
shortest_edge = int(max(300 / aspect_ratio, 224))
longest_edge = int(shortest_edge * aspect_ratio)
w = shortest_edge if picture.width < picture.height else longest_edge
h = shortest_edge if picture.width >= picture.height else longest_edge
picture = picture.resize((w,h))
buffer = BytesIO()
picture.save(buffer, format="JPEG")
img_str = base64.b64encode(buffer.getvalue()).decode('utf-8')
image = f'<img src="data:image/jpeg;base64,{img_str}">'
if '<image>' in text:
text = text.replace('<image>', image)
else:
text = text + '\n' + image
if visible_text == '' or visible_text is None:
visible_text = text
elif '<image>' in visible_text:
visible_text = visible_text.replace('<image>', image)
else:
visible_text = visible_text + '\n' + image
return text, visible_text
def custom_generate_chat_prompt(user_input, state, **kwargs):
impersonate = kwargs['impersonate'] if 'impersonate' in kwargs else False
_continue = kwargs['_continue'] if '_continue' in kwargs else False
also_return_rows = kwargs['also_return_rows'] if 'also_return_rows' in kwargs else False
rows = [f"{state['context'].strip()}\n"]
min_rows = 3
# Finding the maximum prompt size
chat_prompt_size = state['chat_prompt_size']
if shared.soft_prompt:
chat_prompt_size -= shared.soft_prompt_tensor.shape[1]
max_length = min(get_max_prompt_length(state), chat_prompt_size)
prefix1 = f"{state['name1']}: "
prefix2 = f"{state['name2']}: "
i = len(shared.history['internal']) - 1
while i >= 0 and LLaVAEmbedder.len_in_tokens(''.join(rows)) < max_length:
if _continue and i == len(shared.history['internal']) - 1:
rows.insert(1, f"{prefix2}{shared.history['internal'][i][1]}")
else:
rows.insert(1, f"{prefix2}{shared.history['internal'][i][1].strip()}\n")
string = shared.history['internal'][i][0]
if string != '':
rows.insert(1, f"{prefix1}{string.strip()}\n")
i -= 1
if impersonate:
min_rows = 2
rows.append(f"{prefix1}")
elif not _continue:
# Adding the user message
if len(user_input) > 0:
rows.append(f"{prefix1}{user_input}\n")
# Adding the Character prefix
rows.append(apply_extensions("bot_prefix", f"{prefix2}"))
while len(rows) > min_rows and LLaVAEmbedder.len_in_tokens(''.join(rows)) >= max_length:
rows.pop(1)
prompt = ''.join(rows)
if also_return_rows:
return prompt, rows
else:
return prompt
def tokenizer_modifier(state, prompt, input_ids, input_embeds):
global params
start_ts = time.time()
image_matches = re.finditer(r'<img src="data:image/jpeg;base64,([A-Za-z0-9+/=]+)">', prompt)
images = [Image.open(BytesIO(base64.b64decode(match.group(1)))) for match in image_matches]
if len(images) == 0:
return prompt, input_ids, input_embeds
prompt, input_ids, input_embeds, total_embedded = llava_embedder.forward(prompt, images, state)
print(f'LLaVA - Embedded {total_embedded} image(s) in {time.time()-start_ts:.2f}s')
return (prompt,
input_ids.unsqueeze(0).to(shared.model.device, dtype=torch.int64),
input_embeds.unsqueeze(0).to(shared.model.device, dtype=shared.model.dtype))
def ui():
global llava_embedder
llava_embedder = LLaVAEmbedder()
with gr.Column():
picture_select = gr.Image(label='Send a picture', type='pil')
# I found that it doesn't deal super well with multiple images, and demo ui had a bug where it included only the last image anyway
single_image_checkbox = gr.Checkbox(False, label='Embed all images, not only the last one')
# Prepare the input hijack
picture_select.upload(
lambda picture: input_hijack.update({"state": True, "value": partial(add_chat_picture, picture)}),
[picture_select],
None
)
picture_select.clear(lambda: input_hijack.update({"state": False, "value": ["",""]}), None, None)
single_image_checkbox.change(lambda x: params.update({"add_all_images_to_prompt": x}), single_image_checkbox, None)
shared.gradio['Generate'].click(lambda: None, None, picture_select)
shared.gradio['textbox'].submit(lambda: None, None, picture_select)