import base64 import logging import re from dataclasses import dataclass from io import BytesIO from typing import Any, List, Optional import torch from PIL import Image from extensions.multimodal.pipeline_loader import load_pipeline from modules import shared from modules.text_generation import encode, get_max_prompt_length @dataclass class PromptPart: text: str image: Optional[Image.Image] = None is_image: bool = False input_ids: Optional[torch.Tensor] = None embedding: Optional[torch.Tensor] = None class MultimodalEmbedder: def __init__(self, params: dict): pipeline, source = load_pipeline(params) self.pipeline = pipeline logging.info(f'Multimodal: loaded pipeline {self.pipeline.name()} from pipelines/{source} ({self.pipeline.__class__.__name__})') def _split_prompt(self, prompt: str, load_images: bool = False) -> List[PromptPart]: """Splits a prompt into a list of `PromptParts` to separate image data from text. It will also append `image_start` and `image_end` before and after the image, and optionally parse and load the images, if `load_images` is `True`. """ parts: List[PromptPart] = [] curr = 0 while True: match = re.search(r'', prompt[curr:]) if match is None: # no more image tokens, append the rest of the prompt if curr > 0: # add image end token after last image parts.append(PromptPart(text=self.pipeline.image_end() + prompt[curr:])) else: parts.append(PromptPart(text=prompt)) break # found an image, append image start token to the text if match.start() > 0: parts.append(PromptPart(text=prompt[curr:curr + match.start()] + self.pipeline.image_start())) else: parts.append(PromptPart(text=self.pipeline.image_start())) # append the image parts.append(PromptPart( text=match.group(0), image=Image.open(BytesIO(base64.b64decode(match.group(1)))) if load_images else None, is_image=True )) curr += match.end() return parts def _len_in_tokens_prompt_parts(self, parts: List[PromptPart]) -> int: """Total length in tokens of all `parts`""" tokens = 0 for part in parts: if part.is_image: tokens += self.pipeline.num_image_embeds() elif part.input_ids is not None: tokens += len(part.input_ids) else: tokens += len(encode(part.text)[0]) return tokens def len_in_tokens(self, prompt: str) -> int: """Total length in tokens for a given text `prompt`""" parts = self._split_prompt(prompt, False) return self._len_in_tokens_prompt_parts(parts) def _encode_single_text(self, part: PromptPart, add_bos_token: bool) -> PromptPart: """Encode a single prompt `part` to `input_ids`. Returns a `PromptPart`""" if part.is_image: placeholders = torch.ones((self.pipeline.num_image_embeds())) * self.pipeline.placeholder_token_id() part.input_ids = placeholders.to(shared.model.device, dtype=torch.int64) else: part.input_ids = encode(part.text, add_bos_token=add_bos_token)[0].to(shared.model.device, dtype=torch.int64) return part @staticmethod def _num_images(parts: List[PromptPart]) -> int: count = 0 for part in parts: if part.is_image: count += 1 return count def _encode_text(self, state, parts: List[PromptPart]) -> List[PromptPart]: """Encode text to token_ids, also truncate the prompt, if necessary. The chat/instruct mode should make prompts that fit in get_max_prompt_length, but if max_new_tokens are set such that the context + min_rows don't fit, we can get a prompt which is too long. We can't truncate image embeddings, as it leads to broken generation, so remove the images instead and warn the user """ encoded: List[PromptPart] = [] for i, part in enumerate(parts): encoded.append(self._encode_single_text(part, i == 0 and state['add_bos_token'])) # truncation: max_len = get_max_prompt_length(state) removed_images = 0 # 1. remove entire text/image blocks while self._len_in_tokens_prompt_parts(encoded[1:]) > max_len: if encoded[0].is_image: removed_images += 1 encoded = encoded[1:] # 2. check if the last prompt part doesn't need to get truncated if self._len_in_tokens_prompt_parts(encoded) > max_len: if encoded[0].is_image: # don't truncate image embeddings, just remove the image, otherwise generation will be broken removed_images += 1 encoded = encoded[1:] elif len(encoded) > 1 and encoded[0].text.endswith(self.pipeline.image_start()): # see if we can keep image_start token len_image_start = len(encode(self.pipeline.image_start(), add_bos_token=state['add_bos_token'])[0]) if self._len_in_tokens_prompt_parts(encoded[1:]) + len_image_start > max_len: # we can't -> remove this text, and the image encoded = encoded[2:] removed_images += 1 else: # we can -> just truncate the text trunc_len = self._len_in_tokens_prompt_parts(encoded) - max_len encoded[0].input_ids = encoded[0].input_ids[trunc_len:] elif len(encoded) > 0: # only one text left, truncate it normally trunc_len = self._len_in_tokens_prompt_parts(encoded) - max_len encoded[0].input_ids = encoded[0].input_ids[trunc_len:] # notify user if we truncated an image if removed_images > 0: logging.warning(f"Multimodal: removed {removed_images} image(s) from prompt. Try decreasing max_new_tokens if generation is broken") return encoded def _embed(self, parts: List[PromptPart]) -> List[PromptPart]: # batch images image_indicies = [i for i, part in enumerate(parts) if part.is_image] embedded = self.pipeline.embed_images([parts[i].image for i in image_indicies]) for i, embeds in zip(image_indicies, embedded): parts[i].embedding = embeds # embed text for (i, part) in enumerate(parts): if not part.is_image: parts[i].embedding = self.pipeline.embed_tokens(part.input_ids) return parts def _remove_old_images(self, parts: List[PromptPart], params: dict) -> List[PromptPart]: if params['add_all_images_to_prompt']: return parts already_added = False for i, part in reversed(list(enumerate(parts))): if part.is_image: if already_added: parts[i].embedding = self.pipeline.placeholder_embeddings() else: already_added = True return parts def forward(self, prompt: str, state: Any, params: dict): prompt_parts = self._split_prompt(prompt, True) prompt_parts = self._encode_text(state, prompt_parts) prompt_parts = self._embed(prompt_parts) prompt_parts = self._remove_old_images(prompt_parts, params) embeds = tuple(part.embedding for part in prompt_parts) ids = tuple(part.input_ids for part in prompt_parts) input_embeds = torch.cat(embeds, dim=0) input_ids = torch.cat(ids, dim=0) return prompt, input_ids, input_embeds, self._num_images(prompt_parts)