Spaces:
Runtime error
Runtime error
| from dotenv import load_dotenv | |
| from utils.src.utils import get_json_from_response | |
| from utils.src.model_utils import parse_pdf | |
| import json | |
| import random | |
| import os | |
| from camel.models import ModelFactory | |
| from camel.agents import ChatAgent | |
| from tenacity import retry, stop_after_attempt | |
| from docling_core.types.doc import ImageRefMode, PictureItem, TableItem | |
| from docling.datamodel.base_models import InputFormat | |
| from docling.datamodel.pipeline_options import PdfPipelineOptions | |
| from docling.document_converter import DocumentConverter, PdfFormatOption | |
| from pathlib import Path | |
| import PIL | |
| from marker.models import create_model_dict | |
| from utils.wei_utils import * | |
| from utils.pptx_utils import * | |
| from utils.critic_utils import * | |
| import torch | |
| from jinja2 import Template | |
| import re | |
| import argparse | |
| load_dotenv() | |
| IMAGE_RESOLUTION_SCALE = 5.0 | |
| pipeline_options = PdfPipelineOptions() | |
| pipeline_options.images_scale = IMAGE_RESOLUTION_SCALE | |
| pipeline_options.generate_page_images = True | |
| pipeline_options.generate_picture_images = True | |
| doc_converter = DocumentConverter( | |
| format_options={ | |
| InputFormat.PDF: PdfFormatOption(pipeline_options=pipeline_options) | |
| } | |
| ) | |
| def parse_raw(args, actor_config, version=1): | |
| raw_source = args.poster_path | |
| markdown_clean_pattern = re.compile(r"<!--[\s\S]*?-->") | |
| raw_result = doc_converter.convert(raw_source) | |
| raw_markdown = raw_result.document.export_to_markdown() | |
| text_content = markdown_clean_pattern.sub("", raw_markdown) | |
| if len(text_content) < 500: | |
| print('\nParsing with docling failed, using marker instead\n') | |
| parser_model = create_model_dict(device='cuda', dtype=torch.float16) | |
| text_content, rendered = parse_pdf(raw_source, model_lst=parser_model, save_file=False) | |
| if version == 1: | |
| template = Template(open("utils/prompts/gen_page_raw_content.txt").read()) | |
| elif version == 2: | |
| template = Template(open("utils/prompts/gen_page_raw_content_v2.txt").read()) | |
| # Get API key from environment variables | |
| api_key = None | |
| if args.model_name_t in ['4o', '4o-mini', 'gpt-4.1', 'gpt-4.1-mini', 'o1', 'o3', 'o3-mini']: | |
| api_key = os.environ.get('OPENAI_API_KEY') | |
| elif args.model_name_t in ['gemini', 'gemini-2.5-pro', 'gemini-2.5-flash']: | |
| api_key = os.environ.get('GEMINI_API_KEY') | |
| elif args.model_name_t in ['qwen', 'qwen-plus', 'qwen-max', 'qwen-long']: | |
| api_key = os.environ.get('QWEN_API_KEY') | |
| elif args.model_name_t.startswith('openrouter_'): | |
| api_key = os.environ.get('OPENROUTER_API_KEY') | |
| elif args.model_name_t in ['zhipuai']: | |
| api_key = os.environ.get('ZHIPUAI_API_KEY') | |
| if args.model_name_t.startswith('vllm_qwen'): | |
| actor_model = ModelFactory.create( | |
| model_platform=actor_config['model_platform'], | |
| model_type=actor_config['model_type'], | |
| model_config_dict=actor_config['model_config'], | |
| url=actor_config['url'], | |
| api_key=api_key, | |
| ) | |
| else: | |
| actor_model = ModelFactory.create( | |
| model_platform=actor_config['model_platform'], | |
| model_type=actor_config['model_type'], | |
| model_config_dict=actor_config['model_config'], | |
| api_key=api_key, | |
| ) | |
| actor_sys_msg = 'You are the author of the paper, and you will create a poster for the paper.' | |
| actor_agent = ChatAgent( | |
| system_message=actor_sys_msg, | |
| model=actor_model, | |
| message_window_size=10, | |
| token_limit=actor_config.get('token_limit', None) | |
| ) | |
| while True: | |
| prompt = template.render( | |
| markdown_document=text_content, | |
| ) | |
| actor_agent.reset() | |
| response = actor_agent.step(prompt) | |
| input_token, output_token = account_token(response) | |
| content_json = get_json_from_response(response.msgs[0].content) | |
| if len(content_json) > 0: | |
| break | |
| print('Error: Empty response, retrying...') | |
| if args.model_name_t.startswith('vllm_qwen'): | |
| text_content = text_content[:80000] | |
| if len(content_json['sections']) > 9: | |
| # First 2 sections + randomly select 5 sections + last 2 sections | |
| selected_sections = content_json['sections'][:2] + random.sample(content_json['sections'][2:-2], 5) + content_json['sections'][-2:] | |
| content_json['sections'] = selected_sections | |
| has_title = False | |
| for section in content_json['sections']: | |
| if type(section) != dict or not 'title' in section or not 'content' in section: | |
| print(f"Ouch! The response is invalid, the LLM is not following the format :(") | |
| print('Trying again...') | |
| raise | |
| if 'title' in section['title'].lower(): | |
| has_title = True | |
| if not has_title: | |
| print('Ouch! The response is invalid, the LLM is not following the format :(') | |
| raise | |
| os.makedirs('contents', exist_ok=True) | |
| json.dump(content_json, open(f'contents/{args.poster_name}_raw_content.json', 'w'), indent=4) | |
| return input_token, output_token, raw_result | |
| def gen_image_and_table(args, conv_res): | |
| input_token, output_token = 0, 0 | |
| raw_source = args.poster_path | |
| output_dir = Path(f'generated_project_pages/images_and_tables/{args.poster_name}') | |
| output_dir.mkdir(parents=True, exist_ok=True) | |
| doc_filename = args.poster_name | |
| # Save page images | |
| for page_no, page in conv_res.document.pages.items(): | |
| page_no = page.page_no | |
| page_image_filename = output_dir / f"{doc_filename}-{page_no}.png" | |
| with page_image_filename.open("wb") as fp: | |
| page.image.pil_image.save(fp, format="PNG") | |
| # Save images of figures and tables | |
| table_counter = 0 | |
| picture_counter = 0 | |
| for element, _level in conv_res.document.iterate_items(): | |
| if isinstance(element, TableItem): | |
| table_counter += 1 | |
| element_image_filename = ( | |
| output_dir / f"{doc_filename}-table-{table_counter}.png" | |
| ) | |
| with element_image_filename.open("wb") as fp: | |
| element.get_image(conv_res.document).save(fp, "PNG") | |
| if isinstance(element, PictureItem): | |
| picture_counter += 1 | |
| element_image_filename = ( | |
| output_dir / f"{doc_filename}-picture-{picture_counter}.png" | |
| ) | |
| with element_image_filename.open("wb") as fp: | |
| element.get_image(conv_res.document).save(fp, "PNG") | |
| # Save markdown with embedded pictures | |
| md_filename = output_dir / f"{doc_filename}-with-images.md" | |
| conv_res.document.save_as_markdown(md_filename, image_mode=ImageRefMode.EMBEDDED) | |
| # Save markdown with externally referenced pictures | |
| md_filename = output_dir / f"{doc_filename}-with-image-refs.md" | |
| conv_res.document.save_as_markdown(md_filename, image_mode=ImageRefMode.REFERENCED) | |
| # Save HTML with externally referenced pictures | |
| html_filename = output_dir / f"{doc_filename}-with-image-refs.html" | |
| conv_res.document.save_as_html(html_filename, image_mode=ImageRefMode.REFERENCED) | |
| tables = {} | |
| table_index = 1 | |
| for table in conv_res.document.tables: | |
| caption = table.caption_text(conv_res.document) | |
| if len(caption) > 0: | |
| table_img_path = f'generated_project_pages/images_and_tables/{args.poster_name}/{args.poster_name}-table-{table_index}.png' | |
| assests_table_path = f'assets/{args.poster_name}-table-{table_index}.png' | |
| table_img = PIL.Image.open(table_img_path) | |
| tables[str(table_index)] = { | |
| 'caption': caption, | |
| 'table_path': assests_table_path, | |
| # 'assests_table_path': assests_table_path, | |
| 'width': table_img.width, | |
| 'height': table_img.height, | |
| 'figure_size': table_img.width * table_img.height, | |
| 'figure_aspect': table_img.width / table_img.height, | |
| } | |
| table_index += 1 | |
| images = {} | |
| image_index = 1 | |
| for image in conv_res.document.pictures: | |
| caption = image.caption_text(conv_res.document) | |
| if len(caption) > 0: | |
| image_img_path = f'generated_project_pages/images_and_tables/{args.poster_name}/{args.poster_name}-picture-{image_index}.png' | |
| assests_image_path = f'assets/{args.poster_name}-picture-{image_index}.png' | |
| image_img = PIL.Image.open(image_img_path) | |
| images[str(image_index)] = { | |
| 'caption': caption, | |
| 'image_path': assests_image_path, | |
| # 'assests_image_path': assests_image_path, | |
| 'width': image_img.width, | |
| 'height': image_img.height, | |
| 'figure_size': image_img.width * image_img.height, | |
| 'figure_aspect': image_img.width / image_img.height, | |
| } | |
| image_index += 1 | |
| json.dump(images, open(f'generated_project_pages/images_and_tables/{args.poster_name}_images.json', 'w'), indent=4) | |
| json.dump(tables, open(f'generated_project_pages/images_and_tables/{args.poster_name}_tables.json', 'w'), indent=4) | |
| return input_token, output_token, images, tables | |
| if __name__ == '__main__': | |
| parser = argparse.ArgumentParser() | |
| parser.add_argument('--poster_name', type=str, default=None) | |
| parser.add_argument('--model_name', type=str, default='4o') | |
| parser.add_argument('--poster_path', type=str, required=True) | |
| parser.add_argument('--index', type=int, default=0) | |
| args = parser.parse_args() | |
| agent_config = get_agent_config(args.model_name) | |
| if args.poster_name is None: | |
| args.poster_name = args.poster_path.split('/')[-1].replace('.pdf', '').replace(' ', '_') | |
| # Parse raw content | |
| input_token, output_token = parse_raw(args, agent_config) | |
| # Generate images and tables | |
| _, _ = gen_image_and_table(args) | |
| print(f'Token consumption: {input_token} -> {output_token}') | |