| import ast |
| import os |
| import sys |
| from typing import Union, List |
|
|
| if os.path.dirname(os.path.abspath(os.path.join(__file__, '..'))) not in sys.path: |
| sys.path.append(os.path.dirname(os.path.abspath(os.path.join(__file__, '..')))) |
|
|
| from gpt_langchain import path_to_docs, get_some_dbs_from_hf, all_db_zips, some_db_zips, create_or_update_db, \ |
| get_persist_directory, get_existing_db |
| from utils import H2O_Fire, makedirs, n_gpus_global |
|
|
|
|
| def glob_to_db(user_path, chunk=True, chunk_size=512, verbose=False, |
| fail_any_exception=False, n_jobs=-1, url=None, |
| |
| |
| use_unstructured=True, |
| use_playwright=False, |
| use_selenium=False, |
| use_scrapeplaywright=False, |
| use_scrapehttp=False, |
| |
| |
| use_pymupdf='auto', |
| use_unstructured_pdf='auto', |
| use_pypdf='auto', |
| enable_pdf_ocr='auto', |
| try_pdf_as_html='auto', |
| enable_pdf_doctr='auto', |
| |
| |
| enable_ocr=False, |
| enable_doctr=False, |
| enable_pix2struct=False, |
| enable_captions=True, |
| enable_llava=True, |
| enable_transcriptions=True, |
| captions_model=None, |
| caption_loader=None, |
| doctr_loader=None, |
| llava_model=None, |
| llava_prompt=None, |
| asr_model=None, |
| asr_loader=None, |
| |
| |
| jq_schema='.[]', |
| extract_frames=10, |
| |
| db_type=None, |
| selected_file_types=None, |
| |
| is_public=False): |
| assert db_type is not None |
|
|
| loaders_and_settings = dict( |
| |
| verbose=verbose, fail_any_exception=fail_any_exception, |
| |
| n_jobs=n_jobs, |
|
|
| |
| chunk=chunk, |
| chunk_size=chunk_size, |
|
|
| |
| use_unstructured=use_unstructured, |
| use_playwright=use_playwright, |
| use_selenium=use_selenium, |
| use_scrapeplaywright=use_scrapeplaywright, |
| use_scrapehttp=use_scrapehttp, |
|
|
| |
| use_pymupdf=use_pymupdf, |
| use_unstructured_pdf=use_unstructured_pdf, |
| use_pypdf=use_pypdf, |
| enable_pdf_ocr=enable_pdf_ocr, |
| try_pdf_as_html=try_pdf_as_html, |
| enable_pdf_doctr=enable_pdf_doctr, |
|
|
| |
| enable_ocr=enable_ocr, |
| enable_doctr=enable_doctr, |
| enable_pix2struct=enable_pix2struct, |
| enable_captions=enable_captions, |
| enable_llava=enable_llava, |
| enable_transcriptions=enable_transcriptions, |
| captions_model=captions_model, |
| caption_loader=caption_loader, |
| doctr_loader=doctr_loader, |
| llava_model=llava_model, |
| llava_prompt=llava_prompt, |
| asr_model=asr_model, |
| asr_loader=asr_loader, |
|
|
| |
| jq_schema=jq_schema, |
| extract_frames=extract_frames, |
|
|
| db_type=db_type, |
| is_public=is_public, |
| ) |
| sources1 = path_to_docs(user_path, |
| url=url, |
| **loaders_and_settings, |
| selected_file_types=selected_file_types, |
| ) |
| return sources1 |
|
|
|
|
| def make_db_main(use_openai_embedding: bool = False, |
| hf_embedding_model: str = None, |
| migrate_embedding_model=False, |
| auto_migrate_db=False, |
| persist_directory: str = None, |
| user_path: str = 'user_path', |
| langchain_type: str = 'shared', |
| url: Union[List[str], str] = None, |
| add_if_exists: bool = True, |
| collection_name: str = 'UserData', |
| verbose: bool = False, |
| chunk: bool = True, |
| chunk_size: int = 512, |
| fail_any_exception: bool = False, |
| download_all: bool = False, |
| download_some: bool = False, |
| download_one: str = None, |
| download_dest: str = None, |
| n_jobs: int = -1, |
| |
| |
| use_unstructured=True, |
| use_playwright=False, |
| use_selenium=False, |
| use_scrapeplaywright=False, |
| use_scrapehttp=False, |
| |
| |
| use_pymupdf='auto', |
| use_unstructured_pdf='auto', |
| use_pypdf='auto', |
| enable_pdf_ocr='auto', |
| enable_pdf_doctr='auto', |
| try_pdf_as_html='auto', |
| |
| |
| enable_ocr=False, |
| enable_doctr=False, |
| enable_pix2struct=False, |
| enable_captions=True, |
| enable_llava=True, |
| captions_model: str = "Salesforce/blip-image-captioning-base", |
| llava_model: str = None, |
| llava_prompt: str = None, |
| pre_load_image_audio_models: bool = False, |
| caption_gpu: bool = True, |
| |
| |
| |
| enable_transcriptions: bool = True, |
| asr_model: str = "openai/whisper-medium", |
| asr_gpu: bool = True, |
| |
| |
| jq_schema='.[]', |
| extract_frames=10, |
| |
| db_type: str = 'chroma', |
| selected_file_types: Union[List[str], str] = None, |
| fail_if_no_sources: bool = True |
| ): |
| """ |
| # To make UserData db for generate.py, put pdfs, etc. into path user_path and run: |
| python src/make_db.py |
| |
| # once db is made, can use in generate.py like: |
| |
| python generate.py --base_model=h2oai/h2ogpt-oig-oasst1-512-6_9b --langchain_mode=UserData |
| |
| or zip-up the db_dir_UserData and share: |
| |
| zip -r db_dir_UserData.zip db_dir_UserData |
| |
| # To get all db files (except large wiki_full) do: |
| python src/make_db.py --download_some=True |
| |
| # To get a single db file from HF: |
| python src/make_db.py --download_one=db_dir_DriverlessAI_docs.zip |
| |
| :param use_openai_embedding: Whether to use OpenAI embedding |
| :param hf_embedding_model: HF embedding model to use. Like generate.py, uses 'hkunlp/instructor-large' if have GPUs, else "sentence-transformers/all-MiniLM-L6-v2" |
| :param migrate_embedding_model: whether to migrate to newly chosen hf_embedding_model or stick with one in db |
| :param auto_migrate_db: whether to migrate database for chroma<0.4 -> >0.4 |
| :param persist_directory: where to persist db (note generate.py always uses db_dir_<collection name> |
| If making personal database for user, set persistent_directory to users/<username>/db_dir_<collection name> |
| and pass --langchain_type=personal |
| :param user_path: where to pull documents from (None means url is not None. If url is not None, this is ignored.) |
| :param langchain_type: type of database, i.e.. 'shared' or 'personal' |
| :param url: url (or urls) to generate documents from (None means user_path is not None) |
| :param add_if_exists: Add to db if already exists, but will not add duplicate sources |
| :param collection_name: Collection name for new db if not adding |
| Normally same as langchain_mode |
| :param verbose: whether to show verbose messages |
| :param chunk: whether to chunk data |
| :param chunk_size: chunk size for chunking |
| :param fail_any_exception: whether to fail if any exception hit during ingestion of files |
| :param download_all: whether to download all (including 23GB Wikipedia) example databases from h2o.ai HF |
| :param download_some: whether to download some small example databases from h2o.ai HF |
| :param download_one: whether to download one chosen example databases from h2o.ai HF |
| :param download_dest: Destination for downloads |
| :param n_jobs: Number of cores to use for ingesting multiple files |
| |
| :param use_unstructured: see gen.py |
| :param use_playwright: see gen.py |
| :param use_selenium: see gen.py |
| :param use_scrapeplaywright: see gen.py |
| :param use_scrapehttp: see gen.py |
| |
| :param use_pymupdf: see gen.py |
| :param use_unstructured_pdf: see gen.py |
| :param use_pypdf: see gen.py |
| :param enable_pdf_ocr: see gen.py |
| :param try_pdf_as_html: see gen.py |
| :param enable_pdf_doctr: see gen.py |
| |
| :param enable_ocr: see gen.py |
| :param enable_doctr: see gen.py |
| :param enable_pix2struct: see gen.py |
| :param enable_captions: Whether to enable captions on images |
| :param enable_llava: See gen.py |
| :param captions_model: See gen.py |
| :param llava_model: See gen.py |
| :param llava_prompt: See gen.py |
| :param pre_load_image_audio_models: See generate.py |
| :param caption_gpu: Caption images on GPU if present |
| |
| :param db_type: 'faiss' for in-memory |
| 'chroma' (for chroma >= 0.4) |
| 'chroma_old' (for chroma < 0.4) -- recommended for large collections |
| 'weaviate' for persisted on disk |
| :param selected_file_types: File types (by extension) to include if passing user_path |
| For a list of possible values, see: |
| https://github.com/h2oai/h2ogpt/blob/main/docs/README_LangChain.md#shoosing-document-types |
| e.g. --selected_file_types="['pdf', 'html', 'htm']" |
| :return: None |
| """ |
| db = None |
|
|
| if isinstance(selected_file_types, str): |
| selected_file_types = ast.literal_eval(selected_file_types) |
| if persist_directory is None: |
| persist_directory, langchain_type = get_persist_directory(collection_name, langchain_type=langchain_type) |
| if download_dest is None: |
| download_dest = makedirs('./', use_base=True) |
|
|
| |
| n_gpus = n_gpus_global |
| if n_gpus == 0: |
| if hf_embedding_model is None: |
| |
| hf_embedding_model = "sentence-transformers/all-MiniLM-L6-v2" |
| else: |
| if hf_embedding_model is None: |
| |
| hf_embedding_model = 'hkunlp/instructor-large' |
|
|
| existing_db = False |
|
|
| if download_all: |
| print("Downloading all (and unzipping): %s" % all_db_zips, flush=True) |
| get_some_dbs_from_hf(download_dest, db_zips=all_db_zips) |
| if verbose: |
| print("DONE", flush=True) |
| existing_db = True |
| elif download_some: |
| print("Downloading some (and unzipping): %s" % some_db_zips, flush=True) |
| get_some_dbs_from_hf(download_dest, db_zips=some_db_zips) |
| if verbose: |
| print("DONE", flush=True) |
| existing_db = True |
| elif download_one: |
| print("Downloading %s (and unzipping)" % download_one, flush=True) |
| get_some_dbs_from_hf(download_dest, db_zips=[[download_one, '', 'Unknown License']]) |
| if verbose: |
| print("DONE", flush=True) |
| existing_db = True |
|
|
| if existing_db: |
| load_db_if_exists = True |
| langchain_mode = collection_name |
| langchain_mode_paths = dict(langchain_mode=None) |
| langchain_mode_types = dict(langchain_mode='shared') |
| db, use_openai_embedding, hf_embedding_model = \ |
| get_existing_db(None, persist_directory, load_db_if_exists, db_type, |
| use_openai_embedding, |
| langchain_mode, langchain_mode_paths, langchain_mode_types, |
| hf_embedding_model, migrate_embedding_model, auto_migrate_db, |
| verbose=False, |
| n_jobs=n_jobs) |
| return db, collection_name |
|
|
| if enable_captions and pre_load_image_audio_models: |
| |
| |
| |
| from image_captions import H2OImageCaptionLoader |
| caption_loader = H2OImageCaptionLoader(None, |
| blip_model=captions_model, |
| blip_processor=captions_model, |
| caption_gpu=caption_gpu, |
| ).load_model() |
| else: |
| if enable_captions: |
| caption_loader = 'gpu' if n_gpus > 0 and caption_gpu else 'cpu' |
| else: |
| caption_loader = False |
| if enable_doctr or enable_pdf_ocr in [True, 'auto', 'on']: |
| doctr_loader = 'gpu' if n_gpus > 0 and caption_gpu else 'cpu' |
| else: |
| doctr_loader = False |
|
|
| if enable_transcriptions: |
| asr_loader = 'gpu' if n_gpus > 0 and asr_gpu else 'cpu' |
| else: |
| asr_loader = False |
|
|
| if verbose: |
| print("Getting sources", flush=True) |
| assert user_path is not None or url is not None, "Can't have both user_path and url as None" |
| if not url: |
| assert os.path.isdir(user_path), "user_path=%s does not exist" % user_path |
| sources = glob_to_db(user_path, chunk=chunk, chunk_size=chunk_size, verbose=verbose, |
| fail_any_exception=fail_any_exception, n_jobs=n_jobs, url=url, |
|
|
| |
| use_unstructured=use_unstructured, |
| use_playwright=use_playwright, |
| use_selenium=use_selenium, |
| use_scrapeplaywright=use_scrapeplaywright, |
| use_scrapehttp=use_scrapehttp, |
|
|
| |
| use_pymupdf=use_pymupdf, |
| use_unstructured_pdf=use_unstructured_pdf, |
| use_pypdf=use_pypdf, |
| enable_pdf_ocr=enable_pdf_ocr, |
| try_pdf_as_html=try_pdf_as_html, |
| enable_pdf_doctr=enable_pdf_doctr, |
|
|
| |
| enable_ocr=enable_ocr, |
| enable_doctr=enable_doctr, |
| enable_pix2struct=enable_pix2struct, |
| enable_captions=enable_captions, |
| enable_llava=enable_llava, |
| enable_transcriptions=enable_transcriptions, |
| captions_model=captions_model, |
| caption_loader=caption_loader, |
| doctr_loader=doctr_loader, |
| llava_model=llava_model, |
| llava_prompt=llava_prompt, |
| |
| asr_loader=asr_loader, |
| asr_model=asr_model, |
|
|
| |
| jq_schema=jq_schema, |
| extract_frames=extract_frames, |
|
|
| db_type=db_type, |
| selected_file_types=selected_file_types, |
|
|
| is_public=False, |
| ) |
| exceptions = [x for x in sources if x.metadata.get('exception')] |
| print("Exceptions: %s/%s %s" % (len(exceptions), len(sources), exceptions), flush=True) |
| sources = [x for x in sources if 'exception' not in x.metadata] |
|
|
| assert len(sources) > 0 or not fail_if_no_sources, "No sources found" |
| db = create_or_update_db(db_type, persist_directory, |
| collection_name, user_path, langchain_type, |
| sources, use_openai_embedding, add_if_exists, verbose, |
| hf_embedding_model, migrate_embedding_model, auto_migrate_db, |
| n_jobs=n_jobs) |
|
|
| assert db is not None or not fail_if_no_sources |
| if verbose: |
| print("DONE", flush=True) |
| return db, collection_name |
|
|
|
|
| if __name__ == "__main__": |
| H2O_Fire(make_db_main) |
|
|