utils.py 26 KB

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  1. import logging
  2. import os
  3. from typing import Optional, Union
  4. import requests
  5. import hashlib
  6. from concurrent.futures import ThreadPoolExecutor
  7. from huggingface_hub import snapshot_download
  8. from langchain.retrievers import ContextualCompressionRetriever, EnsembleRetriever
  9. from langchain_community.retrievers import BM25Retriever
  10. from langchain_core.documents import Document
  11. from open_webui.config import VECTOR_DB
  12. from open_webui.retrieval.vector.connector import VECTOR_DB_CLIENT
  13. from open_webui.models.users import UserModel
  14. from open_webui.models.files import Files
  15. from open_webui.retrieval.vector.main import GetResult
  16. from open_webui.env import (
  17. SRC_LOG_LEVELS,
  18. OFFLINE_MODE,
  19. ENABLE_FORWARD_USER_INFO_HEADERS,
  20. )
  21. from open_webui.config import (
  22. RAG_EMBEDDING_QUERY_PREFIX,
  23. RAG_EMBEDDING_CONTENT_PREFIX,
  24. RAG_EMBEDDING_PREFIX_FIELD_NAME,
  25. )
  26. log = logging.getLogger(__name__)
  27. log.setLevel(SRC_LOG_LEVELS["RAG"])
  28. from typing import Any
  29. from langchain_core.callbacks import CallbackManagerForRetrieverRun
  30. from langchain_core.retrievers import BaseRetriever
  31. class VectorSearchRetriever(BaseRetriever):
  32. collection_name: Any
  33. embedding_function: Any
  34. top_k: int
  35. def _get_relevant_documents(
  36. self,
  37. query: str,
  38. *,
  39. run_manager: CallbackManagerForRetrieverRun,
  40. ) -> list[Document]:
  41. result = VECTOR_DB_CLIENT.search(
  42. collection_name=self.collection_name,
  43. vectors=[self.embedding_function(query, RAG_EMBEDDING_QUERY_PREFIX)],
  44. limit=self.top_k,
  45. )
  46. ids = result.ids[0]
  47. metadatas = result.metadatas[0]
  48. documents = result.documents[0]
  49. results = []
  50. for idx in range(len(ids)):
  51. results.append(
  52. Document(
  53. metadata=metadatas[idx],
  54. page_content=documents[idx],
  55. )
  56. )
  57. return results
  58. def query_doc(
  59. collection_name: str, query_embedding: list[float], k: int, user: UserModel = None
  60. ):
  61. try:
  62. result = VECTOR_DB_CLIENT.search(
  63. collection_name=collection_name,
  64. vectors=[query_embedding],
  65. limit=k,
  66. )
  67. if result:
  68. log.info(f"query_doc:result {result.ids} {result.metadatas}")
  69. return result
  70. except Exception as e:
  71. log.exception(f"Error querying doc {collection_name} with limit {k}: {e}")
  72. raise e
  73. def get_doc(collection_name: str, user: UserModel = None):
  74. try:
  75. result = VECTOR_DB_CLIENT.get(collection_name=collection_name)
  76. if result:
  77. log.info(f"query_doc:result {result.ids} {result.metadatas}")
  78. return result
  79. except Exception as e:
  80. log.exception(f"Error getting doc {collection_name}: {e}")
  81. raise e
  82. def query_doc_with_hybrid_search(
  83. collection_name: str,
  84. collection_result: GetResult,
  85. query: str,
  86. embedding_function,
  87. k: int,
  88. reranking_function,
  89. k_reranker: int,
  90. r: float,
  91. ) -> dict:
  92. try:
  93. bm25_retriever = BM25Retriever.from_texts(
  94. texts=collection_result.documents[0],
  95. metadatas=collection_result.metadatas[0],
  96. )
  97. bm25_retriever.k = k
  98. vector_search_retriever = VectorSearchRetriever(
  99. collection_name=collection_name,
  100. embedding_function=embedding_function,
  101. top_k=k,
  102. )
  103. ensemble_retriever = EnsembleRetriever(
  104. retrievers=[bm25_retriever, vector_search_retriever], weights=[0.5, 0.5]
  105. )
  106. compressor = RerankCompressor(
  107. embedding_function=embedding_function,
  108. top_n=k_reranker,
  109. reranking_function=reranking_function,
  110. r_score=r,
  111. )
  112. compression_retriever = ContextualCompressionRetriever(
  113. base_compressor=compressor, base_retriever=ensemble_retriever
  114. )
  115. result = compression_retriever.invoke(query)
  116. distances = [d.metadata.get("score") for d in result]
  117. documents = [d.page_content for d in result]
  118. metadatas = [d.metadata for d in result]
  119. # retrieve only min(k, k_reranker) items, sort and cut by distance if k < k_reranker
  120. if k < k_reranker:
  121. sorted_items = sorted(
  122. zip(distances, metadatas, documents), key=lambda x: x[0], reverse=True
  123. )
  124. sorted_items = sorted_items[:k]
  125. distances, documents, metadatas = map(list, zip(*sorted_items))
  126. result = {
  127. "distances": [distances],
  128. "documents": [documents],
  129. "metadatas": [metadatas],
  130. }
  131. log.info(
  132. "query_doc_with_hybrid_search:result "
  133. + f'{result["metadatas"]} {result["distances"]}'
  134. )
  135. return result
  136. except Exception as e:
  137. raise e
  138. def merge_get_results(get_results: list[dict]) -> dict:
  139. # Initialize lists to store combined data
  140. combined_documents = []
  141. combined_metadatas = []
  142. combined_ids = []
  143. for data in get_results:
  144. combined_documents.extend(data["documents"][0])
  145. combined_metadatas.extend(data["metadatas"][0])
  146. combined_ids.extend(data["ids"][0])
  147. # Create the output dictionary
  148. result = {
  149. "documents": [combined_documents],
  150. "metadatas": [combined_metadatas],
  151. "ids": [combined_ids],
  152. }
  153. return result
  154. def merge_and_sort_query_results(query_results: list[dict], k: int) -> dict:
  155. # Initialize lists to store combined data
  156. combined = dict() # To store documents with unique document hashes
  157. for data in query_results:
  158. distances = data["distances"][0]
  159. documents = data["documents"][0]
  160. metadatas = data["metadatas"][0]
  161. for distance, document, metadata in zip(distances, documents, metadatas):
  162. if isinstance(document, str):
  163. doc_hash = hashlib.md5(
  164. document.encode()
  165. ).hexdigest() # Compute a hash for uniqueness
  166. if doc_hash not in combined.keys():
  167. combined[doc_hash] = (distance, document, metadata)
  168. continue # if doc is new, no further comparison is needed
  169. # if doc is alredy in, but new distance is better, update
  170. if distance > combined[doc_hash][0]:
  171. combined[doc_hash] = (distance, document, metadata)
  172. combined = list(combined.values())
  173. # Sort the list based on distances
  174. combined.sort(key=lambda x: x[0], reverse=True)
  175. # Slice to keep only the top k elements
  176. sorted_distances, sorted_documents, sorted_metadatas = (
  177. zip(*combined[:k]) if combined else ([], [], [])
  178. )
  179. # Create and return the output dictionary
  180. return {
  181. "distances": [list(sorted_distances)],
  182. "documents": [list(sorted_documents)],
  183. "metadatas": [list(sorted_metadatas)],
  184. }
  185. def get_all_items_from_collections(collection_names: list[str]) -> dict:
  186. results = []
  187. for collection_name in collection_names:
  188. if collection_name:
  189. try:
  190. result = get_doc(collection_name=collection_name)
  191. if result is not None:
  192. results.append(result.model_dump())
  193. except Exception as e:
  194. log.exception(f"Error when querying the collection: {e}")
  195. else:
  196. pass
  197. return merge_get_results(results)
  198. def query_collection(
  199. collection_names: list[str],
  200. queries: list[str],
  201. embedding_function,
  202. k: int,
  203. ) -> dict:
  204. results = []
  205. for query in queries:
  206. query_embedding = embedding_function(query, prefix=RAG_EMBEDDING_QUERY_PREFIX)
  207. for collection_name in collection_names:
  208. if collection_name:
  209. try:
  210. result = query_doc(
  211. collection_name=collection_name,
  212. k=k,
  213. query_embedding=query_embedding,
  214. )
  215. if result is not None:
  216. results.append(result.model_dump())
  217. except Exception as e:
  218. log.exception(f"Error when querying the collection: {e}")
  219. else:
  220. pass
  221. return merge_and_sort_query_results(results, k=k)
  222. def query_collection_with_hybrid_search(
  223. collection_names: list[str],
  224. queries: list[str],
  225. embedding_function,
  226. k: int,
  227. reranking_function,
  228. k_reranker: int,
  229. r: float,
  230. ) -> dict:
  231. results = []
  232. error = False
  233. # Fetch collection data once per collection sequentially
  234. # Avoid fetching the same data multiple times later
  235. collection_results = {}
  236. for collection_name in collection_names:
  237. try:
  238. collection_results[collection_name] = VECTOR_DB_CLIENT.get(
  239. collection_name=collection_name
  240. )
  241. except Exception as e:
  242. log.exception(f"Failed to fetch collection {collection_name}: {e}")
  243. collection_results[collection_name] = None
  244. log.info(
  245. f"Starting hybrid search for {len(queries)} queries in {len(collection_names)} collections..."
  246. )
  247. def process_query(collection_name, query):
  248. try:
  249. result = query_doc_with_hybrid_search(
  250. collection_name=collection_name,
  251. collection_result=collection_results[collection_name],
  252. query=query,
  253. embedding_function=embedding_function,
  254. k=k,
  255. reranking_function=reranking_function,
  256. k_reranker=k_reranker,
  257. r=r,
  258. )
  259. return result, None
  260. except Exception as e:
  261. log.exception(f"Error when querying the collection with hybrid_search: {e}")
  262. return None, e
  263. # Prepare tasks for all collections and queries
  264. # Avoid running any tasks for collections that failed to fetch data (have assigned None)
  265. tasks = [(cn, q) for cn in collection_names if collection_results[cn] is not None for q in queries]
  266. with ThreadPoolExecutor() as executor:
  267. future_results = [executor.submit(process_query, cn, q) for cn, q in tasks]
  268. task_results = [future.result() for future in future_results]
  269. for result, err in task_results:
  270. if err is not None:
  271. error = True
  272. elif result is not None:
  273. results.append(result)
  274. if error and not results:
  275. raise Exception(
  276. "Hybrid search failed for all collections. Using Non-hybrid search as fallback."
  277. )
  278. return merge_and_sort_query_results(results, k=k)
  279. def get_embedding_function(
  280. embedding_engine,
  281. embedding_model,
  282. embedding_function,
  283. url,
  284. key,
  285. embedding_batch_size,
  286. ):
  287. if embedding_engine == "":
  288. return lambda query, prefix=None, user=None: embedding_function.encode(
  289. query, prompt=prefix if prefix else None
  290. ).tolist()
  291. elif embedding_engine in ["ollama", "openai"]:
  292. func = lambda query, prefix=None, user=None: generate_embeddings(
  293. engine=embedding_engine,
  294. model=embedding_model,
  295. text=query,
  296. prefix=prefix,
  297. url=url,
  298. key=key,
  299. user=user,
  300. )
  301. def generate_multiple(query, prefix, user, func):
  302. if isinstance(query, list):
  303. embeddings = []
  304. for i in range(0, len(query), embedding_batch_size):
  305. embeddings.extend(
  306. func(
  307. query[i : i + embedding_batch_size],
  308. prefix=prefix,
  309. user=user,
  310. )
  311. )
  312. return embeddings
  313. else:
  314. return func(query, prefix, user)
  315. return lambda query, prefix=None, user=None: generate_multiple(
  316. query, prefix, user, func
  317. )
  318. else:
  319. raise ValueError(f"Unknown embedding engine: {embedding_engine}")
  320. def get_sources_from_files(
  321. request,
  322. files,
  323. queries,
  324. embedding_function,
  325. k,
  326. reranking_function,
  327. k_reranker,
  328. r,
  329. hybrid_search,
  330. full_context=False,
  331. ):
  332. log.debug(
  333. f"files: {files} {queries} {embedding_function} {reranking_function} {full_context}"
  334. )
  335. extracted_collections = []
  336. relevant_contexts = []
  337. for file in files:
  338. context = None
  339. if file.get("docs"):
  340. # BYPASS_WEB_SEARCH_EMBEDDING_AND_RETRIEVAL
  341. context = {
  342. "documents": [[doc.get("content") for doc in file.get("docs")]],
  343. "metadatas": [[doc.get("metadata") for doc in file.get("docs")]],
  344. }
  345. elif file.get("context") == "full":
  346. # Manual Full Mode Toggle
  347. context = {
  348. "documents": [[file.get("file").get("data", {}).get("content")]],
  349. "metadatas": [[{"file_id": file.get("id"), "name": file.get("name")}]],
  350. }
  351. elif (
  352. file.get("type") != "web_search"
  353. and request.app.state.config.BYPASS_EMBEDDING_AND_RETRIEVAL
  354. ):
  355. # BYPASS_EMBEDDING_AND_RETRIEVAL
  356. if file.get("type") == "collection":
  357. file_ids = file.get("data", {}).get("file_ids", [])
  358. documents = []
  359. metadatas = []
  360. for file_id in file_ids:
  361. file_object = Files.get_file_by_id(file_id)
  362. if file_object:
  363. documents.append(file_object.data.get("content", ""))
  364. metadatas.append(
  365. {
  366. "file_id": file_id,
  367. "name": file_object.filename,
  368. "source": file_object.filename,
  369. }
  370. )
  371. context = {
  372. "documents": [documents],
  373. "metadatas": [metadatas],
  374. }
  375. elif file.get("id"):
  376. file_object = Files.get_file_by_id(file.get("id"))
  377. if file_object:
  378. context = {
  379. "documents": [[file_object.data.get("content", "")]],
  380. "metadatas": [
  381. [
  382. {
  383. "file_id": file.get("id"),
  384. "name": file_object.filename,
  385. "source": file_object.filename,
  386. }
  387. ]
  388. ],
  389. }
  390. elif file.get("file").get("data"):
  391. context = {
  392. "documents": [[file.get("file").get("data", {}).get("content")]],
  393. "metadatas": [
  394. [file.get("file").get("data", {}).get("metadata", {})]
  395. ],
  396. }
  397. else:
  398. collection_names = []
  399. if file.get("type") == "collection":
  400. if file.get("legacy"):
  401. collection_names = file.get("collection_names", [])
  402. else:
  403. collection_names.append(file["id"])
  404. elif file.get("collection_name"):
  405. collection_names.append(file["collection_name"])
  406. elif file.get("id"):
  407. if file.get("legacy"):
  408. collection_names.append(f"{file['id']}")
  409. else:
  410. collection_names.append(f"file-{file['id']}")
  411. collection_names = set(collection_names).difference(extracted_collections)
  412. if not collection_names:
  413. log.debug(f"skipping {file} as it has already been extracted")
  414. continue
  415. if full_context:
  416. try:
  417. context = get_all_items_from_collections(collection_names)
  418. except Exception as e:
  419. log.exception(e)
  420. else:
  421. try:
  422. context = None
  423. if file.get("type") == "text":
  424. context = file["content"]
  425. else:
  426. if hybrid_search:
  427. try:
  428. context = query_collection_with_hybrid_search(
  429. collection_names=collection_names,
  430. queries=queries,
  431. embedding_function=embedding_function,
  432. k=k,
  433. reranking_function=reranking_function,
  434. k_reranker=k_reranker,
  435. r=r,
  436. )
  437. except Exception as e:
  438. log.debug(
  439. "Error when using hybrid search, using"
  440. " non hybrid search as fallback."
  441. )
  442. if (not hybrid_search) or (context is None):
  443. context = query_collection(
  444. collection_names=collection_names,
  445. queries=queries,
  446. embedding_function=embedding_function,
  447. k=k,
  448. )
  449. except Exception as e:
  450. log.exception(e)
  451. extracted_collections.extend(collection_names)
  452. if context:
  453. if "data" in file:
  454. del file["data"]
  455. relevant_contexts.append({**context, "file": file})
  456. sources = []
  457. for context in relevant_contexts:
  458. try:
  459. if "documents" in context:
  460. if "metadatas" in context:
  461. source = {
  462. "source": context["file"],
  463. "document": context["documents"][0],
  464. "metadata": context["metadatas"][0],
  465. }
  466. if "distances" in context and context["distances"]:
  467. source["distances"] = context["distances"][0]
  468. sources.append(source)
  469. except Exception as e:
  470. log.exception(e)
  471. return sources
  472. def get_model_path(model: str, update_model: bool = False):
  473. # Construct huggingface_hub kwargs with local_files_only to return the snapshot path
  474. cache_dir = os.getenv("SENTENCE_TRANSFORMERS_HOME")
  475. local_files_only = not update_model
  476. if OFFLINE_MODE:
  477. local_files_only = True
  478. snapshot_kwargs = {
  479. "cache_dir": cache_dir,
  480. "local_files_only": local_files_only,
  481. }
  482. log.debug(f"model: {model}")
  483. log.debug(f"snapshot_kwargs: {snapshot_kwargs}")
  484. # Inspiration from upstream sentence_transformers
  485. if (
  486. os.path.exists(model)
  487. or ("\\" in model or model.count("/") > 1)
  488. and local_files_only
  489. ):
  490. # If fully qualified path exists, return input, else set repo_id
  491. return model
  492. elif "/" not in model:
  493. # Set valid repo_id for model short-name
  494. model = "sentence-transformers" + "/" + model
  495. snapshot_kwargs["repo_id"] = model
  496. # Attempt to query the huggingface_hub library to determine the local path and/or to update
  497. try:
  498. model_repo_path = snapshot_download(**snapshot_kwargs)
  499. log.debug(f"model_repo_path: {model_repo_path}")
  500. return model_repo_path
  501. except Exception as e:
  502. log.exception(f"Cannot determine model snapshot path: {e}")
  503. return model
  504. def generate_openai_batch_embeddings(
  505. model: str,
  506. texts: list[str],
  507. url: str = "https://api.openai.com/v1",
  508. key: str = "",
  509. prefix: str = None,
  510. user: UserModel = None,
  511. ) -> Optional[list[list[float]]]:
  512. try:
  513. json_data = {"input": texts, "model": model}
  514. if isinstance(RAG_EMBEDDING_PREFIX_FIELD_NAME, str) and isinstance(prefix, str):
  515. json_data[RAG_EMBEDDING_PREFIX_FIELD_NAME] = prefix
  516. r = requests.post(
  517. f"{url}/embeddings",
  518. headers={
  519. "Content-Type": "application/json",
  520. "Authorization": f"Bearer {key}",
  521. **(
  522. {
  523. "X-OpenWebUI-User-Name": user.name,
  524. "X-OpenWebUI-User-Id": user.id,
  525. "X-OpenWebUI-User-Email": user.email,
  526. "X-OpenWebUI-User-Role": user.role,
  527. }
  528. if ENABLE_FORWARD_USER_INFO_HEADERS and user
  529. else {}
  530. ),
  531. },
  532. json=json_data,
  533. )
  534. r.raise_for_status()
  535. data = r.json()
  536. if "data" in data:
  537. return [elem["embedding"] for elem in data["data"]]
  538. else:
  539. raise "Something went wrong :/"
  540. except Exception as e:
  541. log.exception(f"Error generating openai batch embeddings: {e}")
  542. return None
  543. def generate_ollama_batch_embeddings(
  544. model: str,
  545. texts: list[str],
  546. url: str,
  547. key: str = "",
  548. prefix: str = None,
  549. user: UserModel = None,
  550. ) -> Optional[list[list[float]]]:
  551. try:
  552. json_data = {"input": texts, "model": model}
  553. if isinstance(RAG_EMBEDDING_PREFIX_FIELD_NAME, str) and isinstance(prefix, str):
  554. json_data[RAG_EMBEDDING_PREFIX_FIELD_NAME] = prefix
  555. r = requests.post(
  556. f"{url}/api/embed",
  557. headers={
  558. "Content-Type": "application/json",
  559. "Authorization": f"Bearer {key}",
  560. **(
  561. {
  562. "X-OpenWebUI-User-Name": user.name,
  563. "X-OpenWebUI-User-Id": user.id,
  564. "X-OpenWebUI-User-Email": user.email,
  565. "X-OpenWebUI-User-Role": user.role,
  566. }
  567. if ENABLE_FORWARD_USER_INFO_HEADERS
  568. else {}
  569. ),
  570. },
  571. json=json_data,
  572. )
  573. r.raise_for_status()
  574. data = r.json()
  575. if "embeddings" in data:
  576. return data["embeddings"]
  577. else:
  578. raise "Something went wrong :/"
  579. except Exception as e:
  580. log.exception(f"Error generating ollama batch embeddings: {e}")
  581. return None
  582. def generate_embeddings(
  583. engine: str,
  584. model: str,
  585. text: Union[str, list[str]],
  586. prefix: Union[str, None] = None,
  587. **kwargs,
  588. ):
  589. url = kwargs.get("url", "")
  590. key = kwargs.get("key", "")
  591. user = kwargs.get("user")
  592. if prefix is not None and RAG_EMBEDDING_PREFIX_FIELD_NAME is None:
  593. if isinstance(text, list):
  594. text = [f"{prefix}{text_element}" for text_element in text]
  595. else:
  596. text = f"{prefix}{text}"
  597. if engine == "ollama":
  598. if isinstance(text, list):
  599. embeddings = generate_ollama_batch_embeddings(
  600. **{
  601. "model": model,
  602. "texts": text,
  603. "url": url,
  604. "key": key,
  605. "prefix": prefix,
  606. "user": user,
  607. }
  608. )
  609. else:
  610. embeddings = generate_ollama_batch_embeddings(
  611. **{
  612. "model": model,
  613. "texts": [text],
  614. "url": url,
  615. "key": key,
  616. "prefix": prefix,
  617. "user": user,
  618. }
  619. )
  620. return embeddings[0] if isinstance(text, str) else embeddings
  621. elif engine == "openai":
  622. if isinstance(text, list):
  623. embeddings = generate_openai_batch_embeddings(
  624. model, text, url, key, prefix, user
  625. )
  626. else:
  627. embeddings = generate_openai_batch_embeddings(
  628. model, [text], url, key, prefix, user
  629. )
  630. return embeddings[0] if isinstance(text, str) else embeddings
  631. import operator
  632. from typing import Optional, Sequence
  633. from langchain_core.callbacks import Callbacks
  634. from langchain_core.documents import BaseDocumentCompressor, Document
  635. class RerankCompressor(BaseDocumentCompressor):
  636. embedding_function: Any
  637. top_n: int
  638. reranking_function: Any
  639. r_score: float
  640. class Config:
  641. extra = "forbid"
  642. arbitrary_types_allowed = True
  643. def compress_documents(
  644. self,
  645. documents: Sequence[Document],
  646. query: str,
  647. callbacks: Optional[Callbacks] = None,
  648. ) -> Sequence[Document]:
  649. reranking = self.reranking_function is not None
  650. if reranking:
  651. scores = self.reranking_function.predict(
  652. [(query, doc.page_content) for doc in documents]
  653. )
  654. else:
  655. from sentence_transformers import util
  656. query_embedding = self.embedding_function(query, RAG_EMBEDDING_QUERY_PREFIX)
  657. document_embedding = self.embedding_function(
  658. [doc.page_content for doc in documents], RAG_EMBEDDING_CONTENT_PREFIX
  659. )
  660. scores = util.cos_sim(query_embedding, document_embedding)[0]
  661. docs_with_scores = list(zip(documents, scores.tolist()))
  662. if self.r_score:
  663. docs_with_scores = [
  664. (d, s) for d, s in docs_with_scores if s >= self.r_score
  665. ]
  666. result = sorted(docs_with_scores, key=operator.itemgetter(1), reverse=True)
  667. final_results = []
  668. for doc, doc_score in result[: self.top_n]:
  669. metadata = doc.metadata
  670. metadata["score"] = doc_score
  671. doc = Document(
  672. page_content=doc.page_content,
  673. metadata=metadata,
  674. )
  675. final_results.append(doc)
  676. return final_results