"""Base index classes.""" import logging from abc import ABC, abstractmethod from typing import Any, Dict, Generic, List, Optional, Sequence, Type, TypeVar, cast from llama_index.chat_engine.types import BaseChatEngine, ChatMode from llama_index.core.base_query_engine import BaseQueryEngine from llama_index.core.base_retriever import BaseRetriever from llama_index.data_structs.data_structs import IndexStruct from llama_index.ingestion import run_transformations from llama_index.schema import BaseNode, Document, IndexNode from llama_index.service_context import ServiceContext from llama_index.storage.docstore.types import BaseDocumentStore, RefDocInfo from llama_index.storage.storage_context import StorageContext IS = TypeVar("IS", bound=IndexStruct) IndexType = TypeVar("IndexType", bound="BaseIndex") logger = logging.getLogger(__name__) class BaseIndex(Generic[IS], ABC): """Base LlamaIndex. Args: nodes (List[Node]): List of nodes to index show_progress (bool): Whether to show tqdm progress bars. Defaults to False. service_context (ServiceContext): Service context container (contains components like LLM, Embeddings, etc.). """ index_struct_cls: Type[IS] def __init__( self, nodes: Optional[Sequence[BaseNode]] = None, objects: Optional[Sequence[IndexNode]] = None, index_struct: Optional[IS] = None, storage_context: Optional[StorageContext] = None, service_context: Optional[ServiceContext] = None, show_progress: bool = False, **kwargs: Any, ) -> None: """Initialize with parameters.""" if index_struct is None and nodes is None and objects is None: raise ValueError("One of nodes, objects, or index_struct must be provided.") if index_struct is not None and nodes is not None: raise ValueError("Only one of nodes or index_struct can be provided.") # This is to explicitly make sure that the old UX is not used if nodes is not None and len(nodes) >= 1 and not isinstance(nodes[0], BaseNode): if isinstance(nodes[0], Document): raise ValueError( "The constructor now takes in a list of Node objects. " "Since you are passing in a list of Document objects, " "please use `from_documents` instead." ) else: raise ValueError("nodes must be a list of Node objects.") self._service_context = service_context or ServiceContext.from_defaults() self._storage_context = storage_context or StorageContext.from_defaults() self._docstore = self._storage_context.docstore self._show_progress = show_progress self._vector_store = self._storage_context.vector_store self._graph_store = self._storage_context.graph_store objects = objects or [] self._object_map = {obj.index_id: obj.obj for obj in objects} with self._service_context.callback_manager.as_trace("index_construction"): if index_struct is None: nodes = nodes or [] index_struct = self.build_index_from_nodes( nodes + objects # type: ignore ) self._index_struct = index_struct self._storage_context.index_store.add_index_struct(self._index_struct) @classmethod def from_documents( cls: Type[IndexType], documents: Sequence[Document], storage_context: Optional[StorageContext] = None, service_context: Optional[ServiceContext] = None, show_progress: bool = False, **kwargs: Any, ) -> IndexType: """Create index from documents. Args: documents (Optional[Sequence[BaseDocument]]): List of documents to build the index from. """ storage_context = storage_context or StorageContext.from_defaults() service_context = service_context or ServiceContext.from_defaults() docstore = storage_context.docstore with service_context.callback_manager.as_trace("index_construction"): for doc in documents: docstore.set_document_hash(doc.get_doc_id(), doc.hash) nodes = run_transformations( documents, # type: ignore service_context.transformations, show_progress=show_progress, **kwargs, ) return cls( nodes=nodes, storage_context=storage_context, service_context=service_context, show_progress=show_progress, **kwargs, ) @property def index_struct(self) -> IS: """Get the index struct.""" return self._index_struct @property def index_id(self) -> str: """Get the index struct.""" return self._index_struct.index_id def set_index_id(self, index_id: str) -> None: """Set the index id. NOTE: if you decide to set the index_id on the index_struct manually, you will need to explicitly call `add_index_struct` on the `index_store` to update the index store. .. code-block:: python index.index_struct.index_id = index_id index.storage_context.index_store.add_index_struct(index.index_struct) Args: index_id (str): Index id to set. """ # delete the old index struct old_id = self._index_struct.index_id self._storage_context.index_store.delete_index_struct(old_id) # add the new index struct self._index_struct.index_id = index_id self._storage_context.index_store.add_index_struct(self._index_struct) @property def docstore(self) -> BaseDocumentStore: """Get the docstore corresponding to the index.""" return self._docstore @property def service_context(self) -> ServiceContext: return self._service_context @property def storage_context(self) -> StorageContext: return self._storage_context @property def summary(self) -> str: return str(self._index_struct.summary) @summary.setter def summary(self, new_summary: str) -> None: self._index_struct.summary = new_summary self._storage_context.index_store.add_index_struct(self._index_struct) @abstractmethod def _build_index_from_nodes(self, nodes: Sequence[BaseNode]) -> IS: """Build the index from nodes.""" def build_index_from_nodes(self, nodes: Sequence[BaseNode]) -> IS: """Build the index from nodes.""" self._docstore.add_documents(nodes, allow_update=True) return self._build_index_from_nodes(nodes) @abstractmethod def _insert(self, nodes: Sequence[BaseNode], **insert_kwargs: Any) -> None: """Index-specific logic for inserting nodes to the index struct.""" def insert_nodes(self, nodes: Sequence[BaseNode], **insert_kwargs: Any) -> None: """Insert nodes.""" with self._service_context.callback_manager.as_trace("insert_nodes"): self.docstore.add_documents(nodes, allow_update=True) self._insert(nodes, **insert_kwargs) self._storage_context.index_store.add_index_struct(self._index_struct) def insert(self, document: Document, **insert_kwargs: Any) -> None: """Insert a document.""" with self._service_context.callback_manager.as_trace("insert"): nodes = run_transformations( [document], self._service_context.transformations, show_progress=self._show_progress, ) self.insert_nodes(nodes, **insert_kwargs) self.docstore.set_document_hash(document.get_doc_id(), document.hash) @abstractmethod def _delete_node(self, node_id: str, **delete_kwargs: Any) -> None: """Delete a node.""" def delete_nodes( self, node_ids: List[str], delete_from_docstore: bool = False, **delete_kwargs: Any, ) -> None: """Delete a list of nodes from the index. Args: doc_ids (List[str]): A list of doc_ids from the nodes to delete """ for node_id in node_ids: self._delete_node(node_id, **delete_kwargs) if delete_from_docstore: self.docstore.delete_document(node_id, raise_error=False) self._storage_context.index_store.add_index_struct(self._index_struct) def delete(self, doc_id: str, **delete_kwargs: Any) -> None: """Delete a document from the index. All nodes in the index related to the index will be deleted. Args: doc_id (str): A doc_id of the ingested document """ logger.warning( "delete() is now deprecated, please refer to delete_ref_doc() to delete " "ingested documents+nodes or delete_nodes to delete a list of nodes." ) self.delete_ref_doc(doc_id) def delete_ref_doc( self, ref_doc_id: str, delete_from_docstore: bool = False, **delete_kwargs: Any ) -> None: """Delete a document and it's nodes by using ref_doc_id.""" ref_doc_info = self.docstore.get_ref_doc_info(ref_doc_id) if ref_doc_info is None: logger.warning(f"ref_doc_id {ref_doc_id} not found, nothing deleted.") return self.delete_nodes( ref_doc_info.node_ids, delete_from_docstore=False, **delete_kwargs, ) if delete_from_docstore: self.docstore.delete_ref_doc(ref_doc_id, raise_error=False) def update(self, document: Document, **update_kwargs: Any) -> None: """Update a document and it's corresponding nodes. This is equivalent to deleting the document and then inserting it again. Args: document (Union[BaseDocument, BaseIndex]): document to update insert_kwargs (Dict): kwargs to pass to insert delete_kwargs (Dict): kwargs to pass to delete """ logger.warning( "update() is now deprecated, please refer to update_ref_doc() to update " "ingested documents+nodes." ) self.update_ref_doc(document, **update_kwargs) def update_ref_doc(self, document: Document, **update_kwargs: Any) -> None: """Update a document and it's corresponding nodes. This is equivalent to deleting the document and then inserting it again. Args: document (Union[BaseDocument, BaseIndex]): document to update insert_kwargs (Dict): kwargs to pass to insert delete_kwargs (Dict): kwargs to pass to delete """ with self._service_context.callback_manager.as_trace("update"): self.delete_ref_doc( document.get_doc_id(), delete_from_docstore=True, **update_kwargs.pop("delete_kwargs", {}), ) self.insert(document, **update_kwargs.pop("insert_kwargs", {})) def refresh( self, documents: Sequence[Document], **update_kwargs: Any ) -> List[bool]: """Refresh an index with documents that have changed. This allows users to save LLM and Embedding model calls, while only updating documents that have any changes in text or metadata. It will also insert any documents that previously were not stored. """ logger.warning( "refresh() is now deprecated, please refer to refresh_ref_docs() to " "refresh ingested documents+nodes with an updated list of documents." ) return self.refresh_ref_docs(documents, **update_kwargs) def refresh_ref_docs( self, documents: Sequence[Document], **update_kwargs: Any ) -> List[bool]: """Refresh an index with documents that have changed. This allows users to save LLM and Embedding model calls, while only updating documents that have any changes in text or metadata. It will also insert any documents that previously were not stored. """ with self._service_context.callback_manager.as_trace("refresh"): refreshed_documents = [False] * len(documents) for i, document in enumerate(documents): existing_doc_hash = self._docstore.get_document_hash( document.get_doc_id() ) if existing_doc_hash is None: self.insert(document, **update_kwargs.pop("insert_kwargs", {})) refreshed_documents[i] = True elif existing_doc_hash != document.hash: self.update_ref_doc( document, **update_kwargs.pop("update_kwargs", {}) ) refreshed_documents[i] = True return refreshed_documents @property @abstractmethod def ref_doc_info(self) -> Dict[str, RefDocInfo]: """Retrieve a dict mapping of ingested documents and their nodes+metadata.""" ... @abstractmethod def as_retriever(self, **kwargs: Any) -> BaseRetriever: ... def as_query_engine(self, **kwargs: Any) -> BaseQueryEngine: # NOTE: lazy import from llama_index.query_engine.retriever_query_engine import RetrieverQueryEngine retriever = self.as_retriever(**kwargs) kwargs["retriever"] = retriever if "service_context" not in kwargs: kwargs["service_context"] = self._service_context return RetrieverQueryEngine.from_args(**kwargs) def as_chat_engine( self, chat_mode: ChatMode = ChatMode.BEST, **kwargs: Any ) -> BaseChatEngine: query_engine = self.as_query_engine(**kwargs) if "service_context" not in kwargs: kwargs["service_context"] = self._service_context # resolve chat mode if chat_mode in [ChatMode.REACT, ChatMode.OPENAI, ChatMode.BEST]: # use an agent with query engine tool in these chat modes # NOTE: lazy import from llama_index.agent import AgentRunner from llama_index.tools.query_engine import QueryEngineTool # get LLM service_context = cast(ServiceContext, kwargs["service_context"]) llm = service_context.llm # convert query engine to tool query_engine_tool = QueryEngineTool.from_defaults(query_engine=query_engine) return AgentRunner.from_llm(tools=[query_engine_tool], llm=llm, **kwargs) if chat_mode == ChatMode.CONDENSE_QUESTION: # NOTE: lazy import from llama_index.chat_engine import CondenseQuestionChatEngine return CondenseQuestionChatEngine.from_defaults( query_engine=query_engine, **kwargs, ) elif chat_mode == ChatMode.CONTEXT: from llama_index.chat_engine import ContextChatEngine return ContextChatEngine.from_defaults( retriever=self.as_retriever(**kwargs), **kwargs, ) elif chat_mode == ChatMode.CONDENSE_PLUS_CONTEXT: from llama_index.chat_engine import CondensePlusContextChatEngine return CondensePlusContextChatEngine.from_defaults( retriever=self.as_retriever(**kwargs), **kwargs, ) elif chat_mode == ChatMode.SIMPLE: from llama_index.chat_engine import SimpleChatEngine return SimpleChatEngine.from_defaults( **kwargs, ) else: raise ValueError(f"Unknown chat mode: {chat_mode}") # legacy BaseGPTIndex = BaseIndex