--- title: "MongoDBAtlasEmbeddingRetriever" id: mongodbatlasembeddingretriever slug: "/mongodbatlasembeddingretriever" description: "This is an embedding Retriever compatible with the MongoDB Atlas Document Store." --- # MongoDBAtlasEmbeddingRetriever This is an embedding Retriever compatible with the MongoDB Atlas Document Store.
| | | | --- | --- | | **Most common position in a pipeline** | 1. After a Text Embedder and before a [`PromptBuilder`](../builders/promptbuilder.mdx) in a RAG pipeline 2. The last component in the semantic search pipeline 3. After a Text Embedder and before an [`ExtractiveReader`](../readers/extractivereader.mdx) in an extractive QA pipeline | | **Mandatory init variables** | `document_store`: An instance of a [MongoDBAtlasDocumentStore](../../document-stores/mongodbatlasdocumentstore.mdx) | | **Mandatory run variables** | `query_embedding`: A list of floats | | **Output variables** | `documents`: A list of documents | | **API reference** | [MongoDB Atlas](/reference/integrations-mongodb-atlas) | | **GitHub link** | https://github.com/deepset-ai/haystack-core-integrations/tree/main/integrations/mongodb_atlas |
The `MongoDBAtlasEmbeddingRetriever` is an embedding-based Retriever compatible with the [`MongoDBAtlasDocumentStore`](../../document-stores/mongodbatlasdocumentstore.mdx). It compares the query and Document embeddings and fetches the Documents most relevant to the query from the Document Store based on the outcome. ### Parameters When using the `MongoDBAtlasEmbeddingRetriever` in your NLP system, ensure the query and Document [embeddings](../embedders.mdx) are available. You can do so by adding a Document Embedder to your indexing Pipeline and a Text Embedder to your query Pipeline. In addition to the `query_embedding`, the `MongoDBAtlasEmbeddingRetriever` accepts other optional parameters, including `top_k` (the maximum number of Documents to retrieve) and `filters` to narrow down the search space. ## Usage ### Installation To start using MongoDB Atlas with Haystack, install the package with: ```shell pip install mongodb-atlas-haystack ``` ### On its own The Retriever needs an instance of `MongoDBAtlasDocumentStore` and indexed Documents to run. ```python from haystack_integrations.document_stores.mongodb_atlas import ( MongoDBAtlasDocumentStore, ) from haystack_integrations.components.retrievers.mongodb_atlas import ( MongoDBAtlasEmbeddingRetriever, ) document_store = MongoDBAtlasDocumentStore() retriever = MongoDBAtlasEmbeddingRetriever(document_store=document_store) ## example run query retriever.run(query_embedding=[0.1] * 384) ``` ### In a Pipeline ```python from haystack import Pipeline, Document from haystack.document_stores.types import DuplicatePolicy from haystack.components.writers import DocumentWriter from haystack.components.generators import OpenAIGenerator from haystack.components.builders.prompt_builder import PromptBuilder from haystack.components.embedders import ( SentenceTransformersDocumentEmbedder, SentenceTransformersTextEmbedder, ) from haystack_integrations.document_stores.mongodb_atlas import ( MongoDBAtlasDocumentStore, ) from haystack_integrations.components.embedders.mongodb_atlas import ( MongoDBAtlasEmbeddingRetriever, ) ## Create some example documents documents = [ Document(content="My name is Jean and I live in Paris."), Document(content="My name is Mark and I live in Berlin."), Document(content="My name is Giorgio and I live in Rome."), ] ## We support many different databases. Here we load a simple and lightweight in-memory document store. document_store = MongoDBAtlasDocumentStore() ## Define some more components doc_writer = DocumentWriter(document_store=document_store, policy=DuplicatePolicy.SKIP) doc_embedder = SentenceTransformersDocumentEmbedder(model="intfloat/e5-base-v2") query_embedder = SentenceTransformersTextEmbedder(model="intfloat/e5-base-v2") ## Pipeline that ingests document for retrieval ingestion_pipe = Pipeline() ingestion_pipe.add_component(instance=doc_embedder, name="doc_embedder") ingestion_pipe.add_component(instance=doc_writer, name="doc_writer") ingestion_pipe.connect("doc_embedder.documents", "doc_writer.documents") ingestion_pipe.run({"doc_embedder": {"documents": documents}}) ## Build a RAG pipeline with a Retriever to get relevant documents to ## the query and a OpenAIGenerator interacting with LLMs using a custom prompt. prompt_template = """ Given these documents, answer the question.\nDocuments: {% for doc in documents %} {{ doc.content }} {% endfor %} \nQuestion: {{question}} \nAnswer: """ rag_pipeline = Pipeline() rag_pipeline.add_component(instance=query_embedder, name="query_embedder") rag_pipeline.add_component( instance=MongoDBAtlasEmbeddingRetriever(document_store=document_store), name="retriever", ) rag_pipeline.add_component( instance=PromptBuilder(template=prompt_template), name="prompt_builder", ) rag_pipeline.add_component(instance=OpenAIGenerator(), name="llm") rag_pipeline.connect("query_embedder", "retriever.query_embedding") rag_pipeline.connect("embedding_retriever", "prompt_builder.documents") rag_pipeline.connect("prompt_builder", "llm") ## Ask a question on the data you just added. question = "Where does Mark live?" result = rag_pipeline.run( { "query_embedder": {"text": question}, "prompt_builder": {"question": question}, }, ) ## For details, like which documents were used to generate the answer, look into the GeneratedAnswer object print(result["answer_builder"]["answers"]) ```