--- title: "FastembedTextEmbedder" id: fastembedtextembedder slug: "/fastembedtextembedder" description: "This component computes the embeddings of a string using embedding models supported by FastEmbed." --- # FastembedTextEmbedder This component computes the embeddings of a string using embedding models supported by FastEmbed.
| | | | --- | --- | | **Most common position in a pipeline** | Before an embedding [Retriever](../retrievers.mdx) in a query/RAG pipeline | | **Mandatory run variables** | `text`: A string | | **Output variables** | `embedding`: A vector (list of float numbers) | | **API reference** | [FastEmbed](/reference/fastembed-embedders) | | **GitHub link** | https://github.com/deepset-ai/haystack-core-integrations/tree/main/integrations/fastembed |
This component should be used to embed a simple string (such as a query) into a vector. For embedding lists of documents, use the [`FastembedDocumentEmbedder`](fastembeddocumentembedder.mdx), which enriches the document with the computed embedding, known as vector. ## Overview `FastembedTextEmbedder` transforms a string into a vector that captures its semantics using embedding [models supported by FastEmbed](https://qdrant.github.io/fastembed/examples/Supported_Models/). When you perform embedding retrieval, use this component first to transform your query into a vector. Then, the embedding Retriever will use the vector to search for similar or relevant documents. ### Compatible models You can find the original models in the [FastEmbed documentation](https://qdrant.github.io/fastembed/). Currently, most of the models in the [Massive Text Embedding Benchmark (MTEB) Leaderboard](https://huggingface.co/spaces/mteb/leaderboard) are compatible with FastEmbed. You can look for compatibility in the [supported model list](https://qdrant.github.io/fastembed/examples/Supported_Models/). ### Installation To start using this integration with Haystack, install the package with: ```bash pip install fastembed-haystack ``` ### Instructions Some recent models that you can find in MTEB require prepending the text with an instruction to work better for retrieval. For example, if you use `[BAAI/bge-large-en-v1.5](https://huggingface.co/BAAI/bge-large-en-v1.5#model-list)` model, you should prefix your query with the `instruction: “passage:”`. This is how it works with `FastembedTextEmbedder`: ```python instruction = "passage:" embedder = FastembedTextEmbedder( *model="*BAAI/bge-large-en-v1.5", prefix=instruction) ``` ### Parameters You can set the path where the model will be stored in a cache directory. Also, you can set the number of threads a single `onnxruntime` session can use. ```python cache_dir= "/your_cacheDirectory" embedder = FastembedTextEmbedder( *model="*BAAI/bge-large-en-v1.5", cache_dir=cache_dir, threads=2 ) ``` If you want to use the data parallel encoding, you can set the parameters `parallel` and `batch_size`. - If parallel > 1, data-parallel encoding will be used. This is recommended for offline encoding of large datasets. - If parallel is 0, use all available cores. - If None, don't use data-parallel processing; use default `onnxruntime` threading instead. :::tip If you create a Text Embedder and a Document Embedder based on the same model, Haystack uses the same resource behind the scenes to save resources. ::: ## Usage ### On its own ```python from haystack_integrations.components.embedders.fastembed import FastembedTextEmbedder text = """It clearly says online this will work on a Mac OS system. The disk comes and it does not, only Windows. Do Not order this if you have a Mac!!""" text_embedder = FastembedTextEmbedder(model="BAAI/bge-small-en-v1.5") text_embedder.warm_up() embedding = text_embedder.run(text)["embedding"] ``` ### In a pipeline ```python from haystack import Document, Pipeline from haystack.components.retrievers.in_memory import InMemoryEmbeddingRetriever from haystack.document_stores.in_memory import InMemoryDocumentStore from haystack_integrations.components.embedders.fastembed import ( FastembedDocumentEmbedder, FastembedTextEmbedder, ) document_store = InMemoryDocumentStore(embedding_similarity_function="cosine") documents = [ Document(content="My name is Wolfgang and I live in Berlin"), Document(content="I saw a black horse running"), Document(content="Germany has many big cities"), Document(content="fastembed is supported by and maintained by Qdrant."), ] document_embedder = FastembedDocumentEmbedder() document_embedder.warm_up() documents_with_embeddings = document_embedder.run(documents)["documents"] document_store.write_documents(documents_with_embeddings) query_pipeline = Pipeline() query_pipeline.add_component("text_embedder", FastembedTextEmbedder()) query_pipeline.add_component( "retriever", InMemoryEmbeddingRetriever(document_store=document_store), ) query_pipeline.connect("text_embedder.embedding", "retriever.query_embedding") query = "Who supports FastEmbed?" result = query_pipeline.run({"text_embedder": {"text": query}}) print(result["retriever"]["documents"][0]) # noqa: T201 ## Document(id=..., ## content: 'FastEmbed is supported by and maintained by Qdrant.', ## score: 0.758..) ``` ## Additional References 🧑‍🍳 Cookbook: [RAG Pipeline Using FastEmbed for Embeddings Generation](https://haystack.deepset.ai/cookbook/rag_fastembed)