# Text embedding models :::info Head to [Integrations](/docs/integrations/text_embedding/) for documentation on built-in integrations with text embedding model providers. ::: The Embeddings class is a class designed for interfacing with text embedding models. There are lots of embedding model providers (OpenAI, Cohere, Hugging Face, etc) - this class is designed to provide a standard interface for all of them. Embeddings create a vector representation of a piece of text. This is useful because it means we can think about text in the vector space, and do things like semantic search where we look for pieces of text that are most similar in the vector space. The base Embeddings class in LangChain provides two methods: one for embedding documents and one for embedding a query. The former, `.embed_documents`, takes as input multiple texts, while the latter, `.embed_query`, takes a single text. The reason for having these as two separate methods is that some embedding providers have different embedding methods for documents (to be searched over) vs queries (the search query itself). `.embed_query` will return a list of floats, whereas `.embed_documents` returns a list of lists of floats. ## Get started ### Setup import Tabs from '@theme/Tabs'; import TabItem from '@theme/TabItem'; To start we'll need to install the OpenAI partner package: ```bash pip install langchain-openai ``` Accessing the API requires an API key, which you can get by creating an account and heading [here](https://platform.openai.com/account/api-keys). Once we have a key we'll want to set it as an environment variable by running: ```bash export OPENAI_API_KEY="..." ``` If you'd prefer not to set an environment variable you can pass the key in directly via the `api_key` named parameter when initiating the OpenAI LLM class: ```python from langchain_openai import OpenAIEmbeddings embeddings_model = OpenAIEmbeddings(api_key="...") ``` Otherwise you can initialize without any params: ```python from langchain_openai import OpenAIEmbeddings embeddings_model = OpenAIEmbeddings() ``` To start we'll need to install the Cohere SDK package: ```bash pip install langchain-cohere ``` Accessing the API requires an API key, which you can get by creating an account and heading [here](https://dashboard.cohere.com/api-keys). Once we have a key we'll want to set it as an environment variable by running: ```shell export COHERE_API_KEY="..." ``` If you'd prefer not to set an environment variable you can pass the key in directly via the `cohere_api_key` named parameter when initiating the Cohere LLM class: ```python from langchain_cohere import CohereEmbeddings embeddings_model = CohereEmbeddings(cohere_api_key="...") ``` Otherwise you can initialize without any params: ```python from langchain_cohere import CohereEmbeddings embeddings_model = CohereEmbeddings() ``` ### `embed_documents` #### Embed list of texts Use `.embed_documents` to embed a list of strings, recovering a list of embeddings: ```python embeddings = embeddings_model.embed_documents( [ "Hi there!", "Oh, hello!", "What's your name?", "My friends call me World", "Hello World!" ] ) len(embeddings), len(embeddings[0]) ``` ``` (5, 1536) ``` ### `embed_query` #### Embed single query Use `.embed_query` to embed a single piece of text (e.g., for the purpose of comparing to other embedded pieces of texts). ```python embedded_query = embeddings_model.embed_query("What was the name mentioned in the conversation?") embedded_query[:5] ``` ``` [0.0053587136790156364, -0.0004999046213924885, 0.038883671164512634, -0.003001077566295862, -0.00900818221271038] ```