Spaces:
Runtime error
Runtime error
# Key Concepts | |
## Text Splitter | |
This class is responsible for splitting long pieces of text into smaller components. | |
It contains different ways for splitting text (on characters, using Spacy, etc) | |
as well as different ways for measuring length (token based, character based, etc). | |
## Embeddings | |
These classes are very similar to the LLM classes in that they are wrappers around models, | |
but rather than return a string they return an embedding (list of floats). These are particularly useful when | |
implementing semantic search functionality. They expose separate methods for embedding queries versus embedding documents. | |
## Vectorstores | |
These are datastores that store embeddings of documents in vector form. | |
They expose a method for passing in a string and finding similar documents. | |
## CombineDocuments Chains | |
These are a subset of chains designed to work with documents. There are two pieces to consider: | |
1. The underlying chain method (eg, how the documents are combined) | |
2. Use cases for these types of chains. | |
For the first, please see [this documentation](combine_docs.md) for more detailed information on the types of chains LangChain supports. | |
For the second, please see the Use Cases section for more information on [question answering](/use_cases/question_answering.md), | |
[question answering with sources](/use_cases/qa_with_sources.md), and [summarization](/use_cases/summarization.md). | |