# Summarization Summarization involves creating a smaller summary of multiple longer documents. This can be useful for distilling long documents into the core pieces of information. The recommended way to get started using a summarization chain is: ```python from langchain.chains.summarize import load_summarize_chain chain = load_summarize_chain(llm, chain_type="map_reduce") chain.run(docs) ``` The following resources exist: - [Summarization Notebook](../modules/indexes/chain_examples/summarize.ipynb): A notebook walking through how to accomplish this task. Additional related resources include: - [Utilities for working with Documents](../reference/utils.rst): Guides on how to use several of the utilities which will prove helpful for this task, including Text Splitters (for splitting up long documents). - [CombineDocuments Chains](../modules/indexes/combine_docs.md): A conceptual overview of specific types of chains by which you can accomplish this task. - [Data Augmented Generation](./combine_docs.md): An overview of data augmented generation, which is the general concept of combining external data with LLMs (of which this is a subset).