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langchain/docs/snippets/modules/data_connection/retrievers/get_started.mdx

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The `BaseRetriever` class in LangChain is as follows:
```python
from abc import ABC, abstractmethod
from typing import List
from langchain.schema import Document
class BaseRetriever(ABC):
@abstractmethod
def get_relevant_documents(self, query: str) -> List[Document]:
"""Get texts relevant for a query.
Args:
query: string to find relevant texts for
Returns:
List of relevant documents
"""
```
It's that simple! The `get_relevant_documents` method can be implemented however you see fit.
Of course, we also help construct what we think useful Retrievers are. The main type of Retriever that we focus on is a Vectorstore retriever. We will focus on that for the rest of this guide.
In order to understand what a vectorstore retriever is, it's important to understand what a Vectorstore is. So let's look at that.
By default, LangChain uses [Chroma](/docs/ecosystem/integrations/chroma.html) as the vectorstore to index and search embeddings. To walk through this tutorial, we'll first need to install `chromadb`.
```
pip install chromadb
```
This example showcases question answering over documents.
We have chosen this as the example for getting started because it nicely combines a lot of different elements (Text splitters, embeddings, vectorstores) and then also shows how to use them in a chain.
Question answering over documents consists of four steps:
1. Create an index
2. Create a Retriever from that index
3. Create a question answering chain
4. Ask questions!
Each of the steps has multiple sub steps and potential configurations. In this notebook we will primarily focus on (1). We will start by showing the one-liner for doing so, but then break down what is actually going on.
First, let's import some common classes we'll use no matter what.
```python
from langchain.chains import RetrievalQA
from langchain.llms import OpenAI
```
Next in the generic setup, let's specify the document loader we want to use. You can download the `state_of_the_union.txt` file [here](https://github.com/hwchase17/langchain/blob/master/docs/modules/state_of_the_union.txt)
```python
from langchain.document_loaders import TextLoader
loader = TextLoader('../state_of_the_union.txt', encoding='utf8')
```
## One Line Index Creation
To get started as quickly as possible, we can use the `VectorstoreIndexCreator`.
```python
from langchain.indexes import VectorstoreIndexCreator
```
```python
index = VectorstoreIndexCreator().from_loaders([loader])
```
<CodeOutputBlock lang="python">
```
Running Chroma using direct local API.
Using DuckDB in-memory for database. Data will be transient.
```
</CodeOutputBlock>
Now that the index is created, we can use it to ask questions of the data! Note that under the hood this is actually doing a few steps as well, which we will cover later in this guide.
```python
query = "What did the president say about Ketanji Brown Jackson"
index.query(query)
```
<CodeOutputBlock lang="python">
```
" The president said that Ketanji Brown Jackson is one of the nation's top legal minds, a former top litigator in private practice, a former federal public defender, and from a family of public school educators and police officers. He also said that she is a consensus builder and has received a broad range of support from the Fraternal Order of Police to former judges appointed by Democrats and Republicans."
```
</CodeOutputBlock>
```python
query = "What did the president say about Ketanji Brown Jackson"
index.query_with_sources(query)
```
<CodeOutputBlock lang="python">
```
{'question': 'What did the president say about Ketanji Brown Jackson',
'answer': " The president said that he nominated Circuit Court of Appeals Judge Ketanji Brown Jackson, one of the nation's top legal minds, to continue Justice Breyer's legacy of excellence, and that she has received a broad range of support from the Fraternal Order of Police to former judges appointed by Democrats and Republicans.\n",
'sources': '../state_of_the_union.txt'}
```
</CodeOutputBlock>
What is returned from the `VectorstoreIndexCreator` is `VectorStoreIndexWrapper`, which provides these nice `query` and `query_with_sources` functionality. If we just wanted to access the vectorstore directly, we can also do that.
```python
index.vectorstore
```
<CodeOutputBlock lang="python">
```
<langchain.vectorstores.chroma.Chroma at 0x119aa5940>
```
</CodeOutputBlock>
If we then want to access the VectorstoreRetriever, we can do that with:
```python
index.vectorstore.as_retriever()
```
<CodeOutputBlock lang="python">
```
VectorStoreRetriever(vectorstore=<langchain.vectorstores.chroma.Chroma object at 0x119aa5940>, search_kwargs={})
```
</CodeOutputBlock>
## Walkthrough
Okay, so what's actually going on? How is this index getting created?
A lot of the magic is being hid in this `VectorstoreIndexCreator`. What is this doing?
There are three main steps going on after the documents are loaded:
1. Splitting documents into chunks
2. Creating embeddings for each document
3. Storing documents and embeddings in a vectorstore
Let's walk through this in code
```python
documents = loader.load()
```
Next, we will split the documents into chunks.
```python
from langchain.text_splitter import CharacterTextSplitter
text_splitter = CharacterTextSplitter(chunk_size=1000, chunk_overlap=0)
texts = text_splitter.split_documents(documents)
```
We will then select which embeddings we want to use.
```python
from langchain.embeddings import OpenAIEmbeddings
embeddings = OpenAIEmbeddings()
```
We now create the vectorstore to use as the index.
```python
from langchain.vectorstores import Chroma
db = Chroma.from_documents(texts, embeddings)
```
<CodeOutputBlock lang="python">
```
Running Chroma using direct local API.
Using DuckDB in-memory for database. Data will be transient.
```
</CodeOutputBlock>
So that's creating the index. Then, we expose this index in a retriever interface.
```python
retriever = db.as_retriever()
```
Then, as before, we create a chain and use it to answer questions!
```python
qa = RetrievalQA.from_chain_type(llm=OpenAI(), chain_type="stuff", retriever=retriever)
```
```python
query = "What did the president say about Ketanji Brown Jackson"
qa.run(query)
```
<CodeOutputBlock lang="python">
```
" The President said that Judge Ketanji Brown Jackson is one of the nation's top legal minds, a former top litigator in private practice, a former federal public defender, and from a family of public school educators and police officers. He said she is a consensus builder and has received a broad range of support from organizations such as the Fraternal Order of Police and former judges appointed by Democrats and Republicans."
```
</CodeOutputBlock>
`VectorstoreIndexCreator` is just a wrapper around all this logic. It is configurable in the text splitter it uses, the embeddings it uses, and the vectorstore it uses. For example, you can configure it as below:
```python
index_creator = VectorstoreIndexCreator(
vectorstore_cls=Chroma,
embedding=OpenAIEmbeddings(),
text_splitter=CharacterTextSplitter(chunk_size=1000, chunk_overlap=0)
)
```
Hopefully this highlights what is going on under the hood of `VectorstoreIndexCreator`. While we think it's important to have a simple way to create indexes, we also think it's important to understand what's going on under the hood.