Build an Extraction Chain
In this tutorial, we will build a chain to extract structured information from unstructured text.
This tutorial will only work with models that support function/tool calling
Concepts
Concepts we will cover are: - Using language models - Using function/tool calling - Debugging and tracing your application using LangSmith
Setup
Installation
To install LangChain run:
- npm
- yarn
- pnpm
npm i langchain
yarn add langchain
pnpm add langchain
For more details, see our Installation guide.
LangSmith
Many of the applications you build with LangChain will contain multiple steps with multiple invocations of LLM calls. As these applications get more and more complex, it becomes crucial to be able to inspect what exactly is going on inside your chain or agent. The best way to do this is with LangSmith.
After you sign up at the link above, make sure to set your environment variables to start logging traces:
export LANGCHAIN_TRACING_V2="true"
export LANGCHAIN_API_KEY="..."
The Schema
First, we need to describe what information we want to extract from the text.
We’ll use Zod to define an example schema to extract personal information.
- npm
- yarn
- pnpm
npm i zod @langchain/core
yarn add zod @langchain/core
pnpm add zod @langchain/core
import { z } from "zod";
const personSchema = z.object({
name: z.string().nullish().describe("The name of the person"),
hair_color: z
.string()
.nullish()
.describe("The color of the person's hair if known"),
height_in_meters: z.string().nullish().describe("Height measured in meters"),
});
There are two best practices when defining schema:
- Document the attributes and the schema itself: This information is sent to the LLM and is used to improve the quality of information extraction.
- Do not force the LLM to make up information! Above we used
.nullish()
for the attributes allowing the LLM to outputnull
orundefined
if it doesn’t know the answer.
For best performance, document the schema well and make sure the model isn’t force to return results if there’s no information to be extracted in the text.
The Extractor
Let’s create an information extractor using the schema we defined above.
import { ChatPromptTemplate } from "@langchain/core/prompts";
// import { MessagesPlaceholder } from "@langchain/core/messages";
// Define a custom prompt to provide instructions and any additional context.
// 1) You can add examples into the prompt template to improve extraction quality
// 2) Introduce additional parameters to take context into account (e.g., include metadata
// about the document from which the text was extracted.)
const prompt = ChatPromptTemplate.fromMessages([
[
"system",
`You are an expert extraction algorithm.
Only extract relevant information from the text.
If you do not know the value of an attribute asked to extract,
return null for the attribute's value.`,
],
// Please see the how-to about improving performance with
// reference examples.
// new MessagesPlaceholder("examples"),
["human", "{text}"],
]);
We need to use a model that supports function/tool calling.
Please review the documentation for list of some models that can be used with this API.
import { ChatAnthropic } from "@langchain/anthropic";
const llm = new ChatAnthropic({
model: "claude-3-sonnet-20240229",
temperature: 0,
});
const runnable = prompt.pipe(llm.withStructuredOutput(personSchema));
Let’s test it out
const text = "Alan Smith is 6 feet tall and has blond hair.";
await runnable.invoke({ text });
{ name: "Alan Smith", hair_color: "blond", height_in_meters: "1.83" }
Extraction is Generative 🤯
LLMs are generative models, so they can do some pretty cool things like correctly extract the height of the person in meters even though it was provided in feet!
We can see the LangSmith trace here
Multiple Entities
In most cases, you should be extracting a list of entities rather than a single entity.
This can be easily achieved using pydantic by nesting models inside one another.
import { z } from "zod";
const personSchema = z.object({
name: z.string().nullish().describe("The name of the person"),
hair_color: z
.string()
.nullish()
.describe("The color of the person's hair if known"),
height_in_meters: z.number().nullish().describe("Height measured in meters"),
});
const dataSchema = z.object({
people: z.array(personSchema).describe("Extracted data about people"),
});
Extraction might not be perfect here. Please continue to see how to use Reference Examples to improve the quality of extraction, and see the guidelines section!
const runnable = prompt.pipe(llm.withStructuredOutput(dataSchema));
const text =
"My name is Jeff, my hair is black and i am 6 feet tall. Anna has the same color hair as me.";
await runnable.invoke({ text });
{
people: [
{ name: "Jeff", hair_color: "black", height_in_meters: 1.83 },
{ name: "Anna", hair_color: "black", height_in_meters: null }
]
}
When the schema accommodates the extraction of multiple entities, it also allows the model to extract no entities if no relevant information is in the text by providing an empty list.
This is usually a good thing! It allows specifying required attributes on an entity without necessarily forcing the model to detect this entity.
We can see the LangSmith trace here
Next steps
Now that you understand the basics of extraction with LangChain, you’re ready to proceed to the rest of the how-to guides:
- Add Examples: Learn how to use reference examples to improve performance.
- Handle Long Text: What should you do if the text does not fit into the context window of the LLM?
- Use a Parsing Approach: Use a prompt based approach to extract with models that do not support tool/function calling.