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langchain/templates
Sayandip 8dbbcf0b6c
Adding a template for Solo Performance Prompting Agent (#12627)
**Description:** This template creates an agent that transforms a single
LLM into a cognitive synergist by engaging in multi-turn
self-collaboration with multiple personas.
**Tag maintainer:** @hwchase17

---------

Co-authored-by: Sayandip Sarkar <sayandip.sarkar@skypointcloud.com>
Co-authored-by: Erick Friis <erick@langchain.dev>
11 months ago
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anthropic-iterative-search update lc version (#12655) 11 months ago
cassandra-entomology-rag update lc version (#12655) 11 months ago
cassandra-synonym-caching update lc version (#12655) 11 months ago
chat-bot-feedback fix elastic rag template in playground (#12682) 11 months ago
csv-agent update lc version (#12655) 11 months ago
docs template updates (#12646) 11 months ago
elastic-query-generator update lc version (#12655) 11 months ago
extraction-anthropic-functions update lc version (#12655) 11 months ago
extraction-openai-functions update lc version (#12655) 11 months ago
guardrails-output-parser update lc version (#12655) 11 months ago
hybrid-search-weaviate Update README for Hybrid Search Weaviate (#12661) 11 months ago
hyde update lc version (#12655) 11 months ago
llama2-functions update lc version (#12655) 11 months ago
neo4j-cypher update lc version (#12655) 11 months ago
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neo4j-parent update lc version (#12655) 11 months ago
openai-functions-agent update lc version (#12655) 11 months ago
pii-protected-chatbot update lc version (#12655) 11 months ago
pirate-speak update lc version (#12655) 11 months ago
plate-chain fix plate chain (#12673) 11 months ago
rag-aws-bedrock update lc version (#12655) 11 months ago
rag-aws-kendra update lc version (#12655) 11 months ago
rag-chroma update lc version (#12655) 11 months ago
rag-chroma-private update lc version (#12655) 11 months ago
rag-codellama-fireworks update lc version (#12655) 11 months ago
rag-conversation update lc version (#12655) 11 months ago
rag-elasticsearch fix elastic rag template in playground (#12682) 11 months ago
rag-fusion update lc version (#12655) 11 months ago
rag-matching-engine Add RAG input types (#12684) 11 months ago
rag-mongo update lc version (#12655) 11 months ago
rag-pinecone Add RAG input types (#12684) 11 months ago
rag-pinecone-multi-query Add RAG input types (#12684) 11 months ago
rag-pinecone-rerank Add RAG input types (#12684) 11 months ago
rag-redis update lc version (#12655) 11 months ago
rag-semi-structured Add RAG input types (#12684) 11 months ago
rag-supabase Add RAG input types (#12684) 11 months ago
rag-timescale-hybrid-search-time Add RAG template for Timescale Vector (#12651) 11 months ago
rag-weaviate Add RAG input types (#12684) 11 months ago
rewrite-retrieve-read update lc version (#12655) 11 months ago
self-query-supabase update lc version (#12655) 11 months ago
solo-performance-prompting-agent Adding a template for Solo Performance Prompting Agent (#12627) 11 months ago
sql-llama2 update lc version (#12655) 11 months ago
sql-llamacpp update lc version (#12655) 11 months ago
sql-ollama update lc version (#12655) 11 months ago
stepback-qa-prompting update lc version (#12655) 11 months ago
summarize-anthropic update lc version (#12655) 11 months ago
xml-agent update lc version (#12655) 11 months ago
.gitignore Adds linter in templates (#12321) 11 months ago
Makefile Format Templates (#12396) 11 months ago
README.md add a template for the package readme (#12499) 11 months ago
poetry.lock Both lint and format `templates` with ruff v0.1.3. (#12676) 11 months ago
pyproject.toml Both lint and format `templates` with ruff v0.1.3. (#12676) 11 months ago

README.md

LangChain Templates

LangChain Templates are the easiest and fastest way to build a production-ready LLM application. These templates serve as a set of reference architectures for a wide variety of popular LLM use cases. They are all in a standard format which make it easy to deploy them with LangServe.

🚩 We will be releasing a hosted version of LangServe for one-click deployments of LangChain applications. Sign up here to get on the waitlist.

Quick Start

To use, first install the LangChain CLI.

pip install -U "langchain-cli[serve]"

Next, create a new LangChain project:

langchain app new my-app

This will create a new directory called my-app with two folders:

  • app: This is where LangServe code will live
  • packages: This is where your chains or agents will live

To pull in an existing template as a package, you first need to go into your new project:

cd my-app

And you can the add a template as a project. In this getting started guide, we will add a simple pirate-speak project. All this project does is convert user input into pirate speak.

langchain app add pirate-speak

This will pull in the specified template into packages/pirate-speak

You will then be prompted if you want to install it. This is the equivalent of running pip install -e packages/pirate-speak. You should generally accept this (or run that same command afterwards). We install it with -e so that if you modify the template at all (which you likely will) the changes are updated.

After that, it will ask you if you want to generate route code for this project. This is code you need to add to your app to start using this chain. If we accept, we will see the following code generated:

from pirate_speak.chain import chain as pirate_speak_chain

add_routes(app, pirate_speak_chain, path="/pirate-speak")

You can now edit the template you pulled down. You can change the code files in package/pirate-speak to use a different model, different prompt, different logic. Note that the above code snippet always expects the final chain to be importable as from pirate_speak.chain import chain, so you should either keep the structure of the package similar enough to respect that or be prepared to update that code snippet.

Once you have done as much of that as you want, it is In order to have LangServe use this project, you then need to modify app/server.py. Specifically, you should add the above code snippet to app/server.py so that file looks like:

from fastapi import FastAPI
from langserve import add_routes
from pirate_speak.chain import chain as pirate_speak_chain

app = FastAPI()

add_routes(app, pirate_speak_chain, path="/pirate-speak")

(Optional) Let's now configure LangSmith. LangSmith will help us trace, monitor and debug LangChain applications. LangSmith is currently in private beta, you can sign up here. If you don't have access, you can skip this section

export LANGCHAIN_TRACING_V2=true
export LANGCHAIN_API_KEY=<your-api-key>
export LANGCHAIN_PROJECT=<your-project>  # if not specified, defaults to "default"

For this particular application, we will use OpenAI as the LLM, so we need to export our OpenAI API key:

export OPENAI_API_KEY=sk-...

You can then spin up production-ready endpoints, along with a playground, by running:

langchain serve

This now gives a fully deployed LangServe application. For example, you get a playground out-of-the-box at http://127.0.0.1:8000/pirate-speak/playground/:

playground.png

Access API documentation at http://127.0.0.1:8000/docs

docs.png

Use the LangServe python or js SDK to interact with the API as if it were a regular Runnable.

from langserve import RemoteRunnable

api = RemoteRunnable("http://127.0.0.1:8000/pirate-speak")
api.invoke({"text": "hi"})

That's it for the quick start! You have successfully downloaded your first template and deployed it with LangServe.

Additional Resources

Index of Templates

Explore the many templates available to use - from advanced RAG to agents.

Contributing

Want to contribute your own template? It's pretty easy! These instructions walk through how to do that.

Launching LangServe from a Package

You can also launch LangServe from a package directly (without having to create a new project). These instructions cover how to do that.