~ An effortless way to experiment and prototype LangChain pipelines ~
You can install Langflow from pip:
pip install langflow
Next, run:
python -m langflow
or
langflow # or langflow --help
Langflow provides a command-line interface (CLI) for easy management and configuration.
You can run the Langflow using the following command:
langflow [OPTIONS]
Each option is detailed below:
--help
: Displays all available options.--host
: Defines the host to bind the server to. Can be set using theLANGFLOW_HOST
environment variable. The default is127.0.0.1
.--workers
: Sets the number of worker processes. Can be set using theLANGFLOW_WORKERS
environment variable. The default is1
.--timeout
: Sets the worker timeout in seconds. The default is60
.--port
: Sets the port to listen on. Can be set using theLANGFLOW_PORT
environment variable. The default is7860
.--config
: Defines the path to the configuration file. The default isconfig.yaml
.--env-file
: Specifies the path to the .env file containing environment variables. The default is.env
.--log-level
: Defines the logging level. Can be set using theLANGFLOW_LOG_LEVEL
environment variable. The default iscritical
.--log-file
: Specifies the path to the log file. Can be set using theLANGFLOW_LOG_FILE
environment variable. The default islogs/langflow.log
.--cache
: Selects the type of cache to use. Options areInMemoryCache
andSQLiteCache
. Can be set using theLANGFLOW_LANGCHAIN_CACHE
environment variable. The default isSQLiteCache
.--jcloud/--no-jcloud
: Toggles the option to deploy on Jina AI Cloud. The default isno-jcloud
.--dev/--no-dev
: Toggles the development mode. The default isno-dev
.--database-url
: Sets the database URL to connect to. If not provided, a local SQLite database will be used. Can be set using theLANGFLOW_DATABASE_URL
environment variable.--path
: Specifies the path to the frontend directory containing build files. This option is for development purposes only. Can be set using theLANGFLOW_FRONTEND_PATH
environment variable.--open-browser/--no-open-browser
: Toggles the option to open the browser after starting the server. Can be set using theLANGFLOW_OPEN_BROWSER
environment variable. The default isopen-browser
.--remove-api-keys/--no-remove-api-keys
: Toggles the option to remove API keys from the projects saved in the database. Can be set using theLANGFLOW_REMOVE_API_KEYS
environment variable. The default isno-remove-api-keys
.--install-completion [bash|zsh|fish|powershell|pwsh]
: Installs completion for the specified shell.--show-completion [bash|zsh|fish|powershell|pwsh]
: Shows completion for the specified shell, allowing you to copy it or customize the installation.
You can configure many of the CLI options using environment variables. These can be exported in your operating system or added to a .env
file and loaded using the --env-file
option.
A sample .env
file named .env.example
is included with the project. Copy this file to a new file named .env
and replace the example values with your actual settings. If you're setting values in both your OS and the .env
file, the .env
settings will take precedence.
Follow our step-by-step guide to deploy Langflow on Google Cloud Platform (GCP) using Google Cloud Shell. The guide is available in the Langflow in Google Cloud Platform document.
Alternatively, click the "Open in Cloud Shell" button below to launch Google Cloud Shell, clone the Langflow repository, and start an interactive tutorial that will guide you through the process of setting up the necessary resources and deploying Langflow on your GCP project.
Deploy Langflow on Jina AI Cloud
Langflow integrates with langchain-serve to provide a one-command deployment to Jina AI Cloud.
Start by installing langchain-serve
with
pip install -U langchain-serve
Then, run:
langflow --jcloud
🎉 Langflow server successfully deployed on Jina AI Cloud 🎉
🔗 Click on the link to open the server (please allow ~1-2 minutes for the server to startup): https://<your-app>.wolf.jina.ai/
📖 Read more about managing the server: https://github.com/jina-ai/langchain-serve
Show complete (example) output
🚀 Deploying Langflow server on Jina AI Cloud
╭───────────────────────── 🎉 Flow is available! ──────────────────────────╮
│ │
│ ID langflow-e3dd8820ec │
│ Gateway (Websocket) wss:https://langflow-e3dd8820ec.wolf.jina.ai │
│ Dashboard https://dashboard.wolf.jina.ai/flow/e3dd8820ec │
│ │
╰──────────────────────────────────────────────────────────────────────────╯
╭──────────────┬──────────────────────────────────────────────────────────────────────────────╮
│ App ID │ langflow-e3dd8820ec │
├──────────────┼──────────────────────────────────────────────────────────────────────────────┤
│ Phase │ Serving │
├──────────────┼──────────────────────────────────────────────────────────────────────────────┤
│ Endpoint │ wss:https://langflow-e3dd8820ec.wolf.jina.ai │
├──────────────┼──────────────────────────────────────────────────────────────────────────────┤
│ App logs │ dashboards.wolf.jina.ai │
├──────────────┼──────────────────────────────────────────────────────────────────────────────┤
│ Swagger UI │ https://langflow-e3dd8820ec.wolf.jina.ai/docs │
├──────────────┼──────────────────────────────────────────────────────────────────────────────┤
│ OpenAPI JSON │ https://langflow-e3dd8820ec.wolf.jina.ai/openapi.json │
╰──────────────┴──────────────────────────────────────────────────────────────────────────────╯
🎉 Langflow server successfully deployed on Jina AI Cloud 🎉
🔗 Click on the link to open the server (please allow ~1-2 minutes for the server to startup): https://langflow-e3dd8820ec.wolf.jina.ai/
📖 Read more about managing the server: https://github.com/jina-ai/langchain-serve
You can use Langflow directly on your browser, or use the API endpoints on Jina AI Cloud to interact with the server.
Show API usage (with python)
import requests
BASE_API_URL = "https://langflow-e3dd8820ec.wolf.jina.ai/api/v1/predict"
FLOW_ID = "864c4f98-2e59-468b-8e13-79cd8da07468"
# You can tweak the flow by adding a tweaks dictionary
# e.g {"OpenAI-XXXXX": {"model_name": "gpt-4"}}
TWEAKS = {
"ChatOpenAI-g4jEr": {},
"ConversationChain-UidfJ": {}
}
def run_flow(message: str, flow_id: str, tweaks: dict = None) -> dict:
"""
Run a flow with a given message and optional tweaks.
:param message: The message to send to the flow
:param flow_id: The ID of the flow to run
:param tweaks: Optional tweaks to customize the flow
:return: The JSON response from the flow
"""
api_url = f"{BASE_API_URL}/{flow_id}"
payload = {"message": message}
if tweaks:
payload["tweaks"] = tweaks
response = requests.post(api_url, json=payload)
return response.json()
# Setup any tweaks you want to apply to the flow
print(run_flow("Your message", flow_id=FLOW_ID, tweaks=TWEAKS))
{
"result": "Great choice! Bangalore in the 1920s was a vibrant city with a rich cultural and political scene. Here are some suggestions for things to see and do:\n\n1. Visit the Bangalore Palace - built in 1887, this stunning palace is a perfect example of Tudor-style architecture. It was home to the Maharaja of Mysore and is now open to the public.\n\n2. Attend a performance at the Ravindra Kalakshetra - this cultural center was built in the 1920s and is still a popular venue for music and dance performances.\n\n3. Explore the neighborhoods of Basavanagudi and Malleswaram - both of these areas have retained much of their old-world charm and are great places to walk around and soak up the atmosphere.\n\n4. Check out the Bangalore Club - founded in 1868, this exclusive social club was a favorite haunt of the British expat community in the 1920s.\n\n5. Attend a meeting of the Indian National Congress - founded in 1885, the INC was a major force in the Indian independence movement and held many meetings and rallies in Bangalore in the 1920s.\n\nHope you enjoy your trip to 1920s Bangalore!"
}
Read more about resource customization, cost, and management of Langflow apps on Jina AI Cloud in the langchain-serve repository.
Creating flows with Langflow is easy. Simply drag sidebar components onto the canvas and connect them together to create your pipeline. Langflow provides a range of LangChain components to choose from, including LLMs, prompt serializers, agents, and chains.
Explore by editing prompt parameters, link chains and agents, track an agent's thought process, and export your flow.
Once you're done, you can export your flow as a JSON file to use with LangChain. To do so, click the "Export" button in the top right corner of the canvas, then in Python, you can load the flow with:
from langflow import load_flow_from_json
flow = load_flow_from_json("path/to/flow.json")
# Now you can use it like any chain
flow("Hey, have you heard of Langflow?")
We welcome contributions from developers of all levels to our open-source project on GitHub. If you'd like to contribute, please check our contributing guidelines and help make Langflow more accessible.
Join our Discord server to ask questions, make suggestions and showcase your projects! 🦾
Langflow is released under the MIT License. See the LICENSE file for details.