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Deploy Langflow on Docker

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Running applications in Docker containers ensures consistent behavior across different systems and eliminates dependency conflicts.

You can use the Langflow Docker image to start a Langflow container.

This guide demonstrates several ways to deploy Langflow with Docker and Docker Compose:

  • Quickstart: Start a Langflow container with default values.
  • Use Docker Compose: Clone the Langflow repo, and then use Docker Compose to build the Langflow Docker container. This option provides more control over the configuration, including a persistent PostgreSQL database service, while still using the base Langflow Docker image.
  • Create a custom flow image: Use a Dockerfile to package a flow as a Docker image.
  • Create a custom Langflow image: Use a Dockerfile to package a custom Langflow Docker image that includes your own code, custom dependencies, or other modifications.
  • Upgrade the Langflow Docker image: Upgrade to a newer image without losing your database or flows by using persistent volumes and replacing only the container.

Quickstart: Start a Langflow container with default values {#quickstart}

With Docker installed and running on your system, run the following command:

shell
docker run -p 7860:7860 langflowai/langflow:latest

Then, access Langflow at http://localhost:7860/.

This container runs a pre-built Docker image with default settings. For more control over the configuration, see Clone the repo and run the Langflow Docker container.

Clone the repo and run the Langflow Docker container {#clone}

Cloning the Langflow repository and using Docker Compose gives you more control over your configuration, allowing you to customize environment variables, use a persistent PostgreSQL database service (instead of the default SQLite database), and include custom dependencies.

The default deployment with Docker Compose includes the following:

  • Langflow service: Runs the latest Langflow image with PostgreSQL as the database.
  • PostgreSQL service: Provides persistent data storage for flows, users, and settings.
  • Persistent volumes: Ensures your data survives container restarts.

The complete Docker Compose configuration is available in docker_example/docker-compose.yml.

  1. Clone the Langflow repository:

    shell
    git clone https://github.com/langflow-ai/langflow.git
    
  2. Navigate to the docker_example directory:

    shell
    cd langflow/docker_example
    
  3. Run the Docker Compose file:

    shell
    docker compose up
    
  4. Access Langflow at http://localhost:7860/.

Customize your deployment

You can customize the Docker Compose configuration to fit your specific deployment.

For example, to configure the container's database credentials using a .env file, do the following:

  1. Create a .env file with your database credentials in the same directory as docker-compose.yml:

    text
    # Database credentials
    POSTGRES_USER=myuser
    POSTGRES_PASSWORD=mypassword
    POSTGRES_DB=langflow
    
    # Langflow configuration
    LANGFLOW_DATABASE_URL=postgresql://myuser:mypassword@postgres:5432/langflow
    LANGFLOW_CONFIG_DIR=/app/langflow
    
  2. Modify the docker-compose.yml file to reference the .env file for both the langflow and postgres services:

    yaml
    services:
      langflow:
        environment:
          - LANGFLOW_DATABASE_URL=${LANGFLOW_DATABASE_URL}
          - LANGFLOW_CONFIG_DIR=${LANGFLOW_CONFIG_DIR}
      postgres:
        environment:
          - POSTGRES_USER=${POSTGRES_USER}
          - POSTGRES_PASSWORD=${POSTGRES_PASSWORD}
          - POSTGRES_DB=${POSTGRES_DB}
    

For a complete list of available environment variables, see Langflow environment variables.

For more customization options, see Customize the Langflow Docker image with your own code.

Package your flow as a Docker image {#package-your-flow-as-a-docker-image}

This section shows you how to create a Dockerfile that builds a Docker image containing your Langflow flow. This approach is useful when you want to distribute a specific flow as a standalone container or deploy it to environments like Kubernetes.

Unlike the previous sections that use pre-built images, this method builds a custom image with your flow embedded inside it.

  1. Create a project directory, and change directory into it.

    bash
    mkdir langflow-custom && cd langflow-custom
    
  2. Add your flow's JSON file to the directory. You can download an example, or use your own:

    bash
    # Download an example flow
    wget https://raw.githubusercontent.com/langflow-ai/langflow-helm-charts/refs/heads/main/examples/flows/basic-prompting-hello-world.json
    
    # Or copy your own flow file
    cp /path/to/your/flow.json .
    
  3. Create a Dockerfile to build your custom image:

    dockerfile
    FROM langflowai/langflow:latest
    RUN mkdir /app/flows
    COPY ./*.json /app/flows/
    ENV LANGFLOW_LOAD_FLOWS_PATH=/app/flows
    

This Dockerfile uses the official Langflow image as the base, creates a directory for your flows, copies your JSON flow files into the directory, and sets the environment variable to tell Langflow where to find the flows.

  1. Build and test your custom image:

    bash
    docker build -t myuser/langflow-custom:1.0.0 .
    docker run -p 7860:7860 myuser/langflow-custom:1.0.0
    
  2. Push your image to Docker Hub (optional):

    bash
    docker push myuser/langflow-custom:1.0.0
    

Your custom image now contains your flow and can be deployed anywhere Docker runs. For Kubernetes deployment, see Deploy the Langflow production environment on Kubernetes.

Customize the Langflow Docker image with your own code {#customize-the-langflow-docker-image}

While the previous section showed how to package a flow with a Docker image, this section shows how to customize the Langflow application itself. This is useful when you need to add custom Python packages or dependencies, modify Langflow's configuration or settings, include custom components or tools, or add your own code to extend Langflow's functionality.

This example demonstrates how to customize the Message History component, but the same approach can be used for any code modifications.

dockerfile
FROM langflowai/langflow:latest

# Set working directory
WORKDIR /app

# Copy your modified memory component
COPY src/lfx/src/lfx/components/helpers/memory.py /tmp/memory.py

# Find the site-packages directory where langflow is installed
RUN python -c "import site; print(site.getsitepackages()[0])" > /tmp/site_packages.txt

# Replace the file in the site-packages location
RUN SITE_PACKAGES=$(cat /tmp/site_packages.txt) && \
    echo "Site packages at: $SITE_PACKAGES" && \
    mkdir -p "$SITE_PACKAGES/langflow/components/helpers" && \
    cp /tmp/memory.py "$SITE_PACKAGES/langflow/components/helpers/"

# Clear Python cache in the site-packages directory only
RUN SITE_PACKAGES=$(cat /tmp/site_packages.txt) && \
    find "$SITE_PACKAGES" -name "*.pyc" -delete && \
    find "$SITE_PACKAGES" -name "__pycache__" -type d -exec rm -rf {} +

# Expose the default Langflow port
EXPOSE 7860

# Command to run Langflow
CMD ["python", "-m", "langflow", "run", "--host", "0.0.0.0", "--port", "7860"]

To use this custom Dockerfile, do the following:

  1. Create a directory for your custom Langflow setup:

    bash
    mkdir langflow-custom && cd langflow-custom
    
  2. Create the necessary directory structure for your custom code. In this example, Langflow expects memory.py to exist in the /helpers directory, so you create a directory in that location.

    bash
    mkdir -p src/lfx/src/lfx/components/helpers
    
  3. Place your modified memory.py file in the /helpers directory.

  4. Create a new file named Dockerfile in your langflow-custom directory, and then copy the Dockerfile contents shown above into it.

  5. Build and run the image:

    bash
    docker build -t myuser/langflow-custom:1.0.0 .
    docker run -p 7860:7860 myuser/langflow-custom:1.0.0
    

This approach can be adapted for any other components or custom code you want to add to Langflow by modifying the file paths and component names.

Upgrade the Langflow Docker image {#upgrade-the-langflow-docker-image}

To upgrade a Langflow Docker deployment without losing your database or flows, do the following:

  1. Keep data on persistent volumes, so when you upgrade Langflow, you will replace only the container image. Use Docker volumes or bind mounts for Langflow data and the database so they persist outside of the container. For example, this Docker Compose file uses a bind mount for Langflow data (./langflow-data on the host) and a named volume for the PostgreSQL database (langflow-postgres):

    yaml
    services:
      langflow:
        image: langflowai/langflow:1.8.0
        environment:
          - LANGFLOW_CONFIG_DIR=/app/langflow
        volumes:
          - ./langflow-data:/app/langflow
      postgres:
        image: postgres:16
        volumes:
          - langflow-postgres:/var/lib/postgresql/data
    
    volumes:
      langflow-postgres:
    

    For additional examples, see the Docker Compose configuration and the docker_example compose file.

  2. Pull the new image and update the image tag in your docker-compose.yml or docker run command.

    With Docker Compose, set the image in your compose file, such as image: langflowai/langflow:1.8.0, and then pull:

    bash
    docker compose pull
    

    With docker run, pull the image:

    bash
    docker pull langflowai/langflow:1.8.0
    
  3. Restart the container. The same volumes will be reattached, so your database and flows are preserved.

    With Docker Compose:

    bash
    docker compose up -d
    

    With docker run, use the same volume mount and the new image tag:

    bash
    docker run -p 7860:7860 -v langflow-data:/app/langflow langflowai/langflow:1.8.0
    

This approach keeps the persistent volumes separate from the Langflow container, so you can upgrade the Langflow application without losing data.

If you need to upgrade to a custom image based on a Langflow release, such as to add uv in 1.8.0, first build a derived image from the official image, and then follow the same steps above. Set the custom image in your compose file or docker run, and then pull and restart.

For a minimal Dockerfile that adds uv to the 1.8.0 image, see the release notes (“Docker image no longer includes uv or uvx”).