Skyvern
    Skyvern

    Skyvern

    Automate browser-based workflows with LLMs and Computer Vision

    1.8

    GitHub Stats

    Stars

    13774

    Forks

    1125

    Release Date

    6/18/2025

    about two weeks ago

    Detailed Description

    Skyvern automates browser-based workflows using LLMs and computer vision. It provides a simple API endpoint to fully automate manual workflows on a large number of websites, replacing brittle or unreliable automation solutions.

    Traditional approaches to browser automations required writing custom scripts for websites, often relying on DOM parsing and XPath-based interactions which would break whenever the website layouts changed.

    Instead of only relying on code-defined XPath interactions, Skyvern relies on Vision LLMs to learn and interact with the websites.

    Want to see examples of Skyvern in action? Jump to #real-world-examples-of-skyvern

    Quickstart

    Skyvern Cloud

    Skyvern Cloud is a managed cloud version of Skyvern that allows you to run Skyvern without worrying about the infrastructure. It allows you to run multiple Skyvern instances in parallel and comes bundled with anti-bot detection mechanisms, proxy network, and CAPTCHA solvers.

    If you'd like to try it out, navigate to app.skyvern.com and create an account.

    Install & Run

    1. Install Skyvern

    pip install skyvern
    

    2. Run Skyvern

    skyvern quickstart
    

    3. Run task

    UI (Recommended)

    Start the Skyvern service and UI

    skyvern run all
    

    Go to http://localhost:8080 and use the UI to run a task

    Code

    from skyvern import Skyvern
    
    skyvern = Skyvern()
    task = await skyvern.run_task(prompt="Find the top post on hackernews today")
    print(task)
    

    Skyvern starts running the task in a browser that pops up and closes it when the task is done. You will be able to view the task from http://localhost:8080/history

    You can also run a task on different targets:

    from skyvern import Skyvern
    
    # Run on Skyvern Cloud
    skyvern = Skyvern(api_key="SKYVERN API KEY")
    
    # Local Skyvern service
    skyvern = Skyvern(base_url="http://localhost:8000", api_key="LOCAL SKYVERN API KEY")
    
    task = await skyvern.run_task(prompt="Find the top post on hackernews today")
    print(task)
    

    How it works

    Skyvern was inspired by the Task-Driven autonomous agent design popularized by BabyAGI and AutoGPT -- with one major bonus: we give Skyvern the ability to interact with websites using browser automation libraries like Playwright.

    Skyvern uses a swarm of agents to comprehend a website, and plan and execute its actions:

    This approach has a few advantages:

    1. Skyvern can operate on websites it's never seen before, as it's able to map visual elements to actions necessary to complete a workflow, without any customized code
    2. Skyvern is resistant to website layout changes, as there are no pre-determined XPaths or other selectors our system is looking for while trying to navigate
    3. Skyvern is able to take a single workflow and apply it to a large number of websites, as it's able to reason through the interactions necessary to complete the workflow
    4. Skyvern leverages LLMs to reason through interactions to ensure we can cover complex situations. Examples include:
      1. If you wanted to get an auto insurance quote from Geico, the answer to a common question "Were you eligible to drive at 18?" could be inferred from the driver receiving their license at age 16
      2. If you were doing competitor analysis, it's understanding that an Arnold Palmer 22 oz can at 7/11 is almost definitely the same product as a 23 oz can at Gopuff (even though the sizes are slightly different, which could be a rounding error!)

    A detailed technical report can be found here.

    Demo

    https://github.com/user-attachments/assets/5cab4668-e8e2-4982-8551-aab05ff73a7f

    Performance & Evaluation

    Skyvern has SOTA performance on the WebBench benchmark with a 64.4% accuracy. The technical report + evaluation can be found here

    Performance on WRITE tasks (eg filling out forms, logging in, downloading files, etc)

    Skyvern is the best performing agent on WRITE tasks (eg filling out forms, logging in, downloading files, etc), which is primarily used for RPA (Robotic Process Automation) adjacent tasks.

    Advanced Usage

    Control your own browser (Chrome)

    ⚠️ WARNING: Since Chrome 136, Chrome refuses any CDP connect to the browser using the default user_data_dir. In order to use your browser data, Skyvern copies your default user_data_dir to ./tmp/user_data_dir the first time connecting to your local browser. ⚠️

    1. Just With Python Code
    from skyvern import Skyvern
    
    # The path to your Chrome browser. This example path is for Mac.
    browser_path = "/Applications/Google Chrome.app/Contents/MacOS/Google Chrome"
    skyvern = Skyvern(
        base_url="http://localhost:8000",
        api_key="YOUR_API_KEY",
        browser_path=browser_path,
    )
    task = await skyvern.run_task(
        prompt="Find the top post on hackernews today",
    )
    
    1. With Skyvern Service

    Add two variables to your .env file:

    # The path to your Chrome browser. This example path is for Mac.
    CHROME_EXECUTABLE_PATH="/Applications/Google Chrome.app/Contents/MacOS/Google Chrome"
    BROWSER_TYPE=cdp-connect
    

    Restart Skyvern service skyvern run all and run the task through UI or code

    Run Skyvern with any remote browser

    Grab the cdp connection url and pass it to Skyvern

    from skyvern import Skyvern
    
    skyvern = Skyvern(cdp_url="your cdp connection url")
    task = await skyvern.run_task(
        prompt="Find the top post on hackernews today",
    )
    

    Get consistent output schema from your run

    You can do this by adding the data_extraction_schema parameter:

    from skyvern import Skyvern
    
    skyvern = Skyvern()
    task = await skyvern.run_task(
        prompt="Find the top post on hackernews today",
        data_extraction_schema={
            "type": "object",
            "properties": {
                "title": {
                    "type": "string",
                    "description": "The title of the top post"
                },
                "url": {
                    "type": "string",
                    "description": "The URL of the top post"
                },
                "points": {
                    "type": "integer",
                    "description": "Number of points the post has received"
                }
            }
        }
    )
    

    Helpful commands to debug issues

    # Launch the Skyvern Server Separately*
    skyvern run server
    
    # Launch the Skyvern UI
    skyvern run ui
    
    # Check status of the Skyvern service
    skyvern status
    
    # Stop the Skyvern service
    skyvern stop all
    
    # Stop the Skyvern UI
    skyvern stop ui
    
    # Stop the Skyvern Server Separately
    skyvern stop server
    

    Docker Compose setup

    1. Make sure you have Docker Desktop installed and running on your machine
    2. Make sure you don't have postgres running locally (Run docker ps to check)
    3. Clone the repository and navigate to the root directory
    4. Run skyvern init llm to generate a .env file. This will be copied into the Docker image.
    5. Fill in the LLM provider key on the docker-compose.yml. If you want to run Skyvern on a remote server, make sure you set the correct server ip for the UI container in docker-compose.yml.
    6. Run the following command via the commandline:
       docker compose up -d
      
    7. Navigate to http://localhost:8080 in your browser to start using the UI

    Important: Only one Postgres container can run on port 5432 at a time. If you switch from the CLI-managed Postgres to Docker Compose, you must first remove the original container:

    docker rm -f postgresql-container
    

    If you encounter any database related errors while using Docker to run Skyvern, check which Postgres container is running with docker ps.

    Skyvern Features

    Skyvern Tasks

    Tasks are the fundamental building block inside Skyvern. Each task is a single request to Skyvern, instructing it to navigate through a website and accomplish a specific goal.

    Tasks require you to specify a url, prompt, and can optionally include a data schema (if you want the output to conform to a specific schema) and error codes (if you want Skyvern to stop running in specific situations).

    Skyvern Workflows

    Workflows are a way to chain multiple tasks together to form a cohesive unit of work.

    For example, if you wanted to download all invoices newer than January 1st, you could create a workflow that first navigated to the invoices page, then filtered down to only show invoices newer than January 1st, extracted a list of all eligible invoices, and iterated through each invoice to download it.

    Another example is if you wanted to automate purchasing products from an e-commerce store, you could create a workflow that first navigated to the desired product, then added it to a cart. Second, it would navigate to the cart and validate the cart state. Finally, it would go through the checkout process to purchase the items.

    Supported workflow features include:

    1. Navigation
    2. Action
    3. Data Extraction
    4. Loops
    5. File parsing
    6. Uploading files to block storage
    7. Sending emails
    8. Text Prompts
    9. Tasks (general)
    10. (Coming soon) Conditionals
    11. (Coming soon) Custom Code Block

    Livestreaming

    Skyvern allows you to livestream the viewport of the browser to your local machine so that you can see exactly what Skyvern is doing on the web. This is useful for debugging and understanding how Skyvern is interacting with a website, and intervening when necessary

    Form Filling

    Skyvern is natively capable of filling out form inputs on websites. Passing in information via the navigation_goal will allow Skyvern to comprehend the information and fill out the form accordingly.

    Data Extraction

    Skyvern is also capable of extracting data from a website.

    You can also specify a data_extraction_schema directly within the main prompt to tell Skyvern exactly what data you'd like to extract from the website, in jsonc format. Skyvern's output will be structured in accordance to the supplied schema.

    File Downloading

    Skyvern is also capable of downloading files from a website. All downloaded files are automatically uploaded to block storage (if configured), and you can access them via the UI.

    Authentication

    Skyvern supports a number of different authentication methods to make it easier to automate tasks behind a login. If you'd like to try it out, please reach out to us via email or discord.

    🔐 2FA Support (TOTP)

    Skyvern supports a number of different 2FA methods to allow you to automate workflows that require 2FA.

    Examples include:

    1. QR-based 2FA (e.g. Google Authenticator, Authy)
    2. Email based 2FA
    3. SMS based 2FA

    🔐 Learn more about 2FA support here.

    Password Manager Integrations

    Skyvern currently supports the following password manager integrations:

    • [x] Bitwarden
    • [ ] 1Password
    • [ ] LastPass

    Model Context Protocol (MCP)

    Skyvern supports the Model Context Protocol (MCP) to allow you to use any LLM that supports MCP.

    See the MCP documentation here

    Zapier / Make.com / N8N Integration

    Skyvern supports Zapier, Make.com, and N8N to allow you to connect your Skyvern workflows to other apps.

    🔐 Learn more about 2FA support here.

    Real-world examples of Skyvern

    We love to see how Skyvern is being used in the wild. Here are some examples of how Skyvern is being used to automate workflows in the real world. Please open PRs to add your own examples!

    Invoice Downloading on many different websites

    Book a demo to see it live

    Automate the job application process

    💡 See it in action

    Automate materials procurement for a manufacturing company

    💡 See it in action

    Navigating to government websites to register accounts or fill out forms

    💡 See it in action

    Filling out random contact us forms

    💡 See it in action

    Retrieving insurance quotes from insurance providers in any language

    💡 See it in action

    💡 See it in action

    Contributor Setup

    For a complete local environment CLI Installation

    pip install -e .
    

    The following command sets up your development environment to use pre-commit (our commit hook handler)

    skyvern quickstart contributors
    
    1. Navigate to http://localhost:8080 in your browser to start using the UI The Skyvern CLI supports Windows, WSL, macOS, and Linux environments.

    Documentation

    More extensive documentation can be found on our 📕 docs page. Please let us know if something is unclear or missing by opening an issue or reaching out to us via email or discord.

    Supported LLMs

    | Provider | Supported Models | | -------- | ------- | | OpenAI | gpt4-turbo, gpt-4o, gpt-4o-mini | | Anthropic | Claude 3 (Haiku, Sonnet, Opus), Claude 3.5 (Sonnet) | | Azure OpenAI | Any GPT models. Better performance with a multimodal llm (azure/gpt4-o) | | AWS Bedrock | Anthropic Claude 3 (Haiku, Sonnet, Opus), Claude 3.5 (Sonnet) | | Gemini | Gemini 2.5 Pro and flash, Gemini 2.0 | | Ollama | Run any locally hosted model via Ollama | | OpenRouter | Access models through OpenRouter | | OpenAI-compatible | Any custom API endpoint that follows OpenAI's API format (via liteLLM) |

    Environment Variables

    OpenAI

    | Variable | Description| Type | Sample Value| | -------- | ------- | ------- | ------- | | ENABLE_OPENAI| Register OpenAI models | Boolean | true, false | | OPENAI_API_KEY | OpenAI API Key | String | sk-1234567890 | | OPENAI_API_BASE | OpenAI API Base, optional | String | https://openai.api.base | | OPENAI_ORGANIZATION | OpenAI Organization ID, optional | String | your-org-id |

    Recommended LLM_KEY: OPENAI_GPT4O, OPENAI_GPT4O_MINI, OPENAI_GPT4_1, OPENAI_O4_MINI, OPENAI_O3

    Anthropic

    | Variable | Description| Type | Sample Value| | -------- | ------- | ------- | ------- | | ENABLE_ANTHROPIC | Register Anthropic models| Boolean | true, false | | ANTHROPIC_API_KEY | Anthropic API key| String | sk-1234567890 |

    RecommendedLLM_KEY: ANTHROPIC_CLAUDE3.5_SONNET, ANTHROPIC_CLAUDE3.7_SONNET, ANTHROPIC_CLAUDE4_OPUS, ANTHROPIC_CLAUDE4_SONNET

    Azure OpenAI

    | Variable | Description| Type | Sample Value| | -------- | ------- | ------- | ------- | | ENABLE_AZURE | Register Azure OpenAI models | Boolean | true, false | | AZURE_API_KEY | Azure deployment API key | String | sk-1234567890 | | AZURE_DEPLOYMENT | Azure OpenAI Deployment Name | String | skyvern-deployment| | AZURE_API_BASE | Azure deployment api base url| String | https://skyvern-deployment.openai.azure.com/| | AZURE_API_VERSION | Azure API Version| String | 2024-02-01|

    Recommended LLM_KEY: AZURE_OPENAI

    AWS Bedrock

    | Variable | Description| Type | Sample Value| | -------- | ------- | ------- | ------- | | ENABLE_BEDROCK | Register AWS Bedrock models. To use AWS Bedrock, you need to make sure your AWS configurations are set up correctly first. | Boolean | true, false |

    Recommended LLM_KEY: BEDROCK_ANTHROPIC_CLAUDE3.7_SONNET_INFERENCE_PROFILE, BEDROCK_ANTHROPIC_CLAUDE4_OPUS_INFERENCE_PROFILE, BEDROCK_ANTHROPIC_CLAUDE4_SONNET_INFERENCE_PROFILE

    Gemini

    | Variable | Description| Type | Sample Value| | -------- | ------- | ------- | ------- | | ENABLE_GEMINI | Register Gemini models| Boolean | true, false | | GEMINI_API_KEY | Gemini API Key| String | your_google_gemini_api_key|

    Recommended LLM_KEY: GEMINI_2.5_PRO_PREVIEW, GEMINI_2.5_FLASH_PREVIEW

    Ollama

    | Variable | Description| Type | Sample Value| | -------- | ------- | ------- | ------- | | ENABLE_OLLAMA| Register local models via Ollama | Boolean | true, false | | OLLAMA_SERVER_URL | URL for your Ollama server | String | http://host.docker.internal:11434 | | OLLAMA_MODEL | Ollama model name to load | String | qwen2.5:7b-instruct |

    Recommended LLM_KEY: OLLAMA

    Note: Ollama does not support vision yet.

    OpenRouter

    | Variable | Description| Type | Sample Value| | -------- | ------- | ------- | ------- | | ENABLE_OPENROUTER| Register OpenRouter models | Boolean | true, false | | OPENROUTER_API_KEY | OpenRouter API key | String | sk-1234567890 | | OPENROUTER_MODEL | OpenRouter model name | String | mistralai/mistral-small-3.1-24b-instruct | | OPENROUTER_API_BASE | OpenRouter API base URL | String | https://api.openrouter.ai/v1 |

    Recommended LLM_KEY: OPENROUTER

    OpenAI-Compatible

    | Variable | Description| Type | Sample Value| | -------- | ------- | ------- | ------- | | ENABLE_OPENAI_COMPATIBLE| Register a custom OpenAI-compatible API endpoint | Boolean | true, false | | OPENAI_COMPATIBLE_MODEL_NAME | Model name for OpenAI-compatible endpoint | String | yi-34b, gpt-3.5-turbo, mistral-large, etc.| | OPENAI_COMPATIBLE_API_KEY | API key for OpenAI-compatible endpoint | String | sk-1234567890| | OPENAI_COMPATIBLE_API_BASE | Base URL for OpenAI-compatible endpoint | String | https://api.together.xyz/v1, http://localhost:8000/v1, etc.| | OPENAI_COMPATIBLE_API_VERSION | API version for OpenAI-compatible endpoint, optional| String | 2023-05-15| | OPENAI_COMPATIBLE_MAX_TOKENS | Maximum tokens for completion, optional| Integer | 4096, 8192, etc.| | OPENAI_COMPATIBLE_TEMPERATURE | Temperature setting, optional| Float | 0.0, 0.5, 0.7, etc.| | OPENAI_COMPATIBLE_SUPPORTS_VISION | Whether model supports vision, optional| Boolean | true, false|

    Supported LLM Key: OPENAI_COMPATIBLE

    General LLM Configuration

    | Variable | Description| Type | Sample Value| | -------- | ------- | ------- | ------- | | LLM_KEY | The name of the model you want to use | String | See supported LLM keys above | | SECONDARY_LLM_KEY | The name of the model for mini agents skyvern runs with | String | See supported LLM keys above | | LLM_CONFIG_MAX_TOKENS | Override the max tokens used by the LLM | Integer | 128000 |

    Feature Roadmap

    This is our planned roadmap for the next few months. If you have any suggestions or would like to see a feature added, please don't hesitate to reach out to us via email or discord.

    • [x] Open Source - Open Source Skyvern's core codebase
    • [x] Workflow support - Allow support to chain multiple Skyvern calls together
    • [x] Improved context - Improve Skyvern's ability to understand content around interactable elements by introducing feeding relevant label context through the text prompt
    • [x] Cost Savings - Improve Skyvern's stability and reduce the cost of running Skyvern by optimizing the context tree passed into Skyvern
    • [x] Self-serve UI - Deprecate the Streamlit UI in favour of a React-based UI component that allows users to kick off new jobs in Skyvern
    • [x] Workflow UI Builder - Introduce a UI to allow users to build and analyze workflows visually
    • [x] Chrome Viewport streaming - Introduce a way to live-stream the Chrome viewport to the user's browser (as a part of the self-serve UI)
    • [x] Past Runs UI - Deprecate the Streamlit UI in favour of a React-based UI that allows you to visualize past runs and their results
    • [X] Auto workflow builder ("Observer") mode - Allow Skyvern to auto-generate workflows as it's navigating the web to make it easier to build new workflows
    • [x] Prompt Caching - Introduce a caching layer to the LLM calls to dramatically reduce the cost of running Skyvern (memorize past actions and repeat them!)
    • [x] Web Evaluation Dataset - Integrate Skyvern with public benchmark tests to track the quality of our models over time
    • [ ] Improved Debug mode - Allow Skyvern to plan its actions and get "approval" before running them, allowing you to debug what it's doing and more easily iterate on the prompt
    • [ ] Chrome Extension - Allow users to interact with Skyvern through a Chrome extension (incl voice mode, saving tasks, etc.)
    • [ ] Skyvern Action Recorder - Allow Skyvern to watch a user complete a task and then automatically generate a workflow for it
    • [ ] Interactable Livestream - Allow users to interact with the livestream in real-time to intervene when necessary (such as manually submitting sensitive forms)
    • [ ] Integrate LLM Observability tools - Integrate LLM Observability tools to allow back-testing prompt changes with specific data sets + visualize the performance of Skyvern over time
    • [x] Langchain Integration - Create langchain integration in langchain_community to use Skyvern as a "tool".

    Contributing

    We welcome PRs and suggestions! Don't hesitate to open a PR/issue or to reach out to us via email or discord. Please have a look at our contribution guide and "Help Wanted" issues to get started!

    If you want to chat with the skyvern repository to get a high level overview of how it is structured, how to build off it, and how to resolve usage questions, check out Code Sage.

    Telemetry

    By Default, Skyvern collects basic usage statistics to help us understand how Skyvern is being used. If you would like to opt-out of telemetry, please set the SKYVERN_TELEMETRY environment variable to false.

    License

    Skyvern's open source repository is supported via a managed cloud. All of the core logic powering Skyvern is available in this open source repository licensed under the AGPL-3.0 License, with the exception of anti-bot measures available in our managed cloud offering.

    If you have any questions or concerns around licensing, please contact us and we would be happy to help.

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