Skip to main content

A web scraping library based on LangChain which uses LLM and direct graph logic to create scraping pipelines.

Project description

🕷️ ScrapeGraphAI: You Only Scrape Once

Downloads linting: pylint Pylint CodeQL License: MIT

ScrapeGraphAI is a web scraping python library that uses LLM and direct graph logic to create scraping pipelines for websites, documents and XML files. Just say which information you want to extract and the library will do it for you!

Scrapegraph-ai Logo

🚀 Quick install

The reference page for Scrapegraph-ai is available on the official page of pypy: pypi.

pip install scrapegraphai

you will also need to install Playwright for javascript-based scraping:

playwright install

🔍 Demo

Official streamlit demo:

My Skills

Try it directly on the web using Google Colab:

Open In Colab

Follow the procedure on the following link to setup your OpenAI API key: link.

📖 Documentation

The documentation for ScrapeGraphAI can be found here.

Check out also the docusaurus documentation.

💻 Usage

You can use the SmartScraper class to extract information from a website using a prompt.

The SmartScraper class is a direct graph implementation that uses the most common nodes present in a web scraping pipeline. For more information, please see the documentation.

Case 1: Extracting information using Ollama

Remember to download the model on Ollama separately!

from scrapegraphai.graphs import SmartScraperGraph

graph_config = {
    "llm": {
        "model": "ollama/mistral",
        "temperature": 0,
        "format": "json",  # Ollama needs the format to be specified explicitly
        "base_url": "http://localhost:11434",  # set Ollama URL
    },
    "embeddings": {
        "model": "ollama/nomic-embed-text",
        "base_url": "http://localhost:11434",  # set Ollama URL
    }
}

smart_scraper_graph = SmartScraperGraph(
    prompt="List me all the articles",
    # also accepts a string with the already downloaded HTML code
    source="https://perinim.github.io/projects",
    config=graph_config
)

result = smart_scraper_graph.run()
print(result)

Case 2: Extracting information using Docker

Note: before using the local model remember to create the docker container!

    docker-compose up -d
    docker exec -it ollama ollama pull stablelm-zephyr

You can use which models avaiable on Ollama or your own model instead of stablelm-zephyr

from scrapegraphai.graphs import SmartScraperGraph

graph_config = {
    "llm": {
        "model": "ollama/mistral",
        "temperature": 0,
        "format": "json",  # Ollama needs the format to be specified explicitly
        # "model_tokens": 2000, # set context length arbitrarily
    },
}

smart_scraper_graph = SmartScraperGraph(
    prompt="List me all the articles",
    # also accepts a string with the already downloaded HTML code
    source="https://perinim.github.io/projects",  
    config=graph_config
)

result = smart_scraper_graph.run()
print(result)

Case 3: Extracting information using Openai model

from scrapegraphai.graphs import SmartScraperGraph
OPENAI_API_KEY = "YOUR_API_KEY"

graph_config = {
    "llm": {
        "api_key": OPENAI_API_KEY,
        "model": "gpt-3.5-turbo",
    },
}

smart_scraper_graph = SmartScraperGraph(
    prompt="List me all the articles",
    # also accepts a string with the already downloaded HTML code
    source="https://perinim.github.io/projects",
    config=graph_config
)

result = smart_scraper_graph.run()
print(result)

Case 4: Extracting information using Groq

from scrapegraphai.graphs import SmartScraperGraph
from scrapegraphai.utils import prettify_exec_info

groq_key = os.getenv("GROQ_APIKEY")

graph_config = {
    "llm": {
        "model": "groq/gemma-7b-it",
        "api_key": groq_key,
        "temperature": 0
    },
    "embeddings": {
        "model": "ollama/nomic-embed-text",
        "temperature": 0,
        "base_url": "http://localhost:11434", 
    },
    "headless": False
}

smart_scraper_graph = SmartScraperGraph(
    prompt="List me all the projects with their description and the author.",
    source="https://perinim.github.io/projects",
    config=graph_config
)

result = smart_scraper_graph.run()
print(result)

Case 5: Extracting information using Gemini

from scrapegraphai.graphs import SmartScraperGraph
GOOGLE_APIKEY = "YOUR_API_KEY"

# Define the configuration for the graph
graph_config = {
    "llm": {
        "api_key": GOOGLE_APIKEY,
        "model": "gemini-pro",
    },
}

# Create the SmartScraperGraph instance
smart_scraper_graph = SmartScraperGraph(
    prompt="List me all the articles",
    source="https://perinim.github.io/projects",
    config=graph_config
)

result = smart_scraper_graph.run()
print(result)

The output for all 3 the cases will be a dictionary with the extracted information, for example:

{
    'titles': [
        'Rotary Pendulum RL'
        ],
    'descriptions': [
        'Open Source project aimed at controlling a real life rotary pendulum using RL algorithms'
        ]
}

🤝 Contributing

Feel free to contribute and join our Discord server to discuss with us improvements and give us suggestions!

Please see the contributing guidelines.

My Skills My Skills My Skills

❤️ Contributors

Contributors

🎓 Citations

If you have used our library for research purposes please quote us with the following reference:

  @misc{scrapegraph-ai,
    author = {Marco Perini, Lorenzo Padoan, Marco Vinciguerra},
    title = {Scrapegraph-ai},
    year = {2024},
    url = {https://github.com/VinciGit00/Scrapegraph-ai},
    note = {A Python library for scraping leveraging large language models}
  }

Authors

Authors Logos

Contact Info
Marco Vinciguerra Linkedin Badge
Marco Perini Linkedin Badge
Lorenzo Padoan Linkedin Badge

📜 License

ScrapeGraphAI is licensed under the MIT License. See the LICENSE file for more information.

Acknowledgements

  • We would like to thank all the contributors to the project and the open-source community for their support.
  • ScrapeGraphAI is meant to be used for data exploration and research purposes only. We are not responsible for any misuse of the library.

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

scrapegraphai-0.5.0b7.tar.gz (33.8 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

scrapegraphai-0.5.0b7-py3-none-any.whl (61.6 kB view details)

Uploaded Python 3

File details

Details for the file scrapegraphai-0.5.0b7.tar.gz.

File metadata

  • Download URL: scrapegraphai-0.5.0b7.tar.gz
  • Upload date:
  • Size: 33.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.10.12

File hashes

Hashes for scrapegraphai-0.5.0b7.tar.gz
Algorithm Hash digest
SHA256 7a2f173af384020071ed60ffd322ed01736d6ced981786246cc4bf8a299dd0fa
MD5 8f7f7bbb258993d82069d9bff3da7ea0
BLAKE2b-256 05f84fcfbdee56331fc2b6908da72122da110a5d935e67f0481b55fa72bf8d89

See more details on using hashes here.

File details

Details for the file scrapegraphai-0.5.0b7-py3-none-any.whl.

File metadata

File hashes

Hashes for scrapegraphai-0.5.0b7-py3-none-any.whl
Algorithm Hash digest
SHA256 e71566c0196203b5ba799a2ce5dd3b0e7c34c24cc9dbf08f6d71c8465a0da39c
MD5 18386a52395df94a3494464c4add4c85
BLAKE2b-256 26498c7023f5a285805783fc16b72167db8cccd3456e21adc17655aa2fe56458

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page