Metadata-Version: 2.4 Name: tavily-python Version: 0.7.12 Summary: Python wrapper for the Tavily API Home-page: https://github.com/tavily-ai/tavily-python Author: Tavily AI Author-email: support@tavily.com Classifier: Programming Language :: Python :: 3 Classifier: License :: OSI Approved :: MIT License Classifier: Operating System :: OS Independent Requires-Python: >=3.6 Description-Content-Type: text/markdown License-File: LICENSE Requires-Dist: requests Requires-Dist: tiktoken>=0.5.1 Requires-Dist: httpx Dynamic: author Dynamic: author-email Dynamic: classifier Dynamic: description Dynamic: description-content-type Dynamic: home-page Dynamic: license-file Dynamic: requires-dist Dynamic: requires-python Dynamic: summary # Tavily Python Wrapper [![GitHub stars](https://img.shields.io/github/stars/tavily-ai/tavily-python?style=social)](https://github.com/tavily-ai/tavily-python/stargazers) [![PyPI - Downloads](https://img.shields.io/pypi/dm/tavily-python)](https://pypi.org/project/tavily-python/) [![License](https://img.shields.io/github/license/tavily-ai/tavily-python)](https://github.com/tavily-ai/tavily-python/blob/main/LICENSE) [![CI](https://github.com/tavily-ai/tavily-python/actions/workflows/tests.yml/badge.svg)](https://github.com/tavily-ai/tavily-python/actions) The Tavily Python wrapper allows for easy interaction with the Tavily API, offering the full range of our search and extract functionalities directly from your Python programs. Easily integrate smart search and content extraction capabilities into your applications, harnessing Tavily's powerful search and extract features. ## Installing ```bash pip install tavily-python ``` # Tavily Search Search lets you search the web for a given query. ## Usage Below are some code snippets that show you how to interact with our search API. The different steps and components of this code are explained in more detail in the API Methods section further down. ### Getting and printing the full Search API response ```python from tavily import TavilyClient # Step 1. Instantiating your TavilyClient tavily_client = TavilyClient(api_key="tvly-YOUR_API_KEY") # Step 2. Executing a simple search query response = tavily_client.search("Who is Leo Messi?") # Step 3. That's it! You've done a Tavily Search! print(response) ``` This is equivalent to directly querying our REST API. ### Generating context for a RAG Application ```python from tavily import TavilyClient # Step 1. Instantiating your TavilyClient tavily_client = TavilyClient(api_key="tvly-YOUR_API_KEY") # Step 2. Executing a context search query context = tavily_client.get_search_context(query="What happened during the Burning Man floods?") # Step 3. That's it! You now have a context string that you can feed directly into your RAG Application print(context) ``` This is how you can generate precise and fact-based context for your RAG application in one line of code. ### Getting a quick answer to a question ```python from tavily import TavilyClient # Step 1. Instantiating your TavilyClient tavily_client = TavilyClient(api_key="tvly-YOUR_API_KEY") # Step 2. Executing a Q&A search query answer = tavily_client.qna_search(query="Who is Leo Messi?") # Step 3. That's it! Your question has been answered! print(answer) ``` This is how you get accurate and concise answers to questions, in one line of code. Perfect for usage by LLMs! # Tavily Extract Extract web page content from one or more specified URLs. ## Usage Below are some code snippets that demonstrate how to interact with our Extract API. Each step and component of this code is explained in greater detail in the API Methods section below. ### Extracting Raw Content from Multiple URLs using Tavily Extract API ```python from tavily import TavilyClient # Step 1. Instantiating your TavilyClient tavily_client = TavilyClient(api_key="tvly-YOUR_API_KEY") # Step 2. Defining the list of URLs to extract content from urls = [ "https://en.wikipedia.org/wiki/Artificial_intelligence", "https://en.wikipedia.org/wiki/Machine_learning", "https://en.wikipedia.org/wiki/Data_science", "https://en.wikipedia.org/wiki/Quantum_computing", "https://en.wikipedia.org/wiki/Climate_change" ] # You can provide up to 20 URLs simultaneously # Step 3. Executing the extract request response = tavily_client.extract(urls=urls, include_images=True) # Step 4. Printing the extracted raw content for result in response["results"]: print(f"URL: {result['url']}") print(f"Raw Content: {result['raw_content']}") print(f"Images: {result['images']}\n") # Note that URLs that could not be extracted will be stored in response["failed_results"] ``` # Tavily Crawl (Open-Access Beta) Crawl lets you traverse a website's content starting from a base URL. > **Note**: Crawl is currently available on an invite-only basis. For more information, please visit [crawl.tavily.com](https://crawl.tavily.com) ## Usage Below are some code snippets that demonstrate how to interact with our Crawl API. Each step and component of this code is explained in greater detail in the API Methods section below. ### Crawling a website with instructions ```python from tavily import TavilyClient # Step 1. Instantiating your TavilyClient tavily_client = TavilyClient(api_key="tvly-YOUR_API_KEY") # Step 2. Defining the starting URL start_url = "https://wikipedia.org/wiki/Lemon" # Step 3. Executing the crawl request with instructions to surface only pages about citrus fruits response = tavily_client.crawl( url=start_url, max_depth=3, limit=50, instructions="Find all pages on citrus fruits" ) # Step 4. Printing pages matching the query for result in response["results"]: print(f"URL: {result['url']}") print(f"Snippet: {result['raw_content'][:200]}...\n") ``` # Tavily Map (Open-Access Beta) Map lets you discover and visualize the structure of a website starting from a base URL. ## Usage Below are some code snippets that demonstrate how to interact with our Map API. Each step and component of this code is explained in greater detail in the API Methods section below. ### Mapping a website with instructions ```python from tavily import TavilyClient # Step 1. Instantiating your TavilyClient tavily_client = TavilyClient(api_key="tvly-YOUR_API_KEY") # Step 2. Defining the starting URL start_url = "https://wikipedia.org/wiki/Lemon" # Step 3. Executing the map request with parameters to focus on specific pages response = tavily_client.map( url=start_url, max_depth=2, limit=30, instructions="Find pages on citrus fruits" ) # Step 4. Printing the site structure for result in response["results"]: print(f"URL: {result['url']}") ``` ## Documentation For a complete guide on how to use the different endpoints and their parameters, please head to our [Python API Reference](https://docs.tavily.com/sdk/python/reference). ## Cost Tavily is free for personal use for up to 1,000 credits per month. Head to the [Credits & Pricing](https://docs.tavily.com/documentation/api-credits) in our documentation to learn more about how many API credits each request costs. ## License This project is licensed under the terms of the MIT license. ## Contact If you are encountering issues while using Tavily, please email us at support@tavily.com. We'll be happy to help you. If you want to stay updated on the latest Tavily news and releases, head to our [Developer Community](https://community.tavily.com) to learn more!