Install
openclaw skills install tavily-best-practicesBuild production-ready Tavily integrations with best practices baked in. Reference documentation for developers using coding assistants (Claude Code, Cursor, etc.) to implement web search, content extraction, crawling, and research in agentic workflows, RAG systems, or autonomous agents.
openclaw skills install tavily-best-practicesTavily is a search API designed for LLMs, enabling AI applications to access real-time web data.
Tavily API Key Required - Get your key at https://app.tavily.com (1,000 free API credits/month, no credit card required)
Add to ~/.claude/settings.json:
{
"env": {
"TAVILY_API_KEY": "tvly-YOUR_API_KEY"
}
}
Restart Claude Code after adding your API key.
Python:
pip install tavily-python
JavaScript:
npm install @tavily/core
See references/sdk.md for complete SDK reference.
from tavily import TavilyClient
# Option 1: Uses TAVILY_API_KEY env var (recommended)
client = TavilyClient()
# Option 2: Explicit API key
client = TavilyClient(api_key="tvly-YOUR_API_KEY")
# Option 3: With project tracking (for usage organization)
client = TavilyClient(api_key="tvly-YOUR_API_KEY", project_id="your-project-id")
# Async client for parallel queries
from tavily import AsyncTavilyClient
async_client = AsyncTavilyClient()
For custom agents/workflows:
| Need | Method |
|---|---|
| Web search results | search() |
| Content from specific URLs | extract() |
| Content from entire site | crawl() |
| URL discovery from site | map() |
For out-of-the-box research:
| Need | Method |
|---|---|
| End-to-end research with AI synthesis | research() |
response = client.search(
query="quantum computing breakthroughs", # Keep under 400 chars
max_results=10,
search_depth="advanced", # 2 credits, highest relevance
topic="general" # or "news", "finance"
)
for result in response["results"]:
print(f"{result['title']}: {result['score']}")
Key parameters: query, max_results, search_depth (ultra-fast/fast/basic/advanced), topic, include_domains, exclude_domains, time_range
# Two-step pattern (recommended for control)
search_results = client.search(query="Python async best practices")
urls = [r["url"] for r in search_results["results"] if r["score"] > 0.5]
extracted = client.extract(
urls=urls[:20],
query="async patterns", # Reranks chunks by relevance
chunks_per_source=3 # Prevents context explosion
)
Key parameters: urls (max 20), extract_depth, query, chunks_per_source (1-5)
response = client.crawl(
url="https://docs.example.com",
max_depth=2,
instructions="Find API documentation pages", # Semantic focus
chunks_per_source=3, # Token optimization
select_paths=["/docs/.*", "/api/.*"]
)
Key parameters: url, max_depth, max_breadth, limit, instructions, chunks_per_source, select_paths, exclude_paths
response = client.map(
url="https://docs.example.com",
max_depth=2,
instructions="Find all API and guide pages"
)
api_docs = [url for url in response["results"] if "/api/" in url]
import time
# For comprehensive multi-topic research
result = client.research(
input="Analyze competitive landscape for X in SMB market",
model="pro" # or "mini" for focused queries, "auto" when unsure
)
request_id = result["request_id"]
# Poll until completed
response = client.get_research(request_id)
while response["status"] not in ["completed", "failed"]:
time.sleep(10)
response = client.get_research(request_id)
print(response["content"]) # The research report
Key parameters: input, model ("mini"/"pro"/"auto"), stream, output_schema, citation_format
For complete parameters, response fields, patterns, and examples: