Exa API 配置指南
Your Configuration
| Setting | Value |
|---|---|
| Coding Tool | Cursor |
| Framework | JavaScript |
| Use Case | Web search tool |
| Search Type | Auto - Balanced relevance and speed (~1 second) |
| Content | Compact |
| Project Description: (Not provided) |
API Key Setup
Environment Variable
export EXA_API_KEY="YOUR_API_KEY".env File
EXA_API_KEY=YOUR_API_KEYUsage in Code
import Exa from "exa-js";
const exa = new Exa(process.env.EXA_API_KEY);🔌 Exa MCP Server for Cursor
Give Cursor real-time web search, code context, and company research with Exa MCP.
Add to Cursor settings (~/.cursor/mcp.json):
{
"mcpServers": {
"exa": {
"type": "http",
"url": "https://mcp.exa.ai/mcp?exaApiKey=YOUR_API_KEY",
"headers": {}
}
}
}Or use the one-click install button at docs.exa.ai/reference/exa-mcp
Available tools:
web_search_exa- Real-time web searchget_code_context_exa- Code snippets, docs, and examplescompany_research_exa- Company information and researchcrawling_exa- Extract content from any URLlinkedin_search_exa- Find people on LinkedIndeep_researcher_start- AI-powered deep research
📖 Full docs: docs.exa.ai/reference/exa-mcp
Quick Start (JavaScript)
npm install exa-jsimport Exa from "exa-js";
const exa = new Exa("YOUR_API_KEY");
const results = await exa.search("latest developments in AI safety research", {
"type": "auto",
"num_results": 10,
"contents": {
"highlights": {
"max_characters": 4000
}
}
});
results.results.forEach(result => {
console.log(result.title, result.url);
});cURL (alternative)
curl -X POST 'https://api.exa.ai/search' \
-H 'x-api-key: YOUR_API_KEY' \
-H 'Content-Type: application/json' \
-d '{
"query": "latest developments in AI safety research",
"type": "auto",
"num_results": 10,
"contents": {
"highlights": {
"max_characters": 4000
}
}
}'Function Calling / Tool Use
Function calling (also known as tool use) allows your AI agent to dynamically decide when to search the web based on the conversation context. Instead of searching on every request, the LLM intelligently determines when real-time information would improve its response—making your agent more efficient and accurate.
Why use function calling with Exa?
- Your agent can ground responses in current, factual information
- Reduces hallucinations by fetching real sources when needed
- Enables multi-step reasoning where the agent searches, analyzes, and responds
📚 Full documentation: https://docs.exa.ai/reference/openai-tool-calling
OpenAI Function Calling
import json
from openai import OpenAI
from exa_py import Exa
openai = OpenAI()
exa = Exa()
tools = [{
"type": "function",
"function": {
"name": "exa_search",
"description": "Search the web for current information.",
"parameters": {
"type": "object",
"properties": {"query": {"type": "string", "description": "Search query"}},
"required": ["query"]
}
}
}]
def exa_search(query: str) -> str:
results = exa.search(query=query, type="auto", num_results=10, contents={"highlights": {"max_characters": 4000}})
return "\n".join([f"{r.title}: {r.url}" for r in results.results])
messages = [{"role": "user", "content": "What's the latest in AI safety?"}]
response = openai.chat.completions.create(model="gpt-4o", messages=messages, tools=tools)
if response.choices[0].message.tool_calls:
tool_call = response.choices[0].message.tool_calls[0]
search_results = exa_search(json.loads(tool_call.function.arguments)["query"])
messages.append(response.choices[0].message)
messages.append({"role": "tool", "tool_call_id": tool_call.id, "content": search_results})
final = openai.chat.completions.create(model="gpt-4o", messages=messages)
print(final.choices[0].message.content)Anthropic Tool Use
import anthropic
from exa_py import Exa
client = anthropic.Anthropic()
exa = Exa()
tools = [{
"name": "exa_search",
"description": "Search the web for current information.",
"input_schema": {
"type": "object",
"properties": {"query": {"type": "string", "description": "Search query"}},
"required": ["query"]
}
}]
def exa_search(query: str) -> str:
results = exa.search(query=query, type="auto", num_results=10, contents={"highlights": {"max_characters": 4000}})
return "\n".join([f"{r.title}: {r.url}" for r in results.results])
messages = [{"role": "user", "content": "Latest quantum computing developments?"}]
response = client.messages.create(model="claude-sonnet-4-20250514", max_tokens=4096, tools=tools, messages=messages)
if response.stop_reason == "tool_use":
tool_use = next(b for b in response.content if b.type == "tool_use")
tool_result = exa_search(tool_use.input["query"])
messages.append({"role": "assistant", "content": response.content})
messages.append({"role": "user", "content": [{"type": "tool_result", "tool_use_id": tool_use.id, "content": tool_result}]})
final = client.messages.create(model="claude-sonnet-4-20250514", max_tokens=4096, tools=tools, messages=messages)
print(final.content[0].text)Search Type Reference
| Type | Best For | Speed | Depth |
|---|---|---|---|
fast | Real-time apps, autocomplete, quick lookups | Fastest | Basic |
auto | Most queries - balanced relevance & speed | Medium | Smart |
Tip: type="auto" works well for most queries. It provides balanced relevance and speed.
Content Configuration
Choose ONE content type per request (not both):
| Type | Config | Best For |
|---|---|---|
| Text | "text": {"max_characters": 20000} | Full content extraction, RAG |
| Highlights | "highlights": {"max_characters": 4000} | Snippets, summaries, lower cost |
⚠️ Token usage warning: Using text: true (full page text) can significantly increase token count, leading to slower and more expensive LLM calls. To mitigate:
- Add
max_characterslimit:"text": {"max_characters": 10000} - Use
highlightsinstead if you don’t need contiguous text
When to use text vs highlights:
- Text - When you need untruncated, contiguous content (e.g., code snippets, full articles, documentation)
- Highlights - When you need key excerpts and don’t need the full context (e.g., summaries, Q&A, general research)
Domain Filtering (Optional)
Usually not needed - Exa’s neural search finds relevant results without domain restrictions.
When to use:
- Targeting specific authoritative sources
- Excluding low-quality domains from results
Example:
{
"includeDomains": ["arxiv.org", "github.com"],
"excludeDomains": ["pinterest.com"]
}Note: includeDomains and excludeDomains cannot be used together.
Web Search Tool
Use category: "null" to search for null content.
{
"query": "latest developments in AI safety research",
"category": null,
"num_results": 10,
"contents": {
"text": {
"max_characters": 20000
}
}
}Tips:
- Use
type: "auto"for most queries - Great for building search-powered chatbots or agents
- Combine with contents for RAG workflows
SDK Examples
Category Examples
Use category filters to search dedicated indexes. Each category returns only that content type.
Note: Categories can be restrictive. If you’re not getting enough results, try searching without a category first, then add one if needed.
People Search (category: "people")
Find people by role, expertise, or what they work on
await exa.search("software engineer distributed systems", {
"category": "people",
"type": "auto",
"num_results": 10
});Tips:
- Use SINGULAR form
- Describe what they work on
- No date/text filters supported
Company Search (category: "company")
Find companies by industry, criteria, or attributes
await exa.search("AI startup healthcare", {
"category": "company",
"type": "auto",
"num_results": 10
});Tips:
- Use SINGULAR form
- Simple entity queries
- Returns company objects, not articles
News Search (category: "news")
News articles
await exa.search("OpenAI announcements", {
"category": "news",
"type": "auto",
"num_results": 10,
"contents": {
"text": {
"max_characters": 20000
}
}
});Tips:
- Use livecrawl: “preferred” for breaking news
- Avoid date filters unless required
Research Papers (category: "research paper")
Academic papers
await exa.search("transformer architecture improvements", {
"category": "research paper",
"type": "auto",
"num_results": 10,
"contents": {
"text": {
"max_characters": 20000
}
}
});Tips:
- Use type: “auto” for most queries
- Includes arxiv.org, paperswithcode.com, and other academic sources
Tweet Search (category: "tweet")
Twitter/X posts
await exa.search("AI safety discussion", {
"category": "tweet",
"type": "auto",
"num_results": 10,
"contents": {
"text": {
"max_characters": 20000
}
}
});Tips:
- Good for real-time discussions
- Captures public sentiment
Content Freshness (maxAgeHours)
maxAgeHours sets the maximum acceptable age (in hours) for cached content. If the cached version is older than this threshold, Exa will livecrawl the page to get fresh content.
| Value | Behavior | Best For |
|---|---|---|
| 24 | Use cache if less than 24 hours old, otherwise livecrawl | Daily-fresh content |
| 1 | Use cache if less than 1 hour old, otherwise livecrawl | Near real-time data |
| 0 | Always livecrawl (ignore cache entirely) | Real-time data where cached content is unusable |
| -1 | Never livecrawl (cache only) | Maximum speed, historical/static content |
| (omit) | Default behavior (livecrawl as fallback if no cache exists) | Recommended — balanced speed and freshness |
When LiveCrawl Isn’t Necessary: Cached data is sufficient for many queries, especially for historical topics or educational content. These subjects rarely change, so reliable cached results can provide accurate information quickly.
See maxAgeHours docs for more details.
Other Endpoints
Beyond /search, Exa offers these endpoints:
| Endpoint | Description | Docs |
|---|---|---|
/contents | Get contents for known URLs | Docs |
/answer | Q&A with citations from web search | Docs |
Example - Get contents for URLs:
POST /contents
{
"urls": ["https://example.com/article"],
"text": { "max_characters": 20000 }
}Troubleshooting
Results not relevant?
- Try
type: "auto"- most balanced option - Refine query - use singular form, be specific
- Check category matches your use case
Results too slow?
- Use
type: "fast" - Reduce
num_results - Skip contents if you only need URLs
No results?
- Remove filters (date, domain restrictions)
- Simplify query
- Try
type: "auto"- has fallback mechanisms
Resources
- Docs: https://exa.ai/docs
- Dashboard: https://dashboard.exa.ai
- API Status: https://status.exa.ai