Skills openclaw-search
Intelligent search for agents. Multi-source retrieval with confidence scoring - web, academic, and Tavily in one unified API.
git clone https://github.com/openclaw/skills
T=$(mktemp -d) && git clone --depth=1 https://github.com/openclaw/skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/aisadocs/openclaw-aisa-search-web-academic-tavily" ~/.claude/skills/clawdbot-skills-openclaw-search-0702ab && rm -rf "$T"
T=$(mktemp -d) && git clone --depth=1 https://github.com/openclaw/skills "$T" && mkdir -p ~/.openclaw/skills && cp -r "$T/skills/aisadocs/openclaw-aisa-search-web-academic-tavily" ~/.openclaw/skills/clawdbot-skills-openclaw-search-0702ab && rm -rf "$T"
skills/aisadocs/openclaw-aisa-search-web-academic-tavily/SKILL.mdOpenClaw Search 🔍
Intelligent search for autonomous agents. Powered by AIsa.
One API key. Multi-source retrieval. Confidence-scored answers.
Inspired by AIsa Verity - A next-generation search agent with trust-scored answers.
🔥 What Can You Do?
Research Assistant
"Search for the latest papers on transformer architectures from 2024-2025"
Market Research
"Find all web articles about AI startup funding in Q4 2025"
Competitive Analysis
"Search for reviews and comparisons of RAG frameworks"
News Aggregation
"Get the latest news about quantum computing breakthroughs"
Deep Dive Research
"Smart search combining web and academic sources on 'autonomous agents'"
Quick Start
export AISA_API_KEY="your-key"
🏗️ Architecture: Multi-Stage Orchestration
OpenClaw Search employs a Two-Phase Retrieval Strategy for comprehensive results:
Phase 1: Discovery (Parallel Retrieval)
Query 4 distinct search streams simultaneously:
- Scholar: Deep academic retrieval
- Web: Structured web search
- Smart: Intelligent mixed-mode search
- Tavily: External validation signal
Phase 2: Reasoning (Meta-Analysis)
Use AIsa Explain to perform meta-analysis on search results, generating:
- Confidence scores (0-100)
- Source agreement analysis
- Synthesized answers
┌─────────────────────────────────────────────────────────────┐ │ User Query │ └─────────────────────────────────────────────────────────────┘ │ ┌───────────────┼───────────────┐ ▼ ▼ ▼ ┌─────────┐ ┌─────────┐ ┌─────────┐ │ Scholar │ │ Web │ │ Smart │ └─────────┘ └─────────┘ └─────────┘ │ │ │ └───────────────┼───────────────┘ ▼ ┌─────────────────┐ │ AIsa Explain │ │ (Meta-Analysis) │ └─────────────────┘ │ ▼ ┌─────────────────┐ │ Confidence Score│ │ + Synthesis │ └─────────────────┘
Core Capabilities
Web Search
# Basic web search curl -X POST "https://api.aisa.one/apis/v1/scholar/search/web?query=AI+frameworks&max_num_results=10" \ -H "Authorization: Bearer $AISA_API_KEY" # Full text search (with page content) curl -X POST "https://api.aisa.one/apis/v1/search/full?query=latest+AI+news&max_num_results=10" \ -H "Authorization: Bearer $AISA_API_KEY"
Academic/Scholar Search
# Search academic papers curl -X POST "https://api.aisa.one/apis/v1/scholar/search/scholar?query=transformer+models&max_num_results=10" \ -H "Authorization: Bearer $AISA_API_KEY" # With year filter curl -X POST "https://api.aisa.one/apis/v1/scholar/search/scholar?query=LLM&max_num_results=10&as_ylo=2024&as_yhi=2025" \ -H "Authorization: Bearer $AISA_API_KEY"
Smart Search (Web + Academic Combined)
# Intelligent hybrid search curl -X POST "https://api.aisa.one/apis/v1/scholar/search/smart?query=machine+learning+optimization&max_num_results=10" \ -H "Authorization: Bearer $AISA_API_KEY"
Tavily Integration (Advanced)
# Tavily search curl -X POST "https://api.aisa.one/apis/v1/tavily/search" \ -H "Authorization: Bearer $AISA_API_KEY" \ -H "Content-Type: application/json" \ -d '{"query":"latest AI developments"}' # Extract content from URLs curl -X POST "https://api.aisa.one/apis/v1/tavily/extract" \ -H "Authorization: Bearer $AISA_API_KEY" \ -H "Content-Type: application/json" \ -d '{"urls":["https://example.com/article"]}' # Crawl web pages curl -X POST "https://api.aisa.one/apis/v1/tavily/crawl" \ -H "Authorization: Bearer $AISA_API_KEY" \ -H "Content-Type: application/json" \ -d '{"url":"https://example.com","max_depth":2}' # Site map curl -X POST "https://api.aisa.one/apis/v1/tavily/map" \ -H "Authorization: Bearer $AISA_API_KEY" \ -H "Content-Type: application/json" \ -d '{"url":"https://example.com"}'
Explain Search Results (Meta-Analysis)
# Generate explanations with confidence scoring curl -X POST "https://api.aisa.one/apis/v1/scholar/explain" \ -H "Authorization: Bearer $AISA_API_KEY" \ -H "Content-Type: application/json" \ -d '{"results":[...],"language":"en","format":"summary"}'
📊 Confidence Scoring Engine
Unlike standard RAG systems, OpenClaw Search evaluates credibility and consensus:
Scoring Rubric
| Factor | Weight | Description |
|---|---|---|
| Source Quality | 40% | Academic > Smart/Web > External |
| Agreement Analysis | 35% | Cross-source consensus checking |
| Recency | 15% | Newer sources weighted higher |
| Relevance | 10% | Query-result semantic match |
Score Interpretation
| Score | Confidence Level | Meaning |
|---|---|---|
| 90-100 | Very High | Strong consensus across academic and web sources |
| 70-89 | High | Good agreement, reliable sources |
| 50-69 | Medium | Mixed signals, verify independently |
| 30-49 | Low | Conflicting sources, use caution |
| 0-29 | Very Low | Insufficient or contradictory data |
Python Client
# Web search python3 {baseDir}/scripts/search_client.py web --query "latest AI news" --count 10 # Academic search python3 {baseDir}/scripts/search_client.py scholar --query "transformer architecture" --count 10 python3 {baseDir}/scripts/search_client.py scholar --query "LLM" --year-from 2024 --year-to 2025 # Smart search (web + academic) python3 {baseDir}/scripts/search_client.py smart --query "autonomous agents" --count 10 # Full text search python3 {baseDir}/scripts/search_client.py full --query "AI startup funding" # Tavily operations python3 {baseDir}/scripts/search_client.py tavily-search --query "AI developments" python3 {baseDir}/scripts/search_client.py tavily-extract --urls "https://example.com/article" # Multi-source search with confidence scoring python3 {baseDir}/scripts/search_client.py verity --query "Is quantum computing ready for enterprise?"
API Endpoints Reference
| Endpoint | Method | Description |
|---|---|---|
| POST | Web search with structured results |
| POST | Academic paper search |
| POST | Intelligent hybrid search |
| POST | Generate result explanations |
| POST | Full text search with content |
| POST | Smart web search |
| POST | Tavily search integration |
| POST | Extract content from URLs |
| POST | Crawl web pages |
| POST | Generate site maps |
Search Parameters
| Parameter | Type | Description |
|---|---|---|
| query | string | Search query (required) |
| max_num_results | integer | Max results (1-100, default 10) |
| as_ylo | integer | Year lower bound (scholar only) |
| as_yhi | integer | Year upper bound (scholar only) |
🚀 Building a Verity-Style Agent
Want to build your own confidence-scored search agent? Here's the pattern:
1. Parallel Discovery
import asyncio async def discover(query): """Phase 1: Parallel retrieval from multiple sources.""" tasks = [ search_scholar(query), search_web(query), search_smart(query), search_tavily(query) ] results = await asyncio.gather(*tasks) return { "scholar": results[0], "web": results[1], "smart": results[2], "tavily": results[3] }
2. Confidence Scoring
def score_confidence(results): """Calculate deterministic confidence score.""" score = 0 # Source quality (40%) if results["scholar"]: score += 40 * len(results["scholar"]) / 10 # Agreement analysis (35%) claims = extract_claims(results) agreement = analyze_agreement(claims) score += 35 * agreement # Recency (15%) recency = calculate_recency(results) score += 15 * recency # Relevance (10%) relevance = calculate_relevance(results, query) score += 10 * relevance return min(100, score)
3. Synthesis
async def synthesize(query, results, score): """Generate final answer with citations.""" explanation = await explain_results(results) return { "answer": explanation["summary"], "confidence": score, "sources": explanation["citations"], "claims": explanation["claims"] }
For a complete implementation, see AIsa Verity.
Pricing
| API | Cost |
|---|---|
| Web search | ~$0.001 |
| Scholar search | ~$0.002 |
| Smart search | ~$0.002 |
| Tavily search | ~$0.002 |
| Explain | ~$0.003 |
Every response includes
usage.cost and usage.credits_remaining.
Get Started
- Sign up at aisa.one
- Get your API key
- Add credits (pay-as-you-go)
- Set environment variable:
export AISA_API_KEY="your-key"
Full API Reference
See API Reference for complete endpoint documentation.
Resources
- AIsa Verity - Reference implementation of confidence-scored search agent
- AIsa Documentation - Complete API documentation