SharpAgent Intelligence Monitor v1.0.0
Let your agent scan the frontier for you every day. Multi-track parallel collecting → 3D dynamic scoring → Five-factor trust verification → Structured briefing output. Based on AI Frontier Monitor architecture + SharpAgent five-factor verification + frontier scouting experience.
Contract
contract:
name: sharpagent-intelligence-monitor
version: "1.0.0"
category: monitor
trust_level: verified
reads:
- InformationSource
- FiveFactorResult
writes:
- InformationSource
- CrossValidation
preconditions:
- "Access to web_search tool"
- "Access to curl/jq for API fetching"
postconditions:
- "Each info item has a score (0-5)"
- "Output tiered: core/watching/quick-scan"
- "Cross-track signals extracted"
calibration:
default_mode: professional
modes_supported: [warm, professional, deep]
compliance:
jurisdiction: global
safety_level: standard
lifecycle:
status: active
publish_as: SharpAgent
Architecture: 5-Track Parallel + Five-Factor Verification
Sources (5 tracks parallel)
↓
3D Automatic Scoring (relevance/quality pre-filter)
↓
Dynamic Tiers (core / watching / quick-scan)
↓
Cross-Track Signal Detection
↓
Five-Factor Trust Verification ← SharpAgent differentiator
↓
Structured Briefing Output
↓
Archive to Ontology
Track 1: 🏢 Enterprise — 11 RSS Feeds
| Feed | URL | Priority |
|---|---|---|
| OpenAI Blog | openai.com/blog | ⭐⭐⭐⭐⭐ |
| Anthropic Blog | anthropic.com/blog | ⭐⭐⭐⭐⭐ |
| AWS ML Blog | aws.amazon.com/blogs/machine-learning | ⭐⭐⭐⭐⭐ |
| Google AI Blog | ai.googleblog.com | ⭐⭐⭐⭐ |
| Meta AI Blog | ai.meta.com/blog | ⭐⭐⭐⭐ |
| Techmeme | techmeme.com/feed | ⭐⭐⭐⭐ |
| The Verge AI | theverge.com/ai-artificial-intelligence | ⭐⭐⭐ |
| Hacker News | news.ycombinator.com | ⭐⭐⭐ |
| Product Hunt | producthunt.com | ⭐⭐ |
| Ars Technica AI | arstechnica.com/ai | ⭐⭐ |
| Wired AI | wired.com/tag/artificial-intelligence | ⭐⭐ |
Track 2: 🇨🇳 China — 36kr Hotlist
curl -s "https://openclaw.36krcdn.com/media/hotlist/{date}/24h_hot_list.json"
Covering: China tech hotspots, AI dynamics, funding, industry trends
Track 3: 📚 Papers — arXiv
Fetch latest from:
- cs.AI (Artificial Intelligence)
- cs.LG (Machine Learning)
- cs.CL (Computation and Language)
Track 4: 🔥 GitHub Trending (AI/ML)
Fetch daily trending repos in:
- AI agents
- LLM tools
- ML frameworks
Track 5: 🔍 Web Search Supplement
Use web_search tool for topics with insufficient coverage.
Scoring: 3-Dimensional Dynamic
Each candidate is scored on 3 dimensions:
| Dimension | Weight | What to Look For |
|---|---|---|
| 🏢 Enterprise Landing | 40% | Real deployment, company name, scale, customer evidence |
| 📊 Data Support | 30% | Quantified results (%, improvements, benchmarks) |
| 💡 Learnability | 30% | Methodology, architecture, lessons learned, patterns |
Source Bonuses
| Source | Bonus |
|---|---|
| OpenAI / Anthropic / AWS official | +1.0 |
| Techmeme / peer-reviewed papers | +0.5 |
| Product Hunt / HN | +0.3 |
| 36kr (China relevance) | +1.0 for Chinese audience |
Dynamic Tiers (based on actual score distribution)
Score Distribution → Dynamic Thresholds
↓
🔴 Core: top ~15% or ≥3.5 (max 3)
🟡 Watching: top ~30% or ≥2.5 (max 5)
🟢 Quick Scan: ≥1.0 (max 8)
Signal Detection
Extract cross-track signals into 3 categories:
| Signal Type | Keywords | Output |
|---|---|---|
| 🛠 Tech Trends | new model, architecture, framework, benchmark, SOTA | Tech radar update |
| 🏢 Product Releases | launch, GA, open-source, preview, beta | Release tracker |
| 💰 Funding/M&A | series, raised, acquire, investment, valuation | Money map |
SharpAgent Integration: Five-Factor Secondary Verification
After the 3D scoring pass, add the SharpAgent five-factor as a secondary trust gate:
Article → 3D Score → Five-Factor Verification → Final Tier
Five-factor weights (in intel context):
- 🔗 Source Anchor: 0.30 — Is the source reliable?
- 🧠 Logic Anchor: 0.20 — Is the analysis self-consistent?
- 🌍 Compliance Anchor: 0.15 — Is it compliant?
- 🏳️ Interest Anchor: 0.15 — Marketing bias?
- 🔄 Cross Anchor: 0.20 — Multiple sources confirm?
Final Confidence = score_3d * 0.6 + five_factor_confidence * 0.4
Quality Gates:
- Five-factor < 5 → Excluded from briefing
- Source Anchor < 3 → Discarded
- Interest = confirmed → Manual review required
Output Format
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
📡 SharpAgent Intelligence Briefing · {Day} {Date}
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
📊 Overview
Sources: {N} tracks
Candidates: {total} | High quality: {quality}
🔗 Trust check: passed {pass}/{total}
🔴 Core Intelligence ({N} items)
### 1. {Title}
🔗 {Link}
💡 Takeaway: {One-line insight}
🔗 Trust score: {score}/10
🟡 Worth Watching ({N} items)
1. **{Title}** 🔗 {Link}
🟢 Quick Scan ({N} items)
• [{Title}]({Link})
📚 arXiv Papers (≤3)
**{Title}** — {Authors}
Abstract: {Abstract[:150]} → {Link}
🔥 GitHub Trending AI (≤3)
**{Repo}** ({Lang}) +{TodayStars}⭐ → {Link}
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
📊 Today's Signals
🛠 Tech Trends: {signal}
🏢 Product Launches: {signal}
💰 Capital Movements: {signal}
🔍 Five-Factor Trust Analysis
🔗 Source Anchor: {avg}/10
🧠 Logic Anchor: {avg}/10
🌍 Compliance: {pass_rate}%
🏳️ Interest Conflicts: {conflict_rate}%
🔄 Cross Anchor: {avg}/10
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
⏰ {HH:MM} | sharpagent-intelligence-monitor v1.0 | SharpAgent
Workflow
Step 1: Fetch All Tracks
# Enterprise RSS
python3 scripts/rss-crawler.py
# 36kr
curl -s "https://openclaw.36krcdn.com/media/hotlist/$(date +%Y-%m-%d)/24h_hot_list.json"
# arXiv
bash scripts/arxiv-fetch.sh --category cs.AI --days 7 --max 10
# GitHub Trending
bash scripts/github-trending-fetch.sh --period daily
Step 2: Score Candidates
Run each candidate through the 3D scoring engine. Source bonuses applied per track.
Step 3: Apply Five-Factor Verification
Each core-tier candidate gets full five-factor review:
- 🔗 Is the source reliable?
- 🧠 Is the analysis internally consistent?
- 🌍 Is it compliant?
- 🏳️ Any marketing bias?
- 🔄 Can we verify it independently?
Watch-tier candidates get a lightweight check (source + logic). Scan-tier candidates skip verification.
Step 4: Compute Final Confidence
final_confidence = score_3d * 0.6 + five_factor_confidence * 0.4
Step 5: Detect Cross-Track Signals
Compare candidates across all 5 tracks. Same topic in multiple tracks = signal, not just a single item. High signal = high priority.
Step 6: Render & Deliver
Render in calibration-appropriate mode:
- Warm: Tier labels + confidence indicators only
- Professional: Full briefing with per-item analysis
- Deep: Full briefing + five-factor breakdown per core item
Step 7: Archive
Save to data/briefings/{YYYY-MM-DD}-briefing.md
Edge Cases
| Situation | Action |
|---|---|
| RSS empty | Run with remaining tracks, skip RSS section |
| arXiv API timeout | Skip papers, log warning |
| GitHub fetch fails | Skip trending, log warning |
| 36kr 404 (no data) | Skip 36kr items |
| Zero quality items (<2 at ≥2.5) | Return NO_REPLY |
| Same company multiple sources | Deduplicate, keep highest score |
| 3 consecutive days <3 core items | Trigger source review |
| Five-factor fails all core items | Return "No reliable intel today" |
Quality Gates
| Check | What | Fail action |
|---|---|---|
| Max 16 items/day | 3+5+5+3(papers)+3(GitHub) | Trim tiers |
| NO_REPLY when <2 quality | <2 items at score ≥2.5 | Return NO_REPLY |
| Dedup same entity | Cross-source same-company | Keep highest score |
| Five-factor filter | Core items must pass verification | Drop or flag |
| 3-day threshold fail | Trigger review | Review alert |
Integration Points
Five-Factor Review Skill
sharpagent-five-factor-reviewcalled per core candidate- Verification results appended to briefing
Calibration Framework
- Output mode controlled by calibration settings
- Deep mode includes full five-factor breakdown
Ontology
- Each briefed item archived as InformationSource
- FiveFactorResult attached as validation
Version History
- v1.0.0 — Initial release. 5-track intel monitor with five-factor verification.
SharpAgent · MIT-0 · 2026-05-11