Skip to content

Stabilarity Hub

Menu
  • Home
  • Research
    • Healthcare & Life Sciences
      • Medical ML Diagnosis
    • Enterprise & Economics
      • AI Economics
      • Cost-Effective AI
      • Spec-Driven AI
    • Geopolitics & Strategy
      • Anticipatory Intelligence
      • Future of AI
      • Geopolitical Risk Intelligence
    • AI & Future Signals
      • Capability–Adoption Gap
      • AI Observability
      • AI Intelligence Architecture
      • AI Memory
      • Trusted Open Source
    • Data Science & Methods
      • HPF-P Framework
      • Intellectual Data Analysis
      • Reference Evaluation
    • Publications
      • External Publications
    • Robotics & Engineering
      • Open Humanoid
      • Open Starship
    • Benchmarks & Measurement
      • Universal Intelligence Benchmark
      • Shadow Economy Dynamics
      • Article Quality Science
  • Tools
    • Healthcare & Life Sciences
      • ScanLab
      • AI Data Readiness Assessment
    • Enterprise Strategy
      • AI Use Case Classifier
      • ROI Calculator
      • Risk Calculator
      • Reference Trust Analyzer
    • Portfolio & Analytics
      • HPF Portfolio Optimizer
      • Adoption Gap Monitor
      • Data Mining Method Selector
    • Geopolitics & Prediction
      • War Prediction Model
      • Ukraine Crisis Prediction
      • Gap Analyzer
      • Geopolitical Stability Dashboard
    • Technical & Observability
      • OTel AI Inspector
    • Robotics & Engineering
      • Humanoid Simulation
    • Benchmarks
      • UIB Benchmark Tool
    • Article Evaluator
    • Open Starship Simulation
  • API Gateway
  • About
    • Contributors
  • Contact
  • Join Community
  • Terms of Service
  • Login
  • Register
Menu

OTel AI Inspector for AI Systems

🔭 OTel AI Inspector

Paste your OpenTelemetry trace JSON — get your AI observability coverage score across L1–L4 layers

📊 4-Layer AI Observability Model

L1 · Infrastructure Classic OTel spans — service.name, http.*, deployment.environment
L2 · Model Behavior GenAI conventions — gen_ai.system, request.model, usage.tokens
L3 · Semantic Quality Quality signals — eval.factuality, hallucination_rate, rag.faithfulness
L4 · Business Impact Business metrics — task_completed, cost_usd, user_satisfaction
0%
Overall AI Observability Coverage
L1 · Infrastructure
0%
Classic OTel spans, service attributes
L2 · Model Behavior
0%
GenAI semantic conventions
L3 · Semantic Quality
0%
Quality signals, evaluation scores
L4 · Business Impact
0%
Business metrics, user outcomes
✅ Found Attributes
❌ Missing Conventions
🔧 Add to Your Stack
Python
Node.js
Version: 1.1.0  |  Last Updated: 2026-03-09  |  Related Research: AI Observability & Monitoring
📡 API Dependencies
No external APIs required — purely client-side analysis.
OTel trace parsing runs entirely in-browser JavaScript.
No data is sent to external servers.
📋 Release Notes
v1.1.0 (2026-03-09)
• Removed all rounded corners for consistent design
• Added 4-layer model guide at top
• Added example preset buttons (Minimal, Partial, Full)
• Added API Dependencies section
• Added Release Notes section
• Improved mobile responsiveness

v1.0.0 (2026-03-04)
• Initial release
• 4-layer scoring model (L1-L4)
• Support for OTLP JSON, Jaeger, flat span arrays
• Python and Node.js code snippet generation
• Shareable URL with base64-encoded trace
• Dark terminal theme

Recent Posts

  • Interpretable Models vs Post-Hoc Explanations: True Cost Comparison for Enterprise AI
  • XAI Tool Economics: The Cost Structure of Explanation Generation
  • Transparent AI Sourcing: Build vs Buy Economics When Explanations Matter
  • XAI Observability: Monitoring Explainability Drift in Production Models
  • Manufacturing AI Observability: Monitoring Explanation Quality in Predictive Maintenance Systems

Research Index

Browse all articles — filter by score, badges, views, series →

Categories

  • ai
  • AI Economics
  • AI Memory
  • AI Observability & Monitoring
  • AI Portfolio Optimisation
  • Ancient IT History
  • Anticipatory Intelligence
  • Article Quality Science
  • Capability-Adoption Gap
  • Cost-Effective Enterprise AI
  • Future of AI
  • Geopolitical Risk Intelligence
  • hackathon
  • healthcare
  • HPF-P Framework
  • innovation
  • Intellectual Data Analysis
  • medai
  • Medical ML Diagnosis
  • Open Humanoid
  • Research
  • ScanLab
  • Shadow Economy Dynamics
  • Spec-Driven AI Development
  • Technology
  • Trusted Open Source
  • Uncategorized
  • Universal Intelligence Benchmark
  • War Prediction

About

Stabilarity Research Hub is dedicated to advancing the frontiers of AI, from Medical ML to Anticipatory Intelligence. Our mission is to build robust and efficient AI systems for a safer future.

Language

  • Medical ML Diagnosis
  • AI Economics
  • Cost-Effective AI
  • Anticipatory Intelligence
  • Data Mining
  • 🔑 API for Researchers

Connect

Facebook Group: Join

Telegram: @Y0man

Email: contact@stabilarity.com

© 2026 Stabilarity Research Hub

© 2026 Stabilarity Hub | Powered by Superbs Personal Blog theme
Stabilarity Research Hub

Open research platform for AI, machine learning, and enterprise technology. All articles are preprints with DOI registration via Zenodo.

185+
Articles
8
Series
DOI
Archived

Research Series

  • Medical ML Diagnosis
  • Anticipatory Intelligence
  • Intellectual Data Analysis
  • AI Economics
  • Cost-Effective AI
  • Spec-Driven AI

Community

  • Join Community
  • MedAI Hack
  • Zenodo Archive
  • Contact Us

Legal

  • Terms of Service
  • About Us
  • Contact
Operated by
Stabilarity OÜ
Registry: 17150040
Estonian Business Register →
© 2026 Stabilarity OÜ. Content licensed under CC BY 4.0
Terms About Contact
Language: 🇬🇧 EN 🇺🇦 UK 🇩🇪 DE 🇵🇱 PL 🇫🇷 FR
Display Settings
Theme
Light
Dark
Auto
Width
Default
Column
Wide
Text 100%

We use cookies to enhance your experience and analyze site traffic. By clicking "Accept All", you consent to our use of cookies. Read our Terms of Service for more information.