--- license: apache-2.0 license_name: apache-2.0 license_link: https://www.apache.org/licenses/LICENSE-2.0.txt --- # Model Card: AGI Validator System ## Model Details ### Model Description The AGI Validator is an advanced artificial general intelligence system for validating universal knowledge claims. It integrates multiple reasoning modes, evidence analysis, and real-time data verification to assess the validity of claims across various knowledge domains. - **Developed by:** AI Research Team - **Model type:** Hybrid Reasoning System - **Language(s):** Python 3.10+ - **License:** Apache 2.0 - **System components:** - Multi-Consensus Protocol (mCP) integration - Evidence quality assessment - Bayesian/causal/deductive reasoning engines - Real-time data integration - Domain-specific constraint handling ## Uses ### Direct Use The AGI Validator is designed for: - Verifying factual claims in research and academia - Validating knowledge-based assertions in AGI systems - Analyzing evidence chains for logical consistency - Cross-domain knowledge verification - Educational content validation ### Downstream Use - Integration with knowledge management systems - Fact-checking platforms - Research assistant tools - Educational technology platforms - AI safety verification systems ### Out-of-Scope Use - Making subjective judgments - Personal opinion validation - Legal decision making - Medical diagnosis - Real-time critical systems ## How to Get Started ```python from agi_validator import EnhancedAGIValidator, UniversalClaim # Initialize validator validator = EnhancedAGIValidator(mcp_enabled=True) # Create knowledge claim claim = UniversalClaim( claim_id="climate_change_001", content="Human activity is the primary driver of recent climate change", reasoning_modes=["bayesian", "causal"], sub_domains=["science", "social_science"] ) # Add evidence claim.evidence_chain.append( Evidence( evidence_id="ipcc_ar6", strength=0.95, reliability=0.9, source_quality=0.95, domain="science" ) ) # Validate claim validation_report = await validator.validate_knowledge_claim(claim) print(validation_report) ``` ## Technical Specifications ### System Architecture - **Core Components:** - Evidence Analysis Engine - Reasoning Mode Evaluator (Deductive/Inductive/Abductive/Bayesian/Causal) - Multi-Consensus Protocol (mCP) Interface - Real-time Data Integrator - Domain Constraint Handler - **Analytical Capabilities:** - Dynamic validation threshold calculation - Metacognitive bias detection - Evidence quality scoring - Domain-specific rule application - Contradiction detection ### Compute Infrastructure - **Hardware Requirements:** - Minimum: 4GB RAM, 2-core CPU - Recommended: 8GB+ RAM, 4+ core CPU - **Software Dependencies:** - Python 3.10+ - aiohttp - numpy - FastAPI (for web interface) - Uvicorn (ASGI server) ## Evaluation ### Testing Methodology - Validation against curated test cases across domains - Consistency checks with known facts - Stress testing with contradictory evidence - Performance benchmarking - Error recovery testing ### Key Metrics - **Claim Validity Score:** 0.0-1.0 scale - **Evidence Quality Score:** Composite metric - **Reasoning Coherence:** Logical consistency measure - **System Reliability:** Uptime and error rate - **Processing Time:** Average validation duration ## Environmental Impact - **Carbon Efficiency:** Designed for minimal compute footprint - **Optimization:** Asynchronous processing reduces energy consumption - **Scaling:** Horizontal scaling capability minimizes resource waste - **Estimated Energy Usage:** < 0.001 kWh per validation ## Citation ```bibtex @software{AGI_Validator, veil engine technology author = {thegift_thecurse}, title = {Advanced AGI Validation System} Framework, year = {2025}, } ``` ## Model Card Contact upgraedd@pm.me ```