{ "architectures": [ "AuroraTrinnityModel" ], "model_type": "aurora_trinity", "framework": "aurora", "license": "apache-2.0", "version": "1.0.0", "description": "Aurora Trinity-3: Fractal, Ethical, Free Electronic Intelligence", "author": "Aurora Alliance", "url": "https://github.com/Aurora-Program/Trinity-3", "tags": [ "fractal-intelligence", "ternary-logic", "knowledge-base", "ethical-ai", "symbolic-reasoning" ], "task": [ "text-classification", "reasoning", "knowledge-management" ], "language": ["en", "es"], "library_name": "aurora-trinity", "pipeline_tag": "text-classification", "inference": { "input_format": "ternary_vectors", "output_format": "processed_tensors", "complexity": "O(1)", "memory_efficient": true }, "architecture_details": { "trigate_operations": { "inference": "A + B + M -> R", "learning": "A + B + R -> M", "deduction": "M + R + (A|B) -> (B|A)" }, "tensor_hierarchy": { "nivel_1": "summary representation", "nivel_9": "mid-level groups", "nivel_3": "finest detail level" }, "knowledge_base": { "type": "multi_universe", "storage": "fractal_tensors", "retrieval": "O(1)" }, "harmonization": { "type": "microshift", "coherence_validation": true, "ethical_constraints": true } }, "computational_features": { "ternary_logic": true, "null_handling": true, "ethical_constraints": true, "fractal_scaling": true, "pure_python": true }, "performance": { "trigate_inference": "~1μs", "fractal_synthesis": "~10μs", "knowledge_retrieval": "~5μs" }, "dependencies": [], "python_version": ">=3.8", "use_cases": [ "symbolic_reasoning", "knowledge_management", "ethical_ai_systems", "pattern_recognition", "educational_tools" ] }