{ "samples": [ { "id": "python_documentation_demo", "name": "Python Documentation Assistant Demo", "description": "Comprehensive example showing RAG-powered AI assistant handling multi-turn programming inquiry with knowledge search, detailed explanations, code examples, performance analysis, and interactive learning", "trace_file": "traces/python_documentation_inquiry.json", "knowledge_graph_file": "knowledge_graphs/kg_python_documentation_enhanced.json", "tags": [ "programming", "rag_assistant", "documentation", "failure_detection", "optimization" ], "complexity": "enhanced", "trace_type": "documentation_search", "trace_source": "sample_data", "features": [ "rag_search", "failure_detection", "optimization_recommendations", "content_references", "quality_scoring" ] }, { "id": "algorithm_sample_1", "name": "Location-Based Restaurant Discovery System", "description": "Complex location-based services example showcasing geographic analysis, time-based filtering, and data verification failures. Features Location-Based Services Expert, Eateries Expert, Data Verification Expert, and Computer Terminal collaborating on restaurant discovery near Harkness Memorial State Park with specific time constraints.", "trace_file": "traces/algorithm_sample_1.json", "knowledge_graph_file": "knowledge_graphs/kg_algorithm_sample_1.json", "tags": [ "multi_agent", "algorithm_generated", "location_services", "data_verification", "real_failure", "geographic_analysis", "time_constraints", "api_integration" ], "complexity": "expert", "trace_type": "location_based_services", "trace_source": "algorithm_generated", "features": [ "geographic_proximity_analysis", "time_based_filtering", "data_verification_failures", "api_integration_challenges", "multi_source_validation", "real_world_constraints", "execution_error_analysis", "tool_enhancement_recommendations", "temporal_replay", "progressive_knowledge_evolution", "window_based_visualization", "independent_window_analysis", "stage_specific_processing", "non_cumulative_visualization" ], "supports_replay": true, "window_info": { "window_count": 3, "processing_run_id": "sample_replay_002", "window_files": [ "knowledge_graphs/kg_algorithm_sample_1_window_0.json", "knowledge_graphs/kg_algorithm_sample_1_window_1.json", "knowledge_graphs/kg_algorithm_sample_1_window_2.json" ], "progression_stages": [ "User Query & Geographic Analysis", "Restaurant Data Collection", "Data Verification & Delivery" ], "stage_descriptions": [ "用户输入餐厅查询,位置专家进行地理分析,计算工具提供支持", "餐厅专家独立收集和处理餐厅数据信息", "数据验证专家验证信息质量并向用户交付最终推荐结果" ], "window_mode": "independent", "window_description": "每个窗口代表餐厅发现流程中的独立处理阶段,展示不同专家和工具的专门职责" } }, { "id": "algorithm_sample_3", "name": "Probability Game Theory Analysis System", "description": "Cross-disciplinary collaboration between probability and theoretical chemistry experts solving complex riddle scenarios. Demonstrates interdisciplinary problem-solving with game theory, statistical modeling, and chemical process analysis.", "trace_file": "traces/algorithm_sample_3.json", "knowledge_graph_file": "knowledge_graphs/kg_algorithm_sample_3.json", "tags": [ "multi_agent", "algorithm_generated", "probability", "theoretical_chemistry", "game_theory", "simulation", "cross_disciplinary", "complex_riddles" ], "complexity": "expert", "trace_type": "probability_game_theory", "trace_source": "algorithm_generated", "features": [ "cross_disciplinary_collaboration", "probability_calculations", "chemical_modeling", "game_theory_analysis", "simulation_implementation", "interdisciplinary_validation", "execution_error_analysis", "tool_enhancement_recommendations", "temporal_replay", "independent_window_analysis", "multi_disciplinary_analysis" ], "supports_replay": true, "window_info": { "window_count": 3, "processing_run_id": "sample_replay_algo3", "window_files": [ "knowledge_graphs/kg_algorithm_sample_3_window_0.json", "knowledge_graphs/kg_algorithm_sample_3_window_1.json", "knowledge_graphs/kg_algorithm_sample_3_window_2.json" ], "progression_stages": [ "Probability Analysis & Statistics", "Chemical Process Modeling", "Verification & Solution Delivery" ], "stage_descriptions": [ "概率专家接收博弈理论查询,进行统计分析和概率计算", "理论化学专家独立进行化学过程建模分析", "验证专家进行解决方案验证并向游戏参与者交付最终结果" ], "window_mode": "independent", "window_description": "展示概率博弈理论的多专业分析流程,每个窗口聚焦不同专业领域" } }, { "id": "algorithm_sample_14", "name": "Academic Literature Research System", "description": "Scholarly research system combining literary analysis and Norse mythology expertise for academic paper investigation. Features specialized academic database research and interdisciplinary scholarly analysis.", "trace_file": "traces/algorithm_sample_14.json", "knowledge_graph_file": "knowledge_graphs/kg_algorithm_sample_14.json", "tags": [ "multi_agent", "algorithm_generated", "academic_research", "literature_analysis", "norse_mythology", "scholarly_work", "database_research", "interdisciplinary_studies" ], "complexity": "advanced", "trace_type": "academic_literature_analysis", "trace_source": "algorithm_generated", "features": [ "academic_database_research", "literary_analysis_methods", "mythological_expertise", "scholarly_validation", "interdisciplinary_coordination", "retrieval_error_analysis", "database_tool_enhancement", "workflow_integration", "temporal_replay", "independent_window_analysis", "specialized_expert_workflow" ], "supports_replay": true, "window_info": { "window_count": 3, "processing_run_id": "sample_replay_algo14", "window_files": [ "knowledge_graphs/kg_algorithm_sample_14_window_0.json", "knowledge_graphs/kg_algorithm_sample_14_window_1.json", "knowledge_graphs/kg_algorithm_sample_14_window_2.json" ], "progression_stages": [ "Literature Investigation", "Mythological Analysis", "Academic Validation" ], "stage_descriptions": [ "文学分析专家接收查询并进行学术文章调研", "北欧神话专家进行神话参考文献分析", "验证专家进行学术来源验证并交付研究结果" ], "window_mode": "independent", "window_description": "展示学术文献研究的多专业协作流程,每个窗口聚焦不同的研究领域" } }, { "id": "algorithm_sample_16", "name": "Wildlife Data Analysis and Ecological Monitoring System", "description": "Comprehensive ecological data analysis system specializing in government wildlife datasets and invasive species monitoring. Demonstrates data science applications in conservation and ecological research.", "trace_file": "traces/algorithm_sample_16.json", "knowledge_graph_file": "knowledge_graphs/kg_algorithm_sample_16.json", "tags": [ "multi_agent", "algorithm_generated", "data_analysis", "wildlife_research", "statistical_analysis", "ecological_data", "government_datasets", "conservation_science" ], "complexity": "advanced", "trace_type": "wildlife_data_analysis", "trace_source": "algorithm_generated", "features": [ "government_dataset_processing", "statistical_population_analysis", "ecological_data_validation", "temporal_trend_analysis", "invasive_species_monitoring", "data_retrieval_challenges", "pipeline_optimization", "conservation_applications", "temporal_replay", "independent_window_analysis", "specialized_expert_workflow" ], "supports_replay": true, "window_info": { "window_count": 3, "processing_run_id": "sample_replay_algo16", "window_files": [ "knowledge_graphs/kg_algorithm_sample_16_window_0.json", "knowledge_graphs/kg_algorithm_sample_16_window_1.json", "knowledge_graphs/kg_algorithm_sample_16_window_2.json" ], "progression_stages": [ "Data Processing", "Statistical Analysis", "Ecological Validation" ], "stage_descriptions": [ "数据分析专家接收查询并处理政府数据集", "统计分析专家进行种群统计计算", "数据验证专家进行生态数据验证并交付结果" ], "window_mode": "independent", "window_description": "展示野生动物数据分析的专业化处理流程,每个窗口代表不同的分析阶段" } } ], "metadata": { "version": "2.4.0", "created": "2025-01-27", "updated": "2025-01-27", "description": "Comprehensive AgentGraph sample data showcasing diverse multi-agent interactions across multiple domains including location services, probability theory, academic research, and ecological data analysis" } }