{ "id": "software_engineering-machine-learning", "name": "Machine Learning", "category": "computer_science", "subcategory": "software_engineering", "subcategory_name": "Software Engineering", "description": "Machine Learning process visualization. This process flowchart outlines key steps, checks, and outputs.", "complexity": { "nodes": 12, "edges": 12, "conditionals": 3, "logicGates": { "orGates": 3, "andGates": 1, "notGates": 0, "total": 4 }, "level": "high", "detailLevel": "source_grounded_rebuild", "loops": 1 }, "colorScheme": { "red": { "hex": "#ff6b6b", "category": "Triggers & Inputs" }, "yellow": { "hex": "#ffd43b", "category": "Structures & Objects" }, "green": { "hex": "#51cf66", "category": "Processing & Operations" }, "blue": { "hex": "#74c0fc", "category": "Intermediates & States" }, "violet": { "hex": "#b197fc", "category": "Products & Outputs" } }, "mermaid": "graph TD\n N1[\"Machine Learning research question\"]\n N2[\"Data + Labels\"]\n N3[\"Objective Metric\"]\n N4[\"Feature Pipeline\"]\n N5[\"Model Family\"]\n N6[\"Train\"]\n N7{\"Validate\"}\n N8[\"Deploy\"]\n N9{\"Monitor\"}\n N10[\"Production Model\"]\n N11{\"Source-grounded check: Machine...\"}\n N12[\"Machine Learning...\"]\n\n N1 --> N2\n N2 --> N3\n N3 --> N4\n N4 --> N5\n N5 --> N6\n N6 --> N7\n N7 -->|yes| N8\n N8 --> N9\n N9 -->|yes| N10\n N10 --> N11\n N11 -->|yes| N12\n N8 -->|iterate| N3\n\n style N1 fill:#ff6b6b,color:#fff\n style N2 fill:#ff6b6b,color:#fff\n style N3 fill:#ff6b6b,color:#fff\n style N4 fill:#ffd43b,color:#000\n style N5 fill:#ffd43b,color:#000\n style N6 fill:#51cf66,color:#fff\n style N7 fill:#51cf66,color:#fff\n style N8 fill:#51cf66,color:#fff\n style N9 fill:#74c0fc,color:#fff\n style N10 fill:#b197fc,color:#fff\n style N11 fill:#ffd43b,color:#000\n style N12 fill:#b197fc,color:#fff", "sources": [ { "title": "Machine learning with sklearn", "authors": "Trappenberg, Thomas P.", "journal": "Fundamentals of Machine Learning", "year": "2019", "pubmed": null, "doi": "10.1093/oso/9780198828044.003.0003", "url": "https://doi.org/10.1093/oso/9780198828044.003.0003" }, { "title": "Software Engineering", "authors": "Sommerville, I.", "journal": "Pearson", "year": "2016", "pubmed": null, "doi": null, "url": "https://www.pearson.com/en-us/subject-catalog/p/software-engineering/P200000003559" }, { "title": "Continuous Delivery", "authors": "Humble, J.; Farley, D.", "journal": "Addison-Wesley", "year": "2010", "pubmed": null, "doi": null, "url": "https://continuousdelivery.com/" }, { "title": "The Mythical Man-Month", "authors": "Brooks, F. P.", "journal": "Addison-Wesley", "year": "1995", "pubmed": null, "doi": null, "url": "https://www.pearson.com/en-us/subject-catalog/p/mythical-man-month-the-essays-on-software-engineering-anniversary-edition/P200000009016" } ], "keywords": [ "machine", "learning" ], "relatedProcesses": [], "created": "2026-01-08", "lastUpdated": "2026-04-30", "verified": false, "notes": "Corrective rebuild: replaces the generic scaffold with a process-specific step structure and records topology for duplicate detection.", "nodeDetails": [ { "id": "N1", "label": "Machine Learning research question", "detail": "Machine Learning research question", "type": "process", "role": "Triggers & Inputs" }, { "id": "N2", "label": "Data + Labels", "detail": "Data + Labels", "type": "process", "role": "Triggers & Inputs" }, { "id": "N3", "label": "Objective Metric", "detail": "Objective Metric", "type": "process", "role": "Triggers & Inputs" }, { "id": "N4", "label": "Feature Pipeline", "detail": "Feature Pipeline", "type": "process", "role": "Structures & Objects" }, { "id": "N5", "label": "Model Family", "detail": "Model Family", "type": "process", "role": "Structures & Objects" }, { "id": "N6", "label": "Train", "detail": "Train", "type": "process", "role": "Processing & Operations" }, { "id": "N7", "label": "Validate", "detail": "Validate", "type": "decision", "role": "Processing & Operations" }, { "id": "N8", "label": "Deploy", "detail": "Deploy", "type": "process", "role": "Processing & Operations" }, { "id": "N9", "label": "Monitor", "detail": "Monitor", "type": "decision", "role": "Intermediates & States" }, { "id": "N10", "label": "Production Model", "detail": "Production Model", "type": "process", "role": "Products & Outputs" }, { "id": "N11", "label": "Source-grounded check: Machine...", "detail": "Source-grounded check: Machine learning with sklearn", "type": "decision", "role": "Structures & Objects" }, { "id": "N12", "label": "Machine Learning...", "detail": "Machine Learning prediction/readout", "type": "process", "role": "Products & Outputs" } ], "flowchartStandard": { "name": "source_grounded_rebuild_v1", "applied": "2026-04-30", "curationStatus": "source_grounded_draft", "basis": "cs_exact_template", "topologySignature": "5ff919f8922b139e", "sourceGrounding": "Graph steps are derived from the process title, existing source metadata, and curated process/subfield templates; citations support the process topic and should be reviewed for node-level claims before marking verified." }, "namedCollections": [], "graphMetrics": { "nodes": 12, "edges": 12, "conditionals": 3, "andGates": 1, "orGates": 3, "notGates": 0, "loops": 1 } }