Module 0. About the Course (7 min)
Module 1. Definitions and Business Case (55 min)
- History of Knowledge Graphs
- Knowledge Graphs in Various Industries - Finance
- Knowledge Graphs in Various Industries - Media
- Knowledge Graphs in Various Industries - Agriculture
- Knowledge Graphs in Various Industries - Pharmaceuticals
- Data Management Challenges in the Enterprise
Module 2. Knowledge Graph Supporting Technologies (40 min)
- Features of Graph Data Systems
- Approaches to Graphs as Data
- Property Graph Data Capabilities
- Graph Data Queries
- Graph Data Visualization
- Graph Data Systems
- Standardizing Data
Module 3. Semantic Technology Fundamentals (58 min)
- Knowledge Graph Stack
- RDF Brings Data Together
- RDFS Enhance Data with Types & Properties
- OWL Provides Precision Logic to Describe Models
- SPARQL Lets you Ask Questions About the Data
- Example Knowledge Graph Capabilities Using Semantic Web Standards
- Using SKOS for Knowledge Management
- The Meaning of Meaning
Module 4. Knowledge Graph Enterprise Framework (35 min)
- Application Vs. Enterprise Data
- The Enterprise Data Jungle
- Sustainable Extensibility
- Enterprise Data Community
- Prerequisites for Distributed Data
- Common Reference
- Connecting References
- Semantic Alignment
- Things vs. Strings
- Tools and Components
- Applications of Knowledge Graphs
Module 5. Modeling Methodology and Architecture (33 min)
- Modeling Methodology and Architecture
- Terminology Sources
- Guidelines for Terminology
Module 6. Implementation Fundamentals of Knowledge Graph (47 min)
- Example Implementation
- Incremental Development
- Knowledge Graph Implementation
- Presentation Approach
- Select a Use case
- Inventory Data Sources
- Draw on Reference Ontologies
- Identify Controlled Vocabulary
- Map Metadata to Ontologies
- Materialize Data as Needed
- Build Queries to Respond to Business Questions
- Repeat from Step 3 with New Data
- How Can This Fail?
- Summary: Incremental Development
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