Was Sie vorher wissen sollten
bevor Sie beginnen

Beginnt 5 June 2026 19:55

Endet 5 June 2026

00 Tage
00 Stunden
00 Minuten
00 Sekunden
course image

Connecting the Dots: Graph Analytics for Economic Sustainability

Discover how graph analytics drives economic sustainability through pattern recognition, data connections, and risk reduction strategies for more efficient and cost-effective business operations.
Data Science Conference via YouTube

Data Science Conference

6076 Kurse


27 minutes

Optionales Upgrade verfügbar

Not Specified

Lernen Sie in Ihrem eigenen Tempo

Free Video

Optionales Upgrade verfügbar

Übersicht

Discover how graph analytics drives economic sustainability through pattern recognition, data connections, and risk reduction strategies for more efficient and cost-effective business operations.

Lehrplan

  • Introduction to Graph Analytics
  • Overview of Graph Theory
    Importance of Graphs in Data Science
    Applications in Various Industries
  • Understanding Economic Sustainability
  • Concepts and Principles of Economic Sustainability
    Case Studies in Economic Sustainability
  • Fundamentals of Graph Analytics
  • Graph Types and Their Characteristics
    Nodes, Edges, and Properties
    Graph Data Structures and Storage
  • Graph Pattern Recognition
  • Identifying Community Structures
    Detecting Anomalies and Forewarning Systems
    Pathfinding and Shortest Path Analysis
  • Data Connections and Relationships
  • Building and Analyzing Connection Patterns
    Enhancing Data Insights through Graphs
    Leveraging Connections for Competitive Advantage
  • Risk Reduction Strategies through Graphs
  • Identifying Potential Risks in Business Operations
    Graph-Based Risk Assessment Models
    Mitigating Economic Risks with Graph Techniques
  • Graph Algorithms for Business Efficiency
  • Centrality Measures and Their Business Applications
    Clustering and Classification Techniques
    Graph-Based Optimization Strategies
  • Tools and Platforms for Graph Analytics
  • Introduction to Popular Graph Database Systems (e.g., Neo4j, Apache TinkerPop)
    Visualizing Graph Data with Software Tools
    Implementing Graph Analytics in Business Contexts
  • Case Studies and Industry Applications
  • Graph Analytics in Finance and Banking
    Sustainable Supply Chain Management using Graphs
    Energy Sector Graph Applications
  • Project Work and Practical Implementation
  • Designing a Graph Analytics Project for Economic Sustainability
    Data Collection, Processing, and Analysis
    Presentation and Peer Review of Projects
  • Future Trends in Graph Analytics and Economic Sustainability
  • Emerging Technologies and Innovations
    The Role of AI and Machine Learning in Graph Analytics
    Long-term Impact on Business and Economy
  • Course Review and Wrap-Up
  • Recap of Key Concepts and Techniques
    Discussion on Challenges and Opportunities
    Next Steps for Continued Learning and Development

Fachgebiete

Programming