Get in Touch

Course Outline

  1. Introduction to data processing and analysis
  2. Basic information about the KNIME platform
    • installation and configuration
    • overview of the interface
  3. Platform overview in the context of tool integration
  4. Introduction to workflow creation
  5. Methodologies for building business models and data processing workflows
    • documentation of workflows
    • methods for importing and exporting workflows
  6. Overview of basic nodes
  7. Overview of ETL processes
  8. Data exploration methodologies
  9. Data import methodologies
    • importing data from files
    • importing data from relational databases using SQL
    • creating SQL queries
  10. Overview of advanced nodes
  11. Data analysis
    • preparing data for analysis
    • data quality and validation
    • statistical data examination
    • data modeling
  12. Introduction to the use of variables and loops
  13. Building advanced, automated workflows
  14. Visualization of results
  15. Public and free data sources
  16. Introduction to Data Mining
    • Overview of selected types of Data Mining tasks and processes
  17. Knowledge discovery from data
    • Web Mining
    • SNA – social network analysis
    • Text Mining – document analysis
    • data visualization on maps
  18. Integration of other tools with KNIME
    • R
    • Java
    • Python
    • Gephi
    • Neo4j
  19. Report building
  20. Training summary

Requirements

Basic knowledge of mathematical analysis.

Basic knowledge of statistics.

 35 Hours

Testimonials (3)

Related Categories