Get in Touch

Course Outline

  1. Introduction to data processing and analysis
  2. Basic information about the KNIME platform
    • installation and configuration
    • interface overview
  3. Overview of the platform in terms of tool integration
  4. Introduction to work. Creating workflows
  5. Methodology for creating business models and data processing processes
    • work documentation
    • methods for importing and exporting processes
  6. Overview of basic nodes
  7. Overview of ETL processes
  8. Data mining methodologies
  9. Data import methods
    • 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 analysis
    • data modeling
  12. Introduction to using variables and loops
  13. Building advanced, automated processes
  14. Visualization of results
  15. Public and free data sources
  16. Fundamentals of Data Mining
    • Overview of selected data mining tasks and processes
  17. Knowledge discovery from data
    • Web Mining
    • SNA – social networks
    • Text Mining – document analysis
    • data visualization on maps
  18. Integration of other tools with KNIME
    • R
    • Java
    • Python
    • Gephi
    • Neo4j
  19. Building reports
  20. Training summary

Requirements

Knowledge of the fundamentals of mathematical analysis.

Knowledge of the fundamentals of statistics.

 35 Hours

Testimonials (3)

Related Categories