• 5 Sections
  • 51 Lessons
  • 20 Hours
Expand all sectionsCollapse all sections
  • 1. Univariate Data Analysis and Visualization
    10
    • 1.1
      Sample design
    • 1.2
      The scale: types and selection criteria
    • 1.3
      Database development
    • 1.4
      Measures of centrality and variability
    • 1.5
      Calculating measurements using computer tools
    • 1.6
      Univariate data visualization
    • 1.7
      Variable distribution pattern
    • 1.8
      Classification of variables with tools
    • 1.9
      Exam
    • 1.10
      Additional content
  • 2. Multivariate Data Analysis and Visualization
    11
    • 2.1
      Relationship between quantitative variables: types and selection criteria
    • 2.2
      Calculation of relational measures using computer tools
    • 2.3
      Visualization of multivariate relationships using computer tools
    • 2.4
      Relationship between qualitative variables: types and selection criteria
    • 2.5
      Creating contingency tables using computer tools
    • 2.6
      Calculation of relational measures using computer tools
    • 2.7
      Data classification and reduction methods
    • 2.8
      Selection criteria for exploratory tools for multivariate relationships
    • 2.9
      Verification of assumptions for data classification and reduction methods using computer tools
    • 2.10
      Exam
    • 2.11
      Additional content
  • 3. Econometric Techniques (Modeling and Prediction)
    9
    • 3.1
      Concept, data and its handling, introduction to Gretl
    • 3.2
      Simple Linear Regression Model: Elements, hypotheses, estimation
    • 3.3
      Multiple Linear Regression Model
    • 3.4
      Contrasts, diagnosis, prediction
    • 3.5
      Economic Forecasting Techniques
    • 3.6
      Analysis of a series with a trend
    • 3.7
      Guidelines for evaluation
    • 3.8
      Exam
    • 3.9
      Additional content
  • 4. Big Data: Concepts, Methods and Technologies
    11
    • 4.1
      Introduction to Big Data Processing and Analysis
    • 4.2
      Data Type Classification
    • 4.3
      Big Data Project Development Cycle
    • 4.4
      Data Processing Strategies
    • 4.5
      Hybrid Architectures for Big Data
    • 4.6
      Laboratory Analysis vs. Production Analysis
    • 4.7
      Laboratory Analysis vs. Production Analysis
    • 4.8
      The Apache Ecosystem of Hadoop
    • 4.9
      Introduction to NoSQL Databases
    • 4.10
      Exam
    • 4.11
      Additional content
  • 5 Trends in Data Analysis and Big Data
    10
    • 5.1
      Data Mining / Machine Learning
    • 5.2
      Risk Analysis and Quality Management
    • 5.3
      Data Analysis and Visualization for Decision Making
    • 5.4
      Methodologies for advanced modeling and prediction
    • 5.5
      Univariate and Multivariate Modeling
    • 5.6
      Debate on Trends in Big Data Analytics
    • 5.7
      Cloud Computing and Big Data
    • 5.8
      Applications of Big Data Analytics
    • 5.9
      Exam
    • 5.10
      Additional content

Data Analysis and Big Data Techniques

This content is protected, please login and enroll in the course to view this content!
Previous between quantitative variables: types and selection criteria
Next Visualization of multivariate relationships with computer tools Next
StartCourses
Look for

Look for