Curriculum
- 10 Sections
 - 174 Lessons
 - 10 Weeks
 
Expand all sectionsCollapse all sections
- Predictive Modeling with SPSS9
 - Introduction to Business Analytics23
- 2.11- Definition and Scope of Business Analytics
 - 2.2Business Analytics (BA)
 - 2.3Data Collection and Integration
 - 2.4Data Cleaning and Preprocessing
 - 2.5Descriptive Analytics
 - 2.6Data Exploration and Visualization
 - 2.7Predictive Analytics
 - 2.8Prescriptive Analytics
 - 2.9Optimization and Simulation
 - 2.10Text and Sentiment Analysis
 - 2.11Data Governance and Security
 - 2.12Business Intelligence (BI)
 - 2.132- Importance of Data-Driven Decision-Making
 - 2.14Informed Decision-Making
 - 2.15Competitive Advantage
 - 2.16Cost Efficiency
 - 2.17Customer Understanding
 - 2.18Risk Management
 - 2.19Strategic Planning
 - 2.20Continuous Improvement
 - 2.21Measurable Outcomes
 - 2.22Case Studies
 - 2.23Rest
 
 - Key Concepts in Business Analytics14
- 3.1Data Collection and Storage
 - 3.2Data Cleaning and Preprocessing
 - 3.3Descriptive Analytics
 - 3.4Predictive Analytics
 - 3.5Prescriptive Analytics
 - 3.6Business Intelligence (BI)
 - 3.7Data Governance and Security
 - 3.8Big Data Analytics
 - 3.9Key Performance Indicators (KPIs)
 - 3.10Data-driven Decision Making
 - 3.11Agile Analytics
 - 3.12Ethics in Analytics
 - 3.13Rest
 - 3.14Case Studies
 
 - Tools and Technologies4
 - Data Types and Sources17
- 5.11- Data Types
 - 5.2Structured Data
 - 5.3Unstructured Data
 - 5.42- Data Sources
 - 5.5Internal Data Sources
 - 5.6External Data Sources
 - 5.73- Data Collection Methods
 - 5.8Surveys and Questionnaires
 - 5.9Observation
 - 5.10Interviews
 - 5.11Sensor Data
 - 5.12Web Scraping
 - 5.13Transaction Data
 - 5.14Social Media Monitoring
 - 5.15Secondary Data Analysis
 - 5.16Case Studies
 - 5.17Rest
 
 - Cleaning and Transformation25
- 6.11- Dealing with Missing Data
 - 6.2Identification of Missing Values
 - 6.3Removal of Missing Values
 - 6.4Imputation of Missing Values
 - 6.5Evaluate the Impact
 - 6.6Documentation
 - 6.7Iterative Process
 - 6.82- Outlier Detection and Treatment
 - 6.9Identification
 - 6.10Removal
 - 6.11Transformation
 - 6.12Winsorizing
 - 6.133- Data Normalization and Standardization
 - 6.14Normalization (Min-Max Scaling)
 - 6.15Standardization (Z-score Normalization)
 - 6.16Robust Scaling (IQR Scaling)
 - 6.174- Feature Engineering Techniques
 - 6.18Binning/Discretization
 - 6.19One-Hot Encoding
 - 6.20Polynomial Features
 - 6.21Interaction Terms
 - 6.22Feature Scaling
 - 6.23Dimensionality Reduction
 - 6.24Case Studies
 - 6.25Rest
 
 - Exploratory Data Analysis (EDA) with SPSS16
- 7.1Introduction
 - 7.21- Basic Statistical Analysis
 - 7.3Descriptive Statistics
 - 7.4Frequency Distribution
 - 7.5Central Tendency and Dispersion
 - 7.6Correlation Analysis
 - 7.7Inferential Statistics
 - 7.82- Data Visualization Techniques:
 - 7.9Histograms
 - 7.10Box Plots
 - 7.11Scatter Plots
 - 7.12Bar Charts
 - 7.13Heatmaps
 - 7.14Pie Charts
 - 7.15Line Chart
 - 7.16When should I use them?
 
 - Statistical analysis with SPSS24
- 8.11- Descriptive Statistics
 - 8.21-1 Measures of Central Tendency and Dispersion
 - 8.3Mean, Median, and Mode
 - 8.4Variability Measures
 - 8.51-2 Frequency Distributions
 - 8.6Histograms
 - 8.7Percentiles and Quartiles
 - 8.81-3 Probability Distributions
 - 8.9Normal Distribution
 - 8.102- Inferential Statistics
 - 8.112-1 Hypothesis Testing
 - 8.12Formulate Hypotheses
 - 8.13Conduct Statistical Tests
 - 8.142-2 Confidence Intervals
 - 8.153-1 Confidence Intervals
 - 8.16Confidence Interval for Mean
 - 8.174-1 Regression Analysis
 - 8.18Simple Linear Regression
 - 8.19Multiple Regression
 - 8.205-1 Correlation Analysis
 - 8.21Pearson Correlation
 - 8.22SPSS Functionality
 - 8.23When should I use them?
 - 8.24Case Studies
 
 - Prescriptive Analytics with SPSS8
 - Business Intelligence and Reporting34
- 10.11- Dashboard and Visualization Design
 - 10.21-1 Principles of Effective Data Visualization
 - 10.3Clarity and Simplicity
 - 10.4Relevance
 - 10.5Consistency
 - 10.6Interactivity
 - 10.7Storytelling
 - 10.8Use of Appropriate Visualization Types
 - 10.9Color Usage
 - 10.10Data Accuracy and Precision
 - 10.111-2 Dashboard Development and Best Practices
 - 10.12Define Objectives
 - 10.13User-Centric Design
 - 10.14Performance Optimization
 - 10.15Responsive Design
 - 10.16Feedback Mechanisms
 - 10.17Regular Updates
 - 10.18Testing and Validation
 - 10.192- Reporting Tools
 - 10.202-1 Introduction to Reporting Tools
 - 10.21Tableau
 - 10.22Power BI (Microsoft Power BI)
 - 10.232-2 Creating Dynamic and Interactive Reports
 - 10.24Data Connection
 - 10.25Report Design
 - 10.26Interactivity
 - 10.27Data Refresh and Automation
 - 10.28Collaboration and Sharing
 - 10.29Security and Access Control
 - 10.30Documentation and Training
 - 10.31Case Studies
 - 10.32Rest
 - 10.33Exam
 - 10.34Contact Form