16 - 20 Feb 2025
Dubai (UAE)
Hotel : Residence Inn by Marriott Sheikh Zayed Road, Dubai
Cost : 4900 € Euro
In an era driven by data, the ability to effectively analyze, interpret, and communicate insights is critical for decision-making and strategic planning. The Applied Data Analysis Masterclass is designed to equip participants with practical skills in data visualization, statistical analysis, and the use of advanced programs. This intensive training program is tailored to provide hands-on experience, transforming raw data into actionable insights. Participants will explore various tools and techniques for analyzing complex datasets, creating compelling visualizations, and leveraging advanced software programs to streamline data analysis processes.
The masterclass will delve into critical aspects of data analysis, including descriptive and inferential statistics, data mining, and predictive modeling. It will also cover the use of industry-standard tools such as Microsoft Excel, Python, R, and Tableau, empowering participants to tackle real-world data challenges with confidence and efficiency. By the end of this program, attendees will be well-prepared to implement advanced data analysis strategies that drive organizational success and innovation.
Data analysts and scientists
Business intelligence professionals
Managers and decision-makers
Researchers and academicians
Professionals involved in strategic planning and reporting
By the end of this training, participants will:
Understand core statistical concepts and their application in real-world scenarios.
Develop proficiency in advanced data visualization techniques using tools like Tableau and Power BI.
Gain hands-on experience in data analysis using Python and R.
Learn how to effectively present data insights to stakeholders.
Apply predictive modeling and data mining techniques for strategic decision-making.
Day 1:
Foundations of Data Analysis and Visualization
Introduction to data analysis and its importance in decision-making
Understanding types of data: qualitative vs. quantitative
Core statistical concepts: mean, median, mode, variance, and standard deviation
Fundamentals of data visualization: principles and best practices
Hands-on session: Creating basic charts and graphs using Microsoft Excel
Day 2:
Advanced Data Visualization Techniques
Exploring advanced visualization tools: Tableau and Power BI
Designing interactive dashboards for dynamic data presentation
Customizing visualizations for enhanced storytelling
Case study: Visualizing sales and marketing data
Workshop: Building interactive dashboards in Tableau
Day 3:
Statistical Analysis and Data Interpretation
Inferential statistics: hypothesis testing, correlation, and regression
Analyzing trends and patterns in large datasets
Introduction to data mining and exploratory data analysis (EDA)
Hands-on session: Performing regression analysis in Excel and R
Practical application: Identifying business trends and insights
Day 4:
Data Analysis Using Python and R
Introduction to Python and R for data analysis
Data manipulation with Pandas (Python) and dplyr (R)
Visualizing data with Matplotlib, Seaborn (Python), and ggplot2 (R)
Case study: Predictive modeling in Python and R
Workshop: Automating data analysis tasks with Python scripts
Day 5:
Predictive Analytics and Real-World Applications
Introduction to predictive modeling: linear and logistic regression
Time series analysis and forecasting techniques
Case studies: Applying predictive analytics in finance and marketing
Presenting data insights to stakeholders: Effective communication strategies
Capstone project: Developing a data-driven business solution