Dynamic Data Analysis for Beginners presents a structured approach to understanding and applying time series analysis techniques in data analytics. Participants will engage in hands-on projects that emphasize practical application, enabling them to analyze real-world data sets effectively. The course is designed to equip learners with essential skills in data manipulation, visualization, and interpretation, fostering a strong foundation in dynamic data analysis.
Throughout the program, participants will explore various methodologies and tools used in the field, culminating in a final project that challenges them to apply their newfound knowledge to a relevant data set. By encouraging publication of results in Cademix Magazine, the course not only enhances learning but also provides a platform for participants to showcase their work, contributing to their professional portfolio.
Introduction to Time Series Data
Key Concepts in Dynamic Data Analysis
Data Preprocessing Techniques
Exploratory Data Analysis (EDA) for Time Series
Visualization Tools for Time Series Data
Statistical Methods for Time Series Forecasting
Introduction to ARIMA and Seasonal Decomposition
Implementing Machine Learning Techniques in Time Series
Case Studies: Real-World Applications of Time Series Analysis
Final Project: Analyzing and Presenting a Time Series Data Set
