Detecting Irregularities in Sensor Data provides participants with a comprehensive understanding of advanced methodologies for identifying anomalies within sensor-generated datasets. The course is structured around practical, project-based learning, enabling participants to engage with real-world scenarios and apply their knowledge to solve complex problems. By focusing on hands-on projects, learners will develop critical skills in data analysis, statistical modeling, and machine learning techniques tailored to sensor data.
Participants will explore various algorithms and tools essential for effective anomaly detection, including statistical methods, clustering techniques, and supervised learning approaches. The course culminates in a final project where learners will analyze a dataset of their choice, applying the techniques learned to detect and report on irregularities. Results from these projects are encouraged to be published in Cademix Magazine, providing an opportunity for participants to share their findings with a wider audience.
Introduction to Sensor Data and Its Applications
Statistical Foundations for Anomaly Detection
Data Preprocessing Techniques for Sensor Data
Exploratory Data Analysis (EDA) for Sensor Data
Overview of Anomaly Detection Algorithms
Clustering Methods for Identifying Outliers
Supervised Learning Techniques for Anomaly Detection
Time Series Analysis for Sensor Data
Implementation of Real-Time Anomaly Detection Systems
Final Project: Analyzing and Reporting Irregularities in Sensor Data