LOG3252P [at Georgia Tech]

Mach Learning Apps-SC Plan — As the third course in the Supply Chain Analytics Professional program, you’ll be introduced to the field of machine learning, an area where algorithms learn patterns from data to support proactive decision making, as it applies to supply chain management. You’ll learn to forecast future demand and use this information to evaluate inventory policies, while also learning the importance of and how to perform customer segmentation. The course will cover regression (trees), advanced time series forecasting, various clustering techniques (such as k-means), decision trees, random forests, logistic regression. Using Power BI and Python, you’ll apply the techniques to sensor data of the fictional Cardboard Company’s paper production to build an anomaly detection model that supports proactive production maintenance planning. While you are not required to complete the Transforming Supply Chain Management and Performance Analysis, Creating Business Value with Statistical Analysis, and Machine Learning Applications for Supply Chain Planning courses prior to this capstone, we suggest you being familiar with their learning outcomes. Recommended Prerequisites: General supply chain management knowledge Elementary knowledge of statistics and data analysis along with basic coding skills LOG 3250P - Transforming Supply Chain Management and Performance Analysis LOG 3251P - Creating Business Value with Statistical Analysis Required Prerequisite(s): Python/programming experience Power BI experience

No prereqs

Taught by nobody this semester.

No sections!