| University | Singapore University of Social Science (SUSS) |
| Subject | AIB503 Foundation to Python for AI |
Question 1
Clustering Analysis on Customer Profiles
This assignment is to utilize Python for applying clustering techniques to group customers based on their profiles, enabling the tailoring of marketing strategies and services. It provides an efficient method for organizing and managing the company’s customer relationships, ultimately boosting customer loyalty and conversions.
The dataset contains the following variables. https://www.kaggle.com/datasets/rodsaldanha/arketing-campaign
The objective is to enhance your understanding of clustering algorithms and their practical applications in real-world scenarios. Your submission should include a detailed report and a .zip file containing results for the following four sub-questions.
Question 1a
- Import the dataset and prepare the dataset by performing data preprocessing steps, such as handling missing values and scaling numeric features if necessary.
- Analyze and visualize the dataset to gain insights into its features. This should include exploring distributions, relationships between features, and correlations between features using at least three different visualization plots.
Question 1b
- Design and implement the K-means clustering algorithm in Python for customer segmentation based on their profiles.
- Evaluate the optimal number of clusters using techniques such as the elbow method or silhouette score.
- Implement K-means clustering with the selected number of clusters.
Question 1c
Appraise the customer segments generated from the clustering process based on their attributes.
Provide insights and recommendations for the company based on the identified customer segments. How can the company leverage these segments for targeted marketing or service improvements?
Question 1d
Create visualizations of the clusters obtained from the clustering algorithm to highlight the key patterns and features.
Evaluate the significant findings, discuss the challenges encountered during the analysis, and outline potential next steps for further improving the clustering analysis.
Stuck with a lot of homework assignments and feeling stressed ? Take professional academic assistance & Get 100% Plagiarism free papers
Facing challenges with your AIB503 Foundation to Python for AI End-of-Course Assessment? Our assignment helper online service is designed to help you excel! You can pay to do my ECA assignment help in Singapore and benefit from affordable, high-quality services with 100% human-written assignments, no AI used. We offer reliable coursework writing services with guaranteed plagiarism-free content, A+ results, and prompt on-time delivery. Let our experts handle your assignments and secure top grades today!
Looking for Plagiarism free Answers for your college/ university Assignments.
- NIE352 Interdisciplinary Problem-Solving for Impact Tutor-Marked Assignment 1 July 2025
- Research Proposal Assignment 3: Health Services Research Study Proposal
- CS5224 Cloud Computing Assignment Lab 2: Cloud Services
- SOC319 Sociology of Health and Healthcare End-of-Course Assessment – July Semester 2025
- BME356 Functional Genomics End-of-Course Assessment – July Semester 2025
- SBP310 Fundamentals of Sustainable Business Practices End-of-Course Assessment – July Semester 2025
- Elements of Economics Continuous Assessment 01 – Univarsity of Embu (UoEm)
- MECO6936 Social Media Communication Campaign Plan Essay Semester 2, 2025
- S2450C Health Promotion Coursework Assessment AY2025 – Republic Polytechnic
- PSB7010CL Strategic Project Management Individual Assignment Written Report
