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What You'll Learn

Unlock insights with unsupervised learning. Master clustering, dimensionality reduction, and customer segmentation to discover patterns and reduce data complexity for smart decisions.

Course Benefits
Industry Certification

Internationally recognized qualification

Expert Instructors

Learn from industry professionals

Dedicated Support

Assistance during and after training

Practical Skills

Apply knowledge immediately

Comprehensive 10-day curriculum with all materials included
Hands-on exercises and real-world case studies
Valuable networking opportunities with peers and experts
Post-course resources and refresher materials
Training on Unsupervised Learning: Clustering & Dimensionality Reduction - Course Cover Image
Duration 10 Days
Level Intermediate
Format In-Person

Course Overview

This comprehensive course focuses on unsupervised machine learning techniques such as clustering and dimensionality reduction to uncover hidden patterns in unlabeled data. Through real-world datasets and hands-on exercises, participants will learn how to segment customers, reduce data complexity, and extract meaningful structures from high-dimensional information for data-driven decision-making across industries.

Duration

10 Days

Who Should Attend

  • Data Scientists and Machine Learning Engineers

  • Business Intelligence Analysts

  • Marketing and Customer Insights Professionals

  • Government and Development Researchers

  • Academic Researchers and Postgraduate Students

  • Professionals seeking to uncover hidden patterns in data

Course Level: Intermediate to Advanced

Course Impact

Organizational Impact

  • Discover hidden patterns in customer, market, and operational data for a competitive edge.

  • Improve efficiency by simplifying large datasets and preparing quality data for advanced models.

Personal Impact

  • Gain in-demand expertise in unsupervised learning for career growth.

  • Drive innovation and profitability by uncovering insights and leading advanced analytics initiatives.

Course Objectives

By the end of this course, participants will be able to:

  • Understand key concepts and techniques in unsupervised learning

  • Apply clustering algorithms for pattern recognition and segmentation

  • Reduce data dimensionality while preserving structure and meaning

  • Visualize complex data for strategic business and research insights

  • Evaluate and interpret results to guide decision-making

Course Outline

Module 1: Introduction to Unsupervised Learning

  • Overview of supervised vs. unsupervised learning

  • Applications in identifying patterns in unlabeled data

  • Types of unsupervised tasks: clustering, association, reduction

  • Introduction to Python tools for unsupervised ML (e.g., scikit-learn, seaborn)

Module 2: Clustering Fundamentals

  • Concept and use cases for clustering in analytics

  • Distance metrics: Euclidean, Manhattan, Cosine

  • K-means clustering and centroid-based methods

  • Customer segmentation using machine learning case study

Module 3: Advanced Clustering Techniques

  • Hierarchical clustering and dendrogram analysis

  • DBSCAN and density-based clustering

  • Gaussian Mixture Models and soft clustering

  • Discovering hidden groups in datasets through real-world examples

Module 4: Evaluating Clustering Performance

  • Internal metrics: Silhouette score, Davies-Bouldin index

  • External metrics: ARI, NMI when ground truth is available

  • Cluster validation and choosing the right number of clusters

  • Business application: Clustering algorithms for market analysis

Module 5: Dimensionality Reduction Concepts

  • Curse of dimensionality in high-dimensional data

  • Feature selection vs. dimensionality reduction

  • Importance of data visualization in high-dimensional spaces

  • Identifying noise and redundancy in datasets

Module 6: Principal Component Analysis (PCA)

  • Mathematical foundation of PCA

  • Applying PCA for visualization and feature reduction

  • Explaining variance and interpreting components

  • Use case: Reducing data complexity with ML

Module 7: Non-Linear Dimensionality Reduction Techniques

  • t-SNE for visualization and cluster separation

  • UMAP for preserving global structure

  • Comparison between PCA, t-SNE, and UMAP

  • Best practices for using non-linear reduction tools

Module 8: Feature Engineering & Data Transformation

  • Scaling and normalization of features

  • Encoding categorical data for clustering

  • Dealing with missing values and outliers

  • Creating interpretable features for reduction and segmentation

Module 9: Integrating Clustering & Reduction for Strategy

  • Combining PCA and clustering for robust segmentation

  • Customer segmentation using machine learning dashboard

  • Use case: Public health, education, or economic segmentation

  • Interpretation for strategic planning and decision-making

Module 10: Capstone Project and Visualization

  • Real-world project: Segment customers or markets

  • Create and present a clustering report with reduced features

  • Use of visualization libraries (Plotly, Matplotlib, Seaborn)

  • Project review and roadmap for applying insights at work

Prerequisites

No specific prerequisites required. This course is suitable for beginners and professionals alike.

Course Administration Details

Customized Training

This training can be tailored to your institution needs and delivered at a location of your choice upon request.

Requirements

Participants need to be proficient in English.

Training Fee

The fee covers tuition, training materials, refreshments, lunch, and study visits. Participants are responsible for their own travel, visa, insurance, and personal expenses.

Certification

Upon successful completion of this course, participants will be issued with a certificate from Ideal Workplace Solutions certified by the National Industrial Training Authority (NITA) under License NO: NITA/TRN/2734.

Accommodation

Accommodation can be arranged upon request. Contact via email for reservations.

Payment

Payment should be made before the training starts, with proof of payment sent to outreach@idealworkplacesolutions.org.

For further inquiries, please contact us on details below:

Register for the Course

Select a date and location that works for you.

In-Person Training Schedules


January 2026
Date Days Venue Fee (VAT Incl.) Register
5 Jan - 16 Jan 2026 10 days Nairobi, Kenya KES 198,000 | USD 2,800 Enroll Now
5 Jan - 16 Jan 2026 10 days Cape Town, South Africa USD 7,500 Enroll Now
5 Jan - 16 Jan 2026 10 days Dubai, United Arabs Emirates USD 8,000 Enroll Now
5 Jan - 16 Jan 2026 10 days Zanzibar, Tanzania USD 4,400 Enroll Now
12 Jan - 23 Jan 2026 10 days Mombasa, Kenya KES 230,000 | USD 3,000 Enroll Now
12 Jan - 23 Jan 2026 10 days Kigali, Rwanda USD 3,800 Enroll Now
12 Jan - 23 Jan 2026 10 days Accra, Ghana USD 7,200 Enroll Now
12 Jan - 23 Jan 2026 10 days Kampala, Uganda USD 3,800 Enroll Now
19 Jan - 30 Jan 2026 10 days Dar es Salaam, Tanzania USD 4,300 Enroll Now
19 Jan - 30 Jan 2026 10 days Johannesburg, South Africa USD 6,500 Enroll Now
19 Jan - 30 Jan 2026 10 days Nakuru, Kenya KES 210,000 | USD 2,800 Enroll Now
19 Jan - 30 Jan 2026 10 days Dakar, Senegal USD 6,000 Enroll Now
26 Jan - 6 Feb 2026 10 days Pretoria, South Africa USD 6,300 Enroll Now
26 Jan - 6 Feb 2026 10 days Kisumu, Kenya KES 210,000 | USD 3,000 Enroll Now
26 Jan - 6 Feb 2026 10 days Naivasha, Kenya KES 210,000 | USD 2,800 Enroll Now
26 Jan - 6 Feb 2026 10 days Arusha, Tanzania USD 4,300 Enroll Now
5 Jan - 16 Jan 2026
10 days
Venue:
Nairobi, Kenya
Fee (VAT Incl.):
KES 198,000
USD 2,800
Enroll Now
5 Jan - 16 Jan 2026
10 days
Venue:
Cape Town, South Africa
Fee (VAT Incl.):
USD 7,500
Enroll Now
5 Jan - 16 Jan 2026
10 days
Venue:
Dubai, United Arabs Emirates
Fee (VAT Incl.):
USD 8,000
Enroll Now
5 Jan - 16 Jan 2026
10 days
Venue:
Zanzibar, Tanzania
Fee (VAT Incl.):
USD 4,400
Enroll Now
12 Jan - 23 Jan 2026
10 days
Venue:
Mombasa, Kenya
Fee (VAT Incl.):
KES 230,000
USD 3,000
Enroll Now
12 Jan - 23 Jan 2026
10 days
Venue:
Kigali, Rwanda
Fee (VAT Incl.):
USD 3,800
Enroll Now
12 Jan - 23 Jan 2026
10 days
Venue:
Accra, Ghana
Fee (VAT Incl.):
USD 7,200
Enroll Now
12 Jan - 23 Jan 2026
10 days
Venue:
Kampala, Uganda
Fee (VAT Incl.):
USD 3,800
Enroll Now
19 Jan - 30 Jan 2026
10 days
Venue:
Dar es Salaam, Tanzania
Fee (VAT Incl.):
USD 4,300
Enroll Now
19 Jan - 30 Jan 2026
10 days
Venue:
Johannesburg, South Africa
Fee (VAT Incl.):
USD 6,500
Enroll Now
19 Jan - 30 Jan 2026
10 days
Venue:
Nakuru, Kenya
Fee (VAT Incl.):
KES 210,000
USD 2,800
Enroll Now
19 Jan - 30 Jan 2026
10 days
Venue:
Dakar, Senegal
Fee (VAT Incl.):
USD 6,000
Enroll Now
26 Jan - 6 Feb 2026
10 days
Venue:
Pretoria, South Africa
Fee (VAT Incl.):
USD 6,300
Enroll Now
26 Jan - 6 Feb 2026
10 days
Venue:
Kisumu, Kenya
Fee (VAT Incl.):
KES 210,000
USD 3,000
Enroll Now
26 Jan - 6 Feb 2026
10 days
Venue:
Naivasha, Kenya
Fee (VAT Incl.):
KES 210,000
USD 2,800
Enroll Now
26 Jan - 6 Feb 2026
10 days
Venue:
Arusha, Tanzania
Fee (VAT Incl.):
USD 4,300
Enroll Now

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  • Training at your preferred location
  • Customized content to address your specific challenges
  • Flexible scheduling to accommodate your team
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Frequently Asked Questions

Find answers to common questions about this course

The goal is to equip you with the skills to use unsupervised machine learning to discover hidden patterns, segment data, and reduce complexity without using labeled data.
Unsupervised learning is a type of machine learning that finds patterns and structures in unlabeled data, helping you organize or reduce the complexity of your datasets.
You'll learn to build and apply models like K-Means, DBSCAN, and Hierarchical Clustering to segment your data into meaningful groups for applications like customer segmentation.
It's the process of reducing the number of features in your data. It's crucial for improving model performance, reducing computational time, and simplifying data visualization.
The training covers principal component analysis (PCA), t-distributed stochastic neighbor embedding (t-SNE), and autoencoders to transform and visualize complex, high-dimensional datasets.
Training on Unsupervised Learning: Clustering & Dimensionality Reduction

Next class starts 5 Jan 2026

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