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What You'll Learn

Master the fundamentals of data science and unlock the power of data. Learn essential data science techniques, including data cleaning, data analysis, and machine learning

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 Introduction to Data Science - Course Cover Image
Duration 10 Days
Level Intermediate
Format In-Person

Course Overview

Featured

Introduction to Data Science training course is designed to provide participants with a comprehensive foundation in data science concepts, tools, and techniques. The course covers key areas such as data cleaning, analysis, and visualization, as well as the practical application of statistical and machine learning models. Throughout the training, participants will learn how to work with large datasets, leverage Python and R for data analysis, and implement real-world data science solutions. This course emphasizes both theory and hands-on practice, equipping participants with the skills needed to start a career in data science or enhance their analytical capabilities.

Duration

10 Days

Who Should Attend

  • Aspiring Data Scientists
  • Business Analysts
  • IT Professionals
  • Statisticians
  • Professionals looking to upskill in data-driven decision-making
  • Researchers and Academicians
  • Anyone interested in data science and its applications across industries

Course Impact

Organizational Impact

  • Make faster, data-driven decisions.

  • Foster collaboration and a data-literate workforce.

  • Improve profitability, reduce costs, and uncover opportunities.

  • Minimize risks from mismanaged data initiatives.

Personal Impact

  • Gain in-demand data skills.

  • Advance into leadership or strategic roles.

  • Drive organizational innovation and performance.

  • Lead data initiatives with confidence.

Course Objectives

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

  • Understand the key concepts and principles of data science.
  • Perform data wrangling, cleaning, and transformation using Python and R.
  • Use statistical analysis techniques to derive insights from datasets.
  • Implement machine learning models for predictive analysis.
  • Create data visualizations to effectively communicate data-driven insights.
  • Understand the ethical considerations and challenges in data science.
  • Work with large datasets using libraries like Pandas, NumPy, and Scikit-learn.
  • Apply basic machine learning algorithms to solve real-world problems.
  • Develop an end-to-end data science project from data acquisition to model deployment.
  • Gain practical experience with tools such as Jupyter notebooks, RStudio, and Tablea

Course Outline

Module 1: Introduction to Data Science

  • What is Data Science?
  • Overview of the Data Science Workflow
  • Importance and Applications of Data Science in Various Industries
  • Overview of Tools and Technologies (Python, R, Jupyter Notebooks)

Module 2: Data Wrangling and Cleaning

  • Introduction to Data Types and Formats
  • Data Cleaning Techniques
  • Handling Missing Data
  • Data Transformation and Feature Engineering
  • Practical Session: Cleaning a Dataset in Python/R

Module 3: Exploratory Data Analysis (EDA)

  • Importance of EDA
  • Descriptive Statistics
  • Data Visualization for EDA (Matplotlib, Seaborn, ggplot2)
  • Identifying Patterns and Trends in Data
  • Hands-on Exercise: Performing EDA on a Real Dataset

Module 4: Introduction to Python/R for Data Science

  • Python vs R: When to Use Which
  • Key Libraries in Python (Pandas, NumPy, Matplotlib, Seaborn)
  • Key Libraries in R (dplyr, ggplot2, tidyr)
  • Hands-on: Basic Data Manipulation in Python/R

Module 5: Statistical Analysis and Hypothesis Testing

  • Introduction to Statistics for Data Science
  • Measures of Central Tendency and Dispersion
  • Probability Distributions
  • Hypothesis Testing
  • Case Study: Applying Statistical Tests on a Dataset

Module 6: Introduction to Machine Learning

  • Overview of Machine Learning (ML)
  • Types of ML: Supervised, Unsupervised, and Reinforcement Learning
  • Key Algorithms (Linear Regression, Decision Trees, k-NN)
  • Model Evaluation and Selection (Accuracy, Precision, Recall, F1 Score)
  • Practical Session: Building Your First ML Model

Module 7: Data Visualization and Reporting

  • Importance of Data Visualization
  • Visualization Tools: Matplotlib, Seaborn, Plotly, Tableau
  • Best Practices in Data Presentation
  • Hands-on Project: Creating Interactive Dashboards and Reports

Module 8: Advanced Machine Learning Algorithms

  • Introduction to Clustering (K-means, Hierarchical)
  • Decision Trees, Random Forests, and Gradient Boosting
  • Introduction to Deep Learning Concepts
  • Case Study: Implementing an Advanced ML Model on a Complex Dataset

Module 9: Working with Big Data and Cloud Platforms

  • Introduction to Big Data Concepts (Hadoop, Spark)
  • Working with Large Datasets Using Python/R
  • Introduction to Cloud Platforms for Data Science (AWS, Google Cloud)
  • Practical Exercise: Analyzing Large Datasets Using Cloud Services

Module 10: Data Science Ethics, Case Study & Capstone Project

  • Ethical Considerations in Data Science
  • Data Privacy and Security Issues
  • Case Study: End-to-End Data Science Project

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
  • Cost-effective solution for training multiple employees
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Frequently Asked Questions

Find answers to common questions about this course

The goal is to provide a comprehensive overview of data science, equipping you with a foundational understanding of the key concepts, tools, and methodologies used in the field.
Data science is an interdisciplinary field that uses scientific methods, algorithms, and systems to extract knowledge and insights from structured and unstructured data.
You'll learn the step-by-step process: problem framing, data collection, cleaning and preparation, exploratory data analysis, modeling, and communicating your findings to stakeholders.
You'll learn essential skills like data manipulation, exploratory data analysis, and the fundamentals of machine learning, all presented in a beginner-friendly context.
This course provides a strong foundation for a career in data science, enabling you to make data-driven decisions and communicate insights that drive business value.
Training on Introduction to Data Science

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