// //

What You'll Learn

Master data engineering for data science. Learn to build robust data pipelines, clean and transform data, and prepare it for analysis.

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 Data Engineering for Data Science - Course Cover Image
Duration 10 Days
Level Intermediate
Format In-Person

Course Overview

Featured

Data engineering has become the backbone of modern data-driven enterprises, especially in industries relying on data science and machine learning. In today's rapidly evolving digital landscape, the ability to design, build, and maintain scalable data architectures is critical. This course offers an excellent opportunity to master the skills needed to handle large data sets, automate data processing, and prepare data pipelines for efficient analysis.

Whether you are a data scientist, software engineer, or business analyst, understanding how to construct robust data pipelines and integrate them with data science workflows will give you a competitive edge in your career. You will learn to work with leading technologies in the industry such as SQL, Python, Apache Spark, and cloud-based solutions, thus empowering you to build a solid foundation for data analysis and machine learning applications.

Participants will also explore the integration of data engineering practices with data science, enabling them to provide the necessary data infrastructure for data scientists to conduct meaningful analysis. By the end of the course, participants will be adept at transforming raw data into actionable insights, enhancing their organization's data-driven decision-making process.

Duration

10 Days

Who Should Attend

  • Data Engineers who want to improve their data management and pipeline development skills.
  • Data Scientists seeking to deepen their understanding of data engineering to enhance collaboration.
  • IT Professionals interested in transitioning into data engineering roles.
  • Business Analysts and BI Professionals who want to learn more about data pipeline design and implementation.
  • Software Engineers looking to expand their skill set into data science infrastructure.

Course Impact

Organizational Impact

  • Improve data reliability and quality for better insights and decision-making.

  • Increase operational efficiency by automating data pipelines.

  • Build scalable data infrastructure to support big data and real-time analytics.

  • Ensure consistency and reduce risks through standardized data engineering practices.

Personal Impact

  • Gain a highly sought-after skill bridging data science and IT operations.

  • Advance into senior data science, data engineering, or BI roles.

  • Contribute to organizational innovation and profitability through efficient data systems.

  • Lead and champion data infrastructure projects with confidence.

Course Objectives

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

  • Understand the role of data engineering in the data science lifecycle.
  • Develop, test, and deploy scalable data pipelines for large datasets.
  • Implement ETL processes to clean, transform, and integrate data from multiple sources.
  • Leverage cloud technologies and distributed computing frameworks (e.g., Hadoop, Spark) for data processing.
  • Optimize database performance for data science applications.
  • Collaborate effectively with data scientists and analysts to deliver high-quality data for insights.
  • Apply best practices in data governance, security, and compliance.

Course Outline

Module 1: Introduction to Data Engineering

  • Role of data engineering in data science
  • Key components of data pipelines
  • Overview of data sources, formats, and integration

Module 2: Data Pipeline Design and Implementation

  • Building robust and scalable data pipelines
  • Batch vs. stream processing
  • Data ingestion techniques

Module 3: ETL Processes

  • Extract, Transform, Load (ETL) fundamentals
  • Tools and techniques for ETL
  • Data cleaning, validation, and transformation

Module 4: Data Storage and Management

  • Relational databases (SQL) vs. NoSQL databases
  • Data warehousing concepts
  • Performance optimization in databases

Module 5: Distributed Computing and Cloud Platforms

  • Introduction to distributed computing (Hadoop, Spark)
  • Cloud platforms (AWS, GCP, Azure) for data engineering
  • Data storage and processing in the cloud

Module 6: Data Governance and Security

  • Best practices in data governance
  • Ensuring data security and compliance (GDPR, HIPAA, etc.)
  • Data privacy and ethical considerations

Module 7: Advanced Data Engineering Techniques

  • Workflow automation and orchestration
  • Data versioning and reproducibility
  • Real-time analytics and monitoring

Module 8: Collaboration with Data Science Teams

  • Aligning data engineering and data science workflows
  • Ensuring data quality for machine learning models
  • Best practices for communication and collaboration

Module 9: Hands-on Projects

  • Building a complete data pipeline from raw data to insights
  • Case studies of real-world data engineering challenges

Module 10: Final Assessment and Certification

  • Practical assessment of skills learned
  • Feedback and review

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

Request Custom Training


We offer customized training solutions tailored to your organization's specific needs:

  • 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
Limited Time
Early-bird Offer

Special pricing ends in:

-- Days
-- Hours
-- Mins
-- Secs
Recent Activity

Frequently Asked Questions

Find answers to common questions about this course

The goal is to equip you with the skills to design, build, and maintain robust data pipelines and infrastructure that provide clean, reliable data for data science projects.
It is the discipline of creating and managing systems that collect, store, and process large volumes of data, making it ready and accessible for data scientists to analyze.
You'll learn data modeling, ETL/ELT processes, building scalable data warehouses, and using programming for data manipulation, ensuring data is ready for analysis.
You'll learn to create automated workflows that efficiently move and transform data from source systems to a target destination, ensuring consistency and quality.
The training covers foundational concepts and a selection of tools like Python, SQL, cloud platforms (e.g., AWS, Azure), and workflow orchestrators (e.g., Airflow).
Training on Data Engineering for Data Science

Next class starts 5 Jan 2026

Secure Your Spot
Only 5 seats remaining!
1
Ideal Workplace Solutions
Ideal Workplace Solutions
Typically replies instantly

Hi there! šŸ‘‹

How can we help you today? Are you looking for information about our training courses?

Just now