Data Science and AI Foundations

Course Dates :

20/10/25

5

Course ID:

251020001001127ESH

Course Duration :

5 Studying Day/s

Course Location:

London

UK

Course Category:

Professional and CPD Training Programs

Subcategories: Construction Safety, Health and Wellbeing, Environmental Sustainability, Risk Management, Technical Skills Development, Leadership and Communication, Quality Assurance

Course Certified By:

* ESHub CPD
&
* LondonUni - Executive Management Training

* Professional Training and CPD Programs

Leading to:
Executive Diploma Certificate
Leading to:
Executive Mini Masters Certificate
Leading to
Executive Masters Certificate

Certification Will Be Issued From : From London, United Kingdom

Course Fees GBP:

£5,151.66

Click to pay

Please Note :

Your £250.00 Deposit will be deducted from the total invoice Amount.

To commence the registration process for your training course, please follow the link provided and proceed with; Upon successful payment, we will promptly contact you to finalize your enrollment and issue a confirmation of your guaranteed placement.

  • Vat Not Included in the price.
  • VAT may vary depending on the country where the course or workshop is held.

Course Information

Introduction

The convergence of data science and artificial intelligence (AI) has emerged as a transformative force across industries, reshaping how organizations approach problem-solving, decision-making, and innovation. These disciplines are no longer confined to tech giants or niche sectors; they now influence everything from healthcare diagnostics to supply chain optimization. The ability to extract meaningful insights from vast datasets and leverage machine learning models to predict outcomes is increasingly recognized as a competitive advantage. For professionals navigating this evolving landscape, mastering the foundations of data science and AI is not merely beneficial—it is essential.

A persistent challenge in many organizations lies in bridging the gap between raw data and actionable insights. While businesses generate unprecedented volumes of data, much of it remains underutilized due to a lack of expertise in handling, analyzing, and interpreting it. This course addresses these gaps by equipping participants with the tools and methodologies necessary to unlock the potential of data. Drawing on frameworks such as CRISP-DM (Cross-Industry Standard Process for Data Mining) and the DIKW Pyramid (Data, Information, Knowledge, Wisdom), the program ensures that participants gain both theoretical grounding and practical proficiency.

Consider the case of a retail company struggling to optimize inventory management. By applying predictive analytics—a core component of this course—they could forecast demand patterns with remarkable accuracy, reducing excess stock while ensuring availability of high-demand items. Similarly, healthcare providers leveraging AI-driven diagnostic tools have demonstrated improved patient outcomes through early detection of diseases. These examples underscore the tangible value of integrating data science and AI into organizational workflows, highlighting the need for skilled practitioners who can lead such initiatives.

Participants will explore cutting-edge trends shaping the field, including the rise of explainable AI (XAI), which seeks to make machine learning models more transparent and interpretable. As industries grapple with ethical considerations and regulatory compliance, understanding these developments becomes critical. Furthermore, the course delves into established theories like supervised and unsupervised learning, providing participants with a robust foundation upon which to build specialized expertise.

For individuals, the benefits of mastering data science and AI extend beyond career advancement. They include enhanced problem-solving capabilities, increased adaptability in an ever-changing job market, and the opportunity to contribute meaningfully to societal challenges, such as climate change mitigation and public health improvement. Organizations, meanwhile, stand to gain from improved efficiency, innovation, and strategic foresight—qualities that define modern leadership in any sector.

Ultimately, this course serves as a gateway to a future where data literacy and AI fluency are indispensable. By blending rigorous academic principles with real-world applications, it empowers participants to become catalysts for change within their respective domains. Whether you are seeking to enhance your professional toolkit or drive organizational transformation, this program offers the knowledge and skills needed to thrive in the age of data-driven decision-making.

Objectives

By attending this course, participants will be able to:

Analyze the fundamental principles of data science, including data collection, preprocessing, and visualization techniques.
Evaluate various machine learning algorithms and identify their appropriate use cases based on business needs.
Design and implement basic AI models using popular programming languages and libraries, such as Python and TensorFlow.
Apply statistical methods to interpret data patterns and derive actionable insights for decision-making.
Assess ethical considerations and regulatory requirements associated with AI deployment in diverse contexts.
Synthesize findings from exploratory data analysis to communicate results effectively to non-technical stakeholders.
Develop strategies to integrate AI solutions into existing organizational processes for enhanced operational efficiency.

Who Should Attend?

This course is ideal for:

Business analysts looking to transition into data-driven roles.
IT professionals seeking to expand their skill set to include AI and machine learning.
Managers and executives aiming to understand the strategic implications of data science and AI.
Consultants tasked with advising clients on digital transformation initiatives.
Researchers interested in applying advanced analytics to their work.


These groups will find the course valuable because it bridges the gap between technical concepts and practical implementation, enabling them to address real-world challenges effectively. While prior experience in programming or statistics is helpful, the course is designed to accommodate beginners, making it accessible to those new to the field without compromising depth for intermediate learners.

Training Method

• Pre-assessment
• Live group instruction
• Use of real-world examples, case studies and exercises
• Interactive participation and discussion
• Power point presentation, LCD and flip chart
• Group activities and tests
• Each participant receives a 7” Tablet containing a copy of the presentation, slides and handouts
• Post-assessment

Program Support

This program is supported by:
* Interactive discussions
* Role-play
* Case studies and highlight the techniques available to the participants.

Daily Agenda

The course agenda will be as follows:
• Technical Session 08.30-10.00 am
• Coffee Break 10.00-10.15 am
• Technical Session 10.15-12.15 noon
• Coffee Break 12.15-12.45 pm
• Technical Session 12.45-02.30 pm
• Course Ends 02.30 pm

Please Note :

Your £250.00 Deposit will be deducted from the total invoice Amount.

To commence the registration process for your training course, please follow the link provided and proceed with; Upon successful payment, we will promptly contact you to finalize your enrollment and issue a confirmation of your guaranteed placement.

Course Outlines

Week 1
Day 1:
Foundations of Data Science

Introduction to data science and its interdisciplinary applications.
Overview of the data lifecycle: Collection, cleaning, storage, and retrieval.
Tools and technologies: Excel, SQL, and Python basics.
Case study: Transforming raw data into structured formats for analysis.


Day 2:
Exploratory Data Analysis (EDA)

Statistical measures: Mean, median, mode, variance, and correlation.
Data visualization techniques using Matplotlib and Seaborn.
Identifying outliers and handling missing data.
Hands-on exercise: Conducting EDA on a sample dataset.


Day 3:
Machine Learning Fundamentals

Supervised vs. unsupervised learning: Definitions and examples.
Regression and classification algorithms: Linear regression, logistic regression.
Clustering methods: K-means and hierarchical clustering.
Practical session: Building a simple predictive model.


Day 4:
Advanced AI Concepts and Applications

Neural networks and deep learning fundamentals.
Introduction to natural language processing (NLP).
Explainable AI (XAI): Techniques for model transparency.
Group activity: Designing an AI solution for a hypothetical scenario.


Day 5:
Ethics, Compliance, and Implementation

Ethical considerations in AI development and deployment.
Regulatory frameworks governing data privacy and security.
Strategies for integrating AI into organizational workflows.
Final project presentation and feedback session.

Please Note :

Your £250.00 Deposit will be deducted from the total invoice Amount.

To commence the registration process for your training course, please follow the link provided and proceed with; Upon successful payment, we will promptly contact you to finalize your enrollment and issue a confirmation of your guaranteed placement.

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