Master in Data Science

Accredited By
UCAM University, Spain
Intakes
January | May | September
Duration
1 Year

Transforming Data into Knowledge and Insight

The Master in Data Science program prepares students with the essential expertise to thrive as data scientists. Built on two core disciplines Computer Science and Statistics the curriculum trains students to apply Python, statistical methods, and algorithms to tackle complex data challenges. In addition to these foundations, students may choose two elective courses tailored to their academic background and personal interests. For instance, those with a strong grounding in statistics might select Data Modeling in Statistics, while students from computer science may opt for Artificial Intelligence or Blockchain. To ensure practical, hands on experience, all participants must complete a capstone project that addresses real-world data science problems.

Why Choose This Program?

Master of Artificial Intelligence in Business course stands out by offering AI education specifically tailored for real business impact, combining industry driven and practical learning with a flexible online format suited for working professionals, while developing future ready skills with a strong focus on leadership and strategic decision-making.

Here are the five primary reasons to choose this program:

  • Industry-Relevant Curriculum – Designed to meet current market and employer needs
  • Hands-On Learning – Practical projects using real-world datasets
  • In-Demand Skills – Strong focus on data analytics, machine learning, and visualization
  • Business & Decision Focus – Learn to translate data into strategic insights
  • Ethical & Responsible Data Use – Emphasis on best practices and data governance

Programme Structure & Curriculum

This section outlines the structure, content, and learning outcomes of the core modules within this qualification.

Module 1: Working with Data

This module introduces students to Python, a core programming language for data science and analytics. It begins with Python installation, environment setup, and an overview of its clear and intuitive syntax. Students build a strong foundation by learning variables, data types, operators, and essential programming constructs. The module then advances to control flow mechanisms and function development, providing hands-on experience with lists, tuples, dictionaries, conditional statements, loops, and user-defined functions.
In addition, key mathematical concepts—such as number theory, vectors, and matrices—are integrated to support data analysis tasks. Students learn to apply advanced Python libraries including NumPy, pandas, and matplotlib for numerical computation, data manipulation, and visualization.

Learning Outcomes

Students will be able to:

  • Explain Python syntax, variables, data types, and operators.
  • Demonstrate understanding of Python data structures and control flow tools for data manipulation.
  • Apply NumPy, pandas, and matplotlib for data processing and visualization.
  • Use Python alongside mathematical concepts to solve complex computational and analytical problems.

Content Covered

  • Python setup and fundamentals
  • Variables, data types, and operators
  • Data structures and control flow
  • Functions in Python
  • Mathematical concepts for data analysis
  • NumPy for numerical computing
  • Data manipulation with pandas
  • Data visualization using matplotlib
  • Descriptive and inferential statistics
  • Probability theory and Bayes’ theorem

Correlation and regression analysis

Module 2: Data Analytics in Business Processes

This module focuses on applying data analytics tools to support business decision-making. Students learn to design reliable spreadsheet models, translate conceptual frameworks into mathematical representations, and audit spreadsheet models for accuracy. The module covers advanced Excel features, including formulas, functions, pivot tables, and decision analysis tools such as payoff tables and decision trees.
In addition, students gain hands-on experience with Microsoft Power BI, learning how to model data, create advanced visualizations, and build interactive dashboards and reports to support data-driven business insights.

Learning Outcomes

Students will be able to:

  • Understand the importance of data visualization in business analytics.
  • Select appropriate visual representations for different data types.
  • Develop interactive dashboards using Advanced Excel and Power BI.
  • Interpret analytical outputs to support managerial decision-making.

Content Covered

  • Excel fundamentals and workbook management
  • Cell formatting and worksheet operations
  • Formulas, functions, and pivot tables
  • Decision analysis techniques
  • Introduction to Microsoft data analytics
  • Data preparation and modeling in Power BI
  • Visualization and reporting in Power BI
  • Applied Power BI project

Module 3: Exploratory Data Analysis for Business

This module emphasizes the role of exploratory data analysis (EDA) and data mining in extracting value from large datasets. Students learn database fundamentals and scalable pattern discovery techniques, including frequent pattern mining, sequential patterns, and classification methods.
A strong focus is placed on data cleaning and preprocessing, where students learn to handle missing values, duplicates, inconsistencies, and unstructured data. Practical exercises enable learners to manage both numerical and textual datasets and prepare them for downstream analytics and machine learning tasks.

Learning Outcomes

Students will be able to:

  • Explain the importance of EDA in data-driven decision-making.
  • Apply data cleaning and preprocessing techniques effectively.
  • Demonstrate competence in managing structured and unstructured data.
  • Perform clustering and classification for pattern discovery.

Content Covered

  • Hands-on practice with NumPy, pandas, and matplotlib
  • Introduction to scikit-learn
  • Data collection techniques
  • Numerical data cleaning and preprocessing
  • Text data cleaning and preprocessing
  • Dataset-based practical exercises
  • Pattern discovery
  • Clustering and classification

Module 4: Machine Learning for Business Applications

This module provides a comprehensive introduction to artificial intelligence and machine learning concepts, focusing on practical business applications. Students explore supervised and unsupervised learning techniques and gain an understanding of ethical considerations and real-world implementation challenges.
The module covers key machine learning algorithms such as linear regression, k-nearest neighbors, decision trees, random forests, and logistic regression, along with model training, testing, and performance evaluation.

Learning Outcomes

Students will be able to:

  • Demonstrate understanding of AI and machine learning fundamentals.
  • Analyze datasets and apply preprocessing techniques for ML tasks.
  • Explain supervised and unsupervised learning algorithms.
  • Critically evaluate machine learning models and their mathematical foundations.

Content Covered

  • Introduction to machine learning
  • Supervised and unsupervised learning
  • Regression (linear, univariate, multivariate)
  • Algorithm selection strategies
  • Decision trees and random forests
  • Logistic regression
  • Model training and testing
  • Model evaluation (accuracy, precision, recall, F1-score)
  • Industry-based project

Module 5: Operations Management with AI

This module examines the application of artificial intelligence in operations and supply chain management. Students explore how AI enhances forecasting, inventory management, quality control, maintenance, and resource optimization. The module highlights industry use cases across healthcare, manufacturing, and retail, while addressing strategic and operational challenges in AI adoption.

Learning Outcomes

Students will be able to:

  • Understand core operations management principles and AI applications.
  • Apply AI techniques to improve supply chain and operational efficiency.
  • Analyze real-world case studies to support operational excellence.
  • Develop AI-driven operational strategies.

Content Covered

  • Goods and services operations
  • Operations management functions
  • Strategic objectives and decision-making
  • Corporate and operational strategy formulation
  • Domestic and global operations strategies
  • AI-enabled operations strategy implementation

Module 6: International HR Management with AI

This module integrates human resource management with artificial intelligence in a global context. Students explore cross-cultural management, international labor regulations, workforce diversity, and employee engagement, alongside AI-driven HR tools such as predictive analytics and intelligent recruitment systems. Ethical and regulatory considerations of AI in HR are also examined.

Learning Outcomes

Students will be able to:

  • Analyze the impact of AI on global talent management.
  • Develop AI-enabled HR strategies for diverse workforces.
  • Evaluate ethical and regulatory issues in AI-driven HR practices.
  • Design HR policies aligned with international organizational goals.

Content Covered

  • Human Resource Development fundamentals
  • Organizational learning and change
  • Strategic HRD planning
  • AI applications in recruitment and talent management
  • Global HR case studies
  • HRD initiatives in multinational organizations

Module 7: Industry-Based Capstone Project

The Industry-Based Capstone Project provides students with hands-on experience through close collaboration with industry mentors. Students identify real business challenges, collect and analyze data, design AI-driven solutions, and evaluate their effectiveness. The project emphasizes professional skills such as project management, stakeholder communication, and solution presentation, while offering valuable industry exposure.

Learning Outcomes

Students will be able to:

  • Apply AI methodologies to solve complex business problems.
  • Design and implement end-to-end AI solutions.
  • Collaborate effectively with industry stakeholders.
  • Evaluate and improve AI solution performance.

Capstone Project Examples

  • AI-driven marketing spend optimization
  • Customer lifetime value prediction
  • Dynamic pricing for e-commerce
  • Supply chain forecasting and optimization
  • Social media sentiment analysis
  • Computer vision for retail automation
  • Predictive maintenance in manufacturing
  • Algorithmic trading and portfolio management
  • Employee retention analytics
  • Healthcare predictive analytics
  • Ethical AI auditing and bias detection
Overview
Tuition Fees
Entry Requirements
Financial Support

Master Degree

The Master in Data Science equips students with practical and analytical skills to extract insights from complex data and support data-driven decision-making. The program combines statistics, machine learning, data analytics, and business intelligence with hands-on projects and real-world applications. Graduates are prepared to design, analyze, and deploy data-driven solutions across diverse industries.

Tuition Fees

The total tuition fees for the BBA (Honours) in Tourism & Hospitality Management:

Year 1: 1200 £
Year 2: 1200 £
Year 3: 1600 £

Tuition fees: 4000 £

Application fee: 100 £ (non-refundable)

* This price includes all online program related costs. Additional costs may apply in some circumstances.

Entry Requirements

Bachelor’s Degree from a recognised University

Proficiency in the English language (IELTS/TOEFL is not mandatory)

Due to its involvement in modern Machine Learning algorithms with maths and programming, candidates having knowledge of linear algebra, probability and calculus could be a plus.

Financial Support

We understand that funding your education can be challenging, which is why we provide convenient instalment plans to support you. These flexible payment options help you manage your tuition fees comfortably while staying focused on your learning journey.

By offering flexible payment schedules, we ensure that learners can access high‑quality education without compromising their financial stability. For further information on setting up a flexible payment plan, please connect with our admissions team. They look forward to supporting you as you begin your chosen programme.

 

UCAM University, Spain

Founded in 1996, Universidad Católica de Murcia (UCAM) is a fully accredited European university committed to developing socially responsible graduates through education, research, and innovation. With over 16,000 students and 1,000 faculty members, UCAM offers a wide range of official European programs, including bachelor’s, master’s, and doctoral degrees. The university provides a holistic education that blends strong theoretical foundations, practical learning, and value-based development. UCAM is accredited by ANECA and has received high global recognition, including a student satisfaction rating above 4.4/5 and significant advancement in international research rankings.

Career Opportunities After This Program

Graduates of the Master in Data Science are prepared for a broad range of high-demand roles across industries, combining strong analytical expertise with practical, data-driven problem-solving skills.

Career pathways include:

  • Data Scientist
  • Data Analyst
  • Business Intelligence (BI) Analyst
  • Machine Learning Analyst
  • Data Engineer (Entry to Mid-Level)
  • Analytics Consultant
  • Business/Data Strategy Analyst
  • Quantitative Analyst
  • AI & Data Solutions Specialist
  • Research Analyst

These roles span sectors such as finance, healthcare, retail, technology, manufacturing, and public services, enabling graduates to apply data science skills in diverse professional environments.

Teaching & Learning Approach

Interactive online learning

Applied projects and case-based assignments

Research-driven assessments

Practical business and industry scenarios

Continuous academic guidance and support

Assessment Method

Internally assessed modules

Criteria-based evaluation aligned with learning outcomes

Focus on assignments, projects, and applied research

No rote memorisation, emphasis on real-world skills

Who Should Enroll?

The Master in Data Science is ideal for individuals who want to build or advance a career in data-driven decision making and analytics. This program is well suited for:


Graduates from business, IT, engineering, mathematics, statistics, or related disciplines seeking to specialize in data science

Business professionals who want to strengthen their analytical and data-interpretation capabilities

Working professionals aiming to upskill or transition into data analytics, data science, or AI-driven roles

IT and software professionals looking to expand into data engineering, machine learning, or advanced analytics

Analysts and managers who want to leverage data for strategic decision-making

Industries That Hire

Graduates of a Master in Data Science are hired across many data driven industries, including:

  • Information Technology & Software

  • Banking, Finance & FinTech

  • Healthcare & Life Sciences

  • Retail & E-commerce

  • Telecommunications

  • Manufacturing & Supply Chain

  • Marketing & Digital Advertising

  • Consulting & Professional Services

  • Energy & Utilities

  • Government & Public Sector

  • Logistics & Transportation

These industries rely on data science to drive insights, optimize operations, and support strategic decision making.