MSc Artificial Intelligence

MSc Artificial Intelligence
MSc Artificial Intelligence

The MSc Artificial Intelligence is a forward-thinking postgraduate degree designed to develop advanced knowledge and practical skills in the field of intelligent systems and machine learning. This programme is ideal for individuals who want to build a successful career in one of the fastest-growing areas of technology and innovation.

The course covers key areas such as machine learning, deep learning, data science, natural language processing, robotics, neural networks, and AI programming. Students will learn how to design, develop, and apply artificial intelligence solutions to solve real-world problems across industries such as healthcare, finance, business, and technology. It also develops strong analytical, programming, and problem-solving skills.

The MSc Artificial Intelligence is suitable for graduates in computer science, information technology, mathematics, engineering, or related fields, as well as professionals who want to upgrade their technical skills and move into AI-focused roles.

By completing this degree, learners gain the ability to develop intelligent systems and data-driven solutions. It opens career opportunities such as AI engineer, machine learning specialist, data scientist, and AI developer in both national and international markets.

Modules

07

Duration

20 Months

Study Mood

Online

Assessment

Assessment Based

Course Study Units

  • AI Vision and Deep Learning
  • Advanced AI Technologies
  • Artificial Intelligence
  • Machine Learning
  • Data Warehousing and Big Data
  • Cloud Computing and the Internet of Things
  • MSc Project

Entry Requirements

  • Minimum age: Minimum age of 21 years.
  • Educational background: A Bachelor’s degree or equivalent in Computer Science, IT, Engineering, Mathematics, or a related subject is required.
  • Work experience: Work experience in IT or technology is helpful but not required.
  • Language proficiency: Applicants must have good English skills for study, reading, and communication.

Who Can Enroll

The MSc Artificial Intelligence is designed for people who want to build strong skills in AI, machine learning, and modern technology. It is suitable for both fresh graduates and working professionals who want to grow their careers in the fast-developing field of artificial intelligence. This course is ideal for learners who are interested in technology, data, and problem-solving.

  • Graduates in Computer Science, IT, Mathematics, or Engineering
  • Professionals working in software development or IT roles
  • Individuals interested in artificial intelligence and machine learning
  • Data analysts who want to upgrade their skills
  • Programmers looking to specialise in AI technologies
  • Graduates aiming for careers in advanced technology fields
  • IT support staff wanting to move into AI roles
  • Engineers interested in smart systems and automation
  • Students planning a career in data science or AI development
  • Anyone passionate about modern technology and innovation

Course Learning Outcomes

AI Vision and Deep Learning

By the end of the Module, students will be able to:

  • Understand and apply underpinning mathematics and / or physics governing computer vision algorithms / systems.
  • Demonstrate sound understating of the theory and operation of image processing and computer vision algorithms / systems, and a critical awareness of current problems and new insights.
  • Use software / hardware and modelling tools to analyse and implement selected aspects of computer vison algorithms / systems.
  • Develop postgraduate level skills in literature review, critical evaluation of results and report writing by exploring advanced topics and / or recent related to computer vision algorithms / systems. Build intuition behind structuring computer vision Deep Learning projects and hyperparameters tuning.
  • Show awareness of legal, social, ethical, and professional (LSEP) issues particularly important in computer vision algorithms and systems.

Advanced AI Technologies

On completing the module students will be able to:

  • Understand the differences between classical and advanced problems, paradigms and methodologies in AI and their challenges from ethical, legal, psychological and social point of view
  • Learn advanced methods and algorithms for modelling of intelligent reasoning and behaviour
  • Develop some interest and ability to do independent study of more complex models, more sophisticated methods and more complex technologies
  • Practice modelling of intelligent applications which utilize advanced AI models and methods
  • Acquire practical skills for design and development of AI systems which use advanced AI technologies

Artificial Intelligence

On completing the module students will be able to:

  • Understand and critically analyse the essential concepts, principles, methods, techniques and problems of AI.
  • Have working knowledge of the methods for state space search, qualitative and quantitative assessment of the progress towards goal state, heuristic information representation, retrieval and application to problem solving.
  • Demonstrate the understanding of knowledge engineering and ability to develop a prototype of knowledge-based systems which can use knowledge representation and automated logical inference
  • Differentiate between different methods for decision making and action planning applicable to the task for building agents which can learn from their own behaviour
  • Develop decision making skills based on theioretical and empirical comparison of the different methods and algorithms for buildingintelligent agents
  • Understand the Legal, Ethical & Professional Issues brought by AI and their impact on the society

Machine Learning

By the end of the Module, students will be able to:

  • Reveal a deep understanding of and demonstrate familiarity with the different methods for machine learning and assess competently their advantages and limitations.
  • Develop competence and confidence to make choice of suitable methods and tools for Machine Learning to achieve best possible performance in various business scenarios to drive organisational success.
  • Display familiarity with the various tools and technologies for analysis of real-life and toy datasets using programming languages like Python
  • Develop competent skills in data visualisation and development and evaluation of machine learning models using tools such as matplotlib and scikit-learn.
  • Appreciate and analyse the legal, ethical, and professional Issues of Machine Learning and estimate the impact of Machine Learning on society

Data Warehousing and Big Data

After successfully completing this module, students will be able to:

  • Demonstrate competence in the process of developing, configuring, utilising, and managing of data warehouse applications in a variety of contexts using DBMS tools.
  • Comprehensive understanding of the principles of organisation, validation, transformation and analysing large volumes of data on specialized platforms (Big Data) from various data sources – files, databases, server logs, etc.
  • Demonstrate comprehensive understanding of the advantage and limitations of Big Data technologies, including predictive analytics and build the confidence to interpret data as insights to drive organisational success.
  • Demonstrate competence in SQL.
  • Understand, appraise, and participate in the legal, social, ethical and professional framework for developing data-intensive systems working in an agile team environment.

Cloud Computing and the Internet of Things

On successful completion of this module students will be able to:

  • Design and critically assess the strengths and weaknesses of different IoT system architectures and components, showing understanding of their key features, including (passive and active) sensors, actuators, physical communications layer, message protocols, programming frameworks, and energy and bandwidth constraints
  • Apply extensive hands-on application development skills for building multi-tier cloud-based IoT systems as members of a development team and evaluate the strengths and weaknesses of different types of cloud-based architectures
  • Express a critical understanding of current research areas associated with the Internet of Things, Cloud Computing and Autonomous Intelligent Systems (AIS), including the commercial context and any privacy/security issues, legal, social, ethical, and professional issues related to the design, development, and implementation of Cloud Computing and IoT technologies and systems
  • Apply broad skill in writing professional reports as vehicles for communicating research ideas
  • Demonstrate ability for professional presentation, delivery, and peer assessment of research work

MSc Project

On successfully completing this module, students will be able to:

  • Design, plan, monitor and manage a piece of original project work
  • Produce a clear set of specifications for the project from its initial stage
  • Critically analyse previous relevant work by the effective use of libraries and other information sources
  • Synthesize knowledge and skills previously gained and apply these to an in-depth project
  • Understand ethical, legal and professional issues and apply them to a project
  • Integrate theory and practice by applying a range of tools, skills and techniques
  • Communicate effectively findings in a variety of ways
  • Write a comprehensive and concise report, justify the project implementation, discuss and explain findings at the viva
  • Critically evaluate the project outcomes, including evidence of commercial risks.

Inspire Institue of Technologies is an approved partner to deliver this program.

Frequently Asked Questions (FAQs)

This course is ideal for graduates in IT, computer science, mathematics, or engineering. It is also suitable for professionals who want to move into AI and technology fields. Anyone interested in smart technology can apply.

The course includes machine learning, deep learning, data science, robotics, and programming. It also covers neural networks and natural language processing. These subjects help students understand modern AI systems.

Graduates can work as AI engineers, machine learning specialists, data scientists, or AI developers. Jobs are available in technology companies, healthcare, finance, and many other industries. The demand for AI experts is very high.

Students will gain skills in programming, problem-solving, data analysis, and machine learning. The course also improves logical thinking and technical abilities. These skills are important for AI careers.

Yes, this qualification is recognised worldwide in the technology industry. It meets global academic and professional standards. This helps graduates find jobs in different countries.

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