Ph.D. in Computer Engineering

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Programme Overview

The Ph.D. in Computer Engineering program is designed for candidates seeking to contribute original research to the computing discipline. It blends theoretical foundations with practical skills in areas like AI, distributed computing, data systems, software engineering, and speech technologies. Graduates are expected to lead innovation across academia, industry, and technology-driven enterprises.

The program emphasizes research-led learning, enabling students to explore emerging technologies while preparing high-impact scholarly work.

Program Structure

The program is structured into eight semesters:

  • Semesters 1–3: Focus on completing core, technical, and free electives

  • Semester 4: Includes the doctoral seminar and qualification exam

  • Semesters 5–8: Dedicated to thesis research and development

Core Courses

MGMT604 – Advanced Research Methods
Introduces scientific research principles and quantitative/behavioral approaches. Covers data collection, analysis, and research design through individual and group projects.
Credits: 3 | ECTS: 10

Seminar

CEN630 – Seminar in Computer Engineering
A non-credit course focused on the development and presentation of an academic research paper by the student.
Credits: 0 | ECTS: 20

Qualification Exam

QUAL600 – Qualification Exam
Students must demonstrate mastery of core areas and research readiness before proceeding to thesis work.
Credits: 0 | ECTS: 30

Ph.D. Thesis

MS601 – Ph.D. Thesis
Conducted under supervision from the fifth semester onward. Students select a research topic, conduct original investigation, and submit a doctoral dissertation.
Credits: 0 | ECTS: 30 per semester (4 semesters total)

Technical Electives (Choose Minimum 4)

  • CEN613 – Speech Processing
    Topics: Speech models, synthesis, recognition (DTW, HMM), and neural networks for speech.
    Credits: 3 | ECTS: 10

  • CEN621 – Advanced Topics in AI
    Focuses on mathematical foundations and projects in AI/ML. Requires strong background in calculus, probability, and programming.
    Credits: 3 | ECTS: 10

  • CEN622 – Advanced Topics in Software Systems
    Emphasis on embedded systems and sensor networks. Includes group projects and in-class presentations.
    Credits: 3 | ECTS: 10

  • CEN623 – Distributed Computing
    Covers peer-to-peer computing, system robustness, and self-organizing architectures.
    Credits: 3 | ECTS: 10

  • CEN624 – Advanced Programming
    Focus on data sharing, adaptive query processing, and Semantic Web architectures.
    Credits: 3 | ECTS: 10

  • CEN625 – Advanced Topics in IT
    Covers current trends in information technology, including organizational and human factors.
    Credits: 3 | ECTS: 10

  • CEN650 – Advanced Topics in Database Systems
    Topics include concurrency control, query optimization, and data modeling.
    Credits: 3 | ECTS: 10

Free Electives (Choose Minimum 2)

Students may choose from approved university-wide elective courses that complement their research interests or technical skills.

Graduation Requirements

To graduate, students must:

  • Complete a minimum of 240 ECTS

  • Pass all core, technical, and free elective courses with satisfactory grades

  • Complete and present the doctoral seminar

  • Pass the qualification exam

  • Conduct original research and submit a doctoral thesis

  • Maintain a minimum GPA of 3.00

  • Successfully defend their thesis before an academic jury

Entry Requirements

  • Master’s degree in Computer Engineering, IT, or a closely related field

  • Official transcripts and degree certificates

  • Valid passport or ID

  • Updated CV or academic portfolio

  • Proof of English proficiency (IELTS, TOEFL, or equivalent)

  • Research proposal (recommended)

Assessment Strategy

  • Coursework: Based on exams, assignments, presentations, and project work

  • Seminar: Evaluation of research content and delivery

  • Qualification Exam: Oral and/or written testing of research readiness

  • Thesis: Evaluated through continuous progress and a final defense

  • Minimum Passing Grade: C

Career & Professional Development

Ph.D. graduates are prepared for:

  • Academic and postdoctoral positions

  • Senior R&D roles in tech firms and labs

  • Consulting roles in data systems, AI, and cybersecurity

  • Government or defense research organizations

  • Leadership in tech startups or enterprise innovation teams

Program Benefits

  • Deep expertise in AI, systems, and software engineering

  • Mentorship from experienced faculty

  • Opportunity to present and publish academic work

  • Access to advanced research labs and collaborative projects

  • Flexibility to pursue interdisciplinary research interests

About Girne American University (GAU)

Founded in 1985, GAU is Cyprus’s first private university, recognized globally for its innovative education and international reach. With a presence across three continents, GAU focuses on accessibility, relevance, and excellence, shaping students into global leaders.

Conclusion

The Ph.D. in Computer Engineering is a research-driven program that develops scholars, innovators, and technical leaders equipped to shape the future of computing. With a strong foundation in core areas and the flexibility to specialize through electives, students emerge as confident researchers ready to make lasting contributions in academia and industry.

Entry Requirements

Assessment Strategy