| 
 Postgraduate Course: ML Systems Internship Research and Engagement Report (INFR11292)
Course Outline
| School | School of Informatics | College | College of Science and Engineering |  
| Credit level (Normal year taken) | SCQF Level 11 (Postgraduate) | Availability | Not available to visiting students |  
| SCQF Credits | 40 | ECTS Credits | 20 |  
 
| Summary | Students will do an (approximately) 4 month internship with a company, or equivalent. Students will write up their experience of the internship in terms of the difference in emphasis between the needs and requirements of a general company environment, and the needs and requirements of a University research environment. They will consider their work on the PhD so far an elaborate on how it can be developed for broader impact, company interest and where starting with a demand-driven and market-driven perspective would lead. |  
| Course description | Students will do an (approximately) 4 month internship with a company, or alternative form of engagement with external partners, bodies or stakeholders. This course will involve a reflection and write up their experience of the internship in relation to the PhD study. The work will be a supervised self-study and reflection. Due to typical confidentiality arrangements, there is no expectation of a technical reflection on the content of the internship. Rather, it will be a reflection on the experience of the internship and the impact of that on research engagement. 
 The report will cover:
 - Reflections on the difference in emphasis between the needs and requirements of a general company environment, and the needs and requirements of a University research environment
 - Reflection on the downstream effects of these differences on the progress of work, the longer term impact, the dissemination and communication of the work etc.
 - Reflection on the research work so far during the PhD, and company interest in that work can be enhanced, and where starting with a demand-driven and market-driven perspective would lead.
 - Reflection on how to increase the impact of the PhD research so far, and the best approach to driving commercial and/or social use of the work in practical settings.
 |  
Entry Requirements (not applicable to Visiting Students)
| Pre-requisites |  | Co-requisites |  |  
| Prohibited Combinations |  | Other requirements | CDT ML Systems students only. |  
Course Delivery Information
|  |  
| Academic year 2025/26, Not available to visiting students (SS1) | Quota:  None |  | Course Start | Full Year |  Timetable | Timetable | 
| Learning and Teaching activities (Further Info) | Total Hours:
400
(
 Dissertation/Project Supervision Hours 3,
 Feedback/Feedforward Hours 30,
 Programme Level Learning and Teaching Hours 8,
Directed Learning and Independent Learning Hours
359 ) |  
| Assessment (Further Info) | Written Exam
0 %,
Coursework
100 %,
Practical Exam
0 % |  
 
| Additional Information (Assessment) | A report writeup will be submitted to the supervisor for marking. |  
| Feedback | The feedback provided to the students will be oral feedback from the supervisor |  
| No Exam Information |  
Learning Outcomes 
| On completion of this course, the student will be able to: 
        delineate the needs and requirement of research and corporate / other environmentsreflect on research in the context of its broader impactgain clarity about what demands there are from stakeholders in the area of the PhD |  
Additional Information
| Graduate Attributes and Skills | Reflection: This enhances students' capabilities in understanding the difference in needs across various sectors of society, reflecting on experience. 
 Direct Engagement with Stakeholders: The internship will enable students to directly engage with relevant companies etc.
 
 Personal Responsibility: Students will arrange appropriate internships. They are responsible for their own work, and their work within the company.
 
 Communication: Students are required to submit a written report and communicate well.
 |  
| Keywords | Machine Learning,Computer Systems |  
Contacts 
| Course organiser | Dr Amos Storkey Tel: (0131 6)51 1208
 Email:
 | Course secretary | Ms Lindsay Seal Tel: (0131 6)50 5194
 Email:
 |   |  |