Academic Handbook Course Descriptors and Programme Specifications
NCHNAL6124 Implementing Data Science Course Descriptor
Course Title | Implementing Data Science | Faculty | EDGE Innovation Unit (London) |
Course code | NCHNAL6124 | Teaching Period | This course will typically be delivered over a 6-week period. |
Credit points | 15 | Date approved | March 2021 |
FHEQ level | 6 | ||
Compulsory/Optional | Compulsory for Data Analyst Specialism | Date modified | |
Prerequisites | None | ||
Co-requisites | None |
Course Summary
This course offers students an opportunity to learn how to approach data analysis problems in a systematic manner and to learn how to design data analysis pipelines, as well as how to implement them at scale in the context of real-world problems. Data science is at the intersection of statistics, machine learning, and software development. Data analysis problems are solved in a series of datacentric steps: data acquisition, data cleaning, data transformation, data modelling, and data visualization.
Course Aims
- To consolidate student’s knowledge and apply data science thinking, processes and tools to a range of real-world problems.
- To expose students to real-world data sets and organisation constraints.
- To allow students to evaluate new real-world tasks and develop solutions.
Learning Outcomes
On successful completion of the course, students will be able to:
Knowledge and Understanding
K1c | Demonstrate a wide understanding of a broad range of data science methods and processes, bringing together techniques from maths, statistics, computer science and analytics. |
K2c | Critically understand the problems associated with real-word data and organisational constraints, appreciating the limits, ambiguity and uncertainty of data. |
Subject Specific Skills
S1c | Independently problem solve within the data science workflow. |
S2c | Design effective data analysis pipelines. |
Transferable and Professional Skills
T1ci | Demonstrate advanced critical thinking and problem-solving skills. |
T1cii | Display an advanced level of technical proficiency in written English and competence in applying scholarly terminology, so as to be able to apply skills in critical evaluation, analysis and judgement effectively in a diverse range of contexts. |
T2c | Approach problems in a professional, structured manner. |
T3c | Effectively communicate to a range of stakeholders. |
Teaching and Learning
This is an e-learning course, taught throughout the year.
This course can be offered as a standalone short course.
Teaching and learning strategies for this course will include:
- On-line learning
- On-line discussion groups
- On-line assessment
Course information and supplementary materials will be available on the University’s Virtual Learning Environment (VLE).
Students are required to attend and participate in all the formal and timetabled sessions for this course. Students are also expected to manage their self-directed learning and independent study in support of the course.
The course learning and teaching hours will be structured as follows:
- Learning and teaching (6 days x 8 hours) = 48 hours
- Independent study = 102 hours
Indicative total learning hours for this course: 150 hours
Assignments (see below) will be completed as part of private study.
Assessment
Formative
Students will be formatively assessed during the course by means of set assignments. These will not count towards the final degree but will provide students with developmental feedback.
Summative
AE | Assessment Type | Weighting | Online submission | Duration | Length |
1 | Written Assignment | 70% | Yes | – | 2,500 words +/- 10%, excluding data tables |
2 | Oral | 30% | Yes | 30 mins | – |
The summative assessment will be assessed in accordance with the assessment aims set out in the programme specification.
Feedback
Students will receive formal feedback in a variety of ways: written (via email or VLE correspondence) and indirectly through online discussion groups. Students will also attend a formal meeting with their Academic Mentor (and for apprentices, including their Line Manager). These bi- or tri-partite reviews will monitor and evaluate the student’s progress.
Feedback is provided on summative written assignments which will be handed back to the students.
Indicative Reading
Note: Comprehensive and current reading lists for courses are produced annually in the Syllabus or other documentation provided to students; the indicative reading list provided below is used as part of the approval/modification process only.
Books
- Kelleher, J. D. and Tierney, B., (2018), Data Science, Cambridge, Massachusetts: The MIT Press
- Van Emden, J. and Becker, L., (2016), Presentation Skills for Students, Basingstoke: Palgrave Macmillan
- Said, A., and Torra, V., (2019), Data Science in Practice, Cham: Springer International Publishing: Imprint: Springer
Journals
Students are encouraged to consult relevant journals on data science.
Electronic Resources
Students are encouraged to consult relevant electronic resources on data science.
Indicative Topics
- Data science workflow
- Data science in the real-world and organisational objectives
- Real-world data
Title: NCHNAL6124 Implementing Data Science Course Descriptor
Approved by: Academic Board Location: Academic Handbook/Programme specifications and Handbooks/ Undergraduate Online Programmes/Applied BSc (Hons) Digital & Technology Solutions/Course Descriptors |
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Version number | Date approved | Date published | Owner | Proposed next review date | Modification (As per AQF4) & category number |
3.0 | December 2022 | January 2023 | Dr Yu-Chun Pan | June 2026 | Category 3: Change to Teaching and Learning Strategy; Change to English Proficiency Learning Outcome
Category 1: Corrections/clarifications to documents which do not change approved content or learning outcomes |
2.1 | August 2022 | August 2022 | Scott Wildman | June 2026 | Category 1: Corrections/clarifications to documents which do not change approved content or learning outcomes |
2.0 | January 2022 | April 2022 | Scott Wildman | June 2026 | Category 3: Changes to Learning Outcomes |
1.0 | March 2021 | – | Scott Wildman | March 2026 |