Academic Handbook Course Descriptors and Programme Specifications
LDSCI4211 Programming with Data Course Descriptor
Last modified on December 19th, 2024 at 4:27 pm
Course code | LDSCI4211 | Discipline | Computer & Data Science |
UK credit | 15 | US credit | 4 |
FHEQ level | 4 | Date approved | November 2022 |
Core attributes | AD | ||
Pre-requisites | None | ||
Co-requisites | None |
Course Overview
This course provides a comprehensive introduction to programming in the Python programming language. It will introduce the basics of working with data, as well as fundamental programming concepts such as software testing. The course enables students to write programs that load, transform, analyse, and visualise data – a workflow used regularly in industry globally. Students will explore data structures such as dictionaries, sets, tuples, lists and arrays.
Learning Outcomes
On successful completion of the course, students will be able to:
Knowledge and Understanding
K1a | Demonstrate knowledge and understanding of basic concepts in programming, data structures and data analysis in a high-level language (e.g., Python). |
K2a | Explain the data analytics pipeline, how to apply programming at each stage. |
K3a | Articulate the limitations of data analysis techniques. |
Subject Specific Skills
S1a | Implement simple algorithms and integrate the use of libraries and tools to solve data science problems in Python addressing basic considerations surrounding data management, ethical data use, safety, equality, diversity, inclusion, and sustainability. |
S2a | Apply techniques for acquiring and programmatically integrating, cleaning, analysing and visualising data from different sources. |
S3a | Evaluate the performance of computing techniques to correctly solve a data science problem. |
Transferable and Employability Skills
T2a | Effectively use of IT facilities and programming frameworks to support projects. |
T3a | Display a developing technical proficiency in written English and an ability to communicate clearly and accurately in structured and coherent pieces of writing. |
Teaching and Learning
This course has a dedicated Virtual Learning Environment (VLE) page with a syllabus and range of additional resources (e.g. readings, question prompts, tasks, assignment briefs, discussion boards) to orientate and engage students in their studies.
The scheduled teaching and learning activities for this course are:
- Lectures/labs. 40 scheduled hours – typically including induction, consolidation or revision, and assessment activity hours:
- Version 1:All sessions in the same sized group, or
- Version 2: most of the sessions in larger groups; some of the sessions in smaller groups
Faculty hold regular ‘office hours’, which are opportunities for students to drop in or sign up to explore ideas, raise questions, or seek targeted guidance or feedback, individually or in small groups.
Students are to attend and participate in all the scheduled teaching and learning activities for this course and to manage their directed learning and independent study.
Indicative total learning hours for this course: 150
Assessment
Both formative and summative assessment are used as part of this course, with purely formative opportunities typically embedded within interactive teaching sessions, office hours, and/or the VLE.
Summative Assessments
AE: | Assessment Activity | Weighting
(%) |
Duration | Length
(words) |
1 | Set Exercises | 70 | 24-32 hours | |
2 | Written Assignment | 30 | 2,500 |
Further information about the assessments can be found in the Course Syllabus.
Feedback
Students will receive formative and summative feedback in a variety of ways, written (e.g. marked up on assignments, through email or the VLE) or oral (e.g. as part of interactive teaching sessions or in office hours).
Indicative Reading
Note: Comprehensive and current reading lists are produced annually in the Course Syllabus or other documentation provided to students; the indicative reading list provided below is for a general guide and part of the approval/modification process only.
- Allen B. Downey. 2015. Think Python: How to Think Like a Computer Scientist. O’Reilly Media.
Indicative Topics
Note: Comprehensive and current topics for courses are produced annually in the Course Syllabus or other documentation provided to students; the indicative topics provided below are used as a general guide and part of the approval/modification process only.
- Programming in Python
- Reading data from files
- Data visualisation
Version History
Title: LDSCI4211 Programming with Data
Approved by: Dr Alison Statham Location: academic-handbook/programme-specifications-and-handbooks/undergraduate-programmes |
|||||
Version number | Date approved | Date published | Owner | Proposed next review date | Modification (as per AQF4) & category number |
1.0 | November 2022 | January 2023 | Dr Alexandros Koliousis | November 2027 |