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All qualifications and part qualifications registered on the National Qualifications Framework are public property. Thus the only payment that can be made for them is for service and reproduction. It is illegal to sell this material for profit. If the material is reproduced or quoted, the South African Qualifications Authority (SAQA) should be acknowledged as the source. |
| SOUTH AFRICAN QUALIFICATIONS AUTHORITY |
| REGISTERED QUALIFICATION: |
| Postgraduate Diploma in Mathematical Sciences |
| SAQA QUAL ID | QUALIFICATION TITLE | |||
| 122942 | Postgraduate Diploma in Mathematical Sciences | |||
| ORIGINATOR | ||||
| Cape Peninsula University of Technology | ||||
| PRIMARY OR DELEGATED QUALITY ASSURANCE FUNCTIONARY | NQF SUB-FRAMEWORK | |||
| CHE - Council on Higher Education | HEQSF - Higher Education Qualifications Sub-framework | |||
| QUALIFICATION TYPE | FIELD | SUBFIELD | ||
| Postgraduate Diploma | Field 10 - Physical, Mathematical, Computer and Life Sciences | Mathematical Sciences | ||
| ABET BAND | MINIMUM CREDITS | PRE-2009 NQF LEVEL | NQF LEVEL | QUAL CLASS |
| Undefined | 120 | Not Applicable | NQF Level 08 | Regular-Provider-ELOAC |
| REGISTRATION STATUS | SAQA DECISION NUMBER | REGISTRATION START DATE | REGISTRATION END DATE | |
| Registered | EXCO 0527/24 | 2024-10-03 | 2027-10-03 | |
| LAST DATE FOR ENROLMENT | LAST DATE FOR ACHIEVEMENT | |||
| 2028-10-03 | 2031-10-03 | |||
| In all of the tables in this document, both the pre-2009 NQF Level and the NQF Level is shown. In the text (purpose statements, qualification rules, etc), any references to NQF Levels are to the pre-2009 levels unless specifically stated otherwise. |
This qualification does not replace any other qualification and is not replaced by any other qualification. |
| PURPOSE AND RATIONALE OF THE QUALIFICATION |
| Purpose:
The purpose of the Postgraduate Diploma in Mathematical Sciences qualification is to consolidate and deepen learners' understanding and thus equip learners with the analytical, technical, and professional skills, methods and tools required to perform as analytical problem solvers at a high level. In achieving this purpose, the qualification will empower learners to excel in careers such as Analyst or Data Scientist. This qualification is an interdisciplinary and specialised qualification that integrates knowledge, skills and methods from both Applied Mathematics and Statistics and is at the same time infused with specialisation in the emerging sub-discipline of Data Science. It aims to use a rigorous mathematical approach by empowering learners with theoretical knowledge and technical and professional skills from these disciplines, to serve in a range of business and industry careers as Analysts, Data Scientists, Junior Lecturers, or similar. The qualification is also designed to prepare learners for master's level studies in Applied Mathematics, Statistics, or Data Science through the deepening of their knowledge and understanding of theories, methodologies and practices in these disciplines, as well as the development of their ability to formulate, undertake and resolve more complex theoretical and practice-related problems and tasks through the selection and use of appropriate methods and techniques. Graduates of this qualification will be able to articulate vertically to master's degrees in mathematical sciences and its subdisciplines. Moreover, graduates will have been equipped with ethical training and digital and professional citizenship to be able to conduct themselves in a caring and ethical manner in their careers. Upon completion of the qualification, qualifying learners will be able to: Rationale: According to the Department of Home Affairs' 2021 Critical Skills List, and DHET's associated 2020 List of Occupations in High Demand, two of the critical occupations required in the country are Data Scientist (and Statistical and Mathematical Assistant. The planned Level 8 qualification thus contributes toward addressing the shortage of two occupations deemed critical to the national economy. The Postgraduate Diploma in Mathematical Sciences is an interdisciplinary programme, based on a core curriculum in Applied Mathematics, Statistics and Data Science, with domain-specific applications in Business and Applied Sciences. The design team adopted an interdisciplinary approach as Applied Mathematics and Statistics supply core theory and methods that are then applied to the emerging discipline of Data Science to create a powerful and versatile toolkit for problem-solving in business, industry, and academia. The students' deep roots in Mathematics and Statistics will establish them as specialist Data Scientists and set them apart from many professionals who adopt the self-designation "Data Scientist" after doing short courses in machine learning with little appreciation for the mathematical and statistical foundations thereof. Indeed, major advances in data science usually stem from a combination of techniques drawn from applied mathematics and statistics. Machine Learning algorithms applied to Big Data are a huge growth area in the Fourth Industrial Revolution labour economy. Graduates of this qualification will be poised to capitalise on these new opportunities, and in so doing, to ensure that South Africa keeps apace with this global revolution. Business intelligence (BI) uses software and services to provide insights that inform an organization's strategic business decisions. BI tools access and analyse data sets and present analytical findings in reports, summaries, dashboards, graphs, charts, and maps to provide users with detailed intelligence about the state of the business for decision-making support. The Postgraduate Diploma includes subjects that reinforce BI and thus enables students to package and communicate quantitative information in a form in which business leaders currently expect to receive such information. With this professionally oriented qualification in hand, and more importantly the technical skills (e.g., advanced analytical and modelling skills, problem-solving, computational and programming skills in a variety of software applications) and professional skills (e.g., versatility, adaptability, professionalism, lifelong learning, community service, information literacy, and critical thinking) with which we will equip our students, graduates will be well prepared to further specialise at Masters Level or pursue job opportunities as data scientists and data analysts in a variety of sectors including financial services, retail, government, health care, research, etc. The Research Project component will provide the student with a choice between a professionally oriented "business case" that entails solving a business problem for a real-world client (e.g., the student's employer, which could be in a variety of sectors and domains of application) or a more traditional research project for students who aim to continue to Masters level. It has been mentioned how the Postgraduate Diploma in Mathematical Sciences will provide graduates who can help to supply the shortage in critical skills and high-demand occupations identified by the South African government, such as Statistical and Mathematical Assistant and Data Scientist. It is therefore clear that the graduates of this qualification will make an important contribution to society and the national economy. It is anticipated that the programme will also be an attractive option for international students from other African countries that similarly consider Data Science, Applied Mathematics, and Statistics to be critical skills. |
| LEARNING ASSUMED TO BE IN PLACE AND RECOGNITION OF PRIOR LEARNING |
| Recognition of Prior Learning (RPL):
RPL for access: The Institution's Recognition of Prior Learning Policy is informed by the CHE RPL Policy. RPL may be used to grant access to a qualification programme, but this exemption does not translate to credits being awarded for these subjects and a student who, on the basis of RPL, is granted exemption from doing some subjects in the qualification programme will complete the qualification with a total number of credits that is less than the normally required number of credits for the qualification in question. Not more than 10% of a cohort of learners in a higher education programme should be admitted through an RPL process. The institution's RPL Policy also states that any learner wishing to continue their studies after an absence of ten years or more must apply via RPL. In such cases, the student must provide detailed information about their activities during their absence from formal studies. Entry Requirements: The minimum entry requirement for this qualification is: Or |
| RECOGNISE PREVIOUS LEARNING? |
| Y |
| QUALIFICATION RULES |
| This qualification consists of the following compulsory modules at National Qualifications Framework Level 8 totalling 120 Credits.
Compulsory Modules, NQF Level 8, totalling 120 Credits: |
| EXIT LEVEL OUTCOMES |
| 1. Demonstrate understanding of the fundamental theories, concepts, and models within Applied Mathematics, Statistics, and Data Science, and articulate them using symbolic mathematical expressions.
2. Select an appropriate mathematical or statistical model or technique for a given unfamiliar problem and construct the model in terms specific to the problem. 3. Demonstrate an ability to acquire, quality-check, clean, merge, transform, and wrangle large, complicated data sets using data science software and programming. 4. Select and apply appropriate computational algorithms and techniques to correctly implement the chosen mathematical or statistical model(s) in software. 5. Create and correctly interpret visually attractive and appropriate graphical and numerical output related to the implementation of a model or method in Applied Mathematics, Statistics, or Data Science. 6. Solve sophisticated theoretical or professionally oriented research problems in Applied Mathematics, Statistics, or Data Science by undertaking a comprehensive research project. 7. Address ethical and practical issues such as plagiarism, protection of personal information, cybersecurity, and non-disclosure in an academic and professional context. 8. Produce insightful academic or professional information and communicate it effectively to a range of audiences, thereby offering actionable solutions to problems appropriate to the context. 9. Apply, in a self-critical manner, learning strategies for online and face-to-face classes and consultations, which effectively address the learners' professional and ongoing personal learning needs as well as those of others. 10. Take full responsibility for one's work and capably defend methodological decisions and interpretations. |
| ASSOCIATED ASSESSMENT CRITERIA |
| Associated Assessment Criteria for Exit Level Outcome 1:
Associated Assessment Criteria for Exit Level Outcome 2: Associated Assessment Criteria for Exit Level Outcome 3: Associated Assessment Criteria for Exit Level Outcome 4: Associated Assessment Criteria for Exit Level Outcome 5: Associated Assessment Criteria for Exit Level Outcome 6: Associated Assessment Criteria for Exit Level Outcome 7: Associated Assessment Criteria for Exit Level Outcome 8: Associated Assessment Criteria for Exit Level Outcome 9: Associated Assessment Criteria for Exit Level Outcome 10: INTEGRATED ASSESSMENT Formative assessment: Formative Assessments in this qualification will take several forms. These include lecturer-learner interactions during contact sessions, one-on-one or small-group consultations between learners and lecturer outside of class, and small tutorial tasks in which the lecturer monitors the learners' ability to replicate some problem-solving, analytical, or computational procedure demonstrated by the lecturer. They also include self-study assignments, programming exercises, and practical reports. It also may include practice versions of online tests conducted via the Blackboard e-Learning platform. Formative assessments will include consultations with the academic supervisor and a research proposal and ethics protocol submitted to the Faculty Research Committee and Research Ethics Committee. Summative Assessments: Summative assessments will include tests and examinations to be performed in time- and space-controlled environments. However, because of the circumstances just mentioned, such tests and examinations will need, for most modules in the course, to be conducted in computer laboratories, with submissions made electronically. Summative assessments for this module will include an oral presentation and Q&A session with a panel of academic and professional experts and a written research or technical report. The Research Project module will not have a summative assessment in the form of a test or exam. In general, assessment is continuous and consists of both formative, summative and integrated elements. Assessment is aligned with the rationale, purposes, and aims of the qualification, the intended learning outcomes, and the designed and implemented curriculum, and is integral to the methodology of the teaching and learning processes. The Final Integrated Summative Assessment task will carry a weight of 50% in each module, with the remaining 50% split between other formative and summative assessment tasks. |
| INTERNATIONAL COMPARABILITY |
| A thorough benchmarking exercise was undertaken that identified numerous Postgraduate Diplomas and similar qualifications in Mathematical Sciences offered globally.
Country: United Kingdom Institution name: University of Essex Qualification title: Postgraduate Diploma in Optimisation and Data Analytics Duration: 9 months Entry Requirements: A 2:2 degree in one of the following subjects, Applied Mathematics, Biostatistics and Computer Science. Purpose/Rationale Postgraduate Diploma Optimisation and Data Analytics is aimed at those with a first degree in which the major subject was mathematics, and learners are expected to have prior knowledge of statistics - for example, significance testing or basic statistical distributions - and operational research such as linear programming. Businesses, organisations, and individuals all strive to work as effectively as possible. Operational research uses advanced statistical and analytical methods to help improve complex decision-making processes to deliver a product or service. Working in this field, you might be identifying future needs for a business, evaluating the time-life value of a customer, or carrying out computer simulations for airlines. Qualification Aims: Course structure Modules: Similarities: Differences: Country: Australia Institution name: University of New South Wales Qualification title: Graduate Diploma in Mathematics and Statistics Duration: One year Entry Requirements: Or Purpose/Rationale The Graduate Diploma in Mathematics and Statistics is a flexible program designed to deepen the mathematics or statistics knowledge gained in undergraduate studies. It is intended for learners with a degree comprising a significant quantitative component, such as Science, Engineering or Finance, who wish to consolidate their mathematical background for further studies. This qualification opens a variety of career opportunities in areas as diverse as banking, insurance and investment, environmental modelling, oceanography, meteorology, computing, information technology, government, education, and research. Studying mathematics improves your logical thinking, problem-solving and analytical skills. Solving mathematical and statistical problems also requires creativity and adaptability. These skills are highly valued by employers. Learning Outcomes: Course structure Modules: Similarities: The University of New South Wales (USW) and the South African (SA) qualification both accept learners who have completed a degree in the relevant study. Differences: |
| ARTICULATION OPTIONS |
| Horizontal Articulation:
Vertical Articulation: Diagonal Articulation There is no diagonal articulation for this qualification. |
| MODERATION OPTIONS |
| N/A |
| CRITERIA FOR THE REGISTRATION OF ASSESSORS |
| N/A |
| NOTES |
| N/A |
| LEARNING PROGRAMMES RECORDED AGAINST THIS QUALIFICATION: |
| NONE |
| PROVIDERS CURRENTLY ACCREDITED TO OFFER THIS QUALIFICATION: |
| This information shows the current accreditations (i.e. those not past their accreditation end dates), and is the most complete record available to SAQA as of today. Some Primary or Delegated Quality Assurance Functionaries have a lag in their recording systems for provider accreditation, in turn leading to a lag in notifying SAQA of all the providers that they have accredited to offer qualifications and unit standards, as well as any extensions to accreditation end dates. The relevant Primary or Delegated Quality Assurance Functionary should be notified if a record appears to be missing from here. |
| 1. | Cape Peninsula University of Technology |
| All qualifications and part qualifications registered on the National Qualifications Framework are public property. Thus the only payment that can be made for them is for service and reproduction. It is illegal to sell this material for profit. If the material is reproduced or quoted, the South African Qualifications Authority (SAQA) should be acknowledged as the source. |