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PHYS51915: Core Ia: Introduction to Machine Learning and Statistics

It is possible that changes to modules or programmes might need to be made during the academic year, in response to the impact of Covid-19 and/or any further changes in public health advice.

Type Tied
Level 5
Credits 15
Availability Available in 2023/24
Module Cap None.
Location Durham
Department Physics

Prerequisites

  • A UK first or upper second class honours degree (BSc) or equivalent in Physics or a subject with basic physics courses OR in Computer Science OR in Mathematics OR in any natural sciences with a strong quantitative element. Programming knowledge in at least one programming language and commitment to learning C and Python independently if not known before.

Corequisites

  • PHYSPGNEW03 Core Ib: Introduction to Scientific and High-Performance Computing

Excluded Combinations of Modules

  • None

Aims

  • Provide basic knowledge and critical understanding of paradigms, fundamental ideas and methods of data analysis and statistics
  • Provide basic knowledge and critical understanding of paradigms, fundamental ideas and methods of machine learning

Content

  • Introduction to statistics and data analysis
  • Introduction to Machine Learning, classification and regression.

Learning Outcomes

Subject-specific Knowledge:

  • understanding and critical reflection of fundamental ideas and techniques in the application of data analysis and statistics to scientific data.
  • understanding and critical reflection of fundamental ideas and techniques in the application of machine learning to scientific data.

Subject-specific Skills:

  • competent and education selection and application of programming languages, algorithms and computing tools for specific problems.

Key Skills:

  • Familiarity with basic paradigms and modern concepts underlying data analysis

Modes of Teaching, Learning and Assessment and how these contribute to the learning outcomes of the module

  • Teaching will be by lectures and workshops.
  • The lectures provide the means to give a concise, focused presentation of the subject matter of the module.
  • When appropriate, the lectures will also be supported by the distribution of written material, or by information and relevant links on DUO
  • Regular problem exercises and workshops will give students the chance to develop their theoretical understanding and problem solving skills
  • Students will be able to obtain further help in their studies by approaching their lecturers, either after lectures or at other mutually convenient times
  • Student performance will be summatively assessed through coursework
  • The formative coursework provides opportunities for feedback, for students to gauge their progress and for staff to monitor progress throughout the duration of the module.

Teaching Methods and Learning Hours

ActivityNumberFrequencyDurationTotalMonitored
Lectures in Introduction to Statistics and Data Analysis82 per week1 hour8 
Practical Classes in Introduction to Statistics and Data Analysis82 per week1 hour8 
Lectures in Introduction to Machine Learning82 per week1 hour8 
Practical Classes in Introduction to Machine Learning82 per week1 hour8 
Self-study118 
Total150 

Summative Assessment

Component: CourseworkComponent Weighting: 100%
ElementLength / DurationElement WeightingResit Opportunity
Statistics and Machine Learning Coursework50 
Data Analysis Coursework50 

Formative Assessment

Feedback on coursework

More information

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