Master of Engineering (MEng)

MEng Aerospace Engineering

Launch your career with this sought-after MEng, here at one of the Most Targeted Universities by Top Graduate Employers (THE Graduate Market, 2024).
  • Duration: 4 years
  • Year of entry: 2025
  • UCAS course code: H402 / Institution code: M20
  • Key features:
  • Study abroad
  • Scholarships available
  • Field trips

Full entry requirementsHow to apply

Fees and funding

Fees

Tuition fees for home students commencing their studies in September 2025 will be £9,535 per annum (subject to Parliamentary approval). Tuition fees for international students will be £34,000 per annum. For general information please see the undergraduate finance pages.

Policy on additional costs

All students should normally be able to complete their programme of study without incurring additional study costs over and above the tuition fee for that programme. Any unavoidable additional compulsory costs totalling more than 1% of the annual home undergraduate fee per annum, regardless of whether the programme in question is undergraduate or postgraduate taught, will be made clear to you at the point of application. Further information can be found in the University's Policy on additional costs incurred by students on undergraduate and postgraduate taught programmes (PDF document, 91KB).

Scholarships/sponsorships

The University of Manchester is committed to attracting and supporting the very best students. We have a focus on nurturing talent and ability and we want to make sure that you have the opportunity to study here, regardless of your financial circumstances.

For information about scholarships and bursaries please see our undergraduate fees pages and check the Department's funding pages .

Course unit details:
Data-driven Methods for Engineers

Course unit fact file
Unit code AERO40041
Credit rating 15
Unit level Level 4
Teaching period(s) Semester 1
Available as a free choice unit? No

Overview

Data science and machine learning have become more and more widely used in research and engineering firms and so are essential skills for a graduate engineer. This unit introduces students to advanced modelling and simulation concepts such as machine learning, data-driven optimisation, surrogate modelling and uncertainty quantification, relevant to modern design in Aerospace and Mechanical Engineering. With the help of hands-on laboratories for solving Engineering problems, the unit will build the capabilities of data-driven modelling that graduates should expect to use in their careers. 

 

Aims

To lay the foundations of data science and machine learning for the practical solutions to engineering problems. You will expand upon prior knowledge covered in Modelling and Simulation and the Numerical Methods and Computing courses through the use of modern data-driven methods for engineering problems. You will apply this knowledge to different engineering goals. Central to this is the development of both the theoretical and computational aspects of applied data science, data-driven optimisation, machine learning and uncertainty quantification. The skills developed will be honed via hands-on laboratories aimed at solving complex engineering problems.

Syllabus

An introduction to machine learning for engineering analysis -- the motivation, notation and definitions. Fundamental Algorithms: Linear regression, KNN algorithm, Gradient decent, Neural Networks for regression tasks in engineering. Overview of optimization, terminologies and methods; Sensitivity-based optimization; Grid-search and surrogate-based optimizations; Gaussian process regression for surrogate construction; Bayesian optimization based on Gaussian processes. Cross-validation and over-fitting; An overview to uncertainty quantification. A high-level overview of advanced AI (artificial intelligence) models for engineering analysis; reinforcement learning and generative AI. 

Practical skills


 

Assessment methods

Method Weight
Written exam 50%
Report 50%

Feedback methods

Each piece of coursework is supported by timetabled computer sessions. The students will be expected to attempt the coursework in their own time and ask for feedback from teaching staff during the computer sessions, before submission. T

Study hours

Scheduled activity hours
Lectures 24
Practical classes & workshops 12
Independent study hours
Independent study 114

Teaching staff

Staff member Role
Saleh Rezaeiravesh Unit coordinator

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