EE52036: Artificial intelligence and machine learning for engineering and design
[Page last updated: 16 August 2024]
Academic Year: | 2024/25 |
Owning Department/School: | Department of Electronic & Electrical Engineering |
Credits: | 20 [equivalent to 40 CATS credits] |
Notional Study Hours: | 400 |
Level: | Masters UG & PG (FHEQ level 7) |
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Assessment Summary: | CWRI 50%, EXOB 50% |
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Learning Outcomes: |
Apply appropriate machine learning algorithms and analyse complex data systems in an engineering and design context Critically evaluate the merits and limitations of different machine learning methods. Demonstrate teamworking competencies and evaluate effectiveness of own and team performance. Produce practical engineering solutions for complex problems using AI/ML tools and critically evaluate and present the outcomes. Recognise and describe the machine learning pipeline of training, testing, and deploying ML. |
Synopsis: | Working individually and in teams, you'll use software tools to learn core AI and ML methods such as supervised and unsupervised learning, neural networks and deep learning. You'll explore and apply AI and ML workflows to prepare, process, and analyse data. From this, you'll develop creative solutions to complex engineering and design challenges. |
Aims: | Using state-of-the-art software tools and working individually and in teams you will develop your understanding of core AI and ML methods including supervised and unsupervised learning, neural networks and deep learning. Explore and implement AI and ML workflows to prepare, process, and analyse data to creatively develop cutting-edge solutions for engineering and design complex challenges. |
Skills: | Data preparation, data collection, preparation, model training and validation, interpretation of results. |
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Course availability: |
EE52036 is a Must Pass Unit on the following courses:Department of Electronic & Electrical Engineering
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