Environmental Data Science and Machine Learning MSc
Course Overview - Environmental Data Science and Machine Learning MSc
Advance your understanding of data science, machine learning and associated computational technologies on this 1-year Masters course.
Designed to prepare you for a career in environmental science or engineering, youll learn how to apply your knowledge to a broad range of environmentally motivated applications.
The programme explores in detail how data science techniques can be used to develop solutions to a range of problems.
Youll become familiar with key aspects of data science. These will include cloud computing, remote sensing, environmental monitoring...
Advance your understanding of data science, machine learning and associated computational technologies on this 1-year Masters course.<br/><br/>Designed to prepare you for a career in environmental science or engineering, youll learn how to apply your knowledge to a broad range of environmentally motivated applications.<br/><br/>The programme explores in detail how data science techniques can be used to develop solutions to a range of problems.<br/><br/>Youll become familiar with key aspects of data science. These will include cloud computing, remote sensing, environmental monitoring, modelling and computer code.<br/><br/>A research project is also a key component of this degree, where youll contribute to an active research area and develop your critical analysis.
Course Information
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Course Details
Information
Study Mode
Full-time
Duration
1 Years
Start Date
09/2026
Campus
South Kensington Campus
Application Details
Varied
Application deadline
Provider Details
Codes/info
Course Code
Unknown
Institution Code
I50
Points of Entry
Unknown
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