Machine Learning in Science

Basic Information

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Academic Year
2026
Source
ucas
Created
2/25/2026, 11:06:03 PM
Updated
3/28/2026, 10:37:43 AM

Other Options for this Course

Option ID Added
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  "scrapedEntryRequirements": "Entry requirements All candidates are considered on an individual basis and we accept a broad range of qualifications. The entrance requirements below apply to 2026 entry. Home / UK students EU / International students Alternative qualifications Undergraduate degree2.1 (or international equivalent) in one of the following areas: physics, mathematics, computer science, chemistry, engineering. A high 2.2, above 56%, (or international equivalent) may be considered if the applicant has relevant work experience or another supporting factor. Undergraduate degree2.1 (or international equivalent) in one of the following areas: physics, mathematics, computer science, chemistry, engineering. A high 2.2, above 56%, (or international equivalent) may be considered if the applicant has relevant work experience or another supporting factor. International and EU equivalentsWe accept a wide range of qualifications from all over the world.For information on entry requirements from your country, see our "
}
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