Health Data Science

Basic Information

Course ID
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Option ID
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Provider
London School of Hygiene & Tropical Medicine, University of London
Type
postgraduate
Academic Year
2026
Source
ucas
Created
2/22/2026, 8:38:10 AM
Updated
2/22/2026, 8:38:10 AM

Other Options for this Course

Option ID Added
259b249c-dcb4-48a5-b670-877eed44cd76 2/22/2026 View

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    "sponsorshipInformation": "Information on all the scholarships we offer can be found on our fees and funding webpages. These pages are updated regularly as new scholarships become available. However, we recommend that students also look into alternative sources of funding.\n\nWhile applications for Chevening Scholarships for 2026/27 are open until 7 October 2025, applications to study for an MSc programme at LSHTM in the 2026/27 academic year will not open until November 2025. Please don’t worry about this timeline, as you can apply for the Chevening Scholarship first, indicate the programme you wish to study, and then apply for your MSc of choice. Chevening does not require an unconditional offer at the point of initial application, but by 9 July 2026 - see the Chevening timeline on their website for more information. We strongly recommend that you submit your application to LSHTM by the end of December.",
    "internationalInformation": null,
    "courseTitleWithoutApostrophe": "Health Data Science",
    "additionalAuditionInformation": null,
    "higherTechnicalQualifications": false
  },
  "version": 35,
  "academicYearsInformation": {
    "2025": 2,
    "2026": 2
  }
}
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