Statistical Science (Distance Learning)

Basic Information

Course ID
692279f0-fa3c-45f1-bc2b-7ba8351f0d19
Option ID
f42ecc93-116d-420d-b79f-33ed77c9ae44
Provider
University of Nottingham
Type
postgraduate
Academic Year
2026
Source
ucas
Created
2/25/2026, 8:43:00 PM
Updated
3/28/2026, 10:29:12 AM

Other Options for this Course

No other options

Listing Data (Raw)

{
  "id": "f42ecc93-116d-420d-b79f-33ed77c9ae44",
  "duration": {
    "quantity": 2,
    "durationType": {
      "id": "4",
      "caption": "Years",
      "mappedCaption": null
    }
  },
  "features": {
    "accelerated": false
  },
  "location": null,
  "startDate": {
    "date": "09/2026",
    "nonSpecific": false
  },
  "studyMode": {
    "id": "32",
    "caption": "Distance learning (part-time)",
    "mappedCaption": "Distance learning",
    "excludedSchemesForApplication": [
      "ucas"
    ]
  },
  "durationRange": null,
  "outcomeQualification": {
    "caption": "Master of Science - MSc (PG)"
  },
  "academicEntryRequirements": null
}

Detail API Response (Raw)

{
  "course": {
    "id": "692279f0-fa3c-45f1-bc2b-7ba8351f0d19",
    "cpdFlag": false,
    "options": [
      {
        "id": "f42ecc93-116d-420d-b79f-33ed77c9ae44",
        "status": {
          "published": true,
          "availableForApplication": true,
          "applicationStatusSummary": "Please speak to the provider to make an application",
          "acceptingApplicationsMessage": null,
          "notAcceptingApplicationsMessage": null
        },
        "cycleId": null,
        "modules": "* Foundations of Statistics,\n* Frequentist Statistical Inference,\n* Statistical Modelling of Discrete and Survival Data,\n* Bayesian Data Analysis: Theory, Applications and Computational Methods,\n* Statistical Machine Learning,\n* Multivariate and Time Series Analysis,\n* Statistics Dissertation.",
        "deadline": null,
        "duration": {
          "quantity": 2,
          "durationType": {
            "id": "4",
            "caption": "Years",
            "mappedCaption": null
          }
        },
        "features": {
          "accelerated": false
        },
        "location": {
          "id": "00000000-0000-0000-0000-000000000000",
          "url": null,
          "name": null,
          "ukprn": null,
          "address": null,
          "isDefault": false,
          "geoLocation": null,
          "tefCodeType": null,
          "locationCode": null,
          "googleMapsUrl": "https://maps.googleapis.com/maps/api/staticmap?zoom=10&size=2048x600&scale=2&markers=size:tiny%7Ccolor:red%7C52.9381844784,-1.1943795678&key=AIzaSyDAC7vZWEFNPF6GFUZvXfO5PRDxdEC0Gc0&signature=joUsXVeSz-I5vnmrIf-4f2Znkw4=",
          "googleMapsParams": "52.9381844784,-1.1943795678",
          "locationCategory": null,
          "geoLocationString": null
        },
        "startDate": {
          "date": "09/2026",
          "nonSpecific": false
        },
        "studyMode": {
          "id": "32",
          "caption": "Distance learning (part-time)",
          "mappedCaption": "Distance learning",
          "excludedSchemesForApplication": [
            "ucas"
          ]
        },
        "applyCycle": "2026",
        "courseFees": [],
        "courseType": null,
        "entryPoints": [],
        "durationRange": {
          "max": null,
          "min": null
        },
        "admissionTests": [],
        "subjectOptions": [],
        "useDefaultFees": false,
        "providerApplyUrl": "https://www.nottingham.ac.uk/pgstudy/how-to-apply/taught.aspx",
        "assessmentMethods": "By Examinations, Coursework, Dissertation, and Short project. Exams will take place at the university, or an approved test centre. Examinations will be scheduled to minimise travelling for students. You will be awarded the Master of Science Degree provided you have successfully completed the taught stage by achieving a weighted average mark of at least 50% with no more than 40 credits below 50% and no more than 20 credits below 40%. You must achieve a mark of at least 50% in the dissertation.",
        "entryRequirements": "* A high 2:2 in mathematics or a closely related subject with substantial mathematical content.\n* IELTS: 6.5 (6.0 in each element.)\n* As well as IELTS (listed above), we also accept other English language qualifications. This includes TOEFL iBT, Pearson PTE, GCSE, IB and O level English.\n* Some prior knowledge of statistics would be helpful but not essential to start the course. Familiarity with the basics of calculus (differentiation and integration) is assumed.",
        "internalReference": null,
        "providerCourseUrl": "https://www.nottingham.ac.uk/pgstudy/course/taught/statistical-science-distance-learning-msc#courseContent",
        "professionalBodies": [],
        "qualificationLevel": {
          "id": "RQF_7",
          "caption": "RQF Level 7",
          "mappedCaption": null
        },
        "subjectToValidation": false,
        "outcomeQualification": {
          "id": "47246",
          "caption": "Master of Science - MSc (PG)",
          "mappedCaption": "Masters degrees"
        },
        "deferredEntryDisallowed": false,
        "additionalFeeInformation": "Our postgraduate taught application fee for 2026 entry is now £0.00 (free).\nhttps://www.nottingham.ac.uk/pgstudy/how-to-apply/taught.aspx",
        "academicEntryRequirements": null,
        "additionalEntryRequirements": [],
        "englishLanguageEntryRequirements": [],
        "minimumAcademicEntryRequirements": null,
        "subsequentYearsEntryRequirements": null,
        "amsApplicationConfigurationOptions": {
          "useAscii": false,
          "hasNoVacancies": "False",
          "customQuestions": [],
          "vacancyStatuses": [
            {
              "status": null,
              "domicile": "eu",
              "hasVacancies": true,
              "flattenedVacancy": "eu"
            },
            {
              "status": null,
              "domicile": "wales",
              "hasVacancies": true,
              "flattenedVacancy": "wales"
            },
            {
              "status": null,
              "domicile": "eng",
              "hasVacancies": true,
              "flattenedVacancy": "eng"
            },
            {
              "status": null,
              "domicile": "int",
              "hasVacancies": true,
              "flattenedVacancy": "int"
            },
            {
              "status": null,
              "domicile": "scot",
              "hasVacancies": true,
              "flattenedVacancy": "scot"
            },
            {
              "status": null,
              "domicile": "ni",
              "hasVacancies": true,
              "flattenedVacancy": "ni"
            },
            {
              "status": null,
              "domicile": "roi",
              "hasVacancies": true,
              "flattenedVacancy": "roi"
            }
          ],
          "hasRestrictedVacancies": "False",
          "hasRestrictedEligibility": false,
          "restrictedEligibilityUrl": null,
          "restrictedEligibilityInfo": null,
          "useEnhancedCriminalConvictionCheck": false,
          "notAcceptingInternationalApplications": "False"
        },
        "englishLanguageEntryRequirementInformation": null
      }
    ],
    "suggest": "Statistical Science (Distance Learning). University of Nottingham. Science. Mathematics. Mathematical logic. Mathematical statistics. Statistics",
    "summary": "The Statistical Science MSc is a part-time distance learning programme, offering you the flexibility to study your way. You will develop the advanced techniques and skills required to be a successful statistician in the 21st century.\n\nAs the data we generate increases, so does the global demand for analysts who can apply modern statistical methods to make sense of it. The MSc ensures you will gain the skills to go from exploring a data set, to modelling and analysing the data, through to presenting your findings in a variety of ways.\n\nYou will develop:\n* essential statistical knowledge\n\n\n* analytical skills\n\n\n* computational expertise\n\n\n* interpretive and communicative skills\n\n\nTeaching is provided through course materials including lecture notes, digital recordings, training videos and practical computer sessions. You have the flexibility to look at these in your own time, meaning you can complete the masters around other commitments. We will support you throughout the degree with live online sessions using Microsoft Teams (or similar) which gives you the opportunity to ask any questions you have about the module content.\n\nYou will study the core statistical concepts of inference and modelling. As you progress, you will cover advanced topics in machine learning, multivariate statistics and time series. These topics will develop your understanding of modern statistical techniques, leading to a dissertation which lets you demonstrate the skills you have gained and develop your ability to study independently. You will be supported by expert lecturers and leading statistical experts and researchers throughout the MSc.\n\n**Continued Professional Development (CPD)**\nIf you are already working in a statistics-related role, this MSc will enhance your existing knowledge and skills. You will formalise and consolidate your learning and practical skills through carefully chosen modules.\n\nAll of the modules are available as standalone units to enhance your career development. Some examples include:\n\n\n* Frequentist Statistical Inference - learn the fundamentals of statistical inference and the computational implementation of inferential methods\n\n\n* Statistical Modelling of Discrete and Survival Data - explore extensions of linear models which enable the analysis of data in a wide range of scenarios\n\n\n* Statistical Machine Learning - use modern methods, combining statistics and computation, to make predictions for real-life data sets\n",
    "atasFlag": false,
    "contacts": [
      {
        "id": "fb583883-b99d-4326-b53b-d04aef3ebf8d",
        "fax": null,
        "email": "",
        "phone": "0330 041 5590",
        "title": "Clearing - Apply Online",
        "isDefault": false,
        "hasCourses": false,
        "isClearing": true,
        "clearingUrl": "https://www.nottingham.ac.uk/clearing",
        "enquiryLink": {
          "url": "https://www.nottingham.ac.uk/studywithus/enquiry.aspx",
          "caption": "Applicant Enquiry Form"
        },
        "availability": "View course vacancies and apply online at www.nottingham.ac.uk/clearing. For Clearing entry requirements, please search the vacancy listings on our website from Friday 5 July 2024. Clearing entry requirements for your course may differ from the standard entry requirements. \n\nVisit www.nottingham.ac.uk/clearing for more information.",
        "coursesCount": 0,
        "isAdmissions": false,
        "socialMediaPresences": []
      }
    ],
    "keywords": null,
    "provider": {
      "id": "79f42328-0271-1ace-1aec-05359cc16dd9",
      "name": "University of Nottingham",
      "ukprn": 10007154,
      "address": {
        "line1": "University Park",
        "line2": "",
        "line3": "",
        "line4": "Nottingham",
        "region": {
          "id": "10",
          "caption": "East Midlands",
          "mappedCaption": "East Midlands"
        },
        "country": {
          "id": "101",
          "caption": "England",
          "mappedCaption": "England"
        },
        "latitude": 52.9381844784,
        "postcode": "NG7 2RD",
        "longitude": -1.1943795678
      },
      "aliases": [],
      "logoUrl": "https://d1l6hqpjksdq9d.cloudfront.net/Prod/79f42328-0271-1ace-1aec-05359cc16dd9",
      "aliasName": "University of Nottingham",
      "websiteUrl": "www.nottingham.ac.uk",
      "liveProvider": true,
      "providerCode": null,
      "providerSort": "Nottingham, University of",
      "providerUrls": [],
      "imageLocation": "silver silver gold-01.png",
      "institutionCode": "N84",
      "providerShortName": "The University of Nottingham",
      "cukasInstitutionCode": null,
      "requireAsciiDocuments": false,
      "providerAbbreviatedName": "NOTTM",
      "aliasNameWithoutApostrophe": "University of Nottingham"
    },
    "subjects": [
      {
        "id": "1268",
        "caption": "Science",
        "mappedCaption": null
      },
      {
        "id": "1447",
        "caption": "Mathematics",
        "mappedCaption": null
      },
      {
        "id": "1463",
        "caption": "Mathematical logic",
        "mappedCaption": null
      },
      {
        "id": "1470",
        "caption": "Mathematical statistics",
        "mappedCaption": null
      },
      {
        "id": "1466",
        "caption": "Statistics",
        "mappedCaption": null
      }
    ],
    "auditions": [],
    "studyType": {
      "id": "1",
      "caption": "Taught",
      "mappedCaption": null
    },
    "department": {
      "id": "0a32f0ed-86dc-b258-5ca2-6be5351b6c4a",
      "name": "School of Mathematical Sciences"
    },
    "hecosCodes": [],
    "jacs3Codes": [],
    "publishEnd": "9999-12-31T23:59:59.9999999",
    "shortTitle": null,
    "specialism": {
      "primary": [],
      "secondary": [],
      "specialismStudyTypes": []
    },
    "visibleEnd": "2027-08-01T08:00:00",
    "compositeId": "692279f0-fa3c-45f1-bc2b-7ba8351f0d19-2026",
    "courseTitle": "Statistical Science (Distance Learning)",
    "facultyCode": null,
    "routingData": {
      "scheme": {
        "id": "none",
        "caption": "Direct application only",
        "mappedCaption": null
      },
      "destination": {
        "id": "pg",
        "caption": "Postgraduate",
        "mappedCaption": null
      }
    },
    "availableEnd": "9999-12-31T23:59:59.9999999",
    "englishTitle": "",
    "publishStart": "0001-01-01T00:00:00",
    "visibleStart": "2025-04-29T08:00:00",
    "taughtInWelsh": false,
    "ucasApplyData": null,
    "academicYearId": "2026",
    "availableStart": "0001-01-01T00:00:00",
    "awardingBodies": [],
    "applicationCode": null,
    "courseTitleSort": "Statistical Science (Distance Learning)",
    "abbreviatedTitle": null,
    "balanceIndicator": null,
    "copyFormRequired": false,
    "internalReference": null,
    "currentlyInClearing": false,
    "ucasTeacherTraining": false,
    "degreeApprenticeship": false,
    "qualifiedTeacherStatus": null,
    "sponsorshipInformation": null,
    "internationalInformation": null,
    "courseTitleWithoutApostrophe": "Statistical Science (Distance Learning)",
    "additionalAuditionInformation": null,
    "higherTechnicalQualifications": false
  },
  "version": 18,
  "academicYearsInformation": {
    "2025": 3,
    "2026": 1
  }
}

Normalized Data

{
  "scrapedAt": "2026-03-28T10:29:11.498Z",
  "scrapedPte": null,
  "scrapedUrl": "https://www.nottingham.ac.uk/pgstudy/course/taught/statistical-science-distance-learning-msc#courseContent",
  "scrapedToefl": null,
  "scrapedAiUsed": false,
  "scrapedFeeRaw": "Home / UK students EU / International students Alternative qualifications Undergraduate degreeA high 2:2 (greater than 55% or international equivalent) in mathematics or a closely related subject with substantial mathematical content. For online presessional courses, see our CELE webpages for guidance  Visa restrictions International students must have valid UK immigration permissions for any courses or study period where teaching takes place in the UK. Fees Qualification MSc Home / UK £13,000 International £13,000 Additional information for international students If you are a student from the EU, EEA or Switzerland, you may be asked to complete a fee status questionnaire and your answers will be assessed using guidance issued by the UK Council for International Student Affairs (UKCISA). If you are studying part-time, you will be charged a proportion of this fee each year (subject to inflation). Check our guide to find out more about funding your postgraduate degree. Postgraduate fundi",
  "feesConfidence": 0.8,
  "normalizedFees": {
    "home": 13000,
    "currency": "GBP",
    "international": 13000
  },
  "scrapedAiError": null,
  "scrapedDuolingo": null,
  "scrapedTemplate": null,
  "scrapedCambridge": null,
  "scrapedIeltsBand": null,
  "scrapedLangSource": "course_page",
  "languageConfidence": 0,
  "normalizedLanguage": {
    "pte": null,
    "ielts": null,
    "toefl": null,
    "duolingo": null,
    "cambridge": null
  },
  "scrapedLanguageRaw": "Meeting our English language requirements\nIf you need support to meet the required level, you may be able to attend a presessional English course. Presessional courses teach you academic skills in addition to English language. Our Centre for English Language Education is accredited by the British Council for the teaching of English in the UK.\nIf you successfully complete your presessional course to the required level, you can then progress to your degree course. This means that you won't need to retake IELTS or equivalent.\nFor on-campus presessional English courses, you must take IELTS for UKVI to meet visa regulations. For online presessional courses, see our CELE webpages for guidance",
  "scrapedIeltsOverall": null,
  "scrapedLangSourceUrl": null,
  "scrapedTuitionFeeHome": 13000,
  "scrapedTuitionFeeIntl": 13000,
  "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 degreeA high 2:2 (greater than 55% or international equivalent) in mathematics or a closely related subject with substantial mathematical content. PortfolioSome prior knowledge of statistics would be helpful but not essential to start the course. Familiarity with the basics of calculus (differentiation and integration) and linear algebra (matrices and vectors) is assumed. Undergraduate degreeA high 2:2 (greater than 55% or international equivalent) in mathematics or a closely related subject with substantial mathematical content. 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 country pages. PortfolioSome prior knowled"
}
← Back to Courses