Machine Learning and Big Data in the Physical Sciences

Basic Information

Course ID
60b93786-d418-4bd6-a2ab-0785afcd3df1
Option ID
bbb2a966-0522-4ff2-8913-cf15e6a0982b
Provider
Imperial College London
Type
postgraduate
Academic Year
2026
Source
ucas
Created
2/26/2026, 12:02:23 AM
Updated
3/28/2026, 10:40:55 AM

Other Options for this Course

Option ID Added
25c8e119-812b-4156-aee0-f1c1b097105d 2/26/2026 View

Listing Data (Raw)

{
  "id": "bbb2a966-0522-4ff2-8913-cf15e6a0982b",
  "duration": {
    "quantity": 1,
    "durationType": {
      "id": "4",
      "caption": "Years",
      "mappedCaption": null
    }
  },
  "features": {
    "accelerated": false
  },
  "location": {
    "id": "b532a77f-cb17-14ed-a488-43d74526c11a",
    "url": null,
    "name": "South Kensington Campus",
    "ukprn": null,
    "address": {
      "line1": "Exhibition Road",
      "line2": "",
      "line3": "",
      "line4": "Kensington and Chelsea",
      "region": {
        "id": "42",
        "caption": "Greater London",
        "mappedCaption": "Greater London"
      },
      "country": {
        "id": "101",
        "caption": "England",
        "mappedCaption": "England"
      },
      "latitude": 51.4983172541,
      "postcode": "SW7 2AZ",
      "longitude": -0.1769229017
    },
    "isDefault": false,
    "geoLocation": {
      "latitude": 51.4983172541,
      "longitude": -0.1769229017
    },
    "tefCodeType": null,
    "locationCode": null,
    "googleMapsUrl": null,
    "googleMapsParams": null,
    "locationCategory": null,
    "geoLocationString": "51.4983172541,-0.1769229017"
  },
  "startDate": {
    "date": "09/2026",
    "nonSpecific": false
  },
  "studyMode": {
    "id": "3",
    "caption": "Full-time",
    "mappedCaption": "Full-time",
    "excludedSchemesForApplication": []
  },
  "durationRange": null,
  "outcomeQualification": {
    "caption": "Master of Research - MRes"
  },
  "academicEntryRequirements": null
}

Detail API Response (Raw)

{
  "course": {
    "id": "60b93786-d418-4bd6-a2ab-0785afcd3df1",
    "cpdFlag": false,
    "options": [
      {
        "id": "bbb2a966-0522-4ff2-8913-cf15e6a0982b",
        "status": {
          "published": true,
          "availableForApplication": true,
          "applicationStatusSummary": "Please speak to the provider to make an application",
          "acceptingApplicationsMessage": null,
          "notAcceptingApplicationsMessage": null
        },
        "cycleId": null,
        "modules": null,
        "deadline": null,
        "duration": {
          "quantity": 1,
          "durationType": {
            "id": "4",
            "caption": "Years",
            "mappedCaption": null
          }
        },
        "features": {
          "accelerated": false
        },
        "location": {
          "id": "b532a77f-cb17-14ed-a488-43d74526c11a",
          "url": null,
          "name": "South Kensington Campus",
          "ukprn": null,
          "address": {
            "line1": "Exhibition Road",
            "line2": "",
            "line3": "",
            "line4": "Kensington and Chelsea",
            "region": {
              "id": "42",
              "caption": "Greater London",
              "mappedCaption": "Greater London"
            },
            "country": {
              "id": "101",
              "caption": "England",
              "mappedCaption": "England"
            },
            "latitude": 51.4983172541,
            "postcode": "SW7 2AZ",
            "longitude": -0.1769229017
          },
          "isDefault": false,
          "geoLocation": {
            "latitude": 51.4983172541,
            "longitude": -0.1769229017
          },
          "tefCodeType": null,
          "locationCode": null,
          "googleMapsUrl": "https://maps.googleapis.com/maps/api/staticmap?zoom=10&size=2048x600&scale=2&markers=size:tiny%7Ccolor:red%7C51.4983172541,-0.1769229017&key=AIzaSyDAC7vZWEFNPF6GFUZvXfO5PRDxdEC0Gc0&signature=r7Qs9hH8khjUo24IWSsdwHSFXlw=",
          "googleMapsParams": "51.4983172541,-0.1769229017",
          "locationCategory": null,
          "geoLocationString": "51.4983172541,-0.1769229017"
        },
        "startDate": {
          "date": "09/2026",
          "nonSpecific": false
        },
        "studyMode": {
          "id": "3",
          "caption": "Full-time",
          "mappedCaption": "Full-time",
          "excludedSchemesForApplication": []
        },
        "applyCycle": "2026",
        "courseFees": [],
        "courseType": null,
        "entryPoints": [],
        "durationRange": {
          "max": null,
          "min": null
        },
        "admissionTests": [],
        "subjectOptions": [],
        "useDefaultFees": false,
        "providerApplyUrl": "https://www.imperial.ac.uk/study/courses/postgraduate-taught/machine-learning-physical-sciences/",
        "assessmentMethods": null,
        "entryRequirements": "2:1 degree or three years of relevant work experience in quantitative disciplines such as finance, computer engineering, medical clinical and transportation.\n\nWe also accept a wide variety of international qualifications.",
        "internalReference": null,
        "providerCourseUrl": "https://www.imperial.ac.uk/study/courses/postgraduate-taught/machine-learning-physical-sciences/",
        "professionalBodies": [],
        "qualificationLevel": {
          "id": "RQF_7",
          "caption": "RQF Level 7",
          "mappedCaption": null
        },
        "subjectToValidation": false,
        "outcomeQualification": {
          "id": "155",
          "caption": "Master of Research - MRes",
          "mappedCaption": "Masters degrees"
        },
        "deferredEntryDisallowed": false,
        "additionalFeeInformation": null,
        "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
      },
      {
        "id": "25c8e119-812b-4156-aee0-f1c1b097105d",
        "status": {
          "published": true,
          "availableForApplication": true,
          "applicationStatusSummary": "Please speak to the provider to make an application",
          "acceptingApplicationsMessage": null,
          "notAcceptingApplicationsMessage": null
        },
        "cycleId": null,
        "modules": null,
        "deadline": null,
        "duration": {
          "quantity": 1,
          "durationType": {
            "id": "4",
            "caption": "Years",
            "mappedCaption": null
          }
        },
        "features": {
          "accelerated": false
        },
        "location": {
          "id": "e5385323-576e-47cb-8cf9-545d84371e09",
          "url": null,
          "name": "White City Campus",
          "ukprn": null,
          "address": {
            "line1": "80 Wood Lane",
            "line2": null,
            "line3": null,
            "line4": "London",
            "region": {
              "id": "42",
              "caption": "Greater London",
              "mappedCaption": "Greater London"
            },
            "country": {
              "id": "101",
              "caption": "England",
              "mappedCaption": "England"
            },
            "latitude": 51.5392,
            "postcode": "W12 7TA",
            "longitude": -0.05251
          },
          "isDefault": false,
          "geoLocation": {
            "latitude": 51.5392,
            "longitude": -0.05251
          },
          "tefCodeType": null,
          "locationCode": null,
          "googleMapsUrl": "https://maps.googleapis.com/maps/api/staticmap?zoom=10&size=2048x600&scale=2&markers=size:tiny%7Ccolor:red%7C51.5392,-0.05251&key=AIzaSyDAC7vZWEFNPF6GFUZvXfO5PRDxdEC0Gc0&signature=aPWGkmzvQLEJGbuu4kI3xo7ETcQ=",
          "googleMapsParams": "51.5392,-0.05251",
          "locationCategory": {
            "id": "10001",
            "caption": "Campus",
            "mappedCaption": null
          },
          "geoLocationString": "51.5392,-0.05251"
        },
        "startDate": {
          "date": "09/2026",
          "nonSpecific": false
        },
        "studyMode": {
          "id": "3",
          "caption": "Full-time",
          "mappedCaption": "Full-time",
          "excludedSchemesForApplication": []
        },
        "applyCycle": "2026",
        "courseFees": [],
        "courseType": null,
        "entryPoints": [],
        "durationRange": {
          "max": null,
          "min": null
        },
        "admissionTests": [],
        "subjectOptions": [],
        "useDefaultFees": false,
        "providerApplyUrl": "https://www.imperial.ac.uk/study/courses/postgraduate-taught/machine-learning-physical-sciences/",
        "assessmentMethods": null,
        "entryRequirements": "2:1 degree or three years of relevant work experience in quantitative disciplines such as finance, computer engineering, medical clinical and transportation.\n\nWe also accept a wide variety of international qualifications.",
        "internalReference": null,
        "providerCourseUrl": "https://www.imperial.ac.uk/study/courses/postgraduate-taught/machine-learning-physical-sciences/",
        "professionalBodies": [],
        "qualificationLevel": {
          "id": "RQF_7",
          "caption": "RQF Level 7",
          "mappedCaption": null
        },
        "subjectToValidation": false,
        "outcomeQualification": {
          "id": "155",
          "caption": "Master of Research - MRes",
          "mappedCaption": "Masters degrees"
        },
        "deferredEntryDisallowed": false,
        "additionalFeeInformation": null,
        "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": "Machine Learning and Big Data in the Physical Sciences. Imperial College London. Physics",
    "summary": "Further your understanding of the methodologies and toolkits used in research involving large data sets on this Master's course.\n\nThis programme considers how the field of physics provides a unique development ground for machine learning and artificial intelligence.\n\nYou'll examine the use of machine learning and data-science techniques in the acquisition, curation and analysis of large datasets commonplace in modern physics research.\n\nYou'll also explore how different techniques can be deployed in real research and how to apply these tools to real-life experimental data.\n\nAn extended project forms the major component of this course, providing you with an opportunity to investigate a cutting-edge physics research topic.\n\nYou'll learn alongside world-leading experts at Imperial and deploy the latest data science technologies to enhance your research.",
    "atasFlag": false,
    "contacts": [
      {
        "id": "1877e900-633c-e29d-d499-80a114eecef6",
        "fax": "020 7594 2301",
        "email": "admissions.enquiries@imperial.ac.uk",
        "phone": "020 7594 2207",
        "title": "Administrator",
        "isDefault": true,
        "hasCourses": false,
        "isClearing": false,
        "clearingUrl": null,
        "enquiryLink": {
          "url": null,
          "caption": null
        },
        "availability": null,
        "coursesCount": 0,
        "isAdmissions": true,
        "socialMediaPresences": []
      }
    ],
    "keywords": null,
    "provider": {
      "id": "52087408-312c-b1ee-f982-bc0eaf81d35f",
      "name": "Imperial College London",
      "ukprn": 10003270,
      "address": {
        "line1": "South Kensington Campus",
        "line2": "",
        "line3": "",
        "line4": "Kensington and Chelsea",
        "region": {
          "id": "27",
          "caption": "South East England",
          "mappedCaption": "South East England"
        },
        "country": {
          "id": "101",
          "caption": "England",
          "mappedCaption": "England"
        },
        "latitude": 51.4983172541,
        "postcode": "SW7 2AZ",
        "longitude": -0.1769229017
      },
      "aliases": [],
      "logoUrl": "https://d1l6hqpjksdq9d.cloudfront.net/Prod/52087408-312c-b1ee-f982-bc0eaf81d35f",
      "aliasName": "Imperial College London",
      "websiteUrl": "https://www.imperial.ac.uk",
      "liveProvider": true,
      "providerCode": null,
      "providerSort": "Imperial College London",
      "providerUrls": [],
      "imageLocation": "gold silver gold-01.png",
      "institutionCode": "I50",
      "providerShortName": "Imperial College London",
      "cukasInstitutionCode": null,
      "requireAsciiDocuments": false,
      "providerAbbreviatedName": "IMP",
      "aliasNameWithoutApostrophe": "Imperial College London"
    },
    "subjects": [
      {
        "id": "1479",
        "caption": "Physics",
        "mappedCaption": null
      }
    ],
    "auditions": [],
    "studyType": {
      "id": "1",
      "caption": "Taught",
      "mappedCaption": null
    },
    "department": {
      "id": "1260c92d-d568-ed2d-117f-265cd7148e4f",
      "name": "Physics"
    },
    "hecosCodes": [],
    "jacs3Codes": [],
    "publishEnd": "9999-12-31T23:59:59.9999999",
    "shortTitle": null,
    "specialism": {
      "primary": [],
      "secondary": [],
      "specialismStudyTypes": []
    },
    "visibleEnd": "2027-08-01T08:00:00",
    "compositeId": "60b93786-d418-4bd6-a2ab-0785afcd3df1-2026",
    "courseTitle": "Machine Learning and Big Data in the Physical Sciences",
    "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": "Machine Learning and Big Data in the Physical Sciences",
    "abbreviatedTitle": null,
    "balanceIndicator": null,
    "copyFormRequired": false,
    "internalReference": null,
    "currentlyInClearing": false,
    "ucasTeacherTraining": false,
    "degreeApprenticeship": false,
    "qualifiedTeacherStatus": null,
    "sponsorshipInformation": null,
    "internationalInformation": null,
    "courseTitleWithoutApostrophe": "Machine Learning and Big Data in the Physical Sciences",
    "additionalAuditionInformation": null,
    "higherTechnicalQualifications": false
  },
  "version": 11,
  "academicYearsInformation": {
    "2026": 2
  }
}

Normalized Data

{
  "scrapedAt": "2026-03-28T10:40:55.278Z",
  "scrapedPte": null,
  "scrapedUrl": "https://www.imperial.ac.uk/study/courses/postgraduate-taught/machine-learning-physical-sciences/",
  "scrapedToefl": null,
  "scrapedAiUsed": false,
  "scrapedFeeRaw": "Fees and funding Home fee 2026 entry £22,100 Overseas fee 2026 entry £44,500",
  "feesConfidence": 0.6,
  "normalizedFees": {
    "home": 12858,
    "currency": "GBP",
    "international": null
  },
  "scrapedAiError": null,
  "scrapedDuolingo": null,
  "scrapedTemplate": "drupal",
  "scrapedCambridge": null,
  "scrapedIeltsBand": null,
  "scrapedLangSource": "course_page",
  "languageConfidence": 0,
  "normalizedLanguage": {
    "pte": null,
    "ielts": null,
    "toefl": null,
    "duolingo": null,
    "cambridge": null
  },
  "scrapedLanguageRaw": "English language requirement\nAll candidates must demonstrate a minimum level of English language proficiency for admission to Imperial.\nFor admission to this course, you must achieve the higher university requirement in the appropriate English language qualification. For details of the minimum grades required to achieve this requirement, please see the English language requirements.\nWe also accept a wide variety of international qualifications.\nThe academic requirement above is for applicants who hold or who are working towards a UK qualification.\nFor guidance see our accepted qualifications though please note that the standards listed are the minimum for entry to Imperial, and not specifically this Department.\nIf you have any questions about admissions and the standard required for the qualification you hold or are currently studying then please contact the relevant admissions team.",
  "scrapedIeltsOverall": null,
  "scrapedLangSourceUrl": null,
  "scrapedTuitionFeeHome": 12858,
  "scrapedTuitionFeeIntl": null,
  "scrapedEntryRequirements": "Entry requirements We consider all applicants on an individual basis, welcoming students from all over the world."
}
← Back to Courses