Detail API Response (Raw)
{
"course": {
"id": "f15598b9-47dc-45e4-8161-72ddd1d0d8c6",
"cpdFlag": false,
"options": [
{
"id": "ca7c1517-3490-4b09-b828-cb429413dae1",
"status": {
"published": true,
"availableForApplication": true,
"applicationStatusSummary": "Please speak to the provider to make an application",
"acceptingApplicationsMessage": null,
"notAcceptingApplicationsMessage": null
},
"cycleId": null,
"modules": "This course consists of 180 credits, split into 120 credits of taught modules during the autumn and spring semesters, and a 60 credit research project that is completed in the summer period.\n\nModules\nYear one\n\nPathways\n\nMathematics Bootcamp\nPrior to delving into the intricacies of machine learning, students will undertake an intensive mathematics bootcamp. This will ensure you are equipped with the robust quantitative skills necessary for this course.\n\n \n\nCore modules\nMachine Learning in Science – Part 120 credits\nMachine Learning in Science – Part 220 credits\nApplied Statistics and Probability - 20 credits\nMachine Learning in Science – Project - 60 credits\n\nOptional modules\nProfessional Ethics in Computing - 10 credits\nIntroduction to Practical Quantum Computing - 10 credits\nComputer Vision - 20 credits\nDesigning Intelligent Agents - 20 credits\nNeural Computation\nBig Data Learning and Technologies - 20 credits\nStatistical Foundations\nAutonomous Robotic Systems - 20 credits\nSimulation for Decision Support - 20 credits\nLinear and Discrete Optimisation - 20 credits\nHandling Uncertainty with Fuzzy Sets and Fuzzy Systems - 20 credits",
"deadline": null,
"duration": {
"quantity": 2,
"durationType": {
"id": "4",
"caption": "Years",
"mappedCaption": null
}
},
"features": {
"accelerated": false
},
"location": {
"id": "43bd1265-cad9-e0a6-2c99-0b0a82652dca",
"url": null,
"name": "University Park Campus",
"ukprn": null,
"address": {
"line1": "University of Nottingham",
"line2": "",
"line3": "",
"line4": "Nottingham",
"region": {
"id": "10",
"caption": "East Midlands",
"mappedCaption": "East Midlands"
},
"country": {
"id": "101",
"caption": "England",
"mappedCaption": "England"
},
"latitude": 52.9387934284,
"postcode": "NG7 2RJ",
"longitude": -1.2033705094
},
"isDefault": false,
"geoLocation": {
"latitude": 52.9387934284,
"longitude": -1.2033705094
},
"tefCodeType": null,
"locationCode": null,
"googleMapsUrl": "https://maps.googleapis.com/maps/api/staticmap?zoom=10&size=2048x600&scale=2&markers=size:tiny%7Ccolor:red%7C52.9387934284,-1.2033705094&key=AIzaSyDAC7vZWEFNPF6GFUZvXfO5PRDxdEC0Gc0&signature=Xd3i8FfKIi_TxxTyXYBVnh0dDcw=",
"googleMapsParams": "52.9387934284,-1.2033705094",
"locationCategory": null,
"geoLocationString": "52.9387934284,-1.2033705094"
},
"startDate": {
"date": "10/2026",
"nonSpecific": false
},
"studyMode": {
"id": "9",
"caption": "Part-time",
"mappedCaption": "Part-time",
"excludedSchemesForApplication": [
"ucas"
]
},
"applyCycle": "2026",
"courseFees": [],
"courseType": null,
"entryPoints": [],
"durationRange": {
"max": null,
"min": null
},
"admissionTests": [],
"subjectOptions": [],
"useDefaultFees": false,
"providerApplyUrl": "https://www.nottingham.ac.uk/pgstudy/course/taught/machine-learning-in-science-msc",
"assessmentMethods": "Modules are assessed using a variety of individual assessment types which are weighted to calculate your final mark for each module. There will be a research project assessed by a 8,000 word report.\n\nYou will need an average mark of 50% to pass the MSc overall – you won't get a qualification if you don't achieve this. You will be given a copy of our marking criteria when you start the course and will receive regular feedback from your tutors.",
"entryRequirements": "2.1 (or international equivalent) in one of the following areas: physics, mathematics, computer science, chemistry, engineering. A 2.2 (or international equivalent) may be considered if the applicant has relevant work experience or another supporting factor.",
"internalReference": null,
"providerCourseUrl": "https://www.nottingham.ac.uk/pgstudy/course/taught/machine-learning-in-science-msc",
"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
},
{
"id": "6b05f93f-f6c3-4f4d-8cef-d3db2d4dcb07",
"status": {
"published": true,
"availableForApplication": true,
"applicationStatusSummary": "Please speak to the provider to make an application",
"acceptingApplicationsMessage": null,
"notAcceptingApplicationsMessage": null
},
"cycleId": null,
"modules": "This course consists of 180 credits, split into 120 credits of taught modules during the autumn and spring semesters, and a 60 credit research project that is completed in the summer period.\n\nModules\nYear one\n\nPathways\n\nMathematics Bootcamp\nPrior to delving into the intricacies of machine learning, students will undertake an intensive mathematics bootcamp. This will ensure you are equipped with the robust quantitative skills necessary for this course.\n\n \n\nCore modules\nMachine Learning in Science – Part 120 credits\nMachine Learning in Science – Part 220 credits\nApplied Statistics and Probability - 20 credits\nMachine Learning in Science – Project - 60 credits\n\nOptional modules\nProfessional Ethics in Computing - 10 credits\nIntroduction to Practical Quantum Computing - 10 credits\nComputer Vision - 20 credits\nDesigning Intelligent Agents - 20 credits\nNeural Computation\nBig Data Learning and Technologies - 20 credits\nStatistical Foundations\nAutonomous Robotic Systems - 20 credits\nSimulation for Decision Support - 20 credits\nLinear and Discrete Optimisation - 20 credits\nHandling Uncertainty with Fuzzy Sets and Fuzzy Systems - 20 credits",
"deadline": null,
"duration": {
"quantity": 1,
"durationType": {
"id": "4",
"caption": "Years",
"mappedCaption": null
}
},
"features": {
"accelerated": false
},
"location": {
"id": "43bd1265-cad9-e0a6-2c99-0b0a82652dca",
"url": null,
"name": "University Park Campus",
"ukprn": null,
"address": {
"line1": "University of Nottingham",
"line2": "",
"line3": "",
"line4": "Nottingham",
"region": {
"id": "10",
"caption": "East Midlands",
"mappedCaption": "East Midlands"
},
"country": {
"id": "101",
"caption": "England",
"mappedCaption": "England"
},
"latitude": 52.9387934284,
"postcode": "NG7 2RJ",
"longitude": -1.2033705094
},
"isDefault": false,
"geoLocation": {
"latitude": 52.9387934284,
"longitude": -1.2033705094
},
"tefCodeType": null,
"locationCode": null,
"googleMapsUrl": "https://maps.googleapis.com/maps/api/staticmap?zoom=10&size=2048x600&scale=2&markers=size:tiny%7Ccolor:red%7C52.9387934284,-1.2033705094&key=AIzaSyDAC7vZWEFNPF6GFUZvXfO5PRDxdEC0Gc0&signature=Xd3i8FfKIi_TxxTyXYBVnh0dDcw=",
"googleMapsParams": "52.9387934284,-1.2033705094",
"locationCategory": null,
"geoLocationString": "52.9387934284,-1.2033705094"
},
"startDate": {
"date": "10/2026",
"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.nottingham.ac.uk/pgstudy/course/taught/machine-learning-in-science-msc",
"assessmentMethods": "Modules are assessed using a variety of individual assessment types which are weighted to calculate your final mark for each module. There will be a research project assessed by a 8,000 word report.\n\nYou will need an average mark of 50% to pass the MSc overall – you won't get a qualification if you don't achieve this. You will be given a copy of our marking criteria when you start the course and will receive regular feedback from your tutors.",
"entryRequirements": "2.1 (or international equivalent) in one of the following areas: physics, mathematics, computer science, chemistry, engineering. A 2.2 (or international equivalent) may be considered if the applicant has relevant work experience or another supporting factor.",
"internalReference": null,
"providerCourseUrl": "https://www.nottingham.ac.uk/pgstudy/course/taught/machine-learning-in-science-msc",
"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": "Machine Learning in Science. University of Nottingham. Artificial intelligence",
"summary": "The development and use of machine learning (ML) and artificial intelligence (AI) have revolutionised areas such as computer vision, speech recognition and language processing.\n\nOn this course you will learn how to apply ML and AI techniques to real scientific problems. This will help you build vital skills, enhancing your employability in a rapidly expanding area.\n\nGraduates of this course will learn how to:\n\nidentify and use relevant computational tools and programming techniques\napply statistical and physical principles to break down algorithms, and explain how they work\ndesign strategies for applying machine learning to the analysis of scientific data sets.\nIn addition, you will develop a broad set of transferable skills, including communication, critical thinking, and problem-solving. Previous students of this course have undertaken paid part-time internships with external partners.\n\nFind out what our graduates say about the course on our Physics Blog.\n\nYou will have the opportunity to develop your own research project on a topic of your choice. Previous projects have looked at:\n\nDeep Learning for drug discovery\nMachine Learning for sustainable solvent selection\nQuantum reinforcement learning\nSupervised machine learning on a quantum computer\nDeep Learning network for fatigue monitoring of wind turbine blades\nShaking all over – vibration cancellation at the atomic level\nUsing machine learning to automatically segment the placenta from pregnancy MRI scans\nMachine learning assisted high-throughput computational screening of metal organic frameworks for biogas upgrading\nSimulating the Universe\nDetecting dark matter substructure in galaxies\nPersonalised modelling of cerebral blood flow from multi-modal features for early detection of dementia\nMachine Learning natural product biosynthesis\nAdvanced natural language processing in Fintech",
"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": "1038",
"caption": "Artificial intelligence",
"mappedCaption": null
}
],
"auditions": [],
"studyType": {
"id": "1",
"caption": "Taught",
"mappedCaption": null
},
"department": {
"id": "f416a73b-26a7-ef5e-381f-7cef9e271f27",
"name": "School of Physics and Astronomy"
},
"hecosCodes": [],
"jacs3Codes": [],
"publishEnd": "9999-12-31T23:59:59.9999999",
"shortTitle": null,
"specialism": {
"primary": [],
"secondary": [],
"specialismStudyTypes": []
},
"visibleEnd": "2027-08-01T08:00:00",
"compositeId": "f15598b9-47dc-45e4-8161-72ddd1d0d8c6-2026",
"courseTitle": "Machine Learning in Science",
"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": [
{
"id": "756",
"caption": "University of Nottingham",
"mappedCaption": null
}
],
"applicationCode": null,
"courseTitleSort": "Machine Learning in Science",
"abbreviatedTitle": null,
"balanceIndicator": null,
"copyFormRequired": false,
"internalReference": null,
"currentlyInClearing": false,
"ucasTeacherTraining": false,
"degreeApprenticeship": false,
"qualifiedTeacherStatus": null,
"sponsorshipInformation": null,
"internationalInformation": null,
"courseTitleWithoutApostrophe": "Machine Learning in Science",
"additionalAuditionInformation": null,
"higherTechnicalQualifications": false
},
"version": 30,
"academicYearsInformation": {
"2025": 2,
"2026": 2
}
}