Artificial Intelligence (Conversion)
Basic Information
- Course ID
97311f79-1188-4c57-9d3e-3803671f5b09- Option ID
e771b198-d440-4ad1-b708-d9cc361552c2- Provider
- Queen Mary University of London
- Type
- postgraduate
- Academic Year
- 2026
- Source
- ucas
- Created
- 2/21/2026, 1:56:28 PM
- Updated
- 3/27/2026, 9:35:13 AM
Other Options for this Course
No other options
Listing Data (Raw)
{
"id": "e771b198-d440-4ad1-b708-d9cc361552c2",
"duration": {
"quantity": 1,
"durationType": {
"id": "4",
"caption": "Years",
"mappedCaption": null
}
},
"features": {
"accelerated": false
},
"location": {
"id": "2559c1f1-4188-0210-af34-0cbaedd6fc33",
"url": null,
"name": "Mile End",
"ukprn": null,
"address": {
"line1": "Mile End Road",
"line2": "",
"line3": "",
"line4": "Tower Hamlets",
"region": {
"id": "42",
"caption": "Greater London",
"mappedCaption": "Greater London"
},
"country": {
"id": "101",
"caption": "England",
"mappedCaption": "England"
},
"latitude": 51.5246362372,
"postcode": "E1 4NS",
"longitude": -0.0407103567
},
"isDefault": false,
"geoLocation": {
"latitude": 51.5246362372,
"longitude": -0.0407103567
},
"tefCodeType": null,
"locationCode": null,
"googleMapsUrl": null,
"googleMapsParams": null,
"locationCategory": null,
"geoLocationString": "51.5246362372,-0.0407103567"
},
"startDate": {
"date": "01/2027",
"nonSpecific": false
},
"studyMode": {
"id": "3",
"caption": "Full-time",
"mappedCaption": "Full-time",
"excludedSchemesForApplication": []
},
"durationRange": null,
"outcomeQualification": {
"caption": "MSc"
},
"academicEntryRequirements": null
}
Detail API Response (Raw)
{
"course": {
"id": "97311f79-1188-4c57-9d3e-3803671f5b09",
"cpdFlag": false,
"options": [
{
"id": "e771b198-d440-4ad1-b708-d9cc361552c2",
"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": "2559c1f1-4188-0210-af34-0cbaedd6fc33",
"url": null,
"name": "Mile End",
"ukprn": null,
"address": {
"line1": "Mile End Road",
"line2": "",
"line3": "",
"line4": "Tower Hamlets",
"region": {
"id": "42",
"caption": "Greater London",
"mappedCaption": "Greater London"
},
"country": {
"id": "101",
"caption": "England",
"mappedCaption": "England"
},
"latitude": 51.5246362372,
"postcode": "E1 4NS",
"longitude": -0.0407103567
},
"isDefault": false,
"geoLocation": {
"latitude": 51.5246362372,
"longitude": -0.0407103567
},
"tefCodeType": null,
"locationCode": null,
"googleMapsUrl": "https://maps.googleapis.com/maps/api/staticmap?zoom=10&size=2048x600&scale=2&markers=size:tiny%7Ccolor:red%7C51.5246362372,-0.0407103567&key=AIzaSyDAC7vZWEFNPF6GFUZvXfO5PRDxdEC0Gc0&signature=Ds4eCiB5ih82yp_d-YKj-WUAvkw=",
"googleMapsParams": "51.5246362372,-0.0407103567",
"locationCategory": null,
"geoLocationString": "51.5246362372,-0.0407103567"
},
"startDate": {
"date": "01/2027",
"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.qmul.ac.uk/postgraduate/taught/coursefinder/courses/artificial-intelligence-conversion-msc/?utm_medium=third_party_profile&utm_source=ucas&utm_campaign=qmul_pgt_enq&utm_content=ucas_pg_listings",
"assessmentMethods": "Modules are assessed through a combination of coursework and written examinations. \nYou will undertake a large project where you will demonstrate AI skills in an applied scenario.",
"entryRequirements": "A 2:1 or above at undergraduate level in a degree not related to Computer Science, Software Engineering, Information Technology or Electronic Engineering.",
"internalReference": null,
"providerCourseUrl": "https://www.qmul.ac.uk/postgraduate/taught/coursefinder/courses/artificial-intelligence-conversion-msc/?utm_medium=third_party_profile&utm_source=ucas&utm_campaign=qmul_pgt_enq&utm_content=ucas_pg_listings",
"professionalBodies": [],
"qualificationLevel": {
"id": "RQF_7",
"caption": "RQF Level 7",
"mappedCaption": null
},
"subjectToValidation": false,
"outcomeQualification": {
"id": "158",
"caption": "MSc",
"mappedCaption": "Masters degrees"
},
"deferredEntryDisallowed": false,
"additionalFeeInformation": "Please visit programme page to see fees.",
"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": "Artificial Intelligence (Conversion). Queen Mary University of London. Computer science. Artificial intelligence",
"summary": "This MSc opens the door to a high-impact career enhanced by artificial intelligence. Designed for students from non-STEM backgrounds, our conversion programme equips you with the skills to confidently step into the world of AI. You’ll explore key areas like Deep Learning, Neural Networks, and Ethical AI, while gaining hands-on experience with the latest industry tools. From building smart applications to analysing data and designing responsible AI solutions, you’ll graduate with the expertise to thrive as an AI Specialist—ready to drive innovation across a range of industries.\n\n**Programme Highlights**\n- Build future-proof skills. Develop core knowledge in programming, machine learning, and data analysis—then apply it through real-world projects. \n\n\n- Work with cutting-edge tools. Learn using the same technologies driving innovation in our leading research Centre for Multimodal AI. \n\n\n- Study at a top-ranked university. Queen Mary is ranked in the Top 100 globally for Data Science and AI (QS World University Rankings by Subject 2025), underpinning it as a hub for AI excellence. \n\n\n- Launch a high-growth career. Graduate ready for in-demand roles like AI Specialist, Machine Learning Engineer, or Data Analyst. \n\n\n**What you'll study**\nThroughout the programme, you’ll build a strong foundation in programming, machine learning, and data analysis—supported by expert teaching and hands-on learning across essential AI topics. With carefully tailored content and dedicated support, we’ve created a learning experience that makes complex concepts accessible. \n\nYou’ll start by developing core coding skills through Python programming for AI—no prior experience required. Modules in data analytics and statistics will build your confidence in handling, visualising, and interpreting data, providing the analytical backbone for more advanced AI work. Alongside technical training, you’ll engage with the ethical and societal implications of AI, learning how to create responsible and trustworthy AI solutions. \n\nAs the programme progresses, you’ll delve into key areas such as machine learning, deep learning, and neural networks, gaining practical expertise in advanced models used in real-world applications like image and speech recognition. You’ll also explore how AI is transforming industries, helping you identify where your skills can have the most impact. \n\nThroughout the programme, regular lab sessions, tutorials, and applied exercises will ensure that theory is continually reinforced by practice. You’ll put your skills to the test through real-world use cases and a final MSc project applying AI to an area of your choosing, giving you the opportunity to specialise, innovate, and showcase your capabilities. ",
"atasFlag": false,
"contacts": [
{
"id": "ce5671c8-fa94-4e25-a2f6-25aee6581891",
"fax": null,
"email": "admissions@qmul.ac.uk",
"phone": "02033537121",
"title": "Clearing Hotline",
"isDefault": false,
"hasCourses": false,
"isClearing": true,
"clearingUrl": "https://www.qmul.ac.uk/clearing/",
"enquiryLink": {
"url": "https://qmul.tfaforms.net/292?",
"caption": "Register your interest in Clearing"
},
"availability": null,
"coursesCount": 0,
"isAdmissions": false,
"socialMediaPresences": []
}
],
"keywords": null,
"provider": {
"id": "856d62c2-800c-07ea-e751-1bbae4c76f4b",
"name": "Queen Mary University of London",
"ukprn": 10007775,
"address": {
"line1": "Admissions and Recruitment Office",
"line2": "Mile End Road",
"line3": "Tower Hamlets",
"line4": "London",
"region": {
"id": "27",
"caption": "South East England",
"mappedCaption": "South East England"
},
"country": {
"id": "101",
"caption": "England",
"mappedCaption": "England"
},
"latitude": 51.5246362372,
"postcode": "E1 4NS",
"longitude": -0.0407103567
},
"aliases": [],
"logoUrl": "https://d1l6hqpjksdq9d.cloudfront.net/Prod/856d62c2-800c-07ea-e751-1bbae4c76f4b",
"aliasName": "Queen Mary University of London",
"websiteUrl": "www.qmul.ac.uk",
"liveProvider": true,
"providerCode": null,
"providerSort": "Queen Mary University of London",
"providerUrls": [],
"imageLocation": "silver bronze silver-01.png",
"institutionCode": "Q50",
"providerShortName": "Queen Mary University of London",
"cukasInstitutionCode": null,
"requireAsciiDocuments": false,
"providerAbbreviatedName": "QMUL",
"aliasNameWithoutApostrophe": "Queen Mary University of London"
},
"subjects": [
{
"id": "1037",
"caption": "Computer science",
"mappedCaption": null
},
{
"id": "1038",
"caption": "Artificial intelligence",
"mappedCaption": null
}
],
"auditions": [],
"studyType": {
"id": "1",
"caption": "Taught",
"mappedCaption": null
},
"department": {
"id": "187d0e11-c90d-96a9-341b-90c4e61101db",
"name": "Electronic Engineering and Computer Science"
},
"hecosCodes": [],
"jacs3Codes": [],
"publishEnd": "9999-12-31T23:59:59.9999999",
"shortTitle": null,
"specialism": {
"primary": [],
"secondary": [],
"specialismStudyTypes": []
},
"visibleEnd": "2027-08-01T08:00:00",
"compositeId": "97311f79-1188-4c57-9d3e-3803671f5b09-2026",
"courseTitle": "Artificial Intelligence (Conversion)",
"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": "Artificial Intelligence (Conversion)",
"abbreviatedTitle": null,
"balanceIndicator": null,
"copyFormRequired": false,
"internalReference": null,
"currentlyInClearing": false,
"ucasTeacherTraining": false,
"degreeApprenticeship": false,
"qualifiedTeacherStatus": null,
"sponsorshipInformation": null,
"internationalInformation": null,
"courseTitleWithoutApostrophe": "Artificial Intelligence (Conversion)",
"additionalAuditionInformation": null,
"higherTechnicalQualifications": false
},
"version": 9,
"academicYearsInformation": {
"2025": 1,
"2026": 1
}
}
Normalized Data
{
"scrapedAt": "2026-03-27T09:35:13.091Z",
"scrapedPte": null,
"scrapedUrl": "https://www.qmul.ac.uk/postgraduate/taught/coursefinder/courses/artificial-intelligence-conversion-msc/?utm_medium=third_party_profile&utm_source=ucas&utm_campaign=qmul_pgt_enq&utm_content=ucas_pg_listings",
"scrapedToefl": null,
"scrapedAiUsed": false,
"scrapedFeeRaw": "Fees and fundingFull-time studyJanuary 2027 | 1 yearHome: £13,250Overseas: £35,250EU/EEA/Swiss studentsUnconditional depositHome: Not applicableOverseas: £2000Information about depositsQueen Mary alumni can get a £1000, 10% or 20% discount on their fees depending on the programme of study. Find out more about the Alumni Loyalty AwardsFunding There are a number of ways you can fund your postgraduate degree. Scholarships and bursaries Postgraduate loans (UK students) Country-specific scholarships for international students Our Advice and Counselling service offers specialist support on financial issues, which you can access as soon as you apply for a place at Queen Mary. Before you apply, you can access our funding guides and advice on managing your money: Advice for UK and EU students Advice for international students",
"feesConfidence": 0.6,
"normalizedFees": {
"home": null,
"currency": "GBP",
"international": 13250
},
"scrapedAiError": null,
"scrapedDuolingo": null,
"scrapedTemplate": null,
"scrapedCambridge": null,
"scrapedIeltsBand": 6,
"scrapedLangSource": "course_page",
"languageConfidence": 0.9,
"normalizedLanguage": {
"pte": null,
"ielts": {
"overall": 6.5,
"min_component": 6
},
"toefl": null,
"duolingo": null,
"cambridge": null
},
"scrapedLanguageRaw": "English language requirements\nThe English language requirements for our programmes are indicated by English bands, and therefore the specific test and score acceptable is based on the band assigned to the academic department within which your chosen course of study is administered. Note that for some academic departments there are programmes with non-standard English language requirements.\nThe English Language requirements for entry to postgraduate taught and research programmes in the School of Electronic Engineering and Computer Science falls within the following English band:\nBand 4: IELTS (Academic) minimum score 6.5 overall with 6.0 in each of Writing, Listening, Reading and Speaking\nWe accept a range of English tests and qualifications categorised in our English bands for you to demonstrate your level of English Language proficiency. See all accepted English tests that we deem equivalent to these IELTS scores.",
"scrapedIeltsOverall": 6.5,
"scrapedLangSourceUrl": null,
"scrapedTuitionFeeHome": null,
"scrapedTuitionFeeIntl": 13250,
"scrapedEntryRequirements": "Entry requirementsUK Degree requirements A 2:1 or above at undergraduate level in a degree not related to Computer Science, Software Engineering, Information Technology or Electronic Engineering. Find out more about how to apply for our postgraduate taught courses.InternationalCountry of QualificationSelect a countryAfghanistanAlbaniaAlgeriaAngolaArgentinaArmeniaAustraliaAustriaAzerbaijanBahamasBahrainBangladeshBarbadosBelarusBelgiumBelizeBeninBoliviaBosnia and HerzegovinaBotswanaBrazilBruneiBulgariaBurundiCambodiaCameroonCanadaChileChinaColombiaCongo, Dem. Rep. ofCongo, Rep. ofCosta RicaCroatiaCubaCyprusCzech RepublicDenmarkDominican RepublicEcuadorEgyptEl SalvadorEritreaEstoniaEswatiniEthiopiaFijiFinlandFranceGambiaGeorgiaGermanyGhanaGreeceGrenadaGuatemalaGuineaGuyanaHondurasHong KongHungaryIcelandIndiaIndonesiaIranIraqIrelandIsraelItalyCote D’ivoire (Ivory Coast)JamaicaJapanJordanKazakhstanKenyaKosovoKuwaitKyrgyzstanLaosLatviaLebanonLesothoLiberiaLibyaLiechtensteinLithuaniaLuxembour"
}