Embedded Computing and Machine Learning
Basic Information
- Course ID
1cb20850-8fc9-43be-80ea-1b4e07839d4f- Option ID
8362068c-e909-4808-b53c-a42176526ad7- Provider
- Anglia Ruskin University
- Type
- postgraduate
- Academic Year
- 2026
- Source
- ucas
- Created
- 2/22/2026, 6:12:50 AM
- Updated
- 3/27/2026, 10:56:23 AM
Other Options for this Course
No other options
Listing Data (Raw)
{
"id": "8362068c-e909-4808-b53c-a42176526ad7",
"duration": {
"quantity": 3,
"durationType": {
"id": "4",
"caption": "Years",
"mappedCaption": null
}
},
"features": {
"accelerated": false
},
"location": null,
"startDate": {
"date": "14/09/2026",
"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": "1cb20850-8fc9-43be-80ea-1b4e07839d4f",
"cpdFlag": false,
"options": [
{
"id": "8362068c-e909-4808-b53c-a42176526ad7",
"status": {
"published": true,
"availableForApplication": true,
"applicationStatusSummary": "Please speak to the provider to make an application",
"acceptingApplicationsMessage": null,
"notAcceptingApplicationsMessage": null
},
"cycleId": null,
"modules": "Core modules\n\n Embedded Systems Essentials with Arm\n IoT and Machine Learning at the Edge on Arm\n Machine Learning Techniques\n Prompt Engineering and Generative AI\n Postgraduate Major Project",
"deadline": null,
"duration": {
"quantity": 3,
"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%7C52.2038248553,0.1348075502&key=AIzaSyDAC7vZWEFNPF6GFUZvXfO5PRDxdEC0Gc0&signature=PKleQ9vPhuws8ckaJ4ZPMFGcSTs=",
"googleMapsParams": "52.2038248553,0.1348075502",
"locationCategory": null,
"geoLocationString": null
},
"startDate": {
"date": "14/09/2026",
"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.aru.ac.uk/",
"assessmentMethods": "We'll assess you in several ways including time-constrained assessments, coursework assignments, presentations and a major project. Our dissertation project and module case studies assess your ability to analyse situations, identify key issues, select, synthesise and apply techniques and skills from different modules, and evaluate the appropriateness of solutions when compared to industrial practice.\n\nThe dissertation artefact will be based on a real-world scenario.",
"entryRequirements": "Applicants will normally hold a first or second class first degree. While a prior degree in a subject containing computing or electronics is welcome, the course is open to applicants with an electronics / computing background and a passion for technology whose first degrees may be in other subjects.\n\nA Foundation degree in computing or electronics with an appropriate period of industrial experience may also be considered. Each applicant for the Master’s programme who possesses a Foundation degree will be expected to attend an interview where an assessment will be made to determine the standard of their industrial experience and suitability for the course.",
"internalReference": null,
"providerCourseUrl": "https://www.aru.ac.uk/study/postgraduate/embedded-computing-and-machine-learning",
"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": 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": "Embedded Computing and Machine Learning. Anglia Ruskin University. Computers",
"summary": "Advance your career in embedded systems and artificial intelligence (AI) with our 100% online Master’s degree in Embedded Computing and Machine Learning.\n\nEnhance your understanding of embedded systems and artificial intelligence (AI) with our Master’s degree in Embedded Computing and Machine Learning. Study part-time by distance learning and develop the skills you need to harness the power of machine learning applications in various industrial contexts.\n\nOur Embedded Computing and Machine Learning MSc will give you the opportunity to explore the industry trends where big chip designing and manufacturing multinational companies are emphasising embedded and portable devices optimised for machine learning at the edge.\n\nDuring the first two modules, you'll gain skills to leverage Arm technologies and develop intelligent, distributed, heterogeneous, and secure solutions. You'll also expand your knowledge and skills in advanced topics of machine learning and AI, such as deep learning, generative AI and their applications to prompt engineering.\n\nYou'll crown your work on this course with a final year project which provides you with a platform to showcase the acquired skills and knowledge in an application domain of interest.\n\nEmbedded computing, especially when paired with machine learning, promises to provide the tools to enhance technology, business models and decision-making across a range of sectors, from industrial automation, quality control, manufacturing, transport, banking and cyber security to health and social care.\n\nBy working on real-life case studies with industry tools, you'll become proficient in embedded systems tools and techniques for machine learning on the edge applications for industry and apply your hardware and software skills in a major project utilizing advanced machine learning techniques.\n\nIn addition to the tuition fees, you will also need to purchase some hardware, such as ST DISCO-L475E, and sensors, which we do not expect to exceed £100. You will also need access to a fairly modern laptop or personal computer which runs Microsoft Windows 10 or later. Furthermore, admin rights are required to install relevant software packages.\n\nYou may also be interested in our online Embedded Computing on Arm PG Cert, or these modules may be taken on a module-by-module basis. Contact us for further details.",
"atasFlag": false,
"contacts": [
{
"id": "ad1d194a-d469-f0c8-fc3a-375ea2fe014c",
"fax": "",
"email": "answers@aru.ac.uk",
"phone": "01245 68 68 68",
"title": "Anglia Ruskin University",
"isDefault": false,
"hasCourses": false,
"isClearing": false,
"clearingUrl": null,
"enquiryLink": {
"url": null,
"caption": null
},
"availability": null,
"coursesCount": 0,
"isAdmissions": false,
"socialMediaPresences": []
},
{
"id": "eed1d671-4355-4444-b4cd-42231659cb7c",
"fax": null,
"email": "admissions@aru.ac.uk",
"phone": "01245 686868",
"title": "Admissions Office",
"isDefault": false,
"hasCourses": false,
"isClearing": true,
"clearingUrl": "http://aru.ac.uk/clearing",
"enquiryLink": {
"url": null,
"caption": null
},
"availability": null,
"coursesCount": 0,
"isAdmissions": false,
"socialMediaPresences": [
{
"id": "fb",
"url": "https://www.facebook.com/angliaruskin",
"caption": "Facebook"
},
{
"id": "ig",
"url": "https://instagram.com/angliaruskin/",
"caption": "Instagram"
},
{
"id": "li",
"url": "https://www.linkedin.com/school/angliaruskinuniversity",
"caption": "LinkedIn"
},
{
"id": "tw",
"url": "https://twitter.com/angliaruskin",
"caption": "Twitter"
},
{
"id": "yt",
"url": "https://www.youtube.com/user/UniAngliaRuskin",
"caption": "Youtube"
}
]
}
],
"keywords": null,
"provider": {
"id": "d890f3a3-4c8e-f241-747b-fa2f1b5f87db",
"name": "Anglia Ruskin University",
"ukprn": 10000291,
"address": {
"line1": "East Road",
"line2": "",
"line3": "",
"line4": "Cambridge",
"region": {
"id": "9",
"caption": "East Anglia",
"mappedCaption": "East of England"
},
"country": {
"id": "101",
"caption": "England",
"mappedCaption": "England"
},
"latitude": 52.2038248553,
"postcode": "CB1 1PT",
"longitude": 0.1348075502
},
"aliases": [
"ARU"
],
"logoUrl": "https://d1l6hqpjksdq9d.cloudfront.net/Prod/d890f3a3-4c8e-f241-747b-fa2f1b5f87db",
"aliasName": "Anglia Ruskin University (ARU)",
"websiteUrl": "www.aru.ac.uk",
"liveProvider": true,
"providerCode": null,
"providerSort": "Anglia Ruskin University",
"providerUrls": [],
"imageLocation": "gold gold silver-01.png",
"institutionCode": "A60",
"providerShortName": "Anglia Ruskin University",
"cukasInstitutionCode": null,
"requireAsciiDocuments": false,
"providerAbbreviatedName": "ARU",
"aliasNameWithoutApostrophe": "Anglia Ruskin University (ARU)"
},
"subjects": [
{
"id": "1034",
"caption": "Computers",
"mappedCaption": null
}
],
"auditions": [],
"studyType": {
"id": "1",
"caption": "Taught",
"mappedCaption": null
},
"department": {
"id": "8a80f06f-e5f2-494c-8d3a-dc997bb638c4",
"name": "School of Computing and Information Sciences"
},
"hecosCodes": [],
"jacs3Codes": [],
"publishEnd": "9999-12-31T23:59:59.9999999",
"shortTitle": null,
"specialism": {
"primary": [],
"secondary": [],
"specialismStudyTypes": []
},
"visibleEnd": "2027-08-01T08:00:00",
"compositeId": "1cb20850-8fc9-43be-80ea-1b4e07839d4f-2026",
"courseTitle": "Embedded Computing and Machine 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": [
{
"id": "68",
"caption": "Anglia Ruskin University",
"mappedCaption": null
}
],
"applicationCode": null,
"courseTitleSort": "Embedded Computing and Machine Learning",
"abbreviatedTitle": null,
"balanceIndicator": null,
"copyFormRequired": false,
"internalReference": null,
"currentlyInClearing": false,
"ucasTeacherTraining": false,
"degreeApprenticeship": false,
"qualifiedTeacherStatus": null,
"sponsorshipInformation": null,
"internationalInformation": null,
"courseTitleWithoutApostrophe": "Embedded Computing and Machine Learning",
"additionalAuditionInformation": null,
"higherTechnicalQualifications": false
},
"version": 7,
"academicYearsInformation": {
"2025": 1,
"2026": 1
}
}
Normalized Data
{
"scrapedAt": "2026-03-27T10:56:20.868Z",
"scrapedPte": null,
"scrapedUrl": "https://www.aru.ac.uk/study/postgraduate/embedded-computing-and-machine-learning",
"scrapedToefl": null,
"scrapedAiUsed": false,
"scrapedFeeRaw": "In addition to the tuition fees, you will also need to purchase some hardware, such as ST DISCO-L475E, and sensors, which we do not expect to exceed £100.",
"feesConfidence": 0,
"normalizedFees": {
"home": null,
"currency": null,
"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": null,
"scrapedIeltsOverall": null,
"scrapedLangSourceUrl": null,
"scrapedTuitionFeeHome": null,
"scrapedTuitionFeeIntl": null,
"scrapedEntryRequirements": "Entry Requirements"
}