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Hysbysiad o Ddyfarnu Contract

Personalised Learning Bot

  • Cyhoeddwyd gyntaf: 04 Ebrill 2022
  • Wedi'i addasu ddiwethaf: 04 Ebrill 2022

Nid yw'r prynwr yn defnyddio'r wefan hon i weinyddu'r hysbysiad.

I gofnodi eich diddordeb neu gael gwybodaeth neu ddogfennau ychwanegol, darllenwch y cyfarwyddiadau yn Nhestun Llawn yr Hysbysiad. (NODER: Nid oes angen ymateb i Hysbysiadau Dyfarnu Contractau a Hysbysiadau Gwybodaeth Ymlaen Llaw fel arfer)

Cynnwys

Crynodeb

OCID:
ocds-kuma6s-098195
Cyhoeddwyd gan:
Cardiff and Vale College
ID Awudurdod:
AA0421
Dyddiad cyhoeddi:
04 Ebrill 2022
Dyddiad Cau:
-
Math o hysbysiad:
Hysbysiad o Ddyfarnu Contract
Mae ganddo ddogfennau:
Nac Ydi
Wedi SPD:
Nac Ydi
Mae ganddo gynllun lleihau carbon:
AMH

Crynodeb

Cardiff and Vale College (CAVC) is seeking to appoint a supplier as part of an innovative project to develop a personalised learning assistant (bot). The project will involve building a personalised learning bot that will drive adaptive and contextual Learning and Teaching, driven by advanced Artificial Intelligence (AI) and Deep Learning to help improve attainment in GCSE English and Maths. Anticipated core features and expectations include: • The teachers can be augmented with a self-learning Artificial Intelligence capable of creating a single knowledge from various learning sources while anticipating specific needs and personalising content. • Using machine learning and deep learning, the system will enable personalised self-service through a common canvas of proactive engagement that is led by contextual tasks and activities, this will include embedding nudges to increase motivation and engagement. • The learning assistant will reduce the marking workload of staff, improve feedback to students, drive individual capability-based learning (which has been proven to have a huge impact on learners’ achievement), and provide a personalised learning path for the individual. • The system will be driven by a voice ready, natural language typed exchange that will reduce the barrier to adoption while manifested within any other channel. • Whilst a teacher is marking a piece of work, the AI assistant will provide suggested content recommendation based on the marks and feedback of the teacher. The teacher will select the appropriate content for the learner to go alongside the marks and written or audio feedback to the learner. This content is pulled in from existing sources, like the VLE, and is personalised to the learners needs, but saves time for the teacher in having to search for the content. It will also provide richer feedback for the learner as generally feedback just contains text, rather than content to support the areas of weakness. • The AI assistant can then follow up with the learner after they have received the feedback to find out if the content was useful, to ensure that learning has taken place, and to offer further support. • The AI assistant can gamify and scan learners’ work for any dyslexia patterns before carrying out further diagnostics, which will notify the necessary support staff of requirements for further ALN support. This will reduce the likelihood of learners who require additional support remaining undiagnosed, resulting in a more proactive approach to ALN. • The system will be bilingual using a language translation module. The project is being supported through the Welsh Government Digital 2030 capital grant funding. The project needs to be delivered by May 2020. The College is inviting initial interested suppliers to register their expression of interest with a view to launching a formal invitation to tender process in January 2020. The maximum budget is £150,000, with a desirable requirement to exclude annual license fees following development of the product.

Testun llawn y rhybydd

HYSBYSIAD O DDYFARNU CONTRACT - CENEDLAETHOL

SUPPLIES

1 Manylion yr Awdurdod

1.1

Enw a Chyfeiriad yr Awdurdod


Cardiff and Vale College

Procurement, One Canal Parade, Dumballs Road,

Cardiff

CF10 5BF

UK

Alex Ley

+44 2920250352

tenders@cavc.ac.uk

www.cavc.ac.uk

2 Manylion y Contract

2.1

Teitl

Personalised Learning Bot

2.2

Disgrifiad o'r contract

Cardiff and Vale College (CAVC) is seeking to appoint a supplier as part of an innovative project to develop a personalised learning

assistant (bot).

The project will involve building a personalised learning bot that will drive adaptive and contextual Learning and Teaching, driven

by advanced Artificial Intelligence (AI) and Deep Learning to help improve attainment in GCSE English and Maths.

Anticipated core features and expectations include:

• The teachers can be augmented with a self-learning Artificial Intelligence capable of creating a single knowledge from various

learning sources while anticipating specific needs and personalising content.

• Using machine learning and deep learning, the system will enable personalised self-service through a common canvas of proactive

engagement that is led by contextual tasks and activities, this will include embedding nudges to increase motivation and

engagement.

• The learning assistant will reduce the marking workload of staff, improve feedback to students, drive individual capability-based

learning (which has been proven to have a huge impact on learners’ achievement), and provide a personalised learning path for the

individual.

• The system will be driven by a voice ready, natural language typed exchange that will reduce the barrier to adoption while

manifested within any other channel.

• Whilst a teacher is marking a piece of work, the AI assistant will provide suggested content recommendation based on the marks

and feedback of the teacher. The teacher will select the appropriate content for the learner to go alongside the marks and written or

audio feedback to the learner. This content is pulled in from existing sources, like the VLE, and is personalised to the learners needs,

but saves time for the teacher in having to search for the content. It will also provide richer feedback for the learner as generally

feedback just contains text, rather than content to support the areas of weakness.

• The AI assistant can then follow up with the learner after they have received the feedback to find out if the content was useful, to

ensure that learning has taken place, and to offer further support.

• The AI assistant can gamify and scan learners’ work for any dyslexia patterns before carrying out further diagnostics, which will

notify the necessary support staff of requirements for further ALN support. This will reduce the likelihood of learners who require

additional support remaining undiagnosed, resulting in a more proactive approach to ALN.

• The system will be bilingual using a language translation module.

The project is being supported through the Welsh Government Digital 2030 capital grant funding. The project needs to be delivered

by May 2020.

The College is inviting initial interested suppliers to register their expression of interest with a view to launching a formal invitation

to tender process in January 2020. The maximum budget is £150,000, with a desirable requirement to exclude annual license fees

following development of the product.

2.3

Cod a Dosbarthiad yr Hysbysiad

72000000 IT services: consulting, software development, Internet and support
72200000 Software programming and consultancy services
72210000 Programming services of packaged software products
72211000 Programming services of systems and user software
72212000 Programming services of application software
72220000 Systems and technical consultancy services
72240000 Systems analysis and programming services
72250000 System and support services
72260000 Software-related services
1022 Cardiff and Vale of Glamorgan

2.4

Amcangyfrif o Gyfanswm Gwerth

3 Gweithdrefn

3.1

Math o Weithdrefn

Un cam

4 Dyfarnu Contract

4.1

Cynigwyr Llwyddiannus

4.1.1

Enw a Chyfeiriad y cyflenwr, contractwr neu ddarparwr gwasanaeth llwyddiannus





We Build Bots

Tramshed Tech, Pendyris Street,

Cardiff

CF116BH

UK




wbb.ai

5 Gwybodaeth Arall

5.1

Rhif cyfeirnod a roddwyd i'r hysbysiad gan yr awdurdod contractio

CAVC-IT-19-021

5.2

Dyddiad Dyfarnu'r Contract

  24 - 02 - 2020

5.3

Nifer y tendrau a dderbyniwyd

2

5.4

Gwybodaeth Arall

(WA Ref:120218)

5.5

Dogfennaeth Ychwanegol

Dd/g

5.6

Dyddiad cyhoeddi'r hysbysiad hwn:

  04 - 04 - 2022

Codio

Categorïau nwyddau

ID Teitl Prif gategori
72240000 Gwasanaethau dadansoddi a rhaglenni systemau Gwasanaethu rhaglennu meddalwedd ac ymgynghori ar feddalwedd
72210000 Gwasanaethau rhaglennu cynhyrchion meddalwedd mewn pecyn Gwasanaethu rhaglennu meddalwedd ac ymgynghori ar feddalwedd
72212000 Gwasanaethau rhaglennu meddalwedd rhaglenni Gwasanaethau rhaglennu cynhyrchion meddalwedd mewn pecyn
72211000 Gwasanaethau rhaglennu systemau a meddalwedd defnyddwyr Gwasanaethau rhaglennu cynhyrchion meddalwedd mewn pecyn
72260000 Gwasanaethau sy’n gysylltiedig â meddalwedd Gwasanaethu rhaglennu meddalwedd ac ymgynghori ar feddalwedd
72250000 Gwasanaethau system a chymorth Gwasanaethu rhaglennu meddalwedd ac ymgynghori ar feddalwedd
72000000 Gwasanaethau TG: ymgynghori, datblygu meddalwedd, y Rhyngrwyd a chymorth Gwasanaethau Cyfrifiadurol a Chysylltiedig
72220000 Gwasanaethau ymgynghori ar systemau a materion technegol Gwasanaethu rhaglennu meddalwedd ac ymgynghori ar feddalwedd
72200000 Gwasanaethu rhaglennu meddalwedd ac ymgynghori ar feddalwedd Gwasanaethau TG: ymgynghori, datblygu meddalwedd, y Rhyngrwyd a chymorth

Lleoliadau Dosbarthu

ID Disgrifiad
1022 Caerdydd a Bro Morgannwg

Cyfyngiadau Rhanbarthol ar y Rhybuddion

Mae’r prynwr wedi cyfyngu’r rhybuddion ar gyfer yr hysbysiad hwn i gyflenwyr yn y rhanbarthau canlynol.

ID Disgrifiad
Nid oes cyfyngiadau ar y rhybuddion ar gyfer yr hysbysiad hwn.

Teulu dogfennau

Manylion hysbysiad
Dyddiad cyhoeddi:
11 Rhagfyr 2019
Math o hysbysiad:
Hysbysiad Tybiannol
Enw Awdurdod:
Cardiff and Vale College
Dyddiad cyhoeddi:
23 Ionawr 2020
Dyddiad Cau:
10 Chwefror 2020 00:00
Math o hysbysiad:
Hysbysiad o Gontract
Enw Awdurdod:
Cardiff and Vale College
Dyddiad cyhoeddi:
04 Ebrill 2022
Math o hysbysiad:
Hysbysiad o Ddyfarnu Contract
Enw Awdurdod:
Cardiff and Vale College

Ynglŷn â'r prynwr

Prif gyswllt:
tenders@cavc.ac.uk
Cyswllt gweinyddol:
N/a
Cyswllt technegol:
N/a
Cyswllt arall:
N/a

Gwybodaeth bellach

Dyddiad Manylion
Nid oes unrhyw wybodaeth bellach wedi'i lanlwytho.

0800 222 9004

Mae'r llinellau ar agor rhwng 8:30am a 5pm o ddydd Llun i ddydd Gwener.

Rydym yn croesawu galwadau'n Gymraeg.

We welcome calls in Welsh.