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Dr
Daniel Stamate
Assoc.
Professor / SL Data Science Co-Director Data Science and AI
MSc Director Data Science & Soft Computing Lab Computing
Department Goldsmiths, University of
London d.stamate@gold.ac.uk
Vice-President
British Data Science Society
Hon.
Assoc. Professor / SL Machine Learning School of Health
Sciences University of Manchester homepage
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Profile
and activity
Overview
Dr
Stamate's got his PhD in Computer Science from University of
Paris-Sud – currently Paris-Saclay
University, and his current research is in the core Data
Science areas of AI - Machine Learning, Deep Learning and
Statistical Learning, with applications in Health and also in
industry. He leads the Data
Science & Soft Computing Lab in London where he develops
AI based research in multiple collaborations with research teams
in several centres in UK, EU and USA, including King's College
London, University of Manchester, Oxford University, Imperial
College London, UCL, Glasgow University, Birkbeck University of
London, Yale University (USA), Maastricht University
(Netherlands), University of Iasi (Romania), Frankfurt University
of Applied Sciences (Germany). In London Dr Stamate initiated and
led the developments of the Data Science MSc at University of
London (Goldsmiths College), programme which he currently
co-leads. He now serves as Vice-President of the British Data
Science Society, and has served in several AI and Data Science
conference programme commitees, journal editorial boards, grant
evaluator, grant bids prioritisation panels, PhD supervisions in
UK and abroad, and PhD examinarship panels.
Awards
Best
Quality/Novelty Research Paper Award 2021 at the International
Conference on Engineering Applications of Neural
Networks
Honorary Assoc Prof / SL at The University of
Manchester, since 2018
Marie
Curie Fellow, 2000
Research
interests and collaborations
Daniel
Stamate's current research is in the broader areas of Data
Science, Statistical Learning, AI – Machine Learning, Deep
Learning, NLP, with particular interests in:
Predicting
risk of dementia with AI-ML and Statistical Learning using
routine primary care records – research in collaboration
with the Division of Population Health, Health Services Research
& Primary Care, School of Health Sciences at the University
of Manchester
Machine
Learning in Computational Psychiatry in particular predicting
risk of Psychosis – research in collaboration with the
Institute of Psychiatry at King’s College London,
Maastricht University, Yale University
Machine
Learning approaches to diagnosing Alzheimer's type dementia and
to biomarker discovery – in collaboration with King's
College London, Oxford University, UCL and centres in the
EMIF-AD consortium
Soft
Computing, Evolutionary/ Genetic Algorithms and Applications –
collaborations with Frankfurt University of Applied Sciences,
and University of Iasi
He
has had various research collaborations with industry, including
Transport for London, Sherwin-Williams, Hitachi Europe,
Santander
Research
Publications
Research
Grants:
◆
January
2023- December 2025, Measurement of playful parenting at scale
using machine learning, work package part of Transforming systems
to take playful parenting and learning through play to scale
grant, in collaboration with Oxford (lead institution),
Stellenbosch University and partners, funded
by LEGO Foundation, total value £11m.
Machine Learning work package value £400k.
Work package Co-lead
with
Prof Mark Tomlinson and Dr Caspar Addyman of Stellenbosch.
◆
January
2022- December 2024, Behavioural science to boost sustainable
travel KTP - Innovate UK grant in collaboration with Prof
Jonny Freeman (PI) and Hitachi Europe, value £191k.
Co-I.
◆
December
2022- April 2023, TENSOR AKT – Innovate UK grant in
collaboration with Sherwin-Williams, AI research investigating
innovative Artificial Neural Network approaches for predicting
spectral curves with industry applications, value £38k.
PI.
◆
September
2020-September 2022, CHROMA KTP – Innovate UK grant in
collaboration with Sherwin-Williams, AI research investigating
innovative Machine Learning approaches for predicting spectral
curves with industry applications, value £208k.
PI.
◆
July
2018 – June 2022, Predicting risk of dementia using routine
primary care records - CPRD, Alzheimer’s Research UK grant,
investigating Machine Learning and Statistical prediction
modelling for estimating risk of dementia. Study covered on
BBC
News, value
£240k,
in
collaboration with Prof David Reeves (PI) and his team at the
University of Manchester. Chief
Investigator at
Goldsmiths, University of London, value £110k,
leading on the Machine Learning developments in this project.
◆
July
2019- July 2020, Automated measurement of responsive caregiving at
scale using machine learning, Royal Academy of Engineering grant,
value £20k,
in collaboration with Caspar Addyman (PI). Co-I.
◆
September
2017-September 2019, Data Science Research and Postgraduate
Mobility grant, EU Erasmus+ funded, 54k
Euro. PI.
◆
April
2014- April 2018, Prediction Modelling Approaches to Data-driven
Computational Psychiatry project funded by Saudi Government, value
£175k,
supporting PhD work of Wajdi Alghamdi at Goldsmiths, University of
London. PI.
◆
April
2000- March 2002, Integrating imperfect information from multiple
web sources, Marie Curie individual grant, 108k
Euro, Birkbeck,
University of London. PI.
Recent
roles
Vice
President of British
Data Science Society (formerly British Classification
Society), since 2023
Chairing
of various Machine Learning, Neural Networks and Deep Learning
sessions at the International Conferences on Artificial
Intelligence Applications and Innovations (AIAI), of Engineering
Applications of Neural Networks (EANN) and International
Conference on Artificial Neural Networks ICANN, 2022-2024
Chair
Operationalising
Data Science track , Moderator of the panel on Data Science
Techniques that Improve Data Access, Quality, Management and
Analytics, FIMA
Europe - The World’s Leading Data Event for Top
Investment Banks and Asset Managers, London 2018
Co-organiser
Special
Session on Machine
Learning Applications in Psychiatry
at
the 16th IEEE International Conference on Machine Learning and
Applications (17th
IEEE
ICMLA), Orlando, 2018
Co-organiser
Special Session on Data
Science in Computational Psychiatry and Psychiatric Research
at
the IEEE Data Science and Advanced Analytics International
Conference (5th
IEEE
DSAA), Turin, 2018
Chair
Empowering Big Decisions with Big Data and AI Session at the
London
Business Conference,
Goldsmiths,
University of London, 2018
Co-organiser
Special Session on
Machine
Learning Applications in Psychiatric Research at
the 16th IEEE International Conference on Machine Learning and
Applications (16th
IEEE
ICMLA), Cancun, 2017
Editorial
Board Member Journal
of Multiple-Valued Logic and Soft Computing
Recent
Conference Program Committees
21th IFIP International
Conference on Artificial Intelligence Applications and
Innovations, AIAI 2025 26th International Conference on
Engineering Applications and Advances of Artificial Intelligence,
EAAAI 2025 20th IFIP International Conference on Artificial
Intelligence Applications and Innovations, AIAI 2024 25rd
International Conference on Engineering Applications of Neural
Networks, EANN 2024 32nd International Conference on Artificial
Neural Networks, ICANN 2023 19th IFIP International Conference
on Artificial Intelligence Applications and Innovations, AIAI
2023 24rd International Conference on Engineering Applications
of Neural Networks, EANN 2023 18th IFIP International
Conference on Artificial Intelligence Applications and
Innovations, AIAI 2022 23rd International Conference on
Engineering Applications of Neural Networks, EANN 2022 17th
IEEE International Conference on Machine Learning and
Applications, ICMLA 2018 5th IEEE International Conference on
Data Science and Advanced Analytics, 2018 14th International
Conference on Artificial Intelligence Applications and
Innovations, AIAI 2018 20th International Symposium on
Symbolic and Numeric Algorithms for Scientific Computing, 2018
16th International Conference of Information Technologies and
Mathematical Modelling, 2017 17th International Conference on
Computational Science and Applications - Big Data Warehousing and
Analytics session, 2017 10th International Conference on the
Quality of Information and Communications Technology, 2016 EVOLVE
Conference: Evolving from Natural Computing and Data Mining,
2015 7th Computer Science and Electronic Engineering
Conference, 2015
Recent
talks
Predicting
risk of dementia with machine learning and statistical learning:
results on the CPRD and ELSA cohorts. In NIHR Statistics
Group's Event: Analysis of classification problems using machine
learning and statistical methodologies in routine data,
Southampton, 2023
Predicting
Risk of Dementia with Survival Machine Learning and Statistical
Methods: Results on the English Longitudinal Study of Ageing
(ELSA) Cohort. Institute of Psychiatry, Psychology &
Neuroscience, NIHR Maudsley Biomedical Centre, London 2022
On
some Classification and Survival Machine Learning Approaches to
Dementia Risk Prediction, Diagnosis and Biomarker Discovery,
British Classification Society, Colchester, 2022
AI
industry expert speaker on
Data Science and Machine Learning at
FIMA
Europe - The
World’s Leading Data Event for Top Investment Banks and
Asset Managers, London 2017-2021
PhD
supervision
Current
students
Mihai
Ermaliuc, part time PhD candidate in Computer Science, University
of London - Goldsmiths. Working on Generative Adversarial
Networks and Deep Learning algorithms and their applications in
Health for predicting risk of Dementia on CPRD, started 2018, 1st
supervisor.
Mohamed
Saber, part time PhD candidate in Computer Science, University of
London - Goldsmiths. Working in Financial Fraud Detection with
Machine Learning, started 2018, 1st
supervisor.
Henry
Musto, part time PhD candidate in Computer Science, University of
London - Goldsmiths. Working on predicting Dementia with Machine
Learning and Statistical Learning approaches, started 2020, 1st
supervisor.
Completed
Rapheal
Olaniyan,
PhD in Computer Science, thesis: Applied Natural Language
Processing and Machine Learning in Algorithmic Trading,
University of London - Goldsmiths, completed December 2021, 1st
supervisor.
Wajdi
Alghamdi,
PhD in Computer Science, thesis: Predictive Modelling Approach to
Data-driven Computational Psychiatry, University of London -
Goldsmiths, completed June 2018, 1st
supervisor.
Majed
Alsanea,
PhD in Computer Science, thesis: Factors Affecting the Adoption
of Cloud Computing in Saudi Arabia’s Government Sector,
University of London - Goldsmiths, completed 2015, 2nd supervisor
(1st supervisor Dr Jenn Barth).
Yann
Loyer, PhD in Computer Science, thesis (French): Hypotheses
versus programmes logiques : une approche semantique de
l'integration d'information en logique multi-valuee, University
of Paris-Sud, France, completed 2001, co-advisor (1st supervisor
Prof Nicolas Spyratos).
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