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Details of Grant 

EPSRC Reference: EP/Y034813/1
Title: EPSRC Centre for Doctoral Training in Statistics and Machine Learning
Principal Investigator: Filippi, Dr SL
Other Investigators:
Holmes, Professor C Rousseau, Professor J Rebeschini, Professor P
Gandy, Professor A Sanna Passino, Dr F Cohen, Dr EAK
Cucuringu, Professor M Pike Burke, Dr C
Researcher Co-Investigators:
Project Partners:
3C Capital Partners Aarhus University Addionics Limited
AIMS Alpine Intuition Sarl American Express
Arctic Wolf Networks ASOS Plc Australian National University (ANU)
AWE BASF BBC
Bocconi University Cancer Research UK Convergence Science CausaLens
Centre National de la Recherche Scient. Columbia University Criteo Technology
Deutsche Bank AG (UK) Duke University dunnhumby Limited
Ecole Polytechnique Elemental Power Ltd ETH Zurich
Free (VU) University of Amsterdam G-Research GlaxoSmithKline plc (GSK)
Harvard University IBM UK Ltd In2science UK
Instituto de Medicina Tropical Jaguar Land Rover Limited Johns Hopkins University
JP Morgan Chase Kaiju Capital Management Limited King Abdullah University of Sci and Tech
Korea Advanced Institute of Sci & Tech Leibniz Institute for Prevention Researc Los Alamos National Laboratory
LUISS Guido Carli University M D Anderson Cancer Center Martingale Foundation
McGill University MediaTek Meta
Microsoft Monash University NewDay Cards Ltd
Novartis Pharmaceutical Corporation Novo Nordisk A/S Office for National Statistics
Optima Partners PANGEA-HIV consortium Paris Dauphine University - PSL
Pennsylvania State University Qube Research & Technologies Queensland University of Technology
Rakai Health Sciences Program Sandia National Laboratory Securonix
Shell Simon Fraser University Spectra Analytics
Spotify UK Stanford University Swiss Federal Inst of Technology (EPFL)
UK Atomic Energy Authority University College Dublin University of Bologna
University of California Davis University of Chicago University of Melbourne
University of Minnesota University of Padua (Padova) University of Toronto
University of Western Australia
Department: Mathematics
Organisation: Imperial College London
Scheme: Centre for Doctoral Training
Starts: 01 April 2024 Ends: 30 September 2032 Value (£): 7,873,682
EPSRC Research Topic Classifications:
Statistics & Appl. Probability
EPSRC Industrial Sector Classifications:
Chemicals Financial Services
Creative Industries Pharmaceuticals and Biotechnology
Energy Retail
Information Technologies Transport Systems and Vehicles
R&D
Related Grants:
Panel History:
Panel DatePanel NameOutcome
20 Nov 2023 EPSRC Centres for Doctoral Training Interview Panel J November 2023 Announced
Summary on Grant Application Form
The EPSRC Centre for Doctoral Training in Statistics and Machine Learning (StatML) will address the EPSRC research priority of the 'physical and mathematical sciences powerhouse' through an innovative cohort-based training program. StatML harnesses the combined strengths of Imperial and Oxford, two world-leading institutions in statistics and machine learning, in collaboration with a broad spectrum of industry partners, to nurture the next generation of leaders in this field. Our students will be at the forefront of advancing the core methodologies of data science and AI, crucial for unlocking the value inherent in data to benefit industry and society. They will be equipped with advanced research, technical, and practical skills, enabling them to make tangible real-world impacts. Our students will be ethical and responsible innovators, championing reproducible research and open science. Collaborating with students, charities and equality experts, StatML will also pioneer a comprehensive strategy to promote inclusivity, attract individuals from diverse backgrounds and eliminate biases. This will help diversify the UK's future statistics and machine learning workforce, essential for ensuring data science is used for public good.

Data science and AI are now part of our everyday lives, transforming all sectors of the economy. To future-proof the UK's prosperity and security, it is essential to develop new methodology, specifically tailored to meet the big societal challenges of the future. The techniques underpinning such methods are founded in statistics and machine learning. Through close collaboration with a broad range of industry partners, our cohort-based training will support the UK in producing a critical mass of world-leading researchers with expertise in developing cutting-edge, impactful statistical and machine learning methodology and theory. It is well documented in government and learned society reports that the UK economy has an urgent need for these people. The significant level of industry support for our proposal also highlights the necessity of filling this gap in the UK data science ecosystem.

StatML will learn from and build upon our previous successful experiences in cohort training of doctoral students (our existing StatML CDT funded in 2018, as well as other CDTs at Imperial and Oxford). Our students will continue to produce impactful, internationally leading research in statistics and machine learning (as evidenced by our students' impressive publication record and our world-leading research environment, as rated by the REF 2021 evaluation), while complementing this with a bespoke cohort-based Advanced Training program in Statistics and Machine Learning (StatML-AT). StatML-AT has been developed from our experience and in partnership with industry. It will be responsive to emerging technologies and equip our students with the practical skills required to transform how data is used. It will be delivered by our outstanding academics from both institutions alongside with industry leaders to ensure that students receive training in cutting edge technologies, along with the latest ideas in ethics, responsible innovation, sustainability and entrepreneurship. This will be complemented by industrial and academic placements to allow the students to develop their own international network and produce high-impact research.

Together, StatML and its partners will train 90+ students over 5 cohorts. More than half of these will be funded from external sources, including 25+ by industry, representing excellent value for money. Our diverse cohorts will benefit from a unique and responsive training program combining academic excellence, industry engagement, and interdisciplinary culture. This will make StatML a vibrant research environment inspiring the next methodological advancements to transform the use of data and AI across industry and society.
Key Findings
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Potential use in non-academic contexts
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Impacts
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Summary
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Further Information:  
Organisation Website: http://www.imperial.ac.uk