EPSRC Centre for Doctoral Training in Computational Statistics and Data Science: COMPASS
Lead Research Organisation:
University of Bristol
Department Name: Mathematics
Abstract
The COMPASS Centre for Doctoral Training will provide high-calibre cohort-based training for over 55 PhD students in computational statistics and data science. The current disruptive data revolution has revealed new ways of using data to enhance productivity and improve citizens' well-being, and created responsible, effective and transformative ideas that were undreamt of only a few years ago. It is no surprise that the revolution has not only created new classes of data-centred companies, but also whole new data science groupings in many existing organizations. Big and complex data are now ubiquitous and fundamental for research and development, including in our integrated CDT academic partner disciplines of economics, education, engineering, medicine, computer, geographical, earth and life sciences. Similarly, for our external partners: businesses such as Adarga, CheckRisk, EDF, GSK, SCIEX, Shell and Trainline; and crucial government agencies such as the Atomic Weapons Establishment, GCHQ, Office for National Statistics and the UK Space Agency.
Exploiting the full potential of big and complex data requires advanced statistical methods and computation working together, hence the need for computational statistics and data science. Bristol has long-established world-leading experience in computational statistics, a broad base of already engaged and co-creative statistical academic and dynamic external partners, excellent facilities, and extensive experience of running successful CDTs under the auspices of the Bristol Doctoral College.
The societal, scientific and economic value of unlocking the potential in data has spurred demand for people trained to PhD level in computational statistics and data science: demand dramatically exceeds supply, internationally and in the UK. A COMPASS PhD will be highly valued for its focus on advanced technical, interdisciplinary and professional training, at a time where there are a large and increasing numbers of appealing employment opportunities.
COMPASS will recruit the best students from numerate backgrounds and provide multimodal training within and across cohorts. This will include an assessed programme of taught coursework spanning a broad range of core and crossover statistical topics, reflecting strong historical and future links to our academic partner disciplines, such as causality in medical statistics, multilevel modelling in education or Bayesian modelling in genetics.
Modern statistical practice typically involves interdisciplinary teams. Cohort and cross-cohort activities are essential for modern doctoral training and permeate the design of COMPASS. We will adopt tried and trusted cohort training methods, such as group work, group and partner projects, Masterclasses, and innovative cross-cohort activities such as COMPASS policy workshops, statistical consultancy teams and rapid response teams (small teams, formed at short notice, with staff from partners, to address important and urgent problems in their business, a co-creation idea from the Office for National Statistics).
Our academic and external partners will be fully integrated in our training programme and its delivery and are committed to providing significant personnel and resources to support COMPASS throughout its eight-year life. Through alignment with the UK Academy of Postgraduate Training in Statistics, the University of Bristol's Jean Golding Institute for Data Intensive Research, the national Alan Turing Institute and the Heilbronn Institute for Mathematical Research Institute, COMPASS will provide a diverse, fulfilling and outstanding doctoral student experience.
COMPASS will be an attractive focal point for the best students, preparing them for rewarding, impactful careers, and enabling them to make crucial contributions to the health, productivity, connectivity and resilience of the UK and its citizens.
Exploiting the full potential of big and complex data requires advanced statistical methods and computation working together, hence the need for computational statistics and data science. Bristol has long-established world-leading experience in computational statistics, a broad base of already engaged and co-creative statistical academic and dynamic external partners, excellent facilities, and extensive experience of running successful CDTs under the auspices of the Bristol Doctoral College.
The societal, scientific and economic value of unlocking the potential in data has spurred demand for people trained to PhD level in computational statistics and data science: demand dramatically exceeds supply, internationally and in the UK. A COMPASS PhD will be highly valued for its focus on advanced technical, interdisciplinary and professional training, at a time where there are a large and increasing numbers of appealing employment opportunities.
COMPASS will recruit the best students from numerate backgrounds and provide multimodal training within and across cohorts. This will include an assessed programme of taught coursework spanning a broad range of core and crossover statistical topics, reflecting strong historical and future links to our academic partner disciplines, such as causality in medical statistics, multilevel modelling in education or Bayesian modelling in genetics.
Modern statistical practice typically involves interdisciplinary teams. Cohort and cross-cohort activities are essential for modern doctoral training and permeate the design of COMPASS. We will adopt tried and trusted cohort training methods, such as group work, group and partner projects, Masterclasses, and innovative cross-cohort activities such as COMPASS policy workshops, statistical consultancy teams and rapid response teams (small teams, formed at short notice, with staff from partners, to address important and urgent problems in their business, a co-creation idea from the Office for National Statistics).
Our academic and external partners will be fully integrated in our training programme and its delivery and are committed to providing significant personnel and resources to support COMPASS throughout its eight-year life. Through alignment with the UK Academy of Postgraduate Training in Statistics, the University of Bristol's Jean Golding Institute for Data Intensive Research, the national Alan Turing Institute and the Heilbronn Institute for Mathematical Research Institute, COMPASS will provide a diverse, fulfilling and outstanding doctoral student experience.
COMPASS will be an attractive focal point for the best students, preparing them for rewarding, impactful careers, and enabling them to make crucial contributions to the health, productivity, connectivity and resilience of the UK and its citizens.
Planned Impact
The COMPASS Centre for Doctoral Training will have the following impact.
Doctoral Students Impact.
I1. Recruit and train over 55 students and provide them with a broad and comprehensive education in contemporary Computational Statistics & Data Science, leading to the award of a PhD. The training environment will be built around a set of multilevel cohorts: a variety of group sizes, within and across year cohort activities, within and across disciplinary boundaries with internal and external partners, where statistics and computation are the common focus, but remaining sensitive to disciplinary needs. Our novel doctoral training environment will powerfully impact on students, opening their eyes to not only a range of modern technical benefits and opportunities, but on the power of team-working with people from a range of backgrounds to solve the most important problems of the day. They will learn to apply their skills to achieve impact by collaborative working with internal and external partners, such as via our Rapid Response Teams, Policy Workshops & Statistical Clinics.
I2. As well as advanced training in computational statistics and data science, our students will be impacted by exposure to, and training in, important cognate topics such as ethics, responsible innovation, equality, diversity and inclusion, policy, effective communication and dissemination, enterprise, impact and consultancy skills. It is vital for our students to understand that their training will enable them to have a powerful impact on the wider world, so, e.g., AI algorithms they develop should not be discriminatory, and statistical methodologies should be reproducible, and statistical results accurately and comprehensibly communicated to the general public and policymakers.
I3. The students will gain experience via collaborations with academic partners within the University in cognate disciplines, and a wide range of external industrial & government partners. The students will be impacted by the structured training programmes of the UK Academy of Postgraduate Training in Statistics, the Bristol Doctoral College, the Jean Golding Institute, the Alan Turing Institute and the Heilbronn Institute for Mathematical Sciences, which will be integrated into our programme.
I4. Having received an excellent training, the students will then impact powerfully on the world in their future fruitful careers, spreading excellence.
Impact on our Partners & ourselves.
I5. Direct impacts will be achieved by students engaging with, and working on projects with, our academic partners, with discipline-specific problems arising in engineering, education, medicine, economics, earth sciences, life sciences and geographical sciences, and our external partners Adarga, the Atomic Weapons Establishment, CheckRisk, EDF, GCHQ, GSK, the Office for National Statistics, Sciex, Shell UK, Trainline and the UK Space Agency. The students will demonstrate a wide range of innovation with these partners, will attract engagement from new partners, and often provide attractive future employment matches for students and partners alike.
Wider Societal Impact
I6. COMPASS will greatly benefit the UK by providing over 55 highly trained PhD graduates in an area that is known to be suffering from extreme, well-known, shortages in the people pipeline nationally. COMPASS CDT graduates will be equipped for jobs in sectors of high economic value and national priority, including data science, analytics, pharmaceuticals, security, energy, communications, government, and indeed all research labs that deal with data. Through their training, they will enable these organisations to make well-informed and statistically principled decisions that will allow them to maximise their international competitiveness and contribution to societal well-being. COMPASS will also impact positively on the wider student community, both now and sustainably into the future.
Doctoral Students Impact.
I1. Recruit and train over 55 students and provide them with a broad and comprehensive education in contemporary Computational Statistics & Data Science, leading to the award of a PhD. The training environment will be built around a set of multilevel cohorts: a variety of group sizes, within and across year cohort activities, within and across disciplinary boundaries with internal and external partners, where statistics and computation are the common focus, but remaining sensitive to disciplinary needs. Our novel doctoral training environment will powerfully impact on students, opening their eyes to not only a range of modern technical benefits and opportunities, but on the power of team-working with people from a range of backgrounds to solve the most important problems of the day. They will learn to apply their skills to achieve impact by collaborative working with internal and external partners, such as via our Rapid Response Teams, Policy Workshops & Statistical Clinics.
I2. As well as advanced training in computational statistics and data science, our students will be impacted by exposure to, and training in, important cognate topics such as ethics, responsible innovation, equality, diversity and inclusion, policy, effective communication and dissemination, enterprise, impact and consultancy skills. It is vital for our students to understand that their training will enable them to have a powerful impact on the wider world, so, e.g., AI algorithms they develop should not be discriminatory, and statistical methodologies should be reproducible, and statistical results accurately and comprehensibly communicated to the general public and policymakers.
I3. The students will gain experience via collaborations with academic partners within the University in cognate disciplines, and a wide range of external industrial & government partners. The students will be impacted by the structured training programmes of the UK Academy of Postgraduate Training in Statistics, the Bristol Doctoral College, the Jean Golding Institute, the Alan Turing Institute and the Heilbronn Institute for Mathematical Sciences, which will be integrated into our programme.
I4. Having received an excellent training, the students will then impact powerfully on the world in their future fruitful careers, spreading excellence.
Impact on our Partners & ourselves.
I5. Direct impacts will be achieved by students engaging with, and working on projects with, our academic partners, with discipline-specific problems arising in engineering, education, medicine, economics, earth sciences, life sciences and geographical sciences, and our external partners Adarga, the Atomic Weapons Establishment, CheckRisk, EDF, GCHQ, GSK, the Office for National Statistics, Sciex, Shell UK, Trainline and the UK Space Agency. The students will demonstrate a wide range of innovation with these partners, will attract engagement from new partners, and often provide attractive future employment matches for students and partners alike.
Wider Societal Impact
I6. COMPASS will greatly benefit the UK by providing over 55 highly trained PhD graduates in an area that is known to be suffering from extreme, well-known, shortages in the people pipeline nationally. COMPASS CDT graduates will be equipped for jobs in sectors of high economic value and national priority, including data science, analytics, pharmaceuticals, security, energy, communications, government, and indeed all research labs that deal with data. Through their training, they will enable these organisations to make well-informed and statistically principled decisions that will allow them to maximise their international competitiveness and contribution to societal well-being. COMPASS will also impact positively on the wider student community, both now and sustainably into the future.
Organisations
- University of Bristol (Lead Research Organisation)
- Trainline (Project Partner)
- OFFICE FOR NATIONAL STATISTICS (Project Partner)
- EDF (International) (Project Partner)
- CheckRisk LLP (Project Partner)
- GCHQ (Project Partner)
- Adarga (Project Partner)
- GSK (Project Partner)
- Shell Research UK (Project Partner)
- SCIEX (Project Partner)
- AWE plc (Project Partner)
- UK Space Agency (Project Partner)
Studentship Projects
Project Reference | Relationship | Related To | Start | End | Student Name |
---|---|---|---|---|---|
EP/S023569/1 | 31/03/2019 | 29/09/2027 | |||
2266439 | Studentship | EP/S023569/1 | 30/09/2019 | 29/09/2023 | Jake Spiteri |
2266490 | Studentship | EP/S023569/1 | 30/09/2019 | 21/09/2023 | Michael Whitehouse |
2266494 | Studentship | EP/S023569/1 | 30/09/2019 | 28/03/2024 | Daniel Williams |
2266135 | Studentship | EP/S023569/1 | 30/09/2019 | 04/04/2024 | Douglas Corbin |
2266418 | Studentship | EP/S023569/1 | 30/09/2019 | 29/09/2023 | Alexander Modell |
2266564 | Studentship | EP/S023569/1 | 30/09/2019 | 21/09/2023 | Andrea Becsek |
2268657 | Studentship | EP/S023569/1 | 30/09/2019 | 21/09/2023 | Dominic Owens |
2585444 | Studentship | EP/S023569/1 | 30/09/2019 | 21/09/2024 | Alessio Zakaria |
2437834 | Studentship | EP/S023569/1 | 30/09/2020 | 31/12/2024 | Conor Newton |
2438032 | Studentship | EP/S023569/1 | 30/09/2020 | 15/10/2024 | Edward Davis |
2438023 | Studentship | EP/S023569/1 | 30/09/2020 | 20/12/2024 | Euan Enticott |
2437902 | Studentship | EP/S023569/1 | 30/09/2020 | 19/05/2025 | Shannon Williams |
2437392 | Studentship | EP/S023569/1 | 30/09/2020 | 20/01/2025 | Anna Gray |
2437825 | Studentship | EP/S023569/1 | 30/09/2020 | 28/11/2024 | Jack Simons |
2437813 | Studentship | EP/S023569/1 | 30/09/2020 | 29/10/2024 | Sam Stockman |
2437930 | Studentship | EP/S023569/1 | 30/09/2020 | 19/09/2024 | Georgina Mansell |
2438224 | Studentship | EP/S023569/1 | 30/09/2020 | 20/01/2025 | Daniel Ward |
2438039 | Studentship | EP/S023569/1 | 30/09/2020 | 19/09/2024 | Conor Crilly |
2593163 | Studentship | EP/S023569/1 | 30/09/2021 | 18/09/2025 | Edward Milsom |
2597860 | Studentship | EP/S023569/1 | 30/09/2021 | 18/09/2025 | Tennessee Hickling |
2597525 | Studentship | EP/S023569/1 | 30/09/2021 | 18/09/2025 | Daniel Milner |
2592814 | Studentship | EP/S023569/1 | 30/09/2021 | 22/03/2026 | Dominic Broadbent |
2597535 | Studentship | EP/S023569/1 | 30/09/2021 | 18/09/2025 | Harry Tata |
2592879 | Studentship | EP/S023569/1 | 30/09/2021 | 19/03/2026 | Hannah Sansford |
2662077 | Studentship | EP/S023569/1 | 30/09/2021 | 18/09/2025 | Ben Griffiths |
2592959 | Studentship | EP/S023569/1 | 30/09/2021 | 18/09/2025 | Josh Givens |
2592871 | Studentship | EP/S023569/1 | 30/09/2021 | 18/09/2025 | Emerald Dilworth |
2597521 | Studentship | EP/S023569/1 | 30/09/2021 | 18/09/2025 | Ettore Fincato |
2741521 | Studentship | EP/S023569/1 | 30/09/2022 | 29/09/2026 | Emma Ceccherini |
2740713 | Studentship | EP/S023569/1 | 30/09/2022 | 18/03/2027 | Codie Wood |
2740530 | Studentship | EP/S023569/1 | 30/09/2022 | 29/09/2026 | Ben Anson |
2740621 | Studentship | EP/S023569/1 | 30/09/2022 | 29/09/2026 | Henry Bourne |
2741541 | Studentship | EP/S023569/1 | 30/09/2022 | 29/09/2026 | Rahil Morjaria |
2741539 | Studentship | EP/S023569/1 | 30/09/2022 | 29/09/2026 | Samuel Perren |
2741375 | Studentship | EP/S023569/1 | 30/09/2022 | 29/09/2026 | Samuel Bowyer |
2741510 | Studentship | EP/S023569/1 | 30/09/2022 | 29/09/2026 | Xinrui Shi |
2741534 | Studentship | EP/S023569/1 | 30/09/2022 | 29/09/2026 | Emma Tarmey |
2741439 | Studentship | EP/S023569/1 | 30/09/2022 | 29/09/2026 | Rachel Wood |
2741133 | Studentship | EP/S023569/1 | 30/09/2022 | 29/09/2026 | Dylan Dijk |
2789004 | Studentship | EP/S023569/1 | 23/01/2023 | 22/01/2027 | Qi Chen |
2879372 | Studentship | EP/S023569/1 | 30/09/2023 | 29/09/2027 | Yuqi Zhang |
2879393 | Studentship | EP/S023569/1 | 30/09/2023 | 29/09/2027 | Vera Hudak |
2879196 | Studentship | EP/S023569/1 | 30/09/2023 | 29/09/2027 | Rebecca Griffiths |
2879386 | Studentship | EP/S023569/1 | 30/09/2023 | 29/09/2027 | Jia Khoo |
2879411 | Studentship | EP/S023569/1 | 30/09/2023 | 29/09/2027 | Daniel Gardner |
2879419 | Studentship | EP/S023569/1 | 30/09/2023 | 29/09/2027 | Grace Yan |
2879467 | Studentship | EP/S023569/1 | 30/09/2023 | 29/09/2027 | Daniella Montgomery |
2879310 | Studentship | EP/S023569/1 | 30/09/2023 | 29/09/2027 | Kieran Morris |
2879214 | Studentship | EP/S023569/1 | 30/09/2023 | 29/09/2027 | Xinyue Guan |
2879206 | Studentship | EP/S023569/1 | 30/09/2023 | 29/09/2027 | Cecina Babich Morrow |
2879463 | Studentship | EP/S023569/1 | 30/09/2023 | 29/09/2027 | Oliver Baker |