Fri, 14 Oct 2022

16:00 - 17:00
L1

Meet and Greet Event

Amy Kent and Ellen Luckins
Abstract

Abstract: 

Welcome (back) to Fridays@4! To start the new academic year in this session we’ll introduce what Fridays@4 is for our new students and colleagues. This session will be a chance to meet current students and ECRs from across Maths and Stats who will share their hints and tips on conducting successful research in Oxford. There will be lots of time for questions, discussions and generally meeting more people across the two departments – everyone is welcome!

 

Fri, 01 Apr 2022

16:00 - 17:00
L3

What's it like working for Citadel Securities?

Oliver Sheriden-Methven (Citadel Securities)
Abstract

Dr Oliver Sheridan-Methven from Citadel Securities, (an InFoMM and MScMCF alumni), will be talking about his experiences from studying at the Mathematical Institute, interviewing for jobs, to working in finance. Now in Zurich, Oliver is a quantitative developer in the advanced scientific computing team at Citadel Securities, a world leading market maker. Citadel Securities specialises in ultra high frequency trading, low latency execution, and their researchers tackle cutting edge machine learning and data science problems on colossal data sets with humongous computational resources. Oliver will be talking about his own experiences, and also how mathematicians are naturally great fits for a huge number of roles at Citadel Securities.

Fri, 10 Jun 2022

16:00 - 17:00
L2

Maths Meets Stats

Melanie Weber and Francesca Panero
Abstract

Melanie Weber 

Title: Geometric Methods for Machine Learning and Optimization

Abstract: A key challenge in machine learning and optimization is the identification of geometric structure in high-dimensional data. Such structural understanding is of great value for the design of efficient algorithms and for developing fundamental guarantees for their performance. Motivated by the observation that many applications involve non-Euclidean data, such as graphs, strings, or matrices, we discuss how Riemannian geometry can be exploited in Machine Learning and Optimization. First, we consider the task of learning a classifier in hyperbolic space. Such spaces have received a surge of interest for representing large-scale, hierarchical data, since they achieve better representation accuracy with fewer dimensions. Secondly, we consider the problem of optimizing a function on a Riemannian manifold. Specifically, we will consider classes of optimization problems where exploiting Riemannian geometry can deliver algorithms that are computationally superior to standard (Euclidean) approaches.

 

Francesca Panero

Title: A general overview of the different projects explored during my DPhil in Statistics.

Abstract: In the first half of the talk, I will present my work on statistical models for complex networks. I will propose a model to describe sparse spatial random graph underpinned by the Bayesian nonparametric theory and asymptotic properties of a more general class of these models, regarding sparsity, degree distribution and clustering coefficients.

The second half will be devoted to the statistical quantification of the risk of disclosure, a quantity used to evaluate the level of privacy that can be achieved by publishing a microdata file without modifications. I propose two ways to estimate the risk of disclosure, using both frequentist and Bayes nonparametric statistics.

 

Fri, 13 May 2022

16:00 - 17:00
L2

Mental health and wellbeing

Rebecca Reed (Siendo)
Abstract

*Note the different room location (L2) to usual Fridays@4 sessions*

This week is Mental Health Awareness Week. To mark this, Rebecca Reed from Siendo will deliver a session on mental health and wellbeing. The session will cover the following things: 

- The importance of finding a balance with achievement and managing stress and pressure.
- Coping mechanisms work with stresses at work in a positive way (not seeing all stress as bad).
- The difficulties faced in the HE environment, such as the uncertainty felt within jobs and research, combined with the high expectations and workload. 

 

Fri, 29 Apr 2022

16:00 - 17:00
L1

North Meets South

Akshat Mugdal and Renee Hoekzema
Abstract
Speaker: Akshat Mugdal
 
Title: Fantastic arithmetic structures and where to find them
 
Abstract: This talk will be a gentle introduction to additive combinatorics, an area lying somewhat at the intersection of combinatorics, number theory and harmonic analysis, which concerns itself with identification and classification of sets with additive structure. In this talk, I will outline various notions of when a finite set of integers may be considered to be additively structured and how these different notions interconnect with each other, with various examples sprinkled throughout. I will provide some further applications and open problems surrounding this circle of ideas, including a quick study of sets that exhibit multiplicative structure and their interactions with the aforementioned notions of additivity.
 
 
Speaker: Renee Hoekzema 

Title: Exploring the space of genes in single cell transcriptomics datasets

Abstract: Single cell transcriptomics is a revolutionary technique in biology that allows for the measurement of gene expression levels across the genome for many individual cells simultaneously. Analysis of these vast datasets reveals variations in expression patterns between cells that were previously out of reach. On top of discrete clustering into cell types, continuous patterns of variation become visible, which are associated to differentiation pathways, cell cycle, response to treatment, adaptive heterogeneity or what just whatever the cells are doing at that moment. Current methods for assigning biological meaning to single cell experiments relies on predefining groups of cells and computing what genes are differentially expressed between them. The complexity found in modern single cell transcriptomics datasets calls for more intricate methods to biologically interpret both discrete clusters as well as continuous variations. We propose topologically-inspired data analysis methods that identify coherent gene expression patterns on multiple scales in the dataset. The multiscale methods consider discrete and continuous transcriptional patterns on equal footing based on the mathematics of spectral graph theory. As well as selecting important genes, the methodology allows one to visualise and explore the space of gene expression patterns in the dataset.

Fri, 25 Feb 2022

16:00 - 17:00
L1

North Meets South

Pascal Heid and Ilyas Khan
Abstract

This event will be hybrid and will take place in L1 and on Teams. A link will be available 30 minutes before the session begins.

Pascal Heid
Title: Adaptive iterative linearised Galerkin methods for nonlinear PDEs

Abstract: A wide variety of iterative methods for the solution of nonlinear equations exist. In many cases, such schemes can be interpreted as iterative local linearisation methods, which can be obtained by applying a suitable linear preconditioning operator to the original nonlinear equation. Based on this observation, we will derive an abstract linearisation framework which recovers some prominent iteration schemes. Subsequently, in order to cast this unified iteration procedure into a computational scheme, we will consider the discretisation by means of finite dimensional subspaces. We may then obtain an effective numerical algorithm by an instantaneous interplay of the iterative linearisation and an (optimally convergent) adaptive discretisation method. This will be demonstrated by a numerical experiment for a quasilinear elliptic PDE in divergence form.   

 

Ilyas Khan
Title: Geometric Analysis: Curvature and Applications

Abstract: Often, one will want to find a geometric structure on some given manifold satisfying certain properties. For example, one might want to find a minimal embedding of one manifold into another, or a metric on a manifold with constant scalar curvature, to name some well known examples of this sort of problem. In general, these problems can be seen as equivalent to solving a system of PDEs: differential relations on coordinate patches that can be assembled compatibly over the whole manifold to give a globally defined geometric equation.

In this talk, we will present the theories of minimal surfaces and mean curvature flow as representative examples of the techniques and philosophy that geometric analysis employs to solve problems in geometry of the aforementioned type. The description of the theory will be accompanied by a number of examples and applications to other fields, including physics, topology, and dynamics. 

Fri, 18 Feb 2022

16:00 - 17:00
L1

Conferences and collaboration

Abstract

This event will be hybrid and will take place in L1 and on Teams. A link will be available 30 minutes before the session begins.

`Conferences and collaboration’ is a Fridays@4 group discussion. The goal is to have an open and honest conversion about the hurdles posed by these things, led by a panel of graduate students and postdocs. Conferences can be both exciting and stressful - they involve meeting new people and learning new mathematics, but can be intimidating new professional experiences. Many of us also will either have never been to one in person, or at least not been to one in the past two years. Optimistically looking towards the world opening up again, we thought it would be a good time to ask questions such as:
-Which talks should I go to?
-How to cope with incomprehensible talks. Is it imposter syndrome or is the speaker just bad?
-Should I/how should I go about introducing myself to more senior people in the field?
-How do you start collaborations? Does it happen at conferences or elsewhere?
-How do you approach workload in collaborations?
-What happens if a collaboration isn’t working out?
-FOMO if you like working by yourself. Over the hour we’ll have a conversation about these hurdles and most importantly, talk about how we can make conferences and collaborations better for everyone early in their careers.

Fri, 04 Feb 2022

16:00 - 17:00
L1

Careers outside of academia

Kim Moore (Faculty AI) and Sébastien Racanière (Google DeepMind)
Abstract

This event will take place on Teams. A link will be available 30 minutes before the session begins.

Sebastien Racaniere is a Staff Research Engineer at DeepMind. His current main interest is in the use of symmetries in Machine Learning. This offers diverse applications, for example in Neuroscience or Theoretical Physics (in particular Lattice Quantum Chromodynamics). Past interests, still in Machine Learning, include Reinforcement Learning (i.e. learning from rewards), generative models (i.e. learn to sample from probability distributions), and optimisation (i.e. how to find 'good' minima of functions)

 

Kim Moore is a senior data scientist at faculty, which is a data science consultancy based in London. As a data scientist, her role is to help our clients across sectors such as healthcare, government and consumer business solve their problems using data science and AI. This involves applying a variety of techniques, ranging from simple data analysis to designing and implementing bespoke machine learning algorithms. Kim will talk about day to day life at faculty, some interesting projects that I have worked on and why her mathematical background makes her a great data scientist.
Fri, 28 Jan 2022

16:00 - 17:00
L1

North Meets South

Kaibo Hu and Davide Spriano
Abstract

This event will be hybrid and will take place in L1 and on Teams. A link will be available 30 minutes before the session begins.

Kaibo Hu
Title: Complexes from complexes
Abstract:
Continuous and discrete (finite element) de Rham complexes have inspired key progress in the mathematical and numerical analysis of the Maxwell equations. In this talk, we derive new differential complexes from the de Rham complexes. These complexes have applications in, e.g., general relativity and continuum mechanics. Examples include the elasticity (Kröner or Calabi) complex, which encodes fundamental structures in Riemannian geometry and elasticity. This homological algebraic construction is inspired by the Bernstein-​Gelfand-Gelfand (BGG) machinery from representation theory. Analytic results, e.g., various generalisations of the Korn inequality, follow from the algebraic structures. We briefly discuss applications in numerical PDEs and other fields.

Davide Spriano

Title: Growth of groups.

Abstract:
Given a transitive graph, it is natural to consider how many vertices are contained in a ball of radius n, and to study how this quantity changes as n increases. We call such a function the growth of the graph.

In this talk, we will see some examples of growth of Cayley graph of groups, and survey some classical results. Then we will see a dichotomy in the growth behaviour of groups acting on CAT(0) cube complexes.  

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