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Events and Talks

 

In AI, Machine Learning and Data Science across the University and beyond.

Events

2 Jun 2026

Uni of Cambridge Training Online

CRIT Working on HPC clusters

29 Apr 2026 - 1 Jun 2026

11 May 2026 - 29 Jun 2026

6 Jul 2026 - 7 Jul 2026

13 Jul 2026 - 17 Jul 2026

13 Jul 2026 - 17 Jul 2026

14 Jul 2026 - 29 Jul 2026

Seminar Series: AI and the Digital Uni of Cambridge
Language Models and Intelligent Agentic Systems C2D3 event
Exploring Interdisciplinary Frontiers C2D3 event
AI workshop series: Packaging and Publishing Python Code for Research Uni of Cambridge
AI workshop series: LLMs Hands On workshop Uni of Cambridge
Cambridge Enterprise: Ideas to Reality Programme Uni of Cambridge
AI workshop series: An Introduction to Diffusion Models in Generative AI Uni of Cambridge
Cambridge Multimodal Imaging Neuroscience Data hackathon Uni of Cambridge
An Introduction to Docker Uni of Cambridge
AI Cafe at CMS. Uni of Cambridge
AI workshop series: Hands On AI workshop Uni of Cambridge
AI workshop series: LLMs Hands On workshop Uni of Cambridge
AI workshop series: AI and Large Language Models Uni of Cambridge
AI for Bibliographical Record Creation: Hopes and Anxieties Uni of Cambridge
AI workshop series: Generative AI Uni of Cambridge
The AI Patent Revolution: Accelerating Entrepreneurs : Member's event External
AI for Researchers: A Beginners’ Guide Uni of Cambridge
Cambridge Enterprise: Consultancy 101 Uni of Cambridge
Cambridge Enterprise: Research Tools 101 Uni of Cambridge
AI Café: AI and Education Uni of Cambridge
Good Practices for Reproducible Open Source Code Uni of Cambridge
Accelerate Programme for Scientific Discovery – Lent Term workshops in AI for Science Uni of Cambridge
Accelerate Programme for Scientific Discovery – Lent Term workshops in AI for Science
AI and Education Initiative Launch- Introductory Session Uni of Cambridge
Centre for Human-Inspired AI (CHIA): Early Career Conference 2025 Uni of Cambridge
First Steps in Coding with R Uni of Cambridge
Cambridge Social Data School Q&A Uni of Cambridge
CDH Open: Digital Editing in the Age of AI | Dr James Cummings
Prof. Max Kleiman-Weiner: Computational morality
Women in Robotics
Accelerate Programme AI for Science lunchtime seminar Uni of Cambridge
Large Language Models in Practice: A Hands-On Journey from Data Collection to Insight Discovery Uni of Cambridge
Accelerate Programme for Scientific Discovery – Michaelmas Term workshops in AI for Science Uni of Cambridge
Synthetic Biology UK 2024 Uni of Cambridge
Validation data: strategies to avoid overuse (Invitation only workshop) C2D3 event
AI and Science: An opportunity to strengthen the African scientific landscape Uni of Cambridge
AI for Science Summit, University of Cambridge Uni of Cambridge
How can we make public health more precise? Uni of Cambridge
Communicating Mathematical and Data Sciences – What does Success Look Like? External
Illuminating mechanisms of mammalian morphogenesis Uni of Cambridge
Ideas to Reality Programme Uni of Cambridge
Generative models as efficient surrogates for molecular dynamics simulations Uni of Cambridge
IE Expo Uni of Cambridge
Cambridge MedAI Seminar Series Uni of Cambridge
Digital Twins of Patients on Non-Invasive Respiratory Support Uni of Cambridge
Continuous Diffusion for Mixed-Type Tabular Data Uni of Cambridge
Domain-theoretic Semantics for Dynamical Systems: From Analog Computers to Neural Networks Uni of Cambridge
The next frontier in causal machine learning Uni of Cambridge
Computational Microbiology of the E. coli cell envelope Uni of Cambridge
AI and Mental health Uni of Cambridge

Talks

Upcoming related talks from talks@cam

Date Title Speaker Abstract
What does it mean to understand, in the age of AGI? Fazl Barez (Oxford)

As AI systems become capable enough to matter, I think the question of whether we actually understand them becomes urgent in a new way. This talk works through four candidate answers — understanding as explanation, as mechanism, as control, and as process — and argues that each one, on its own, isn't enough.


EVERSE Research Software Quality Kit Michael Sparks - Software Sustainability Institute

The Research Software Quality Toolkit (RSQKit; https://everse.software/RSQKit/), developed by the EVERSE project, lists curated best practices for improving the quality of research software. It is intended for researchers, research software engineers, as well as those running research infrastructures involving software or engaged in research software policy and funding.

It wasn’t the network; it was the end-host! Alireza Sanaee, University of Cambridge

Abstract:

Modern cloud applications increasingly rely on low-latency communication, yet end-host bottlenecks remain a major barrier to achieving predictable performance. In this talk, we examine the problem of slow receivers at end-hosts, where limitations in CPU scheduling, networking stacks, and system interfaces can significantly degrade both latency and throughput in cloud VMs.

Large Language Models for Alzheimer’s and Dementia: From Computational Simulation to Early Detection Lotem Peled-Cohen (Technion - Israel Institute of Technology)

This talk presents my PhD research, supervised by Prof. Roi Reichart, exploring the intersection of Large Language Models (LLMs) and Alzheimer’s and related dementias. I begin by presenting our survey and perspective paper, in which we map the field’s current state and identify critical research gaps, such as data scarcity and the need for LLM-based simulation.

Surprisingly Persistent Challenges of AI Evaluation Arduin Findeis (University of Cambridge)

AI evolves rapidly: top models are superseded by the next generation within months, if not weeks. Benchmarks see similarly rapid turnover. Once released, many benchmarks become "solved" within months or at most a few years, no longer able to measure the frontier of AI. New benchmarks quickly take their place. Yet, even though benchmarks and models change so constantly, some fundamental issues of evaluation remain surprisingly enduring.

The AI Ecosystem as a Reasoning Maze: How Collaborative Intelligence Accelerates Scientific Discovery Yuri Yuri (Oxford) Scientific discovery emerges not from isolated reasoning, but from the intersection of diverse epistemic traditions. This talk proposes that the modern AI ecosystem, a structured network of heterogeneous reasoning agents spanning approximate and rigorous inference, constitutes a new form of collaborative intelligence for scientific inquiry. Drawing on Simon's conception of reasoning as adaptive search, we argue that such ecosystems do not merely accelerate known reasoning pathways, but create conditions under which genuinely novel representations may emerge.
The AI Ecosystem as a Reasoning Maze: How Collaborative Intelligence Accelerates Scientific Discovery Yuri Yuri (Oxford) Scientific discovery emerges not from isolated reasoning, but from the intersection of diverse epistemic traditions. This talk proposes that the modern AI ecosystem, a structured network of heterogeneous reasoning agents spanning approximate and rigorous inference, constitutes a new form of collaborative intelligence for scientific inquiry. Drawing on Simon's conception of reasoning as adaptive search, we argue that such ecosystems do not merely accelerate known reasoning pathways, but create conditions under which genuinely novel representations may emerge.
The AI Ecosystem as a Reasoning Maze: How Collaborative Intelligence Accelerates Scientific Discovery Yuri Yuri (Oxford) Scientific discovery emerges not from isolated reasoning, but from the intersection of diverse epistemic traditions. This talk proposes that the modern AI ecosystem, a structured network of heterogeneous reasoning agents spanning approximate and rigorous inference, constitutes a new form of collaborative intelligence for scientific inquiry. Drawing on Simon's conception of reasoning as adaptive search, we argue that such ecosystems do not merely accelerate known reasoning pathways, but create conditions under which genuinely novel representations may emerge.
Repurposing CRISPR to turn genes on and off Luke Gilbert PhD, University of California, San Francisco, Helen Diller Family Comprehensive Cancer Center, School of Medicine, Department of Urology

Abstract: TBC


Current Research/bio

Repurposing CRISPR to turn genes on and off Luke Gilbert, PhD, Associate Professor of Urology, University of California, San Francisco

Abstract: The ability to precisely manipulate endogenous gene expression enables exploration of gene function and establishment of causal relationships. This lecture will discuss CRISPR tools for turning genes on and off from a research and therapeutics perspective. I will also describe our CRISPRi approach for large-scale mapping of genetic interactions (GI) in the context of environmental perturbations.

"Multivariable Isotonic Classification and Regression in Biomedical Research" Ying Kuen Cheung, Columbia Public Health

Monotonicity is a common and often necessary assumption in biomedical research. In multiplex assays, biomarker expression is expected to have a monotonic association with disease outcome; similarly, in dose-finding studies, the probability of a response or toxicity outcome is expected to increase with dose.

The Inaccessible Game Professor Neil Lawrence, University of Cambridge In this talk we will explore a zero-player game based on an information isolation constraint. The dynamics of the game emerge from a “no-barber” selection principle that prohibits external structure. The aim is for the game to avoid impredictive-style inconsistencies. Motivated by the selection principle we will derive a “selected" trajectory in the game that consists of a second-order constrained maximum entropy production along the information geometry.
"Green" RSEs? A new role (and a new community) to reduce the environmental impact of research Kirsty Pringle - Software Sustainability Institute; EPCC, University of Edinburgh Research Software Engineers (RSEs) collaborate with researchers to develop and maintain software, helping to embed best practices that improve reliability and reduce inefficiencies in research workflows. As awareness grows of the environmental impact of computational research, a new specialism - Green RSE - is beginning to emerge. Green RSEs integrate sustainability into software development, ensuring environmental considerations are addressed alongside performance and usability.
Using A Function-Centric Lens to Re-consider Regularisation, Representation Transfer and Geometric Properties of Neural Networks Israel Mason-Williams (Imperial/KCL)

Abstract: Neural networks have shown remarkable performance across data domains, especially in regimes of increasing compute budgets. However, fundamental insights into how neural networks process information, share representations and traverse loss landscapes remain uncertain. In this work, we quantify the functional impact of distribution matching, facilitated by knowledge sharing mechanisms such as knowledge distillation, under student-teacher optimisation strategies.

Cambridge AI in Medicine Seminar - May 2026 Marta Morgado Correia and Zhongying Deng

Sign up on Eventbrite: https://medai-may2026.eventbrite.co.uk

Statistics Clinic Easter 2026 II

This free event is open only to members of the University of Cambridge (and affiliated institutes). Please be aware that we are unable to offer consultations outside clinic hours.


If you would like to participate, please sign up as we will not be able to offer a consultation otherwise. Please sign up through the following link: https://forms.gle/5dHfs6vJrrvTbqst5. Sign-up is possible from May 21 midday (12pm) until May 25 midday or until we reach full capacity, whichever is earlier. If you successfully signed up, we will confirm your appointment by May 27 midday.

Debugging HPC applications with `mdb` Tom Meltzer - ICCS - University of Cambridge

The problem:

Talk by Prof. Aditi Raghunathan (CMU) Prof. Aditi Raghunathan (CMU)

Abstract not available

AthenaZero: a low-inertia bimanual robot for dynamic manipulation Andrew Morgan, The Robotics & AI Institute

AthenaZero is a bimanual manipulator designed to maximize control authority while minimizing inertia. By utilizing quasi-direct drive actuation and transmission remotization techniques, the system achieves an effective endpoint mass comparable to that of a human. Trading off trajectory tracking stiffness as compared to conventional high-impedance manipulators, this architecture reduces reflected inertia by an order of magnitude.

AI meets cultural heritage: Non-invasive imaging and machine learning techniques for the reconstruction of degraded historical sheet music  Dr Anna Breger, Project Leader, University of Cambridge

In this talk we discuss the potential of non-invasive imaging and machine learning techniques for the reconstruction of degraded medieval music notation. Our examples include manuscripts and fragments that suffer from different kinds of degradations rendering parts of the notation illegible. Such degradations may happen due to chemical or physical damage, for example from iron-gall acidity or from deliberate erasure.