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Events and Talks

 

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

Events

5 May 2026

C2D3 event Workshop In person

Google Cloud - Vertex AI Workshop

7 May 2026

C2D3 event Conference In person

C2D3 Computational Biology Annual Symposium 2026

13 May 2026

2 Jun 2026

Uni of Cambridge Training In person

CRIT Programming in Python

23 Apr 2026 - 24 Apr 2026

29 Apr 2026

Uni of Cambridge Training Online

CRIT Working on HPC clusters

29 Apr 2026 - 1 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
AI workshop series: LLMs Hands On workshop 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
AI and Education Initiative Launch- Introductory Session 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
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 for Science Summit, University of Cambridge Uni of Cambridge
AI and Science: An opportunity to strengthen the African scientific landscape Uni of Cambridge
How can we make public health more precise? Uni of Cambridge
Illuminating mechanisms of mammalian morphogenesis Uni of Cambridge
Communicating Mathematical and Data Sciences – What does Success Look Like? External
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
Domain-theoretic Semantics for Dynamical Systems: From Analog Computers to Neural Networks Uni of Cambridge
Continuous Diffusion for Mixed-Type Tabular Data 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
Cell state switches and local adaptation in cancer: insights from AI and ecology-inspired approaches Uni of Cambridge
Founders at the University of Cambridge - Introducing Start 2.0 Uni of Cambridge
When tech policy becomes foreign policy: the future global governance of AI – Trust Conference 2024 Uni of Cambridge
Functional genomic screens and AI: a key partnership for successful therapeutic development External
Cambridge Infectious Diseases ECR event: Exploring Career Pathways Uni of Cambridge
Somatic evolution of the adaptive immune system in health and disease Uni of Cambridge
CHIA Early Career Community Welcome Event Uni of Cambridge
ARIA Roadshow in Cambridge External

Talks

Upcoming related talks from talks@cam

Date Title Speaker Abstract
Representational Space and Generalization : The Canonical Representation of a Task Matthieu Téhénan (University of Cambridge)

Generalization in deep learning remains poorly understood, as neural networks fall outside the framework of classical statistical learning theory. To make progress on this question, research has focused on controlled tasks, such as modular addition, as a testbed for generalization. On this task, models exhibit grokking, i.e. a delayed onset of generalization after training loss has converged.

 Life, death, and the discovery of PDAR: the Pol II Degradation-dependent Apoptotic Response  Mike Lee PhD, Associate Professor Department of Systems Biology, UMass Chan Medical School *Talk Title:* Life, death, and the discovery of PDAR: the Pol II Degradation-dependent Apoptotic Response *Abstract:* Many cellular functions are considered “life essential”, but why are they actually essential? Why does a cell die, for instance, when transcription or translation are inhibited, and can we improve cancer therapies by developing a more complete understanding of how cellular life/death decisions are made? To answer these questions, we developed a suite of new tools for studying all forms of cell death.
Cambridge AI in Medicine Seminar - April 2026 Lingjia Wang and Shuaiyu Yuan

Sign up on Eventbrite: https://medai-april2026.eventbrite.co.uk

Content, Caching and Kubernetes: Performance and User Experience in the Browser Laurents Marker - Software developer, National Centre for Atmospheric Science Laurents Marker, a software developer at the National Centre for Atmospheric Science, works as part of a team that provides weather forecasting, data visualisation and planning tools to operational and scientific teams during observation campaigns. His work is centred around developing and deploying web applications, but over the past year has become increasingly focussed on their performance and robustness. This talk will cover areas on both the client and the server where developer effort has greatly improved user experience and service quality.
A Data-Centric Approach to AI Adaptation and Alignment Prof. Stephen Bach (Brown University) Training generative AI is not a one-step process. In the case of large language models (LLMs), self-supervision is often followed by supervised and reinforcement learning stages to improve instruction following, safety, and other desirable qualities. This multi-stage process that has emerged in the last 3 years has led to huge leaps in model capabilities. It has also led to new challenges and risks. In this talk, I will overview some of our group's work to identify and address such challenges by focusing on the training data used at different stages.
Understanding the Interplay between LLMs' Utilisation of Parametric and Contextual Knowledge Prof Isabelle Augenstein (University of Copenhagen) Language Models (LMs) acquire parametric knowledge from their training process, embedding it within their weights. The increasing scalability of LMs, however, poses significant challenges for understanding a model's inner workings and further for updating or correcting this embedded knowledge without the significant cost of retraining. Moreover, when using these language models for knowledge-intensive language understanding tasks, LMs have to integrate relevant context, mitigating their inherent weaknesses, such as incomplete or outdated knowledge.
Talk by Prof. Aaron Mueller (Boston University) Prof. Aaron Mueller (Boston University)

Abstract not available

Talk by Tiago Pimentel (ETH Zurich) Tiago Pimentel (ETH Zurich)


CodeScaler: Scaling Code LLM Training and Test-Time Inference via Execution-Free Reward Models Zhijiang Guo (HKUST (GZ) | HKUST) In this talk, I will present CodeScaler, a novel framework designed to overcome the scalability bottlenecks of Reinforcement Learning from Verifiable Rewards (RLVR) in code generation. While traditional RLVR relies heavily on the availability of high-quality unit tests—which are often scarce or unreliable—CodeScaler introduces an execution-free reward model that scales both training and test-time inference.
C2D3 Computational Biology Annual Symposium 2026 Keynote: Natasha Latysheva (Google DeepMind) We warmly invite you to the C2D3 Computational Biology Annual Symposium 2026. This event is open to everyone in the Computational Biology Community. https://www.c2d3.cam.ac.uk/events/comp-bio-2026 Early Career Researcher: Abstract Submission We are inviting Early Career Researchers to present their research during the symposium. Talks should be 17 minutes each, and a short Q&A will follow. Abstract submission - Deadline 9am 1st April 2026. Registrations Registration is essential. A waitlist will open if capacity is reached. Registrations - Deadline 9am Monday 4th May 2026.
EVERSE Research Software Quality Kit Michael Sparks - Software Sustainability Institute Abstract not available
Talk by Fazl Barez (Oxford) Fazl Barez (Oxford) Abstract not available
Talk by Lotem Peled-Cohen (Technion - Israel Institute of Technology) Lotem Peled-Cohen (Technion - Israel Institute of Technology)

Abstract not available

Title to be confirmed Arduin Findeis (University of Cambridge) Abstract not available
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.
TBC Luke Gilbert, PhD, Associate Professor of Urology, University of California, San Francisco TBC
"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.