Events 32 x 13.1 ( with space) ppt.png

Events and Talks

 

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

Events

C2D3 event In person

C2D3 Industry Launch

18 Mar 2026

C2D3 event Conference In person

C2D3 Computational Biology Annual Symposium 2026

13 May 2026

Uni of Cambridge Workshop In person

Accelerate Programme: Lent Term Training Workshops

9 Feb 2026 - 23 Mar 2026

Uni of Cambridge Workshop In person

AI for Urban Sustainability workshop series

11 Feb 2026 - 18 Mar 2026

10 Mar 2026 - 11 Mar 2026

11 Mar 2026

Uni of Cambridge In person

Climate Science Roundtable

13 Mar 2026

Uni of Cambridge Conference Hybrid

AI for Cultural Heritage (ArCH) Hub Conference

16 Mar 2026

19 Mar 2026 - 20 Mar 2026

Uni of Cambridge Workshop In person

ArCH Hands on with the Hub

20 Mar 2026

Uni of Cambridge Talk

AI and the Future of Public Health

25 Mar 2026

Uni of Cambridge Workshop In person

Getting Started with SAS

26 Mar 2026

Uni of Cambridge Conference Hybrid

Bennett School of Public Policy Annual Conference 2026

26 Mar 2026

Uni of Cambridge Workshop In person

INI AI for Maths and Open Science

30 Mar 2026 - 1 Apr 2026

Turing Conference In person

AI for Science

31 Mar 2026

Uni of Cambridge Training In person

CRIT Building computational pipelines with Nextflow

14 Apr 2026 - 15 Apr 2026

20 Apr 2026 - 21 Apr 2026

6 Jul 2026 - 7 Jul 2026

14 Jul 2026 - 29 Jul 2026

Accelerate Programme for Scientific Discovery – Lent Term workshops in AI for Science
Accelerate Programme for Scientific Discovery – Lent Term workshops in AI for Science 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
Communicating Mathematical and Data Sciences – What does Success Look Like? External
How can we make public health more precise? Uni of Cambridge
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
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
Efficient protein flow models with optimal transport flow matching Uni of Cambridge
C2D3 ECR and student conference 2024 C2D3 event
2024 BioHackathon Uni of Cambridge
Café Synthetique Engineering Biology - An Engineer's Perspective & Bioinspired Robotics Uni of Cambridge
The IMA AI/ML Congress 2024 External
Multi-token Prediction and Exploring LM Losses Uni of Cambridge
AI and Statistical Innovations for Palaeoecological Research - 5 day event C2D3 event
Data for Policy 2024 – Decoding the Future: Trustworthy Governance with AI? External
7th Cambridge International Conference on Machine Learning and AI in (Bio)Chemical Engineering Uni of Cambridge
Integrated Cancer Medicine Symposium: ML and AI for Hard-To-Treat Cancers Uni of Cambridge
How FAIRsharing helps you enable FAIR: focus in standards, repositories and policies External
Robust Cancer Early Detection Systems under Distribution Shifts and Uncertainty Workshop C2D3 event
LLM X LAW Hackathon Uni of Cambridge
An Introduction to Diffusion Models in Generative AI Uni of Cambridge
Microsoft AI & Pizza event External

Talks

Upcoming related talks from talks@cam

Date Title Speaker Abstract
JetBrains: Building and using AI agents with JetBrains Jaiditya Khemani Abstract: Popularly known for its IDEs and for being behind the Kotlin language, JetBrains is also heavily involved in AI, not just by integrating external tools into its IDEs but also by developing its own. This talk will be beginner-friendly, helping students understand how we reached the current age of AI agents. And how they can both build and use them. We will also look a bit into what JetBrains is doing and how you as a student can get involved with our organisation. And end the afternoon with a fun quiz, some food and cool merchandise! P.S.
Rethinking aleatoric and epistemic uncertainty Freddie Bickford Smith (University of Oxford) The ideas of aleatoric and epistemic uncertainty are widely used to reason about the probabilistic predictions of machine-learning models. We identify incoherence in existing discussions of these ideas and suggest this stems from the aleatoric-epistemic view being insufficiently expressive to capture all the distinct quantities that researchers are interested in. To address this we present a decision-theoretic perspective that relates rigorous notions of uncertainty, predictive performance and statistical dispersion in data. This serves to support clearer thinking as the field moves forward.
AI/ML in bioinformatics and CNS drug discovery Francesco Tuveri The presentation will introduce how machine learning supports drug discovery at Astex, with a focus on modelling single‑cell RNA‑seq data to understand neurodegenerative diseases such as ALS. This is an area where modelling objectives do not naturally fit traditional supervised or unsupervised learning frameworks. The session will outline standard KNN‑graph–based analytical approaches and compare them with modern VAE‑based counterfactual modelling, highlighting how each method addresses the challenges of complex biological data.
Discovering mathematical concepts through a multi-agent system Daattavya Aggarwal Mathematical concepts emerge through an interplay of processes, including experimentation, efforts at proof, and counterexamples. In this paper, we present a new multi-agent model for computational mathematical discovery based on this observation. Our system, conceived with research in mind, poses its own conjectures and then attempts to prove them, making decisions informed by this feedback and an evolving data distribution.
Machine Learning on Tabular Data Arik Reuter and John Bronskill (University of Cambridge) Data in tabular form is ubiquitous in industries such as finance, healthcare, and education. Historically, boosted decision trees and multi-layer perceptrons were the models of choice for making predictions on tabular data. In the last couple of years, neural process-based transformers (e.g. TabPFN, TabICL) that are trained on synthetic data have surpassed traditional approaches in terms of speed and accuracy. Well-funded start-ups have recently exploited these advances offering easy to use tools aimed at enterprises.
Deep-layered machines have a built-in Occam's razor Dr Thomas Fink, Director, London Institute for Mathematical Sciences Input-output maps are prevalent throughout science and technology. They are empirically observed to be biased towards simple outputs, but we don't understand why. To address this puzzle, we study the archetypal input-output map: a deep-layered machine in which every node is a Boolean function of all the nodes below it. We give an exact theory for the distribution of outputs, and we confirm our predictions through extensive computer experiments. As the network depth increases, the distribution becomes exponentially biased towards simple outputs.
High-performance computing with the Julia language Mosè Giordano - Principal RSE, UCL ARC High-performance computing is becoming increasingly heterogeneous, from the spread of different GPU families, to the rise of new specialised accelerators, in particular related to the machine learning domain. In this talk we will cover some of the tools available to do high-performance computing with the Julia programming language: from distributed computing with MPI, to accelerating numerical code on GPUs, with particular focus on vendor-agnostic solutions such as KernelAbstractions.jl, to ensure portability.
Toward Scalable Neuromorphic Control: From Conductance Modelling to Hierarchical Event-Based Architectures Yongkang Huo, University of Cambridge This seminar summarises PhD research that develops a methodology for scalable neuromorphic control, linking the modelling of individual neuromorphic elements to the design of large event-based control networks. At the element level, it introduces a kernel-based framework for learning fading-memory conductance dynamics from data while preserving causality, memristive structure, and time-scale separation. At the network level, it develops rebound Winner-Take-All motifs that unify rhythmic generation and discrete decision-making in a hierarchical architecture.
Talk by Tal Linzen (NYU) Tal Linzen (NYU) Abstract not available
Run Time Reoptimization for Modern Heterogenous Systems George Neville-Neil () Modern computers are collections of heterogenous components, including GPUs, TPUs, NPUs, FPGAs and other devices that carry out computing tasks but which are not the central CPU. We are proposing novel methods of program compilation, transformation and scheduling that take advantage of the entire system so that computation takes place in the most appropriate place at the most propitious time.
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.
Representational Geometry of Language Models Matthieu Téhénan (University of Cambridge) Abstract not available
Statistics Clinic Lent 2026 V Speaker to be confirmed 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/Jx73BwGykJuem4wE7. Sign-up is possible from Mar 12 midday (12pm) until Mar 16 midday or until we reach full capacity, whichever is earlier. If you successfully signed up, we will confirm your appointment by Mar 18 midday.
Talk by Vicente Ordóñez (Rice University) Vicente Ordóñez (Rice University) Abstract not available
Title to be confirmed Enrique Amigó (Universidad Nacional de Educación a Distancia, UNED) Abstract not available
Towards a Comprehensive View on Technology Transparency: Cross-Technology Investigations of Users’ Transparency Needs and Perceptions Ilka Hein, LMU Munich Users’ subjective experience of a technology’s transparency plays a pivotal role in human-computer interaction, shaping trust, satisfaction, and technology use. Moreover, as interactive systems become more autonomous and complex, industry and policy increasingly acknowledge users’ growing need to understand what a technology is doing, how it functions, and why it produces certain outcomes. Moving beyond the currently fragmented research landscape, this talk offers a comprehensive perspective on technology transparency.
How life finds a way: resilience in mammalian embryogenesis Sarah Bowling, PhD. Assistant Professor in the Department of Developmental Biology at Stanford University School of Medicine​ Speaker: Sarah Bowling, Ph.D. Assistant Professor in the Department of Developmental Biology at Stanford University School of Medicine​ Title: “How life finds a way: resilience in mammalian embryogenesis​” Abstract: TBC Short bio: Dr. Sarah Bowling is an Assistant Professor in the Department of Developmental Biology at Stanford University School of Medicine. Her laboratory focuses on understanding the mechanisms governing resilience in mammalian embryogenesis - i.e. determining how embryos withstand and recover from diverse genetic and environmental perturbations.
Compositional Design of Society-Critical Systems: From Autonomy to Future Mobility Gioele Zardini When designing complex systems, we need to consider multiple trade-offs at various abstraction levels and scales, and choices of single components need to be studied jointly. For instance, the design of future mobility solutions (e.g., autonomous vehicles, micromobility) and the design of the mobility systems they enable are closely coupled. Indeed, knowledge about the intended service of novel mobility solutions would impact their design and deployment process, while insights about their technological development could significantly affect transportation management policies.
Reinforcement Learning with Exogenous States and Rewards Professor Thomas G. Dietterich, School of EECS, Oregon State University Exogenous state variables and rewards can slow reinforcement learning by injecting uncontrolled variation into the reward signal. In this talk, I’ll describe our work on formalizing exogenous state variables and rewards. Then I’ll discuss our main result: if the reward function decomposes additively into endogenous and exogenous components, the MDP can be decomposed into an exogenous Markov Reward Process (based on the exogenous reward) and an endogenous Markov Decision Process (optimizing the endogenous reward).
to decide Kartik Tandon to decide