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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

Scientists and medics working on COVID: Introduction to the News Media External
ATI - AI UK | Smart cities External
Data for Policy 2020: 5th International Conference External
Aviva & University of Cambridge Partnership Showcase Uni of Cambridge
1st UK Academic Roundtable on Process Mining C2D3 event
Inspiration Exchange - with Mihaela van der Schaar Uni of Cambridge
Turing Lecture: AI for innovative social work External
Turing Lecture: Is education AI-ready? External
Celonis-C2D3 webinar: Telling the Story behind the Data - Data-Driven Discovery for… C2D3 event
EnterpriseWOMEN Summit AI² - AI applications and implications for healthcare Uni of Cambridge
C2D3 Research Symposium C2D3 event
Turing Presents: AI UK External
Computation Day "Optimise, Open and Learn" Uni of Cambridge
Neurocomputation & AI in Neuroscience Uni of Cambridge
Aviva Hackathon (CUDSS Aviva Data Science Challenge) Uni of Cambridge
C2D3 Hierarchical Modelling Workshop C2D3 event
Cambridge University Data Science Society: Delivering personalised… Uni of Cambridge
Data Science Careers Fair Uni of Cambridge
Reliability and reproducibility in computational science External
SynTech CDT networking event, Department of Chemistry Uni of Cambridge
Computational archival science (CAS) symposium: Towards a transatlantic programme External
How can your research influence policy? Uni of Cambridge
Data Profiling Workshop External
Turing Data Study Group External
FinHealthTech: New opportunities at the intersection of health and wealth. External
Fetch.ai Cambridge Winter Warmer External
CCIMI Colloquium: Mark Girolami - The Statistical Finite Element Method Uni of Cambridge
What is the Future of Digitally Enabled Service Business? Uni of Cambridge
Ensembl Rest API Workshop External
Ensembl Browser Workshop External
Cambridge Networks Day 2019
Who are the real people behind artificial intelligence?
Automating the Crowd: Workshop 2
Machine Learning for Environmental Sciences 2019
CCIMI Conference - Geometric and Topological Approaches to Data Analysis
Advances and challenges in Machine Learning Languages
Cambridge Big Data Research Symposium
Cybersecurity for Smart Infrastructure: Challenges and Opportunities
Ensembl browser workshop
Data Challenges in Cardiovascular Research
Personal Data Stores: A new approach to control of online privacy
'Scores of Scores': Possibilities and Pitfalls with Musical Corpora
Hands-off my health records: why sharing your health data matters
Cryptocurrencies and ICO : Trends and Opportunities
Big Data and personalised medicine
Manufacturing Analytics: Preliminary lessons and the way forward
Inaugural meeting for a Consortium for AI in Medicine at Cambridge
High Dimensional Big Data Engineering
Sensors and Data in Robotics
Environmental Science in the Big Data Era

Talks

Upcoming related talks from talks@cam

Date Title Speaker Abstract
"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.

Training energy-based Diffusion models and Inference-time steering for score-based Diffusion models Tony OuYang, Jiajun He (University of Cambridge)

Energy-based Models (EBMs) represent a crucial class of generative models in machine learning. While conceptually appealing due to their ability to model tractable unnormalized densities, EBMs are notoriously difficult to optimize in practice. By combining techniques from diffusion models and density-ratio estimation, Energy-based Diffusion Models (DiffEBMs) have emerged as a powerful modern solution.

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.

From Measurement to Emissions: Assessing the Carbon Footprint of Traffic Flows Sawsan El Zahr, University of Oxford

Abstract:

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

Title to be confirmed Atsuki Yamaguchi (Sheffield University)


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.

Fine-Tuning Large Language Models on Multi-Turn Conversations for Cognitive Behavioral Therapy Rishabh Balse, Department of Computer Science and Technology, University of Cambridge

TBD

Climate Science Grant Writing Workshop Dr Charles Emogor, Dept of Computer Science and Technology

Are you an early career researcher (ECR) thinking about applying for your first grant or fellowship but are not sure where to start?


If you are interested in learning more about effective grant writing and what makes a strong application then please join us for this half day workshop.


Think Before you Speak: Next Gen LLMs with Global Reasoning and External Memory Prof. Kilian Weinberger (Cornell)

The dominant paradigm in language modeling—scaling next-token prediction with parametric knowledge storage—delivers impressive capabilities but also fundamental limitations: brittle factual memory, inefficient parameters, and myopic reasoning. Progress requires a shift toward external memory and architectures that reason globally before committing to tokens.

Positional encodings in LLMs Valeria Ruscio Positional encodings are essential for transformer-based language models to understand sequence order, yet their influence extends far beyond simple position tracking. This talk explores the landscape of positional encoding methods in LLMs and reveals surprising insights about how these architectural choices shape model behavior. We begin with the fundamental challenge: why attention mechanisms require explicit positional information.
Convergence of Hamiltonian Monte Carlo in KL Divergence and Rényi Divergence Siddharth Mitra, Yale University

Hamiltonian Monte Carlo (HMC) and its variants are among the most widely used algorithms for sampling from probability distributions. Despite their popularity, quantitative convergence guarantees for unadjusted HMC remain limited, especially in divergences that provide strong relative-density control such as KL divergence and Rényi divergence. In this talk, we establish regularization properties for unadjusted HMC via one-shot couplings, which enable Wasserstein convergence guarantees to be upgraded to guarantees in KL and Rényi divergence.

Statistics Clinic Easter 2026 III

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/oKKFG78k4CrcE6JK6. Sign-up is possible from June 4 midday (12pm) until June 8 midday or until we reach full capacity, whichever is earlier. If you successfully signed up, we will confirm your appointment by June 10 midday.

TBC Stephan Druskat, Software Engineering Researcher - Humboldt-Universität zu Berlin

TBC