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Events and Talks

 

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

Events

C2D3 event Conference In person

C2D3 Computational Biology Annual Symposium 2026

13 May 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 Talk In person

AI in Spatial Biology

2 Apr 2026

7 Apr 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

C2D3 event Workshop In person

Google Cloud - Vertex AI Workshop

7 May 2026

6 Jul 2026 - 7 Jul 2026

13 Jul 2026 - 17 Jul 2026

14 Jul 2026 - 29 Jul 2026

LLM X LAW Hackathon Uni of Cambridge
An Introduction to Diffusion Models in Generative AI Uni of Cambridge
Microsoft AI & Pizza event External
Seminar: Identifying Cancer Risk Early Using AI on Longitudinal Clinical Records Uni of Cambridge
CHIA Annual Conference - AI for Good Uni of Cambridge
Networking and talks: AI for better brain and mental health External
Workshop (online): Introduction to data management for peatland research and monitoring External
Machine learning - Applications to Cancer Uni of Cambridge
Webinar: Harnessing machine learning to promote health equity Uni of Cambridge
Talk: Directed Evolution and Protein Modelling Uni of Cambridge
Understanding Building Energy Performance with Urban Data Analytics (In person) Uni of Cambridge
Measuring Safety Perceptions of Neighborhoods with Human-centered Geospatial Data Science (Online) Uni of Cambridge
AI4ER and Environmental Intelligence CDT Joint Showcase 2024 Uni of Cambridge
West Hub AI Café Uni of Cambridge
Core Statistics using R (In person) Uni of Cambridge
C2D3 Computational Biology Annual Symposium 2024 C2D3 event
Urban Visual Intelligence: Studying Cities with AI and Street-level Imagery (Online) Uni of Cambridge
Eyes on the City: Harnessing Visual AI for Public Space Analysis (Online) Uni of Cambridge
Packaging and Publishing Python Code for Research workshop Uni of Cambridge
AI UK 2024 - Live stream tickets ONLY External
AI Clinic Uni of Cambridge
AI UK Fringe 2024 External
Cambridge Festival: Functional genomics and AI: super sleuths in the search for new therapies Uni of Cambridge
Cambridge Festival: The Meta Lab: Accelerating learning with AI and VR Uni of Cambridge
Cambridge Festival: How will AI affect the democratic process? Uni of Cambridge
Cambridge Festival: Artificial intelligence: With great power comes great responsibility Uni of Cambridge
Accelerate Programme for Scientific Discovery Seminar Uni of Cambridge
Cambridge Festival: Showing different angles of AI and emerging technologies Uni of Cambridge
Cambridge Festival: Workshop on deepfakes and AI-generated media Uni of Cambridge
2024 BBMS Conference – Bridging Bench to Bedside Uni of Cambridge
Cambridge Festival: AI Needs You: An evening with Verity Harding Uni of Cambridge
AI Clinic Uni of Cambridge
ICCS ReproHack March 2024 Uni of Cambridge
Cambridge AI Club - March Theme - "Knowledge Graphs" Uni of Cambridge
Embodied Artificial Intelligence and Evolutionary Soft Robotics Workshop (Invitation only) C2D3 event
Accelerate Programme Lunchtime Seminar Uni of Cambridge
Interpretable AI for Precision Histopathology Uni of Cambridge
AI and Large Language Models Workshop Uni of Cambridge
Software in Polar Science C2D3 event
Digital Twins - Industry and Academic Perspectives Uni of Cambridge
Machine Learning Engineering Clinic Session with the AI Club for Biomedicine Uni of Cambridge
School of Biological Sciences Machine Learning Engineering Clinic Session Uni of Cambridge
Climate & Sustainability Research Showcase Uni of Cambridge
Research Café 24- Data Intensive Science Uni of Cambridge
Machine Learning - Industry and Academic Perspectives Uni of Cambridge
Responsible AI for Journalism Uni of Cambridge
NeurIPS @ Cambridge Uni of Cambridge
AI at work: a critical introduction to Machine Learning systems Uni of Cambridge
Is ‘artificial’ intelligent? Understanding human intelligence in the AI age Uni of Cambridge
Machine Learning: Portents and Possibilities Uni of Cambridge

Talks

Upcoming related talks from talks@cam

Date Title Speaker Abstract
Hippocampal neuronal activity is aligned with action plans Changmin Yu Neuronal firing in the hippocampus has long been associated with diverse variables such as spatial location, time, sensory cues, rewards and motor actions. However, it has remained unclear whether these correlations reflect multiple distinct functions of hippocampal circuits or a more unified computational principle. In this work, researchers developed a behavioral paradigm in mice where spatial, auditory and reward cues were independently manipulated to vary their relevance. High‑density electrophysiological recordings across hippocampal ensembles revealed tuning to each modality.
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
BSU Seminar: "A unifying framework for generalised Bayesian online learning in non-stationary environments" Gerado Duran-Martin, Oxford-Man Institute, University of Oxford We propose a unifying framework for methods that perform probabilistic online learning in non-stationary environments. We call the framework BONE, which stands for generalised (B)ayesian (O)nline learning in (N)on-stationary (E)nvironments. BONE provides a common structure to tackle a variety of problems, including online continual learning, prequential forecasting, and contextual bandits.
Graphrag Andrea Giuseppe Di Francesco, Sapienza University of Rome, ISTI-CNR Title to be defined
BSU Seminar: "Nonparametric causal decomposition of group disparities" Ang Yu, Hong Kong University of Science and Technology We introduce a new nonparametric causal decomposition approach that identifies the mechanisms by which a treatment variable contributes to a group-based outcome disparity. Our approach distinguishes three mechanisms: group differences in: (1) treatment prevalence, (2) average treatment effects, and (3) selection into treatment based on individual-level treatment effects.
BSU Seminar: "Generating crossmodal gene expression from cancer histopathology improves multimodal AI predictions" Samiran Dey, Indian Association for the Cultivation of Science, Kolkota Transcriptomic profiling provides rich molecular insights for cancer diagnosis and prognosis, but its high cost limits routine clinical use, where histopathology remains the primary diagnostic modality. Recent advances in artificial intelligence suggest that molecular information can be inferred directly from digital pathology images. This talk discusses a generative multimodal framework that synthesizes transcriptomic features from whole-slide histopathology images and incorporates them to improve cancer grading and survival risk prediction across multiple cancer cohorts.
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.
A Novel Diffusion Model based Approach for Sleep Music Generation Kevin Monteiro, Department of Computer Science and Technology Sleep disorders, particularly insomnia, and mental health conditions affect a significant fraction of adults worldwide, posing seriousmmental and physical health risk. Music therapy offers promising, low-cost, and non-invasive treatment, but current approaches rely heavily on expert-curated playlists, limiting scalability and personalisation. We propose a low-cost generative system leveraging recent advances in diffusion models to synthesize music for therapy. We focus on insomnia and curate a dataset of waveform sleep music to generate audio tailored to sleep.
TBD Daniel Platt, Imperial College London TDB
Representational Geometry of Language Models Matthieu Téhénan (University of Cambridge) Abstract not available
 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.
Talk by Prof. Stephen Bach (Brown University) Prof. Stephen Bach (Brown University) Abstract not available
Talk by Prof. Stephen Bach (Brown University) Prof. Stephen Bach (Brown University) Abstract not available
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 Aaron Mueller (Boston University) Aaron Mueller (Boston University) Abstract not available
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.
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.