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Events and Talks

 

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

Events

11 May 2026 - 29 Jun 2026

Turing Workshop Hybrid

Cyber Threat Observatory Workshop

17 Jun 2026

22 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

7 Sep 2026 - 11 Sep 2026

Cambridge Zero Research Symposium: AI & Sustainability Uni of Cambridge
Structured missingness workshop External
Machine learning can identify newly diagnosed patients with Chronic… Uni of Cambridge
The Turing Lectures: The science of movement External
Cambridge-Turing sessions reloaded: collaborative data science and AI research C2D3 event
The cost of data: making sense in digital society Uni of Cambridge
The Turing Lectures: What are your chances? External
Aviva & University of Cambridge Annual Partnership Showcase C2D3 event
Entrepreneurial pathways to impact: Spinning-out your research Uni of Cambridge
Applied Process Mining for Management C2D3 event
Turing Data Study Group - Applications now open External
The Alan Turing Institute - DCEng Summit External
The Alan Turing Institute - Turing trustworthy digital identity conference External
Data x Biomedical Science Summer Event Series - Tuesday 20 July 2021 External
The Alan Turing Institute Digital Twins Workshop External
The Turing Lectures - Policy fights back: Mitigating algorithmic bias in AI… External
Data x Biomedical Science Summer Event Series - Tuesday 13 July 2021 External
The Trinity Challenge - Awards Ceremony External
Cambridge-Turing sessions: collaborative data science and AI research C2D3 event
Breaking the code: Alan Turing’s legacy in 2021 External
Cambridge Public Health Conference 2021: Children and Young People’s Mental… Uni of Cambridge
Cambridge Computational Biology Institute (CCBI)​ Annual Symposium 2021​ C2D3 event
Launch Event of the Cambridge Mathematics of Information in Healthcare (CMIH) Uni of Cambridge
UKCRIC Digital Theme Workshop Uni of Cambridge
An AI revolution in science? Using machine learning for scientific discovery Uni of Cambridge
NVIDIA GTC 21 External
CAMBRIDGE FESTIVAL: Health data research and COVID-19 Uni of Cambridge
CAMBRIDGE FESTIVAL: Bias in data: How technology reinforces social stereotypes Uni of Cambridge
CAMBRIDGE FESTIVAL: AI: Hype vs reality Uni of Cambridge
CAMBRIDGE FESTIVAL: Empathetic machines: Can chatbots be built to care? Uni of Cambridge
CAMBRIDGE FESTIVAL: Artificial Intelligence and unfair bias: Addressing… Uni of Cambridge
The Turing Presents: AI UK External
Data Science Careers Fair Uni of Cambridge
The CCAIM Seminar Series - Prof. Dana Pe’er Uni of Cambridge
The Trinity Challenge Town Hall - Panel discussion External
The Trinity Challenge Town Hall - Q&A session 1 External
The Trinity Challenge Town Hall - Q&A session 2 External
The CCAIM Seminar Series - Prof. Isaac (Zak) Kohane Uni of Cambridge
AI medicine and novel drug target discovery Uni of Cambridge
The Alan Turing Institute Research programmes showcase: Urban analytics External
The Alan Turing Institute Research programmes showcase: Artificial intelligence External
IRIS Machine Learning Workshop External
The Alan Turing Institute Research programmes showcase: Defence and security External
Modelling Solutions to the Impact of COVID-19 on Cardiovascular Waiting… Uni of Cambridge
Healthcare Research Showcase - Department of Computer Science and Technology Uni of Cambridge
The Alan Turing Institute Research programmes showcase: Finance and economics External
Cambridge Centre for AI in Medicine (CCAIM) Inaugural Event Uni of Cambridge
The Alan Turing Institute Research programmes showcase: Data-centric engineering External
The Alan Turing Institute Research programmes showcase: Tools, practices and systems External
The Alan Turing Institute Research programmes showcase: Heath and medical sciences External

Talks

Upcoming related talks from talks@cam

Date Title Speaker Abstract
Enabling Traffic Scheduling for RDMA Jichun Wu, University of Cambridge

Abstract:

Training Language Models with User Simulators Prof. Nicholas Tomlin (NYU & TTIC)

Abstract: If we want to build collaborative language models, we'll need to find the right training objective. One promising direction involves simulating human users at scale and using these simulations as a training signal to develop models that better understand and interact with people. In this talk, I’ll discuss key challenges in simulating human behavior, ranging from hallucinations and coherence to knowledge consistency and memory. Then, I’ll discuss some recent and ongoing work and outline future directions for building more human-like user simulators.

Token Distillation and the Future of Token Embeddings Konstantin Dobler (Hasso Plattner Institute and ELLIS Unit Potsdam)

Abstract:

Careers Beyond Academia - Financial Times, Chief Data Officer Kate Sargent, Chief Data Officer, Financial Times

The Careers Beyond Academia Seminar Series provides PhD students and Early Career Researchers with realistic, experience-based insights into career pathways outside academia. Through invited talks from professionals working across industry and organisations, the series helps researchers understand how to successfully transition their skills and expertise into impactful roles beyond the university environment.

Statistics Clinic Easter 2026 IV

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/HdHM5kKYuxcdRPzr6. Sign-up is possible from June 18 midday (12pm) until June 22 midday or until we reach full capacity, whichever is earlier. If you successfully signed up, we will confirm your appointment by June 24 midday.

From Model Training to Model Raising: Toward LLM Alignment from Token Zero Prof. Robert West (EPFL)

Abstract: Current AI training methods align models with human values only after their core capabilities have been established, resulting in models that are easily misaligned and lack deep-rooted value systems. We propose a paradigm shift from "model training" to "model raising", in which alignment is woven into a model's development from the start.

Can an IP-based protocol stack be used for end-to-end communication in deep space? Prof. Carles Gomez, Universitat Politècnica de Catalunya

Abstract:

Title to be confirmed Donya Rooein (Bocconi University)


BSU Seminar: "Estimating conditional means under missingness-not-at-random with incomplete auxiliary variables" Maya Mathur, Associate Professor, Stanford Medicine

Estimators assuming missingness at random (MAR) can fail under missingness not at random (MNAR). Introducing complete auxiliary variables sometimes restores MAR by breaking dependence between analysis variables and missingness. However, if the auxiliaries are themselves incomplete, MAR typically remains violated.

Cambridge AI in Medicine Seminar - July 2026 Mengling Feng and Kai He

Sign up on Eventbrite: https://medai-july2026.eventbrite.co.uk