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¹û¶³Ó°Ôº NeuroAI

¹û¶³Ó°Ôº NeuroAI fosters collaboration between our neuroscience and AI communities. Discover upcoming events, recordings of previous talks, and other opportunities.

Decorative

About NeuroAI

The last decade has seen phenomenal advances in the fields of machine learning (e.g. deep learning, reinforcement learning, and AI). While these changes have already had considerable impact on most areas of science they hold a particular resonance for neuroscience.

Crucially, AI shares a common lineage with neuroscience and fundamentally machine learning and the brain employ similar computations to process and compress information. For these reasons AI provides a means to emulate neural functions and the circuits supporting them, providing insights to aid our understanding of the brain and cognition.

Equally, AI tools provide a means to discover, segment, and track distinct neural and behavioural states - yielding more efficient experiments and accelerating the pace of discovery. In turn, this understanding feeds back into the design of more effective AI architectures and models.

Essentially, AI problems posed in neuroscience both require and inspire further advances in AI.

Upcoming Talks:

¶Ù²¹³Ù±ð:ÌýWednesday 22ÌýMayÌý2024,Ìý14:00 - 15:00
Talk title:ÌýGenerative models for video games
Speaker: Katja Hoffman, Microsoft Research

NeuroAI Talk Series - 13ÌýMarchÌý2024

³§±è±ð²¹°ì±ð°ù:ÌýClare Lyle Deepmind

Title:Ìý"Unifying the mechanisms of hippocampal episodic memory and prefrontal working memory"

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Previous talks

2020

July 2020 | Dr Irina Higgins
Talk title:
"Unsupervised deep learning identifies semantic disentanglement in single inferotemporal neurons"
Speaker: Dr Irina Higgins, Google Deepmind
Date: Wednesday 15 July 2020


September 2020 | Professor Michael Bronstein
Talk title: "Geometric deep learning on graphs and manifolds"
Speaker: Professor Michael Bronstein, Imperial College London
Date: Wednesday 16 September 2020


October 2020 | Dr Aldo Faisal
Talk title: "Brains as human-in-the-loop AI systems"
Speaker: Dr Aldo Faisal, Imperial College London
Date: Wednesday 14 October 2020


November 2020 | Professor Netta Cohen
Talk title: "The brain map of a worm: A multiscale connectome derived from whole-brain volumetric reconstructions"
Speaker: Professor Netta Cohen, University of Leeds
Date: Wednesday 11 November 2020

2021

January 2021 | Benigno Uria
Talk title: "The Spatial Memory Pipeline: a deep learning model of egocentric to allocentric understanding in mammalian brains"
Speaker: Benigno Uria, DeepMind
Date: Wednesday 13 January 2021


February 2021 | Daniel Yamins
Talk title: "Self-Supervised Learning for Neuroscience and Artificial Intelligence"
Speaker: Daniel Yamins, Stanford University
Date: Wednesday 17 February 2021


March 2021 | Kimberly Stachenfeld
Talk title: "Graph Representation Learning and the Hippocampal-Entorhinal Circuit"
Speaker: Kimberly Stachenfeld, DeepMind
Date: Wednesday 17 March 2021


June 2021 | Dr Ida Momennejad
Talk title: "Toward Human-like RL"
Speaker: Dr Ida Momennejad, Microsoft Research NYC
Date: Wednesday 9 June 2021


July 2021 | Alexander Terenin
Talk title: "Physically Structured Neural Networks for Smooth and Contact Dynamics"
Speaker: Alexander Terenin, Imperial College London
Date: Wednesday 14ÌýJulyÌý2021


September 2021 | Professor Michael Milford
Talk title: "Spatial and Perceptual Neuroscience Questions a Roboticist Would Love to Have Answered"
Speaker: Professor Michael Milford, Queensland University of Technology
Date: Wednesday 15 September 2021


October 2021 | Dr Rebecca Jackson
Talk title: "Reverse-Engineering the Cortical Architecture for Controlled Semantic Cognition"
Speaker: Dr Rebecca Jackson, University of Cambridge
Date: Wednesday 13 October 2021


November 2021 | Dr Will de Cothi
Talk title: "Learning predictive maps in the brain for spatial navigation"
Speaker: Dr Will de Cothi, ¹û¶³Ó°Ôº
Date: Wednesday 17 November 2021

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2022

February 2022 | Dr Kelsey Allen
Talk title: "Towards a recipe for physical reasoning in humans and machines"
Speaker: Dr Kelsey Allen, DeepMind
Date: Wednesday 16 February 2022


April 2022 | Professor Nathaniel Daw
Talk title: "Tractable, compositional linear approximations to planning in the brain"
Speaker: Nathaniel Daw, Princeton University
Date: Wednesday 20 April 2022


June 2022 | Dr Grace Lindsay
Talk title: "Attention in Psychology, Neuroscience, and Machine Learning"
Speaker: Dr Grace Lindsay, New York University
Date: Wednesday 15 June 2022


October 2022 | Dr Athena Akrami
Talk title:
"Exploiting sensory statistics in decision making"
Speaker: Dr Athena Akrami, Sainsbury Wellcome Centre
Date: Wednesday 12 October 2022


November 2022 | Professor Sam Gershman
Talk title: "Amortized inference in mind and brain"
Speaker: Professor Sam Gershman, Harvard University
Date: Wednesday 9 November 2022


December 2022 | Dr Jane Wang
Talk title: The power of structured representations (and how to learn them)
Speaker: Dr Jane Wang, DeepMind
Date: Wednesday 14th December 2022

2023

January 2023 | Dr Carsen Stringer
Talk title: "Making sense of large-scale neural and behavioral data"
Speaker: Dr Carsen Stringer, Howard Hughes Medical Institute Janelia Research Campus
Date: Wednesday 11th January 2023


February 2023 | Professor Malcolm MacIverÌý
Talk title: Does terrestriality advantage planning in vertebrates?Ìý
Speaker: Professor Malcolm MacIver (Northwestern University)
Date: Wednesday 15th February 2023


March 2023 | Professor Jakob Macke
Talk title: " Bridging machine learning and mechanistic modelling"Ìý
Speaker: Professor Jakob Macke (University of Tübingen)
Date: Wednesday 15th March 2023


June 2023 | Professor Neil Burgees
ÌýTalk title: "Understanding our memory system as a generative model"Ìý
ÌýSpeaker: Professor Neil Burgess (¹û¶³Ó°Ôº)Ìý
ÌýDate: Wednesday 14th JuneÌý2023

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Previous annual events

May 2021

Date: Wednesday 12ÌýÌýMayÌý2021

¹û¶³Ó°Ôº's Annual NeuroAIÌýevent featuredÌýspeakers working across the spectrum of machine learning and neuroscience. This event fostered further collaboration and discussion.ÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌýÌý

Speakers: Professor Alexander Mathis (Swiss Federal Institute of Technology, EPFL), Professor Claudia Clopath (Bioengineering Department, Imperial College London), Professor Daniel Alexander (¹û¶³Ó°Ôº Department of Computer Science), Dr Jennifer Collinger (Department of Physical Medicine and Rehabilitation, University of Pittsburgh)Ìý

Full programme available here.

July 2022

Date: Monday 11 July 2022

¹û¶³Ó°Ôº's Annual NeuroAIÌýevent featuredÌýspeakers working across the spectrum of machine learning and neuroscience. This event fostered further collaboration and discussion.ÌýÌý

Speakers: Professor Peter LathamÌý(Gatsby Computational Neuroscience Unit, ¹û¶³Ó°Ôº), Dr RaiaÌýHadsell (DeepMind), Professor Blake Richards (McGill University), Dr Kim Stachenfeld (DeepMind)

Event programme:

1.00pm – Welcome

1.05pm – 2.35pm – Session one

Kim StachenfeldÌý(DeepMind) "Predictions and Relations for Biological and Artificial Reasoning"

Peter LathamÌý(¹û¶³Ó°Ôº) "Why Dale’s law?"

Blake RichardsÌý(McGill University) "Contrastive introspection to rapidly identify contingencies in the environment"

2.35pm - 2.55pm – Comfort break

2.55pm – 3.55pm – Session two

Raia HadsellÌý(DeepMind) "Embodied AGI and The Future of Robotics"

Panel discussion

3.55pm - 4.00pm – Closing remarks

4.00pm - 5.00pm – Drinks reception

November 2023

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Date: Tuesday 28 November 2023

¹û¶³Ó°Ôº's Annual NeuroAIÌýevent was held at the Sainsbury Wellcome Centre andÌýfeaturedÌýspeakers working across the spectrum of machine learning and neuroscience. This event fostered further collaboration and discussion.ÌýÌý

Speakers:ÌýProfessor Murray Shanahan (Imperial College London), Dr Maria Eckstein (DeepMind), Dr Ann Duan (Sainsbury Wellcome Centre),ÌýProfessor Christopher Summerfield (University of Oxford),ÌýProfessor Ila Fiete (Massachusetts Institute of Technology),ÌýProfessor Timothy Behrens (University of Oxford),ÌýDr Alexandra Keinath (University of Illinois Chicago).

Avaliable Talks:

Professor Murray Shanahan, Professor in Cognitive Robotics, Imperial College London

Role Play with Large Language Models


Dr Maria Eckstein, Research Scientist, DeepMind

Predictive and Interpretable: Using Classic Cognitive Models and Artificial Neural Networks to Understand Human Learning and Decision Making


Dr Ann Duan, Senior Research Fellow and Group Leader, Sainsbury Wellcome Centre

Mice Dynamically Adapt to Opponents in Multiplayer Games


Professor Christopher Summerfield, Professor of Cognitive Neurosci-ence, University of Oxford

Learning Content and Structure in a Dual-Streams Neural Network


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Lightning Talks

Ms Lauren Bennett, PhD student, Cell and Developmental Biology, ¹û¶³Ó°Ôº

Building a Biologically-Plausible Model of Subiculum Activity


Professor Rhodri Cusack, Trinity College Institute of Neuroscience

Human Infants are Learning a Foundation Model


Dr George Dimitriadis, Senior Research Fellow, SWC/Gatsby

Curriculum Learning in Animals and Animats


Mr William Dorrell, PhD student, Gatsby Unit

Actionable Neural Representations: Normative Theories of Neural Internal Models


Mr Tom George, PhD Student, Sainsbury Wellcome Centre

Is the Hippocampus a Helmholtz Machine: Bioplausible Substrates for the Wake-sleep Algorithm and Hippocampal Structure Learning


Dr Marcus Ghosh, Postdoctoral Research Fellow, I-X, Imperial College London

Multimodal Units Fuse-Then-Accumulate Evidence Across Channels


Mr Ed Li, Masters Student, Nuffield Department of Clinical Neurosci-ences, University of Oxford

A Tractable Solution to Imperfect Observation Models: Cut-Posteriors and their Application in Multisensory Integration


Mr Samuel Liebana Garcia, PhD Student, Department of Physiology, Anatomy and Genetics, University of Oxford

Striatal Dopamine Reflects Individual Long-term Learning Trajectories


Dr Kryzystof Potempa, Founder and CEO, BRAINCURES

An LTP-gene Powered Biological Intelligence Approach to De-Risked and Acceler-ated Drug Development


Elizaveta Tennant, PhD Student, Computer Science

Modeling Moral Choices in Social Dilemmas with Multi-Agent Reinforcement Learning

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