Deep Learning Extravaganza 2024

Celebrating the most cutting-edge machine learning research of the Amsterdam AI Ecosystem

June 14, 2024

16:00-19:30

Lab42, Amsterdam Science Park

The ELLIS unit Amsterdam is proud to announce the Deep Learning Extravaganza in collaboration with the Deep Thinking Hour at Lab42. Attend the event to connect with Amsterdam’s innovators and explore the latest cutting-edge Machine Learning research.

Event programme

16:10-17:00

Keynote Presentation

Megan Stanley (Microsoft Research Lab)
Venue: L1.02

17:00-19:30

Poster Session

with bites & drinks
Venue: ground floor

Megan Stanley

Senior Researcher

About the keynote speaker

She is a Senior Researcher in the Machine Intelligence group with a focus on methods applied to natural sciences and drug-discovery. Her interests include meta-learning and generative models. She previously completed a PhD at the University of Cambridge at the intersection between Quantum Optics and Condensed Matter.

Aurora, the first large-scale foundation model of the atmosphere

Posters showcased at the event

The Unreasonable Effectiveness of Random Target Embeddings for Continuous-Output Neural Machine Translation

NAACL 2024 (main track)

CORE: Towards Scalable and Efficient Causal Discovery with Reinforcement Learning

AAMAS 2024 (main track)

Neural Diffusion Models

IJCAI 2024 (main track)

Don’t Buy it! Reassessing the Ad Understanding Abilities of Contrastive Multimodal Models

ACL 2024 (track: Multimodality and Language Grounding to Vision, Robotics and Beyond)

A Machine with Short-Term, Episodic, and Semantic Memory Systems

AAAI 2023

How to Train Neural Field Representations: A Comprehensive Study and Benchmark

CVPR 2024

Learning in Public Goods Games with Non-Linear Utilities: a Multi-Objective Approach

ALA 2024

Clifford-Steerable Convolutional Neural Networks

ICML 2024

Learning Fair Cooperation in Mixed-Motive Games with Indirect Reciprocity

IJCAI 2024 (main track)

Emergent Cooperation under Uncertain Incentive Alignment

AAMAS 2024 (main track)

A Sparsity Principle for Partially Observable Causal Representation Learning

ICML 2024

Any-Shift Prompting for Generalization over Distributions

CVPR 2024

Compositional Entailment Learning for Hyperbolic Vision-Language Models

Ai-Sampler: Adversarial Learning of Markov kernels with involutive maps

ICML 2024

Continual hyperbolic learning of instances and classes

under review (TOMM journal)

DNA: Differentially private Neural Augmentation for contact tracing

ICLR 2024 (Private ML workshop)

CausalPlayground: Addressing Data-Generation Requirements in Cutting-Edge Causality Research

CVPR 2024 (CORR workshop)

DIBS: Enhancing Dense Video Captioning with Unlabeled Videos via Pseudo Boundary Enrichment and Online Refinement

CVPR 2024 (main track)

Adapting Neural Link Predictors for Data-Efficient Complex Query Answering

NeurIPS 2023

VeRA: Vector-based Random Matrix Adaptation

ICLR 2024 (main track)

A Probabilistic Approach to Learning the Degree of Equivariance in Steerable CNNs

ICML 2024 (main track)

CompFuser: Enabling Spatial Composition in Text-to-Image Generation

ELLIS unit Amsterdam is proud to announce the Deep Learning Extravaganza on June 13th at LAB42.