Generative AI in Genomics
Generative AI in Genomics
In conjunction with
International Conference on Learning Representations 2026
April 23-27, 2026
Riocentro Convention and Event Center
Rio de Janeiro
Applies generative models to genomic sequence design, protein structure prediction, and biological data synthesis.
More workshops at International Conference on Learning Representations 2026
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- Algorithmic Fairness in AI Systems — Examines fairness, bias, and equity across AI alignment techniques and autonomous agent systems.
- AI for Accelerated Materials Design — Covers machine learning methods for materials discovery, property prediction, and inverse design - from graph...
- AI for Materials Design — Applies machine learning to accelerate discovery of new materials for energy, medicine, and advanced manufacturing....
- AI for Peace — Explores how AI can support conflict prevention, humanitarian response, and peacebuilding applications.
- AI for Partial Differential Equations — Applies machine learning to solving and simulating partial differential equations in physics, climate, and engineering....
- Navigating and Addressing Data Problems for Foundation Models — Tackles the data side of foundation model development: curation, deduplication, quality filtering, data contamination detection,...
- Data Problems for Foundation Models — Tackles data quality, curation, scaling, and contamination challenges in training and evaluating foundation models.
- Foundation Models for Science: Real-World Impact and Science-First Design — Brings together researchers applying large foundation models to scientific discovery, with a focus on real-world...
- Foundation Models for Science — Examines how foundation models can be designed and evaluated for scientific discovery across physics, chemistry,...
- Integrating Generative and Experimental Platforms for Biomolecular Design — Bridges wet lab biology and generative AI, focusing on how active learning loops between computational...
- Geometry-Grounded Representation Learning — Develops representations and generative models grounded in geometric structure for 3D, spatial, and equivariant learning....
- Geometry-grounded Representation Learning and Generative Modeling — Explores how geometric inductive biases - symmetry, equivariance, manifold structure - can improve representation learning...
- From Human Cognition to AI Reasoning — Draws on cognitive science and psychology to inform AI reasoning research, exploring what human mental...
- Lifelong Agents: Learning, Aligning, Evolving — Investigates how AI agents can continuously learn new tasks without forgetting old ones, stay aligned...
- Lifelong Agents Workshop — Addresses continual learning, alignment, and adaptation in AI agents that operate and improve over extended...
- Learning Meaningful Representations of Life — Focuses on representation learning for biological data - from protein structures to genomics to single-cell...
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- Machine Learning for Genomics Explorations — Focuses on applying modern deep learning to genomic data: sequence models for DNA and RNA,...
- Machine Learning for Genomics — Advances ML methods for genomic sequence analysis, gene expression, variant calling, and multi-omics integration.
- Multimodal Intelligence: Next Token Prediction and Beyond — Explores architectures and training paradigms for multimodal models that go beyond next-token prediction, including diffusion-based...
- Multimodal Intelligence Workshop — Examines unified multimodal architectures that go beyond next-token prediction for vision, language, audio, and action....
- Real-World Constrained Generative Models — Develops diffusion and flow-based generative models that satisfy real-world constraints and align with human preferences....
- AI with Recursive Self-Improvement — Explores the theoretical foundations and practical implications of AI systems that can improve their own...
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- Time Series in the Age of Large Models — Explores how large pre-trained models can be adapted for time series forecasting, classification, and anomaly...
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- Test-Time Updates — Investigates methods that allow models to adapt at inference time - including test-time training, in-context...
- Test-Time Updates Workshop — Studies how models can adapt and improve at inference time using test-time training, prompting, and...
- AI Verification in the Wild — Bridges formal verification and machine learning, exploring how to provide provable guarantees about model behavior...
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Hotels near Riocentro Convention and Event Center
Ibis Rio de Janeiro Barra da Tijuca
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