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This report tried to estimate AI energy usage, which is a...

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AI Now Senior EU and Global Governance Lead Frederike Kaltheuner Provides...

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AI Unveils Sound of Ancient Greek Languages

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Machine psychology: A bridge to general AI?

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Build or buy? Scaling your enterprise gen AI pipeline in 2025

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Meta says it’s making its Llama models available for US national...

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Irshad Buchh, Cloud Solutions Engineer – Building Machine Learning Models, Developing...

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Thoughts and Lessons for Planning Rater Studies in AI

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AI Predicts 2025 NFL Divisional Round Outcomes

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Sampling Without Data is Now Scalable: Meta AI Releases Adjoint Sampling...

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Meta Researchers Introduced J1: A Reinforcement Learning Framework That Trains Language...

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This AI Paper Introduces PARSCALE (Parallel Scaling): A Parallel Computation Method...

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Marktechpost Releases 2025 Agentic AI and AI Agents Report: A Technical...

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Sampling Without Data is Now Scalable: Meta AI Releases Adjoint Sampling...

Data Scarcity in Generative Modeling Generative models traditionally rely on large, high-quality datasets to produce samples that replicate the underlying data distribution. However, in fields like molecular modeling or physics-based inference, acquiring such data can be computationally infeasible or even impossible. Instead of labeled data, only a scalar reward—typically derived...