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South Korea's Naver to build gigawatt-scale AI factories using Nvidia technology
South Korea's Naver to build gigawatt-scale AI factories using Nvidia technology SEOUL, June 8 : Nvidia said on Monday that South Korean internet conglomerate Naver would use its technology to build AI factories at gigawatt scale to meet rising global demand for AI services and physical AI. The project is aimed at serving growing global demand for AI services and physical AI applications, Nvidia said.
Trump signs scaled-back AI cybersecurity order
Trump signs scaled-back AI cybersecurity order The federal government will only have 30 days at best to review new models. On Tuesday, President Trump signed an executive order calling for the creation of a framework designed to give the federal government the capability to evaluate AI models.
Exclusive-Meta scales back AI mouse clicks tool, citing employee concerns
Exclusive-Meta scales back AI mouse clicks tool, citing employee concerns NEW YORK, June 2 : Meta is dialing back elements of its plan to collect employee mouse movements, keystrokes and other actions for use as AI training data, it said in an internal memo on Tuesday, following weeks of angry pushback from staffers. "While we remain confident in the privacy protections we put in place at launch, which went through several layers of risk review, we have heard your concerns about personal...
RiskNet: A large-scale dataset of AI risk incidents from news with alignment and multi-dimensional annotations
arXiv:2606.08376v1 Announce Type: new Abstract: As artificial intelligence (AI) systems are increasingly deployed across socially consequential domains, reports of AI-related harms and failures have grown in frequency and diversity. Although existing governance frameworks articulate high-level principles for responsible AI, large-scale empirical resources for tracking and analyzing real-world AI risk incidents remain limited. Existing incident collections are often manually curated,...
Toward Autonomous O-RAN: A Multi-Scale Agentic AI Framework for Real-Time Network Control and Management
arXiv:2602.14117v2 Announce Type: replace Abstract: Open Radio Access Networks (O-RAN) promise flexible 6G network access through disaggregated, software-driven components and open interfaces, but this programmability also increases operational complexity. Multiple control loops coexist across the service management layer and RAN Intelligent Controller (RIC), while independently developed control applications can interact in unintended ways. In parallel, recent advances in generative...
DeltaBox: Scaling Stateful AI Agents with Millisecond-Level Sandbox Checkpoint/Rollback
arXiv:2605.22781v2 Announce Type: replace Abstract: LLM-powered AI agents require high-frequency state exploration (e.g., test-time tree search and reinforcement learning), relying on rapid checkpoint and rollback (C/R) of the complete sandbox state, including files and process state (e.g., memory, contexts, etc.). Existing mechanisms duplicate the entire state, causing hundreds of milliseconds to seconds of latency per C/R, which severely bottlenecks deep search and large-scale fan-outs....
Brookfield Bets on AI at Scale Never Tested Before in $50 Billion Push
The 1,400-acre site for Project Jupiter, an AI data center under development in New Mexico.
Do Larger Models Really Win in Drug Discovery? A Benchmark Assessment of Model Scaling in AI-Driven Molecular Property and Activity Prediction
Announce Type: replace Abstract: The rapid growth of molecular foundation models and large language models (LLMs) has encouraged a scale centred view of AI in drug discovery, in which larger pretrained models are expected to supersede compact cheminformatics models. We test this assumption across 26 ADME, toxicity and bioactivity endpoints, covering 165,541 endpoint level compound label records. The benchmark contains 78 endpoint and split entries evaluated under random, Murcko scaffold and...
Empathy on Demand: How Empathic AI Can Scale Emotional Support for Verbal Harassment
Announce Type: new Abstract: Verbal harassment is a growing source of psychological stress for people around the world. It occurs both online and offline and relies on language to demean, threaten, or discredit its targets. Unlike other stressors such as loss or uncertainty, verbal harassment aims at silencing its targets by eroding their sense of being heard and weakening their perceived ability to respond.