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OpenAI's Ambitious AI Expansion Plans and the Challenges Ahead In a bold move, OpenAI has announced a strategic partnership with Nvidia to build out at least 10 gigawatts of computing power for its next-generation AI data centers. This $100 billion investment signals OpenAI's intention to cement its position as a leader in the race towards artificial general intelligence (AGI). According to Sam Altman, OpenAI's CEO, this massive infrastructure expansion is crucial to unlocking extended reasoning and experimentation capabilities that smaller competitors cannot match. The company believes that the ability to run AI models for hours or even days at a time will be a key differentiator in the quest for AGI. However, OpenAI's ambitions have not been without their challenges. A former OpenAI researcher, Jerry Tworek, has highlighted a fundamental flaw in current AI models – their inability to learn from mistakes. Tworek argues that unless models can "work themselves through difficulties and get unstuck on solving a problem," true AGI will remain elusive. This fragility in AI training has been echoed by other scientists, who have observed that reasoning models can suffer a "reasoning collapse" when faced with problems outside of their training data. Alongside these technical hurdles, OpenAI is also navigating the complex landscape of AI regulation and public perception. The company's request for $1 trillion in U.S. government loan guarantees to fund its massive infrastructure buildout has raised eyebrows, with some questioning whether this represents a shift towards "socialized risk and privatized reward in the age of AGI." Furthermore, the recent ruling by a German court in favor of GEMA, a music rights organization, against OpenAI's use of copyrighted songs in its language model training, highlights the ongoing legal challenges facing the AI industry. This contrasts with cases in the U.S., where no concrete decisions have been made on the fair use of copyrighted material for AI training. As OpenAI continues to push the boundaries of AI development, it must navigate these technical, regulatory, and legal challenges to realize its vision of a future powered by advanced artificial intelligence. The company's success or failure in this endeavor will have far-reaching implications for the entire AI industry and the future of technology.

Claude Code: A Highly Agentic Coding Assistant

Here is a 453-word journalistic summary of the key details from the 5 articles about "Claude Code: A Highly Agentic Coding Assistant": Anthropic's New AI Coding Agent Impresses Google Engineer, Raises Questions About the Future of Software Development Anthropic, the AI research company behind the popular language model ChatGPT, has developed a new AI-powered coding assistant called Claude Code that is generating significant buzz in the tech industry. According to reports, Claude Code has demonstrated an impressive level of autonomy and capability that has surprised even seasoned software engineers. In a post on the social media platform X, Jaana Dogan, a senior engineer at Google, revealed that she was able to use Claude Code to generate a working distributed agent orchestrator system in just one hour - a task that her team at Google had been developing for over a year. Dogan noted that the prompt she provided to Claude Code was relatively simple, just three paragraphs, but the AI was still able to produce a result that matched what her team had been working on. "What I built this weekend isn't production grade and is a toy version, but a useful starting point," Dogan wrote. "I am surprised with the quality of what's generated in the end because I didn't prompt in depth about design choices yet CC was able to give me some good recommendations." Dogan's comments highlight the rapid progress being made in the field of AI-assisted coding. According to Andrew Ng's "The Batch" newsletter, Claude Code is a "highly agentic assistant that can plan, execute, and improve code with minimal human input, for more than a few minutes." The newsletter also notes that users can now run multiple instances of Claude Code and work in parallel on different parts of a codebase, though coordinating this process requires careful best practices. The DeepMind blog has also discussed its own efforts in this area, with the introduction of an AI agent called CodeMender that can automatically fix software vulnerabilities. CodeMender leverages advanced language models to reason about code and generate high-quality security patches, helping developers focus on building new features rather than constantly chasing bugs. These developments raise interesting questions about the future of software development. As AI systems become more capable of autonomously generating and maintaining code, the role of human developers may evolve. Some experts, like Dogan, suggest that the ability to quickly build from scratch using AI-generated code could free developers from the "baggage" of legacy systems, allowing them to focus on higher-level design and problem-solving. However, the long-term implications of these technologies remain uncertain. As AI coding assistants become more powerful, there may be concerns about transparency, accountability, and the potential for unintended consequences. Nonetheless, the rapid progress in this area suggests that the future of software development may look quite different than it does today.

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MENTOR: A Reinforcement Learning Framework for Enabling Tool Use in Small Models via Teacher-Optimized Rewards

ChangSu Choi, Hoyun Song, Dongyeon Kim, WooHyeon Jung, Minkyung Cho, Sunjin Park, NohHyeob Bae, Seona Yu, KyungTae Lim

Distilling the tool-using capabilities of large language models (LLMs) into smaller, more efficient small language models (SLMs) is a key challenge for their practical application. The predominant approach, supervised fine-tuning (SFT), suffers from poor generalization as it trains models to imitate a static set of teacher trajectories rather than learn a robust methodology. While reinforcement learning (RL) offers an alternative, the standard RL using sparse rewards fails to effectively guide SLMs, causing them to struggle with inefficient exploration and adopt suboptimal strategies. To address these distinct challenges, we propose MENTOR, a framework that synergistically combines RL with teacher-guided distillation. Instead of simple imitation, MENTOR employs an RL-based process to learn a more generalizable policy through exploration. In addition, to solve the problem of reward sparsity, it uses a teacher's reference trajectory to construct a dense, composite teacher-guided reward that provides fine-grained guidance. Extensive experiments demonstrate that MENTOR significantly improves the cross-domain generalization and strategic competence of SLMs compared to both SFT and standard sparse-reward RL baselines.

GraSS: Scalable Data Attribution with Gradient Sparsification and Sparse Projection

Pingbang Hu, Joseph Melkonian, Weijing Tang, Han Zhao, Jiaqi W. Ma

Gradient-based data attribution methods, such as influence functions, are critical for understanding the impact of individual training samples without requiring repeated model retraining. However, their scalability is often limited by the high computational and memory costs associated with per-sample gradient computation. In this work, we propose GraSS, a novel gradient compression algorithm and its variants FactGraSS for linear layers specifically, that explicitly leverage the inherent sparsity of per-sample gradients to achieve sub-linear space and time complexity. Extensive experiments demonstrate the effectiveness of our approach, achieving substantial speedups while preserving data influence fidelity. In particular, FactGraSS achieves up to 165% faster throughput on billion-scale models compared to the previous state-of-the-art baselines. Our code is publicly available at https://github.com/TRAIS-Lab/GraSS.

Large language models (LLMs) have demonstrated promising performance in generating diagnostic conclusions from imaging findings, thereby supporting radiology reporting, trainee education, and quality control. However, systematic guidance on how to optimize prompt design across different clinical contexts remains underexplored. Moreover, a comprehensive and standardized framework for assessing the trustworthiness of LLM-generated radiology reports is yet to be established. This study aims to enhance the trustworthiness of LLM-generated liver MRI reports by introducing a Multi-Dimensional Credibility Assessment (MDCA) framework and providing guidance on institution-specific prompt optimization. The proposed framework is applied to evaluate and compare the performance of several advanced LLMs, including Kimi-K2-Instruct-0905, Qwen3-235B-A22B-Instruct-2507, DeepSeek-V3, and ByteDance-Seed-OSS-36B-Instruct, using the SiliconFlow platform.

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