🚀 WELCOME TO METAMESH.BIZ +++ China's LongCat and Meituan flex 1.6T parameters without NVIDIA's blessing (sanctions are the mother of invention) +++ Mouse and SigMap promise 97% fewer tokens for your AI coding sessions because efficiency is the new brute force +++ Local MCP wants Claude reading your iMessages on-device (privacy theater meets convenience theater) +++ THE FUTURE IS TRAINING TRILLION-PARAMETER MODELS ON WHATEVER GPUS FELL OFF A TRUCK +++ â€ĸ
🚀 WELCOME TO METAMESH.BIZ +++ China's LongCat and Meituan flex 1.6T parameters without NVIDIA's blessing (sanctions are the mother of invention) +++ Mouse and SigMap promise 97% fewer tokens for your AI coding sessions because efficiency is the new brute force +++ Local MCP wants Claude reading your iMessages on-device (privacy theater meets convenience theater) +++ THE FUTURE IS TRAINING TRILLION-PARAMETER MODELS ON WHATEVER GPUS FELL OFF A TRUCK +++ â€ĸ
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📰 NEWS

Meituan and Chinese AI models without Nvidia

+++ Chinese delivery giant built a 1.6T parameter model sans Nvidia GPUs, suggesting the chip chokehold on AI development is loosening, though "biggest without Nvidia" is a backhanded compliment worth examining. +++

China's LongCat-2.0 Becomes the Biggest AI Model Without Nvidia Chips

đŸ”Ŧ RESEARCH

Distributed Attacks in Persistent-State AI Control

"As AI coding agents become more autonomous, they increasingly ship code iteratively, with the codebase persisting across sessions. This persistence creates a new attack surface: a misaligned or prompt-injected agent can distribute attacks across pull requests (PRs) and time its payload for the PR wi..."
📰 NEWS

A profile of Google DeepMind philosopher Iason Gabriel, whose work has tracked, and in many cases predicted, the ethical challenges posed by the success of LLMs

đŸ”Ŧ RESEARCH

What LLM Agents Say When No One Is Watching: Social Structure and Latent Objective Emergence in Multi-Agent Debates

"LLM agents will increasingly act in socially structured settings where role, audience, and relational context can shape what is advantageous or costly to say. We study whether such social structure, without any explicit objective in the prompt, changes what an agent expresses publicly relative to an..."
đŸ”Ŧ RESEARCH

Online Safety Monitoring for LLMs

"Despite alignment training, LLMs remain prone to generating unsafe outputs at deployment time. Monitoring outputs online and raising an alarm when safety can no longer be assumed is therefore critical. We study a simple real-time monitor that turns a verifier signal from an external model into an al..."
đŸ”Ŧ RESEARCH

ReContext: Recursive Evidence Replay as LLM Harness for Long-Context Reasoning

"Understanding and reasoning over long contexts has become a key requirement for deploying large language models (LLMs) in realistic applications. Although recent LLMs support increasingly long context windows, they often fail to use relevant evidence that is already present in the input, revealing a..."
đŸ”Ŧ RESEARCH

Controllable Sim Agents with Behavior Latents

"Realistic traffic simulation requires agents that imitate logged behavior and can also be steered along interpretable axes. Such controllability enables engineers to isolate variables, reproduce specific edge cases, and test autonomous systems without real-world risk. We introduce Controllable Neura..."
đŸ”Ŧ RESEARCH

OrbitQuant: Data-Agnostic Quantization for Image and Video Diffusion Transformers

"Diffusion transformers (DiTs) achieve state-of-the-art image and video generation, but their multi-step sampling and growing parameter count make inference expensive. Post-training quantization (PTQ) is the natural remedy, yet DiT activations shift across timesteps, prompts, and guidance branches, f..."
📰 NEWS

AI has torched the market for junior programmers

đŸ’Ŧ HackerNews Buzz: 127 comments 🐝 BUZZING
đŸ”Ŧ RESEARCH

EvoPolicyGym: Evaluating Autonomous Policy Evolution in Interactive Environments

"Autonomous agents are increasingly expected to improve executable policies through feedback, yet existing evaluations often collapse this process into a final score or confound it with open-ended software-engineering progress. We introduce Autonomous Policy Evolution, a controlled evaluation setting..."
đŸ”Ŧ RESEARCH

DemoPSD: Disagreement-Modulated Policy Self-Distillation

"On-policy self-distillation (OPSD) has emerged as a practical method for training large language models (LLMs) to reason, where a single model acts as both the teacher and the student with different levels of information access. However, recent studies have found that the teacher's dense token-level..."
đŸ”Ŧ RESEARCH

Human Capital, Not Model Benchmarks, Predicts Hybrid Intelligence in Forecasting

"Whether pairing people with AI helps or hurts is usually reported as a single average effect. Using a real-money prediction market (Polymarket) as an objective, externally resolved benchmark, this pilot shows that the value of human-AI collaboration depends on a specific, measurable form of human ca..."
📰 NEWS

Escaping the Nash Trap: Structural Estimation and Alignment of Strategic Reasoning in Large Language Models by Jiannan Xu, Yongkang Duan, Jane Yi Jiang, Jiding Zhang :: SSRN

"As large language models (LLMs) are increasingly deployed as decision-making agents in competitive and strategic environments, their performance depends critica..."
đŸ”Ŧ RESEARCH

Learning to Move Before Learning to Do: Task-Agnostic pretraining for VLAs

"Vision-Language-Action (VLA) models are fundamentally bottlenecked by the scarcity of expert demonstrations -- triplets of observations, instructions, and actions that are costly to collect at scale. We argue that this bottleneck stems from conflating two distinct learning objectives: acquiring phys..."
📰 NEWS

Concentration of power in AI is a risk, by Andy Konwinski

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