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ISSUE 0911
MON, JUN 29, 2026
OrangeBot.AI 智能策划和筛选每日科技趋势和新闻,为您节省时间。
TODAY · MON, JUN 29, 2026

The web,
read by a bot.

Ten sources — Hacker News, Product Hunt, HuggingFace, Techmeme and more — filtered, tagged, and summarized every morning for builders who don’t have time to scroll.

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01

AI DIGEST

UPDATED DAILY · EDITOR'S PICK
01.00
AI DIGEST

AI新闻摘要

June 29, 2026

Here is a summary of today's main news events.

U.S. and Iran Agree to Ceasefire and Resume Peace Talks

Who/What: The United States and Iran have agreed to halt recent military strikes and restart negotiations. Where/Why: The talks are aimed at de-escalating tensions and securing a deal to restore safe shipping through the vital Strait of Hormuz, a development which has impacted global oil and financial markets.

Comcast Shares Surge on Plan to Split Company in Two

Who/What: Media and technology company Comcast announced it plans to split into two separate companies, dividing its broadcast and studio businesses. Where/Why: The news was received positively by investors, causing the company’s stock to jump significantly in today's trading.

Major Chipmakers Announce New Investments to Combat Global Shortage

Who/What: The world's largest memory-chip manufacturers, in partnership with the South Korean government, are planning major new investments in factories. Where/Why: The move is a direct response to a worldwide shortage and surging demand for chips, which current production capacity cannot meet.

UK's Next Likely Prime Minister Pledges to Decentralize Power

Who/What: Britain's prime minister-in-waiting has outlined a vision to shift power away from the central government in Westminster. Where/Why: The plan aims to address the country's economic struggles by promising voters help with the cost of living and giving more authority to local regions.

Rocket Lab to Acquire Satellite Operator in $8 Billion Deal

Who/What: Space company Rocket Lab is set to acquire a major satellite operator in a deal valued at $8 billion. Where/Why: This acquisition would give Rocket Lab control over an existing satellite fleet and valuable wireless resources, positioning it to compete more directly with rivals like SpaceX.

Tapes Reveal Financial Advisor Recorded His Own Fraud as a Tutorial

Who/What: A significant financial fraud scheme has been exposed through audio tapes made by the perpetrator, Paul Regan. Where/Why: Regan recorded himself defrauding clients with the intention of using the tapes as a "how-to" guide to teach his methods to others, inadvertently creating a detailed record of his crimes.

02

ON THE WIRE

6 SOURCES
02

HACKER NEWS

02.00
HACKER NEWS

Hacker News - June 29, 2026

Hacker News Feed: Highlighting key posts and discussions.

Model Training as Code

(aleph-alpha.com)

17323
Show HN: Zanagrams

(zanagrams.com)

33590
Marfa Public Radio Puts You to Sleep

(www.marfapublicradio.org)

405125
03

HUGGINGFACE

03.00
HUGGINGFACE

HuggingFace 新闻 - June 29, 2026

HuggingFace Feed:最新的 AI 模型、数据集和社区动态。

PhysisForcing: Physics Reinforced World Simulator for Robotic Manipulation

Video generation models have emerged as a promising paradigm for embodied world simulation. However, both general-domain video generators and robot-specific data fine-tuned models can still produce physically implausible manipulations, including discontinuous motion trajectories and inconsistent robot-object interactions, which limits their reliability as world simulators. Through extensive experiments, we find that such physical instability mainly arises from two factors: deformation of moving objects and implausible spatio-temporal correlations among interacting entities, particularly during contact. Building on this observation, we propose PhysisForcing, a scalable training framework that strengthens physical consistency by focusing supervision on physics-informative regions through joint optimization of pixel-level and semantic-level features. The framework consists of a pixel-level trajectory alignment loss, which supervises DiT features using reference point trajectories, and a semantic-level relational alignment loss, which aligns DiT features with inter-region relations extracted from a frozen video understanding encoder. Extensive experiments on R-Bench, PAI-Bench, and EZS-Bench show that PhysisForcing consistently improves embodied video generation over strong baselines, improving the Wan2.2-I2V-A14B and Cosmos3-Nano base models on R-Bench by 22.3\% and 9.2\% (7.1\% and 3.7\% over vanilla finetuning), with the Cosmos3-Nano variant attaining the best overall score. Beyond generation, as a world model under the WorldArena action-planner protocol it raises the closed-loop success rate from 16.0\% to 24.0\% and further improves downstream policy success, indicating that physically aligned video models yield stronger representations for robotic manipulation.

30
Translation as a Bridging Action: Transferring Manipulation Skills from Humans to Robots

We study whether we can learn novel manipulation skills from human actions to a bi-manual robot with parallel grippers. Human action data is cheap, abundant, and diverse, making it one of the most promising resources for scaling up robot learning. Yet transferring skills from humans to robots remains hard: most prior work treats humans as just another bi-manual 6DoF embodiment, where hand-pose estimates are noisy and the contact patterns of human fingers differ fundamentally from those of a parallel gripper. We argue that learning rotation-inclusive action signals from human data is therefore sub-optimal, and instead propose a bridging action representation: the relative wrist translation within the initial head-camera frame, an action space shared by humans and robots. To handle the potential absence of certain action components in different embodiments, we build a π_0-like vision-language-action model with interleaved action tokens and attention masking. On a suite of novel bi-manual manipulation tasks, our bridging action transfers human manipulation knowledge to robots far more effectively than noisy 6DoF human actions and scales with the amount of human data.

27
Qwen-Image-2.0-RL Technical Report

We present Qwen-Image-2.0-RL, a post-training pipeline that applies reinforcement learning from human feedback (RLHF) and on-policy distillation (OPD) to improve both the visual quality and instruction-following capability of the Qwen-Image-2.0 diffusion model. To provide reliable reward signals, we construct task-specific composite reward models by fine-tuning vision-language models with a pointwise scoring paradigm and chain-of-thought reasoning. For text-to-image generation, the reward models cover alignment, aesthetics, and portrait fidelity dimensions. For image editing tasks, the reward system addresses instruction-following accuracy and face identity preservation. Building on this reward system, we develop a scalable GRPO-based RL training framework, incorporating a hybrid classifier-free guidance (CFG) strategy to preserve pre-trained knowledge, prompt curation via intra-group reward range filtering, and per-category reward weight calibration. To merge the task-specialized RL policies for T2I and editing, we propose on-policy distillation as the final training stage, which consolidates multiple teachers into a single student model through trajectory-level velocity matching. Extensive evaluation shows that Qwen-Image-2.0-RL achieves 57.84 overall score on Qwen-Image-Bench (+2.61 over the base model), Elo ratings of 1193 in text-to-image arena (+78) and 1349 in image edit arena (+93), demonstrating consistent gains in aesthetic quality, prompt adherence, and editing accuracy.

23
MultiHashFormer: Hash-based Generative Language Models

Language models (LMs) represent tokens using embedding matrices that scale linearly with the vocabulary size. To constrain the parameter footprint, prior work proposes hashing many tokens into a single vector within encoder-only models. While this offers parameter efficiency, many-to-one collisions prevent its use in causal LMs. In this paper, we propose MultiHashFormer, a new framework that allows hash-based autoregression. Each token is represented as a unique hash signature, a short sequence of discrete hash IDs, generated by multiple independent hash functions. A Hash Encoder compresses this signature into a single latent vector for processing by a Transformer decoder. Then, a Hash Decoder generates the hash signature of the next token, which is then mapped back to text. We evaluate our approach at the 100M, 1B and 3B parameter scales, demonstrating that MultiHashFormer consistently outperforms standard Transformer LMs across multiple benchmarks. Furthermore, we show that our model handles multilingual vocabulary expansion with a constant parameter footprint without any modifications.

14
Formalizing Latent Thoughts: Four Axioms of Thought Representation in LLMs

We introduce an axiomatic evaluation framework for latent thought representations in LLMs, comprising metrics that are independent of downstream benchmark scores and reveal representational failures that benchmark accuracy masks. Existing evaluations conflate representation quality with model capacity. Therefore, failures cannot be attributed to the representation rather than to the model that processes it. We formalize four functional axioms (Causality, Minimality, Separability, and Stability) and define a quantitative measure for each, computed directly on the representation independently of downstream accuracy. We audit open-weight LLMs across 23 reasoning tasks (e.g., Spatial Reasoning, Factual QA). We find that no candidate satisfies all four axioms simultaneously, that the representations distinguish task type reliably but cannot distinguish between two questions within the same task, and that the representations encode little information beyond what is already present in the input embedding. The failure is consistent across dense, reasoning-distilled, and RL-trained model families, indicating that the gap is structural rather than a property of model size or training procedure.

12
SingGuard: A Policy-Adaptive Multimodal LLM Guardrail with Dynamic Reasoning

Vision-language models (VLMs) are increasingly deployed in consumer, medical, financial, and enterprise applications. This broad deployment expands the safety surface: risks can arise from multimodal question answering, assistant responses, and cross-modal composition, while moderation policies may vary across products, regions, and deployment stages. Most existing guardrails either rely on fixed taxonomies or target only a narrow set of interaction settings, which limits their adaptability when safety rules change at deployment time. We present SingGuard, a policy-adaptive multimodal guardrail model family for safety assessment in multimodal conversations. SingGuard treats the active policy as a runtime input: given natural-language rules, it checks the target content against the active policy rule by rule and predicts both the safety label and the triggered rule. To balance efficiency and interpretability, SingGuard supports fast, hybrid, and slow inference regimes along a fast-to-slow reasoning spectrum, ranging from direct safety judgments to policy-grounded deliberation. We further optimize this behavior with fast--slow decoupled reinforcement learning. We also introduce SingGuard-Bench, a multimodal guardrail benchmark with 56{,}340 examples spanning 80+ fine-grained risk types across multimodal QA, adversarial attack, and dynamic-rule evaluation settings, including cross-modal joint-risk cases where each modality is harmless in isolation but their composition implies unsafe intent. Across six benchmark families (35 datasets), SingGuard achieves state-of-the-art average F1 in every family. Dynamic-rule evaluation further shows improved policy-following accuracy from 0.6465 to 0.7415 under runtime policy shifts. Our code is available at https://github.com/inclusionAI/Sing-Guard.

11
The Tatoxa System for Text Detoxification in Low-Resource Languages: The Case of Tatar

Text detoxification, the automated detection and mitigation of abusive and harmful content, is essential for ensuring the safety of online communities and protecting users. However, low resource languages such as Tatar have received little research attention. In this paper we present Tatoxa, a novel state-of-the-art system for text detoxification in the Tatar language. Comparative experiments show that the proposed approach outperforms existing open source and proprietary commercial LLMs on key quality metrics. We also introduce a new dataset for text detoxification in Tatar, designed for fine tuning and evaluation in low resource settings. Finally, cross lingual transfer experiments indicate that transfer from other languages, including the culturally close Russian, performs significantly worse than training on native Tatar data even when a large Russian corpus is available.

7
ProMSA:Progressive Multimodal Search Agents for Knowledge-Based Visual Question Answering

Knowledge-based Visual Question Answering (KB-VQA) requires models to combine image understanding with external knowledge. Most prior methods use a fixed retrieve-then-generate pipeline with a pre-selected retriever and a static top-k setting, which is not adaptive during reasoning. We propose ProMSA, a progressive multimodal search agent for KB-VQA. Given an image-question pair, the agent iteratively chooses image search, text search, or stop, under explicit tool-call budgets and with deduplication to avoid redundant retrieval. For training, we first use rejection-sampling SFT to learn valid tool-use formats, then optimize the agent with TN-GSPO, a sequence-level RL objective that normalizes updates by both generation length and tool-interaction depth. Experiments on E-VQA and InfoSeek show consistent gains over strong RAG and agent baselines, and improved retrieval and end-to-end accuracy. The code is available at https://github.com/DingWu1021/Promsa.

7
SimFoundry: Modular and Automated Scene Generation for Policy Learning and Evaluation

Training and evaluating robot policies in the real world is costly and difficult to scale. We introduce SimFoundry, a modular and automated system for zero-shot real-to-sim scene construction from a video. SimFoundry generates sim-ready digital twins and supports object, scene, and task editing, enabling the automated generation of diverse digital cousins: affordance-preserving variations of reconstructed real-world scenes. Policies trained on SimFoundry data transfer zero-shot to challenging real tasks involving multi-step manipulation, articulated object interaction, and bimanual interaction, and its digital cousins (variations of the original scene, objects, and tasks) facilitate generalization to new real-world conditions. Across 7 manipulation tasks and 5 policy architectures, SimFoundry simulation evaluations strongly predict real-world performance, with mean Pearson correlation 0.911 and mean maximum ranking violation 0.018. When evaluating sim-trained policies zero-shot in the real world, policies trained with object, scene, and task cousins in simulation show average task success rate improvements of 17%, 21%, and 40%, respectively. Additional details at https://research.nvidia.com/labs/gear/simfoundry/ .

6
Thinking While Speaking: Inference-Time Knowledge Transfer for Responsive and Intelligent Conversational Voice Agents

Voice agents face a fundamental tension: the reasoning, retrieval, and tool use that make foundation models capable are iterative and slow, while conversational interaction demands responses on a millisecond timescale. Smaller, real-time models meet the latency bar but cannot match foundation models on complex tasks, leaving current voice agents to trade away either responsiveness or capability. We introduce conversational infill, where a small talker model both immediately generates contextually grounded responses to hide the latency of an external reasoner model and fluently integrates streamed reasoner knowledge into its responses during inference. We curate a 290,571-example synthetic dataset spanning six domains and demonstrate that this task is learnable across seven widely used small language models ranging from 135M to 1.7B parameters. Our system implementation, ConvFill, sustains millisecond-level time-to-first-response while closing the accuracy gap to within 6.3% of the corresponding frontier reasoner performance. In a live user study (n=18) with talker deployments running on an Apple M2 SoC, participants rank ConvFill on par with frontier models overall, prefer it for retrieval-heavy tasks, and rate it significantly more responsive. These results show that conversational infill unlocks a new point on the latency-capability Pareto frontier, offering a practical path toward voice agents that are both responsive and highly capable. Code, models, and datasets are available at https://github.com/vysri/conversational-infill.

4
GBC: Gradient-Based Connections for Optimizing Multi-Agent Systems

Multi-agent systems (MAS) built on large language models (LLMs) provide a promising framework for solving complex tasks through role specialization and structured interaction. However, their performance is often limited by miscoordination and, more fundamentally, the lack of fine-grained credit assignment across agents. Existing approaches typically rely on coarse-grained feedback, making it difficult to identify which agents or interaction steps are responsible for errors. We propose Gradient-Based Connections (GBC), an approach for fine-grained attribution and optimization of multi-agent systems. GBC models a MAS as a computational graph and introduces gradient-based connection weights to quantify the influence of each agent's output on downstream agents at the token level. By constructing an attribution graph and propagating task-specific loss signals backward, our method enables precise identification of error sources and targeted prompt optimization. We further develop AgentChord, an efficient implementation that leverages prefix-based gradient computation. Experiments on MultiWOZ and τ-bench show that GBC improves multi-agent performance and outperforms strong single-agent and multi-agent baselines, and higher attribution quality is associated with greater optimization effectiveness. Code is available at: https://github.com/yxc-cyber/AgentChord.

4
Learning to Fold: prizewinning solution at LeHome Challenge 2026 (1st place online, 2nd offline)

I describe my solution to the LeHome Challenge 2026, an ICRA 2026 competition on bimanual garment folding. The system placed 1st of 62 teams in the online (simulation) round and 2nd in the real-world final. It improves a vision-language-action (VLA) policy with a reinforcement-learning loop. The policy is its own value function: the same network that predicts actions also predicts success, progress, and a few task-relevant future quantities, and those predictions drive advantage estimation, live failure detection, and candidate selection. The work mostly recombines existing RL ideas with engineering and optimization contributions that can be used together as one recipe or individually: AWR + RECAP combined for flow-matching VLA; an asynchronous distributed training / rollout pipeline through HuggingFace Hub; inference-time hyperparameters optimization via Thompson sampling; a sim-to-real recipe with camera-alignment tooling, heavy augmentation and DAgger-like HIL data collection.

4
Ko-WideSearch: A Korean Breadth-Search Benchmark for Exhaustive Set Enumeration by Web Agents

Web-agent benchmarks overwhelmingly measure depth -- pinning one obscure answer behind a chain of constraints -- while breadth, exhaustively enumerating a closed set and filling each item's attributes, is barely evaluated, especially outside English. Breadth is also hard to build: certifying that a gold set is complete and every cell correct is far costlier than checking a single answer. I introduce Ko-WideSearch, a Korean breadth-search benchmark built by an automated synthesize-and-verify pipeline. Each task names a set-parent entity -- a TV season, a dynasty, a league, an administrative region, an election -- and asks for its full membership plus a per-item attribute table, graded by Item-, Column-, and Row-F1. It spans 228 tables over 190 entities and sixteen categories across three difficulty tiers, set by two structural knobs I dial independently -- table width and a 2-D composite key -- so cross-product membership climbs from 0\% to 100\% across the tiers. A single normalization-aware comparator is shared between gold construction and grading, so stable date and count columns are not over-dropped on formatting alone. Across twenty web agents, the failure is consistent: agents recover the set but not the rows (e.g.\ Item-F1 92.8 against Row-F1 53.7), accuracy falls steadily as the knobs harden, and neither more search nor more spend closes the gap. Broken down by cell, the hard part is finding the right value, not formatting it: open-ended free-text cells fail most, while cells with a standard answer such as a date or a name usually come out right.

4
Parallel Rollout Approximation for Pixel-Space Autoregressive Image Generation

Pixel-space continuous-token autoregressive (AR) generation directly models images as sequences of raw pixel patches, avoiding discrete tokenization or a separately pretrained tokenizer. However, it faces coupled challenges: high-dimensional patch generation causes large single-step errors, and teacher-forced training creates a train--inference gap that makes these errors accumulate across AR steps. Existing fixes such as x-prediction and input noise injection only partially mitigate these issues. Exact rollout training better matches inference-time conditions, but is impractical due to prohibitively slow sequential sampling. We propose Parallel Rollout Approximation (PRA), a scalable framework that addresses both challenges jointly. PRA generates low-dimensional intermediate states instead of high-dimensional pixel patches, then maps them back to pixel-space tokens with a pixel decoder, preserving a pixel-in, pixel-out AR interface. It also constructs inference-like pixel inputs through the same intermediate-state-to-pixel path used at inference, independently across positions, approximating the pixel-feedback interface encountered during inference-time rollout while retaining parallel teacher-forced training. On class-conditional ImageNet-1K generation at 256times256 resolution, PRA-S with 135M parameters achieves an FID of 2.58, surpassing the previous billion-scale pixel-space AR result of 3.60. Scaling to PRA-L with 511M parameters further improves FID to 1.94, establishing a new state of the art among pixel-space AR models. Beyond generation, PRA achieves higher ImageNet classification probing accuracy than other AR and diffusion baselines, suggesting its potential for unified pixel-space image generation and understanding.

3
Object-Centric Residual RL for Zero-Shot Sim-to-Real VLA Enhancement

Vision-Language-Action (VLA) models can generalize across diverse manipulation tasks, but their imitation-learning-based policies remain brittle in precise physical interactions due to compounding execution errors; Can a reinforcement learning policy trained purely in simulation improve the robustness of real-world VLAs zero-shot? Residual RL, which learns a corrective policy on top of a frozen VLA, offers a natural framework, but existing approaches face a fundamental sim-to-real dilemma: privileged-state methods require lossy distillation for deployment; image-based methods suffer from the visual domain gap; and real-world RL is costly and unsafe. We propose an object-centric residual RL framework that refines VLA actions using object poses, enabling a compact observation space that transfers consistently between simulation and reality. To align the two domains, we additionally replay the same teleoperation demonstrations in simulation to train a sim counterpart of the real-world VLA. The residual RL policy is trained only in simulation with pose noise injection and dropout, and transfers zero-shot to the real robot. Across five manipulation tasks on a real Franka Research 3 (FR3) robot, our method improves the success rate from 42% to 76% zero-shot, and the improved rollouts can be further reused to retrain the base VLA for self-improvement without additional teleoperation. Project page: https://www.microsoft.com/en-us/research/articles/object-centric-residual-rl/

3
NormGuard: Reward-Preserving Norm Constraints in Flow-Matching Reinforcement Learning

Reinforcement learning (RL) post-training improves the reward alignment of flow-based generators, but often degrades perceptual quality in ways that are not captured by the reward proxy. We identify a simple structural signature of this drift: across three post-training methods (NFT, AWM, DPO), RL fine-tuning inflates the per-step velocity norm |v_θ| by 5% to 15% relative to the reference. A form of norm inflation has been studied in classifier-free guidance (CFG), where rescaling the velocity back to a reference norm at inference time can mitigate the resulting artifacts. However, this inference-time correction does not transfer cleanly to RL: rescaling v_θ to match |v_{ref}| at inference time neither improves reward nor fixes the quality degradation, because the inflation is co-adapted into the model weights. Furthermore, an adjoint sensitivity analysis shows that velocity magnitude rescaling carries no coherent first-order reward signal at the batch level, indicating that suppressing norm inflation is unlikely to remove a consistently reward-carrying component. Since inference-time renormalization fails while norm suppression carries no reward cost, training-time intervention is the appropriate strategy. Together, these findings motivate \methodname, a hinge penalty that activates only when |v_θ| exceeds |v_{ref}| and composes additively with any velocity-local base loss. Across two base models, three post-training methods, and two reward proxies, \methodname consistently improves MLLM-judged image quality and forensic realism while preserving reward, with gains that amplify under few-step inference and are not explained by early stopping.

3
Towards Automating Scientific Review with Google's Paper Assistant Tool

Artificial intelligence is driving a revolution in scientific discovery, accelerating everything from hypothesis generation to mathematical theorem proving. However, this rapid acceleration is creating a systemic challenge: traditional human peer review cannot scale to match the influx of AI-assisted science. Ultimately, to resolve this tension, we must also deploy AI to accelerate the verification and review process itself. To frame the discussion around this transition, we propose a taxonomy consisting of four progressive levels of AI-human collaboration in scientific evaluation, and discuss various trade-offs involved with each. As a step toward this future, we introduce the Paper Assistant Tool (PAT), an agentic AI framework built for deep scientific review and verification. PAT ingests full scientific manuscripts and produces a comprehensive evaluation, checking theoretical results, validating experiments, suggesting improvements, and identifying potential flaws. By utilizing inference scaling techniques, PAT is able to identify deeper issues than a single model call alone, achieving a 34% improvement over zero-shot recall on mathematical errors in the SPOT benchmark. Pilot deployments of PAT as a pre-submission tool for authors at two major Computer Science conferences -- STOC and ICML -- demonstrate its ability to identify critical errors and suggest substantive improvements to research papers. By catching errors early, PAT eases the cognitive burden placed on referees, while preserving their control over the outcomes of the review process.

3
Cluster, Route, Escalate: Cascaded Framework for Cost-Aware LLM Serving

Efficient deployment of large language models (LLMs) in production forces a trade-off between accuracy and cost. Operators often default to a single model that is either expensive for easy queries or insufficient for hard ones. To address this challenge, we propose a two-stage cascaded solution. Stage 1 clusters incoming queries and assigns each cluster to its most cost-effective model. The cost budget for this routing process is set by an interpretable hyperparameter, tuned offline. Stage 2 adds a quality estimation (QE) cascade; when an output from Stage 1 is judged low-quality, the query is escalated to a stronger model. This ensures only hard or low-confidence cases reach the expensive models. On the test datasets, the cascaded system retains 97-99% of the strongest model's accuracy while reducing Time Per Output Token (TPOT). It requires only task-correctness labels and adapts to changes in the model pool without manual reconfiguration.

1
Boundary-Aware Context Grounding for A Low-Channel EEG Agent

Large language models (LLMs) can make scientific software easier to use. However, a general model does not automatically know which measurements a particular sensor can support, which algorithms are implemented in the current software, or which conclusions are justified by a computed result. These distinctions are especially important for low-channel electroencephalography (EEG), where sparse spatial coverage and variable signal quality make plausible but unsupported interpretations easy to produce. We present NeuraDock Agent, an open-source architecture that separates a deterministic local EEG engine from a hardware-aware language layer. The numerical engine parses recordings, performs quality control, executes reviewed spectral workflows, and writes machine-readable artifacts. The LLM receives only a compact, allowlisted summary and a versioned context pack. The context describes the seven-channel hardware, reviewed workflows, result fields, implementation boundaries, scientific limits, and reference cases. Raw EEG and dense per-sample arrays remain local We evaluate the system at three levels. First, 12 recordings produced identical structured results over ten numerical repetitions, and a complete Rest/Task run produced identical result, report, and figure hashes over three repetitions. Second, request-capture and failure-injection experiments confirmed the tested data boundary and preservation of local artifacts under HTTP, malformed-output, and connection failures. Third, a boundary-awareness benchmark tested 36 ordinary and adversarial questions under four context ablations and two LLMs, yielding 288 outputs.These results support hardware- and implementation-aware grounding as a practical mechanism for calibrating what an EEG agent accepts, qualifies, or refuses; they do not establish clinical validity or a validated absolute cognitive-load index.

0
05

PRODUCT HUNT

05.00
PRODUCT HUNT

Product Hunt - June 29, 2026

Product Hunt Daily Feed: Featuring noteworthy tech launches.

VisibAI icon
VisibAI

Are you in AI answers? Find out and fix it in minutes

0
ClinePass icon
ClinePass

Run the best open-weights models in Cline

0
PMB icon
PMB

Stop re-explaining your project to AI coding agents

0
ReadHere icon
ReadHere

Lightweight PDF & EPUB reader in your browser

0
Outpaint.com - Ad Reframe icon
Outpaint.com - Ad Reframe

AI to turn vertical UGC into widescreen ads

0
Intelli icon
Intelli

Convert leads into customers with AI conversations

0
Agent Mode by Receiptor AI icon
Agent Mode by Receiptor AI

Bookkeeping assistant that runs receipt workflows end-to-end

0
Upstream FTP icon
Upstream FTP

A fast, beautiful, and native FTP/SFTP client for macOS

0
Sami icon
Sami

Automate ad budgets across Google, LinkedIn & Meta ads

0
Spira for Product Hunt Makers icon
Spira for Product Hunt Makers

Social media growth agents that build your momentum

0
Crest icon
Crest

System stats and translation on your Mac's notch

0
discode.ai icon
discode.ai

100+ AI models, one interface. ECO friendly.

0
Dotient icon
Dotient

Your local semantic search app

0
Lyto icon
Lyto

"One AI agent across your browser, tools, and messages "

0
Persona.js icon
Persona.js

Add WebMCP-native AI chat to any Frontend

0
GetCompress icon
GetCompress

Lossless media compression without context switching

0
Epilogue. Write novels, scripts & poetry icon
Epilogue. Write novels, scripts & poetry

The professional book writing app built for serious authors

0
QApilot's CoWork icon
QApilot's CoWork

3x Mobile Automation. Same QE Team.

0
Cloud World Model icon
Cloud World Model

Simulate AWS, GCP & DigitalOcean without paying the bill

0
Supra Player icon
Supra Player

Compare & Sync Videos Fast

0
RetroMac icon
RetroMac

Turn your Mac into a time machine.

0
Folio AI icon
Folio AI

Claude for PowerPoint, on steroids

0
Nada icon
Nada

Compose music with just your voice

0
Cewsco icon
Cewsco

All-in-one AI assistant — chat, images, voice & market data

0
Animdock Motion Templates in the Browser icon
Animdock Motion Templates in the Browser

Create trend motions in your browser!

0
Sleek Analytics icon
Sleek Analytics

See who's on your site. Right now.

0
Basedash for Excel icon
Basedash for Excel

Turn any Excel file into a live dashboard

0
Gemini Spark icon
Gemini Spark

Your 24/7 personal AI agent

0
Atlas icon
Atlas

Every AI tool you use should know how your company works

0
note.md icon
note.md

your notes and research documentation now a local LLM Memory

0
LockIn MCP icon
LockIn MCP

Let AI block distractions for you when you need to lock in

0
DMV by Agent Community icon
DMV by Agent Community

A community-governed namespace for AI agents

0
ModuleX icon
ModuleX

AI workspace that’s already connected to everything

0
SquidHub icon
SquidHub

Multiplayer mode for humans and AI

0
Agent Arena icon
Agent Arena

The first public arena for AI agents

0
AI Slide Editor by CubeOne icon
AI Slide Editor by CubeOne

The editor PowerPoint should've shipped

0
Aurora Notch icon
Aurora Notch

A private notch workspace for every Mac

0
Group Subscriptions by beehiiv icon
Group Subscriptions by beehiiv

Sell subscriptions to teams, companies, and organizations.

0
MeetPoint icon
MeetPoint

Find the city where everyone's flights are cheapest

0
Brain² by ClickUp icon
Brain² by ClickUp

One AI that knows your entire company and acts on it

0
Signspell icon
Signspell

Real-time ASL alphabet recognition in py ,pip install and go

0
Sidegent icon
Sidegent

Learn to build AI agents by actually building them

0
SendTidings icon
SendTidings

Turn your analytics into beautiful monthly email reports

0
Zaro icon
Zaro

Build agents & apps on top of your context with one prompt.

0
Oxlo.ai icon
Oxlo.ai

Scale across AI models without scaling your bill

0
Papermark Agents icon
Papermark Agents

Let AI agents run your next deal, fundraise or data room

0
Milestones icon
Milestones

Native project planning app, now on Mac & with an MCP server

0
Heron icon
Heron

Wireshark for AI Agents: passive eBPF observability

0
Genspark Design icon
Genspark Design

Generate UI prototypes, videos, and posters with AI

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Nashra icon
Nashra

Turn followers into clients.

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06

TECHMEME

06.00
TECHMEME

Techmeme - June 29, 2026

Techmeme Digest: Major tech headlines and industry conversations.

Filing: Strategy paused its bitcoin acquisitions last week, instead topping up its USD reserve to $2.55B and announcing a $1B digital credit buyback program (James Hunt/The Block)
Source: TechmemePublished: Jun 29, 2026

James Hunt / The Block : Filing: Strategy paused its bitcoin acquisitions last week, instead topping up its USD reserve to $2.55B and announcing a $1B digital credit buyback program —  Quick Take  — Strategy paused its bitcoin acquisition last week despite raising $1.15 billion in MSTR proceeds, with its total holdings remaining at 847,363 BTC.

Internal documents: Meta is placing strict limits on how engineers in its applied AI division can use Claude Code and Codex, fearing inadvertent distillation (Jyoti Mann/The Information)
Source: TechmemePublished: Jun 29, 2026

Jyoti Mann / The Information : Internal documents: Meta is placing strict limits on how engineers in its applied AI division can use Claude Code and Codex, fearing inadvertent distillation —  As Meta Platforms tries to wean itself off expensive AI coding applications from Anthropic and OpenAI, it is confronting a difficult challenge …

Japanese prediction market startups Miraima and Poyp are utilizing a "point-to-voucher" system to bypass strict anti-gambling laws, in a bid to rival Polymarket (Bloomberg)
Source: TechmemePublished: Jun 29, 2026

Bloomberg : Japanese prediction market startups Miraima and Poyp are utilizing a “point-to-voucher” system to bypass strict anti-gambling laws, in a bid to rival Polymarket —  Homegrown platforms, banned from real-money gambling, are tapping the country's loyalty-point culture to build an alternative to Polymarket.

The US DOJ seizes nearly 400 domains for illegally streaming 2026 FIFA World Cup matches; last week, ACE, UEFA, and more shut down 44 domains linked to PirloTV (Sergiu Gatlan/BleepingComputer)
Source: TechmemePublished: Jun 29, 2026

Sergiu Gatlan / BleepingComputer : The US DOJ seizes nearly 400 domains for illegally streaming 2026 FIFA World Cup matches; last week, ACE, UEFA, and more shut down 44 domains linked to PirloTV —  The U.S. Justice Department's Criminal Division has seized nearly 400 web domains used for illegally streaming matches at the FIFA World Cup.

Chinese robotics startup AI² Robotics raised ~$736M at a ~$2.9B valuation; Alibaba-backed X Square Robot raised an undisclosed amount at a ~$2.9B valuation (Bloomberg)
Source: TechmemePublished: Jun 29, 2026

Bloomberg : Chinese robotics startup AI² Robotics raised ~$736M at a ~$2.9B valuation; Alibaba-backed X Square Robot raised an undisclosed amount at a ~$2.9B valuation —  Two Chinese robotics startups have been valued at more than $2.9 billion in recent funding rounds, demonstrating steady interest …

Google VP of Security Engineering Heather Adkins warns the EU's DMA proposals to open Android and Search could lead to a significant rise in fraud within weeks (Matt Burgess/Wired)
Source: TechmemePublished: Jun 29, 2026

Matt Burgess / Wired : Google VP of Security Engineering Heather Adkins warns the EU's DMA proposals to open Android and Search could lead to a significant rise in fraud within weeks —  Europe's pro-competition proposals could see Google Search and Android systems opened up.  The company claims there are serious privacy flaws.

Adobe: online spending across all retailers in the US hit $26.4B during Amazon's four-day Prime Day event, up 9.3% YoY; Walmart and Target also hosted sales (Spencer Soper/Bloomberg)
Source: TechmemePublished: Jun 29, 2026

Spencer Soper / Bloomberg : Adobe: online spending across all retailers in the US hit $26.4B during Amazon's four-day Prime Day event, up 9.3% YoY; Walmart and Target also hosted sales —  Online spending across all retailers in the US hit $26.4 billion during Amazon.com Inc.'s annual Prime Day sale, according to Adobe Inc. …

How a Polymarket dispute over a single syllable ignited a bitter debate; Polymarket uses Risk Labs' Optimistic Oracle to decide ~200K tough call bets per month (David Segal/New York Times)
Source: TechmemePublished: Jun 29, 2026

David Segal / New York Times : How a Polymarket dispute over a single syllable ignited a bitter debate; Polymarket uses Risk Labs' Optimistic Oracle to decide ~200K tough call bets per month —  In mid-April, a long and testy argument erupted online over a seemingly trivial question: Did a guy in a video say “Donk”?

Verizon and the UK's BT agree to create a joint venture for their international businesses with ~$4B in combined yearly revenue; Verizon will pay $625M to BT (Bloomberg)
Source: TechmemePublished: Jun 29, 2026

Bloomberg : Verizon and the UK's BT agree to create a joint venture for their international businesses with ~$4B in combined yearly revenue; Verizon will pay $625M to BT —  Verizon Communications Inc. and the UK's BT Group Plc agreed to create a joint venture for their international businesses in a merger …

How the UK is betting on IT and AI to combat slow economic and productivity growth, including moving beyond the Golden Triangle of London, Oxford, and Cambridge (Sam Fleming/Financial Times)
Source: TechmemePublished: Jun 29, 2026

Sam Fleming / Financial Times : How the UK is betting on IT and AI to combat slow economic and productivity growth, including moving beyond the Golden Triangle of London, Oxford, and Cambridge —  Regions outside London want a piece of the pie  —  In Sheffield, in the north of England, James Marshall is developing software …

Sources: CXMT and Tencent sign a ~$3B, three-year DRAM supply agreement for servers ahead of CXMT's IPO; CXMT is in talks with other major Chinese companies (Reuters)
Source: TechmemePublished: Jun 29, 2026

Reuters : Sources: CXMT and Tencent sign a ~$3B, three-year DRAM supply agreement for servers ahead of CXMT's IPO; CXMT is in talks with other major Chinese companies —  Chinese memory chipmaker ChangXin Memory Technologies (CXMT) has signed a long-term supply agreement with Tencent Holdings (0700.HK) …

An interview with Axon CEO Rick Smith, who transformed the Taser maker into a policing software company, as its revenue from AI policing tools rises 700%+ YoY (Victoria Albert/Wall Street Journal)
Source: TechmemePublished: Jun 29, 2026

Victoria Albert / Wall Street Journal : An interview with Axon CEO Rick Smith, who transformed the Taser maker into a policing software company, as its revenue from AI policing tools rises 700%+ YoY —  Taser and body-cam king Rick Smith is betting Axon's dominance—and his own pay package—on his tech-driven vision

Academic papers and conference materials offer a deep dive into China's all-CPU LineShine, which pairs custom 304-core Arm CPUs with HBM to top the Top500 (Timothy Prickett Morgan/The Next Platform)
Source: TechmemePublished: Jun 29, 2026

Timothy Prickett Morgan / The Next Platform : Academic papers and conference materials offer a deep dive into China's all-CPU LineShine, which pairs custom 304-core Arm CPUs with HBM to top the Top500 —  It has been nine years since a Chinese HPC supercomputer was at the top of the High Performance Linpack performance rankings …

Sources: disconnected US military databases may have led to the February 28 strike on an Iranian school; some see AI as a fix, others fear it amplifies errors (Katrina Manson/Los Angeles Times)
Source: TechmemePublished: Jun 29, 2026

Katrina Manson / Los Angeles Times : Sources: disconnected US military databases may have led to the February 28 strike on an Iranian school; some see AI as a fix, others fear it amplifies errors —  - A missile strike on an Iranian elementary school in February killed an estimated 120 children after outdated U.S. intelligence misidentified …

A look at security flaws, police misuse, and other concerns over the 100K+ AI-enabled automated license plate readers installed across the US, mostly from Flock (Max Miller/Engadget)
Source: TechmemePublished: Jun 29, 2026

Max Miller / Engadget : A look at security flaws, police misuse, and other concerns over the 100K+ AI-enabled automated license plate readers installed across the US, mostly from Flock —  “You can't get a breath of fresh air ... without us knowing.”  —  Thanks to the rise of AI, a new kind of surveillance camera …

07

STARTUP ARCHIVE

07.00
STARTUP ARCHIVE

Startup News - June 29, 2026

Startup News Roundup: Aggregating key funding and launch updates.

Marc Andreessen on the 5 personality traits of an innovator
Source: StartupPublished: Mar 31, 2026

“When you’re talking about real innovators—people who actually do really creative, breakthrough work—I think you’re talking about a couple things:”

Steve Jobs explains the importance of both thinking and doing
Source: StartupPublished: Mar 30, 2026

“The doers are the major thinkers. The people who really create the things that change this industry are both the thinker-doer in one person.”

Tobi Lutke explains what the VCs who passed on Shopify got wrong
Source: StartupPublished: Mar 27, 2026

“What a lot of free-market thinkers don’t understand is that between the demand and eventual supply lies friction."

Sam Altman explains how he decides to invest in a startup after 10 minutes
Source: StartupPublished: Mar 26, 2026

"Does this person have the potential to be the next Mark Zuckerberg?… [You don’t get to] 100% accuracy, obviously, but it’s good enough that our business model works.”

Jony Ive recounts the time Steve Jobs called him vain
Source: StartupPublished: Mar 25, 2026

In the clip below, Jony Ive recounts the time he asked Steve Jobs to be less harsh in his critique of a piece of work.

Jeff Bezos’s two pieces of advice for aspiring entrepreneurs
Source: StartupPublished: Mar 24, 2026

“The advice that I would give entrepreneurs is don't chase the hot new thing. It's so hard to catch something that everybody already knows is hot."

Elad Gil: “Things that work tend to work pretty fast”
Source: StartupPublished: Mar 23, 2026

“I do think there’s a bit of a myth in Silicon Valley that you should keep grinding no matter what and it’s just about perseverance, and I think that’s really bad advice."

Paul Graham on why starting with a “small, intense fire" is the key to startup growth
Source: StartupPublished: Mar 20, 2026

"You have to know who those first users are and how you're going to get them."

Keith Rabois on how to identify great talent
Source: StartupPublished: Mar 19, 2026

“What you want to do with every single employee every single day is expand the scope of their responsibilities until it breaks… and that’s the role they should stay in.”

Wealthfront CEO on why advertising spend makes it harder to find product/market fit
Source: StartupPublished: Mar 18, 2026

“The way that you know you have product/market fit is if you have exponential organic growth."

Eric Schmidt on why most companies get strategy wrong
Source: StartupPublished: Mar 17, 2026

“Work very, very hard to figure out what the world’s going to look like in five years. What will people be doing? What will your customers want? Where will costs be?"

Mark Zuckerberg: “You can’t 80/20 everything”
Source: StartupPublished: Mar 16, 2026

"There’s the famous 80/20 rule where you get 80% of the benefit by doing 20% of the work, but you can’t just 80/20 everything. There have to be certain things that you are just the best at."

Marc Andreessen on Mark Zuckerberg’s founder “superpower”
Source: StartupPublished: Mar 13, 2026

“A great superpower that Mark Zuckerberg has that is probably not well-understood enough is he does not get emotionally upset in stressful situations"

Sam Altman explains how to come up with a great startup idea
Source: StartupPublished: Mar 12, 2026

"If you start a startup without a good idea… you’ll be under pressure to make something up and it won’t work that well."

Jeff Bezos on the problems with proxies and managing to metrics
Source: StartupPublished: Mar 11, 2026

“One of the things that happens in business is that you develop certain things that you’re managing to—a typical case would be a metric. And that metric isn’t the real underlying thing.”

Airbnb founder Brian Chesky on how to design an amazing user experience
Source: StartupPublished: Mar 10, 2026

“If you can design something really amazing using the hand-crafted part of your brain, then you can reverse-engineer how to industrialize this millions of times over."

Spencer Rascoff: "I will never invest in a consumer startup with paid marketing”
Source: StartupPublished: Mar 9, 2026

"If you’re actually trying to grow a product, the best levers for doing that are often within the product itself.”

Patrick Collison explains why it sometimes make sense to quit
Source: StartupPublished: Mar 6, 2026

“One thing I’ve learned myself the hard way, is that it is easier to tear down a company and restart it in Silicon Valley, than it is to constantly try to pivot or keep something alive."

Jeff Bezos recounts the time he called Amazon’s customer service number mid-meeting to prove a metric was wrong
Source: StartupPublished: Mar 5, 2026

“I have a saying, which is when the data and the anecdotes disagree, the anecdotes are usually right"

Ben Horowitz: “Nobody was born a great manager. It’s a very unnatural job.”
Source: StartupPublished: Mar 4, 2026

“If you can’t build a great product, it doesn’t matter if you can build a great company.”

03

ALSO TODAY

3 MORE SOURCES
08

SOLIDOT

08.00
SOLIDOT

Solidot News - June 29, 2026

Solidot Feed: Highlighting essential tech & open-source news.

波音 747 的落幕

波音 747 曾是美国实力、发明、进步和平民主义的象征。如今它却成为所有这些价值观衰落的缩影。从 1970 年第一架 747 投入使用,到 2023 年停产该机型,波音公司共生产了 1574 架飞机,包括两架至今仍在服役的空军一号。类似 20 世纪的大多数科技创新,747 项目也是由军方推动的。1960 年代初,波音应政府要求设计一款大型军用运输机。洛克希德赢得了竞标生产了 C-5 银河运输机。波音失利之后放手让工程师在此基础上研发出最大的商用飞机。747 的用途远不止客运和货运。NASA 曾利用一架改装过的 747 将航天飞机运送到肯尼迪航天中心。美国的这两大象征似乎预示着 20 世纪的进步永无止境。但它们终究会落幕。航天飞机项目于 2011 年终止,而 747 飞机也逐渐从天空消失。如今亲眼目睹 747 变得越来越难,尤其是在美国。Atlas Air 和 Kalitta 仍在运营部分波音 747。汉莎航空运营着波音 747 客运航班最多的航线,大韩航空仍在运营 747 的国际航线,中国、伊朗和俄罗斯用它执飞类似巴士的国内航线。

灵晟超算使用的 LX2 处理器

Top500 上周公布了最新的超算榜单,深圳国家超算中心的灵晟首次亮相即登顶榜单。灵晟超算在 Linpack 测试中比排名第二的美国劳伦斯利弗莫尔国家实验室 El Capitan 超算快 22%,在 HPCG 测试中快 26%。它是首个仅靠 CPU 实现持续双精度浮点性能逾 2 Exaflops 的超算系统,美国的超算使用了 GPU 加速器。据 Chips and Cheese 根据相关幻灯片和相关 arXiv 论文报道,灵晟使用的 LX2 CPU 是基于 ARMv9.2 架构,支持 Scalable Matrix Extension(SME)指令集。相比下日本 ARM 超算富岳(Fugaku)是基于 ARMv8 架构,在今天已经相当老了。LX2 的每个核心都有 32 KB 的 L1 指令缓存和 32 KB 的 L1 数据缓存。芯片由两个计算模块(die)组成,每个模块包含四个 40 核心簇。每个簇有 2 个核心被禁用,因此每个簇有 38 个活跃核心,每个模块有 152 个活跃核心。每个簇配备 28.5 MB 的 L2 缓存,每个模块有 114 MB 的 L2 缓存,整个 LX2 封装有 304 个活跃核心和 228 MB 的总 L2 缓存。304 个核心以 1.55 GHz 运行,每个 LX2 CPU 提供 60.3 TFLOP/s 的 FP64 计算性能,功耗为 690 瓦。LX2 配备了八个“高带宽内存”,带宽为 4 TB/s(另一篇报道称 4 TB/s per chiplet,8 TB/s per socket)。所谓的高带宽内存可能不是 HBM。灵晟超算系统包含了逾 22,000 个节点和 1379 万个 CPU 核心。

Gartner 预测两年内开发者的 AI token 费用将超过其薪水

Gartner 预测两年内开发者的 AI token 使用费用将超过其薪水。预测将开发者的薪水设定为每月 2000 美元,因此这并不意味着所有地区的 AI token 使用费用将会达到或超过开发者薪水,美国的开发者年薪通常高达六位数。Gartner 高级首席分析师 Nitish Tyagi 指出,在极端情况下美国开发者的 AI token 使用费用也可能会超过其薪水,有些开发者每月的 AI 支出会超过数万美元。美国部分科技公司也已经开始要求其员工控制 AI token 的使用。Tyagi 称,企业必须监管和控制 AI token 的使用,否者 AI 工具费用的增长速度可能会超过带来的生产力提升。

中国的肥胖危机

中国近四年来人口持续下降,超重肥胖率却加速上升,而且年轻化趋势明显,这意味着未来健康劳动力可能减少。国家卫健委、中国营养学会的《中国肥胖预防和控制蓝皮书》等公开数据显示,1992 年全国成人超重肥胖率为 27.2%,2002 年升至 29.9%,2005 年则加速增长到 42.3%,2020 年为 50.7%,2023 年则达到 57%。研究预测,若超重肥胖趋势得不到遏制,2030 年中国成人、儿童超重肥胖率将分别达 70.5% 和 31.8%。《柳叶刀》报告显示,中国 25 岁及以上的成年超重和肥胖患者人数早在 2021 年已达 4.02 亿。

微软被控为 OpenAI 构建新超算鼓励侵犯版权

在 Cox Communications, Inc. v. Sony Music Entertainment 一案中,索尼等唱片公司指控 Cox 在其用户的侵权活动中是共谋犯,需要承担侵权责任。今年 3 月美国最高法院站在了 Cox 这边,以 9 比 0 裁定 Cox 不用对其用户的行为承担共同责任。本案就间接侵权设立了新标准,从此之后原告必须证明被告故意诱导他人实施非法行为。《纽约时报》根据最高法的裁决修改了诉讼,指控微软积极鼓励 OpenAI 窃取其受版权保护的作品。诉讼称,微软的新超算是专门帮助 OpenAI 侵权而定制的,其目的就是在未经许可的情况下训练 AI 处理受版权保护的作品,该系统特别授予纽约时报文章更高的权重。《纽约时报》指控,通过建造新超算,微软不仅帮助 OpenAI 选择侵权作品,还提供了一种未经许可获取受版权保护作品的手段。

Linux 7.2-rc1 释出

Linus Torvalds 在内核邮件列表上宣布释出 Linux 7.2-rc1。主要变化包括:Cache Aware Scheduling,性能优化、修复 Linux 7.1 的新 NTFS 驱动,完全移除 strncpy API,新 ARCTIC Fan Controller 驱动,AMD ISP4 驱动,初步支持 AMDGPU HDMI 2.1 FRL,等等。

中国 AI 短剧生态

AI 短剧近月来成了中国影视业炙手可热的风口。在这场变革中,创作者借助低门槛的 AI 生成技术,快速制作具画面、对白和音效的短剧,大幅压缩了传统制作所需的人力和时间。古装题材 AI 短剧《霍去病》等爆款作品的出现,让不少业者看到一片商业蓝海。据媒体报道,中国今年注册的 AI 短剧企业超过 2100 家。然而爆款剧终究是少数——截至今年 2 月上线的超过 12 万部 AI 短剧中,播放量破亿的低于 150 部,爆款率约千分之一。西红柿影业董事长陈健受访时坦言:“对于承制 AI 短剧的公司,扣除算力和员工成本,利润没剩多少。钱基本都给头部大厂赚走,我们更像是血汗工厂。”陈健说:“有时发出 100 次指令,只有一次能换来想要的效果……原以为能赚钱,后来发现是亏的,因为修改太多了,推高了人力和算力成本。”AI 虽提升了生产力,却未必能改变短剧业内卷和利益分配的既有逻辑。许多业者发现,真正赚钱的是平台公司和少数头部短剧企业,多数中小型承制公司则只能艰难求生。

币安因未取得牌照停止在欧盟提供服务

币安已告知欧盟客户,由于该公司无法取得在欧盟运营所需的牌照,将从下周起停止向他们提供服务。这对这家全球最大的加密货币交易所来说,是一次重大挫折。自 7 月 1 日起,所有在欧盟经营的加密货币公司,都必须依据欧盟《加密资产市场监管条例》(Markets in Crypto-Assets Regulation, MiCA)持牌运营,否则将面临处罚。币安此前在希腊申请一张可覆盖整个欧盟的牌照,但上周遭到拒绝,距离最后期限生效已不足两周。该交易所目前计划转向法国申请牌照,此前曾在法国就牌照问题进行过磋商。

科学家再次尝试编辑人类胚胎

继哥伦比亚大学 Dieter Egli 团队之后,第二个科研团队报告称,利用高精度基因编辑技术改造了人类胚胎 DNA。多名科研人员表示,该实验的成功,让关于胚胎基因编辑的伦理讨论变得更加紧迫。这一次英国剑桥大学的 Kathy Niakan 带领研究人员使用单碱基编辑技术敲除了编码 NANOG 蛋白的基因。实验所用的精子、卵子与胚胎均来自科研捐献,胚胎仅培养约 1 周时间。经过编辑的胚胎无法形成完整外胚层,也就是未来发育成人体各类组织的细胞团;但胚胎仍能分化出胎盘、卵黄囊等胚胎附属支撑结构的前体细胞。

马克斯普朗克的两篇论文被撤稿

1918 年诺贝尔物理学家得主马克斯普朗克(Max Planck)的两篇论文在 2011 年被撤下。两篇论文于 1940 年代发表在德国期刊《Naturwissenschaften》上,如今隶属于 Springer Nature 集团,《Naturwissenschaften》撤稿的理由是侵犯版权。马克斯普朗克的做法是一稿多发,在以前很常见,但如今被认为“自我剽窃”会引发版权纠纷。魁北克大学物理史学家 Yves Gingras 和科学史学家 Mahdi Khelfaoui 对此做法提出批评。尤其滑稽的是 Springer Nature 以空白 PDF 的形式撤稿,而该空白 PDF 仍然以 39.95 美元的价格出售访问权限。他们怀疑自然集团是使用算法自动撤稿的。

法国本周的热浪超过对 2050 年的可怕想象

2014 年世界气象组织 (WMO) 协调组织了一场活动,其中包括预测 2050 年的天气。法国主持人 ïvelyne Dhéliat 的预测是到 2050 年该国最高气温将达到 43 摄氏度。本周法国的热浪将这一预测提前 24 年实现,且超过了预测。法国周三 43 个地点有 19 个地点超过了对 2050 年的预测,最高气温高达 44.3 摄氏度。法国 1947 年以来的热浪半数发生在 2010 年之后。法国气象局表示,到 2100 年热浪可能会持续两个月。随着地球暖化,极端高温将变得越来越常见。

韩国计划训练所有军人熟练操作无人机

韩国计划训练所有军人像使用枪支一样熟练操作无人机。国防部长官安圭伯表示,目标是通过训练士兵像使用“第二件个人武器”一样使用无人机,让无人机成为所有部队的“通用作战工具”。韩国还计划为军事单位配备更多廉价且可消耗的无人机,用于侦察和打击任务,部署更多反无人机激光武器和微波武器。很多国家都在效仿乌克兰训练和装备无人机,韩国并非个例。乌克兰利用无人机和军用机器人弥补其在战场上与俄罗斯庞大军力对抗的劣势。韩国国防部今年将首先向军人提供 1.1 万架训练无人机,目标是到 2029 年部署 6 万架无人机。出于安全考虑,韩国军方希望采购 100% 国产零部件的无人机。

AI 促使数学家思考数学对他们的意义

几十年来计算加速了数学的进步。50 年前数学家利用计算机证明了四色定理,以一种人类几乎不可能实际验证的方式证明任何地图可以用不超过四种颜色着色。但在整个计算时代,人类数学家的作用仍然至关重要。人类凭借直觉提出猜想,凭借创造力和经验设计证明策略,最终验证证明是否正确。今天 AI 正在挑战这一模式。短短几年内,大模型就从只知道复述的“随机鹦鹉”演变成高级数学推理机器。UCLA 教授陶哲轩认为 AI 能作为催化剂推动向他所谓的“大数学”的转变,设想未来人类与机器将进行大规模、去中心化的协作,复杂的数学任务被分解,人类负责创造性部分,而 AI 则承担大部分技术性工作。陶哲轩已在实践这一理念。AI 正迫使数学家思考数学对他们的意义。一位数学家称,数学塑造了其思维方式,使其能以非常逻辑和理性的方式思考,对生活各个方面都有帮助。随着 AI 改变数学,研究人员想知道未来的数学家是否也能这样说。

美国政府允许 Anthropic 将 Mythos 5 模型提供给少数客户使用

在要求 OpenAI 分阶段发布其新模型之后,美国政府显然也对 Anthropic 提出了相同的要求。根据商务部长 Howard Lutnick 给 Anthropic 的信函,美国政府允许 Anthropic 重新发布其新模型 Mythos 5,但现阶段只提供给少数客户。Mythos 5 的访问权限将提供给约 100 家机构,其中包括政府机构和私营公司。OpenAI 的新模型 GPT-5.6 也采用类似的发布模式。

BBC 关闭长波广播

BBC 宣布于 6 月 27 日停播 Radio 4 长波广播,6 月 30 日关闭长波平台。BBC 将此归咎于维护过时技术的成本过高。Radio 4 长波设备使用的电子管早就停产,而 BBC 早在 1997 年就将相关信号塔出售给了私营公司,这些设备由私营公司运营。随着越来越多的人转向流媒体,维持全国性的广播和电视覆盖在经济上意义不大。在关闭长波之后,英国接着准备淘汰地面电视,相比使用人数很少的长波,地面电视的关闭将会影响很多人。英国政府计划最早 2034 年最晚 2044 年关闭地面电视。

空客被要求对 A380 的机翼进行紧急检查

欧盟航空安全局(EASA)下令对阿联酋航空和澳洲航空运营的 16 架空客 A380 飞机进行紧急检查,此前部分 A380 飞机的机翼部件发现了裂纹。EASA 表示,裂纹是在此前对机翼翼梁结构的检查中发现的,它认定这些裂纹可能会降低机翼的结构完整性。为解决潜在安全隐患,空客必须进行额外的专项细查。16 架 A380 客机中有 15 架由阿联酋航空运营,1 架由澳洲航空运营。A380 是载客量最高的民航客机,共制造了 254 架,目前已经停产。

从赞美美德到歌颂堕落

英国伦敦大学玛丽皇后学院的研究人员分析了 1960-2023 年间发行的逾 38 万首歌曲的歌词后发现,流行音乐中使用的情感语言和道德语言发生了显著变化。表达关怀和体面等道德美德的词语随时间推移变得越来越少见,而与伤害、欺骗、颠覆和堕落相关的语言逐渐增多。研究人员指出,“音乐不仅仅是娱乐。它是社会讲述自身故事的方式之一。通过分析几十年来的歌词,我们可以开始看到情感表达和道德叙事随时间如何演变。”研究还发现,女性艺术家更多与关爱和忠诚等美德联系在一起,而男性艺术家和男女混合组合则更多与反映伤害、颠覆和堕落等负面主题联系在一起。

大型猿类笑声节奏与人类相似,存在了 1500 万年

根据发表在《Communications Biology》期刊上的一项研究,大猿的笑声节奏可能与现代人类相似,而这一现象已持续了至少 1500 万年。研究结果还表明,在大猿的演化过程中,笑声变得更快、变化更多,且越来越受到所处情境的影响。所有大猿(人科动物)都会笑,包括与人类亲缘关系较近的物种,如倭黑猩猩,以及亲缘关系较远的物种,如婆罗洲猩猩。然而笑声的节奏随时间如何演变,及其可能与人类语言的演化有何关联,此前尚不清楚。 在研究中,英国华威大学的研究人员分析了 4 只婆罗洲猩猩(Pongo pygmaeus)、两只大猩猩(Gorilla gorilla)、3只倭黑猩猩(Pan paniscus)、4只黑猩猩(Pan troglodytes)以及4个人的笑声录音,这些个体的年龄在6个月至7岁之间。 科学家研究了140段笑声序列,并测量了每次发声之间的时间间隔。研究发现,所有物种的笑声都遵循一种规律的节律模式,连续发声之间的间隔均匀。由于这种模式在所有研究物种中均存在,研究人员推测,这种有节奏的笑声可能早在 1500 万年前就已存在于它们的共同祖先身上。 他们还推断,随着时间的推移,笑声变得更快、更多样化,比如人类会根据情境改变笑声的速度,如被挠痒时发出的笑声比玩耍时更快,而其他猿类则不会。此外,与人类亲缘关系越近的猿类,其笑声节奏的变化性就越大。 这些发现表明,在大猿和人类的演化过程中,发声的灵活性和控制力可能逐渐增强,作者推测这可能促成了语言的出现,未来需要通过更大样本量的研究证实这些发现。

每小时走五分钟有助于抵消久坐的危害

久坐是一种健康风险,但对久坐行为的干预需要考虑可行性和有效性。根据发表在《British Journal of Sports Medicine》期刊上的一项研究,研究人员评估了每隔 30 分钟、60 分钟或 120 分钟就站起来步行 5 分钟的干预措施。有 19342 名成年人参与了研究,其中 11484 人分成三组执行上述三种不同的干预方法。结果显示,所有干预组参与者报告疲劳和负面情绪显著降低,正面情绪显著提升。在考虑了可行性和有效性等因素之后,研究人员指出每小时站起来走 5 分钟在可行性和有效性之间取得了最佳平衡。

美光与其大客户签署了长达五年的供货协议

美光 CEO Sanjay Mehrotra 在最新的财报电话会议上披露,该公司与 16 家大客户签署了“战略客户协议”,大部分协议涵盖的时间从 2026 年一直持续到 2030 年,客户承诺购买一定数量的产品,支付价格处于设有最低和最高价格的定价区间内。这意味着如果内存价格进一步上涨,客户基本不会受到的影响。美光 CEO 称,客户意识到,内存和存储设备的供应短缺需要相当长的时间才能缓解。美光预计供应将在 2028 年逐步改善,但目前无法预测内存供应何时才能赶上持续增长的需求。他说客户同意预付款项,该公司将利用这笔资金扩建晶圆厂。

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