TEXT VIEW · TODAY'S DIGEST · 36 HEADLINES ACROSS 8 SOURCES

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ISSUE 0925
MON, JUL 13, 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, JUL 13, 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

July 13, 2026

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

U.S.-Iran Tensions Spike, Causing Oil Prices to Surge Following a new round of attacks, the U.S. reinstated a naval blockade in the Strait of Hormuz, and Iran responded by closing the strategic waterway. The escalating conflict has caused oil prices to surge to their highest level in a month, creating uncertainty in global financial markets.

Tech Stocks Tumble, Dragging Down Major Indices U.S. stocks fell today, led by a significant selloff in technology and artificial intelligence shares. Investor confidence was shaken by growing doubts about the AI sector, exemplified by the disappointing U.S. market debut of major chipmaker SK Hynix.

Apple Files Lawsuit Against AI Leader OpenAI Tech giant Apple has filed a lawsuit against artificial intelligence company OpenAI. The legal action is seen as a strategic move by Apple to delay a key rival and protect its market position as AI technology continues to advance rapidly.

Israel Sets October Election as Political Challenger Rises Israel has scheduled a national election for October amid a shifting political landscape. Recent polls indicate that former military chief Gadi Eisenkot is now more popular than the incumbent prime minister, signaling a potentially competitive race for leadership.

Fed Governor Warns of Potential Interest Rate Hike Federal Reserve Governor Christopher Waller indicated that the central bank might consider raising interest rates again. He stated that another elevated inflation report could prompt the Fed to tighten its policy in an effort to control rising prices.

02

ON THE WIRE

6 SOURCES
02

HACKER NEWS

02.00
HACKER NEWS

Hacker News - July 13, 2026

Hacker News Feed: Highlighting key posts and discussions.

The Graph That Should Be Front-Page News

(www.lyrebirddreaming.com)

267163
Backtrack-Free Cursive

(mmapped.blog)

14262
Sam Neill has died

(www.theguardian.com)

30574
Count Binface

(countbinface.com)

310256
Tiny Emulators

(floooh.github.io)

29825
I love LLMs, I hate hype

(geohot.github.io)

444281
Why write code in 2026

(softwaredoug.com)

193241
Don't you mean extinct?

(fabiensanglard.net)

205127
03

HUGGINGFACE

03.00
HUGGINGFACE

HuggingFace 新闻 - July 13, 2026

HuggingFace Feed:最新的 AI 模型、数据集和社区动态。

Long-Horizon-Terminal-Bench: Testing the Limits of Agents on Long-Horizon Terminal Tasks with Dense Reward-Based Grading

AI agents have become capable of autonomously completing short, well-specified tasks. However, existing terminal benchmarks largely focus on simple problems that finish within minutes and are evaluated only by their final outcome. This setup overlooks intermediate progress and partial solutions, yielding sparse reward signals and an incomplete picture of agent capability. We introduce Long-Horizon-Terminal-Bench, a terminal benchmark of 46 long-horizon tasks spanning nine categories, including experiment reproduction, software engineering, multimodal analysis, interactive games, and scientific computing. Each task follows a Terminal-Bench-style setup with a reference solution or simulation engine, but is further decomposed into fine-grained graded subtasks. This design enables dense intermediate rewards and partial credit, allowing evaluation to capture not only whether an agent reaches the final goal, but also how far it progresses on open-ended workflows. Tasks in Long-Horizon-Terminal-Bench typically require hundreds of episodes and minutes to hours of execution, stressing long-horizon planning, long-context management, and iterative debugging rather than one-shot problem solving. We evaluate 15 frontier models and find that agents consume on average 9.9M tokens per task, with roughly 231 episodes and 85.3 minutes of execution time per run, making Long-Horizon-Terminal-Bench more demanding than prior terminal-based benchmarks. Even the strongest tested model achieves 15.2% pass@1 at a partial-reward threshold of 0.95 and 10.9% at a perfect-reward threshold of 1.0, while the mean pass rate across models is 4.3% and 1.7% under the two thresholds, respectively. These results reveal headroom for improvement. We further analyze failure modes and error patterns, and release Long-Horizon-Terminal-Bench to support future progress on long-horizon terminal agents.

45
Video Generation Models are General-Purpose Vision Learners

Driven by next-token prediction, NLP shifted from task-specific models into powerful generalist foundation models. What, then, is the equivalent catalyst needed to achieve a general-purpose model in computer vision? In this paper, we contend that large-scale text-to-video generation serves as a strong pre-training paradigm for computer vision, providing the necessary spatiotemporal priors, vision-language alignment, and scalability required for general visual intelligence. We introduce GenCeption, which leverages a pre-trained video generative diffusion backbone to define a feed-forward perception model, capable of performing various vision tasks steered by text instructions. Empirical results demonstrate that GenCeption achieves state-of-the-art performance across a diverse suite of tasks, including depth, surface normal, and camera pose estimation, expression-referring segmentation, and 3D keypoint prediction, often matching or surpassing specialized models (e.g. DepthAnything3, SAM3, D4RT, VGGT-Omega, Sapiens, David, Genmo, and Lotus-2). Furthermore, the video generative pretrained backbone outperforms alternative pretraining paradigms (e.g., V-JEPA, and Video MAE) under comparable settings. Importantly, GenCeption exhibits preliminary data and model scaling properties along with exceptional data efficiency, where it achieves comparable performance with leading models like D4RT and VGGT-Omega with 7 to 500 less training data. Finally, GenCeption also exhibits intriguing emergent behaviors: a model trained exclusively on synthetic human videos generalizes to real-world footage and out-of-distribution object categories (e.g., animals and robots). These findings suggest that video generation is not merely a synthesis tool, but a foundational path toward generalist vision intelligence for the physical world. Project page: https://genception.github.io

40
Scalable Visual Pretraining for Language Intelligence

The rapid progress of large foundation models has been driven predominantly by pretraining on large-scale text corpora. However, many forms of knowledge are conveyed through visual representations, where figures, typeset equations, and page layouts carry rich information that cannot be faithfully or completely captured by text alone. Yet current pretraining approaches discard these visual cues by converting visually rich sources, such as documents and web pages, into plain text for learning language intelligence. This paper challenges the default assumption that language models must be trained on text-only representations and shows that Visual Pretraining is a scalable learner for foundation model intelligence. To this end, we conduct a systematic study of unsupervised visual pretraining paradigms that directly leverage visual documents without text extraction. Across multiple backbones and benchmarks, visual pretraining on the same underlying corpora consistently outperforms text-only pretraining, offering an efficient pathway to scalable language intelligence.

40
Trust Region Policy Distillation

Big goals are hard to achieve all at once; breaking them into small steps is wiser. We present Trust Region Policy Distillation (TOP-D), which transforms the notoriously unstable, high-variance On-Policy Distillation (OPD) into a stable training paradigm by dynamically constructing a proximal teacher. Theoretically, we establish a rigorous framework demonstrating that TOP-D inherently controls gradient variance. By providing a formal global convergence analysis alongside a monotonic improvement bound, we mathematically formalize the reliability and stability of the overall training dynamics. Empirically, TOP-D dramatically enhances training stability, sample efficiency, and final performance on mathematical reasoning tasks. More importantly, TOP-D introduces zero additional computational overhead, positioning itself as a promising alternative to the well-established OPD paradigm.

17
KronQ: LLM Quantization via Kronecker-Factored Hessian

Post-training quantization (PTQ) is a widely adopted technique for compressing large language models (LLMs) without retraining. Existing second-order PTQ methods, including GPTQ, construct quantization objectives exclusively from input activation statistics, effectively assuming that all output channels contribute equally to the layer-wise reconstruction objective. We propose KronQ, a PTQ framework that challenges this assumption by introducing the gradient covariance into the quantization pipeline. Under the Kronecker-factored Hessian approximation, the quantization loss depends jointly on both the activation and gradient covariances, and KronQ exploits this at two complementary levels. (1) KronQ introduces bidirectional incoherence processing, extending the existing input-side random rotation to the output dimension using the gradient covariance, reducing weight magnitude variance across both input and output dimensions. (2) KronQ derives a new sensitivity metric for inter-layer mixed-precision allocation, driven by the gradient and activation Hessian traces. Notably, in the case of 2-bit weight-only quantization on LLaMA-3-70B, while GPTQ and GPTAQ diverge or produce degenerate quantizations (>2000 perplexity on WikiText-2), KronQ achieves 7.93 perplexity.

15
From RGB Generation to Dense Field Readout: Pixel-Space Dense Prediction with Text-to-Image Models

Large-scale text-to-image models are attractive backbones for dense prediction because RGB generation pretraining learns rich semantic, structural, and geometric priors. Existing generative and editing approaches reuse these priors by casting dense prediction as target generation: annotations such as depth, normals, alpha mattes, masks, and heatmaps are encoded into an RGB-trained VAE latent space and decoded back as image-like targets. We argue this inherits more of the generative output interface than dense prediction requires: unlike RGB synthesis, dense prediction asks for pixel-correct, task-native fields on the same image plane, not new RGB content to be rendered. Our key observation is that a pretrained DiT already organizes RGB inputs through a patch-to-token-to-patch lattice on the image plane, so each token indexes a fixed output patch whose channels can carry task-native quantities instead of RGB appearance. We instantiate this as ReChannel: we keep the VAE encoder for the DiT's input distribution but drop the target-side decoder, adapt the frozen DiT with task LoRA, and map each token to its p x p x K_t pixel-space patch through a shared token-local linear head--about 33K parameters, no spatial mixing. Using FLUX-Klein, we evaluate on six dense prediction tasks and over a dozen benchmarks. This minimal interface sets new state-of-the-art on trimap-free matting, KITTI depth, and referring segmentation, and stays competitive on normals, saliency, and pose. In a matched 4B setting it is more accurate and 2.48x faster than an edit-plus-latent-decode counterpart--dense perception can benefit from generative pretraining without inheriting its output interface.

9
PanoWorld: Real-World Panoramic Generation

In this work, we aim to address the challenge of long-range memory in panoramic world models by exploiting the rotation-equivariant property of omnidirectional representations, where rotation can be treated as an implicit geometric transformation.Building on this insight, we propose PanoWorld, which simplifies camera trajectories into translations via fixed headings for both current-action modeling and long-range memory through Dense Panoramic Ray-Conditioning (DPRC) and Geometry-aware Memory Augmentation (GMA).Then, a three-stage training pipeline is introduced to progressively optimize each component. To better evaluate physical consistency under large-scale spatial variations and diverse illumination conditions, where existing datasets are relatively stable, we construct World360, a large-scale dataset consisting of both real-world video clips collected via panoramic unmanned aerial vehicles and high-quality simulated clips generated by AirSim360.Extensive experiments on World360 demonstrate the effectiveness of PanoWorld, outperforming alternative methods by a large margin.Our models, training code, and dataset will be publicly available. More information can be found on our project page: https://lihaoy-ux.github.io/panoworld-page/.

7
Towards Mechanistically Understanding Why Memorized Knowledge Fails to Generalize in Large Language Model Finetuning

Fine-tuning LLMs to inject new knowledge faces a critical challenge: LLMs can quickly memorize new facts, yet fail to use them for downstream reasoning tasks. We formalize this failure as the \textbf{Knowing--Using Gap}, characterized by an accuracy gap and a temporal lag between memorization and generalization. To understand this phenomenon, we fine-tune LLMs with unseen knowledge and monitor the spatial permeation dynamics of the knowledge internally using a novel intervention technique called self-patching. Self-patching identifies activation locations where relocating representations substantially improves failed generalization cases. These results are consistent with a knowledge-circuit misalignment hypothesis: memorized representations can exist internally but may not be routed to computation-effective layers. To demonstrate the practicality of this diagnostic finding, we design a simple heuristic strategy which recovers 58--75\% of the oracle headroom in generalization failure. Experiments are done cross-domain for the robustness of this finding.

7
Self-Guided Test-Time Training for Long-Context LLMs

Long-context processing has become increasingly important for large language models (LLMs), but simply extending the context window does not guarantee effective utilization of long inputs. As input length grows, accuracy often degrades, indicating that models still struggle to identify and use the evidence most relevant to a question. A promising way to improve long-context utilization is test-time training (TTT), which treats the test context as a training example for instance-specific parameter adaptation. However, applying TTT to the entire long context is prohibitively expensive, while adapting on randomly sampled spans introduces severe noise. Because most spans in a long context are irrelevant to the specific question, training on them may even degrade the base model's performance. Our preliminary study shows that TTT is highly sensitive to training-span quality: on LongBench-v2, TTT on randomly sampled spans hurts performance, whereas TTT on oracle spans substantially improves it. Motivated by this, we propose a simple method, Self-Guided TTT (S-TTT): before adaptation, the model identifies the evidence spans it should learn from, and the standard language-modeling training objective is applied only to those selected spans. On two challenging long-context reasoning benchmarks, LongBench-v2 and LongBench-Pro, S-TTT improves accuracy for both Qwen3-4B-Thinking-2507 and Llama-3.1-8B-Instruct, achieving up to a 15% relative improvement.

7
Flow-ERD: Agent-type Aware Flow Matching with Entropy-Regularized Distillation for Diverse Traffic Simulation

Realistic and diverse traffic simulation is essential to autonomous driving development. Yet prevailing benchmarks predominantly reward realism, and recent methods have optimized accordingly, leaving diversity underexplored. We introduce Flow-ERD, a multi-agent simulator that pursues realism and diversity jointly. Its backbone, Agent-Type Aware Flow Matching (AFM), couples flow matching's multi-modal expressiveness with type-specific kinematic execution. It preserves fine-grained diversity while keeping motions consistent with each agent type. A second stage, Entropy-Regularized Distillation (ERD), fine-tunes the closed-loop rollout distribution with an entropy-regularized reverse-KL objective. This mitigates covariate shift while explicitly preventing collapse onto high-density modes. We evaluate Flow-ERD with a log-free diversity metric alongside standard realism scores. Flow-ERD ranks first on the WOSAC test benchmark and dominates the realism--diversity Pareto front among reproducible baselines. Our project page is available https://seulbinhwang.github.io/flow-erd-project-page/{here}.

4
MedPMC: A Systematic Framework for Scaling High-Fidelity Medical Multimodal Data for Foundation Models

Medicine is inherently multimodal, requiring clinicians to synthesize information across diverse data streams. Yet the development of multimodal foundation models is constrained by limited access to large-scale, high-quality clinical data. Although PubMed Central (PMC) offers a complementary source of expert-authored image-text data, existing PMC-derived resources remain limited in fidelity, reproducibility, and clinical validation. We introduce MedPMC, an automated, continuously updatable framework that transforms permissively licensed literature into high-fidelity infrastructure for medical multimodal models. Applied to 6.1 million PMC articles, MedPMC curated 11 million medical image-text pairs. Component evaluations showed strong performance for initial screening (F1 = 93.2), multi-panel figure detection (F1 = 96.5), figure separation (mAP = 89.8), caption separation and alignment (F1 = 81.4; ROUGE-L = 85.3), and medical figure classification (F1 = 96.5). Manual review by five annotators, three with medical training, found 95.3% of MedPMC images medically relevant, versus 19.7% in a prior PMC-derived dataset. Across 26 benchmarks spanning 11 specialties, a MedPMC-trained CLIP-style model improved average zero-shot AUC by 7.1 percentage points over the strongest architecture-matched biomedical CLIP baseline despite using fewer than half as many image-text pairs. As the vision encoder in a multimodal large language model, it improved medical visual question-answering by 1.9 and 16.9 percentage points across two benchmarks. In 10,524 Yale New Haven Health System dermatology photographs, it improved morphology-to-image retrieval Recall@5 by 11.7 percentage points. These findings show that high-fidelity literature curation strengthens medical multimodal foundation models across benchmark and clinical settings. We publicly release the framework, corpus, benchmarks, and pretrained models.

2
Phone Segmentation and Recognition through Phonological Activation Mapping

Phone segmentation and recognition are inherently related tasks, yet modern approaches typically model them separately. We argue that phonetic structure is already latent in the representations of self-supervised speech models (S3Ms), and one only needs to steer them to solve both tasks. We leverage S3M-based Phonological Activation Mapping (SPAM), which maps each S3M representation frame to a vector of phonological feature activations, such as voicing and nasality. On top of SPAM, we introduce two simple but effective lightweight, gradient-descent-free prediction heads: a recognition head and a segmentation head. Our method requires less than a minute of phonetic transcriptions, and generalizes to unseen phones during training. Across a diverse range of datasets, our approach attains strong segmentation and recognition performance.

2
VaseMuseum: Digital Intelligent Museum for Ancient Greek Pottery

Vision-language models (VLMs) have made interactive digital museums increasingly feasible by connecting 3D digitization with natural-language artifact exploration. However, in cultural heritage domains such as ancient Greek pottery, reliable VLM assistance is limited by two challenges. First, open-ended interpretation requires grounding fine-grained 2D/3D visual evidence in specialized curatorial knowledge, yet the retrieval process may introduce weak sources and unverifiable references. Second, when the available evidence is incomplete, noisy, or ambiguous, VLMs often produce confident but unsupported answers instead of calibrated uncertainty. To address these challenges, we propose VaseMuseum, a lightweight and modular multimodal agent framework for intelligent digital museums of ancient Greek pottery. VaseMuseum combines an interactive virtual museum with VaseAgent, which supports both 2D images and 3D artifacts through multimodal perception, 3D-aware reasoning, external knowledge retrieval, and inference-time reliability control. Specifically, VaseAgent retrieves evidence from authoritative web and museum knowledge sources, and source-level control selects diverse and verifiable evidence before generation. Meanwhile, response-level control checks generated claims against the evidence pool and encourages neutral, evidence-bounded answers when support is insufficient or conflicting. Moreover, a training-free GRPO-style selection mechanism favors responses with valid references and calibrated confidence without updating the VLM backbone. Experiments in a realistic digital museum simulation show that VaseMuseum improves citation validity, reduces hallucinations on knowledge-intensive queries, and produces more neutral answers under ambiguity compared with search-enabled VLM baselines.

1
A Sovereign, Open-Source Foundation Model for German and English

We present Soofi S 30B-A3B, a sovereign, open-source Mixture-of-Experts (MoE) hybrid Mamba Transformer foundation model for German and English. Its hybrid design activates only 3B of 30B parameters per token and keeps the inference cache near-constant as context grows, giving it a decisive throughput advantage over dense models for long-context, high-concurrency deployment. Pretrained on roughly 27 trillion tokens with deliberately up-weighted German, Soofi S matches dense 14 to 27B models on aggregate English and German benchmarks while achieving the best code aggregates in both languages among 17 open base models, and outperforms every European sovereign baseline in our comparison, including ones far larger in active parameters. Among fully open models, Soofi S obtains the highest English and German evaluation scores, ahead of Olmo 3 32B and Apertus 70B. Soofi S was built end-to-end on the German Industrial AI Cloud, a sovereign HPC scale AI infrastructure operated by Deutsche Telekom in Munich. Soofi S will be released under highly permissive, open-access terms: weights, selected intermediate checkpoints, full per-source data accounting, hyperparameters, and training and evaluation code. Where source licenses permit, data-construction artifacts are released under permissive licenses; commercially licensed sources are documented with aggregate statistics and exact mixture accounting.

1
05

PRODUCT HUNT

05.00
PRODUCT HUNT

Product Hunt - July 13, 2026

Product Hunt Daily Feed: Featuring noteworthy tech launches.

Fudge MCP icon
Fudge MCP

Give your AI agents design taste from existing websites

0
AI Media Buyer By Creatify icon
AI Media Buyer By Creatify

Your ads, managed by AI that gets smarter daily.

0
AgentKey icon
AgentKey

One-stop live data marketplace for your agent

0
TailMux icon
TailMux

Multiple Tailscale tailnets at once, no switching + no VM

0
Loomal icon
Loomal

Monetize any MCP server in 5 minutes with no % skim.

0
NoMac.app icon
NoMac.app

The headless iOS app publishing pipeline for AI agents.

0
UnitPay icon
UnitPay

Price, bill, and prove value for your AI product

0
Knockoff icon
Knockoff

Amazon, without the knockoffs

0
Simba Voice Agents icon
Simba Voice Agents

Voice agents powered by Simba 3.2 the world's #1 voice model

0
Marked QL icon
Marked QL

Instant markdown previews in Finder

0
Osaurus icon
Osaurus

Open source agents that run 100% locally on your Mac

0
Playground icon
Playground

Earn $100K+ in weekly rewards for hacking AI agents.

0
Miora icon
Miora

Scale your creativity on editable canvas with agent memory

0
ServiceBeard icon
ServiceBeard

Sync your mailbox with your issue tracker

0
Second Brain for AI v2 icon
Second Brain for AI v2

AI memory that connects the dots across every tool

0
FetchSandbox icon
FetchSandbox

API integration testing that remembers what breaks

0
JustVibe icon
JustVibe

The search engine for doing, with apps built for you

0
Kickbacks CLI icon
Kickbacks CLI

The terminal and Mac menu bar companion for Kickbacks.ai

0
Basedash SCIM icon
Basedash SCIM

Your org changes. Access keeps up.

0
Effects SDK icon
Effects SDK

AI video & audio effects SDK for real-time apps

0
San Fran Sim icon
San Fran Sim

A startup tycoon game

0
Breathing In Labour icon
Breathing In Labour

A distraction-free breathing app for labor preparation

0
SoundPipe icon
SoundPipe

SoundPipe is a mixing board for your Mac

0
ChatGPT Work icon
ChatGPT Work

Partner for your most ambitious work

0
Cloudflare Drop icon
Cloudflare Drop

Drop your folder in browser & deploy instantly on Cloudflare

0
Yasmine Works icon
Yasmine Works

An AI coworker that lives in your Slack to get work done

0
Sim icon
Sim

Open-source workspace for AI agents and workflows

0
ChatCut icon
ChatCut

Your AI video editor in ChatGPT, desktop, and web

0
GPT-5.6 icon
GPT-5.6

A new standard for intelligence and efficiency

0
StoryChief Connect icon
StoryChief Connect

Publish content from Claude to your website and socials

0
Juicy - Mac Battery App icon
Juicy - Mac Battery App

Beautiful Mac battery alerts, health insights & charge limit

0
RepStandard icon
RepStandard

Computer vision counts your reps in real time

0
Mispher icon
Mispher

Dictate, rewrite, translate, and an agent in a single device

0
Scarlett. icon
Scarlett.

Your AI Co-Worker in Slack & iMessage

0
ConnectMachine 2.0 icon
ConnectMachine 2.0

AI digital business card that remembers everyone you meet

0
Muse Spark 1.1 by Meta AI icon
Muse Spark 1.1 by Meta AI

Multimodal reasoning model built for agentic tasks

0
PlugThis icon
PlugThis

Create your own Chrome Extensions by chatting with AI

0
Native SDK icon
Native SDK

Toolkit for building native desktop apps

0
Ship OS by Notion icon
Ship OS by Notion

The agent-native way to ship software

0
Perfai Security icon
Perfai Security

Find & fix live vulnerabilities in Vibe Apps with 1-prompt.

0
Timbal AI icon
Timbal AI

Build AI agents, workflows, and apps in one stack

0
Auriko icon
Auriko

Trading desk for LLM calls

0
Coasty icon
Coasty

A Computer-Use-Agent that runs legacy software like a human

0
Lispr icon
Lispr

Hold a key, speak, and Lispr writes it anywhere

0
Opper AI icon
Opper AI

The european AI gateway for agents

0
Glimpse icon
Glimpse

The competitive intelligence agent

0
Toyo icon
Toyo

Exec assistant who lives in iMessage and calls your phone

0
Aura: Agents + Git + Intent Open Source icon
Aura: Agents + Git + Intent Open Source

OSS IDE for controlling AI coding agents with built in loops

0
Just Ask by SEORCE icon
Just Ask by SEORCE

Talk to your SEO & AI Visibility data on WhatsApp.

0
Monogram AI icon
Monogram AI

AI with a visual and interactive interface

0
06

TECHMEME

06.00
TECHMEME

Techmeme - July 13, 2026

Techmeme Digest: Major tech headlines and industry conversations.

Microsoft announces a Windows 11 search overhaul that prioritizes local results, removes promotional web content, and more, rolling out to Windows Insiders (Zac Bowden/Windows Central)
Source: TechmemePublished: Jul 13, 2026

Zac Bowden / Windows Central : Microsoft announces a Windows 11 search overhaul that prioritizes local results, removes promotional web content, and more, rolling out to Windows Insiders —  Windows 11's search user experience is getting a big update, with Microsoft moving to prioritize local results, remove promotional content, and much more.

Q&A with Xinzhou Wu, head of automotive at Nvidia, on Nvidia's chips and AI models for autonomous driving, lidar's usefulness for Level 4 autonomy, and more (Nilay Patel/The Verge)
Source: TechmemePublished: Jul 13, 2026

Nilay Patel / The Verge : Q&A with Xinzhou Wu, head of automotive at Nvidia, on Nvidia's chips and AI models for autonomous driving, lidar's usefulness for Level 4 autonomy, and more —  Xinzhou Wu on autonomy, Chinese cars, and if we really need lidar  —  Today, I'm talking with Xinzhou Wu, who is the head of automotive at Nvidia.

Doc: DHS analysts twice dismissed signs of intruders inside the DHS' network, first detected in May, as harmless activity before confirming a breach in June (David DiMolfetta/Nextgov/FCW)
Source: TechmemePublished: Jul 13, 2026

David DiMolfetta / Nextgov/FCW : Doc: DHS analysts twice dismissed signs of intruders inside the DHS' network, first detected in May, as harmless activity before confirming a breach in June —  Department of Homeland Security personnel twice dismissed signs of cyber intruders inside the agency's Homeland Security Information Network …

A coalition of 12 states led by California files an antitrust lawsuit to block Paramount's WBD merger, alleging it lessens competition in three markets (Gene Maddaus/Variety)
Source: TechmemePublished: Jul 13, 2026

Gene Maddaus / Variety : A coalition of 12 states led by California files an antitrust lawsuit to block Paramount's WBD merger, alleging it lessens competition in three markets —  A coalition of 12 states filed an antitrust lawsuit on Monday to block the merger of Paramount Skydance and Warner Bros. …

London-based Valarian, which allows companies to use US cloud providers for AI workloads but retain control of their data, raised a $50M Series A led by NEA (Lily Mae Lazarus/Fortune)
Source: TechmemePublished: Jul 13, 2026

Lily Mae Lazarus / Fortune : London-based Valarian, which allows companies to use US cloud providers for AI workloads but retain control of their data, raised a $50M Series A led by NEA —  Max Buchan started advocating for infrastructure sovereignty when, as he puts it, “globalization and Davos were still cool.”

Seattle-based Augmodo, whose AI-powered "Smartbadges" worn by employees track shelf inventory, raised $21M led by TQ Ventures at a $350M valuation (Kurt Schlosser/GeekWire)
Source: TechmemePublished: Jul 13, 2026

Kurt Schlosser / GeekWire : Seattle-based Augmodo, whose AI-powered “Smartbadges” worn by employees track shelf inventory, raised $21M led by TQ Ventures at a $350M valuation —  Augmodo, the Seattle startup that straps AI-powered cameras onto retail workers to track store shelves, has raised $21 million …

Gauntlet, which helps institutions and crypto companies allocate their digital assets, raised a $125M Series C from Japanese financial conglomerate SBI Holdings (Ben Weiss/Fortune)
Source: TechmemePublished: Jul 13, 2026

Ben Weiss / Fortune : Gauntlet, which helps institutions and crypto companies allocate their digital assets, raised a $125M Series C from Japanese financial conglomerate SBI Holdings —  A startup founded during the early days of DeFi is now backed by a financial giant.  Gauntlet, which helps institutions …

Global smartphone shipments fell 11% YoY in Q2 to the lowest Q2 levels since 2013 amid the DRAM and NAND shortage; Samsung returns to #1 with a 24% market share (Shilpi Jain/Counterpoint Research)
Source: TechmemePublished: Jul 13, 2026

Shilpi Jain / Counterpoint Research : Global smartphone shipments fell 11% YoY in Q2 to the lowest Q2 levels since 2013 amid the DRAM and NAND shortage; Samsung returns to #1 with a 24% market share —  - Global smartphone shipments fell 11% YoY in Q2 2026 reaching the lowest second-quarter levels since 2013 as the DRAM and NAND shortage intensified.

Apple's stock is up 16% since June 25, adding ~$650B in market value and pushing shares back to record territory, as investors flee an AI stock selloff to Apple (Ryan Vlastelica/Bloomberg)
Source: TechmemePublished: Jul 13, 2026

Ryan Vlastelica / Bloomberg : Apple's stock is up 16% since June 25, adding ~$650B in market value and pushing shares back to record territory, as investors flee an AI stock selloff to Apple —  Investors are flocking back to Apple Inc. as nervousness about artificial intelligence spending weighs on the stocks of chipmakers and cloud-computing giants.

Sources: US officials estimate unauthorized distillation costs US AI labs up to $6B/year; US AI labs told the White House it could become an existential threat (Maggie Eastland/Bloomberg)
Source: TechmemePublished: Jul 13, 2026

Maggie Eastland / Bloomberg : Sources: US officials estimate unauthorized distillation costs US AI labs up to $6B/year; US AI labs told the White House it could become an existential threat —  Anthropic and OpenAI's warnings about “adversarial distillation” are reinvigorating one of the oldest debates in Silicon Valley.

Source: OpenAI still believes it is on track to unveil its first device in 2026 and release it in 2027; Apple's lawsuit may complicate hiring and supply chains (Mark Gurman/Bloomberg)
Source: TechmemePublished: Jul 13, 2026

Mark Gurman / Bloomberg : Source: OpenAI still believes it is on track to unveil its first device in 2026 and release it in 2027; Apple's lawsuit may complicate hiring and supply chains —  Apple Inc.'s lawsuit accusing OpenAI of systematically stealing its intellectual property threatens to disrupt …

Anthropic hires Tom Blomfield, a Monzo co-founder and one of the biggest names in UK tech, to join its compute team; he is taking a leave of absence from YC (Robert Scammell/Business Insider)
Source: TechmemePublished: Jul 13, 2026

Robert Scammell / Business Insider : Anthropic hires Tom Blomfield, a Monzo co-founder and one of the biggest names in UK tech, to join its compute team; he is taking a leave of absence from YC —  The AI talent wars aren't letting up — and neither is Anthropic's big-name hiring spree.  —  The AI startup has hired Tom Blomfield …

Intel plans to invest €5B to expand chip manufacturing at its Leixlip facility in Ireland; in 2025, Intel canceled a planned €30B factory in Magdeburg, Germany (Financial Times)
Source: TechmemePublished: Jul 13, 2026

Financial Times : Intel plans to invest €5B to expand chip manufacturing at its Leixlip facility in Ireland; in 2025, Intel canceled a planned €30B factory in Magdeburg, Germany —  Move strengthens Dublin's role in Europe's bid to secure advanced semiconductor manufacturing

Nearly 200 economists, including 15 Nobel laureates and Anthropic's Jack Clark, sign a letter titled We Must Act Now, warning of rapid AI-led job displacement (Ben Casselman/New York Times)
Source: TechmemePublished: Jul 13, 2026

Ben Casselman / New York Times : Nearly 200 economists, including 15 Nobel laureates and Anthropic's Jack Clark, sign a letter titled We Must Act Now, warning of rapid AI-led job displacement —  Nearly 200 economists signed a letter calling for policymakers to do more to understand and respond to potential A.I. disruptions.

Samsung says it now aims to begin operations at its first chipmaking plant in South Korea's Yongin by 2029, bringing the timeline forward from 2030 or 2031 (Henry Siu/The Information)
Source: TechmemePublished: Jul 13, 2026

Henry Siu / The Information : Samsung says it now aims to begin operations at its first chipmaking plant in South Korea's Yongin by 2029, bringing the timeline forward from 2030 or 2031 —  Samsung Electronics aims to begin operations at its first chipmaking plant in the city of Yongin, south of Seoul, by 2029 …

07

STARTUP ARCHIVE

07.00
STARTUP ARCHIVE

Startup News - July 13, 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 - July 13, 2026

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

蒋方舟因论文存在抄袭行为被撤销硕士学位

人民大学宣布决定撤销蒋方舟的硕士学位。中国人民大学星期一(7月13日)晚在微博通报称,近日,网上出现关于中国人民大学文学院2019届硕士毕业生蒋方舟学位论文涉嫌学术不端的新线索。学校高度重视,立即组建由多位校内外知名专家参与的调查组,通过文献溯源比对、依规问询、听取当事人申辩等,深入开展核查工作。“经核查,蒋方舟硕士学位论文有九处与境外某篇期刊论文存在文字重合,且相关内容未标注引用、未列明参考文献。人民大学依据中国《高等学校预防与处理学术不端行为办法》《中华人民共和国学位法》的相关规定,认定蒋方舟构成学术不端行为,并研究决定,撤销其硕士学位。”蒋方舟本人星期一晚在微博回应,接受人大校方的处理并致歉。她说:“因此事被惊扰并失望的读者,我致以歉意。对我的老师为此事蒙受的处分,深致歉意。”

Vinton Cerf 退休

Vinton Cerf 上周卸任 Google 首席互联网布道官一职,标志这其职业生涯的落幕。现年 83 岁的 Cerf 与 Robert Kahn 合作设计了 TCP/IP 协议,因此被誉为互联网之父。TCP 管理通过互联网发送的数据包,确保不会丢包,能以正确的次序接收,在正确的目的地重新组装。IP 管理地址,在正确的目的地转发和发送数据。两者共同构成了互联网的核心架构,让计算机能连接和交换流量。自 2005 年以来,Cerf 一直担任 Google 的副总裁和首席互联网布道官。

逃脱死亡命运的类木星行星

天文学家利用韦伯望远镜观测了一颗逃脱死亡命运的类木星行星 WD 1856 b。天文学家是在利用 TESS 望远镜观测白矮星时发现 WD 1856 b 的。白矮星是类太阳恒星的残骸,已经历了红巨星阶段,留下了地球大小的核心。天文学家在 WD 1856 系统发现了一颗气态巨行星,它距离恒星仅仅只有 0.02 个天文单位。这颗白矮星已经死亡了 60 亿年,它在红巨星阶段本应该会吞噬内行星,而气态巨行星本应该在此过程中向外迁移,结果它却更接近恒星了。韦伯的观测发现,WD 1856 b 被气溶胶笼罩,大气层含有甲烷,向太空辐射的能量大约是其从正在冷却的恒星接收能量的 25 倍。行星的温度高达 400 开尔文。

数据中心用电量占到了爱尔兰用电量的 23%

爱尔兰中央统计局 (CSO) 的数据显示,2025 年数据中心用电量占到了爱尔兰用电量的 23%。而在 2015 年这一比例仅为 5%。大型数据中心的用电量在 2025 年增长了 10%,从 2024 年的 6973 GWh 增至 2025 年的 7663 GWh,所有其他部门同期的用电量仅增长 2%。相比下城市居民用电量占总用电量的 18%,农村居民用电量则为 9%。类似其它地区,爱尔兰也出​​现了反数据中心抗议活动。该国拥有逾 80 个数据中心。

他们窃取了数据和民主

1998 年时任 Novell CEO 施密特(Eric Schmidt)接受 BBC 采访,当被询问到硅谷的政治立场时,施密特毫不犹豫的咆哮道:“我们反政府、反监管、反国会。”BBC 说,“你们想要的实际上是一个丛林社会?一个强者生存,弱者无依无靠的社会?”施密特坦然称是并以此为傲。硅谷精英想要不受监管的权力,这一论调与一个世纪前的镀金时代寡头如出一辙。而硅谷精英仅仅通过声称对人类传播、信息完整性、真相的命运以及信息文明中知识分布的全球历史性变革拥有实验权威,便得以为所欲为。一场持续数十年、至今仍在进行的实验拉开了序幕。作为监控资本主义的代表,Google 收集的用户数据远远超过其服务的需要。信息无政府状态正在重塑世界政治格局。虚假信息、极化和选举失能都有利于专制,而在追求人类数据的过程中,算法对腐化信息的优先推送有利于其商业利益,能吸引用户参与并引发数据爆炸式增长。任何民主制度都无法在这种环境下长久生存。今天的信息空间与民主制度的公共广场原型截然不同,让民主国家面临持续的压力。生成式 AI 就是以监控资本主义积累的海量数据为食物,而 AI 公司更是无视道德和法律毫无顾忌的窃取数据。他们代表了一种以盈利为目的的极权主义。这种权力体制与阿伦特(Hannah Arendt)、奥威尔(George Orwell)等人分析的政治极权主义有着根本性的差异,代表了一个由科技巨头掌控一切的未来。这种以数据驱动、以盈利为目的的极权主义,本质上是民主的敌人。它并非是我们所追求的未来,也并非我们这个时代和人民的必然命运。

Linus Torvalds 谈 AI 和垃圾补丁

Linus Torvalds 曾说过大模型(LLM)会让程序员的生产力提升十倍。他在 2026 年印度开源峰会上说,这个数字并不科学,是他随口胡扯的。他说如今的希望是 LLM 给程序员带来的生产力提升能超过其造成的生产力损失。他说,大模型生成的垃圾远多于有用代码,而 AI 生成的 bug 报告浪费了维护者大量的时间精力。Torvalds 称大量 LLM 生成的补丁是无意义的创可贴,或许能解决当前问题,但类似 bug 仍然留在那里,随时可能在其他地方再次出现。他称自己会用 LLM 制作原型,LLM 生成的代码并不能直接使用,但是一个尝试新想法的好方法。他认为 LLM 还无法生成修复内核 bug 的补丁。

中国三北防护林阻止了沙漠扩大,但战斗并未结束

根据中国科学院应用生态研究所科学家朱教君团队的监测,自 2000 年以来,中国荒漠化土地总体减少了约 10%,重度或极重度荒漠化土地面积减少了 40% 以上。三北防护林项目区森林覆盖率从 1978 年的约 5% 上升到 2022 年的 14%。三北防护林种植的森林累计面积已达 50 万平方公里。项目采用的“稻草棋盘格”技术是一种简单但应用广泛的方法,它能稳定沙丘、抵御风力,并通过灌溉系统供水帮助植物生根发芽。朱教君表示这一进展是前线控沙工作人员努力工作、高层规划和国家大量投资共同作用的结果。近年来部分地区降雨量的增加也使植被恢复变得更加容易。他称,项目的一个关键问题是如何实现可持续的森林保护。

Steam 月活用户数超过 2 亿

Valve 根据欧盟的 Digital Services Act 法披露的数据显示,其 PC 数字平台 Steam 去年下半年在欧盟地区的月活跃用户数平均为 3110 万。分析师 Simon Carless 结合这一数据和 Steam 全球带宽分布数据,估计 2025 年 Steam 月活用户数为 1.98 亿。2026 年上半年这一数字会进一步增长,预计月活用户数已经突破 2 亿。相比下,索尼披露其 PlayStation 游戏机的月活用户数为 1.25 亿。

DNA 确认托斯卡纳大公死于疟疾

1587 年 10 月,意大利托斯卡纳大公弗朗切斯科·德·美第奇因高热不治而亡。接诊医生初步判定死因是疟疾,但很快坊间流言四起,不少人猜测他是遭心怀嫉妒的弟弟费迪南多下毒谋害。通过分析包括弗朗切斯科在内的同期古人类 DNA,科学家证实疟疾正是夺走其性命的元凶。研究中分析的更多古基因组数据,也进一步揭示了疟疾如何肆虐文艺复兴时期的欧洲大陆。研究团队提取了弗朗切斯科的 3 根肋骨、红衣主教乔瓦尼·德·美第奇的一根肋骨的 DNA。同时研究人员采集了欧洲、亚洲、美洲多地出土遗骸的 9 份已知疟疾阳性古 DNA 样本,以此精准锁定致使美第奇家族族人死亡的疟原虫毒株类型。基因检测分析显示,弗朗切斯科的遗骸中检出了恶性疟原虫与三日疟原虫这两种疟疾的线粒体 DNA,证实其生前确实感染疟疾。而乔瓦尼的遗骸中,检出了携带两种全新突变的恶性疟原虫线粒体 DNA,是一种从未被发现的致命新型变异毒株。

加州吸引的风投远超美国任何州

尽管一项亿万富翁税提案导致部分超级富翁离开加州,但加州在今年内吸引的风投资金远超美国任何州。加州吸引了逾 3350 亿美元资金,排名第二的纽约州不到其十分之一,德州仅为其四十分之一。加州拥有的顶尖 AI 人才令其吸引力经久不衰。加州去年经济增长率 5%,GDP 达到创纪录的 4.25 万亿美元,经济规模仅次于美国、中国和德国。它拥有近 400 家估值达到十亿美元的初创公司,超过美国其他任何州。硅谷吸引了 980 亿美元的风投,之后是纽约的 115 亿美元,洛杉矶的 80 亿美元。加州近 90% 的投资流向了 AI 公司,去年这一比例是 65%。

为什么 55% 的美国人停止在社媒上发帖?

公众对社交媒体的态度发生了显著转变。Incogni 调查了美国人对社媒的态度,将调查人群分成婴儿潮(1946-1964)、X 世代(1965-1980)、Y 世代(1981-1996)和 Z 世代(1997-2012)。结果显示:逾半数受访者认同“维护线上形象感觉像工作”,对网红而言维护社交媒体形象是工作,但绝大多数人不会成为网红可能也无意成为网红;六成 Z 世代受访者表示维护社交媒体形象让他们感到痛苦;如果戒掉社交媒体,21% 的受访者人认为会产生正面的感受,产生负面感受的比例为 19%;44% 的受访者认为政治内容正将人们从社交媒体上驱逐出去;逾半数受访者减少了发帖量,且更谨慎选择谁可以看到帖子;逾半数受访者表示出于安全考虑可能会注销账号;近半数受访者表示骚扰或仇恨言论会让他们彻底放弃账号;无限滚动(doomscrolling)被认为会威胁心理健康。

Windows 11 设备标识符无法关闭

最近的一起案件显示微软能利用唯一设备标识符跟踪用户。该标识符被称为 Global Device Identifier(GDID),它关联用户使用的微软账号(Microsoft Account)。当用户使用微软账号登陆 Windows 时,微软会读取 Device PUID(Passport Unique ID,位于注册表 HKCU\SOFTWARE\Microsoft\IdentityCRL\ExtendedProperties 下),然后分配一个唯一永久 ID,该 ID 号储存在本地,多个后台服务会读取该 ID 号,并添加到操作系统向微软报告的所有活动中。重新安装 Windows 后,用户会分配到一个新的 ID 号,新旧 ID 号很容易与同一个账号关联起来。

GLP-1 减肥药并不能取代锻炼

GLP-1 减肥药并不能取代锻炼。研究人员跟踪了 130 名重度肥胖患者一年,他们平均减重 13.7公斤。研究人员将他们分成四组——运动组、服用 GLP-1 药 liraglutide 组,运动加 liraglutide 组,以及安慰剂组。研究结果显示,运动组的血管更健康,炎症水平也更低。虽然只服用 GLP-1 药有助于减轻体重,但不能改善血管健康。动脉壁越厚,动脉粥样硬化、血栓和中风的风险越大。运动组的动脉壁厚度减少了 6-7%,但服用 GLP-1 药和安慰剂组没有改善。运动组的炎症标志物水平也下降了。运动组的参与者平均每周训练约两个半小时,主要是健身车和循环训练。

中国法院支持数字资产的继承

多个案例显示中国法院支持数字资产的继承。法院认为游戏账户和微交易购买属于某种货币价值,因此玩家对这些资产拥有相关权利。法院拒绝标准的不可转让条款,认为这些条款无法阻止你继承或转让游戏(包括微交易物品)。其中一个案例是一位玩家的遗孀试图继承《征途》中的一把“黄金刀”。死者的游戏“情侣”对此表示反对,因为黄金刀是一件只能通过两个玩家协作游戏获取的道具,两个玩家的账户被连结为游戏中的情侣。法院发现另一名玩家曾出价人民币 5 万元购买黄金刀,表明该武器具有真正的市场价值。法院还注意到两名玩家在获取黄金刀上投入了大量的时间、精力和资金。因此法院认为黄金刀构成具有经济价值的虚拟财产,能成为死者遗产的一部分。然而由于它是由死者和游戏“情侣”共同获取的,法院最终得出结论:所有权由他们共同享有。因此只有死者的份额(50%)可以由他的继承人继承,而剩余的份额归游戏中的“情侣”。第二个案例涉及到了 5 个比特币和一个价值约 20 万元人民币的游戏账户。

相对论支配重元素化学键

布朗大学化学家提供了直接证据,证明重元素三键的传统解释需要修正。化学教科书称,原子通过共享电子形成化学键。每个原子共享一个电子形成成键电子对。电子对的强负电荷吸引着两个带正电的原子核,从而将它们结合在一起。一些元素会共享多个电子对,形成双键或三键。三键由一个σ键两个π键组成。σ键是头碰头的强键,π键是弱键,环绕在σ键周围。这种描述适用于轻元素。当原子核足够重时,爱因斯坦相对论会改变三键的结构,模糊了σ键和π键之间的界限。光电子能谱显示,碳-铋键不符合传统的一个σ键和两个π键构成的三键结构。其结构更像是由一个π键和两个σ-π杂化键构成。

布朗大学经济学教授怀疑班级里多数学生使用 AI 作弊

在去年 12 月学校发生枪击案之后,布朗大学经济学教授 Roberto Serrano 首次让学生在家中完成期中考试。期中考试成绩显示大部分学生获得了满分或接近满分,他怀疑学生大规模使用 AI 作弊。因此决定将期末考试改为线下进行。他没有立即宣布期中考试无效,而是决定先看看期末考试的得分。如果期末考试得分的分布与期中考试的分布基本相同,那么他会将期中考试得分计入成绩。结果是 18 名学生退课,9 名学生没有参加期末考试。3 名学生得了零分,期末考试的平均分只有 48.6%——这是他所教班级迄今的历史最低分。此前期末考试的平均分从未低于 65%。只有少数学生的期末考试成绩与期中考试的成绩相近。

苹果起诉 OpenAI,指控前华裔员工窃取商业机密

苹果起诉 OpenAI,指控该公司窃取其商业机密。这起诉讼的两位核心人物是 OpenAI 首席硬件官 Tang Tan 以及前苹果工程师 Chang Liu。苹果指控称,Tang Tan 会指导跳槽到 OpenAI 的苹果前员工如何规避苹果针对离职员工的安全流程。而 Chang Liu 被控秘密访问并下载了数十份苹果的机密硬件相关文件,其中包括大量关于未发布产品的详细信息、工程演示文稿、技术规格和私有项目数据。Liu 被控没有归还苹果配发的笔记本电脑,他还访问和使用了前同事的笔记本电脑,利用认证漏洞访问了苹果的共享网络文件夹。在发现漏洞之后,Liu 在前同事的笔记本电脑上留言说“LOL”。

日本成功测试可回收火箭技术

日本宇航研究开发机构(JAXA) 7 月 11 日宣布,成功测试了一枚可回收火箭 RV-X。本次测试总共持续了约 40 秒,火箭上升至约 11 米的高度,期间完成了升空、悬停、水平移动、直立着陆共 4 个动作。目前旨在大幅降低航天任务成本的可回收火箭是许多国家的研发重点。RV-X 计划将取代不可回收的 H-3 火箭。下一步 JAXA 还将测试 RV-X 的升空一百米回收测试。法国、德国也参与到了日本的可回收火箭合作研发项目中。作为日本的战略竞争对手,中国在可回收火箭研发方面的进展要快得多。

现代环境让大脑不堪重负

根据一项新研究,具有特定设计元素的人造环境可能会给大脑带来过度负担,导致视觉不适和压力。视觉不适是指人在看到某些图像或环境时所体验到的不适感,可能表现为眼睛疲劳、偏头痛、阅读困难,或者在他人毫无问题的情况下感到不堪重负。条纹图案、凌乱的内饰、高对比度颜色、闪烁的灯光,甚至是超市中密集的货架,都可能导致视觉不适,这有助于解释为何某些空间会让人感到不舒服。现代人造环境与视觉系统在演化过程中高效处理的自然场景存在显著差异。研究还发现,现代环境对敏感人群影响更大,对感官输入更敏感的人群(如偏头痛、自闭症、注意力缺陷多动障碍、阅读障碍或癫痫患者)可能受到的影响更强烈。

权威型领导人推动员工安静辞职

新冠疫情加速了被称为安静辞职(quiet quitting)的现象,年轻一代的上班族将工作热情不高的态度视为某种形式的“辞职”,他们还想继续领工资,但仅完成最低工作要求,把精力放在工作之外的事情上。韩国嘉泉大学的研究人员调查了权威型领导如何推动中国中小企业员工的安静辞职现象(即躺平)。他们收集了 363 名中国中小企业员工数据。结果显示权威型领导通过增加工作倦怠间接导致躺平,而非自愿出勤通过放大倦怠加速躺平。研究有助于更深入地理解权威型领导带来的有害后果,阐明躺平在中国文化背景下的出现和演变。

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