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ISSUE 0928
THU, JUL 16, 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 · THU, JUL 16, 2026

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Newsletters tell you what shipped in AI. OrangeBot hands you the install line to ship yours — 2,000+ curated Claude Code skills, free browser tools, and a daily brief from ten sources 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 16, 2026

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

Strong Bank Earnings Contrast with Mixed Day for U.S. Stocks

Who/What: Major U.S. banks, including JPMorgan, Goldman Sachs, and BlackRock, reported strong profits and revenue, driven by robust trading and loan growth. Despite the positive earnings, the broader stock market had a mixed day, with indexes paring gains as weakness in chip stocks weighed on market sentiment amid concerns about the longevity of the AI boom.

Oil Prices Rise as U.S. Reinstates Iranian Blockade

Who/What: Global oil prices increased today following a decision by the United States to reinstate its blockade on Iran. Why: The move escalates geopolitical tensions in the Middle East, raising concerns about potential disruptions to the global oil supply and creating uncertainty in the market.

Japan Boosts AI Sector with Nvidia; Industry Faces New Pressures

Who/What: The Japanese government announced plans to purchase thousands of Nvidia's next-generation semiconductors to build its own domestic AI ecosystem. Why: This major investment comes as the global AI industry faces new challenges, including rising security threats against AI companies and new competition from advanced Chinese models that are closing the performance gap with their U.S. counterparts.

Eli Lilly to Acquire Mental Health Firm in Multi-Billion Dollar Deal

Who/What: Pharmaceutical giant Eli Lilly has agreed to purchase AtaiBeckley, a company focused on developing treatments for mental health conditions. Why: The deal, valued at up to $3.8 billion, significantly expands Eli Lilly's portfolio in the growing neuroscience and mental health market.

Mixed Economic Signals Show Strong Job Market but Rising Consumer Debt

Who/What: New economic data revealed conflicting trends in the U.S. economy. A resilient job market caused Treasury yields to rise, while a separate report showed that credit card delinquency rates have reached a 15-year high. Why: The data presents a complex picture for the Federal Reserve, showing a strong labor market on one hand and increasing financial stress on consumers on the other.

02

ON THE WIRE

6 SOURCES
02

HACKER NEWS

02.00
HACKER NEWS

Hacker News - July 16, 2026

Hacker News Feed: Highlighting key posts and discussions.

The lost joy of music piracy

(www.pigeonsandplanes.com)

511334
Show HN: Firefox in WebAssembly

(developer.puter.com)

223109
Inkling: Our Open-Weights Model

(thinkingmachines.ai)

1085269
Codex Micro

(openai.com)

288241
03

HUGGINGFACE

03.00
HUGGINGFACE

HuggingFace 新闻 - July 16, 2026

HuggingFace Feed:最新的 AI 模型、数据集和社区动态。

Harness Handbook: Making Evolving Agent Harnesses Readable,Navigable, and Editable

The capability of a modern AI agent depends not only on its foundation model but also on its harness, which constructs prompts, manages state, invokes tools, and coordinates execution. As models, APIs, environments, and requirements evolve, the harness must be continually modified. Before such a change can be made, a developer or coding agent must identify all code locations that implement the target behavior. This is difficult because production harnesses are large, tightly coupled, and behaviorally distributed, while modification requests describe what the system should do and repositories are organized by files and modules. Code search, repository indexing, and long-context processing ease inspection, but still leave this behavior-to-code mapping to be recovered by hand. Behavior localization is therefore a central bottleneck in harness evolution. We introduce the Harness Handbook, a behavior-centric representation synthesized automatically from a harness codebase via static analysis and LLM-assisted structuring, linking each behavior to its corresponding source. We also introduce Behavior-Guided Progressive Disclosure (BGPD), which guides agents from high-level behaviors to relevant implementation details and verifies candidate locations against the current source. On diverse modification requests from two open-source harnesses, Handbook-Assisted planning improves behavior localization and edit-plan quality while using fewer planner tokens, with the largest gains on scattered sites, rarely executed paths, and cross-module interactions. Evolving complex agentic systems thus depends not only on generating edits, but also on determining where those edits should be made.

154
Boogu-Image-0.1: Boosting Open-Source Unified Multimodal Understanding and Generation

We introduce Boogu-Image-0.1, an open-source unified multimodal understanding and generation model family, comprising Base, Turbo, Edit, and Edit-Turbo variants. It delivers competitive performance in high-quality text-to-image generation, fast inference, instruction-based editing, and bilingual (Chinese-English) text rendering. Closed-source multimodal systems like Nano-Banana-Pro and GPT-Image-2 achieve strong performance through system-level integration rather than a single model, yet their internal practices remain largely undisclosed. In this work, we demonstrate that targeted improvements in model understanding, data quality, and training pipelines, coupled with agentic inference-time scaling, can substantially enhance generation and editing performance even under highly constrained compute budgets. Comprehensive evaluations show that Boogu-Image-0.1 consistently matches or surpasses other open-source models across standard benchmarks, and achieves results approaching leading closed-source systems. Notably, this is accomplished with only 208.62 million unique images. The base model's theoretical training cost is only approximately \$400K. We share practical discussions that we believe are valuable to the broader research community, and release weights, code, and recipes under Apache 2.0 to advance the open ecosystem for unified multimodal understanding and generation. Our code is available here: https://github.com/Boogu-Project/Boogu-Image.

103
Ring-Zero: Scaling Zero RL to a Trillion Parameters for Emergent Reasoning

Reinforcement learning with verifiable rewards without human-annotated data, often referred to as zero RL, has emerged as a powerful paradigm for eliciting chain-of-thought reasoning. However, due to computational constraints, existing studies are largely restricted to small models, leaving the training dynamics and emergent capabilities at a large scale unexplored. To meaningfully explore this frontier, we aim to elicit high-quality reasoning behaviors from the model. However, we find that naive scaling often suffers from poor readability, token redundancy, and a lack of adaptive reasoning depth. To address these challenges, we present a stable and efficient training pipeline, incorporating algorithmic and system optimizations such as clipped importance sampling, training-inference ratio correction, and mixed-precision control. Our experiments offer three key findings that validate the "bitter lesson" of scaling: (1) scaling to 1T parameters significantly enhances sample efficiency and performance ceilings; (2) the training process progresses sequentially through an initial discovery phase followed by a sharpening phase; and (3) the model spontaneously develops advanced cognitive behaviors, including anthropomorphism, structured formatting, self-verification, parallel reasoning, and context anxiety, rendering hand-crafted heuristics redundant. Evaluated on seven mathematical benchmarks, Ring-2.5-1T-Zero achieves competitive performance. Additionally, to assess CoT quality beyond final-answer correctness, we propose a structured evaluation framework across three dimensions: comprehensibility, reproducibility, and efficiency, where our model demonstrates clear advantages in producing structured and concise reasoning traces. By sharing our observed emergent phenomena, we hope to provide the community with deeper insights into scaling behaviors, particularly at the 1-trillion scale.

75
KnowAct-GUIClaw: Know Deeply, Act Perfectly, Personal GUI Assistant with Self-Evolving Memory and Skill

OpenClaw has emerged as a leading agent framework for complex task automation, yet it faces insufficient cross-platform GUI interaction support and a well-built self-evolution mechanism. These flaws limit its adaptation to diverse device ecosystems and prevent performance improvements through continuous learning from execution experience. To resolve these issues, we propose the Know Deeply, Act Perfectly paradigm for personal assistants, which holds that accumulated user interaction and task-running experience directly improve execution accuracy and efficiency, unifying cognitive comprehension and operational execution. Based on this paradigm, we introduce KnowAct-GUIClaw, a novel Know-Route-Act-Reflect framework designed to address OpenClaw's GUI manipulation deficits and break through its cross-platform and recursive self-improvement constraints. First, the host agent leverages accumulated interaction experience and task-relevant knowledge for long-horizon task decomposition and allocation (Know). Second, a pluggable GUI subagent with an experience-attributable memory system (Know) and self-evolving skill library (Act), enabling seamless cross-platform migration and fast-path integration. Especially, this framework continuously stores user profiles and feedback to improve the accuracy of task decomposition and tool calls. Extensive experiments across Android, iOS, HarmonyOS and Windows show that KnowAct-GUIClaw achieves superior efficiency, accuracy and cross-platform adaptability. Especially, the GUIClaw with open-source Kimi-2.6 models achieves the best performance (64.1%) on the long-horizon MobileWorld benchmark, beating all agentical frameworks and closed-source agentical models, e.g., Seed-2.0-Pro and GPT-5.5. Additionally, the knowledgeable memory and execution skills supported by our framework are transferable across diverse base models, improving by 8.5% with Kimi-2.6.

42
OvisOCR2 Technical Report

We introduce OvisOCR2, a 0.8B document parsing model. OvisOCR2 is designed as an end-to-end parser: given a document page image, it generates a Markdown representation in natural reading order, covering text, formulas, tables, and visual regions. We build a data engine that combines filtered real-document annotations with synthetic pages whose rendered images and Markdown targets are derived from the same HTML source. The training recipe includes supervised fine-tuning, reinforcement learning on a 4B branch with a multi-component reward design, on-policy distillation into the 0.8B model, and model fusion. On OmniDocBench v1.6, OvisOCR2 achieves a state-of-the-art overall score of 96.58, placing an end-to-end model at the top of this leaderboard previously dominated by pipeline methods and highlighting the potential of end-to-end document parsing. On PureDocBench, OvisOCR2 also achieves the highest Avg3 score of 75.06. Beyond these two public benchmarks, we evaluate OvisOCR2 on an in-house benchmark designed to cover a broader set of long-tail and challenging scenarios. OvisOCR2 obtains the best overall performance among the compared methods, providing further evidence of its generalization and robustness. OvisOCR2 is available at https://huggingface.co/ATH-MaaS/OvisOCR2.

42
PolicyShiftGuard: Benchmarking and Improving Policy-Adaptive Image Guardrails

Image guardrails are typically trained and evaluated under a fixed safety policy, implicitly treating safety as an intrinsic property of an image. Real deployments are different: the same image may be allowed in one product, restricted in another, and newly disallowed when a policy boundary changes. We study policy-adaptive image guardrailing, where a model must decide whether an image violates the currently supplied policy and generalize to held-out policy definitions. We introduce PolicyShiftBench, a comprehensive benchmark with 2,000 policy-discriminative instances over 265 images, where each image is paired with 7.55 policy-conditioned prompts on average to test whether models adapt to the active policy rather than relying on image-level safety priors. We then propose PolicyShiftGuard, a compact policy-conditioned guardrail trained with a two-stage training recipe that combines Randomized Policy SFT (RP-SFT) with Boundary-Pair Policy Adaptation (BP-Adapt). BP-Adapt trains matched prompts for the same image and risk category using standard label supervision and a pairwise comparison loss that separates blocking policies from passing policies. Experiments show that existing VLMs and specialized guardrails remain brittle under policy shifts, while PolicyShiftGuard substantially improves policy-sensitive performance. The 7B model achieves SOTA performance of 76.9 Avg. F1 and 72.1 Avg. PSS on PolicyShiftBench, transfers well to UnSafeBench and SafeEditBench, and improves the latency-performance trade-off with a concise output format. Ablations confirm that matched pass/block boundary pairs are essential for stable policy adaptation.

29
GigaWorld-Policy-0.5: A Faster and Stronger WAM Empowered by AutoResearch

World Action Models (WAMs) improve robot policy learning by jointly modeling actions and future visual observations, using future scene evolution as dense supervision for physically grounded action generation. However, a common design in existing WAMs is to explicitly generate future videos at inference time, incurring substantial computational overhead and hindering real-time closed-loop deployment. GigaWorld-Policy addresses this issue with an action-centered formulation, where future visual dynamics are used during training while action-only decoding is used at inference time. Building upon this framework, we present GigaWorld-Policy-0.5, an enhanced action-centered WAM designed for more efficient robot control. During pretraining, GigaWorld-Policy-0.5 adopts a mixed Action-Conditioned World Modeling (AC-WM) and WAM training strategy. This strengthens the coupling between visual dynamics and robot actions and improves the transferability of action representations for downstream policy learning. For efficient inference, GigaWorld-Policy-0.5 introduces a Mixture-of-Transformers architecture that separates visual dynamics modeling and action generation into specialized experts, reducing active computation during action-only inference and achieving 85 ms inference latency on a local RTX 4090 setup. In addition, we employ an agent-based AutoResearch pipeline to systematically search training configurations, enabling more efficient identification of optimal experimental setups while reducing the time and manual intervention required for hyperparameter tuning. Experiments and ablations show that GigaWorld-Policy-0.5 preserves the training benefits of future visual dynamics while improving inference efficiency for robot control.

21
MetaView: Monocular Novel View Synthesis with Scale-Aware Implicit Geometry Priors

Current visual generation models are capable of producing high-quality content, yet they lack a coherent perception of the spatial structure. Existing generative novel view synthesis methods typically introduce explicit geometry priors, which enforce spatial consistency but inherently restrict generalization in large view changes. In contrast, recent interactive generative methods favor implicit scene modeling, offering greater flexibility at the cost of precise camera control and geometry consistency. In this paper, we propose MetaView, a diffusion-based monocular novel view synthesis framework that enables rendering under large view changes from a single image. Our key insight is to combine implicit geometry modeling with minimal yet essential explicit 3D cues: we incorporate implicit geometry priors from a feed-forward geometry perception network to regularize structure without imposing restrictive reconstruction pipelines, while leveraging metric depth to anchor the generation to a metric scale. This design allows MetaView to achieve both geometry consistency and precise controllability. Extensive experiments demonstrate that, under challenging monocular large viewpoint changes, MetaView significantly outperforms existing methods and exhibits superior generalization. Our code is publicly available at https://github.com/KlingAIResearch/MetaView.

20
Registers Matter for Pixel-Space Diffusion Transformers

Vision Transformers (ViTs) are known to exhibit high-norm patch-token outliers that degrade feature map quality, a problem effectively mitigated by register tokens. As diffusion models increasingly adopt transformer architectures and move toward pixel-space training, they become closer in form to ViTs, raising the question of whether register tokens are also useful for Diffusion Transformers (DiTs). In this work, we show that DiTs differ from ViTs in a key respect: they do not exhibit patch-token outliers but still benefit from registers. Interestingly, registers are more effective in pixel-space DiTs than in latent-space DiTs. By analyzing intermediate representations, we find that register tokens produce cleaner feature maps at high noise levels, which may contribute to their effectiveness in pixel-space generation. We further observe that recent pixel-space DiT architectures implicitly incorporate register-like mechanisms, which may partially account for their strong empirical performance. Motivated by these observations, we propose Register Guidance, a technique that amplifies the contribution of register tokens responsible for improving visual structure and coherence.

11
Hallo4D: Multi-Modal Hallucination Mitigation for Consistent Spatio-Temporal Generation

While recent advances in 3D generation have enabled impressive visual synthesis, existing methods often rely on 2D diffusion supervision without explicit mechanisms for geometric consistency, leading to spatial hallucinations such as duplicated structures and misaligned geometry. These issues become more severe in 4D generation, where maintaining consistency across viewpoints and temporal evolution introduces additional challenges, including jitter, identity flicker, and structural drift. We present Hallo4D, a unified and model-agnostic framework for mitigating spatiotemporal hallucinations in 3D and 4D content generation. Hallo4D introduces a generation-detection-correction paradigm that leverages large multimodal language models (LMMs) to identify and summarize spatial and temporal inconsistencies from multi-view and multi-frame renderings. These insights guide a consensus-driven image-space consistency optimization, where an LMM-based selector evaluates candidate corrections through multi-model voting, without requiring retraining or architectural modifications. To further improve temporal consistency and optimization efficiency, Hallo4D incorporates motion-aware keyframe sampling, LMM-guided initialization, and appearance alignment. We additionally introduce exposure-aware optimization and visibility pruning to enhance robustness under challenging viewpoints. Extensive experiments demonstrate that Hallo4D consistently outperforms strong baselines across diverse 3D and 4D generation settings, providing a scalable and generalizable solution for consistency-aware content generation.

11
ShortOPD: Recovering Pruned LLMs with Short-to-Long On-Policy Distillation

Structured pruning is a hardware-friendly way to compress LLMs, but it is mostly validated on multiple-choice recognition tasks, while the same compressed checkpoints can collapse on the free-form generation that deployment actually requires. Two observations trace this gap. First, greedy pass@1 nearly vanishes after compression, yet pass@k recovers substantially under repeated sampling: useful generations are demoted, not erased. Second, the recoverable regime fails mainly through suffix repetition. Recovery should therefore train on the compressed model's own on-policy states with dense token-level supervision, which On-Policy Distillation (OPD) provides by reusing the pre-compression model as a frozen teacher. However, long on-policy rollouts spend early recovery budget on low-information repetitive suffixes, delaying loss descent. To mitigate this waste, we propose \shortopd, a short-to-long OPD schedule that detects teacher-confirmed repetitive suffixes, treats the surviving prefix as each rollout's effective length, and allocates future rollout budgets to the effective lengths the policy can currently use. Across math, code, and open-ended generation, \shortopd\ raises the compressed model's score to about 9times its unrecovered value and 1.6--4.4times standard recovery recipes (SFT w/o KD, KD, and SeqKD), and it matches a fixed 8192-token rollout horizon within two points using a quarter of the training time (8.5 vs.\ 35.9 hours) and 71% fewer rollout tokens. We hope this recipe helps move structured pruning beyond marginal gains on perplexity and multiple-choice benchmarks, a step closer to deployment-ready generation quality.

10
Vinci2: Providing Proactive Assistance in Continuous Egocentric Videos

When should an intelligent assistant speak up without being asked? Continuous egocentric video offers rich, evolving context that enables a new form of assistance: one that is proactive rather than merely reactive. Yet existing approaches either wait passively for user queries or treat every detected event as requiring a response, without considering the user's history, current activity, or whether assistance would actually be welcome. We reframe proactive assistance as a context-dependent decision problem: the agent must not only perceive what is happening, but reason over accumulated temporal context to determine when and whether to intervene. To this end, we present Vinci2, a proactive egocentric assistance system that advances the on-device assistant Vinci from reactive response toward proactivity. On the evaluation side, we present EgoServe, the first large-scale benchmark for proactive assistance in continuous egocentric video. EgoServe comprises over 3,000 service instances organized along 4 temporal memory horizons, ranging from immediate safety alerts to long-term habit coaching, across 10 service categories. On the modeling side, we propose EgoMemo, a training-free, memory-augmented agent that maintains three complementary memory representations: multi-scale temporal summaries, a semantic knowledge graph, and visual embedding archives. At each timestep, EgoMemo performs retrieval-augmented reasoning to determine whether assistance is warranted and, if so, produces contextually grounded responses. Experiments demonstrate that EgoMemo establishes strong baselines on EgoServe while remaining competitive on existing egocentric benchmarks. Our benchmark and code are publicly available at https://sitonggong.github.io/EgoServe-page/{Vinci2}.

7
Self-Improvements in Modern Agentic Systems: A Survey

Self-improving autonomous agents are moving from research prototypes to deployed systems. The primary goal is controllable evolution, or adaptation, from experience with minimal or even no human input. This survey frames modern self-improving agents as adaptive systems that convert experience into accumulated capability gains. We offer a system-level framework that represents a modern agent as a configuration coupling a foundation model with an operational scaffold of prompts, memory, tools, and control logic. Within this framework, self-improvement is formalized as a self-induced update operator that obtains and commits updates to model parameters or scaffold components. We organize prior work by update target and by the signals that drive change, then review applications and discuss evaluation, before closing with open problems and future directions. For convenience, we track technical updates on https://github.com/selfimproving-agent/awesome-Self-Improving-Agents.

6
AgentCompass: A Unified Evaluation Infrastructure for Agent Capabilities

As Large Language Models (LLMs) evolve into autonomous agents, the need for unified evaluation infrastructure becomes critical. However, current evaluation pipelines remain highly fragmented and tightly coupled, hindering reproducibility and causing redundant engineering. To address this, we introduce AgentCompass, an open-source, lightweight, and extensible infrastructure for evaluating LLM-based agents. AgentCompass organizes the evaluation process around three independent components, namely Benchmark, Harness, and Environment, thereby enabling flexible configurations without requiring the reimplementation of complex execution logic. Furthermore, it features a fault-tolerant asynchronous runtime and comprehensive trajectory analysis tools to transparently diagnose nuanced failure modes like reward-hacking. Natively supporting over 20 benchmarks across five capability dimensions, AgentCompass provides the community with a scalable and reproducible infrastructure for advancing agent research.

6
From Noisy Traces to Root Causes: Structural Trajectory Analysis and Causal Extraction for Agent Optimization

The optimization of long-horizon agents increasingly relies on reflection-based mechanisms, where a large language model (LLM) acts as an optimizer to diagnose agent failures and improve agent policies. However, real execution traces are difficult to use directly for optimization: large trace collections are often redundant and heterogeneous, making optimization inefficient and prone to overfitting to low-value failures; meanwhile, each individual trajectory also contains many irrelevant steps, while naive context reduction methods such as truncation or sliding windows can discard causally important evidence and produce misleading optimization signals. To resolve this dilemma, we introduce STRACE (Structural TRajectory Analysis and Causal Extraction), a framework that constructs high signal-noise optimization contexts for more precise and effective optimization. At the batch level, STRACE mines failure patterns to filter redundant traces and retain representative failures; within each selected trace, it performs causal localization over a textual dependency graph to remove non-causal steps and identify the true root-cause module for optimization. Empirical results demonstrate that STRACE significantly outperforms standard context-filtering baselines. Notably, on a challenging formal verification task (VeruSAGE-Bench), it successfully optimizes human-expert designed agents, delivering 1.4times success-rate improvement (42.5% to 58.5%). The code is available at https://github.com/moomight/STRACE .

5
Tracing Agentic Failure from the Flow of Success

Failure attribution for LLM-based agentic systems, i.e., identifying which steps in a failure trajectory caused the task to fail, is critical for debugging and improving these systems. Existing approaches either rely on prompting-based pipelines, which are computationally expensive, or require post-training on failure trajectories with step-level error annotations, which are costly to collect and difficult to scale. We argue that a practical failure attribution model should be lightweight and trainable without step-level supervision on failure data. To this end, we address unsupervised failure attribution, i.e., training exclusively on successful trajectories and identifying error steps at inference time given a failure trajectory. We propose OAT, which casts this problem as one-class learning with neural controlled differential equations, modeling the dynamical pattern of successful trajectories in latent space. At inference time, each step in a failure trajectory is assigned an anomaly score based on its deviation from the dynamics learned on successful trajectories, which is then used to form a set of error steps. With training on only 100 successful trajectories, experiments show that OAT is 200--5000 times faster than prompting-based baselines, and, at the same time, consistently outperforms them in both in-domain and out-of-distribution datasets with +20% and +7% F1 scores, respectively, demonstrating that OAT is a promising and efficient direction for diagnosing agentic system failures.

5
PalmClaw: A Native On-Device Agent Framework for Mobile Phones

Large Language Model (LLM) agents have moved beyond generating responses to executing multi-step tasks by calling tools, observing the results, and iteratively deciding the next action. Most agent systems run on desktops or servers, which support tool use and task automation. Mobile devices are also important agent environments because they are widely accessible and contain users' data, sensors, and daily-use applications. Existing mobile agents mainly operate smartphones through graphical user interface (GUI) actions such as tapping, swiping, and typing, which often form long, interface-dependent sequences, cannot directly access device capabilities, and make execution boundaries difficult to define. We present PalmClaw, an open-source agent framework that runs natively on mobile phones and manages the sessions, memory, skills, tools, and agent loop directly on the device. PalmClaw exposes device capabilities as device tools with explicit arguments, structured results, and clearly defined execution boundaries. This design enables agents to use mobile capabilities directly while keeping each action explicit and controlled. Experiments show an 11.5\% relative improvement in task success and a 94.9\% reduction in completion time over the strongest baseline, with lower setup burden and traces illustrating how execution boundaries are applied. Code is available at https://github.com/ModalityDance/PalmClaw.

3
From Controlled to the Wild: Evaluation of Pentesting Agents for the Real-World

AI pentesting agents are increasingly credible as offensive security systems, but current benchmarks still provide limited guidance on which will perform best in real-world targets. Existing evaluation protocols assess and optimize for predefined goals such as capture-the-flag, remote code execution, exploit reproduction, or trajectory similarity, in simplified or narrow settings. These tools are valuable for measuring bounded capabilities, yet they do not adequately capture the complexity, open-ended exploration, and strategic decision-making required in realistic pentesting. In this paper, we present a practical evaluation protocol that shifts assessment from task completion to validated vulnerability discovery, allowing evaluation in sufficiently complex targets spanning multiple attack surfaces and vulnerability classes. The protocol combines structured ground-truth with LLM-based semantic matching to identify vulnerabilities, bipartite resolution to score findings under realistic ambiguity, continuous ground-truth maintenance, repeated and cumulative evaluation of stochastic agents, efficiency metrics, and reduced-suite selection for sustainable experimentation. This protocol extends the state of the art by enabling a more realistic, operationally informative comparison of AI pentesting agents. To enable reproducibility, we also release expert-annotated ground truth and code for the proposed evaluation protocol: https://github.com/ethiack/ethibench.

1
AffectFlow-DINO: Uncertainty-Aware Multi-Task Affect Estimation via Conditional Rectified Flow

We present AffectFlow-DINO, a multi-task learning system for the 11th ABAW challenge that extends a standard deterministic architecture with a conditional rectified-flow head to model the inherent ambiguity of in-the-wild facial behavior. Instead of predicting a single affect estimate, the model learns a conditional generative distribution, enabling uncertainty-aware one-to-many predictions through Monte Carlo sampling. The system jointly estimates continuous valence-arousal, classifies eight facial expressions, and detects twelve Action Units from static face images. Built on a frozen DINOv3 ViT-S/16 backbone, extensive ablation studies show that rectified-flow decoding consistently improves deterministic prediction, particularly for valence-arousal estimation (CCC-V +0.058). We further show that post-hoc threshold calibration effectively recovers performance on severely imbalanced rare classes (e.g., Fear: 3.8% rightarrow 33.1%) without retraining. Combined with backbone fine-tuning and flow retuning, the final model achieves P_{MTL=1.177}, substantially outperforming the official challenge baseline of P_{MTL}=0.45.

0
05

PRODUCT HUNT

05.00
PRODUCT HUNT

Product Hunt - July 16, 2026

Product Hunt Daily Feed: Featuring noteworthy tech launches.

Nitrosend icon
Nitrosend

Email for AI agents. They sign up, send and reply.

0
The Eureka Database icon
The Eureka Database

Turn a Reddit complaint into your next company

0
Codex Micro icon
Codex Micro

Tactile controls for your Codex agents

0
Manta AI icon
Manta AI

Your AI agent for autonomous web app testing

0
River icon
River

AI account executives that demo and close B2B deals

0
Verse icon
Verse

Build and hire autonomous AI employees from a single prompt

0
ChikitAI icon
ChikitAI

Agentic AI for Healthcare Triage and Care Automation

0
DevSwat icon
DevSwat

Turn codebases into interactive maps, graphs, and governance

0
Albato AI icon
Albato AI

Build AI-driven workflows across 1,000+ apps

0
Weave icon
Weave

Think out loud and watch it become a living map.

0
Graft AI icon
Graft AI

Turn company operations into a living map for agents

0
SIMPLI icon
SIMPLI

Split expenses in a live cosmos

0
Paradigm icon
Paradigm

Turn any goal into a personalized, adaptive learning path.

0
BrickSolvr icon
BrickSolvr

Turn any 3D model into a buildable brick model

0
In Parallel MCP icon
In Parallel MCP

Your context, available to every agent.

0
Node Health icon
Node Health

Your private home for every lab result

0
Microflow icon
Microflow

Microcontrollers made simple.

0
Cito icon
Cito

Hybrid academic search over 236M papers, built for agents

0
Ventorah icon
Ventorah

run virtual wind tunnel aerodynamic analysis in your browser

0
SonOf icon
SonOf

Empty your backlog. Pay only when it ships

0
Nuvio icon
Nuvio

Connect your X bio to your MRR and GA4 for auto updates

0
Amami icon
Amami

Analytics that lives inside your AI assistant

0
Cloud Halo icon
Cloud Halo

Azure FinOps for MSPs with flat pricing

0
FlightGlitch icon
FlightGlitch

Catch mistake fares before airlines fix them

0
dot. icon
dot.

The feedback layer for anything you build with AI.

0
Kit For AI icon
Kit For AI

The memory layer for AI agents

0
Alert Grouping by DrDroid icon
Alert Grouping by DrDroid

Reduce Your Alerts Noise Completely

0
Breadcromb icon
Breadcromb

A browser that remembers everything and can act on anything

0
Inbix icon
Inbix

Cloudflare-native Email Infrastructure for Developers

0
Zro icon
Zro

Private inference for coding agents

0
ClipMatch icon
ClipMatch

Turn your camera roll into social content with AI

0
V2Fun icon
V2Fun

Generate 3D character with 8K textures and AI motion capture

0
nudge2.0 icon
nudge2.0

AI schedules your whole week to take action

0
New AI tools by IFTTT icon
New AI tools by IFTTT

Automate with Grok, Gemini, Perplexity, and more

0
EQK icon
EQK

Mac app with dynamic AI EQ

0
QuickQuill icon
QuickQuill

Private, on-device meeting notes for Mac

0
Clerk | AI Assistant for Cap Tables icon
Clerk | AI Assistant for Cap Tables

Issue grants, model funding rounds, ask it anything equity

0
Agently icon
Agently

Your whole stack, running itself!

0
YAGNI icon
YAGNI

Proactive agent teams you manage like humans

0
CodeNearby 2.0 icon
CodeNearby 2.0

Tinder for developers! Find coding partners & build together

0
Jam-Pod icon
Jam-Pod

A player for people who keep their own music collection

0
Tiptap AI Toolkit icon
Tiptap AI Toolkit

Empower your AI to directly edit documents in real time.

0
Velo 3.0 icon
Velo 3.0

AI video infrastructure to explain, train, and sell faster.

0
MentalHappy 3.0 icon
MentalHappy 3.0

Find & host online support groups that actually fill up

0
DeskMat 1.3 icon
DeskMat 1.3

Now hide individual files + folders for more private desktop

0
ccshare icon
ccshare

multiplayer claude code

0
Review by Eddie AI icon
Review by Eddie AI

Time-stamped feedback on your video frm your team & AI. Free

0
Flodesk Studio icon
Flodesk Studio

A place to make beautiful emails.

0
Campus icon
Campus

One project space for humans and AI agents

0
Keepresso icon
Keepresso

Keep your Mac awake, on your terms. Free and open source

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06

TECHMEME

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TECHMEME

Techmeme - July 16, 2026

Techmeme Digest: Major tech headlines and industry conversations.

Sources: Moonshot plans to launch Kimi K3, China's largest model to date with 2T-3T parameters, in the coming days; it's expected to outperform Claude Opus 4.8 (Financial Times)
Source: TechmemePublished: Jul 16, 2026

Financial Times : Sources: Moonshot plans to launch Kimi K3, China's largest model to date with 2T-3T parameters, in the coming days; it's expected to outperform Claude Opus 4.8 —  Kimi K3 expected to exceed performance of Claude Opus 4.8 in sign of narrowing gap between US and China on frontier AI

Sources: Apple is prepping an iPad overhaul, including an iPad mini with an OLED screen by October and refreshed versions of entry-level iPad and Airs in 2027 (Mark Gurman/Bloomberg)
Source: TechmemePublished: Jul 16, 2026

Mark Gurman / Bloomberg : Sources: Apple is prepping an iPad overhaul, including an iPad mini with an OLED screen by October and refreshed versions of entry-level iPad and Airs in 2027 —  Apple Inc. is preparing to introduce its biggest overhaul to the iPad mini in half a decade, giving new life to a product that's popular …

Sable, which is building an AI agent named Aiden that lives on a company's website to run live product demos and more, raised $45M from Sequoia and 8VC (Lily Mae Lazarus/Fortune)
Source: TechmemePublished: Jul 16, 2026

Lily Mae Lazarus / Fortune : Sable, which is building an AI agent named Aiden that lives on a company's website to run live product demos and more, raised $45M from Sequoia and 8VC —  Sequoia partner Shaun Maguire still remembers the demo that changed his mind on Sable.  —  An AI sales rep was walking a buyer through …

Grubhub parent Wonder raised a $650M+ Series D at a $9B valuation, bringing its total raised to $3B+ since its founding in 2018, and plans to go public in 2027 (Lily Mae Lazarus/Fortune)
Source: TechmemePublished: Jul 16, 2026

Lily Mae Lazarus / Fortune : Grubhub parent Wonder raised a $650M+ Series D at a $9B valuation, bringing its total raised to $3B+ since its founding in 2018, and plans to go public in 2027 —  Marc Lore is ready to ring the bell.  The serial entrepreneur—who previously sold Jet.com to Walmart for $3.3 billion …

1Password launches a new Claude integration for Mac that lets Anthropic's AI agent sign in to websites without seeing the user's password or 2FA code (Zac Hall/9to5Mac)
Source: TechmemePublished: Jul 16, 2026

Zac Hall / 9to5Mac : 1Password launches a new Claude integration for Mac that lets Anthropic's AI agent sign in to websites without seeing the user's password or 2FA code —  1Password is launching a new Claude integration for Mac users today.  It's designed to let Anthropic's AI agent sign in to websites without seeing …

Fireworks, which helps developers access AI chips and open-source models, raised $1.5B at a $17.5B valuation and says it has exceeded $1B in annualized revenue (Jordan Novet/CNBC)
Source: TechmemePublished: Jul 16, 2026

Jordan Novet / CNBC : Fireworks, which helps developers access AI chips and open-source models, raised $1.5B at a $17.5B valuation and says it has exceeded $1B in annualized revenue —  The cost of the latest artificial intelligence models is increasingly breeding anxiety among finance executives …

TMTG plans to launch Truth API on August 1 to provide real-time data from top Truth Social accounts to financial news organizations and trading firms (Sara Fischer/Axios)
Source: TechmemePublished: Jul 16, 2026

Sara Fischer / Axios : TMTG plans to launch Truth API on August 1 to provide real-time data from top Truth Social accounts to financial news organizations and trading firms —  Trump Media & Technology Group is launching a backend interface that will allow financial services companies to access real-time Truth Social data …

Bunkerhill Health, which uses AI agents for hospital tasks like managing wait times, raised a $25M Series B led by Khosla, bringing its total funding to $55M (Allie Garfinkle/Fortune)
Source: TechmemePublished: Jul 16, 2026

Allie Garfinkle / Fortune : Bunkerhill Health, which uses AI agents for hospital tasks like managing wait times, raised a $25M Series B led by Khosla, bringing its total funding to $55M —  In 2017, Nishith Khandwala was a Stanford computer science student with an idea—that you could take existing radiology scans …

Sources detail how xAI has been slowed down by internal chaos as Musk pushed for Grok to match Claude, amid signs it is turning a corner under Michael Nicolls (Carmen Arroyo/Bloomberg)
Source: TechmemePublished: Jul 16, 2026

Carmen Arroyo / Bloomberg : Sources detail how xAI has been slowed down by internal chaos as Musk pushed for Grok to match Claude, amid signs it is turning a corner under Michael Nicolls —  The company wants to compete with Anthropic's Claude but has been slowed down by internal chaos and an inconsistent strategy.

London-based Applied Computing, which is developing AI models for energy operations, raised $20M led by KBR, with participation from Databricks Ventures (Tamara Djurickovic/Tech.eu)
Source: TechmemePublished: Jul 16, 2026

Tamara Djurickovic / Tech.eu : London-based Applied Computing, which is developing AI models for energy operations, raised $20M led by KBR, with participation from Databricks Ventures —  Applied Computing has secured fresh funding to expand its AI platform for energy operations, supporting international growth …

Munich-based Microagi, which collects factory and household data to train humanoid robots, raised $55M led by Hummingbird in Germany's largest ever seed round (Éanna Kelly/Sifted)
Source: TechmemePublished: Jul 16, 2026

Éanna Kelly / Sifted : Munich-based Microagi, which collects factory and household data to train humanoid robots, raised $55M led by Hummingbird in Germany's largest ever seed round —  The startup teaches robots how to work in factories and homes  —  Munich-based robotics company Microagi …

Ocado stock drops 14%, hitting a 13-year low, after it failed to show tangible progress in talks to secure new US partners for its warehouse automation tech (Sarah Young/Reuters)
Source: TechmemePublished: Jul 16, 2026

Sarah Young / Reuters : Ocado stock drops 14%, hitting a 13-year low, after it failed to show tangible progress in talks to secure new US partners for its warehouse automation tech —  Shares in British technology and online grocery group Ocado (OCDO.L) tumbled to a 13-year low on Thursday after it failed …

The EU issues two decisions under the DMA that order Google to provide rival AI assistants and search engines comparable access to Android and some Search data (Robert Hart/The Verge)
Source: TechmemePublished: Jul 16, 2026

Robert Hart / The Verge : The EU issues two decisions under the DMA that order Google to provide rival AI assistants and search engines comparable access to Android and some Search data —  The EU says Google must let rival search engines and AI assistants have comparable access to Android and some Search data to comply with the DMA.

Two Scattered Spider members who pleaded guilty in the UK to an August 2024 cyberattack on Transport for London are jailed for five and a half years (Joe Tidy/BBC)
Source: TechmemePublished: Jul 16, 2026

Joe Tidy / BBC : Two Scattered Spider members who pleaded guilty in the UK to an August 2024 cyberattack on Transport for London are jailed for five and a half years —  Two men who carried out a cyber-attack which crippled Transport For London (TfL) when they were teenagers have both been sentenced to five years and six months in prison.

Nvidia unveils Cosmos 3 Edge, a world model for robots and AI agents to perceive and navigate physical environments in real time, after Cosmos 3's debut in May (Jenny Lee/CNBC)
Source: TechmemePublished: Jul 16, 2026

Jenny Lee / CNBC : Nvidia unveils Cosmos 3 Edge, a world model for robots and AI agents to perceive and navigate physical environments in real time, after Cosmos 3's debut in May —  Nvidia unveiled a new AI model for robots and vision AI agents on Wednesday, deepening its push into the physical AI market in Japan.

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STARTUP ARCHIVE

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STARTUP ARCHIVE

Startup News - July 16, 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.”

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ALSO TODAY

3 MORE SOURCES
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SOLIDOT

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SOLIDOT

Solidot News - July 16, 2026

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

Grok Build 开源,在这之前它被发现会上传用户的完整库

xAI 在 GitHub 上公开了其辅助编程智能体 Grok Build 的源代码,此举可能是某种重新赢得用户信任的补救措施。因为在这之前它被发现存在严重的隐私安全问题,会上传用户的完整代码库。Grok Build 被发现在读取或处理文件时,该文件的内容未经任何编辑就被传输到 xAI 使用的 Google Cloud Storage 中。Grok Build 的数据保留远超 Claude Code、Gemini 和 Codex 等类似工具。有 Grok Build 用户报告,包含 SSH 密钥、密码管理器数据库等的完整用户目录都被上传了。Elon Musk 表示该公司将彻底删除此前上传到服务器上的用户数据。

马不靠声音或气味就能识别屏幕上的捕食者

发表在 PLOS One 上的一项新研究发现,马不依赖声音、气味或过往经验就能识别屏幕上的捕食者。传感器显示,马看到屏幕上的狼后心跳会加速,但面无表情十分镇定。研究显示,马没有摇头,没有摇尾巴,其目光也没有锁定屏幕以表明大脑在处理威胁信息。论文第一作者 Zeynep Benderlioglu 称,马在评估潜在威胁时展现出惊人的认知克制而不是惊吓。在实验中,马看到屏幕上的袋熊时心率平稳,但看到屏幕上的狼——无论狼是在攻击还是梳理——时其心率会显著加快,其中雄性马的反应更强烈。Benderlioglu 说,马的认知处理能力出乎意料的高。它们高度警惕,但威胁并没有出现,所以它们没有表现出任何异常行为,它们正在进行认知评估。”

图书出版商指控 Google 在训练 Gemini 过程中大规模侵犯版权

大型图书出版商 Hachette、Cengage 和 Elsevier 以及作家 Scott Turow 指控 Google 在训练 Gemini 模型过程中未经许可使用了数百万受版权保护图书,声称这是历史上最严重的版权侵犯事件之一。出版商称,Google 挪用了用于 Google Books、Google Play Books 和 Google Scholar 等服务的图书,这些服务允许 Google 以特定方式使用相关图书——如显示可搜索的片段或销售电子书,但无权将这些图书用于训练商业 AI 产品。诉讼书称:“为了维持其在互联网领域的统治地位,Google 放弃了其早期‘不作恶’的座右铭,犯下了历史上最严重的版权侵权事件之一。”诉讼书称,Google 内部早已认识到该问题,它可能会面临“100-1000 亿美元的潜在罚款”,但仍然未经许可将这些图书用于训练 Gemini。

DeepSeek 计划年内申请 IPO

深度求索(DeepSeek)计划启动新一轮融资,目标融资高达 500 亿元人民币,估值高达 4800 亿人民币。该公司也已开始就可能在上交所科创板上市进行初步探讨。该公司的内部目标是计划在今年提交 IPO 申请。今年 6 月,DeepSeek 完成了成立以来的首轮外部融资,募资总额逾 500 亿元人民币,融资后估值约为 3380 亿人民币。首轮融资中,梁文锋个人出资 200 亿元人民币,腾讯控股和电池巨头宁德时代分别出资 100 亿元人民币和 50 亿元人民币,成为最大的外部股东。京东、网易及 IDG 资本各出资 30 亿元,国家人工智能产业投资基金出资 10 亿元。DeepSeek 如此迅速的融资节奏,源于其对资本支出的预期增加。该公司计划建设自有数据中心并采购更多 AI 芯片。

因意外关机和过热微软暂停向部分戴尔电脑推送七月安全更新

对部分戴尔电脑用户而言,Windows 的周二例行安全更新之后紧跟着的是周三的电脑出问题了。微软确认,由于意外关机、性能下降、发热增加和电池耗电过快,它停止向部分配备英特尔处理器的戴尔电脑推送更新。但微软和戴尔尚未披露受影响设备的型号。微软只是表示正与戴尔合作,防止受影响型号出现问题,计划在未来几天内发布针对受影响设备的解决方案。

AI 公司高管加强个人安保

在 Sam Altman 住所遭遇纵火未遂事件五天后,一名男子尝试尾随 Anthropic 员工进入公司大楼,保安及时阻止了他,该男子对保安说要去警告一名 Anthropic 高管,有人要杀他。随着对 AI 的反对声浪日益高涨,科技公司高管开始加强个人安保。提供安全服务的 Liferaft 公司称,针对 AI 公司高管和数据中心的网络威胁数量增长了七倍,6 月的威胁数量略有下降。Equilar 对公开文件的分析显示,2025 年标普 500 指数成分股公司中有 38.1% 的公司披露了高管安保支出,而 2021 年这一比例为 26.8%。其中 Palantir Technologies 高管安保支出在一年内增长了 150%;甲骨文安保支出增长了 85.5%——主要是保护 Larry Ellison 的住所;Salesforce 安保支出增至 400 万美元,比 2024 年多约 100 万美元。硅谷安保公司 JPT Security 的客户关系副总裁 Dakota Dominguez 称由于面临强烈反对,科技公司越来越多的要求配备武装保镖,不同于明星和政客喜欢身材魁梧的保镖,科技公司高管通常要求的是低调的安保措施。AI 公司也日益不鼓励员工身穿带有公司标识的服装。

IBM 称客户倾向于采购 AI 硬件而不是大型机

IBM 公布了不及预期的季度业绩初步报告,称客户将原计划采购 Z 系列大型机的费用用于囤积 AI 硬件,包括服务器、存储和内存,导致大型机的收入下滑。这一消息导致 IBM 的股价周二暴跌 25% 以上。IBM 包括大型机的基础设施业务收入下滑 7%,而大型机销售疲软连带导致配套的交易处理软件销售收入下滑。IBM CEO Arvind Krishna 将这一切归因于客户竞相采购 AI 硬件。

美国众议院通过了永久性夏令时法案

美国众议院以 308 票赞成 117 票反对通过永久性夏令时法案 Sunshine Protection Act。该法案旨在结束一年两次调整时钟。但该法案在参议院的前景不明,已有共和党参议员表示反对该法案。研究已经发现,一年两次调整时间并不利于公众健康和安全。部分睡眠专家在标准时间和夏令时之间倾向于选择标准时间,认为标准时间与人体的昼夜周期节律更为一致,也更有利于冬季早晨的安全。

特朗普政府禁止刚果的美国公民回国

特朗普政府禁止身处刚果民主共和国的美国公民回国,该国最近爆发了埃博拉疫情。目前身处刚果民主共和国或近期曾前往该国的美国公民已被列入“禁止登机”名单。他们须在第三国停留 21 天后才能返回美国。24 名原定于周二登机回国的美国公民已被新规阻止。目前尚不清楚该禁令是否也适用于政府工作人员。美国疾控中心(CDC)至少有 24 名员工在刚果民主共和国工作。专家批评此类限制措施不仅无效而且有害。这些措施会阻碍公开疫情和疾病风险信息,损害经济,造成污名化。埃博拉病毒不像呼吸道病毒那样容易传播,它通过接触患者或近期死亡者的体液传播。人们不会因为坐在咳嗽者旁边而感染埃博拉病毒。截至 7 月 14 日,刚果民主共和国报告了 1963 例病例和 719 例死亡。

第二次怀孕会以新方式改变大脑

发表在《Nature Communications》期刊上的新研究显示,第二次怀孕会以与第一次怀孕熟悉而不同的方式改变大脑。早期的研究表明,第一次怀孕会重塑大脑,在此基础上,研究人员发现,每次怀孕都会在母亲的大脑上留下自己独特的印记。研究小组对 110 名女性进行了长期跟踪调查。一些人期待着他们的第一个孩子,一些人怀了第二个孩子,还有一些人仍然没有孩子。通过反复进行脑部扫描,研究人员追踪了整个研究过程中大脑的变化。研究人员发现,第一次怀孕会使大脑默认模式网络的结构和活动发生最大的变化,这是一个涉及自我反思、社会思维等功能的系统。在第二次怀孕期间,同样的网络再次发生变化,尽管程度较轻。最明显的变化发生在负责引导注意力和对感官信息做出反应的大脑网络中。

纽约州禁止建造大型数据中心一年

纽约州成为美国第一个暂停建造大型数据中心的州。这一禁令适用于用电量 50 MW 或更高的数据中心。随着美国民众越来越担心污染风险、能源成本上涨和水资源短缺,美国各地要求停建数据中心的呼声日益高涨。佛蒙特州参议员 Bernie Sanders 和纽约州民主党众议员 Alexandria Ocasio-Cortez 已提出立法,寻求在全国范围内禁止数据中心建设。但特朗普政府不支持此类禁令。

Linux 内核不反对使用 AI 工具

Linus Torvalds 在内核邮件列表上强调,Linux 内核项目不是一个反 AI 的项目,也从来不是一个“社会正义战士”项目。AI 因为对社会产生越来越大的影响而日益受到争议,Linux 内核作为一个大型开源项目,参与者中也有不少人持反 AI 立场。Linus 说,如果有人想要在内核推动反 AI 议题,那么他们最好创建分支或离开。AI 是一种有用的工具,AI 相关问题不涉及它是否“有用”,它确实也可能会对维护者带来痛苦,但解决方法不是像鸵鸟那样将头埋在沙里,而是确保 AI 工具能真正帮助维护者。内核不会阻止开发者使用 AI 工具,而 AI 和人类的自然智能一样都不完美。开源项目的社会意义从来都是附带的,参与开源项目主要是为了获得更好的技术,不是出于宗教信仰。内核项目的决策主要基于技术优势,而非对新工具的恐惧。

微软周二例行安全更新修复了 570 个漏洞

微软在本周二释出了 7 月例行安全更新,修复了创纪录的 570 个漏洞。微软将补丁数量的激增归于 AI 辅助的漏洞发现。其中近 60 个 Bug 的风险等级归类为高危级。微软还修复了 3 个 0day,其中 2 个正被利用。2 个被利用的 0day 都是提权漏洞,包括 CVE-2026-56155 和 CVE-2026-56164。第三个 0day 则能绕过 Windows BitLocker 的安全功能,微软表示尚未发现该漏洞被利用。

宇航员首次在太空照 X 光

从尤里·加加林开始,宇航员进入太空已有 65 年历史,如今他们首次在太空中完成了诊断质量的 X 光照射。在这之前空间站上唯一可用的医学成像技术是超声波。X 射线是现代医学最强大的诊断工具之一,因为它速度快、精度高,不到一分钟就能确诊疑似骨折。2025 年发射的 Fram2 私人太空任务携带了一台便携式 X 光系统,宇航员在太空飞行期间拍摄了身体的 X 光照片。在太空拍摄 X 光照片的难点是如何定位患者、侦测器和 X 射线源,以及保持静止足够长时间以获得清晰的图像。手和手臂是最容易成像的身体部位,因为很容易保持静止。胸部、腹部和盆腔的成像难度更大,但其图像仍然足以进行诊断。

诉讼指控 Meta 用 AI 而不是人类做出裁员决定

26 名 Meta 员工提起诉讼,指控社交巨人利用 AI 驱动的评分和监控系统筛选裁员对象,并且特别针对了休病假、家庭事务假、产假或育儿假的员工。这起诉讼被认为是美国首例针对科技巨头在裁员中使用 AI 的案例。诉讼指控,Meta 不是通过熟悉员工的中层经理制定裁员名单,而是使用了一系列内部 AI 系统。其中一种评分标准是员工使用 AI 工具的频率。Meta 内部系统会据此将员工分类为——AI Native、AI First 和 AI Enabled。诉讼称,Meta 的系统没有考虑到残疾员工以及休假员工所产生的差异,导致残疾和休假员工更高比例的进入裁员名单。Meta 回应称指控缺乏依据,称它的裁员决定是由人类而不是 AI 做出的。

一加准备退出美国和欧洲市场

一加预计最快将在本周宣布退出美国和欧洲市场。一加成立于 2012 年,最早与 Android 社区 Mod 项目 CyanogenMod 合作预装 CyanogenMod,2015 年结束与 CyanogenMod 的合作。2021 年一加不再独立而是成为母公司 OPPO 旗下子品牌。过去几个月的迹象显示 OPPO 在逐步缩减一加在全球的业务,比如一加已开始引导消费者转向购买 OPPO 品牌手机。报道称,一加在印度和中国市场的业务不受影响。

微软承诺大幅改进 Windows 11 的搜索功能

Windows 11 的搜索功能集成了 Web 搜索(Bing)和本地搜索,经常在用户想要搜索本地文件时显示 Web 搜索结果。对于用户的抱怨,微软现在终于表示它听到了,官方博客承诺全面改进搜索功能,优先显示本地应用、文件和设置的结果,同时移除广告、推广、MSN/Bing 等干扰内容,致力于“提升搜索结果的可靠性、易用性和清晰度”。搜索功​​能也提升了拼写错误处理,即使用户拼错了应用或文件名,也能找到正确的结果。这些功能改进已经包含在预览版中,预计将于今年晚些时候推送给所有 Windows 11 用户。

加州新提案将禁止无限滚动

加州民主党议员 Josh Lowenthal 今年初提出了法案 Assembly Bill 1709,禁止 16 岁以下儿童使用具有成瘾设计的社媒平台。在听取反馈之后,Lowenthal 修改了其提案,改为禁止社媒平台使用具有成瘾性质的设计,而所谓成瘾设计包括了无限滚动的信息流、自动播放、推荐算法和推送通知等常见的社媒功能。Lowenthal 表示其提案的初衷不是阻止访问,而是阻止掠夺性行为。提案要求社媒公司在 2028 年前调整其平台。Lowenthal 在听证会上表示无限滚动等是产品功能而不是言论。

AI 公司高管以及经济学家呼吁就 AI 对经济的影响采取行动

Anthropic、Google 和 OpenAI 等 AI 公司高管以及经济学家和计算机科学家联署发表公开信,呼吁就 AI 对经济和就业的影响立即采取行动。公开信称:“未来 10 年 AI 可能会变得强大得多。可能推动经济发生前所未有的转变,其规模超越工业革命,但速度却快得多。这可能带来风险,包括大规模就业岗位流失,同时也可能带来机遇,比如生活水平的大幅提升。”联署人之一的 Yoshua Bengio 认为,“我们必须有意识的做出集体、民主的选择,而不是任由市场力量发挥作用,从而冒着让大多数公民被抛在后面的风险,AI 极有可能彻底改变我们的经济。”AI 最近一段时间引发了更多人的反感,因此也有很多人认为 AI 泡沫濒临破裂,利益攸关者可能不想让泡沫太早破灭。

华为和苹果在华手机出货量不减反增

IDC 的数据显示,2026 年第二季度,中国智能手机出货量约为 6600 万部,同比下降 4.3%,连续第五个季度下滑。内存等组件成本上涨迫使大多数 Android 厂商提价,从而导致需求降温。华为和苹果是例外,分别实现了近 20% 和 25% 的增长。华为市场份额最高占 22.6%,其次是苹果的 18.1%,OPPO 16.0%,vivo 16.0%,小米 12.4% ,荣耀 11.3%,Wiko 1.1%,联想 0.3%,中兴 0.3% 以及三星 0.1%。由于涨价 618 期间智能手机销量同比下降近 15%。相比其它涨价的 Android 厂商,华为和苹果则能维持价格的稳定。

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