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

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ISSUE 0919
TUE, JUL 7, 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 · TUE, JUL 7, 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 7, 2026

Here is a summary of today's main news events, based on the information provided.

Oil Prices Rise Amid Fresh Tensions in the Middle East

What: Attacks on commercial ships near the Strait of Hormuz in the Persian Gulf have caused oil prices to jump over 1.5%. Why: The incidents, linked to Iran, have heightened geopolitical security risks in a critical global shipping lane, leading to market volatility and also pushing U.S. Treasury yields higher.

Tech and AI Stocks Drive U.S. Market Gains

What: Technology stocks, particularly those related to artificial intelligence (AI) and chip manufacturing, led U.S. stock markets like the Nasdaq higher. Why: Strong investor enthusiasm for the AI sector continues to fuel the rally, although similar rallies have started to slow down in Asian markets.

AI Competition Intensifies Amid Growing Ethical Debates

What: Major AI companies are competing for business customers to secure revenue, while the United Nations Secretary-General has labeled lethal autonomous weapons "morally repugnant." Why: The push for profitability in the AI sector is happening alongside a growing global debate over the ethical implications and use of artificial intelligence in warfare.

Japanese Yen Weakens, Prompting Intervention Concerns

What: The Japanese yen has continued to fall in value against a strengthening U.S. dollar. Why: The currency's decline is now considered "excessive" by some analysts, leading to speculation that central banks may coordinate an intervention to support its value.

Major Companies Announce Strategic Business Moves

What: Several key business developments were announced, including a major acquisition by pharmaceutical company Vertex to expand its drug pipeline and a projection of significantly higher profits from Shell's gas-trading division. Why: These moves reflect ongoing strategies to grow revenue, with some companies also adapting products for consumers using new weight-loss drugs.

UK Public Figures Face Legal and Financial Scrutiny

What: A London High Court ruled against the Duke of Sussex (Prince Harry) in a legal case, while the leader of the Reform UK party is facing scrutiny over his financial declarations and past associations. Why: These separate events have placed two prominent figures in the United Kingdom under the public spotlight for legal and financial reasons.

02

ON THE WIRE

6 SOURCES
02

HACKER NEWS

02.00
HACKER NEWS

Hacker News - July 7, 2026

Hacker News Feed: Highlighting key posts and discussions.

98% Isn't Much

(whynothugo.nl)

142121
NSA and IETF: Fairness

(blog.cr.yp.to)

129100
Should DayQuil Be Legal?

(www.theargumentmag.com)

226270
Resetting Xbox

(news.xbox.com)

679796
Aluminum foil (2021)

(dernocua.github.io)

272122
Road to Elm 1.0

(elm-lang.org)

333168
Has_not_been_viewed_much

(iamwillwang.com)

458121
03

HUGGINGFACE

03.00
HUGGINGFACE

HuggingFace 新闻 - July 7, 2026

HuggingFace Feed:最新的 AI 模型、数据集和社区动态。

UI-MOPD: Multi-Platform On-Policy Distillation for Continual GUI Agent Learning

Recent advances in multimodal foundation models and agent systems have driven GUI agents from single-platform task execution toward cross-platform interaction. However, building multi-platform GUI agents remains challenging. On one hand, high-quality and executable cross-platform interaction trajectories are still scarce, and existing data often suffer from limited platform coverage. On the other hand, different platforms exhibit distinct interaction conventions, making joint or continual training prone to behavioral pattern mixing, platform-specific capability degradation, and catastrophic forgetting. To address these challenges, we construct Uni-GUI, a high-quality cross-platform GUI interaction dataset, and propose UI-MOPD, the first method that incorporates multi-teacher on-policy distillation into continual learning for GUI agents. UI-MOPD dynamically selects a platform-specific teacher according to the current environment and transfers platform-specific behavioral priors to a shared policy through platform-conditioned distillation, enabling adaptation to new platforms while preserving capabilities on existing ones. Experiments on OSWorld and MobileWorld show that UI-MOPD achieves task success rates of 38.2% and 12.0%, respectively, demonstrating its effectiveness in balancing cross-platform capability retention and new-platform adaptation. Project page: https://elispectre.github.io/UI-MOPD/.

53
PixWorld: Unifying 3D Scene Generation and Reconstruction in Pixel Space

3D reconstruction and generation are commonly tackled by separate paradigms: pixel-based regression for reconstruction, and latent diffusion for generation. Recent works attempt to unify them in latent space, but with notable drawbacks: the diffusion objective is defined on latent features rather than the underlying 3D representation, and both branches suffer from information loss introduced by latent encoding, while requiring a pretrained Variational Autoencoder (VAE) or Representation Autoencoder (RAE). In this paper, we reformulate these two tasks under a unified pixel-space diffusion paradigm and introduce PixWorld, a single model that jointly addresses 3D reconstruction and generation. By supervising diffusion directly on rendered images, PixWorld removes the above limitations and aligns optimization with 3D scene fidelity. Beyond photometric and perceptual supervision that operates at the 2D image level and lacks 3D geometric awareness, we further introduce a geometry perception loss that aligns rendered views with their ground truth in the geometry-aware feature space of a pretrained 3D foundation model, providing 3D structural supervision. PixWorld consistently outperforms prior latent-space generation methods and matches state-of-the-art reconstruction methods, demonstrating the superiority of a unified pixel-space approach.

41
ResearchStudio-Reel: Automate the Last Mile of Research from Paper to Poster, Video, and Blog

Research dissemination, turning a paper into a poster, a talk video, and a blog post, is still a manual last mile. Prior automation treats each artifact in isolation that each re-extract the paper from scratch, usually ship one-way renders the author cannot reopen in PowerPoint or Word, and gates quality on soft VLM-preference scores that plateau while load-bearing sections still read as empty. We argue this last mile is best built as a composition of skills: thin agent-readable contracts that share one upstream extractor and wrap deterministic primitives in a measured-fill loop whose exits are hard pass/fail render gates. We instantiate this as ResearchStudio-Reel, five Claude Code and Codex skills organized into one shared extractor (Paper2Assets), three editable generators (Paper2Poster, Paper2Video, Paper2Blog), and one interactive convergence layer (Paper2Reel). Paper2Assets extracts each paper once into a shared bundle that can be reused by every downstream skill; The three generators produce a print-ready poster, a synchronized talk video, and a bilingual blog that stay factually consistent and round-trip through PowerPoint or Word; Paper2Reel then binds all three into a self-contained HTML viewer whose section-level clicks jump the video, slides, captions, and blog to matching content. On the Paper2Poster benchmark, our posters lead every aesthetic and information sub-criterion against both prior automated systems and single-shot frontier LLMs, surpassing the authors' own on aesthetics under two held-out VLM judges and winning overall on 84% to 93% of papers; capability audits further show that, by uniquely pairing narration-aligned on-slide highlights with a bilingual blog gated by layout-aware DOCX repair, ResearchStudio-Reel is the only pipeline to ship all three editable artifacts. Project is available at https://aka.ms/ResearchStudio

36
ResearchStudio-Idea: An Evidence-Grounded Research-Ideation Skill Suite from ML Conference Outcomes

Large language models have made research ideation increasingly accessible, yet effective idea development requires more than generating candidate directions. Researchers must ground a problem in current literature, identify meaningful bottlenecks, differentiate from existing solutions, and evaluate risks before committing to implementation. We present ResearchStudio-Idea as a reusable skill suite for this first mile of research ideation. The suite includes Paper-Search, a standalone multi-source literature search skill; Scoop-Check, a standalone prior-art collision checker for novelty claims; and IdeaSpark, the end-to-end skill that composes evidence grounding, pattern-guided generation, collision retrieval, audit, and idea-card rendering into one workflow. IdeaSpark is constructed from a corpus of 1,947 machine learning conference papers collected from ICLR, ICML, and NeurIPS between 2021 and 2025, including Oral papers, a separately tracked high-citation subset, and rejected submissions. Analysis of these outcomes reveals 31 recurring ideation sub-patterns, consolidated into 15 reusable ideation patterns. Each pattern is operationalized as a structured card containing research contexts, bottleneck types, differentiation strategies, supporting precedents, and common failure modes. Given a research problem and an evidence bundle, IdeaSpark evaluates evidence readiness, reconstructs the surrounding research context, identifies unresolved bottlenecks, selects relevant patterns, instantiates one candidate direction, retrieves potentially conflicting prior work, and performs outcome-informed auditing. This workflow transforms reusable ideation patterns into traceable research proposals. Blind automated-judge evaluations show that IdeaSpark consistently produces stronger research proposals than no-skill and generic-skill baselines while maintaining competitive novelty.

34
OmniOpt: Taxonomy, Geometry, and Benchmarking of Modern Optimizers

Optimizer selection for large-scale model training has become a system-level design decision constrained jointly by compute, memory, tuning budget, and task diversity, yet the landscape of over one hundred methods remains fragmented. We therefore present OmniOpt, a unified survey and benchmark cookbook of optimizers for the research community. OmniOpt rests on four coupled components. First, we treat every optimizer update as a structured transformation through a five-stage meta-pipeline, and show that most methods engage only one or two of these stages. Second, we use norm-constrained linear minimization oracles (LMOs) to unify different optimizers. Third, these two views ground a dual-dimension taxonomy, one dimension assigning each method to a mechanism family and the other recording the measurable training objectives it aims to improve. Fourth, and at the core of this paper, we instantiate the full taxonomy in a unified cross-domain benchmark spanning representative optimizers, model scales, and training regimes from language model pretraining to image classification, systematically analyzing each method family across multiple effect objectives and laying out their trade-offs. OmniOpt thus supplies the research community with an operational coordinate system for selecting optimizers under explicit mechanism and objective assumptions, and charts a direction for the future development of the optimizer community.

31
GigaWorld-1: A Roadmap to Build World Models for Robot Policy Evaluation

Evaluating embodied robot foundation models remains a critical bottleneck; unlike large language models efficiently assessed via digital benchmarks, robotic policies require slow, costly real-world rollouts limited by hardware and human supervision, which has driven interest in world models as surrogate policy evaluators, yet the key properties that make a world model reliable for policy assessment remain poorly understood. This work presents a systematic study of world models for robotic policy evaluation and introduces WMBench, a benchmark constructed from real-robot teleoperation data and matched policy rollouts covering diverse manipulation tasks to enable controlled comparisons across model families, action encodings, rollout horizons, and evaluation metrics. Using WMBench, we analyze 7 video world models, 4 action representation schemes, and over 324,000 simulated policy rollouts paired with real robot executions, further enriching our analysis with large-scale community submissions from the CVPR 2026 GigaBrain Challenge, curated synthetic trajectories, and a training videos spanning more than 12,000 hours. Our experiments deliver three core insights: evaluator quality is dominated by long-horizon, action-faithful rollout consistency rather than short-term visual realism; pretraining gains stem not only from data scale but from balancing general world knowledge with robot-specific controllability; and architectural choices including action encoding, memory design, and evaluator-focused post-training strongly determine alignment with real-world robot behavior. Drawing on these results, we derive a practical design roadmap and realize it in GigaWorld-1, a world model specially optimized for policy evaluation, and we fully release our code, models, datasets, and toolkits to advance scalable evaluation research for embodied foundation models.

29
Vision Pretraining for Dense Spatial Perception

Dense spatial perception is essential for physical intelligence, where visual systems are expected to recover structured, metric, and actionable representations from pixel observations. Modern visual foundation models tend to prioritize semantic invariance, often at the expense of detailed spatial understanding. In this work, we study vision pretraining through a boundary-centric lens, motivated by the premise that boundaries and shape discontinuities offer essential cues for perceiving geometric properties. Concretely, we propose masked boundary modeling, a self-supervised paradigm that dynamically learns sub-pixel boundary representations and subsequently leverages the discovered boundary-bearing tokens as masked targets to facilitate dense visual token learning. By scaling this framework, we develop LingBot-Vision and demonstrate its efficacy across a diverse set of downstream vision tasks with DINOv3 as a strong baseline. Remarkably, LingBot-Vision drives the progression from LingBot-Depth 1.0 to LingBot-Depth 2.0 for depth completion, and thereby yields enhanced depth estimation, a key pillar for embodied artificial intelligence. Our findings reveal that boundary modeling goes beyond simple line segments and instead serves as a scalable pretraining principle for learning spatially structured visual representations.

27
EVA-Client: A Unified Data Collection, Inference, and Deployment Framework for Embodied Policies on Real Robots

We present EVA-Client, an open-source framework for deployment, data collection, and evaluation of trained manipulation policies on real robots. Sitting between a policy server and the physical hardware, EVA-Client unifies the real-robot stages of the policy iteration loop within a single codebase. It makes three contributions. First, a component-decoupled architecture in which robot backends, inference strategies, and transport middlewares form an orthogonal grid: adding a robot or a strategy touches only its own layer. Second, inspectable execution through Debug, Collect, and Eval workflows, with modes ranging from open-loop simulation to continuous real-time control. Third, every evaluation run doubles as a data collection, recording full rollouts in training-ready format alongside exhaustive logs and a side-by-side comparison viewer, so each evaluation feeds the next round of training rather than ending as an unrecorded impression. EVA-Client further consolidates major real-time inference strategies, synchronous and asynchronous execution, ACT-style temporal ensembling, Real-Time Chunking, and a naive-async ablation baseline, behind a single configuration surface.

21
Wan-Streamer v0.2: Higher Resolution, Same Latency

We present Wan-Streamer v0.2, a latency-preserving upgrade of the native-streaming, end-to-end audio-visual interaction model. v0.2 keeps the v0.1 modeling formulation, but raises the interactive output stream from 192x336 to 640x368 while preserving approximately 200 ms model-side signal-to-signal latency at 25 FPS. The higher-resolution stream supports scene-grounded mid-shot agents whose posture, gaze, hands, nearby objects, and local scene layout remain legible during real-time conversation. To support the larger visual stream without adding user-visible delay, v0.2 keeps the thinker as a single-GPU low-latency path for streaming perception, the short language/state Transformer pass that builds the generation cache, and final decoding. The performer becomes a multi-GPU Ulysses-style context-parallel group for the expensive next-unit latent generation. Each performer rank writes incoming K/V into a pre-sharded local cache. The long high-resolution latent video sequence is split across ranks for denoising and gathered through Ulysses communication, while the much shorter audio latent sequence is generated without sequence sharding. In this split, the thinker's language/state computation reaches the performer only as K/V conditioning, so no separate language sequence has to be communicated inside the performer group. This concentrates additional hardware on visual generation while preserving the compact thinker-performer boundary, keeping total remote interaction latency at approximately 550 ms when a 350 ms bidirectional network budget is included.

19
InternVLA-A1.5: Unifying Understanding, Latent Foresight, and Action for Compositional Generalization

Unified models for robot manipulation aim to equip one policy with both the semantic priors of pretrained VLMs and the physical dynamics learned through future prediction. In practice, existing designs tend to erode the semantics of the pretrained backbone, suffer interference among heterogeneous objectives, and learn future prediction from scratch in pixel space, leaving the dynamics priors of pretrained video generators unexploited. We present InternVLA-A1.5, which builds the policy on a native VLM backbone that keeps training on VQA and subtask prediction, and attaches a lightweight unified expert for continuous action generation. Future prediction is recast as a latent-querying problem, where a small set of learnable foresight tokens condenses the task-relevant future into a compact latent code under the supervision of a frozen pretrained video generation model, so the policy inherits world-model dynamics priors without ever learning pixel-level generation. The video branch is discarded at inference, keeping real-time control. Pretrained on 1.2M robot episodes and 3M multimodal samples, InternVLA-A1.5 achieves the best overall results on all six simulation benchmarks. In the real world, the preserved semantics deliver the strongest compositional generalization on held-out instruction bindings, and the two designs together sustain long-horizon execution.

16
Do All Visual Tokens Matter Equally? Object-Evidence Preserving Token Merging for Vision-Language Retrieval

Multi-vector vision-language retrieval preserves fine-grained visual evidence through maximum-similarity late interaction, but dense image-side tokens make storage and scoring expensive. Existing token compression methods reduce this cost, yet they can remove or collapse object- and region-level evidence that future query tokens may need to select. We propose SaMer, an object-aware token merging framework that compresses image-side post-projector tokens into K representative centroids while preserving the original late-interaction interface. SaMer uses object annotations only during training as a merge prior to discourage cross-instance mixing, requires no ground-truth bounding boxes or detectors at inference time, and adapts only the shared projection layer with frozen vision and language backbones. With K=64, SaMer removes more than 93% of image-side tokens and reduces ColPali storage by 16.09times, while improving R@1 on Flickr30K and MSCOCO. These gains arise because object-aware merging preserves query-selectable object evidence that pruning or feature-only pooling can remove or collapse. SaMer also outperforms compression baselines and shows stronger phrase-level grounding, suggesting that efficient multi-vector retrieval depends not only on reducing token count, but on preserving the evidence future query tokens need to select.

13
KVpop -- Key-Value Cache Compression with Predictive Online Pruning

Key-value (KV) cache growth is a major bottleneck in autoregressive decoding, as memory and bandwidth scale linearly with context length. Existing KV eviction methods often rely on static heuristics or proxy scores, which poorly track future token utility and cause brittle eviction as relevance shifts. To address this, we introduce KVpop, which learns a fixed-budget KV eviction policy by directly supervising the keep-or-drop decision. The scorer is trained against a novel future-attention target, computed efficiently without materializing dense attention maps. We further introduce a delayed memory-based scorer that, uniquely among learned eviction methods, defers scoring for a fixed number of steps to exploit near-future context. On AIME and HMMT mathematical reasoning, KVpop retains 98% of full-attention performance on Qwen3-4B at 75% KV cache compression and 97% at 88% compression, consistently outperforming established eviction baselines. Qwen3-8B shows even stronger results, reaching near-full teacher performance. These results show that supervising eviction with future-attention signals cuts memory costs while maintaining quality.

12
dOPSD: On-Policy Self-Distillation for Diffusion Language Models

Diffusion large language models (dLLMs) generate text by iteratively denoising a masked sequence, offering a parallel alternative to autoregressive models, but eliciting strong reasoning through post-training remains difficult: supervised fine-tuning is off-policy and suffers from exposure bias, while reinforcement learning gives only sparse, sequence-level rewards and is hard to apply without tractable sequence likelihoods. On-policy self-distillation (OPSD) offers a promising alternative, using one model as both student and teacher to provide dense, token-level, on-policy supervision, but its effectiveness hinges on giving the teacher privileged information (PI) - typically an instance-specific ground-truth reference unavailable at inference - so the student ends up distilling a weak PI-free consensus policy that yields little improvement on dLLM reasoning. We introduce dOPSD, which instead derives the teacher's privilege directly from the student's own denoising trajectory, evaluating masked positions using later, more-decoded steps of that same trajectory rather than an external label, so the teacher's advantage emerges from the model's own decoding process; on Dream and LLaDA, dOPSD improves both in-domain math reasoning and out-of-domain code generation, outperforming supervised and on-policy baselines.

9
Multiplayer Interactive World Models with Representation Autoencoders

We introduce the first multiplayer world model for highly dynamic environments governed by complex physical interactions. Whereas single-player world models treat the other agents as part of the environment, ours conditions on the action streams of multiple agents, learning to attribute changes in the scene to the correct player and to stay coherent under arbitrary combinations of their actions. We study this problem in the game of Rocket League, where players compete and cooperate under fast, tightly coupled dynamics. Trained on 10,000 hours of gameplay collected with publicly available bots, our 5-billion-parameter latent diffusion model generates four-player matches in real time, producing 20 frames per second on a single Nvidia B200 GPU. Although trained only on short clips, its rollouts stay stable far beyond the training horizon: distributional quality holds steady out to five minutes, the longest horizon we measure, and in practice we observe rollouts continuing for hours with no sign of collapse. We systematically investigate the central design choices: the video codec, the generative objective, and the multiplayer conditioning scheme. In addition, we characterize how behavior changes with model and data scale, including the capabilities that emerge and the failure modes that persist. We further develop targeted evaluations that probe the model's physical understanding rather than visual appearance alone. To support continued research on multiplayer world models, we release our dataset, our full training and inference codebase, and a live demo.

9
Perceptual Flow Matching for Few-Step Generative Modeling

We propose Perceptual Flow Matching (PFM), a simple yet effective framework for few-step generation in flow-matching models. Rather than performing velocity regression in the conventional VAE latent space, PFM supervises flow matching in a perceptual feature space using pretrained perceptual models. This simple change substantially improves the few-step generation capability of flow-matching models, reducing the number of sampling steps from 35-50 to 4-8 while preserving generation quality. Unlike existing acceleration and distillation approaches, PFM requires neither teacher models nor auxiliary score networks and can be integrated into standard flow-matching training pipelines with minimal modifications. Extensive experiments on image generation, video generation, and image editing tasks demonstrate that PFM consistently produces high-quality results while producing fewer artifacts than existing distillation-based methods. We further show that perceptual supervision shifts the regression minimizer from mean-seeking to mode-seeking, biasing predictions toward on-manifold modes that remain accurate under coarse few-step integration. Our results reveal that standard flow-matching training can naturally yield high-quality few-step generators when supervised in an appropriate representation space. We hope this insight inspires future research into representation-aware objectives for efficient generative modeling.

8
Multi-Turn Agentic Scientific Literature Search via Workflow Induction

Scientific literature search often requires more than retrieving papers from a single query: users' intents are underspecified, preference-dependent, and evolve through interaction. Existing search agents typically rely on fixed pipelines or implicit language-only reasoning, making their search strategies difficult to control, inspect, and refine. We introduce PaperPilot, a multi-turn literature search agent that frames scientific search as workflow induction. Given an anchor paper and a user query, PaperPilot constructs an executable DAG of paper-search operators, including keyword search, citation expansion, filtering, scoring, reranking, and evidence extraction. User feedback is then used to refine both the query and the workflow itself. We train PaperPilot with supervised workflow imitation and preference optimization over controlled workflow corruptions. Experiments show that PaperPilot-9B improves over the base Qwen3.5-9B toolset agent under multi-turn interaction, increasing Hit@5 from 58.0 to 77.0, MRR from 47.5 to 59.4, and nDCG@10 from 26.8 to 32.5, while reducing workflow execution errors from 9.5% to 0%. These results show that explicit, editable search workflows provide an effective and controllable interface for aligning literature search agents with complex scientific intent.

7
EdgeBench: Unveiling Scaling Laws of Learning from Real-World Environments

Pretraining scaling laws reveal that model capability improves predictably with data and compute. But learning from real world environments after deployment remains far less understood. Analyzing roughly 38,000 hours of agent interaction with the environment across 134 real world tasks, we find, to the best of our knowledge, the first evidence that overall performance during environment learning follows a log-sigmoid scaling law with remarkably high precision, reaching R^2 = 0.998. Across model generations, we also find that agent learning speed roughly doubles every three months. This discovery stems from EdgeBench, a suite of 134 real world tasks with ultra-long horizons, spanning scientific discovery, software engineering, combinatorial optimization, professional knowledge work, formal mathematics, and interactive games. Each task sustains at least 12 hours of continuous agent operation under rich, multilevel feedback, and is built through substantial expert effort. We publicly release 51 tasks and our full evaluation framework to accelerate the study of how agents learn from real world experience.

6
MANCE: Manifold Aware Concept Erasure

Concept erasure aims to remove a target concept from a representation while preserving the other information encoded in it. This is difficult because representations encode many concepts that are often correlated with the erasure target, so removing the target risks damaging them. We propose the Manifold Constraint Hypothesis (MCH): if natural representations concentrate on a structured, lower-dimensional manifold, then interventions should be constrained to that manifold and better preserve other information encoded in the representation during interventions. We instantiate MCH in a new concept erasure method: MANifold aware Concept Erasure (MANCE). MANCE performs iterative updates to the representations using signals from a classifier that predicts a target concept. We estimate the manifold using representations obtained from natural inputs, and then we project the concept removal update to the estimated manifold. We perform extensive evaluation on 119 settings spanning text and vision, including 13 language models, three NLP concepts, and 40 CelebA-CLIP attributes. Employing MANCE on top of previous methods shows consistent improved leakage results. We also introduce MANCE+ and MANCE++, which prepend a closed-form erasure algorithm before employing MANCE, achieving better leakage--surgicality tradeoffs relative to matched full-space updates. MANCE++, our best method, achieves state-of-the-art results on nonlinear concept erasure. These results support MCH in the erasure setting: interventions should be constrained to the natural representation manifold.

5
LLM-as-a-Verifier: A General-Purpose Verification Framework

Scaling pre-training, post-training, and test-time compute have become the central paradigms for improving the capabilities of LLMs. In this work, we identify verification, the ability to determine the correctness of a solution, as a new scaling axis. To unlock this and demonstrate its effectiveness, we introduce LLM-as-a-Verifier, a general-purpose verification framework that provides fine-grained feedback for agentic tasks without requiring additional training. Unlike standard LM judges that prompt LLMs to produce discrete scores for candidate solutions, LLM-as-a-Verifier computes the expectation over the distribution of scoring token logits to generate continuous scores. This probabilistic formulation enables verification to scale along multiple dimensions: (1) score granularity, (2) repeated evaluation, and (3) criteria decomposition. In particular, we show that scaling the scoring granularity leads to better separation between positive and negative solutions, resulting in more calibrated comparisons. Moreover, scaling repeated evaluation and criteria decomposition consistently lead to additional gains in verification accuracy through variance and complexity reduction. We further introduce a cost-efficient ranking algorithm for selecting the best solution among candidates using the verifier's continuous scores. LLM-as-a-Verifier achieves state-of-the-art performance on Terminal-Bench V2 (86.5%), SWE-Bench Verified (78.2%), RoboRewardBench (87.4%), and MedAgentBench (73.3%). Beyond verification, the fine-grained signals from LLM-as-a-Verifier can also serve as a proxy for estimating task progress. We build an extension for Claude Code, enabling developers to monitor and improve their own agentic systems. Finally, we show that LLM-as-a-Verifier can provide dense feedback for RL, improving the sample efficiency of SAC and GRPO on robotics and mathematical reasoning benchmarks.

5
MV-Forcing: Long Multi-View Video Generation via 4D-Grounded Spatio-Temporal Self-Forcing

Recent advances in video diffusion models have enabled either long single-view generation through temporal autoregression, or short multi-view synthesis through bidirectional attention. However, generating long, multi-view consistent videos of dynamic scenes remains unsolved. In this work, we present MV-Forcing, a framework that composes temporal and view-wise autoregression within a single diffusion model by introducing a 4D geometric bridge between sequentially generated views. Our key insight is that an autoregressive 3D reconstruction model naturally interfaces between autoregressively generated views. Given a completed source view, we reconstruct its 3D structure and render a geometric prior of the next target viewpoint, which the diffusion model refines into a high-quality video. To extend generation beyond the teacher's fixed temporal window, we introduce a joint denoising regime where both view slots are initialized from noise during training, enabling temporally unbounded generation. We distill the model via Distribution Matching Distillation with Spatio-Temporal Self-Forcing, closing the train-inference exposure bias gap for both temporal and view-sequential autoregression. Extensive experiments on both synthetic and real-world data demonstrate that MV-Forcing produces geometrically consistent multi-view videos of dynamic scenes at arbitrary lengths and viewpoint counts using a single few-step student model.

4
Unified Audio Intelligence Without Regressing on Text Intelligence

Audio intelligence involves understanding, reasoning about, and generating both audio and speech. In this work, we introduce Nemotron-Labs-Audex-30B-A3B (Audex), a unified audio-text LLM built on Nemotron-Cascade-2-30B-A3B, a strong text-only MoE LLM. Audex adopts a simple unified design with a single Transformer decoder: audio inputs are encoded and projected into the text embedding space, while text tokens and quantized audio output tokens are treated uniformly during generation. This architecture enables strong audio-text fusion, seamless multimodal generation, and compatibility with standard LLM training and inference infrastructure. For training, we meticulously curate audio-text datasets comprising 157.4B audio tokens and 320.5B text tokens. We apply multi-stage supervised training on these datasets, followed by text-only Cascade RL and multi-domain on-policy distillation. Audex delivers state-of-the-art audio understanding, speech recognition and translation, text-to-speech, audio generation, and speech-to-speech generation, while preserving very compelling reasoning, alignment, knowledge, long-context, and agentic capabilities of its text-only LLM backbone with marginal or no regression. We release the model checkpoints to facilitate open research.

3
Safety Testing LLM Agents at Scale: From Risk Discovery to Evidence-Grounded Verification

LLM agents increasingly perform autonomous actions through external tools, leading to complex and evolving safety risks. However, existing safety testing targets expert-designed safety violations, and the corresponding outcomes are evaluated by hard-coded rules, making them costly to extend as agents evolve. To this end, we present Vera, an end-to-end automated safety testing framework that instantiates software engineering testing principles for non-deterministic agents through a three-stage, self-reinforcing pipeline. First, a literature-driven exploration continuously discovers and structures emerging risks into taxonomies of safety risks, attack methods, and tool execution environments. Second, combinatorial composition across taxonomy dimensions produces executable safety cases, each specifying a concrete safety goal, a programmatically constructed initial state, and a deterministic verification predicate grounded in observable artifacts. Third, adaptive execution runs heterogeneous agents in isolated sandboxes where a control agent steers multi-turn interaction based on runtime observations, while evidence-grounded verifiers judge outcomes from environment state and tool-call evidence rather than model self-report. We evaluate Vera on four production agent frameworks (OpenClaw, Hermes, Codex, Claude Code), revealing substantial safety weaknesses, with average attack success rates reaching 93.9\% under multi-channel attacks; we also release Vera-Bench, comprising 1600 executable safety cases spanning 124 risk categories across three execution settings. These results indicate that modular, executable testing infrastructure is essential for rigorous and maintainable safety evaluation of rapidly evolving agentic systems at scale. The code is publicly available at https://github.com/Yunhao-Feng/Vera.

3
Mastermind: Strategy-grounded Learning for Repository-Scale Vulnerability Reproduction

Repository-level vulnerability reproduction is a demanding software engineering (SE) task: an agent must inspect a codebase, infer the input grammar that reaches a vulnerable path, construct a proof-of-conceptv(PoC), and verify that the crash disappears on the patched build. Recent LLM agents can often execute these steps when the approach is correct, yet they still fail by choosing the wrong strategy. This paper argues that strategy, rather than the full action trajectory, is the right learning unit for such SE agents: it is compact enough to optimize, concrete enough to guide execution, and stable enough to store and reuse across attempts. We present Mastermind, a dual-loop framework that separates transferable strategy learning from task-specific experience. A trainable planner learns reusable vulnerability-reproduction strategies through SFT and milestone-based GRPO, while an experience loop maintains task-local strategy records that guide subsequent attempts. The planner is trained independently of the executor, allowing strategy learning to improve multiple frozen executors without modifying their action-generation capability. We evaluate Mastermind on CyberGym using 260 training tasks and 200 held-out evaluation tasks. With GPT-5.5 as the frozen executor, Mastermind achieves an 84.5% pass rate, outperforming open-book PoC context (60.0%), Best-of-8 sampling (63.0%), and iterative improvement (77.0%). The same planner also improves GPT-5.4 mini and GLM~5.1 from 45.0% and 58.5% to 60.0% and 71.0%. These results demonstrate that learning high-level strategies is an effective and transferable mechanism for improving repository-scale SE agents.

3
Transition-Aware best-of-N sampling for Longitudinal Chest X-ray Reports

In longitudinal clinical practice, every chest X-ray is read in the context of the patients prior exam, and much of what the radiologist communicates is the change from one visit to the next. To the best of our knowledge, we present the first training-free best-of-N sampling scheme for pre-trained chest X-ray report generators that is explicitly aware of this longitudinal prior to current transition. We call it transition-aware best-of-N sampling, each report is split into sentences and embedded into an unordered set in Rd; each (prior, current) pair is reduced to a fixed-dim directional vector via a set-to-set distance designed to encode the change between the two sets; and candidates are scored by cosine distance from their candidate transition vector to a cached bank of ground-truth training transition vectors, aggregated as min or kNN. We instantiate the framework with four directional set distances (mean-shift, novelty residual, directed-Hausdorff anchor, and cost-weighted optimal transport) and evaluate on a multi-visit AP-PA cohort, running inference under three prompts on three vision-language generators. Transition-aware best-of-N outperforms random selection across the board, with the largest relative gains on the Impression section.

2
GORGO: Online Tuning for Cross-Region Network-Aware LLM Serving

Increasingly, LLM inference services proxy client requests to engine replicas distributed globally. Load-balancing policies must jointly account for factors including KV-cache locality, replica load, and variable network latency when optimizing for metrics like latency and TTFT. However, existing systems only evaluate a subset of these factors in their cost model, leading to uneven concentrations of load and KV-cache across replicas. We present GORGO, a proxy architecture that holistically factors network latency, prefill cost, and queueing delay using tunable parameters. Since open-source chat datasets such as LMSYS-Chat1M and WildChat-4.8M lack long-context, high prefix-reuse data, we release a synthetic dataset, ART-Chat-2.5M, from long-context production metadata. On a tuning window from ART-Chat-2.5M, evolutionary strategies guide the GORGO policy's parameters to directly optimize p95 TTFT. During held-out evaluation windows, we fix the parameter values learned from tuning and improve p95 TTFT by 6.9-15.5% and p95 end-to-end (E2E) latency by 14.3-30.9% over baseline load-balancing policies such as simple session affinity and prefix-cache. The code and ART-Chat-2.5M dataset can be found at https://github.com/Arcadia-Research-Team/GORGO.

2
PraMem: Practice-derived Experiential Memory for Long-horizon Behavior Prediction

Long-horizon behavior prediction aims to infer a user's next action based on a lengthy historical sequence, playing a crucial role in artificial intelligence field. The rise of large language models (LLMs) offers a promising direction for sequential behavior prediction, yet LLMs struggle with latent behavioral pattern induction and model-intrinsic cognitive biases when tackling long-horizon behavior prediction. Prior memory management methods follow a context-compression paradigm that attempts to address this task by alleviating the historical sequence burden, yet fail to resolve the core challenges. In this paper, we advocate a paradigm shift that reframes the lengthy historical sequence from a burden into a valuable resource to be exploited, and accordingly propose PraMem, which conducts beforehand practice over the lengthy historical sequence to build an experiential memory, thereby serving as the assisted input for accurate long-horizon behavior prediction. Extensive experiments across diverse tasks demonstrate that PraMem achieves superior performance than prior methods, and more in-depth analyses provide valuable insights into the mechanism and evolution of the experiential memory. Code: https://github.com/icip-cas/PraMem.

2
Taste-aware music retrieval from audio embeddings

Crossmodal correspondences between sound and taste are well established in psychology and neuroscience, but largely absent from content-based multimedia retrieval. We formalise taste-from-audio prediction as a content-based music information retrieval benchmark over a perceptually validated multi-source corpus, comparing ten frozen audio encoders from the four HEAR families under a shared multi-task regression head, with gated late-fusion as a configurable variant. In order to assess the effectiveness of the models, we compute absolute error and rank correlation. The strongest systems predict the five tastes within a macro RMSE of 0.134; on held-out real music their error is less than half a single rater's deviation from the consensus (RMSE 0.13 vs. 0.28), so the model tracks the group consensus more closely than an average human rater, and well below the previous state of the art baseline (0.219). On absolute error the encoders are statistically flat, with a single VGGish matching the best fusion, but gated late-fusion's advantage is confined to rank correlation (macro Pearson r 0.724 vs. 0.666). Operationalised as a content-based retrieval index, the predicted taste space ranks a 309-item pool far more faithfully than a CLAP-text baseline, which sits at chance; ridge probes and an audio-bandstop knockout read the strongest representations against documented sound-taste correspondences.

1
CONFLUX: A Latent Diusion Model for 3D Chest-CT Synthesis with RL Post-Training

Controllable generative models of 3D medical images can synthesize volumes with specified clinical attributes, but this demands samples that are simultaneously high-fidelity, natively 3D, and faithful to the requested conditioning. We present CONFLUX, a latent diffusion model for chest computed tomography (CT): a 3D variational autoencoder compresses each volume, and a rectified-flow transformer generates in the latent space. Generation is conditioned on structured radiological metadata (18 abnormality findings, sex, age, and reconstruction kernel) through adaptive layer normalization. The model leads strong volumetric baselines on tri-planar Frechet distance (FID 32.3 vs. 74.6 for MAISI) while exposing direct control over clinical attributes. To strengthen that control we add an online reinforcement-learning post-training stage (group-relative policy optimization) that rewards how reliably a classifier recovers the requested findings from each generated volume. Judged by a separate, independent classifier, post-training removes 47% of the shortfall relative to real-scan reliability. We release the model and a ~200k synthetic chest-CT dataset with conditioning metadata spanning a wide variety of clinical findings.

1
Deform360: A Massive Multi-view Visuotactile Dataset for Deformable World Models

Predicting object dynamics (i.e., world modeling) is a fundamental challenge for robotic manipulation, and modeling deformable objects presents a particularly difficult case due to their high-dimensional state spaces and complex material properties. While current world models approach this through two distinct paradigms: learning the dynamics over the 2D pixel space or more explicit 3D geometric space. A systematic understanding of their relative strengths and limitations remains elusive due to the lack of diverse, large-scale real-world data. To address this, we present Deform360, a large-scale visuotactile dataset featuring 198 daily-life objects, 1,980 interaction sequences, and over 215 hours of observations from 41 surround-view cameras and bimanual tactile grippers to capture both global motion and contact-induced local deformations. Leveraging a novel markerless visuotactile 3D tracking pipeline to extract dense geometry and motion, we systematically evaluate current state-of-the-art world models, comparing 2D video models against 3D particle models. Finally, we provide a preliminary demonstration indicating the real-world applicability of our dataset by performing robot planning tasks on deformable objects. Our analysis reveals key insights into the trade-offs between structural priors and scalability, providing a solid benchmark for future research in generalizable deformable object-centric world modeling. Project website: https://deform360.lhy.xyz

1
AI Wizards at EXIST 2026: Hierarchical Soft-Label Learning for Multimodal Sexism Identification in Memes

We present the AI Wizards submission to EXIST 2026 for multimodal sexism identification in memes. The task is composed of three, increasingly harder subtasks. We model them hierarchically as conditional soft-label prediction over empirical annotator distributions. Our system maps fixed Gemini Embedding 2 vision-language representations through a lightweight Gated MLP trained with KL divergence and homoscedastic uncertainty weighting. Our submissions ranked first on Task 2.3 and fourth on Tasks 2.1 and 2.2 on the official Soft-Soft leaderboards. The code is available at https://github.com/NLP-AI-Wizards/EXIST-2026

0
PixCon: Clean-Positive Contrastive Learning for Foundation-Model Semi-Supervised Segmentation

Semi-supervised semantic segmentation (SSSS) has long turned on one question, which pseudo-labels to trust, and answered it with ever more careful confidence filtering. Foundation backbones change the regime: with a DINOv2 teacher a strict threshold already retains a measured 98%-clean pseudo-label set, so the accuracy that remains lives not in the filter but in how the embedding space is structured by class. We propose PixCon, a clean-positive pixel-contrastive framework. PixCon maintains a per-class memory bank that admits only labeled pixels the student already classifies correctly, guaranteeing a contamination-free positive set (ρ_F=0) by construction, unlike prior contrastive SSSS banks (ReCo, U^2PL) built from confidence-filtered pseudo-labels. It is a single branch over a consistency backbone, adds no inference-time parameters, and needs no bank-specific threshold. A first-order analysis of the supervised-InfoNCE gradient explains why contamination hurts: its false-positive term scales as ρ_F/(1-ρ_F), which we measure (0.018 on Pascal, 0.106 on ADE20K) rather than assume. Across Pascal VOC, Cityscapes, and ADE20K, PixCon matches or improves a strong DINOv2-based UniMatch V2 baseline in a compute-matched one-switch protocol: it improves every Pascal-1/8 seed (a per-seed gain of about +0.2 mIoU) and its three-seed mean reaches 87.90, the published UniMatch V2-B figure. Because contamination is already rare under foundation-model teachers, our analysis indicates the ρ_F=0 guarantee acts chiefly as robustness as teachers weaken, while the accuracy gain comes from cleaner positive supervision, making clean-positive contrast a robust, low-cost default for foundation-model SSSS.

0
Speaker-Disentangled Chunk-Wise Regression for Syllabic Tokenization

Unsupervised syllabic tokenization aims to learn discrete syllabic tokens that capture latent linguistic content-related structure from raw speech. Recent syllabic tokenization methods employ teacher-student distillation of the pretrained HuBERT to organize latent speech frame representations into syllabic segments. However, when trained with an utterance-level cross-entropy objective, the model predicts speaker identity rather than linguistic content, thereby compromising the purity of syllabic tokens. To address this problem, we propose a speaker-disentangled syllabic tokenizer that regresses speaker-perturbed student representations toward clean teacher targets within fixed-length chunks. Experimental results demonstrate that our proposed method achieves state-of-the-art performance in syllable boundary detection and syllabic segment clustering. Moreover, a speech language model trained on our syllabic tokens achieves a 7% relative improvement in syntactic and semantic understanding over the phone-level SpiRit-LM.

0
05

PRODUCT HUNT

05.00
PRODUCT HUNT

Product Hunt - July 7, 2026

Product Hunt Daily Feed: Featuring noteworthy tech launches.

Ogment AI icon
Ogment AI

Your AI coworker, in Slack. Just tag @O.

0
Mira icon
Mira

AI moderated interviews that read how people feel

0
Katalyst icon
Katalyst

The AI agent that works your Salesforce Pipeline

0
Badge icon
Badge

AI agents collect peer reviews to generate proof of work

0
Glideo icon
Glideo

Screen recordings that edit themselves

0
Dupely icon
Dupely

The trust layer for online shopping

0
Scribble Network icon
Scribble Network

The product that makes AI recommend your brand

0
Kadoink AI icon
Kadoink AI

Gather people instantly by notifying or ringing their phones

0
Zoho Tables icon
Zoho Tables

Smarter way to manage work and data.

0
Social Fetch - Social Media API icon
Social Fetch - Social Media API

Social media scraper API for every major platform

0
AI Emaily icon
AI Emaily

Your AI inbox that writes like you + replies on autopilot

0
LongCat-2.0 icon
LongCat-2.0

1.6T MoE trained entirely on AI ASICs

0
Ellis icon
Ellis

AI notes for in-person meetings

0
Typeahead 2.0 icon
Typeahead 2.0

Private AI autocomplete for every app on your Mac

0
Edgee Claude Code Compressor V2 icon
Edgee Claude Code Compressor V2

Fewer tokens, same context, 50% cost reduction

0
AnySearch icon
AnySearch

Real-time structured search trusted by agents and developers

0
Stanley Studio icon
Stanley Studio

The AI video editor you hire that edits like a human

0
Sunrise icon
Sunrise

A real planner for Google Tasks

0
Astryx icon
Astryx

A customizable, agent-ready open-source design system

0
Nixmac icon
Nixmac

Nix-darwin that speaks plain English

0
Cadence icon
Cadence

Record once, send confidently

0
AirKaren icon
AirKaren

AI that fights customer service for you

0
Octolens icon
Octolens

Social listening for the agent era

0
CodeMote icon
CodeMote

Claude Code, Codex, any CLI agent. Driven from your iPhone

0
Mozaik icon
Mozaik

TypeScript runtime for self-organizing AI agents

0
Endl icon
Endl

A global operating account for fiat, stablecoins, and cards.

0
TryCase icon
TryCase

Disposable test environments for AI coding agents

0
DocsAlot icon
DocsAlot

Documentation that works for both humans and AI systems

0
WorkBuddy icon
WorkBuddy

Produce sharpened results faster with a team of AI experts

0
CircleChat icon
CircleChat

Give your AI agents a slack, a task board, and a boss

0
Pennen icon
Pennen

One quiet handwritten page a day. No feed, no AI.

0
Toku Reader icon
Toku Reader

Read & listen to native Japanese and Chinese, tap any word

0
MentionDrop MCP icon
MentionDrop MCP

Give your AI agent live market signals

0
Termi Protocol icon
Termi Protocol

Watch your AI coding agents build, live in 3D

0
Vida icon
Vida

Clone yourself. Let AI do the work before you ask

0
ChecklistFox icon
ChecklistFox

AI checklist maker for beautiful pdfs, free & instant

0
PhoneDeck icon
PhoneDeck

Turn your iPhone into a free Mac controller

0
CentryAI icon
CentryAI

Subscription tracker built by someone who forgot 11 of them

0
Vox icon
Vox

Voice in, voice out — with GitHub Copilot

0
Tamamon icon
Tamamon

A desktop pet that grows as you code with Claude Code

0
Archify icon
Archify

understand software

0
Glaze by Raycast icon
Glaze by Raycast

Create your own Mac apps by chatting with AI

0
Goals from Loops icon
Goals from Loops

Measure whether a campaign drove the desired outcome

0
nxt icon
nxt

Talk to your to do list and get what's next

0
Macro icon
Macro

Unifies your work into one app with shared memory

0
PixFit icon
PixFit

Turn 1 creative into every ad format, instantly

0
Fypro icon
Fypro

Convert your TikTok followers into paying customers

0
Context.dev icon
Context.dev

One API to scrape, enrich, and extract the internet

0
Solaris icon
Solaris

Your company’s AI adoption and upskilling platform

0
Needle icon
Needle

The proactive GTM agent in Slack and Teams

0
06

TECHMEME

06.00
TECHMEME

Techmeme - July 7, 2026

Techmeme Digest: Major tech headlines and industry conversations.

Apple supplier Luxshare raised ~$3.1B in its Hong Kong IPO, selling 383.5M shares at ~$8 each, the top of its marketed range, and will start trading on Thursday (Bloomberg)
Source: TechmemePublished: Jul 7, 2026

Bloomberg : Apple supplier Luxshare raised ~$3.1B in its Hong Kong IPO, selling 383.5M shares at ~$8 each, the top of its marketed range, and will start trading on Thursday —  Apple Inc. supplier Luxshare Precision Industry Co. raised HK$24.3 billion ($3.1 billion) after pricing shares for its Hong Kong listing at the maximum amount it had set.

Solos unveils the AirGo A6 camera-less smart glasses, cutting the weight to 19g from the AirGo A5's 36g to 40g, and V2 privacy accessories like a clip-on shield (Andrew Liszewski/The Verge)
Source: TechmemePublished: Jul 7, 2026

Andrew Liszewski / The Verge : Solos unveils the AirGo A6 camera-less smart glasses, cutting the weight to 19g from the AirGo A5's 36g to 40g, and V2 privacy accessories like a clip-on shield —  The AirGo A6 are slimmer and lighter than last year's model while still offering hands-free access to an AI assistant.

Study: 50 test accounts created in Australia across nine platforms were never asked to verify their age, despite the Australian law mandating a ban on under-16s (Byron Kaye/Reuters)
Source: TechmemePublished: Jul 7, 2026

Byron Kaye / Reuters : Study: 50 test accounts created in Australia across nine platforms were never asked to verify their age, despite the Australian law mandating a ban on under-16s —  Australia's online platforms are stumbling at the very first step in implementing age checks for users, rendering a world …

UN Secretary-General António Guterres calls for autonomous "killer robots" to be "banned by international law", a central issue in the US DOD-Anthropic clash (Sam Schechner/Wall Street Journal)
Source: TechmemePublished: Jul 7, 2026

Sam Schechner / Wall Street Journal : UN Secretary-General António Guterres calls for autonomous “killer robots” to be “banned by international law”, a central issue in the US DOD-Anthropic clash —  António Guterres labels lethal autonomous weapons ‘morally repugnant,’ resurfacing issue …

Norm, which runs an AI law firm that provides AI-powered legal services to clients alongside human lawyers, raised $120M led by Khosla at a $1.2B valuation (Guinevere Grant/Bloomberg)
Source: TechmemePublished: Jul 7, 2026

Guinevere Grant / Bloomberg : Norm, which runs an AI law firm that provides AI-powered legal services to clients alongside human lawyers, raised $120M led by Khosla at a $1.2B valuation —  Norm Ai has raised $120 million from investors in a new funding round to help automate legal services and rethink how the industry bills for its work.

Coinbase secures UK FCA authorization to offer investment services, enabling it to expand into derivatives and equities trading, its largest UK expansion yet (Brian Danga/The Block)
Source: TechmemePublished: Jul 7, 2026

Brian Danga / The Block : Coinbase secures UK FCA authorization to offer investment services, enabling it to expand into derivatives and equities trading, its largest UK expansion yet —  Quick Take  — Coinbase has secured a UK investment services license, allowing it to expand beyond crypto with derivatives and equities trading.

Sources: Amazon is looking to raise at least $25B from a US dollar bond sale to fund its AI infrastructure investments; the size could increase based on demand (Bloomberg)
Source: TechmemePublished: Jul 7, 2026

Bloomberg : Sources: Amazon is looking to raise at least $25B from a US dollar bond sale to fund its AI infrastructure investments; the size could increase based on demand —  Amazon.com Inc. is looking to raise at least $25 billion from a US dollar bond sale, its latest funding push as the company ramps …

Paris-based UMA, founded by ex-Tesla Optimus scientist Rémi Cadene and ex-Google DeepMind researcher Pierre Sermanet, demos its Northstar AI humanoid robot (Benoit Berthelot/Bloomberg)
Source: TechmemePublished: Jul 7, 2026

Benoit Berthelot / Bloomberg : Paris-based UMA, founded by ex-Tesla Optimus scientist Rémi Cadene and ex-Google DeepMind researcher Pierre Sermanet, demos its Northstar AI humanoid robot —  A former Tesla Inc. scientist who worked on Elon Musk's Optimus robot unveiled plans to produce a lightweight humanoid robot …

Sources: Beijing recently held meetings with Alibaba, ByteDance, Z.ai, and others to discuss restricting overseas access to advanced open and closed AI models (Fanny Potkin/Reuters)
Source: TechmemePublished: Jul 7, 2026

Fanny Potkin / Reuters : Sources: Beijing recently held meetings with Alibaba, ByteDance, Z.ai, and others to discuss restricting overseas access to advanced open and closed AI models —  Chinese authorities have held meetings with top tech firms over the past month about potentially restricting overseas access …

Survey: Chinese companies plan to allocate 46% of their AI accelerator budget to domestic products in the next 12 months, up from 30% today, a shift from Nvidia (Gao Yuan/Bloomberg)
Source: TechmemePublished: Jul 7, 2026

Gao Yuan / Bloomberg : Survey: Chinese companies plan to allocate 46% of their AI accelerator budget to domestic products in the next 12 months, up from 30% today, a shift from Nvidia —  Chinese companies are ditching Nvidia Corp.'s advanced accelerators in favor of domestic silicon, underscoring how tensions …

Sources: DeepSeek is at an early stage of developing its own AI chip designed for inference, in a push that could reduce its reliance on Nvidia and Huawei chips (Reuters)
Source: TechmemePublished: Jul 7, 2026

Reuters : Sources: DeepSeek is at an early stage of developing its own AI chip designed for inference, in a push that could reduce its reliance on Nvidia and Huawei chips —  Chinese startup DeepSeek is developing its own AI chip, according to three people familiar with the matter …

US autonomous military vehicle startup Forterra says it deployed 100+ Lancer UGVs, based on Polaris ATVs, in Ukraine since 2025, completing 1,100+ missions (Tim Fernholz/TechCrunch)
Source: TechmemePublished: Jul 7, 2026

Tim Fernholz / TechCrunch : US autonomous military vehicle startup Forterra says it deployed 100+ Lancer UGVs, based on Polaris ATVs, in Ukraine since 2025, completing 1,100+ missions —  Forterra, a US builder of autonomous vehicles, revealed today that more than 100 of its self-driving ATVs have been deployed …

European banking watchdogs ECB and ESRB warn that frontier AI models pose "systemic risks to the financial system", giving lenders four months to prepare (Financial Times)
Source: TechmemePublished: Jul 7, 2026

Financial Times : European banking watchdogs ECB and ESRB warn that frontier AI models pose “systemic risks to the financial system”, giving lenders four months to prepare —  IT weaknesses could be exploited by frontier models in a ‘matter of minutes or hours’, say ECB and ESRB

UK-based AI infrastructure startup Nscale secures a $900M line of credit to expand its data center buildout across Europe, the US, and the Asia Pacific (Mauro Orru/Wall Street Journal)
Source: TechmemePublished: Jul 7, 2026

Mauro Orru / Wall Street Journal : UK-based AI infrastructure startup Nscale secures a $900M line of credit to expand its data center buildout across Europe, the US, and the Asia Pacific —  Nscale raised $2 billion earlier this year as investors continue to see promise in AI  —  Nscale Global Holdings said it had secured …

Munich-based nuclear fusion startup Proxima Fusion raised €411M led by trading firm XTX and UK-based East X at a €2.4B valuation, with participation from Google (Bloomberg)
Source: TechmemePublished: Jul 7, 2026

Bloomberg : Munich-based nuclear fusion startup Proxima Fusion raised €411M led by trading firm XTX and UK-based East X at a €2.4B valuation, with participation from Google —  German startup Proxima Fusion has raised €411 million ($469 million) from a range of investors …

07

STARTUP ARCHIVE

07.00
STARTUP ARCHIVE

Startup News - July 7, 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 7, 2026

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

空气污染通过干扰冲动控制导致儿童肥胖

空气污染可能通过影响儿童控制冲动能力而导致其肥胖。研究发现,在出生第一年接触较高浓度 PM2.5 的婴儿在儿童后期更容易出现冲动控制障碍。PM2.5 颗粒物常见人为来源包括交通和化石燃料燃烧,它与一系列健康问题相关,如痴呆症和中风。此前的研究表明 PM2.5 会扰乱新陈代谢并与体重增加有关。研究人员分析了墨西哥城的 434 名儿童的数据,他们多数出生于 2007-2008 年间。研究人员模拟了孕期和儿童出生后第一年的环境 PM2.5 水平。之后研究人员对这些儿童的冲动性和肥胖进行了评估。PM2.5 暴露水平最高的儿童组表现出较高的冲动性,反映出其抑制控制能力存在显著缺陷。

美国人的每天社交时间比 20 年前少 10 分钟

在智能手机和社媒时代,人们将越来越多的时间花在屏幕上。调查显示,美国人每天的平均社交时间从 20 年前的 45 分钟减少 10 分钟至 35 分钟。这一趋势在所有年龄段都存在,其中 15-24 岁人群下降幅度最大,每天社交时间从约 1 小时降至 35 分钟。与此同时,青少年平均每天花费 4.8 小时在 TikTok、Instagram 和 Snapchat 等社媒应用上。聚会场所的减少也是造成这一趋势的原因之一。过去十年美国各类休闲场所——从图书馆到咖啡馆到博物馆——都出现了大范围关闭,甚至教堂也存在类似现象。

微软裁员 4800 人,游戏业务深受影响

微软裁员 4800 人,其中游戏业务 Xbox 裁员 1600 人,多个游戏工作室或者出售或者独立。微软执行副总裁兼首席人力资源官 Amy Coleman 强调:被裁掉的职位不会被 AI 取代,但 AI 确实在改变工作的方式。部分日常工作可以自动化了,意味着人人都需要不断学习,不断提升技能,并不断调整自己。Xbox CEO Asha Sharma 称这是 Xbox 历史上最重大的重组。Xbox 将缩小业务范围,放弃回报率的业务,专注于回报率高的业务如《我的世界》的 Mojang 以及《糖果粉碎传奇》的手游开发商 King。作为重组的一部分,Double Fine 和 Compulsion 两大工作室将独立。Ninja Theory 和 Undead Labs 工作室出售,Arkane 工作室则在评估中可能独立可能出售,Obsidian 工作室裁掉四分之一员工,id Software 也大规模裁员。

美国最高法院允许德州要求移动应用验证用户年龄

美国最高法院允许德州要求移动应用验证用户年龄。德州的新法律要求应用商店在未成年人下载应用前验证用户年龄并获得家长同意。代表 Google 和苹果的行业组织 Computer & Communications Industry Association 认为该法律覆盖范围太广,会限制青少年访问各种数字内容,会对数字言论保护产生深远影响。在该法律生效前几天,联邦地区法院去年底阻止了该法律的实施。保守派的第五巡回上诉法院在今年六月搁置了该裁决,允许德州继续推行这一法律。美国最高法院维持第五巡回上诉法院的裁决,它并没有做出决定,但允许德州在诉讼期间继续执行该法律。

美国研究型大学招收的博士生人数减少 15%

美国大学协会 55 所研究型大学的数据显示,2026 年秋季招收的博士生人数比 2025 年减少了 15%。博士生减少引发了对美国科研能力下降的担忧。造成这一现象的一大原因是特朗普政府混乱且难以预测的联邦拨款环境。美国大学协会包含了 69 所最知名的研究型大学,全美半数的研究型博士学位由其这些大学授予。该协会的高级副总裁 Toby Smith 表示,由于支持学生的能力下降,美国正面临失去整整一代新人才的风险。博士生人数下降的原因包括国立卫生研究院(NIH)和国家科学基金会(NSF)等重要联邦机构在减少科研经费,而最富有的大学还面临对其捐赠基金征收的新联邦税。

天问二号探测器抵达目标小行星

中国国家航天局周一宣布,天问二号探测器历经约 400 天、行程约 10 亿千米飞行后于近日与小行星 2016HO3 成功交会,到达距离小行星 20 千米处,开始科学探测。在抵近小行星过程中,探测器获得小行星影像数据。同时任务团队利用探测器抵近过程中获得的光学导航数据,改进了小行星星历,将之前仅依靠地基观测所确定的小行星位置误差,由上百千米减小到千米量级。天问二号探测器于 2025 年 5 月 29 日在西昌卫星发射中心成功发射。2026 年 6 月 6 日,探测器首次捕获到小行星;6 月 7 日,在距离小行星 3 万千米处实施捕获控制,实现与小行星共面飞行;6 月 19 日,到达距离小行星 2000 千米处。后续探测器将逐步开展更精细科学探测,获取小行星形貌、物质成分、内部结构等信息,为做好采样准备提供支撑。

被社媒用户指控是 AI 创作的短篇小说赢得英联邦短篇小说奖

被社媒用户指控是 AI 创作的短篇小说《The Serpent in the Grove》赢得英联邦短篇小说奖。这篇小说由 Jamir Nazir 创作,在五月份赢得了地区奖项,随后立即被 X 等平台的社媒用户指控是 AI 创作。原因是它包含了典型的 AI 写作模式,包括“不是 x 而是 y”结构以及三列表结构。在引发争议之后,Commonwealth Foundation 检查了所有地区奖得主的草稿、含时间戳的文件和笔记等内容。该基金会之后宣称他们没有发现作品是 AI 生成的证据。 Nazir 称其作品深受 VS Naipaul 和 Derek Walcott 等作家作品的影响。他说这篇小说写了六七稿,他解释说其手机屏幕一次只能显示三四行文字,所以他会写下一行前对前面的文字细致修改,最终使故事显得“高度润色”。

亚马逊 Mechanical Turk 将于本月底停止接受新用户

亚马逊众包平台 Mechanical Turk 发表公告,宣布将于 7 月 30 日起停止接受新用户。亚马逊 AWS 称,该决定是在“慎重考虑”后做出的,“现有用户可以继续正常使用该服务。AWS 将继续投资改进 Mechanical Turk 的安全性和可用性,但我们不打算推出新功能。”Mechanical Turk 暂时不会关闭,但其未来岌岌可危。亚马逊从 2018 年起将 Mechanical Turk 变成训练神经网络的标注数据服务。但讽刺的是 2023 年的研究发现,该平台 33% 到 46% 的众包工作者使用大模型去完成任务,引发了对标注数据的可靠性以及是否真的需要人类参与的质疑。社交平台的用户称,由于大量的机器人和欺骗行为,研究人员已经放弃了该平台,它的关闭可能只是时间问题。

工作记忆如何产生意识?

有没有类似经历:走进一间房间,却忘记来干什么?你可能是来拿钥匙,在来的路上还记住钥匙,但在进门的刹那钥匙从你的记忆里消失了。这种现象有时被称为门口效应(Doorway Effect),通常发生在走进一间陌生的房间时。它与工作记忆密切相关。当我们执行当前任务(如记住去拿钥匙)时,信息会被存储在工作记忆中。门口效应表明,当信息从工作记忆中移除时,它似乎会立即从意识中消失。这也表明工作记忆中的信息很容易被遗忘。工作记忆内部包含众多不同子系统,分别负责特定的任务,包括视觉和空间推理(如解魔方)以及存储信息块(如电话号码)。甚至还有一个“中央执行系统”。中央执行系统就像一个冷酷的老板,负责将任务分配给工作记忆内的不同系统,确保一切井然有序。工作记忆的一个独特之处是它的容量非常有限。尽管它拥有丰富的可用信息,但工作记忆在任何时刻只能存储极少量的信息。它很难记住非常复杂的物体。工作记忆的有限容量能解释为什么门口效应会发生:当新信息进入时旧信息必须被清除。进门的动作会触发信息消除。从演化论角度看,遗忘旧信息有助于适应新环境。这种遗忘也表明工作记忆与意识密切相关。一种观点认为,意识的产生源于工作记忆和注意力的协同作用。

用 Go 语言编写的 TypeScript 7.0 发布 RC 版

C# 和 TypeScript 等语言的创始人 Anders Hejlsberg 在 2025 年 3 月宣布他的团队正在开发用 Go 语言编写的 TypeScript 编译器。现在首个基于 Go 语言的 TypeScript 7.0 发布了 RC 版本。正式版本预计会在下个月发布。微软表示,得益于原生代码速度和共享内存并行处理能力,TypeScript 7.0 的速度通常比 TypeScript 6.0 快约 10 倍。不同于 TypeScript 6.0,TypeScript 7.0 的许多步骤(如解析、类型检查和发射)都可以并行执行。其中一些步骤(如解析和发射)在不同文件之间可以基本独立完成。并行处理在较大的代码库中能自动实现良好扩展,且开销相对较小。但微软也表示 TypeScript 构建中并非每个步骤都能轻松实现并行处理。

Windows 11 设备标识符被用于逮捕网络勒索组织成员

美国司法部、FBI 与芬兰国家调查局合作逮捕了 19 岁的网络勒索组织 Scattered Spider 成员 Peter Stokes,该组织至今已勒索逾 1 亿美元赎金。Stokes 已引渡到美国并于 6 月 30 日出庭,目前处于羁押中。微软在识别其身份过程中起了很大的作用。微软向 FBI 提供了 GDID(Global Device Identifier 或全球设备标识符),GDID 是分配给每个 Windows 的唯一标识符,用于跟踪特定设备的遥测数据。法庭文件显示,Stokes 使用的是 Windows 系统,他的网络活动、游戏历史记录、IP 地址、工具使用情况(包括 Ngrok)、Azure 状态等信息都被记录下来并带有时间戳,这些信息由微软提供给了调查人员。他拥有美国和爱沙尼亚双重国籍,其身份早在 2024 年就被确定,但由于他当时未成年且居住在爱沙尼亚和阿联酋,因此他一直处于被监视状态,直到最近试图从芬兰赫尔辛基搭乘航班飞往日本。

字节跳动和阿里巴巴下线智能体功能

字节跳动的豆包和阿里巴巴的千问先后宣布于 7 月 1 5 日下线智能体功能。豆包称,由于产品功能调整,智能体功能将于 2026 年 7 月 15 日下线。功能下线后,用户仍可在一段时间内查看并自行保存智能体信息及历史对话数据,10月15日后,豆包将根据《隐私政策》对智能体相关数据进行处理,后续将无法在豆包内查看或恢复。用户可通过截图或分享导出文本的方式提前备份重要内容。千问将在同一天下线智能体功能,下线后用户将无法继续访问相关智能体配置及历史对话记录。7 月 15 日下线是因为当天《人工智能拟人化互动服务管理暂行办法》将正式实施。此前腾讯 AI 应用元宝已经移除了相似的功能。

隼鸟2号近距离飞越小行星鸟船

日本隼鸟 2 号探测器在完成小行星龙宫样本收集和送回地球任务之后开始向新目标前进。7 月 5 日隼鸟 2 号接近小行星 Torifune(鸟船),在高速通过距鸟船中心约 800 米的极近距离的同时,调查其形状和表面物质,进行了近距离探测。探测器接近也意在验证旨在防备小行星与地球相撞危险的“地球防御”。JAXA 称,过了最接近的预定时间之后,接收了来自隼鸟 2 号的信号。探测器没有撞上小行星,处于正常状态。

战争模糊了企业安全和国家安全

海底光缆、发电站、炼油厂,机场、海水淡化厂甚至亚马逊数据中心,都已成为战争期间的攻击目标。企业安全和国家安全之间的界限日益模糊。北大西洋公约组织(NATO)32 个成员国去年达成协议,将经济产出的 5% 用于国防和安全,其中 1.5% 用于军事相关需求,包括保护关键基础设施和网络。支出目标涵盖网络安全、工业产能,以及军事后勤所需的铁路、桥梁和港口等等。NATO 军事委员会主席、意大利海军上将 Giuseppe Cavo Dragone 表示我们需要一个更全面的国防概念——国防不再仅仅指军事。曾在美国交通部和国土安全部任职的 Marc Glasser 表示私营业主能投资冗余、监控和维修能力,但只有政府和军方才能真正威慑、巡逻、确认或应对敌对国家的活动。企业表示,他们需要政府更明确地阐明将提供哪些保护措施,以及为帮助企业保护那些提供公共利益的私有资产而提供的补贴。大多数政府并没有为企业提供激励措施去鼓励它们在法定最低韧性要求之外进行更多投资。

微软将利润转移到低税国家

微软显然在将利润转移到低企业税国家。早在 2005 年,微软时任 CEO 巴尔默(Steve Ballmer)称低企业税率是在爱尔兰做生意的整体优势之一。微软和其它跨国企业一样,会利用子公司来转移利润以降税。微软子公司的纳税金额有明显的模式:低税国家高利润,高税国家低利润。微软在爱尔兰的员工占到了全球员工的 3%,但它产生了近 40% 的税前收入;而在欧洲最大的经济体德国,德国子公司的利润仅占全球利润的不到 0.5%。微软在卢森堡的税前收入为 2.83 亿美元,但在该国仅仅只有 34 名员工。美国国税局(IRS)正寻求微软补税近 290 亿美元。微软官方篇博客称税收“是衡量贡献的一个重要指标,但不是唯一的指标”。

ReactOS 能运行 Half-Life 2

ReactOS 是一个致力于开发与 Windows NT 和 Windows 2000 应用程序和硬件驱动程序兼容的开源操作系统项目,至今已有逾三十年历史。该项目宣布了在游戏运行上的重大进展:六月初 ReactOS 宣布它能成功运行经典射击游戏《Half-Life》,仅仅过了一个月它宣布能成功进行《Half-Life 2》。这次演示是在一台搭载 NVIDIA GeForce 8400GS 显卡的 Intel Sandy Bridge 台式机上进行的。GeForce 8400GS GPU 是在 2007 年推出的,而 Sandy Bridge CPU 是在 2011 年发布的。

巨树能轻松将水输送到树冠

根据发表在《科学》期刊上的一项研究,世界最高的热带树能轻松将水分输送到树冠。传统理论认为,随着树木生长,水分从根部输送到树叶的难度会越来越大,从而限制了树木生长,使其更容易受干旱影响。新研究发现,巨型龙脑香树(Dipterocarp)内部水输送的调整完全补偿了将水抽到树顶的挑战。相比短树,巨树的高度并不会使其水系统更容易受到干旱的影响。单独测试发现,在严重干旱期间,相比短树巨树没有遭受与高度相关的生长损失。Exeter 大学的 Lucy Rowland 教授解释说,树木内部有很多细长中空导管,它们通过在树冠形成低压向上吸水分。导管演化出了精妙的适应机制,即使是在需要将水分输送到高达 80 米以上树顶所需的极低压力下,也能保持水分以液态形式存在。龙脑香树是世界上最高的开花树种。

火星岩石发现大量碳,来源未知

NASA 漫游车在火星上发现的有机碳绝大多数都是在岩石的内部,需要通过钻或磨才能暴露。如今火星漫游车毅力号在河道 Neretva Vallis 附近的岩石表面发现了复杂大分子碳,这是至今在火星上发现的最浅的有机物。如果地球上发现类似的大量大分子碳,通常表明它们来自生物。但对于火星岩石上发现的大量碳,则难以识别其来源,除非将其带到地球进行仔细研究。研究人员表示这些分子碳也可能源于非生物过程。它们是否是古代火星生命的遗迹,还有待未来回答。

仙女座发现新卫星星系

天文学家在距离地球约 250 万光年的仙女座星系附近,发现了一个新的超暗矮星系,命名为仙女座 XXXVI(Andromeda XXXVI,其中 XXXVI 为罗马数字 36),代表它是目前正式命名的第 36 个仙女座卫星星系。研究显示,它可能是迄今在仙女座星系周围发现最暗淡的卫星星系之一。这个星系年龄约达 125 亿年。仙女座星系是距离银河系最近的巨大螺旋星系,周围环绕着许多受到重力束缚的矮卫星星系,因此被视为研究星系形成的天然实验室。目前理论预测,仙女座可能拥有多达约 90 个卫星星系,但迄今仅发现约 40 个,其中只有约 15 个属于超暗矮星系。仙女座 XXXVI 的发现显示,在仙女座周围可能仍隐藏着大量尚未被发现的极暗小星系。

全球极端热应激现象加剧

发表在《Nature Climate Change》期刊上的一项研究显示,全球极端热应激现象加剧。相比 1970 年代,当前多出约 10 亿人要至少扛过一天“极端热应激”,也就是通用热气候指数(UTCI)≥46℃的日子。研究人员分析了 1950-2024 年共 75 年的全球热应激数据集,把白天、夜间,还有昼夜连着的那段时间分开算。结论不复杂:无论哪个时段,热应激现象在频率、强度、持续时间上全线走高,而夜里跑得比白天还快。自 1970 年代以来,从全球平均来看,每年最热的十个夜晚,UTCI 升温速率是每十年 0.32℃;每年最热的十个白天反倒慢一点,每十年 0.27℃。城市热岛效应是原因之一,但更重要是湿度。夜间地表辐射冷却被云量和大气水汽兜住,加上静风日数增加,“凉不下来”的夜越来越多。地域分布上,亚热带首先遭殃:北美南部、欧洲南部、非洲南北两端、南美这些地方,跟 1970 年代比,每年 UTCI≥32℃(强)和≥46℃(极端)的天数多了约 50 天。也就是说,某些亚热带城市一年里快要有一半日子卡在强热应激线上。西班牙、葡萄牙、意大利、法国这一部分南欧国家,现在的体感温度比 1970 年代高出 5 ℃。

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