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ISSUE 0923
SAT, JUL 11, 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 · SAT, JUL 11, 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 11, 2026

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

U.S. and Iran Tensions Drive Market Volatility Renewed military strikes between the U.S. and Iran in the Middle East caused oil prices and Treasury yields to rise. Despite the uncertainty, major U.S. stock indexes managed to end a volatile week with slight gains, partly steadied by a large offering in the semiconductor sector.

Texas Launches Stock Exchange to Compete with New York A new, fully electronic national stock exchange is being launched in Texas. Backed by major investors, the Texas Stock Exchange (TXSE) aims to challenge the dominance of the NYSE and Nasdaq by attracting corporate listings with a more CEO-friendly and less regulated environment.

Apple Accuses OpenAI of Stealing Trade Secrets Apple claims that several of its former employees took confidential company information to OpenAI. The tech giant alleges this was done to help advance OpenAI's efforts in developing competing hardware devices, escalating the rivalry between the two companies.

China Achieves Reusable Rocket Milestone China’s space program marked a significant achievement by successfully launching and partially recovering a rocket. This successful test is a key step toward developing reusable rocket technology, positioning China as a direct competitor to U.S. companies like SpaceX.

Severe Weather and Flooding Impact Southern Regions Extreme weather, including record rains, tornadoes, and landslides, has battered several southern regions. Widespread flooding has caused significant disruption and damage, with reports of displaced zoo animals and cobras in the floodwaters.

02

ON THE WIRE

6 SOURCES
02

HACKER NEWS

02.00
HACKER NEWS

Hacker News - July 11, 2026

Hacker News Feed: Highlighting key posts and discussions.

An iroh powered smart fan

(www.iroh.computer)

13336
AI 2040: Plan A

(ai-2040.com)

316345
Good Tools Are Invisible

(www.gingerbill.org)

490222
03

HUGGINGFACE

03.00
HUGGINGFACE

HuggingFace 新闻 - July 11, 2026

HuggingFace Feed:最新的 AI 模型、数据集和社区动态。

Vidu S1: A Real-Time Interactive Video Generation Model

We introduce Vidu S1, a real-time interactive video generation model supporting voice control of digital characters. Users can control video generation content at any moment through voice instructions. Vidu S1 supports infinite-length real-time video generation without blurring, drift, or visual distortion. Built with TurboDiffusion and TurboServe, Vidu S1 outputs 540p real-time videos at up to 42 FPS on regular consumer GPUs. Users can upload custom images of real people, anime, and pets, and choose different voice tones for personalized experiences. Experiments show that Vidu S1 achieves the best performance across all test metrics while fully meeting real-time inference requirements. A playable online demo is available at https://vidu.com/vidu-stream.

112
Video-Oasis: Rethinking Evaluation of Video Understanding

The inherent complexity of video understanding makes it difficult to determine whether Video-LLM benchmark performance stems from visual perception, linguistic reasoning, or knowledge priors. While many benchmarks have emerged to assess high-level reasoning, shared criteria for evaluating video understanding remain largely overlooked. Instead of introducing yet another benchmark, we take a step back to re-examine the criteria for evaluating video understanding. In this work, we introduce Video-Oasis, a sustainable diagnostic suite for systematically auditing existing video understanding benchmarks. This audit reveals that 55\% of existing benchmark samples are solvable without visual input or temporal context. After filtering these shortcuts, the remaining video-native challenges expose a substantial capability gap: state-of-the-art models perform only marginally above random guessing. Building on these findings, we use the distilled challenges as a testbed to investigate which algorithmic design choices contribute to robust video understanding. We hope our work provides a practical foundation for constructing rigorous video benchmarks and evaluating future Video-LLMs. Code is available at https://github.com/sejong-rcv/Video-Oasis.

47
Why Can't I Open My Drawer? Mitigating Object-Driven Shortcuts in Zero-Shot Compositional Action Recognition

Zero-Shot Compositional Action Recognition (ZS-CAR) requires recognizing novel verb-object combinations composed of previously observed primitives. In this work, we tackle a key failure mode: models predict verbs via object-driven shortcuts (i.e., relying on the labeled object class) rather than temporal evidence. We argue that sparse compositional supervision and verb-object learning asymmetry can promote object-driven shortcut learning. Our analysis with proposed diagnostic metrics shows that existing methods overfit to training co-occurrence patterns and underuse temporal verb cues, resulting in weak generalization to unseen compositions. To address object-driven shortcuts, we propose Robust COmpositional REpresentations (RCORE) with two components. Co-occurrence Prior Regularization (CPR) adds explicit supervision for unseen compositions and regularizes the model against frequent co-occurrence priors by treating them as hard negatives. Temporal Order Regularization for Composition (TORC) enforces temporal-order sensitivity to learn temporally grounded verb representations. Across Sth-com and EK100-com, RCORE reduces shortcut diagnostics and consequently improves compositional generalization.

45
Ideas Have Genomes: Benchmarking Scientific Lineage Reasoning and Lineage-Grounded Idea Generation

Scientific ideas rarely start from a blank page. They inherit mechanisms, repair known limitations, and recombine pieces of earlier work, much like biological genomes. Current benchmarks still say little about whether AI systems can follow this inheritance structure. We present IdeaGene-Bench (IG-Bench), a benchmark for scientific lineage reasoning and lineage-grounded idea generation. IG-Bench is organized around the IdeaGene framework: each paper or proposal is represented as a set of minimal, typed, evidence-grounded Idea Genome objects, and a GenomeDiff aligns these objects to record inheritance, mutation, loss, external import, and novel insertion under six operational evolutionary dynamics. The benchmark contains 1,961 golden lineage traces, 1,085 curated Idea Genome objects, and 920 pairwise GenomeDiff records across 10 scientific domains. It supports two evaluations. IG-Exam (42 task types, 1,029 instances) tests closed-form lineage reasoning across Idea Genome abstraction, inheritance tracing, evolutionary reasoning, and lineage verification. IG-Arena evaluates generation with a lineage-conditioned Population-Evolution Score(PES), asking whether a proposal can be inserted as a coherent descendant of a given lineage population: it should inherit the right Idea Genome objects, vary meaningfully from nearby work, and offer selection value for future research. Experiments on 14 LLM-based scientists expose a compositional bottleneck. The strongest system reaches only 27.3% exact accuracy on lineage reasoning, and structured lineage context reshuffles system rankings rather than helping every participant uniformly.

26
UniClawBench: A Universal Benchmark for Proactive Agents on Real-World Tasks

The rapid development of large language models and multimodal large language models has accelerated the emergence of proactive agents capable of operating everyday tools and assisting users in real-world environments. However, existing benchmarks struggle to evaluate such agents effectively, as they often rely on sandboxed environments and single-turn evaluation paradigms. Moreover, their scenario-based task taxonomies mix multiple model capabilities within the same task category, making it difficult to identify the root causes of agent failures. To address these limitations, we introduce UniClawBench, the first capability-driven benchmark designed to evaluate proactive agents in dynamic, real-world settings. UniClawBench is built around five foundational model capabilities: Skill Usage, Exploration, Long-Context Reasoning, Multimodal Understanding, and Cross-Platform Coordination. Based on these capabilities, we design 400 bilingual real-world tasks. Unlike previous benchmarks that rely on static, pre-recorded answers, our benchmark evaluates agents in live Docker containers using fine-grained, step-by-step completion checkpoints. Furthermore, we design a closed-loop evaluation strategy comprising an executor agent, a hidden supervisor agent, and a user agent to simulate realistic multi-turn human feedback without leaking grading criteria. To disentangle base model capabilities from framework-level design choices, we evaluate state-of-the-art models under multiple agent frameworks. Through comprehensive comparisons across both models and frameworks, we show how base model capabilities and agent framework designs jointly shape performance in real-world environments. To facilitate future research, we make our benchmark and code publicly available at https://github.com/HKU-MMLab/UniClawBench.

25
LongE2V: Long-Horizon Event-based Video Reconstruction, Prediction, and Frame Interpolation with Video Diffusion Models

Recovering high-quality video from sparse event streams is a challenging task. Regression methods often blur textures, while existing generative models struggle with long-term stability. We propose LongE2V, a novel approach that leverages pre-trained video diffusion priors to jointly handle event-based video reconstruction, prediction, and frame interpolation. By fine-tuning a foundational video model, our approach achieves high data efficiency and superior perceptual quality. We introduce Autoregressive Unrolling and Adaptive Context Switching to mitigate temporal drift in extremely long sequences. We also propose Reencoding Alignment with Cross Residual Correction to ensure precise bidirectional consistency during frame interpolation. Furthermore, Event Voxel Density Augmentation ensures robustness across varying sensor resolutions. Extensive experiments on real-world benchmarks demonstrate that LongE2V outperforms state-of-the-art methods across all three tasks, exhibiting exceptional temporal coherence and zero-shot generalization. Project page: https://cdfan0627.github.io/LongE2V-page/

23
DrugGen 2: A disease-aware language model for enhancing drug discovery

Current computational approaches for drug design typically focus on generating molecules conditioned on specific targets or general molecular properties, often neglecting the influence of disease context on target behavior and therapeutic outcomes. To address this gap, we introduce DrugGen-2, a novel generative model that designs small molecules conditioned on both disease ontology and target protein sequences. DrugGen-2 was developed by fine-tuning a pre-trained GPT-2 model on a curated dataset of approved drugs linked to their diseases and targets, using a two-step strategy of supervised fine-tuning followed by reinforcement learning via group relative policy optimization (GRPO). This process was guided by reward functions optimizing for chemical validity, novelty, diversity, and high predicted binding affinity. When evaluated on five protein targets relevant to diabetic nephropathy, DrugGen-2 significantly outperformed baseline models (DrugGPT and DrugGen). It demonstrated a superior capacity to generate unique molecules, exhibited greater structural similarity to approved drugs, and achieved improved predicted binding affinities across all targets. Molecular docking analyses further supported these findings, identifying candidate ligands with strong binding potential, including compounds with predicted affinities (-9.917, -9.485, and -9.367) exceeding those of reference drugs such as enalapril for angiotensin-converting enzyme (-8.283). By integrating disease-specific context into molecular generation, DrugGen-2 advances AI-assisted drug discovery, offering a powerful tool for de novo design and drug repurposing that accounts for the complex interplay between diseases and molecular targets.

15
Enhancing In-context Panoramic Generation via Geometric-aware Pretraining

In this work, we present Canvas360, a two-stage framework for in-context panoramic generation that combines geometry-aware pretraining with downstream task-specific fine-tuning. To address the lack of large-scale, high-quality training data tailored to in-context panoramic tasks, we propose Canvas360Dataset, a collection of 1M high-quality paired panoramic samples for style transfer, inpainting, outpainting, and editing, enabling effective supervision across diverse in-context generation scenarios. On the modeling side, Canvas360 enhances text-to-panorama generation through parallel depth generation, velocity circular padding, and similarity loss regularization, enabling the model to learn geometry-aware representations, capture object distortion details, and improve geometric consistency and global coherence. Furthermore, empowered by strong panoramic priors, Canvas360 enables a unified in-context panoramic generation framework that supports diverse downstream tasks via token-level concatenation, surpassing prior methods in both task coverage and modeling flexibility. Extensive experiments show that Canvas360 improves panoramic image fidelity, achieving particularly strong performance on the panorama-specific FAED metric and competitive or leading results across the reported quantitative evaluations. More information can be found on our project page: https://zry000.github.io/Canvas360/

15
CineMobile: On-Device Image-to-Video Diffusion for Cinematic Camera Motion Generation

The growing demand for image-to-video creation on mobile devices has increasingly focused on cinematic motion effects like bullet time, dolly zoom, slow motion, etc. While Diffusion Transformers (DiTs) exhibit strong performance in video generation, their large parameter sizes and multi-step iterative denoising processes lead to substantial computational overhead, making efficient generation on mobile devices challenging. We propose CineMobile to bridge the gap. In particular, CineMobile adopts a three-fold optimization strategy: (1) leveraging a distillation-guided pruning approach to derive a compact yet efficient model that retains the essential video generation capabilities required for cinematic effects; (2) optimizing the compressed model into a 4-step generator via a combination of diffusion distillation and reinforcement learning; (3) employing a hybrid post-training quantization strategy to compress the model footprint to under 1 GB. Experimental results show that compared to the teacher model with the Wan 2.1 architecture, CineMobile achieves a 40x speedup in generation while maintaining comparable visual quality. Specifically, CineMobile generates 49-frame 480p videos with a per-step denoising latency of 0.6s on an NVIDIA H200 GPU and 20s on the MediaTek Dimensity 8400 Ultimate 5G platform, with a peak memory usage of 1.8 GB, demonstrating its practical applicability for mobile-based image-to-video creation.

10
Jet-Long: Efficient Long-Context Extension with Dynamic Bifocal RoPE

Modern LLMs are increasingly deployed in long-context applications such as retrieval-augmented generation, repository-level coding, and agentic workflows whose accumulated reasoning and tool traces routinely push the input an order of magnitude past the pretraining window, making zero-shot context extension the dominant deployment path for open-weight checkpoints. Most existing zero-shot methods fix a single rescaling factor up front, so an aggressive factor sacrifices short-context fidelity while a conservative one breaks down at long contexts. We propose Jet-Long, a tuning-free zero-shot method that pairs a local RoPE-faithful window with a long-range window whose rescaling factor adapts dynamically to the current sequence length, recovering the base model exactly at short inputs while extrapolating cleanly at long ones. An inclusion-exclusion attention merge and an on-the-fly RoPE correction rotation make the bifocal construction essentially free at inference; fused into a single CuTe kernel, long-context prefill reaches up to 1.39times FA2 throughput on H100 (approaching the Hopper-only FA4), and single-batch generation incurs le 4% overhead at every length. On Qwen3-1.7B/4B/8B up to 128K context, Jet-Long leads RULER by +4.79/+2.18/+2.03~pp over the strongest baseline at 1.7B/4B/8B, achieves the best overall accuracy on HELMET-RAG (a benchmark identified by HELMET as the most efficient predictor of downstream long-context performance) and attains the lowest PG-19 perplexity. Jet-Long also generalizes to hybrid attention architectures such as Jet-Nemotron for further long-context improvement without retraining, and remains hyperparameter-resilient for ease of deployment.

10
OpenCoF: Learning to Reason Through Video Generation

Reasoning has become a core capability for large models, especially when reliable decisions require understanding logical consequences. Recent video generation models offer a reasoning path distinct from previous Chain-of-Thought (CoT): reasoning can unfold through temporally connected frames, known as Chain-of-Frame (CoF) reasoning. However, existing video generators are primarily trained on general video corpora, still lacking diverse supervision and dedicated designs for CoF reasoning. To address this gap, we introduce OpenCoF, a framework comprising the OpenCoF-17K dataset, a reasoning video dataset spanning 11 task families, and Wan-CoF, a fine-tuned video model for studying whether diverse temporal supervision improves CoF behavior. Across four video reasoning benchmarks, Wan-CoF achieves considerable gains over the Wan2.2-I2V-A14B baseline. Building on this, we empirically explore more advanced designs for CoF capabilities, i.e., equipping the model with visual and textual reasoning tokens. This mechanism respectively captures low-level visual cues and high-level semantic priors for spatial and temporal reasoning. Through performance comparisons and attention analysis, we examine how these tokens contribute across model depth, denoising steps, space, and time. Our results suggest that stronger video reasoning requires both broad temporal supervision and explicit mechanisms for organizing intermediate reasoning state. We open-source the dataset, model, and code to facilitate future research on reasoning-oriented video generation.

9
Linear Attention Architectures: Mechanisms, Trade-offs, and Cross-Layer Routing

Self-attention lets each token retrieve information from the full context, but its quadratic cost in sequence length limits training and inference at long context. This paper presents a comparative study of softmax attention and four recent recurrent linear-attention architectures: DeltaNet, Gated DeltaNet, Kimi Delta Attention, and Gated DeltaNet-2. We express these mechanisms in a common recurrent-memory notation, making explicit how they differ in expressivity, memory decay, erase and write control, training throughput, and implementation complexity. Our experiments center on 350M-parameter models trained for 15B tokens, and include optimizer and learning-rate comparisons, hybrid-versus-pure stack comparisons, sequence-length runtime measurements, larger DeltaNet runs at 1.3B and 3B parameters, and a small set of downstream evaluations. The reported speed results measure training throughput and iteration time; we do not provide an empirical inference-speed benchmark. Within the reported 350M-parameter, 15B-token sweep, Kimi Delta Attention with Muon reaches the lowest final validation loss, a pure Gated DeltaNet stack trained with AdamW has the highest normalized training throughput, hybrid stacks generally improve loss at a throughput cost, and Muon consistently lowers final validation loss relative to AdamW in the matched architecture settings we evaluate. We introduce and evaluate lightweight cross-layer routing mechanisms for DeltaNet-style memories. The most natural DeltaNet-inspired formulation, forwarding a lower layer's delta-rule write error into the next layer's value target, does not improve over matched baselines. Routing into the aligned hidden stream and forwarding the write value instead yields a modest improvement in the matched runs we report: Cross-Layer Value Routing (CLVR) lowers final validation loss for both DeltaNet and Gated DeltaNet.

8
Remember When It Matters: Proactive Memory Agent for Long-Horizon Agents

In long-horizon tasks, decision-relevant state is often scattered across an expanding trajectory, while the action agent must surface it and act. As trajectories grow, task requirements, environment facts, prior attempts, diagnoses, and open subgoals can be buried in the context window or pushed beyond it, failing to influence decisions when needed. We call this failure mode "behavioral state decay". We study memory as an active intervention mechanism rather than passive retrieval. A separate memory agent runs alongside an unmodified action agent, updating a structured memory bank from the recent trajectory and deciding whether to inject a memory-grounded reminder or remain silent. The module is plug-and-play with frontier action agents and existing agent harnesses. Across Terminal-Bench 2.0 and τ^2-Bench, it improves pass@1 for both weaker and stronger action agents, with gains of +8.3 pp on Terminal-Bench and +6.8 pp on τ^2-Bench. Ablations show that selective intervention outperforms passive bank exposure, always-on injection, advisor-only guidance, and general retrieval. As an early step toward open-weight memory policies, we train Qwen3.5-27B on SETA using SFT and GRPO, improving validation reward and achieving partial transfer to Terminal-Bench.

6
A Sparse and Truncated State Vector Simulator for Peaked Circuits

In a class of quantum circuits known as peaked circuits, the goal is to predict the most probable bit string at the output of the circuit. Since these circuits are designed to have a sharp peak in their output distribution, in principle it should be possible to simulate them using a truncated state vector with a limited number of terms, or a fraction of the total probability mass. This approximate simulation can be carried out on a classical computer with a sparse representation that stores only the nonzero amplitudes of the state vector, in contrast to the dense representations that are common in most quantum simulators. For efficiency, all operations on the state vector should be vectorized to the furthest possible extent and, if available, hardware acceleration can also be used. This work describes how these requirements were met in an open-source implementation, and discusses its performance and limitations.

4
UP: Unbounded Positive Asymmetric Optimization for Breaking the Exploration-Stability Dilemma

Reinforcement learning (RL) has become the standard paradigm for enhancing the complex reasoning capabilities of large language models (LLMs). To achieve sample efficiency, modern RL frameworks rely on importance sampling (IS). However, these algorithms suffer from an exploration-stability dilemma. Pure IS often leads to catastrophic training instability, while standard clipping mechanisms used to mitigate this instability strictly constrain the policy update budget. By formalizing the concept of Probability Capacity (Cap), we reveal that conservative clipping structurally stifles exploration by prematurely truncating the update budget for correct but low-confidence reasoning paths. To break free from these constraints, we propose Unbounded Positive Asymmetric Optimization (UP), a universal and plug-and-play objective. UP theoretically restructures the optimization process by anchoring the policy to its current state via the stop-gradient operator. This asymmetric design unleashes unclipped, stable gradients for positive advantages to maximize exploration, while maintaining standard clipping safeguards for negative advantages to prevent training instability. Furthermore, our formulation readily extends across different optimization granularities, including token-level (GRPO, DAPO) and sequence-level (GSPO) frameworks. Extensive experiments demonstrate that UP enhances exploration capacity and achieves superior reasoning accuracy across diverse RL algorithms (DAPO, GSPO, and GRPO), model architectures (Dense, MoE, and vision-language), and training modalities (language and multimodal), validating UP as a truly universal plug-and-play enhancement for RL-based training.

4
ARDY: Autoregressive Diffusion with Hybrid Representation for Interactive Human Motion Generation

Generating realistic 3D human motions in real-time within interactive applications is key for animation, simulation, and humanoid robotics. While recent offline motion generation approaches offer precise control via text and kinematic constraints, they lack the inference speed required for interactive settings. Conversely, existing online methods enable real-time synthesis but often sacrifice controllability or struggle with complex text semantics and long-horizon goals due to limited context windows. In this work, we introduce ARDY, a streaming generation framework that bridges this gap by enabling high-fidelity motion generation controllable via online text prompts and flexible kinematic constraints. ARDY employs a hybrid representation that combines explicit root features with a latent body embedding, balancing precise trajectory control with efficient generative learning. We propose a two-stage autoregressive transformer denoiser that features variable history context and supports conditioning on flexible, long-horizon kinematic constraints. By training on a large-scale motion capture dataset and being directly conditioned on text labels and kinematic constraints sampled from ground truth poses, ARDY natively learns controllable generation that supports online prompting and flexible long-horizon goals. Extensive evaluations on the HumanML3D benchmark and the large-scale, high-fidelity Bones Rigplay dataset demonstrate ARDY's high motion quality and constraint adherence, validating the efficacy of our key architectural decisions. Finally, we demonstrate the method's practical versatility through an interactive demo featuring dynamic text control, diverse keyframe pose constraints, path following, and interactive locomotion control via mouse and keyboard. Supplementary video results, code, and model releases can be found at https://research.nvidia.com/labs/sil/projects/ardy/.

4
SAM-MT: Real-Time Interactive Multi-Target Video Segmentation

Modern Video Object Segmentation (VOS) involves tracking and segmenting user-specified targets. While recent approaches have achieved remarkable performance in single-target scenarios, extending them to multi-target settings typically involves replicating the single-target processing for each individual object, resulting in reduced frame rates (FPS) with unbounded latency as target count increases. Built upon Segment Anything 2 (SAM2), we propose SAM-MT, which addresses this by transforming the model into an interactive framework for real-time Multi-Target video segmentation. SAM-MT uses explicit queries to represent different individual targets, in parallel with a shared representation for global context. It employs decoupled masked attention to keep individual identities distinct from cross-target interference, and sparse memory for stable temporal evolution, along with specialized strategies for occlusion handling and overlap prevention. SAM-MT successfully decouples latency from the number of targets, achieving real-time speed on par with single-target baselines (>36 FPS for 10 targets) while maintaining SAM2's robust video segmentation performance.

3
A Quantized Native Runtime for On-Device Semantic Audio Generation

Semantic audio applications increasingly require controllable generation on commodity and embedded hardware rather than through framework-heavy datacenter stacks. We present aria, a dependency-free native runtime that runs the complete text-to-music pipeline of Stable Audio~3 (SA3) on ordinary GPUs, CPU-only machines, and a Raspberry~Pi~5, with no Python or deep-learning framework underneath. Our main contribution is a study of quantization: running the model at lower numerical precision to fit tight memory budgets, saving memory in place rather than adding to it. Because the runtime owns every internal tensor, it also exposes activation steering, a low-cost way to steer what the model generates. We judge the quality cost with three independent measures of the output (prompt adherence, overall audio quality, taste preservation), each compared against the ordinary variation between random seeds. Eight-bit precision shows no measurable quality loss on any measure while sharply cutting memory, and it is the fastest mode on the GPU; four-bit adds a small, bounded cost but shrinks the footprint enough to run the 1.2-billion-parameter model on an 8\,GB Pi. Against the official implementation, aria matches or exceeds generation speed and starts about seven times faster. A case study of the steering interface generates music carrying taste associations (sonic seasoning), with genuine but bounded control for a subset of attributes. These results make a compact, quantized runtime with built-in control a practical basis for on-device semantic audio in Internet-of-Sounds settings. The aria runtime is released at https://github.com/matteospanio/aria.

3
PhyMRI-SR: Toward Physics-Aware MRI Image Super-Resolution

Magnetic resonance imaging (MRI) super-resolution is vital for improving diagnostic accessibility, yet most methods treat it as a deterministic mapping from a fixed low-resolution input to a high-resolution target. This overlooks a key property of MRI acquisition physics: spatial resolution and signal-to-noise ratio (SNR) are inherently coupled, making any given low-resolution scan merely one of many possible realizations under varying acquisition trade-offs. We rethink MRI super-resolution as a physics-aware reconstruction problem, in which the goal is to identify the optimal resolution-SNR configuration and then super-resolve it to obtain high-quality MRI results. A key implication of this formulation is that MRI resolution becomes dynamic rather than fixed. To handle such resolution-heterogeneous inputs, we adapt 2D Gaussian Splatting (2D GS) to MRI by formulating reconstruction as a coordinate-based, resolution-agnostic rendering problem. To further enhance fidelity, we introduce three innovations: (1) a prior-aware Gaussian representation that combines an Anatomical Structure Prior for tissue-specific kernel initialization with an Imaging System Prior that captures hardware characteristics via a covariance dictionary; (2) a physics-constrained signal modeling scheme that predicts intrinsic tissue parameters (proton density rho and effective relaxation rate R2) and synthesizes intensities through governing physical equations, ensuring biophysically plausible contrast; and (3) a meta-learning framework that alleviates paired-data scarcity by pretraining on simulated data and adapting to real-world conditions. Extensive experiments on dynamic-resolution datasets and standard benchmarks demonstrate that our method achieves state-of-the-art performance, highlighting its strong potential for clinical deployment.

3
Flash-BoN: Instant Drafts for Inference-Time Scaling in Diffusion Models

Inference-time scaling for text-to-image generation has progressed from simple Best-of-N (BoN) sampling to guided search methods that verify and steer candidate trajectories at intermediate denoising steps. These approaches focus on when and how often to verify during denoising but largely treat the cost of generation itself as fixed. Moreover, the standard practice of comparing methods by number of function evaluations (NFEs) counts only denoising forward passes and ignores verifier overhead, which can distort efficiency rankings. We show that under wall-clock evaluation, simple BoN already matches or outperforms several guided search techniques, suggesting that compute is better spent on broader exploration than on repeated intermediate verification. This motivates Flash-BoN, which generates a large pool of inexpensive draft candidates by combining three complementary acceleration knobs: timestep truncation, layer skipping, and activation proxies into a single configuration optimized once per model. An efficient multi-stage verification procedure then identifies the most promising draft, which is refined at full quality. Across three benchmarks and three model scales, Flash-BoN consistently outperforms all baselines under fixed wall-clock budgets, with gains that grow at larger model scales (+8% AUC). We further show that our strategy combines well and improves existing orthogonal techniques such as reflection-based prompt optimization (+16% AUC). The gains correlate with increased candidate diversity, which also enables draft-guided selection to accelerate RL post-training convergence.

3
Can Dialects Be Steered Like Languages? Sparse Neurons and Distributed Directions in Arabic LLMs

A key challenge in Arabic NLP is the scarcity of dialectal data relative to Modern Standard Arabic (MSA), causing LLMs to overproduce MSA and struggle with dialectally accurate generation. From an interpretability perspective, this raises a fundamental question: where and how are dialectal features encoded within model internals, and can these representations be leveraged to improve dialect generation without fine-tuning? This study investigates two complementary inference-time approaches that serve simultaneously as interpretability probes and control mechanisms. First, we conduct a neuron-level analysis, identifying sparse neuron populations that encode dialect-specific features and showing that amplifying or suppressing these neurons can steer model outputs toward target dialects. Second, motivated by the entanglement of dialectal features at the single-neuron level, we apply a vector-steering approach that extracts dialect-specific activation directions and injects them during inference. Together, these methods illuminate the geometry of dialectal knowledge in Arabic LLMs and offer a principled, interpretability-grounded framework for dialect control without requiring dialect-specific fine-tuning.

2
PAST-TIDE: Prototype-Anchored Statement Tuning with Topic-Invariant Normalization for Stance Detection

We introduce PAST-TIDE, our stance detection system addressing both subtasks of the StanceNakba Shared Task at NakbaNLP@LREC-COLING 2026. The main idea is statement tuning. We redefine stance as cloze-style masked language modeling (MLM), letting a verbalizer map label words to stance categories through the pre-trained MLM head rather than appending a randomly initialized classification head. We complement this with prototypical contrastive learning, which uses learnable class prototypes for batch-size independent contrastive training, and topic-conditional layer normalization for cross-topic Arabic stance detection. PAST-TIDE achieves macro-F1 scores of 0.75 for Subtask A and 0.74 for Subtask B on the official leaderboard, indicating that minimal architectural additions to a pre-trained model can remain competitive in low-resource settings.

1
CausalDS: Benchmarking Causal Reasoning in Data-Science Agents

Large language models (LLMs) increasingly act as integrated data-science agents, combining abstract reasoning with advanced tool use. Yet the relevant benchmark landscape largely divides into symbolic causal reasoning benchmarks without realistic data analysis or data analysis benchmarks without a principled causal data-generating structure. Furthermore, existing causal evaluation datasets are often restricted to curated examples from existing sources, with diversity coming from limited templatized variations rather than from systematic generation of novel synthetic causal structures. We introduce CausalDS, a benchmark for evaluating causal reasoning in agentic data-science workflows. Each benchmark instance is a scene consisting of a sampled structural causal model (SCM) with generated observational data and an accompanying synthetic natural-language story grounded in a realistic domain. We optionally ground the composition of the benchmark components in empirical distributions obtained from real-world datasets, thus retaining empirical structure while reducing the "causal parrot" risk through completely synthetic generation. From each scene, we then derive tasks spanning all three of Pearl's rungs, with typical data-science prediction tasks appearing as Rung 1. Most tasks include a data science coding component, where the model typically needs to use several tools to arrive at the final answer due to the frequent presence of imperfect observations, which are generated by an observation model. Additionally, recognizing when a question admits no warranted answer and abstaining is treated as a first-class scored outcome. The benchmark thus jointly evaluates symbolic causal reasoning, data science, uncertainty quantification, abstention, and tool use/coding.

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05

PRODUCT HUNT

05.00
PRODUCT HUNT

Product Hunt - July 11, 2026

Product Hunt Daily Feed: Featuring noteworthy tech launches.

San Fran Sim icon
San Fran Sim

A startup tycoon game

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Cloudflare Drop icon
Cloudflare Drop

Drop your folder in browser & deploy instantly on Cloudflare

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Breathing In Labour icon
Breathing In Labour

A distraction-free breathing app for labor preparation

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Effects SDK icon
Effects SDK

AI video & audio effects SDK for real-time apps

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SoundPipe icon
SoundPipe

SoundPipe is a mixing board for your Mac

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ChatGPT Work icon
ChatGPT Work

Partner for your most ambitious work

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Kickbacks CLI icon
Kickbacks CLI

The terminal and Mac menu bar companion for Kickbacks.ai

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Basedash SCIM icon
Basedash SCIM

Your org changes. Access keeps up.

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Sim icon
Sim

Open-source workspace for AI agents and workflows

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ChatCut icon
ChatCut

Your AI video editor in ChatGPT, desktop, and web

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PlugThis icon
PlugThis

Create your own Chrome Extensions by chatting with AI

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StoryChief Connect icon
StoryChief Connect

Publish content from Claude to your website and socials

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Yasmine Works icon
Yasmine Works

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

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Mispher icon
Mispher

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

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Juicy - Mac Battery App

Beautiful Mac battery alerts, health insights & charge limit

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ConnectMachine 2.0

AI digital business card that remembers everyone you meet

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Scarlett.

Your AI Co-Worker in Slack & iMessage

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

Multimodal reasoning model built for agentic tasks

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RepStandard

Computer vision counts your reps in real time

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GPT-5.6

A new standard for intelligence and efficiency

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Ship OS by Notion

The agent-native way to ship software

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Native SDK

Toolkit for building native desktop apps

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Auriko

Trading desk for LLM calls

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ARKAD Wallet

Control your budget with voice

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The competitive intelligence agent

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Timbal AI

Build AI agents, workflows, and apps in one stack

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Opper AI

The european AI gateway for agents

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Lispr

Hold a key, speak, and Lispr writes it anywhere

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Toyo

Exec assistant who lives in iMessage and calls your phone

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Monogram AI

AI with a visual and interactive interface

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Just Ask by SEORCE icon
Just Ask by SEORCE

Talk to your SEO & AI Visibility data on WhatsApp.

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Coasty

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

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Constellation Gate AI

Prompt injection and token savings - #1 in benchmarks

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Perfai Security icon
Perfai Security

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

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Tasks.txt icon
Tasks.txt

Plain text task manager for macOS

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GPT-Live icon
GPT-Live

Full-duplex voice for ChatGPT

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

OSS IDE for controlling AI coding agents with built in loops

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Knowledge Atlas by Fini icon
Knowledge Atlas by Fini

The self-learning knowledge base that improves itself

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agents-cli

The CLI your coding agent uses to ship agents

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Eodly icon
Eodly

Know what your team actually shipped today

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ExploreYC

Open-source API for Y Combinator & a16z company data

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Willow Frontier Pro

The fastest, most accurate dictation model in the world

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Link Preview API

Free API to get Open Graph data, title & images for any URL

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LemonLime

Automates your existing workflows with a single prompt.

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IvyForms

A WordPress form builder for real workflows

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Notion Agents iOS app

Chat with Notion Agents anytime

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PopTask for Apple

Turn to-dos into scheduled tasks

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New small business tools by IFTTT icon
New small business tools by IFTTT

Run your business with HubSpot, Figma, and more

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Compendium

Keeping your team, agents, and data on one page

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Jamboree

Multiplayer synthesizer

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06

TECHMEME

06.00
TECHMEME

Techmeme - July 11, 2026

Techmeme Digest: Major tech headlines and industry conversations.

US software development job postings on Indeed have grown by ~15% since the launch of Claude Code in February 2025, while overall job postings fell by 7% (Guillermo Gallacher/Indeed Hiring Lab)
Source: TechmemePublished: Jul 11, 2026

Guillermo Gallacher / Indeed Hiring Lab : US software development job postings on Indeed have grown by ~15% since the launch of Claude Code in February 2025, while overall job postings fell by 7% —  Agentic AI may be flipping the relationship between AI exposure and job posting growth.  —  Key points:

How members of the extremist group Boko Haram are using AI chatbots to design explosives, fix or upgrade weapons, and brainstorm attack ideas (New York Times)
Source: TechmemePublished: Jul 11, 2026

New York Times : How members of the extremist group Boko Haram are using AI chatbots to design explosives, fix or upgrade weapons, and brainstorm attack ideas —  A.I. chatbots are not just a propaganda tool for violent extremists but are aiding in bomb construction and attack planning, new research finds.

SK Hynix's historic US stock market listing is a bet that the AI boom is breaking the memory chip industry's decades-long boom-and-bust cycle (Bloomberg)
Source: TechmemePublished: Jul 11, 2026

Bloomberg : SK Hynix's historic US stock market listing is a bet that the AI boom is breaking the memory chip industry's decades-long boom-and-bust cycle —  South Korean memory chipmaker SK Hynix Inc. just pulled off the largest public listing by a foreign company in US market history.

An analysis of 1M+ social media posts from April 24 to June 30: ~25% of longform posts with 250+ words were fully AI-generated; on LinkedIn, the figure was 41% (Max Spero/Pangram Labs)
Source: TechmemePublished: Jul 11, 2026

Max Spero / Pangram Labs : An analysis of 1M+ social media posts from April 24 to June 30: ~25% of longform posts with 250+ words were fully AI-generated; on LinkedIn, the figure was 41% —  A first look at analytics from our Pangram Chrome extension  —  Two months ago, we launched our Chrome extension to help combat the rising slop problem on social media.

Sources detail the Trump admin's heavy-handed intervention to aid Intel, including pushing it to expand local capacity and pressuring Apple to use Intel's fabs (Robbie Whelan/Wall Street Journal)
Source: TechmemePublished: Jul 11, 2026

Robbie Whelan / Wall Street Journal : Sources detail the Trump admin's heavy-handed intervention to aid Intel, including pushing it to expand local capacity and pressuring Apple to use Intel's fabs —  The chip maker's business is improving, with government twisting the arms of potential customers and partners including Apple and Nvidia

Sources: activist investor Elliott has built a large stake in car insurance software maker CCC, which is exploring a potential sale and has a ~$3.5B market cap (Bloomberg)
Source: TechmemePublished: Jul 11, 2026

Bloomberg : Sources: activist investor Elliott has built a large stake in car insurance software maker CCC, which is exploring a potential sale and has a ~$3.5B market cap —  Elliott Investment Management has built a large stake in car-insurance software provider CCC Intelligent Solutions Holdings Inc. …

OpenAI's head of safety, Johannes Heidecke, is leaving as OpenAI integrates its research and safety teams; Mia Glaese will become VP of research and safety (Maxwell Zeff/Wired)
Source: TechmemePublished: Jul 11, 2026

Maxwell Zeff / Wired : OpenAI's head of safety, Johannes Heidecke, is leaving as OpenAI integrates its research and safety teams; Mia Glaese will become VP of research and safety —  Johannes Heidecke's departure comes as OpenAI tries to further integrate its research and safety teams.

Thinking Machines says its mission is to build AI that people and organizations can shape and make their own, and that "extends human will and judgment" (Thinking Machines Lab)
Source: TechmemePublished: Jul 11, 2026

Thinking Machines Lab : Thinking Machines says its mission is to build AI that people and organizations can shape and make their own, and that “extends human will and judgment” —  The mission of Thinking Machines is to build AI that extends human will and judgment.  —  Artificial intelligence …

SK Hynix CEO Kwak Noh-Jung says the memory industry is heading for its worst-ever supply shortage in 2027 and demand will outstrip supply beyond 2030 (Reuters)
Source: TechmemePublished: Jul 10, 2026

Reuters : SK Hynix CEO Kwak Noh-Jung says the memory industry is heading for its worst-ever supply shortage in 2027 and demand will outstrip supply beyond 2030 —  SK Hynix (000660.KS) Chief Executive Kwak Noh-jung said the global memory industry is heading for its worst-ever supply shortage in 2027 …

Meta says it will discontinue a feature that allowed users to generate images in Meta AI using public Instagram accounts, following days of criticism (Corbin Bolies/Variety)
Source: TechmemePublished: Jul 10, 2026

Corbin Bolies / Variety : Meta says it will discontinue a feature that allowed users to generate images in Meta AI using public Instagram accounts, following days of criticism —  Meta said it will discontinue an AI feature that allowed users to generate images using public Instagram accounts following days of criticism …

In response to Apple's trade secret theft lawsuit, OpenAI says "we have no interest in other companies' trade secrets" (Marcus Mendes/9to5Mac)
Source: TechmemePublished: Jul 10, 2026

Marcus Mendes / 9to5Mac : In response to Apple's trade secret theft lawsuit, OpenAI says “we have no interest in other companies' trade secrets” —  OpenAI has issued a formal statement in response to Apple's lawsuit accusing the company of trade secret theft.  Read it below.  —  OpenAI denies Apple's allegations

CISA says weak security controls around the use of public GitHub repos allowed a contractor to accidentally leak private cloud access keys and other credentials (Eric Geller/Cybersecurity Dive)
Source: TechmemePublished: Jul 10, 2026

Eric Geller / Cybersecurity Dive : CISA says weak security controls around the use of public GitHub repos allowed a contractor to accidentally leak private cloud access keys and other credentials —  The agency's blog post came as lawmakers pressed the agency for answers.  —  Weak security controls around the use …

Bluesky interim CEO Toni Schneider becomes the company's permanent CEO, four months after succeeding Jay Graber (Lucas Ropek/TechCrunch)
Source: TechmemePublished: Jul 10, 2026

Lucas Ropek / TechCrunch : Bluesky interim CEO Toni Schneider becomes the company's permanent CEO, four months after succeeding Jay Graber —  In March, Bluesky's longtime CEO, Jay Graber, stepped down from that role to become its chief innovation officer.  Graber was immediately succeeded by Toni Schneider …

A US NLRB judge rules that Atlassian had illegally fired an employee in 2023 for pushing back against manager layoffs, and orders reinstatement and compensation (Noam Scheiber/New York Times)
Source: TechmemePublished: Jul 10, 2026

Noam Scheiber / New York Times : A US NLRB judge rules that Atlassian had illegally fired an employee in 2023 for pushing back against manager layoffs, and orders reinstatement and compensation —  A federal labor law judge determined last week that the software maker Atlassian had illegally fired an employee who questioned company policy changes.

Apple says OpenAI leadership "normalized" misconduct and OpenAI's hardware business is "rotten to its core by its illegal reliance" on stolen trade secrets (Sarah Perez/TechCrunch)
Source: TechmemePublished: Jul 10, 2026

Sarah Perez / TechCrunch : Apple says OpenAI leadership “normalized” misconduct and OpenAI's hardware business is “rotten to its core by its illegal reliance” on stolen trade secrets —  Apple filed a lawsuit Friday against OpenAI over allegations of trade secret theft and breach of contract.

07

STARTUP ARCHIVE

07.00
STARTUP ARCHIVE

Startup News - July 11, 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 11, 2026

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

现代环境让大脑不堪重负

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

权威型领导人推动员工安静辞职

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

人形机器人成功完成远超手术

根据发表在《自然》期刊上的一项研究,人形机器人成功完成切除活体动物胆囊的手术。人形机器人并不具有自主能力,它们并不会取代医生,而是由外科医生远超操作。远程操控的人形机器人为活猪完成两例微创胆囊切除手术。如果该方法被证实适用于临床,外科医生就可以利用人形机器人,在资源有限、无法安装专业且昂贵手术机器人的小型医院和诊所远程开展机器人辅助手术。人形机器人相比专业手术机器人更便宜,占用的空间更小,而且易于部署,能部署到从偏远地区到战场甚至太空。研究人员利用宇树科技的 G1 人形机器人。最便宜的 G1 基础型号起售价 13,500 美元,配置灵活机械手以及运费之后费用会超过 6.7 万美元。相比下 Intuitive Surgical 的达芬奇手术机器人费用在 50 万到数百万美元之间。宇树科技机器人的缺陷是需要频繁重校准,耗时更长。

长征十号乙火箭成功回收

长征十号乙运载火箭于 7 月 10 日 12 时 15 分在海南商业航天发射场发射升空,火箭一二级分离约 6 分钟后,一子级垂直返回,在海上回收平台通过网系捕获方式成功回收。此次回收的一子级预计将在今年年底前完成复用飞行。长征十号乙运载火箭由中国航天科技集团一院抓总研制,是 5 米直径两级串联构型的大型液体运载火箭。火箭芯一级沿用长征十号甲运载火箭一子级状态,采用液氧煤油推进剂,芯二级采用液氧甲烷推进剂;全箭起飞推力约 890 吨,起飞重量约 760 吨;首飞箭全箭长度约 63 米,重复使用状态下近地轨道运载能力 16 吨。该火箭可满足低轨卫星互联网星座部署、大型商业卫星发射等各类任务需求,复用状态下可大幅降低发射成本。

OpenRouter 上近五成美国公司使用中国 AI 模型

OpenRouter 的数据显示:美国企业每周调用中国 AI 的占比按代表数据处理量的“词元”统计,自 2 月起突破30%,峰值达 46%。相比下 2025 年上半年仅 4% 左右。背景是美国本土 AI 使用成本升高。美国OpenAI 及美国 Anthropic 等高端模型的性能不断提高,可自动处理长时间、高复杂度的任务。但随着企业在内部业务、面向客户服务中广泛使用 AI,词元的消耗量增加,使用成本增加。OpenRouter 平台拥有 800 万用户,以工程师群体为主,每输出 100 万词元(约对应 70 万英文词汇)的收费标准方面,Anthropic 的“Claude Opus 4.7”收费 25 美元,而最热门的 DeepSeek V4 Flash 仅收费 0.18 美元,成本不足前者的 1%。

LinkedIn 和 X 上四分之一的长文是 AI 撰写的

AI 检测平台 Pangram 的研究显示,LinkedIn 和 X 等平台上四分之一的长文完全是 AI 撰写的。Pangram 对长文定义是包含至少 250 个字符,对 LinkedIn、Medium、Substack、X 和 Reddit 等平台帖子的分析显示,长文受 AI slop 影响最大,这些平台四分之一长文完全是 AI 生成,这里的“完全”并不包含用 AI 润色文字。研究显示,LinkedIn 的长文 AI 生成比例最高,达到了 41%,该平台包含 50-250 字的帖子 AI 生成比例也高达 30%。LinkedIn 上 55.2% 的长文是人类撰写的,4.3% 是在 AI 帮助下撰写的。X 上四分之一的推文完全由 AI 撰写,23.2% 的推文是在 AI 辅助下完成的,52.7% 的推文则是由人类撰写。Medium 上约三分之一的文章是 AI 撰写或 AI 辅助撰写,Substack 上有 21.9% 的文章是 AI 撰写或 AI 辅助撰写。Reddit 上 11.6% 的帖子是 AI 撰写或 AI 辅助撰写,98.1% 的评论是人类撰写的。

Google 搜索量在世界杯期间创下纪录

Google 表示世界杯期间其搜索量创下历史纪录,每秒查询量的峰值是在阿根廷与埃及比赛中间射入制胜球之后。 这一里程碑式的成就正值 Google 试图证明其传统搜索引擎在 AI 聊天机器人日益普及的时代仍能保持其重要性之际。Google 仍然占据着九成的搜索市场份额,其股价过去一年翻了一番多,第一季度营收增速是自 2022 年以来最快的。Google 表示赛后搜索量最高的查询是“阿根廷 vs 埃及(argentina vs egypt)”。在全球范围内,用户还搜索了“阿根廷 vs 哥伦比亚”和“梅西在世界杯上进了多少球”,以及“比赛中一名球员撞击其他球员叫什么”和“这是梅西的最后一届世界杯吗”。

美国国会调查美国公司使用中国 AI 模型

美国国会议员正在调查美国公司使用中国 AI 模型。议员们担心审查、安全风险,以及美国 AI 公司的模型是否过于昂贵或限制过多。Cursor 和 Airbnb 等公司是调查重点。众议院国土安全委员会和众议院中国问题特别委员会致函 Cursor 和 Airbnb 询问他们使用中国 AI 模型的风险。美国部分政府部门已禁止使用 DeepSeek 等中国模型,但美国公司并未被禁止使用中国 AI 模型。有很多美国公司一直用中国 AI 模型降低使用成本,其中就包括了即将被 SpaceX 公司以 600 亿美元收购的 Cursor 公司,该公司的 Composer 2 模型是基于北京月之暗面(Moonshot AI)的 Kimi 模型。美国国会还在调查美国公司的开源 AI 模型战略,确保美国公司不需要在昂贵或受到限制的本国模型与廉价且功能强大的中国 AI 模型之间做选择。

父母的手机上瘾影响与子女的关系

根据发表在《Frontiers in Psychology》期刊上的一项研究,父母对屏幕和智能手机的上瘾可能会对孩子的发育和心理造成长期的负面影响。研究显示,对设备管理不当的看护者可能会加剧“不安全依恋”,使得人际关系变得更加焦虑和回避。这项研究基于美国 600 名 12-17 岁的未成年人的调查,儿童表示他们感到被盯着屏幕的父母边缘化或忽视。研究人员表示,缺乏安全依恋的孩子可能会缺乏自信或表现出较低的自我意识;在人际关系和亲密关系方面表现出困难;并不愿意承担取得成功所必需的风险。

继父用 11 岁继女的照片生成数千张 CSAM 图像

拟议中的集体诉讼披露了一起使用 xAI 的 Grok 生成数千张 CSAM(child sex abuse materials)图像的案件。 一名女孩的继父利用一张继女在 11 岁时拍摄的照片使用 Grok 生成了 7000 张 CSAM 图像。诉讼称 Grok 在整个过程中没有标记任何有害行为。Grok 的儿童安全系统只在这名男子输入“gang rape”后才介入,向 NCMEC 发送了举报,NCMEC 随后向执法部门报告了这起案件。法律规定 CSAM 被标记后需要共享 IP 等用户信息。但 xAI 被指控拒绝合作。最终警方通过搜查令扣押了继父的设备随后将其逮捕。继父还被指控网上出售这些 CSAM 材料,换取其他儿童性犯罪者的 CSAM 材料。该男子获准保释两天后便开枪自杀,而他的继女则饱受焦虑和抑郁的折磨,诉讼称她的生活在一夜之间被摧毁了,生活变成了一场噩梦。

中国使用无人机救助被洪灾困住的灾民

广西南宁横州市爆发了严重洪灾,网上视频显示,救援人员借助无人机,转移被困群众。视频中的无人机是深圳大疆的农业无人机 FlyCart 100,其载重量为 85 公斤,能悬挂起正常体重的民众。这其实并非第一次用无人机救灾民。去年中国就有农业无人机从洪水中救出被困男子的案例。无人机已经在深圳等城市广泛用于外卖和快递。去年 3 月,中国民用航空局批准亿航智能和合肥合翼航空两家公司开展商用载人无人机服务。

美国部分地区居民多达三成对红肉过敏

根据发表在《Morbidity and Mortality Weekly Report》期刊上的一项研究,美国部分地区居民多达三成携带导致红肉过敏的抗体。这一比例远超此前的预计,意味着红肉过敏的美国人比以前认为的多得多。该过敏反应被称为α-半乳糖综合征(alpha-gal syndrome),其特点是发作缓慢,通常在餐后 2-6 小时之间出现,使得很难将过敏反应与食物联系起来。症状包括荨麻疹、恶心、呕吐、腹部绞痛、腹泻,或严重过敏反应如呼吸困难、喉咙紧缩、舌头或嘴唇肿胀、头晕、脉搏微弱和血压下降等迹象。研究人员分析了美国 10 个州 3000 份献血样本,结果显示田纳西州、阿肯色州等五个州的抗体比例最高达到 31.2%,平均 24%。

Euclid 望远镜发现已知最遥远的类星体

ESA 欧几里得太空望远镜(Euclid)发射升空后,除了肩负绘制宇宙三维结构、探究暗物质与暗能量本质的主要任务外,也展现搜寻早期宇宙天体的强大能力。最新研究利用欧几里得首批巡天资料,成功发现 34 个红移大于 6.5 的星体,其中 27 个位于红移 7 以上,并确认 EUCL J172902.75+641018.1 的红移高达 7.77,成为目前已知距离最遥远的类星体。类星体是由星系中心超大质量黑洞吸积大量气体所产生的极高亮度天体,其亮度甚至可超越整个宿主星系,因此能作为探测早期宇宙的重要灯塔。

2026 年二季度 PC 出货量下滑 5%

由于内存危机,2026 年二季度 PC 出货量 6820 万台同比下滑 5%。IDC 警告如果这一情况继续下去小型供应商可能会倒闭。联想等大型供应商因为能提前与内存制造商协商供货,因此状况还比较好。联想最近公布的财报显示,其 PC 和智能设备业务收入增长了 26%。IDC 警告称,随着苹果、戴尔、惠普和联想等行业巨头利用其规模优势确保内存供应并挤压小型竞争对手,厂商整合的风险在增加。行业巨头已做好从小型竞争对手手中夺取市场份额的准备,可能会迫使实力较弱的企业进行合并或退出市场。

OpenMandriva 项目发生破坏事件

OpenMandriva 项目发生一起破坏事件,开发者出于透明原则公布了事件经过:有多个新人加入了项目团队,其中之一是 Mumble 项目的 Davide Beatrici,他比较知名因此获得了团队的信任,获得了管理员权限。同时加入的还有 Beatrici 的朋友。但他的朋友在发行版的 Matrix 聊天室对其他人进行了攻击和辱骂,导致其他人退出。此人最终被踢出。在朋友被踢出之后 Beatrici 也离开了项目。鉴于此开发者切断了他维护的镜像连接。但此举却激怒了 Beatrici,他滥用其管理权限删除了 GitHub 上的部分库,在 cooker 库中发布了一个空包,导致所有 gnome 和 cosmic 软件包失效,破坏使用 gnome 或 cosmic 的用户的系统。OpenMandriva 项目目前正致力于恢复已删除的库,恢复失效包的功能。项目披露这一情况旨在提醒开源社区注意 Davide Beatrici。

Cinnamon 下个版本将支持 Wayland

Linux Mint 发行版项目开发的 Cinnamon 是少数仍然不支持 Wayland 只兼容 X11 的桌面环境。但这种情况即将发生改变。Linux Mint 项目宣布,他们在支持 Wayland 上投入了大量精力,如今 Wayland 支持已经相当稳定,足以媲美 X11,因此 Wayland 支持不再被视为实验性,下个版本的 Cinnamon 将同时支持 Wayland 和 X11。Cinnamon 的下一个版本 v6.8 将包含在计划于圣诞节发布的 Linux Mint 新版本中。

美国成年人肥胖率突破四成

研究人员分析了 1999-2023 年近 8700 名美国居民的健康数据,这些居民包括 20 岁以下的青少年和 20 岁以上的成年人。结果显示:成年人的肥胖率从 30% 增至 41%,重度肥胖率从 5% 增至 10%,腹部脂肪堆积过多的腹部肥胖率从 48% 增至 61%;青少年的总体肥胖率上升了 30%,重度肥胖率上升 50%,腹部肥胖率增长了三倍。分析还发现,肥胖率存在​​性别差异:女性重度肥胖率(13%)和腹部肥胖率(70%)都高于男性(分别为 7% 和 51%)。研究人员指出,这种差异可能是由于女性一生中激素水平的变化比男性更为显著。此外,非拉丁裔黑人的肥胖率高于其他人群。

德国华人性侵案成员被判 5 年监禁

柏林地方法院周三裁定一名 32 岁的原籍中国的男子犯有协助实施三起严重强奸及严重性胁迫罪,并判处该男子总计五年监禁。这名男子是一个交流有关强奸被麻醉女性信息的聊天群组的八名成员之一。该被告(现已获得医学博士学位)在群组内多次就如何麻醉女性提供医学建议。2024 年 1 月 7 日,一名女性在美因河畔法兰克福遭另一名涉案男子强奸。在此前一天,被告在明知对方有强奸意图的情况下,提供了关于麻醉的具体建议,而该男子随后采纳了这些建议。法庭还认定被告在 2020 年和 2021 年期间曾三次性虐待其未婚妻。这些行为发生在北京的一家酒店客房内,受害女性在这些事件中同样处于被麻醉状态。主审法官将这些罪行定性为严重犯罪。他指出,这些行为体现了极端的厌女倾向,因为涉案女性被贬低为满足性欲的客体。

Waymo 员工看到青少年乘客玩玩具枪后报警

两名放暑假的 15 岁少年体会到了 Waymo 在时刻监视你的含义。他们在车内喝酒,用玩具枪对着其它汽车射水凝胶珠。一名 Waymo 员工当时正远程监控着这辆车,在看到车内有疑似枪支以及正在开枪之后,骗两名青少年说 Waymo 出租车出现了机械故障,需要停车,同时致电警方说有人在开枪。汽车停在了一家购物中心的停车场,当时五名警察已在那里等候搜查。搜查的结果是他们玩的是玩具枪,子弹是水凝胶珠。两名乘客被拘留后被释放交由其父母监护。检方正在审查可能的指控,包括未成年饮酒和从事威胁性行为。

大多数 AI slop 应用会很快停止维护和抛弃

由于涌入了大量低质量的 AI 生成应用,Linux 软件仓库 Flathub 于五月底宣布停止接受此类 AI 生成应用。审核递交到 Flathub 的应用是一个吃力不讨好的工作,当审核者试图与 AI 生成应用递交者沟通时,却发现对方使用的是 AI 智能体,回复都是答非所问。一位审核者对此评论说,“纯粹是噪音和浪费时间”。从 2026 年 1 月开始,Flathub 将此类应用打上了 AI Slop 的标签。知名 Linux 开发者 Evangelos“GeopJr”Paterakis 调查了 过去半年标记为 AI slop 的 120 个应用,32 个仍在维护,88 个已被抛弃,大多数都彻底删除了,部分应用在递交到 Flathub 后就停止了维护。

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