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ISSUE 0929
FRI, JUL 17, 2026
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01

AI DIGEST

UPDATED DAILY · EDITOR'S PICK
01.00
AI DIGEST

AI新闻摘要

July 17, 2026

Of course. Here is a summary of today's key news events based on the information you provided.


Semiconductor Stocks Lead Market Decline

U.S. stocks fell today, driven by a sharp sell-off in the technology sector. The Nasdaq Composite dropped 1.5%, with semiconductor stocks experiencing their worst week in over a year as investors pulled back from the sector that has led market gains this year.

China's AI Advances Challenge US Tech Dominance

A new artificial intelligence model from China's Moonshot AI claims to outperform some leading U.S. systems. This development underscores the intensifying global competition in AI, as Chinese labs demonstrate they can rival American counterparts in critical technology frontiers.

US Military Strikes Deeper into Iran Amid Rising Tensions

American forces conducted military strikes deeper inside Iran, which reported attacks on its infrastructure. The escalation in conflict is creating geopolitical uncertainty, contributing to a rise in oil prices and affecting global market stability.

Mixed Economic Signals as Oil Prices Rise and Treasury Issues Record Debt

Key economic indicators showed a complex picture today. The U.S. Treasury is issuing record levels of debt, while oil prices climbed over 2% and gold prices fell. Meanwhile, data showed a modest rise in U.S. import prices, reflecting ongoing uncertainty about inflation and economic direction.

Major Companies Report Contrasting Fortunes

Corporate earnings and forecasts revealed diverging paths for major companies. Netflix shares tumbled after the company projected its weakest revenue growth in three years. In contrast, UnitedHealth saw its stock rise on strong earnings, while Apple's shares remained relatively stable despite the broader tech sell-off.

02

ON THE WIRE

6 SOURCES
02

HACKER NEWS

02.00
HACKER NEWS

Hacker News - July 17, 2026

Hacker News Feed: Highlighting key posts and discussions.

Decoy Font

(www.mixfont.com)

619142
Microsoft Comic Chat is now open source

(opensource.microsoft.com)

739159
The lost joy of music piracy

(www.pigeonsandplanes.com)

797563
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HUGGINGFACE

03.00
HUGGINGFACE

HuggingFace 新闻 - July 17, 2026

HuggingFace Feed:最新的 AI 模型、数据集和社区动态。

VideoChat3: Fully Open Video MLLM for Efficient and Generalist Video Understanding

Recent advances in video understanding have spanned motion, long video, and streaming interaction, driving this field toward real-world applications. Despite this progress, current open-source models remain limited in several ways. They often struggle to generalize across diverse video types, making them effective only in specific domains. High computational demands further restrict their efficiency and scalability. Moreover, most models are only partially open, with key components such as training code, strategy, or datasets unavailable, which hinders reproducibility and slows community-driven development. To address these issues, we introduce VideoChat3, a fully open, efficient, and generalist video-centric MLLM. VideoChat3 advances video understanding through two complementary designs. For efficiency, we introduce Inflated 3D Vision Transformer (I3D-ViT) and Adaptive Frame Resolution for Streaming Video Perception, which enables efficient spatiotemporal representation and reduces the cost of processing video inputs during training and inference. For effectiveness, we develop a scalable video data synthesis pipeline that curates three diverse, high-quality training datasets: VideoChat3-Academic2M, VideoChat3-LV116K, and VideoChat3-OL617K, covering general, long-form, and streaming video scenarios, improving the model's generalization across domains. By integrating these designs, VideoChat3 achieves a rare balance of broad generalization and computational efficiency. Experiments across general, long-form, and streaming benchmarks demonstrate that VideoChat3 surpasses prior open-source models with equal or larger parameter counts with only 4B parameters and higher efficiency.

103
SEED: Self-Evolving On-Policy Distillation for Agentic Reinforcement Learning

Large language models are increasingly trained as interactive agents for long-horizon tasks involving multi-turn interaction, tool use, and environment feedback. Outcome-based reinforcement learning (RL) provides a practical optimization paradigm, but its sparse trajectory-level rewards offer limited guidance on intermediate decisions, leaving a supervision gap between episode-level outcomes and token-level policy learning. We propose SEED (SElf-Evolving On-Policy Distillation), a self-evolving framework that converts completed on-policy trajectories into training-time hindsight skills and distills their behavioral effect back into the policy model. SEED first fine-tunes the policy to analyze completed trajectories and generate natural-language skills that capture reusable workflows, decisive observations, or failure-avoidance rules. During RL, the current policy both collects trajectories and serves as the analyzer that extracts hindsight skills from them. Policy updates therefore improve subsequent decision making and skill analysis together, allowing hindsight supervision to evolve with the policy. SEED then re-scores the sampled actions under ordinary and skill-augmented contexts, converting the skill-induced probability shift into a dense token-level on-policy distillation signal. This signal is jointly optimized with outcome-based RL, keeping the auxiliary supervision aligned with the current trajectory distribution. Extensive experiments on text-based and vision-based agentic tasks show that SEED consistently improves performance and sample efficiency, exhibiting robust generalization to unseen scenarios. Our code is available at https://github.com/jinyangwu/SEED.

59
SearchOS-V1: Towards Robust Open-Domain Information-Seeking Agent Collaboration

Recent advances in Tool-Integrated Large Language Models have made web search a core capability of information-seeking agents. However, as interaction histories grow, agents increasingly struggle to track task progress. When search attempts fail to yield useful evidence, current single- and multi-agent systems can become trapped in repetitive loops, wasting search budgets and ultimately compromising the quality and completeness of the final output. We introduce SearchOS, a system-level multi-agent framework that turns fragile, implicit search progress into explicit, persistent, and shared state. First, we formulate open-domain information seeking as relational schema completion with grounded citations, where agents discover entities, populate attributes across linked tables, and anchor each value to source evidence. Then we design Search-Oriented Context Management (SOCM), which externalizes the evolving state into Frontier Task, an Evidence Graph, a Coverage Map, and Failure Memory. Built on SOCM, SearchOS applies a pipeline-parallel scheduling mechanism that overlaps the execution of sub-agents and continuously refills freed slots with tasks targeting unresolved coverage gaps to improve utilization and throughput. To schedule and control the execution of search agents, SearchOS introduces a Search Tool Middleware Harness that intercepts model and tool interactions to record grounded evidence and react to stalls or budget exhaustion, and provides a reusable hierarchical skill system comprising strategy and access skills to augment the agents' search process and avoid repeating failed search patterns across runs. On WideSearch and GISA, SearchOS leads all metrics among the evaluated single- and multi-agent baselines, paving the way toward robust information-seeking collaboration.

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LongStraw: Long-Context RL Beyond 2M Tokens under a Fixed GPU Budget

A growing gap separates inference context lengths from RL post-training: inference systems are approaching million-token contexts, while post-training workloads often remain at 256K tokens or below and rely on length generalization at deployment. The gap is especially important for AI agents, whose observations, tool outputs, documents, and prior decisions accumulate over long trajectories. LongStraw is an architecture-aware execution stack for million-token RL post-training under a fixed GPU budget, instantiated with Group Relative Policy Optimization (GRPO). It evaluates the shared prompt without autograd, retains only model-specific state needed by later tokens, and replays short response branches one at a time, reducing the live training graph at the cost of additional replay time. We implement it for the hybrid recurrent and full-attention Qwen3.6-27B and the compressed-attention mixture-of-experts GLM-5.2. On eight H20 GPUs, LongStraw completes grouped Qwen scoring and response backward at 2.1M positions for groups of 2 and 8; increasing the group size adds only 0.21 GB of peak allocated memory, while a separate stress test reaches 4.46M positions. On 32 H20 GPUs, we validate the end-to-end LongStraw execution path for a 2.1M-token prompt across all 78 layers of GLM-5.2. These experiments establish execution capacity rather than complete training correctness because the captured prompt state is detached and some distributed forward and gradient composition paths remain incomplete.

32
BadWAM: When World-Action Models Dream Right but Act Wrong

World-action models (WAMs) are emerging as a promising foundation for embodied control: rather than predicting actions alone, they learn representations that couple action generation with future world prediction. This coupling is often viewed as a source of robustness, interpretability, and safety, as a robot's action can in principle be checked against its imagined future. In this paper, we show that this assumption is fragile. We introduce BadWAM, a unified framework for modeling and evaluating World-Action Drift Attacks: a new class of WAM-specific adversarial attacks that use small visual perturbations to break the alignment between what a WAM imagines and what it executes. BadWAM characterizes this attack surface along two natural criteria: attack strength and stealthiness. When the adversary prioritizes disruption, BadWAM instantiates an action-only adversarial attack, which directly drives the model toward task-failing actions. When the adversary additionally prioritizes stealth, BadWAM instantiates an imagination-preserving adversarial attack, which seeks to induce harmful action shifts while keeping the model's predicted future close to its clean imagination. Together, these two attacks capture a spectrum of WAM-specific failures: from overt action hijacking to stealthier cases where the model appears to imagine a plausible future but executes a desynchronized action. We evaluate BadWAM across different variants of WAMs. Results show that our attacks substantially reduce task success rates under closed-loop execution. For example, our action-only attack reduces the model performance from 96.5% to 43.1% success. The results of our imagination-preserving attack further exposes a WAM-specific vulnerability: moderate future-preserving regularization can maintain strong attack performance while reducing future imagination drift.

32
KeyFrame-Compass: Towards Comprehensive Evaluation of Keyframe-Conditioned Video Generation

Video generation increasingly relies on keyframe-based workflows, where creators specify a sequence of reference images to guide generation. Although recent models support multi-keyframe conditioning, it remains unclear whether they can faithfully reproduce the prescribed keyframes while maintaining overall video quality. We present KeyFrame-Compass, the first comprehensive benchmark for evaluating keyframe-conditioned video generation. The benchmark contains 386 carefully curated samples spanning three application domains, two video structures, two prompt granularities, two conditioning formats, and four keyframe densities, enabling controlled analysis under diverse generation settings. We further introduce an automated evaluation framework that jointly measures keyframe execution and overall video quality. Specifically, we decompose keyframe execution into six complementary metrics covering presence, fidelity, temporal ordering, localization, persistence, and uniqueness, while assessing overall video quality through evidence-grounded MLLM judgments augmented with specialized perception models. Experiments on nine representative video generation systems reveal several fundamental limitations. Current models exhibit a clear trade-off between faithful keyframe execution and natural video synthesis. Their performance further degrades as keyframe constraints become denser and most open-source models also fail to interpret storyboard-grid inputs as temporally ordered keyframe sequences.

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MultiRef-Compass: Towards Comprehensive Evaluation of Multi-Reference-to-Audio-Video Generation

Multi-reference-to-audio-video (MR2AV) generation aims to generate coherent audio-video content conditioned on multiple references and textual instructions. Existing benchmarks mainly focus on text-driven generation, single-reference subject preservation, or isolated audio-video alignment, leaving the emerging MR2AV setting largely unexplored. Compared with these settings, MR2AV requires models to jointly reason over multiple references while generating synchronized visual and audio content. Models must not only preserve each reference faithfully but also correctly bind and compose multiple referenced entities into coherent audio-visual events. To address this gap, we introduce MultiRef-Compass, a unified benchmark for MR2AV generation. It comprises 350 carefully curated samples constructed through a scalable and controllable asset-composition pipeline, covering multi-view subject preservation, multi-entity binding, and human-object-scene composition. To provide interpretable assessment, MultiRef-Compass defines an evaluation protocol with four dimensions: Basic Quality, Reference Consistency, Audio-Visual Consistency, and Instruction Following, using 14 sub-metrics. MultiRef-Compass integrates automatic metrics with a rejudging-enhanced MLLM-as-a-Judge framework, enabling scalable and auditable evaluation of both perceptual fidelity and reference-conditioned composition. Extensive experiments on eight representative MR2AV systems reveal substantial room for improvement across multiple evaluation dimensions, underscoring the need for a comprehensive benchmark and positioning MultiRef-Compass as a foundation for future MR2AV research.

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UniVR: Thinking in Visual Space for Unified Visual Reasoning

Learning broad world knowledge directly from raw visual data is a fundamental capability of intelligence. We introduce UniVR, the first investigation into simultaneously learning complex reasoning, fine-grained physical dynamics, and long-term planning from pure visual demonstrations. At its core, UniVR features VR-GRPO, a reinforcement learning paradigm with complementary global and step-level rewards. This approach enforces logical coherence and physical consistency throughout the reasoning process without requiring task-specific heuristics or image-text pairs. To train and evaluate UniVR, we construct VR-X, a large-scale benchmark curated from 16 diverse sources spanning long-horizon manipulation, spatial puzzles, and physical reasoning. It is the first comprehensive suite to assess these heterogeneous capabilities under a purely visual protocol. Remarkably, UniVR achieves up to a 25% improvement on VR-X, and its superior visual reasoning also boosts performance on various multimodal understanding benchmarks. These findings underscore the vast potential of reasoning within visual spaces, with all code, data, and models are open-sourced for further research.

20
From Pixels to States: Rethinking Interactive World Models as Game Engines

Building interactive worlds that respond coherently to player actions has long been a shared goal of computer graphics, games, and artificial intelligence. Recent video generative models provide a data-driven route toward this goal by predicting future observations conditioned on user actions, and are increasingly regarded as potential next-generation game engines. Realizing a genuinely interactive game world, however, requires interaction outcomes that follow rules over evolving game conditions, consequences that persist over long horizons, and a generation loop that operates in real time. Conventional game engines realize these properties through a recurrent action-state-observation loop, in which player actions update an explicit game state according to predefined rules and observations are rendered from the resulting state. Taking this loop as an organizing lens, this paper examines interactive game world modeling along four dimensions: player action control, game state dynamics, state-observation persistence, and real-time interactive generation. For each dimension, we start from the capabilities required by an interactive game world, group existing approaches into representative families, and discuss the strengths and trade-offs of each family. Complementing this analysis, we present a scalable data engine for Black Myth: Wukong that collects over 90 hours of gameplay with frame-aligned player actions, ground-truth game states, and visual observations, together with structured and semantic annotations, as a resource for state-aware game world modeling. We hope this paper offers a clear picture of where the field stands and fosters progress toward interactive game worlds.

19
Concurrent Image Understanding and Generation: Self-Correcting Coupled Markov Jump Processes

Human cognition does not separate understanding and generation. A teacher at a whiteboard speaks and draws together, each modality reshapes the other. In this paper, we bring this coupled loop to artificial systems. Masked Diffusion Models (MDMs) are ideally suited to this task, yet existing samplers either decode text and image interleavedly or independently update them in parallel branches that share only previous-step history, but not the other modality's latest decisions within the same step; combined with MDMs' inability to remask, cross-modal contradictions are neither detected nor repaired. We introduce Self-Correcting Coupled Markov Jump Processes (SC-CMJP), a framework in which one modality's transition rates are functionals of the other modality's confidence score, as weighted by cross-modal attention. Furthermore, a remasking jump retracts commitments the moment cross-modal evidence turns against them. In conjunction with SC-CMJP, we introduce CO_2Jump (Self-text{CO}rrecting text{CO}upled text{Jump}), a novel training-free single-pass sampler for joint multimodal geneneration. For training and evaluation purposes, we have created and will release three large-scale joint multimodal generation corpora: JEdit-1M, JMaze-200K, JNono-200K, with matching in- and out-of-distribution benchmarks. CO_2Jump achieves best joint performance for image understanding and editing as well as visual reasoning (maze and nonogram solving). The performance of the sampler scales monotonically with the number of denoising steps, evidence that the benefits of cross-modal coupling compound across the trajectory. Project page: https://coupled-jump.github.io

19
Spectral Rewiring for Exploration, Purification, and Model Merging

Reinforcement learning has become a standard post-training recipe for large language models, but dense full-parameter updates create two deployment-relevant bottlenecks: suppressed reasoning performance, often reflected by premature saturation of test-time scaling, and interference when consolidating multiple capabilities through multi-domain training or model merging. We show that the reasoning-effective component of these updates is largely concentrated in the base model's spectral space, motivating Subspace-Aligned Rewiring (SAR), a post-hoc editing method that retains this spectral core while removing orthogonal components. SAR therefore preserves reasoning gains and filters residual update directions that suppress performance or amplify cross-domain interference. Across several model families and scales, SAR extracts compact reasoning cores using as little as approximately 0.58% of total parameters: it preserves over 99% of post-training performance and improves high-k exploration in mathematical reasoning, and generalizes to agentic coding by improving six of seven open benchmarks on an in-house model. SAR also purifies mixed-domain training updates by releasing suppressed coding capability while maintaining math reasoning and instruction following. It further enables model merging across experts, yielding cross-domain generalization that surpasses previous merging baselines and even the best single-domain experts. Overall, SAR shows that extracting reasoning-effective updates from parameter geometry can serve as a training-free mechanism to improve reasoning and multi-domain performance.

17
Demystifying On-Policy Distillation: Roles, Pathologies, and Regulations

On-policy distillation (OPD) has become a key paradigm in LLM post-training, yet its training dynamics remain poorly understood. We present a systematic study examining the role, pathologies, and regulations of OPD. We first clarify the role of OPD as an exploration catalyst: it steers the student toward correct reasoning paths via dense token-level guidance, without expanding capability ceiling. We confirm this by showing that prompt diversity matters more than per-problem sampling numbers, and critically, that the effectiveness of OPD hinges entirely on the quality of its guiding signal. This dependency exposes two pathologies that derail exploration. The Student-Teacher Mismatch occurs when a large teacher-student distributional gap causes the guiding signal to misalign with task correctness, steering exploration in counterproductive directions. Length Exploitation arises when the aggregated token-level objective creates length-dependent shortcuts, allowing the student to game the reward landscape through response truncation or redundant padding, exploring degenerate length modes rather than reasoning strategies. To tame these pathologies, we investigate lightweight signal regulations: advantage clipping and log-scale compression, ensuring exploration is guided by faithful signals. Experiments across seven benchmarks demonstrate that these regulations alleviate length exploitation and enable effective distillation, stably surpassing OPD variants and RLVR baselines, thereby confirming that well-regulated signal quality, rather than mere teacher scale, governs successful exploration in OPD.

12
Video = World + Event Stream

We present Wan-Streamer v0.3, which reframes our native-streaming interaction model under a single organizing view: a video is a world plus an event stream. The world is the persistent context in which a video unfolds, including the environment, scene, subjects, ambient acoustic conditions, voice characteristics, and other relatively stable conditions. The event stream is everything that changes over time within that world, including scene or environmental changes, subject behavior, speech, and other sounds. This yields a general-purpose pretraining task over large amounts of real video: given a world and incoming input, predict how the world moves, changes, and responds in real time. The resulting competence can be specialized to a broad family of real-time downstream tasks. We instantiate it on real-time full-duplex audio-visual interaction, where the event stream is the agent's speech together with free-form behavior. Functionally, the model's multimodal understanding process is vision-language-action-like: it maps multimodal user input to language-form speech and behavior actions. Wan-Streamer v0.3 preserves the v0.2 operating point: 640x368 video at 25 FPS, a 160 ms streaming unit, approximately 200 ms model-side response latency, and approximately 550 ms total interaction latency under a 350 ms bidirectional network budget.

12
RoboTTT: Context Scaling for Robot Policies

Recent robot foundation models operate with single-step or short-history visuomotor context. We introduce Test-Time-Training Robot Policies (RoboTTT), a robot model and training recipe that scale visuomotor context to 8K timesteps, three orders of magnitude beyond state-of-the-art policies, without growing inference latency. At this context length, we unlock new robot capabilities: one-shot in-context imitation from human video demonstrations, on-the-fly policy improvement, robustness to perturbations, and stronger performance on multi-stage, long-horizon tasks. We also observe, for the first time, steady gains in closed-loop performance as pretraining context length scales. At its core, RoboTTT integrates Test-Time Training into robot foundation models such as Vision-Language-Action policies, yielding a sequence model whose recurrent state consists of fast weights, parameters updated by gradient descent during both training and inference, compressing histories into weight space and retrieving contextual information for long-context conditioning. To scale training context length, the recipe combines sequence action forcing with truncated backpropagation through time. On challenging real-robot manipulation tasks, RoboTTT improves overall performance by 87% over the single-step context baseline and fully completes a five-minute, ten-stage assembly task, which no baseline ever does. RoboTTT trained with 8K-timestep context outperforms the same model pretrained with 1K timesteps by 62%, suggesting context length as a new scaling axis for robot foundation models. Videos are available at https://research.nvidia.com/labs/gear/robottt/

10
WanSong v1.0 Technical Report

Music generation foundation models have recently attracted significant industry attention. However, achieving efficient generation and high-fidelity long-form audio while supporting controllability remains challenging. To address these needs, we present WanSong, a simple yet powerful approach for long-form, commercial-grade song generation. Unlike autoregressive (AR) and cascaded multi-stage pipelines (\eg, AR followed by diffusion), WanSong is a pure diffusion-based model that directly generates high-fidelity, multilingual songs up to 5 minutes and outputs dual stems (vocals and background music) in a single run. In addition, our diffusion framework enables faster inference through step-distillation, and offers an efficient pathway for fine-tuning and customization to support downstream editing tasks.

7
MeanFlowNFT: Bringing Forward-Process RL to Average-Velocity Generators

MeanFlow generators achieve fast few-step sampling by predicting average velocities over time intervals, making them attractive for efficient generation. Reinforcement learning (RL) has become a powerful way to align diffusion and flow models with human preferences and task-specific objectives. In particular, DiffusionNFT offers an efficient forward-process RL framework that does not require reverse-process trajectories or likelihood estimation. However, applying such RL methods to MeanFlow remains underexplored. DiffusionNFT optimizes instantaneous velocities, whereas MeanFlow samples with average velocities. To bridge this gap, we introduce MeanFlowNFT. Inspired by the MeanFlow identity, which bridges average and instantaneous velocities, we construct an induced instantaneous-velocity predictor. We apply the DiffusionNFT objective to this predictor, making reward optimization well-defined for MeanFlow. Sampling remains based on the average velocity, preserving MeanFlow's fast few-step generation. We further prove that MeanFlowNFT inherits DiffusionNFT's strict policy-improvement guarantee. Experiments on image and video generation show that MeanFlowNFT consistently improves baselines. Moreover, it outperforms prior state-of-the-art RL-tuned few-step generators on most metrics (6 of 8 on SD3.5-M), and can even surpass multi-step RL-tuned diffusion while using only a few sampling steps. For instance, on Wan 2.1, 4-step MeanFlowNFT reaches a VBench score of 84.33, surpassing 50-step LongCat-Video RL (82.57).

7
VIABench: A Comprehensive Video Benchmark Collected from Blind Individuals for Visual Impairment Assistance

Visually impaired individuals (VIIs) encounter significant daily challenges due to limited access to visual information. Although Multimodal Large Language Models (MLLMs) have achieved impressive results on general vision and language tasks, their practical utility in real-world blind assistance still remains largely underexplored. To fill this gap, we introduce VIABench, a comprehensive video benchmark specifically designed to evaluate MLLMs in Visually Impaired Assistance scenarios using first-person videos recorded or shared by VIIs themselves. VIABench defines three core tasks, each targeting a distinct requirement in visual assistance. Proactive Reminder: Assesses the model's ability to interpret ongoing video content while proactively anticipating and verbally describing upcoming navigation-critical events; Visual Question Answering (VQA): Evaluates the model's capacity to answer user-posed questions about the environment or objects within the video; Vision-Guided Interaction: Tests context-aware reasoning to accomplish intentional interactions between user and environment. To ensure a robust and fair evaluation, we propose a rigorous benchmarking pipeline that supports both online (real-time) and offline settings. Our experiments demonstrate that current MLLMs still struggle to deliver comprehensive support for VIIs, especially in the Proactive Reminder task, which demands accurate anticipation and real-time responsiveness. We hope VIABench will drive future research toward developing customized MLLMs for real-world assistance, ultimately improving navigation and interaction experiences for visually impaired individuals. Code and data will be released at https://github.com/MCG-NJU/VIABench.

5
AsySplat: Efficient Asymmetric 3D Gaussian Splatting for Long-Sequence Scene Modeling

Recent generalizable 3D Gaussian Splatting models have advanced long-sequence novel view synthesis (NVS), but at the cost of substantial redundant computation. We identify that the redundancy can be mitigated based on two observations: (i) high-precision geometry is not strictly required for high-quality NVS; (ii) appearance learning is generally easier than geometry recovery. Motivated by these insights, we propose an asymmetric architecture that decouples geometry and appearance modeling. The geometry branch processes coarse-grained tokens with most of the parameters for multi-view reconstruction, while the appearance branch operates on fine-grained tokens to capture details using significantly fewer parameters. The two branches interact through bilateral connections, enabling mutual guidance for their respective tasks. This task-aware asymmetry reduces the computational redundancy and allocates the computation more judiciously, thereby increasing parameter efficiency and enabling smaller models to achieve strong performance. On 32-view 960P inputs, our model matches optimization-based methods while delivering nearly 800x speedup, and surpasses the zero-shot performance of state-of-the-art generalizable models with markedly fewer parameters and reduced training/inference overhead, achieving an overall efficiency improvement.

4
GRASP: GRanularity-Aware Search Policy for Agentic RAG

Agentic retrieval-augmented generation (RAG) extends static RAG by allowing language models to iteratively reason, generate search queries, retrieve evidence, and predict answers. However, it remains challenging for models to decide when to retrieve, whether to use lexical matching or semantic similarity, and how to control context granularity to prevent irrelevant tokens from interfering with agent reasoning. In this paper, we introduce GRASP, a reinforcement learning (RL) framework for training agents to adaptively coordinate complementary retrieval tools during multi-step reasoning. GRASP provides the agent with semantic search, keyword search, and paragraph-reading actions, enabling it to retrieve sentence-level evidence and expand further context only when needed. We train the policy with a reward that jointly accounts for answer accuracy, grounded reading, complementary search, and turn efficiency. Experiments on multi-hop reasoning benchmarks show that GRASP improves both retrieval recall and downstream question answering performance compared with single-step retrieval, prompting-based agentic RAG, and RL-based retrieval baselines. Qualitative and ablation analyses show that the learned policy develops interpretable skimming and scanning behavior: it uses semantic search for broad exploration, paragraph reading for local verification, and keyword search for entity-specific evidence. These results suggest that learning to coordinate retrieval signals and context granularity is critical for agent's correct reasoning.

4
Partition, Prompt, Aggregate: Statistical Self-Consistency in Language Models

In-context learning is commonly interpreted as a form of conditional inference, in which the prompt specifies a context and the model's output is treated as an estimate of the corresponding conditional distribution. If this interpretation holds, then LLM estimates should satisfy basic probabilistic identities. In particular, the law of total probability asserts that prior-weighted conditional distributions aggregate into population-level marginals over any valid partition of the population. In this work, we investigate to what extent LLM estimates adhere to this self-consistency principle. We use binary trees as an evaluation scaffold to recursively partition a population into increasingly fine-grained subpopulations. We then prompt LLMs with verbalized subpopulation descriptions in context, aggregate the resulting estimates back into population-level estimates, and compare them across partitions of varying granularity. Applying this protocol across problem domains and state-of-the-art frontier models, we show widespread violations of basic consistency properties. An in-depth study of persona prompting reveals a pattern we call the macro fallacy: estimates reconstructed from more fine-grained subpopulation responses are often better aligned with human reference data than direct population-level estimates. This effect persists across variations in tree structure and estimation task, and can be partially recovered through implicit prompting. Together, these findings suggest that models possess relevant subpopulation knowledge but do not reliably propagate it into aggregate estimates. This gap establishes statistical self-consistency as an unsaturated, reference-free criterion for evaluating LLMs.

4
DeepLoop: Depth Scaling for Looped Transformers

Looped Transformers scale sequential computation by applying a compact stack of physical blocks for multiple rounds, increasing unrolled depth without increasing stored parameters. This reuse changes the residual-scaling problem: in an untied Transformer, each residual branch receives and applies its own parameter update, whereas in a looped Transformer one shared update aggregates gradients from repeated visits and is read back by those same visits in the next linearized forward pass. We formalize this tied-depth effect through a first-order perturbation bound controlled by a visit-alignment coefficient κ_R. The bound recovers the DeepNorm exponent when visits decorrelate, but in the conservative aligned regime it requires the exponent to increase from 1/4 to 1/2 as loop count grows at fixed physical depth. The resulting method, DeepLoop, keeps the Post-LN DeepNorm architecture and sets α=(2N)^{1/2} and β=(8N)^{-1/2} for unrolled depth N. On GPT-style looped language models at GPT-2 small and GPT-2 medium scale, DeepLoop is neutral when no physical block is revisited and improves validation loss and downstream accuracy once recurrent depth is activated. These results show that stable recurrent depth requires residual scaling rules that account for parameter visits, not only nominal layer count.

3
Smarter and Cheaper at Once: Byte-Exact KV-Cache Grafting Turns a Frozen Small Model into a Verified-Knowledge Flywheel

We report a way to make a frozen small language model both more capable and dramatically cheaper at once, without changing any weights. Verified knowledge is deposited once as a byte-exact key-value (KV) state artifact and later restored, by graft, into a fresh inference context. The restore is bit-exact: under a pinned deterministic configuration, the grafted logits are byte-for-byte identical to a fresh computation (SHA-256 equality), with zero KL divergence and 100% argmax agreement over fifty samples. We show that own-position graft is the unique numerically exact operating point on a model with floating-point rotary encoding, and we verify byte-exactness on two model scales (12B, 31B) and two GPU targets, one through a pre-registered replay. On AIME 2025, a frozen Gemma-4-12B moves from 80.0% to 93.3% once a verified solution library is grafted, above its own 77.5% and its 31B sibling's 89.2% published anchors. On the recurring case, eight problems the base model never solves within a 401,026-token budget are answered from cached verified solutions in 61 total decode tokens, a factor of 6,574 fewer tokens and about 8,700x less energy; the capability claim proper rests on held-out transfer (7 of 7 at 31B). The same byte-exact store widens usable context from 32,768 to 2,854,766 tokens at zero extra accelerator memory, and moves byte-identical between machines of the same architecture. We describe the system at the behavior level; the engine is proprietary, and every reported number is backed by committed input and output hashes so the scoring can be re-checked without it.

3
SUFLECA: Scaling Up Feature Learning for CAD-to-image Alignment

CAD-to-image alignment aims to estimate an object's 9D pose (rotation, translation, and anisotropic scale) from a single RGB image, enabling applications in robotics and augmented reality. Recent zero-shot methods use visual foundation models to match image regions to CAD models, yet typically their correspondences are appearance-driven and degrade under occlusion or sim-to-real domain shift. To address these limitations, we introduce SUFLECA (Scaling Up Feature LEarning for CAD Alignment), a weakly-supervised framework for zero-shot CAD alignment with two key contributions. First, SUFLECA scales up geometry-grounded feature learning from pretrained visual representations through Normalized Object Coordinates (NOCs) supervision on 674K images spanning 12 real and synthetic datasets, learning compact geometry-aware features that generalize across domains. Second, we propose a geometrically consistent matching algorithm that establishes reliable one-to-one CAD-to-image correspondences. Together, these contributions enable accurate, sub-second alignment per object instance without iterative pose refinement. On ScanNet25k, SUFLECA achieves 33.4%/42.3% category/instance accuracy, outperforming, with a smaller computational footprint, the strongest zero-shot baseline by 10.3/12.2 percentage points and, for the first time on this benchmark, even surpassing fully supervised methods. Code is available at: https://github.com/snt-arg/SUFLECA

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05

PRODUCT HUNT

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PRODUCT HUNT

Product Hunt - July 17, 2026

Product Hunt Daily Feed: Featuring noteworthy tech launches.

Pebbles Ai icon
Pebbles Ai

AI sales platform for modern B2B teams

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Unabyss for Claude icon
Unabyss for Claude

Shared memory across all apps and LLMs. In Claude

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Basedash Suggestions icon
Basedash Suggestions

Your AI data analyst, now with ideas of its own.

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Aye icon
Aye

Your teachable AI intern for everyday browser work

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Kimi K3 icon
Kimi K3

The world's first open 3T-class model

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Timely icon
Timely

Pull your calendar availability in 3 seconds

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PixyCAD icon
PixyCAD

Fast & precise 3D CAD built natively for iPad and Mac

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Pocket Screen icon
Pocket Screen

Keep any Mac window visible in a floating mini screen

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Scribble Party icon
Scribble Party

A local-first whiteboard studio for teachers and creators

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Yapper Leaderboard icon
Yapper Leaderboard

See the biggest startup yappers on X/Twitter

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Codex Micro icon
Codex Micro

Tactile controls for your Codex agents

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River icon
River

AI account executives that demo and close B2B deals

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Inbix icon
Inbix

Cloudflare-native Email Infrastructure for Developers

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ClipMatch icon
ClipMatch

Turn your camera roll into social content with AI

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dot. icon
dot.

The feedback layer for anything you build with AI.

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Albato AI icon
Albato AI

Build AI-driven workflows across 1,000+ apps

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Amami icon
Amami

Analytics that lives inside your AI assistant

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Cito icon
Cito

Hybrid academic search over 236M papers, built for agents

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Verse icon
Verse

Build and hire autonomous AI employees from a single prompt

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Nuvio icon
Nuvio

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

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In Parallel MCP icon
In Parallel MCP

Your context, available to every agent.

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The Eureka Database icon
The Eureka Database

Turn a Reddit complaint into your next company

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Nitrosend icon
Nitrosend

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

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Manta AI icon
Manta AI

Your AI agent for autonomous web app testing

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Graft AI icon
Graft AI

Turn company operations into a living map for agents

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Paradigm icon
Paradigm

Turn any goal into a personalized, adaptive learning path.

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SonOf icon
SonOf

Empty your backlog. Pay only when it ships

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Cloud Halo icon
Cloud Halo

Azure FinOps for MSPs with flat pricing

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Kit For AI icon
Kit For AI

The memory layer for AI agents

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DevSwat AST- visualizer with analyzer icon
DevSwat AST- visualizer with analyzer

Turn codebases into interactive maps, graphs, and governance

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Weave icon
Weave

Think out loud and watch it become a living map.

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SIMPLI icon
SIMPLI

Split expenses in a live cosmos

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Breadcromb icon
Breadcromb

A browser that remembers everything and can act on anything

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Ventorah icon
Ventorah

run virtual wind tunnel aerodynamic analysis in your browser

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BrickSolvr icon
BrickSolvr

Turn any 3D model into a buildable brick design

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Microflow icon
Microflow

Microcontrollers made simple.

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Node Health icon
Node Health

Your private home for every lab result

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ChikitAI icon
ChikitAI

Agentic AI for Healthcare Triage and Care Automation

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FlightGlitch icon
FlightGlitch

Catch mistake fares before airlines fix them

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Zro icon
Zro

Private inference for coding agents

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Alert Grouping by DrDroid icon
Alert Grouping by DrDroid

Reduce Your Alerts Noise Completely

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Velo 3.0 icon
Velo 3.0

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

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V2Fun icon
V2Fun

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

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nudge2.0 icon
nudge2.0

AI schedules your whole week to take action

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Tiptap AI Toolkit icon
Tiptap AI Toolkit

Empower your AI to directly edit documents in real time.

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Agently icon
Agently

Your whole stack, running itself!

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Copresent icon
Copresent

Turn your phone into a Google Slides remote

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Keepresso icon
Keepresso

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

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Crustdata Recruiter icon
Crustdata Recruiter

Claude Skills to turn Claude into a 100x Recruiter

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ccshare icon
ccshare

multiplayer claude code

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06

TECHMEME

06.00
TECHMEME

Techmeme - July 17, 2026

Techmeme Digest: Major tech headlines and industry conversations.

AI inference startup General Compute gets a $400M loan from tech investment firm Upper90, seemingly the first deal using inference-specific chips as collateral (Tim Fernholz/TechCrunch)
Source: TechmemePublished: Jul 17, 2026

Tim Fernholz / TechCrunch : AI inference startup General Compute gets a $400M loan from tech investment firm Upper90, seemingly the first deal using inference-specific chips as collateral —  General Compute, an AI inference cloud startup, has landed a $400 million loan from Upper90, a tech investment firm.

Sources: the EU is set to approve the $55B acquisition of EA under its subsidy rules on July 30; the deal includes Saudi Arabia's PIF, Silver Lake, and more (Foo Yun Chee/Reuters)
Source: TechmemePublished: Jul 17, 2026

Foo Yun Chee / Reuters : Sources: the EU is set to approve the $55B acquisition of EA under its subsidy rules on July 30; the deal includes Saudi Arabia's PIF, Silver Lake, and more —  A group of investors including Saudi Arabia's Public Investment Fund is set to secure European Union approval for its $55 billion acquisition …

San Francisco sends legal notices to Apple and Google, demanding they take down 13 AI apps used to make deepfake nude images; Google says it deleted five apps (Matt Burgess/Wired)
Source: TechmemePublished: Jul 17, 2026

Matt Burgess / Wired : San Francisco sends legal notices to Apple and Google, demanding they take down 13 AI apps used to make deepfake nude images; Google says it deleted five apps —  The City Attorney's Office sent the tech giants cease-and-desist letters this week telling them to stop profiting from 13 …

Sources: Apple has sent personal legal warnings to ~40 former employees who now work at OpenAI, directing them to preserve documents and meet with its lawyers (Michael Acton/Financial Times)
Source: TechmemePublished: Jul 17, 2026

Michael Acton / Financial Times : Sources: Apple has sent personal legal warnings to ~40 former employees who now work at OpenAI, directing them to preserve documents and meet with its lawyers —  iPhone maker steps up aggressive tactics in trade secrets dispute with AI lab.  Apple has targeted dozens of OpenAI employees …

At the World AI Conference, Xi Jinping touts open-source AI, pledges to help the Global South build AI capabilities, and calls unequal AI access an "injustice" (Reuters)
Source: TechmemePublished: Jul 17, 2026

Reuters : At the World AI Conference, Xi Jinping touts open-source AI, pledges to help the Global South build AI capabilities, and calls unequal AI access an “injustice” —  Chinese President Xi Jinping on Friday cast Beijing as the champion of a new global AI order, using China's premier tech conference …

The Alphabet Workers Union sends a layoff protections petition with 4,500+ signatures to Sundar Pichai, calling for guaranteed severance, buyouts, and more (Sanya Mansoor/The Guardian)
Source: TechmemePublished: Jul 17, 2026

Sanya Mansoor / The Guardian : The Alphabet Workers Union sends a layoff protections petition with 4,500+ signatures to Sundar Pichai, calling for guaranteed severance, buyouts, and more —  The petition to Sundar Pichai, the CEO, included more than 4,500 signatures and included calls for buyout options

Sources: Z.ai is on track to achieve an annual recurring revenue of $1B, a first for a Chinese AI company, after achieving its full-year sales target in July (Bloomberg)
Source: TechmemePublished: Jul 17, 2026

Bloomberg : Sources: Z.ai is on track to achieve an annual recurring revenue of $1B, a first for a Chinese AI company, after achieving its full-year sales target in July —  Z.AI is on track for annual recurring revenue of $1 billion, a significant ramp-up for an enterprise-focused AI startup trying …

Sources: Dave Brown, the outgoing SVP of AWS Compute, AI, and Platform, will join Meta in the coming weeks, where he will work on Meta's data center build-out (Anissa Gardizy/Wall Street Journal)
Source: TechmemePublished: Jul 17, 2026

Anissa Gardizy / Wall Street Journal : Sources: Dave Brown, the outgoing SVP of AWS Compute, AI, and Platform, will join Meta in the coming weeks, where he will work on Meta's data center build-out —  The social media giant's ambitions in developing data centers and computing resources are growing

Sources: Tata plans India's first large-scale chip fab in Dholera, Gujarat, mostly using 90nm nodes, a far humbler start than the 28nm node it touted earlier (Bloomberg)
Source: TechmemePublished: Jul 17, 2026

Bloomberg : Sources: Tata plans India's first large-scale chip fab in Dholera, Gujarat, mostly using 90nm nodes, a far humbler start than the 28nm node it touted earlier —  Tata Electronics Pvt. is preparing to make India's first semiconductor wafers on far older technology than it originally expected …

During an internal meeting, Satya Nadella criticized Claude Fable 5 for being "editorially controlled", saying its refusal to do "random things" makes no sense (Jordan Novet/CNBC)
Source: TechmemePublished: Jul 17, 2026

Jordan Novet / CNBC : During an internal meeting, Satya Nadella criticized Claude Fable 5 for being “editorially controlled”, saying its refusal to do “random things” makes no sense —  Microsoft CEO Satya Nadella told employees Wednesday that Anthropic's limits on requests that users submit …

Source: Demis Hassabis plans to hold meetings with US policymakers in Washington next week about his proposed US-based Standards Body for "Frontier-class" AI (Shirin Ghaffary/Bloomberg)
Source: TechmemePublished: Jul 17, 2026

Shirin Ghaffary / Bloomberg : Source: Demis Hassabis plans to hold meetings with US policymakers in Washington next week about his proposed US-based Standards Body for “Frontier-class” AI —  Earlier this week, Google DeepMind Chief Executive Officer Demis Hassabis unveiled a proposal for a new international watchdog …

Court doc: a US federal jury says Japanese chipmaker Kioxia owes Viasat $229M for infringing Viasat's flash-memory patent that helps devices use less energy (Blake Brittain/Reuters)
Source: TechmemePublished: Jul 17, 2026

Blake Brittain / Reuters : Court doc: a US federal jury says Japanese chipmaker Kioxia owes Viasat $229M for infringing Viasat's flash-memory patent that helps devices use less energy —  A federal jury in Waco, Texas said on Thursday that Japanese chipmaker Kioxia (285A.T) owes satellite-communications company Viasat …

Source: Microsoft plans to release an AI security tool this month using models from Anthropic, OpenAI, and itself, as a cost-effective Mythos alternative (Aaron Holmes/The Information)
Source: TechmemePublished: Jul 17, 2026

Aaron Holmes / The Information : Source: Microsoft plans to release an AI security tool this month using models from Anthropic, OpenAI, and itself, as a cost-effective Mythos alternative —  Microsoft is preparing to release a new AI security product, internally codenamed Project Perception, to capture a piece of companies' rising cyber defense spending.

Kalshi launches a biotech pilot, starting with 13 biotech contracts offering wagers on the outcomes of late-stage clinical drug trials and regulatory decisions (Madison Muller/Bloomberg)
Source: TechmemePublished: Jul 17, 2026

Madison Muller / Bloomberg : Kalshi launches a biotech pilot, starting with 13 biotech contracts offering wagers on the outcomes of late-stage clinical drug trials and regulatory decisions —  Kalshi to Offer Betting on Drug Trial Results  —  Video Player is loading.  —  Unmute  —  Current Time 0:00 Loaded: 63.68% Playback Rate

Sources: Coatue is leading a $3B investment in Databricks that values the data analytics software company at $188B, a 40% increase from its December valuation (Wall Street Journal)
Source: TechmemePublished: Jul 17, 2026

Wall Street Journal : Sources: Coatue is leading a $3B investment in Databricks that values the data analytics software company at $188B, a 40% increase from its December valuation —  Startup's valuation jumps 40% as AI boom drives demand for its data-analytics software  —  Coatue Management is leading …

07

STARTUP ARCHIVE

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STARTUP ARCHIVE

Startup News - July 17, 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 17, 2026

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

美国 CD 唱片销量涨幅超过黑胶唱片

黑胶唱片过去十年一直是实体音乐复兴的代表,但今年上半年美国 CD 唱片销量涨幅远超黑胶唱片。CD 销量飙升 16% 达到 1630 万张,相比下黑胶唱片销量上涨 2.4%。韩国 K-pop BTS 热门专辑《ARIRANG》在 CD 销量增长中起到了重要作用,但排除 K-pop 之后,CD 销量仍然同比增长了 6.7%。美国包括 LP、CD 和磁带的实体专辑总销量上半年增长了 7.8% 达到 3820 万。实体音乐复兴的一大原因是年轻一代听歌习惯发生了变化,六成 Z 世代听众表示最常听的是音乐是 1990 年代或更早期的,相比下 2021 年这一比例仅为 18%。无论是怀旧、通过流媒体发现新音乐,还是想要拥有艺术家作品的实体唱片,年轻听众在拥抱实体唱片。

恒星普查研究确认宇宙年龄 138 亿岁

研究团队结合了地面大型巡天计划 LAMOST DR7 的光谱观测,与 ESA 盖亚太空望远镜的高精度视差资料,建立起包含 155,600 颗邻近太阳次巨星(Subgiant stars)的庞大基准样本。由于这类恒星形成于银河系早期,其化学组成几乎保留了最原始的样貌,是推算时间极佳的恒星化石。团队利用马可夫链蒙地卡罗(MCMC)算法重建真实年龄分布,推导出样本中最古老恒星的真实年龄为 137.3(+1.8 / -1.5)亿年,若考虑大爆炸后约 2 亿年才形成首批长寿命恒星,这与宇宙微波背景辐射预测的 138 亿年宇宙年龄完全相符。最新结果显示,目前并没有可信的观测证据支持宇宙年龄超过 138 亿年。

微软开源 Comic Chat

微软宣布开源 Comic Chat,源代码采用 MIT 许可证托管在 GitHub 上。Comic Chat 是一款能自动将 IRC 中的对话转换为漫画格形式的聊天客户端,其中包含插图人物、对话气泡和表情。它的一个目的是帮助世界认识 Comic Sans 字体。Comic Sans 字体最早由微软字体设计师 Vincent Connare 于 1994 年设计,在 Comic Chat 中找到了它真正的家。它非正式的手写风格与软件的对话气泡完美匹配。Comic Chat 最早于 1995 年开发,1996 年随 Internet Explorer 3 推出。开源 Comic Chat 的一个意图是保存软件历史,以及让开源社区在此基础上探索、学习和二次开发。

月之暗面宣布首个 3 万亿参数开放权重模型 Kimi K3

月之暗面宣布了 2.8 万亿参数开放权重模型 Kimi K3,完整的权重将于 7 月 27 日发布。月之暗面称,Kimi K3基于 Kimi Delta Attention 和 Attention Residuals 构建,参数规模 2.8 万亿,具备原生视觉功能和 100 万个词元上下文窗口。它是全球首个 3 万亿参数级别的开放权重模型,专为长程编码、知识工作和推理等前沿智能领域而设计。在基准测试中,Kimi K3 整体性能仅落后于 Claude Fable 5 和 GPT-5.6 Sol。Kimi K3 现已在 Kimi.com、Kimi Work、Kimi Code 和 Kimi API 上线。发布初期 Kimi K3 将默认采用最大思考强度模式,低强度和高强度模式将在后续更新中推出。

Google Play 将于下周上架第三方应用商店

从 7 月 22 日起,美国第三方应用商店将可以通过 Google 的应用商店发行其客户端。Google 公布了“加入 Google Play 目录访问权限计划”的文档,美国第三方应用商店可以访问 Google Play 商店的应用目录。届时,美国第三方 Android 应用商店将能向用户提供这些应用,而用户仍将通过 Google Play 完成下载,其下载条款与直接在 Google Play 商店下载完全一致。通过此类方式下载的应用将需要继续支付 Google Play 服务费。Google 还将要求上架的应用商店屏蔽恶意软件、尊重知识产权,提供应用更新和卸载机制。如果超过 1% 的应用安装尝试疑似恶意软件或不需要的软件,则该应用商店可能会被移除。

心脏病发作患者血液内有更多微塑料和纳米塑料

根据发表在《European Heart Journal》上的一项研究,相比心脏供血正常的人,心脏病发作患者血液内的微塑料和纳米塑料含量更高。研究还发现,吸烟者和暴露于较高空气污染水平人群血液中微塑料和纳米塑料含量也更高。研究人员分析了 61 名意大利患者,采集了其血液样本,调查了他们是否吸烟以及空气污染情况。结果显示,84% 的心脏病发作患者血液中检测到微塑料和纳米塑料,慢性缺血性心脏病患者为 40%,冠状动脉正常的患者为 32%。心脏病发作患者血液中塑料种类更多。最常见的塑料类型是聚乙烯,这种塑料常用于包装和消费品。长期暴露于较高 PM2.5 水平的患者血液中更容易检测到微塑料,吸烟者血液中微塑料的检出率是不吸烟者的六倍。

一加确认退出美国和欧洲市场,将继续为现有用户提供软件更新

一加确认退出美国和欧洲市场,表示将会继续为现有用户提供软件更新,但一加手机搭载的 OxygenOS 系统将被母公司 OPPO 的 ColorOS 系统所取代。作为关闭全球业务计划的一部分,一加手机的 OxygenOS 也将随之关闭。所有在售一加手机运行的操作系统从 Android 17 更新开始将逐步迁移到 ColorOS,一加称此举有助于简化软件开发流程,加快更新推送速度,提升软件质量,更好地利用共享的工程和研发资源。对于不会更新到 Android 17 的旧型号设备,一加将会提供操作系统的维护支持,但新设备需要更新到 ColorOS 才会获得所有形式的支持。如果客户想要旧的 OxygenOS 使用体验,在更新到 ColorOS 之后可选择回滚。

Grok Build 开源,在这之前它被发现会上传用户的完整库

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

马不靠声音或气味就能识别屏幕上的捕食者

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

图书出版商指控 Google 在训练 Gemini 过程中大规模侵犯版权

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

DeepSeek 计划年内申请 IPO

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

因意外关机和过热微软暂停向部分戴尔电脑推送七月安全更新

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

AI 公司高管加强个人安保

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

IBM 称客户倾向于采购 AI 硬件而不是大型机

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

美国众议院通过了永久性夏令时法案

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

特朗普政府禁止刚果的美国公民回国

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

第二次怀孕会以新方式改变大脑

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

纽约州禁止建造大型数据中心一年

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

Linux 内核不反对使用 AI 工具

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

微软周二例行安全更新修复了 570 个漏洞

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

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