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SynGFN: learning across chemical space with generative flow-based molecular discovery SynGFN:基于生成流的分子发现的跨化学空间学习。
IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-13 DOI: 10.1038/s43588-025-00902-w
Yuchen Zhu, Shuwang Li, Jihong Chen, Donghai Zhao, Xiaorui Wang, Yitong Li, Yifei Liu, Yue Kong, Beichen Zhang, Chang Liu, Tingjun Hou, Chang-Yu Hsieh
In recent years, artificial intelligence has advanced the design–make–test–analyze cycle, transforming molecular discovery. Despite these advances, the compartmentalized approach to computer-aided molecular design and synthesis remains a critical bottleneck, limiting further optimization of the design–make–test–analyze cycle. Here, to this end, we introduce SynGFN, which models molecular design as a cascade of simulated chemical reactions, enabling the assembly of molecules from synthesizable building blocks. SynGFN features two key ingredients: (1) a hierarchically pretrained policy network that accelerates learning across diverse distributions of desirable molecules in chemical spaces, and (2) a multifidelity acquisition framework to alleviate the cost of reward evaluations. These technical developments collectively endow SynGFN with the capability to explore a chemical space up to an order of magnitude larger (measured in terms of #Circles) than that of other synthesis-aware generative models, while identifying the most diverse, synthesizable and high-performance molecules. We demonstrate SynGFN’s potential impacts by designing inhibitors for GluN1/GluN3A, a therapeutic target for neuropsychiatric disorders. A persistent gap from theoretical molecules to experimentally viable compounds has hindered the practical adoption of generative algorithms. This study proposes SynGFN as a bridge linking molecular design and synthesis, accelerating exploration and producing diverse, synthesizable, high-performance molecules.
近年来,人工智能推动了设计-制造-测试-分析周期,改变了分子发现。尽管取得了这些进步,但计算机辅助分子设计和合成的分割方法仍然是一个关键瓶颈,限制了进一步优化设计-制造-测试-分析周期。在这里,为此,我们介绍了SynGFN,它将分子设计建模为一系列模拟的化学反应,使分子能够从可合成的构建块中组装起来。SynGFN具有两个关键成分:(1)一个分层预训练的策略网络,可以加速化学空间中不同分布的理想分子的学习;(2)一个多保真度获取框架,可以减轻奖励评估的成本。这些技术发展共同赋予SynGFN探索化学空间的能力,其数量级比其他合成感知生成模型更大(以#Circles衡量),同时识别最多样化、可合成和高性能的分子。我们通过设计GluN1/GluN3A抑制剂来证明SynGFN的潜在影响,GluN3A是神经精神疾病的治疗靶点。
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引用次数: 0
Larger language models better align with the reading brain 更大的语言模型更适合阅读大脑。
IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-12 DOI: 10.1038/s43588-025-00905-7
Samuel A. Nastase
A systematic comparison of large language models suggests that larger models align better with both human behavior and brain activity during natural reading. Instruction tuning, however, does not yield a similar benefit.
对大型语言模型的系统比较表明,大型模型更符合人类行为和自然阅读时的大脑活动。然而,指令调优并不能产生类似的好处。
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引用次数: 0
Learning to decode logical circuits 学习解码逻辑电路。
IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-11-04 DOI: 10.1038/s43588-025-00897-4
Yiqing Zhou, Chao Wan, Yichen Xu, Jin Peng Zhou, Kilian Q. Weinberger, Eun-Ah Kim
As quantum hardware advances toward enabling error-corrected quantum circuits in the near future, the absence of an efficient polynomial-time decoding algorithm for logical circuits presents a critical bottleneck. While quantum memory decoding has been well studied, inevitable correlated errors introduced by transversal entangling logical gates prevent the straightforward generalization of quantum memory decoders. Here we introduce a data-centric, modular decoder framework, the Multi-Core Circuit Decoder (MCCD), which consists of decoder modules corresponding to each logical operation supported by the quantum hardware. The MCCD handles both single-qubit and entangling gates within a unified framework. We train MCCD using mirror-symmetric random Clifford circuits, demonstrating its ability to effectively learn correlated decoding patterns. Through extensive testing on circuits substantially deeper than those used in training, we show that MCCD maintains high logical accuracy while exhibiting competitive polynomial decoding time across increasing circuit depths and code distances. When compared with conventional decoders such as minimum weight perfect matching (MWPM), most likely error (MLE) and belief propagation with ordered statistics post-processing (BP-OSD), MCCD achieves competitive accuracy with substantially better time efficiency, particularly for circuits with entangling gates. Our approach provides a noise-model-agnostic solution to the decoding challenge in deep logical quantum circuits. This study reports a machine learning decoder that efficiently corrects errors in quantum logical circuits with entangling gates. The Multi-Core Circuit Decoder achieves competitive accuracy while running much faster than conventional methods.
随着量子硬件在不久的将来向纠错量子电路的方向发展,缺乏有效的逻辑电路多项式时间解码算法是一个关键的瓶颈。虽然量子记忆译码已经得到了很好的研究,但横向纠缠逻辑门引入的不可避免的相关误差阻碍了量子记忆译码器的直接推广。在这里,我们介绍了一个以数据为中心的模块化解码器框架,即多核电路解码器(MCCD),它由与量子硬件支持的每个逻辑运算相对应的解码器模块组成。MCCD在一个统一的框架内处理单量子位和纠缠门。我们使用镜像对称随机Clifford电路训练MCCD,证明了其有效学习相关解码模式的能力。通过在比训练中使用的电路更深的电路上进行广泛的测试,我们表明MCCD在保持高逻辑准确性的同时,在增加电路深度和代码距离时表现出具有竞争力的多项式解码时间。与传统的解码器(如最小权重完美匹配(MWPM),最可能误差(MLE)和有序统计后处理(BP-OSD)的信念传播(belief propagation with ordered statistics postprocessing, BP-OSD)相比,MCCD实现了具有竞争力的精度和更好的时间效率,特别是对于有纠缠门的电路。我们的方法为深度逻辑量子电路中的解码挑战提供了一种与噪声模型无关的解决方案。
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引用次数: 0
Data-driven law firm rankings to reduce information asymmetry in legal disputes 数据驱动的律师事务所排名,减少法律纠纷中的信息不对称。
IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-10-31 DOI: 10.1038/s43588-025-00899-2
Alexandre Mojon, Robert Mahari, Sandro Claudio Lera
Selecting capable counsel can shape the outcome of litigation, yet evaluating law firm performance remains challenging. Widely used rankings prioritize prestige, size and revenue over empirical litigation outcomes, offering little practical guidance. Here, to address this gap, we build on the Bradley–Terry model and introduce a new ranking framework that treats each lawsuit as a competitive game between plaintiff and defendant law firms. Leveraging a newly constructed dataset of 60,540 US civil lawsuits involving 54,541 law firms, our findings show that existing reputation-based rankings correlate poorly with actual litigation success, while our outcome-based ranking substantially improves predictive accuracy. These findings establish a foundation for more transparent, data-driven assessments of legal performance. This study introduces a data-driven method for ranking law firms based on litigation outcomes, revealing that traditional reputation-based rankings do not reflect legal performance accurately.
选择有能力的律师可以影响诉讼的结果,但评估律师事务所的表现仍然具有挑战性。广泛使用的排名优先考虑声望、规模和收入,而不是经验诉讼结果,几乎没有提供实际指导。在这里,为了解决这一差距,我们在布拉德利-特里模型的基础上引入了一个新的排名框架,将每一起诉讼视为原告和被告律师事务所之间的竞争游戏。利用新构建的涉及54,541家律师事务所的60,540起美国民事诉讼的数据集,我们的研究结果表明,现有的基于声誉的排名与实际诉讼成功的相关性很差,而我们基于结果的排名大大提高了预测的准确性。这些发现为更加透明、数据驱动的法律绩效评估奠定了基础。
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引用次数: 0
A computational science perspective on the legal system 法律体系的计算科学视角。
IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-10-31 DOI: 10.1038/s43588-025-00827-4
Aurelia Tamò-Larrieux, Clement Guitton, Simon Mayer
A recent study highlights how data changes not only how we can assess the performance of legal firms in the US, but more broadly how computational science is expanding beyond its traditional scope and into the legal field.
最近的一项研究强调,数据不仅改变了我们评估美国律师事务所业绩的方式,而且从更广泛的角度来看,计算科学正如何超越其传统范围,进入法律领域。
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引用次数: 0
Integrative deep learning of spatial multi-omics with SWITCH 基于SWITCH的空间多组学集成深度学习。
IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-10-29 DOI: 10.1038/s43588-025-00891-w
Zhongzhan Li, Sanqing Qu, Haixin Liang, Ruohui Tang, Xudong Zhang, Fan Lu, Jiani Yang, Ziling Gan, Shaorong Gao, Yanping Zhang, Guang Chen
Advancements in spatial omics permit spatially resolved measurements across several biological modalities. The high cost of acquiring co-profiled multimodal data limits the analysis. This underscores the necessity for computational methods to integrate unpaired spatial multi-omics data and perform cross-modal predictions on single-modality data. The integration of spatial omics is challenging due to typically low signal-to-noise ratios. Here we introduce SWITCH (Spatially Weighted Multi-omics Integration and Cross-modal Translation with Cycle-mapping Harmonization), a deep generative model for spatial multi-omics integration. SWITCH presents a cycle-mapping mechanism that produces dependable cross-modal translations without requiring additional paired data. These cross-modal translations function as pseudo-pairs to provide supplementary signals. Systematic evaluations demonstrate that SWITCH outperforms existing methods in terms of integration accuracy and achieves more precise spatial domain delineation, resolving brain cortical structures at higher resolution. The reliability of cross-modal translations was validated, facilitating various downstream analyses such as differential analysis, trajectory inference and gene regulatory network inference. In this study the authors present SWITCH, a deep learning model that integrates unpaired spatial multi-omics data and enables unsupervised cross-modal prediction, aiding spatial domain identification and downstream biological analysis.
空间组学的进步允许跨几种生物模式进行空间分辨测量。获取共剖面多模态数据的高成本限制了分析。这强调了计算方法整合非配对空间多组学数据和对单模态数据进行跨模态预测的必要性。由于典型的低信噪比,空间组学的集成具有挑战性。本文介绍了空间多组学集成的深度生成模型SWITCH (spatial Weighted Multi-omics Integration and Cross-modal Translation with cycle mapping Harmonization)。SWITCH提供了一种循环映射机制,可以产生可靠的跨模态翻译,而不需要额外的成对数据。这些跨模态翻译作为伪对来提供补充信号。系统评估表明,SWITCH在整合精度方面优于现有方法,可以实现更精确的空间域描绘,以更高的分辨率解析大脑皮层结构。验证了跨模态翻译的可靠性,为差分分析、轨迹推断和基因调控网络推断等下游分析提供了便利。
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引用次数: 0
Quantum approximate multi-objective optimization 量子近似多目标优化。
IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-10-24 DOI: 10.1038/s43588-025-00873-y
Ayse Kotil, Elijah Pelofske, Stephanie Riedmüller, Daniel J. Egger, Stephan Eidenbenz, Thorsten Koch, Stefan Woerner
The goal of multi-objective optimization is to understand optimal trade-offs between competing objective functions by finding the Pareto front, that is, the set of all Pareto-optimal solutions, where no objective can be improved without degrading another one. Multi-objective optimization can be challenging classically, even if the corresponding single-objective optimization problems are efficiently solvable. Thus, multi-objective optimization represents a compelling problem class to analyze with quantum computers. Here we use a low-depth quantum approximate optimization algorithm to approximate the optimal Pareto front of certain multi-objective weighted maximum-cut problems. We demonstrate its performance on an IBM Quantum computer, as well as with matrix product state numerical simulation, and show its potential to outperform classical approaches. This study explores the use of quantum computing to address multi-objective optimization challenges. By using a low-depth quantum approximate optimization algorithm to approximate the optimal Pareto front of multi-objective weighted max-cut problems, the authors demonstrate promising results—both in simulation and on IBM Quantum hardware—surpassing classical approaches.
多目标优化的目标是通过寻找帕累托前沿(即所有帕累托最优解的集合)来理解相互竞争的目标函数之间的最优权衡,其中没有一个目标可以在不影响另一个目标的情况下得到改进。即使相应的单目标优化问题可以有效地解决,多目标优化也是具有挑战性的。因此,多目标优化是用量子计算机分析的一个引人注目的问题类。本文采用一种低深度量子近似优化算法来逼近一类多目标加权最大切问题的最优Pareto前。我们在IBM量子计算机上演示了它的性能,以及矩阵产品状态数值模拟,并展示了它优于经典方法的潜力。
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引用次数: 0
Discovering network dynamics with neural symbolic regression. 用神经符号回归发现网络动力学。
IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-10-23 DOI: 10.1038/s43588-025-00893-8
Zihan Yu, Jingtao Ding, Yong Li

Network dynamics are fundamental to analyzing the properties of high-dimensional complex systems and understanding their behavior. Despite the accumulation of observational data across many domains, mathematical models exist in only a few areas with clear underlying principles. Here we show that a neural symbolic regression approach can bridge this gap by automatically deriving formulas from data. Our method reduces searches on high-dimensional networks to equivalent one-dimensional systems and uses pretrained neural networks to guide accurate formula discovery. Applied to ten benchmark systems, it recovers the correct forms and parameters of underlying dynamics. In two empirical natural systems, it corrects existing models of gene regulation and microbial communities, reducing prediction error by 59.98% and 55.94%, respectively. In epidemic transmission across human mobility networks of various scales, it discovers dynamics that exhibit the same power-law distribution of node correlations across scales and reveal country-level differences in intervention effects. These results demonstrate that machine-driven discovery of network dynamics can enhance understandings of complex systems and advance the development of complexity science.

网络动力学是分析高维复杂系统特性和理解其行为的基础。尽管在许多领域积累了观测数据,但只有少数领域存在具有明确基本原理的数学模型。在这里,我们展示了一种神经符号回归方法可以通过自动从数据中导出公式来弥补这一差距。我们的方法将高维网络的搜索减少到等效的一维系统,并使用预训练的神经网络来指导精确的公式发现。将其应用于10个基准系统,恢复了底层动力学的正确形式和参数。在两个经验自然系统中,修正了现有的基因调控模型和微生物群落模型,预测误差分别降低了59.98%和55.94%。在不同规模的人类流动网络中的流行病传播中,它发现了在不同规模的节点相关性中表现出相同幂律分布的动态,并揭示了干预效果在国家层面上的差异。这些结果表明,机器驱动的网络动力学发现可以增强对复杂系统的理解,并推动复杂性科学的发展。
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引用次数: 0
Transferable neural wavefunctions for solids 固体的可转移神经波函数。
IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-10-22 DOI: 10.1038/s43588-025-00872-z
L. Gerard, M. Scherbela, H. Sutterud, W. M. C. Foulkes, P. Grohs
Deep-learning-based variational Monte Carlo has emerged as a highly accurate method for solving the many-electron Schrödinger equation. Despite favorable scaling with the number of electrons, $${mathcal{O}}({{n}_{{rm{el}}}}^{4})$$ , the practical value of deep-learning-based variational Monte Carlo is limited by the high cost of optimizing the neural network weights for every system studied. Recent research has proposed optimizing a single neural network across multiple systems, reducing the cost per system. Here we extend this approach to solids, which require numerous calculations across different geometries, boundary conditions and supercell sizes. We demonstrate that optimization of a single ansatz across these variations significantly reduces optimization steps. Furthermore, we successfully transfer a network trained on 2 × 2 × 2 supercells of LiH, to 3 × 3 × 3 supercells, reducing the number of optimization steps required to simulate the large system by a factor of 50 compared with previous work. Investigating crystalline materials often requires calculations for many variations of a system, substantially increasing the computational burden. By training a transferable neural wavefunction across these variations, the cost can be reduced by approximately 50-fold for systems such as graphene and lithium hydride.
基于深度学习的变分蒙特卡罗已经成为求解多电子Schrödinger方程的高精度方法。尽管随着电子数量的增加,深度学习的变分蒙特卡罗算法具有良好的可扩展性,但它的实用价值受到了为所研究的每个系统优化神经网络权值的高成本的限制。最近的研究提出了跨多个系统优化单个神经网络,以降低每个系统的成本。在这里,我们将这种方法扩展到固体,这需要在不同的几何形状、边界条件和超级单体大小之间进行大量计算。我们证明,在这些变化中对单个ansatz进行优化可以显著减少优化步骤。此外,我们成功地将在LiH的2 × 2 × 2超级细胞上训练的网络转移到3 × 3 × 3超级细胞上,与以前的工作相比,将模拟大型系统所需的优化步骤减少了50倍。
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引用次数: 0
Down to one network for computing crystalline materials 到一个计算晶体材料的网络。
IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2025-10-22 DOI: 10.1038/s43588-025-00877-8
Yubing Qian, Ji Chen
A recent study proposes using a single neural network to model and compute a wide range of solid-state materials, demonstrating exceptional transferability and substantially reduced computational costs — a breakthrough that could accelerate the design of next-generation materials in applications from efficient solar cells to room-temperature superconductors.
最近的一项研究建议使用单个神经网络来模拟和计算广泛的固态材料,展示了卓越的可转移性和大幅降低的计算成本——这一突破可以加速下一代材料的设计,从高效太阳能电池到室温超导体。
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引用次数: 0
期刊
Nature computational science
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