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Biomimetic molecular design tools that learn, evolve, and adapt

机译:学习,进化和适应的仿生分子设计工具

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A dominant hallmark of living systems is their ability to adapt to changes in the environment by learning and evolving. Nature does this so superbly that intensive research efforts are now attempting to mimic biological processes. Initially this biomimicry involved developing synthetic methods to generate complex bioactive natural products. Recent work is attempting to understand how molecular machines operate so their principles can be copied, and learning how to employ biomimetic evolution and learning methods to solve complex problems in science, medicine and engineering. Automation, robotics, artificial intelligence, and evolutionary algorithms are now converging to generate what might broadly be called in silico-based adaptive evolution of materials. These methods are being applied to organic chemistry to systematize reactions, create synthesis robots to carry out unit operations, and to devise closed loop flow self-optimizing chemical synthesis systems. Most scientific innovations and technologies pass through the well-known “S curve”, with slow beginning, an almost exponential growth in capability, and a stable applications period. Adaptive, evolving, machine learning-based molecular design and optimization methods are approaching the period of very rapid growth and their impact is already being described as potentially disruptive. This paper describes new developments in biomimetic adaptive, evolving, learning computational molecular design methods and their potential impacts in chemistry, engineering, and medicine.
机译:生活系统的主导标志是他们通过学习和发展来适应环境的变化。自然这样做如此卓越的强化研究努力现在正在试图模仿生物过程。最初,这种生物化涉及开发合成方法以产生复杂的生物活性天然产物。最近的工作试图了解分子器如何运作,因此可以复制它们的原则,并学习如何使用仿生进化和学习方法来解决科学,医学和工程中的复杂问题。自动化,机器人,人工智能和进化算法现在正在收敛以产生可能在基于硅的适应性演化中被广泛调用的内容。这些方法正在应用于有机化学来系统化反应,产生合成机器人以进行单元操作,并设计闭环流自优化化学合成系统。大多数科学创新和技术通过了众所周知的“S曲线”,开始缓慢,能力的几乎指数增长和稳定的应用程序。自适应,不断发展,机器学习的分子设计和优化方法正在接近非常快速的增长,并且它们的影响已经被描述为潜在的破坏性。本文介绍了仿生自适应,不断发展,学习计算分子设计方法及其在化学,工程和医学中的潜在影响的新发展。

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