Life and physical sciences have always been quick to adopt the latest advances in machine learning to accelerate scientific discovery. Examples of this are cell segmentation or cancer detection. Nevertheless, these exceptional results are based on mining previously created datasets to discover patterns or trends. Recent advances in AI have been demonstrated in real-time scenarios like self-driving cars or playing video games. However, these new techniques have not seen widespread adoption in life or physical sciences because experimentation can be slow. To tackle this limitation, this work aims to adapt generative learning algorithms to model scientific experiments and accelerate their discovery using in-silico simulations. We particularly focused on real-time experiments, aiming to model how they react to user inputs. To achieve this, here we present an encoder-decoder architecture based on the Transformer model to simulate real-time scientific experimentation, predict its future behaviour and manipulate it on a step-by-step basis. As a proof of concept, this architecture was trained to map a set of mechanical inputs to the oscillations generated by a chemical reaction. The model was paired with a Reinforcement Learning controller to show how the simulated chemistry can be manipulated in real-time towards user-defined behaviours. Our results demonstrate how generative learning can model real-time scientific experimentation to track how it changes through time as the user manipulates it, and how the trained models can be paired with optimisation algorithms to discover new phenomena beyond the physical limitations of lab experimentation. This work paves the way towards building surrogate systems where physical experimentation interacts with machine learning on a step-by-step basis.
翻译:生命和物理科学总是快速地采用机器学习的最新进步来加速科学发现,例如细胞分解或癌症检测。然而,这些例外的结果是以采矿先前创建的数据集为基础,以发现模式或趋势。AI的最近进展已经在实时假设中表现出来,例如自驾汽车或玩游戏。然而,这些新技术在生命或物理科学中并没有被广泛采用,因为实验可能缓慢。为了克服这一限制,这项工作旨在将石墨学习算法调整成模拟科学实验的模型,并加速利用硅模拟进行物理互动的发现。我们特别侧重于实时实验,目的是模拟它们如何对用户投入作出反应。为了实现这一点,我们在这里展示了一个基于变异器模型的编码-解码结构,以模拟实时科学实验,预测其未来行为,并逐步地操纵它。作为概念的证明,这一结构经过训练,将一组机械输入模型用于模拟科学实验,并用硅化反应来加速其互动。模型与一个强化学习器化的校准器,用来在实际时间实验中显示如何通过机变的机变模型和机变模型,如何在实际用户的机变的机变模型上进行。