The discovery of chemical reactions is an inherently unpredictable and time-consuming process1. An attractive alternative is to predict reactivity, although relevant approaches, such as computer-aided reaction design, are still in their infancy2. Reaction prediction based on high-level quantum chemical methods is complex3, even for simple molecules. Although machine learning is powerful for data analysis4,5, its applications in chemistry are still being developed6. Inspired by strategies based on chemists’ intuition7, we propose that a reaction system controlled by a machine learning algorithm may be able to explore the space of chemical reactions quickly, especially if trained by an expert8. Here we present an organic synthesis robot that ...
The molecular structures synthesizable by organic chemists dictate the molecular functions they can ...
The interplay of kinetics and thermodynamics governs reactive processes, and their control is key in...
As machine learning/artificial intelligence algorithms are defeating chess masters and, most recentl...
We present a robotic chemical discovery system capable of learning the generalized notion of reactiv...
The exploration of chemical space for new reactivity, reactions and molecules is limited by the need...
The search for new molecules often involves cycles of design-make-test-analyze steps, where new mole...
The work presented in this thesis focuses on the development of a platform to explore chemical space...
Although extending the reactivity of a given class of molecules is relatively straightforward, the d...
Discovering new reactions, optimizing their performance, and extending the synthetically accessible ...
Machine learning has been used to study chemical reactivity for a long time in fields such as physic...
There is a growing drive in the chemistry community to exploit rapidly growing robotic technologies ...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
We present a chemical discovery robot for the efficient and reliable discovery of supramolecular arc...
Machines learn chemistry: An artificial intelligence algorithm has learned to predict the outcomes o...
Dataset for an artificial intelligence which was able to learn how to identify chemical reactivity i...
The molecular structures synthesizable by organic chemists dictate the molecular functions they can ...
The interplay of kinetics and thermodynamics governs reactive processes, and their control is key in...
As machine learning/artificial intelligence algorithms are defeating chess masters and, most recentl...
We present a robotic chemical discovery system capable of learning the generalized notion of reactiv...
The exploration of chemical space for new reactivity, reactions and molecules is limited by the need...
The search for new molecules often involves cycles of design-make-test-analyze steps, where new mole...
The work presented in this thesis focuses on the development of a platform to explore chemical space...
Although extending the reactivity of a given class of molecules is relatively straightforward, the d...
Discovering new reactions, optimizing their performance, and extending the synthetically accessible ...
Machine learning has been used to study chemical reactivity for a long time in fields such as physic...
There is a growing drive in the chemistry community to exploit rapidly growing robotic technologies ...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
We present a chemical discovery robot for the efficient and reliable discovery of supramolecular arc...
Machines learn chemistry: An artificial intelligence algorithm has learned to predict the outcomes o...
Dataset for an artificial intelligence which was able to learn how to identify chemical reactivity i...
The molecular structures synthesizable by organic chemists dictate the molecular functions they can ...
The interplay of kinetics and thermodynamics governs reactive processes, and their control is key in...
As machine learning/artificial intelligence algorithms are defeating chess masters and, most recentl...