Porous molecular crystals are an emerging class of porous materials formed by crystallisation of molecules with weak intermolecular interactions, which distinguishes them from extended nanoporous materials like metal-organic frameworks (MOFs). To aid discovery of porous molecular crystals for desired applications, energy-structure-function (ESF) maps were developed that combine a priori prediction of both the crystal structure and its functional properties. However, it is a challenge to represent the high-dimensional structural and functional landscapes of an ESF map and to identify energetically favourable and functionally interesting polymorphs among the 1000s to 10 000s of structures typically on a single ESF map. Here, we introduce geom...
Machine learning has emerged as an attractive alternative to experiments and simulations for predict...
A major obstacle for machine learning (ML) in chemical science is the lack of physically informed fe...
Abstract Accurate theoretical predictions of desired properties of materials play an important role ...
Porous molecular crystals are an emerging class of porous materials formed by crystallisation of mol...
Most nanoporous solids, such as metal-organic frameworks and zeolites, are composed of extended thre...
Molecular crystals cannot be designed like macroscopic objects because they do not assemble accordin...
Some of the most successful approaches to structural design in materials chemistry have exploited st...
While energy-structure-function (ESF) maps are a powerful new tool for in silico materials design, t...
Machine learning has emerged as a powerful approach in materials discovery. Its major challenge is s...
While energy-structure-function (ESF) maps are a powerful new tool for in silico materials design, t...
Organic molecules tend to close pack to form dense structures when they are crystallised from organi...
In principle, the development of computational methods for structure and property prediction offers ...
In most applications of nanoporous materials the pore structure is as important as the chemical comp...
Mesoporous molecular crystals have potential applications in separation and catalysis, but they are ...
Mesoporous molecular crystals have potential applications in separation and catalysis, but they are ...
Machine learning has emerged as an attractive alternative to experiments and simulations for predict...
A major obstacle for machine learning (ML) in chemical science is the lack of physically informed fe...
Abstract Accurate theoretical predictions of desired properties of materials play an important role ...
Porous molecular crystals are an emerging class of porous materials formed by crystallisation of mol...
Most nanoporous solids, such as metal-organic frameworks and zeolites, are composed of extended thre...
Molecular crystals cannot be designed like macroscopic objects because they do not assemble accordin...
Some of the most successful approaches to structural design in materials chemistry have exploited st...
While energy-structure-function (ESF) maps are a powerful new tool for in silico materials design, t...
Machine learning has emerged as a powerful approach in materials discovery. Its major challenge is s...
While energy-structure-function (ESF) maps are a powerful new tool for in silico materials design, t...
Organic molecules tend to close pack to form dense structures when they are crystallised from organi...
In principle, the development of computational methods for structure and property prediction offers ...
In most applications of nanoporous materials the pore structure is as important as the chemical comp...
Mesoporous molecular crystals have potential applications in separation and catalysis, but they are ...
Mesoporous molecular crystals have potential applications in separation and catalysis, but they are ...
Machine learning has emerged as an attractive alternative to experiments and simulations for predict...
A major obstacle for machine learning (ML) in chemical science is the lack of physically informed fe...
Abstract Accurate theoretical predictions of desired properties of materials play an important role ...