Litcius/Paper detail

A Holistic Data-Driven Approach to Synthesis Predictions of Colloidal Nanocrystal Shapes

Ludovic Zaza, Bojana Ranković, Philippe Schwaller, Raffaella Buonsanti

2025Journal of the American Chemical Society11 citationsDOIOpen Access PDF

Abstract

The ability to precisely design colloidal nanocrystals (NCs) has far-reaching implications in optoelectronics, catalysis, biomedicine, and beyond. Achieving such control is generally based on a trial-and-error approach. Data-driven synthesis holds promise to advance both discovery and mechanistic knowledge. Herein, we contribute to advancing the current state of the art in the chemical synthesis of colloidal NCs by proposing a machine-learning toolbox that operates in a low-data regime, yet comprehensive of the most typical parameters relevant for colloidal NC synthesis. The developed toolbox predicts the NC shape given the reaction conditions and proposes reaction conditions given a target NC shape using Cu NCs as the model system. By classifying NC shapes on a continuous energy scale, we synthesize an unreported shape, which is the Cu rhombic dodecahedron. This holistic approach integrates data-driven and computational tools with materials chemistry. Such development is promising to greatly accelerate materials discovery and mechanistic understanding, thus advancing the field of tailored materials with atomic-scale precision tunability.

Topics & Concepts

ToolboxNanotechnologyNanocrystalChemistryBiomedicineColloidField (mathematics)Scale (ratio)Computer scienceMaterials sciencePhysicsPure mathematicsMathematicsProgramming languageGeneticsPhysical chemistryBiologyQuantum mechanicsMachine Learning in Materials ScienceGold and Silver Nanoparticles Synthesis and ApplicationsComputational Drug Discovery Methods