The emergence of nanotechnology has enabled the development of a new generation of machines capable of performing complex tasks with unprecedented levels of precision. As a result, machine learning and artificial intelligence have become increasingly important for tackling the challenges posed by nanotechnology. Machine learning is a type of artificial intelligence that enables computers to learn from data and improve their accuracy over time. By leveraging large datasets, machine learning algorithms can identify patterns that can be used to automate complex tasks and make decisions in nanotechnology applications. In nanotechnology, machine learning techniques are used to develop novel materials, characterize nanoscale structures, and optimize processes. For example, machine learning algorithms can be used to identify materials with specific properties, such as hardness or thermal conductivity. This can enable the development of materials with improved performance characteristics, such as biocompatible materials for medical applications or materials with enhanced optical properties for optical applications. In addition, machine learning can be used to identify nanoscale structures in complex datasets, such as those generated using advanced microscopy techniques. Furthermore, artificial intelligence can be used to optimize nanotechnology processes. For example, artificial neural networks can be used to model and predict the behavior of nanoscale systems, such as the interactions between materials and particles. This can enable the optimization of synthesis processes and the development of new Nanobiotechnology with improved performance characteristics. Additionally, artificial intelligence can be used to automate the fabrication of nanostructures, such as nano-electronic devices, by controlling the deposition and patterning of materials.
Title : Recent advances in nanomedicine: Sensors, implants, artificial intelligence, saving the environment, human studies, and more
Thomas J Webster, Hebei University of Technology, China
Title : Harnessing the unique transport properties of InAs nanowires for single molecule level sensing
Harry E Ruda, University of Toronto, Canada
Title : Photonic metasurfaces in azobenzene materials
Ribal Georges Sabat, Royal Military College of Canada, Canada
Title : Using CuO polycrystalline nanofilms as sensor for small organic molecules
Paulo Cesar De Morais, Catholic University of Brasilia, Brazil
Title : Microplastics and nanoplastics in Antartica. Consideration their impact on ecosystems and human and fauna health
Maria Cecilia Colautti, Defense University of Republic of Argentina, Argentina
Title : Surface-enhanced stimulated Raman spectroscopy with squeezed photonic states
Frank Hagelberg, East Tennessee State University, United States