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Big data and deep data in scanning and electron microscopies: deriving functionality from multidimensional data sets.

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TLDR
Here, several recent applications of the big and deep data analysis methods are reviewed to visualize, compress, and translate this multidimensional structural and functional data into physically and chemically relevant information.
Abstract
The development of electron and scanning probe microscopies in the second half of the twentieth century has produced spectacular images of the internal structure and composition of matter with nanometer, molecular, and atomic resolution. Largely, this progress was enabled by computer-assisted methods of microscope operation, data acquisition, and analysis. Advances in imaging technology in the beginning of the twenty-first century have opened the proverbial floodgates on the availability of high-veracity information on structure and functionality. From the hardware perspective, high-resolution imaging methods now routinely resolve atomic positions with approximately picometer precision, allowing for quantitative measurements of individual bond lengths and angles. Similarly, functional imaging often leads to multidimensional data sets containing partial or full information on properties of interest, acquired as a function of multiple parameters (time, temperature, or other external stimuli). Here, we review several recent applications of the big and deep data analysis methods to visualize, compress, and translate this multidimensional structural and functional data into physically and chemically relevant information.

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A review of recent advances in thermophysical properties at the nanoscale: From solid state to colloids

TL;DR: In this paper, a review of recent advances in the measurement and modeling of thermophysical properties at the nanoscale (from the solid state to colloids) is presented, including thermal conductivity, dynamic viscosity, specific heat capacity, and density.
Journal ArticleDOI

Big-deep-smart data in imaging for guiding materials design.

TL;DR: New opportunities in materials design enabled by the availability of big data in imaging and data analytics approaches, including their limitations, in material systems of practical interest are discussed.
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Opportunities and Challenges for Biosensors and Nanoscale Analytical Tools for Pandemics: COVID-19.

TL;DR: The technological challenges and opportunities of current bio/chemical sensors and analytical tools are reviewed by critically analyzing the bottlenecks which have hindered the implementation of advanced sensing technologies in pandemic diseases, and holistic insights into challenges associated with the quick translation of sensing technologies, policies, ethical issues, technology adoption are provided.
References
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Journal ArticleDOI

Riemannian Manifold Learning

TL;DR: A novel framework based on the assumption that the input high-dimensional data lie on an intrinsically low-dimensional Riemannian manifold, which can learn intrinsic geometric structures of the data, preserve radial geodesic distances, and yield regular embeddings.
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Bulk superconductivity at 14 K in single crystals of Fe 1 + y Te x Se 1 − x

TL;DR: In this article, a modified Bridgeman method was used to measure resistivity, magnetic susceptibility, and heat capacity for single crystals of Fe{sub 1+y}Te{sub x}Se {sub 1-x} grown via a modified BIM with 0 < y < 0.15 and x = 1.
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Switching spectroscopy piezoresponse force microscopy of ferroelectric materials

TL;DR: In this paper, the authors introduce switching spectroscopy piezoresponse force microscopy as a tool for real-space imaging of switching properties on the nanoscale, including imprinting, coercive bias, remanent and saturation responses.
Journal ArticleDOI

Joint Bayesian Endmember Extraction and Linear Unmixing for Hyperspectral Imagery

TL;DR: A Gibbs sampler is proposed to overcome the complexity of evaluating the resulting posterior distribution and estimates the unknown parameters using these generated samples using the joint Bayesian estimator.

Map-Reduce for Machine Learning on Multicore

TL;DR: In this article, the authors develop a broadly applicable parallel programming method, one that is easily applied to many different learning algorithms, such as locally weighted linear regression (LWLR), k-means, logistic regression (LR), naive Bayes (NB), SVM, ICA, PCA, gaussian discriminant analysis (GDA), EM, and backpropagation (NN).
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