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Featured researches published by Logan Ward.


arXiv: Materials Science | 2016

A general-purpose machine learning framework for predicting properties of inorganic materials

Logan Ward; Ankit Agrawal; Alok N. Choudhary; C. Wolverton

A very active area of materials research is to devise methods that use machine learning to automatically extract predictive models from existing materials data. While prior examples have demonstrated successful models for some applications, many more applications exist where machine learning can make a strong impact. To enable faster development of machine-learning-based models for such applications, we have created a framework capable of being applied to a broad range of materials data. Our method works by using a chemically diverse list of attributes, which we demonstrate are suitable for describing a wide variety of properties, and a novel method for partitioning the data set into groups of similar materials in order to boost the predictive accuracy. In this manuscript, we demonstrate how this new method can be used to predict diverse properties of crystalline and amorphous materials, such as band gap energy and glass-forming ability.


Science Advances | 2018

Accelerated discovery of metallic glasses through iteration of machine learning and high-throughput experiments

Fang Ren; Logan Ward; Travis Williams; Kevin J. Laws; C. Wolverton; Jason R. Hattrick-Simpers; Apurva Mehta

Coupling artificial intelligence with high-throughput experimentation accelerates discovery of amorphous alloys. With more than a hundred elements in the periodic table, a large number of potential new materials exist to address the technological and societal challenges we face today; however, without some guidance, searching through this vast combinatorial space is frustratingly slow and expensive, especially for materials strongly influenced by processing. We train a machine learning (ML) model on previously reported observations, parameters from physiochemical theories, and make it synthesis method–dependent to guide high-throughput (HiTp) experiments to find a new system of metallic glasses in the Co-V-Zr ternary. Experimental observations are in good agreement with the predictions of the model, but there are quantitative discrepancies in the precise compositions predicted. We use these discrepancies to retrain the ML model. The refined model has significantly improved accuracy not only for the Co-V-Zr system but also across all other available validation data. We then use the refined model to guide the discovery of metallic glasses in two additional previously unreported ternaries. Although our approach of iterative use of ML and HiTp experiments has guided us to rapid discovery of three new glass-forming systems, it has also provided us with a quantitatively accurate, synthesis method–sensitive predictor for metallic glasses that improves performance with use and thus promises to greatly accelerate discovery of many new metallic glasses. We believe that this discovery paradigm is applicable to a wider range of materials and should prove equally powerful for other materials and properties that are synthesis path–dependent and that current physiochemical theories find challenging to predict.


Current Opinion in Solid State & Materials Science | 2017

Atomistic calculations and materials informatics: A review

Logan Ward; C. Wolverton


Physical Review B | 2017

Including crystal structure attributes in machine learning models of formation energies via Voronoi tessellations

Logan Ward; Ruoqian Liu; Amar Krishna; Vinay Hegde; Ankit Agrawal; Alok N. Choudhary; C. Wolverton


Physical Review Materials | 2017

Automated crystal structure solution from powder diffraction data: Validation of the first-principles-assisted structure solution method

Logan Ward; Kyle Michel; C. Wolverton


Mrs Bulletin | 2018

Strategies for accelerating the adoption of materials informatics

Logan Ward; Muratahan Aykol; Ben Blaiszik; Ian T. Foster; Bryce Meredig; James E. Saal; Santosh Suram


Bulletin of the American Physical Society | 2016

Accurate Models of Formation Enthalpy Created using Machine Learning and Voronoi Tessellations

Logan Ward; Rosanne Liu; Amar Krishna; Vinay Hegde; Ankit Agrawal; Alok N. Choudhary; C. Wolverton


Acta Materialia | 2013

Structural property comparison of Ca–Mg–Zn glasses to a colloidal proxy system

R.C. Kramb; Logan Ward; Katharine Jensen; Richard A. Vaia; Daniel B. Miracle


Bulletin of the American Physical Society | 2018

Accelerated Discovery of Quaternary Heusler with High-Throughput Density Functional Theory and Machine Learning

Kyoungdoc Kim; Logan Ward; Jiangang He; Amar Krishna; Ankit Agrawal; Peter W. Voorhees; C. Wolverton


Acta Materialia | 2018

A machine learning approach for engineering bulk metallic glass alloys

Logan Ward; Stephanie O'keeffe; Joseph Stevick; Glenton R. Jelbert; Muratahan Aykol; C. Wolverton

Collaboration


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C. Wolverton

Northwestern University

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Amar Krishna

Northwestern University

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Kyle Michel

Northwestern University

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Vinay Hegde

Indian Institute of Science

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Apurva Mehta

SLAC National Accelerator Laboratory

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Ben Blaiszik

Argonne National Laboratory

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