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Surya R Kalidindi

Showing results (1-10 of 22) with videos related to

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Integrating Materials and Manufacturing Innovation|July 11, 2017
Materials Knowledge Systems in Python - A Data Science Framework for Accelerated Development of Hierarchical MaterialsDavid B Brough, Daniel Wheeler, Surya R Kalidindi
Journal of the Mechanical Behavior of Biomedical Materials|April 1, 2019
Periprosthetic biomechanical response towards dental implants, with functional gradation, for single/multiple dental lossSubhomoy Chatterjee, Sulagna Sarkar, Surya R Kalidindi, et al.
Integrating Materials and Manufacturing Innovation|January 21, 2020
High throughput exploration of process-property linkages in Al-6061 using instrumented spherical microindentation and microstructurally graded samplesJordan S Weaver, Ali Khosravani, Andrew Castillo, et al.
Biomedical Materials (Bristol, England)|December 1, 2020
Critical comparison of image analysis workflows for quantitative cell morphological evaluation in assessing cell response to biomaterialsK Ravikumar, Sven P Voigt, Surya R Kalidindi, et al.
The Journal of Physical Chemistry Letters|September 28, 2020
Voxelized Atomic Structure Potentials: Predicting Atomic Forces with the Accuracy of Quantum Mechanics Using Convolutional Neural NetworksMatthew C Barry, Kristopher E Wise, Surya R Kalidindi, et al.
Acta Materialia|November 2, 2020
Microstructure-based knowledge systems for capturing process-structure evolution linkagesDavid B Brough, Daniel Wheeler, James A Warren, et al.
Advanced Science (Weinheim, Baden-Wurttemberg, Germany)|January 31, 2026
ML Workflows for Screening Degradation-Relevant Properties of Forever ChemicalsPranoy Ray, Andrew R Castillo, Manoj Kolel-Veetil, et al.
Materials (Basel, Switzerland)|October 21, 2020
Evaluation of Ti-Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process RegressionXinyi Gong, Yuksel C Yabansu, Peter C Collins, et al.
Nanotechnology|August 4, 2015
Application of data science tools to quantify and distinguish between structures and models in molecular dynamics datasetsSurya R Kalidindi, Joshua A Gomberg, Zachary T Trautt, et al.
Journal of the Mechanical Behavior of Biomedical Materials|November 23, 2015
Nacre-like hybrid films: Structure, properties, and the effect of relative humidityMohammed T Abba, Philipp M Hunger, Surya R Kalidindi, et al.
Pageof 3

Showing results (1-10 of 22) with videos related to

Sort By:
Pageof 3
Integrating Materials and Manufacturing Innovation|July 11, 2017
Materials Knowledge Systems in Python - A Data Science Framework for Accelerated Development of Hierarchical MaterialsDavid B Brough, Daniel Wheeler, Surya R Kalidindi
Journal of the Mechanical Behavior of Biomedical Materials|April 1, 2019
Periprosthetic biomechanical response towards dental implants, with functional gradation, for single/multiple dental lossSubhomoy Chatterjee, Sulagna Sarkar, Surya R Kalidindi, et al.
Integrating Materials and Manufacturing Innovation|January 21, 2020
High throughput exploration of process-property linkages in Al-6061 using instrumented spherical microindentation and microstructurally graded samplesJordan S Weaver, Ali Khosravani, Andrew Castillo, et al.
Biomedical Materials (Bristol, England)|December 1, 2020
Critical comparison of image analysis workflows for quantitative cell morphological evaluation in assessing cell response to biomaterialsK Ravikumar, Sven P Voigt, Surya R Kalidindi, et al.
The Journal of Physical Chemistry Letters|September 28, 2020
Voxelized Atomic Structure Potentials: Predicting Atomic Forces with the Accuracy of Quantum Mechanics Using Convolutional Neural NetworksMatthew C Barry, Kristopher E Wise, Surya R Kalidindi, et al.
Acta Materialia|November 2, 2020
Microstructure-based knowledge systems for capturing process-structure evolution linkagesDavid B Brough, Daniel Wheeler, James A Warren, et al.
Advanced Science (Weinheim, Baden-Wurttemberg, Germany)|January 31, 2026
ML Workflows for Screening Degradation-Relevant Properties of Forever ChemicalsPranoy Ray, Andrew R Castillo, Manoj Kolel-Veetil, et al.
Materials (Basel, Switzerland)|October 21, 2020
Evaluation of Ti-Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process RegressionXinyi Gong, Yuksel C Yabansu, Peter C Collins, et al.
Nanotechnology|August 4, 2015
Application of data science tools to quantify and distinguish between structures and models in molecular dynamics datasetsSurya R Kalidindi, Joshua A Gomberg, Zachary T Trautt, et al.
Journal of the Mechanical Behavior of Biomedical Materials|November 23, 2015
Nacre-like hybrid films: Structure, properties, and the effect of relative humidityMohammed T Abba, Philipp M Hunger, Surya R Kalidindi, et al.
Pageof 3