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Ganesh Sivaraman

Showing results (1-10 of 19) with videos related to

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Nanoscale|March 11, 2014
Chemically modified diamondoids as biosensors for DNAGanesh Sivaraman, Maria Fyta
The Journal of Chemical Physics|October 15, 2024
Evidence of short chains in liquid sulfurChris J Benmore, Ganesh Sivaraman
Journal of Physics. Condensed Matter : an Institute of Physics Journal|June 12, 2024
Deciphering diffuse scattering with machine learning and the equivariant foundation model: the case of molten FeOGanesh Sivaraman, Chris J Benmore
Journal of Chemical Theory and Computation|January 12, 2022
Coarse-Grained Density Functional Theory Predictions via Deep Kernel LearningGanesh Sivaraman, Nicholas E Jackson
Nanotechnology|November 8, 2016
Diamondoid-based molecular junctions: a computational studyBibek Adhikari, Ganesh Sivaraman, Maria Fyta
The European Physical Journal. E, Soft Matter|October 24, 2014
The role of a diamondoid as a hydrogen donor or acceptor in probing DNA nucleobasesFrank C Maier, Ganesh Sivaraman, Maria Fyta
Nanotechnology|September 9, 2016
Benchmark investigation of diamondoid-functionalized electrodes for nanopore DNA sequencingGanesh Sivaraman, Rodrigo G Amorim, Ralph H Scheicher, et al.
Nanoscale|April 29, 2016
Diamondoid-functionalized gold nanogaps as sensors for natural, mutated, and epigenetically modified DNA nucleotidesGanesh Sivaraman, Rodrigo G Amorim, Ralph H Scheicher, et al.
The Journal of the Acoustical Society of America|August 3, 2019
Unsupervised speaker adaptation for speaker independent acoustic to articulatory speech inversionGanesh Sivaraman, Vikramjit Mitra, Hosung Nam, et al.
The Journal of Chemical Physics|May 15, 2023
Machine learning interatomic potential for silicon-nitride (Si3N4) by active learningDiego Milardovich, Christoph Wilhelmer, Dominic Waldhoer, et al.
Pageof 2

Showing results (1-10 of 19) with videos related to

Sort By:
Pageof 2
Nanoscale|March 11, 2014
Chemically modified diamondoids as biosensors for DNAGanesh Sivaraman, Maria Fyta
The Journal of Chemical Physics|October 15, 2024
Evidence of short chains in liquid sulfurChris J Benmore, Ganesh Sivaraman
Journal of Physics. Condensed Matter : an Institute of Physics Journal|June 12, 2024
Deciphering diffuse scattering with machine learning and the equivariant foundation model: the case of molten FeOGanesh Sivaraman, Chris J Benmore
Journal of Chemical Theory and Computation|January 12, 2022
Coarse-Grained Density Functional Theory Predictions via Deep Kernel LearningGanesh Sivaraman, Nicholas E Jackson
Nanotechnology|November 8, 2016
Diamondoid-based molecular junctions: a computational studyBibek Adhikari, Ganesh Sivaraman, Maria Fyta
The European Physical Journal. E, Soft Matter|October 24, 2014
The role of a diamondoid as a hydrogen donor or acceptor in probing DNA nucleobasesFrank C Maier, Ganesh Sivaraman, Maria Fyta
Nanotechnology|September 9, 2016
Benchmark investigation of diamondoid-functionalized electrodes for nanopore DNA sequencingGanesh Sivaraman, Rodrigo G Amorim, Ralph H Scheicher, et al.
Nanoscale|April 29, 2016
Diamondoid-functionalized gold nanogaps as sensors for natural, mutated, and epigenetically modified DNA nucleotidesGanesh Sivaraman, Rodrigo G Amorim, Ralph H Scheicher, et al.
The Journal of the Acoustical Society of America|August 3, 2019
Unsupervised speaker adaptation for speaker independent acoustic to articulatory speech inversionGanesh Sivaraman, Vikramjit Mitra, Hosung Nam, et al.
The Journal of Chemical Physics|May 15, 2023
Machine learning interatomic potential for silicon-nitride (Si3N4) by active learningDiego Milardovich, Christoph Wilhelmer, Dominic Waldhoer, et al.
Pageof 2