Difference between revisions of "Ganesh Sivaraman"
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|phone=67721 | |phone=67721 | ||
|email=ganesh | |email=ganesh | ||
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== Research == | == Research == | ||
− | My research involves computational modeling of solid state devices/materials for [https://en.wikipedia.org/wiki/Nanopore label free] DNA sequencing performed with the framework of Density functional theory (DFT). | + | My research involves computational modeling of solid state devices / materials for next generation [https://en.wikipedia.org/wiki/Nanopore label free] DNA sequencing (and proteomics ) on High-performance computers. The device simulations are performed with the framework of Density functional theory (DFT) combined with Non-Equilibrium Greens Function (NEGF) Formalism. In addition, I am interest in the application of Machine learning to Nanotechnology and Materials modeling. |
− | * | + | * Nucleobase interactions with lower diamondoids. |
− | * | + | * The solid state device simulation involves gold electrodes embedded with diamond caged molecules (i.e. Diamondoids) for tunneling based electric DNA sequencing devices . |
− | + | * Mutation and methylations detection | |
+ | |||
+ | [[File:tip_Rev4.png|500px|center|DIamondoid tipped gold electrodes]] | ||
+ | |||
+ | * Material modeling of Semiconducting (2H) / metallic (1T) phase in MoS<sub>2</sub> monolayer for novel nanoscale bio-sensing application. | ||
+ | |||
+ | [[File:HybridMOS2_V1.png|500px|center|Semiconductor-Metal-Semiconductor]] | ||
+ | |||
+ | * '''Sorted Coulomb matrix generator for Machine learning''' : [https://papers.nips.cc/paper/4830-learning-invariant-representations-of-molecules-for-atomization-energy-prediction.pdf coulomb matrix] has been developed as a feature to map and predict molecular properties. The python code takes in a collection of SMILE strings as inputs and returns a CSV file containing Labeled point vectors of molecules, optimized to be read by [https://spark.apache.org/docs/latest/ml-guide.html Apache Spark MLlib]. The serial version of the code can be accessed [https://github.com/pythonpanda/coulomb_matrix/tree/coulomb-matrix-generator here]. | ||
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+ | <span style="font-size:200%"> '''publications''' → [https://www.researchgate.net/profile/Ganesh_Sivaraman here]</span>. | ||
+ | |||
+ | === Master Thesis === | ||
+ | {{Download|MSc_thesis_abstract_sivaraman.pdf|"Effect of The Protein Electric Field on The Spectral Tuning Of A Photosynthetic System"}}, 2012, [http://bio.phys.uniroma1.it CBBC Group], Sapienza University of Rome, Italy. |
Latest revision as of 08:49, 13 September 2017
As Ganesh Sivaraman is not a member of our working group anymore, the information on this page might be outdated.
Ganesh Sivaraman
PhD student
PhD student
Office: | 1.080 |
---|---|
Phone: | +49 711 685-67721 |
Fax: | +49 711 685-63658 |
Email: | ganesh _at_ icp.uni-stuttgart.de |
Address: | Ganesh Sivaraman Institute for Computational Physics Universität Stuttgart Allmandring 3 70569 Stuttgart Germany |
Research
My research involves computational modeling of solid state devices / materials for next generation label free DNA sequencing (and proteomics ) on High-performance computers. The device simulations are performed with the framework of Density functional theory (DFT) combined with Non-Equilibrium Greens Function (NEGF) Formalism. In addition, I am interest in the application of Machine learning to Nanotechnology and Materials modeling.
- Nucleobase interactions with lower diamondoids.
- The solid state device simulation involves gold electrodes embedded with diamond caged molecules (i.e. Diamondoids) for tunneling based electric DNA sequencing devices .
- Mutation and methylations detection
- Material modeling of Semiconducting (2H) / metallic (1T) phase in MoS2 monolayer for novel nanoscale bio-sensing application.
- Sorted Coulomb matrix generator for Machine learning : coulomb matrix has been developed as a feature to map and predict molecular properties. The python code takes in a collection of SMILE strings as inputs and returns a CSV file containing Labeled point vectors of molecules, optimized to be read by Apache Spark MLlib. The serial version of the code can be accessed here.
publications → here.
Master Thesis
"Effect of The Protein Electric Field on The Spectral Tuning Of A Photosynthetic System" (267 KB)
, 2012, CBBC Group, Sapienza University of Rome, Italy.