Computational tools for the analysis of biological networks in plants
نویسنده
چکیده
Dedicated to my parents Sabitri Das (late) and Balaram Das For their love and courage iv ACKNOWLEDGEMENTS I am deeply grateful for the guidance and support of my advisor Prof. Joshua S. insightful comments and prompt advice made my graduate-student life a fascinating and enriching experience. I thank him for his support, for sharing his endless supply of ideas, and for being my philosopher and guide. I could not have hoped for a better advisor. I am grateful to my committee, Prof. for their valuable time, advice, expertise and good-natured support to better my work. for their advice and support. Many thanks to my family for all the love, support and courage they have given. I am especially thankful to my brothers, Ramani Ranjan Das and Saroj Ranjan Das, for their continued courage and support. I am proud of you as my family. Thanks to my help and support. Particularly for being there with me from the beginning, when I was preparing to leave a job and enter into the graduate program, till the end of the graduate-student life. My sincerest thanks to Prof. Strauss III for writing recommendation letters for my M.S. graduate program applications. v The research presented in this thesis is the result of joint research with colleagues. Finally, I would like to thank the former and the current members of Weitz Group, who shared many good times with me during my stay at Georgia Tech and provided feedback and comments on all of my work: Dr.
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