4 research outputs found

    Hadoop Spark Based Hydrogen Bond Analysis Tool (H-BAT) for Molecular Dynamics Simulation Trajectory Data

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    Molecular dynamics (MD) is a computational technique that works on the Newton\u27s equations of motion to study the dynamics of various biomolecules and, is commonly used by structural biologists. With the development of advanced simulation techniques and increasing computing power, large amounts of data are being generated from these simulations. Various enhanced sampling techniques are currently being used, that are able to capture rare events and generate simulation data in the form of multiple trajectories. Analyzing the simulation trajectory data and extracting meaningful information using the traditional sequential post-simulation data analysis methods are becoming increasingly untenable. Currently, molecular dynamics simulation algorithms that are scalable on high-performance computing clusters are available which generate a huge amount of MD data in short span of time. The need of the hour lies in developing a advanced and high-performance analytics platform based tool that can analyze this huge simulation data in a faster and more efficient way. The Hadoop Spark framework, provides an excellent platform that meets these requirements of handling large amounts of data parallely and perform analytics with high scalability. In this study, a tool name H-BAT has been developed using the Hadoop Spark platform to calculate hydrogen bonding within all solute-solute, solute-solvent and solvent-solvent molecules in large MD simulation trajectories. Vector geometry has been used for calculation of angle and distance between the atoms which are present in the form of triplets of filtered atoms taking part in hydrogen bond formation. The benchmarking was performed up to a data size of 48 GB which showed linear scalability. Additionally, the tool is capable of handling multiple similar trajectories simultaneously. Future enhancement of the tool would include various other analysis like normal mode analysis, RMSD, 2DRMSD and Water Density Analysis using the Hadoop Spark framework.<br /

    Abstracts of National Conference on Research and Developments in Material Processing, Modelling and Characterization 2020

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    This book presents the abstracts of the papers presented to the Online National Conference on Research and Developments in Material Processing, Modelling and Characterization 2020 (RDMPMC-2020) held on 26th and 27th August 2020 organized by the Department of Metallurgical and Materials Science in Association with the Department of Production and Industrial Engineering, National Institute of Technology Jamshedpur, Jharkhand, India. Conference Title: National Conference on Research and Developments in Material Processing, Modelling and Characterization 2020Conference Acronym: RDMPMC-2020Conference Date: 26–27 August 2020Conference Location: Online (Virtual Mode)Conference Organizer: Department of Metallurgical and Materials Engineering, National Institute of Technology JamshedpurCo-organizer: Department of Production and Industrial Engineering, National Institute of Technology Jamshedpur, Jharkhand, IndiaConference Sponsor: TEQIP-

    Contributory presentations/posters

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