Ibm Spectrum Scale Best Practices For Genomics Medicine Workloads

Download Ibm Spectrum Scale Best Practices For Genomics Medicine Workloads full books in PDF, epub, and Kindle. Read online free Ibm Spectrum Scale Best Practices For Genomics Medicine Workloads ebook anywhere anytime directly on your device. Fast Download speed and no annoying ads. We cannot guarantee that every ebooks is available!

IBM Spectrum Scale Best Practices for Genomics Medicine Workloads

IBM Spectrum Scale Best Practices for Genomics Medicine Workloads
Author :
Publisher : IBM Redbooks
Total Pages : 78
Release :
ISBN-10 : 9780738456751
ISBN-13 : 0738456756
Rating : 4/5 (756 Downloads)

Book Synopsis IBM Spectrum Scale Best Practices for Genomics Medicine Workloads by : Joanna Wong

Download or read book IBM Spectrum Scale Best Practices for Genomics Medicine Workloads written by Joanna Wong and published by IBM Redbooks. This book was released on 2018-04-25 with total page 78 pages. Available in PDF, EPUB and Kindle. Book excerpt: Advancing the science of medicine by targeting a disease more precisely with treatment specific to each patient relies on access to that patient's genomics information and the ability to process massive amounts of genomics data quickly. Although genomics data is becoming a critical source for precision medicine, it is expected to create an expanding data ecosystem. Therefore, hospitals, genome centers, medical research centers, and other clinical institutes need to explore new methods of storing, accessing, securing, managing, sharing, and analyzing significant amounts of data. Healthcare and life sciences organizations that are running data-intensive genomics workloads on an IT infrastructure that lacks scalability, flexibility, performance, management, and cognitive capabilities also need to modernize and transform their infrastructure to support current and future requirements. IBM® offers an integrated solution for genomics that is based on composable infrastructure. This solution enables administrators to build an IT environment in a way that disaggregates the underlying compute, storage, and network resources. Such a composable building block based solution for genomics addresses the most complex data management aspect and allows organizations to store, access, manage, and share huge volumes of genome sequencing data. IBM SpectrumTM Scale is software-defined storage that is used to manage storage and provide massive scale, a global namespace, and high-performance data access with many enterprise features. IBM Spectrum ScaleTM is used in clustered environments, provides unified access to data via file protocols (POSIX, NFS, and SMB) and object protocols (Swift and S3), and supports analytic workloads via HDFS connectors. Deploying IBM Spectrum Scale and IBM Elastic StorageTM Server (IBM ESS) as a composable storage building block in a Genomics Next Generation Sequencing deployment offers key benefits of performance, scalability, analytics, and collaboration via multiple protocols. This IBM RedpaperTM publication describes a composable solution with detailed architecture definitions for storage, compute, and networking services for genomics next generation sequencing that enable solution architects to benefit from tried-and-tested deployments, to quickly plan and design an end-to-end infrastructure deployment. The preferred practices and fully tested recommendations described in this paper are derived from running GATK Best Practices work flow from the Broad Institute. The scenarios provide all that is required, including ready-to-use configuration and tuning templates for the different building blocks (compute, network, and storage), that can enable simpler deployment and that can enlarge the level of assurance over the performance for genomics workloads. The solution is designed to be elastic in nature, and the disaggregation of the building blocks allows IT administrators to easily and optimally configure the solution with maximum flexibility. The intended audience for this paper is technical decision makers, IT architects, deployment engineers, and administrators who are working in the healthcare domain and who are working on genomics-based workloads.


IBM Spectrum Scale Best Practices for Genomics Medicine Workloads Related Books

IBM Spectrum Scale Best Practices for Genomics Medicine Workloads
Language: en
Pages: 78
Authors: Joanna Wong
Categories: Computers
Type: BOOK - Published: 2018-04-25 - Publisher: IBM Redbooks

DOWNLOAD EBOOK

Advancing the science of medicine by targeting a disease more precisely with treatment specific to each patient relies on access to that patient's genomics info
HIPAA Compliance for Healthcare Workloads on IBM Spectrum Scale
Language: en
Pages: 18
Authors: Sandeep R. Patil
Categories: Computers
Type: BOOK - Published: 2020-03-16 - Publisher: IBM Redbooks

DOWNLOAD EBOOK

When technology workloads process healthcare data, it is important to understand Health Insurance Portability and Accountability Act (HIPAA) compliance and what
IBM Reference Architecture for High Performance Data and AI in Healthcare and Life Sciences
Language: en
Pages: 88
Authors: Dino Quintero
Categories: Computers
Type: BOOK - Published: 2019-09-08 - Publisher: IBM Redbooks

DOWNLOAD EBOOK

This IBM® Redpaper publication provides an update to the original description of IBM Reference Architecture for Genomics. This paper expands the reference arch
IBM Elastic Storage Server Implementation Guide for Version 5.3
Language: en
Pages: 102
Authors: Luis Bolinches
Categories: Computers
Type: BOOK - Published: 2019-02-05 - Publisher: IBM Redbooks

DOWNLOAD EBOOK

This IBM® RedpaperTM publication introduces and describes the IBM Elastic StorageTM Server as a scalable, high-performance data and file management solution. T
Cloud Data Sharing with IBM Spectrum Scale
Language: en
Pages: 36
Authors: Nikhil Khandelwal
Categories: Computers
Type: BOOK - Published: 2017-02-14 - Publisher: IBM Redbooks

DOWNLOAD EBOOK

This IBM® RedpaperTM publication provides information to help you with the sizing, configuration, and monitoring of hybrid cloud solutions using the Cloud data