IBM Reference Architecture for  High Performance Data and AI in Healthcare and Life Sciences IBM Reference Architecture for  High Performance Data and AI in Healthcare and Life Sciences

IBM Reference Architecture for High Performance Data and AI in Healthcare and Life Sciences

출판사 설명

This IBM® Redpaper publication provides an update to the original description of IBM Reference Architecture for Genomics. This paper expands the reference architecture to cover all of the major vertical areas of healthcare and life sciences industries, such as genomics, imaging, and clinical and translational research.

The architecture was renamed IBM Reference Architecture for High Performance Data and AI in Healthcare and Life Sciences to reflect the fact that it incorporates key building blocks for high-performance computing (HPC) and software-defined storage, and that it supports an expanding infrastructure of leading industry partners, platforms, and frameworks.

The reference architecture defines a highly flexible, scalable, and cost-effective platform for accessing, managing, storing, sharing, integrating, and analyzing big data, which can be deployed on-premises, in the cloud, or as a hybrid of the two. IT organizations can use the reference architecture as a high-level guide for overcoming data management challenges and processing bottlenecks that are frequently encountered in personalized healthcare initiatives, and in compute-intensive and data-intensive biomedical workloads.

This reference architecture also provides a framework and context for modern healthcare and life sciences institutions to adopt cutting-edge technologies, such as cognitive life sciences solutions, machine learning and deep learning, Spark for analytics, and cloud computing. To illustrate these points, this paper includes case studies describing how clients and IBM Business Partners alike used the reference architecture in the deployments of demanding infrastructures for precision medicine.

This publication targets technical professionals (consultants, technical support staff, IT Architects, and IT Specialists) who are responsible for providing life sciences solutions and support.

장르
컴퓨터 및 인터넷
출시일
2019년
9월 8일
언어
EN
영어
길이
89
페이지
출판사
IBM Redbooks
판매자
International Business Machines Corp
크기
1.1
MB
Enterprise Data Warehouse Optimization with Hadoop on IBM Power Systems Servers Enterprise Data Warehouse Optimization with Hadoop on IBM Power Systems Servers
2018년
Performance and Capacity Implications for Big Data Performance and Capacity Implications for Big Data
2014년
Building Big Data and Analytics Solutions in the Cloud Building Big Data and Analytics Solutions in the Cloud
2014년
IBM Technical Computing Clouds IBM Technical Computing Clouds
2013년
Fundamentals of Data Engineering Fundamentals of Data Engineering
2022년
Big Data For Dummies Big Data For Dummies
2013년
IBM PowerAI: Deep Learning Unleashed on IBM Power Systems Servers IBM PowerAI: Deep Learning Unleashed on IBM Power Systems Servers
2019년
IBM Spectrum Scale (formerly GPFS) IBM Spectrum Scale (formerly GPFS)
2017년
IBM Data Engine for Hadoop and Spark IBM Data Engine for Hadoop and Spark
2016년
Software Defined Data Center with Red Hat Cloud and Open Source IT Operations Management Software Defined Data Center with Red Hat Cloud and Open Source IT Operations Management
2020년
SAP HANA Platform Migration SAP HANA Platform Migration
2020년
Implementing IBM Spectrum Scale Implementing IBM Spectrum Scale
2015년
IBM Software Defined Infrastructure for Big Data Analytics Workloads IBM Software Defined Infrastructure for Big Data Analytics Workloads
2015년
Enterprise Data Warehouse Optimization with Hadoop on IBM Power Systems Servers Enterprise Data Warehouse Optimization with Hadoop on IBM Power Systems Servers
2018년
AI and Big Data on IBM Power Systems Servers AI and Big Data on IBM Power Systems Servers
2019년
IBM Security Solutions Architecture for Network, Server and Endpoint IBM Security Solutions Architecture for Network, Server and Endpoint
2011년
Introduction to Artificial Intelligence for Security Professionals Introduction to Artificial Intelligence for Security Professionals
2017년
Automated Machine Learning Automated Machine Learning
2019년