IBM PowerAI: Deep Learning Unleashed on IBM Power Systems Servers IBM PowerAI: Deep Learning Unleashed on IBM Power Systems Servers

IBM PowerAI: Deep Learning Unleashed on IBM Power Systems Servers

Dino Quintero その他
    • 5.0 • 1件の評価

発行者による作品情報

This IBM® Redbooks® publication is a guide about the IBM PowerAI Deep Learning solution. This book provides an introduction to artificial intelligence (AI) and deep learning (DL), IBM PowerAI, and components of IBM PowerAI, deploying IBM PowerAI, guidelines for working with data and creating models, an introduction to IBM Spectrum™ Conductor Deep Learning Impact (DLI), and case scenarios.

IBM PowerAI started as a package of software distributions of many of the major DL software frameworks for model training, such as TensorFlow, Caffe, Torch, Theano, and the associated libraries, such as CUDA Deep Neural Network (cuDNN). The IBM PowerAI software is optimized for performance by using the IBM Power Systems™ servers that are integrated with NVLink. The AI stack foundation starts with servers with accelerators. graphical processing unit (GPU) accelerators are well-suited for the compute-intensive nature of DL training, and servers with the highest CPU to GPU bandwidth, such as IBM Power Systems servers, enable the high-performance data transfer that is required for larger and more complex DL models.

This publication targets technical readers, including developers, IT specialists, systems architects, brand specialist, sales team, and anyone looking for a guide about how to understand the IBM PowerAI Deep Learning architecture, framework configuration, application and workload configuration, and user infrastructure.

ジャンル
コンピュータ/インターネット
発売日
2019年
6月5日
言語
EN
英語
ページ数
278
ページ
発行者
IBM Redbooks
販売元
International Business Machines Corp
サイズ
9.9
MB
AI and Big Data on IBM Power Systems Servers AI and Big Data on IBM Power Systems Servers
2019年
Implementing an IBM High-Performance Computing Solution on IBM POWER8 Implementing an IBM High-Performance Computing Solution on IBM POWER8
2015年
IBM Data Engine for Hadoop and Spark IBM Data Engine for Hadoop and Spark
2016年
IBM Cloud Private Application Developer's Guide IBM Cloud Private Application Developer's Guide
2019年
Mainframe from Scratch: Hardware Configuration and z/OS Build Mainframe from Scratch: Hardware Configuration and z/OS Build
2016年
Build a Large Language Model (From Scratch) Build a Large Language Model (From Scratch)
2024年
IBM Spectrum Scale (formerly GPFS) IBM Spectrum Scale (formerly GPFS)
2017年
Implementing IBM Spectrum Scale Implementing IBM Spectrum Scale
2015年
SAP HANA Platform Migration SAP HANA Platform Migration
2020年
IBM Data Engine for Hadoop and Spark IBM Data Engine for Hadoop and Spark
2016年
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
2020年
SAP HANA on IBM Power Systems: High Availability and Disaster Recovery Implementation Updates SAP HANA on IBM Power Systems: High Availability and Disaster Recovery Implementation Updates
2019年
AI and Big Data on IBM Power Systems Servers AI and Big Data on IBM Power Systems Servers
2019年
Applied Computer Vision for Undergrads Applied Computer Vision for Undergrads
2014年
Machine Learning with Business Rules on IBM Z: Acting on Your Insights Machine Learning with Business Rules on IBM Z: Acting on Your Insights
2019年
IBM Software Defined Infrastructure for Big Data Analytics Workloads IBM Software Defined Infrastructure for Big Data Analytics Workloads
2015年
A Software Architect's Guide to New Java Workloads in IBM CICS Transaction Server A Software Architect's Guide to New Java Workloads in IBM CICS Transaction Server
2015年
Enterprise Data Warehouse Optimization with Hadoop on IBM Power Systems Servers Enterprise Data Warehouse Optimization with Hadoop on IBM Power Systems Servers
2018年