Corrections
Due to delays in getting the article to print, the price given in our review of the OpenLook and XView CD-ROM from Darwin Open Systems published in the December 1996 issue of LJ was in error. Since the writing of the article, Darwin Open Systems has reduced the price on their XView and OPEN LOOK CD-ROM from US$30 to US$20. The “hybrid” CD-ROM also includes an update link which has pointers to Contool and an X-based PDF reader (xpdf), both of which the reviewer commented upon. Darwin's URL was also omitted from the review: http://www.darwinsys.com/. We thank Ian Darwin for keeping us up to date.
Realizing the promise of Apache® Hadoop® requires the effective deployment of compute, memory, storage and networking to achieve optimal results. With its flexibility and multitude of options, it is easy to over or under provision the server infrastructure, resulting in poor performance and high TCO. Join us for an in depth, technical discussion with industry experts from leading Hadoop and server companies who will provide insights into the key considerations for designing and deploying an optimal Hadoop cluster.
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How to Build an Optimal Hadoop Cluster to Store and Maintain Unlimited Amounts of Data Using Microservers
Realizing the promise of Apache® Hadoop® requires the effective deployment of compute, memory, storage and networking to achieve optimal results. With its flexibility and multitude of options, it is easy to over or under provision the server infrastructure, resulting in poor performance and high TCO. Join us for an in depth, technical discussion with industry experts from leading Hadoop and server companies who will provide insights into the key considerations for designing and deploying an optimal Hadoop cluster.
Some of key questions to be discussed are:
- What is the “typical” Hadoop cluster and what should be installed on the different machine types?
- Why should you consider the typical workload patterns when making your hardware decisions?
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