官术网_书友最值得收藏!

Summary

We learned a lot in this chapter about big data, Hadoop, and cloud computing.

Specifically, we covered the emergence of big data and how changes in the approach to data processing and system architecture bring within the reach of almost any organization techniques that were previously prohibitively expensive.

We also looked at the history of Hadoop and how it builds upon many of these trends to provide a flexible and powerful data processing platform that can scale to massive volumes. We also looked at how cloud computing provides another system architecture approach, one which exchanges large up-front costs and direct physical responsibility for a pay-as-you-go model and a reliance on the cloud provider for hardware provision, management and scaling. We also saw what Amazon Web Services is and how its Elastic MapReduce service utilizes other AWS services to provide Hadoop in the cloud.

We also discussed the aim of this book and its approach to exploration on both locally-managed and AWS-hosted Hadoop clusters.

Now that we've covered the basics and know where this technology is coming from and what its benefits are, we need to get our hands dirty and get things running, which is what we'll do in Chapter 2, Getting Hadoop Up and Running.

主站蜘蛛池模板: 赣州市| 广汉市| 景洪市| 讷河市| 澳门| 开江县| 金乡县| 福清市| 醴陵市| 怀仁县| 仪陇县| 霍山县| 甘泉县| 衡水市| 苍山县| 凉城县| 嫩江县| 象州县| 青神县| 勐海县| 噶尔县| 社会| 金坛市| 呼伦贝尔市| 洪泽县| 黎川县| 九寨沟县| 茶陵县| 肇东市| 民丰县| 伊宁县| 三明市| 宽城| 渝中区| 屏南县| 齐齐哈尔市| 斗六市| 个旧市| 盐源县| 岱山县| 涪陵区|