官术网_书友最值得收藏!

IoT Analytics for the Cloud

Now that you know how your data is transmitted back to the corporate servers, you feel you have a better understanding of it. You also have a reference frame in your head of how it is operating out in the real world.

Your boss stops by again.

"Is that rolling average job done running yet?" he asks impatiently.

It used to run fine and finished in an hour three months ago. It has steadily taken longer and longer and now sometimes does not even finish. Today, it has been going on six hours, and you are crossing your fingers. Yesterday, it crashed twice with what looked like out-of-memory errors.

You have talked to your IT group and finance group about getting a faster server with more memory. The cost would be significant and will probably take months to complete the process of going through purchasing, putting it on order, and having it installed. Your friend in finance is hesitant to approve it. The money was not budgeted for this fiscal year. You feel bad, especially since this is the only analytic job causing you problems. It just runs once a month but produces key data.

Not knowing what else to say, you give your boss a hopeful, strained smile, and show him your crossed fingers.

"It's still running...that's good, right?"

This chapter is about the advantages to cloud-based infrastructure for handling and analyzing IoT data. We will discuss cloud services including Amazon Web Services (AWS), Azure, and ThingWorx. You will learn how to implement analytics elastically to enable a wide variety of capabilities.

This chapter will cover the following:

  • Building elastic analytics
  • Designing for scale
  • Cloud security and analytics
  • Key cloud providers:
    • Amazon AWS
    • Microsoft Azure
  • PTC ThingWorx
主站蜘蛛池模板: 澜沧| 枞阳县| 新郑市| 商城县| 乳山市| 顺义区| 桂东县| 齐齐哈尔市| 明星| 郸城县| 双柏县| 阿瓦提县| 新邵县| 清水县| 西吉县| 常德市| 汨罗市| 昌平区| 玛沁县| 天水市| 且末县| 时尚| 深州市| 汽车| 惠水县| 秭归县| 广水市| 新巴尔虎右旗| 云梦县| 苏尼特右旗| 田林县| 兴山县| 崇州市| 汉川市| 青田县| 昌图县| 澳门| 平阴县| 涟源市| 盐城市| 马关县|