- Practical Real-time Data Processing and Analytics
- Shilpi Saxena Saurabh Gupta
- 122字
- 2021-07-08 10:23:10
Storage
This is the stable storage to which intermittent or end results and alerts are written into. It's a very crucial component in the NRT context because we need to store the end results in a persistent store. Secondly, it serves as an integration point for further downstream applications which draw data from these low latency stores and evolve further insights or deep learning around them.
The following table clearly captures the various data stores and their alignment to the time SLA of NRT applications:

I would like to add a note here that we are skipping the plethora of options available for storage and visualization for now, but will touch upon these specifically in later sections of the book.
推薦閱讀
- HornetQ Messaging Developer’s Guide
- 潮流:UI設(shè)計必修課
- Oracle從新手到高手
- Linux網(wǎng)絡(luò)程序設(shè)計:基于龍芯平臺
- Spring Boot企業(yè)級項目開發(fā)實戰(zhàn)
- Working with Odoo
- RabbitMQ Cookbook
- 大學計算機基礎(chǔ)實驗指導(dǎo)
- Java EE企業(yè)級應(yīng)用開發(fā)教程(Spring+Spring MVC+MyBatis)
- 新印象:解構(gòu)UI界面設(shè)計
- HTML5游戲開發(fā)實戰(zhàn)
- Solr權(quán)威指南(下卷)
- After Effects CC案例設(shè)計與經(jīng)典插件(視頻教學版)
- 3D Printing Designs:The Sun Puzzle
- PHP程序設(shè)計經(jīng)典300例