资源简介
Practical Graph Analytics with Apache Giraph helps you build data mining and machine learning applications using the Apache Foundation's Giraph framework for graph processing. This is the same framework as used by Facebook, Google, and other social media analytics operations to derive business value from vast amounts of interconnected data points.
Graphs arise in a wealth of data scenarios and describe the connections that are naturally formed in both digital and real worlds. Examples of such connections abound in online social networks such as Facebook and Twitter, among users who rate movies from services like Netflix and Amazon Prime, and are useful even in the context of biological networks for scientific research. Whether in the context of business or science, viewing data as connected adds value by increasing the amount of information available to be drawn from that data and put to use in generating new revenue or scientific opportunities.
Apache Giraph offers a simple yet flexible programming model targeted to graph algorithms and designed to scale easily to accommodate massive amounts of data. Originally developed at Yahoo!, Giraph is now a top top-level project at the Apache Foundation, and it enlists contributors from companies such as Facebook, LinkedIn, and Twitter.
代码片段和文件信息
- 上一篇:微带天线理论与应用 pdf
- 下一篇:从声卡麦克风捕捉声音
相关资源
- An introduction to probabilistic graphical mod
- CRYPTOGRAPHY AND NETWORK SECURITY PRINCIPLES A
- Practical Game AI Programming
- Cryptography Made Simple
- iOS Drawing Practical UIKit Solutions 无水印
- The Magic of Computer Graphics 无水印pdf
- Mathematics for 3D Game Programming and Comput
- Mathematical Structures for Computer Graphics 无
- Interactive Computer Graphics(6th) 无水印
- The Boost Graph Library 无水印pdf
- TensorFlow Powerful Predictive Analytics with
- Practical Reinforcement Learning 无水印pdf转
- Mastering Predictive Analytics with R(2nd)
- Monitoring with Graphite azw3
- Interactive Computer Graphics A Top-Down Appro
- Advanced Analytics with Spark Patterns for Lea
- 概率图模型Probabilistic Graphical Model论文
- 概率图模型Probabilistic Graphical Model论文
- Neo4j-ai-graph-technology-white-paper-EN-A4-CN
- R语言中igraph的帮助文档
- graphviz-2.20.3.msi
- OpenSceneGraph 3.0 Beginner’s Guide.pdf
- GraphStudioNext 超好的graphedit替代工具
- Graphics Gems图形图像编程精粹所有源代
- 开源3D开发引擎opensenceGraph的最全中文
- SigmaPlot中文教程——SigmaPlotSampleGrap
- Interactive Computer Graphics:A Top-Down App
- R语言Igraph软件包0.7.1
- OSG入门书籍之一:OpenSceneGraph Quick S
- System Dynamics and Control with Bond Graph Mo
评论
共有 条评论