Data Storage for Social Networks Data Storage for Social Networks
SpringerBriefs in Optimization

Data Storage for Social Networks

A Socially Aware Approach

    • €39.99
    • €39.99

Publisher Description

Evidenced by the success of Facebook, Twitter, and LinkedIn, online social networks (OSNs) have become ubiquitous, offering novel ways for people to access information and communicate with each other. As the increasing popularity of social networking is undeniable, scalability is an important issue for any OSN that wants to serve a large number of users. Storing user data for the entire network on a single server can quickly lead to a bottleneck, and, consequently, more servers are needed to expand storage capacity and lower data request traffic per server. Adding more servers is just one step to address scalability.

The next step is to determine how best to store the data across multiple servers. This problem has been widely-studied in the literature of distributed and database systems. OSNs, however, represent a different class of data systems. When a user spends time on a social network, the data mostly requested is her own and that of her friends; e.g., in Facebook or Twitter, these data are the status updates posted by herself as well as that posted by the friends. This so-called social locality should be taken into account when determining the server locations to store these data, so that when a user issues a read request, all its relevant data can be returned quickly and efficiently. Social locality is not a design factor in traditional storage systems where data requests are always processed independently.

Even for today’s OSNs, social locality is not yet considered in their data partition schemes. These schemes rely on  distributed hash tables (DHT), using consistent hashing to assign the users’ data to the servers. The random nature of DHT leads to weak social locality which has been shown to result in poor performance under heavy request loads.

Data Storage for Social Networks: A Socially Aware Approach is aimed at reviewing the current literature of data storage for online social networks and discussing newmethods that take into account social awareness in designing efficient data storage.

GENRE
Science & Nature
RELEASED
2012
15 August
LANGUAGE
EN
English
LENGTH
55
Pages
PUBLISHER
Springer New York
PROVIDER INFO
Springer Science & Business Media LLC
SIZE
8.3
MB
Web Services – ICWS 2022 Web Services – ICWS 2022
2022
Fast and Scalable Cloud Data Management Fast and Scalable Cloud Data Management
2020
Security, Privacy and Anonymity in Computation, Communication and Storage Security, Privacy and Anonymity in Computation, Communication and Storage
2016
Data Management in Grid and Peer-to-Peer Systems Data Management in Grid and Peer-to-Peer Systems
2010
High-Performance Modelling and Simulation for Big Data Applications High-Performance Modelling and Simulation for Big Data Applications
2019
Distributed Applications and Interoperable Systems Distributed Applications and Interoperable Systems
2017
Multiple Information Source Bayesian Optimization Multiple Information Source Bayesian Optimization
2025
The Krasnoselskii-Mann Method for Common Fixed Point Problems The Krasnoselskii-Mann Method for Common Fixed Point Problems
2025
High-Dimensional Optimization High-Dimensional Optimization
2024
Derivative-free DIRECT-type Global Optimization Derivative-free DIRECT-type Global Optimization
2023
Optimization in Banach Spaces Optimization in Banach Spaces
2022
The Krasnosel'skiĭ-Mann Iterative Method The Krasnosel'skiĭ-Mann Iterative Method
2022