An Integration of Big Data and Cloud Computing

In this era, Big data and Cloud computing are the most important topics for organizations across the globe amongst the plethora of software’s. Big data is the most rapidly expanding research tool in understanding and solving complex problems in different interdisciplinary fields such as engineering, management health care, e-commerce, social network marketing finance and others. Cloud computing is a virtual service which is used for computation, data storage, data mining by creating flexibility and at minimum cost. It is pay & use model which is the next generation platform to analyse the various data which comes along with different services and applications without physically acquiring them. In this paper, we try to understand and work on the integration model of both Cloud Computing and Big Data to achieve efficiency and faster outcome. It is a qualitative paper to determine the synergy.

[1]  Thinn Thu Naing,et al.  An efficient approach for virtual machines scheduling on a private cloud environment , 2011, 2011 4th IEEE International Conference on Broadband Network and Multimedia Technology.

[2]  Tejinder Sharma,et al.  Proposed Efficient and Enhanced Algorithm in Cloud Computing , 2013 .

[3]  Khyati Marwah,et al.  Performance evaluation of Virtual Machine (VM) scheduling policies in Cloud computing (spaceshared & timeshared) , 2013, 2013 Fourth International Conference on Computing, Communications and Networking Technologies (ICCCNT).

[4]  Michael Devetsikiotis,et al.  Aggregated-DAG Scheduling for Job Flow Maximization in Heterogeneous Cloud Computing , 2011, 2011 IEEE Global Telecommunications Conference - GLOBECOM 2011.

[5]  Enda Barrett,et al.  A Learning Architecture for Scheduling Workflow Applications in the Cloud , 2011, 2011 IEEE Ninth European Conference on Web Services.

[6]  Patrick S. Ryan,et al.  When the Cloud Goes Local: The Global Problem with Data Localization , 2013, Computer.

[7]  Thinn Thu Naing,et al.  Stochastic Markov Model Approach for Efficient Virtual Machines Scheduling on Private Cloud , 2011, CloudCom 2011.