A Fast Parallel Data Processing Method in Cloud Computing
Full text
Figure
Related documents
MapReduce has greatly simplified the development of large-scale, parallel data processing applications. However due to a lack of efficient management of data and
In this paper, we first calculate the similar matrix and sparsification according to the data point identification seg- mentation, then use Lanczos distributed computing and
• More employment opportunities in clouds than HPC and Grids and in data than simulation; so cloud and data related activities popular with students • Community activity to discuss
We respectively discussed the key issues, including cloud storage and computing architecture, popular parallel processing framework, major applications and
Operators of IaaS clouds like Amazon EC2 [7], let their customers allocate access and control a set of virtual machines (VMs) which run inside their data
Apache Hadoop is open source software for efficiently performing parallel distributed processing of massive volumes of
Parallel cloud computing technology is effective for large scale data processing, including telecom data processing and internet data processing. The maintenance cost
The challenges and opportunities for efficient parallel data processing in cloud environments are analyzed using Nephele, process framework to take the advantage of