Parallel data processing is one of the specific infrastructure applications categorized as a service provided by cloud computing. In cloud computing environments, data-intensive applications increasingly use the parallel processing paradigm known as MapReduce. MapReduce is based on a strategy called "divide and conquer," which uses ordinary computers, also called "nodes," to do processing in parallel. This paper looks at how open multiprocessing (OpenMP), the best shared-memory parallel programming model for high-performance computing, can be used in the MapReduce application using proposed fractal network models. Two fractal network models are offered, and their work is compared with a well-known network model, the hypercube. The first fra...
Data abundance poses the need for powerful and easy-to-use tools that support processing large amoun...
In this paper, we describe efficient MapReduce simulations of parallel algorithms specified in the B...
MapReduce is a programming model and an associated implementation for processing and generating larg...
One of the infrastructure applications that cloud computing offers as a service is parallel data pro...
In an attempt to increase the performance/cost ratio, large compute clusters are becoming heterogene...
Abstract—In an attempt to increase the performance/cost ratio, large compute clusters are becoming h...
MapReduce is a simple and flexible parallel programming model proposed by Google for large scale da...
More and more large data collections are gathered worldwide in various IT systems. Many of them poss...
Colloque avec actes et comité de lecture. internationale.International audienceThe fast growth of sc...
MapReduce is with no doubt the parallel computation paradigm which has managed to interpret and serv...
Parallel programming languages have sought out many dif-ferent means by which many numbers of cores ...
Recent advances in the design of efficient parallel algorithms have been largely focusing on the now...
MapReduce is the preferred cloud computing framework used in large data analysis and application pro...
Graph algorithms on parallel architectures present an in-teresting case study for irregular applicat...
Grid computing technology, which enables large scale computing has been studied and de-veloped by nu...
Data abundance poses the need for powerful and easy-to-use tools that support processing large amoun...
In this paper, we describe efficient MapReduce simulations of parallel algorithms specified in the B...
MapReduce is a programming model and an associated implementation for processing and generating larg...
One of the infrastructure applications that cloud computing offers as a service is parallel data pro...
In an attempt to increase the performance/cost ratio, large compute clusters are becoming heterogene...
Abstract—In an attempt to increase the performance/cost ratio, large compute clusters are becoming h...
MapReduce is a simple and flexible parallel programming model proposed by Google for large scale da...
More and more large data collections are gathered worldwide in various IT systems. Many of them poss...
Colloque avec actes et comité de lecture. internationale.International audienceThe fast growth of sc...
MapReduce is with no doubt the parallel computation paradigm which has managed to interpret and serv...
Parallel programming languages have sought out many dif-ferent means by which many numbers of cores ...
Recent advances in the design of efficient parallel algorithms have been largely focusing on the now...
MapReduce is the preferred cloud computing framework used in large data analysis and application pro...
Graph algorithms on parallel architectures present an in-teresting case study for irregular applicat...
Grid computing technology, which enables large scale computing has been studied and de-veloped by nu...
Data abundance poses the need for powerful and easy-to-use tools that support processing large amoun...
In this paper, we describe efficient MapReduce simulations of parallel algorithms specified in the B...
MapReduce is a programming model and an associated implementation for processing and generating larg...