We present Asterism, an open source data-intensive framework, which combines the strengths of traditional workflow management systems with new parallel stream-based dataflow systems to run data-intensive applications across multiple heterogeneous resources, without users having to: re-formulate their methods according to different enactment engines; manage the data distribution across systems; parallelize their methods; co-place and schedule their methods with computing resources; and store and transfer large/small volumes of data. We also present the Data-Intensive workflows as a Service (DIaaS) model, which enables easy dataintensive workow composition and deployment on clouds using containers. The feasibility of Asterism and DIaaS model ...
Data-intensive scientific applications are posing many challenges in distributed computing systems. ...
The scale of scientific applications becomes increasingly large not only in computation, but also in...
The cloud computing paradigm has emerged as the backbone of modern price-aware scalable computing sy...
We present Asterism, an open source data-intensive framework, which combines the strengths of tradit...
We present the Data-Intensive workflows as a Service (DIaaS) model for enabling easy data-intensive ...
We present Asterism, an open source data-intensive framework, which combines the Pegasus and dispel4...
This paper presents dispel4py, a new Python framework for describing abstract stream-based workflows...
This paper presents dispel4py, a new Python framework for describing abstract stream-based workflows...
We present dispel4py, a novel data intensive and high performance computing middleware provided as a...
International audienceWorkflows may be defined as abstractions used to model the coherent flow of ac...
We present dispel4py a versatile data-intensive kit presented as a standard Python library. It empow...
This paper describes the Pegasus framework that can be used to map complex scientific workflows onto...
This paper describes the Pegasus framework that can be used to map complex scientific workflows onto...
This work presents three new adaptive optimization techniques to maximize the performance of dispel4...
International audienceNowadays, more and more computer-based scientific experiments need to handle m...
Data-intensive scientific applications are posing many challenges in distributed computing systems. ...
The scale of scientific applications becomes increasingly large not only in computation, but also in...
The cloud computing paradigm has emerged as the backbone of modern price-aware scalable computing sy...
We present Asterism, an open source data-intensive framework, which combines the strengths of tradit...
We present the Data-Intensive workflows as a Service (DIaaS) model for enabling easy data-intensive ...
We present Asterism, an open source data-intensive framework, which combines the Pegasus and dispel4...
This paper presents dispel4py, a new Python framework for describing abstract stream-based workflows...
This paper presents dispel4py, a new Python framework for describing abstract stream-based workflows...
We present dispel4py, a novel data intensive and high performance computing middleware provided as a...
International audienceWorkflows may be defined as abstractions used to model the coherent flow of ac...
We present dispel4py a versatile data-intensive kit presented as a standard Python library. It empow...
This paper describes the Pegasus framework that can be used to map complex scientific workflows onto...
This paper describes the Pegasus framework that can be used to map complex scientific workflows onto...
This work presents three new adaptive optimization techniques to maximize the performance of dispel4...
International audienceNowadays, more and more computer-based scientific experiments need to handle m...
Data-intensive scientific applications are posing many challenges in distributed computing systems. ...
The scale of scientific applications becomes increasingly large not only in computation, but also in...
The cloud computing paradigm has emerged as the backbone of modern price-aware scalable computing sy...