• Aucun résultat trouvé

Analysis of Data-Centric Workfows

N/A
N/A
Protected

Academic year: 2022

Partager "Analysis of Data-Centric Workfows"

Copied!
1
0
0

Texte intégral

(1)

Analysis of Data-Centric Workfows

Victor Vianu

University of California, San Diego vianu@cs.ucsd.edu

Abstract. Workflows centered around data have become pervasive in a wide variety of applications, including health-care management, e- commerce, business processes, scientific workflows, and e-government.

Such workflows are often very complex and involve numerous interacting actors. They are prone to costly bugs, whence the need for static anal- ysis in order to verify critical properties. Analysis tools are also needed to facilitate the integration, interoperation and evolution of workflows, and to provide runtime assistance to participating actors. This talk will present an overview of recent research carried out with collaborators at UC San Diego and INRIA on the analysis of data-centric workflows, an area of growing interest in both academia and industry.

Références

Documents relatifs

— Static scientific workflow scheduling algorithm for energy optimization in a Cloud computing environment - The objective of this algorithm - named OnlyUsedNodes and presented

Hence, the objective of the target scheduling problem is to find a data placement and task assignment scheme in such a way that the total size of the transferred files is minimized

Trace links: The first series of experiments highlight the fact that some intermediate processors are directly linked to the workflow outputs merely for the sake of

We consider several types of workflow, aggregation mechanisms (namely Majority Voting (MV) and Expectation Maximization (EM) based techniques [ GC11 ]), several distributions of

بعا عمتلمجا تاجايتحا ةيبلتل ةيئاصحلإاو اهنم ةيرادلإا ةفلتخبؼا تلاجسلا ريوطتو ءانب في ةلاعفلا ةكراشبؼا يرئاز .ةيندبؼا ةلابغا تلاجسك ةينوناق سسأب

Genes are considered as significantly differentially expressed if the p-value adjusted (padj) by FDR (false discovery rate) is <0.05 [ 36 ] and the log2fold-change (log2FC) of

The Error Detection Engine then runs the promising error detection strategies on the new dataset to identify potential data quality problems.. The profile of the new dataset is

This paper presents a planning-based approach for the enu- meration of alternative data-centric workflows specified in ASASEL (Ab- stract State mAchineS Execution Language),