Template-based automatic data flow code generation for mediaprocessors

2004 ◽  
Vol 28 (2) ◽  
pp. 77-84
Author(s):  
Michael S. Grow ◽  
Donglok Kim ◽  
Yongmin Kim
2019 ◽  
Vol 22 (7) ◽  
pp. 1315-1348
Author(s):  
Neetu Jain ◽  
Rabins Porwal ◽  
Sumit Kumar ◽  
Sapna Varshney ◽  
Mukesh Saraswat

2020 ◽  
Vol 7 (1) ◽  
Author(s):  
Tanmaya Mahapatra ◽  
Christian Prehofer

AbstractIncreased sensing data in the context of the Internet of Things (IoT) necessitates data analytics. It is challenging to write applications for Big Data systems due to complex, highly parallel software frameworks and systems. The inherent complexity in programming Big Data applications is also due to the presence of a wide range of target frameworks, with different data abstractions and APIs. The paper aims to reduce this complexity and its ensued learning curve by enabling domain experts, that are not necessarily skilled Big Data programmers, to develop data analytics applications via domain-specific graphical tools. The approach follows the flow-based programming paradigm used in IoT mashup tools. The paper contributes to these aspects by (i) providing a thorough analysis and classification of the widely used Spark framework and selecting suitable data abstractions and APIs for use in a graphical flow-based programming paradigm and (ii) devising a novel, generic approach for programming Spark from graphical flows that comprises early-stage validation and code generation of Spark applications. Use cases for Spark have been prototyped and evaluated to demonstrate code-abstraction, automatic data abstraction interconversion and automatic generation of target Spark programs, which are the keys to lower the complexity and its ensued learning curve involved in the development of Big Data applications.


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