Francesco Di Natale, Harsh Bhatia, et al.
SC 2019
In this paper, we present a new C++ API with a fluent interface called PiCo (Pipeline Composition). PiCo's programming model aims at making easier the programming of data analytics applications while preserving or enhancing their performance. This is attained through three key design choices: (1) unifying batch and stream data access models, (2) decoupling processing from data layout, and (3) exploiting a stream-oriented, scalable, efficient C++11 runtime system. PiCo proposes a programming model based on pipelines and operators that are polymorphic with respect to data types in the sense that it is possible to reuse the same algorithms and pipelines on different data models (e.g., streams, lists, sets, etc.). Preliminary results show that PiCo, when compared to Spark and Flink, can attain better performances in terms of execution times and can hugely improve memory utilization, both for batch and stream processing.
Francesco Di Natale, Harsh Bhatia, et al.
SC 2019
Daniel J. Milroy, Claudia Misale, et al.
CANOPIE-HPC 2022
Lars Schneidenbach, Bruce D’Amora, et al.
MEMSYS 2019
Maurizio Drocco, Vito Giovanni Castellana, et al.
HPDC 2020