• Aucun résultat trouvé

High-Performance Computing for Data Analytics

N/A
N/A
Protected

Academic year: 2021

Partager "High-Performance Computing for Data Analytics"

Copied!
9
0
0

Texte intégral

Loading

Figure

Figure 1. Data analysis and modelling workflow
Figure 2. Hybrid parallel model with main rule types
Figure 5. Gel thickness layer dynamics as a consequence of radii difference
Table 1. Average gap Δ to optimal solution, standard deviation

Références

Documents relatifs

Different Python compilers (namely NumExpr , Numba, Pythran and Cython) are presented and used to improve performances and are benchmarked against state-of-the-art

From the perspective of energy efficiency, a cloud computing data center can be defined as a pool of computing and communication resources organized in the way to transform the

The proposed load balancing scheme is evaluated in large scale simulated MapReduce environments with varied levels of heterogeneity using different sizes of data sets..

The dot operator and the selection imply communications of values between the processing units of a data parallel implementation. In a data parallel language, any kind of

Keywords: Ultrasound tomography · Visualization · Reverse time mi- gration · Real data processing · Breast imaging..

Security and privacy during data processing over cloud computing are the primary factors that obstruct the successful implementation of this new approach in the digital

In this thesis, some interesting results are obtained concerning the ex- istence and uniqueness of mild solutions for some classes of semi-linear frac- tional functional and

boszorkánypereinek tükrében [Relations of name, mother tongue and identity in the docu- ments of the Middle Hungarian witchcraft trials]. Budapest–Alsóőr–Lendva: