Publication Date:
2016
abstract:
Large-scale problems are computationally expensive and their solution requires designing of scalable approaches. Many factors contribute to scalability, including the architecture of the parallel computer and the parallel implementation of the algorithm. However, one important issue is the scalability of the algorithm itself. We have developed a scalable algorithm for solving large scale Data Assimilation problems: starting from a decomposition of the mathematical problems, it uses a partitioning of the solution and a modified regularization functionals. Here we briefly discuss some results.
Iris type:
02.01 Contributo in volume (Capitolo o Saggio)
Keywords:
Variational Data Assimilation; Scalability; Hybrid Architectures
List of contributors:
Carracciuolo, Luisa
Book title:
High Performance Scientific Computing Using Distributed Infrastructures - Results and Scientific Applications Derived from the Italian PON ReCaS Project