• Medientyp: E-Book
  • Titel: Scientific Parallel Computing
  • Enthält: Frontmatter
    Contents
    Preface
    Notation
    Chapter 1. Introduction
    Chapter 2. Parallel Performance
    Chapter 3. Computer Architecture
    Chapter 4. Dependences
    Chapter 5. Parallel Languages
    Chapter 6. Collective Operation
    Chapter 7. Current Programming Standards
    Chapter 8. The IPlanguage Model
    Chapter 9. High Performance Fortran
    Chapter 10. Loop Tiling
    Chapter 11. Matrix Eigen Analysis
    Chapter 12. Linear Systems
    Chapter 13. Particle Dynamics
    Chapter 14. Mesh Methods
    Chapter 15. Sorting
    Bibliography
    Index
  • Beteiligte: Scott, Larkin Ridgway [VerfasserIn]; Bagheri, Babak [VerfasserIn]; Clark, Terry [VerfasserIn]
  • Erschienen: Princeton, NJ: Princeton University Press, [2021]
  • Umfang: 1 Online-Ressource (392 p.); 75 line illus
  • Sprache: Englisch
  • DOI: 10.1515/9780691227658
  • ISBN: 9780691227658
  • Identifikator:
  • Schlagwörter: Parallel processing (Electronic computers) ; COMPUTERS / Systems Architecture / Distributed Systems & Computing ; Allcache ; Amdahl, Gene ; Amdahl's Law ; Banerjee's inequality ; Brinch Hansen ; Cinderella ; Co-array Fortran ; Concurrent Pascal ; Gaussian elimination ; Jacobi iteration ; access set ; associative memory ; asymptotic upper bound ; bit operations ; bottleneck ; boundary value problem ; bus ; cache ; carrier index ; communication ; compact factorization ; control structure ; [...]
  • Entstehung:
  • Anmerkungen: In English
  • Beschreibung: What does Google's management of billions of Web pages have in common with analysis of a genome with billions of nucleotides? Both apply methods that coordinate many processors to accomplish a single task. From mining genomes to the World Wide Web, from modeling financial markets to global weather patterns, parallel computing enables computations that would otherwise be impractical if not impossible with sequential approaches alone. Its fundamental role as an enabler of simulations and data analysis continues an advance in a wide range of application areas. Scientific Parallel Computing is the first textbook to integrate all the fundamentals of parallel computing in a single volume while also providing a basis for a deeper understanding of the subject. Designed for graduate and advanced undergraduate courses in the sciences and in engineering, computer science, and mathematics, it focuses on the three key areas of algorithms, architecture, languages, and their crucial synthesis in performance. The book's computational examples, whose math prerequisites are not beyond the level of advanced calculus, derive from a breadth of topics in scientific and engineering simulation and data analysis. The programming exercises presented early in the book are designed to bring students up to speed quickly, while the book later develops projects challenging enough to guide students toward research questions in the field. The new paradigm of cluster computing is fully addressed. A supporting web site provides access to all the codes and software mentioned in the book, and offers topical information on popular parallel computing systems. Integrates all the fundamentals of parallel computing essential for today's high-performance requirements Ideal for graduate and advanced undergraduate students in the sciences and in engineering, computer science, and mathematics Extensive programming and theoretical exercises enable students to write parallel codes quickly More challenging projects later in the book introduce research questions New paradigm of cluster computing fully addressed Supporting web site provides access to all the codes and software mentioned in the book
  • Zugangsstatus: Eingeschränkter Zugang | Informationen zu lizenzierten elektronischen Ressourcen der SLUB