Difference between revisions of "Main Page"
From HCL
(→Hardware) |
(→Paper & Presentation Tools) |
||
(2 intermediate revisions by 2 users not shown) | |||
Line 44: | Line 44: | ||
* [[LaTeX]], [[Beamer]] | * [[LaTeX]], [[Beamer]] | ||
* [[BibTeX]], [[JabRef]] | * [[BibTeX]], [[JabRef]] | ||
+ | HCL templates for slides and posters in the HCL publications repository trunk/templates | ||
== Hardware == | == Hardware == | ||
Line 50: | Line 51: | ||
* [[UTK multicores + GPU]] | * [[UTK multicores + GPU]] | ||
* [[Grid5000]] | * [[Grid5000]] | ||
+ | * [[BlueGene/P]] | ||
* [[Desktop Backup]] | * [[Desktop Backup]] | ||
+ | * [[Memory size, overcommit, limit]] | ||
[[SSH|How to connect to cluster via SSH]] | [[SSH|How to connect to cluster via SSH]] |
Latest revision as of 10:24, 6 November 2013
This site is set up for sharing ideas, findings and experience in heterogeneous computing. Please, log in and create new or edit existing pages. How to format wiki-pages read here.
Contents
HCL software for heterogeneous computing
- Extensions for MPI: mpC HeteroMPI libELC
- Extensions for GridRPC: SmartGridSolve NI-Connect
- Computation benchmarking, modeling, dynamic load balancing: FuPerMod PMM
- Communication benchmarking, modeling, optimization: CPM MPIBlib
Heterogeneous mathematical software
Operating systems
Development tools
- C/C++, Python, UML, FORTRAN
- Autotools
- GDB, OProfile, Valgrind
- Doxygen
- ChangeLog, Subversion
- Eclipse
- Bash Scripts
Libraries
- GNU C Library
- MPI
- STL, Boost
- GSL
- BLAS LAPACK ScaLAPACK
- NLOPT
- BitTorrent (B. Cohen's version)
- CUDA SDK
Data processing
Paper & Presentation Tools
HCL templates for slides and posters in the HCL publications repository trunk/templates
Hardware
- HCL cluster
- Other UCD Resources
- UTK multicores + GPU
- Grid5000
- BlueGene/P
- Desktop Backup
- Memory size, overcommit, limit
How to connect to cluster via SSH
How to find information about the hardware
Mathematics
- Confidence interval (Statistics), Student's t-distribution (implemented in GSL)
- Linear regression (implemented in GSL)
- Binomial tree (use Graphviz to visualize trees)
- Spline interpolation, Spline approximation (implemented in GSL)