Collective Knowledge Aggregator beta
Home Collaborative AI Interactive articles Graphs Programs Datasets Models Browse Get CK About
Join the community development of an open science SDK (CK) to automate, crowdsource and optimize machine learning and AI across diverse devices from IoT to supercomputers!

Files:
doc.bib    (1KB)
doc.pdf    (189KB)

Cross-linking (dependencies):

Meta:
{
  "authors": [
    {
      "name": "0728a400aa1c86fe"
    }, 
    {
      "name": "cc58cd93d4412b9b"
    }, 
    {
      "name": "498e14b1397d5c15"
    }
  ], 
  "bib": "@inproceedings{29db2248aba45e59:7be54cb37f45b3b1,\n\n  author =    {G.G. Fursin and M.F.P. O'Boyle and  P.M.W. Knijnenburg},\n  title =     {Evaluating Iterative Compilation},\n  booktitle = {Proceedings of the 15th Workshop on Languages and Compilers for Parallel Computing (LCPC'02)},\n  pages =     {305-315},\n  year =      {2002}\n}\n\n", 
  "bib_parsed": {
    "_code": "Fursin2002p305", 
    "_type": "inproceedings", 
    "author": [
      [
        "", 
        "Fursin", 
        "G G", 
        ""
      ], 
      [
        "", 
        "O'Boyle", 
        "M F P", 
        ""
      ], 
      [
        "", 
        "Knijnenburg", 
        "P M W", 
        ""
      ]
    ], 
    "booktitle": "Proceedings of the 15th Workshop on Languages and Compilers for Parallel Computing (LCPC'02)", 
    "firstpage": "305", 
    "lastpage": "315", 
    "title": "Evaluating Iterative Compilation", 
    "year": "2002"
  }, 
  "bib_ref": "cm:29db2248aba45e59:71496986d1f8072c", 
  "document_urls": [
    "http://dx.doi.org/10.1007/11596110_24"
  ], 
  "local_bib": "doc.bib", 
  "local_doc": "doc.pdf", 
  "notes": [
    {
      "italic": "yes", 
      "note": "In this paper $#cm_cv_i2#$ introduced a concept of empirical optimization for large applications to automatically adapt them to a given hardware using several basic search strategies including random and hill-climbing. This approach considerably outperformed state-of-art compilers on Intel, Alpha and several other popular architectures for several large SPEC applications. This technique has also laid foundations for further research on systematic program and architecture optimization and co-design using statistical analysis, machine learning and run-time adaptation [$#cm_e84a25bcb528c798_cbd09ece363c9f84#$, $#cm_e84a25bcb528c798_4144fde47d68ae99#$, $#cm_e84a25bcb528c798_94f7fafabf0baa0b#$]"
    }, 
    {
      "italic": "yes", 
      "note": "Associated public software [$#cm_d76ac3bb9a3f744c_9f143f5b31500137#$]"
    }
  ], 
  "pages": "305-315", 
  "place": "College Park, MD, USA", 
  "publish_iso_date": "2002-06-01", 
  "reproducible": "yes", 
  "title": "Evaluating Iterative Compilation", 
  "type": {
    "name": "workshop", 
    "peer_reviewed": "yes", 
    "scope": "international"
  }, 
  "when": "2002", 
  "where": "Proceedings of the 15th Workshop on Languages and Compilers for Parallel Computing (LCPC)"
}

API desc:
{}

If you notice copyrighted, inappropriate or illegal content that should not be here, please report us as soon as possible and we will try to remove it within 48hours!

Developed by dividiti,
cTuning foundation,
and the community
          
Implemented as a CK workflow
                     
   
   
                      Hosted at