Difference between revisions of "ICPP 2017"

From OPENRESEARCH fixed Wiki
Jump to navigation Jump to search
(modified through wikirestore by orapi)
(modified through wikirestore by orapi)
 
(One intermediate revision by the same user not shown)
Line 9: Line 9:
 
|has Keynote speaker=Michael Klein, Laura Grigori, David May
 
|has Keynote speaker=Michael Klein, Laura Grigori, David May
 
|Acronym=ICPP 2017
 
|Acronym=ICPP 2017
|End date=2017/06/03
+
|End date=2017-06-03
 
|Series=ICPP
 
|Series=ICPP
 
|Type =Conference
 
|Type =Conference
Line 15: Line 15:
 
|State=IT/62
 
|State=IT/62
 
|City =IT/62/Rome
 
|City =IT/62/Rome
 +
|Year =2017
 
|Homepage=www.waset.org/conference/2017/03/rome/ICPP
 
|Homepage=www.waset.org/conference/2017/03/rome/ICPP
|Start date=2017/05/03
+
|Start date=2017-05-03
|Title=46th International Conference on Parallel Processing}}
+
|Title=46th International Conference on Parallel Processing
 +
}}
 
The 46th International Conference on Parallel Processing (ICPP-2017) will be held in Bristol, UK during August 14-17, 2017.  
 
The 46th International Conference on Parallel Processing (ICPP-2017) will be held in Bristol, UK during August 14-17, 2017.  
  

Latest revision as of 03:42, 6 December 2021


Event Rating

median worst
Pain1.svg Pain5.svg

List of all ratings can be found at ICPP 2017/rating

ICPP 2017
46th International Conference on Parallel Processing
Event in series ICPP
Dates 2017-05-03 (iCal) - 2017-06-03
Homepage: www.waset.org/conference/2017/03/rome/ICPP
Location
Location: IT/62/Rome, IT/62, IT
Loading map...

Important dates
Submissions: 2017/02/27
Notification: 2017/05/08
Camera ready due: 2017/07/23
Committees
General chairs: Wu Feng
PC chairs: Anne Benoit, Daniel S. Katz
Workshop chairs: Federico Silla
Keynote speaker: Michael Klein, Laura Grigori, David May
Table of Contents

The 46th International Conference on Parallel Processing (ICPP-2017) will be held in Bristol, UK during August 14-17, 2017.

Topics

Architecture, including processor; memory; I/O; network; instruction-, thread- and data-level parallelism; accelerators & other special-purpose hardware; power-aware/energy-efficient; performance
Algorithms, including combinatorial and numerical; scheduling; power- aware/energy-efficient; machine learning; modeling & analysis; scalability
Applications, including big data; data analytics; computational science & engineering (e.g., aerospace, arts; biology, finance, geology); scalability
Software, including systems software; middleware; programming models, languages, and environments; compilers; operating systems; run-time systems; resource management; performance modeling and evaluation