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ARES: Abstract Representations for Extreme Scale Stack: Difference between revisions

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== Organization ==
* LANL (Pat McCormick, pat@lanl.gov)
* ORNL (Jeffrey Vetter, vetter@computer.org)
== Organization ==
* Website including publications, software, and other information: http://ft.ornl.gov/research/ares
== Overview ==
Achieving success in programming future high-performance systems should not
Achieving success in programming future high-performance systems should not
depend on finding the single best approach, nor committing to an evolutionary
depend on finding the single best approach, nor committing to an evolutionary
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Accordingly, ARES will investigate this approach through five specific tasks:
Accordingly, ARES will investigate this approach through five specific tasks:


# Design, implement, and refine the ARES high-level intermediate
# Design, implement, and refine the ARES high-level intermediate      representation (HLIR)} that captures the pertinent features of      extreme-scale applications, architectures, and programming constructs. These      activities will include developing tools for storing, manipulating, and      verifying this HLIR.
       representation (HLIR)} that captures the pertinent features of  
# Develop prototype ARES front-ends for two languages that map advanced language      concepts (e.g., those in OpenACC) onto our HLIR.
       extreme-scale applications, architectures, and programming constructs. These  
# Develop a prototype ARES optimization engine for HLIR} that optimizes the HLIR      for select target architectures.
       activities will include developing tools for storing, manipulating, and  
# Develop prototype ARES back-end compilation system, based on LLVM, that converts      this optimized HLIR into executable instructions.
       verifying this HLIR.
# Proactively engage the broader community by publishing our software and findings,      and sponsoring tutorials and meetings when appropriate. This will both ensure that our      design captures the most relevant approaches, and allow our peers to leverage this      infrastructure.
 
# Develop prototype ARES front-ends for two languages that map advanced language  
     concepts (e.g., those in OpenACC) onto our HLIR.
 
# Develop a prototype ARES optimization engine for HLIR} that optimizes the HLIR  
     for select target architectures.
 
# Develop prototype ARES back-end compilation system, based on LLVM, that converts  
     this optimized HLIR into executable instructions.
 
# Proactively engage the broader community by publishing our software and findings,  
     and sponsoring tutorials and meetings when appropriate. This will both ensure that our  
     design captures the most relevant approaches, and allow our peers to leverage this  
     infrastructure.


We believe that the choices made in the design of this toolchain can
We believe that the choices made in the design of this toolchain can

Latest revision as of 01:56, December 8, 2015

Organization

  • LANL (Pat McCormick, pat@lanl.gov)
  • ORNL (Jeffrey Vetter, vetter@computer.org)

Organization

Overview

Achieving success in programming future high-performance systems should not depend on finding the single best approach, nor committing to an evolutionary or revolutionary path. Instead, we should transform the software development toolchain to support the design and implementation of multiple, ideally inter-operating, approaches that allow the community to explore and progressively move towards effective programming methodologies. To achieve this goal our research effort breaks the tight coupling found in vertical, language- and API-centric software stacks and supplants it with a toolchain that incorporates a new common set of abstract representations of programs in the form of a high-level intermediate representation (HLIR). This representation serves as an intermediary between the language-centric abstract syntax tree and the conventional lower-level intermediate representation (IR). In addition to encoding the usual serial execution semantics of a traditional IR, our higher-level IR aims to additionally encode more abstract concepts such as concurrency, parallelism, communication, synchronization, and non-uniform memory structures. Like a traditional IR, but unlike an abstract syntax tree, this higher-level representation will be language independent, thus capable of supporting a wide range of both mainstream and experimental languages.

Accordingly, ARES will investigate this approach through five specific tasks:

  1. Design, implement, and refine the ARES high-level intermediate representation (HLIR)} that captures the pertinent features of extreme-scale applications, architectures, and programming constructs. These activities will include developing tools for storing, manipulating, and verifying this HLIR.
  2. Develop prototype ARES front-ends for two languages that map advanced language concepts (e.g., those in OpenACC) onto our HLIR.
  3. Develop a prototype ARES optimization engine for HLIR} that optimizes the HLIR for select target architectures.
  4. Develop prototype ARES back-end compilation system, based on LLVM, that converts this optimized HLIR into executable instructions.
  5. Proactively engage the broader community by publishing our software and findings, and sponsoring tutorials and meetings when appropriate. This will both ensure that our design captures the most relevant approaches, and allow our peers to leverage this infrastructure.

We believe that the choices made in the design of this toolchain can have a profound impact on productivity and in the overall success of deploying powerful new approaches for programming, which, in turn, directly affect scientists' ability to maintain, let alone increase, the rate of innovation and scientific discovery in the era of extreme-scale computing.