Research questions
From MAGEEC
Revision as of 17:30, 14 July 2013 by James (talk | contribs) (James moved page Research Questions to Research questions)
This page covers some research questions that would be interesting to explore, once we have an initial framework to play with
Contents
Dynamic Features
- Can we better predict which optimizations to use if we take dynamic features of the application?
- What kinds of dynamic features can we capture?
- GCC/LLVM both have profile guided optimization, can we use this file for the dynamic features?
- Can hardware counters be used?
Non-binary Parameters
- Some optimizations have parameters which aren't on or off. Can be learn good values for these parameters?
Interactivity
- What is the effect of applying N learnt optimizations, and then retaking the features?
Feature Vector
- Which features should be in the feature vector?
- Are the features compiler specific?
Machine Learning
- What types of machine learning performs best for learning optimizations?
- Can the machine learning learn when to 'backtrack' and undo a previously applied optimization, based on benchmark features?
- How varied a set of benchmarks is needed to properly train a database?
- Can fewer benchmarks be used, but each benchmark altered by applying a random set of transformations?
Data Dependence
- Do different sequences of optimizations need to be applied for different data sets?
Multidimensional Cost Functions
- Can we optimize for energy and performance simultaneously?
- Can the balance between different cost metrics be altered?
- Does the database need to be retrained for different target metrics?