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Context-Aware Approximate Scientific Computing

This repository is a companion piece to the article entitle "Context-Aware Approximate Scientific Computing". It provides the code used for collecting the data (as well as applying the loop aggregation technique), in folder data_collection, and the code used for the evaluation in the evaluation folder.

Requirements

Data collection

  • Python3
  • flopy==3.3.5
  • pandas==1.4.2
  • matplotlib==3.5.1
  • scipy==1.8.0
  • gdal==3.4.0
  • numpy==1.22.3
  • jupyter-notebook
  • libgfortran5

Evaluation

  • pandas
  • numpy
  • sklearn

Usage

To directly go to the results of the evaluation process, we recommend to open the corresponding jupyter notebooks in folder evaluation/notebooks:

  • CostPrediction.ipynb for the evaluation of the cost predictive model (RQ 1.1)
  • ValidityPrediction.ipynb for the evaluation of the validity predictive model (RQ 1.2)
  • Approach.ipynb for the evaluation of the overall approach (RQs 2 & 3 & 4)

For the data collection, we recommend going to the provided example in data_collection/example. The necessary information to run it is given in the associated README.md.

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Loop Aggregation Prediction

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