The application of parallel processing in the selection of spectral variables in beer quality control

Food Chem. 2022 Jan 15:367:130681. doi: 10.1016/j.foodchem.2021.130681. Epub 2021 Jul 26.

Abstract

Parallel data analysis was investigated to improve performance in variable selection and to develop predictive models for beer quality control. A set of spectral near infrared (NIR) data from 60 beer samples and its primitive extracts as the original concentration was used. The dataset was distributed to Raspberry Pi 3 Model B devices connected to a network that was running a Machine Learning service. With more than 4 devices acting in parallel, it was possible to reduce time in 57% to find the best linear regression coefficient (0.999) with the lower RMSECV (0.216) if compared to a singular desktop computer. Thus, parallel processing can significantly reduce the time to indicate the best model fitted during the variable's selection.

Keywords: Methods of Parallelism; Partial Least Squares; Variable selection; WebService.

MeSH terms

  • Beer*
  • Least-Squares Analysis
  • Linear Models
  • Quality Control
  • Spectroscopy, Near-Infrared*