Difference between revisions of "ISSS608 2017-18 T3 Assign Li Hongxin Methodology"

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==Tools==
 
==Tools==
  
</b><b>a. R:</b> used for data cleaning.  
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<b>a. R:</b> used for data cleaning.  
  
 
<i>Packages: tidyverse</i>
 
<i>Packages: tidyverse</i>

Revision as of 19:59, 6 July 2018

Pipits hx.jpg VAST Mini Challenge 1: "Cheep" Shots?

Background

Methodology

Data Visualization

Conclusions

 

Tools

a. R: used for data cleaning.

Packages: tidyverse

b. Tableau: used for Map & Pattern visualization.

c. Python: used for Density visualization, audio visualization and audio classification.

Packages: os, glob, pandas, numpy, matplotlib, seaborn, librosa, sklearn

Process for Data Cleaning

a