Analyzing Computer Programming Job Trend Using Web Data Mining

نویسنده

  • David Smith
چکیده

Today’s rapid changing and competitive environment requires educators to stay abreast of the job market in order to prepare their students for the jobs being demanded. This is more relevant about Information Technology (IT) jobs than others. However, to stay abreast of the market job demands require retrieving, sifting and analyzing large volume of data in order to understand the trends of the job market. Traditional methods of data collection and analysis are not sufficient for this kind of analysis due to the large volume of job data that is generated through the web and elsewhere. Luckily, the field of data mining has emerged to collect and sift through such large data volumes. However, even with data mining, appropriate data collection techniques and analysis need to be followed in order to correctly understand the trend. This paper illustrates our experience with employing mining techniques to understand the trend in IT Technology jobs. Data was collect using data mining techniques over a number of years from an online job agency. The data was then analyzed to reach a conclusion about the trends in the job market. Our experience in this regard along with literature review of the relevant topics is illustrated in this paper.

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تاریخ انتشار 2014