The “Social” Side of Big Data: Teaching BD Analytics to Political Science Students
In an increasingly technology-dependent world, it is not surprising that STEM (Science, Technology, Engineering, and Mathematics) graduates are in high demand. This state of affairs, however, has made the public overlook the case that not only computing and artificial intelligence are naturally inte...
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doaj-5d7c492c85eb4134ac1728d206304e7b2020-11-25T03:41:04ZengMDPI AGBig Data and Cognitive Computing2504-22892020-06-014131310.3390/bdcc4020013The “Social” Side of Big Data: Teaching BD Analytics to Political Science StudentsGiampiero Giacomello0Oltion Preka1Department of Political and Social Sciences, University of Bologna, 40125 Bologna, ItalyDepartment of Political and Social Sciences, University of Bologna, 40125 Bologna, ItalyIn an increasingly technology-dependent world, it is not surprising that STEM (Science, Technology, Engineering, and Mathematics) graduates are in high demand. This state of affairs, however, has made the public overlook the case that not only computing and artificial intelligence are naturally interdisciplinary, but that a huge portion of generated data comes from human–computer interactions, thus they are social in character and nature. Hence, social science practitioners should be in demand too, but this does not seem the case. One of the reasons for such a situation is that political and social science departments worldwide tend to remain in their “comfort zone” and see their disciplines quite traditionally, but by doing so they cut themselves off from many positions today. The authors believed that these conditions should and could be changed and thus in a few years created a specifically tailored course for students in Political Science. This paper examines the experience of the last year of such a program, which, after several tweaks and adjustments, is now fully operational. The results and students’ appreciation are quite remarkable. Hence the authors considered the experience was worth sharing, so that colleagues in social and political science departments may feel encouraged to follow and replicate such an example.https://www.mdpi.com/2504-2289/4/2/13social big datateaching PythonJupyter NotebookPandasMatplotlib |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Giampiero Giacomello Oltion Preka |
spellingShingle |
Giampiero Giacomello Oltion Preka The “Social” Side of Big Data: Teaching BD Analytics to Political Science Students Big Data and Cognitive Computing social big data teaching Python Jupyter Notebook Pandas Matplotlib |
author_facet |
Giampiero Giacomello Oltion Preka |
author_sort |
Giampiero Giacomello |
title |
The “Social” Side of Big Data: Teaching BD Analytics to Political Science Students |
title_short |
The “Social” Side of Big Data: Teaching BD Analytics to Political Science Students |
title_full |
The “Social” Side of Big Data: Teaching BD Analytics to Political Science Students |
title_fullStr |
The “Social” Side of Big Data: Teaching BD Analytics to Political Science Students |
title_full_unstemmed |
The “Social” Side of Big Data: Teaching BD Analytics to Political Science Students |
title_sort |
“social” side of big data: teaching bd analytics to political science students |
publisher |
MDPI AG |
series |
Big Data and Cognitive Computing |
issn |
2504-2289 |
publishDate |
2020-06-01 |
description |
In an increasingly technology-dependent world, it is not surprising that STEM (Science, Technology, Engineering, and Mathematics) graduates are in high demand. This state of affairs, however, has made the public overlook the case that not only computing and artificial intelligence are naturally interdisciplinary, but that a huge portion of generated data comes from human–computer interactions, thus they are social in character and nature. Hence, social science practitioners should be in demand too, but this does not seem the case. One of the reasons for such a situation is that political and social science departments worldwide tend to remain in their “comfort zone” and see their disciplines quite traditionally, but by doing so they cut themselves off from many positions today. The authors believed that these conditions should and could be changed and thus in a few years created a specifically tailored course for students in Political Science. This paper examines the experience of the last year of such a program, which, after several tweaks and adjustments, is now fully operational. The results and students’ appreciation are quite remarkable. Hence the authors considered the experience was worth sharing, so that colleagues in social and political science departments may feel encouraged to follow and replicate such an example. |
topic |
social big data teaching Python Jupyter Notebook Pandas Matplotlib |
url |
https://www.mdpi.com/2504-2289/4/2/13 |
work_keys_str_mv |
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