Why Python is Most Famous
Keywords:
Application, Dynamic, Data, Python, ProgrammingAbstract
We now have a plethora of programming languages to meet our requirements, but the most pressing issue is how to teach programming to beginners. We recommend Python for this job in this article since it is a programming language with a well-organized syntax and strong capabilities for solving any problem. Furthermore, it is extremely similar to basic math reasoning. In most top institutions, Python is selected as the main programming language for freshmen. Python makes it simple to write code. In this article, we provide several computer code samples developed in Java, C++, and Python, as well as a comparison of the three languages.To begin, this article discusses the benefits of Python over C++ and Java. The results of a comparison of brief program codes written in three distinct languages are then shown, followed by a discussion of how pupils comprehend programming. Finally, the experimental findings of students' programming course success are shown.
Downloads
References
. Kadiyala A, Kumar A. Applications of Python to evaluate environmental data science problems. Environmental Progress and Sustainable Energy. 2017.
. Ulloa R. Kivy: Interactive Applications in Python. cs_python_in. 2013.
. Zakka K. A Complete Guide to K-Nearest-Neighbors with Applications in Python and R. Kevin Zakka’s Blog. 2016. [4]. Panggabean H, Tobing CA. Computational Linguistics Application Using Python Programming. IOSR J Humanit Soc Sci Ver II. 2015;
. Schmidt AG, Weisz G, French M. Evaluating rapid application development with python for heterogeneous processor-based FPGAs. In: Proceedings - IEEE 25th Annual International Symposium on Field-Programmable Custom Computing Machines, FCCM 2017. 2017.
. Glover J, Lazzarini V, Timoney J. Python for Audio Signal Processing. Int J Speech Technol. 2017;
. Oxoli D, Zurbarán M, Shaji S, Muthusamy A. Hotspot analysis: a first prototype Python plugin enabling exploratory spatial data analysis into QGIS. PEERJ Prepr.
;
. Wagner M, Llort G, Mercadal E, Giménez J, Labarta J. Performance Analysis of Parallel Python Applications. In: Procedia Computer Science. 2017.
. Pedregosa F, Varoquaux G, Gramfort A, Michel V, Thirion B, Grisel O, et al. Scikit-learn: Machine learning in Python. J Mach Learn Res. 2011;
. Landy M. Monty Python’s flying circus. Monty Python’s Flying Circus. 2005.