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What are the advantages in the use of Python in engineering research? 


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Python offers several advantages in engineering research. Firstly, it is a free and easily accessible programming language that can be downloaded from the web . Python is widely used in scientific computing and engineering due to its object-oriented approach and logical code structure . It provides a vast collection of libraries and packages that simplify important processes such as data analysis, visualization, and machine learning . Python's libraries like Matplotlib and NumPy enable efficient control system designing, with smaller code size and faster output time compared to MATLAB . Additionally, Python can be applied to circuit analysis, solving equations, drawing curves, and logic calculations, improving the efficiency of circuit analysis . Overall, Python's versatility and extensive libraries make it a valuable tool for various engineering research tasks.

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The paper mentions that one of the advantages of using Python in engineering research is that it is free of cost and can be easily downloaded from the web.
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