A Commentary on the Applications of Python in Resolving Issues Concerning Energy and the Ecosystems

Authors

  • Takudzwa Fadziso Institute of Lifelong Learning and Development Studies, Chinhoyi University of Technology, ZIMBABWE

DOI:

https://doi.org/10.18034/apjee.v8i2.655

Keywords:

Python, Gas Problems, Energy, Artificial intelligence, Internet of things, Machine learning

Abstract

The energy industry is just getting started with applying it to problems with energy and ecosystems so they can find solutions. Python's popularity has increased across a variety of sectors, including businesses, academic institutions, government agencies, and research organizations. The true potential it possesses to automate a variety of processes while simultaneously increasing the capabilities of various industries to predict outcomes has been observed. Because of the digital transformation, such as sensors and high-performance computing services, which enable artificial intelligence (AI), machine learning (ML), big data acquisition, and storage in digital oilfields, its popularity has been on the rise in the industry that deals with energy and ecosystems. This is one of the primary reasons why. This can be easily verified by conducting a quick search for the number of publications that have been produced in the field of energy and ecosystems by the Society of Petroleum Engineers over the past few years. Without having to invest in pricey software, the production and reservoir engineers will be able to better manage the production operation thanks to this development. In addition to this, it will lead to a decrease in the overall operating costs and an increase in revenue. As a result, it has been demonstrated to be a promising application that has the potential to bring about a revolutionary change in the industry of energy and ecosystems and to transform the features that are already in place for the purpose of resolving issues related to energy and ecosystems.

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Published

2021-09-01

How to Cite

Fadziso, T. (2021). A Commentary on the Applications of Python in Resolving Issues Concerning Energy and the Ecosystems. Asia Pacific Journal of Energy and Environment, 8(2), 47-54. https://doi.org/10.18034/apjee.v8i2.655

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