Hastening Opportunities for International Students at Bleckleys Magnificent National Center: Avoiding the Simplest and Valuable Mistakes in Lineman Training on Friday

Hastening Opportunities for International Students at Bleckleys Magnificent National Center: Avoiding the Simplest and Valuable Mistakes in Lineman Training on Friday


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Authors

  • Tymoteusz Tadhg

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Abstract

This study investigates the challenges and opportunities faced by international students at Bleckleys Magnificent National Center, particularly in the context of lineman training. Through a qualitative research design that included interviews with international students, faculty, and staff, as well as document analysis, the authors identify the most common mistakes made by international students in lineman training and offer strategies for avoiding them. The study found that international students faced a range of challenges in adjusting to the new academic and cultural context, including language barriers, lack of familiarity with the American educational system, and limited social networks. However, by leveraging their unique skills and experiences, international students also presented valuable opportunities for the Center. The authors argue that by providing tailored support and resources for international students, the Center can maximize their potential and improve the overall quality of lineman training. The study concludes with recommendations for future research and practice, including the need for ongoing dialogue and collaboration between international students, faculty, and staff.

Citation

Tymoteusz Tadhg "Hastening Opportunities for International Students at Bleckleys Magnificent National Center: Avoiding the Simplest and Valuable Mistakes in Lineman Training on Friday".  IEEE Exploration in Machine Learning, 2022.

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This paper appears in:
Date of Release: 2022
Author(s): Tymoteusz Tadhg.
IEEE Exploration in Machine Learning
Page(s): 9
Product Type: Conference/Journal Publications