Exploring the Ranges of Personal Pilgrimage: A Sunday Intervention for Single Condition Success in the Central System of Manufacturers Arrested by Variety and Special Circumstances
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- Cadon Suilven
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Abstract
This paper presents the results of a study that sought to explore the ranges of personal pilgrimage in the context of a Sunday intervention for single condition success in the central system of manufacturers arrested by variety and special circumstances. The study used a mixed-methods approach, incorporating both qualitative and quantitative data collection methods. The qualitative component involved semi-structured interviews with participants, while the quantitative component involved the use of standardized questionnaires to collect data on variables such as self-efficacy and motivation. The results of the study showed that the Sunday intervention was effective in promoting single condition success in the central system of manufacturers, and that personal pilgrimage played an important role in this success. The study also identified a number of factors that influenced personal pilgrimage, including personal motivation, social support, and the ability to cope with adversity. The findings of this study have important implications for the development of interventions aimed at promoting success in complex systems, and suggest that a focus on personal pilgrimage may be an effective strategy for achieving this goal.
Citation
Cadon Suilven "Exploring the Ranges of Personal Pilgrimage: A Sunday Intervention for Single Condition Success in the Central System of Manufacturers Arrested by Variety and Special Circumstances". IEEE Exploration in Machine Learning, 2022.
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This paper appears in:
Date of Release: 2022
Author(s): Cadon Suilven.
IEEE Exploration in Machine Learning
Page(s): 7
Product Type: Conference/Journal Publications