In light of the COVID-19 pandemic, the retail industry has rapidly shifted towards flexible work arrangements (FWAs) due to increased online shopping and changing consumer behavior. This paper provides a detailed analysis of the impact of FWAs on hourly retail employees, with a focus on integrating Artificial Intelligence (AI) and Machine Learning (ML) for schedule optimization and the associated challenges. The global rise in online shopping, which saw a 43% increase in 2020, has highlighted the limitations of traditional fixed schedules in meeting the fluctuating demand for retail staff. To address this issue, the paper proposes a three-module implementation strategy that includes labor focusing, automated schedule publication with shift-swapping capabilities, and a service to ensure compliance with flexible schedules. Labor forecasting is a crucial aspect of this strategy and faces complexities due to the unpredictable nature of the pandemic. Our approach utilizes a truncated dataset and AI/ML algorithms to recalibrate models in real-time, ensuring staffing levels are responsive to immediate market conditions rather than relying solely on historical patterns. Additionally, the paper discusses the development of an auto-population service for advance shift assignments, taking into account statutory notifications such as Oregon's 14-day rule. The inclusion of a 'shift swap' feature empowers employees to proactively manage their schedules, fostering a collaborative workplace culture. To minimize schedule disruptions, we propose a points-based system that penalizes postponements and non-compliance with schedule commitments. This system strikes a balance between operational requirements and employee flexibility, with Standard Operating Procedures (SOPs) in place to guide managerial responses to infractions. In conclusion, embracing FWAs, supported by innovative technologies and fair policies, positions retail businesses advantageously in the current market. This paper also calls for further research into the long-term effects of FWAs on mental health, productivity, and legislative frameworks, offering a comprehensive blueprint for the sector's evolution in the post-pandemic era.
Published in | Journal of Human Resource Management (Volume 11, Issue 4) |
DOI | 10.11648/j.jhrm.20231104.14 |
Page(s) | 150-155 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
Copyright |
Copyright © The Author(s), 2023. Published by Science Publishing Group |
Flexible Work Arrangements, Retail Workforce, Artificial Intelligence, Machine Learning, Labor Forecasting, Shift Swapping, Employee Autonomy, Schedule Optimization
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APA Style
Manikam, K. (2023). The Future of Flexible Work Arrangements for Hourly Employees. Journal of Human Resource Management, 11(4), 150-155. https://doi.org/10.11648/j.jhrm.20231104.14
ACS Style
Manikam, K. The Future of Flexible Work Arrangements for Hourly Employees. J. Hum. Resour. Manag. 2023, 11(4), 150-155. doi: 10.11648/j.jhrm.20231104.14
AMA Style
Manikam K. The Future of Flexible Work Arrangements for Hourly Employees. J Hum Resour Manag. 2023;11(4):150-155. doi: 10.11648/j.jhrm.20231104.14
@article{10.11648/j.jhrm.20231104.14, author = {Karthikeyan Manikam}, title = {The Future of Flexible Work Arrangements for Hourly Employees}, journal = {Journal of Human Resource Management}, volume = {11}, number = {4}, pages = {150-155}, doi = {10.11648/j.jhrm.20231104.14}, url = {https://doi.org/10.11648/j.jhrm.20231104.14}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.jhrm.20231104.14}, abstract = {In light of the COVID-19 pandemic, the retail industry has rapidly shifted towards flexible work arrangements (FWAs) due to increased online shopping and changing consumer behavior. This paper provides a detailed analysis of the impact of FWAs on hourly retail employees, with a focus on integrating Artificial Intelligence (AI) and Machine Learning (ML) for schedule optimization and the associated challenges. The global rise in online shopping, which saw a 43% increase in 2020, has highlighted the limitations of traditional fixed schedules in meeting the fluctuating demand for retail staff. To address this issue, the paper proposes a three-module implementation strategy that includes labor focusing, automated schedule publication with shift-swapping capabilities, and a service to ensure compliance with flexible schedules. Labor forecasting is a crucial aspect of this strategy and faces complexities due to the unpredictable nature of the pandemic. Our approach utilizes a truncated dataset and AI/ML algorithms to recalibrate models in real-time, ensuring staffing levels are responsive to immediate market conditions rather than relying solely on historical patterns. Additionally, the paper discusses the development of an auto-population service for advance shift assignments, taking into account statutory notifications such as Oregon's 14-day rule. The inclusion of a 'shift swap' feature empowers employees to proactively manage their schedules, fostering a collaborative workplace culture. To minimize schedule disruptions, we propose a points-based system that penalizes postponements and non-compliance with schedule commitments. This system strikes a balance between operational requirements and employee flexibility, with Standard Operating Procedures (SOPs) in place to guide managerial responses to infractions. In conclusion, embracing FWAs, supported by innovative technologies and fair policies, positions retail businesses advantageously in the current market. This paper also calls for further research into the long-term effects of FWAs on mental health, productivity, and legislative frameworks, offering a comprehensive blueprint for the sector's evolution in the post-pandemic era. }, year = {2023} }
TY - JOUR T1 - The Future of Flexible Work Arrangements for Hourly Employees AU - Karthikeyan Manikam Y1 - 2023/12/22 PY - 2023 N1 - https://doi.org/10.11648/j.jhrm.20231104.14 DO - 10.11648/j.jhrm.20231104.14 T2 - Journal of Human Resource Management JF - Journal of Human Resource Management JO - Journal of Human Resource Management SP - 150 EP - 155 PB - Science Publishing Group SN - 2331-0715 UR - https://doi.org/10.11648/j.jhrm.20231104.14 AB - In light of the COVID-19 pandemic, the retail industry has rapidly shifted towards flexible work arrangements (FWAs) due to increased online shopping and changing consumer behavior. This paper provides a detailed analysis of the impact of FWAs on hourly retail employees, with a focus on integrating Artificial Intelligence (AI) and Machine Learning (ML) for schedule optimization and the associated challenges. The global rise in online shopping, which saw a 43% increase in 2020, has highlighted the limitations of traditional fixed schedules in meeting the fluctuating demand for retail staff. To address this issue, the paper proposes a three-module implementation strategy that includes labor focusing, automated schedule publication with shift-swapping capabilities, and a service to ensure compliance with flexible schedules. Labor forecasting is a crucial aspect of this strategy and faces complexities due to the unpredictable nature of the pandemic. Our approach utilizes a truncated dataset and AI/ML algorithms to recalibrate models in real-time, ensuring staffing levels are responsive to immediate market conditions rather than relying solely on historical patterns. Additionally, the paper discusses the development of an auto-population service for advance shift assignments, taking into account statutory notifications such as Oregon's 14-day rule. The inclusion of a 'shift swap' feature empowers employees to proactively manage their schedules, fostering a collaborative workplace culture. To minimize schedule disruptions, we propose a points-based system that penalizes postponements and non-compliance with schedule commitments. This system strikes a balance between operational requirements and employee flexibility, with Standard Operating Procedures (SOPs) in place to guide managerial responses to infractions. In conclusion, embracing FWAs, supported by innovative technologies and fair policies, positions retail businesses advantageously in the current market. This paper also calls for further research into the long-term effects of FWAs on mental health, productivity, and legislative frameworks, offering a comprehensive blueprint for the sector's evolution in the post-pandemic era. VL - 11 IS - 4 ER -