A Systematic Literature Review of Artificial Intelligence Advancements in Green Human Resource Management
Abstract
1. Introduction
2. Materials and Methods
- Literature retrieval—The initial step of this systematic literature review necessitates the selection of a precise search string to effectively capture publications relevant to the integration of AI advancements and GHRM. Literature retrieval was conducted using the Scopus database, which serves as the primary database due to its comprehensive and widely recognized multidisciplinary coverage of peer-reviewed literature across science, technology, engineering, social sciences, and management disciplines [44]. The literature search was conducted using the Scopus database, which was selected as the primary data source owing to its broad multidisciplinary scope and comprehensive coverage of peer-reviewed journals in the domains of engineering, management, and social sciences. Scopus encompasses nearly all journals indexed in Web of Science and includes a wider range of conference proceedings and regional publications relevant to emerging topics such as AI–HRM integration [45,46]. This methodological choice ensures comprehensive coverage of the interdisciplinary dimensions of AI–GHRM research, thereby minimizing potential publication bias or omission. The initial literature search using the specified search string was conducted on 08-03-2025 and the following search string was employed, based on the article title, abstract and keyword: TITLE-ABS-KEY ((“Artificial intelligence” OR “AI” OR “machine learning” OR “Generative artificial intelligence” OR “Generative AI” OR “Predictive analytics” OR “Deep learning” OR “Natural language processing” OR “NLP” OR “Cognitive computing” OR “Intelligent systems” OR “Business intelligence” OR “BI” OR “AI-powered” OR “Autonomous decision” OR “intelligent automation” OR “robotic process automation” OR “RPA” OR “data mining” OR “predictive modeling” OR “HR analytics” OR “people analytics” OR “digital HR” OR “smart HR” OR “analytics” OR “big data” OR “chatbots” OR “conversational AI”) AND (“green human resource” OR “green HRM” OR “green HR” OR “GHRM” OR “environmental human resource” OR “environmental HRM” OR “sustainable HRM” OR “eco-friendly HRM” OR “sustainable human resource” OR “sustainable HR” OR “eco HRM” OR “green recruitment” OR “green talent management” OR “ sustainable recruitment” OR “ sustainable talent management” OR “Eco-HR”)) AND (LIMIT-TO (DOCTYPE, “ar”) OR LIMIT-TO (DOCTYPE, “cp”) OR LIMIT-TO (DOCTYPE, “ch”)) AND (LIMIT-TO (LANGUAGE, “English”)). Subsequently, the retrieved papers were systematically filtered based on clearly defined inclusion criteria to maintain the validity and quality of the selected dataset. Our inclusion criteria were specifically defined as follows: first, with regard to document type, the review considered only journal articles, conference proceedings, and book chapters that had reached their final publication stage. This criterion was applied to guarantee the inclusion of high-quality, peer-reviewed scholarly contributions that offer both methodological rigor and substantive academic value, thereby enhancing the reliability and credibility of the review’s findings. Second, only publications written in English were considered, as this facilitated consistency in analysis. Based on these inclusion criteria, the initial search retrieved 81 documents covering the period 2016–2025. This time range reflects the coverage of the Scopus database during the retrieval process rather than a pre-defined selection by the authors.To ensure a comprehensive and inclusive analysis, this study employed a broad data collection strategy. Rather than confining the review to pre-determined variables, the objective was to capture a wide spectrum of insights at the nexus of AL and GHRM. Accordingly, the inclusion criteria were designed with flexibility to accommodate diverse study designs and data types, thereby incorporating a rich variety of perspectives and contextual settings.The flexible nature of the data collection, guided by broad inclusion criteria rather than strict variable constraints, resulted in a complete dataset, thereby eliminating the necessity of inferring or making assumptions about missing information. This rigorous approach strengthens the study’s validity, ensuring that the study’s outcomes are both representative and aligned with the stated research aims.
- Literature screening—This step employs analyzing existing research on techniques, methodologies, and tools related to the integration of AI advancements and GHRM. The research methodology was thoroughly structured, gaining inspiration from established approaches as demonstrated in [44,47,48,49]. As mentioned in the literature retrieval step, 81 articles were initially included according to the inclusion and exclusion criteria. To ensure the reliability of the coding process, two independent researchers undertook the screening process by evaluating the titles, abstracts, and keywords and conducted open coding and constant comparison separately, followed by a consensus discussion to reconcile any minor discrepancies. Intercoder reliability was therefore established through mutual agreement rather than through statistical measures, in line with qualitative research standards for thematic synthesis. To facilitate this process and enhance screening efficiency, Rayyan, an AI-assisted platform specifically designed for systematic reviews, was utilized. This tool enabled the automatic identification and removal of duplicate entries while also supporting the structured organization of references throughout the review process [50]. Subsequently, a duplicate check was conducted on Rayyan, which revealed no duplicate entries, thus maintaining the initial count of 81 articles. Following this, a preliminary screening for relevance and eligibility was performed based on the authors’ effort of screening the titles, keywords, and abstracts, which resulted in the exclusion of articles deemed irrelevant to the focal topic. After applying the relevance and quality screening, it was observed that the first studies addressing the integration of AI and GHRM appeared in 2018. Consequently, the final dataset comprised 53 studies published between 2018 and 2025, representing the actual emergence of scholarly work in this domain, as illustrated in Figure 1. This timeframe corresponds with the discernible development of scholarly literature addressing the intersection of AI and GHRM. Prior to 2018, the research output in this specific area was limited. In alignment with the PRISMA framework, which assisted in the identification of studies relevant to the review topic, a complementary quality appraisal process guided by the Joanna Briggs Institute (JBI) Critical Appraisal Checklist systematically evaluated the methodological soundness of the included studies. The assessment examined the clarity and relevance of each study’s research question, the suitability of inclusion criteria, and the adequacy of the search strategy and data sources. It also considered the appropriateness of study appraisal methods, procedures to minimize data extraction errors, and the techniques used to synthesize findings. Furthermore, the evaluation reviewed whether potential publication bias was addressed, whether conclusions and recommendations were supported by the presented evidence, and whether directions for future research were clearly articulated.While a formal tool for assessing bias was not employed, each study included in the review was carefully examined by the reviewers with respect to its methodological rigor, transparency in data reporting, and consistency with the stated research objectives. This evaluative process was supported using Rayyan, which facilitated a structured and consistent screening workflow, thereby contributing to the systematic and impartial selection of studies. All assessments were performed manually to ensure precision and critical appraisal during the entire course of this systematic review.To maintain methodological integrity and ensure the reliability of the reviewed studies, all studies that met the inclusion criteria underwent a structured quality assessment procedure. Each article was independently reviewed by two evaluators according to three key dimensions, (1) methodological rigor: including clarity of design, data source validity, and transparency of analytical procedures; (2) relevance to the research objectives: measured by the degree of alignment between AI applications and Green HRM constructs; and (3) reporting quality: assessed based on the completeness of results, acknowledgment of limitations, and replicability of findings. Articles that demonstrated low clarity in design or insufficient methodological detail were flagged for discussion between reviewers, and inclusion decisions were reached through consensus. While no numerical scoring scale was applied, this qualitative approach ensured the consistency, credibility, and transparency of the final dataset.In addition, the results were synthesized descriptively, a methodological choice necessitated by the heterogeneity of the included studies, which precluded statistical aggregation through meta-analysis. This synthesis process focused on abstracting and summarizing key data related to AI technologies in GHRM. Subsequently, identified patterns, thematic trends, and recurring themes were consolidated to offer an integrative interpretation of the results, aligning with the study’s exploratory purpose. Formal techniques to evaluate bias resulting from unreported or selectively reported findings were not employed in this synthesis; nonetheless, steps were taken to minimize the possible impact of such reporting biases. This involved incorporating a wide array of studies and favoring those with clear methodologies and thorough data reporting. The intention behind this approach was to decrease the chance of omitting pertinent findings while upholding the synthesis’s dependability.In the absence of a meta-analysis, sensitivity analyses aimed at evaluating the robustness of the synthesized findings were not conducted. Such quantitative robustness testing was not required, given the study’s exploratory nature and its reliance on a descriptive synthesis methodology. Rigor was instead established by focusing on the consistency and reliability of the evidence base. This was accomplished through a systematic appraisal of each study’s quality and relevance during the selection phase, thereby ensuring that the synthesized findings accurately represent the diversity and significance of the included literature.Since statistical pooling was not performed, formal techniques for assessing heterogeneity, such as subgroup analysis or meta-regression, were deemed inapplicable. Instead of these quantitative techniques, variability among the studies was addressed through a descriptive approach. This involved qualitatively identifying and discussing thematic differences, patterns, and trends observed across the findings. This method allowed the analysis to preserve the contextual richness of the individual studies while systematically acknowledging the diversity in their designs and methodologies.Given the study’s descriptive approach, a formal assessment of certainty in the evidence was not conducted. The synthesis focused on identifying patterns and themes, not on quantitatively rating outcome confidence. However, the reliability of the findings was supported by prioritizing studies with robust methodologies and transparent reporting during the selection process. The inclusion criteria were designed to filter for high-quality, relevant literature, thereby ensuring the credibility of the synthesized conclusions.To enhance clarity and facilitate cross-study comparison, the findings from individual studies were systematically summarized and presented in a tabular format. These tables were structured to categorize the literature according to key characteristics, including the year of publication, primary research focus, methodological approach, and principal outcomes. Furthermore, visual representations were developed where appropriate to provide a consolidated summary of emergent themes aimed at improving the overall interpretability of the synthesized results.The publication trend of the included articles in the review concerning the integration of AI advancements and GHRM, categorized by year of publication, is depicted in Figure 2. The graph reveals a noticeable increase in publications starting from 2022, reaching a significant peak in 2024. This observed rise highlights the increasing academic focus on exploring the intersection of AI and GHRM. However, a sharp decline in the number of publications is observed in 2025, with a substantial reduction in published works. This decrease may be attributed to the review period concluding in the early part of 2025, hence, it is anticipated that the publication count will rise as more research is released throughout the year. Additionally, the fluctuations in publication numbers during the preceding years suggest the relative novelty of this interdisciplinary area within scholarly communication, resulting in a more limited initial exploration of the topic.
- Content analysis—The step comprises a detailed examination of the selected articles to identify and synthesize contemporary trends, patterns, and themes pertinent to the integration of AI advancements and GHRM. This was accomplished through a systematic organization of the extracted information from each included study. Specifically, content analysis was employed to explore the instances of the intersection between AI advancements and GHRM. The articles were then categorized according to a structured framework of themes and sub-themes. This analytical methodology facilitated the classification and comprehensive analysis of the available information, which enables the derivation of robust conclusions from the synthesized literature regarding the convergence of AI advancements with GHRM.
- Bibliometric analysis—The concluding step of this review incorporates bibliometric techniques and descriptive statistics to evaluate the impact and influence of the research. This approach served to gauge the significance of individual scholars and journals, as well as to discern emerging trends and patterns within the field of study. Specifically, the analysis encompasses the examination of research topic textual data, keywords, citation counts, co-authorship networks across countries, and collaborative patterns among authors, thereby illuminating interdisciplinary collaborations. Furthermore, the analysis extends to identify predominant publication sources and assess the citation impact of the reviewed articles.


3. Results of the Content Analysis
3.1. GHRM Related Technologies
3.1.1. AI Technologies Utilized in GHRM
| Theme | Authors | Focus |
|---|---|---|
| AI | [30] | Provides real-world examples of AI-driven HR tools (i.e., Pymetrics, HireVue, Coursera for Business, Degreed, Glint, Peakon, PayScale) and illustrates how these technologies support eco-friendly HR practices by streamlining operations, reducing resource consumption, and enhancing decision-making. |
| [31] | Shows that AI moderates the relationships among green HRM, green knowledge management, and sustainable performance, suggesting that AI enhances the effectiveness of green HR strategies in driving sustainable outcomes. | |
| [32] | Uses AI and high levels of technological competence to see positive environmental performance outcomes from their Green HRM practices. | |
| [33] | Demonstrates that AI serves as a crucial enabler by influencing employees’ innovative work behavior and supporting data-driven decision-making within green HR practices. | |
| [35] | Analyzes the use of AI in GHRM and its potential benefits through secondary data, providing insights on how technology can transform HR practices to be more sustainable. | |
| [36] | Investigates how AI can be used to improve various aspects of GHRM practices. | |
| [38] | Discovers the complexities of the application of AI algorithms in HR analytics and the potential impact it will have on HR practices. | |
| [40] | Discovers how AI can be leveraged to enhance organizational sustainability through its integration with GHRM practices, in addition to the challenges of this integration. | |
| [51] | Uses AI to improve GHRM practices including green recruitment, green training and development, and other GHRM activities | |
| [52] | Examines how AI personalize HRM practices to better fit the needs of individual employees, which can further improve engagement and performance | |
| [53] | Explores the various ways AI can be leveraged to enhance e-recruitment processes, support GHRM practices, promote corporate university sustainability, and ultimately improve organizational performance | |
| [54] | Specifies how AI can be leveraged to improve the efficiency, effectiveness, and sustainability of the recruitment process | |
| [55] | Demonstrates the integration of AI technologies into HR functions to transition corporate HR into a green, resource-efficient, and sustainable system. | |
| [56] | Highlights the role of AI in streamlining HR processes by automating routine tasks and offering data-driven insights for decision-making, AI tools reduce employee workload and foster a more engaging and innovative work environment, ultimately contributing to higher employee engagement levels. | |
| [57] | Details how emerging AI technologies, including machine learning, neural networks, IoT, and chatbots, are leveraged in IR 5.0 to support various green HRM functions, from talent acquisition and training personalization to performance management and employee empowerment. | |
| [58] | Highlights how AI can help organizations navigate the challenges posed by the pandemic and develop a sustainable work-from-home culture. | |
| [59] | Emphasizes how HR analytics and AI are applied as decision-support tools. It shows that by leveraging descriptive, diagnostic, predictive, and prescriptive analytics, organizations can gain valuable insights into HR processes, such as compensation, retention, and emotional labor, that support sustainable HRM practices. | |
| [60] | Shows that AI has a direct positive effect on employees’ innovative work behavior, and moderates the relationship between green hard talent management and innovative work behavior which indicates that AI can either enhance or dampen the influence of traditional green HR practices, highlighting its critical role as a technological enabler. | |
| [61] | Offers propositions on how AI can reinforce GHRM and drive sustainability, providing insights for further exploration and development of AI-enabled HRM strategies. | |
| [62] | Proposes the development and use of an AI-powered talent intelligence platform that leverages AI-based talent analytics to enhance people management and drive sustainable competitive advantage and sustainable talent management. | |
| [63] | Explores the various ways AI can be leveraged to enhance GHRM practices, promote employee behavior, and ultimately improve organizational performance. | |
| [64] | Determines how AI can be leveraged to enhance green training and development, promote employee’s green behavior, and ultimately contribute to environmental sustainability within organizations. |
3.1.2. Big Data in GHRM
| Theme | Authors | Focus |
|---|---|---|
| Big Data | [65] | Identifies the role of big data analytics in moderating the relationships between GHRM and green innovation, showcasing the practical application of AI tools (big data analytics) to enhance the understanding of HR and performance outcomes. |
| [66] | Explores whether the use of big data analytics enhances the positive effects of green innovation on achieving circular economy objectives. | |
| [67] | Details the role of AI-driven big data analytics in moderating the impact of green HRM on CEP. It emphasizes that big data analytics (BDA) not only enables data integration and decision-making but also strengthens the positive effects of sustainable HR practices on environmental performance. | |
| [68] | Explains that big data analytics is assimilated through acceptance, routinization, and assimilation processes. Establishes the role of big data technologies in optimizing internal processes by integrating them with green HRM practices, thereby recommending a combined approach to improve sustainable capabilities and firm performance. | |
| [69] | States that big data analytics capability acts as a mediator, enabling organizations to effectively translate GHRMP into green competitive advantage through data-driven insights and decision-making. | |
| [70] | Focuses on big data analytics through exploring its direct impact on sustainability-related factors, highlighting its strategic role in achieving sustainability goals, and providing empirical evidence within a specific industry context. | |
| [71] | Highlights the role of Big Data and digital transformation in enhancing firms’ sustainability when integrated with GHRM. | |
| [72] | Positions big data as a critical technological antecedent that, when integrated with green HRM practices, fosters green innovation and thereby supports sustainable performance. | |
| [73] | Highlights big data analytics as a crucial HRM technology, illustrating how it enhances and regulates the influence of green HRM practices on organizational performance. | |
| [74] | Reveals that among various dimensions of big data analytics utilization, only BDA assimilation significantly moderates the relationship between GHRM and LSR which highlights the critical role of data analytics processes in enhancing the outcomes of GHRM practices. | |
| [75] | Moderates the positive effects of GHRM on green service production and environmental performance, demonstrating that effective data assimilation is essential for harnessing the full potential of SHRM practices in challenging environments. |
3.1.3. Integrated Intelligent & Connected Technologies in GHRM
| Theme | Authors | Focus |
|---|---|---|
| Integrated Intelligent & Connected Technologies | [34] | Relates to STARA by exploring its predictive role in environmental sustainability, its impact on GHRM programs, and its interplay with GHRM in promoting sustainability outcomes |
| [76] | Explores how the adoption of green talent management practices and the development of leader competence in STARA technologies (smart technology, artificial intelligence, robotics, and algorithms) affect employee turnover intention. | |
| [77] | Examines the impact of STARA capabilities on GHRM, green supply chain management practices, and sustainable performance. | |
| [78] | Reveals the impact of STARA on green performance through examining the mediating roles of GHRM and employees’ green commitment, and the moderating role of green psychological climate. | |
| [79] | Uses IoT to enhance data collection, analysis, and decision-making in HRM to improve employee management and organizational growth. | |
| [80] | Examines the impact of the IoT on strategic HRM, and how it impacts on sustainable HR growth. | |
| [81] | Integrates IoT for real-time data acquisition with fuzzy theory–based algorithms to perform adaptive optimization and expert system analysis. This integration supports intelligent performance evaluation and decision-making in hotel GHRM, allowing for a more precise and adaptable evaluation of the hotel’s eco-friendly HR practices. | |
| [82] | Uses machine learning to evaluate STP that promote organizational growth and ensure the attainment of sustainable HRM objectives. | |
| [83] | Highlights the role of machine learning as a core technological tool that facilitates the efficient training of a digitally competent and environmentally responsible workforce, essential for a carbon–neutral future digital economy. | |
| [84] | Combines structured frameworks (ontologies) with context-aware machine learning models to enable detailed comparative analyses, offering a systematic way to understand how various components of green HRM affect sustainability outcomes. | |
| [85] | Uses NLP (Natural Language Processing) techniques to analyze online job vacancies and profiles to identify green skills gaps, showcasing the application of AI technology in HR analytics. | |
| [86] | Details the application of various AI methods, such as NLP (TF-IDF), and multi-objective optimization (NSGA-II), to analyze HR data, predict turnover, and optimize resource usage, thus showcasing the technical tools that support sustainable HR practices. | |
| [87] | Employs ANN modeling to forecast key variables such as waste management and resource consumption, thus, the paper exemplifies the practical use of advanced AI technologies to drive HR optimization and environmental cost management. | |
| [88] | Emphasizes RPA as a pivotal AI technology, discussing its various positioning approaches (conservative, efficiency improving, strategic), and illustrates how software robots are leveraged to streamline HR processes and support sustainable practices across the organization. | |
| [89] | Details the application of various AI technologies, including Applicant Tracking Systems (ATS), social, mobile, analytical, and cloud (SMAC) technologies, and big data analytics for career planning, rewarding, and training employees. These enhance digital HRM, demonstrating that these tools contribute to process optimization and sustainable HR practices. | |
| [90] | Integrates advanced analytical methodologies and AI to promote HR excellence by improving decision-making processes, increasing worker efficiency, and developing sustainable HR practices | |
| [91] | Emphasizes the contribution of diverse digital technologies, robotic systems, AI, big data, and IT in transforming SHRM, fostering a human- and environment-centered approach that advances social, economic, and environmental sustainability. | |
| [92] | Investigates how digital HR technology can moderate the relationship between GHRM practices and environmental performance. | |
| [93] | Provides insights into how technology and GHRM can be used to support environmental sustainability | |
| [94] | Examines the potential of computer networks and green computing to enhance HR analytics by enabling efficient data management and analysis while promoting sustainable practices. |
3.2. AI-GHRM in Different Sectors
3.2.1. AI-GHRM in Manufacturing Sectors
| Theme | Author | Focus |
|---|---|---|
| Manufacturing (Textile, Automotive, Petroleum) | [31] | Provides evidence that the integration of AI with green HRM practices, along with effective knowledge management and innovation, leads to enhanced sustainable performance, reinforcing the role of AI in driving environmental and organizational benefits. |
| [32] | Investigates the relationship between Green HRM practices and environmental performance in manufacturing organizations | |
| [34] | Implements organizational STARA capabilities and GHRM practices within manufacturing firms to boost sustainability performance and promote a more environmentally responsible and sustainable future. | |
| [63] | Relates to the manufacturing sector as it explores how AI can be leveraged to enhance GHRM practices, improve employee behavior, and ultimately optimize organizational performance | |
| [66] | Investigates the impact of GHRM on circular economy performance within the textile sector. | |
| [67] | Provides empirical evidence from SMEs in the Pakistani textile industry, illustrating how green HRM practices, supported by AI-driven big data analytics and a data-driven culture, enhance circular economy performance in this resource-intensive manufacturing sector. | |
| [69] | Provides insights into the key factors that contribute to achieving a green competitive advantage and improved environmental performance. | |
| [70] | Examines the sector’s unique sustainability challenges, the utilization of BDA in manufacturing operations, the potential for achieving competitive advantage through big data analytics, and its direct influence on environmental performance. | |
| [71] | Relates to manufacturing by exploring how GHRM can contribute to a more sustainable, efficient, and competitive manufacturing sector when introduced along with big data and digital transformation. | |
| [76] | Conducts a study in the manufacturing sector of Nigeria which aims to investigate how green talent management, leader competence in STARA technologies, and digital task interdependence collectively influence employee turnover intention. | |
| [77] | Adopts GHRM practices and leverages Big Data Analytics Capability (BDAC), to enhance the sustainability performance in manufacturing companies and contributes to a more environmentally friendly and sustainable future. | |
| [79] | Investigates the growing importance of IoT in global manufacturing organizations and its potential to enhance organizational growth in the digital workplace environment | |
| [84] | Fills a literature gap by focusing on the petroleum sector in India, providing sector-specific insights into how green HRM practices with machine learning influence environmental outcomes and organizational performance. | |
| [93] | Offers insights into how the industry can harness emerging technologies and GHRM practices to attain sustainable organizational performance and foster a more sustainable future. |
3.2.2. AI-GHRM in Service Sectors
| Theme | Author | Focus |
|---|---|---|
| Service (Healthcare, Educational, Hospitality, IT/Digital, Banking, Social Care, Logistics) | [33] | Provides insights into how green talent management, coupled with ethical leadership and AI, can foster innovative work behavior and thereby deliver a competitive edge in a highly regulated and innovation-driven sector like the pharmaceutical industry. |
| [53] | Focuses on corporate universities and provides valuable guidance to improve organizational performance through understanding the impact of e-recruitment and AI technologies | |
| [59] | Demonstrates the sector-specific application of HR analytics and AI. It underscores the need for technology adoption tailored to the unique challenges and opportunities within healthcare, contributing to sustainable HRM in this industry. | |
| [60] | Illustrates how green talent management practices, when integrated with transformational leadership and AI, contribute to fostering innovative work behavior among academic staff, thereby supporting sustainable competitive advantage in the higher education sector. | |
| [74] | Provides insights into how GHRM practices are leveraged to promote socially responsible logistics. | |
| [75] | Offers insights by illustrating how the integration of GHRM practices and big data management helps healthcare organizations overcome operational challenges and achieve environmental sustainability during emergencies. | |
| [78] | Examines how the hospitality industry’s GHRM practices and employees’ green commitment can help implement STARA effectively to achieve better environmental performance. | |
| [80] | Relates to the IT sector as it explores how IoT can be leveraged to enhance strategic HRM practices and promote sustainable HR growth | |
| [81] | Focuses specifically on the hospitality sector by constructing a performance evaluation framework tailored to hotel green HR practices, illustrating how green HR practices can be transformed using digital technologies to support environmental sustainability and service quality | |
| [83] | Provides a detailed overview of how young workers are being trained and how machine learning is used within the digital industries of BRICS countries, highlighting sector-specific dynamics and challenges for achieving carbon neutrality. | |
| [87] | Highlights the unique challenges and opportunities for integrating AI into HR management to foster environmental awareness within the social care sector. | |
| [92] | Presents insights for banks that are looking to improve their environmental performance through GHRM and digital HR technology |
3.3. AI Application in GHRM Practices
3.4. Role of AI-GHRM in Performance Management
3.5. Factors Impacting the Adoption of AI in GHRM
4. Results of the Bibliometric Analysis
4.1. Co-Occurrence Map (Text Data)
4.2. Co-Occurrence Map (Keywords)
4.3. Co-Occurrence Map (Country of Co-Authorship)
4.4. Data Analysis on Authorship
4.5. Data Analysis on Sources
4.6. Data Analysis on Citation Impact of Reviewed Papers
5. Conclusions, Implications, and Future Research
5.1. Theoretical Implications
5.2. Research Gaps and Future Directions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
- Valecha, N. Transforming Human Resource Management with HR Analytics: A Critical Analysis of Benefits and Challenges. Int. J. Glob. Acad. Sci. Res. 2022, 1, 56–66. [Google Scholar] [CrossRef]
- Agustian, K.; Pohan, A.; Zen, A.; Wiwin, W.; Malik, A.J. Human Resource Management Strategies in Achieving Competitive Advantage in Business Administration. J. Contemp. Adm. Manag. 2023, 1, 108–117. [Google Scholar] [CrossRef]
- Wahyoedi, S.; Rijal, S.; Azzaakiyyah, H.K.; Muna, A.; Ausat, A. Implementation of Information Technology in Human Resource Management. Al-Buhuts 2023, 19, 300–318. [Google Scholar]
- Oyewole, A.T.; Okoye, C.C.; Ofodile, O.C.; Odeyemi, O.; Adeoye, O.B.; Addy, W.A.; Ololade, Y.J. Human Resource Management Strategies for Safety and Risk Mitigation in the Oil and Gas Industry: A Review. Int. J. Manag. Entrep. Res. 2024, 6, 623–633. [Google Scholar] [CrossRef]
- Yong, J.Y.; Yusliza, M.Y.; Fawehinmi, O.O. Green Human Resource Management: A Systematic Literature Review from 2007 to 2019. Benchmarking Int. J. 2020, 27, 2005–2027. [Google Scholar] [CrossRef]
- Faisal, S. Green Human Resource Management—A Synthesis. Sustainability 2023, 15, 2259. [Google Scholar] [CrossRef]
- Raja, L.; Manoharan, G. Nurturing Green Human Resource Management in Facilitating Organizational Effectiveness. In Proceedings of the 2024 3rd International Conference on Computational Modelling, Simulation and Optimization, ICCMSO, Phuket, Thailand, 14–16 June 2024; pp. 188–192. [Google Scholar] [CrossRef]
- Pham, N.T.; Hoang, H.T.; Phan, Q.P.T. Green Human Resource Management: A Comprehensive Review and Future Research Agenda. Int. J. Manpow. 2020, 41, 845–878. [Google Scholar] [CrossRef]
- Wagner, M. Environmental Management Activities and Sustainable in German Manufacturing Firms–Incidence, Determinants, and Outcomes. Ger. J. Hum. Resour. Manag. 2011, 25, 157–177. [Google Scholar] [CrossRef]
- Teixeira, A.A.; Jabbour, C.J.C.; Jabbour, A.B.L.D.S. Relationship between Green Management and Environmental Training in Companies Located in Brazil: A Theoretical Framework and Case Studies. Int. J. Prod. Econ. 2012, 140, 318–329. [Google Scholar] [CrossRef]
- Renwick, D.W.S.; Redman, T.; Maguire, S. Green Human Resource Management: A Review and Research Agenda. IJMR 2012, 15, 1–14. [Google Scholar] [CrossRef]
- Opatha, H. Green Human Resource Management: A Simplified Introduction. Proc. HR Dialogue 2013, 1, 1. [Google Scholar]
- Paillé, P.; Chen, Y.; Boiral, O.; Jin, J. The Impact of Human Resource Management on Environmental Performance: An Employee-Level Study. J. Bus. Ethics 2014, 121, 451–466. [Google Scholar] [CrossRef]
- Uddin, M.; Rabiul, I. Green HRM: Goal Attainment through Environmental Sustainability. J. Nepal. Bussiness Stud. 2016, 9, 13–19. [Google Scholar] [CrossRef]
- Pinzone, M.; Guerci, M.; Lettieri, E.; Redman, T. Progressing in the Change Journey towards Sustainability in Healthcare: The Role of “Green” HRM. J. Clean. Prod. 2016, 122, 201–211. [Google Scholar] [CrossRef]
- Bombiak, E.; Marciniuk-Kluska, A. Green Human Resource Management as a Tool for the Sustainable Development of Enterprises: Polish Young Company Experience. Sustainability 2018, 10, 1739. [Google Scholar] [CrossRef]
- Caliskan, A.O.; Esen, E. Green Human Resource Management and Environmental Sustainability. Pressacademia 2019, 9, 58–60. [Google Scholar] [CrossRef]
- Kamil, N.L.M.; Abd Rahman, N.H.; Yusof, M.H.M. Assessing Green Human Resource Management and Environmental Performance: Evidence from Government Linked-Company. Int. J. Ind. Manag. 2021, 12, 341–353. [Google Scholar] [CrossRef]
- Okunhon, P.T.; Ige-Olaobaju, A. Green Human Resource Management: Revealing the Route to Environmental Sustainability. In Waste Management and Life Cycle Assessment for Sustainable Business Practice; IGI Global: Hershey, PA, USA, 2024; pp. 111–130. ISBN 979-836932596-4/979-836932595-7. [Google Scholar] [CrossRef]
- Suharti, L.; Sugiarto, A. A Qualitative Study of Green Hrm Practices and Their Benefits in the Organization: An Indonesian Company Experience. Bus. Theory Pract. 2020, 21, 200–211. [Google Scholar] [CrossRef]
- Akbar, A.; Ahmad, S.; Khalid, M.; Aslam, M.F.; Bhatti, M.A.A. Analyzing the Effect of Green HRM on Organizational Performance. Bull. Bus. Econ. 2024, 13, 864–869. [Google Scholar] [CrossRef]
- Schmid, Y.; Pscherer, F. Digital Transformation Affecting Human Resource Activities: A Mixed-Methods Approach. In Human Interaction, Emerging Technologies and Future Systems V; Springer: Cham, Switzerland, 2021; pp. 543–549. ISBN 978-3-030-85539-0. [Google Scholar] [CrossRef]
- Zhang, J.; Chen, Z. Exploring Human Resource Management Digital Transformation in the Digital Age. J. Knowl. Econ. 2024, 15, 1482–1498. [Google Scholar] [CrossRef]
- Malik, A.; Budhwar, P.; Patel, C.; Srikanth, N.R. May the Bots Be with You! Delivering HR Cost-Effectiveness and Individualised Employee Experiences in an MNE. Int. J. Hum. Resour. Manag. 2022, 33, 1148–1178. [Google Scholar] [CrossRef]
- Budhwar, P.; Chowdhury, S.; Wood, G.; Aguinis, H.; Bamber, G.J.; Beltran, J.R.; Boselie, P.; Lee Cooke, F.; Decker, S.; DeNisi, A.; et al. Human Resource Management in the Age of Generative Artificial Intelligence: Perspectives and Research Directions on ChatGPT. Hum. Resour. Manag. J. 2023, 33, 606–659. [Google Scholar] [CrossRef]
- Garg, S.; Sinha, S.; Kar, A.K.; Mani, M. A Review of Machine Learning Applications in Human Resource Management. Int. J. Product. Perform. Manag. 2022, 71, 1590–1610. [Google Scholar] [CrossRef]
- Goodwill, B. PepsiCo Hires Robots to Interview Job Candidates. Available online: https://www.computerweekly.com/news/252438788/PepsiCo-hires-robots-to-interview-job-candidates (accessed on 1 April 2025).
- Vorecol Editorial Team. The Role of Technology in Modernizing Personnel Administration Processes. Available online: https://psico-smart.com/en/blogs/blog-the-role-of-technology-in-modernizing-personnel-administration-processes-12397 (accessed on 26 March 2025).
- SHRM. Building a Connected Workforce: Key Insights on Employee Engagement. Available online: https://www.shrm.org/mena/labs/resources/building-a-connected-workforce-key-insights-on-employee-engagement (accessed on 1 April 2025).
- John, J.E.; Pramila, S. Integrating AI Tools into HRM to Promote Green HRM Practices. In Proceedings of the ICTCS 2023, Jaipur, India, 8–9 December 2023; Lecture Notes in Networks and Systems. Springer Science and Business Media Deutschland GmbH: Berlin, Germany, 2024; Volume 878, pp. 249–259. [Google Scholar] [CrossRef]
- Riaz, A.; Al-Okaily, M.; Sohail, A.; Ashfaq, K.; Rehman, S.U. Green Human Resource Management and Sustainable Performance: Serial Mediating Role of Green Knowledge Management and Green Innovation. Glob. Knowl. Mem. Commun. 2024. [Google Scholar] [CrossRef]
- bin Abid, U.; Faisal, M.N.; Al-Esmael, B.; Farooq, Z.H.; Nassour, S. Exploring the Moderating Role of Technological Competence and Artificial Intelligence in Green HRM. Pol. J. Manag. Stud. 2024, 29, 7–22. [Google Scholar] [CrossRef]
- Hu, C.; Din, Q.M.U.; Zhang, L. Short Empirical Insight: Leadership and Artificial Intelligence in the Pharmaceutical Industry. Eng. Technol. Appl. Sci. Res. 2024, 14, 13658–13664. [Google Scholar] [CrossRef]
- Ogbeibu, S.; Emelifeonwu, J.; Pereira, V.; Oseghale, R.; Gaskin, J.; Sivarajah, U.; Gunasekaran, A. Demystifying the Roles of Organisational Smart Technology, Artificial Intelligence, Robotics and Algorithms Capability: A Strategy for Green Human Resource Management and Environmental Sustainability. Bus. Strategy Environ. 2024, 33, 369–388. [Google Scholar] [CrossRef]
- Garg, V.; Srivastav, S.; Gupta, A. Application of Artificial Intelligence for Sustaining Green Human Resource Management. In Proceedings of the 2018 International Conference on Automation and Computational Engineering (ICACE), Greater Noida, India, 3–4 October 2018; pp. 113–116. [Google Scholar] [CrossRef]
- Saini, H.K.; Bhardwaj, K.; Gupta, S. Technological Advances in Green Human Resource Management Using Machine Learning. In Proceedings of the 2023 International Conference on Advances in Computation, Communication and Information Technology (ICAICCIT), Faridabad, India, 23–24 November 2023; pp. 224–229. [Google Scholar] [CrossRef]
- Trujillo-Gallego, M.; Sarache, W.; de Sousa Jabbour, A.B.L. Digital Technologies and Green Human Resource Management: Capabilities for GSCM Adoption and Enhanced Performance. Int. J. Prod. Econ. 2022, 249, 108531. [Google Scholar] [CrossRef]
- John, J.E.; Pramila, S. Leveraging AI in HR Analytics to Foster Green Human Resource Management. In Harnessing AI, Machine Learning, and IoT for Intelligent Business; Springer: Cham, Switzerland, 2025; pp. 1067–1074. [Google Scholar] [CrossRef]
- Ghosal, A. Technological Innovation in HR Processes and Green HRM Management Practices. Re-Imagining Green Businesses 2023, 487. [Google Scholar]
- Masood, F.; Khan, N.R.; Masood, E. Artificial Intelligence and Green Human Resource Management. In Exploring the Intersection of AI and Human Resources Management; IGI Global Scientific Publishing: Hershey, PA, USA, 2023; pp. 140–165. [Google Scholar] [CrossRef]
- Benevene, P.; Buonomo, I. Green Human Resource Management: An Evidence-Based Systematic Literature Review. Sustainability 2020, 12, 5974. [Google Scholar] [CrossRef]
- Molina-Azorin, J.F.; López-Gamero, M.D.; Tarí, J.J.; Pereira-Moliner, J.; Pertusa-Ortega, E.M. Environmental Management, Human Resource Management and Green Human Resource Management: A Literature Review. Adm. Sci. 2021, 11, 48. [Google Scholar] [CrossRef]
- Tranfield, D.; Denyer, D.; Smart, P. Towards a Methodology for Developing Evidence-Informed Management Knowledge by Means of Systematic Review. Br. J. Manag. 2003, 14, 207–222. [Google Scholar] [CrossRef]
- Al-Assaf, K.; Bahroun, Z.; Ahmed, V. Transforming Service Quality in Healthcare: A Comprehensive Review of Healthcare 4.0 and Its Impact on Healthcare Service Quality. Informatics 2024, 11, 96. [Google Scholar] [CrossRef]
- Singh, V.K.; Singh, P.; Karmakar, M.; Leta, J.; Mayr, P. The Journal Coverage of Web of Science, Scopus and Dimensions: A Comparative Analysis. Scientometrics 2021, 126, 5113–5142. [Google Scholar] [CrossRef]
- Pranckutė, R. Web of Science (WoS) and Scopus: The Titans of Bibliographic Information in Today’s Academic World. Publications 2021, 9, 12. [Google Scholar] [CrossRef]
- Al Naqbi, H.; Bahroun, Z.; Ahmed, V. Enhancing Work Productivity through Generative Artificial Intelligence: A Comprehensive Literature Review. Sustainability 2024, 16, 1166. [Google Scholar] [CrossRef]
- Suhail, N.; Bahroun, Z.; Ahmed, V. Augmented Reality in Engineering Education: Enhancing Learning and Application. Front. Virtual Real. 2024, 5, 1461145. [Google Scholar] [CrossRef]
- Al Khaffaf, I.; Tamimi, A.; Ahmed, V. Pathways to Carbon Neutrality: A Review of Strategies and Technologies Across Sectors. Energies 2024, 17, 6129. [Google Scholar] [CrossRef]
- Rayyan. Rayyan—Intelligent Systematic Review. Available online: https://www.rayyan.ai (accessed on 3 March 2025).
- Alzyoud, A.A.Y. Artificial Intelligence for Sustaining Green Human Resource Management: A Literature Review. In Proceedings of the 2022 ASU International Conference in Emerging Technologies for Sustainability and Intelligent Systems, ICETSIS, Manama, Bahrain, 22–23 June 2022; pp. 321–326. [Google Scholar] [CrossRef]
- Jia, X.; Hou, Y. Architecting the Future: Exploring the Synergy of AI-Driven Sustainable HRM, Conscientiousness, and Employee Engagement. Discov. Sustain. 2024, 5, 30. [Google Scholar] [CrossRef]
- Fazlurrahman, H.; Setyo Nugroho, B.; Asha’ari, M.J.; Mat Deli, M.; Noordiana Wan Hanafi, W.; Binti Daud, S. E-Recruitment with AI in GHRM for Corporate University Sustainability to Improve Organization Performance: Systematic Literature Review. In Proceedings of the 2024 12th International Conference on Cyber and IT Service Management, CITSM, Batam, Indonesia, 3–4 October 2024. [Google Scholar] [CrossRef]
- Dawwas, M.; Allaymoun, M.; Alzgool, M. Enhancing Green Recruitment Through Implementing Artificial Intelligence: Zoho Recruitment System. In Artificial Intelligence (AI) and Finance; Springer: Cham, Switzerland, 2023; pp. 3–13. [Google Scholar] [CrossRef]
- Chand, R.; Narula, G.S.; Nijjer, S.; Jandwani, A. Utilizing AI in Sustaining Green HRM Practices- A Digital Initiative towards Socially Responsible and Environment Sustainability. In Proceedings of the 2023 5th International Conference on Advances in Computing, Communication Control and Networking, ICAC3N, Greater Noida, India, 15–16 December 2023; pp. 541–544. [Google Scholar] [CrossRef]
- Herlina, M.G.; Iskandar, K. Integrating Sustainable HRM, AI, and Employee Well-Being to Enhance Engagement in Greater Jakarta: An SDG 3 Perspective. In Proceedings of the 3rd International Conference on Energy and Green Computing (ICEGC’2024), Xiamen, China, 18–20 December 2024; Volume 601. [Google Scholar] [CrossRef]
- Fawehinmi, O.; Aigbogun, O.; Tanveer, M.I. The Role of Industrial Revolution 5.0 in Actualizing the Effectiveness of Green Human Resource Management. In Green Human Resource Management; Springer Nature: Singapore, 2024; pp. 291–312. ISBN 9789819971046. [Google Scholar] [CrossRef]
- Rashmi, S.; Preeti, T. The Effect of Artificial Intelligence-Enabled Work from the Home Culture in Strengthening the Green HRM. In Proceedings of the 2nd International Conference on Futuristic and Sustainable Aspects in Engineering and Technology: FSAET-2021, Mathura, India, 24–26 December 2021; p. 070025. [Google Scholar] [CrossRef]
- Reddy, A.J.M.; Rani, R.; Chaudhary, V. Technology for Sustainable HRM: An Empirical Research of Health Care Sector. Int. J. Innov. Technol. Explor. Eng. 2019, 9, 2919–2924. [Google Scholar] [CrossRef]
- Odugbesan, J.A.; Aghazadeh, S.; Al Qaralleh, R.E.; Sogeke, O.S. Green Talent Management and Employees’ Innovative Work Behavior: The Roles of Artificial Intelligence and Transformational Leadership. J. Knowl. Manag. 2023, 27, 696–716. [Google Scholar] [CrossRef]
- Anshima; Bhardwaj, B. Leveraging AI for the Reinforcement of GHRM. In AI and Emotional Intelligence for Modern Business Management; IGI Global Scientific Publishing: Hershey, PA, USA, 2023; p. 13. [Google Scholar] [CrossRef]
- Sowmya, G.; Polisetty, A.; Dash, G. Leveraging Artificial Intelligence for Talent Management. In Handbook of Artificial Intelligence Applications for Industrial Sustainability; CRC Press: Boca Raton, FL, USA, 2024. [Google Scholar]
- Umer, W.; Furnaz, R.; Sadiq, B.; Bashir, T.; Naseem, A. A Study on the Impact of How AI-Powered Green Development Influence Employee Green Behavior within an Organization. In Proceedings of the 2024 International Conference on Horizons of Information Technology and Engineering, HITE, Lahore, Pakistan, 15–16 October 2024. [Google Scholar] [CrossRef]
- Umer, W.; Furnaz, R.; Sadiq, B.; Bashir, T.; Naseem, A. Study on the Impact of AI-Powered GHRM Practices on Employee Behavior and Organizational Performance: Evidence from SMEs of Pakistan. In Proceedings of the 2024 Horizons of Information Technology and Engineering (HITE), Lahore, Pakistan, 15–16 October 2024; pp. 1–5. [Google Scholar] [CrossRef]
- Alshuaibi, M.S.I.; Alhebri, A.; Khan, S.N.; Sheikh, A.A. Big Data Analytics, GHRM Practices, and Green Digital Learning Paving the Way towards Green Innovation and Sustainable Firm Performance. J. Open Innov. Technol. Mark. Complex. 2024, 10, 100396. [Google Scholar] [CrossRef]
- Chau, K.Y.; Wang, J.; Moslehpour, M. The Impact of Technological Advancement and Green HRM Practices on the Sustainable Business Development in Vietnam. Eng. Econ. 2024, 35, 155–168. [Google Scholar] [CrossRef]
- Khan, W.; Nisar, Q.A.; Roomi, M.A.; Nasir, S.; Awan, U.; Rafiq, M. Green Human Resources Management, Green Innovation and Circular Economy Performance: The Role of Big Data Analytics and Data-Driven Culture. J. Environ. Plan. Manag. 2024, 67, 2356–2381. [Google Scholar] [CrossRef]
- Singh, S.K.; El-Kassar, A.N. Role of Big Data Analytics in Developing Sustainable Capabilities. J. Clean. Prod. 2019, 213, 1264–1273. [Google Scholar] [CrossRef]
- Shaikh, S.N.; Zhen, L.; Sohu, J.M.; Soomro, S.; Akhtar, S.; Kherazi, F.Z.; Najam, S. How Green HRM Practices Foster Green Competitive Advantage through Big Data Analytics Capability and Are Amplified by Managerial Environmental Concern. Kybernetes 2024. [Google Scholar] [CrossRef]
- Waqas, M.; Honggang, X.; Ahmad, N.; Khan, S.A.R.; Iqbal, M. Big Data Analytics as a Roadmap towards Green Innovation, Competitive Advantage and Environmental Performance. J. Clean. Prod. 2021, 323, 128998. [Google Scholar] [CrossRef]
- Austen, A.; Piwowar-Sulej, K. Green Human Resource Management in the Manufacturing Sector: A Bibliometric Literature Review. Eng. Manag. Prod. Serv. 2024, 16, 34–47. [Google Scholar] [CrossRef]
- Imran, R.; Alraja, M.N.; Khashab, B. Sustainable Performance and Green Innovation: Green Human Resources Management and Big Data as Antecedents. IEEE Trans. Eng. Manag. 2023, 70, 4191–4206. [Google Scholar] [CrossRef]
- Mahmood, Q.U.A.; Ahmed, R.; Philbin, S.P. The Moderating Effect of Big Data Analytics on Green Human Resource Management and Organizational Performance. Int. J. Manag. Sci. Eng. Manag. 2023, 18, 177–189. [Google Scholar] [CrossRef]
- Jaaron, A.A.M.; Javaid, M.; Garcia, R.L.F. Interplay between GHRM and Logistics Social Responsibility: When Big Data Analytics Matters. Manag. Environ. Qual. Int. J. 2025, 36, 351–379. [Google Scholar] [CrossRef]
- Kumar, P.; Chakraborty, S. Green Service Production and Environmental Performance in Healthcare Emergencies: Role of Big-Data Management and Green HRM Practices. Int. J. Logist. Manag. 2022, 33, 1524–1548. [Google Scholar] [CrossRef]
- Ogbeibu, S.; Chiappetta Jabbour, C.J.; Burgess, J.; Gaskin, J.; Renwick, D.W.S. Green Talent Management and Turnover Intention: The Roles of Leader STARA Competence and Digital Task Interdependence. J. Intellect. Cap. 2022, 23, 27–55. [Google Scholar] [CrossRef]
- Al Masud, A.; Islam, M.T.; Rahman, M.K.H.; Or Rosid, M.H.; Rahman, M.J.; Akter, T.; Szabó, K. Fostering Sustainability through Technological Brilliance: A Study on the Nexus of Organizational STARA Capability, GHRM, GSCM, and Sustainable Performance. Discov. Sustain. 2024, 5, 325. [Google Scholar] [CrossRef]
- Hossain, M.I.; Islam, M.T.; Kumar, J.; Jamadar, Y. Harnessing STARA for Enhancing Green Performance of Hospitality Industry: Green HRM, Employees Commitment as Mediators and Psychological Climate as Moderator. J. Hosp. Tour. Insights 2025, 8, 2117–2139. [Google Scholar] [CrossRef]
- Agarwal, A.; Kapoor, K. Adoption of Internet of Things for Sustainable Global HR Operations in HR 4.0. In Internet of Things and Businesses in a Disruptive Economy; Nova Science Publishers: Hauppauge, NY, USA, 2020; Available online: https://novapublishers.com/shop/internet-of-things-and-businesses-in-a-disruptive-economy/ (accessed on 1 April 2025).
- Sreya, B.; Rao, A.L.; Pasupuleti, A. Exploring Human Capital’s Role in Driving Sustainable Organizational Development in the Era of the Internet of Things. In Proceedings of the 2023 14th International Conference on Computing Communication and Networking Technologies, ICCCNT, Delhi, India, 6–8 July 2023. [Google Scholar] [CrossRef]
- Shen, L. The Performance Evaluation Model of Hotel Green Human Resources Based on Internet of Things and Fuzzy Theory. Mob. Inf. Syst. 2022, 2022, 4866952. [Google Scholar] [CrossRef]
- Gupta, A.; Chadha, A.; Tiwari, V.; Varma, A.; Pereira, V. Sustainable Training Practices: Predicting Job Satisfaction and Employee Behavior Using Machine Learning Techniques. Asian Bus. Manag. 2023, 22, 1913–1936. [Google Scholar] [CrossRef]
- Agapova, T.N.; Myutte, G.E.; Hmelev, S.A.; Minakov, A.V.; Afonin, P.N. Risks and Prospects for Balanced and Harmonious Training of Young Workforce and Machine Learning in a Carbon–Neutral Digital Economy of the Future. In ESG Management of the Development of the Green Economy in Central Asia; Environmental Footprints and Eco-Design of Products and Processes; Springer: Cham, Switzerland, 2023; pp. 315–323. [Google Scholar] [CrossRef]
- Singh, M.; Singh, S.; Jandwani, A. Application of Machine Learning in Investigating the Impact of Green HRM Practices in Sustainability of an Organization. In Proceedings of the 2023 International Conference on Advances in Computation, Communication and Information Technology, ICAICCIT, Faridabad, India, 23–24 November 2023; pp. 1001–1005. [Google Scholar] [CrossRef]
- Nikoloski, D.; Sulich, A.; Sołoducho-Pelc, L.; Mancheski, G.; Angelski, M.; Petkoska, M.M. Identifying Green Skills Gaps through Labor Market Intelligence. J. Infrastruct. Policy Dev. 2024, 8, 4868. [Google Scholar] [CrossRef]
- Pillai, R.H.; Sunitha, S.; Sastri, A.; Adarsh, R.; Preethi, P. Artificial Intelligence-Based Green Human Resource Management for Organization’s Operation Model. In Proceedings of the 5th International Conference on Recent Trends in Computer Science and Technology, ICRTCST, Jamshedpur, India, 9–10 April 2024; pp. 35–40. [Google Scholar] [CrossRef]
- Ruoxing, C.; Jianning, W.; Basem, A.; Hussein, R.A.; Salahshour, S.; Baghaei, S. Examining the Application of Strategic Management and Artificial Intelligence, with a Focus on Artificial Neural Network Modeling to Enhance Human Resource Optimization with Advertising and Brand Campaigns. Eng. Appl. Artif. Intell. 2025, 143, 110029. [Google Scholar] [CrossRef]
- Sobczak, A. The Role of Robotic Process Automation in Sustainable Human Resource Management; CRC Press: Boca Raton, FL, USA, 2024. [Google Scholar]
- Sova, O.; Bieliaieva, N.; Antypenko, N.; Drozd, N. Impact of Artificial Intelligence and Digital HRM on the Resource Consumption within Sustainable Development Perspective. In Proceedings of the International Conference on Sustainable, Circular Management and Environmental Engineering (ISCMEE 2023), Virtual, 20–22 September 2023; Volume 408. [Google Scholar] [CrossRef]
- Menon, S.; Yadav, J.; Chopra, A.; Thomas, J. Strategic Integration of Analytics and Artificial Intelligence in Sustainable Human Resource Management: Fostering HR Excellence. In Proceedings of the 2024 11th International Conference on Reliability, Infocom Technologies and Optimization (Trends and Future Directions) (ICRITO), Noida, India, 14–15 March 2024; pp. 1–5. [Google Scholar] [CrossRef]
- Arsu, Ş.U. Artificial Intelligence for Sustainable Human Resource Management. In Handbook of Artificial Intelligence Applications for Industrial Sustainability: Concepts and Practical Examples; CRC Press: Boca Raton, FL, USA, 2024; pp. 92–105. ISBN 9781000991512. [Google Scholar]
- Al-Ghalabi, R.R.; Alsheikh, G.A.A.; Al-Shamaileh, L.R.; Altarawneh, A. Impact of Digital HR Technology between Green Human Resources and Environmental Performance in Jordanian Banks. Herit. Sustain. Dev. 2024, 6, 267–286. [Google Scholar] [CrossRef]
- Shayegan, S.; Bazrkar, A.; Yadegari, R. Realization of Sustainable Organizational Performance Using New Technologies and Green Human Resource Management Practices. Foresight STI Gov. 2023, 17, 95–105. [Google Scholar] [CrossRef]
- Podder, S.K.; Etemi, B.P.; Samanta, D. Impact of Computer Network and Green Computing on Information and Communications Technology (ICT) for HR Analytics. J. Discret. Math. Sci. Cryptogr. 2024, 27, 2077–2086. [Google Scholar] [CrossRef]
- Bukar, U.A.; Sayeed, M.S.; Razak, S.F.A.; Yogarayan, S.; Amodu, O.A.; Mahmood, R.A.R. A Method for Analyzing Text Using VOSviewer. MethodsX 2023, 11, 102339. [Google Scholar] [CrossRef] [PubMed]
- Wikipedia. Available online: https://en.wikipedia.org/wiki/Index_term (accessed on 1 April 2025).
- van Eck, N.J.; Waltman, L. VOSviewer Manual; Universiteit Leiden: Leiden, The Netherlands, 2022. [Google Scholar]
- Smith, L.C. Citation Analysis. Libr. Trends 1981, 30, 83–106. [Google Scholar]
- Khaskhely, M.K.; Qazi, S.W.; Khan, N.R.; Hashmi, T.; Chang, A.A.R. Understanding the Impact of Green Human Resource Management Practices and Dynamic Sustainable Capabilities on Corporate Sustainable Performance: Evidence from the Manufacturing Sector. Front. Psychol. 2022, 13, 844488. [Google Scholar] [CrossRef] [PubMed]
- Waseem, F.; Mirza, M.Z.; Memon, M.A.; Naseem, A. Unlocking Job Performance: The Role of Transformational Leadership, AMO Framework and Green HRM. Ind. Commer. Train. 2025, 57, 309–328. [Google Scholar] [CrossRef]
- Nureen, N.; Nuţă, A.C. Envisioning the Invisible: Unleashing the Interplay Between Green Supply Chain Management and Green Human Resource Management: An Ability-Motivation-Opportunity Theory Perspective Towards Environmental Sustainability. J. Compr. Bus. Adm. Res. 2024, 1, 55–64. [Google Scholar] [CrossRef]
- Page, M.J.; McKenzie, J.E.; Bossuyt, P.M.; Boutron, I.; Hoffmann, T.C.; Mulrow, C.D.; Shamseer, L.; Tetzlaff, J.M.; Akl, E.A.; Brennan, S.E.; et al. The PRISMA 2020 statement: An updated guideline for reporting systematic reviews. BMJ 2021, 372, n71. [Google Scholar] [CrossRef]









| Theme | Authors | Focus |
|---|---|---|
| Talent Management | [33] | Investigates how green talent management impacts employees’ innovative work behavior, while also examining how ethical leadership and AI moderate this relationship. This illustrates how traditional HR practices can be transformed through AI-driven approaches to support sustainability. |
| [51] | Evaluates GHRM practices, such as talent management, and emphasizes the significance, potential challenges, and the advantages of artificial intelligence adoption. | |
| [60] | Examines both green hard and soft talent management as emerging green HRM practices. It demonstrates that these practices, along with AI integration, significantly influence employees’ innovative work behavior, thereby positioning green talent management as a key approach for SHRM. | |
| [62] | Explores how AI can be integrated into various talent management interventions, including recruitment, skill mapping, career management, employee retention, and compensation, to build a sustainable talent management architecture for organizational competitive advantage. | |
| [76] | Investigates how green talent management, STARA competence, and digital task interdependence influence employee turnover intention. The findings reveal that both green hard and soft talent management, along with leader STARA competence, increase turnover intention. | |
| [85] | Provides a blueprint for identifying and addressing green skills gaps using NLP techniques, informing strategic HR practices for workforce readiness in the green transition. | |
| Recruitment | [53] | Understands how e-recruitment and AI technologies impact organizational performance and sustainability initiatives within the framework of global HRM and corporate universities |
| [54] | Explores the implementation of AI in green recruitment through the Zoho recruitment system. | |
| [57] | Explains how IR 5.0, characterized by AI with human-like interaction, facilitates remote recruitment, online training via simulation, and other digital HR processes, reducing human contact and lowering carbon emissions, resulting in more efficient, environmentally aligned processes. | |
| [86] | Proposes a systematic approach that leverages AI-driven insights to optimize the recruitment and retention of top personnel, integrating HR practices with sustainability goals to reduce environmental impact. | |
| [91] | Illustrates how AI-driven tools (i.e., e-recruitment, e-learning, cloud computing, and HR data analytics) are integrated into HR practices to support sustainable human resource management and promote environmentally friendly operations. | |
| Training and Development | [63] | Examines the influence of green training and development propelled by AI on the environmental behavior of employees in SMEs. |
| [65] | Develops a research framework based on GHRM practices and Green Digital Learning Orientation (GDLO) that helps organizations foster green innovation. It illustrates how HR strategies, when combined with digital learning initiatives, can be used to address environmental challenges and enhance workforce capabilities. | |
| [83] | Examines how the balanced and harmonious training of young personnel is integrated with machine learning to develop digital and green competencies, contributing to the formation of a carbon–neutral digital economy. | |
| Performance, Compensation & Reward | [30] | Highlights how AI and data analytics are integrated into HR processes to promote eco-engagement and environmentally responsible practices within green HRM (i.e., recruitment, performance management, compensation management, employee discipline management, and employee retention). |
| [32] | Investigates the relationship between GHRM practices, such as recruitment and selection, training, and reward. and environmental performance in organizations, with a focus on the moderating role of artificial intelligence and technological competence. | |
| [36] | Explores the use of AI in various GHRM practices (i.e., training, recruitment, and rewards) to enhance efficiency and employee productivity. | |
| [52] | Examines the interrelations between AI-Driven Sustainable Human Resource Management (HRM), Employee Engagement, Employee Performance, and Conscientiousness Personality | |
| [55] | Explores how AI and machine learning can be applied to traditional HR processes, such as candidate screening, recruitment, training, performance appraisal, compensation, and career development, to reduce resource use and foster an environmentally stable, sustainable HR approach. | |
| [79] | Investigates the impact of Internet of Things (IoT) technology on Human Resource Management (HRM) practices in the digital workplace. It explores how IoT can enhance HR functions, improve employee management, and contribute to organizational growth through data-driven decision-making and people analytics. | |
| [84] | Employs machine learning to evaluate how GHRM practices, specifically training programs, employee input into environmental policy, and open lines of communication regarding sustainability objectives, translate into pro-environmental behaviors and influence overall organizational green performance. | |
| [88] | Details how RPA is deployed to automate core HR functions, such as recruitment, training, performance evaluation, and administrative tasks, thereby reducing manual workload, lowering resource consumption, and aligning HR operations with sustainability goals. | |
| [89] | Examines how AI and digital HRM practices can be leveraged to enhance sustainable HRM. The study discusses integrating AI into all HR practices (recruitment, remote work management, compensation and benefits, etc.) to stabilize resource consumption and support sustainable business practices. |
| Theme | Authors | Focus |
|---|---|---|
| Environmental Performance and Sustainability | [30] | Explores how AI-powered analytics and automation in performance management enable real-time monitoring, objective evaluation, and incentive alignment with environmental sustainability goals, thereby enhancing overall green performance through the enhancement of energy consumption and waste reduction. |
| [32] | Explores how Green HRM practices can help organizations to reduce their environmental impact and improve their environmental performance. | |
| [34] | Specifies how organizational STARA capability and GHRM programs predict environmental sustainability | |
| [36] | Reviews and discusses the integration of AI in GHRM practices to promote ethical behavior and environmental sustainability. | |
| [38] | Analyzes the application of AI in GHRM to analyze and measure organizations’ environmental impact, thus detecting areas for improvement, and implementing sustainable practices. | |
| [65] | Emphasizes that effective GHRM practices, along with digital technologies, focused on sustainability, can lead to improved environmental and economic outcomes. | |
| [67] | Demonstrates that GHRM practices have a significant positive impact on circular economy performance, with green innovation acting as a mediator between GHRM and CEP, thereby linking sustainable HR practices with improved environmental and operational outcomes. | |
| [68] | Demonstrates that the integration of big data analytics with green HRM and green supply chain management practices drives sustainable capabilities that, in turn, enhance overall firm sustainable performance. | |
| [69] | Investigates the relationship between GHRM practices, big data analytics capability, green competitive advantage, and environmental performance, with the moderating effect of managerial environmental concern. | |
| [72] | Develops a comprehensive path model showing that green HRM practices, together with big data analytics, drive green innovation, which in turn enhances sustainable organizational performance. | |
| [75] | Demonstrates that big data management significantly drives green service production like green procurement, service design, and service practices, which improves environmental performance during healthcare emergencies. | |
| [86] | Highlights practical advantages of AI-GHRM including lower employee turnover, increased job satisfaction, and significant savings in energy consumption and carbon emissions, thereby linking HR performance with positive, sustainable outcomes. | |
| [89] | Investigates the impact of AI and digital HRM on minimizing resource consumption, linking these practices to broader sustainable development outcomes such as economic growth, social inclusion, and environmental protection. | |
| [91] | Details how AI applications facilitate real-time performance monitoring, predictive analytics, and objective evaluation, thereby strengthening green performance management and aligning HR outcomes with sustainability targets. | |
| [92] | Investigate how GHRM affects commercial banks’ environmental performance. It also examines the moderating effect of digital HR technology. | |
| [93] | Investigates the role of new technologies and the implementation of GHRM practices in achieving sustainable organizational performance. | |
| Employee Outcomes | [33] | Shows that green talent management significantly boosts innovative work behavior, with ethical leadership enhancing and AI influencing this relationship |
| [51] | Improve employee performance through adopting AI, leading to a more engaged, productive, and sustainable workforce. | |
| [52] | Explores how AI-Driven Sustainable HRM helps organizations to improve employee engagement and performance. | |
| [54] | Examines the influence of incorporating AI into GHRM on the performance of organizations, and it explicitly studies how employee behavior acts as a mediator in this relationship. | |
| [56] | Demonstrates that integrating sustainable HRM with AI technology significantly improves employee well-being and engagement, reducing workload and enhancing decision-making support, which ultimately boosts productivity, enhances organizational performance. and aligns with SDG 3 objectives | |
| [57] | Highlights that IR 5.0 enables real-time monitoring of employees’ green performance, facilitating transparent performance assessments, timely rewards, and corrective actions that enhance overall organizational sustainability | |
| [63] | Investigates the impact of AI-driven green training and development on employees’ environmental knowledge and their green behavior in the workplace. | |
| [76] | Examines the effects of green talent management, leader STARA competence, and digital task interdependence on employee turnover intention. | |
| [78] | Investigate the impact of STARA on green performance, specifically examining the mediating roles of GHRM and employees’ green commitment, and the moderating role of green psychological climate (GPC) | |
| Organizational Growth and Operational Efficiency | [31] | Examines how GHRM positively impacts organizational performance through the mediating roles of green knowledge management and green innovation, with artificial intelligence moderating these relationships to enhance overall performance. |
| [53] | Explores how e-recruitment and AI can support corporate university programs to enhance organizational performance, as well as develop a skilled workforce. | |
| [71] | Analyzes the GHRM literature within the manufacturing sector, using bibliometric analysis to uncover the structure of existing research, identify current trends and emerging topics, and offer valuable insights for enhancing organizational performance. | |
| [73] | Demonstrates that big data analytics significantly enhances the positive effects of GHRM practices on organizational performance by supporting faster decision-making and efficient resource utilization. | |
| [79] | Investigates the growing importance of IoT in global organizations and its potential to enhance organizational growth in the digital workplace environment | |
| [80] | Explores the potential of the IoT in strategic HRM practices and its impact on HR growth | |
| [81] | Proposes a performance evaluation model for hotel green HR that uses fuzzy decision techniques to assess and optimize hotel GHRM performance and aims to enhance evaluation accuracy and efficiency, leading to improved economic benefits and environmental stewardship. | |
| [82] | Evaluates Sustainable Training Practices (STP) that promote organizational growth and ensure the attainment of proper HRM objectives. | |
| [87] | Shows that the application of AI improves predictive analytics and decision-making in HRM, leading to cost reductions and enhanced operational performance, thereby contributing to overall organizational performance. | |
| [88] | Demonstrates that RPA implementations lead to significant labor cost savings, improved process efficiency, and enhanced productivity, which in turn contribute to both economic and environmental dimensions of sustainable HRM by optimizing resource allocation and reducing waste. |
| Theme | Authors | Focus |
|---|---|---|
| Organizational Readiness | [30] | Outlines key challenges (i.e., resistance to change, loss of human touch, data quality, privacy concerns, high costs, and skill gaps) as well as the benefits of integrating AI into HRM, providing insights into factors that impact the successful adoption of green HRM practices. |
| [40] | Explores the integration of AI and GHRM and its potential to enhance organizational sustainability, as well as the challenges of this integration. | |
| [57] | Examines key factors influencing the adoption of IR 5.0 in green HRM, such as cost, data privacy, technical readiness, and top management support, illustrating both barriers and opportunities for implementing AI-driven HR practices effectively. | |
| [59] | Emphasizes that successful technology adoption in HRM hinges on proper application rather than acquisition. It underscores the importance of collaboration between HR and IT, addresses employee resistance and concerns, and highlights the need for transparent, user-friendly systems to effectively integrate HR analytics and AI into sustainable HR practices. | |
| [67] | Reveals that a data-driven culture is necessary to moderate the relationship between green HRM practices and circular economy performance, indicating that organizational cultural factors play a key role in the successful AI adoption in green HRM. | |
| [74] | By testing multiple dimensions of BDA (acceptance, adoption, and assimilation), the research demonstrates that not all facets equally impact the GHRM–LSR. The absence of moderation effects for BDA acceptance or adoption (with support only for assimilation) points to nuanced challenges in the effective integration of big data analytics in GHRM. | |
| [83] | Identifies key risks (i.e., quality and price risks) and prospects (i.e., unified public–private standards) that affect the systemic adoption of AI-enhanced training for green human resources. | |
| [88] | Identifies key adoption challenges related to RPA, such as resistance to change, ensuring effective communication and education, selecting appropriate KPIs, and addressing data quality and ethical issues. | |
| [89] | Highlights that many SHRM departments are cautious about AI and digital HRM due to data integration issues, technological barriers, and remote work complexities. The research emphasizes the barriers and influencing factors that affect the successful adoption of AI-driven sustainable HRM practices. | |
| [91] | Discusses challenges such as managing large datasets, data privacy, cost, ethical and legal constraints, and technical complexities, rapid decision-making needs, and evolving industrial demands. | |
| Streamlined Operations | [35] | Analyzes the emergence of AI in GHRM processes and the potential benefits of AI in achieving operational efficiency and sustainability. |
| [51] | Aims to help organizations make informed decisions about AI adoption and ensure that AI is used to enhance GHRM practices and achieve organizational goals | |
| [54] | Explores how AI can be implemented in green recruitment to achieve sustainability, efficiency, and modernization in organizations. | |
| [58] | Identifies the effect of an AI-enabled work-from-home culture on strengthening GHRM practices and promoting sustainable development within organizations. | |
| [65] | Highlights that the effective use of AI-supported data analytics can overcome challenges related to HRM implementation in sustainability contexts. | |
| [66] | Illustrates the impact of GHRM on circular economy performance, along with the mediator role of green innovation and the moderator roles of big data analytics and data-driven culture | |
| [69] | Implements GHRM practices and big data analytics capability, so organizations can improve their environmental performance, which leads to improved operational efficiency and market positioning. | |
| [70] | Highlights the role of big data analytics in fostering green innovation, competitive advantage, and environmental performance to combat sustainability issues and to boost the adoption of Big data analytics. | |
| [73] | Speeds up decision-making, cuts down on time, and ensures resources are used effectively, leading to improved operational and strategic outcomes. | |
| [77] | Considers the influence of organizational STARA capabilities on GHRM practices, green supply chain management practices, and their direct impact on sustainable performance outcomes. | |
| [90] | Explores the transformative capabilities of advanced analytical methodologies and AI technology to improve the sustainability and effectiveness of HR management practices. | |
| [94] | Reveals the opportunities of using computer networks and green computing systems while implementing information and communication technology for effective HR analytics. | |
| Ethical Considerations | [33] | Identifies ethical leadership and AI as key regulatory factors that influence how green talent management translates into innovative work behavior. |
| [62] | Addresses the complex interconnections between AI, talent management, and ethics by aiming to break myths and biases in AI-driven sustainable talent management. | |
| [86] | Examines the challenges hindering AI-GHRM implementation, such as integration difficulties and ethical issues, emphasizing the necessity for continuous adaptation and the establishment of ethical frameworks to ensure responsible AI use in GHRM, aligning operational success with environmental responsibility. |
| Rank | Term | Occurrences | Relevance Score |
|---|---|---|---|
| 1 | Organization | 56 | 0.3498 |
| 2 | HRM | 48 | 0.3859 |
| 3 | Technology | 44 | 0.4709 |
| 4 | Green human resource management | 35 | 0.5508 |
| 5 | Relationship | 31 | 0.5141 |
| 6 | Development | 30 | 0.5589 |
| 7 | Process | 29 | 0.5605 |
| 8 | Green innovation | 23 | 2.0078 |
| 9 | GHRM practice | 21 | 0.9196 |
| 10 | sustainable performance | 21 | 1.4186 |
| Rank | Keyword | Occurrences | Total Link Strength |
|---|---|---|---|
| 1 | Artificial intelligence | 17 | 54 |
| 2 | Green human resource management | 16 | 63 |
| 3 | Human resource management | 14 | 75 |
| 4 | Human resources management | 13 | 64 |
| 5 | Sustainable development | 12 | 50 |
| 6 | Resource allocation | 10 | 58 |
| 7 | Human resource management practices | 8 | 43 |
| 8 | Big data analytics | 7 | 19 |
| 9 | Environmental management | 7 | 38 |
| 10 | Green hrm | 7 | 19 |
| Rank | Country | Documents | Citations | Total Link Strength |
|---|---|---|---|---|
| 1 | United Arab Emirates | 3 | 368 | 3 |
| 2 | Pakistan | 11 | 174 | 16 |
| 3 | United Kingdom | 5 | 172 | 5 |
| 4 | China | 11 | 138 | 11 |
| 5 | United States | 5 | 117 | 7 |
| 6 | Malaysia | 10 | 110 | 12 |
| 7 | India | 17 | 103 | 4 |
| 8 | Turkey | 3 | 77 | 1 |
| 9 | Saudi Arabia | 3 | 30 | 5 |
| 10 | Poland | 3 | 0 | 0 |
| Rank | Author | Documents | Citations | Total Link Strength | H-Index |
|---|---|---|---|---|---|
| 1 | Gaskin, J. | 2 | 95 | 3 | 48 |
| 2 | Ogbeibu, S. | 2 | 95 | 3 | 18 |
| 3 | Pereira, V. | 2 | 48 | 2 | 52 |
| 4 | Khan, W. | 2 | 36 | 0 | 7 |
| 5 | Nisar, Q.A. | 2 | 36 | 0 | 33 |
| Rank | Source | Type | Documents | Citations | Total Link Strength |
|---|---|---|---|---|---|
| 1 | Journal of Cleaner Production | Journal Article | 2 | 484 | 0 |
| 2 | Discover Sustainability | Journal Article | 2 | 14 | 0 |
| 3 | 2023 International Conference on Advances in Computation, Communication and Information Technology (ICAICCIT 2023) | Conference Proceedings | 2 | 4 | 0 |
| 4 | E3S Web of Conferences | Conference Proceedings | 2 | 4 | 0 |
| 5 | Studies in Systems, Decision and Control (SSDC) | Book Series | 2 | 3 | 0 |
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Share and Cite
Alherimi, N.; Abdulmaksoud, S.; Ahmed, V.; Bahroun, Z. A Systematic Literature Review of Artificial Intelligence Advancements in Green Human Resource Management. Sustainability 2025, 17, 10283. https://doi.org/10.3390/su172210283
Alherimi N, Abdulmaksoud S, Ahmed V, Bahroun Z. A Systematic Literature Review of Artificial Intelligence Advancements in Green Human Resource Management. Sustainability. 2025; 17(22):10283. https://doi.org/10.3390/su172210283
Chicago/Turabian StyleAlherimi, Nadin, Sara Abdulmaksoud, Vian Ahmed, and Zied Bahroun. 2025. "A Systematic Literature Review of Artificial Intelligence Advancements in Green Human Resource Management" Sustainability 17, no. 22: 10283. https://doi.org/10.3390/su172210283
APA StyleAlherimi, N., Abdulmaksoud, S., Ahmed, V., & Bahroun, Z. (2025). A Systematic Literature Review of Artificial Intelligence Advancements in Green Human Resource Management. Sustainability, 17(22), 10283. https://doi.org/10.3390/su172210283

