Computer Science & IT Research Journal https://fepbl.com/index.php/csitrj <p>Journal Name: Computer Science &amp; IT Research Journal<br />DOI Prefix: 10.51594/csitrj<br />Frequency: Monthly<br />Language: English<br />P-ISSN: 2709-0043<br />E-ISSN: 2709-0051<br />Impact Factor: .579<br />indexed in: Crossref &amp; DOI, Google Scholar, WorldCat, PKP Index, Root Indexing, Eurasian Scientific Journal Indexing, American Open Access Journal Indexing, BASE, Directory of Research Journal Index, BibSonomy. <br /><a href="http://fepbl.com/index.php/csitrj/about" target="_self">About this Journal</a></p> Fair East Publishers en-US Computer Science & IT Research Journal 2709-0043 Fair East Publishing has chosen to apply for the Creative Common Attribution Noncommercial 4.0 Licence (CC BY) license on our published work. Authors who wish to publish their manuscript in our journal agree on the following terms:<br /> 1. Authors retain the copyright and grant us (Fair East Publishing and its subsidiary journals) the right for first publication with the work licensed under a Creative Commons Attribution (CC BY) License which permits others to share the work with an acknowledgment of the work’s authorship and initial publication in this journal. Under this license, author retains the ownership of the copyright of their content, but anyone is allowed to download, reuse, reprint, modify, distribute, and/or copy the contents as long as the original authors and source are cited. No permission is required from the publishers or authors.<br /> 2. Authors are able to enter into separate, additional contractual arrangements for the non-exclusive distribution of the journal’s published version of the work (for example, publishing it as a book or submitting it to an institutional repository), with an acknowledgment of its initial publication in Fair East Publishing owned journals.<br /> 3. We encourage our authors/contributors to post their work online (such as posting it on their website or some institutional repositories) prior to and during the submission process since it produces scholarly exchange and greater and earlier citation of published work. Innovation green technology in the age of cybersecurity: Balancing sustainability goals with security concerns https://fepbl.com/index.php/csitrj/article/view/1115 <p>This study explores the critical intersection of cybersecurity measures and green technologies, aiming to assess their combined impact on sustainability goals and stakeholder implications. Employing a systematic literature review methodology, the research scrutinizes peer-reviewed journals, conference proceedings, and reports from reputable databases, focusing on publications from the year 2010 to 2024. The review identifies key themes, including the integration challenges and opportunities of cybersecurity within sustainable technologies, the evolving landscape of cybersecurity protocols, and the strategic implications for industry leaders, policymakers, and technologists. Key insights reveal the dual imperative of pursuing sustainability alongside security, highlighting the necessity of integrating robust cybersecurity measures without compromising the environmental benefits of green technologies. The study identifies significant challenges at this nexus, such as the rapid evolution of cyber threats and the complexity of embedding cybersecurity in green innovations. It also outlines opportunities for innovation and the development of a security-aware culture that supports environmental sustainability. Strategic recommendations are provided for stakeholders to navigate these complexities, emphasizing the importance of multidisciplinary approaches, continuous learning, and the development of policies that encourage the adoption of secure and sustainable technologies. The study concludes that fostering innovation in green technology requires a concerted effort to integrate cybersecurity measures effectively, underscoring the need for future research to expand the knowledge frontiers in this critical area. This research contributes to the ongoing dialogue on achieving environmental sustainability and technological resilience, offering a foundation for further exploration and action towards these dual objectives.</p> <p><strong>Keywords</strong>: Cybersecurity, Green Technologies, Sustainable Technological, Stakeholder Security Concerns.&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;</p> Excel G Chukwurah Chukwuekem David Okeke Cynthia Chizoba Ekechi Copyright (c) 2024 Excel G Chukwurah, Chukwuekem David Okeke, Cynthia Chizoba Ekechi https://creativecommons.org/licenses/by-nc/4.0 2024-05-05 2024-05-05 5 5 1048 1075 10.51594/csitrj.v5i5.1115 Integrating AI with emotional and social learning in primary education: Developing a holistic adaptive learning ecosystem https://fepbl.com/index.php/csitrj/article/view/1116 <p>This paper highlights the significance, potential benefits, challenges, and proposed solutions associated with integrating AI-driven tools and platforms into SEL initiatives. The importance of integrating AI with SEL in primary education lies in its ability to foster the holistic development of students. By equipping students with the tools to navigate academic challenges, interpersonal relationships, and emotional regulation, schools can create dynamic learning environments that prioritize the whole child. The potential benefits of integrating AI with SEL are manifold. AI-powered adaptive learning platforms can personalize instruction, provide targeted support, and promote the development of emotional intelligence and social skills among students. Additionally, AI-driven tools and platforms can facilitate collaborative learning experiences, promote active engagement, and provide real-time feedback to students and educators. However, the integration of AI with SEL also presents various challenges that must be addressed. Ethical considerations, such as data privacy, algorithmic bias, and the digital divide, require careful attention to ensure equitable access and outcomes for all students. Additionally, educators may lack the necessary knowledge and skills to effectively utilize AI tools and platforms for SEL purposes, highlighting the need for training and professional development programs. To address these challenges, collaborative efforts among educators, policymakers, technologists, and researchers are essential. By working together, stakeholders can develop evidence-based practices and solutions that align with the goals and values of primary education. Training and professional development programs for educators, robust policies and safeguards for the ethical use of AI technologies, and equitable access to technology for all students are critical components of successful integration.</p> <p><strong>Keywords</strong>: AI, Learning, Emotions, Social.</p> Olateju Temitope Akintayo Chima Abimbola Eden Oyebola Olusola Ayeni Nneamaka Chisom Onyebuchi Copyright (c) 2024 Olateju Temitope Akintayo, Chima Abimbola Eden, Oyebola Olusola Ayeni, Nneamaka Chisom Onyebuchi https://creativecommons.org/licenses/by-nc/4.0 2024-05-05 2024-05-05 5 5 1076 1089 10.51594/csitrj.v5i5.1116 Transforming equipment management in oil and gas with AI-Driven predictive maintenance https://fepbl.com/index.php/csitrj/article/view/1117 <p>The oil and gas industry faces significant challenges in managing equipment maintenance due to the complexity and criticality of its assets. Traditional maintenance approaches are often reactive and inefficient, leading to costly downtime and safety risks. However, the emergence of artificial intelligence (AI) and predictive maintenance technologies offers a transformative solution to these challenges. This paper explores the role of AI-driven predictive maintenance in revolutionizing equipment management in the oil and gas sector. AI-driven predictive maintenance leverages machine learning algorithms to analyze equipment data and predict when maintenance is required before a breakdown occurs. By monitoring equipment performance in real-time, AI can identify potential issues early, allowing operators to take proactive maintenance actions. This approach helps minimize downtime, reduce maintenance costs, and improve overall equipment reliability and safety. The implementation of AI-driven predictive maintenance requires a comprehensive strategy that includes data collection, analysis, and integration with existing maintenance practices. Successful adoption of AI-driven predictive maintenance can lead to significant benefits for oil and gas companies, including increased equipment uptime, extended asset lifespan, and enhanced operational efficiency. This paper reviews the current landscape of equipment management in the oil and gas industry, highlighting the limitations of traditional maintenance practices and the need for a more proactive approach. It then examines the principles and benefits of AI-driven predictive maintenance, showcasing real-world examples of its successful implementation. Finally, the paper discusses the challenges and considerations for implementing AI-driven predictive maintenance and provides recommendations for oil and gas companies looking to transform their equipment management practices.</p> <p><strong>Keywords</strong>: Transforming Equipment; Management; Oil and Gas; AI-Driven; Predictive Maintenance.</p> Dazok Donald Jambol Oludayo Olatoye Sofoluwe Ayemere Ukato Obinna Joshua Ochulor Copyright (c) 2024 Dazok Donald Jambol, Oludayo Olatoye Sofoluwe, Ayemere Ukato, Obinna Joshua Ochulor https://creativecommons.org/licenses/by-nc/4.0 2024-05-05 2024-05-05 5 5 1090 1112 10.51594/csitrj.v5i5.1117 Environmental data in epidemic forecasting: Insights from predictive analytics https://fepbl.com/index.php/csitrj/article/view/1118 <p>Epidemic forecasting plays a critical role in public health preparedness and response, enabling proactive measures to mitigate the impact of infectious diseases. Environmental data, encompassing factors such as temperature, humidity, air quality, and geographical features, holds valuable insights for predicting and identifying areas prone to epidemics. This paper explores the integration of predictive analytics with environmental data to enhance epidemic forecasting capabilities. By leveraging predictive analytics techniques, researchers and public health officials can analyze environmental data to identify regions at higher risk of experiencing epidemic outbreaks. Through statistical modeling, machine learning algorithms, and computational simulations, predictive analytics utilize environmental indicators to forecast the likelihood and spread of diseases. For example, areas with high temperatures and humidity may be conducive to mosquito-borne diseases, while regions with poor air quality may experience increased rates of respiratory infections. Case studies highlight the application of predictive analytics in various contexts, including forecasting mosquito-borne diseases in tropical regions and tracking respiratory infections in urban areas with poor air quality. Early warning systems, informed by environmental data, provide timely alerts to potential epidemic threats, enabling proactive interventions and resource allocation. While the integration of environmental data into epidemic forecasting offers significant benefits, challenges remain, including data quality, availability, and ethical considerations. Continued research and collaboration are essential to address these challenges and further enhance the effectiveness of predictive analytics in identifying and mitigating epidemic risks. In conclusion, this paper underscores the importance of leveraging environmental data and predictive analytics for epidemic forecasting, emphasizing their potential to improve public health outcomes and enhance preparedness efforts in the face of emerging infectious diseases and climate change.</p> <p><strong>Keywords</strong>: Environmental Data, Epidemic Forecasting, Predictive Analytics.</p> Charles Chukwudalu Ebulue Ogochukwu Virginia Ekkeh Ogochukwu Roseline Ebulue Chukwunonso Sylvester Ekesiobi Copyright (c) 2024 Charles Chukwudalu Ebulue, Ogochukwu Virginia Ekkeh, Ogochukwu Roseline Ebulue, Chukwunonso Sylvester Ekesiobi https://creativecommons.org/licenses/by-nc/4.0 2024-05-05 2024-05-05 5 5 1113 1125 10.51594/csitrj.v5i5.1118 A review of strategic decision-making in marketing through big data and analytics https://fepbl.com/index.php/csitrj/article/view/1139 <p>This review paper delves into the transformative impact of big data and analytics on strategic marketing decision-making. Examining the integration of vast datasets and analytical tools in marketing strategies highlights how these technological advancements enable a deeper understanding of customer behavior, enhance product development, and provide a competitive edge. The review underscores the importance of data-driven insights in formulating personalized marketing strategies and the critical role of analytics in predictive and prescriptive decision-making. It addresses the challenges and ethical considerations associated with big data usage, emphasizing the need for robust data governance and ethical practices. The paper suggests future research directions, focusing on emerging technologies and methodologies that could further influence strategic marketing decisions.</p> <p><strong>Keywords</strong>: Big Data, Analytics, Strategic Marketing, Data-Driven Decision-Making, Ethical Considerations, Emerging Technologies.</p> Kikelomo Fadilat Anjorin Mustafa Ayobami Raji Hameedat Bukola Olodo Copyright (c) 2024 Kikelomo Fadilat Anjorin, Mustafa Ayobami Raji, Hameedat Bukola Olodo https://creativecommons.org/licenses/by-nc/4.0 2024-05-13 2024-05-13 5 5 1126 1144 10.51594/csitrj.v5i5.1139 Cybersecurity’s Role in Environmental Protection and Sustainable Development: Bridging Technology and Sustainability Goals https://fepbl.com/index.php/csitrj/article/view/1140 <p>This study investigates the pivotal role of cybersecurity in bolstering environmental protection and sustainable development, a critical yet underexplored nexus in contemporary research. Employing a systematic literature review and content analysis, the research scrutinizes peer-reviewed articles, conference proceedings, and industry reports from 2015 to 2023, sourced from databases such as IEEE Xplore, ScienceDirect, and Google Scholar. The methodology is anchored in a rigorous search strategy, leveraging keywords related to cybersecurity, sustainability, and communication technologies, and adheres to defined inclusion and exclusion criteria to ensure the relevance and quality of the literature reviewed. Key findings highlight cybersecurity as an indispensable enabler of sustainable development initiatives, safeguarding the technological infrastructure essential for environmental conservation efforts. The study identifies evolving cyber threats as a significant challenge, necessitating adaptive security measures that anticipate and mitigate potential vulnerabilities. Furthermore, it underscores the opportunities presented by advanced cybersecurity technologies, such as artificial intelligence and blockchain, in enhancing the security and efficiency of sustainable practices. Strategic recommendations emphasize the need for comprehensive cybersecurity frameworks, stakeholder collaboration, cybersecurity education, and alignment with regulatory standards to fortify the resilience of sustainability initiatives against cyber threats. The study concludes that integrating robust cybersecurity measures is paramount in the pursuit of sustainable development goals, calling for ongoing vigilance, innovation, and interdisciplinary collaboration to navigate the complex landscape of digital threats and opportunities. This research contributes valuable insights into the critical intersection of cybersecurity and sustainability, offering a foundation for future studies and strategic initiatives aimed at securing sustainable development in the digital age.</p> <p><strong>Keywords</strong>: Cybersecurity, Sustainable Development, Environmental Protection, Advanced Security Technologies.</p> Scholar Chinenye Obasi Nko Okina Solomon Olubunmi Adeolu Adenekan Peter Simpa Copyright (c) 2024 Scholar Chinenye Obasi, Nko Okina Solomon, Olubunmi Adeolu Adenekan, Peter Simpa https://creativecommons.org/licenses/by-nc/4.0 2024-05-13 2024-05-13 5 5 1145 1177 10.51594/csitrj.v5i5.1140