Latest Announcements

New Special Issue: AI Ethics and Governance
We are pleased to announce a special issue on AI Ethics and Governance in the Journal of Advanced Machine Learning and Artificial Intelligence (JAMLAI). Submission deadline: March 31, 2024.
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ICAIML 2024 Conference Registration Now Open
Early bird registration is now available for the International Conference on Artificial Intelligence and Machine Learning (ICAIML 2024) taking place June 15-17 in San Francisco.
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IJAISM Research Scholarship Program Announced
IJAISM is proud to launch a new scholarship program supporting doctoral researchers in information technology and business management. Applications open February 1, 2024.
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Updated Author Guidelines for 2024
We have updated our author guidelines to include new formatting requirements and best practices. All authors should review the updated guidelines before submission.
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New Editorial Board Members Appointed
IJAISM welcomes five distinguished researchers to our editorial boards across multiple journals, strengthening our commitment to academic excellence.
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Call for Papers: Business Analytics Special Issue
The Journal of Business Value and Data Analytics is seeking submissions for a special issue on advanced business analytics applications. Deadline: April 15, 2024.
Read More →Academic Journals

Advances in Machine Learning, IoT and Data Security

Journal of Sustainable Agricultural Economics

Open Journal of Business Entrepreneurship and Marketing

Journal of Information Technology Management and Business Horizons

Transactions on Banking, Finance, and Leadership Informatics

Journal of Business Venturing, AI and Data Analytics

Advances in Engineering and Science Informatics

Progress on Multidisciplinary Scientific Research and Innovation
Latest Articles
Navigating the AI Revolution in Business Management: New Strategies and Innovations
Mustakim Bin Aziz
Artificial Intelligence (AI) has changed a paradigm shift in business management, presenting unprecedented opportunities for innovation and strategic enhancement. This research explores the transformative impact of AI technologies on contemporary business practices. This paper presents, how AI reshapes decision-making processes, optimizes operational efficiency, and fuels innovative strategies to maintain competitive advantage in a rapidly evolving market. Through case studies and a comprehensive analysis of industry applications, the research identifies key AI-driven tools and methods that revolutionize various aspects of business management, including supply chain optimization, customer relationship management, and predictive analytics. The study also examines the challenges and ethical considerations associated with AI integration, providing insights into best practices for successful implementation. By synthesizing theoretical frameworks with practical examples, this study aims to provide a holistic understanding of the dynamic interplay between AI and business management. It emphasizes the need for businesses to adapt to this technological revolution and outlines strategic recommendations for using AI to drive sustainable growth and innovation. By synthesizing theoretical frameworks with practical examples, this thesis aims to offer a holistic understanding of the dynamic interplay between AI and business management. It underscores the necessity for businesses to adapt to this technological revolution and outlines strategic recommendations for leveraging AI to drive sustainable growth and innovation.
Read More →Implementing Agile IT Management: A Path to Enhanced Business Flexibility and Responsiveness
Md Abdullah Al Mahmud
In the last few years, many business organizations have adopted this strategic solutions delivery mechanism based on agile project management methods because of the ample advances that it has given to the software quality and customer satisfaction requirement. This has demanded for the use of Agile in different categories of projects, not limited to software development only but in IT project management as well. Thus, this thesis is devoted to the consideration of the concept of agile IT management and its possible beneficial influence on the enterprise’s flexibility and adaptability. Examining and identifying the necessity and goals of Agile methods regarding the IT service and support processes is the goal of the study to describe the alterations and new elements of Agile practice to typical working environments. Subsequently, it focuses on the challenges related to the introduction of agile IT management and examines possible impediments to success in the process. This paper combines a literature survey with detailed case studies to establish a list of core benefits of improving agile IT management, as well as key recommendations for organizations who would like to increase their capabilities to compete effectively in a difficult environment.
Read More →The Impact of the US on the Development of International Cybersecurity Law: Legal Challenges and Emerging Norms
Syeda Farjana Farabi
The rise in cyber threats and assaults in the current digital era has made cyber security an essential field that poses major risks to individuals, organizations, and nations. Numerous national and international cyber security laws and regulations have been developed in response to these evolving challenges. The efficiency of the country's present cyber security laws and policies is evaluated in this article in light of the growing sophistication and frequency of cyber-attacks. The National Institute of Standards and Technology (NIST) Cyber security Framework and important laws like HIPAA, GLBA, FISMA, CISA, CCPA, and the DOD Cyber security Maturity Model Certification are highlighted in this comprehensive framework that was developed by the US government. The report examines how these restrictions affect various industries and looks at patterns in data on cybercrime from 2000 to 2022. The results emphasize the difficulties, achievements, and necessity of ongoing adaptation in the face of changing cyber threats.
Read More →E-commerce Platforms Innovations and Strategies for Market Expansion
Md Wali Ullah
The study offers a thorough examination of the innovative e-commerce techniques employed by prominent online merchants, with a specific focus on the highly competitive sector. The primary objective of this research is to investigate the efficacy of different forms of innovation implemented by prominent global e-commerce platforms, with a specific focus on renowned brands like Amazon (Nasdaq: AMZN), Trendyol (Alibaba), and Hepsiburada (Nasdaq: Heps). In order to accomplish this, the study used the "ten types of innovation" framework to analyze the various aspects of innovation in the e-commerce field. Our analysis reveals the factors that contributed to Amazon's inability to successfully penetrate the Turkish market. The research aims to discover potential innovative opportunities that can facilitate the implementation of blue ocean plans.
Read More →Artificial Intelligence in Business: Prospects and Dangers
Md Abdullah Al Mahmud
Artificial intelligence (AI) is revolutionizing various industries, including business, by improving relationships and interactions between individuals and stakeholders. This technology, combined with robots, has significantly impacted how businesses operate, with the benefits outweighing the risks. AI has transformed the way humans perform tasks and brought together humans and machines in ways that were previously unimaginable. It has revolutionized businesses' decision-making by analyzing large volumes of data and using the results to predict and make suggestions. This new technology has the potential to revolutionize corporate decision-making by enabling faster strategic choices. The progress made by researchers and scientists is considered a huge success. This paper aims to examine the significance of AI for business applications, focusing on the opportunities and risks associated with utilizing AI for business purposes, as well as its potential future applications in business contexts.
Read More →Advancements in Sensor Technologies for Remote Healthcare Monitoring
Jannatul Ferdous mou
This paper explores recent advancements in sensor technologies that enable remote healthcare monitoring, enhancing patient care and reducing healthcare costs. Innovations in wearable sensors, biosensors, and remote monitoring devices provide continuous, real-time data on vital signs, activity levels, and physiological parameters. These technologies facilitate early detection of health issues, personalized treatment, and improved patient outcomes. The study examines the integration of these sensors with IoT and AI systems for data analysis and decision support. Challenges such as data privacy, sensor accuracy, and battery life are also discussed. This research highlights the transformative potential of advanced sensors in modern healthcare.
Read More →AI-Driven Financial Security: Innovations in Protecting Assets and Mitigating Risks
Mani Prabha
The financial sector encounters numerous challenges such as cyber threats, fraud, and regulatory compliance. Traditional methods of safeguarding financial transactions and assets are becoming increasingly insufficient against advanced cyber-attacks. This thesis examines the transformative impact of Artificial Intelligence (AI) on financial security. It investigates various AI-driven innovations, their applications in asset protection, and risk mitigation, while also considering the ethical and regulatory implications. AI is reshaping financial risk management by offering advanced tools and techniques for identifying, assessing, and mitigating risks. This article explores the innovations and applications of AI-driven financial risk management, emphasizing its transformative effect on traditional risk management practices. We discuss various Artificial intelligence technology, such as natural language processing, predictive analytics, and machine learning and their applications in enhancing financial stability, regulatory compliance, and operational efficiency. As cyber threats grow more sophisticated, traditional network security approaches are becoming inadequate due to scalability issues, slow response times, and the inability to detect advanced threats. This highlights the need for research into more efficient security methods to protect against diverse network attacks. Cybercriminals use AI for data poisoning and model theft to automate attacks, emphasizing the need for AI-based cybersecurity techniques. This study introduces a cybersecurity technique based on AI for financial sector management (CS-FSM) to map and prevent unforeseen risks. By utilizing AI technologies like the K-Nearest Neighbor (KNN) algorithm with the Enhanced Encryption Standard (EES), the suggested approach improves data privacy, scalability, risk reduction, data protection, and attack avoidance, significantly improving the performance of cybersecurity systems in the financial sector.
Read More →Dynamic Analysis of a G+13 Story RCC Building Using Shear Wall in Three Different Locations on Various Seismic Zones
Md. Kawsarul Islam Kabbo
Currently, Seismic impacts are a very serious concern when designing multi-storied reinforced concrete structures. Seismic tremors have occurred in numerous parts of the globe. High-rise structures should have proper stiffness to resist lateral loads caused by Earthquakes and Winds. Consequently, Engineers are extremely concerned about finding suitable solutions that will allow structures to survive without major damage. Shear walls are structural members that are designed to carry earthquake loads and oppose lateral loads significantly. They are a good choice to increase the stiffness of high-rise structures. This paper aims to use shear walls in various locations of a G+13 multi-storied residential building and to determine the best shear wall placement in high slender buildings by analyzing story displacement, story drift, base shear, and the fundamental time period in various seismic zones according to IS 1893:2016. Three models are prepared and compared under different seismic zones. Shear walls are at the core of the building, and shear walls are at the four corners of the building, which is a combination of both. Our study's goal is to test a structure's ability to bear lateral load applied to it according to the Code and also when it exceeds the limit of allowable deformation. The prepared model for this experimentation is considered to be located on medium soil, and wind velocity is high, like 148mph. The experiment concluded that building with a shear wall combination of both core and corner will show better results in resisting lateral forces, though the combination isn’t enough to help withstand the high slender structure against very powerful earthquake attacks like Zone-V.
Read More →Most Viewed Articles
Forecasting Stock Prices: A Machine Learning-Based Approach for Predictive Analytics Through a Case Study
Stock price prediction has always been a challenging task, requiring careful observation of trends and dynamics of the market because of the volatile and complex nature of financial markets. Various factors affect market behavior all the time. Even some unquantifiable factors like 25 Oct 2025 (Published Online) emotions of the masses, social and political dynamics, etc., also play a great role. So perfect Machine Learning, Deep Learning, behaviors into consideration is crucial for better prediction of the ups and downs of prices. SMA, EMA, RSI, MACD, Bollinger Various machine learning and deep learning models have been proposed to tackle the challenges Bands, RFE, Random Forest by capturing and interpreting complex patterns and relationships in historical price data. Regressor, Multivariate Analysis, Technical features are important for understanding market trends and thus improving the LSTM. accuracy of stock price predictions. In this paper, we calculate key technical indicators such as Simple Moving Average (SMA), Exponential Moving Average (EMA), Relative Strength Index (RSI), Moving Average Convergence Divergence (MACD), Bollinger Bands, and others. We then focus on selecting the most relevant indicators by employing feature selection methods from these to enhance the extraction of meaningful features reflecting underlying market behavior and increase the probability of more precise prediction. Here, Recursive Feature Elimination (RFE) and Random Forest Regressor-based importance ranking methods have been applied for the feature selection task. To get a better forecast of market price, it is important to capture long- term dependencies and patterns over time. Long Short-Term Memory (LSTM) networks are well- suited for modeling and predicting sequential data like stock prices. By leveraging an LSTM model and taking the selected features, we do a multivariate analysis to forecast stock price based on historical data, identifying the trends fairly accurately with some lags here and there.
Read More →Digital Transformation in Business: Strategies and Implications for Organizational Change
By MD Ahsan Ullah Imran
Advanced algorithms, robotics, and analytics, among other digital technologies, are revolutionizing the dynamics of the workforce in organizations. Hence, the writers of this study have examined the consequences of emerging technology on Organizational Behavior. A significant proportion of the existing research on this topic has primarily examined the technology aspects, while neglecting the comprehensive perspective and its impact on organizational behavior. The uniqueness of this study resides in its ability to offer a comprehensive overview of the key digital technologies and assess their impact on employees and leadership. In order to achieve this objective, and considering the current relevance of the subject, the authors chose to examine the effects of digital technologies on organizational behavior. They accomplished this by conducting a thorough analysis of existing literature and organizing it according to the specific technologies and their implications. The article is divided into three sections. Firstly, the definitions of Organizational Behavior and digitalization were examined to establish a theoretical framework. This was followed by an analysis of the impacts and effects of digitalization on leadership and employees. Finally, the findings were summarized in a structured scheme.
Read More →Perioperative Medicine: Investigating Preoperative and Postoperative Management, Including Reducing Complications in Diabetic and Obese Patients
By Sheikh Ummey Salma Tonu
Perioperative medicine is crucial for optimizing outcomes for patients with comorbidities like diabetes and obesity. It involves a multidisciplinary approach to preoperative assessment, intraoperative management, and postoperative care to reduce complications and improve recovery. Diabetes and obesity increase the risk of perioperative complications, such as infections, cardiovascular events, and delayed wound healing. Perioperative medicine ensures personalized risk management, reducing problems and speeding up recovery. This comprehensive approach reduces hospital stays, enhances patient safety, and improves long-term health. This paper investigates preoperative and postoperative care for reducing complications in patients with diabetes and obesity, using interviews and symmetric analysis. Preoperative strategies focus on optimizing glycemic control, managing weight, and addressing risk factors through personalized care plans. Intraoperative techniques maintain hemodynamic stability, minimize insulin resistance, and use appropriate anaesthetic protocols. Postoperatively, vigilant monitoring of blood glucose levels, early mobilization, and nutritional support are pivotal for mitigating complications and enhancing recovery. Emerging research highlights the value of rehabilitation programs, tailored pharmacological interventions, and enhanced recovery pathways for high-risk populations. Advancements in minimally invasive surgical techniques and real-time monitoring technologies have shown promise in reducing adverse outcomes.
Read More →Navigating the AI Revolution in Business Management: New Strategies and Innovations
By Mustakim Bin Aziz
Artificial Intelligence (AI) has changed a paradigm shift in business management, presenting unprecedented opportunities for innovation and strategic enhancement. This research explores the transformative impact of AI technologies on contemporary business practices. This paper presents, how AI reshapes decision-making processes, optimizes operational efficiency, and fuels innovative strategies to maintain competitive advantage in a rapidly evolving market. Through case studies and a comprehensive analysis of industry applications, the research identifies key AI-driven tools and methods that revolutionize various aspects of business management, including supply chain optimization, customer relationship management, and predictive analytics. The study also examines the challenges and ethical considerations associated with AI integration, providing insights into best practices for successful implementation. By synthesizing theoretical frameworks with practical examples, this study aims to provide a holistic understanding of the dynamic interplay between AI and business management. It emphasizes the need for businesses to adapt to this technological revolution and outlines strategic recommendations for using AI to drive sustainable growth and innovation. By synthesizing theoretical frameworks with practical examples, this thesis aims to offer a holistic understanding of the dynamic interplay between AI and business management. It underscores the necessity for businesses to adapt to this technological revolution and outlines strategic recommendations for leveraging AI to drive sustainable growth and innovation.
Read More →Virtual Classrooms: An Inclusive Approach to Educate the Children with Autism
By Raiyan
ASD children often struggle with social interactions, leading to difficulties in interpersonal relationships and academic achievements. Inclusive education is crucial for their success, providing them with the environment they need while giving non-ASD children an equal chance. Virtual classrooms, utilizing technology like Zoom and Microsoft Teams, facilitate meaningful interactions and convenient learning processes, offering flexibility and reducing power disturbances. Teacher training and support are essential for the success of virtual learning. This article examines the impact of virtual classrooms on inclusive education for autistic learners, comparing their interaction and academic achievement in virtual settings to regular classrooms. The study uses a phenomenology design to analyze the experiences of primary school students with disabilities in virtual education post-COVID-19. Virtual classrooms are suitable for accommodating individual needs, increasing accessibility, and providing a secure environment. However, cost and accessibility remain major obstacles for families. The consequences of virtual learning on children with autonomy and responsible technology use remain unanswered. The article suggests that improving the accessibility and inclusivity of virtual classrooms could significantly enhance their efficacy. Advancements in technology and educational regulations have made virtual classrooms beneficial for children with Autism Spectrum Disorder (ASD). They cater to individual needs, increase accessibility, and provide a secure environment. However, challenges remain, and AI technologies could improve inclusive education.
Read More →Intelligence-driven Risk Management in Information Security Systems
By Anamika Tiwari
The task of making decisions in information security, when faced with unclear probabilities and unforeseen consequences of events in the constantly evolving cyber threat landscape, has gained significant importance. Cyber threat intelligence equips decision-makers with essential information and context to comprehend and predict future threats, hence minimizing ambiguity and enhancing the precision of risk assessments. Addressing uncertainty in decision-making demands the adoption of a new methodology led by threat intelligence (TI) and a risk analysis approach. This is a crucial aspect of evidence-based decision-making. Our proposed solution to this difficulty involves the implementation of a TI-based security assessment methodology and a decision-making strategy that takes into account both known unknowns and unknown unknowns. The proposed methodology seeks to improve decision-making quality by utilizing causal graphs, which provide an alternative to current methodologies that rely on attack trees, hence reducing uncertainty. In addition, we analyze strategies, methods, and protocols that are feasible, likely, and credible, enhancing our capacity to anticipate enemy actions. Our proposed approach offers practical counsel to information security leaders, enabling them to make well-informed decisions in uncertain circumstances. This paper presents a novel approach to tackling the problem of making decisions in uncertain situations in the field of information security. It introduces a methodology that can assist decision-makers in navigating the complexities of the ever-changing and dynamic world of cyber threats.
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Solid electrolytes promise higher energy densities and supreme safety for the next generation of EVs.
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How decentralized control algorithms are allowing massive swarms of UAVs to optimize crop yields.
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How machine learning models are predicting off-target effects in CRISPR gene editing workflows.
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