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In today’s increasingly data-driven landscape, organizations are shifting their focus toward leveraging data analytics for strategic decision-making. As data becomes a cornerstone of operational and strategic activities, the quality of this data has emerged as a non-negotiable aspect for organizations. Lack of attention to data quality can not only result in considerable revenue losses but can also cripple the effectiveness of analytics, causing misinformed decisions and strategic errors. Against this backdrop, this empirical study delves into the innovative avenue of utilizing Generative Artificial Intelligence (AI) as a mechanism for enhancing data quality. The research aims to explore multiple facets of organizational operationsâ\euro”ranging from technical infrastructure to business strategyâ\euro”to ascertain the potential advantages offered by Generative AI. Utilizing a mix of qualitative and quantitative methods, we conducted in-depth interviews, case studies, and simulations to evaluate the impact of Generative AI on data quality. Our findings reveal a multi-layered benefit structure. Notably, we found that Generative AI is not a replacement for existing, traditional methods of data quality assurance but serves as a powerful supplement. It augments traditional methods by increasing the accuracy of data, thereby offering a more reliable foundation for analytics. Additionally, the use of Generative AI can streamline workflows, enhancing productivity among various roles including solution architects and software developers. Moreover, it facilitates a more nuanced and accurate requirement gathering process, enabling businesses to fine-tune their data analytics strategies more effectively. In conclusion, our study establishes that integrating Generative AI into data quality management processes can not only resolve immediate issues surrounding data accuracy but also lead to long-term organizational benefits, such as higher efficiency and more effective decision-making. This research serves as a pioneering step in the intersection of Generative AI and data quality, setting the stage for future studies and real-world applications.

Pan Dhoni

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The digital landscape of the modern world has witnessed a remarkable evolution over the past few decades, with technological advancements permeating every facet of our lives. While these innovations have brought forth unprecedented convenience and connectivity, they have also exposed society to new vulnerabilities. Cybercrimes have surged in both frequency and sophistication, punctuating the digital era with high-profile incidents that have shaken industries and nations. Recent history serves as a stark reminder of the potential havoc that cybercriminals can unleash upon critical infrastructure, as exemplified by the notorious Colonial Pipeline breach, where a malevolent actor manipulated digital systems to demand ransom in the form of cryptocurrency. Traditionally, cybercriminal endeavors necessitated a specialized skill set and an in-depth understanding of intricate technological nuances. However, the landscape has transformed dramatically with the emergence of Generative Artificial Intelligence (AI). Previously the domain of highly specialized engineers, the tools required to orchestrate cybercrimes have become increasingly accessible due to the proliferation of advanced AI models such as ChatGPT and other modern Large Language Models (LLMs). These AI-driven capabilities have lowered the entry barrier for potential wrongdoers, enabling individuals with even basic technical aptitude to partake in cybercriminal activities. A cursory glance at contemporary news headlines underscores the growing ubiquity of cybercrimes. A relentless surge in cyberattacks serves as an alarming indication of the escalating threat posed by malicious actors in the digital realm. As each year unfolds, instances of cybercrime proliferate, impacting individuals, corporations, and governments alike. This trend signals a pressing need to comprehend the intersection between Generative AI and cybersecurity – a convergence that holds the potential to reshape the dynamics of digital malfeasance and defense. This research paper embarks on a journey to explore the intricate relationship between Generative AI and cybersecurity. Delving into the realm of AI-driven creativity and manipulation, we examine how the advent of Generative AI technologies has facilitated a paradigm shift in the landscape of cyber threats. As we navigate through this exploration, we unravel the challenges and opportunities that arise from this dynamic interplay. By delving into case studies, examining emerging trends, and scrutinizing potential countermeasures, this paper aims to shed light on the novel dimensions of cybersecurity in the era of Generative AI. Through a comprehensive analysis, we aim to equip readers with an informed understanding of the evolving cybersecurity landscape and the critical role that Generative AI plays therein.
In the year 2023, a heightened sense of curiosity and apprehension pervaded the landscape of generative artificial intelligence (AI), particularly in the wake of the unveiling of the ChatGPT product by OpenAI. This pivotal moment sparked a flurry of discussions that predominantly revolved around the role of data in shaping the trajectory of generative AI. As researchers and organizations alike delved into this innovative realm, a pronounced inclination toward investigating its potential applications emerged. Notably, organizations swiftly recognized the transformative potential of generative AI in bolstering productivity across various sectors. At the heart of these deliberations lies the profound significance of data. With data as the focal point, a compelling exploration began to unfold, with researchers keenly scrutinizing the ramifications of integrating generative AI within the domain of data and analytics. This research initiative was driven by an intrinsic desire to uncover the ways in which generative AI could be harnessed to enhance and streamline analytical processes. In this context, the present research undertook a comprehensive investigation, employing a multifaceted approach. Leveraging various social media platforms as a primary source of insights, the research embarked on a journey to discern the prevailing sentiments, concerns, and expectations surrounding generative AI tools. This was further complemented by the execution of proof-of-concept (POC) endeavors, which not only enabled hands-on experience with generative AI tools but also facilitated a nuanced comprehension of their practical implications. The culmination of these efforts yielded a series of noteworthy findings. Principally, it was discerned that enterprises stand to gain substantial benefits from embracing the capabilities of generative AI within the domain of data and analytics. The integration of generative AI tools offers the potential to revolutionize productivity, propelling organizations toward novel insights and expediting analytical processes. Concurrently, a strategic partnership with generative AI entities emerged as a salient consideration for safeguarding intellectual properties. Collaborative engagements between companies and generative AI providers became imperative to navigate the evolving landscape of data-driven innovation. In conclusion, the year 2023 ushered in a period marked by intense curiosity and apprehension surrounding generative AI, catalyzed by the introduction of ChatGPT and its ensuing discussions. The centrality of data within this discourse propelled researchers and organizations toward an exploration of generative AI’s potential applications, notably in the realm of data and analytics. Through a comprehensive research endeavor encompassing social media insights, POC experimentation, and practical insights, it became evident that the integration of generative AI could usher in transformative enhancements to productivity and analytical processes. In parallel, collaborative endeavors with generative AI entities emerged as a strategic imperative, offering a dual advantage of innovation and intellectual property protection. This research underscores the compelling need for enterprises to harness generative AI’s capabilities, thereby positioning themselves at the vanguard of data-driven progress.
The increasing popularity of ChatGPT and its widespread adoption across various industries have brought forth new and evolving challenges. In this research paper, our primary focus is to investigate how ChatGPT can benefit the Information Technology (IT) sector while exploring the challenges it presents. Given the significance of this topic, numerous Chief Information Security Officers (CISOs) are currently working on understanding and implementing ChatGPT. Thus, we embarked on this research endeavor to delve deeper into this subject. Our paper, titled “Unleashing the Potential: Overcoming Hurdles and Embracing Generative AI in IT Workplaces: Advantages, Guidelines, and Policies,” aims to examine the advantages, hurdles, and potential of Generative AI (GenAI) and its applications in IT environments. To accomplish our research goals, we employed multiple GenAI tools and conducted extensive investigations to explore their benefits and identify strategies to mitigate associated challenges. By leveraging these tools, we aimed to unlock the full potential of GenAI in the IT landscape. Our research paper delves into various aspects, including the advantages offered by GenAI, the hurdles encountered during its implementation, and the potential it holds for transforming IT workplaces. Furthermore, we provide guidelines and policies to ensure the responsible and effective utilization of GenAI within IT organizations. Through this research, we aim to contribute to the growing body of knowledge surrounding GenAI, enabling IT professionals to make informed decisions and harness the benefits of this emerging technology. By addressing the challenges and providing guidelines, we aim to facilitate the seamless integration of GenAI into IT workplaces, fostering innovation and efficiency in the industry. Please see attached PDF for result.
This research paper aims to address the development of a cost-effective Data Platform tailored for analytics, data science, and AI applications. While the focus of this paper lies predominantly on the retail industry, the approach presented can be applicable across various domains. The advent of cloud technology has significantly benefited small and mid-sized organizations, leading to discussions surrounding IT modernization in recent years. Within the context of this study, we concentrate specifically on small and mid-sized retail organizations that utilize ERP, allocation, Warehouse Management, and Sell applications, both in-store and online. The Information Technology (IT) sector strives to establish a scalable data platform that caters to reporting, data science, and AI initiatives. This research paper places special emphasis on mid-sized organizations, which often face budget constraints and stringent project timelines. Establishing an IT organization with limited resources and budget necessitates careful consideration of the available skill set. By addressing the challenges and opportunities associated with building a cost-effective Data Platform, this research paper aims to provide valuable insights and practical guidance for organizations operating within similar contexts. The subsequent sections will delve into the methodologies, technologies, and strategies employed to achieve a scalable and efficient data platform that aligns with the specific requirements of small and mid-sized retail organizations. More detail will be found at attached PDF.