This thesis investigates the integration of Artificial Intelligence (AI) in the recruitment processes of Small and Medium Enterprises (SMEs), highlighting both the opportunities and challenges of such technologies. It examines the potential benefits of AI in recruitment, including increased efficiency and unbiased decision-making, as well as challenges such as data privacy concerns. Through qualitative research and interviews with HR professionals, the study not only explores the current landscape of AI in recruitment but also proposes a comprehensive implementation plan for SMEs. This plan is designed to help SMEs navigate the complexities of adopting AI technologies, ensuring they can effectively leverage AI tools to enhance their recruitment outcomes and overcome the barriers to implementation.
Explainable Artificial Intelligence (XAI) seeks to enhance transparency and trust in AI systems. Evaluating the quality of XAI explanation methods remains challenging due to limitations in existing metrics. To address these issues, we propose a novel metric called Explanation Significance Assessment (ESA) and its extension, the Weighted Explanation Significance Assessment (WESA). These metrics offer a comprehensive evaluation of XAI explanations, considering spatial precision, focus overlap, and relevance accuracy. In this paper, we demonstrate the applicability of ESA and WESA on medical data. These metrics quantify the understandability and reliability of XAI explanations, assisting practitioners in interpreting AI-based decisions and promoting informed choices in critical domains like healthcare. Moreover, ESA and WESA can play a crucial role in AI certification, ensuring both accuracy and explainability. By evaluating the performance of XAI methods and underlying AI models, these metrics contribute to trustworthy AI systems. Incorporating ESA and WESA in AI certification efforts advances the field of XAI and bridges the gap between accuracy and interpretability. In summary, ESA and WESA provide comprehensive metrics to evaluate XAI explanations, benefiting research, critical domains, and AI certification, thereby enabling trustworthy and interpretable AI systems.
Resulting from the rapid technological advancement in the field of artificial intelligence and its implementation in the business world, intelligent systems are gradually adopted in recruitment. As this development is fast evolving and recent, there is comparatively little research about artificial intelligence in conjunction with recruitment. Hence, this thesis aims at exploring the effects of intelligent algorithms on the recruitment process and the biases involved.To investigate the topic, existing literature was analysed and primary research in form of expert interviews was conducted.The thesis describes the current state of implementation, effects on recruiters and bias as well as potential drawbacks. Overall, it was identified that artificial intelligence cannot prevent bias in personnel selection.The findings imply the need to further research the topic, particularly the implications of algorithmic bias.
This thesis is a study examining the potential of implementing automation solutions in the financial month-end close of TomTom Business Unit Automotive Finance. The aim of this study is to identify processes with potential for the implementation of Robotic Process Automation and/or Artificial Intelligence, to improve month-end close in the selected case company.
The theoretical framework delimits Digital Business Transformation from Digitalization and Digitization. It provides background knowledge on Robotic Process Automation and Artificial Intelligence and points out how digitalization impacts the finance function of the future. Furthermore, factors for successful implementation of automation are discussed.
The study applies the strategy of action research performed in a two-staged research examination, including the performance of interviews and the analysis of the interview results. The interview’s goal was to examine month-end close processes, gathering information about the process itself and its characteristics, to have a solid understanding on the processes for the subsequent analysis. The data analysis was conducted applying two different approaches, varying depending on which automation tool best suited the process.
The research result showed that half of the processes in month-end close of Automotive Finance have the automation potential. This automation is more related to the implementation of processes into SAP Analytics Cloud and the use of included Artificial Intelligence features than to the use of Robotic Process Automation.
This result confirms the theoretical findings on the high potential of automation in reporting and endorses the automation potential of month-end close in TomTom Business Unit Automotive Finance.
BUSINESS PROCESS AUTOMATION: ENHANCING EFFICIENCY AND COMPETITIVENESS IN MODERN ORGANIZATIONS
(2024)
The first section of the thesis provides a historical overview of automation, spanning from the first industrial revolution to the current era of highly advanced AI-driven technologies. It emphasizes how important Business Process Automation (BPA) is in today's hectic corporate climate when productivity and competitiveness are key factors. The main focus is on Robotic Process Automation (RPA), which is especially useful in situations with legacy systems since it effectively automates repetitive processes. This study explores the differences between terms and concepts related to automation, including business process automation (BPA), robotic process automation (RPA), artificial intelligence (AI), machine learning (ML), and business process management (BPM). Companies looking to optimize their processes face a changing landscape due to the involvement of various technologies. Using real-world case studies and industry best practices, the thesis provides a thorough examination of the effects of BPA, emphasizing the primary drivers, challenges, and benefits of BPA adoption. A mixed-methods approach integrating quantitative and qualitative research was used as the methodology. Surveys, case studies, and documentation from different organizations are included in the study, based on those who have implemented RPA at their work. This method enables a thorough analysis of BPA's effects on efficacy, productivity, and affordability. Case studies from prominent firms like Capgemini Consulting, PwC, and Deloitte are reviewed to gain insights regarding their BPA journey. Significant gains in customer satisfaction, cost savings, error avoidance, and operational efficiency are shown by this research. They also draw attention to difficulties like opposition from employees, problems with integration, and the requirement for upskilling. The thesis indicates that although big firms have similar motives for adopting BPA, the process of adopting BPA varies depending on the specific circumstances of each firm. Stakeholder engagement and change management are critical components of successful BPA programs, according to key results. The study highlights a balanced, strategic, and context-sensitive approach, offering a useful insight for companies in establishing their BPA strategy. It provides a comprehensive examination of the role that business process automation plays in modern companies, highlighting the ways in which it can radically alter corporate strategy and operations in the digital age. It gives a thorough examination of the challenges involved in putting BPA into practice and offers tactical advice to businesses hoping to use these tools to boost productivity and competitiveness.
Artificial intelligence is a disruptive technology, offering increasingly more opportunities to companies. However, the low digital maturity of the private banking sector, makes it hard for private banks to take advantage of this opportunity. Simultaneously, customers are expecting more digital solutions, forcing companies to adapt their services.
The aim of this paper is to provide an overview, drawing conclusions about whether the implementation of AI technologies is profitable in the private banking sector.
This thesis is based on recent research about current possible applications and the respective benefits, risks and costs. Two use cases will be thoroughly analysed: the application of automated credit risk management systems and AI powered indexes. In the first case, the software NOLA 2.0 will be evaluated and used as a benchmark to highlight the positive and negative aspects deriving from AI credit risk management software. In the second case, the AI powered index AiPEXAR will be presented and compared to the most common ETF S&P 500, analysing the differences in their computation and their performance over time.
The analysis concluded that, even though the benefits substantially depend on the individual company, AI chatbots, customers' engagement, credit risk management software and banking apps are advantageous for private banks. Yet, the implementation of AI powered indexes may be precocious and therefore not yet profitable. It can also be concluded that for private banks, whose core competitive advantage lies in the expertise of the relationship managers, the digitalization of advisory may lead to unsatisfied customers.
This bachelor thesis addresses the topic of digitalization in the healthcare industry and the resulting integration of Artificial Intelligence into medical care. The aim of this thesis is to develop new business model ideas for an international medical device manufacturer, enabled by the integration of a digital solution into the product portfolio. Furthermore, measures for the successful implementation of the business model ideas and positioning of the organization are to be developed.
To achieve this goal, a market research on the impact of digitalization in the healthcare industry and the resulting integration of Artificial Intelligence into medical care was conducted based on the relevant literature. In addition, the resulting opportunities and risks for the specific use case were identified.
Within the scope of this thesis, the following business model ideas were identified:
- BMI 1: Individual module-based offering,
- BMI 2: Comprehensive product and service solutions,
- BMI 3: Integrated supply and patient pathway solutions,
- BMI 4: Data platform provider.
Recommendations for successful positioning include (1) strengthening organizational structures for process orientation, (2) placing the digital solution not only as a solution for the patient pathway, but also as an enabler for ambulatory procedures, (3) expanding the digital solution with secondary process applications, (4) building a skilled workforce, and (5) partnering with technology companies to manage implementation of the platform-based business model idea.