By Luca Collina
Even though many businesses are adopting AI in their operations, they often have difficulties scaling towards commercialisation due to governance issues, inefficient training, and ethical dilemmas. Therefore, it becomes important for leaders to close this gap by promoting responsible innovation and ensuring that ethical examples are set in the use of artificial intelligence.
If we must succeed sustainably, then excluding elements such as the role played by middle-level managers in sector-wide training programs and policies governing the use of AI will be difficult.
I want to explore these stumbling blocks while enlightening how people employed could incorporate artificial intelligence that promotes lasting operational efficiency and growth prospects with a strict human-centric focus.
Article
AI Adoption: obstacles and blind spots-A human-centred article
This analysis discusses the obstacles to the broader usage of AI beyond the pilot phases from the perspective of ethics, operation and governance. The rapid alterations within business settings make artificial intelligence (AI) a disruption factor across several industries. It is impossible to underestimate the advantages (sometimes “Hyped”) that automated systems promise for customer experience enhancements as well as various forms of innovation stemming from technological advances within process optimisation frameworks based on AI approaches. However, the adoption process comes with several hindrances. To inform companies about ways to adopt AI for sustainable growth over time while still upholding their ethical values and being operationally effective, I will explore major insights shared by recent business studies concerning AI implementation gaps.
Over the pilots or experimentation.Ā
Accenture (2024)[1] reported that increasing organisations are exploiting AI for personalised services, better marketing and innovative offerings. Despite this trend, many fail to scale up their projects beyond experimental stages because they cannot effectively reach many people simultaneously, among other reasons. In line with that assertion, Boston Consulting Group (2024)[2] has observed that poor AI governance and data fragmentation are some of the challenges that make it difficult for enterprises to incorporate AI into their existing systems.
While it is true that many organisations are quick to jump on the AI bandwagon, there are various impediments to the final goal.
AI Strategy and Ethical AI Integration: Leadership?
Leaders are key to how artificial intelligence is used (BCG, 2024)[3]. Nonetheless, people still worry about the appropriate ethics for using artificial intelligence. KPMG[4] explains that this decision-making process must be open and secure, guaranteeing a fair outcome without any discrimination. However, there are no standard AI governance structures established (Access Partnership, 2024)[5] AI Governance Framework that can help other sectors adopt some of the best practices applied, whereby we are still grappling with issues of bias.
To highlight this crucial point about governance and ethics, it is quite critical and contemporary to remember the current debate for the US elections: the Democrats support keeping Biden’s regulations on business for social and environmental responsibility. In contrast, the Republicans push for self-governance, aiming to reduce regulations and cut business costsā¦
Instead, as organisations invest more in training and development programmes for middle managers and employees facing difficult decisions on new technologies, they should not make choices without considering significant ethical matters. Besides, companies should invest in ethics training on AI and collaborate to develop global ethics standards.
Scaling AI: Overcoming Operational and Technical Barriers
According to the 2024 Gartner tech trends[6]AI is important in all organisations. Scaling it from testing to full roll-out remains difficult despite the fact that it improves automation and efficiency. This includes but is not limited to, dealing with huge amounts of data, quality control over such data, and sufficient computing resources that keep AI systems running efficiently.
From a human-centric point of view, a blind spot identified lies around middle managementās participation in driving AI uptake across various levels of organisations. (KPMG 2024) [7]Top executive leadership at a company may spearhead any initiatives related to Artificial Intelligence (AI), but its implementation tends to flop due to poor communication across departments. Further analysis should investigate how middle managers can serve as AI translators so that they can integrate such systems fully into everyday business processes.
Training?
There still exists a significant lacuna in terms of how businesses can train their employees for coming AI-induced changes. This will call for extensive re-skilling programs that address technical competencies and soft skills such as adaptiveness, critical thinking, and problem-solving, especially when using artificial intelligence applications. Ā
However, a diverse approach already recommended by the WEF World Economic Forum still needs to be fully embedded holistically and include other elements for a successful #aiadoption #aiscaleup and #ailifelongelearning. Ā
Training needs to offer a comprehensive, structured, and adaptive approach to AI literacy with inclusivity (more roles than executives), practical application, AI-business acumen, and continuous learning allowed by the model. There are several models addressing AI literacy, inclusivity, practical applications, and continuous learning, such as IBMās AI Skills Academy and MIT’s Digital Leadership frameworks. However, many lack comprehensive feedback mechanisms or role-specific training. Similarly, course catalogues like Coursera and edX excel in AI literacy but often miss structured, practical feedback and inclusivity in lifelong learning. These approaches meet some demands for AI adoption and scale-up but fall short of fully addressing continuous, structured training and adaptability across roles and feedback (CMR-California Management Review, 2024)[8] ( HACHER.IO )9.
Sum-Up
Successfully adopting AI in companies presents several challenges whose solution needs to be found. There exist differences, especially regarding issues or gaps that must be dealt with in order to scale beyond pilots in a more holistic perspective.
These points can be described as human-centric because they focus on the people who are essential to successful AI adoption:
- Middle management: Highlighting their role as facilitators underscores the need for human involvement in overseeing AI processes, ensuring smooth communication, and translating AI tools into actionable strategies, which emphasises their central role in driving AI initiatives
- Ethics and data protection: By addressing these as fears rather than just technical challenges, the focus is on the societal impact of AI, recognising the importance of human well-being, trust, and responsibility in technology use
- All-inclusive training: Emphasizing that training should be inclusive prioritises equipping everyoneānot just technical expertsāwith the skills necessary for AI, supporting workforce adaptability and enhancing individual and organisational readiness
- Governance: it provides simple rules and standards relevant to leaders and people, highlighting the crucial role of decision-making leadership and accountability.
Each point underscores that successful AI adoption is not just about technology but about empowering and protecting people within the system. This is compared to the more common focus on technical scalability and financial ROI (only) seen in other reports.
My final thoughts are that it is critical to conduct more analysis into a better way for people to work together rather than merely replacing jobs done by men with machines in order to boost quality.
About the Author
Luca CollinaĀ is a transformational and AI Business consultant at TRANSFORAGE TCA LTD. York St John University awarded him the Business ā Postgraduate Programme Prize and CMCE (Centre for Management Consulting Excellence-UK) for his paper in Technology and Consulting Research Prize. Author/External Collaborator of CMCE.Ā
References:
- [1] https://newsroom.accenture.com/news/2024/new-accenture-research-finds-that-companies-with-ailed-processes-outperform-peers Accenture (2024) Ā
- [2] https://www.bcg.com/publications/2024/the-solution-to-data-managements-genai-problem Ā
- [3] https://www.bcg.com/publications/2024/from-potential-to-profit-with-genai
- [4] https://kpmg.com/us/en/articles/2023/ten-key-regulatory-challenges-responsible-systems.html Ā
- [5] https://accesspartnership.com/effective-ai-governance-building-blocks/ Ā
- [6] https://www.gartner.com/en/articles/gartner-top-10-strategic-technology-trends-for-2024 Ā
- [7] https://kpmg.com/vn/en/home/insights/2024/05/leading-through-change-middle-managers-and-aiadoption.html Ā
- [8] https://cmr.berkeley.edu/2024/03/how-to-build-an-ai-prepared-workforce/ Ā 9 http://hacher.io/ Ā