IT Brief New Zealand - Technology news for CIOs & IT decision-makers
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Confronting fears is the first step to enterprise AI adoption
Thu, 15th Feb 2024

Today, IT leaders are navigating a delicate balancing act as they confront the dichotomy between the fear of missing out and the fear of messing up. The imperative to maintain competitiveness drives a pressing need to swiftly adopt and integrate AI solutions. However, amidst this urgency, leaders must grapple with profound concerns regarding bias, governance, accuracy, and the potential implications on their careers.

Juniper Networks recently worked with Wakefield Research to survey 1,000 global executives involved with AI and machine learning at their organization, unveiling that over two in five (43%) in Asia-Pacific (APAC) are under significant pressure to expedite AI implementation to stay abreast of evolving trends. This eagerness may partly explain why as many as 73% of companies in the region have already either mostly or fully implemented AI.

AI adoption in our region is a multifaceted challenge. It requires not only addressing technical complexities but also navigating cultural nuances, regulatory frameworks, and diverse market landscapes. However, amidst these challenges, there also lies immense opportunity for APAC enterprises to chart a course towards successful AI adoption, unlocking its transformative potential while mitigating risks effectively.

Stay on your toes, but start somewhere

Juniper’s survey found that 79% of respondents in the APAC region are feeling executive pressure to swiftly implement AI across various applications. It’s clear that IT leaders are on high alert while the risk of falling behind looms large, threatening competitive disadvantage in terms of operational expenditure, productivity, and speed. 

However, when starting off, proceed with safe, manageable scales to fine-tune for accuracy and iterate swiftly. Perhaps even consider making reasonable bets on unexplored possibilities – you will be no worse off than you were before, but at least it will still be a learning process. While the race to adopt AI is intense, it's essential to strike a balance between urgency and caution to navigate this transformative journey effectively.

Equip your workforce with the skills they need

Interestingly, 86% of APAC respondents believe that employees trust AI without understanding its workings, while 94% feel they trust AI more than necessary. This situation undoubtedly will be exacerbated when the adoption of Large Language Models (LLM) and generative AI continues to grow, given the astronomical number of parameters involved. With the current parameter count in LLM approaching multiple billions, it is not realistic for any human to fully comprehend and understand the workings of these AI models.

Addressing these trust-related concerns requires a proactive approach from leadership. Prioritizing training ensures employees understand AI's workings for informed decision-making, especially in high-stakes scenarios. This is echoed by 82% of executives in APAC who are advocating for more AI training, emphasizing the need for comprehensive education covering AI’s impact, ethics, and practical usage.

Furthermore, 73% anticipate that the integration of AI will lead to increased responsibilities for employees, highlighting the importance of developing complementary skills. While AI handles analysis and processing, human skills in nuanced decision-making and emotional intelligence remain invaluable. 

Think evolutionary with policies 

The swift evolution of AI and its transformative potential has spurred urgency among organizations. 81% of APAC respondents feel pressured to implement AI rapidly. Yet, this urgency conflicts with the challenge of aligning policies with associated risks and rewards.

Leaders must view policy development as an iterative process, building upon existing frameworks rather than revolutionizing them. For instance, for companies that have already established policies regarding data sharing with third parties, these can be expanded to explicitly include guidelines for the use of external generative AI tools, ensuring consistency and clarity.

Effective AI policy hinges on balancing agility with prudence. By adopting a thoughtful and iterative approach to policy evolution, organizations can navigate the complexities of AI implementation while safeguarding against potential pitfalls.

Approach AI responsibly 

According to the research, all IT leaders (100%) anticipate AI adoption across business functions beyond IT, notably in marketing, customer service, and R&D. Ensuring security amidst this transformation is paramount, with all respondents agreeing on the need for a better understanding of the security risks associated with using AI outside of IT.

This trend reflects a new iteration of the ongoing shadow IT challenge, emphasizing the pivotal role of governance – it’s about asking the right questions and involving relevant experts for specific use cases, especially those involving sensitive information.

Furthermore, concerns around AI accuracy and bias are widespread, driven partly by the media's focus on issues like AI hallucinations and biased training data. 83% of APAC respondents question AI output accuracy, while 99% believe bias affects their AI outputs to some extent. Mitigating such bias through better governance and careful curation of training data is paramount.

Evaluating generative AI solutions demands careful consideration of data sources and techniques like retrieval augmented generation (RAG) or human-in-the-loop solutions for accuracy. For domain-specific and specialized AI and machine learning solutions, such as Juniper's AI-Native Network, reliance on accurate operational data ensures reliability and mitigates bias. By adopting a responsible approach to AI adoption, organizations can harness its transformative potential while safeguarding against risks.


Confronting fears is indeed the crucial first step in enterprise AI adoption. The landscape is complex, and the stakes are high, but with careful navigation and strategic planning, IT leaders can steer their organizations towards successful integration. 

By acknowledging and addressing concerns surrounding bias, governance, and workforce readiness, while also prioritizing training, policy evolution, and responsible AI practices, enterprises can unlock the transformative potential of AI while mitigating risks effectively. As we embrace the era of AI, we should remain vigilant, innovative, and committed to building a future where AI serves as a catalyst for growth, efficiency, and ethical advancement.