Are We Overestimating the Power of AI?

April 18th, 2025 by · Leave a Comment

This Industry Viewpoint was authored by Jamie Dobson, founder of Container Solutions and author of ‘The Cloud Native Attitude’

While the telecoms sector can’t know when it will need to deal with curve balls such as the next pandemic, one thing is sure – new technology needs to be watched closely. AI is never far from the headlines, triggering both concern and excitement; some fear for the future of the human workforce while others see a bright future where we’re all prompt engineers. But are we getting caught up in the hype, or are we failing to see the bigger picture?

The Short-Term Hype vs. Reality

According to Amara’s Law, we tend to overestimate a technology’s impact in the short term while underestimating its effects in the long run. We’ve seen this pattern before with cloud computing. It took seven years before serious competition emerged in the cloud space, and only now is cloud computing emerging from what Gartner calls the “trough of disillusionment” into practical, widespread adoption.

The journey has been fascinating to watch: AWS launched its first services in 2006, but it wasn’t until 2013 that serious competitors like Microsoft Azure and Google Cloud Platform began to gain real traction.

Today, cloud computing is delivering tangible benefits that were once just promises.

Parallel with Cloud Native

Cloud computing offers valuable insights into AI’s potential path. For cloud computing to deliver real benefits, it required more than just technology – it demanded good management, psychologically safe environments, excellent engineering skills, mature HR practices, and sophisticated financial planning. These same ingredients will be crucial for making AI productive in enterprise settings.

Let’s break down what these requirements really mean, and why they’re crucial for both cloud and AI success:

 Good management in cloud computing requires knowing which real-world business problems cloud-native can actually solve, not merely chasing tech trends. It is the same for AI. Its success hinges on leadership capable of identifying the genuine business challenges where AI can add value.

Psychologically safe environments have proven essential for cloud adoption, where teams are given the freedom to experiment and to learn from missteps. This is even more critical for AI development.

Excellence in engineering for cloud means having teams that understand both technical implementation and business impact – not just how to deploy containers, but why and when they’re the right solution.

For AI, this translates to engineers who can both develop models and understand their real-world applications and limitations. They need to grasp not just how to implement a machine learning algorithm, but when it’s the appropriate solution for a business problem.

Mature HR practices in cloud computing focus on finding and nurturing talent that can bridge technical expertise with business acumen. For AI development, this becomes even more crucial – organisations need people who can translate between AI capabilities and business needs, understand the ethical implications of AI deployment, and adapt to rapidly evolving technical requirements.

This might mean hiring data scientists who can explain complex models to business stakeholders, or training existing staff to work alongside AI systems.

Sophisticated financial planning for cloud involves balancing upfront investment with long-term operational benefits, understanding the true cost of cloud infrastructure beyond just server expenses. With AI, this becomes more complex – organisations need to account for not just computing resources, but also data acquisition and cleaning, model training costs, and the ongoing expense of keeping AI systems current and relevant.

Yet, unlike cloud computing, which took decades to reach maturity, AI’s development cycle is likely to be considerably shorter – perhaps less than 20 years. The way it captures the public imagination makes AI’s potential applications more immediately apparent, driving massive investment.

The Infrastructure Question

What’s really interesting in the parallels between AI and Cloud Computing is that successful AI implementation depends heavily on solid cloud infrastructure. Without robust cloud systems in place, organisations face significant challenges in leveraging AI effectively.

Companies with mature cloud infrastructure enjoy substantial advantages in their AI journey. They can train AI models on their own data, creating unique competitive edges that set them apart from competitors. Their ability to scale computing resources dynamically means they can experiment freely, ramping up resources for intensive training periods and scaling back during quieter times.

Perhaps most importantly, they maintain control over their AI development roadmap, integrating AI capabilities directly into existing applications and services in ways that make sense for their specific business needs.

In contrast, organisations without strong cloud foundations often find themselves dependent on AI-as-a-Service from cloud providers. While this might seem like an easy solution, it comes with hidden costs and limitations that can significantly impact long-term success.

The Long-Term Perspective

While we might be overestimating AI’s immediate impact, we’re likely underestimating its long-term transformative potential.

There are likely to be systematic changes in how work is organised and automated, with AI assistants augmenting human decision-making in complex scenarios while automated systems handle more routine tasks. This will evolve into new collaborative workflows, combining human insight with AI processing power, eventually leading to AI-first organisational structures and processes.

The job market is already beginning to shift in response to AI’s influence. We’re seeing growing demand for AI literacy across all roles, from marketing specialists who need to understand recommendation engines to manufacturing managers who work with predictive maintenance systems.

Traditional roles are evolving to incorporate AI collaboration skills, while entirely new positions are emerging – AI trainers, ethics officers, and AI-human interaction designers. Perhaps most importantly, there’s a growing emphasis on uniquely human skills that complement AI capabilities, such as creative problem-solving, emotional intelligence, and ethical decision-making.

Business models are transforming too, as organisations discover new ways to create value with AI. We’re moving from standardised offerings to highly personalised products and services, enabled by AI’s ability to process and act on individual customer data at scale.

Companies are discovering new revenue streams based on AI-driven insights and predictions, while traditional industries are being transformed through AI integration. Entirely new markets are emerging, built on capabilities that simply weren’t possible before.

The way we solve problems is also undergoing a fundamental shift. AI is enabling real-time optimisation of complex systems in many sectors, including telecoms, making it possible to respond to changes and disruptions almost instantly. We’re starting to see novel solutions to problems that were previously considered intractable.

ABOUT THE AUTHOR

Jamie Dobson is the founder of Container Solutions, and has been helping companies, across industries, move to cloud native ways of working for over ten years. Container Solutions develops a strategy, a clear plan and step by step implementation helping companies achieve a smooth digital transformation. With services including Internal Developer Platform Enablement, Cloud Modernisation, DevOps/DevSecOps, Site Reliability Engineering (SRE) Consultancy, Cloud Optimisation and creating a full Cloud Native Strategy, companies get much more than just engineering know-how. Jamie is also author of ‘The Cloud Native Attitude’ available from Amazon and good bookstores and the soon to be published, ‘Visionaries, Rebels and Machines: The story of humanity’s extraordinary journey from electrification to cloudification’

https://www.container-solutions.com/

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Categories: Artificial Intelligence · Industry Viewpoint

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