Agentic AI: Building castles on quicksand?

SMART Surveillance 2025 AI & Data Analytics

Artificial Intelligence is in a strange spot. With the explosion of AI tools and applications, we are teetering between two inseparable yet intertwined paths – the promise of extraordinary capability and the peril of unmitigated risk. This precarious balance raises the question: Are we building something truly enduring, or are we rushing ahead on unstable foundations, building castles on quicksand?

Agentic AI covers a diverse range, from simple chatbots to the vision of fully autonomous systems that can act, reason, and take initiative. While the current hype often overshadows practical discussions, there is undeniable potential for rapid advances in this field. Agentic AI systems go beyond button-based conversational interfaces, offering tools that integrate into complex enterprise operations.

While the appeal is undeniable, a leap of this magnitude toward fully autonomous systems in enterprise-level applications could lead to unforeseen risks. While the threat of these risks remains a reality, we should instead focus on human-led Agentic AI – a level where intelligent tools enhance operations, while ensuring human oversight.


Ari Ramkilowan.


Stef Adonis.

Initiative and the ability to plan

The key distinction lies in initiative and the ability to plan. For example, an LLM is like an incredibly well-read librarian who can instantly recall and synthesise vast amounts of information from books. Ask this librarian a question, and they will provide a comprehensive, eloquent response, drawing from their extensive knowledge or the wealth of information at their disposal. If prompted, they might even respond as a pirate. They are exceptional at retrieving and combining information, but they always wait for your specific query.

On the other hand, an agentic application is like that same librarian, but instead of simply answering your question, they take it a step further by showing some initiative. They might say, “Based on what you are asking, I think you might also want to explore these related topics. I will go ahead and pull some additional resources, draft a preliminary research summary, and even reach out to some subject matter experts who might provide deeper insights.”

The agentic application introduces a layer of goal-oriented behaviour, breaking down complex tasks into sub-tasks, making decisions, and taking actions beyond mere information retrieval. It has the capacity to perceive an environment and take purposeful actions toward a specific goal rather than following a specific query or a predetermined sequence of events.

This holistic approach underlines its superiority to rigid, workflow-based tools that falter in handling edge cases.

The journey to autonomous agentic systems

While the journey toward fully autonomous agentic systems may still be on the horizon, enterprises are beginning to invest in the technology. The interest lies in faster iteration and broader scope, where agentic systems introduce flexibility without replacing existing workflows.

However, the promise of agentic AI comes with a great deal of risk, especially for businesses – misalignment of goals, unpredictable behaviour, loss of human oversight, amplification of bias, and security risks – all of which demand careful navigation.

So, we must ask ourselves not whether we can build this, but whether we should build this.

A hybrid path

There is a path forward that is more of a hybrid model – one that lies between structured processes and autonomous agents. This will give us the efficiency of agentic AI and the security of human involvement.

The allure of agentic AI is immense, but so are the responsibilities that come with it. Oversight, accountability, and ethical alignment must serve as the foundation of our innovation. These systems should enable autonomy within controlled parameters, minimising risks, while maximising potential.

As we look ahead, human-led Agentic AI may emerge as the ‘sweet spot’ – a balanced middle ground where technology supports rather than replaces human expertise.

The evolution of agentic AI is not just about technology, but deliberate and thoughtful integration. While the idea of fully autonomous systems tempts us with the promise of efficiency and innovation, it also demands vigilance. Building robust AI systems is not about surrendering control, but exercising it wisely.

So we do not need to build those castles on quicksand after all. We have the power to create a much firmer middle ground that combines the strengths of agentic AI and human expertise.

For more information, visit www.helm.africa




Share this article:
Share via emailShare via LinkedInPrint this page



Further reading:

Hikvision launches latest range of cameras
Hikvision South Africa Surveillance AI & Data Analytics
Hikvision has launched its latest network cameras with ColorVu 3.0 technology and EasyIP 4.0 Plus, which elevate video security by delivering improved image quality, enhanced intelligent functions, superior audio capabilities, and a refined product design and materials.

Read more...
Platform to access data and train AI models
Milestone Systems AI & Data Analytics Surveillance
Milestone Systems has announced Project Hafnia to build services and democratise AI-model training with high-quality, compliant video data leveraging NVIDIA Cosmos Curator and AI model, fine-tuning microservices.

Read more...
The capabilities of visual verification
Secutel Technologies Surveillance AI & Data Analytics
Secutel Technologies has provided locally developed visual verification solutions for some time. SMART Security Solutions requested more insight into these solutions from the company.

Read more...
AI means proactive surveillance
DeepAlert Technews Publishing SMART Security Solutions AI & Data Analytics Surveillance
SMART Security Solutionsasked DeepAlert for some insight into how AI is transforming video surveillance, even to the extent of it being taught to protect the privacy of those in the cameras’ view.

Read more...
edgE:Tower video analytics integrated with SEON
Surveillance Integrated Solutions AI & Data Analytics
Sentronics has announced a new integration between its edgE:Tower advanced AI-driven video analytics solution and SEON, a Central Monitoring Software (CMS) platform. This integration enhances real-time situational awareness and automated threat detection for control rooms.

Read more...
What does Agentic AI mean for cybersecurity?
Information Security AI & Data Analytics
AI agents will change how we work by scheduling meetings on our behalf and even managing supply chain items. However, without adequate protection, they become soft targets for criminals.

Read more...
The future of security: intelligent automation
Access Control & Identity Management AI & Data Analytics IoT & Automation
As the security landscape evolves, businesses are no longer looking for stand-alone solutions, they want connected, intelligent systems that automate, streamline, and protect.

Read more...
Local is a lekker challenge
Secutel Technologies Technews Publishing AI & Data Analytics
There are a number of companies focused on producing solutions locally, primarily in the software arena, but we still have hardware producers churning out products, many doing business locally and internationally.

Read more...
AI and privacy to shape consumer cybersecurity landscape
AI & Data Analytics
A report from Kaspersky indicates that artificial intelligence will become an integral part of daily life in 2025, while privacy concerns around biometric data and advanced technologies will take centre stage.

Read more...
How can South African organisations fast-track their AI initiatives?
AI & Data Analytics Security Services & Risk Management
While the AI market in South Africa is anticipated to grow by nearly 30% annually over the next five years, tapping into the promise and potential of AI is not easy.

Read more...