Tech Features
5 KEY TECHNOLOGY TRENDS AFFECTING THE SECURITY SECTOR IN 2026
By Johan Paulsson, Chief Technology Officer at Axis Communications; Matt Thulin, Director of AI & Analytics Solutions at Axis Communications; and Thomas Ekdahl, Engineering Manager – Technologies at Axis Communications
It came as a surprise that this is the 10th time that we’ve looked at the technology trends that we think will affect the security sector in the coming year. It feels like only yesterday that we sat down to write the first – a reminder of how quickly time passes, and how fast technological progress continues to move.
Something that’s also become clear is that a completely new set of trends doesn’t appear year-on-year. Rather, we see an evolution of trends and technological developments, and that’s very much the case as we look towards 2026. Technological innovations regularly arrive, which impact our sector. Artificial intelligence, advancements in imaging, greater processing capabilities within devices, enhanced communications technologies…these and more have impacted our industry.
Even technologies which still seem a distance away, such as quantum computing, may have some potential implications in the near-term in preparing for the future. While we focus here on tech trends, it’s worth highlighting a shift that we’ve seen in recent years: the increasing involvement and influence of the IT department over decisions related to security and safety technology. The physical security and IT departments now work in close collaboration, with IT heavily involved in physical security purchasing decisions.
That influence, we feel, is central to the first of our trends for 2026…
1. “Ecosystem-first” becomes an important part of decision making
At a fundamental level, the greater influence of the IT department is changing the perspective regarding security technology purchasing decisions. We call this an “ecosystem-first” approach, and it influences almost every subsequent decision. Today, however, we start to see a trend that the first decision is increasingly defined by the solution ecosystem to which the customer wants to commit. In many ways, it’s analogous to how IT has always worked: decide on an operating system, and then select compatible hardware and software.
The ecosystem-first approach makes a lot of sense. With today’s solutions including a greater variety of devices, sensors, and analytics than ever before, seamless integration, configuration, management, and scalability is essential. In addition, product lifecycle management, including, critically, ongoing software support, becomes more achievable within a single ecosystem.
Committing to a single ecosystem – one offering breadth and depth in hardware and software from both the principal vendor alongside a vibrant ecosystem of partners – is the primary decision.
2. The ongoing evolution of hybrid architectures
A hybrid architecture as the preferred choice isn’t new. In fact, it’s something we’ve highlighted in previous technology trends posts. But it continues to evolve. Sometimes evolution can seem quite subtle. In reality, we’re seeing some fundamental shifts.
We’ve always described hybrid as a mix of edge computing within cameras, cloud resources, and on-premise servers. While that’s still the same today, what’s changing is the balance of resources, as capabilities are enhanced and new use cases emerge. Edge and cloud are becoming much more significant, with the need for on-premise server computing resources reduced.
This is largely a result of enhanced computing power and capabilities within both cameras and the cloud. More powerful edge AI-enabled surveillance cameras can, put simply, handle more than ever before. Improved image quality, the ability to more accurately analyze scenes and create valuable metadata have seen cameras take on tasks previously handled on the server.
Similarly, with such a wealth of data being created, cloud-based resources have the analytical power required to surface business intelligence and insights to enhance operational effectiveness.
There can still be legitimate reasons to retain some on-premise resources, such as network video recorders, but the true value is increasingly coming from edge devices and cloud resources. Ultimately, it’s a trend that meets both the IT department’s drive for efficiency, the security team’s desire for solution quality and effectiveness, and the data integrity and security needs of both.
But, even if hybrid architectures are a trend, we must not forget that a vast majority of all solutions are still very much on-prem solutions, and this will be the case for a long time.
3. The increased importance of edge computing
In many sectors, like the automotive industry, the need and potential for edge computing has only been recognized relatively recently. As regular readers will know, however, the value of increased computing resources within devices at the edge of the network has been a feature of our technology trends predictions for several years. Enhanced capabilities mark the beginning of a new era of edge.
In many ways, the increased importance of edge computing is directly related to the evolution of hybrid architectures described in the previous trend. When hybrid solutions have included edge, cloud, and server technologies, the full potential of edge AI hasn’t always been fully realized. With on-premise servers able to support some tasks, there has been less motivation to move these to the edge.
This is already changing and will accelerate over the coming year. This is in part due to the enhanced AI available to the edge, within devices themselves. The discussion and decisions about where to deploy AI across surveillance solutions – using the strengths of edge AI in devices and the power of cloud-based analytics – has brought focus to the capabilities of cameras and the increasing variety of edge AI-enabled sensors. These bring benefits in both effectiveness and efficiency.
Edge processing generates both business data — actionable insights derived directly from the scene — and metadata, which describes the objects and scenes within it. This information has become the basis for efficient scaling of system functionality, such as smart video searches, and for generating system wide insights. Edge processing enables a much smoother scaling of system compute performance, as the system performance grows with each added edge device.
The arguments against moving more to the edge, such as cybersecurity challenges, have diminished. With the strong cybersecurity capabilities of edge devices, such as secure boot and signed OS, they now have become a strong part of the overall system security solution.
4. Mobile surveillance on the rise
Mobile surveillance solutions, like mobile trailers, aren’t a trend in themselves. For numerous reasons – commercial and technological – mobile surveillance has already seen significant growth and is set to explode over the next year.
From a technological perspective, improved connectivity has helped unlock the ability to employ more advanced, higher-quality surveillance cameras in mobile solutions. Remote access and edge AI has further enhanced the capabilities of mobile surveillance solutions. This immediately makes them an attractive option in a greater variety of situations, from public safety to construction sites to festivals and sporting events.
Power management within surveillance cameras has also advanced, resulting in lower power utilization without a compromise in quality. This is particularly important where mobile surveillance solutions are making use of battery power and renewable energy. A mobile surveillance solution can also be more straightforward to approve than a permanent installation.
Ultimately, these factors mean that security and safety can be ensured in places where it is difficult or undesirable to place physical security personnel.
5. Technology autonomy: Easier said than done!
Less a new trend, and more a reflection on one of our trends from last year where we highlighted how companies across many sectors were looking to gain more control over key technologies essential to their products. Automotive companies looking to design their own semiconductors to mitigate against supply chain disruption was an example.
As many of those organizations are finding, however, extending an organization’s focus from its traditional business (e.g. making cars) to a fundamentally different and potentially highly complex area (e.g. designing semiconductors) is easier said than done. Attempts also highlight how interconnected global supply chains are, and that true autonomy is impossible to achieve.
As we have done for many years here at Axis, focus for technological autonomy should be on the areas of a business that make a fundamental difference to the offering. Designing our own system-on-chip (SoC), ARTPEC, which Axis started doing more than 25 years ago, has given us ultimate control over our product functionality.
An example of the benefit of this has been our ability to be the first surveillance equipment vendor to provide AV1 video encoding to our customers and partners, in addition to H.264 and H.265. It also allows us to prepare for future technologies that will bring opportunities and risks, even those that still seem many years in the future.
While we always enjoy putting together our thoughts on the trends that will define the industry over the coming year, our perspective stretches much further into the future. This is what gives us the ability to plan for and develop the innovations that continue to meet the evolving needs of customers, and opportunities to improve safety, security, operational efficiency and business intelligence.
Innovation doesn’t happen in isolation, however. The best ideas emerge through collaboration, by listening to our customers and understanding their challenges, by maintaining close relationships with our partners, and by exploring solutions together. These partnerships are what will continue to drive progress as we move into 2026 and beyond, whichever way the technological winds may blow.
Tech Features
FROM SMART GRIDS TO SMART CITIES: THE NEXT PHASE OF URBAN INNOVATION

Dr Fadi Alhaddadin, Director of MSc Information Technology (Business), School of Mathematical and Computer Sciences, Heriot-Watt University Dubai
Urbanisation is accelerating at an unprecedented pace, placing immense pressure on cities to become more efficient, sustainable, and resilient. Today, urban areas account for most of the global energy consumption and greenhouse gas emissions, making them central to addressing climate and resource challenges. In response, cities around the world are transitioning from traditional infrastructure systems to advanced, technology-driven models. The evolution from smart grids to fully integrated smart cities marks a new phase of urban innovation.
At the core of this transformation lies the smart grid. Unlike standard energy systems, smart grids use digital communication technologies to enable real-time interaction between energy providers and consumers. This two-way communication allows for more efficient electricity distribution, improved demand management, and the seamless integration of renewable energy sources such as solar and wind. As a result, smart grids not only reduce energy waste but also enhance reliability and support decentralised energy systems. They form the foundational layer upon which broader smart city systems are built.
However, the true power of smart cities emerges from the convergence of multiple technologies. The Internet of Things (IoT), artificial intelligence (AI), and big data analytics work together to create highly interconnected urban environments. IoT devices ranging, from sensors and smart meters to connected infrastructure continuously collect data on various aspects of city life, including energy usage, traffic flow, air quality, and public services. This data is then analysed by AI systems, which generate insights and enable real-time decision-making.
Through AI-driven analytics, cities can predict energy demand, optimise transportation networks, and detect infrastructure issues before they escalate. For example, intelligent traffic management systems can reduce congestion and emissions by dynamically adjusting traffic signals based on real-time conditions. Similarly, predictive maintenance systems can identify potential failures in utilities or transportation networks, minimising disruptions and reducing operational costs.
One of the most significant benefits of smart city technologies is their contribution to sustainability. Energy-efficient buildings equipped with smart systems can automatically regulate lighting, heating, and cooling based on occupancy and environmental conditions. Smart transportation solutions, including connected public transit and electric mobility systems, help reduce carbon emissions and improve urban mobility. Furthermore, integrated resource management systems enable cities to optimise the use of energy, water, and other essential services, supporting a more sustainable urban ecosystem. A notable example in the Middle East is Masdar City, which has been designed as a sustainable urban development powered by renewable energy and smart technologies. The city integrates energy-efficient buildings, smart grids, and intelligent transportation systems, demonstrating how digital innovation can support low-carbon urban living.
The Middle East is increasingly positioning itself as a global leader in smart city development through ambitious national strategies and large-scale projects. In Dubai, smart city initiatives focus on digital governance, artificial intelligence, and integrated urban services to enhance efficiency and citizen experience. Similarly, Saudi Arabia’s NEOM project represents a transformative vision of a fully automated and sustainable urban environment powered by advanced technologies. These initiatives highlight the region’s commitment to leveraging innovation to address urban challenges and drive future economic growth.
Beyond environmental benefits, smart cities are designed to enhance the quality of life for their residents. Digital platforms enable more accessible and efficient public services, from healthcare to administrative processes. Smart health systems can improve patient care through remote monitoring and data-driven diagnostics, while intelligent safety systems enhance security through real-time surveillance and rapid emergency response. These advancements contribute to more convenient, inclusive, and liveable urban environments.
Resilience is another critical dimension of smart cities. As urban areas face increasing risks from climate change, natural disasters, and infrastructure strain, the ability to adapt and respond effectively becomes essential. Smart grids play a key role in enhancing energy resilience by supporting decentralised power generation and rapid recovery from outages. Meanwhile, data-driven systems allow city authorities to anticipate and prepare for potential disruptions, improving overall crisis management and response capabilities.
Despite their many advantages, the development of smart cities is not without challenges. The integration of interconnected systems raises concerns about cybersecurity and data privacy, as large volumes of sensitive information are collected and processed. Additionally, the high cost of implementing advanced infrastructure and the need for standardised systems can pose significant barriers. Addressing these issues requires strong governance, clear regulatory frameworks, and collaboration between governments, private sector stakeholders, and technology providers.
In conclusion, the transition from smart grids to smart cities represents a fundamental shift in how urban environments are designed and managed. By leveraging the combined capabilities of IoT, AI, and data-driven infrastructure, cities are becoming more efficient, sustainable, and resilient. This transformation is not only redefining urban systems but also shaping the future of how people live, work, and interact within cities. As this evolution continues, smart cities will play a crucial role in addressing global challenges and improving the overall quality of urban life.
Tech Features
WHEN UNCERTAINTY TESTS THE REAL OPERATING VALUE OF AUTONOMOUS AI TEAMS

By Alfred Manasseh, Co-Founder and COO of Shaffra
For much of the past two years, AI has been discussed mainly in terms of pilots, productivity, and experimentation. But in moments of uncertainty, the conversation changes. This is when AI needs to move beyond pilots and into execution. When pressure rises, what matters most is speed, consistency, and coordination. The real question is whether institutions have the operational capacity to respond clearly, maintain continuity, and support decision-making under pressure.
In the UAE, that question carries particular weight because resilience, proactiveness, and digital by design have already been established as national priorities. This is no longer a futuristic idea. It is already being implemented across institutions.
This is why the conversation is moving beyond AI as a surface-level capability and closer to the operating core of institutions. In 2024, UAE federal government entities processed 173.7 million digital transactions and delivered 1,419 digital services, with user satisfaction reaching 91%. Once millions of people are interacting with digital systems, resilience depends not only on keeping platforms online, but on making sure information flows remain clear, response times hold steady, and service quality stays consistent under pressure.
Filtering signal from noise
In high-pressure environments, the first challenge is information overload. Fake information, true information, public questions, updates, and warnings all arrive at once, and institutions have to respond without adding confusion. Human teams remain essential because judgment and accountability must stay with people. But people alone cannot process that volume of information at the speed now required.
This is where Autonomous AI Teams become operationally valuable. AI is effective at dealing with large amounts of data, identifying patterns, and helping institutions filter signal from noise. Used properly, that gives leadership a stronger basis for communicating clearly, responding faster, and addressing confusion before it spreads.
Why governed systems hold up
Good governance is what makes AI dependable in sensitive moments. It is not only about speed. It is about consistency in messaging, consistency in how citizens and residents are served, and making sure people are well-informed. In uncertain situations, the public does not only need information. It needs information that is clear, timely, and trusted. Governed AI helps institutions provide that support without losing control or passing ambiguous situations with false confidence.
This is particularly relevant as research has found that six in 10 UAE employees use AI in their daily jobs, while IBM reported that 65% of MENA CEOs are accelerating generative AI adoption, above the global average of 61%.
The UAE can lead this shift because it is building around digital capacity at every layer, from infrastructure to service delivery to workforce readiness. The Digital Economy Strategy aims to raise the digital economy’s contribution significantly by 2031, while broader trade guidance has also framed the ambition as growing from 12% of non-oil GDP to 20% by 2030.
Working model in practice
This is also where Shaffra offers a practical example of how the model is changing. Through its AI Workforce Platform, Shaffra’s Autonomous AI Teams are already saving more than two million manual work hours per month and reducing operational costs by up to 80%. These systems can monitor inbound activity, classify issues, support fraud reviews, prepare draft responses for approval, and help institutions listen at scale to recurring public concerns.
In Shaffra deployments more broadly, this model has also delivered significant time and cost efficiencies across enterprise operations.
That does not replace leadership or human judgment. AI and humans play different roles, and the real value comes when they work together. It gives institutions stronger operational support, with greater speed, consistency, and control when pressure is highest. In the years ahead, the strongest organisations will be the ones that move beyond AI as a productivity tool and build it as a governed resilience layer that stays reliable when uncertainty tests every process around them.
Cover Story
AI Moves from Experiment to Essential in UAE’s Advertising Landscape

From content creation to media buying, artificial intelligence is quietly reshaping how campaigns are built, delivered, and optimised across the GCC.
In the UAE and across the GCC, artificial intelligence has moved well beyond the stage of experimentation. What was once a buzzword discussed in boardrooms is now deeply embedded in the day-to-day execution of advertising. Brands are no longer testing AI—they are relying on it to run campaigns, generate content, and make increasingly precise decisions about audience targeting and timing.
On the creative front, the shift is particularly visible. AI-powered tools are now capable of producing ad copy, visuals, and even short-form video content at a pace that would have been unthinkable just a few years ago. For marketers operating in a market like the UAE—where campaigns often need to speak to audiences in both English and Arabic, while also resonating across a diverse mix of nationalities, this level of speed and adaptability is more than a convenience. It is becoming a necessity.
Behind the scenes, machine learning has also transformed how media buying is approached. Traditional methods that relied heavily on instinct or retrospective performance reports are steadily being replaced by systems that analyse audience behaviour in real time. These platforms continuously optimise campaign performance, adjusting budgets and placements based on how users interact with content.
In the UAE’s PR ecosystem, brands are already leveraging platforms such as Meltwater, Brandwatch, and Sprout Social to better understand media performance, audience sentiment, and the broader buying landscape.

A practical example of this shift can be seen in platforms like Skyscanner, where advertising systems respond dynamically to user intent. Instead of targeting broad demographic groups, campaigns are triggered by actual search behaviour and travel patterns, allowing for more relevant and timely engagement.
AI is also influencing emerging advertising formats. Digital billboards, for instance, are becoming more responsive, using live data inputs to tailor content based on factors such as time of day, location, and audience movement. Similarly, augmented reality experiences are beginning to incorporate behavioural insights, offering more contextual and interactive brand engagements.
Looking ahead, the trajectory appears clear. Advertising is moving towards deeper automation, more intelligent recommendations, and tighter integration between creative tools and analytics platforms. The industry is shifting from a model centred on broadcasting messages to one that focuses on responding to audiences in real time, with context and precision.
In this evolving landscape, AI is no longer just an enabler, it is becoming the foundation on which modern advertising is built.
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