


In 2024, IoT systems will gradually be integrated into critical infrastructure and transformed by cybersecurity, artificial intelligence, and other emerging technologies.
In this article, I will delve into the impact of artificial intelligence and machine learning (ML) in smart IoT systems. With the rise of edge computing and the integration of blockchain, the security of the system has been enhanced. In addition, the introduction of ultra-thin smart transportation labels and the application of the SGP.32 standard have also brought new development opportunities to IoT systems. Finally, we explore the emerging role of the Internet of Things in sustainable development. Through in-depth research on these aspects, we can better understand the transformation of smart IoT systems.
Pay more attention to IoT cybersecurity
By 2024, IoT devices will become part of important systems such as smart cities. At the same time, the widespread adoption of technologies such as 5G, eSIM, iSIM and satellite connectivity has increased the importance of cybersecurity measures. These advancements make IoT devices more versatile and efficient, but also require greater attention to the protection of data integrity and device security.
To meet these needs, there is increasing emphasis on deploying advanced encryption and strict security protocols. These measures ensure that data transmitted between IoT devices and central systems is protected. In addition, continuous monitoring and real-time threat detection with the help of artificial intelligence and machine learning are likely to become standard practice, enabling timely identification and response to potential security vulnerabilities and maintaining the integrity and reliability of IoT networks.
AI and ML enable smart IoT systems
Artificial intelligence and machine learning are revolutionizing the IoT space, and they add value to IoT applications such as predictive maintenance and energy management by analyzing massive amounts of data in real time. new capabilities. This synergy, combined with a centralized IoT management platform, results in unprecedented operational efficiencies.
By 2024, the convergence of artificial intelligence and machine learning will be more deeply applied in IoT infrastructure. By combining the analytical power of AI with the data collection and monitoring capabilities of IoT, we will build a smarter and more responsive IoT ecosystem. Such systems will be able to gather operational insights more efficiently, enabling smarter IoT systems.
Edge computing enhances IoT performance
Edge computing is a method of processing data closer to the source, revolutionizing the performance of IoT. With this approach, latency is significantly reduced, which is critical for real-time applications such as self-driving cars, industrial automation, and augmented reality. These advancements are particularly relevant in areas such as smart cities, healthcare, manufacturing, and retail, where they can facilitate instant data analysis and improve service quality.
Looking to the future, the combination of artificial intelligence and machine learning with edge computing will be further enhanced, enabling edge devices to make complex decisions autonomously. At the same time, with the popularization of 5G networks, communication between devices will be faster and more efficient, thereby accelerating data processing. In addition, the role of edge computing in reducing energy consumption and carbon emissions will be highlighted, further promoting the cultivation of a more sustainable IoT ecosystem.
Blockchain for IoT security
With the increase in the number of sensitive data processed by IoT devices, the role of blockchain in IoT security has become increasingly prominent. The decentralized nature of blockchain can enhance data integrity and become an important component in preventing IoT network security threats. Integration with artificial intelligence (AI) and machine learning (ML), in particular, represents important progress in building resilient IoT infrastructure.
This combination is expected to form a stronger and more secure IoT ecosystem in 2024 and beyond, especially as the IoT attack surface expands. In this context, blockchain’s ability to ensure the authenticity and security of data transactions across the network is crucial, providing a powerful solution to the ever-changing challenges of IoT security.
Ultra-thin, low-power smart shipping labels
Ultra-thin, low-power smart shipping labels will debut in early 2023, our own smart shipping labels equipped with printed, eco-friendly batteries , has eSIM functionality and supports up to 1,000 messages on LTE-M, NB-IoT and 2G networks.
By 2024, these types of tags will become even more prolific as they serve as advanced tracking devices for both large and small items. They monitor location, temperature and package integrity in real-time to ensure safe and efficient transportation.
Due to their adaptability to various logistics needs, from tracking small documents to large assets, these smart labels not only increase supply chain efficiency but are also aligned with sustainable development goals and represent IoT-driven asset management significant progress.
Integrating SGP.32 into the IoT ecosystem
The SGP.32 standard will be integrated into the IoT ecosystem in 2024, heralding major advancements in device functionality and application efficiency. By providing superior geolocation services, SGP.32 is critical for use cases that require high positioning accuracy, such as precision agriculture.
Additionally, the integration of SGP.32 plays a key role in expanding the use of esim in IoT devices. This is particularly beneficial for global IoT deployments as it simplifies the complexities associated with device management in different regions. Features such as remote configuration and profile exchange inherent in eSIM technology help improve operational efficiency.
This development is not just a technological leap; It is a strategic enabler of a more efficient, globally connected, responsive IoT ecosystem. The impact of integrating SGP.32 will be felt in various fields, making a significant contribution to the overall development and effectiveness of IoT applications.
IoT’s driving force for sustainable development continues to grow
Finally, through 2024, IoT will continue to play a key role in driving sustainability across industries. Advanced, energy-efficient sensors combined with artificial intelligence are revolutionizing resource management by enabling precise monitoring and control. This technological synergy significantly reduces waste and optimizes energy use.
In industries such as manufacturing, IoT adoption is accelerating through tightening global regulations that require more sustainable practices and a better ecological footprint. IoT technology not only improves operational efficiency but also promotes environmental management. The implementation of smart systems in areas such as energy management and waste reduction is evidence of the growing impact of IoT in creating a more sustainable future.
As the world grapples with environmental challenges, the integration of the Internet of Things in sustainability efforts is becoming increasingly important, marking a new era in which technology and ecology harmoniously intersect.
The above is the detailed content of Emerging technologies in 2024: IoT, cybersecurity and artificial intelligence transforming industries. For more information, please follow other related articles on the PHP Chinese website!

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