AI and IoT: A New Era of Technological Integration
Comprehending Artificial Intelligence
AI technologies, an essential part of computer science, excel at analyzing enormous sets of data, recognizing patterns, making predictions, and accurate decisions with minimal to no human intervention. Implementing Artificial Intelligence and Machine Learning algorithms is already an established way to improve operations, as 64% of businesses expect AI to increase productivity, according to Forbes.
Artificial Intelligence in Retail, e-commerce, Banking, Manufacturing, Insurance, Logistics, and Tourism, as well as many other industries, is doing wonders in shaping the future of organizations, so by itself this technology is already a true game changer.
For example, retailers successfully implement AI-based Visual Search, a technology that allows customers to upload images of products and find similar items in the store’s inventory almost instantly.For eCommerce platforms, AI can be beneficial in providing personalized product recommendations based on data collected on customer behavior, purchase history, and browsing patterns.
Banking, in turn, is one of the industries that benefit from sophisticated AI-driven Fraud Detection systems, uncovering suspicious patterns in real time that might be unrecognizable to human experts. Among many other use cases, logistics companies are using AI to identify the most efficient routes by analyzing traffic patterns, weather conditions, and delivery schedules.
Grasping the Internet of Things
IoT technology, on the other hand, is reshaping industries by enabling real-time monitoring, automation, and data-driven decision-making to lower maintenance costs for expensive equipment. IoT consists of devices embedded with sensors, software, and connectivity, allowing them to communicate with each other and central systems. These devices may range from everyday household items like smart thermostats and wearables to industrial machines and infrastructure.
With over 18 billion IoT devices connected worldwide in 2024, according to Statista, it is safe to assume that this technology will enter every aspect of our lives, impacting businesses on the global scale as well.
Harnessing AI and IoT in Tandem – The Concept of Artificial Intelligence of Things (AIoT)
Each of these technologies has already proven its worth, however, they are even more powerful when working together and elevating operational efficiency for businesses. The convergence of AI and IoT is giving rise to a new paradigm known as the Artificial Intelligence of Things (AIoT).
The Advantages of AI in IoT
These two technologies are a perfect match for delivering ultimate value for organizations, so let’s highlight the most prominent advantages of their combination.
Enhanced Data Analytics and Insights
AI is capable of quick analysis and processing of large amounts of information, it’s capable of analyzing video streams, for example, which is very resource-consuming. With the addition of Cloud Computing, AI gains the ability to transfer data fast, providing real-time insights and allowing organizations to make immediate, informed decisions.
Speaking of Cloud Computing, we recommend you read our article on the benefits of Cloud Computing infrastructure to find out how to maximize the results of this technology.
Improved Operational Efficiency
AI is a great technology for automating routine tasks, reducing manual labor, and enhancing productivity. This automation optimizes resource allocation as well, letting your human resources focus on more strategic tasks. We already discussed the advantages of strategic technology consulting, so if you want to maximize the efficiency of the AI/IoT implementation, it makes sense to consult with vetted experts in this area for the best results.
Increased Security and Privacy
With AI, it is possible to detect anomalies and potential security breaches in real-time, enabling timely responses to mitigate risks. AI algorithms can be programmed to analyze specific patterns and behaviors to identify fraudulent activities, protecting businesses and consumers from massive financial losses.
Context-Driven User Experience
It is possible to achieve unprecedented levels of personalization, by tailoring content and services perfectly aligned to user preferences, resulting in higher levels of user engagement and satisfaction. For instance, NLP and AI can offer outstanding human-machine interactions via sophisticated chatbots and virtual assistants.
Reduced Maintenance Costs
By predictive equipment failures and optimizing maintenance schedules, AI can prevent costly breakdowns and downtime. Not only this technology is helping to maintain the assets, but also it is capable of identifying the most effective maintenance strategies to prolong the asset lifecycle.
Innovation and Competitive Advantage
AIoT enables the development of new business models and services that will help your organization stand out among the competition. AI also enhances an organization’s ability to respond quickly to market changes and emerging trends, helping not only get on top but also stay there.
Prominent Applications of AI and IoT
Artificial Intelligence of Things is taking some industries by storm, by offering highly effective solutions to common problems. Here is a breakdown of the most interesting use cases.
Smart Cities Infrastructure
Artificial Intelligence and Machine Learning are the two technologies that make modern cities smart. While smart sensors and connected devices do their magic in getting the information, AI is the brain behind the operation.
Public safety
According to Statista, the size of the global computer vision market is projected to reach USD 25.80 billion in 2024. For Smart Cities, this growth means more availability of technology for use cases like AI-powered surveillance systems to analyze video feeds from IoT-enabled cameras to detect unusual activities, alert authorities, and enhance public safety.
We have a vetted team that is capable of delivering Computer Vision development services of any complexity, so if you have a project related to this technology in mind, our experts would be glad to help you.
Traffic management
The option to monitor traffic flow is another interesting use case of AI and IoT based on video data streams. This can significantly reduce traffic flux and minimize emissions. Furthermore, combined with Smart Traffic Lights, AI can optimize its timing and improve transportation efficiency as well.
Waste management
IoT-enabled waste bins equipped with sensors can easily monitor fill levels and optimize waste collection routes. With the addition of Artificial Intelligence and Machine Learning, this process will be even more efficient, helping to reduce operational costs and minimize environmental impact.
Industrial IoT
Shopogolix believes that AI in the IoT market is expected to grow at a CAGR of 26% to reach USD 16.2 billion this year, mainly as a result of the increased integration of Artificial Intelligence and Machine Learning in Industrial IoT and wider adoption of the following applications.
Predictive Maintenance
Predictive Maintenance with Machine Learning is one of the most effective applications of AI technology, allowing organizations to achieve massive cost savings by extending the life of expensive equipment. IoT sensors can monitor equipment health in real-time, collecting data on vibrations, temperature, and other required parameters. AI algorithms analyze sensor data to predict equipment failures before they occur, enabling proactive maintenance and minimizing downtime.
In one of our most prominent use cases in Predictive Maintenance, we delivered a full-fledged, AI/ML-powered defect prevention system for equipment inspection. As a result, the system performs multimedia analysis and provides inspectors with highly effective tools for defect recognition, digital twins, actionable insights on maintenance, support chatbot, and reporting.
Process optimization
The production processes can be improved and optimized as well. With the help of Artificial Intelligence of Things, it is possible to analyze data right on the factory floor, leading to improved quality control, reduced waste, and enhanced overall efficiency.
Supply chain management
IoT devices including sensors and trackers allow for effective real-time monitoring of resources in a supply chain. Combined with Artificial Intelligence, supply chains can benefit from advanced analytics, adapting to evolving customer needs faster.
Remote Patient Monitoring
Advanced Applications of Machine Learning in Healthcare have already proven their worth in saving lives, however, combined with IoT devices, use cases like remote patient monitoring become available, providing real-time insights into patients’ health and improving care delivery based on dynamically changing patient data.
Chronic disease management
Artificial Intelligence helps to make sense of data generated by wearable devices that monitor vital signs such as heart rate, blood pressure, and glucose levels. Advanced data analytics that AI introduces, helps to detect anomalies and provide personalized insights, allowing patients to manage chronic conditions more effectively.
Telemedicine
IoT devices already make remote healthcare possible, helping to exchange data faster and allowing doctors to make correct and timely decisions. With AI capabilities, medical experts can make even more accurate assessments and leverage AI-assisted treatment recommendations.
Emergency response
With IoT, it is possible to collect data from medical devices, helping to detect and alert on several critical health conditions including seizures or heart attacks. Integrating AI into this process, allows medical experts to prioritize alerts on the severity of each emergency, ensuring timely responses to the ones who need it the most.
Precision Farming
We already touched on the topic of AI and ML in the Food industry in one of our articles, as agriculture is a big part of it. Valuable insights, based on data collected from IoT, are enabling precision farming, optimizing crop production and resource management. Let’s explore the promising application of AI and IoT in the farming sector in more detail.
Crop monitoring
It is already a quite common technology integration when IoT sensors collect data on soil moisture, temperature, and nutrient levels. However, when Artificial Intelligence is offering its real-time data analysis, farmers can benefit greatly from tailored recommendations on irrigation, fertilization, and pest control, optimizing crop yield and overall usage of resources.
Livestock management
IoT Artificial Intelligence allows not only to monitor the health and behavior of livestock, but also, thanks to data analysis, detect early signs of illness, optimize feeding schedules, and improve animal welfare.
Environmental Monitoring
Smart environmental sensors can make a big difference in helping to solve environmental challenges, particularly by providing real-time insights into natural ecosystems.
Air and water quality monitoring
Artificial Intelligence of Things allows for collecting precise data on pollutants and contaminants, while at the same time conducting data analysis, identifying pollution sources, assessing environmental impact, and supporting regulatory compliance. This use case alone can be invaluable for ecology.
Wildlife conservation
AIoT applications can help protect wild species and their habitats as well by monitoring the movement of wildlife and providing information for conservation efforts and strategies. AI can effectively identify hidden patterns and detect threats that may be missed by human intelligence.
Disaster management
As we live in the era of climate change, this particular use case is very important. The technology allows specialists to sense real-world conditions and monitor temperature, humidity, and seismic activity. This makes it possible to enable early warning systems, conduct proactive response measures, and, ultimately, predict natural disasters.
Renewable Energy Integration
The Energy Industry is another important area, where technology truly shines, helping to drive innovations forward, leading to massive cost savings for organizations. According to Allied Market Research, the global AI in Renewable Energy market size is projected to reach USD 4.6 billion by 2032, so the future looks very promising.
Energy management
AI-driven analytics can optimize energy consumption, provide effective monitoring activities in real time, adjust energy usage, and recommend energy-saving measures.
Smart grid
With all data generated on energy production and distribution, Artificial Intelligence can analyze this data to optimize grid operations, balance supply and demand, and significantly reduce energy losses.
Obstacles in Combining AI with IoT
While the combination of AI and IoT has seemingly limitless potential applications across various industries, there are still some major challenges that need to be addressed.
Data Integration Complexity
Let’s start by mentioning the complexity of data integration that is quite common in the IoT Artificial Intelligence realm. Since IoT devices generate enormous amounts of data from entirely different sources and in various formats, making sense of it all is always a challenge. Furthermore, Artificial Intelligence and Machine Learning solutions require this data to be properly prepared, to use it for AIoT applications.
Future Outlook of AI in IoT
The future of both domains looks very bright, as the advancements in technology and the rise in computing power will boost the efficiency of AI and IoT even further. Let’s take a look at the most promising trends.
Integration with 5G
According to GSMA Intelligence, the number of 5G connections surpassed 1.5 billion at the end of 2023. IoT networks are benefiting greatly from this astonishing growth, having access to faster data transmission speed, lower latency, and more reliable connections.
In particular, the areas that will benefit from 5G improvements include:
- Quicker and more accurate decision-making thanks to enhanced bandwidth and reduced latency that allows IoT devices to process and analyze data in real-time.
- A more comprehensive data collection and analysis due to 5G’s capacity to support a vast number of connected devices.
- Significantly better remote control and monitoring of IoT devices.
Faster data exchange unlocks the benefit of another growing technology, increasing the business impact of Big Data for organizations as well.
By the way, Artificial Intelligence can improve 5G connectivity itself with the help of AI-optimized network slicing. AI can be used for managing and optimizing network slices in 5G networks, ensuring efficient and reliable communication for various IoT applications.
Edge AI
Being another promising trend, Edge AI is all about deploying AI algorithms on IoT devices themselves rather than relying on centralized cloud servers. Implementation of Edge Computing reduces latency by processing data locally, while also enhancing the privacy of sensitive data. Additionally, Edge AI improves the overall reliability of IoT systems, ensuring that critical functions can run without disruptions even when the internet connection is gone.
Autonomous IoT Systems
Self-managing IoT systems that use AI to autonomously monitor, diagnose, and optimize their operation with minimal human interaction, are set to be at the forefront of industrial automation. If ScienceDirect is to be believed, the autonomous IoT systems adoption is currently divided between industries in the following way:
- 30% Transportation
- 21% Military and Security
- 19% Aerospace
- 16% of Healthcare
- 14% Home robotics.
Implementing AI for autonomous IoT systems allows them to make intelligent decisions based on real-time data, enhancing efficiency and effectiveness. Most importantly, AI-powered IoT devices can scale efficiently, adapting to changing conditions and demands without requiring significant human oversight.
Federated Learning for IoT Devices
This is another growing trend that you should keep an eye on, a decentralized Machine Learning approach where multiple IoT devices collaboratively train a shared model while keeping the data on the devices themselves, rather than transferring the data to a central server. This technique preserves user privacy by keeping data on local devices and complying with data protection regulations. It also reduces bandwidth usage by sharing only model updates rather than raw data.