IoT Analytics, a leading global provider of market insights and strategic business intelligence for the Internet of Things (IoT), AI, Cloud, Edge, and Industry 4.0, today released the 2022 Emerging Technologies Radar for IoT Projects.
The analyst team at IoT Analytics handpicked 58 of the most promising technologies relevant to IoT projects globally and ranked them according to their perceived maturity.
The resulting Emerging IoT Technologies Radar will help anyone working in IoT-type environments and projects understand which technologies they should be watching, evaluating, and perhaps deploying. The full report is available to IoT Analytics corporate subscription clients here: Emerging IoT Technologies Report 2022. The report contains additional details, such as market statistics, major vendors, and recent trends, for each of the highlighted IoT technologies, which are anywhere between “coming up” and “mainstream.”
Key quotes:
Knud Lasse Lueth, CEO at IoT Analytics says:
“Many of the technologies available to IoT practitioners have matured significantly in the last 3 years. That is why we are currently witnessing increased adoption of IoT across the board and more and more projects that are scaling up. Nonetheless, there is still so much technology on the horizon which, once more mature, will mean another step-change for the Internet of Things.”
Satyajit Sinha, Senior Analyst at IoT Analytics adds: “Wi-Fi 6, GPUs, and smart sensors were the fastest adaptive technologies in the last three years. The quick deployment of hardware components, expansion to new applications, and extensive updates on existing technology were key factors for higher adoption.”
Selected highlights:
IoT Software. Eight IoT technologies are nearing maturity, including edge AI, IoT-based streaming analytics, and supervised and unsupervised machine learning.
IoT Hardware. Six IoT technologies are now classified as fairly mature or mainstream: CPUs, MCUs, GPUs, security chips, FPGA, and edge gateways.
IoT Connectivity. Four IoT technologies are close to maturity: eSIM, mesh networks, 5G, and Wi-Fi 6.
The technologies maturing the fastest
Of the 40 technologies that were highlighted in the 2019 radar, three technologies stand out as the fastest movers that advanced the most in three years: Wi-Fi 6, GPUs, and intelligent sensors.
Wi-Fi 6. The deployment of Wi-Fi 6 chipsets at an early stage and the significant specification upgrade from earlier Wi-Fi versions led to a fast adoption by device players, especially in devices such as routers. Thanks to this adoption, Wi-Fi 6 has been extremely quick to move from “coming up” to “fairly mature.” Wi-Fi 6 significantly increases the speed and the network’s capacity to provide optimal throughput to access points. The upgrade from older Wi-Fi versions to Wi-Fi 6 opens the door for new applications, with almost four times higher throughput capacity than Wi-Fi 5. Routers, gateways, and customer-premises equipment (CPEs) were key devices for the quick adoption of Wi-Fi 6 in the last three years.
GPUs. The optimization of GPUs to train AI deep learning models to process multiple computations simultaneously for IoT applications and the adoption of GPUs into data centers due to their parallel processing capabilities have led to faster maturity.
Intelligent sensors. The last three years have seen an upsurge in technology developments around sensors that aim to solve problems related to latency, data throughput, and security for various edge applications. In contrast to older generation sensors, these new sensors are embedded with data processing capabilities that enable data to be processed closer to the sensor and respond to the user interface or actuators. The key applications driving the adoption of intelligent sensors were wearable medical devices, such as blood glucose monitors, and AI-based quality control.
Here is a complete list of all software, hardware, and IoT connectivity technologies (ranked by maturity):
A. IOT SOFTWARE TECHNOLOGIES
Technology
Description
Classification
Cloud Computing
Cloud computing is the delivery of different services through the internet. These resources include tools and applications related to data storage, servers, databases, networking, and software.
Mainstream
IoT Platforms
IoT platforms are software tools for building and managing IoT solutions. They also simplify coding and deploying applications for IoT solutions and enable efficient edge-to-cloud communications.
Fairly mature
Edge AI/Analytics
Edge AI is a combination of edge computing and AI. AI algorithms are processed locally, either directly on the device or on a server near the device.
Nearing maturity
Containers
A container is a standard unit of software that packages up code and all its dependencies, so the application runs quickly and reliably from one computing environment to another.
Nearing maturity
IoT-based Streaming Analytics
Streaming analytics is the processing and analysis of fast-moving live data from various sources, including IoT devices, to raise automated, real-time actions or alerts.
Nearing maturity
Supervised ML
Supervised ML is a subcategory of ML and AI. It is defined by its use of labeled datasets to train algorithms to classify data or predict outcomes accurately.
Nearing maturity
Cloud-native Application Design
A cloud-native application is a program designed for a cloud computing architecture. These applications are run and hosted in the cloud.
Nearing maturity
Cloud-native Data Warehouses
A cloud-native data warehouse is a database delivered in a public cloud as a managed service that is optimized for analytics, scale, and ease of use.
Nearing maturity
Real-time Database
A real-time database is a database system that uses real-time processing to handle workloads whose state is constantly changing.
Nearing maturity
Low-code/No-code Development Platforms
A low-code/no-code development platform provides a development environment to create application software through a graphical user interface.
Nearing maturity
Unsupervised ML
Unsupervised ML is a type of ML in which the algorithm is not provided with any pre-assigned labels or scores for the training data.
Coming up
Serverless/FaaS
Function-as-a-Service, or FaaS, is a cloud computing service that allows developers to build, run, and manage application packages as functions without having to maintain their infrastructure.
Coming up
Deep Learning
Deep learning is part of a broader family of ML methods based on data representations, as opposed to task-specific algorithms.
Coming up
IoT Marketplaces
An IoT marketplace is a type of application marketplace where customers can go to an online storefront to find, purchase, and manage applications for their IoT devices.
Coming up
Digital Twins
A digital twin is a digital representation of a physical object, process, or service.
Coming up
IoT Security Platforms
An IoT security platform includes software security solutions for many layers of the IoT tech stack.
Coming up
IoT Edge Data & Application Platforms
Edge application platforms enable analytics application management at the edge. Edge data platforms are software tools to manage applications running on multiple edge compute resources.
Coming up
ML Ops
ML Ops (also called DevOps for ML) is an engineering discipline that aims to combine ML systems development and deployment.
Coming up
Automated ML
Automated machine learning is the process of automating the tasks of applying machine learning to real-world problems.
Years out
Data ecosystems
A data ecosystem is the secure connection between different stakeholders of a process (e.g., vendors, suppliers, etc.) that share data in a way that has clearly defined rules for data access and privacy for everyone involved.
Years out
2-way BMI (Brain Machine Interface)
Bidirectional brain-machine interfaces (BMIs) establish a two-way direct communication link between the brain and the external world.
Far on the horizon
B. IOT HARDWARE TECHNOLOGIES
Technology
Description
Classification
CPU
CPUs are electronic circuitry that execute instructions that make up a computer program.
Mainstream
MCU
Microcontrollers are integrated circuits that contain a processor, memory, and other peripherals.
Mainstream
GPUs
Graphic processing unit.
Mainstream
Security Chips
Security-enhancing, low-powered modules, include various security-sensitive functions.
Fairly mature
Edge Gateways
Physical devices that serve as the connection point between the cloud and controllers, sensors, and intelligent devices.
Fairly mature
FPGA
Field Programmable Gate Array.
Fairly mature
Intelligent Sensors
Sensors that take some predefined action when they sense the appropriate input.
Nearing maturity
ASIC
Application-Specific Integrated Circuit.
Nearing maturity
Chiplets
Chiplets are a new design philosophy that allows multiple chips with different process node sizes to be used in a single package or on a single substrate.
Nearing maturity
TinyML
TinyML is a field of study in ML and embedded systems that explores models you can run on small, low-powered devices, like microcontrollers.
Nearing maturity
Edge + Micro Data Centers (MDCs)
Edge data centers are located close to the edge of a network (where the network meets the endpoint layer). An MDC is for computer workloads not requiring traditional facilities.
Nearing maturity
Cloud-connected Sensors
Cloud-connected sensors use physical sensors to accumulate data and transmit them into a cloud computing infrastructure.
Coming up
AR Technology
AR technology is a technology that combines virtual information with the real world.
Coming up
Edge AI Chip
Edge AI chipsets refer to computational chipsets focusing on AI workloads that are typically deployed in edge environments.
Coming up
Neurosynaptic Chips
Brain-inspired computer chip, in which transistors simulate neurons and synapses.
Years out
QRNG Chips
QRNG refers to quantum driven secure chip design which can be integrated into current silicon design and manufacturing processes.
Years out
Wireless, Battery-free Sensors
Sensors that can generate the energy that they need to function by themselves, i.e., they do not need to be powered by an external source.
Years out
ML-optimized Gateways
Controllers that are optimized for ML algorithms.
Years out
Quantum Computing
Computation using quantum-mechanical phenomena, for example superposition entanglement.
Far on the horizon
Biodegradable Sensors
Biodegradable sensors are designed and developed to detect various body signals, which can help track post-treatment prognosis.
Far on the horizon
C. IOT CONNECTIVITY TECHNOLOGIES
Technology
Description
Classification
Cellular IoT (2G/3G/4G)
Provides connectivity to IoT applications via traditional cellular networks.
Mainstream
LPWAN
Low-Power, Wide-Area connectivity for IoT applications (e.g., Sigfox, LoRa, NB-IoT and LTE-M).
Mainstream
eSIM
A SIM-card embedded into mobile devices enables remote SIM provisioning, which allows storing multiple operator profiles simultaneously and switching between them remotely.
Nearing maturity
Mesh Networks
A mesh network is a group of devices that act as a single Wi-Fi network, so there are multiple sources of Wi-Fi around your house instead of just a single router.
Nearing maturity
5G
The fifth generation of cellular networks, commercially launched in 2019.
Nearing maturity
Wi-Fi 6
The newest version of the Wi-Fi protocol, also known as IEE 802.11ax.
Nearing maturity
Network Virtualization
Abstracts network elements and resources into a logical virtual network that runs independently on top of a physical network.
Coming up
MQTT
MQTT is a lightweight, publish-subscribe network protocol that transports messages between devices.
Coming up
OPC Unified Architecture (UA)
OPC UA is a machine-to-machine communication protocol for industrial automation from the OPC Foundation.
Coming up
Satellite IoT
Provides connectivity to IoT applications via satellite networks.
Coming up
TSN
Time-Sensitive Networking is a set of standards defined by the IEEE for the time-sensitive transmission of data over deterministic Ethernet networks.
Years out
Li-Fi
Wireless communication technology that uses light to transmit data.
Years out
Open RAN
Open RAN (Open Radio Access Networks or O-RAN) is the disaggregation of RAN functionalities through network virtualization and software-defined network technologies.
Years out
Advanced Physical Layer (APL)
Developing industrial Ethernet standard that seeks to leverage the work of the IEEE 802.3cg (10BASE-T1L) task force to achieve a single twisted-pair industrial Ethernet standard for hazardous areas.
Years out
Secure Access Service Edge (SASE)
SASE is a new security model specifically to address the security challenges of the new reality organizations are facing.
Years out
6G
The sixth generation of cellular networks.
Far on the horizon
What the radar does and does not measure
Technology maturity. The radar shows a subjective measure of maturity as put together by the analyst team at IoT Analytics. The maturity scores are developed based on expert interviews, vendor briefings, secondary research, and conference attendances. The radar targets IoT practitioners that deploy IoT.
The IoT. IoT Analytics defines the IoT as a network of internet-enabled physical objects. Objects that become internet-enabled (IoT devices) typically interact via embedded systems, some form of network communications, and a combination of edge and cloud computing. The data from IoT-connected devices is often (but not exclusively) used to create novel end-user applications. Connected personal computers, tablets, and smartphones are not considered IoT, although these may be part of the solution setup. Devices connected via simple connectivity methods, such as RFID or QR codes, are not considered IoT devices.
Relevance of individual technologies. Not every technology is relevant for a given IoT context. Some technologies may only be used in specific IoT settings (e.g., low-power WAN [LPWAN] for remote, low-power applications), while others are used in settings where IoT only plays a minor role (e.g., cloud computing, which is also used in many non-IoT scenarios). IoT Analytics is aware that many other technologies exist that could be highlighted on such a radar.