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Report ID: ICT0020
Pages: 172
Base Year: 2024
Format: PDF
Historical Date: 2019-2023
MARKET SCOPE:
The global Edge and Embedded AI market is projected to grow significantly, registering a CAGR of 21.7% during the forecast period (2024 – 2032).
Edge and Embedded AI refer to the integration of artificial intelligence (AI) capabilities directly into edge devices or embedded systems, rather than relying on centralized cloud-based processing. This approach brings AI computation closer to the data source, enabling real-time analysis and decision-making at or near the point of data generation. Edge devices include a wide range of hardware, such as sensors, cameras, smartphones, IoT devices, and edge servers, while embedded systems are specialized computing systems designed for specific applications. The goal of Edge and Embedded AI is to enhance the efficiency, responsiveness, and autonomy of AI applications by processing data locally. This is particularly advantageous in scenarios where low latency, real-time processing, and bandwidth optimization are critical, such as in autonomous vehicles, industrial automation, healthcare devices, and smart IoT deployments. Applications requiring quick decision-making, such as autonomous vehicles, augmented reality, and industrial automation, demand low latency. Edge and Embedded AI address this demand by processing data locally, reducing the time it takes to analyze and act on information.
MARKET OVERVIEW:
Driver: Increasing strategies for scalability and distributed architecture is driving the market growth
Edge and Embedded AI systems distribute processing tasks across a network of edge devices. This ensures that computing resources are utilized efficiently, preventing bottlenecks and enabling optimal performance even as the number of connected devices or the complexity of tasks increases. Distributed architecture allows Edge and Embedded AI solutions to adapt to dynamic environments. In scenarios where the number of devices or the nature of tasks can change rapidly, the system can scale up or down seamlessly, ensuring continued efficiency and responsiveness. By distributing processing tasks, Edge and Embedded AI reduce the dependency on centralized processing. This is beneficial in environments with limited or intermittent connectivity to cloud servers, ensuring that AI applications can continue functioning independently.
Opportunities: Growing consumer needs for real time processing applications is anticipated for the market growth in the upcoming years.
In autonomous vehicles, split-second decisions are vital for ensuring the safety of passengers and pedestrians. Edge AI processes data from sensors like cameras and LiDAR on-board, allowing the vehicle to quickly interpret and respond to its environment without relying solely on distant cloud processing. Industrial automation relies on precise and rapid control of machinery and processes. Edge AI in manufacturing environments enables real-time monitoring, quality control, and predictive maintenance, contributing to increased efficiency and reduced downtime. AR and VR applications require low latency to deliver a seamless and immersive user experience. Edge AI allows for on-device processing of sensory data, ensuring that augmented or virtual content is rendered quickly and accurately, enhancing the overall user experience. Various IoT devices, from smart home gadgets to industrial sensors, benefit from low-latency processing at the edge. For instance, a smart security camera equipped with Edge AI can analyze video footage locally, triggering alerts or actions in real-time, without the need for constant communication with a centralized server. Healthcare applications, such as wearable devices for monitoring patient health, require quick analysis of physiological data. Edge AI enables these devices to process data locally, allowing for timely detection of anomalies and providing healthcare professionals with real-time insights.
COVID IMPACT:
The need for remote monitoring and telehealth solutions increased during the pandemic. Edge and Embedded AI technologies played a crucial role in developing remote patient monitoring devices, wearable health trackers, and AI-assisted diagnostics, allowing healthcare professionals to remotely monitor patients and make timely decisions. Healthcare facilities faced challenges in maintaining and managing medical equipment. Edge AI applications for predictive maintenance became more crucial in ensuring the availability of critical healthcare infrastructure, helping hospitals proactively address potential equipment failures. The pandemic highlighted the importance of resilient supply chains. Edge and Embedded AI solutions were employed to enhance visibility and efficiency in supply chain operations. These technologies facilitated real-time monitoring, demand forecasting, and optimization of logistics to respond to disruptions caused by the pandemic.
SEGMENTATION ANALYSIS:
Hardware segment is anticipated to grow significantly during the forecast period
Edge computing devices serve as the foundation for Edge and Embedded AI. These devices include edge servers, gateways, and edge computing platforms equipped with processors, memory, and storage to run AI workloads locally. Specialized hardware components, such as System-on-Chip (SoC) solutions and edge processors, are designed to efficiently handle AI computations. These processors often have dedicated accelerators (like GPUs, TPUs, or NPUs) optimized for machine learning workloads. APUs integrate both traditional central processing units (CPUs) and specialized AI accelerators on a single chip. These units provide a balance of general-purpose computing and AI-specific processing capabilities for edge devices.
The Manufacturing segment is anticipated to grow significantly during the forecast period
Edge AI is utilized for predictive maintenance of machinery and equipment on the manufacturing floor. By analyzing real-time data from sensors embedded in machines, AI algorithms can predict potential failures, enabling proactive maintenance and minimizing downtime. Embedded AI systems are deployed for quality control and inspection processes. Vision systems and sensors equipped with AI capabilities can detect defects, anomalies, and deviations in real-time, ensuring high-quality production. Edge AI is employed to optimize manufacturing processes by analyzing data from various sensors and devices. This includes fine-tuning parameters, adjusting production schedules, and optimizing energy consumption to improve overall operational efficiency. Edge AI is integrated into robotic systems for real-time decision-making on the factory floor. This enhances the capabilities of robots for tasks such as material handling, assembly, and even collaborative work with human operators.
REGIONAL ANALYSIS:
The North American region is set to witness significant growth during the forecast period
Edge and Embedded AI refers to the deployment of artificial intelligence (AI) capabilities directly on edge devices or embedded systems, rather than relying on centralized cloud-based processing. This approach brings AI computation closer to the data source, reducing latency, enhancing privacy, and allowing for real-time processing in various applications. In North America, the adoption of Edge and Embedded AI has been growing across multiple industries. North America has seen a significant proliferation of IoT devices, ranging from smart home gadgets to industrial sensors. Edge AI is integrated into these devices to enable local data processing, reducing the need for constant communication with cloud servers. Edge AI plays a crucial role in smart cities initiatives across North America. By embedding AI capabilities in surveillance cameras, traffic management systems, and environmental sensors, cities can analyze data locally and respond in real-time to various situations.
COMPETITIVE ANALYSIS:
The global Edge and Embedded AI market is reasonably competitive with mergers, acquisitions, and Component launches. See some of the major key players in the market.
SCOPE OF THE REPORT:
KEYE REASONS TO PURCHASE THIS REPORT:
** In – depth qualitative analysis will be provided in the final report subject to market
Primary and Secondary Research
In order to understand the market in detail we conduct primary and secondary research. We collect as much information as we can from the market experts through primary research. We contact the experts from both demand and supply side and conduct interviews to understand the actual market scenario. In secondary research, we study and gather the data from various secondary sources such as company annual reports, press releases, whitepapers, paid databases, journals, and many other online sources. With the help of the primary interviews, we validate the data collected from secondary sources and get a deep understanding on the subject matter. Post this our team uses statistical tools to analyses the data to arrive at a conclusion and draft it in presentable manner.
Market Size Estimations
Understanding and presenting the data collected is a crucial task. Market sizing is a critical part of the data analysis and this task is performed by using Top-down and bottom-up approaches. In this process, we place different data points, market information and industry trends at a suitable space. This placement helps us presume the estimated & forecast values for coming few years. We use several mathematical and statistical models to estimate the market sizes of different countries and segments. Each of this is further added up to outline the total market. These approaches are individually done on regional/country and segment level.
Data Triangulation
As we arrive at the total market sizes, the market is again broken down into segments and subsegments. This process is called as data triangulation and is implementable wherever applicable. This step not only helps us conclude the overall market engineering process, but also gives an assurance on accuracy of the data generated. The data is triangulated based on studying the market trends, various growth factors, and aspects of both demand and supply side.