The deep learning chipset market is expected to grow at a CAGR of 24.7% during the forecast period of 2024 to 2032, driven by technological advancements, increased adoption of AI in key industries, and the growing demand for high-performance computing. While challenges related to data security and privacy exist, the market is expected to overcome these obstacles through continuous innovation. The surge of artificial intelligence (AI) has garnered the interest of stakeholders across various industry verticals. AI has made significant progress, from neural networks to the deep learning architectures of today. Recent years have seen a significant increase in the demand for deep learning chipsets across a variety of industrial sectors, including healthcare, aerospace & defense, automotive, and consumer electronics. This trend is anticipated to have a substantial impact on the growth of the deep-learning chipset market over the next few years. The primary factor propelling the adoption of deep learning chipsets is the substantial amounts of data necessary to execute deep learning and machine learning models. Presently, technological progress is facilitating the creation of sophisticated and potent deep-learning chipsets. A variety of consumer electronics, including augmented reality/virtual reality (AR/VR) headgear, smart speakers, smartphones, and a multitude of other devices that necessitate AI processing, are progressively incorporating deep learning chipsets. Several firms engaged in the deep learning chipset industry are concentrating on developing fabrication and deep learning chipset design innovations to facilitate the manufacture of cutting-edge devices. Geographically, North America and the Asia-Pacific region play pivotal roles, each contributing uniquely to the market's dynamics.
Key Market Drivers
Advancements in GPU Technology: The evolution of Graphics Processing Units (GPUs) stands out as a primary driver in the deep learning chipset market. GPU technology has witnessed remarkable advancements, enabling parallel processing capabilities that are well-suited for the complex computations involved in deep learning tasks. As evidenced by the surge in demand for high-performance GPUs across industries, their adoption has become integral to accelerating deep learning algorithms. Notable companies, such as NVIDIA, have consistently demonstrated leadership in GPU innovation, providing powerful solutions that cater to the escalating computational demands of deep learning applications.
Rise of Application-Specific Integrated Circuits (ASICs): The increasing prominence of Application-Specific Integrated Circuits (ASICs) emerges as a pivotal driver shaping the landscape of deep learning chipsets. ASICs, designed for specialized tasks, offer unparalleled efficiency in executing deep learning algorithms, outperforming general-purpose processors. Companies like Google have developed and deployed ASICs, such as the Tensor Processing Unit (TPU), showcasing the transformative impact of deep learning model inference. The trend towards ASICs is driven by the need for optimized, energy-efficient solutions that can handle the intricacies of deep neural networks across diverse applications.
Growing Demand in Industrial and Automotive Sectors: The Industrial and Automotive sectors have emerged as significant drivers of the deep learning chipset market, fueling the demand for high-performance computing solutions. Deep learning chipsets find extensive applications in industrial automation, quality control, and predictive maintenance. In the automotive sector, these chipsets power advanced driver assistance systems (ADAS) and autonomous driving technologies. The increasing integration of deep learning capabilities in manufacturing processes and smart vehicles substantiates the market's growth. Companies like Intel and NVIDIA are actively contributing to the industrial and automotive adoption of deep-learning chipsets through strategic collaborations and product innovations.
Restraint
Challenges in FPGA Integration: Despite the overall growth, the integration of Field Programmable Gate Arrays (FPGAs) poses challenges within the deep learning chipset market. FPGAs offer flexibility but are often associated with higher development costs and complexities. The customization potential of FPGAs is counterbalanced by the need for specialized expertise in their programming and deployment. Companies incorporating FPGAs in their deep learning solutions, such as Xilinx, face hurdles in achieving widespread adoption due to these intricacies. Overcoming the challenges associated with FPGA integration remains a restraint in the market, requiring concerted efforts from industry stakeholders.
Key Market Segmentation Analysis
Market Segmentation By Type
The deep learning chipset market is segmented by type into Graphics Processing Units (GPUs), Central Processing Units (CPUs), Application Specific Integrated Circuits (ASICs), Field Programmable Gate Arrays (FPGAs), and others. In 2023, GPUs emerged as the highest revenue-generating type, driven by their widespread use in various applications such as gaming, data centers, and AI processing. However, the highest Compound Annual Growth Rate (CAGR) during the forecast period from 2024 to 2032 is anticipated for ASICs. The demand for specialized chipsets tailored for specific applications is expected to drive the ASIC market, with companies like Bitmain and Canaan Creative gaining prominence.
Market Segmentation By Compute Capacity
In terms of computing capacity, the deep learning chipset market is categorized into low and high capacity. In 2023, high compute capacity chipsets dominated in terms of revenue, primarily due to their extensive use in complex AI and ML applications requiring substantial processing power. However, the segment with the highest CAGR during the forecast period is low compute capacity chipsets. This growth is attributed to the increasing demand for edge computing and IoT devices, where power-efficient chipsets with lower compute capacities find extensive applications.
Market Segmentation By End User
The market is further segmented by end-users, including consumer electronics, automotive, industrial, healthcare, aerospace & defense, and others. In 2023, the highest revenue was generated from the industrial sector, where deep learning chipsets are utilized for automation, robotics, and quality control applications. Conversely, the highest CAGR during the forecast period is projected for the healthcare sector. The increasing integration of AI in medical imaging, diagnostics, and personalized medicine is driving the demand for deep learning chipsets in the healthcare industry.
North America Remains the Global Leader
Geographically, the deep learning chipset market exhibits diverse trends. In terms of revenue percentage, North America led the market in 2023, driven by the presence of key players, substantial investments in AI research, and the adoption of advanced technologies across industries. However, the Asia-Pacific region is expected to witness the highest CAGR during the forecast period. The rapid industrialization, growing adoption of AI in emerging economies, and government initiatives supporting technological advancements contribute to the region's anticipated growth. Europe, with its focus on research and development, is also expected to play a significant role in shaping the market dynamics.
Market Competition to Intensify during the Forecast Period
In the competitive landscape, key players such as NVIDIA, Intel, AMD, Qualcomm, IBM, Graphcore Ltd, CEVA, Inc., Advanced Micro Devices, Inc., Movidius, Xilinx Inc., TeraDeep Inc., and Alphabet Inc. have established themselves as frontrunners in the deep learning chipset market. These companies employ diverse strategies to maintain their market positions. In 2023, NVIDIA led in terms of revenue, driven by its dominance in the gaming, data center, and automotive sectors. However, during the forecast period from 2024 to 2032, Intel is expected to emerge as a strong contender, leveraging its advancements in CPU and GPU technologies. Intel's strategic focus on AI-driven solutions and its acquisition of AI chipmaker Habana Labs position the company for significant growth. AMD, with its emphasis on providing high-performance GPUs, is also anticipated to experience substantial revenue growth during the forecast period. Qualcomm's foray into AI with its Snapdragon platforms for mobile devices adds another dimension to the competitive landscape, targeting the growing demand for AI processing in smartphones and tablets. IBM, with its expertise in AI and quantum computing, is set to play a pivotal role in the market's evolution. The company's emphasis on developing specialized chipsets for healthcare applications aligns with the sector's anticipated growth. Overall, the competitive trends indicate a dynamic landscape with players strategically positioning themselves to capitalize on the evolving demands of diverse industries.
Historical & Forecast Period
This study report represents analysis of each segment from 2022 to 2032 considering 2023 as the base year. Compounded Annual Growth Rate (CAGR) for each of the respective segments estimated for the forecast period of 2024 to 2032.
The current report comprises of quantitative market estimations for each micro market for every geographical region and qualitative market analysis such as micro and macro environment analysis, market trends, competitive intelligence, segment analysis, porters five force model, top winning strategies, top investment markets, emerging trends and technological analysis, case studies, strategic conclusions and recommendations and other key market insights.
Research Methodology
The complete research study was conducted in three phases, namely: secondary research, primary research, and expert panel review. key data point that enables the estimation of Deep Learning Chipset market are as follows:
Market forecast was performed through proprietary software that analyzes various qualitative and quantitative factors. Growth rate and CAGR were estimated through intensive secondary and primary research. Data triangulation across various data points provides accuracy across various analyzed market segments in the report. Application of both top down and bottom-up approach for validation of market estimation assures logical, methodical and mathematical consistency of the quantitative data.
ATTRIBUTE | DETAILS |
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Research Period | 2022-2032 |
Base Year | 2023 |
Forecast Period | 2024-2032 |
Historical Year | 2022 |
Unit | USD Million |
Segmentation | |
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Compute Capacity
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End User
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Region Segment (2022-2032; US$ Million)
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Key questions answered in this report