AI on EDGE Semiconductor Market Growth Analysis, Market Dynamics, Key Players and Innovations, Outlook and Forecast 2024

The global AI on EDGE Semiconductor market demonstrated substantial growth, reaching a valuation of US$ 2,718 million in 2023. Projections indicate a further surge, with an anticipated value of US$ 8,130 million by 2030, reflecting a commendable CAGR of 16.54% during the forecast period fr

The global AI on EDGE Semiconductor market demonstrated substantial growth, reaching a valuation of US$ 2,718 million in 2023. Projections indicate a further surge, with an anticipated value of US$ 8,130 million by 2030, reflecting a commendable CAGR of 16.54% during the forecast period from 2024 to 2030.

Key Market Dynamics

 

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CAGR and Growth Trajectory:

 

 

  • The forecasted CAGR of 16.54% underscores the steady and robust growth expected in the AI on EDGE Semiconductor market.
  • Continuous advancements in AI technologies and increasing applications contribute to this upward trajectory.

Market Valuation:

 

  • From US$ 2,718 million in 2023, the market is poised to reach US$ 8,130 million by 2030, highlighting a significant expansion over the forecast period.

Major Global Manufacturers and Market Concentration

 

Leading Manufacturers:

 

  • NVIDIA, Intel, AMD Xilinx, Google, Qualcomm: These companies are prominent global manufacturers of AI on EDGE Semiconductor.
  • Other Notable Players: NXP, ST, TI, Kneron, Inc., Hailo, and more contribute to the competitive landscape.

Market Share Distribution:

 

  • In 2023, the top five vendors, including NVIDIA and Intel, collectively accounted for approximately 54% of the market's revenue.
  • This concentration emphasizes the influential role played by a handful of major players in driving market trends and innovation.

Growth Drivers and Technological Advancements

 

Increasing AI Applications:

 

  • Expanding use cases of AI in various industries propel the demand for EDGE Semiconductor solutions.
  • Integration of AI at the edge enhances processing capabilities and efficiency.

Rapid Technological Evolution:

 

  • Ongoing advancements in semiconductor technology, led by key manufacturers, drive the evolution of AI on EDGE solutions.
  • Innovation in chip architecture and design contributes to enhanced performance.

Market Trends and Future Outlook

 

Emergence of AI at the Edge:

 

  • Growing adoption of AI at the edge for real-time processing and decision-making in IoT devices and applications.
  • Edge computing gaining prominence for its role in minimizing latency and improving overall system efficiency.

Strategic Partnerships and Collaborations:

 

  • Manufacturers likely to engage in partnerships and collaborations to leverage each other's strengths in AI on EDGE development.
  • Joint ventures for research and development to stay competitive and address evolving market demands.

 

This report aims to provide a comprehensive presentation of the global market for AI on EDGE Semiconductor, with both quantitative and qualitative analysis, to help readers develop business/growth strategies, assess the market competitive situation, analyze their position in the current marketplace, and make informed business decisions regarding AI on EDGE Semiconductor.

 

The AI on EDGE Semiconductor market size, estimations, and forecasts are provided in terms of output/shipments (K Units) and revenue ($ millions), considering 2023 as the base year, with history and forecast data for the period from 2019 to 2030. This report segments the global AI on EDGE Semiconductor market comprehensively. Regional market sizes, concerning products by Type, by Application, and by players, are also provided.

 

For a more in-depth understanding of the market, the report provides profiles of the competitive landscape, key competitors, and their respective market ranks. The report also discusses technological trends and new product developments.

 

The report will help the AI on EDGE Semiconductor manufacturers, new entrants, and industry chain related companies in this market with information on the revenues, production, and average price for the overall market and the sub-segments across the different segments, by company, by Type, by Application, and by regions.

Market Segmentation

By Company

 

  • NVIDIA
  • Intel
  • AMD Xilinx
  • Google
  • Qualcomm
  • NXP
  • ST
  • TI
  • Kneron, Inc.
  • Hailo
  • Ambarella
  • Hisilicon
  • Cambricon
  • Horizon Robotics
  • Black Sesame Technologies
  • Corerain

by Type

 

  • Audio and Sound Processing
  • Machine Vision
  • Sensor Data Analysis
  • Others

by Application

 

  • Automotive
  • Robotics
  • Smart Manufacturing
  • Smart City
  • Security Surveillance
  • Others

Production by Region

 

  • North America
  • Europe
  • China
  • Japan
  • South Korea
  • China Taiwan

Consumption by Region

 

  • North America
    • U.S.
    • Canada

 

  • Asia-Pacific
    • China
    • Japan
    • South Korea
    • Southeast Asia
    • India

 

  • Europe
    • Germany
    • France
    • U.K.
    • Italy
    • Russia
    • Rest of Europe

 

  • Latin America, Middle East Africa
    • Mexico
    • Brazil
    • Turkey
    • Israel
    • GCC Countries

key trends in the AI on edge semiconductor market:

 

Specialized edge AI chips with tiny form factors optimized for on-device inferencing rather than training massive neural networks. They focus on efficiency, low latency and affordability.

Increasing adoption of purpose built edge AI accelerators rather than repurposing GPUs or FPGAs - offering tighter integration with sensors and optimized for scalability across use cases.

Spread of edge AI across consumer devices like smartphones, home electronics as well as industrial systems like retail kiosks, manufacturing machinery and automotive.

Evolution of edge AI chip architectures from fixed-function to flexible, programmable designs along with rise of embedded board solutions.

Advancements in chip manufacturing - movement to lower nanometer processes, shift towards package-on-package integration and advances in 3D stacking.

Developments in AI model optimization techniques like pruning, quantization, code generation etc to compress neural networks allowing deployment on tiny edge SoCs.

Emergence of full-stack edge AI solutions consisting of hardware, software tools and pre-trained AI models from semiconductor vendors and startups.

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