Home Technology peripherals AI IDC predicts that global artificial intelligence spending will reach $450 billion in 2022

IDC predicts that global artificial intelligence spending will reach $450 billion in 2022

Apr 27, 2023 am 09:55 AM
AI automation digital transformation

A new report from International Data Corporation (IDC) predicts that the global market for artificial intelligence solutions will be worth nearly $450 billion in 2022 and will continue to grow over the next five years.

IDC: 全球2022年人工智能支出将达到4500亿美元

According to IDC's "Global Semi-Annual Artificial Intelligence Tracking Report", global revenue from artificial intelligence software, hardware and services totaled US$383.3 billion in 2021 , an increase of 20.7% over 2020.

In the entire artificial intelligence (AI) market, the largest field is artificial intelligence software, including artificial intelligence application delivery and deployment, artificial intelligence applications, artificial intelligence system infrastructure software, artificial intelligence platform, etc. 4 fields. In 2021, the combined market value of these categories will exceed US$340 billion, of which artificial intelligence applications account for nearly half. The annual growth rate of AI platforms is 36.6%.

IDC stated that competition in the artificial intelligence application market is still very fierce, with nearly 300 companies competing in this field. In the AI ​​application category, the largest players are customer relationship management applications (CRM) and AI enterprise resource management applications (ERM), each accounting for about 16% of the total category.

Artificial intelligence-centered applications, which IDC defines as applications for which artificial intelligence technology is critical to their functionality, accounted for 12.9% of the market share in 2021, a year-on-year increase of 29.3%. The rest of the market is occupied by AI non-centric applications, or where AI technology is part of some workflow of the application, but if these technologies are removed, the application can still run.

Another area showing growth is the artificial intelligence service market, whose total value increased by 22.4% year-on-year. IDC reported that the AI ​​IT services category grew 21.9% year-over-year to $18.8 billion due to customer demand for production-grade AI solutions. Additionally, increased demand for AI governance, business process, and talent strategy solutions is driving the AI ​​business services category to grow at an annual rate of 24.2%.

The smallest but fastest-growing segment of the artificial intelligence market is artificial intelligence hardware. IDC said that the growth of AI hardware is driven by building specialized AI systems that can meet the growing computing and storage needs of AI models and data sets. AI servers and AI storage grew by 39.1% and 32.9% respectively, with server purchases reaching US$15.6 billion.

Rasmus Andsbjerg, vice president of data and analytics at IDC, said: “Across all industries and functions, end-user organizations are discovering the benefits of AI technology as increasingly powerful AI solutions Better decision-making and higher productivity are being achieved. The reality is that AI provides solutions to everything we face today. AI can be a source of rapid digital transformation journey, at a time of staggering inflation rates This can save costs and support automation in the face of labor shortages.”​

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