Core Viewpoint - Barclays indicates that by 2025, the AI industry will have sufficient computing power to support between 1.5 billion and 22 billion AI agents, highlighting a significant market opportunity for AI agent deployment [2][3][9]. Group 1: AI Computing Power - Barclays believes that existing AI computing power is adequate for large-scale deployment of AI agents, based on three main points: the industry reasoning capacity foundation, the ability to support a large number of users, and the need for efficient models [4][8]. - By 2025, approximately 15.7 million AI accelerators (GPUs/TPUs/ASICs) will be online, with 40% (about 6.3 million) dedicated to inference, and half of that (3.1 million) specifically for agent/chatbot services [4][5]. - The current computing power can support between 1.5 billion and 22 billion AI agents, sufficient to meet the needs of over 100 million white-collar workers in the US and EU, as well as more than 1 billion enterprise software licenses [4][6]. Group 2: Cost Efficiency and Open Source Models - Low inference costs and the adoption of open-source models are critical for the profitability of AI agent products, driving demand for more efficient AI models and computing power [10][11]. - The application of more efficient models, such as DeepSeek R1, can increase industry capacity by 15 times compared to more expensive models like OpenAI's [6][10]. Group 3: Inference Cost Challenges - The inference cost of AI agents is becoming a central consideration for industry development, with agent products generating approximately 10,000 tokens per query, significantly higher than traditional chatbots [15][18]. - The annual subscription cost for agent products based on OpenAI's model can reach $2,400, while those based on DeepSeek R1 can be as low as $88, providing 15 times the user capacity [15][18]. - The emergence of "super agents" by OpenAI, which consume more tokens, may face limitations in large-scale application due to high inference costs [19].
华尔街这是“约好了一起唱空”?巴克莱:现有AI算力似乎足以满足需求