Core Insights - The report titled "2025 National AI Chip Industry White Paper" outlines the current status, innovation paths, industrial landscape, and core applications of domestic AI chips, emphasizing their strategic significance as the computational foundation of the AI industry while highlighting multiple challenges and breakthrough directions faced by the industry [1]. Group 1: Current Development and Challenges - Domestic AI chip development is crucial for ensuring supply chain autonomy and competing for the next generation of computing dominance, transitioning from "technological breakthroughs" to "ecological rise" [1]. - The industry faces three core challenges: insufficient architectural leadership, shortcomings in the ecosystem (software stack, development tools, and model compatibility), and obstacles in scaling from laboratory performance to industrial-grade reliability [1][2]. Group 2: Innovation Directions - Domestic AI chips are making strides in multiple architectural fields, focusing on x86, Arm, RISC-V, GPU, and DSA dedicated accelerators, while also targeting breakthroughs in sparse computing, FP8 precision optimization, memory-compute integration, and Chiplet heterogeneous integration [1]. - Companies like MoXing AI, Huawei, and Cambricon have accumulated technology in sparse computing, while companies like Moore Threads have achieved mass production of FP8 computing power [1][2]. Group 3: Industrial Landscape and Key Applications - The industry exhibits a collaborative development trend across various fields, with CPU, AI SoC, cloud/edge/vehicle AI chips, and GPU companies each having unique characteristics, primarily concentrated in key regions such as Shanghai, Beijing, and Guangdong [2]. - Core application scenarios are accelerating, with intelligent computing expected to reach 725.3 EFLOPS by 2024, and companies like Huawei and Moore Threads deploying large-scale clusters [2]. Group 4: Future Focus Areas - Future domestic AI chips should concentrate on full-stack closure and open collaboration, enhancing autonomous solutions in intelligent computing, breaking through dedicated computing architectures in automotive electronics, and prioritizing real-time collaborative architectures in robotics [2]. - The goal is to achieve a transition from "usable" to "user-friendly" through technological innovation, ecosystem improvement, and deepening application scenarios, thereby promoting high-quality industrial development [2].
2025年度国产AI芯片产业白皮书-与非网
Sou Hu Cai Jing·2025-10-21 08:05