AI in EDA
Search documents
革新芯片设计范式: 西门子EDA铸就智能基座,全流程AI加持
半导体行业观察· 2025-11-17 01:26
Core Viewpoint - The integration of AI in EDA tools is revolutionizing chip design by enhancing efficiency, quality, and reducing development costs, thereby accelerating time-to-market for products [1][5][13]. Group 1: EDA AI System Features - Siemens EDA emphasizes five key characteristics for its AI tools: verifiability, usability, versatility, robustness, and accuracy, ensuring that AI outputs are reliable and applicable in chip design [2][3]. - The EDA AI System integrates internal data, examples, and customer-authorized data to eliminate data silos and enhance cross-functional collaboration [3][4]. Group 2: AI Applications in Chip Design - The EDA AI System has been deeply integrated into various stages of chip design, including front-end verification, back-end optimization, physical verification, testing, and yield improvement [5]. - Calibre Vision AI significantly accelerates the signoff process by identifying design violations and streamlining the identification and correction of issues, reducing the time required by half [7]. - Solido's IC platform incorporates generative and agent-based AI technologies, simplifying operations in simulation and enhancing productivity across the IC development process [8]. - Questa One redefines IC verification as a self-optimizing intelligent system, reducing manual testing efforts by 10 to 100 times and shortening verification cycles [9]. Group 3: Performance Enhancements - Aprisa AI offers next-generation AI capabilities for design exploration, achieving a 10x increase in design efficiency, a one-third reduction in tape-out cycles, and a 10% optimization in power/performance/area (PPA) metrics [10]. - Tessent employs unsupervised machine learning and statistical diagnostic AI algorithms to enhance yield analysis, quickly identifying root causes of yield loss and accelerating yield improvement for production projects [11].