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引用次数: 0
摘要
后硅验证是一个关键但具有挑战性的问题,主要是由于半导体价值链日益复杂。现有的技术无法跟上设计复杂性的快速增长。因此,后硅验证正在成为一个昂贵的瓶颈。鲁棒性能调优与补偿过程变化和非理想设计实现的影响有关。我们提出了一种基于深度强化学习和学习优化的新方法。该方法自动学习针对特定电路的灵活调谐策略。此外,它还处理高维调优任务,包括混合数据类型和依赖项,例如,在操作条件上。在这项工作中,我们介绍了Learn to Tune并展示了其在后硅验证中吸引人的特性,例如,更低的计算成本或更快的优化时间,允许比经典方法更有效地适应不断变化的调谐条件。
Learn to Tune: Robust Performance Tuning in Post-Silicon Validation
Post-silicon validation is a crucial yet challenging problem primarily due to the increasing complexity of the semi-conductor value chain. Existing techniques cannot keep up with the rapid increase in the complexity of designs. Therefore, post-silicon validation is becoming an expensive bottleneck. Robust performance tuning is relevant to compensate impacts of process variations and non-ideal design implementations. We propose a novel approach based on Deep Reinforcement Learning and Learn to Optimize. The method automatically learns flexible tuning strategies tailored to specific circuits. Additionally, it addresses high-dimensional tuning tasks, including mixed data types and dependencies, e.g., on operating conditions. In this work, we introduce Learn to Tune and demonstrate its appealing properties in post-silicon validation, e.g., lower computational cost or faster time-to-optimize, allowing a more efficient adaption of the tuning to changing tuning conditions than classical methods.