ARLGDec 27, 2025

AnalogSAGE: Self-evolving Analog Design Multi-Agents with Stratified Memory and Grounded Experience

arXiv:2512.22435v1h-index: 15Has Code
Originality Highly original
AI Analysis

This addresses the knowledge-intensive and intuition-reliant process of analog circuit design for engineers, representing a strong specific gain rather than an incremental improvement.

The paper tackles the problem of automating analog circuit design by proposing AnalogSAGE, a multi-agent framework that achieves a 10x overall pass rate, 48x Pass@1, and a 4x reduction in parameter search space compared to existing methods.

Analog circuit design remains a knowledge- and experience-intensive process that relies heavily on human intuition for topology generation and device parameter tuning. Existing LLM-based approaches typically depend on prompt-driven netlist generation or predefined topology templates, limiting their ability to satisfy complex specification requirements. We propose AnalogSAGE, an open-source self-evolving multi-agent framework that coordinates three-stage agent explorations through four stratified memory layers, enabling iterative refinement with simulation-grounded feedback. To support reproducibility and generality, we release the source code. Our benchmark spans ten specification-driven operational amplifier design problems of varying difficulty, enabling quantitative and cross-task comparison under identical conditions. Evaluated under the open-source SKY130 PDK with ngspice, AnalogSAGE achieves a 10$\times$ overall pass rate, a 48$\times$ Pass@1, and a 4$\times$ reduction in parameter search space compared with existing frameworks, demonstrating that stratified memory and grounded reasoning substantially enhance the reliability and autonomy of analog design automation in practice.

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