Machine learning applications in ele...
Ren, Haoxing.

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  • Machine learning applications in electronic design automation
  • Record Type: Electronic resources : Monograph/item
    Title/Author: Machine learning applications in electronic design automation/ edited by Haoxing Ren, Jiang Hu.
    other author: Ren, Haoxing.
    Published: Cham :Springer International Publishing : : 2022.,
    Description: xii, 583 p. :ill., digital ;24 cm.
    [NT 15003449]: Introduction -- Analysis of Digital Design: Routability Optimization for Industrial Designs at Sub-14nm Process Nodes Using Machine Learning -- RouteNet: Routability Prediction for Mixed-size Designs Using Convolutional Neural Network -- High Performance Graph Convolutional networks with Applications in Testability Analysis -- MAVIREC: ML-Aided Vectored IR-Drop Estimation and Classification -- GRANNITE: Graph Neural Network Inference for Transferable Power Estimation -- Machine Learning-Enabled High-Frequency Low-Power Digital Design Implementation at Advanced Process Nodes -- Optimization of Digital Design: Chip Placement with Deep Reinforcement learning -- DREAMPlace: Deep Learning Toolkit-Enabled GPU Acceleration for Modern VLSI Placement -- TreeNet: Deep Point Cloud Embedding for Routing Tree Construction -- Asynchronous Reinforcement Learning Framework for Net Order Exploration in Detailed Routing -- Standard Cell Routing with Reinforcement Learning and Genetic Algorithm in Advanced Technology Nodes -- PrefixRL: Optimization of Parallel Prefix Circuits using Deep Reinforcement Learning -- GAN-CTS: A Generative Adversarial Framework for Clock Tree Prediction and Optimization -- Analysis and Optimization of Analog Design: Machine Learning Techniques in Analog Layout Automation -- Layout Symmetry Annotation for Analog Circuits with Graph Neural Networks -- ParaGraph: Layout parasitics and device parameter prediction using graph neural network -- GCN-RL circuit designer: Transferable transistor sizing with graph neural networks and reinforcement learn -- Parasitic-Aware Analog Circuit Sizing with Graph Neural Networks and Bayesian Optimization -- Logic and Physical Verification: Deep Predictive Coverage Collection/ Dynamically Optimized Test Generation Using Machine Learning -- Novelty-Driven Verification: Using Machine Learning to Identify Novel Stimuli and Close Coverage -- Using Machine Learning Clustering To Find Large Coverage Holes -- GAN-OPC: Mask optimization with lithography-guided generative adversarial nets -- Layout hotspot detection with feature tensor generation and deep biased learning.
    Contained By: Springer Nature eBook
    Subject: Electronic circuit design - Automation. -
    Online resource: https://doi.org/10.1007/978-3-031-13074-8
    ISBN: 9783031130748
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