Brain-Inspired Computing for Wafer Map Defect Pattern Classification

P. Genssler, H. Amrouch
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引用次数: 23

Abstract

Brain-Inspired hyperdimensional computing is a quickly emerging alternative machine-learning concept. Hypervectors with thousands of dimensions represent real-world data. Thanks to this redundancy, the system becomes robust against noise in the input data, but also resilient against faults, similar to the human brain. The light-weight operations with hypervectors are fully parallelizable enabling fast learning and inference at the edge. A classifier achieving high accuracies can be created through one-shot learning from few examples. Such a feature is particularly valuable in the area of semiconductor testing, where the number of training samples, especially for cutting-edge technology, is limited. In this work, we explore the applicability of brain-inspired hyperdimensional computing to the field of testing for the first time. With the example of wafer map defect pattern classification, we investigate the challenges and opportunities of this emerging concept.
基于大脑的晶圆图缺陷模式分类计算
受大脑启发的超维计算是一种快速兴起的替代机器学习概念。具有数千维的超向量表示真实世界的数据。由于这种冗余,该系统对输入数据中的噪声具有鲁棒性,而且对故障也具有弹性,类似于人类的大脑。具有超向量的轻量级运算完全可并行化,能够在边缘快速学习和推理。通过从几个例子中一次性学习,可以创建一个具有较高准确率的分类器。这种特性在半导体测试领域特别有价值,因为在半导体测试领域,训练样本的数量是有限的,尤其是对于尖端技术。在这项工作中,我们首次探索了大脑启发的超维计算在测试领域的适用性。以晶圆图缺陷模式分类为例,探讨了这一新兴概念的挑战和机遇。
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