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The productivity opportunities by applying machine learning algorithms in a fab

机译:通过在晶圆厂应用机器学习算法的生产力机会

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Machine learning has become a ubiquitous and essential part of business operations. Amazon uses algorithms to nudge their customers to purchase a product they might like. Given a purchase history for a customer and a large inventory of products, identify those products in which that customer will be interested and likely to purchase. A model of this decision process would allow a computer to make recommendations to a customer and motivate product purchases. Machine learning solves problems that cannot be solved by numerical means alone. These algorithms can not only increase an enterprise's internal efficiency, but machine learning algorithms also be used to deepen consumer loyalty. That is to say, machine learning provides potential solutions in all these domains and more, and is set to be a pillar of our future civilization. Of course, machine learning is also very important in a fab because it could help us solve problems including defects selection, image detection, fabrication scheduling rule, and so on. Machine learning builds heavily on statistics. When we train our machine model to learn, we have to give it a statistically representative sample as training data. If the training set isn't representative, we run the risk of the machine learning patterns that are not complete. Then, if the training set is too small, we won't learn enough and may even reach inaccurate conclusions.
机译:机器学习已成为业务运营的无处不在和重要的部分。亚马逊使用算法轻推他们的客户购买他们可能喜欢的产品。鉴于客户的购买历史和大量产品库存,识别客户将感兴趣和可能购买的产品。该决策过程的模型将允许计算机向客户提出建议并激励产品购买。机器学习解决了单独使用数值手段无法解决的问题。这些算法不仅可以提高企业的内部效率,而且机器学习算法也可用于加深消费者的忠诚度。也就是说,机器学习在所有这些领域都提供了潜在的解决方案,并且被设定为未来文明的支柱。当然,机器学习在FAB中也非常重要,因为它可以帮助我们解决包括缺陷选择,图像检测,制造调度规则等问题的问题。机器学习在很大程度上构建了统计数据。当我们训练我们的机器模型来学习时,我们必须将其提供统计的代表性样本作为培训数据。如果培训集不是代表性,我们会运行不完整的机器学习模式的风险。然后,如果训练集太小,我们将不会足够学习,甚至可能会达到不准确的结论。

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