Hands-On-Explainable-AI-XAI-with-Python:Packt发行的可解释的AI与Python

上传者: 42116672 | 上传时间: 2022-10-05 11:05:33 | 文件大小: 15.61MB | 文件类型: ZIP
使用Python的动手可解释AI(XAI) 这是发行的的代码存储库。 它包含从头到尾完成本书所必需的所有支持项目文件。 平装:454页 书号ISBN-13 :9781800208131 出版日期:2020年7月31日 链接 关于这本书 有效地将AI见解转化为业务涉众需要仔细的计划,设计和可视化选择。 描述问题,模型以及变量之间的关系及其发现通常是微妙的,令人惊讶的以及技术上复杂的。 带有Python的动手可解释AI(XAI)将使您能够处理特定的动手机器学习Python项目,这些项目的策略性安排可以增强您对AI结果分析的掌握。 分析包括构建模型,使用可视化解释结果以及集成可理解的AI报告工具和不同的应用程序。 您将在Python,TensorFlow 2,Google Cloud的XAI平台,Google Colaboratory和其他框架中构建XAI解决方案,从而打开机器学习模型

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