官术网_书友最值得收藏!

GCP Cloud ML Engine

Google Cloud Platform's Cloud ML Engine is Google's equivalent to AWS SageMaker. As a managed PaaS, Cloud ML handles the training and deployment processes for machine learning algorithms. If you're thinking - what about a basic compute service like EC2 on AWS? GCP has that as well. Compute Engine is GCP's answer to Amazon EC2; it provides basic, scalable cloud compute services. While we could use Compute Engine to setup AI platforms, GCP has made it extremely simple for us to build with Cloud ML Engine and as such, we will note be covering the basic Compute Engine. 

Let's dive into the details. Cloud ML engine allows you to: 

  • Train scikit-learn and TensorFlow models both locally for testing and in the cloud
  • Create retrainable machine learning models that are stored in the cloud
  • Easily deploy trained models to production

Cloud ML jobs are setup through the terminal. We'll work on running these training jobs in the coming chapters as we start to work with various ANN models. 

主站蜘蛛池模板: 乐山市| 德令哈市| 扬中市| 新晃| 大名县| 垣曲县| 滁州市| 五河县| 全南县| 韶关市| 涡阳县| 本溪市| 沂南县| 沈阳市| 盈江县| 郓城县| 盐山县| 安岳县| 新化县| 涞水县| 乐业县| 大化| 扎鲁特旗| 延川县| 手机| 子洲县| 罗城| 凉山| 阿克苏市| 卢湾区| 哈尔滨市| 蕲春县| 平武县| 旬邑县| 裕民县| 洛隆县| 忻城县| 赣州市| 佛冈县| 福清市| 文水县|