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    Data Science on the Google Cloud Platform : Implementing End-to-End Real-Time Data Pipelines

    Posted By: readerXXI
    Data Science on the Google Cloud Platform : Implementing End-to-End Real-Time Data Pipelines

    Data Science on the Google Cloud Platform : Implementing
    End-to-End Real-Time Data Pipelines: From Ingest to Machine Learning

    by Valliappa Lakshmanan
    English | 2018 | ISBN: 1491974567 | 408 Pages | True PDF | 16 MB

    Learn how easy it is to apply sophisticated statistical and machine learning methods to real-world problems when you build on top of the Google Cloud Platform (GCP). This hands-on guide shows developers entering the data science field how to implement an end-to-end data pipeline, using statistical and machine learning methods and tools on GCP. Through the course of the book, you’ll work through a sample business decision by employing a variety of data science approaches.

    Follow along by implementing these statistical and machine learning solutions in your own project on GCP, and discover how this platform provides a transformative and more collaborative way of doing data science.

    You’ll learn how to:

    - Automate and schedule data ingest, using an App Engine application
    - Create and populate a dashboard in Google Data Studio
    - Build a real-time analysis pipeline to carry out streaming analytics
    - Conduct interactive data exploration with Google BigQuery
    - Create a Bayesian model on a Cloud Dataproc cluster
    - Build a logistic regression machine-learning model with Spark
    - Compute time-aggregate features with a Cloud Dataflow pipeline
    - Create a high-performing prediction model with TensorFlow
    - Use your deployed model as a microservice you can access from both batch and real-time pipelines