Learn how easy it is to apply sophisticated statistical and machine
learning methods to real-world problems when you build using Google
Cloud Platform (GCP). This hands-on guide shows data engineers and data
scientists how to implement an end-to-end data pipeline with cloud
native tools on GCP.
Throughout this updated second edition, you'll work through a sample
business decision by employing a variety of data science approaches.
Follow along by building a data pipeline in your own project on GCP, and
discover how to solve data science problems in a transformative and more
collaborative way.
You'll learn how to:
- Employ best practices in building highly scalable data and ML
pipelines on Google Cloud
- Automate and schedule data ingest using Cloud Run
- Create and populate a dashboard in Data Studio
- Build a real-time analytics pipeline using Pub/Sub, Dataflow, and
BigQuery
- Conduct interactive data exploration with BigQuery
- Create a Bayesian model with Spark on Cloud Dataproc
- Forecast time series and do anomaly detection with BigQuery ML
- Aggregate within time windows with Dataflow
- Train explainable machine learning models with Vertex AI
- Operationalize ML with Vertex AI Pipelines