Question 66

Which Cloud Dataflow / Beam feature should you use to aggregate data in an unbounded data source every hour based on the time when the data entered the pipeline?
  • Question 67

    Your financial services company is moving to cloud technology and wants to store 50 TB of financial time-
    series data in the cloud. This data is updated frequently and new data will be streaming in all the time.
    Your company also wants to move their existing Apache Hadoop jobs to the cloud to get insights into this
    data. Which product should they use to store the data?
  • Question 68

    Your team is responsible for developing and maintaining ETLs in your company. One of your Dataflow jobs is failing because of some errors in the input data, and you need to improve reliability of the pipeline (incl. being able to reprocess all failing data).
    What should you do?
  • Question 69

    You create an important report for your large team in Google Data Studio 360. The report uses Google
    BigQuery as its data source. You notice that visualizations are not showing data that is less than 1 hour
    old. What should you do?
  • Question 70

    Suppose you have a dataset of images that are each labeled as to whether or not they contain a human face. To create a neural network that recognizes human faces in images using this labeled dataset, what approach would likely be the most effective?