Multiple Choice
You are building a model to predict whether or not it will rain on a given day. You have thousands of input features and want to see if you can improve training speed by removing some features while having a minimum effect on model accuracy. What can you do?
A) Eliminate features that are highly correlated to the output labels.
B) Combine highly co-dependent features into one representative feature.
C) Instead of feeding in each feature individually, average their values in batches of 3.
D) Remove the features that have null values for more than 50% of the training records.
Correct Answer:

Verified
Correct Answer:
Verified
Q225: You currently have a single on-premises Kafka
Q226: You work for a mid-sized enterprise that
Q227: All Google Cloud Bigtable client requests go
Q228: Which software libraries are supported by Cloud
Q229: You are developing a software application using
Q231: Flowlogistic Case Study Company Overview Flowlogistic is
Q232: You work for a global shipping company.
Q233: When creating a new Cloud Dataproc cluster
Q234: You are developing an application that uses
Q235: Suppose you have a table that includes