Exploratory Data Analysis Using Google Cloud Datalab
In this lab you will learn the process of analyzing a data set stored in Google BigQuery using Google Cloud Datalab to perform queries and present the data using various statistical plotting techniques. The analysis will help you discover patterns in the data that will allow you to predict probable arrival time delays given the initial flight details and actual departure time.
Cloud Datalab is a powerful interactive tool created to explore, analyze, transform and visualize data and build machine learning models on Google Cloud Platform. It runs on Google Compute Engine and connects to multiple cloud services easily so you can focus on your data science tasks.
Google BigQuery is a RESTful web service that enables interactive analysis of massively large datasets working in conjunction with Google Storage.
The data set that is used provides historic information about internal flights in the United States retrieved from the US Bureau of Transport Statistics website. This data set can be used to demonstrate a wide range of data science concepts and techniques and will be used in all of the other labs in the Data Science on Google Cloud Platform Quest.
Join Qwiklabs to read the rest of this lab...and more!
- Get temporary access to the Google Cloud Console.
- Over 200 labs from beginner to advanced levels.
- Bite-sized so you can learn at your own pace.
Create a new Google Cloud Datalab instance.
Create a notebook into Cloud Datalab and Confirm that dataset named 'flights' exists.