Explore the NYC Citi Bike Trips dataset
Cleaned training data
Training a Model
Evaluate the time series model
Make Predictions using the model
Building Demand Forecasting with BigQuery ML
BigQuery is Google's fully managed, NoOps, low cost analytics database. With BigQuery you can query terabytes and terabytes of data without having any infrastructure to manage, or needing a database administrator.
BigQuery Machine Learning (BQML) is a feature in BigQuery where data analysts can create, train, evaluate, and predict with machine learning models with minimal coding. Watch this video to learn more about BigQuery ML.
In this lab, you will learn how to build a time series model to forecast the demand of multiple products using BigQuery ML. Using the NYC Citi Bike Trips public dataset, learn how to use historical data to forecast demand in the next 30 days. Imagine the bikes are retail items for sale, and the bike stations are stores.
Watch this video to understand some example use cases for demand forecasting.
In this lab, you will learn to perform the following tasks:
Use BigQuery to find public datasets.
Query and explore the public
NYC Citi Bike Tripsdataset.
Create a training and evaluation dataset to be used for batch prediction.
Create a forecasting (time series) model in BQML.
Evaluate the performance of your machine learning model.
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