Applying BQML's Classification, Regression, and Demand Forecasting for Retail Applications

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In this quest you will learn how to use several BQML features to improve retail use cases. Predict the demand for bike rentals in NYC with demand forecasting, leverage regression to estimate the time it will take for a ticket to be solved with the help of an automated agent developed using Dialogflow, and see how to use BQML for a classification task that predicts the likelihood of a website visitor making a purchase.

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  • Lab

    Introduction to SQL for BigQuery and Cloud SQL

    In this lab you will learn fundamental SQL clauses and will get hands on practice running structured queries on BigQuery and Cloud SQL.

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    Implement a Helpdesk Chatbot with Dialogflow & BigQuery ML

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    In this lab you will build a time series model to forcast demand of multiple products using BigQuery ML. This lab is based on a blog post and featured in an episode of Cloud OnAir.

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  • Lab

    Predict Taxi Fare with a BigQuery ML Forecasting Model

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