Skip to main content

Data warehousing: What is BigQuery and how do I get started?

Lace Rogers21 December 20203 min read
Data warehousing: What is  BigQuery and how do I get started?

At Measurelab we live and breathe the Google Cloud Platform, so our specialists are experts in Bigquery.  We have decided in this series to share our knowledge and take you through some great techniques to maintain your BigQuery data warehouse.  

So firstly-what is BigQuery?

BigQuery is a fully-managed, serverless data warehouse that enables scalable analysis over petabytes of data.

...and that means?

Simply put, BigQuery is a fantastic cloud-based data warehouse in which you can store huge volumes of data and use SQL (and other tools) to query that data extremely quickly.  It can put your company in control of its own data and tends to be incredibly low cost to manage and process data.

BigQuery is part of the Google Cloud environment, which contains many complementary tools that supports creating a centralised warehouse from multiple data sources and relational datasets.

What is in it for me?

So firstly if you have a Google Analytics 4, 360, or Firebase account you can stream event and hit level daily tables and store them in the BigQuery data warehouse with only a couple of clicks.  However, BigQuery is much more than that and provides many tools that allow you to automate and read in data from many sources so long as the data is structured.  This includes reading in your marketing and CRM data from APIs, CSVs, and even your Google drive, to create a centralised data warehouse for your one point of truth. Imagine how easy it is then to calculate your Return On Advertising Spend (ROAS).

An additional feature of BigQuery is just how scalable it is at a relatively low cost for storage, which means your data warehouse can grow as you do as you're only charged for what you use.  We will talk more about the cost comparisons in a later post.

So, what does the BigQuery  interface look like?

The interface is a one-stop shop to access and maintain your data warehouse as well as perform analysis, autoML and much much more.

How can I access BigQuery?

If you want to set up a new project follow this link to initially set up your console: https://console.cloud.google.com/

You will then need to enable the BigQuery API

Open up your GCP console link and expand the left-hand GCP menu and select the API & Sevices>Dashboard

Search BigQuery API and enable it. Once this is enabled you can then navigate to your shiny new project

And if you wish to practice your BigQuery SQL skills you have a monthly free allowance for 1Tb of code even better you actually get your first 10 GB of storage free each month.  There are also some great public datasets available here link to test your knowledge.

If you have an app with Firebase or a website with GA4, BigQuery has built-in functionality that, once implemented, allows data to be automatically exported into tables for storage and querying... but more on that in a future blog!

At Measurelab we simply love BigQuery and to see how we can help your team leverage your data capability, please reach out to us at Hello@measurelab.co.uk.

Any comments, queries or feedback can be sent to lace@measurelab.co.uk


Suggested content

Measurelab awarded Google Cloud Marketing Analytics Specialisation

At the start of the year, if you’d asked us whether Measurelab would be standing shoulder to shoulder with Europe’s biggest consultancies by September, we would've been surprised. Not because we don't believe in ourselves, but because these things feel so distant - until suddenly, they’re not. So, here it is: we’ve been awarded the Marketing Analytics Services Partner Specialisation in Google Cloud Partner Advantage. What’s the big deal? In Google’s own words (with the obligatory Zs): “Spec

Will Hayes11 Sept 2025

BigQuery AI.GENERATE tutorial: turn SQL queries into AI-powered insights

BigQuery just got a major upgrade, you can now plug directly into Vertex AI using the new AI.GENERATE function. Translation: your analytics data and generative AI are now best friends, and they’re hanging out right inside SQL. That opens up a whole world of new analysis options for GA4 data, but it also raises some questions: * How do you actually set it up? * What’s it good for (and when should you avoid it)? * Why would you batch the query? Let’s walk through it step by step. Step 1: H

Katie Kaczmarek3 Sept 2025

How to start forecasting in BigQuery with zero training

If you’d told me five years ago that I’d be forecasting product demand using a model trained on 100 billion time points… without writing a single line of ML code… I probably would’ve asked how many coffees you’d had that day ☕️ But its a brand new world. And it’s possible. Let me explain What is TimesFM? TimesFM is a new foundation model from Google, built specifically for time-series forecasting. Think of it like GPT for time, instead of predicting the next word in a sentence, it predicts t

Katie Kaczmarek14 Jul 2025