arrow_back

Weather Data in BigQuery

Sprawdź swoją wiedzę i podziel się nią ze społecznością.
done
Zyskaj dostęp do ponad 700 praktycznych modułów oraz odznak umiejętności i szkoleń

Weather Data in BigQuery

Moduł 45 godz. universal_currency_alt Bezpłatnie show_chart Wprowadzające
info Ten moduł może zawierać narzędzia AI, które ułatwią Ci naukę.
Sprawdź swoją wiedzę i podziel się nią ze społecznością.
done
Zyskaj dostęp do ponad 700 praktycznych modułów oraz odznak umiejętności i szkoleń

GSP009

Google Cloud self-paced labs logo

Overview

In this lab you will analyze historical weather observations from NOAA using BigQuery, then use the weather data in conjunction with citizen complaints to 311 in New York City - very similar to Reto Meier's blog post that demonstrates how data variables can correlate to each other.

You will try out several aspects of Google Cloud that are of great benefit to scientists:

  1. Serverless. No need to download data to your machine in order to work with it - the dataset will remain on the cloud.
  2. Ease of use. Run ad-hoc SQL queries on your dataset without having to prepare the data, like indexes, beforehand.
  3. Scale. Carry out data exploration on extremely large datasets interactively. You don't need to sample the data in order to work with it in a timely manner.
  4. Shareability. Run queries on data from different datasets without any issues. BigQuery is a convenient way to share datasets. Of course, you can also keep your data private, or share them only with specific persons -- not all data need to be public.

The end-result is that you will find what types of citizen complaints are correlated to weather. For example, you will find (not surprisingly) that complaints about residential furnaces are most common when it is cold outside.

Scatter plot of Daily 311 Calls Regarding Heat versus mean Daily Temperature

What you'll learn

In this lab, you'll:

  • Carry out interactive queries on the BigQuery console.
  • Combine and run analytics on multiple datasets.
  • Use the CORR function to determin positive, negative, or no correlation between datasets.

Prerequisites

This is a introductory level lab and assumes some experience with BigQuery and SQL. If you have never worked with BigQuery or MySQL, the BigQuery: Qwik Start - Console lab can get you up to speed with these Google Cloud services.

Setup and requirements

Before you click the Start Lab button

Read these instructions. Labs are timed and you cannot pause them. The timer, which starts when you click Start Lab, shows how long Google Cloud resources will be made available to you.

This hands-on lab lets you do the lab activities yourself in a real cloud environment, not in a simulation or demo environment. It does so by giving you new, temporary credentials that you use to sign in and access Google Cloud for the duration of the lab.

To complete this lab, you need:

  • Access to a standard internet browser (Chrome browser recommended).
Note: Use an Incognito or private browser window to run this lab. This prevents any conflicts between your personal account and the Student account, which may cause extra charges incurred to your personal account.
  • Time to complete the lab---remember, once you start, you cannot pause a lab.
Note: If you already have your own personal Google Cloud account or project, do not use it for this lab to avoid extra charges to your account.

How to start your lab and sign in to the Google Cloud console

  1. Click the Start Lab button. If you need to pay for the lab, a pop-up opens for you to select your payment method. On the left is the Lab Details panel with the following:

    • The Open Google Cloud console button
    • Time remaining
    • The temporary credentials that you must use for this lab
    • Other information, if needed, to step through this lab
  2. Click Open Google Cloud console (or right-click and select Open Link in Incognito Window if you are running the Chrome browser).

    The lab spins up resources, and then opens another tab that shows the Sign in page.

    Tip: Arrange the tabs in separate windows, side-by-side.

    Note: If you see the Choose an account dialog, click Use Another Account.
  3. If necessary, copy the Username below and paste it into the Sign in dialog.

    {{{user_0.username | "Username"}}}

    You can also find the Username in the Lab Details panel.

  4. Click Next.

  5. Copy the Password below and paste it into the Welcome dialog.

    {{{user_0.password | "Password"}}}

    You can also find the Password in the Lab Details panel.

  6. Click Next.

    Important: You must use the credentials the lab provides you. Do not use your Google Cloud account credentials. Note: Using your own Google Cloud account for this lab may incur extra charges.
  7. Click through the subsequent pages:

    • Accept the terms and conditions.
    • Do not add recovery options or two-factor authentication (because this is a temporary account).
    • Do not sign up for free trials.

After a few moments, the Google Cloud console opens in this tab.

Note: To view a menu with a list of Google Cloud products and services, click the Navigation menu at the top-left. Navigation menu icon

Task 1. Explore weather data

Open the BigQuery console

  1. In the Google Cloud Console, select Navigation menu > BigQuery.

The Welcome to BigQuery in the Cloud Console message box opens. This message box provides a link to the quickstart guide and the release notes.

  1. Click Done.

The BigQuery console opens.

  1. In the Explorer pane, click + ADD.

The Add data window opens.

  1. Click Star a project by name under Additional sources.

  2. Enter bigquery-public-data and click STAR.

In the BigQuery console you see two projects in the Explorer pane, one named your lab project ID, and one named bigquery-public-data.

  1. In the Explorer pane of the BigQuery console, expand bigquery-public-data dataset. In the Type to search field search for noaa_gsod and select the gsod2014 table.

  2. In the Table (gsod2014) window, click the Preview tab.

Preview tabbed page

  1. Examine the columns and some of the data values.

  2. Click Query > In new tab then paste the following query:

SELECT -- Create a timestamp from the date components. stn, TIMESTAMP(CONCAT(year,"-",mo,"-",da)) AS timestamp, -- Replace numerical null values with actual null AVG(IF (temp=9999.9, null, temp)) AS temperature, AVG(IF (wdsp="999.9", null, CAST(wdsp AS Float64))) AS wind_speed, AVG(IF (prcp=99.99, 0, prcp)) AS precipitation FROM `bigquery-public-data.noaa_gsod.gsod20*` WHERE CAST(YEAR AS INT64) > 2010 AND CAST(MO AS INT64) = 6 AND CAST(DA AS INT64) = 12 AND (stn="725030" OR -- La Guardia stn="744860") -- JFK GROUP BY stn, timestamp ORDER BY timestamp DESC, stn ASC
  1. Click RUN. Look at the result and try to determine what this query does.

Click Check my progress below to verify you're on track in this lab.

Explore weather data

Task 2. Explore New York citizen complaints data

  1. In the Explorer pane of the BigQuery Console, select the newly added bigquery-public-data project, in the Type to search field search for the new_york_311 dataset, then select 311_service_requests table.

  2. Then click on the Preview tab. Your console should resemble the following:

311_service_requests Preview tabbed page

  1. Examine the columns and some of the data values.

  2. If the editor has been closed, click "+" (Create SQL query) icon.

  3. Paste the following into the query EDITOR:

SELECT EXTRACT(YEAR FROM created_date) AS year, complaint_type, COUNT(1) AS num_complaints FROM `bigquery-public-data.new_york.311_service_requests` GROUP BY year, complaint_type ORDER BY num_complaints DESC
  1. Click RUN.

  2. Look at the results to determine what the most common complaints are. You will try to determine if these complaints correlate to weather in a later part of this lab.

Click Check my progress below to verify you're on track in this lab.

Explore New York citizen complaints data

Task 3. Saving a new table of weather data

  1. In the Explorer pane of the BigQuery Console, click on the three dots next to your Project ID and then select Create dataset.

  2. In the Create dataset dialog, set the Dataset ID to demos and leave the other options at their default values.

  3. Click Create dataset. Your project now has a dataset named demos.

  4. Click "+" (Create SQL query) icon and then run the following query:

SELECT -- Create a timestamp from the date components. timestamp(concat(year,"-",mo,"-",da)) as timestamp, -- Replace numerical null values with actual nulls AVG(IF (temp=9999.9, null, temp)) AS temperature, AVG(IF (visib=999.9, null, visib)) AS visibility, AVG(IF (wdsp="999.9", null, CAST(wdsp AS Float64))) AS wind_speed, AVG(IF (gust=999.9, null, gust)) AS wind_gust, AVG(IF (prcp=99.99, null, prcp)) AS precipitation, AVG(IF (sndp=999.9, null, sndp)) AS snow_depth FROM `bigquery-public-data.noaa_gsod.gsod20*` WHERE CAST(YEAR AS INT64) > 2008 AND (stn="725030" OR -- La Guardia stn="744860") -- JFK GROUP BY timestamp
  1. In the query EDITOR section, click More > Query settings.

  2. In the Query settings dialog, set the following fields. Leave all others at their default value.

Destination: select Set a destination table for query results

Dataset: Type demos and select your dataset.

Table Id: Type nyc_weather

Results size: check Allow large results (no size limit)

  1. Click SAVE

  2. Click RUN.

The results are now saved in the dataset you created (demos).

  1. Navigate back to More > Query settings and, in the Destination option select Save query results in a temporary table. This removes the demos dataset as a destination for future queries.

  2. Click SAVE to close the query settings.

Click Check my progress below to verify you're on track in this lab.

Saving a new table of weather data

Task 4. Finding correlation between datasets

Strong correlation, as measured by the CORR function, indicates a close and consistent relationship between two variables. As the value of one variable increases, the value of the other variable also tends to increase (positive correlation) or decrease (negative correlation) in a predictable way. Strong correlation is generally considered to be a value greater than or equal to 0.7, in absolute terms. This means that the changes in one variable can explain at least 49% of the changes in the other variable.

Next you will compare the number of complaints received and daily temperature using the CORR function.

  1. Create SQL query, "+", and run the following query:
SELECT descriptor, sum(complaint_count) as total_complaint_count, count(temperature) as data_count, ROUND(corr(temperature, avg_count),3) AS corr_count, ROUND(corr(temperature, avg_pct_count),3) AS corr_pct From ( SELECT avg(pct_count) as avg_pct_count, avg(day_count) as avg_count, sum(day_count) as complaint_count, descriptor, temperature FROM ( SELECT DATE(timestamp) AS date, temperature FROM demos.nyc_weather) a JOIN ( SELECT x.date, descriptor, day_count, day_count / all_calls_count as pct_count FROM (SELECT DATE(created_date) AS date, concat(complaint_type, ": ", descriptor) as descriptor, COUNT(*) AS day_count FROM `bigquery-public-data.new_york.311_service_requests` GROUP BY date, descriptor)x JOIN ( SELECT DATE(timestamp) AS date, COUNT(*) AS all_calls_count FROM `demos.nyc_weather` GROUP BY date )y ON x.date=y.date )b ON a.date = b.date GROUP BY descriptor, temperature ) GROUP BY descriptor HAVING total_complaint_count > 5000 AND ABS(corr_pct) > 0.5 AND data_count > 5 ORDER BY ABS(corr_pct) DESC

The results indicate that Heating complaints are negatively correlated with temperature (i.e., more heating calls on cold days) and calls about dead trees are positively correlated with temperature (i.e., more calls on hot days).

Next, compare the number of complaints and wind speed with the CORR function.

  1. Click "+" (Create SQL query) icon and run the following query:
SELECT descriptor, sum(complaint_count) as total_complaint_count, count(wind_speed) as data_count, ROUND(corr(wind_speed, avg_count),3) AS corr_count, ROUND(corr(wind_speed, avg_pct_count),3) AS corr_pct From ( SELECT avg(pct_count) as avg_pct_count, avg(day_count) as avg_count, sum(day_count) as complaint_count, descriptor, wind_speed FROM ( SELECT DATE(timestamp) AS date, wind_speed FROM demos.nyc_weather) a JOIN ( SELECT x.date, descriptor, day_count, day_count / all_calls_count as pct_count FROM (SELECT DATE(created_date) AS date, concat(complaint_type, ": ", descriptor) as descriptor, COUNT(*) AS day_count FROM `bigquery-public-data.new_york.311_service_requests` GROUP BY date, descriptor)x JOIN ( SELECT DATE(timestamp) AS date, COUNT(*) AS all_calls_count FROM `demos.nyc_weather` GROUP BY date )y ON x.date=y.date )b ON a.date = b.date GROUP BY descriptor, wind_speed ) GROUP BY descriptor HAVING total_complaint_count > 5000 AND ABS(corr_pct) > 0.5 AND data_count > 5 ORDER BY ABS(corr_pct) DESC
  1. Notice that the Corr columns are both negative for noise related complaints — Do you have a hypothesis for why noise complaints reduce on windy days? Are the coefficients statistically sufficient?

Click Check my progress below to verify you're on track in this lab.

Find correlation between weather and complaints

Congratulations!

In this lab you were able to query the data without setting up any clusters, creating any indexes, etc. You were also able to mash up the two datasets and correlate the results, which gave you some interesting insights.

Finish your quest

This self-paced lab is part of the Scientific Data Processing quest. A quest is a series of related labs that form a learning path. Completing this quest earns you the badge above, to recognize your achievement. You can make your badge (or badges) public and link to them in your online resume or social media account. Enroll in this quest and get immediate completion credit if you've taken this lab. See other available quests.

Take your next lab

Continue your quest with Distributed Image Processing in Cloud Dataproc, or try one of these:

Next steps / Learn more

Google Cloud training and certification

...helps you make the most of Google Cloud technologies. Our classes include technical skills and best practices to help you get up to speed quickly and continue your learning journey. We offer fundamental to advanced level training, with on-demand, live, and virtual options to suit your busy schedule. Certifications help you validate and prove your skill and expertise in Google Cloud technologies.

Manual Last Updated February 6, 2024

Lab Last Tested February 6, 2024

Copyright 2024 Google LLC All rights reserved. Google and the Google logo are trademarks of Google LLC. All other company and product names may be trademarks of the respective companies with which they are associated.

Ta treść jest obecnie niedostępna

Kiedy dostępność się zmieni, wyślemy Ci e-maila z powiadomieniem

Świetnie

Kiedy dostępność się zmieni, skontaktujemy się z Tobą e-mailem