aster.cloud aster.cloud
  • /
  • Platforms
    • Public Cloud
    • On-Premise
    • Hybrid Cloud
    • Data
  • Architecture
    • Design
    • Solutions
    • Enterprise
  • Engineering
    • Automation
    • Software Engineering
    • Project Management
    • DevOps
  • Programming
    • Learning
  • Tools
  • About
  • /
  • Platforms
    • Public Cloud
    • On-Premise
    • Hybrid Cloud
    • Data
  • Architecture
    • Design
    • Solutions
    • Enterprise
  • Engineering
    • Automation
    • Software Engineering
    • Project Management
    • DevOps
  • Programming
    • Learning
  • Tools
  • About
aster.cloud aster.cloud
  • /
  • Platforms
    • Public Cloud
    • On-Premise
    • Hybrid Cloud
    • Data
  • Architecture
    • Design
    • Solutions
    • Enterprise
  • Engineering
    • Automation
    • Software Engineering
    • Project Management
    • DevOps
  • Programming
    • Learning
  • Tools
  • About
  • Data
  • Engineering
  • Tools

Understand And Optimize Your BigQuery Analytics Queries Using The Query Execution Graph

  • aster.cloud
  • January 17, 2023
  • 2 minute read

BigQuery offers strong query performance, but it is also a complex distributed system with many internal and external factors that can affect query speed. When your queries are running slower than expected or are slower than prior runs, understanding what happened can be a challenge.

The query execution graph provides an intuitive interface for inspecting query execution details. By using it, you can review the query plan information in graphical format for any query, whether running or completed.You can also use the query execution graph to get performance insights for queries. Performance insights provide best-effort suggestions to help you improve query performance. Since query performance is multi-faceted, performance insights might only provide a partial picture of the overall query performance.


Partner with aster.cloud
for your next big idea.
Let us know here.



From our partners:

CITI.IO :: Business. Institutions. Society. Global Political Economy.
CYBERPOGO.COM :: For the Arts, Sciences, and Technology.
DADAHACKS.COM :: Parenting For The Rest Of Us.
ZEDISTA.COM :: Entertainment. Sports. Culture. Escape.
TAKUMAKU.COM :: For The Hearth And Home.
ASTER.CLOUD :: From The Cloud And Beyond.
LIWAIWAI.COM :: Intelligence, Inside and Outside.
GLOBALCLOUDPLATFORMS.COM :: For The World's Computing Needs.
FIREGULAMAN.COM :: For The Fire In The Belly Of The Coder.
ASTERCASTER.COM :: Supra Astra. Beyond The Stars.
BARTDAY.COM :: Prosperity For Everyone.

Execution graph

When BigQuery executes a query job, it converts the declarative SQL statement into a graph of execution, broken up into a series of query stages, which themselves are composed of more granular sets of execution steps. The query execution graph provides a visual representation of the execution stages and shows the corresponding metrics. Not all stages are made equal. Some are more expensive and time consuming than others. The execution graph provides toggles for highlighting critical stages, which makes it easier to spot the potential performance bottlenecks in the query.

 

Query performance insights

In addition to the detailed execution graph BigQuery also provides specific insights on possible factors that might be slowing query performance.

Slot contention

When you run a query, BigQuery attempts to break up the work needed by your query into tasks. A task is a single slice of data that is input into and output from a stage. A single slot picks up a task and executes that slice of data for the stage. Ideally, BigQuery slots execute tasks in parallel to achieve high performance. Slot contention occurs when your query has many tasks ready for slots to start executing, but BigQuery can’t get enough available slots to execute them.

Read More  How Your Company Catches The AI Wave(s)

Insufficient shuffle quota

Before running your query, BigQuery breaks up your query’s logic into stages. BigQuery slots execute the tasks for each stage. When a slot completes the execution of a stage’s tasks, it stores the intermediate results in shuffle. Subsequent stages in your query read data from shuffle to continue your query’s execution. Insufficient shuffle quota occurs when you have more data that needs to get written to shuffle than you have shuffle capacity.

Data input scale change

Getting this performance insight indicates that your query is reading at least 50% more data for a given input table than the last time you ran the query and hence experiencing query slowness. You can use table change history to see if the size of any of the tables used in the query has recently increased.

What’s next?

We continue to work on improving the visualization of the graph. We are working on adding additional metrics to each step and adding more performance insights that will make query diagnosis significantly easier. We are just getting started.

 

By: Vinay Yerramilli (Product Manager, BigQuery Admin) and Samad Lotia (Software Engineer, BigQuery Admin)
Source: Google Cloud Blog


For enquiries, product placements, sponsorships, and collaborations, connect with us at [email protected]. We'd love to hear from you!

Our humans need coffee too! Your support is highly appreciated, thank you!

aster.cloud

Related Topics
  • BigQuery;
  • Data Analytics
  • Google Cloud
You May Also Like
Data center
View Post
  • Data
  • Public Cloud

Data Sovereignty in Spain. It’s Not Just About the Law, It’s About Efficiency

  • June 3, 2026
View Post
  • Data
  • Platforms
  • Technology

Scaling cloud and AI: Microsoft Azure’s commitment to Europe’s digital future

  • May 11, 2026
View Post
  • Data

Streamline read scalability with Cloud SQL autoscaling read pools

  • March 23, 2026
View Post
  • Data
  • Platforms
  • Public Cloud

PayPal’s historically large data migration is the foundation for its gen AI innovation

  • March 4, 2026
View Post
  • Technology
  • Tools

IBM Launches Enterprise Advantage Service to Help Businesses Scale Agentic AI

  • January 19, 2026
View Post
  • Data
  • Technology

3 obstacles to agentic AI adoption and how to overcome them

  • December 22, 2025
Points, Lines and a Question
View Post
  • Architecture
  • Design
  • Engineering
  • People

What Is The Point In Making Points?

  • November 26, 2025
View Post
  • Engineering
  • Software Engineering

Development gets better with Age

  • October 9, 2025

Stay Connected!
LATEST
  • digital-nomad-freelancer-worker-2151205464 1
    One paperwork problem – Get your Digital Nomad Visa employment documents fast from UK, EU or Singapore
    • June 16, 2026
  • 2
    Samsung Art Store Brings Art Basel to Homes Worldwide With New Curated Collection
    • June 15, 2026
  • 3
    You Do Not Need to Invest in the IPO of SpaceX, Anthropic, and OpenAI
    • June 10, 2026
  • 4
    The consequences of relying on AI for accurate news
    • June 10, 2026
  • 5
    Connecting AI agents with unstructured data using Google Cloud Storage MCP Servers
    • June 10, 2026
  • 6
    WWDC26: Apple unveils next generation of Apple Intelligence, Siri AI, powerful parental controls, and an expansive set of software improvements
    • June 8, 2026
  • 7
    IBM and Google Cloud Announce Strategic Partnership to Scale AI with Human Expertise and AI‑Powered Delivery
    • June 4, 2026
  • Data center 8
    Data Sovereignty in Spain. It’s Not Just About the Law, It’s About Efficiency
    • June 3, 2026
  • 9
    Ink vs Pixels. What you miss versus what you are actually missing.
    • June 1, 2026
  • 10
    Banks race to patch new cyber vulnerabilities, and other cybersecurity news
    • May 25, 2026
about
Hello World!

We are aster.cloud. We’re created by programmers for programmers.

Our site aims to provide guides, programming tips, reviews, and interesting materials for tech people and those who want to learn in general.

We would like to hear from you.

If you have any feedback, enquiries, or sponsorship request, kindly reach out to us at:

[email protected]
Most Popular
  • pope-leo-xiv-cq5dam-1500.844 1
    Pope Leo XIV to Publish First Encyclical on Artificial Intelligence and Human Dignity on 25 May
    • May 22, 2026
  • 2
    Portfolio to Clients, and is Strengthened by Ongoing Project Glasswing Work
    • May 20, 2026
  • reMarkable Paper Pure 3
    Everything The reMarkable Paper Pure Actually Does
    • May 14, 2026
  • 4
    Scaling cloud and AI: Microsoft Azure’s commitment to Europe’s digital future
    • May 11, 2026
  • Anthropic Institute 5
    Introducing The Anthropic Institute
    • March 11, 2026
  • /
  • Technology
  • Tools
  • About
  • Contact Us

Input your search keywords and press Enter.