Close Menu
    Trending
    • Revisiting Benchmarking of Tabular Reinforcement Learning Methods
    • Is Your AI Whispering Secrets? How Scientists Are Teaching Chatbots to Forget Dangerous Tricks | by Andreas Maier | Jul, 2025
    • Qantas data breach to impact 6 million airline customers
    • He Went From $471K in Debt to Teaching Others How to Succeed
    • An Introduction to Remote Model Context Protocol Servers
    • Blazing-Fast ML Model Serving with FastAPI + Redis (Boost 10x Speed!) | by Sarayavalasaravikiran | AI Simplified in Plain English | Jul, 2025
    • AI Knowledge Bases vs. Traditional Support: Who Wins in 2025?
    • Why Your Finance Team Needs an AI Strategy, Now
    AIBS News
    • Home
    • Artificial Intelligence
    • Machine Learning
    • AI Technology
    • Data Science
    • More
      • Technology
      • Business
    AIBS News
    Home»Artificial Intelligence»How to Get Performance Data from Power BI with DAX Studio
    Artificial Intelligence

    How to Get Performance Data from Power BI with DAX Studio

    Team_AIBS NewsBy Team_AIBS NewsApril 23, 2025No Comments11 Mins Read
    Share Facebook Twitter Pinterest LinkedIn Tumblr Reddit Telegram Email
    Share
    Facebook Twitter LinkedIn Pinterest Email


    To place issues straight: I cannot focus on how one can optimize DAX Code at the moment.

    Extra articles will observe, concentrating on frequent errors and how one can keep away from them.

    However, earlier than we will perceive the efficiency metrics, we have to perceive the structure of the Tabular mannequin in Power Bi.
    The identical structure applies to Tabular fashions in SQL Server Evaluation Companies.

    Any Tabular mannequin has two Engines:

    • Storage Engine
    • Method Engines

    These two have distinct properties and fulfill completely different duties in a Tabular mannequin.

    Let’s examine them.

    Storage Engine

    The Storage Engine is the interface between the DAX Question and the info saved within the Tabular mannequin.

    This Engine takes any given DAX question and sends queries to the Vertipaq Storage engine, which shops the info within the information mannequin.

    The Storage Engine makes use of a language known as xmSQL to question the info mannequin.

    This language relies on the usual SQL language however has fewer capabilities and helps solely easy arithmetic operators (+, -, /, *, =, <>, and IN).

    To combination information, xmSQL helps SUM, MIN, MAX, COUNT, and DCOUNT (Distinct Rely).

    Then it helps GROUP BY, WHERE, and JOINs.

    It should assist when you have a primary understanding of SQL Queries if you attempt to perceive xmSQL. When you don’t know SQL, will probably be useful to study the fundamentals when digging deeper into analyzing bad-performing DAX code.

    A very powerful reality is that the Storage Engine is multi-threaded.

    Subsequently, when the Storage Engine executes a question, it is going to use a number of CPU-Cores to hurry up question execution.

    Lastly, the Storage Engine can Cache queries and the outcomes.

    Consequently, repeated execution of the identical question will velocity up the execution as a result of the outcome will be retrieved from the cache.

    Method Engine

    The Method Engine is the DAX engine.

    All capabilities, which the Storage Engine can not execute, are executed by the Method Engine.

    Normally, the Storage Engine retrieves the info from the info mannequin and passes the outcome to the Method Engine.

    This operation known as materialization, as the info is saved in reminiscence to be processed by the Method Engine.

    As you possibly can think about, it’s essential to keep away from massive materializations.

    The Storage Engine can name the Method Engine when an xmSQL-Question accommodates capabilities that the Storage Engine can not execute.
    That is operation id known as CallbackDataID and needs to be averted, if doable.

    Crucially, the Method engine is single-threaded and has no Cache.

    This implies:

    • No parallelism through the use of a number of CPU Cores
    • No re-use of repeated execution of the identical question

    This implies we need to offload as many operations as doable to the Storage engine.

    Sadly, it’s inconceivable to straight outline which a part of our DAX-Code is executed by which Engine. We should keep away from particular patterns to make sure that the proper engine completes the work within the least period of time.

    And that is one other story that may fill total books.

    However how can we see how a lot time is utilized by every Engine?

    Getting the Efficiency information

    We have to have DAX Studio on our machine to get Efficiency Metrics.

    We will discover the obtain hyperlink for DAX Studio within the References Part under.

    When you can not set up the Software program, you may get a transportable DAX model from the identical website. Obtain the ZIP file and unpack it in any native folder. Then you can begin DAXStudio.exe, and also you get all options with out limitations.

    However first, we have to get the DAX Question from Energy BI.

    First, we have to begin Efficiency Analyzer in Energy BI Desktop:

    Determine 1 – Begin Efficiency Analyzer in Energy BI Desktop (Determine by the Creator)

    As quickly as we see the Efficiency Analyzer Pane, we will begin recording the efficiency information and the DAX question for all Visuals:

    Determine 2 – Begin recording of Efficiency information and DAX question (Determine by the Creator)

    First, we should click on on Begin Recording

    Then click on on “Refresh Visuals” to restart the rendering of all Visuals of the particular web page.

    We will click on on one of many rows within the checklist and spot that the corresponding Visible can also be activated.

    Once we broaden on one of many rows within the report, we see just a few rows and a hyperlink to repeat the DAX question to the Clipboard.

    Determine 3 – Choose the Visible and duplicate the question (Determine by the Creator)

    As we will see, Energy BI wanted 80’606 milliseconds to finish the rendering of the Matrix Visible.

    The DAX question alone used 80’194 milliseconds.

    It is a extremely poor-performing measure used on this visible.

    Now, we will begin DAX Studio.
    In case now we have DAX Studio put in on our machine, we’ll discover it within the Exterior Device Ribbon:

    Determine 4 – Begin DAX Studio as an Exterior Device (Determine by the Creator)

    DAX Studio will mechanically be linked to the Energy BI Desktop file.

    In case that we should begin DAX Studio manually, we will manually hook up with the Energy BI file as properly:

    Determine 5 – Manually join DAX Studio to Energy BI Desktop (Determine by the Creator)

    After the connection is established, an empty question is opened in DAX Studio.

    On the underside a part of the DAX Studio Window, you will note a Log part the place you possibly can see what occurs.

    However, earlier than pasting the DAX Question from Energy BI Desktop, now we have to start out Server Timings in DAX Studio (Proper high nook of the DAX Studio Window):

    Determine 6 – Begin Server Timings in DAX Studio (Determine by the Creator)

    After pasting the Question to the Empty Editor, now we have to Allow the “Clear on Run” Button and execute the question.

    Determine 7 – Enabling “Clear on Run” Characteristic (Determine by the Creator)

    “Clear on Run” ensures the Storage Engine Cache is cleared earlier than executing the Question.

    Clearing the Cache earlier than measuring efficiency metrics is the very best apply to make sure a constant place to begin for the measurement.

    After executing the question, we’ll get a Server Timings web page on the backside of the DAX Studio Window:

    Determine 8 – Server Timings Window in DAX Studio (Determine by the Creator)

    Now we see numerous data, which we’ll discover subsequent.

    Decoding the info

    On the left facet of Server Timings, we’ll see the execution timings:

    Determine 9 – Execution Timings (Determine by the Creator)

    Right here we see the next numbers:

    • Whole – The full execution time in milliseconds (ms)
    • SE CPU – The sum of the CPU time spent by the Storage Engine (SE) to execute the Question.
      Normally, this quantity is bigger than the Whole time due to the parallel execution utilizing a number of CPU Cores
    • FE – The time spent by the Method Engine (FE) and the share of the full execution time
    • SE – The time spent by the Storage Engine (FE) and the share of the full execution time
    • SE Queries – The variety of Storage Engine Queries wanted for the DAX Question
    • SE Cache – Using Storage Engine Cache, if any

    As a rule of thumb: The bigger the share of Storage Engine time, in comparison with Method Engine time, the higher.

    The center part exhibits a listing of Storage Engine Queries:

    Determine 10 – Checklist of Storage Engine queries (Determine by the Creator)

    This checklist exhibits what number of SE Queries have been executed for the DAX Question and consists of some statistical columns:

    • Line – Index line. Normally, we won’t see all of the strains. However we will see all strains by clicking on the Cache and Inner buttons on the highest proper nook of the Server Timings Pane. However we won’t discover them very helpful, as they’re an inner illustration of the seen queries. Typically it may be useful to see the Cache queries and see what a part of the question has been accelerated by the SE Cache.
    • Subclass – Usually “Scan”
    • Length – Time spent for every SE Question
    • CPU – CPU Time spent for every SE Question
    • Par. – Parallelism of every SE Question
    • Rows and KB – Measurement of the materialization by the SE Question
    • Waterfall – Timing sequence by the SE Queries
    • Question – The start of every SE Question

    On this case, the primary SE Question returned 12’527’422 rows to the Method engine (The variety of rows in the whole Truth desk) utilizing 1 GB of Reminiscence. This isn’t good, as massive materializations like these are efficiency killers.

    This clearly signifies that we made an enormous mistake together with your DAX Code.

    Lastly, we will learn the precise xmSQL Code:

    Determine 11 – Storage  Engine Question Code (Determine by the Creator)

    Right here we will see the xmSQL code and attempt to perceive the Drawback of the DAX Question.

    On this case, we see that there’s a highlighted CallbackDataID. DAX Studio highlights all CallbackDataID within the Question textual content and makes all queries within the question checklist daring, which accommodates a CallbackDataID.

    We will see that, on this case, an IF() perform is pushed to the Method Engine (FE), because the SE can not course of this perform. However SE is aware of that FE can do it. So, it calls the FE for every row within the outcome. On this case, over 12 million instances.

    As we will see from the timing, this takes numerous time.

    Now we all know that now we have written unhealthy DAX Code and the SE calls the FE many instances to execute a DAX perform. And we all know that we use 1 GB of RAM to execute the question.

    Furthermore, we all know that the parallelism is just one.9 instances, which may very well be significantly better.

    What it ought to seem like

    The DAX question accommodates solely the Question created by Energy BI Desktop.

    However generally, we’d like the Code of the Measure.

    DAX Studio gives a characteristic known as “Outline Measures” to get the DAX Code of the Measure:

    1. Add one among two clean strains within the Question
    2. Place the cursor on the primary (empty) line
    3. Discover the Measure within the Knowledge Mannequin
    4. Proper-click on the Measure and click on on Outline Measure
    Determine 12 – Outline Measure in DAX Studio (Determine by the Creator)

    5. If our Measure calls one other Measure, we will click on on Outline Dependent Measures. On this case, DAX Studio extracts the code of all Measures utilized by the chosen Measure

    The result’s a DEFINE assertion adopted by a number of MEASURE Statements containing the DAX code of our responsible Measure.

    After optimizing the code, I executed the brand new Question and took the Server Timings to match them to the unique Knowledge:

    Determine 13 – Evaluating gradual a quick DAX code (Determine by the Creator)

    Now, the whole question took solely 55 ms, and SE created a materialization of solely 19 Rows.

    The parallelism is at 2.6 instances, which is best than 1.9 instances. It seems to be just like the SE didn’t want that a lot processing energy to extend parallelism.

    It is a superb signal.

    The optimization labored very properly after these numbers.

    Conclusion

    We’d like some data when now we have a gradual Visible in your Energy BI Report.

    Step one is to make use of Efficiency Analyzer in Energy BI Desktop to see the place time is spent rendering the results of the Visible.

    Once we see that it takes a lot time to execute the DAX Question, we’d like DAX Studio to search out out the issue and attempt to repair it.

    I didn’t cowl any strategies to optimize DAX on this article, because it wasn’t my goal to do it.

    However now that I’ve laid down the muse to get and perceive the efficiency metrics obtainable in DAX Studio, I can write additional articles to indicate how one can optimize DAX code, what you need to keep away from, and why.

    I’m trying ahead to the journey with you.

    Obtain DAX Studio without cost right here: https://www.sqlbi.com/tools/dax-studio/

    Free SQLBI Instruments Coaching: DAX Tools Video Course – SQLBI

    SQLBI gives DAX-Optimization coaching as properly.

    I take advantage of the Contoso pattern dataset, like in my earlier articles. You possibly can obtain the ContosoRetailDW Dataset without cost from Microsoft here.

    The Contoso Knowledge will be freely used underneath the MIT License, as described here.



    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Previous ArticleVibe Coding and Prompt Engineering: Two Sides of the Same Coin in the World of AI | by B V Sarath Chandra | Apr, 2025
    Next Article Starbucks Is Opening a Store in Texas Made With a 3D Printer
    Team_AIBS News
    • Website

    Related Posts

    Artificial Intelligence

    Revisiting Benchmarking of Tabular Reinforcement Learning Methods

    July 2, 2025
    Artificial Intelligence

    An Introduction to Remote Model Context Protocol Servers

    July 2, 2025
    Artificial Intelligence

    How to Access NASA’s Climate Data — And How It’s Powering the Fight Against Climate Change Pt. 1

    July 1, 2025
    Add A Comment
    Leave A Reply Cancel Reply

    Top Posts

    Revisiting Benchmarking of Tabular Reinforcement Learning Methods

    July 2, 2025

    I Tried Buying a Car Through Amazon: Here Are the Pros, Cons

    December 10, 2024

    Amazon and eBay to pay ‘fair share’ for e-waste recycling

    December 10, 2024

    Artificial Intelligence Concerns & Predictions For 2025

    December 10, 2024

    Barbara Corcoran: Entrepreneurs Must ‘Embrace Change’

    December 10, 2024
    Categories
    • AI Technology
    • Artificial Intelligence
    • Business
    • Data Science
    • Machine Learning
    • Technology
    Most Popular

    Student Asks for Money Back After Professor Uses ChatGPT

    May 15, 2025

    Cracking the code of spatio-temporal patterns in time series data | by Katy | Mar, 2025

    March 20, 2025

    Amazon Whole Foods CEO Slams Internal Bureaucracy: ‘Ridiculous’

    June 25, 2025
    Our Picks

    Revisiting Benchmarking of Tabular Reinforcement Learning Methods

    July 2, 2025

    Is Your AI Whispering Secrets? How Scientists Are Teaching Chatbots to Forget Dangerous Tricks | by Andreas Maier | Jul, 2025

    July 2, 2025

    Qantas data breach to impact 6 million airline customers

    July 2, 2025
    Categories
    • AI Technology
    • Artificial Intelligence
    • Business
    • Data Science
    • Machine Learning
    • Technology
    • Privacy Policy
    • Disclaimer
    • Terms and Conditions
    • About us
    • Contact us
    Copyright © 2024 Aibsnews.comAll Rights Reserved.

    Type above and press Enter to search. Press Esc to cancel.