Azure data lake analytics and azure databricks both can be used for batch processing. Could anyone please help me understand when to choose one over another?


In my humble opinion, a lot of it comes down to existing skillsets. If you have a team experienced in Spark, Java, Python, r or Scala then Databricks is a natural fit. If on the other hand you have a team with existing SQL and c# skills, then the learning curve for them with U-SQL will be less steep.

That aside, there are other questions which can drive out differences:

  • Do you require realtime interaction (Databricks) or batch mode analytics (both)? Although there is a feedback item for real-time interactivity for U-SQL, please vote.
  • Do you want a pay-as-you-go model (U-SQL) or clusters with auto-terminate after a certain period (Databricks)?
  • Do you like working in a notebook (Databricks) or Visual Studio / VSCode / Powershell / .net sdk (U-SQL) method?
  • Do you want to use Spark libraries like GraphX (Databricks)?
  • Do you want the ability to run and scale any runtime (U-SQL)? See here for more details.
  • Do you want a local development emulator (U-SQL)? The U-SQL emulator in Visual Studio is seamless, ie you develop your code against your local drives in the same structure as your lake (for free), then simply click the drop-down in Visual Studio to run in the cloud. Although I think you can have a local Spark environment, I'm not sure what the local (and disconnected) development experience is for Databricks.
  • Are you using ADLS Gen 2 (only Databricks)? See here.

UPDATE October 2018: As far as I am aware, U-SQL does not currently support ADLS Gen 2, which would count against it (happy to be corrected). I will update the post if and when that support is added.

UPDATE January 2019: U-SQL has not had any meaningful updates since Spring 2018.


  • 2
    +1 for a detailed answer. All of them make sense, but architecturally or on the performance side or on capability-wise, what are the differences?
    – Pragmatic
    May 22 '18 at 15:59
  • 2
    Excellent answer. @wBob Where do you think HDInsight fits into the mix here? In what scenario would I want to use one over the other.
    – GFoley83
    Oct 29 '18 at 21:21
  • Hi, nice summary there's a user voice ticket for ADLS Gen 2 support if you wish to vote: feedback.azure.com/forums/327234-data-lake/suggestions/… Jan 21 '19 at 22:11
  • @wBob: Do you have any new about uSQL and ADLS Gen 2? Oct 23 '19 at 17:28
  • @wBob : Is there any limitation to use ADLS and ADF Gen ? Oct 23 '19 at 17:29

Databricks has more language options that allows professional with different skills to work on the data. Also with databricks you can run jobs with high-performance, in-memory clusters.

In a project, we use data lake more as a storage, and do all the jobs (ETL, analytics) via databricks notebook. Storing data in data lake is cheaper $.

Back to your questions, if a complex batch job, and different type of professional will work on the data you. You may choose a Azure Data Lake + Databricks architecture. Otherwise an Azure Data Lake would satisfied your needs.

Take a look of these 2 articles would help. https://databricks.com/glossary/data-lake https://visualbi.com/blogs/microsoft/azure/etl-azure-databricks-vs-data-lake-analytics/

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