Skip to content

databrickslabs/dataframe-rules-engine

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

41 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

dataframe-rules-engine

Simplified Validation for Production Workloads

Project Description

As pipelines move from bronze to gold, it's very common that some level of governance be performed in Silver or at various places in the pipeline. The need for business rule validation is very common. Databricks recognizes this and, as such, is building Delta Pipelines with Expectations. Upon release of Delta Pipelines, the need for this package will be re-evaluated and the code base will be adjusted appropriately. This is serves an immediate need and Delta Expectations is expected to be a more, full-fledged and robust example of this functionality.

Introducing Databricks Labs - dataframe-rules-engine, a simple solution for validating data in dataframes before you move the data to production and/or in-line (coming soon).

Alt Text

Using The Rules Engine In Your Project

  • Pull the latest release from the releases
  • Add it as a dependency (will be in Maven eventually)
  • Reference it in your imports

Getting Started

Add the dependency to your build.sbt or pom.xml

libraryDependencies += "com.databricks.labs" %% "dataframe-rules-engine" % "0.2.0"

<dependency>
    <groupId>com.databricks.labs</groupId>
    <artifactId>dataframe-rules-engine_2.12</artifactId>
    <version>0.2.0</version>
</dependency>

A list of usage examples is available in the demo folder of this repo in html and as a Databricks Notebook DBC.

The process is simple:

  • Define Rules
  • Build a RuleSet from your Dataframe using your Rules you built
import com.databricks.labs.validation.utils.Structures._
import com.databricks.labs.validation._

Streaming Update

As of version 0.2 streaming dataframes are fully supported

Quickstart

val myRules = ??? // Definition of my base rules
val myAggRules = ??? // Definition of my agg rules
val validationResults = RuleSet(df)
  .add(myRules)
  .validate()

// or for validation executed at a grouped level
val validationResults = RuleSet(df, by = "myGroup")
        .add(myAggRules)
        .validate()

// grouping across multiple columns
val validationResults = RuleSet(df, by = Array("myGroupA", "myGroupB"))
        .add(myAggRules)
        .validate()

Rules

As of version 0.2 There are three primary rule types

  • Boundary Rules
    • Rules that fail if the input column is outside of the specified boundaries
    • Boundary Rules are EXCLUSIVE on both sides meaning Bounds(0.0, 10.0) will fail all values between and including 0.0 and 10.0
    • Boundary rules are created when the validation is of type Bounds().
      • The default Bounds() are Bounds(lower: Double = Double.NegativeInfinity, upper: Double = Double.PositiveInfinity); therefore, if a lower or an upper is not specified, any value will pass
    • Group Boundaries often come in pairs, to minimize the amount of rules that must be manually created, helper logic was created to define MinMax Rules
  • Categorical Rules (Strings and Numerical)
    • Rules that fail if the result of the input column is not in a list of values
  • Expression Rules
    • Rules that fail if the input column != defined expression

Rules' input columns can be composed of:

  • simple column references col("my_column_name")
  • complex columns col("Revenue") - col("Cost")
  • implicit boolean evaluation lit(true)
    • These rules only take a single input column and it must resolve to true or false. All records in which it resolves to true will be considered passed
  • aggregate columns min("ColumnName")
    • Do not mix aggregate input columns with non-aggregate input columns, instead create two Rule Sets
    • If the rules' input columns are a mixture of aggregates and non-aggregates and no groupBy columns are passed into the RuleSet the dataframe will be grouped by all df columns

Rules can be applied to simple DataFrames or grouped Dataframes. To use a grouped dataframe simply pass your dataframe into the RuleSet and pass one or more columns in as by columns. This will apply the rule at the group level which can be helpful at times. Any input column expressions passed into a RuleSet must be able to be evaluated inside of the .agg() of a groupedDataframe

Simple Rule

Rule("Require_specific_version", col("version"), lit(0.2))
Rule("Require_version>=0.2", col("version") >= 0.2, lit(true))

Simple Boundary Rule

Non-grouped RuleSet - Passes when the retail_price in a record is exclusive between the Bounds

// Passes when retail_price > 0.0 AND retail_price < 6.99
Rule("Retail_Price_Validation", col("retail_price"), Bounds(0.0, 6.99))
// Passes when retail_price > 0.0
Rule("Retail_Price_GT0", col("retail_price"), Bounds(lower = 0.0))

Grouped RuleSet - Passes when the minimum value in the group is within (exclusive) the boundary

// max(retail_price) > 0.0
Rule("Retail_Price_Validation", col("retail_price"), Bounds(lower = 0.0))
// min(retail_price) > 0.0 && min(retail_price) < 1000.0 within the group
Rule("Retail_Price_Validation", col("retail_price"), Bounds(0.0, 1000.0))

Implicit Boolean Rules

These rules are the same as columnar expression based rules except they don't require the comparison against lit(true). A type validation is done on the column before validation begins to ensure that the resolved expression resolves to a boolean type.

// Passes where result is true
Rule("Require_version>=0.2", col("version") >= 0.2)
Rule("Require_version>=0.2", col("myDFBooleanCol"))

List of Rules

A list of rules can be created as an Array and passed into the RuleSet to simplify Rule management

val specializedRules = Array(
  // Example of aggregate column
  Rule("Reasonable_sku_counts", count(col("sku")), Bounds(lower = 20.0, upper = 200.0)),
  // Example of calculated column from catalyst UDF def getDiscountPercentage(retailPrice: Column, scanPrice: Column): Column = ???
  Rule("Max_allowed_discount",
    max(getDiscountPercentage(col("retail_price"), col("scan_price"))),
    Bounds(upper = 90.0)),
  // Example distinct values rule
  Rule("Unique_Skus", countDistinct("sku"), Bounds(upper = 1.0))
          
  RuleSet(df, by = "store").add(specializedRules)
)

MinMax Rules

It's very common to build rules to validate min and max allowable values so there's a helper function to speed up this process. It really only makes sense to use minmax when specifying both an upper and a lower bound in the Bounds object. Using this method in the example below will only require three lines of code instead of the 6 if each rule were built manually

val minMaxPriceDefs = Array(
  MinMaxRuleDef("MinMax_Sku_Price", col("retail_price"), Bounds(0.0, 29.99)),
  MinMaxRuleDef("MinMax_Scan_Price", col("scan_price"), Bounds(0.0, 29.99)),
  MinMaxRuleDef("MinMax_Cost", col("cost"), Bounds(0.0, 12.0))
)

// Generate the array of Rules from the minmax generator
val minMaxPriceRules = RuleSet.generateMinMaxRules(minMaxPriceDefs: _*)

OR -- simply add the list of minmax rules or simple individual rule definitions to an existing RuleSet (if not using builder pattern)

val someRuleSet = RuleSet(df)
someRuleSet.addMinMaxRules(minMaxPriceDefs: _*)
someRuleSet.addMinMaxRules("Retail_Price_Validation", col("retail_price"), Bounds(0.0, 6.99))

Categorical Rules

There are two types of categorical rules which are used to validate against a pre-defined list of valid values. As of 0.2 accepted categorical types are String, Double, Int, Long but any types outside of this can be input as an array() column of any type so long as it can be evaulated against the intput column

val catNumerics = Array(
Rule("Valid_Stores", col("store_id"), Lookups.validStoreIDs),
Rule("Valid_Skus", col("sku"), Lookups.validSkus),
Rule("Valid_zips", array_contains(col("zips"), expr("x -> f(x)")), lit(true))
)

val catStrings = Array(
Rule("Valid_Regions", col("region"), Lookups.validRegions)
)

Validation

Now that you have some rules built up... it's time to build the ruleset and validate it. As mentioned above, the dataframe can be a simple df or a grouped df by passing column[s] to perform validation at the defined grouped level.

The below is meant as a theoretical example, it will not execute because rules containing aggregate input columns AND non-aggregate input columns are defined throughout the rules added to the RuleSet. In practice if rules need to be validated at different levels, it's best to complete a validation at each level with a RuleSet at that level.

val validationResults = RuleSet(df)
.add(specializedRules)
.add(minMaxPriceRules)
.add(catNumerics)
.add(catStrings)
.validate()

val validationResults = RuleSet(df, Array("store_id"))
.add(specializedRules)
.add(minMaxPriceRules)
.add(catNumerics)
.add(catStrings)
.validate()

The validate() method returns a case class of ValidationResults which is defined as:

ValidationResults(completeReport: DataFrame, summaryReport: DataFrame)

AS you can see, there are two reports included, a completeReport and a summaryReport.

The completeReport

The complete report is verbose and will add all rule validations to the right side of the original df passed into RuleSet. Note that if the RuleSet is grouped, the result will include the groupBy columns and all rule evaluation specs and results

The summaryReport

The summary report is meant to be just that, a summary of the failed rules. This will return only the records that failed and only the rules that failed for that record; thus, if the summaryReport.isEmpty then all rules passed.

Next Steps

Clearly, this is just a start. This is a small package and, as such, a GREAT place to start if you've never contributed to a project before. Please feel free to fork the repo and/or submit PRs. I'd love to see what you come up with. If you're not much of a developer or don't have the time you can still contribute! Please post your ideas in the issues and label them appropriately (i.e. bug/enhancement) and someone will review it and add it as soon as possible.

Some ideas of great adds are:

  • Add a Python wrapper
  • Enable an external table to host the rules and have rules compiled from externally managed source (GREAT idea from Sri Tikkireddy)
  • Implement smart sampling for large datasets and faster validation

Legal Information

This software is provided as-is and is not officially supported by Databricks through customer technical support channels. Support, questions, and feature requests can be submitted through the Issues page of this repo. Please see the legal agreement and understand that issues with the use of this code will not be answered or investigated by Databricks Support.

Core Contribution team

  • Lead Developer: Daniel Tomes, Principal Architect, Databricks

Project Support

Please note that all projects in the /databrickslabs github account are provided for your exploration only, and are not formally supported by Databricks with Service Level Agreements (SLAs).
They are provided AS-IS and we do not make any guarantees of any kind.
Please do not submit a support ticket relating to any issues arising from the use of these projects.

Any issues discovered through the use of this project should be filed as GitHub Issues on the Repo.
They will be reviewed as time permits, but there are no formal SLAs for support.

Building the Project

To build the project:

cd Downloads
git pull repo
sbt clean package

Running tests

To run tests on the project:

sbt test

Make sure that your JAVA_HOME is setup for sbt to run the tests properly. You will need JDK 8 as Spark does not support newer versions of the JDK.

Test reports for test coverage

To get test coverage report for the project:

sbt jacoco

The test reports can be found in target/scala-/jacoco/

About

Extensible Rules Engine for custom Dataframe / Dataset validation

Resources

License

Contributing

Stars

Watchers

Forks

Packages

No packages published

Contributors 3

  •  
  •  
  •  

Languages