Astera Data Stack
Version 7
Version 7
  • Welcome to Astera Data Stack Documentation
  • Release Notes
    • Upgrading Astera 6 to Version 7
    • Release Notes for Astera 7.1
    • What is New in Astera 7.4
    • What’s New in Astera 7.4.1.221
    • What’s New in Astera 7.6
    • Upgrading to Astera 7.6
  • Setting Up
    • System Requirements
    • Installing Astera Data Integrator
    • Setting up Astera Integration Server 7
    • UI Walkthrough - Astera Data Integrator
  • Dataflows
    • Introducing Dataflows
    • Sources
      • Setting Up Sources
      • Raw Text Filters in File Sources
      • COBOL File Source
      • Database Table Source
      • Data Model Source
      • Delimited File Source
      • Email Source
      • Excel Workbook Source
      • File System Items Source
      • Fixed Length File Source
      • PDF Form Source
      • Report Source
      • SQL Query Source
      • XML/JSON File Source
    • Transformations
      • Aggregate Transformation
      • Apply To All Transformation
      • Constant Value Transformation
      • Data Cleanse Transformation
      • Data Quality Rules Transformation
      • Denormalize Transformation
      • Distinct Transformation
      • Expression Transformation
      • Filter Transformation
      • Function Transformations
      • Join Transformation
      • Merge Transformation
      • Normalize Transformation
      • Passthru Transformation
      • Rest Client
      • Route Transformation
      • Sequence Generator Transformation
      • Sort Transformation
      • Sources as Transformations
      • Subflow Transformation
      • Tree Join Transformation
      • Union Transformation
      • Web Service Transformation
    • Destinations
      • Setting Up Destinations
      • Database Table Destination
      • Delimited File Destination
      • Excel Workbook Destination
      • Fixed Length File Destination
      • SQL Statement Destination
      • XML/JSON File Destination
    • Data Logging and Profiling
      • Creating Data Profile
      • Creating Field Profile
      • Data Quality Mode
      • Record Level Log
      • Using Data Quality Rules in Astera
    • Database Write Strategies
      • Database Write Strategies
    • Text Processors
      • Fixed Length Parser
      • Fixed Length Serializer
  • Workflows
    • Adding Workflow Tasks
    • Creating Workflows
    • Using Workflow Designer
    • Customizing Workflows With Parameters
    • Workflows with a Dynamic Destination Path
    • Resuming and Rerunning Workflows in Astera
  • Subflows
    • Using Subflows
  • Functions
    • Functions Glossary
    • Introducing Function Transformations
    • Custom Functions
    • Logical
      • Coalesce (Any value1, Any value2)
      • IsNotNull (AnyValue)
      • IsRealNumber (AnyValue)
      • IsValidSqlDate (Date)
      • IsDate (AnyValue)
      • If (Boolean)
      • If (DateTime)
      • If (Double)
      • Exists
      • If (Int64)
      • If (String)
      • IsDate (str, strformat)
      • IsInteger (AnyValue)
      • IsNullOrWhitespace (StringValue)
      • IsNullorEmpty (StringValue)
      • IsNull (AnyValue)
      • IsNumeric (AnyValue)
    • Conversion
      • GetDateComponents (DateWithOffset)
      • ParseDate (Formats, Str)
      • GetDateComponents (Date)
      • HexToInteger (Any Value)
      • ToInteger (Any value)
      • ToDecimal (Any value)
      • ToReal (Any value)
      • ToDate (String dateStr)
      • TryParseDate (String, UnknownDate)
      • ToString (Any value)
      • ToString (DateValue)
      • ToString (Any data, String format)
    • Math
      • Abs (Double)
      • Abs (Decimal)
      • Ceiling (Real)
      • Ceiling(Decimal)
      • Floor (Decimal)
      • Floor (Real)
      • Max (Decimal)
      • Max (Date)
      • Min (Decimal)
      • Min (Date)
      • Max (Real)
      • Max (Integer)
      • Min (Real)
      • Pow (BaseExponent)
      • Min (Integer)
      • RandomReal (Int)
      • Round (Real)
      • Round (Real Integer)
      • Round (Decimal Integer)
      • Round (Decimal)
    • Financial
      • DDB
      • FV
      • IPmt
      • IPmt (FV)
      • Pmt
      • Pmt (FV)
      • PPmt
      • PPmt (FV)
      • PV (FV)
      • Rate
      • Rate (FV)
      • SLN
      • SYD
    • String
      • Center (String)
      • Chr (IntAscii)
      • Asc (String)
      • AddCDATAEnvelope
      • Concatenate (String)
      • ContainsAnyChar (String)
      • Contains (String)
      • Compact (String)
      • Find (Int64)
      • EndsWith (String)
      • FindIntStart (Int32)
      • Extract (String)
      • GetFindCount (Int64)
      • FindLast (Int64)
      • GetDigits (String)
      • GetLineFeed
      • Insert (String)
      • IsAlpha
      • GetToken
      • IndexOf
      • IsBlank
      • IsLower
      • IsUpper
      • IsSubstringOf
      • Length (String)
      • LeftOf (String)
      • Left (String)
      • IsValidName
      • Mid (String)
      • PadLeft
      • Mid (String Chars)
      • LSplit (String)
      • PadRight
      • ReplaceAllSpecialCharsWithSpace
      • RemoveChars (String str, StringCharsToRemove)
      • ReplaceLast
      • RightAlign
      • Reverse
      • Right (String)
      • RSplit (String)
      • SplitStringMultipleRecords
      • SplitStringMultipleRecords (2 Separators)
      • SplitString (3 separators)
      • SplitString
      • SplitStringMultipleRecords (3 Separators)
      • Trim
      • SubString (NoOfChars)
      • StripHtml
      • Trim (Start)
      • TrimExtraMiddleSpace
      • TrimEnd
      • PascalCaseWithSpace (String str)
      • Trim (String str)
      • ToLower(String str)
      • ToProper(String str)
      • ToUpper (String str)
      • Substring (String str, Integer startAt)
      • StartsWith (String str, String value)
      • RemoveAt (String str, Integer startAt, Integer noofChars)
      • Proper (String str)
      • Repeat (String str, Integer count)
      • ReplaceAll (String str, String lookFor, String replaceWith)
      • ReplaceFirst (String str, String lookFor, String replaceWith)
      • RightOf (String str, String lookFor)
      • RemoveChars (String str, String charsToRemove)
      • SplitString (String str, String separator1, String separator2)
    • Date Time
      • AddMinutes (DateTime)
      • AddDays (DateTimeOffset)
      • AddDays (DateTime)
      • AddHours (DateTime)
      • AddSeconds (DateTime)
      • AddMonths (DateTime)
      • AddMonths (DateTimeOffset)
      • AddMinutes (DateTimeOffset)
      • AddSeconds (DateTimeOffset)
      • AddYears (DateTimeOffset)
      • AddYears (DateTime)
      • Age (DateTime)
      • Age (DateTimeOffset)
      • CharToSeconds (Str)
      • DateDifferenceDays (DateTimeOffset)
      • DateDifferenceDays (DateTime)
      • DateDifferenceHours (DateTimeOffset)
      • DateDifferenceHours (DateTime)
      • DateDifferenceMonths (DateTimeOffset)
      • DateDifferenceMonths (DateTime)
      • DatePart (DateTimeOffset)
      • DatePart (DateTime)
      • DateDifferenceYears (DateTimeOffset)
      • DateDifferenceYears (DateTime)
      • Month (DateTime)
      • Month (DateTimeOffset)
      • Now
      • Quarter (DateTime)
      • Quarter (DateTimeOffset)
      • Second (DateTime)
      • Second (DateTimeOffset)
      • SecondsToChar (String)
      • TimeToInteger (DateTime)
      • TimeToInteger (DateTimeOffset)
      • ToDate Date (DateTime)
      • ToDate DateTime (DateTime)
      • ToDateString (DateTime)
      • ToDateTimeOffset-Date (DateTimeOffset)
      • ToDate DateTime (DateTimeOffset)
      • ToDateString (DateTimeOffset)
      • Today
      • ToLocal (DateTime)
      • ToJulianDate (DateTime)
      • ToJulianDayNumber (DateTime)
      • ToTicks (Date dateTime)
      • ToTicks (DateTimeWithOffset dateTime)
      • ToUnixEpoc (Date dateTime)
      • ToUtc (Date dateTime)
      • UnixTimeStampToDateTime (Real unixTimeStamp)
      • UtcNow ()
      • Week (Date dateTime)
      • Week (DateTimeWithOffset dateTime)
      • Year (Date dateTime)
      • Year (DateTimeWithOffset dateTime)
      • DateToJulian (Date dateTime, Integer length)
      • DateTimeOffsetUtcNow ()
      • DateTimeOffsetNow ()
      • Day (DateTimeWithOffset dateTime)
      • Day (Date dateTime)
      • DayOfWeekStr (DateTimeWithOffset dateTime)
      • DayOfWeek (DateTimeWithOffset dateTime)
      • DayOfWeek (Date dateTime)
      • DateToJulian (DateTimeWithOffset dateTime, Integer length)
      • DayOfWeekStr (Date dateTime)
      • FromJulianDate (Real julianDate)
      • DayOfYear (Date dateTime)
      • DaysInMonth(Integer year, Integer month)
      • DayOfYear (DateTimeWithOffset dateTime)
      • FromUnixEpoc
      • FromJulianDayNumber (Integer julianDayNumber)
      • FromTicksUtc(Integer ticks)
      • FromTicksLocal(Integer ticks)
      • Hour (Date dateTime)
      • Hour (DateTimeWithOffset dateTime)
      • Minute (Date dateTime)
      • JulianToDate (String julianDate)
      • Minute (DateTimeWithOffset dateTime)
      • DateToIntegerYYYYMMDD (DateTimeWithOffset dateTime)
      • DateToIntegerYYYYMMDD (Date dateTime)
    • Files
      • AppendTextToFile (String filePath, String text)
      • CopyFile (String sourceFilePath, String destFilePath, Boolean overWrite)
      • CreateDateTime (String filePath)
      • DeleteFile (String filePath)
      • DirectoryExists (String filePath)
      • FileExists (String filePath)
      • FileLength (String filePath)
      • FileLineCount (String filePath)
      • GetDirectory (String filePath)
      • GetEDIFileMetaData (String filePath)
      • GetExcelWorksheets (String excelFilePath)
      • GetFileExtension (String filePath)
      • GetFileInfo (String filePath)
      • GetFileName (String filePath)
      • GetFileNameWithoutExtension (String filePath)
      • LastUpdateDateTime (String filePath)
      • MoveFile (String filePath, String newDirectory)
      • ReadFileBytes (String filePath)
      • ReadFileFirstLine (String filePath)
      • ReadFileText (String filePath)
      • ReadFileText (String filePath, String codePage)
      • WriteBytesToFile (String filePath, ByteArray bytes)
      • WriteTextToFile (String filePath, String text)
    • Date Time With Offset
      • ToDateTimeOffsetFromDateTime (dateTime String)
      • ToUtc (DateTimeWithOffset)
      • ToDateTimeOffsetFromDateTime
      • ToDateTimeOffset (String dateTimeOffsetStr)
      • ToDateTimeFromDateTimeOffset
    • GUID
      • NewGuid
    • Encoding
      • ToBytes
      • FromBytes
      • UrlEncode
      • UrlDecode
    • Regular Expressions
      • ReplaceRegEx
      • ReplaceRegEx (Integer StartAt)
    • TimeSpan
      • Minutes
      • Hours
      • Days
      • Milliseconds
    • Matching
      • Soundex
      • DoubleMetaphone
      • RefinedSoundex
  • Report Model
    • User Guide
      • Report Model Tutorial
    • Report Model Interface
      • Field Properties
      • Pattern Properties
      • Region Properties
      • Report Browser
      • Report Options
    • Use Cases
      • Applying Pattern to Line
      • Auto-Creating Data Regions and Fields
      • Auto-Parsing
      • Creating Multi-Column Data Regions
      • Floating Patterns and Floating Fields
      • How to Work with Microsoft Word (Doc/Docx) Files in a Report Model
      • How to Work With OCR Scanned Files in a Report Model
      • How to Work With PDF Scaling Factor in a Report Model
      • Line Count
      • Pattern Count
      • Pattern is a Regular Expression
    • Exporting Options
      • Exporting a Report Model
      • Exporting Report Model to a Dataflow
    • Miscellaneous
      • Astera Report Model: Performance on Different Hardware Settings and Case Complexities
      • Microsoft Word and Rich Text Format Support
      • Importing Monarch Models
  • Project Management
    • Project Management
      • Deployment
      • Parameterization
    • Job Scheduler
      • Scheduling and Running Jobs on a Server
  • Web Services
    • Configuring Google Drive API through REST Client in Astera
    • Connecting to Eloqua using Astera REST API
    • POSTing Data Using the REST Client
    • Using the REST Client to Download a Text File
  • Metadata Management
    • Lineage and Impact Analysis
  • Connectors and Providers
    • Setting Up Oracle ODP.Net Connectivity in Astera
    • Running Microsoft Access Database Engine with Astera
    • Oracle Client Tools Setup
    • Oracle Data Load Options
  • Miscellaneous
    • Job Trace Improvements
    • SmartMatch Feature
    • Synonym Dictionary File
    • Using the Data Source Browser in Astera
  • Best Practices
    • Astera Best Practices - Dataflows
    • Cardinality Errors FAQs
    • Overview of Cardinality in Data Modeling
Powered by GitBook

© Copyright 2025, Astera Software

On this page
  • Using the Data Cleanse Transformation in Astera
  • Remove
  • Replace Nulls
  • Find and Replace
  • Preview after applying the Extended Find and Replace function
  • Case
  • Modify Data
  1. Dataflows
  2. Transformations

Data Cleanse Transformation

PreviousConstant Value TransformationNextData Quality Rules Transformation

Last updated 9 months ago

Data cleanse transformation is a new addition to Astera's library of transformations. It makes it all the more convenient for business users to cleanse raw data and present it in a more refined, standardized, and enterprise-ready format.

Using the Data Cleanse transformation, users can clean up data from null values and redundant text and characters, and prepare raw data for transformation, validation, profiling, and record-matching functions.

Using the Data Cleanse Transformation in Astera

  1. Retrieve the data you want to cleanse using the relevant source object. (Click to learn more about setting up sources in Astera.)

  1. Now drag the Data Cleanse transformation object from the Transformations section of the toolbox and drop it onto the designer.

  1. This is what a Data Cleanse transformation object looks like.

  1. Map data from the source object to the Data Cleanse transformation object. You can either auto-map the entire data set or map a few fields manually.

  1. Now you have to specify the criteria for data cleansing. Right-click on the Data Cleanse transformation object and go to Properties from the context menu.

  1. This will open a new window where you have to set up the properties for data cleansing. The first screen is the Layout Builder Screen. Here you can customize the layout of your dataset by adding, removing, or renaming fields. Once you have created the layout, click Next to proceed to the next screen.

  1. This is where you set up the data cleanse criteria for your source data.

You can find various data cleanse options arranged in different sections. Let’s explore them one by one.

Remove

The options provided within this category allow you to remove values, spaces, tabs, and line breaks from your data. You can find the following options within this category:

  • All whitespaces – removes all whitespaces from the data

  • Leading and trailing whitespaces – removes the whitespaces preceding and succeeding the values

  • Tabs and line breaks – removes tabs and line breaks within the source values

  • Duplicate whitespaces – removes double spaces from the data

  • Letters – removes all alphabets from the data

  • Digits – removes all digits from the data

  • Punctuation – removes all punctuation from the data

  • Specified Character – removes any specific character from the data

Replace Nulls

As the name suggests, the options within this category allow you to replace null values inside a string or numeric field with a corresponding value – blank in case of a string, and zero, in case of a numeric field.

  • Null strings with blanks: replaces all null strings with blanks

  • Null numerics with zeros: replaces all null numeric values with zeros

Find and Replace

The Find and Replace options enable users to replace a value in the source dataset with another value.

It also provides users the option to choose whether the find and replace function is to be performed on a case-sensitive basis. You can select a search mode from three options:

  • Normal – will perform a normal find and replace function

As in this example, we want to change the status from ‘Planned’ to ‘Scheduled.’

So, we’ll type in ‘Planned’ in the Find bar and ‘Scheduled’ in the Replace bar.

Now, if we look at the output, we can see that the Data Cleanse transformation has found and replaced the status values from ‘Planned’ to ‘Scheduled.’

  • Extended – allows you to search for tabs(\t), newline(\r\n), or a character by its value (\o, \x, \b, \d, \t, \n, \r and ) and replace with the desired value

In the example below, we want to replace whitespaces within our source values with a hyphen (-).

So, we’ll type ‘\s’ in the Find bar and ‘-’ in the Replace bar.

Now, if we look at the output, we can see that the Data Cleanse transformation has found and replaced whitespaces from within the values with a hyphen.

Preview after applying the Extended Find and Replace function

  • Regular Expressions – allows you to find and replace a value based on a regular expression

In the example below, we want to replace the ALFKI value(s) in the CustomerID field with A1234.

For this, we will write a regex in the Find bar and the desired value in the Replace bar.

Now, if we look at the preview, you can see that Astera has replaced the values in the source data with the desired values.

Case

Case options allow users to convert the letter case of source data to Upper, Lower, or Title case.

You can choose from the following options:

  • None – keeps the letter case as is

  • Upper – changes all letters to upper case

  • Lower – change all letters to lowercase

  • Title – changes all letters to title case

Modify Data

The Modify Data option provides you the flexibility and convenience of applying an expression to all fields in your data. Check the ‘Run expression on all fields’ option to activate this feature.

The ‘Run Expression on all fields’ feature was previously called ApplyToAll and offered as a standalone transformation in Astera 7.5 and previous releases. It had a limited functionality though, compared to the Data Cleanse transformation, which is why it has been replaced altogether with the Data Cleanse transformation in Astera 7.6.

The ‘Run Expression on all fields’ feature is enabled by default for any existing flows created prior to Astera 7.6. This means that existing flows created on Astera 7.5 or a prior release will continue to work seamlessly on the 7.6 upgrade and won’t require any modification at all.

Here, you can choose from the extensive library of built-in expressions and apply it to all the mapped fields by adding it to a $FieldValue parameter.

As in this example, we have mapped a regular expression to the $FieldValue parameter.

Now if we look at the preview, you can see that Astera has applied the regular expression to all fields and removed whitespaces from the values.

Preview before running the expression on all fields:

Preview after running the expression on all fields:

Now click on this button to open the expression builder.

This function was previously performed using the in Astera 7.5 and previous releases. However, in Astera 7.6, you can perform this and other data cleanse tasks using the Data Cleanse transformation.

ApplyToAll transformation
here