@hackage DBFunctor0.1.2.1

DBFunctor - Functional Data Management => ETL/ELT Data Processing in Haskell

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DBFunctor: Functional Data Management

ETL/ELT* Data Processing in Haskell

DBFunctor is a Haskell library for ETL/ELT1 data processing of tabular data. What does this mean? It simply means that whenever you have a data analysis, data preparation, or data transformation task and you want to do it with Haskell type-safe code, that you enjoy, love and trust so much, now you can!

Main Features

  1. Julius DSL: A Type-Level Embedded Domain Specific Language (EDSL) for ETL Provides an intuitive type-level Embedded Domain Specific (EDSL) Language called Julius for expressing complex data flows (i.e., ETL flows) but also for performing SQL-like data analysis. For more info check this Julius tutorial.
  2. Supports all known relational algrebra operations Julius supports all known relational algebra operations (selection, projection, inner/outer join, grouping, ordering, aggregation, set operations etc.)
  3. Provides the ETL Mapping and other typical ETL constructs and operations Julius implements typical ETL constructs such the Column Mapping and the ETL Mapping.
  4. Applicable to all kinds of tabular data It is applicable to all kinds of "tabular data" (see explanation below)
  5. In-memory, database-less data processing Data transformations or queries can run in-memory, within your Haskell code, without the need for a database to process your data.
  6. Offloading to a database for heavy queries/data transformations In addition, a query or data transformation can be offloaded to a Database, when data don't fit in memory, or heavy data processing over large volumes of data is required. The result can be fetched into the client's memory (i.e., where your haskell code runs) in the RTable data structure (see below), or stored in a database staging table.
  7. Workflow Operations Julius provides common workflow operations. Workflows provide the ability to combine the evaluation of several different Julius Expressions (i.e., data pipelines) in an arbitrary logic. Examples of such operations include:
  • Ability to handle a failure of some operation in a Julius expression:
    • retry the failed operation (after corrective actions have taken place) and continue the evaluation of the Julius expression from this point onward.
    • skip the failed operation and move on with the rest operations in the pipeline.
    • restart the Julius expression from the beginning
    • terminate the Julius expression and skip all pending operations
  • Ability to start a Julius expression based on the success or failure result of another one
  • Ability to fork several different Julius expressions that will run concurrently
  • Conditional execution of Julius expressions and iteration functionality
  • Workflow hierarchy (i.e., flows, subflows etc.)
  1. "Declarative ETL" Enables declarative ETL implementation in the same sense that SQL is declarative for querying data (see more below).

Typical examples of DBFunctor use-cases

  • Build database-less Haskell apps. Build your data processing haskell apps without the need to import your data in a database for querying functionality or any for executing any data transformations. Analyze your CSV files in-place with plain haskell code (for Haskellers!).
  • Data Preparation. I.e., clean-up data, calculate derived fields and variables, group by and aggregate etc., in order to feed some machine learning algorithm (for Data Scientists).
  • Data Transformation. in order to transform data from Data Model A to Data Model B (typical use-case for Data Engineers who perform ETL/ELT1 tasks for feeding Data Warehouses or Data Marts)
  • Data Exploration. Ad hoc data analysis tasks, in order to explore a data set for several purposes such as to find business insights and solve a specific business problem, or maybe to do data profiling in order to evaluate the quality of the data coming from a data source, etc (for Data Analysts).
  • Business Intelligence. Build reports, or dashboards in order to share business insights with others and drive decision making process (for BI power-users)

When to Use it?

DBFunctor should be used whenever a data analysis, or data manipulation, or data transformation task, over tabular data, must be performed and we wish to perform it with Haskell code -yielding all the well-known (to Haskellers) benefits from doing that- without the need to use a database query engine for this task. DBFunctor provides an in-memory data structure called RTable, which implements the concept of a Relational Table (which -simply put- is a set of tuples) and all relevant relational algebra operations (Selection, Projection, Inner Join, Outer Joins, aggregations, Group By, Set Operations etc.). Moreover, it implements the concept of Column Mapping (for deriving new columns based on existing ones - by splitting , merging , or with any other possible combination using a lambda expression or a function to define the new value) and that of the ETL Mapping, which is the equivalent of a "mapping" in an ETL tool (like Informatica, Talend, Oracle Data Integrator, SSIS, Pentaho, etc.). With this powerful construct, one can build arbitrary complex data pipelines, which can enable any type of data transformations and all these by writing Haskell code.

What Kinds of Data?

With the term "tabular data" we mean any type of data that can be mapped to an RTable (e.g., CSV (or any other delimiter), DB Table/Query, JSON etc). Essentially, for a Haskell data type ato be "tabular", one must implement the following functions:

   toRTable :: RTableMData -> a -> RTable
   fromRTable :: RTableMData -> RTable -> a

These two functions implement the "logic" of transforming data type a to/from an RTable based on specific RTable Metadata, which specify the column names and data types of the RTable, as well as (optionally) the primary key constraint, and/or alternative unique constraints (i.e., similar information provided with a CREATE TABLE statement in SQL) . By implementing these two functions, data type a essentially becomes an instance of the type class RTabular and thus can be transformed with the DBFunctor package. Currently, we have implemented a CSV data type (any delimeter allowed), based one the Cassava library, in order to enable data transformations over CSV files.

Current Status and Roadmap

Currently (version DBFunctor-0.1.0.0), the DBFunctor package is stable for in-memory data transformation and queries of CSV files (any delimiter allowed), with the Julius EDSL (module Etl.Julius) , or directly via RTable functions (module RTable.Core). The use of the Julius language is strongly recommended because it simplifies greatly and standardizes the creation of complex ETL flows. All in all, currently main features from #1 to #5 (from the list above) have been implemented and main features > #5 are future work that will be released in later versions.

Future Vision -> Declarative ETL

Our ultimate goal is, eventually to make DBFunctor the first Declarative library for ETL/ELT, or data processing in general, by exploiting the virtues of functional programming and Haskell strong type system in particular. Here we use "declarative" in the same sense that SQL is a declarative language for querying data. (You only have to state what data you want to be returned and you don't care about how this will be accomplished - the DBMS engine does this for you behind the scenes). In the same manner, ideally, one should only need to code the desired data transformation from a source schema to a target schema, as well as all the data integrity constraints and business rules that should hold after the transformation and not having to define all the individual steps for implementing the transformation, as it is the common practice today. This will yield tremendous benefits compared to common ETL challenges faced today and change the way we build data transformation flows. Just to name a few:

  • Automated ETL coding driven by Source-to-Target mapping and business rules
  • ETL code correctness out-of-the-box
  • Data Integrity / Business Rules controls automatically embedded in your ETL code
  • Self-documented ETL code (Your documentation i.e., the Source-to-Target mapping and the business rules, is also the only code you need to write!)
  • Drastically minimize time-to-market for delivering Data Marts and Data Warehouses, or simply implementing Data Analysis tasks.

The above is inspired by the theoretical work on Categorical Databases by David Spivak,

Available Modules

DBFunctor consists of the following set of Haskell modules:

  • RTable.Core: Implements the relational Table concept. Defines all necessary data types like RTable and RTuple as well as basic relational algebra operations on RTables.
  • Etl.Julius: A simple Embedded DSL for ETL/ELT data processing in Haskell
  • RTable.Data.CSV: Implements RTable over CSV (TSV, or any other delimiter) files logic. It is based on the Cassava library.

A Very Simple Example

In this example, we will load a CSV file, turn it into an RTable and then issue a very simple query on it and print the result, just to show the whole concept. So lets say we have a CSV file called test-data.csv. The file stores table metadata from an Oracle database. Each row represents a table stored in the database. Here is a small extract from the csv file:

$ head test-data.csv
    OWNER,TABLE_NAME,TABLESPACE_NAME,STATUS,NUM_ROWS,BLOCKS,LAST_ANALYZED
    APEX_030200,SYS_IOT_OVER_71833,SYSAUX,VALID,0,0,06/08/2012 16:22:36
    APEX_030200,WWV_COLUMN_EXCEPTIONS,SYSAUX,VALID,3,3,06/08/2012 16:22:33
    APEX_030200,WWV_FLOWS,SYSAUX,VALID,10,3,06/08/2012 22:01:21
    APEX_030200,WWV_FLOWS_RESERVED,SYSAUX,VALID,0,0,06/08/2012 16:22:33
    APEX_030200,WWV_FLOW_ACTIVITY_LOG1$,SYSAUX,VALID,1,29,07/20/2012 19:07:57
    APEX_030200,WWV_FLOW_ACTIVITY_LOG2$,SYSAUX,VALID,14,29,07/20/2012 19:07:57
    APEX_030200,WWV_FLOW_ACTIVITY_LOG_NUMBER$,SYSAUX,VALID,1,3,07/20/2012 19:08:00
    APEX_030200,WWV_FLOW_ALTERNATE_CONFIG,SYSAUX,VALID,0,0,06/08/2012 16:22:33
    APEX_030200,WWV_FLOW_ALT_CONFIG_DETAIL,SYSAUX,VALID,0,0,06/08/2012 16:22:33

1. Turn the CSV file into an RTable The first thing we want to do is to read the file and turn it into an RTable. In order to do this we need to define the RTable Metadata, which is the same information one can provide in an SQL CREATE TABLE statement, i,e, column names, column data types and integrity constraints (Primary Key, Unique Key only - no Foreign Keys). So lets see how this is done:

    -- Define table metadata
    src_DBTab_MData :: RTableMData
    src_DBTab_MData =
	    createRTableMData   (   "sourceTab"  -- table name
                                 ,[  ("OWNER", Varchar)                                      -- Owner of the table
                                    ,("TABLE_NAME", Varchar)                                -- Name of the table
                                    ,("TABLESPACE_NAME", Varchar)                           -- Tablespace name
                                    ,("STATUS",Varchar)                                     -- Status of the table object (VALID/IVALID)
                                    ,("NUM_ROWS", Integer)                                  -- Number of rows in the table
                                    ,("BLOCKS", Integer)                                    -- Number of Blocks allocated for this table
                                    ,("LAST_ANALYZED", Timestamp "MM/DD/YYYY HH24:MI:SS")   -- Timestamp of the last time the table was analyzed (i.e., gathered statistics)
                                  ]
                             )
                                ["OWNER", "TABLE_NAME"] -- primary key
                                [] -- (alternative) unique keys
    main :: IO ()
    main = do
       -- read source csv file
       srcCSV <- readCSV "./app/test-data.csv"    
       let
         -- turn source csv to an RTable
         src_DBTab = toRTable src_DBTab_MData srcCSV
    ...

We have used the following functions:

-- | createRTableMData : creates RTableMData from input given in the form of a list
--   We assume that the column order of the input list defines the fixed column order of the RTuple.
createRTableMData ::
        (RTableName, [(ColumnName, ColumnDType)])
        -> [ColumnName]     -- ^ Primary Key. [] if no PK exists
        -> [[ColumnName]]   -- ^ list of unique keys. [] if no unique keys exists
        -> RTableMData

in order to define the RTable metadata. For reading the CSV file we have used:

-- | readCSV: reads a CSV file and returns a CSV data type (Treating CSV data as opaque byte strings)
readCSV ::
    FilePath  -- ^ the CSV file
    -> IO CSV  -- ^ the output CSV type

Finally, in order to turn the CSV data type into an RTable, we have used function:

toRTable :: RTableMData -> CSV -> RTable

which comes from the RTabular type class instance of the CSV data type. 2. Query the RTable Once we have created an RTable, we can issue queries on it, or apply any type of data transformations. Note that due to immutability, each query or data transformation creates a new RTable. We will now issue the following query: We return all the rows, which correspond to some filter predicate - in particular all rows where the TABLE_NAME includes some search string and the LAST_ANALYZED field is greater than an input date.

For this we use the Julius EDSL, in order to express the query and then with the function runJulius, we evaluate the expression into an RTable.

runJulius :: ETLMappingExpr -> IO RTable

Here is the Julius expression that yield the desired results.

julExpr srch dtstr rtab = 
            EtlMapStart 
                :-> (EtlR $
                        ROpStart
                        :.  (Filter (From $ Tab rtab) $
                                FilterBy (\t -> case instrRText (RText srch) (t <!> "TABLE_NAME") of
                                                    Just p  -> True
                                                    Nothing -> False
                                                &&
                                                (t <!> "LAST_ANALYZED") >= (RTime $ toRTimestamp "DD/MM/YYYY" dtstr)
                                         )
                            )
                    )

A Julius expression is a data processing chain consisting of various Relational Algebra operations (EtlR $ ...) and/or column mappings (EtlC $ ...) connected together via the :-> data constructor, of the form (Julius expressions are read from top-to-bottom or from left-to-right):

myJulExpression =
	EtlMapStart
	:-> (EtlC $ ...)  -- this is a Column Mapping
	:-> (EtlR $   -- this is a series of Relational Algebra Operations
	     ROpStart
	  :. (Rel Operation 1) -- a relational algebra operation
	  :. (Rel Operation 2))
	:-> (EtlC $ ...)  -- This is another Column Mapping
	:-> (EtlR $ -- more relational algebra operations
	     ROpStart
	  :. (Rel Operation 3)
	  :. (Rel Operation 4)
	  :. (Rel Operation 5))
	:-> (EtlC $ ...) -- This is Column Mapping 3
	:-> (EtlC $ ...) -- This is Column Mapping 4
	...

In our example, the Julius expression consists only of a single relational algebra operation, namely a Filter operation, which uses an RTuple predicate of the form RTuple -> Bool to filter out RTuples (i.e., rows) that dont satisfy this predicate. The predicate is expressed as the lambda expression:

FilterBy (\t -> case instrRText (RText srch) (t <!> "TABLE_NAME") of
                                                    Just p  -> True
                                                    Nothing -> False
                                                &&
                                                (t <!> "LAST_ANALYZED") >= (RTime $ toRTimestamp "DD/MM/YYYY" dtstr)

We use the instrRText function to find these table_name values that include the srch string. Also, we use the toRTimestamp function, in order to turn the date string dtstr into an RTimestamp data type and compare it against the LAST_ANALYZED column,

Finally, in order to print the result of the query on the screen, we use the

printfRTable :: RTupleFormat -> RTable -> IO()

function, which brings printf-like functionality into the printing of RTables And here is the output:

$ stack exec -- exampleDBFunctor

Print all tables that incude a "search string" in their name and have been analyzed after a specific date

Give me the search string:
FLOW
Give me the date in "DD/MM/YYYY" format:
01/04/2018
---------------------------------------------------------------------------------------------------------------------------------
OWNER           TABLE_NAME                        TABLESPACE_NAME     STATUS     NUM_ROWS     BLOCKS     LAST_ANALYZED
~~~~~           ~~~~~~~~~~                        ~~~~~~~~~~~~~~~     ~~~~~~     ~~~~~~~~     ~~~~~~     ~~~~~~~~~~~~~
APEX_040100     WWV_FLOW_ACTIVITY_LOG1$           SYSAUX              VALID      4052         155        04/04/2018 18:19:56
APEX_040100     WWV_FLOW_ACTIVITY_LOG2$           SYSAUX              VALID      1771         92         16/04/2018 17:33:16
APEX_040100     WWV_FLOW_ACTIVITY_LOG_NUMBER$     SYSAUX              VALID      1            3          10/04/2018 16:09:25
APEX_040100     WWV_FLOW_COMPANIES                SYSAUX              VALID      10           3          16/04/2018 17:33:13
APEX_040100     WWV_FLOW_DATA                     SYSAUX              VALID      109          155        16/04/2018 16:06:38
APEX_040100     WWV_FLOW_DEBUG_MESSAGES2          SYSAUX              VALID      0            0          10/04/2018 16:09:25
APEX_040100     WWV_FLOW_FND_USER                 SYSAUX              VALID      50           3          05/04/2018 18:09:23
APEX_040100     WWV_FLOW_PAGE_CACHE               SYSAUX              VALID      22           3          05/04/2018 18:35:18
APEX_040100     WWV_FLOW_SESSIONS$                SYSAUX              VALID      182          26         16/04/2018 16:07:13
APEX_040100     WWV_FLOW_USER_ACCESS_LOG1$        SYSAUX              VALID      127          5          11/04/2018 18:27:17
APEX_040100     WWV_FLOW_USER_ACCESS_LOG2$        SYSAUX              VALID      39           5          16/04/2018 17:30:59
APEX_040100     WWV_FLOW_USER_ACCESS_LOG_NUM$     SYSAUX              VALID      1            3          12/04/2018 16:30:05
APEX_040100     WWV_FLOW_WORKSHEET_CONDITIONS     SYSAUX              VALID      501          18         16/04/2018 17:33:03
APEX_040100     WWV_FLOW_WORKSHEET_GROUP_BY       SYSAUX              VALID      22           3          03/04/2018 17:44:07
APEX_040100     WWV_FLOW_WORKSHEET_RPTS           SYSAUX              VALID      505          16         16/04/2018 17:33:01
FLOWS_FILES     WWV_FLOW_FILE_OBJECTS$            SYSAUX              VALID      302          16         13/04/2018 18:00:05


16 rows returned
---------------------------------------------------------------------------------------------------------------------------------

Here is the complete example.

{-# LANGUAGE OverloadedStrings #-}

module Main where

import  Etl.Julius  
import  RTable.Data.CSV     (CSV, readCSV, toRTable, writeCSV)
import  Data.Text.IO as T   (getLine)

-- This is the input source table metadata
-- It includes the tables stored in an imaginary database
src_DBTab_MData :: RTableMData
src_DBTab_MData = 
    createRTableMData   (   "sourceTab"  -- table name
                            ,[  ("OWNER", Varchar)                                      -- Owner of the table
                                ,("TABLE_NAME", Varchar)                                -- Name of the table
                                ,("TABLESPACE_NAME", Varchar)                           -- Tablespace name
                                ,("STATUS",Varchar)                                     -- Status of the table object (VALID/IVALID)
                                ,("NUM_ROWS", Integer)                                  -- Number of rows in the table
                                ,("BLOCKS", Integer)                                    -- Number of Blocks allocated for this table
                                ,("LAST_ANALYZED", Timestamp "MM/DD/YYYY HH24:MI:SS")   -- Timestamp of the last time the table was analyzed (i.e., gathered statistics) 
                            ]
                        )
                        ["OWNER", "TABLE_NAME"] -- primary key
                        [] -- (alternative) unique keys

-- Result RTable metadata
result_tab_MData :: RTableMData
result_tab_MData = 
    createRTableMData   (   "resultTab"  -- table name
                            ,[  ("OWNER", Varchar)                                      -- Owner of the table
                                ,("TABLE_NAME", Varchar)                                -- Name of the table
                                ,("LAST_ANALYZED", Timestamp "MM/DD/YYYY HH24:MI:SS")   -- Timestamp of the last time the table was analyzed (i.e., gathered statistics) 
                            ]
                        )
                        ["OWNER", "TABLE_NAME"] -- primary key
                        [] -- (alternative) unique keys

main :: IO ()
main = do
     -- read source csv file
    srcCSV <- readCSV "./app/test-data.csv"

    putStrLn "\nPrint all tables that incude a \"search string\" in their name and have been analyzed after a specific date\n"
    putStrLn "Give me the search string: "
    search <- T.getLine

    putStrLn "Give me the date in \"DD/MM/YYYY\" format: "
    datestr <- Prelude.getLine
        

    -- print source RTable first n rows
    -- RTable A
    resultRTab <- runJulius $ julExpr search datestr $ toRTable src_DBTab_MData srcCSV 
    printfRTable (  
                    -- this is the equivalent when printing on the screen a list of columns, defined in a SELECT clause in SQL
                    genRTupleFormat ["OWNER", "TABLE_NAME", "TABLESPACE_NAME", "STATUS", "NUM_ROWS", "BLOCKS", "LAST_ANALYZED"] genDefaultColFormatMap
                 ) $ resultRTab  

    -- save result to a CSV file
    writeCSV "./app/result-data.csv" $ 
                    fromRTable result_tab_MData resultRTab
    where
        julExpr srch dtstr rtab = 
            EtlMapStart 
                :-> (EtlR $
                        ROpStart
                        :.  (Filter (From $ Tab rtab) $
                                FilterBy (\t -> case instrRText (RText srch) (t <!> "TABLE_NAME") of
                                                    Just p  -> True
                                                    Nothing -> False
                                                &&
                                                (t <!> "LAST_ANALYZED") >= (RTime $ toRTimestamp "DD/MM/YYYY" dtstr)
                                         )
                            )
                    )

Julius DSL Tutorial

We have written a Julius tutorial to help you get started with Julius DSL.

How to run

1. Install Stack

See this guide for help. If you have stack already installed, then we suggest you run a stack upgrade, in order to update it to the latest version and avoid any error messages due to bugs. Then run a stack update, in order to update the package index.

2. Initiate a project

$ stack new myDBFunctorProject

3. Start coding with DBFunctor

Don't forget:

  • to import Etl.Julius module
  • to use GHC extension {-# LANGUAGE OverloadedStrings #-}, since DBFunctor uses Text in all of its basic data types, this extension is necessary if you want to assign string literal values to an RDataType (the type of a column in an RTable)

4. Declare dependency with DBFunctor package

Edit your package.yaml (or project.cabal) file and add the dependency to the DBFunctor package

dependencies:
- DBFunctor

Also, don't forget to add to your stack.yaml file the line:

   extra-deps:
    - DBFunctor-0.1.1.0

5. Build and run you project

$ stack build

Run

stack exec -- myDBFunctorProject-exe
1

ETL stands for Extract Transform and Load and is the standard technology for accomplishing data management tasks in Data Warehouses / Data Marts and in general for preparing data for any analytic purposes (Ad hoc queries, data exploration/data analysis, Reporting and Business Intelligence, feeding Machine Learning algorithms, etc.). ELT is a newer variation of ETL and means that the data are first Loaded into their final destination and then the data transformation runs in-place (as opposed to running at a separate staging area on possibly a different server)).