SlideShare a Scribd company logo
1 of 3
RESUME
Name: Basu K S Mobile : +91-8892294845
SAP BODS ETL Developer E-mail :basuks05@gmail.com
Bangalore,Karnataka
CAREER OBJECTIVE
To be a part of reputedandgrowingcompanythatindulgesprofessionalgrowthaswell as
provideschallengingandrewardingcareer thatcouldbroadenmytechnical, personal andsocial
competence.
PROFESSIONAL SUMMARY
 Have 3.4 Years of experiencein developmentandmaintenance of datawarehouse anddata
migration.
 Workedon toolsnamelySAPBODS,InformationStewardandSQLServer2005/2012.
 Hands onexperienceinwritingSQLstoredprocedures,functionsandqueriesusingT-SQL.
 Good knowledgeof DataIntegrator,Data QualityandPlatformtransforms.
 Hands onexperienceinwritingBODScustomfunctions.
 Have excellentskillsof debuggingcomplex designof BODSdatatransformationsandproduction
issues.
 Good inAdministeringDataServices
 Full projectlife-cycleexperience.
 Have good experience inPerformance tuning.
 Workedon ETL job migrationfromdevelopmenttotestandtestto productionenvironment.
 Have involvedinprojectmanagementactivitiesandreleaseactivities.
 Excellentorganizational andprioritizingskillsfordeliveryof resultswithinaspecifictime frame.
 Good communicationandinterpersonalskills,whichfostergoodworkingrelationshipwith
clientsandcolleagues.
 Innovative inapproach,enjoylearningnew methods, ideasandputtingthemintodailypractice.
TECHNICAL SKILL SET
 SAP BODS -Version 3.1 and 4.2 (Business Objects Data Services)
 T-SQL ( SQL Server 2005 and 2012)
 Information Steward
 AgileWF scheduling tool.
 Batch Scripting
 PL/SQL
PROFESSIONAL EXPERIENCE
 Current Company: Utopia
 Previous Company: Mindtree
PROJECT DETAILS
Project# 1
Title :SONOCO- DW & BI SERVICES
Client :SONOCO
Tools & Technologies :BODI 3.0/BODS 4.0, T-SQL, AgileWF3.0,SQLServer2005/2012
Description:
Sonocois the world's largestproducerof packages.Sonoco’soperationsconsistof itsconsumerpackaging
businesses.We are buildingdatawarehouse toanalyze the productionandsalesdata.
Role: ETL Developer
Responsibilities:
 Provide ETL designtoprocessthe business data.
 Developmentof ETLjobsand file handlingjobs atall the layersof data-warehouse.
 Data cleansingusingInformationStewardsCleansingpackage builderandData Insights.
 End to endimplementationof ETLjobs.
 Workingon anynewdevelopmentof ETLjobsthat are requestedbythe client.
 WritingSQL storedproceduresandqueries.
 Extensive knowledge on optimization of BODS ETL Jobs.
 Workingon the Incidentsoccurreddue tofailure inthe dailyproductionloadand fixing
them.
 Supportingdailycallswithonsiteteamandupdatingthe taskstatusand discussingthe
requirements.
 Doingthe DW maintenance activitiesandhelpingthe teammembersinmajorissues.
 ProvidedUATsupport- AnalyzingandclarifyingUATissues.
 Migrationof jobs,parallel runsof the jobsanddata comparison.
 Monitoringandmanagingsystemalerts,mailsandtickets.
Project #2
Title : Centre of Excellence for DW-BI
Client : Mindtree Internal project
Tools & Technologies : SAP BODS 4.0, Xcelsius
Description:
DevelopdashboardsusingSAPXcelsiustopresentdifferentKeyPerformanceIndicatorsinBFSI
domainwhichcan be usedas a template forotherprojects.
Role: ETL Developer
Responsibilities:
 Building BODS jobs and File handling jobs.
 Data standardization using Information Steward.
 Unit testing and link testing of the jobs to ensure data accuracy.
 Preparingunittestcasesandunittesting.
 Data reconciliation.
 Creating development tracker documents to keep track of Jobs.
EDUCATION
Bachelor of Engineering in Computer science from S D M College of Engineering and Technology
(VTU), Dharwad in June 2012 with an aggregate of 68.90%.
PERSONAL DETAILS
Father's Name : KallappaN Siddannavar
Date of Birth : 5th Feb1989
Nationality : Indian
Marital Status : Single
Interests : Readingnewspaper,Swimming,Playingvolleyball
Languages Known : English,Hindi,KannadaandMarathi
PASSPORT DETAILS
Passport No : K3829654
Place of Issue : Bangalore
Valid Till : 26-08-2022
I herebydeclare thatthe informationfurnishedabove istrue tothe bestof my knowledgeand
beliefs.
Thanks,
Basu K S

More Related Content

What's hot

Structuring Spark: DataFrames, Datasets, and Streaming by Michael Armbrust
Structuring Spark: DataFrames, Datasets, and Streaming by Michael ArmbrustStructuring Spark: DataFrames, Datasets, and Streaming by Michael Armbrust
Structuring Spark: DataFrames, Datasets, and Streaming by Michael ArmbrustSpark Summit
 
Data Quality Patterns in the Cloud with Azure Data Factory
Data Quality Patterns in the Cloud with Azure Data FactoryData Quality Patterns in the Cloud with Azure Data Factory
Data Quality Patterns in the Cloud with Azure Data FactoryMark Kromer
 
Pipelines and Data Flows: Introduction to Data Integration in Azure Synapse A...
Pipelines and Data Flows: Introduction to Data Integration in Azure Synapse A...Pipelines and Data Flows: Introduction to Data Integration in Azure Synapse A...
Pipelines and Data Flows: Introduction to Data Integration in Azure Synapse A...Cathrine Wilhelmsen
 
Open Source ETL vs Commercial ETL
Open Source ETL vs Commercial ETLOpen Source ETL vs Commercial ETL
Open Source ETL vs Commercial ETLJonathan Levin
 
The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...
The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...
The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...Databricks
 
Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...
Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...
Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...Databricks
 
ELT vs. ETL - How they’re different and why it matters
ELT vs. ETL - How they’re different and why it mattersELT vs. ETL - How they’re different and why it matters
ELT vs. ETL - How they’re different and why it mattersMatillion
 
SQL Analytics Powering Telemetry Analysis at Comcast
SQL Analytics Powering Telemetry Analysis at ComcastSQL Analytics Powering Telemetry Analysis at Comcast
SQL Analytics Powering Telemetry Analysis at ComcastDatabricks
 
Data Modeling on Azure for Analytics
Data Modeling on Azure for AnalyticsData Modeling on Azure for Analytics
Data Modeling on Azure for AnalyticsIke Ellis
 
Talend Introduction by TSI
Talend Introduction by TSITalend Introduction by TSI
Talend Introduction by TSIRemain Software
 
Microsoft Azure Data Factory Hands-On Lab Overview Slides
Microsoft Azure Data Factory Hands-On Lab Overview SlidesMicrosoft Azure Data Factory Hands-On Lab Overview Slides
Microsoft Azure Data Factory Hands-On Lab Overview SlidesMark Kromer
 
Partner Connect APAC - 2022 - April
Partner Connect APAC - 2022 - AprilPartner Connect APAC - 2022 - April
Partner Connect APAC - 2022 - Aprilconfluent
 
1- Introduction of Azure data factory.pptx
1- Introduction of Azure data factory.pptx1- Introduction of Azure data factory.pptx
1- Introduction of Azure data factory.pptxBRIJESH KUMAR
 
Building Lakehouses on Delta Lake with SQL Analytics Primer
Building Lakehouses on Delta Lake with SQL Analytics PrimerBuilding Lakehouses on Delta Lake with SQL Analytics Primer
Building Lakehouses on Delta Lake with SQL Analytics PrimerDatabricks
 
Modern-Data-Warehouses-In-The-Cloud-Use-Cases-Slim-Baltagi
Modern-Data-Warehouses-In-The-Cloud-Use-Cases-Slim-BaltagiModern-Data-Warehouses-In-The-Cloud-Use-Cases-Slim-Baltagi
Modern-Data-Warehouses-In-The-Cloud-Use-Cases-Slim-BaltagiSlim Baltagi
 
Pipelines and Packages: Introduction to Azure Data Factory (DATA:Scotland 2019)
Pipelines and Packages: Introduction to Azure Data Factory (DATA:Scotland 2019)Pipelines and Packages: Introduction to Azure Data Factory (DATA:Scotland 2019)
Pipelines and Packages: Introduction to Azure Data Factory (DATA:Scotland 2019)Cathrine Wilhelmsen
 
Databricks: A Tool That Empowers You To Do More With Data
Databricks: A Tool That Empowers You To Do More With DataDatabricks: A Tool That Empowers You To Do More With Data
Databricks: A Tool That Empowers You To Do More With DataDatabricks
 
Talend Big Data Capabilities Overview
Talend Big Data Capabilities OverviewTalend Big Data Capabilities Overview
Talend Big Data Capabilities OverviewRajan Kanitkar
 
Azure Data Factory for Azure Data Week
Azure Data Factory for Azure Data WeekAzure Data Factory for Azure Data Week
Azure Data Factory for Azure Data WeekMark Kromer
 
Creating a Data validation and Testing Strategy
Creating a Data validation and Testing StrategyCreating a Data validation and Testing Strategy
Creating a Data validation and Testing StrategyRTTS
 

What's hot (20)

Structuring Spark: DataFrames, Datasets, and Streaming by Michael Armbrust
Structuring Spark: DataFrames, Datasets, and Streaming by Michael ArmbrustStructuring Spark: DataFrames, Datasets, and Streaming by Michael Armbrust
Structuring Spark: DataFrames, Datasets, and Streaming by Michael Armbrust
 
Data Quality Patterns in the Cloud with Azure Data Factory
Data Quality Patterns in the Cloud with Azure Data FactoryData Quality Patterns in the Cloud with Azure Data Factory
Data Quality Patterns in the Cloud with Azure Data Factory
 
Pipelines and Data Flows: Introduction to Data Integration in Azure Synapse A...
Pipelines and Data Flows: Introduction to Data Integration in Azure Synapse A...Pipelines and Data Flows: Introduction to Data Integration in Azure Synapse A...
Pipelines and Data Flows: Introduction to Data Integration in Azure Synapse A...
 
Open Source ETL vs Commercial ETL
Open Source ETL vs Commercial ETLOpen Source ETL vs Commercial ETL
Open Source ETL vs Commercial ETL
 
The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...
The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...
The Future of Data Science and Machine Learning at Scale: A Look at MLflow, D...
 
Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...
Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...
Dynamic DDL: Adding Structure to Streaming Data on the Fly with David Winters...
 
ELT vs. ETL - How they’re different and why it matters
ELT vs. ETL - How they’re different and why it mattersELT vs. ETL - How they’re different and why it matters
ELT vs. ETL - How they’re different and why it matters
 
SQL Analytics Powering Telemetry Analysis at Comcast
SQL Analytics Powering Telemetry Analysis at ComcastSQL Analytics Powering Telemetry Analysis at Comcast
SQL Analytics Powering Telemetry Analysis at Comcast
 
Data Modeling on Azure for Analytics
Data Modeling on Azure for AnalyticsData Modeling on Azure for Analytics
Data Modeling on Azure for Analytics
 
Talend Introduction by TSI
Talend Introduction by TSITalend Introduction by TSI
Talend Introduction by TSI
 
Microsoft Azure Data Factory Hands-On Lab Overview Slides
Microsoft Azure Data Factory Hands-On Lab Overview SlidesMicrosoft Azure Data Factory Hands-On Lab Overview Slides
Microsoft Azure Data Factory Hands-On Lab Overview Slides
 
Partner Connect APAC - 2022 - April
Partner Connect APAC - 2022 - AprilPartner Connect APAC - 2022 - April
Partner Connect APAC - 2022 - April
 
1- Introduction of Azure data factory.pptx
1- Introduction of Azure data factory.pptx1- Introduction of Azure data factory.pptx
1- Introduction of Azure data factory.pptx
 
Building Lakehouses on Delta Lake with SQL Analytics Primer
Building Lakehouses on Delta Lake with SQL Analytics PrimerBuilding Lakehouses on Delta Lake with SQL Analytics Primer
Building Lakehouses on Delta Lake with SQL Analytics Primer
 
Modern-Data-Warehouses-In-The-Cloud-Use-Cases-Slim-Baltagi
Modern-Data-Warehouses-In-The-Cloud-Use-Cases-Slim-BaltagiModern-Data-Warehouses-In-The-Cloud-Use-Cases-Slim-Baltagi
Modern-Data-Warehouses-In-The-Cloud-Use-Cases-Slim-Baltagi
 
Pipelines and Packages: Introduction to Azure Data Factory (DATA:Scotland 2019)
Pipelines and Packages: Introduction to Azure Data Factory (DATA:Scotland 2019)Pipelines and Packages: Introduction to Azure Data Factory (DATA:Scotland 2019)
Pipelines and Packages: Introduction to Azure Data Factory (DATA:Scotland 2019)
 
Databricks: A Tool That Empowers You To Do More With Data
Databricks: A Tool That Empowers You To Do More With DataDatabricks: A Tool That Empowers You To Do More With Data
Databricks: A Tool That Empowers You To Do More With Data
 
Talend Big Data Capabilities Overview
Talend Big Data Capabilities OverviewTalend Big Data Capabilities Overview
Talend Big Data Capabilities Overview
 
Azure Data Factory for Azure Data Week
Azure Data Factory for Azure Data WeekAzure Data Factory for Azure Data Week
Azure Data Factory for Azure Data Week
 
Creating a Data validation and Testing Strategy
Creating a Data validation and Testing StrategyCreating a Data validation and Testing Strategy
Creating a Data validation and Testing Strategy
 

Viewers also liked (13)

7
77
7
 
Manual de serviço turuna82 embreage
Manual de serviço turuna82 embreageManual de serviço turuna82 embreage
Manual de serviço turuna82 embreage
 
app
appapp
app
 
Tarun_Medimi
Tarun_MedimiTarun_Medimi
Tarun_Medimi
 
Lesson2CraftingYourResume
Lesson2CraftingYourResumeLesson2CraftingYourResume
Lesson2CraftingYourResume
 
TARIFARIO
TARIFARIOTARIFARIO
TARIFARIO
 
2-page Resume ICO Jared Thibou
2-page Resume ICO Jared Thibou2-page Resume ICO Jared Thibou
2-page Resume ICO Jared Thibou
 
Resume
ResumeResume
Resume
 
Pradeep_resume_ETL Testing
Pradeep_resume_ETL TestingPradeep_resume_ETL Testing
Pradeep_resume_ETL Testing
 
Akshata
AkshataAkshata
Akshata
 
Mukhtar resume etl_developer
Mukhtar resume etl_developerMukhtar resume etl_developer
Mukhtar resume etl_developer
 
ETL_Developer_Resume_Shipra_7_02_17
ETL_Developer_Resume_Shipra_7_02_17ETL_Developer_Resume_Shipra_7_02_17
ETL_Developer_Resume_Shipra_7_02_17
 
Sudhir hadoop and Data warehousing resume
Sudhir hadoop and Data warehousing resume Sudhir hadoop and Data warehousing resume
Sudhir hadoop and Data warehousing resume
 

Similar to SAP BODS ETL Developer resume

Similar to SAP BODS ETL Developer resume (20)

Nitin Paliwal
Nitin PaliwalNitin Paliwal
Nitin Paliwal
 
Imran_SAP_BI_BW_BODS_RESUME
Imran_SAP_BI_BW_BODS_RESUMEImran_SAP_BI_BW_BODS_RESUME
Imran_SAP_BI_BW_BODS_RESUME
 
Ashish_Maheshwari_Data_Analyst
Ashish_Maheshwari_Data_AnalystAshish_Maheshwari_Data_Analyst
Ashish_Maheshwari_Data_Analyst
 
SriramadeviResume_Updated1
SriramadeviResume_Updated1SriramadeviResume_Updated1
SriramadeviResume_Updated1
 
Chandan's_Resume
Chandan's_ResumeChandan's_Resume
Chandan's_Resume
 
Senthilkumar_SQL_New
Senthilkumar_SQL_NewSenthilkumar_SQL_New
Senthilkumar_SQL_New
 
Sakthi Shenbagam - Data warehousing Consultant
Sakthi Shenbagam - Data warehousing ConsultantSakthi Shenbagam - Data warehousing Consultant
Sakthi Shenbagam - Data warehousing Consultant
 
Msbi power bi_ lead
Msbi power bi_ leadMsbi power bi_ lead
Msbi power bi_ lead
 
SriramadeviResume
SriramadeviResumeSriramadeviResume
SriramadeviResume
 
Resume_Shikha_Dargainya
Resume_Shikha_DargainyaResume_Shikha_Dargainya
Resume_Shikha_Dargainya
 
PASHA MSBI
PASHA MSBIPASHA MSBI
PASHA MSBI
 
indranil_sinha_cv
indranil_sinha_cvindranil_sinha_cv
indranil_sinha_cv
 
Original resume
Original resumeOriginal resume
Original resume
 
VamsiKrishna Maddiboina
VamsiKrishna MaddiboinaVamsiKrishna Maddiboina
VamsiKrishna Maddiboina
 
Jishnu_Sreekumar_Resume
Jishnu_Sreekumar_ResumeJishnu_Sreekumar_Resume
Jishnu_Sreekumar_Resume
 
ChakravarthyUppara
ChakravarthyUpparaChakravarthyUppara
ChakravarthyUppara
 
Ganesh CV
Ganesh CVGanesh CV
Ganesh CV
 
ABHINAV KAUSHIK(IT Professional)
ABHINAV KAUSHIK(IT Professional)ABHINAV KAUSHIK(IT Professional)
ABHINAV KAUSHIK(IT Professional)
 
Magesh_Babu_Resume
Magesh_Babu_ResumeMagesh_Babu_Resume
Magesh_Babu_Resume
 
Shraddha Verma_IT_ETL Architect_10+_CV
Shraddha Verma_IT_ETL Architect_10+_CVShraddha Verma_IT_ETL Architect_10+_CV
Shraddha Verma_IT_ETL Architect_10+_CV
 

SAP BODS ETL Developer resume

  • 1. RESUME Name: Basu K S Mobile : +91-8892294845 SAP BODS ETL Developer E-mail :basuks05@gmail.com Bangalore,Karnataka CAREER OBJECTIVE To be a part of reputedandgrowingcompanythatindulgesprofessionalgrowthaswell as provideschallengingandrewardingcareer thatcouldbroadenmytechnical, personal andsocial competence. PROFESSIONAL SUMMARY  Have 3.4 Years of experiencein developmentandmaintenance of datawarehouse anddata migration.  Workedon toolsnamelySAPBODS,InformationStewardandSQLServer2005/2012.  Hands onexperienceinwritingSQLstoredprocedures,functionsandqueriesusingT-SQL.  Good knowledgeof DataIntegrator,Data QualityandPlatformtransforms.  Hands onexperienceinwritingBODScustomfunctions.  Have excellentskillsof debuggingcomplex designof BODSdatatransformationsandproduction issues.  Good inAdministeringDataServices  Full projectlife-cycleexperience.  Have good experience inPerformance tuning.  Workedon ETL job migrationfromdevelopmenttotestandtestto productionenvironment.  Have involvedinprojectmanagementactivitiesandreleaseactivities.  Excellentorganizational andprioritizingskillsfordeliveryof resultswithinaspecifictime frame.  Good communicationandinterpersonalskills,whichfostergoodworkingrelationshipwith clientsandcolleagues.  Innovative inapproach,enjoylearningnew methods, ideasandputtingthemintodailypractice. TECHNICAL SKILL SET  SAP BODS -Version 3.1 and 4.2 (Business Objects Data Services)  T-SQL ( SQL Server 2005 and 2012)  Information Steward  AgileWF scheduling tool.  Batch Scripting  PL/SQL PROFESSIONAL EXPERIENCE  Current Company: Utopia  Previous Company: Mindtree
  • 2. PROJECT DETAILS Project# 1 Title :SONOCO- DW & BI SERVICES Client :SONOCO Tools & Technologies :BODI 3.0/BODS 4.0, T-SQL, AgileWF3.0,SQLServer2005/2012 Description: Sonocois the world's largestproducerof packages.Sonoco’soperationsconsistof itsconsumerpackaging businesses.We are buildingdatawarehouse toanalyze the productionandsalesdata. Role: ETL Developer Responsibilities:  Provide ETL designtoprocessthe business data.  Developmentof ETLjobsand file handlingjobs atall the layersof data-warehouse.  Data cleansingusingInformationStewardsCleansingpackage builderandData Insights.  End to endimplementationof ETLjobs.  Workingon anynewdevelopmentof ETLjobsthat are requestedbythe client.  WritingSQL storedproceduresandqueries.  Extensive knowledge on optimization of BODS ETL Jobs.  Workingon the Incidentsoccurreddue tofailure inthe dailyproductionloadand fixing them.  Supportingdailycallswithonsiteteamandupdatingthe taskstatusand discussingthe requirements.  Doingthe DW maintenance activitiesandhelpingthe teammembersinmajorissues.  ProvidedUATsupport- AnalyzingandclarifyingUATissues.  Migrationof jobs,parallel runsof the jobsanddata comparison.  Monitoringandmanagingsystemalerts,mailsandtickets. Project #2 Title : Centre of Excellence for DW-BI Client : Mindtree Internal project Tools & Technologies : SAP BODS 4.0, Xcelsius Description: DevelopdashboardsusingSAPXcelsiustopresentdifferentKeyPerformanceIndicatorsinBFSI domainwhichcan be usedas a template forotherprojects. Role: ETL Developer
  • 3. Responsibilities:  Building BODS jobs and File handling jobs.  Data standardization using Information Steward.  Unit testing and link testing of the jobs to ensure data accuracy.  Preparingunittestcasesandunittesting.  Data reconciliation.  Creating development tracker documents to keep track of Jobs. EDUCATION Bachelor of Engineering in Computer science from S D M College of Engineering and Technology (VTU), Dharwad in June 2012 with an aggregate of 68.90%. PERSONAL DETAILS Father's Name : KallappaN Siddannavar Date of Birth : 5th Feb1989 Nationality : Indian Marital Status : Single Interests : Readingnewspaper,Swimming,Playingvolleyball Languages Known : English,Hindi,KannadaandMarathi PASSPORT DETAILS Passport No : K3829654 Place of Issue : Bangalore Valid Till : 26-08-2022 I herebydeclare thatthe informationfurnishedabove istrue tothe bestof my knowledgeand beliefs. Thanks, Basu K S