SlideShare ist ein Scribd-Unternehmen logo
1 von 6
RESUME
Name Sudhir Saxena
Total Experience 5.8 Years
Education MCA (Master of Computer Application)
Languages UNIX Shell scripting, Python, PL/SQL
Databases Netezza, DB2, Oracle 10g/11g, Microsoft SQL Server, PL/SQL,
SQL Developer, Hadoop (Hive DB)
Business Areas Software Development, Software Debugging,
Problem Solving & Unit testing
Framework ETL E3, Hera, Hadoop
SKILLS SUMMARY DataStage 9.1, 8.7, Unix shell Scripting, Python, Hadoop
(Hive DB, Pig, Sqoop), Control-M, Netezza, Oracle, DB2,
Unix, Spark, Scala
 Overall 5.8 Years of Professional IT experience in Data Warehousing and Business Intelligence.
 Having one year onsite experience in Mexico and USA with USAA Client, USA.
 Designed and Implemented DataStage Server and Parallel Jobs including Batch Jobs and Sequencers.
 Expertise in data warehousing techniques for data cleansing, Slowly Changing Dimension phenomenon.
 Extensive experience in design and implementation of Star Schema, Snowflake Schema and Multi-
Dimensional Modelling.
 Having good Knowledge in Bigdata, Hadoop, Pig, Hive, Sqoop, Hbase, Python, Spark, Scala.
 Experience in integration of various data sources like IBM DB2, Oracle, SQL Server, Netezza and Flat Files
using Active/Passive Stages available in Data Stage Tool.
 Sound understanding of Data Warehousing concepts.
 Extensively used ETL Methodology for supporting Data Extraction, transformation and loading processing
using Datastage 9.1, 8.7 and Data Warehousing (DWH).
 Having Knowledge in Data Modelling using Erwin Tools.
 Experience in Information Technology having strong programming skills, database design, Application
Development.
 Good Experience in support, maintenance and development projects.
 Ability to inspire creativity and work among team members with enthusiasm
 Positive attitude in phase of changes.
 A quick learner, committed, smart worker, self-motivated and an enthusiastic team player, good
communicator with a positive attitude and an open mind towards learning.
HCL Technologies India Page 1 of 5
Projects Profile:
Project Name LTB- RealEstate Mortgage
Client USAA
Role Technical Lead
Organization HCL Technologies, Chennai
Duration Feb 2017 to at Present
Project Description:
LTB- RealEstate Mortgage Project is the project where we are extracting data from SQL Server as source for all
the Loan Borrowers and Loading the data into data Warehouse and from Data warehouse to Data Mart based on
business requirement and Subject area. also, loading the data into Hadoop (Hive DB).
we are using Datastage 9.1, Unix shell Scripting, Python, Oracle, Netezza, Unix, ETL framework, Hera
Framework, Hadoop (Hive DB, Pig, Sqoop).
I am part of Technical team where i used to gather the requirement from Onsite Coordinator and client and share
the work among team member to get it done the work and verified the work. Helping team member to solve
technical issue and business requirement. After completion of project work, consolidated work used to send to
Onsite team member to get the sign off.
Responsibilities:
 To understand the client’s requirement
 Provide technical solution to team member
 Software Development
 Software Debugging
 Bug Fixing

Environment: Datastage 9.1, Oracle, Netezza, Unix Shell Scripting, Python,ETL E3 framework, Hadoop (Hive
DB, Pig, Sqoop), Control-M
Project Name LTB- RealEstate Mortgage
Client USAA
Role Technical Lead
Organization HCL Technologies, Mexico
Duration Feb 2016 to Jan 2017
Project Description:
LTB- RealEstate Mortgage Project is the project where we are extracting data from SQL Server as source for all
the Loan Borrowers and Loading the data into data Warehouse and from Data warehouse to Data Mart based on
business requirement and Subject area. also, loading the data into Hadoop (Hive DB).
we are using Datastage 9.1, Unix shell Scripting, Python, Oracle, Netezza, Unix, ETL framework, Hera
Framework, Hadoop (Hive DB, Pig, Sqoop)
I was part of Onsite Technical team where i used to gather the requirement from client directly and share the work
to offshore team member to get it done the work and verified the work. Helping offshore team member to solve
technical issue and business requirement. After completion of project work, present the demo to client and get the
sign off for work.
Responsibilities:
 To understand the client’s requirement
HCL Technologies India Page 2 of 5
 Provide technical solution to team member
 Software Development
 Software Debugging
 Bug Fixing
Environment: Datastage 9.1, Oracle, Netezza, Unix Shell Scripting, Python,ETL E3 framework, Hadoop (Hive
DB, Pig, Sqoop),Control-M
Project Name ETL Factory
Client USAA
Role Senior Datastage Developer
Organization HCL Technologies, Chennai
Duration Aug 2015 to Jan 2016
Project Description:
ETL Factory is the project for USAA where we are extracting data from Netezza as source and Loading data into
Hadoop (Hive DB) through ETL E3 Framework. We are using Datastage 9.1, Oracle, Netezza, Unix, ETL
framework, Hadoop (Hive DB).
I am part of Technical team where we are gathered the requirement and preparing source to target mapping and
based on mapping logic we are creating Datastage parallel and sequence job. we are using Datastage 9.1,
Oracle, Netezza, Unix, ETL E3 framework, Control-M, Hadoop (Hive DB)
Responsibilities:
 To understand the client’s requirement
 Create Source to Target Mapping
 Software Development
 Software Debugging
 Bug Fixing
Environment: Datastage 9.1, Oracle, Netezza, Unix shell scripting, ETL E3 framework, Hadoop (Hive
DB,Pig),Control-M
Project Name Financial Data Warehouse(FDW)
Client Ebay enterprises
Role Senior Datastage Developer
Organization HCL Technologies, Bangalore
Duration Nov 2014 to Jul 2015
Project Description:
FDW(Financial data warehousing) is the single source of data For SAP. The data in the FDW is used to calculate
the revenue and remittance amounts in SAP. The FDW integrates data from multiple sources
And stores them in the form of a star schema. FDW is a project for EBay enterprise finance team use SAP billing
to invoice and charge clients for all the services that were rendered to them.
Responsibilities:
 To understand the client’s requirement
 Create Source to Target Mapping
 Software Development
 Software Debugging
 Bug Fixing
HCL Technologies India Page 3 of 5
Environment: DataStage 9.1, Autosys, Netezza, Oracle11g, Unix Shell scripting, SQL Developer
Project Name Insurance Data Warehouse(IDW)
Client AIG
Role Senior Datastage Developer
Organization MindTree Ltd, Chennai
Duration Feb 2014 to Oct 2014
Project Description:
AIG Insurance Data Warehouse (IDW) is a consolidation point for Regions, Party, Policy and Objects (Vehicles,
Vessels), that holds the atomic level transactions relating to the Party, policy and claim domains. The IDW is the
enhancement and extended version of AIG-ODS also holds the claim, policy, object (e.g. vehicle, vessel) and
other issue of existing party as well as a common set of reference data loaded through datastage ETL.
Responsibilities:
 To understand the client’s requirement
 Create Source to Target Mapping
 Software Development
 Software Debugging
 Bug Fixing
Environment: DataStage 8.7, Unix Shell scripting, DB2, SQL Developer
Passport Details: H0885269
Validity: 24-09-2008 to 23-09-2018
Visa Details:
USA Visa: B1/B2
Validity: 16-Aug-2016 to 12-Aug-2026
Mexico visa: Work Permit
Validity: Till Feb 2017
Education Qualifications
• Master of Computer Applications (MCA) from College of Engineering, Anna University, Chennai with 80%
in 2011.
• Bachelor of Computer Application from IGNOU, New Delhi with 64.17% in 2007.
• 12th from M H K College, Motihari, Bihar in 2003.
Awards/Achievement
• Got Appreciation Certificate and Award for ‘Training Delivery and Development’ for Oct – Dec 2014 in
HCL Technologies Ltd.
• Got ‘Certificate of Excellence’ for certified Datastage trainer in HCL technologies Ltd in 2015-2016.
• Most Innovative Campus Mind in March 2012, by Mindtree Ltd.
• Shining Star in December 2011, by Mindtree Ltd.
HCL Technologies India Page 4 of 5
HCL Technologies India Page 5 of 5
HCL Technologies India Page 5 of 5

Weitere ähnliche Inhalte

Was ist angesagt?

Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...
Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...
Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...Data Con LA
 
Democratizing Data Science on Kubernetes
Democratizing Data Science on Kubernetes Democratizing Data Science on Kubernetes
Democratizing Data Science on Kubernetes John Archer
 
"Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr...
"Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr..."Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr...
"Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr...Dataconomy Media
 
Data Science at Speed. At Scale.
Data Science at Speed. At Scale.Data Science at Speed. At Scale.
Data Science at Speed. At Scale.DataWorks Summit
 
Simplifying AI and Machine Learning with Watson Studio
Simplifying AI and Machine Learning with Watson StudioSimplifying AI and Machine Learning with Watson Studio
Simplifying AI and Machine Learning with Watson StudioDataWorks Summit
 
Architecting Agile Data Applications for Scale
Architecting Agile Data Applications for ScaleArchitecting Agile Data Applications for Scale
Architecting Agile Data Applications for ScaleDatabricks
 
Ibm big data ibm marriage of hadoop and data warehousing
Ibm big dataibm marriage of hadoop and data warehousingIbm big dataibm marriage of hadoop and data warehousing
Ibm big data ibm marriage of hadoop and data warehousing DataWorks Summit
 
Why Data Lake should be the foundation of Enterprise Data Architecture
Why Data Lake should be the foundation of Enterprise Data ArchitectureWhy Data Lake should be the foundation of Enterprise Data Architecture
Why Data Lake should be the foundation of Enterprise Data ArchitectureAgilisium Consulting
 
Privacy-Preserving AI Network - PlatON 2.0
Privacy-Preserving AI Network - PlatON 2.0 Privacy-Preserving AI Network - PlatON 2.0
Privacy-Preserving AI Network - PlatON 2.0 ShiHeng1
 
Modern Data Architecture
Modern Data Architecture Modern Data Architecture
Modern Data Architecture Mark Hewitt
 
Driven by data - Why we need a Modern Enterprise Data Analytics Platform
Driven by data - Why we need a Modern Enterprise Data Analytics PlatformDriven by data - Why we need a Modern Enterprise Data Analytics Platform
Driven by data - Why we need a Modern Enterprise Data Analytics PlatformArne Roßmann
 
Hadoop Big Data Lakes Keynote
Hadoop Big Data Lakes KeynoteHadoop Big Data Lakes Keynote
Hadoop Big Data Lakes KeynoteMark van Rijmenam
 
2012 10 bigdata_overview
2012 10 bigdata_overview2012 10 bigdata_overview
2012 10 bigdata_overviewjdijcks
 
Microsoft and Hortonworks Delivers the Modern Data Architecture for Big Data
Microsoft and Hortonworks Delivers the Modern Data Architecture for Big DataMicrosoft and Hortonworks Delivers the Modern Data Architecture for Big Data
Microsoft and Hortonworks Delivers the Modern Data Architecture for Big DataHortonworks
 
InfoSphere BigInsights - Analytics power for Hadoop - field experience
InfoSphere BigInsights - Analytics power for Hadoop - field experienceInfoSphere BigInsights - Analytics power for Hadoop - field experience
InfoSphere BigInsights - Analytics power for Hadoop - field experienceWilfried Hoge
 
Flash session -streaming--ses1243-lon
Flash session -streaming--ses1243-lonFlash session -streaming--ses1243-lon
Flash session -streaming--ses1243-lonJeffrey T. Pollock
 
Operational Analytics Using Spark and NoSQL Data Stores
Operational Analytics Using Spark and NoSQL Data StoresOperational Analytics Using Spark and NoSQL Data Stores
Operational Analytics Using Spark and NoSQL Data StoresDATAVERSITY
 
2014.07.11 biginsights data2014
2014.07.11 biginsights data20142014.07.11 biginsights data2014
2014.07.11 biginsights data2014Wilfried Hoge
 
Creating a Next-Generation Big Data Architecture
Creating a Next-Generation Big Data ArchitectureCreating a Next-Generation Big Data Architecture
Creating a Next-Generation Big Data ArchitecturePerficient, Inc.
 

Was ist angesagt? (20)

Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...
Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...
Big Data Day LA 2015 - Data Lake - Re Birth of Enterprise Data Thinking by Ra...
 
Democratizing Data Science on Kubernetes
Democratizing Data Science on Kubernetes Democratizing Data Science on Kubernetes
Democratizing Data Science on Kubernetes
 
Semantic Data Management
Semantic Data ManagementSemantic Data Management
Semantic Data Management
 
"Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr...
"Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr..."Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr...
"Empower Developers with HPE Machine Learning and Augmented Intelligence", Dr...
 
Data Science at Speed. At Scale.
Data Science at Speed. At Scale.Data Science at Speed. At Scale.
Data Science at Speed. At Scale.
 
Simplifying AI and Machine Learning with Watson Studio
Simplifying AI and Machine Learning with Watson StudioSimplifying AI and Machine Learning with Watson Studio
Simplifying AI and Machine Learning with Watson Studio
 
Architecting Agile Data Applications for Scale
Architecting Agile Data Applications for ScaleArchitecting Agile Data Applications for Scale
Architecting Agile Data Applications for Scale
 
Ibm big data ibm marriage of hadoop and data warehousing
Ibm big dataibm marriage of hadoop and data warehousingIbm big dataibm marriage of hadoop and data warehousing
Ibm big data ibm marriage of hadoop and data warehousing
 
Why Data Lake should be the foundation of Enterprise Data Architecture
Why Data Lake should be the foundation of Enterprise Data ArchitectureWhy Data Lake should be the foundation of Enterprise Data Architecture
Why Data Lake should be the foundation of Enterprise Data Architecture
 
Privacy-Preserving AI Network - PlatON 2.0
Privacy-Preserving AI Network - PlatON 2.0 Privacy-Preserving AI Network - PlatON 2.0
Privacy-Preserving AI Network - PlatON 2.0
 
Modern Data Architecture
Modern Data Architecture Modern Data Architecture
Modern Data Architecture
 
Driven by data - Why we need a Modern Enterprise Data Analytics Platform
Driven by data - Why we need a Modern Enterprise Data Analytics PlatformDriven by data - Why we need a Modern Enterprise Data Analytics Platform
Driven by data - Why we need a Modern Enterprise Data Analytics Platform
 
Hadoop Big Data Lakes Keynote
Hadoop Big Data Lakes KeynoteHadoop Big Data Lakes Keynote
Hadoop Big Data Lakes Keynote
 
2012 10 bigdata_overview
2012 10 bigdata_overview2012 10 bigdata_overview
2012 10 bigdata_overview
 
Microsoft and Hortonworks Delivers the Modern Data Architecture for Big Data
Microsoft and Hortonworks Delivers the Modern Data Architecture for Big DataMicrosoft and Hortonworks Delivers the Modern Data Architecture for Big Data
Microsoft and Hortonworks Delivers the Modern Data Architecture for Big Data
 
InfoSphere BigInsights - Analytics power for Hadoop - field experience
InfoSphere BigInsights - Analytics power for Hadoop - field experienceInfoSphere BigInsights - Analytics power for Hadoop - field experience
InfoSphere BigInsights - Analytics power for Hadoop - field experience
 
Flash session -streaming--ses1243-lon
Flash session -streaming--ses1243-lonFlash session -streaming--ses1243-lon
Flash session -streaming--ses1243-lon
 
Operational Analytics Using Spark and NoSQL Data Stores
Operational Analytics Using Spark and NoSQL Data StoresOperational Analytics Using Spark and NoSQL Data Stores
Operational Analytics Using Spark and NoSQL Data Stores
 
2014.07.11 biginsights data2014
2014.07.11 biginsights data20142014.07.11 biginsights data2014
2014.07.11 biginsights data2014
 
Creating a Next-Generation Big Data Architecture
Creating a Next-Generation Big Data ArchitectureCreating a Next-Generation Big Data Architecture
Creating a Next-Generation Big Data Architecture
 

Andere mochten auch

What is A Cloud Stack in 2017
What is A Cloud Stack in 2017What is A Cloud Stack in 2017
What is A Cloud Stack in 2017Gaurav Roy
 
Design in Tech Report 2017
Design in Tech Report 2017Design in Tech Report 2017
Design in Tech Report 2017John Maeda
 
Mobile Finance: 2017 Trends and Innovations
Mobile Finance: 2017 Trends and InnovationsMobile Finance: 2017 Trends and Innovations
Mobile Finance: 2017 Trends and InnovationsCorporate Insight
 
AgensGraph: a Multi-model Graph Database based on PostgreSql
AgensGraph: a Multi-model Graph Database based on PostgreSqlAgensGraph: a Multi-model Graph Database based on PostgreSql
AgensGraph: a Multi-model Graph Database based on PostgreSqlKisung Kim
 
Comparing approaches: Running database workloads on Dell EMC and Microsoft hy...
Comparing approaches: Running database workloads on Dell EMC and Microsoft hy...Comparing approaches: Running database workloads on Dell EMC and Microsoft hy...
Comparing approaches: Running database workloads on Dell EMC and Microsoft hy...Principled Technologies
 
A project report on awareness of mutual funds 1
A project report on awareness of mutual funds 1A project report on awareness of mutual funds 1
A project report on awareness of mutual funds 1Nirali Nayi
 
DATA SCIENCE IS CATALYZING BUSINESS AND INNOVATION
DATA SCIENCE IS CATALYZING BUSINESS AND INNOVATION DATA SCIENCE IS CATALYZING BUSINESS AND INNOVATION
DATA SCIENCE IS CATALYZING BUSINESS AND INNOVATION Elvis Muyanja
 
Comparing 30 MongoDB operations with Oracle SQL statements
Comparing 30 MongoDB operations with Oracle SQL statementsComparing 30 MongoDB operations with Oracle SQL statements
Comparing 30 MongoDB operations with Oracle SQL statementsLucas Jellema
 
Khalil khan (it engineer resume)
Khalil khan (it engineer resume)Khalil khan (it engineer resume)
Khalil khan (it engineer resume)Khalil Khan
 
Europa AI startup scaleups report 2016
Europa AI startup scaleups report 2016 Europa AI startup scaleups report 2016
Europa AI startup scaleups report 2016 Ian Beckett
 
IBM Storage for Analytics, Cognitive and Cloud
IBM Storage for Analytics, Cognitive and CloudIBM Storage for Analytics, Cognitive and Cloud
IBM Storage for Analytics, Cognitive and CloudTony Pearson
 
Startup Sales Stack Report 2017
Startup Sales Stack Report 2017Startup Sales Stack Report 2017
Startup Sales Stack Report 2017Nic Poulos
 
Europe ai scaleups report 2016
Europe ai scaleups report 2016Europe ai scaleups report 2016
Europe ai scaleups report 2016Omar Mohout
 
[Aurora事例祭り]AWS Database Migration Service と Schema Conversion Tool の使いドコロ
[Aurora事例祭り]AWS Database Migration Service と Schema Conversion Tool の使いドコロ[Aurora事例祭り]AWS Database Migration Service と Schema Conversion Tool の使いドコロ
[Aurora事例祭り]AWS Database Migration Service と Schema Conversion Tool の使いドコロAmazon Web Services Japan
 
Best Practices for Reaching and Engaging Your Mobile Audience
Best Practices for Reaching and Engaging Your Mobile AudienceBest Practices for Reaching and Engaging Your Mobile Audience
Best Practices for Reaching and Engaging Your Mobile AudienceOrigami Logic
 

Andere mochten auch (20)

What is A Cloud Stack in 2017
What is A Cloud Stack in 2017What is A Cloud Stack in 2017
What is A Cloud Stack in 2017
 
Design in Tech Report 2017
Design in Tech Report 2017Design in Tech Report 2017
Design in Tech Report 2017
 
Mobile Finance: 2017 Trends and Innovations
Mobile Finance: 2017 Trends and InnovationsMobile Finance: 2017 Trends and Innovations
Mobile Finance: 2017 Trends and Innovations
 
The Benefits of Cloud Computing
The Benefits of Cloud ComputingThe Benefits of Cloud Computing
The Benefits of Cloud Computing
 
AgensGraph: a Multi-model Graph Database based on PostgreSql
AgensGraph: a Multi-model Graph Database based on PostgreSqlAgensGraph: a Multi-model Graph Database based on PostgreSql
AgensGraph: a Multi-model Graph Database based on PostgreSql
 
Comparing approaches: Running database workloads on Dell EMC and Microsoft hy...
Comparing approaches: Running database workloads on Dell EMC and Microsoft hy...Comparing approaches: Running database workloads on Dell EMC and Microsoft hy...
Comparing approaches: Running database workloads on Dell EMC and Microsoft hy...
 
A project report on awareness of mutual funds 1
A project report on awareness of mutual funds 1A project report on awareness of mutual funds 1
A project report on awareness of mutual funds 1
 
DATA SCIENCE IS CATALYZING BUSINESS AND INNOVATION
DATA SCIENCE IS CATALYZING BUSINESS AND INNOVATION DATA SCIENCE IS CATALYZING BUSINESS AND INNOVATION
DATA SCIENCE IS CATALYZING BUSINESS AND INNOVATION
 
Comparing 30 MongoDB operations with Oracle SQL statements
Comparing 30 MongoDB operations with Oracle SQL statementsComparing 30 MongoDB operations with Oracle SQL statements
Comparing 30 MongoDB operations with Oracle SQL statements
 
Getting Started with AWS
Getting Started with AWSGetting Started with AWS
Getting Started with AWS
 
Khalil khan (it engineer resume)
Khalil khan (it engineer resume)Khalil khan (it engineer resume)
Khalil khan (it engineer resume)
 
Europa AI startup scaleups report 2016
Europa AI startup scaleups report 2016 Europa AI startup scaleups report 2016
Europa AI startup scaleups report 2016
 
IBM Storage for Analytics, Cognitive and Cloud
IBM Storage for Analytics, Cognitive and CloudIBM Storage for Analytics, Cognitive and Cloud
IBM Storage for Analytics, Cognitive and Cloud
 
Startup Sales Stack Report 2017
Startup Sales Stack Report 2017Startup Sales Stack Report 2017
Startup Sales Stack Report 2017
 
Ignorance is bliss, but not for MongoDB
Ignorance is bliss, but not for MongoDBIgnorance is bliss, but not for MongoDB
Ignorance is bliss, but not for MongoDB
 
Europe ai scaleups report 2016
Europe ai scaleups report 2016Europe ai scaleups report 2016
Europe ai scaleups report 2016
 
S4 1610 business value l1
S4 1610 business value l1S4 1610 business value l1
S4 1610 business value l1
 
Databases
DatabasesDatabases
Databases
 
[Aurora事例祭り]AWS Database Migration Service と Schema Conversion Tool の使いドコロ
[Aurora事例祭り]AWS Database Migration Service と Schema Conversion Tool の使いドコロ[Aurora事例祭り]AWS Database Migration Service と Schema Conversion Tool の使いドコロ
[Aurora事例祭り]AWS Database Migration Service と Schema Conversion Tool の使いドコロ
 
Best Practices for Reaching and Engaging Your Mobile Audience
Best Practices for Reaching and Engaging Your Mobile AudienceBest Practices for Reaching and Engaging Your Mobile Audience
Best Practices for Reaching and Engaging Your Mobile Audience
 

Ähnlich wie Sudhir hadoop and Data warehousing resume

Ähnlich wie Sudhir hadoop and Data warehousing resume (20)

Pankaj Resume for Hadoop,Java,J2EE - Outside World
Pankaj Resume for Hadoop,Java,J2EE -  Outside WorldPankaj Resume for Hadoop,Java,J2EE -  Outside World
Pankaj Resume for Hadoop,Java,J2EE - Outside World
 
Suneel manne
Suneel  manneSuneel  manne
Suneel manne
 
Suneel manne
Suneel  manneSuneel  manne
Suneel manne
 
Shivaprasada_Kodoth
Shivaprasada_KodothShivaprasada_Kodoth
Shivaprasada_Kodoth
 
Chandan's_Resume
Chandan's_ResumeChandan's_Resume
Chandan's_Resume
 
DeepeshRehi
DeepeshRehiDeepeshRehi
DeepeshRehi
 
Resume
ResumeResume
Resume
 
Aryaan_CV
Aryaan_CVAryaan_CV
Aryaan_CV
 
Lokesh_Reddy_Datastage_Resume
Lokesh_Reddy_Datastage_ResumeLokesh_Reddy_Datastage_Resume
Lokesh_Reddy_Datastage_Resume
 
Ashish_Maheshwari_Data_Analyst
Ashish_Maheshwari_Data_AnalystAshish_Maheshwari_Data_Analyst
Ashish_Maheshwari_Data_Analyst
 
RajeshS_ETL
RajeshS_ETLRajeshS_ETL
RajeshS_ETL
 
Kishor resume-
Kishor   resume-Kishor   resume-
Kishor resume-
 
Avinash Kant
Avinash KantAvinash Kant
Avinash Kant
 
peeyush_resume
peeyush_resumepeeyush_resume
peeyush_resume
 
Ramesh_resume
Ramesh_resumeRamesh_resume
Ramesh_resume
 
BALWANT SINGH_RESUME
BALWANT SINGH_RESUMEBALWANT SINGH_RESUME
BALWANT SINGH_RESUME
 
Anup_Kumar_Saha's_resume
Anup_Kumar_Saha's_resumeAnup_Kumar_Saha's_resume
Anup_Kumar_Saha's_resume
 
Resume
ResumeResume
Resume
 
Renu_Resume
Renu_ResumeRenu_Resume
Renu_Resume
 
Jeevananthan_Informatica
Jeevananthan_InformaticaJeevananthan_Informatica
Jeevananthan_Informatica
 

Kürzlich hochgeladen

Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...nirzagarg
 
Discover Why Less is More in B2B Research
Discover Why Less is More in B2B ResearchDiscover Why Less is More in B2B Research
Discover Why Less is More in B2B Researchmichael115558
 
Top profile Call Girls In Latur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Latur [ 7014168258 ] Call Me For Genuine Models We ...Top profile Call Girls In Latur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Latur [ 7014168258 ] Call Me For Genuine Models We ...gajnagarg
 
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...Elaine Werffeli
 
Computer science Sql cheat sheet.pdf.pdf
Computer science Sql cheat sheet.pdf.pdfComputer science Sql cheat sheet.pdf.pdf
Computer science Sql cheat sheet.pdf.pdfSayantanBiswas37
 
Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...
Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...
Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...gajnagarg
 
Jodhpur Park | Call Girls in Kolkata Phone No 8005736733 Elite Escort Service...
Jodhpur Park | Call Girls in Kolkata Phone No 8005736733 Elite Escort Service...Jodhpur Park | Call Girls in Kolkata Phone No 8005736733 Elite Escort Service...
Jodhpur Park | Call Girls in Kolkata Phone No 8005736733 Elite Escort Service...HyderabadDolls
 
+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...
+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...
+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...Health
 
Digital Transformation Playbook by Graham Ware
Digital Transformation Playbook by Graham WareDigital Transformation Playbook by Graham Ware
Digital Transformation Playbook by Graham WareGraham Ware
 
Top profile Call Girls In Indore [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Indore [ 7014168258 ] Call Me For Genuine Models We...Top profile Call Girls In Indore [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Indore [ 7014168258 ] Call Me For Genuine Models We...gajnagarg
 
DATA SUMMIT 24 Building Real-Time Pipelines With FLaNK
DATA SUMMIT 24  Building Real-Time Pipelines With FLaNKDATA SUMMIT 24  Building Real-Time Pipelines With FLaNK
DATA SUMMIT 24 Building Real-Time Pipelines With FLaNKTimothy Spann
 
Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...
Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...
Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...HyderabadDolls
 
High Profile Call Girls Service in Jalore { 9332606886 } VVIP NISHA Call Girl...
High Profile Call Girls Service in Jalore { 9332606886 } VVIP NISHA Call Girl...High Profile Call Girls Service in Jalore { 9332606886 } VVIP NISHA Call Girl...
High Profile Call Girls Service in Jalore { 9332606886 } VVIP NISHA Call Girl...kumargunjan9515
 
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Valters Lauzums
 
Aspirational Block Program Block Syaldey District - Almora
Aspirational Block Program Block Syaldey District - AlmoraAspirational Block Program Block Syaldey District - Almora
Aspirational Block Program Block Syaldey District - AlmoraGovindSinghDasila
 
Gartner's Data Analytics Maturity Model.pptx
Gartner's Data Analytics Maturity Model.pptxGartner's Data Analytics Maturity Model.pptx
Gartner's Data Analytics Maturity Model.pptxchadhar227
 
Sonagachi * best call girls in Kolkata | ₹,9500 Pay Cash 8005736733 Free Home...
Sonagachi * best call girls in Kolkata | ₹,9500 Pay Cash 8005736733 Free Home...Sonagachi * best call girls in Kolkata | ₹,9500 Pay Cash 8005736733 Free Home...
Sonagachi * best call girls in Kolkata | ₹,9500 Pay Cash 8005736733 Free Home...HyderabadDolls
 
Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...nirzagarg
 
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi ArabiaIn Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabiaahmedjiabur940
 
TrafficWave Generator Will Instantly drive targeted and engaging traffic back...
TrafficWave Generator Will Instantly drive targeted and engaging traffic back...TrafficWave Generator Will Instantly drive targeted and engaging traffic back...
TrafficWave Generator Will Instantly drive targeted and engaging traffic back...SOFTTECHHUB
 

Kürzlich hochgeladen (20)

Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
 
Discover Why Less is More in B2B Research
Discover Why Less is More in B2B ResearchDiscover Why Less is More in B2B Research
Discover Why Less is More in B2B Research
 
Top profile Call Girls In Latur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Latur [ 7014168258 ] Call Me For Genuine Models We ...Top profile Call Girls In Latur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Latur [ 7014168258 ] Call Me For Genuine Models We ...
 
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
 
Computer science Sql cheat sheet.pdf.pdf
Computer science Sql cheat sheet.pdf.pdfComputer science Sql cheat sheet.pdf.pdf
Computer science Sql cheat sheet.pdf.pdf
 
Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...
Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...
Top profile Call Girls In Vadodara [ 7014168258 ] Call Me For Genuine Models ...
 
Jodhpur Park | Call Girls in Kolkata Phone No 8005736733 Elite Escort Service...
Jodhpur Park | Call Girls in Kolkata Phone No 8005736733 Elite Escort Service...Jodhpur Park | Call Girls in Kolkata Phone No 8005736733 Elite Escort Service...
Jodhpur Park | Call Girls in Kolkata Phone No 8005736733 Elite Escort Service...
 
+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...
+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...
+97470301568>>weed for sale in qatar ,weed for sale in dubai,weed for sale in...
 
Digital Transformation Playbook by Graham Ware
Digital Transformation Playbook by Graham WareDigital Transformation Playbook by Graham Ware
Digital Transformation Playbook by Graham Ware
 
Top profile Call Girls In Indore [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Indore [ 7014168258 ] Call Me For Genuine Models We...Top profile Call Girls In Indore [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Indore [ 7014168258 ] Call Me For Genuine Models We...
 
DATA SUMMIT 24 Building Real-Time Pipelines With FLaNK
DATA SUMMIT 24  Building Real-Time Pipelines With FLaNKDATA SUMMIT 24  Building Real-Time Pipelines With FLaNK
DATA SUMMIT 24 Building Real-Time Pipelines With FLaNK
 
Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...
Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...
Gomti Nagar & best call girls in Lucknow | 9548273370 Independent Escorts & D...
 
High Profile Call Girls Service in Jalore { 9332606886 } VVIP NISHA Call Girl...
High Profile Call Girls Service in Jalore { 9332606886 } VVIP NISHA Call Girl...High Profile Call Girls Service in Jalore { 9332606886 } VVIP NISHA Call Girl...
High Profile Call Girls Service in Jalore { 9332606886 } VVIP NISHA Call Girl...
 
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
 
Aspirational Block Program Block Syaldey District - Almora
Aspirational Block Program Block Syaldey District - AlmoraAspirational Block Program Block Syaldey District - Almora
Aspirational Block Program Block Syaldey District - Almora
 
Gartner's Data Analytics Maturity Model.pptx
Gartner's Data Analytics Maturity Model.pptxGartner's Data Analytics Maturity Model.pptx
Gartner's Data Analytics Maturity Model.pptx
 
Sonagachi * best call girls in Kolkata | ₹,9500 Pay Cash 8005736733 Free Home...
Sonagachi * best call girls in Kolkata | ₹,9500 Pay Cash 8005736733 Free Home...Sonagachi * best call girls in Kolkata | ₹,9500 Pay Cash 8005736733 Free Home...
Sonagachi * best call girls in Kolkata | ₹,9500 Pay Cash 8005736733 Free Home...
 
Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...
 
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi ArabiaIn Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
 
TrafficWave Generator Will Instantly drive targeted and engaging traffic back...
TrafficWave Generator Will Instantly drive targeted and engaging traffic back...TrafficWave Generator Will Instantly drive targeted and engaging traffic back...
TrafficWave Generator Will Instantly drive targeted and engaging traffic back...
 

Sudhir hadoop and Data warehousing resume

  • 1. RESUME Name Sudhir Saxena Total Experience 5.8 Years Education MCA (Master of Computer Application) Languages UNIX Shell scripting, Python, PL/SQL Databases Netezza, DB2, Oracle 10g/11g, Microsoft SQL Server, PL/SQL, SQL Developer, Hadoop (Hive DB) Business Areas Software Development, Software Debugging, Problem Solving & Unit testing Framework ETL E3, Hera, Hadoop SKILLS SUMMARY DataStage 9.1, 8.7, Unix shell Scripting, Python, Hadoop (Hive DB, Pig, Sqoop), Control-M, Netezza, Oracle, DB2, Unix, Spark, Scala  Overall 5.8 Years of Professional IT experience in Data Warehousing and Business Intelligence.  Having one year onsite experience in Mexico and USA with USAA Client, USA.  Designed and Implemented DataStage Server and Parallel Jobs including Batch Jobs and Sequencers.  Expertise in data warehousing techniques for data cleansing, Slowly Changing Dimension phenomenon.  Extensive experience in design and implementation of Star Schema, Snowflake Schema and Multi- Dimensional Modelling.  Having good Knowledge in Bigdata, Hadoop, Pig, Hive, Sqoop, Hbase, Python, Spark, Scala.  Experience in integration of various data sources like IBM DB2, Oracle, SQL Server, Netezza and Flat Files using Active/Passive Stages available in Data Stage Tool.  Sound understanding of Data Warehousing concepts.  Extensively used ETL Methodology for supporting Data Extraction, transformation and loading processing using Datastage 9.1, 8.7 and Data Warehousing (DWH).  Having Knowledge in Data Modelling using Erwin Tools.  Experience in Information Technology having strong programming skills, database design, Application Development.  Good Experience in support, maintenance and development projects.  Ability to inspire creativity and work among team members with enthusiasm  Positive attitude in phase of changes.  A quick learner, committed, smart worker, self-motivated and an enthusiastic team player, good communicator with a positive attitude and an open mind towards learning. HCL Technologies India Page 1 of 5
  • 2. Projects Profile: Project Name LTB- RealEstate Mortgage Client USAA Role Technical Lead Organization HCL Technologies, Chennai Duration Feb 2017 to at Present Project Description: LTB- RealEstate Mortgage Project is the project where we are extracting data from SQL Server as source for all the Loan Borrowers and Loading the data into data Warehouse and from Data warehouse to Data Mart based on business requirement and Subject area. also, loading the data into Hadoop (Hive DB). we are using Datastage 9.1, Unix shell Scripting, Python, Oracle, Netezza, Unix, ETL framework, Hera Framework, Hadoop (Hive DB, Pig, Sqoop). I am part of Technical team where i used to gather the requirement from Onsite Coordinator and client and share the work among team member to get it done the work and verified the work. Helping team member to solve technical issue and business requirement. After completion of project work, consolidated work used to send to Onsite team member to get the sign off. Responsibilities:  To understand the client’s requirement  Provide technical solution to team member  Software Development  Software Debugging  Bug Fixing  Environment: Datastage 9.1, Oracle, Netezza, Unix Shell Scripting, Python,ETL E3 framework, Hadoop (Hive DB, Pig, Sqoop), Control-M Project Name LTB- RealEstate Mortgage Client USAA Role Technical Lead Organization HCL Technologies, Mexico Duration Feb 2016 to Jan 2017 Project Description: LTB- RealEstate Mortgage Project is the project where we are extracting data from SQL Server as source for all the Loan Borrowers and Loading the data into data Warehouse and from Data warehouse to Data Mart based on business requirement and Subject area. also, loading the data into Hadoop (Hive DB). we are using Datastage 9.1, Unix shell Scripting, Python, Oracle, Netezza, Unix, ETL framework, Hera Framework, Hadoop (Hive DB, Pig, Sqoop) I was part of Onsite Technical team where i used to gather the requirement from client directly and share the work to offshore team member to get it done the work and verified the work. Helping offshore team member to solve technical issue and business requirement. After completion of project work, present the demo to client and get the sign off for work. Responsibilities:  To understand the client’s requirement HCL Technologies India Page 2 of 5
  • 3.  Provide technical solution to team member  Software Development  Software Debugging  Bug Fixing Environment: Datastage 9.1, Oracle, Netezza, Unix Shell Scripting, Python,ETL E3 framework, Hadoop (Hive DB, Pig, Sqoop),Control-M Project Name ETL Factory Client USAA Role Senior Datastage Developer Organization HCL Technologies, Chennai Duration Aug 2015 to Jan 2016 Project Description: ETL Factory is the project for USAA where we are extracting data from Netezza as source and Loading data into Hadoop (Hive DB) through ETL E3 Framework. We are using Datastage 9.1, Oracle, Netezza, Unix, ETL framework, Hadoop (Hive DB). I am part of Technical team where we are gathered the requirement and preparing source to target mapping and based on mapping logic we are creating Datastage parallel and sequence job. we are using Datastage 9.1, Oracle, Netezza, Unix, ETL E3 framework, Control-M, Hadoop (Hive DB) Responsibilities:  To understand the client’s requirement  Create Source to Target Mapping  Software Development  Software Debugging  Bug Fixing Environment: Datastage 9.1, Oracle, Netezza, Unix shell scripting, ETL E3 framework, Hadoop (Hive DB,Pig),Control-M Project Name Financial Data Warehouse(FDW) Client Ebay enterprises Role Senior Datastage Developer Organization HCL Technologies, Bangalore Duration Nov 2014 to Jul 2015 Project Description: FDW(Financial data warehousing) is the single source of data For SAP. The data in the FDW is used to calculate the revenue and remittance amounts in SAP. The FDW integrates data from multiple sources And stores them in the form of a star schema. FDW is a project for EBay enterprise finance team use SAP billing to invoice and charge clients for all the services that were rendered to them. Responsibilities:  To understand the client’s requirement  Create Source to Target Mapping  Software Development  Software Debugging  Bug Fixing HCL Technologies India Page 3 of 5
  • 4. Environment: DataStage 9.1, Autosys, Netezza, Oracle11g, Unix Shell scripting, SQL Developer Project Name Insurance Data Warehouse(IDW) Client AIG Role Senior Datastage Developer Organization MindTree Ltd, Chennai Duration Feb 2014 to Oct 2014 Project Description: AIG Insurance Data Warehouse (IDW) is a consolidation point for Regions, Party, Policy and Objects (Vehicles, Vessels), that holds the atomic level transactions relating to the Party, policy and claim domains. The IDW is the enhancement and extended version of AIG-ODS also holds the claim, policy, object (e.g. vehicle, vessel) and other issue of existing party as well as a common set of reference data loaded through datastage ETL. Responsibilities:  To understand the client’s requirement  Create Source to Target Mapping  Software Development  Software Debugging  Bug Fixing Environment: DataStage 8.7, Unix Shell scripting, DB2, SQL Developer Passport Details: H0885269 Validity: 24-09-2008 to 23-09-2018 Visa Details: USA Visa: B1/B2 Validity: 16-Aug-2016 to 12-Aug-2026 Mexico visa: Work Permit Validity: Till Feb 2017 Education Qualifications • Master of Computer Applications (MCA) from College of Engineering, Anna University, Chennai with 80% in 2011. • Bachelor of Computer Application from IGNOU, New Delhi with 64.17% in 2007. • 12th from M H K College, Motihari, Bihar in 2003. Awards/Achievement • Got Appreciation Certificate and Award for ‘Training Delivery and Development’ for Oct – Dec 2014 in HCL Technologies Ltd. • Got ‘Certificate of Excellence’ for certified Datastage trainer in HCL technologies Ltd in 2015-2016. • Most Innovative Campus Mind in March 2012, by Mindtree Ltd. • Shining Star in December 2011, by Mindtree Ltd. HCL Technologies India Page 4 of 5