
On-Site
Full-Time
Jaipur, Rajasthan
India
Skills
Amazon Web Services (AWS)
SQL
Data Warehousing
MySQL
Amazon S3
Extract, Transform, Load (ETL)
Apache Spark
Data Modeling
Performance Tuning
Amazon Redshift
Amazon Kinesis
About the Role
Lead Data Engineer – DWH Cloud
As a Lead Data Engineer – DWH for Cloud, you will be leading DWH projects and responsible for designing end to end technical solutions on AWS for various reporting, integrations and analytics related business needs along with team management, timely delivery and ensuring complete support on delivered pipelines.
Lead Data Engineer will typically have:
9+ years of experience into Data field
Experience in designing and architecting data solutions that support organization’s strategic business goals.
End to end ETL and ELT processes understanding for Data ingestion and transformation in AWS, and coordination amongst the team along with reporting and visualizations.
Should be able to design data models, performance optimization processes for data product
Should be able to monitor, manage and ensure best practices to support data platform
Should be well versed with extraction, transformation, loading, data cleansing, data quality, data visualization, data monitoring concepts to instill capabilities in the team for building right processes for the data platform
Should ensure reusability, cost optimization and better performance of the processes being followed on data platform.
Build, maintain, and monitor, batch and real-time ETL pipelines in an AWS architecture (Kinesis, DMS, S3, EMR, RedShift, etc.)
Carries basic understanding of Golden Gate.
Work closely with the Data Analytics teams to develop a clear understanding of data and data infrastructure needs; assist with data-related technical issues
Develop Data strategy (source, flow of data, storage, and usage)
Perform Data validation and quality assurance
Present technical solutions to various stakeholders
Provide day-to-day support of the DW and DL environments, with excellent communications across teams, monitor new deployments and services, escalating issues where appropriate.
Who we prefer?
Data Warehousing concepts (min 5 years)
Hands on experience on AWS (min 3 Years)
Building ETL pipelines (min 5 years)
Job Scheduling Frameworks (min 3 years)
Performance tuning of SQL queries (min 3 years)
Knowledge of Spark – Data frames, Spark-Shell, Lazy evaluation, performance understanding
Knowledge/experience of SQL - should be very conversant on Spark SQL
Python skills (min 2 years)
Visualization skills (min 1 year)
Data modeling, architecture, and Design data systems (min 3 years)
Experience in handling Client/business teams
Documentation Skills
Education Qualification: BE / B.Tech / M.Tech
As a Lead Data Engineer – DWH for Cloud, you will be leading DWH projects and responsible for designing end to end technical solutions on AWS for various reporting, integrations and analytics related business needs along with team management, timely delivery and ensuring complete support on delivered pipelines.
Lead Data Engineer will typically have:
9+ years of experience into Data field
Experience in designing and architecting data solutions that support organization’s strategic business goals.
End to end ETL and ELT processes understanding for Data ingestion and transformation in AWS, and coordination amongst the team along with reporting and visualizations.
Should be able to design data models, performance optimization processes for data product
Should be able to monitor, manage and ensure best practices to support data platform
Should be well versed with extraction, transformation, loading, data cleansing, data quality, data visualization, data monitoring concepts to instill capabilities in the team for building right processes for the data platform
Should ensure reusability, cost optimization and better performance of the processes being followed on data platform.
Build, maintain, and monitor, batch and real-time ETL pipelines in an AWS architecture (Kinesis, DMS, S3, EMR, RedShift, etc.)
Carries basic understanding of Golden Gate.
Work closely with the Data Analytics teams to develop a clear understanding of data and data infrastructure needs; assist with data-related technical issues
Develop Data strategy (source, flow of data, storage, and usage)
Perform Data validation and quality assurance
Present technical solutions to various stakeholders
Provide day-to-day support of the DW and DL environments, with excellent communications across teams, monitor new deployments and services, escalating issues where appropriate.
Who we prefer?
Data Warehousing concepts (min 5 years)
Hands on experience on AWS (min 3 Years)
Building ETL pipelines (min 5 years)
Job Scheduling Frameworks (min 3 years)
Performance tuning of SQL queries (min 3 years)
Knowledge of Spark – Data frames, Spark-Shell, Lazy evaluation, performance understanding
Knowledge/experience of SQL - should be very conversant on Spark SQL
Python skills (min 2 years)
Visualization skills (min 1 year)
Data modeling, architecture, and Design data systems (min 3 years)
Experience in handling Client/business teams
Documentation Skills
Education Qualification: BE / B.Tech / M.Tech
Apply for this position
Application Status
Application Draft
In Progress
Submit Application
Pending
Review Process
Expected within 5-7 days
Similar Jobs




