Apply via OneDayHire - Fastest Job Connect Starts Here!
AWS Data Engineer
DT Consultancy
Join the DT Consultancy team as a Full Time AWS Data Engineer on Erekrut, specializing in AWS Data Engineer in the IT-ITeS industry. We are seeking talented individuals with a passion for IT Services and educational qualifications ranging from 16-20 Years. Apply now on Erekrut to take the next step in your career with a leading global company.
10-15 Lakhs
16-20 Years
Karnataka-Bangalore (+4)
Engineering
Vacancies- 1Interested Candidates - 6Agile DevelopmentAmazon Web Services (AWS)AWSAWS CloudAWS LambdaCI/CD Cloud MonitoringCloud Computingdata warehousingMySQLPythonSQL+ 8 More
View Job Description
Personal Details
Gender is required
Resume is required
Work Experience is required
Industry is required
State is required
City is required
Please select at least one skill
AWS Data Engineer Screening Questions
Job role experience is required
Qualification is required
Responsibilities are required
This field is required.
Current Salary is required
Expected Salary is required
Availability is required
Relocation preference is required
Recruiter
Ratings
3.7
out of 5
2397 Ratings
820
552
693
255
77
Job Description
JOB DESCRIPTION:
AWS Data Engineer with minimum of 5 to 7 years of experience.
Collaborate with business analysts to understand and gather requirements for existing or new ETL pipelines.
Connect with stakeholders daily to discuss project progress and updates.
Work within an Agile process to deliver projects in a timely and efficient manner.
Design and develop Airflow DAGs to schedule and manage ETL workflows.
Transform SQL queries into Spark SQL code for ETL pipelines.
Develop custom Python functions to handle data quality and validation.
Write PySpark scripts to process data and perform transformations.
Perform data validation and ensure data accuracy and completeness by creating automated tests and implementing data validation processes.
Run Spark jobs on AWS EMR cluster using Airflow DAGs.
Monitor and troubleshoot ETL pipelines to ensure smooth operation.
Implement best practices for data engineering, including data modeling, data warehousing, and data pipeline architecture.
Collaborate with other members of the data engineering team to improve processes and implement new technologies.
Stay up to date with emerging trends and technologies in data engineering and suggest ways to improve the team's efficiency and effectiveness.