Posted:8 hours ago|
Platform:
Hybrid
Full Time
We are seeking a talented and skilled Senior AWS Data Engineer with expertise in PySpark, Python, SQL, Git, and AWS Services, to join our dynamic team. The ideal candidate will have a strong background in data engineering, data processing, and cloud technologies. Candidate will play a crucial role in designing, developing, and maintaining our data infrastructure to support our analytics.
1. Develop and maintain ETL pipelines using PySpark and AWS Glue to process and transform large volumes of data efficiently.
2. Collaborate with analysts to understand data requirements and ensure data availability and quality. Candidate should have good understanding of project architecture to make necessary changes as required. 3. Ability to write highly optimize SQL queries for data extraction, transformation, and loading. 4. Utilize Git for version control, ensuring proper documentation and tracking of code changes. 5. Design, implement, and manage scalable data lakes on AWS, including S3, or other relevant services for efficient data storage and retrieval.
6. Develop and optimize high-performance, scalable databases using Amazon DynamoDB.
7. Proficiency in Amazon QuickSight for creating interactive dashboards and data visualizations.
8. Automate workflows using AWS Cloud services like event bridge, step functions.
9. Monitor and optimize data processing workflows for performance and scalability. 10. Troubleshoot data-related issues and provide timely resolution. 11. Stay up-to-date with industry best practices and emerging technologies in data engineering.
EXL
Upload Resume
Drag or click to upload
Your data is secure with us, protected by advanced encryption.
Browse through a variety of job opportunities tailored to your skills and preferences. Filter by location, experience, salary, and more to find your perfect fit.
We have sent an OTP to your contact. Please enter it below to verify.
Practice Python coding challenges to boost your skills
Start Practicing Python Nowhyderabad, pune, bengaluru
0.5 - 0.5 Lacs P.A.
noida, gurugram, bengaluru
20.0 - 35.0 Lacs P.A.
bhubaneswar, nagpur, coimbatore
8.0 - 18.0 Lacs P.A.
bhubaneswar, indore, coimbatore
8.0 - 18.0 Lacs P.A.
pune, chennai, bengaluru
0.5 - 3.0 Lacs P.A.
hyderabad, pune, bengaluru
15.0 - 30.0 Lacs P.A.
kolkata, hyderabad, bengaluru
5.0 - 11.0 Lacs P.A.
bengaluru
15.0 - 25.0 Lacs P.A.
indore, hyderabad, chennai
1.25 - 2.25 Lacs P.A.
hyderabad, pune, bengaluru
15.0 - 30.0 Lacs P.A.