More jobs:
Job Description & How to Apply Below
Location:
Indore / Pune
Experience:
10–11 Years (Relevant 5–7 years hands-on)
Compensation:
Highly Cometitive
Employment Type:
Full-Time
Joining:
Immediate / Serving Notice Period Candidates Preferred
Role Overview
We are looking for a hands-on Lead SDET / Data QA Engineer with strong expertise in data validation and data pipeline testing within modern data platforms. This role is execution-focused, similar to development work, and is ideal for professionals who enjoy validating complex data transformations built by data engineers.
The role is positioned as a “Tester” organizationally but requires deep understanding of data engineering concepts, SQL, and PySpark-based pipelines. This is not a managerial role; however, slight team lead exposure is preferred for future scaling.
Key Responsibilities
Data Validation & Pipeline Testing
Validate large-scale data pipelines built using Azure Data Factory and Databricks
Perform deep data validation across multiple layers (raw → curated → consumption)
Validate data transformations, joins, aggregations, and business logic implemented by data
engineers
Perform SQL-based reconciliation, data completeness, and accuracy checks
Review data pipeline logic and collaborate with data engineers to identify defects early
Execution-Focused Testing
Write and execute PySpark / Python-based test logic for validating transformations
Perform heavy-weight testing comparable to development work (not basic QA checks)
Debug pipeline failures and analyze root causes at data and code level
Ensure data correctness across batch pipelines (streaming optional, not mandatory)
CI/CD & Platform Collaboration
Integrate testing workflows into Azure Dev Ops CI/CD pipelines
Validate data outputs post-deployment across environments
Work closely with data engineers, platform teams, and stakeholders to ensure release quality
Leadership (Lightweight)
Provide technical guidance to junior testers (if assigned)
Review test logic and validation queries
Help standardize data QA best practices (process can be trained, coding cannot)
️ Mandatory Skills & Technologies
Data Engineering Testing
Experience:
5–7 years (hands-on)
SQL:
Strong (joins, aggregations, reconciliation, validation queries)
Databricks:
Hands-on experience
PySpark / Python:
Strong working knowledge (writing validation logic)
Azure Data Factory (ADF):
Pipeline understanding and validation
Azure Dev Ops: CI/CD pipeline integration
Strong understanding of data engineering concepts and pipeline architecture
Note that applications are not being accepted from your jurisdiction for this job currently via this jobsite. Candidate preferences are the decision of the Employer or Recruiting Agent, and are controlled by them alone.
To Search, View & Apply for jobs on this site that accept applications from your location or country, tap here to make a Search:
To Search, View & Apply for jobs on this site that accept applications from your location or country, tap here to make a Search:
Search for further Jobs Here:
×