Blend360
Marketing And Advertising
DataQAAnalyst
Neural analysis suggests this role is
optimal for mid candidates.
“Data QA Analyst at Blend360. Skills: Data Quality, Data Pipelines, Azure, Databricks. Design data quality framework. Implement data quality framework”
Industry & Context.
Analytical thinking; Troubleshooting
What They're Looking For.
Must Have
1+ years of experience in Data Quality, Data Engineering, or Data Analysis roles, Experience working with Azure-based data platforms, Experience working with Databricks, Understanding of data quality frameworks, Understanding of testing methodologies for data pipelines, Experience validating ETL/ELT processes, Experience working with layered architectures (Bronze, Silver, Gold), SQL skills, Experience analyzing large datasets, Experience implementing automated data validation, Experience implementing automated data reconciliation, Familiarity with data pipeline monitoring, Familiarity with data pipeline alerting, Familiarity with data pipeline troubleshooting, Ability to collaborate with Data Engineers, Ability to collaborate with business stakeholders, Analytical thinking, Attention to detail, Experience documenting QA processes, Experience documenting QA results in a structured manner, English: Advanced
Nice to Have
Certifications in AWS, Certifications in Databricks, Certifications in Snowflake, Access to AI learning paths, Study plans, courses, and additional certifications tailored to your role, Access to Udemy Business, English lessons
What You'll Do.
Design data quality framework
Implement data quality framework
Define validation rules
Define threshold tolerances
Define alerting standards
Build automated data quality checks
Maintain automated data quality checks
Own reconciliation between source systems and Databricks
Ensure source data lands accurately
Produce expected transformation outputs
Validate identity resolution outputs
Investigate false positives
Investigate false negatives
Ensure enterprise identifiers are assigned correctly
Perform end-to-end pipeline testing
Validate data flows correctly
Validate downstream reporting outputs
Define acceptance criteria for pipeline deliverables
Define acceptance criteria for data model deliverables
Support UAT with client business stakeholders
Validate Gold layer outputs meet reporting requirements
Document QA processes
Document test results
Document data quality findings
Monitor pipeline health post-deployment
Investigate data quality incidents
Triage data quality incidents
Resolve root causes quickly
How You'll Work.
Team & Collaboration
Collaborate with Data Engineering; Collaborate with business teams; Collaborate with Data Engineers; Collaborate with business stakeholders; Support UAT with client business stakeholders
Full Job Description
Blend is a premier AI services provider, committed to co-creating meaningful impact for its clients through the power of data science, AI, technology, and people. With a mission to fuel bold visions, Blend tackles significant challenges by seamlessly aligning human expertise with artificial intelligence. The company is dedicated to unlocking value and fostering innovation for its clients by harnessing world-class people and data-driven strategy. We believe that the power of people and AI can have a meaningful impact on your world, creating more fulfilling work and projects for our people and clients. For more information, visit [www.blend360.com](http://www.blend360.com/) We are seeking a Data QA Analyst to contribute to our next level of growth and expansion. What is this position about? We are looking for a Data QA Analyst with experience in Azure and Databricks to ensure data quality, reliability, and consistency across modern data platforms. This role focuses on validating data pipelines, implementing automated quality checks, and collaborating closely with Data Engineering and business teams to guarantee accurate and production-ready data assets. * Design and implement a data quality framework across Bronze, Silver, and Gold layers — defining validation rules, threshold tolerances, and alerting standards * Build and maintain automated data quality checks within Databricks pipelines — row counts, null checks, referential integrity, schema validation, and business rule assertions * Own reconciliation between source systems and Databricks layers — ensuring source data lands accurately and transformations produce expected outputs * Validate identity resolution outputs in the Silver layer — reviewing match rates, investigating false positives and false negatives, and ensuring enterprise identifiers are being assigned correctly across source populations * Perform end-to-end pipeline testing — validating that data flows correctly from ingestion through to the Gold lay
Applying for this Data QA Analyst role?
Most applicants get filtered before a human reads their resume. See if yours makes the cut.
How to Apply on SmartRecruiters
- SmartRecruiters often includes a video screening step — check camera and mic permissions.
- Link your GitHub or portfolio directly in the profile section for technical roles.
- Applications may be reviewed by AI scoring before reaching a recruiter — use keywords from the job description.
ANONYMOUS · UNFILTERED
What do employees actually say about Blend360?
Real rants from real employees. Read before you apply.