Epicareer Might not Working Properly
Learn More

ETL QA/Azure Cloud TESTER in Charlotte NC (W2 Only - any VISA)

Salary undisclosed

Apply on


Original
Simplified
Hi,
This isNamratafromHYR Global Source, I'm a staffing specialist and trying to reach you for below position with one of our clients:
Role: ETL QA/Azure Cloud TESTER
Location: Charlotte, NC - (3 days onsite/2 days remote every week)
Duration: 12+ Months
W2 Only, any VISA
ETL QA/Azure Cloud TESTER
12+ MONTHS
CHARLOTTE NC (3 DAYS ONSITE/2 DAYS REMOTE)


MUST HAVE:
12 years total experience, 2 years lead experience
StrongETL/ELT Testing
SSIS
Azure Data Factory


Qualifications:
  • Experience working with business stakeholders and/or product owners to understand data requirements and business cases.
  • Bachelors degree in Computer Science, Information Systems, or a related field.
  • Minimum of 12 years of experience as a QA/Tester with a focus on data-centric projects, with at least 2 years in a lead role.
  • Strong and extensive hands-on experience in ETL/ELT testing, providing DQ reports and performance tuning using ETL tools such as SSIS/ADF in a multi-dimensional Data Warehousing environment like SQL DB/Synapse.
  • Hands-on experience in Azure, preferably data heavy / analytics applications leveraging relational and NoSQL databases, Data Warehouse and Power BI.
  • Familiarity with Azure Data Factory, Azure Synapse Analytics, Azure Analysis Services, Azure Databricks, Blob Storage, Python/PySpark, Logic Apps, Key Vault, and Azure functions and Power BI.
  • Good experience in defining and enabling data quality standards for auditing, and monitoring purposes.
  • Strong understanding of data engineering concepts, including data modeling, ETL processes, and database management.
  • Proficiency in SQL and data querying for test validation and analysis.
  • Strong proficiency in scripting to read/write SQL queries and python.
  • Strong knowledge of data management, ETL processes, data warehousing, and BI tools.
  • Professional data management qualifications preferable
  • Proficiency in the functional and non-functional testing including unit-testing, integration testing and defect management tools.
  • A great team member with an ability to adapt to change quickly and balance multiple priorities is crucial.
  • The candidate should be highly organized and efficient, with a strong attention to detail and excellent communication skills (both verbal and written).
  • Experienced in data quality testing for data engineering pipelines and working with data engineering teams is a must.
  • Strong understanding of Agile methodologies, with working experience in Scrum or SAFe Agile frameworks.
  • Experience with QA automation tools and frameworks is a. plus.
  • Established track record of working with Technology (including experience with APIs) and agile methodology
  • Demonstratable experience handling large amount of data, bringing order and rigor to unstructured data environments and enhancing accuracy
  • Self-starter with ability to meet tight deadlines and manage multiple, competing priorities
  • Strong attention to detail in their work, communication and planning
  • Proactive problem-solving abilities
  • Experienced in multi-functions and multi-years implementation or transformation initiatives
  • Comfortable in engaging at very Senior Level as well as a very detailed/analytical level
  • Intellectually curious, innovative, open minded, and creative problem solver with impeccable judgement
  • Knowledgeable about industry data compliance strategies and practices, such as continuous integration, regression testing and versioning.
  • Strong collaboration, teamwork skills, excellent written and verbal communications skills.
  • Self-starter and motivated with ability to work in a fast-paced agile environment.



A Data Quality Assurance Lead will assist in data improvement initiatives across the organization. They will work closely with data engineering, data analytics and other cross-functional teams that adopt Agile operating methods. They will support the creation of data lineage flows, participate in designing data taxonomies, help define data elements and support data migration into a modern, cloud-based data infrastructure. They will assist in multi-year initiatives that transform processes to enable digitalization.

A successful candidate will have a diverse skillset, be proactive, and have strong analytical and technical skills. The ideal candidate will lead the QA efforts for data engineering and BI projects, driving best practices, and collaborating with cross-functional teams to deliver reliable, high-quality data solutions that support our business objectives.

Key responsibilities for this role include but are not limited to the following:
  • Engage across key stakeholders & data engineering team to determine the data required to deliver the final data product, understand the data workflow, and review end-to-end data journey.
  • Challenge the status quo and provide an innovative way of thinking for out-of-the-box data quality and data performance metrics
  • Develop and implement comprehensive QA strategies and plans for data engineering and BI products.
  • Design, develop, and execute test plans, including functional, integration, regression, and performance testing, to ensure the accuracy, completeness, and reliability of data products.
  • Be the key point of contact for relevant Core and/or functional data domains data quality.
  • Contribute to initial set of harmonized data requirements across the workflow contributing to efficiency and quality enhancements.
  • Responsible for data definitions, critical to quality, across relevant stakeholders
  • Design and monitor key performance indicators related to key data processes and data quality for the Global Data Platform.
  • Identify opportunities for process improvements within the QA and data engineering processes. Implement automation tools and techniques to enhance efficiency and effectiveness.
  • Act as a liaison between QA, development, and business teams to ensure alignment and understanding of project goals and quality expectations.
  • Monitor and report on observed process performance & suggest data quality enhancements.


Thanks & Regards
Namrata Ahuja | Sr. Talent Acquisition



Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.
Report this job