1

Cloud Qa Engineer Jobs (NOW HIRING)

This is not a traditional manual QA role and this position requires a developer mindset, focused on automation, data validation, and platform reliability across modern cloud-based architectures. The ...

This is not a traditional manual QA role and this position requires a developer mindset, focused on automation, data validation, and platform reliability across modern cloud-based architectures. The ...

Quality Assurance Engineer Job Location (Short): Houston, Texas-USA | Madison, Alabama-USA ... Experience with Azure Cloud, Kubernetes, and PaaS / SaaS architectures * Working knowledge of SQL ...

Quality Assurance Engineer

Burlington, MA · On-site +1

$105K - $130K/yr

What We Need NetBrain is looking for an experienced Senior QA Engineer to work on a variety of ... Practical experience testing cloud infrastructure(AWS preferred). * Solid API/Security testing and ...

QA Engineer Company Overview: EpiVax leads the industry in immunogenicity assessment and sequence ... Experience working with SaaS platforms and cloud environments * Knowledge of scripting languages (e ...

QA Engineer Company Overview: EpiVax leads the industry in immunogenicity assessment and sequence ... Experience working with SaaS platforms and cloud environments * Knowledge of scripting languages (e ...

... cloud security for elastic infrastructure. Our platform gives our customers deep visibility into ... The QA Engineer will join our growing Engineering team to help make a great app even better, and ...

... cloud security for elastic infrastructure. Our platform gives our customers deep visibility into ... The QA Engineer will join our growing Engineering team to help make a great app even better, and ...

... multi-cloud infrastructure, enterprise authentication, billing, and organization management ... We are looking for a dedicated QA engineer who can own the product's quality, ensuring our product ...

Senior QA Engineer Location: Bentonville, AR About the Role: We're looking for a Senior QA Engineer ... Performance testing experience (JMeter, LoadRunner) Cloud knowledge (AWS, Azure) SQL and database ...

We are looking for a detail-oriented and driven QA Engineer to ensure the quality, reliability, and ... Experience testing cloud-based or data-intensive applications * Knowledge of performance, load, or ...

Job Title: QA Engineer Location: Newark, NJ Duration: 12 Months to hire Quality Engineering The ... cloud • Understanding of cloud database, NoSQL concepts (DynamoDB, Aurora) including caching ...

We are currently seeking a QA Engineer to join our team and help ensure the reliability ... Familiarity with AWS cloud environments. * Experience with Git and GitHub Actions / automated ...

We are currently seeking a QA Engineer to join our team and help ensure the reliability ... Familiarity with AWS cloud environments. * Experience with Git and GitHub Actions / automated ...

Metropolitan Pier and Exposition Authority (MPEA) Job Title: QA Engineer Duration: 06+ Months Start ... Knowledge of cloud-based hosting performance and monitoring tools. * Experience working with high ...

We are currently seeking a QA Engineer to join our team and help ensure the reliability ... Familiarity with AWS cloud environments. * Experience with Git and GitHub Actions / automated ...

Proactively identify future testing needs across cloud, edge, and device interfaces-shaping the long-term QA roadmap. Essential Qualifications * 1+ years of experience in software quality engineering ...

next page

Showing results 1-20

Cloud Qa Engineer information

See salary details

$38

$68

$87

How much do cloud qa engineer jobs pay per hour?

As of Jun 9, 2026, the average hourly pay for cloud qa engineer in the United States is $68.41, according to ZipRecruiter salary data. Most workers in this role earn between $57.69 and $75.00 per hour, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive in the Cloud Qa Engineer position, and why are they important?

To thrive as a Cloud QA Engineer, you need a solid understanding of cloud platforms, automated software testing, and scripting or programming languages, typically supported by a degree in computer science or a related field. Familiarity with tools like Selenium, Jenkins, AWS, Azure, or Google Cloud, as well as certification in cloud technologies or QA methodologies, is often essential. Analytical thinking, attention to detail, and strong collaboration and communication skills make someone stand out in this position. These capabilities are crucial for ensuring software reliability, identifying complex issues quickly, and working effectively within cross-functional DevOps or Agile teams.

What does a typical day look like for a Cloud QA Engineer?

A typical day for a Cloud QA Engineer involves designing and executing automated test cases on cloud-based applications, troubleshooting issues, and collaborating with developers and DevOps teams to ensure smooth deployment processes. You might review user stories, validate system integrations, and contribute to continuous integration pipelines. Expect to participate in daily stand-up meetings and work with teams across different time zones. This role combines hands-on technical testing with problem-solving and teamwork, making it both challenging and rewarding for those who enjoy dynamic, technology-driven environments.

What is a Cloud QA Engineer job?

A Cloud QA Engineer is responsible for testing and ensuring the quality of cloud-based applications and services. They design test plans, develop automated test scripts, and execute performance, security, and functional tests in cloud environments. Their role involves identifying and troubleshooting issues related to scalability, reliability, and security in cloud platforms. They often work with DevOps and development teams to integrate testing into continuous integration/continuous deployment (CI/CD) pipelines. Strong knowledge of cloud platforms like AWS, Azure, or GCP, along with automation tools, is essential for this role.

More about Cloud Qa Engineer jobs
What cities are hiring for Cloud Qa Engineer jobs? Cities with the most Cloud Qa Engineer job openings:
What states have the most Cloud Qa Engineer jobs? States with the most job openings for Cloud Qa Engineer jobs include:
Infographic showing various Cloud Qa Engineer job openings in the United States as of May 2026, with employment types broken down into 98% Full Time, 1% Part Time, and 1% Contract. Highlights an 89% Physical, 3% Hybrid, and 8% Remote job distribution, with an average salary of $142,296 per year, or $68.4 per hour.
Quality Assurance Engineer

Quality Assurance Engineer

Anika Systems

Leesburg, VA • Remote

Full-time

Posted 15 days ago


Job description

Anika Systems is seeking a highly technical Quality Assurance Engineer with strong development, SQL, and Python expertise to support enterprise data platforms for federal clients. This is not a traditional manual QA role and this position requires a developer mindset, focused on automation, data validation, and platform reliability across modern cloud-based architectures.
The ideal candidate will design and implement automated testing frameworks for ETL pipelines, Apache Iceberg data architectures, XBRL datasets, and performance-optimized structures such as materialized views—ensuring data accuracy, integrity, and trust across the enterprise. This role also requires proficiency in AI tools and AI-driven workflows, leveraging automation and intelligent testing techniques to improve quality and delivery speed.
This opportunity is 100% remote. 
Key Responsibilities
Test Automation & QA Engineering
  • Design, develop, and maintain automated QA frameworks for data pipelines, APIs, and analytics platforms using Python and SQL.
  • Build reusable testing utilities for data validation, regression testing, and pipeline certification.
  • Integrate automated tests into CI/CD pipelines to support continuous testing and deployment.
  • Develop unit, integration, and end-to-end test cases for complex data workflows.
  • Leverage AI-assisted testing tools to generate test cases, identify edge cases, and improve test coverage.
Data Validation & ETL Testing
  • Validate ETL/ELT pipelines to ensure accurate ingestion, transformation, and delivery of data.
  • Create automated checks for data completeness, consistency, accuracy, and timeliness.
  • Test ingestion and transformation of complex datasets, including XBRL financial data.
  • Implement reconciliation and audit mechanisms across source-to-target mappings.
  • Apply AI-driven anomaly detection to identify data quality issues and pipeline failures.
Iceberg & Materialized View Testing
  • Develop and execute test strategies for Apache Iceberg-based data lakehouse architectures, including:
    • Schema evolution validation
    • Time travel and versioning accuracy
    • Partitioning and performance behavior
  • Validate and compare materialized views vs. Iceberg table performance and consistency, including:
    • Query performance benchmarking
    • Data freshness and latency
    • Storage efficiency and maintenance overhead
  • Ensure alignment between precomputed datasets (materialized views) and underlying source data.
Data Quality, Metadata & Context Validation
  • Implement automated validation for data quality rules, lineage, and metadata accuracy.
  • Support context engineering by validating that datasets include proper business context, definitions, and relationships.
  • Integrate QA processes with enterprise data catalogs and metadata systems to ensure discoverability and trust.
  • Validate AI-generated metadata, lineage, and transformations for accuracy and traceability.
AI-Driven Quality Engineering
  • Apply AI/ML and generative AI tools to enhance QA processes, including intelligent test generation, defect prediction, and automated root cause analysis.
  • Validate data readiness for AI/ML and generative AI use cases, ensuring datasets meet quality, completeness, and governance standards.
  • Collaborate with data and AI teams to test data pipelines supporting RAG, analytics, and machine learning workflows.
  • Ensure alignment with responsible AI practices, including traceability, explainability, and data integrity.
OCDO & Data Strategy Support
  • Support enterprise data management programs and OCDO initiatives by ensuring data quality and reliability across systems.
  • Contribute to data maturity assessments by evaluating data quality, testing coverage, and governance adherence.
  • Align QA processes with Federal Data Strategy and Evidence Act requirements.
Stakeholder Collaboration & Agile Delivery
  • Work closely with data engineers, data architects, and analysts to define test strategies and acceptance criteria.
  • Participate in stakeholder engagement sessions and listening campaigns to understand data quality expectations and pain points.
  • Document test results, defects, and quality metrics for both technical and non-technical stakeholders.
  • Operate within Agile teams to iteratively improve data quality processes and tooling.
  • Promote adoption of AI-driven efficiencies and automation across QA and data engineering workflows.
Required Qualifications
  • Bachelor’s degree in Computer Science, Engineering, Information Systems, or related field.
  • 5+ years of experience in QA engineering, data testing, or software development.
  • Strong programming skills in Python and advanced proficiency in SQL.
  • Experience building automated test frameworks for data platforms and ETL pipelines.
  • Hands-on experience with:
    • AWS data services (S3, Glue, Redshift, Lambda, etc.)
    • Apache Iceberg or similar data lake technologies
  • Experience validating materialized views and performance-optimized data structures.
  • Familiarity with XBRL or complex financial/regulatory datasets.
  • Understanding of data modeling, metadata, and data governance principles.
  • Experience with CI/CD tools and automated testing integration.
  • Demonstrated proficiency with AI tools and AI-assisted development/testing workflows.
  • Understanding of data quality requirements for AI/ML and analytics use cases.
  • U.S. Citizenship required; ability to obtain and maintain a federal clearance.
Preferred Qualifications
  • Experience supporting federal agencies such as SEC, DHS, Treasury, or Federal Reserve System.
  • Familiarity with data catalog and governance tools (e.g., Collibra, Alation, ServiceNow).
  • Experience with Apache Spark or distributed data processing frameworks.
  • Knowledge of data quality tools and observability platforms.
  • Exposure to data maturity frameworks (e.g., EDM DCAM, TDWI).
  • Experience testing large-scale cloud data platforms and lakehouse architectures.
  • Experience validating data pipelines supporting AI/ML, analytics, or generative AI solutions.
  • Familiarity with AI-driven testing tools or frameworks.

Powered by JazzHR

8qjci4a3U0