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Remote Data Annotation Analyst Jobs in Georgia (NOW HIRING)

Data Quality Engineer

Alpharetta, GA · Remote

$111K - $134K/yr

... Remote-OH, Remote-PA, Remote-RI, Remote-VA Details Kemper is one of the nation's leading ... Collaboration and Leadership Collaborate with data engineers, analysts, QA teams, and business ...

We're hiring an Associate, Provider Data Analytics to join our Network Operations team. Oscar is ... This is a remote position, open to candidates who reside in: Atlanta, GA. You will be fully remote ...

Master Data Specialist - Remote

Atlanta, GA · On-site +1

$90K - $105K/yr

This role will be remote based in the US with periodic heavy domestic travel. Job Responsibilities ... Perform analytical data review to identify patterns, inconsistencies, and structural issues

Master Data Specialist - Remote

Atlanta, GA · On-site +1

$90K - $105K/yr

This role will be remote based in the US with periodic heavy domestic travel. Job Responsibilities ... Perform analytical data review to identify patterns, inconsistencies, and structural issues

... A Analyst to support our Trading Data & Pricing team. In this role, you will help ensure the ... S. and are willing to consider remote candidates. #LI-Remote Working at PrizePicks: The typical ...

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Remote Data Annotation Analyst information

How does a Remote Data Annotation Analyst typically collaborate with team members and ensure consistent labeling standards?

As a Remote Data Annotation Analyst, you’ll frequently work within a distributed team, using collaboration tools such as Slack, project management platforms, and shared annotation guidelines. Regular virtual meetings and feedback sessions help ensure everyone applies labeling standards consistently and resolves ambiguities. It’s common to review peer annotations and participate in quality assurance checks, promoting a culture of accuracy and continuous improvement. Clear communication and attention to detail are essential for maintaining high-quality annotated datasets across the team.

What are Remote Data Annotation Analysts?

Remote Data Annotation Analysts are professionals who label, categorize, or tag data—such as images, text, audio, or video—from a remote location. Their work helps train machine learning algorithms by providing structured datasets that computers can learn from. These analysts use specialized tools to identify relevant features in raw data, ensuring accuracy and consistency. The role often requires attention to detail, basic technical skills, and the ability to follow specific guidelines or instructions. This position is commonly found in industries like artificial intelligence, autonomous vehicles, and natural language processing.

What is the difference between Remote Data Annotation Analyst vs Remote Data Labeler?

AspectRemote Data Annotation AnalystRemote Data Labeler
Required CredentialsBasic computer skills, attention to detailBasic computer skills, attention to detail
Work EnvironmentHome-based, flexible hoursHome-based, flexible hours
Industry UsageAI, machine learning, data scienceAI, machine learning, data science
Job FocusAnalyzing and verifying labeled data, quality controlLabeling data, annotating images, text, or audio

The main difference is that Remote Data Annotation Analysts focus on verifying and ensuring the quality of labeled data, often involving analysis and review, while Remote Data Labelers primarily perform the task of labeling or annotating raw data. Both roles are essential in AI development and share similar work environments and skill requirements, but their specific responsibilities differ in scope and focus.

What are the key skills and qualifications needed to thrive as a Remote Data Annotation Analyst, and why are they important?

To thrive as a Remote Data Annotation Analyst, you need strong attention to detail, analytical thinking, and a high school diploma or equivalent, with many roles preferring experience in data-related tasks. Familiarity with data annotation platforms (like Labelbox or AWS SageMaker Ground Truth) and basic understanding of data management tools are typically required. Excellent time management, self-motivation, and clear communication help analysts manage remote workloads and collaborate effectively with distributed teams. These skills ensure accurate, high-quality annotated data essential for training and validating machine learning models.
What are the most commonly searched types of Data Annotation Analyst jobs in Georgia? The most popular types of Data Annotation Analyst jobs in Georgia are:
What are popular job titles related to Remote Data Annotation Analyst jobs in Georgia? For Remote Data Annotation Analyst jobs in Georgia, the most frequently searched job titles are:
What job categories do people searching Remote Data Annotation Analyst jobs in Georgia look for? The top searched job categories for Remote Data Annotation Analyst jobs in Georgia are:
What cities in Georgia are hiring for Remote Data Annotation Analyst jobs? Cities in Georgia with the most Remote Data Annotation Analyst job openings:
Data Quality Engineer

Data Quality Engineer

Kemper

Alpharetta, GA • Remote

$111K - $134K/yr

Full-time

Medical, Dental, Vision, Retirement, PTO

Posted 8 days ago


Job description

Location(s)

Alpharetta, Georgia, Birmingham, Alabama, Chicago, Illinois, Downers Grove, Illinois, Jacksonville, Florida, Remote-CT, Remote-NJ, Remote-OH, Remote-PA, Remote-RI, Remote-VA

Details

Kemper is one of the nation's leading specialized insurers. Our success is a direct reflection of the talented and diverse people who make a positive difference in the lives of our customers every day. We believe a high-performing culture, valuable opportunities for personal development and professional challenge, and a healthy work-life balance can be highly motivating and productive. Kemper's products and services are making a real difference to our customers, who have unique and evolving needs. By joining our team, you are helping to provide an experience to our stakeholders that delivers on our promises.

POSITION SUMMARY:

Kemper is seeking a Data Quality Engineer specializing in Data Testing and Quality Engineering to design, implement, and optimize enterprise data validation frameworks that ensure the accuracy, reliability, and integrity of business-critical data solutions. This role provides technical leadership across data testing, validation, reconciliation, automation, and quality assurance processes supporting analytics, reporting, and operational systems.

The ideal candidate is a self-motivated problem solver with strong intellectual curiosity, deep expertise in data engineering and automated testing practices, and a strong understanding of data governance, security, and compliance principles.

As a senior member of the data engineering team, you will be responsible for developing scalable data validation frameworks, ensuring data integrity across pipelines and platforms, implementing automated testing strategies throughout the data lifecycle, and supporting enterprise test environment strategy across complex data ecosystems.

Position Responsibilities:

  • Design and Develop Data Testing Solutions

Build, maintain, and optimize automated data testing frameworks and validation pipelines that support enterprise reporting, analytics, and business applications using SQL, Informatica, IICS, Snowflake, and Python.

  • Data Validation and Quality Assurance

Develop and execute data validation routines for extracts, transformations, and reporting datasets to ensure completeness, accuracy, consistency, and reliability of enterprise data assets.

  • Test Automation and Reconciliation

Design automated reconciliation processes between source and target systems, including row count validation, schema validation, transformation testing, and data profiling.

  • Data Pipeline Quality Engineering

Partner with data engineering teams to embed testing and quality controls into ETL/ELT pipelines and CI/CD deployment processes across Snowflake, Oracle, and AWS environments.

  • AI-Enabled Test Development and Automation

Leverage AI-assisted development tools and intelligent automation techniques to improve test coverage, accelerate validation processes, and enhance the efficiency of data quality engineering practices across enterprise data platforms.

  • Test Environment Strategy and Management

Support and contribute to enterprise test environment strategy, including environment planning, test data management, deployment coordination, integration testing support, and validation across development, QA, UAT, and production environments.

  • Data Governance and Compliance

Ensure compliance with enterprise data governance, security, and regulatory requirements by implementing data quality standards, monitoring controls, and audit-ready validation processes.

  • Integration and Monitoring

Work with structured and semi-structured data formats (XML, JSON) and cloud-native services to validate data ingestion, transformation, and integration processes across distributed platforms.

  • Collaboration and Leadership

Collaborate with data engineers, analysts, QA teams, and business stakeholders to define testing requirements, improve data quality processes, and support reporting solutions such as Power BI.

  • Continuous Improvement

Recommend and implement improvements to data quality frameworks, testing automation, monitoring solutions, governance processes, and DataOps practices. Mentor junior team members and promote best practices in data quality engineering and testing.

Position Qualifications:

Required Skills and Experience

  • Bachelor's degree in Computer Science, Information Systems, or a related field; equivalent work experience considered.
  • 6+ years of experience in data engineering, data testing, or database development.
  • Demonstrated expertise in:
    • SQL development and query tuning
    • Automated data testing and validation methodologies
    • Informatica and IICS for ETL and data integration testing
    • Snowflake data warehouse architecture and validation
    • Oracle database systems
    • Data reconciliation and data profiling techniques
    • Data modeling, normalization, and relational design
    • Handling and validating XML and JSON data structures
    • Building data quality solutions in AWS cloud environments
    • Python-based automation and testing frameworks
  • Strong knowledge of test environment strategy, including environment planning, test data management, deployment coordination, integration testing support, and validation across development, QA, UAT, and production environments.
  • Experience establishing and supporting end-to-end test strategies for enterprise data pipelines and distributed data platforms.
  • Understanding of environment dependencies, release validation processes, and data synchronization considerations for large-scale data ecosystems.
  • Experience developing automated test scripts and reusable validation frameworks.
  • Strong understanding of ETL/ELT testing methodologies and end-to-end data flow validation.
  • Strong problem-solving abilities and the capacity to work independently on complex technical challenges.
  • Deep understanding of data security, governance, compliance, and data quality best practices.
  • High degree of self-motivation, intellectual curiosity, and commitment to continuous improvement.

Preferred Qualifications

  • Insurance industry experience (P&C and/or Life).
  • Experience working with IDMC/IICS.
  • Experience with Data Vault 2.0 methodologies.
  • Experience with data quality and observability tools.
  • Experience with PowerShell or Python for automation and scripting.
  • Knowledge of Git and CI/CD pipelines for automated testing and deployment.
  • Exposure to hybrid or multi-cloud data architectures.
  • Experience with Spark, Kafka, Airflow, DBT, and Infrastructure as Code frameworks.
  • Experience implementing automated monitoring, alerting, and anomaly detection for data pipelines.
  • Familiarity with DevOps and DataOps practices for enterprise data platforms.
  • Experience supporting Power BI reporting and downstream analytics validation.
  • Experience utilizing AI-assisted development and testing tools to accelerate test case generation, validation scripting, anomaly detection, and quality engineering processes.
  • Familiarity with AI-enabled data observability, intelligent test automation, and machine learning-assisted quality monitoring solutions.
  • Experience leveraging generative AI tools for SQL validation, automated documentation, test optimization, and pipeline quality analysis.
  • The position can be worked hybrid out of a local Kemper office or remotely for a non-local candidate.
  • Sponsorship is not accepted for this position.

The range for this position is $99,000 to $164,800. Whendeterminingcandidate offers, we consider experience, skills, education, certifications, and geographic location among other factors. This job is eligible for an annual discretionary bonus and Kemper benefits (Medical, Dental, Vision, PTO, 401k, etc.)

Kemper is proud to be an equal opportunity employer. All applicants will be considered for employment without attention to race, color, religion, sex, sexual orientation, gender identity, national origin, veteran, disability status or any other status protected by the laws or regulations in the locations where we operate. We are committed to supporting diversity and equality across our organization and we work diligently to maintain a workplace free from discrimination.

Kemper does not accept unsolicited resumes through or from search firms or staffing agencies. All unsolicited resumes will be considered the property of Kemper and Kemper will not be obligated to pay a placement fee.

Kemper will never request personal information, such as your social security number or banking information, via text or email.Additionally, Kemper does not use external messaging applications like WireApp or Skype to communicate with candidates.If you receive such a message, delete it.

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