2

Remote Non Profit Data Engineer Jobs in Reston, VA

Data Engineer

Washington, DC · On-site +1

$129K - $155K/yr

Location: 100% Remote Years' Experience: 5+ years Professional Experience Education: Bachelor ... ensure high data quality. * Support AI/ML teams with optimizing feature engineering code.

Big Data Engineer Senior

Arlington, VA · Remote

$64.25 - $85/hr

Big Data Engineer Schedule: Full-Time Shift: Day Job Travel: Yes - 10% of the time Minimum ... None Potential for Remote Work: ORA_ON_SITE Description SAIC is seeking qualified applicants to ...

Big Data Engineer Senior

Arlington, VA · Remote

$64.25 - $84.75/hr

Big Data Engineer Schedule: Full-Time Shift: Day Job Travel: Yes - 10% of the time Minimum ... None Potential for Remote Work: ORA_ON_SITE Description SAIC is seeking qualified applicants to ...

Data Engineer with Security Clearance

Chantilly, VA · On-site +1

$118K - $142K/yr

We embed skilled Data Engineers, Data Scientists, and ETL Developers directly into intelligence ... support remote work) and requires a TS/SCI + Polygraph clearance (acceptable to this customer)

Sr. Data Engineer (AI/ML)

Reston, VA · Remote

$100K - $160K/yr

Remote Security Clearance: DHS Suitability - contract requires U.S. Citizenship Must Have Qualifications: 5+ years of experience in Data/ML engineering (if school experience is used, at most that ...

NCBI Data Engineer

Bethesda, MD · On-site +1

$122K - $146K/yr

Overview Ariadne is searching for a Data Engineer to support our work at the attheNational ... This opportunity is full time at the NIH in Bethesda, MD and/or remote work. Educational ...

next page

Showing results 1-20

Remote Non Profit Data Engineer information

See Reston, VA salary details

$46.3K

$135K

$184.7K

How much do remote non profit data engineer jobs pay per year?

As of Jun 14, 2026, the average yearly pay for remote non profit data engineer in Reston, VA is $134,951.00, according to ZipRecruiter salary data. Most workers in this role earn between $119,100.00 and $143,000.00 per year, depending on experience, location, and employer.

What is the difference between Remote Non Profit Data Engineer vs Remote Non Profit Data Analyst?

AspectRemote Non Profit Data EngineerRemote Non Profit Data Analyst
Required CredentialsBachelor's in CS, Data Science, or related; experience with data pipelinesBachelor's in Statistics, Data Analysis, or related; proficiency in data visualization tools
Work EnvironmentDesigning and maintaining data infrastructure for nonprofitsInterpreting data to generate reports and insights for nonprofits
Employer & Industry UsageNonprofits, NGOs, charitable organizationsNonprofits, advocacy groups, social service agencies

While both roles support nonprofit missions, Remote Non Profit Data Engineers focus on building and maintaining data systems, whereas Data Analysts interpret data to inform decision-making. Their skills and daily tasks differ but are complementary in nonprofit data operations.

How does a Remote Non Profit Data Engineer typically collaborate with program teams to support organizational goals?

As a Remote Non Profit Data Engineer, you’ll regularly work alongside program managers, outreach coordinators, and development teams to understand their data needs and translate them into actionable solutions. This often involves joining virtual meetings to discuss data collection strategies, building and maintaining ETL pipelines, and ensuring data quality for accurate reporting. Collaboration tools such as Slack, Zoom, and project management software are commonly used to stay connected across departments. Your work directly supports impact measurement and grant reporting, making cross-functional communication and adaptability essential in this role.

What key skills and qualifications are needed to thrive as a Remote Non Profit Data Engineer, and why are they important?

A Remote Non Profit Data Engineer should possess strong data management, SQL/database proficiency, and experience with ETL processes, often supported by a degree in computer science or a related field. Familiarity with cloud platforms (like AWS or Google Cloud), data visualization tools (such as Tableau or Power BI), and certifications in data engineering are typically valuable. Excellent communication, problem-solving, and a collaborative mindset are crucial soft skills, especially for remote work and understanding nonprofit missions. These abilities ensure data is leveraged effectively to drive impactful decisions and support the organization’s goals while maintaining transparency and data integrity.

What does a Remote Non Profit Data Engineer do?

A Remote Non Profit Data Engineer is responsible for designing, building, and maintaining data systems that support the operations and mission of nonprofit organizations, all while working from a remote location. Their tasks may include developing data pipelines, ensuring data quality, and integrating data from various sources to enable better decision-making. They often collaborate with program staff, data analysts, and IT teams to ensure the organization's data infrastructure meets compliance and reporting needs. By leveraging their technical skills, they help nonprofits use data more effectively to maximize their impact and secure funding.
What are popular job titles related to Remote Non Profit Data Engineer jobs in Reston, VA? For Remote Non Profit Data Engineer jobs in Reston, VA, the most frequently searched job titles are:
What job categories do people searching Remote Non Profit Data Engineer jobs in Reston, VA look for? The top searched job categories for Remote Non Profit Data Engineer jobs in Reston, VA are:
What cities near Reston, VA are hiring for Remote Non Profit Data Engineer jobs? Cities near Reston, VA with the most Remote Non Profit Data Engineer job openings:
Data Engineer

Data Engineer

Sparibis

Washington, DC • On-site, Remote

$129K - $155K/yr

Full-time

Posted 22 days ago


Job description

Location: 100% Remote
Years' Experience: 5+ years Professional Experience
Education: Bachelor's Degree in IT related field
Clearance: Applicants must be able to obtain and maintain a secret security clearance. United States Citizenship is required as part of the eligibility criteria to be able to obtain this type of security clearance.
Required Certifications:
  • CompTIA Security +

Key Skills:
  • 5+ years of IT experience focusing on enterprise data architecture and management to include data flow charts, diagrams, and other technical documentation.
  • Experience with Databricks, Structured Streaming, Delta Lake concepts, and Delta Live Tables required.
  • Python development experience required.
  • Experience with ETL and ELT tools such as SSIS, Pentaho, and/or Data Migration Services, and the ability to incorporate Python as required.
  • Advanced level SQL experience (Joins, Aggregation, Windowing functions, Common Table Expressions, RDBMS schema design, Postgres performance optimization).
  • Proficiency using Git for version control, including repository management, branching, merging, and pull requests.
  • Active CompTIA Security+ certification preferred. If selected, must be able to obtain a CompTIA Security+ certification prior to beginning supporting the program.

Responsibilities
  • Plan, create, and maintain data architectures, ensuring alignment with business requirements.
  • Obtain data, formulate dataset processes, and store optimized data.
  • Identify problems and inefficiencies and apply solutions.
  • Determine tasks where manual participation can be eliminated with automation.
  • Identify and optimize data bottlenecks, leveraging automation where possible.
  • Create and manage data lifecycle policies (retention, backups/restore, etc).
  • In-depth knowledge for creating, maintaining, and managing ETL/ELT pipelines.
  • Create, maintain, and manage data transformations.
  • Maintain/update documentation.
  • Create, maintain, and manage data pipeline schedules.
  • Monitor data pipelines.
  • Create, maintain, and manage data quality gates (Great Expectations) to ensure high data quality.
  • Support AI/ML teams with optimizing feature engineering code.
  • Expertise in Spark/Python/Databricks, Data Lake and SQL.
  • Create, maintain, and manage Spark Structured Steaming jobs, including using the newer Delta Live Tables and/or DBT.
  • Research existing data in the data lake to determine best sources for data.
  • Create, manage, and maintain ksqlDB and Kafka Streams queries/code
  • Data driven testing for data quality.
  • Maintain and update Python-based data processing scripts executed on AWS Lambdas.
  • Unit tests for all the Spark, Python data processing and Lambda codes.
  • Maintain PCIS Reporting Database data lake with optimizations and maintenance (performance tuning, etc).
  • Streamlining data processing experience including formalizing concepts of how to handle lake data, defining windows, and how window definitions impact data freshness.

Qualifications
  • 5+ years of IT experience focusing on enterprise data architecture and management.
  • Must have an active Secret security clearance.
  • Bachelor degree required.
  • CompTIA Security+ certification preferred. If selected, must be able to obtain a CompTIA Security+ certification prior to begin supporting the program.
  • Experience in Conceptual/Logical/Physical Data Modeling & expertise in Relational and Dimensional Data Modeling.
  • Experience with Databricks and Python Development, Structured Streaming, Delta Lake concepts, and Delta Live Tables required.
    • Additional experience with Spark, Spark SQL, Spark DataFrames and DataSets, and PySpark.
    • Data Lake concepts such as time travel and schema evolution and optimization.
    • Structured Streaming and Delta Live Tables with Databricks a bonus.
  • Knowledge of Python (Python 3.X) for CI/CD pipelines required.
    • Familiarity with Pytest and Unittest a bonus.
  • Experience leading and architecting enterprise-wide initiatives specifically system integration, data migration, transformation, data warehouse build, data mart build, and data lakes implementation / support.
    • Advanced level understanding of streaming data pipelines and how they differ from batch systems.
    • Formalize concepts of how to handle late data, defining windows, and data freshness.
    • Advanced understanding of ETL and ELT and ETL/ELT tools such as SSIS, Pentaho, Data Migration Service etc.
    • Understanding of concepts and implementation strategies for different incremental data loads such as tumbling window, sliding window, high watermark, etc.
    • Familiarity and/or expertise with Great Expectations or other data quality/data validation frameworks a bonus.
    • Understanding of streaming data pipelines and batch systems.
    • Familiarity with concepts such as late data, defining windows, and how window definitions impact data freshness.
  • Advanced level SQL experience (Joins, Aggregation, Windowing functions, Common Table Expressions, RDBMS schema design, Postgres performance optimization).
  • Indexing and partitioning strategy experience.
  • Debug, troubleshoot, design and implement solutions to complex technical issues.
  • Experience with large-scale, high-performance enterprise big data application deployment and solution.
  • Understanding how to create DAGs to define workflows.
  • Familiarity with CI/CD pipelines, containerization, and pipeline orchestration tools such as Airflow, Prefect, etc a bonus but not required.
  • Architecture experience in AWS environment a bonus.
    • Familiarity working with Kinesis and/or Lambda specifically with how to push and pull data, how to use AWS tools to view data in Kinesis streams, and for processing massive data at scale a bonus.
    • Experience with Docker, Jenkins, and CloudWatch.
    • Ability to write and maintain Jenkinsfiles for supporting CI/CD pipelines.
    • Experience working with AWS Lambdas for configuration and optimization.
    • Experience working with DynamoDB to query and write data.
    • Experience with S3.
  • Experience working with JSON and defining JSON Schemas a bonus.
  • Experience setting up and management Confluent/Kafka topics and ensuring performance using Kafka a bonus.
    • Familiarity with Schema Registry, message formats such as Avro, ORC, etc.
    • Understanding how to manage ksqlDB SQL files and migrations and Kafka Streams.
  • Ability to thrive in a team-based environment.
  • Experience briefing the benefits and constraints of technology solutions to technology partners, stakeholders, team members, and senior level of management.
  • Proficiency using Git for version control, including repository management, branching, merging, and pull requests.
    • Repository setup and management.
    • Branching strategies (feature, develop, main).
    • Merging and resolving conflicts.
    • Creating and reviewing pull requests.
    • Commit best practices (clear messages, atomic commits).
    • Tagging and release management.

About Sparibis
Sparibis LLC is a professional solution firm that Clients rely on to access the best talent to drive their business success.
Sparibis is an equal opportunity employer that values diversity at all levels. All individuals, regardless of personal characteristics, are encouraged to apply.