1

Analytic Engineer Jobs in Virginia (NOW HIRING)

Everforth ECS is seeking an Analytic Engineer to work in the National Capital Region covering the Pentagon, Falls Church, and Fairfax . Please Note: This position is contingent upon contract award.

Data Analytics Engineer

Glen Allen, VA · On-site

$180K - $200K/yr

Execute the analytics engineering roadmap by identifying the highest-leverage data opportunities and delivering the models and datasets needed to support them * Design and build a single source of ...

Data Analytics Engineer

Glen Allen, VA

$106K - $127K/yr

Execute the analytics engineering roadmap by identifying the highest-leverage data opportunities and delivering the models and datasets needed to support them * Design and build a single source of ...

RF Analysis Engineer

Arlington, VA · Hybrid

$62K - $141K/yr

RF Analysis Engineer The Opportunity: Do you enjoy contributing to a technical team, while closely working with stakeholders to produce technical outputs that demonstrate the optimal path forward for ...

next page

Showing results 1-20

Analytic Engineer information

See Virginia salary details

$38.7K

$100.9K

$136.3K

How much do analytic engineer jobs pay per year?

As of Jun 12, 2026, the average yearly pay for analytic engineer in Virginia is $100,879.00, according to ZipRecruiter salary data. Most workers in this role earn between $83,300.00 and $115,500.00 per year, depending on experience, location, and employer.

What is the best synonym for analytic?

For an Analytic Engineer, a good synonym for analytic is 'analytical,' which emphasizes skills in data analysis, critical thinking, and problem-solving. Other related terms include 'logical,' 'methodical,' or 'data-driven,' reflecting the focus on interpreting complex data sets and deriving insights using tools like SQL, Python, or Tableau.

What is the difference between Analytic Engineer vs Data Engineer?

AspectAnalytic EngineerData Engineer
CredentialsTypically requires a degree in data science, statistics, or related fields; often certifications in SQL, Python, or cloud platformsRequires a degree in computer science, software engineering, or related fields; certifications in cloud services, SQL, and data pipeline tools
Work EnvironmentFocuses on analyzing data, building data models, and creating dashboards; collaborates with data scientists and business teamsBuilds and maintains data pipelines, databases, and infrastructure; works closely with data engineers and software developers
Industry UsageCommonly found in analytics teams, business intelligence, and data-driven decision-making rolesPrimarily in data infrastructure, big data projects, and data platform development

In summary, Analytic Engineers focus on transforming data into insights through analysis and modeling, while Data Engineers build the infrastructure to support data collection and storage. Both roles are essential in data teams but serve different functions within the data ecosystem.

What do you mean by analytic?

In the context of an Analytic Engineer role, an analytic refers to the process of examining data to uncover insights, patterns, and trends that support business decision-making. It involves using statistical methods, data visualization tools, and programming skills to interpret large datasets and generate actionable reports.

What does it mean if someone is analytic?

An analytic in the context of an Analytic Engineer refers to a person who uses data analysis skills to interpret complex data sets, identify patterns, and generate insights. They often work with tools like SQL, Python, or data visualization software to support decision-making and improve business processes.

Is analytic a good ability in Pokémon?

In the context of an Analytic Engineer, analytical skills are highly valuable for interpreting data, identifying patterns, and making data-driven decisions. While 'analytic' as a skill is relevant in many fields, in Pokémon, it refers to a game mechanic that increases damage when the opponent is hit after being attacked, which is unrelated to professional skills. Therefore, analytical ability is beneficial for data roles but not applicable to Pokémon gameplay mechanics.
What are popular job titles related to Analytic Engineer jobs in Virginia? For Analytic Engineer jobs in Virginia, the most frequently searched job titles are:
What cities in Virginia are hiring for Analytic Engineer jobs? Cities in Virginia with the most Analytic Engineer job openings:
Infographic showing various Analytic Engineer job openings in Virginia as of June 2026, with employment types broken down into 84% Full Time, 5% Part Time, and 11% Contract. Highlights an 100% In-person job distribution, with an average salary of $100,879 per year, or $48.5 per hour.
Analytic Engineer

Analytic Engineer

ECS

Falls Church, VA • On-site

Full-time

Posted 8 days ago


Job description

Everforth ECS is seeking an Analytic Engineer to work in the National Capital Region covering the Pentagon, Falls Church, and Fairfax. Please Note: This position is contingent upon contract award.
The War Data Platform (WDP) is a key initiative within the U.S. Department of War's (DoW) AI-First strategy introduced in early 2026. The WDP separates business and financial data from operational warfighting data, aiming to accelerate the deployment of artificial intelligence (AI) on the battlefield. The WDP extends to Unclassified, Secret, and Top Secret environments, and supports collaboration between Combatant Commands, Joint Staff directorates, Senior Executive Service leaders, and operational analysts.
The Analytic Engineer is responsible for designing, building, and operating the analytic data capabilities that underpin mission-driven insights across all WDP security enclaves. In this role, the Analytic Engineer transforms raw enterprise data into high-quality, analytics-ready assets that directly enable AI deployment and informed decision-making in support of the U.S. Department of War's most critical missions.
• Develops and operates analytic data processing capabilities supporting the War Data Platform (WDP) Core Integration enterprise across Unclassified and NIPR, Secret and SIPR, and Top Secret and JWICS enclaves.
• Builds analytic transformations, query models, and feature-ready datasets using Databricks, Spark, Python, SQL, and Apache Airflow to enable mission analytics for Combatant Commands, Joint Staff elements, and interagency partners.
• Implements structured ingestion and refinement workflows aligned to medallion-architecture bronze, silver, and gold zones, incorporating metadata tagging, lineage tracking, and schema harmonization to strengthen reuse and analytic readiness.
• Applies data quality monitoring techniques including drift detection, rule-based validation, profiling engines, and anomaly scoring to elevate accuracy, completeness, and timeliness across lake environments.
• Applies approved encryption, IAM, and audit-control patterns in coordination with platform and cybersecurity teams.
• Supports analytic issue triage by diagnosing data defects, transformation errors, and dataset inconsistencies, escalating platform or infrastructure issues through established support channels.
• Collaborates with data engineering, data tooling, platform operations, and governance teams to align analytic datasets with enterprise reference architectures and catalog requirements.
• Develops dashboards using tools such as Tableau, Power BI, Databricks SQL, and Grafana to present availability metrics, throughput indicators, drift scores, latency patterns, and enrichment performance.
• Produces documentation covering analytic workflows, model-ready tables, transformation logic, and operational dependencies to support maintainability, onboarding, and analytic mission expansion across all War Data Platform (WDP) Core Integration enclaves.
• Performs other duties as assigned.
• Current Secret security clearance with the ability to obtain and maintain a Top Secret (TS) security clearance with Sensitive Compartmented Information (SCI).
• 3-10 years of experience in data analytics, data engineering, or a closely related technical discipline, with demonstrated hands-on proficiency in Python, SQL, and at least one major cloud data platform such as Databricks, AWS, Microsoft Azure, or Google Cloud Platform (GCP).
• Experience designing and maintaining data transformation workflows, analytic pipelines, and query models in multi-classification or multi-enclave environments, with applied knowledge of medallion architecture principles, metadata management, and data quality monitoring techniques.
• Strong problem-solving and decision-making capabilities, with a proven ability to weigh the relative costs and benefits of potential actions and identify the most appropriate solution.
• Highly developed interpersonal and oral/written communication skills, with the ability to effectively and professionally interact with a diverse set of stakeholders (from peers to end-users to executive management).