1

Data Analytics Trainee Jobs in Virginia (NOW HIRING)

Role Overview As an Entry-Level Management Trainee, you'll gain exposure to event marketing, brand ... Collect and analyze campaign performance data and customer feedback * Maintain brand consistency ...

Responsible for timely and accurate data entry of sales orders and/or purchase orders into the ... Mental Capacities - Achievement/Effort, Active Listening, Adaptability/Flexibility, Analytical ...

Responsible for timely and accurate data entry of sales orders and/or purchase orders into the ... Mental Capacities - Achievement/Effort, Active Listening, Adaptability/Flexibility, Analytical ...

The Management Trainee will work closely with experienced managers to learn about Outside Sales ... Analyze sales data and assist in making informed business decisions. * Collaborate with key leaders ...

The Management Trainee will work closely with experienced managers to learn about Outside Sales ... Analyze sales data and assist in making informed business decisions. * Collaborate with key leaders ...

The Management Trainee will work closely with experienced managers to learn about Outside Sales ... Analyze sales data and assist in making informed business decisions. * Collaborate with key leaders ...

The Management Trainee will work closely with experienced managers to learn about Outside Sales ... Analyze sales data and assist in making informed business decisions. * Collaborate with key leaders ...

Senior Systems Engineer - Federal

Sterling, VA · On-site +1

$103K - $141K/yr

... data applications and next-generation analytics and web frameworks. * Preparation and/or delivery of technical product and architecture presentations to customers and trainees. * Knowledge of ...

next page

Showing results 1-20

Data Analytics Trainee information

What does a Data Analytics Trainee do?

A Data Analytics Trainee is an entry-level professional who learns to collect, process, and analyze data to help organizations make informed decisions. Their responsibilities typically include cleaning and organizing data, using statistical tools to identify trends, and creating basic reports or visualizations. They often work under the supervision of experienced analysts, gaining practical experience with data analytics tools and techniques. This role is designed to provide foundational skills and knowledge needed for a career in data analytics.

Is 30 too late for data science?

For a Data Analytics Trainee, starting a career in data science at age 30 is feasible, as many professionals transition into the field later in life. Success depends on acquiring relevant skills such as programming, statistics, and tools like Python or SQL, and gaining practical experience through projects or certifications. Age is less important than skill development and continuous learning in this field.

What are the key skills and qualifications needed to thrive as a Data Analytics Trainee, and why are they important?

To thrive as a Data Analytics Trainee, you need foundational knowledge of statistics, data analysis, and basic programming skills—often supported by a relevant degree or coursework in data science, mathematics, or computer science. Familiarity with tools such as Excel, SQL, Python, and data visualization platforms like Tableau is highly valued, and introductory certifications in analytics can be advantageous. Strong problem-solving abilities, attention to detail, and effective communication skills help you interpret and present data insights clearly. These skills are critical for turning raw data into actionable information, supporting decision-making, and building a successful analytics career.

What does a data analyst trainee do?

A data analyst trainee assists in collecting, cleaning, and analyzing data to identify trends and support decision-making. They often learn to use tools like Excel, SQL, and data visualization software while gaining practical experience under supervision.

What types of projects can a Data Analytics Trainee expect to work on during their training period?

As a Data Analytics Trainee, you can expect to work on a variety of projects that involve collecting, cleaning, and analyzing datasets to uncover insights that support business decisions. Common tasks include preparing data for analysis, building dashboards for stakeholders, and assisting with the creation of reports or presentations. You may also collaborate with team members on real-world case studies, learning to use popular analytics tools such as Excel, SQL, or Python. These projects are designed to build your technical skills while giving you exposure to practical business challenges.

Will AI replace data analyst?

AI tools can automate routine data processing and analysis tasks, but data analysts are essential for interpreting insights, making strategic decisions, and applying domain knowledge. The role of a data analyst is evolving to include working alongside AI and developing skills in data visualization, programming, and critical thinking. Human expertise remains crucial for understanding context and ensuring accurate, actionable results.

How can I get into data analytics with no experience?

Data analytics trainees can start by learning foundational skills such as Excel, SQL, and basic statistics through online courses or tutorials. Gaining hands-on experience with real datasets and earning certifications like Google Data Analytics can improve employability, even without prior work experience.
What are the most commonly searched types of Data Analytics jobs in Virginia? The most popular types of Data Analytics jobs in Virginia are:
What are popular job titles related to Data Analytics Trainee jobs in Virginia? For Data Analytics Trainee jobs in Virginia, the most frequently searched job titles are:
What cities in Virginia are hiring for Data Analytics Trainee jobs? Cities in Virginia with the most Data Analytics Trainee job openings:
Infographic showing various Data Analytics Trainee job openings in Virginia as of June 2026, with employment types broken down into 1% As Needed, and 99% Full Time. Highlights an 88% Physical, 3% Hybrid, and 9% Remote job distribution.
Performance/Data Analyst III with Security Clearance

Performance/Data Analyst III with Security Clearance

AITHERAS, LLC

Arlington, VA • On-site

Other

Posted 10 days ago


Job description

Job Description: Senior Data Analytics BI Engineer
Title Senior Data Analytics BI Engineer Location Washington, DC Metro / Hybrid / Federal Client Site as Required Clearance / Background U.S. citizenship required. Active federal clearance or ability to obtain Public Trust/Secret clearance preferred. Experience Level 8–12+ years of experience in data analytics, BI engineering, data engineering, software development, database modernization, reporting automation, and federal client delivery. Role Summary AITHERAS is seeking a Senior Data Analytics BI Engineer to support federal agency data modernization, business intelligence, compliance, reporting automation, and database transformation initiatives. This role requires a senior hands-on technologist who can work directly with federal stakeholders, analyze complex legacy systems, modernize databases and workflows, build dashboards, automate reporting, and deliver practical data solutions across operational, finance, compliance, HR, and executive reporting environments. The ideal candidate combines BI engineering, data engineering, software development, workflow automation, database auditing, and federal consulting experience. This person should be comfortable analyzing hundreds of database tables and thousands of fields, identifying bottlenecks, migrating legacy MS Access solutions to SQL Server, building Power BI dashboards, automating reporting workflows, and supporting decision-makers at agency and government levels. Key Responsibilities
Support federal agency data analytics, BI engineering, reporting automation, and database modernization initiatives.
Serve as a senior technical consultant to agency stakeholders, including Chief Data Officer teams, inspections, compliance, finance, HR, and operational departments.
Analyze, audit, and document complex legacy data environments with hundreds of database tables, thousands of fields, and multiple downstream reporting workflows.
Review existing databases, applications, workflows, and business processes to identify bottlenecks, data quality issues, modernization opportunities, and process improvements.
Design, build, and maintain Power BI dashboards, semantic models, datasets, measures, reports, and executive-facing visual analytics.
Develop and support SQL Server databases, queries, stored procedures, views, data models, and migration plans.
Lead migration of MS Access databases to SQL Server and support modernization of legacy frontends using Power Apps or similar low-code platforms.
Build automated ETL, data integration, file import, and reporting workflows that can be configured and maintained by end users where appropriate.
Support data scientists with AI data pipelines, ETL tasks, automated reporting, and data preparation workflows.
Automate ad hoc and recurring reports for agency decision-makers, finance teams, compliance teams, and government leadership.
Develop forecasting and rules-based automation solutions for scheduling, workload planning, HR medical exam tracking, and operational planning.
Automate finance risk assessment reports by merging manual and automated data inputs into repeatable reporting processes.
Enhance finance training reporting by tracking training statistics, trainee progress, compliance status, and reporting trends.
Digitize compliance documents and convert unstructured or semi-structured content into quantifiable data for analysis and decision-making.
Extract data from government-level reports and reconcile results against internal systems.
Build dashboards and workflow tools that support automated task assignment, data review, data entry, and data correction processes.
Develop secure proof-of-concept AI and generative AI solutions, including local/offline AI model API services for sensitive or disconnected data environments.
Create databases and tools for document management, automated quality control, deliverable tracking, project reporting, and compliance monitoring.
Support NIST cybersecurity compliance documentation, review, and evidence-gathering activities.
Produce Section 508-compliant reports, spreadsheets, dashboards, and client deliverables.
Automate financial, mortgage, compliance, and operational data workflows, including large-scale file processing and data validation.
Build integrations with enterprise financial systems such as Deltek or similar platforms.
Perform continuous data analysis, issue resolution, root cause analysis, and recommendations for system, data, and reporting improvements.
Prepare technical documentation, workflow documentation, user guides, process maps, and client-ready analytical summaries.
Collaborate with federal clients, project managers, software developers, data scientists, compliance teams, finance teams, and executive stakeholders.
Required Qualifications
8+ years of experience in data analytics, BI engineering, database development, software development, data engineering, or federal reporting automation.
Experience supporting federal government agencies, federal contractors, or regulated public-sector environments.
Strong experience with Power BI dashboard development, data modeling, DAX, Power Query, report design, and BI publishing workflows.
Strong SQL Server experience, including database design, querying, stored procedures, views, optimization, and data migration.
Experience modernizing legacy MS Access databases, including migration to SQL Server or similar enterprise database platforms.
Experience building automated ETL workflows, file imports, data transformations, and recurring reporting pipelines.
Experience auditing complex databases, applications, and workflows to assess data quality, bottlenecks, usability, and modernization needs.
Experience supporting finance, compliance, inspections, HR, operations, risk, or executive reporting functions.
Experience developing automated reports, dashboards, Excel-based tools, and decision-support products for senior stakeholders.
Ability to analyze large-scale data environments with many tables, fields, business rules, and downstream dependencies.
Experience translating manual processes into automated workflows, applications, dashboards, or configurable end-user tools.
Experience documenting data structures, business rules, technical workflows, system dependencies, and reporting logic.
Strong client-facing communication skills with the ability to gather requirements, explain technical findings, and recommend practical solutions.
Ability to work independently as a senior hands-on consultant in a federal client environment.
Strong attention to detail, quality control, and documentation discipline.
Preferred Qualifications
Prior experience supporting DEA, DOJ, DHS, HUD, FHA, federal law enforcement, federal finance, or federal compliance programs.
Experience working with Chief Data Officer, compliance, inspections, finance, HR, or executive reporting teams.
Experience with Power Apps, Power Automate, SharePoint, Microsoft Dataverse, Microsoft Fabric, Azure, or Microsoft 365 government environments.
Experience with Python, R, VBA, C#, .NET, JavaScript, or other automation/software development languages.
Experience with AI/ML data pipelines, data preparation for data science teams, or generative AI proof-of-concept development.
Experience developing secure local/offline AI solutions for sensitive data environments.
Experience with document digitization, OCR workflows, document management, data scraping, and automated reconciliation.
Experience with Deltek or other federal contractor financial systems.
Experience with NIST cybersecurity compliance, data security documentation, or federal IT control reviews.
Experience creating Section 508-compliant Excel reports, dashboards, or federal deliverables.
Experience with mortgage, financial services, due diligence, asset review, loan file processing, or federal financial reporting.
Experience processing very large document or file volumes under tight deadlines.
Active Public Trust, Secret, or higher clearance.
Tools / Technologies Power BI, SQL Server, MS Access, Power Apps, Power Automate, Excel, VBA, SQL, ETL tools, Power Query, DAX, SharePoint, Microsoft 365, Microsoft Dataverse, Python, R, APIs, generative AI platforms, local/offline AI models, document management tools, data scraping tools, Deltek, NIST documentation tools, Section 508-compliant reporting tools, government reporting systems Certifications Preferred but not required: Microsoft Certified: Power BI Data Analyst, Microsoft Certified: Azure Data Engineer, Microsoft Power Platform App Maker, Microsoft Power Platform Functional Consultant, Microsoft Azure AI Engineer, Security+, ITIL Foundation, Certified Analytics Professional, Lean Six Sigma Green Belt, PMP, CDMP Performance Outcomes
Modernize legacy databases and reporting workflows into scalable SQL Server, Power BI, and Power Platform solutions.
Improve reporting speed, quality, and consistency through automation and reusable data pipelines.
Reduce manual effort in finance, compliance, HR, inspections, and operational reporting.
Deliver executive dashboards and ad hoc analysis that support agency and government-level decision-making.
Identify and resolve data quality issues, workflow bottlenecks, and system inefficiencies.
Enable secure and practical use of AI, automation, and data engineering in sensitive federal environments.
Produce accurate documentation, audit support materials, and client-ready technical deliverables.