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Remote Applied Data Analytics Jobs in Springfield, VA

Senior Data Analyst

Washington, DC · Remote

$97.40K - $122.80K/yr

Washington, DC/Local Remote (candidates must be local to Washington, DC) Duration: 6+ months Need ... data lake, etl, data analytics to detect fraud, statistical analysis, identify fraud, law ...

TS/SCI with Poly Potential for Remote Work: ORA_ON_SITE Description The Data Scientist will apply their technical and analytical capabilities to support key business and security objectives. This ...

Senior Data Analyst

Washington, DC · Remote

$135K - $150K/yr

Remote Job Type: Full-Time | Exempt Salary: $135,000 - $150,000 / Year Benefits: This position is eligible for medical, dental, vision, and 401(k). The Informatics Data Analyst has primary ...

The Data Analysis- Senior,leads the integration and application of advanced data analytics to solve ... Remote View, ERDAS Imagine, Macromedia Dreamweaver, Macromedia Fireworks, Photoshop, HTML, and ...

Data Analyst

Washington, DC · Remote

$95K - $112K/yr

Work Environment: Full-time support in the Washington, DC area with limited remote work based on ... Bachelor's degree in Data Science, Analytics, Intelligence Studies, Statistics, Computer Science ...

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Remote Applied Data Analytics information

See Springfield, VA salary details

$25

$57

$98

How much do remote applied data analytics jobs pay per hour?

As of May 31, 2026, the average hourly pay for remote applied data analytics in Springfield, VA is $57.18, according to ZipRecruiter salary data. Most workers in this role earn between $45.96 and $64.76 per hour, depending on experience, location, and employer.

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

To thrive as a Remote Applied Data Analytics professional, you need a strong background in statistics, data analysis, and problem-solving, typically supported by a degree in a quantitative field. Proficiency with data analytics tools such as Python, R, SQL, and visualization platforms like Tableau or Power BI, as well as familiarity with data management systems, is essential. Strong communication, self-motivation, and the ability to work independently are key soft skills for succeeding remotely and translating data insights into actionable recommendations. These skills ensure effective analysis, clear communication of findings, and the ability to drive data-informed decisions in a remote work environment.

What are some common challenges faced by professionals in remote applied data analytics roles, and how can they be addressed?

Remote applied data analytics professionals often encounter challenges such as effective communication with cross-functional teams, maintaining data security, and managing time across different time zones. To address these issues, it's important to leverage collaborative tools for clear communication, establish regular check-ins, and follow best practices for data privacy. Additionally, setting structured work hours and proactively aligning with teammates can help ensure smooth project workflows and successful outcomes.

What is a Remote Applied Data Analytics job?

A Remote Applied Data Analytics job involves analyzing data to extract insights and help organizations make data-driven decisions, all while working from a location outside of a traditional office. Professionals in this role use statistical methods, programming, and data visualization tools to interpret complex datasets. They often collaborate with cross-functional teams to solve business problems, optimize processes, and present actionable findings. Remote positions in this field require strong technical skills, good communication, and the ability to work independently using digital collaboration tools.

What is the difference between Remote Applied Data Analytics vs Remote Data Analyst?

AspectRemote Applied Data AnalyticsRemote Data Analyst
Required CredentialsBachelor's in Data Science, Analytics, or related field; proficiency in analytics toolsBachelor's in Statistics, Mathematics, or related field; experience with data visualization tools
Work EnvironmentCollaborative teams, project-based tasks, often cross-functionalData-focused tasks, reporting, and data interpretation within organizations
Employer & Industry UsageTech, finance, healthcare, consulting firmsBusiness, marketing, finance, and healthcare sectors

Remote Applied Data Analytics involves applying advanced analytics techniques to solve complex problems, often requiring knowledge of data science tools. Remote Data Analysts focus on interpreting data, creating reports, and supporting decision-making. While both roles require analytical skills, Applied Data Analytics emphasizes modeling and predictive analytics, whereas Data Analysts concentrate on data interpretation and visualization.

What are popular job titles related to Remote Applied Data Analytics jobs in Springfield, VA? For Remote Applied Data Analytics jobs in Springfield, VA, the most frequently searched job titles are:
What job categories do people searching Remote Applied Data Analytics jobs in Springfield, VA look for? The top searched job categories for Remote Applied Data Analytics jobs in Springfield, VA are:
What cities near Springfield, VA are hiring for Remote Applied Data Analytics jobs? Cities near Springfield, VA with the most Remote Applied Data Analytics job openings:
Senior Data Analyst

Senior Data Analyst

Tek Inspirations LLC

Washington, DC • Remote

$97.40K - $122.80K/yr

Other

Posted 9 days ago


Job description

Senior Data Analyst - (Part-Time)

Location: Washington, DC/Local Remote (candidates must be local to Washington, DC)

Duration: 6+ months

Need State client experience

Need Candidate with Active Public trust clearance

Years of Exp.: 10+ years exp.

Skills: sql, python, r, javascript, models, dashboards, reports, dax, data mash-ups (M), power platforms; powerbi, power apps, power automate, aws or azure, data bricks, data factory, data lake, etl, data analytics to detect fraud, statistical analysis, identify fraud, law enforcement or audit history,

Job Description:

Position Description
This position is part-time working approximately 10-20 hours per week.
Expert proficiency in common data science tools, including scripted languages (such as SQL, Python, R, and Java Scripts), Integrated Development Environment and analytics platforms, open-source solutions, commercial off-the- shelf tools and hardware-based capabilities to support the data analytic development process and creating models, dashboards, and reports.
Knowledge and experience using business intelligence applications and reporting technologies/methodologies including Data Analytics Expressions (DAX), data Mash-up(M), and Microsoft Power Platform (e.g., Power BI, Power Apps, Power Automate, etc.).
Knowledge of AWS or Azure Services, including Databricks, Data Factory, and Data Lake.
Knowledge of Extraction, Transformation, and Load (ETL) strategies, pattern recognition, and application of analytical tools.
Coordinate with staff and customers to identify business and technical requirements.
Produce written documentation and artifacts for all work completed, including the translation of user requirements into technical designs.
Assist the agency in the development of programming and visualization solutions.
Troubleshoot and provide support on existing projects or application efforts.
Understand the concepts supporting relational databases, data warehousing, data governance, data access, data quality and related areas.
Position Requirements
Experience applying analytic techniques to detect fraud in client operations.
Extensive background in statistical analysis and skilled in advanced statistical methods and software.
Able to work independently or with teams across functions professionally.
Capable of writing concise, comprehensive communications on complex issues for the intended audience.
Able to communicate methodology and results clearly in writing and verbally, including findings from research.
Analyze clients operations to identify potential fraud schemes, actors, and methods.
Participate in site visits with staff and interpret in-the-field observations, identify corresponding data, perform analysis, and identify broader findings.
In-depth knowledge of scripted languages such as SQL, Python, R, and Java Scripts and the proven ability to create solutions in complex environments, including the use of programming languages to create datasets, visualizations, and interactive reports in various business intelligence applications.
Skill applying analytical techniques, methods, and processes to business problems demonstrated through a history of accepted modeling and analyses that resulted in meaningful business impact. These include working with unstructured or structured data and converting those data sets using a variety of analyses such as optimization, simulation, classical and spatial statistics, and/or programming languages.
Strong writing and documentation skills to capture collection of source data, methodology from business rules, and visualization deployment from a myriad of sources and interactions with various stakeholders.
Write programming codes, such as DAX and data Mash-up(M) for data manipulation, sorting, summarizing, and reporting.
Perform analysis of data for Extraction, Transformation, and Load (ETL) strategies, pattern recognition, and application of analytical tools.
Review, analyze, and modify existing products including coding, debugging, testing, and documenting.
Provide guidance to coworkers on business and technical issues affecting projects, such as data access, data quality, storage capacity, and analytic tools and software.
Assist with training and conference development which may include presentations to large audiences.
Ensure that quality/security guidelines are followed.
Strong relational database and querying languages experience.
Strong verbal and written communication skills.
Must be able to work effectively in a team environment.
Requirements
Knowledge and experience in the law enforcement and/or audit industry
Knowledge and experience using cloud computing platforms such as Azure
Knowledge and experience with relational databases and structured query language (SQL)
Specialized experience working with programming languages (e.g., Python), business intelligence tools (e.g., Power BI), and analytics platforms (e.g., Databricks).
Section III: Experience
Degree in Computer Science, Information Technology, Data Analytics, or related field.
7+ years experience and skill writing coding languages (such as SQL, Python, R, and Java Scripts).
3+ years experience working with Microsoft Power Platform (including Power BI, Power Automate, Power Apps) and other business intelligence applications.
1+ year experience working with AWS or Azure services such as Databricks, Data Factory, and Data Lake.