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Data Stacks Jobs in Washington (NOW HIRING)

Sets technical strategy and reference architecture across modern data stacks and cloud environments. * Leads cross-functional teams (data engineering, ML engineering, applied science, software ...

Sets technical strategy and reference architecture across modern data stacks and cloud environments. * Leads cross-functional teams (data engineering, ML engineering, applied science, software ...

Sets technical strategy and reference architecture across modern data stacks and cloud environments. * Leads cross-functional teams (data engineering, ML engineering, applied science, software ...

Data & AI Engineer

Washington, DC · On-site

$129K - $155K/yr

... stacks -- dbt, Fivetran, Snowflake -- in AWS-based environments. • Track record of building data pipelines and products whose consumers include AI systems, not only BI tools and human analysts. • ...

Data Engineer

Arlington, VA · Remote

$130K - $170K/yr

Modern Data Stack: Familiarity with modern data stack components including data ingestion, transformation, and orchestration. * U.S. citizenship required and ability to obtain a security clearance.

New

Senior Data Platform Engineer

Washington, DC · On-site

$119K - $162K/yr

Terraform). • Comfortable working with bash/shell scripting. • 4+ years of production experience with modern data stacks including data warehouses (BigQuery, Snowflake, or Redshift ...

Degree in Computer Science. * 3+ years of experience writing production ready code in Python. * 3+ years of experience with Python Data Stack: pandas, numpy, sklearn, tensorflow, pytorch, matplotlib ...

Data Engineer

Washington, DC · On-site

$129K - $155K/yr

... stack tools (e.g., dbt, Airflow, or similar orchestration tools) • Experience with data governance, cataloging, and lineage tools • Experience mentoring junior engineers or leading technical ...

Data Engineer

Washington, DC · Remote

$117K - $140K/yr

Our data stack is modern, consolidated, and still maturing -- which means you'll have real ownership over how it evolves, not just tickets to close. This is a high-impact, high-ownership role on a ...

Expert-level proficiency in the AWS Data Stack (Athena, S3, Glue, Lambda). * Hands-on experience with Databricks for big data processing and advanced analytics. * Strong command of MS SQL Server and ...

Expert-level proficiency in the AWS Data Stack (Athena, S3, Glue, Lambda). * Hands-on experience with Databricks for big data processing and advanced analytics. * Strong command of MS SQL Server and ...

Full Stack Data Scientist Category: Software Development/ Engineering Main location: United States, District of Columbia, Washington Position ID:J0626-0223 Employment Type: Full Time Position ...

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Data Stacks information

What are Data Stacks?

Data stacks refer to the combination of tools, technologies, and frameworks used to collect, store, process, and analyze data within an organization. A typical data stack might include data ingestion tools, databases, data warehouses, processing frameworks, and analytics platforms. The purpose of a data stack is to streamline the flow of data from its source to actionable insights, supporting business intelligence and decision-making. Common examples include the Modern Data Stack, which often uses tools like Fivetran, Snowflake, dbt, and Looker.

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

To thrive as a Data Engineer, you need strong skills in database design, data modeling, and programming languages like Python or Java, typically supported by a degree in computer science or a related field. Familiarity with tools such as SQL, Apache Spark, Hadoop, and cloud platforms like AWS or Google Cloud, as well as certifications in these technologies, is highly valued. Problem-solving abilities, attention to detail, and effective communication are important soft skills for this role. These skills are crucial for building reliable data pipelines, ensuring data quality, and supporting data-driven decision-making within organizations.

What is the difference between Data Stacks vs Data Analysts?

AspectData StacksData Analysts
Required CredentialsBachelor's in Computer Science, Data Science, or related fields; certifications like SQL, Python, or cloud platformsBachelor's in Statistics, Mathematics, or related fields; often certifications in Excel, SQL, or data visualization tools
Work EnvironmentTechnical teams, data engineering, software development environmentsBusiness units, reporting teams, data visualization platforms
Employer & Industry UsageTech companies, data-driven organizations, startupsFinance, marketing, healthcare, consulting firms

Data Stacks focus on building and managing the underlying data infrastructure, while Data Analysts interpret data to provide insights. Both roles require analytical skills, but Data Stacks professionals are more technical, working with data pipelines and databases, whereas Data Analysts focus on analyzing data to support decision-making.

What are some common challenges faced when managing modern data stacks, and how can they be addressed in this role?

Professionals managing modern data stacks often encounter challenges such as integrating diverse data sources, ensuring data quality, and maintaining system scalability as data volumes grow. Addressing these challenges typically involves collaborating closely with data engineers, analysts, and IT teams to implement robust data pipelines, automate data validation, and monitor system performance. Staying updated with evolving technologies and best practices is also crucial for proactive problem-solving and optimizing the data stack for business needs.
What cities in Washington are hiring for Data Stacks jobs? Cities in Washington with the most Data Stacks job openings:

Director of Data Solutions

Axle

Rockville, MD

Other

Medical, Dental, Vision, Retirement, PTO

Posted 8 days ago


Job description

(ID: 2026-1572)


Axle is a bioscience and information technology company that offers advancements in translational research, biomedical informatics, and data science applications to research centers and healthcare organizations nationally and abroad. With experts in biomedical science, software engineering, and program management, we focus on developing and applying research tools and techniques to empower decision-making and accelerate research discoveries. We work with some of the top research organizations and facilities in the country including multiple institutes at the National Institutes of Health (NIH).

Benefits We Offer:

  • 100% Medical, Dental & Vision Coverage for Employees
  • Paid Time Off and Paid Holidays
  • 401K match up to 5%
  • Educational Benefits for Career Growth
  • Employee Referral Bonus
  • Flexible Spending Accounts:
    • Healthcare (FSA)
    • Parking Reimbursement Account (PRK)
    • Dependent Care Assistant Program (DCAP)
    • Transportation Reimbursement Account (TRN)

The Director of Data Solutions is the senior technical delivery leader for data platforms, AI/ML solutions (including GenAI), and advanced modeling/simulation capabilities. This leader owns the "how and when" of building reusable, enterprise-grade capabilities that turn complex, multimodal data into trusted products and measurable outcomes.

In practice, this role:

  • Sets technical strategy and reference architecture across modern data stacks and cloud environments.
  • Leads cross-functional teams (data engineering, ML engineering, applied science, software engineering) to ship and operate production systems.
  • Establishes an organization-wide modeling and simulation practice that ensures reproducibility, compute strategy, and strong quality standards.
KEY RESPONSIBILITIESTechnical strategy & architecture
  • Define reference architectures and technical standards for data/AI platforms (security, scalability, reliability, cost governance, developer experience).

  • Own platform modernization plans and technical debt reduction sequencing.

  • Make build/buy/partner decisions and establish patterns that can be reused across programs.

Interoperability, harmonization & data quality
  • Lead delivery of repeatable ingestion and transformation pipelines with testing, validation, and change control.

  • Own harmonization capabilities (terminology translation, unit normalization, episode building) as production services with documentation and quality dashboards.

  • Partner with governance and stakeholders to define "minimum acceptable quality" and publish transparent quality measures.

AI/ML and GenAI solution delivery
  • Lead delivery of production AI/ML solutions (NLP, CV, predictive models, representation learning) and deploy them with evaluation and monitoring.

  • Own GenAI patterns and platforms (RAG, agentic workflows, human-in-the-loop review, traceability, privacy safeguards) as reusable services.

  • Establish model lifecycle governance: approvals, audits (as needed), drift monitoring, incident response, and continuous improvement.

Realworld evidence enablement engines
  • Build reusable "engines" for RWE execution: cohorting/phenotyping pipelines, reproducible protocol templates, causal inference/target trial tooling patterns, and integration templates for multiple data sources.

  • Staff and support analysis pods for time-sensitive, high-stakes deliverables with rigorous QC and reproducibility practices.

Simulations & modeling practice leadership
  • Define the modeling/simulation practice charter: scope, service model, standards, compute strategy (HPC/cloud), and hiring/partnering plan.

  • Lead simulation/modeling teams directly or via domain SMEs; ensure reproducible workflows and high quality bars.

  • Identify and prioritize high-value hybrid ML+simulation opportunities.

Privacy, security & operational excellence
  • Partner with security/privacy to implement strong access controls, auditability, and (where needed) privacy-preserving approaches.

  • Establish operational excellence: release management, observability, on-call/incident processes (as appropriate), and runbooks.

People leadership & culture
  • Hire, grow, and retain a high-performing organization; create clear roles, career paths, and performance expectations.

  • Build a culture of "research-grade rigor + production-grade discipline," emphasizing accountability, documentation, and sustainability.

 REQUIRED QUALIFICATIONS
  • 6+ years in data science, ML engineering, data platform engineering, applied research engineering, or closely related fields

  • 3+ years leading multi-disciplinary teams.

  • Demonstrated success delivering production data/AI platforms (not only analyses), including architecture, delivery planning, and operational ownership.

  • Strong familiarity with modern data stacks and cloud delivery (distributed compute, ETL/ELT, data quality tooling, MLOps/LLMOps concepts).

  • Ability to translate ambiguous stakeholder needs into shipped products and measurable outcomes.

  • Strong people leadership: recruiting, coaching, performance management, org design.

  • Comfort operating in regulated and high-governance environments (privacy, compliance, access control).

 PREFERRED QUALIFICATIONS
  • Healthcare data platform experience, especially interoperability/harmonization at scale (OMOP/FHIR/PCORNet/CDISC) and clinical terminology systems.

  • Experience shipping GenAI solutions with governance (PII handling, traceability, human review, evaluation, monitoring).

  • Experience with privacy-preserving ML patterns (federated learning/inference) and/or sensitive data platforms.

  • Experience leading simulation/modeling initiatives (scientific computing, HPC workflows, domain simulations) and partnering effectively with scientific SMEs.

  • Track record of publications, open-source leadership, or scientific impact.

Disclaimer: The above description is meant to illustrate the general nature of work and level of effort being performed by individuals assigned to this position or job description. This is not restricted as a complete list of all skills, responsibilities, duties, and/or assignments required. Individuals may be required to perform duties outside of their position, job description or responsibilities as needed.

The diversity of Axle's employees is a tremendous asset. We are firmly committed to providing equal opportunity in all aspects of employment and will not tolerate any illegal discrimination or harassment based on age, race, gender, religion, national origin, disability, marital status, covered veteran status, sexual orientation, status with respect to public assistance, and other characteristics protected under state, federal, or local law and to deter those who aid, abet, or induce discrimination or coerce others to discriminate.

Accessibility: If you need an accommodation as part of the employment process please contact: careers@axleinfo.com

This role has a market-competitive salary with an anticipated base compensation range listed below. Actual salaries will vary depending on a candidate's experience, qualifications, skills, and location.

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