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Quantitative Data Engineer Jobs in Texas (NOW HIRING)

Data Engineer

Dallas, TX ยท On-site

$60 - $65/hr

Bachelor's or Master's degree in Computer Science, Data Engineering, or a related quantitative field. * 7+ years of experience in data engineering, with at least 3+ years in a lead or senior role.

Data Engineer

Dallas, TX ยท On-site +1

$100K - $120K/yr

Data Engineer REPORTS TO: Director, Engineering SUPERVISES: None JOB CLASS: Exempt Purpose: Data ... Strong analytical, quantitative, and problem-solving abilities * Working knowledge of message ...

Finance Data Engineer

Austin, TX ยท On-site

$113K - $136K/yr

The Finance Data Engineer is a technical expert who creates data interfaces, pipelines and codebase ... other quantitative discipline required with five or more years of experience Preferred ...

Finance Data Engineer

Austin, TX ยท On-site

$113K - $136K/yr

The Finance Data Engineer is a technical expert who creates data interfaces, pipelines and codebase ... other quantitative discipline required with five or more years of experience Preferred ...

Cloud Data Engineer

Houston, TX ยท On-site

$109K - $131K/yr

Data Engineer Position 6-8+ years of experience as a Data Engineer or a similar role developing ... Intellectual curiosity along with excellent problem-solving and quantitative skills. Experience ...

Principal Data Engineer

Houston, TX ยท On-site

$106K - $127K/yr

Bachelor's Degree Computer Science, Data Science, MIS, Engineering, Mathematics, Statistics or other quantitative discipline with 5-8 years of hands-on experience in data engineering, with a proven ...

Senior Data Engineer, Python

Houston, TX ยท On-site +1

$109K - $131K/yr

By streamlining data integration and enhancing collaboration, we help operators, engineers, and ... Quantitative Analysis & Optimization * Collaborate with reservoir and operations teams to translate ...

Data Solutions - Data Engineer

Spring, TX ยท On-site

$130K - $205K/yr

Data Solutions - Data Engineer Description - Job Summary The Data Solutions - Data Engineer is ... The role provides quantitative rationale for executing customer and product strategies and tactics.

The Finance Data Engineer is a technical expert who creates data interfaces, pipelines and codebase ... quantitative discipline required with five or more years of experience Pay & Benefits At Apple ...

The Finance Data Engineer is a technical expert who creates data interfaces, pipelines and codebase ... quantitative discipline required with five or more years of experience Pay & Benefits At Apple ...

The Finance Data Engineer is a technical expert who creates data interfaces, pipelines and codebase ... quantitative discipline required with five or more years of experience Pay & Benefits At Apple ...

Data Engineer

Irving, TX ยท On-site +1

$114K - $144K/yr

Caremark, LLC, a CVS Health company, is hiring for the following role in Irving, TX: Data Engineer ... Quantitative analysis techniques, including clustering, regression, and pattern recognition;

The Finance Data Engineer is a technical expert who creates data interfaces, pipelines and codebase ... quantitative discipline required with five or more years of experience Pay & Benefits At Apple ...

Bachelor's or Master's degree in a quantitative field such as Statistics, Economics, Engineering, Mathematics, or Data Science * At least 4 years of work experience in software engineering

Data Engineer

Irving, TX ยท On-site +1

$114K - $144K/yr

Caremark, LLC, a CVS Health company, is hiring for the following role in Irving, TX: Data Engineer ... Quantitative analysis techniques, including clustering, regression, and pattern recognition;

Sr. Data Engineer

Irving, TX ยท On-site +1

$114K - $185K/yr

... Engineer to develop, build, and manage large-scale data structures, pipelines, and efficient ... and quantitative data analysis on source systems based in data warehouses and legacy data marts ...

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Quantitative Data Engineer information

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

To excel as a Quantitative Data Engineer, you need strong proficiency in programming (such as Python, R, or C++), advanced mathematical and statistical knowledge, and a relevant degree in computer science, mathematics, or a related field. Experience with big data tools (like Spark, Hadoop), cloud platforms, and data pipeline systems, as well as familiarity with financial data sets, is typically required. Analytical thinking, detail orientation, and effective problem-solving skills distinguish top performers in this role. These competencies are critical for efficiently transforming complex data into actionable insights and supporting robust quantitative models in data-driven environments.

What is a Quantitative Data Engineer?

A Quantitative Data Engineer is a professional who designs, builds, and maintains data infrastructure that supports quantitative analysis, typically in finance or technology sectors. They work closely with quantitative analysts and data scientists to ensure efficient data pipelines, data quality, and high-performance systems for processing large datasets. Their responsibilities include developing ETL processes, optimizing databases, and implementing data models to support research and trading strategies. Strong programming skills, expertise in big data technologies, and knowledge of quantitative methods are essential for this role.

What is the difference between Quantitative Data Engineer vs Data Scientist?

AspectQuantitative Data EngineerData Scientist
Primary FocusBuilding data pipelines, data infrastructure, and ensuring data qualityAnalyzing data, creating models, and deriving insights
Skills & ToolsSQL, Python, Spark, ETL processes, data architectureStatistics, machine learning, Python/R, data visualization
CredentialsComputer science, engineering, or related degrees; certifications in data engineeringStatistics, data science, or related degrees; certifications in data analysis or machine learning
Work EnvironmentData engineering teams, data infrastructure projectsData analysis teams, research, and modeling projects

While both roles work closely with data, Quantitative Data Engineers focus on building and maintaining data systems, whereas Data Scientists analyze data to generate insights and models. They often collaborate but have distinct skill sets and responsibilities within data-driven organizations.

How does a Quantitative Data Engineer typically collaborate with data scientists and quantitative analysts on projects?

Quantitative Data Engineers work closely with data scientists and quantitative analysts to design, build, and optimize data pipelines that support complex modeling and analytics. They are often responsible for ensuring data quality, scalability, and efficient data processing, enabling analysts to focus on developing models and extracting insights. Regular collaboration includes translating analytical requirements into technical solutions, troubleshooting data issues, and iterating on data infrastructure to support evolving project needs. This teamwork fosters an environment where technical and analytical expertise complement each other, leading to more robust and actionable results.
What cities in Texas are hiring for Quantitative Data Engineer jobs? Cities in Texas with the most Quantitative Data Engineer job openings:

$113K - $136K/yr

Full-time

Posted 13 days ago


Job description

We're looking for a Data Engineer to help build and maintain the data pipelines that power our investment, research, and analytics teams. You'll work closely with data scientists, quants, and investors to onboard new datasets, ensure data quality, and maintain the reliability of the data that drives decision-making across the firm.
What You'll Do
โ€ข Build, maintain, and troubleshoot ETL pipelines (Airflow, Dagster, or similar).
โ€ข Ingest and deeply understand new datasets - their structure, quirks, and business meaning.
โ€ข Maintain high-quality, well-documented datasets used across the organization.
โ€ข Partner with non-engineering stakeholders to understand data needs and guide them to the right sources.
โ€ข Evaluate data vendors and ensure we use the best data for each use case.
What We're Looking For
โ€ข Strong Python and SQL skills.
โ€ข Experience building data pipelines; familiarity with Spark or Pandas a plus.
โ€ข Strong attention to detail and persistence in debugging data issues.
โ€ข Clear communication skills, especially with non-technical audiences.
โ€ข 1-3 years of experience (or strong internships); senior candidates also welcome.
Who Thrives Here
โ€ข Curious, detail-oriented engineers who like diving deep into complex datasets.
โ€ข People who enjoy owning problems end-to-end and defining their own requirements.
โ€ข Engineers who build reliable, maintainable systems and prefer fast, iterative execution.
Why Join
โ€ข High-impact role: the data you manage powers investment decisions across the firm.
โ€ข Broad exposure to many types of financial and alternative data.
โ€ข Opportunity to shape a growing data function and work with teams across the entire company.
Qualifications
โ€ข Strong Python and SQL skills.
โ€ข Experience building data pipelines; familiarity with Spark or Pandas a plus.
โ€ข Strong attention to detail and persistence in debugging data issues.
โ€ข Clear communication skills, especially with non-technical audiences.
โ€ข 1-3 years of experience (or strong internships); senior candidates also welcome.
Why is This a Great Opportunity
You are building data infrastructure that directly drives investment decisions. The pipelines you own power research, analytics, and live decision making across the firm. This is not abstract data work. It affects capital allocation.
You work directly with quants, data scientists, and investors. You are not buried behind layers of product or management. You see how data is used, where it breaks, and how to make it better. That feedback loop is fast and real.
You get broad exposure to high value datasets. Market data, alternative data, vendor feeds, internal research outputs. You learn how data actually behaves in production, not how it looks in a demo.