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Data Science Jobs in Spring, TX (NOW HIRING)

We are currently seeking a Data Science Manager to lead the development and deployment of advanced analytics solutions that drive measurable business outcomes across the bank. This role is ...

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About the Job The Varsity Tutors Live Learning Platform has thousands of students looking for online Data Science tutors nationally. As a tutor on the Varsity Tutors Platform, you'll have the ...

Data Science Consultant Our Deloitte Customer team empowers organizations to build deeper relationships with customers through innovative strategies, advanced analytics, Generative AI, transformative ...

The Data Science Consultant role involves solving data problems end to end, utilizing machine learning and data analysis to enhance customer value and drive business growth. Responsibilities : • ...

Data Science & Machine Learning: * Strong foundation in mathematics, statistics, and machine learning * Experience with exploring and extracting insights from multi-dimensional datasets * Proficiency ...

Develop, test, and deploy data science solutions using Python, SQL, and PySpark on enterprise platforms such as Databricks. * Collaborate with data scientists to translate models into production ...

Doctorate in Data Science, Mathematics, Statistics, Econometrics, Economics, Operations Research, Computer Science, or related field AND 5+ year(s) data-science experience (e.g., managing structured ...

Project Manager, AI and Data Science

Houston, TX · Hybrid

$49.50 - $66.75/hr

Overview Tyndale is scaling its AI and Data Science capabilities to improve safety, customer experience, and operational efficiency across our Flame-Resistant clothing business. We are hiring a ...

Software Engineer in Data Science

Houston, TX · On-site +1

$109.30K - $131.30K/yr

Act as a local champion for data science and AI, helping users adopt tools and articulate their changes and requirements to the wider team. The individual will work both with our data scientists and ...

Software Engineer in Data Science

Houston, TX · On-site +1

$109.30K - $131.30K/yr

Act as a local champion for data science and AI, helping users adopt tools and articulate their changes and requirements to the wider team. The individual will work both with our data scientists and ...

Overview Tyndale is scaling its AI and Data Science capabilities to improve safety, customer experience, and operational efficiency across our Flame-Resistant clothing business. We are hiring a ...

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Data Science information

See Spring, TX salary details

$33.4K

$109.2K

$174.9K

How much do data science jobs pay per year?

As of May 30, 2026, the average yearly pay for data science in Spring, TX is $109,224.00, according to ZipRecruiter salary data. Most workers in this role earn between $87,700.00 and $121,000.00 per year, depending on experience, location, and employer.

What Does a Data Scientist Do?

As a Data Scientist, you are qualified to work in such diverse fields as research and development, politics, advertising and marketing, technology, healthcare, government, and higher education as well as multiple others. In general, your duties and responsibilities will be to compile and analyze relevant statistics and turn those numbers into algorithms that reveal insights that can be used by other researchers in their areas of study. Data Science can reveal things like consumer buying habits or the likelihood of success for a course of action. Other duties might vary, depending on your unique field of specialty. Related areas in which a Data Scientist might wish to focus include work as a Data Analyst, Machine Learning Engineer, and Project Manager.

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

To thrive as a Data Scientist, you need a strong background in statistics, programming (often Python or R), and data analysis, usually supported by a degree in a quantitative field. Familiarity with machine learning libraries (like scikit-learn or TensorFlow), big data tools (such as Hadoop or Spark), and data visualization platforms is typically required. Critical thinking, problem-solving, and effective communication are vital soft skills for translating complex data insights into actionable business strategies. These skills and qualities are essential for extracting value from data, driving informed decisions, and effectively collaborating with multidisciplinary teams.

What are some common challenges faced by data scientists when working with real-world datasets?

Data scientists often encounter challenges such as missing or inconsistent data, unstructured formats, and noisy information in real-world datasets. Cleaning and preprocessing data to ensure its quality can be time-consuming but is critical for building accurate models. Additionally, data scientists may work closely with domain experts and other team members to better understand the data's context and ensure their analyses align with business objectives. Overcoming these challenges requires strong problem-solving skills and effective collaboration within cross-functional teams.

What is data science?

Data science is an interdisciplinary field that uses scientific methods, algorithms, and systems to extract insights and knowledge from structured and unstructured data. It combines skills from statistics, computer science, and domain expertise to analyze and interpret complex data sets. Data scientists work with large amounts of data to identify patterns, make predictions, and help organizations make data-driven decisions.

What is the difference between Data Science vs Data Analyst?

AspectData ScienceData Analyst
Required skillsStatistics, programming (Python, R), machine learningData visualization, SQL, basic statistics
Work environmentDeveloping models, predictive analytics, researchReporting, data cleaning, descriptive analysis
Tools usedPython, R, Jupyter, TensorFlowExcel, SQL, Tableau, Power BI
Industry usageTech, finance, healthcare, e-commerceRetail, marketing, finance, healthcare

Data Science and Data Analyst roles often overlap but differ mainly in scope. Data Scientists focus on building predictive models and advanced analytics, requiring programming and machine learning skills. Data Analysts primarily handle data cleaning, reporting, and visualization. Both roles are essential in data-driven industries, but Data Science is more technical and research-oriented, while Data Analysis emphasizes interpreting data for business insights.

What are the most commonly searched types of Data Science jobs in Spring, TX? The most popular types of Data Science jobs in Spring, TX are:
What are popular job titles related to Data Science jobs in Spring, TX? For Data Science jobs in Spring, TX, the most frequently searched job titles are:
What job categories do people searching Data Science jobs in Spring, TX look for? The top searched job categories for Data Science jobs in Spring, TX are:
What cities near Spring, TX are hiring for Data Science jobs? Cities near Spring, TX with the most Data Science job openings:
Infographic showing various Data Science job openings in Spring, TX as of May 2026, with employment types broken down into 1% As Needed, 82% Full Time, 13% Part Time, and 4% Contract. Highlights an 84% Physical, 6% Hybrid, and 10% Remote job distribution, with an average salary of $109,224 per year, or $52.5 per hour.
Data Science Manager

Data Science Manager

East West Bank

Pasadena, TX • On-site

Full-time

This job post has expired today. Applications are no longer accepted.


Job description

Since 1973, East West Bank has served as a pathway to success. With over 110 locations across the U.S. and Asia, we are the premier financial bridge between the East and West. Our teams of experienced, multi-cultural professionals help guide businesses and community members on both sides of the Pacific looking to explore new markets and create new opportunities, and our sustained growth and expertise in industries like real estate, entertainment and media, private equity and venture capital, and high-tech help build sustainable businesses and expand our associates' potential for career advancement.

Headquartered in California, East West Bank (Nasdaq: EWBC) is a top-performing commercial bank with a strong foundation, an enterprising spirit and a commitment to absolute integrity. East West Bank gives people the confidence to reach further.

We are currently seeking a Data Science Manager to lead the development and deployment of advanced analytics solutions that drive measurable business outcomes across the bank. This role is responsible for establishing scalable data science workflows, operationalizing machine learning models, and embedding data-driven decisioning into core banking functions.

The position sits at the intersection of business strategy, data engineering, and model development, ensuring that advanced analytics initiatives are aligned with enterprise priorities, regulatory requirements, and production-grade standards.

Day-to-Day Responsibilities

  • Lead the design, development, and deployment of advanced analytics and machine learning solutions across key banking domains (e.g., credit risk, fraud, marketing, customer analytics), driving measurable business outcomes.
  • Establish and scale end-to-end data science workflows across the model lifecycle, including data ingestion, feature engineering, model development, validation, deployment, and monitoring (MLOps).
  • Develop and deploy machine learning models using Python (pandas, scikit-learn, XGBoost, PyTorch/TensorFlow) and SQL, ensuring production-grade performance, scalability, and maintainability.
  • Build and maintain data science pipelines leveraging Azure-native and distributed computing frameworks (e.g., Azure ML, Databricks, Spark), supporting both batch and real-time inference.
  • Collaborate with data engineering and application development teams to integrate models into production systems via APIs, microservices (FastAPI/Flask), or enterprise decision platforms, ensuring low-latency and scalable deployment.
  • Drive model lifecycle management and governance, including model validation, performance tracking, monitoring, and periodic recalibration in alignment with regulatory expectations.
  • Partner with data engineering teams to design and optimize feature stores and curated datasets, ensuring consistency between training and production environments.
  • Implement best practices for model explainability, fairness, and auditability, supporting internal governance and regulatory compliance requirements.
  • Mentor and develop junior data scientists through technical guidance, code reviews, and hands-on coaching; manage distributed team resources, including offshore capabilities, as needed.
  • Promote adoption of analytics solutions by embedding models into business processes and decision workflows and partnering with stakeholders to drive measurable impact.

Required Qualifications

  • Bachelor's degree in Data Science, Computer Science, Statistics, Mathematics, or a related quantitative field.
  • 8–12+ years of experience in data science, machine learning, or advanced analytics, with at least 3+ years in a leadership or managerial capacity within financial services or other regulated industries.
  • Strong hands-on proficiency in Python (pandas, NumPy, scikit-learn, XGBoost, PyTorch/TensorFlow) and SQL, with demonstrated experience building and deploying production-grade machine learning models.
  • Deep experience working within an Azure-based data and analytics ecosystem, including:
  • Azure Machine Learning (Azure ML)
  • Azure Databricks / Spark
  • Azure Data Factory or Synapse Pipelines
  • Azure Data Lake Storage (ADLS Gen2)
  • Proven experience implementing MLOps frameworks, including model versioning, experiment tracking, CI/CD pipelines (Azure DevOps or GitHub Actions), and automated deployment.
  • Strong understanding of the end-to-end machine learning lifecycle, including feature engineering, model validation, deployment, and post-production monitoring.
  • Experience working with large-scale distributed data processing frameworks (e.g., Spark) and complex datasets.
  • Solid foundation in statistical modeling and machine learning techniques, including regression, classification, clustering, time series analysis, and ensemble methods.
  • Experience designing and implementing model monitoring frameworks, including performance metrics (AUC, KS, precision/recall) and data/model drift detection.
  • Experience integrating models into production systems via APIs or microservices, and collaborating with engineering teams on scalable system design.
  • Strong understanding of model risk management and regulatory expectations (e.g., SR 11-7), including documentation, validation, and audit readiness.
  • Strong communication skills with the ability to translate complex analytical insights into business recommendations for senior stakeholders.

Preferred Qualifications

  • Master's or PhD in a quantitative discipline.
  • Deep experience in deploying banking analytics use cases, including credit risk, fraud detection, AML/BSA, customer segmentation, and marketing optimization.
  • Familiarity with regulatory frameworks such as SR 11-7, CCAR, and CECL.
  • Experience working in an Azure-first cloud environment at scale within financial services.
  • Exposure to Generative AI / LLM applications, including use cases such as document intelligence, customer interaction, or internal productivity tools.
  • Strong understanding of data governance, privacy, and regulatory compliance frameworks in banking.
  • Demonstrated ability to build, scale, and retain high-performing data science teams.

Applicants must have legal authorization to work in the United States. We do not offer visa sponsorship at this time.

Compensation

The base pay range for this position is USD $175,000.00/Yr. - USD $275,000.00/Yr. Exact offers will be determined based on job-related knowledge, skills, experience, and location.