Quant Developers & Data Scientists-W2 Only jobs in United States
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Stash Talent Services · 5 hours ago

Quant Developers & Data Scientists-W2 Only

Stash Talent Services is seeking highly technical Data Scientists & Quant Developers to design, build, and productionize quantitative and data-driven solutions for trading, risk, and financial analytics platforms. The role involves developing and maintaining quantitative models and analytics, collaborating with various teams, and ensuring model performance through monitoring and enhancements.

Staffing & Recruiting

Responsibilities

Design, develop, and maintain quantitative models and analytics for trading, pricing, risk, and forecasting
Implement statistical, machine learning, and signal-based models and convert research prototypes into production-grade systems
Build and optimize data pipelines for large-scale market and financial datasets
Develop time-series, regression, classification, and simulation models
Implement back-testing, scenario analysis, and performance measurement frameworks
Write efficient, scalable, and well-tested code used in research and live trading environments
Collaborate with traders, quantitative researchers, and engineering teams to deliver end-to-end solutions
Monitor live models, evaluate drift, and continuously enhance model performance
Clearly document model logic, assumptions, and technical design

Qualification

PythonStatisticsSQLTime-series analysisMachine learningGitModel deploymentFinancial instrumentsBack-testing methodologiesMLOpsDistributed data processing

Required

Strong programming experience in Python (NumPy, Pandas, SciPy, scikit-learn)
Solid understanding of software engineering fundamentals (data structures, algorithms, design patterns)
Strong foundation in statistics, probability, linear algebra, and numerical methods
Experience with time-series analysis and financial data modeling
Proficiency with SQL and large datasets
Experience with Git, CI/CD, testing, and production support
Hands-on experience building or supporting trading, pricing, or risk models
Knowledge of financial instruments (equities, FX, fixed income, derivatives)
Understanding of back-testing methodologies, PnL attribution, Sharpe, drawdown, and risk metrics
Exposure to market microstructure, factor models, or systematic strategies
Experience with PyTorch or TensorFlow
Distributed data processing using Spark or similar frameworks
Model deployment using APIs, Docker, Kubernetes, or cloud platforms (AWS/GCP/Azure)
Familiarity with MLOps, model monitoring, and lifecycle management

Company

Stash Talent Services

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Funding

Current Stage
Early Stage
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