#WeAreTradeStation
Remote Position - must reside in Florida, Texas, Illinois, New York, New Jersey, Colorado, Idaho, Massachusetts, Michigan, Minnesota, Missouri, North Carolina, South Carolina, Utah or Virginia
Who We Are:
TradeStation is the home of those born to trade. As an online brokerage firm and trading ecosystem, we are focused on delivering the ultimate trading experience for active traders and institutions. We continuously push the boundaries of what's possible, encourage out-of-the-box thinking, and relentlessly search for like-minded innovators.
At TradeStation, we are building an AI-First culture. We expect team members to embrace AI as a core part of their daily workflow, whether that’s using AI to accelerate development, enhance decision-making, improve client outcomes, or streamline internal processes. We hire, grow, and promote people who can harness AI responsibly and creatively. We treat AI as a partner in problem-solving, not just a tool; following our governance standards to ensure AI is used ethically, securely, and transparently. If you join us, you’re joining a culture where AI is how we work.
Are you ready to make yourself at home?
What We Are Looking For:
We're seeking a Principal Data Scientist to help design, build, and deploy advanced analytics and machine learning solutions that power TradeStation's trading platform, client experience, and business operations. Reporting to the Sr. Director of AI, Data Science & Enterprise Data, this role will own the full data science lifecycle — from exploratory analysis and model development through production deployment and ongoing monitoring.
This role is for a self-directed practitioner who thrives without hand holding. The ideal applicant will proactively identify opportunities where data science can create meaningful impact, build the solutions, and iterate rapidly. The Principal Data Scientist will write clean, production-grade code, stay genuinely curious about emerging AI and ML techniques, and independently learn new tools before being asked to. The applicant should be equally at home in a Jupyter notebook and a production ML pipeline.
This role will work closely with Product, Engineering, Compliance, and Analytics teams to build predictive models, behavioral analytics, and AI-powered capabilities that give TradeStation a competitive edge.
What You’ll Be Doing:
Modeling & Machine Learning
Own the end-to-end ML lifecycle — from problem framing and feature engineering through model training, validation, deployment, and ongoing performance monitoring
Help build and deploy predictive models across a range of use cases including customer behavior, fraud and anomaly detection, trade surveillance, risk modeling, and personalization
Design and implement real-time and batch ML pipelines that operate reliably at scale in production environments
Develop behavioral anomaly detection and pattern recognition systems using statistical and deep learning approaches
Apply NLP and LLM techniques to extract insights from unstructured data — trade notes, client communications, market commentary, and internal documentation
Analytics & Visualization
Translate complex data into clear, compelling visualizations and narratives for both technical and executive audiences
Help design and build dashboards and analytical tools that empower stakeholders to make faster, more informed decisions
Conduct exploratory data analysis to surface trends, anomalies, and opportunities across trading behavior, customer segments, and platform performance
Define, track, and interpret key business and model performance metrics; proactively surface meaningful insights without waiting to be asked
AI Integration & Innovation
Stay at the forefront of AI and ML research — continuously evaluate and adopt emerging techniques (GenAI, RAG, agents, multimodal models) where they create real business value
Leverage AI tools (Claude, LLMs, foundation models) to accelerate your own development workflow, from code generation to documentation to data profiling
Experiment rapidly with new approaches; fail fast, iterate, and bring winning solutions to production
Contribute to TradeStation's AI governance standards by ensuring models are interpretable, fair, and deployed responsibly
Strategic Impact & Communication
Partner with Product and Engineering to define the data and modeling requirements for new platform features
Work with Compliance and Risk teams to build surveillance and monitoring systems that meet regulatory requirements
Communicate results and recommendations clearly to non-technical stakeholders; translate business questions into rigorous analytical frameworks
The Skills You Bring:
Self-Starter & Independent Learner —proactively identify problems worth solving, learn new techniques without being prompted, and drive projects to completion without needing direction
Full-Stack Data Science — proven ability to own the complete lifecycle: problem definition, data wrangling, feature engineering, modeling, deployment, and monitoring in production environments
Machine Learning Depth — strong command of supervised, unsupervised, and reinforcement learning methods; experience with time series, anomaly detection, NLP, and deep learning; know when to use simple models and when to go complex
Software Engineering Fundamentals — writes production-quality Python; comfortable with version control (Git), containerization (Docker), and MLOps best practices; code that others can maintain
Data Platform Proficiency — hands-on experience with Databricks, Spark, or Snowflake; able to write and optimize complex SQL; understands data modeling and pipeline design
Visualization & Storytelling — ability to build polished, insight-driven visualizations and dashboards (Tableau, Power BI, Plotly, Sigma); presents data science work in business terms
AI-Native Workflow — actively uses AI tools (Claude, Copilot, LLMs) in day-to-day work; has hands-on experience with LLM APIs, prompt engineering, or GenAI application development
Statistical Rigor — solid grounding in probability, statistics, and experimental design; applies A/B testing and causal inference correctly; doesn't overfit spurious signals
Cross-Functional Collaboration — comfortable working across Product, Engineering, Compliance, and Analytics; can present findings to executives and translate business requirements into analytical solutions
Financial Services Domain— experience with trading data, market microstructure, customer behavior in financial platforms, fraud detection, or regulatory compliance analytics strongly preferred
Experience building and monitoring ML models in production using MLflow, SageMaker, Vertex AI, or similar MLOps platforms preferred
Hands-on experience with LLM APIs, RAG architectures, or AI agent frameworks preferred
Track record of self-directed learning — personal projects, open-source contributions, Kaggle competition history, technical writing, or conference presentations preferred
Experience with fraud detection, behavioral anomaly detection, trade surveillance, or risk modeling in financial services preferred
Familiarity with real-time streaming data (Kafka, Spark Streaming) and low-latency model serving preferred
Experience with cloud ML infrastructure (Azure, AWS, or GCP) and distributed computing preferred
Minimum Qualifications:
Bachelor's degree in Data Science, Computer Science, Statistics, Mathematics, Engineering, or a related quantitative field
7+ years of experience in data science or applied machine learning roles, with demonstrated ownership of models deployed to production
Desired Qualifications:
Master's or PhD in a quantitative discipline
What We Offer:
Collaborative work environment
Competitive Salaries
Yearly bonus
Comprehensive benefits for you and your family starting Day 1
Unlimited Paid Time Off
Flexible working environment
TradeStation Account employee benefits, as well as full access to trading education materials
Pay Range (US) $140-180K (Countries outside of the US have differing ranges in accordance with local labor markets)
TradeStation provides equal employment opportunities to current and prospective employees, without regard to race, color, religion, sex, national origin, ancestry, sexual orientation, age, pregnancy, disability, handicap, citizenship, veteran or marital status, or any other legally recognized status entitled to protection under federal, state, or local anti-discrimination laws.
#LI-Remote