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Senior Product Data Scientist – Broomfield

Job in Broomfield, Boulder County, Colorado, 80020, USA
Listing for: Straddle
Full Time position
Listed on 2026-06-05
Job specializations:
  • IT/Tech
    Data Analyst, AI Engineer
Salary/Wage Range or Industry Benchmark: 120000 - 160000 USD Yearly USD 120000.00 160000.00 YEAR
Job Description & How to Apply Below
Position: Senior Product Data Scientist $150k – $190k base 1 Broomfield, CO
Location: Broomfield

We are seeking a Senior Product Data Scientist to be a hands‑on technical leader on the data science team, someone who builds models and ships features while also shaping what gets built and why.

This role combines deep data science execution with product‑level thinking. You will own the full modeling lifecycle, from problem framing through deployment and monitoring, while also engaging with customers, product leaders, and the broader payments ecosystem to identify where data and ML can create the most impact. Examples include intelligent routing systems that maximize bank connection success across providers, balance prediction models that reduce payment failures and unlock new product offerings like guaranteed payments, and risk scoring features that shape how payment products are priced and rolled out.

This is not a planning role. You are expected to build. But you also bring the product context that ensures you're building the right things. You understand customer pain points, can spot where a new data source or model could unlock a product opportunity, and you translate that into working code and production models. You will be a strong voice contributing to leadership's Data Roadmap and OKRs, and a key partner to the Head of Data Science in setting the technical and strategic direction of the team.

Essential Functions

Own modeling strategy end‑to‑end: problem framing, feature selection, algorithm design, training, evaluation, and iteration

Build and ship production models for risk scoring, fraud detection, payment decisioning, balance prediction, and customer segmentation

Design and build features from transactional, behavioral, and open banking data, identifying where new data sources can meaningfully improve model performance

Establish rigorous evaluation frameworks. Select appropriate metrics, build holdout/backtesting strategies, and measure real‑world model performance

Collaborate with ML/data engineering to deploy models into batch and real‑time production systems

Monitor model performance post‑deployment, detect drift, and drive retraining or redesign when needed

Engage directly with customers, prospects, and partners to understand real‑world payment challenges and translate them into data science opportunities

Represent Straddle's data capabilities externally at industry events, fintech meetups, and partner conversations. Bring market intelligence back to the team and channel it into product and model improvements

Partner with product leadership to understand the full product landscape and identify where data‑driven capabilities (models, features, scoring, intelligence) can create competitive advantage

Write product proposals and project briefs for data science initiatives, including problem framing, success metrics, data requirements, and delivery milestones

Identify data quality issues, coverage gaps, and opportunities to bring in external data that strengthens product and model outcomes

Help set technical direction and raise the bar on rigor across the data science team

Desired Experience & Skills

6+ years in applied data science, machine learning, or quantitative analytics roles, with a track record of shipping models into production

Strong foundation in statistics, probability, and machine learning, with a clear understanding of why you choose specific algorithms, not just how to use them

Demonstrated product sense. You understand how models connect to business outcomes and can identify the highest‑leverage problems to solve

Proficiency in R or Python, and SQL

Experience building and evaluating classification, regression, and ranking models in production contexts

Experience with feature engineering from complex, messy, real‑world data

Familiarity with model deployment workflows and monitoring (e.g., MLflow, Databricks, CI/CD pipelines)

Strong data intuition. Ability to spot issues in data quality, distribution shifts, and feature leakage

Excellent communication skills. Can write a clear product brief, present to leadership, and explain model trade‑offs to non‑technical stakeholders

Experience working directly with customers or in customer‑facing contexts (product discovery, solutions, sales…

Position Requirements
10+ Years work experience
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