Data Scientist, Pricing
Location: In office 4 days a week; Seattle WA.
Opendoor is transforming one of the largest, most complex markets in the world — residential real estate — using data at massive scale. Every pricing signal we generate directly impacts how we value homes, how we manage risk, and how efficiently capital moves through our marketplace. The work is highly leveraged: the quality of our pricing decisions influences conversion, margins, customer trust, and the company’s financial performance.
We are looking for mid to senior level Data Scientists. In this role, you will be a core driver of how Opendoor prices real estate at scale. You’ll operate at the intersection of economics, machine learning, experimentation, and product strategy — tackling ambiguity, shaping the pricing roadmap, and building models/analyses that materially move the business. Your insights will influence how we evaluate millions of dollars of housing inventory — and directly shape outcomes for our customers, our balance sheet, and the health of our marketplace.
What You’ll Do
- Build and maintain pricing metrics, dashboards, and frameworks.
- Run experiments and causal analyses to measure impact and drive decisions.
- Develop predictive + statistical models that improve pricing accuracy.
- Partner closely with Product, Engineering, and Operations teams to influence roadmap and model deployment.
- Deliver insights and narratives that inform executive strategy.
Skills & Qualifications
- Deep statistical reasoning: hypothesis design, experimental design, causal inference, and ability to distinguish signal vs noise.
- Proven end-to-end ML ownership: data acquisition, feature engineering, model development, validation, deployment, and ongoing monitoring.
- Strong SQL + Python proficiency; comfortable working with production data pipelines and modern ML tooling (e.g., Spark, Airflow, Ray, SageMaker, Vertex, etc.).
- Demonstrated ability to translate complex analytical findings into clear business recommendations and influence cross-functional decision-making.
- Experience working with ill-defined problems and driving clarity on problem definition, success metrics, and realistic tradeoffs.
- High data-quality bar: disciplined approach to validation, bias analysis, and making decisions rooted in evidence vs intuition.
- Effective communicator — able to tell the story behind the model to both highly technical and non-technical audiences.
Base salary range for this role varies. Generally, the base salary range is $170,400 – $213,000 annually + RSUs + bonus + ESPP + additional employee benefits (medical/dental/vision, life insurance, unlimited PTO, 401K).
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