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HomeCompaniesCscgeneration 2Staff Data Scientist– Pricing Science

Staff Data Scientist– Pricing Science

Cscgeneration 2 · San Fransisco, CA · Remote · Active · Lever

Job facts

FieldValue
CompanyCscgeneration 2
TitleStaff Data Scientist– Pricing Science
Normalized title-
Department / teamCSC Generation (Shared Services - CAN) / Engineering
LocationSan Fransisco, CA, United States
Work modelRemote / Remote
Employment typeFull Time
Salary-
Statusactive
ATS providerLever
Posted / first seen2026-02-07 / 2026-05-29
Changed / last seen2026-05-29 / 2026-06-06

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Linked records

CompanyCscgeneration 2
Source66e7f27d-1feb-4ed8-83d4-29bd40c280cb
ATS providerLever

Description

CSC Generation is the AI-native holding company re-engineering omnichannel retail. We acquire iconic brands and transform them with Genesis, our operating platform combining a Data Fabric, Automation Engine, proprietary tools, and shared services to modernize operations, elevate customer experience, and expand margins. With $1B+ in revenue across 13 brands, our portfolio includes Sur La Table, Backcountry, One Kings Lane, and others that serve as real-world innovation labs. Reports to: Director of Finance and Business Intelligence Location: Remote — US or Canada For US-based candidates, this posting is intended for candidates that reside in the following states: AZ, DE, FL, GA, IN, LA, MI, MS, MO, NV, NC, OK, PA, TN, TX, UT, WV, WI, and WY. For Ontario applicants, please note that this posting is for an existing vacancy. The CSC Generation family of brands provides equal employment opportunities to all employees and applicants for employment and prohibits discrimination and harassment of any type without regard to race, color, religion, age, sex, national origin, disability status, genetics, protected veteran status, sexual orientation, gender identity or expression, or any other characteristic protected by federal, provincial, state or local laws. The CSC Generation family of brands is committed to providing reasonable accommodations for qualified individuals with disabilities in our job application procedures. If you need assistance or accommodation due to a disability, please contact [email protected]. About the Role As our Staff Data Scientist , you will design and ship production pricing systems such as demand forecasting, price elasticity modeling, dynamic pricing and the experimentation infrastructure needed to measure whether they actually work. This is a hard, high-stakes problem: your models will directly influence margin and revenue decisions across a portfolio of brands operating at scale. You will own the full arc from framing ambiguous business problems as well-defined ML tasks through to monitoring models that hold up in production. At six months, success looks like at least one pricing model shipped to production with measurable business impact and an experimentation framework in place that your stakeholders trust. If you have spent time building pricing systems from the ground up, not just consuming them, and you care deeply about rigorous causal inference and honest model evaluation, this role was written for you. What You'll Do Design and build production ML systems for pricing, demand forecasting, and related revenue problems Frame ambiguous business problems as well-defined ML tasks with clear success criteria and measurable outcomes Set the standard for model evaluation, validation, and monitoring — including knowing when CV metrics are misleading and when holdout testing is the only honest answer Build robust predictive models across classification, regression, time series, and causal inference Identify and prevent data leakage, overfitting, and other failure modes before they reach production Design and analyze experiments to measure causal impact of pricing decisions Debug models that fail in production — understand why they fail, not just that they do Translate model limitations, uncertainty, and risk clearly to both technical and non-technical stakeholders Partner with product, engineering, and business teams to ensure ML solutions solve real problems Required Qualifications 7+ years of applied ML / data science experience with a track record of production systems that delivered measurable business impact. Deep experience in pricing, demand forecasting, or revenue optimization — you have built these models end-to-end, not just consumed them. Expert-level Python and SQL. Deep understanding of ML fundamentals beyond API-level usage, including model evaluation, validation, and failure mode diagnosis. Strong grounding in causal inference and experimental design, including the ability to distinguish correlation from causal result. Ability to work with messy, real-world data and make pragmatic tradeoffs under ambiguity. Familiarity with cloud ML platforms (GCP/Vertex AI or AWS/SageMaker). MS or PhD in Statistics, Computer Science, Operations Research, or a related quantitative field. Preferred Qualifications Experience in e-commerce, retail, marketplace, or pricing-intensive industries such as airlines, ride-sharing, or fintech. Why Join The people who do best here are builders. They take ownership, move fast, and want to see the direct impact of their work. Portfolio-Level Impact: Your models will influence pricing and margin decisions across a $1B+ portfolio of brands — the output of your work is visible at the executive level from day one. AI-First Skill Building: Get hands-on with production ML infrastructure, causal inference at scale, and the Genesis platform — building a modern, applied ML skill set on real retail data problems. Ownership: You will own the full problem from framing through production, with the autonomy to make technical decisions and the stakeholder access to see them through. Competitive Benefits (CAN): Comprehensive benefits including paid time off, RRSP match, group benefits, and employee discounts across portfolio brands. Competitive Benefits (US): Comprehensive benefits including paid time off, 401(k) match, medical, dental, vision, supplemental coverage, and employee discounts across portfolio brands. Interview Process Recruiter Screen: 30-minute call to cover your background, the role, and logistics. Hiring Manager Interview: Conversation with the Director of Finance and Business Intelligence focused on your pricing science experience, approach to ambiguous ML problems, and how you've driven production impact. Technical / Case Discussion: Deep dive into a pricing or demand forecasting problem — expect questions on model evaluation, causal inference, and production failure modes. Cross-functional stakeholders may join. Executive Interview: Final conversation with senior leadership. Reference Checks: Conducted in parallel with the final stages where possible. Offer: We move quickly for the right candidate.

Full job record

Job IDcaf513210c66034c7ed34d17f2cb65f1dffe1fe8
Org ID823a2331-f2cc-4722-9a22-27d2a02930a7
Source ID66e7f27d-1feb-4ed8-83d4-29bd40c280cb
Board ID66e7f27d-1feb-4ed8-83d4-29bd40c280cb
Providerlever
Provider Job Key9567b1eb-f32b-4734-a673-476f0262179e
TitleStaff Data Scientist– Pricing Science
Normalized Title
Statusactive
Activeyes
Location TextSan Fransisco, CA
DepartmentCSC Generation (Shared Services - CAN)
TeamEngineering
Employment TypeFull Time
Workplace Typeremote
Remote Policyremote
CountryUnited States
RegionCA
CitySan Fransisco
Salary Raw
Salary Min
Salary Max
Salary Currency
Salary Period
Source URLhttps://jobs.lever.co/cscgeneration-2/9567b1eb-f32b-4734-a673-476f0262179e
Apply URLhttps://jobs.lever.co/cscgeneration-2/9567b1eb-f32b-4734-a673-476f0262179e/apply
First Seen At2026-05-29 07:03:18Z
Last Seen At2026-06-06 20:34:29Z
Last Checked At2026-06-06 20:34:29Z
Last Changed At2026-05-29 07:03:18Z
Inactive At
Source Posted At2026-02-07 16:35:22Z
Source Updated At
Raw Payload Uris3://job-postings-prod-raw-590183727216/raw/provider=lever/board=cscgeneration-2/date=2026-06-06/2026-06-06T20-34-26-169Z-d283c014eb3986ac234c1a8d7f05e8cdd3c8e1cbaeeacd75043357d174d3e5f1.json
Event Fields
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Parsed Structured
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Extensions
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Native Structured
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      "text": "About the Role",
      "content": "<div>As our <strong>Staff Data Scientist</strong>, you will design and ship <strong>production pricing systems</strong> such as demand forecasting, price elasticity modeling, dynamic pricing and the experimentation infrastructure needed to measure whether they actually work.</div>\n<div>&nbsp;</div>\n<div>This is a hard, high-stakes problem: your models will directly influence margin and revenue decisions across a portfolio of brands operating at scale. You will own the full arc from framing ambiguous business problems as well-defined ML tasks through to monitoring models that hold up in production.</div>\n<div>&nbsp;</div>\n<div>At six months, success looks like at least one pricing model shipped to production with measurable business impact and an experimentation framework in place that your stakeholders trust. If you have spent time building pricing systems from the ground up, not just consuming them, and you care deeply about rigorous causal inference and honest model evaluation, this role was written for you.</div>"
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      "text": "What You'll Do",
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