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Data Scientist

Findigs · New York, NY · Hybrid · Active · $160,000–$185,000 / year · Lever

Job facts

FieldValue
CompanyFindigs
TitleData Scientist
Normalized title-
Department / teamData / Data
LocationNew York, NY, United States
Work modelHybrid / Hybrid
Employment type-
Salary$160,000–$185,000 / year
Statusactive
ATS providerLever
Posted / first seen2026-06-18 / 2026-06-19
Changed / last seen2026-06-19 / 2026-06-22

Related slices

PageWhat it containsOpen
Company jobsActive postings from Findigs.Open
Company breakdownsRole, location, ATS, and work model facets for this company.Open
ATS provider jobsActive postings observed through Lever.Open
Provider filtered searchThe same provider as a filtered job collection.Open
City jobsActive postings in New York.Open
Department jobsActive postings in Data.Open
Work model jobsActive Hybrid postings.Open
Lifecycle eventsOpen, update, close, and reopen events for this posting.Open
Original postingCanonical source or apply URL captured from the ATS.Open

Linked records

CompanyFindigs
Source2a77902c-94f7-46a8-85ac-923aa5aecf5c
ATS providerLever

Description

Who we are Findigs is on a mission to make renting work for all of us. Renting is one of life’s most critical experiences, yet the process is often slow, opaque, and unfair. We’re changing that by building the first end-to-end platform that turns complex screening into a seamless, high-trust experience for both property managers and renters. We’re growing fast – fueled by $78M in funding from the investors behind companies like Affirm, Gusto, and Uber. With a data-backed product that allows our customers to make smarter, more predictable decisions, and a team dedicated to transparency and precision, we’re not just improving the rental process; we’re setting the new standard for the entire industry. We’re aiming to double our impact this year, and we need builders, thinkers, and problem-solvers to help us scale. If you’re ready to modernize one of the most essential industries, we’d love for you to be a part of it. The Role Findigs runs an AI underwriting engine (DecisionAssist) that makes or influences thousands of rental decisions every week. As Data Scientist at Findigs, you will strengthen our data science and applied machine learning depth: owning hands-on model development, experimentation design, and ML-adjacent analysis that directly impacts renter and property manager outcomes. Reporting to the Lead Analytics Engineer, this is a highly technical, high-ownership role for a data scientist who wants to build and improve production models, bring statistical rigor to product decisions, and grow into broader strategic scope as the team evolves. You will partner closely with Product and Engineering to translate real-world rental risk and behavior into models, experiments, and clear insights. Please note, we are unable to sponsor or take over sponsorship of an employment visa at this time. Interviewing with Us We're committed to making our interview process as effective and candidate-friendly as possible. We use a tool called Brighthire.ai to record our interviews so that our interviewers can focus entirely on the conversation and not get distracted by taking notes. Please note, if you move forward with the interview process, you'll always have the option to opt out of the recording. We are an equal opportunity employer and, as such, all applicants will be considered based solely upon merit and directly relevant professional competencies. Where you will make an impact: DecisionAssist model development: Own feature engineering, model iteration, and evaluation for DecisionAssist. You will work across two surfaces: (1) operational model work in the DA/CAV1 serving layer, and (2) analytics-focused modeling in Snowflake for experimentation and research, as well as partner with Product and Engineering on what signals matter and why. Experimentation and A/B testing: Design and analyze experiments across underwriting, renter-facing, and PMC-facing product changes, and bring statistical rigor and clear recommendations. Predictive and risk modeling: Build and maintain models used in screening logic (e.g., delinquency risk, income estimation, fraud signals). ML infrastructure: While you won’t own the warehouse or pipeline architecture, you should be comfortable writing clean Python, working in dbt, and operating in a modern data stack. Research and analysis: Tackle high-impact, ad-hoc questions from Product and Customer teams; e.g., what’s driving approval-rate variance, which cohorts behave differently, and what a given signal actually predicts. We’d love to hear from you if you have: 4+ years of hands-on data science or applied ML experience (fintech, proptech, or other high-stakes decisioning environments preferred) Strong Python skills (pandas, scikit-learn, statsmodels or equivalent); this is a coding role Ability to design, run, and interpret A/B tests independently Strong SQL skills and comfort working in a modern data stack (dbt, Snowflake, Sigma, or similar) Solid grounding in supervised learning fundamentals (classification, regression, tree-based methods) Strong written communication and the ability to explain model behavior and tradeoffs to non-technical partners (e.g., PMs, CSMs) Intellectual curiosity about housing and credit data in particular Nice-to-haves: Experience building or contributing to a credit, risk, or underwriting model in production Familiarity with fair lending / disparate impact considerations in ML (important given the real-world consequences of renter screening) Experience working on systems where model output directly affects real people, with a strong sense of responsibility and rigor Ability to move between exploratory research and production-grade work without needing separate tracks LLM experience (fine-tuning, retrieval, or integration), especially as we automate parts of underwriting and screening workflows Startup / scale-up experience What we offer: Location: We operate on a hybrid schedule (3-4x times in-office per week), with core collaboration days on Monday, Tuesday, and Thursday at our NoHo office. Mission-Driven Culture: A collaborative, high-impact workplace where we challenge each other to grow, innovate, and drive meaningful change. Competitive Compensation: Competitive base salary + Pre-IPO equity. Generous Time Off: We trust our team to manage their own time and workload. That's why we offer a Unlimited Paid Time Off (PTO) policy, allowing you to take the time you need to rest and recharge. We also observe all-company holidays. Wellness Perks: Health benefits, 401(k) matching up to 4%, monthly gym stipend, and lunch provided every day.

Full job record

Job ID498b5a2e8f8ff04fbe8bde7a66534ec9cf460710
Org ID38dd6641-d57d-47e6-96a5-76829fec0c1c
Source ID2a77902c-94f7-46a8-85ac-923aa5aecf5c
Board ID2a77902c-94f7-46a8-85ac-923aa5aecf5c
Providerlever
Provider Job Key24ac89b0-8090-48a5-8501-666cb566d736
TitleData Scientist
Normalized Title
Statusactive
Activeyes
Location TextNew York, NY
DepartmentData
TeamData
Employment Type
Workplace Typehybrid
Remote Policyhybrid
CountryUnited States
RegionNY
CityNew York
Salary RawUSD 160000-185000 per-year-salary
Salary Min160,000
Salary Max185,000
Salary CurrencyUSD
Salary Periodyear
Source URLhttps://jobs.lever.co/findigs/24ac89b0-8090-48a5-8501-666cb566d736
Apply URLhttps://jobs.lever.co/findigs/24ac89b0-8090-48a5-8501-666cb566d736/apply
First Seen At2026-06-19 07:55:31Z
Last Seen At2026-06-22 07:55:26Z
Last Checked At2026-06-22 07:55:26Z
Last Changed At2026-06-19 07:55:31Z
Inactive At
Source Posted At2026-06-18 14:07:00Z
Source Updated At
Raw Payload Uris3://job-postings-prod-raw-590183727216/raw/provider=lever/board=findigs/date=2026-06-22/2026-06-22T07-55-26-625Z-0c8174ef90ce621100ad562a9e94c780c60eddaf813c288185c1906a6efb405c.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": "Where you will make an impact:",
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