Plaid

Senior Data Scientist - Network Value (Guard)

Plaid$130K — $180K *
Consumer Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • 5-8+ years of experience as a Data Scientist or similar data-focused role
  • Experience in the fintech sector, specifically with fintech data
  • Prior experience launching direct-to-consumer products from inception
  • Proficient in experimentation, ad-hoc analysis, and strategic insights development
  • Strong SQL skills for creating stakeholder-aligned metrics
  • Familiarity with building data pipelines using Airflow and dbt
  • Excellent communication skills for cross-functional collaboration

Responsibilities

  • Champion a data-driven decision-making culture as Guard is developed and scaled
  • Translate complex product and business questions into focused analytics projects
  • Build and maintain data models, dashboards, and performance metrics for Guard
  • Design and analyze experiments to inform feature launch and iterations
  • Identify innovative ways to influence top-line OKRs and drive prioritization

Benefits

  • Comprehensive benefit plan including medical, dental, and vision
  • 401(k) plan to support retirement savings
  • Opportunity for additional compensation through equity or commission
Full Job Description
Senior Data Scientist - Network Value (Guard)

The Network Value Data Science team is helping Plaid build an industry-leading fintech consumer network with best-in-class products and user experiences. We are a product analytics team embedded in key product areas across Plaid. We support some of Plaid's most important OKRs and help execute on product roadmaps. We translate ambiguous product questions into tractable analysis, serve as analytical thought partners throughout the org, identify opportunities to build better products, and champion a data-first decision-making approach everywhere we go.

You'll be a Senior Data Scientist supporting Guard, a critical user-facing product within Plaid's Network Value portfolio. In this role, you'll become a data and analytical thought partner to product managers and engineers, helping drive data-informed product development as the team launches and scales the product from 0 to 1. You'll translate business questions into analytics projects, perform ad-hoc and strategic analysis, improve visibility into core systems through data modeling and dashboarding, create OKRs and metrics tied to business goals, and support feature ship decisions through experimentation. You'll also help identify new ways Guard can move top-line outcomes and influence prioritization, roadmapping, and execution across cross-functional partners. This draft follows the structure and emphasis of Plaid's current Senior Data Scientist, Network Value posting while adapting the product context from Remember Me to Guard.

Responsibilities
  • Champion a data-first approach to decision-making across the organization as Guard is built and scaled, serving as the data and analytical thought partner to product managers, engineers, and cross-functional stakeholders.
  • Translate ambiguous business and product questions into clear analytics projects and decision frameworks, and perform ad-hoc and strategic analyses to identify opportunities to improve user outcomes and business performance.
  • Build and maintain data models, dashboards, core metrics, OKRs, and success metrics that improve visibility into Guard performance and quantify progress against business goals.
  • Design and analyze experiments to support feature launch and iteration decisions, and partner on Airflow- and dbt-powered data pipelines that enable trustworthy analytics and scalable reporting.
  • Identify novel ways to impact top-line OKRs and influence stakeholders on prioritization, roadmapping, and execution, while exploring ML prototypes and causal inference approaches where they can improve product or decision quality.
Qualifications
  • 5-8+ years of experience as a Data Scientist or in a related analytics or data-focused role
  • Fintech experience, including experience working with raw fintech data
  • Experience launching direct-to-consumer products from 0 to 1
  • Experience with experimentation, ad-hoc analysis, and developing strategic insights
  • Strong SQL skills and experience creating metrics that drive alignment with stakeholders
  • Experience building or partnering closely on data pipelines using Airflow and dbt
  • Strong communication skills and experience partnering cross-functionally with product managers, engineers, and other stakeholders
  • Experience driving data-driven performance for user-facing products
  • Track record of identifying novel ways to impact a top-line OKR and influencing stakeholders on prioritization, roadmapping, and/or execution
Nice to have
  • Experience with causal inference
  • Experience with machine learning
  • Python proficiency

Additional compensation in the form(s) of equity and/or commission are dependent on the position offered. Plaid provides a comprehensive benefit plan, including medical, dental, vision, and 401(k). Pay is based on factors such as (but not limited to) scope and responsibilities of the position, candidate's work experience and skillset, and location. Pay and benefits are subject to change at any time, consistent with the terms of any applicable compensation or benefit plans.

About Plaid

Plaid is a financial services company based in New York City. The company builds a technology platform, which enables applications to connect with users' bank accounts. Plaid focuses on enabling consumers and businesses to interact with their bank accounts, check balances, and make payments through financial technology applications. The company was founded in 2013 by Zach Perret and William Hockey. In January 2020, Visa announced that it would acquire Plaid for $5.3 billion. The acquisition was completed in January 2021.
Learn more about Plaid
Size
600 employees
Industry
Founded
2011

Similar Jobs

More Jobs at Plaid

More Consumer Technology Jobs

Find similar Senior Data Scientist - Network Value (Guard) jobs: