Data Scientist
Ramp
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The decision-making details job seekers want first
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Compensation
Salary & market context
191% above the BLS national median
BLS national median: $74,680
- $10,000
- BENEFITS AVAILABLE TO ALL FULL-TIME RAMP EMPLOYEES (GLOBAL) • Flexible PTO • Unlimited AI token usage • Centralized home-office equipment ordering • Health and wellness stipend • Budget for intra-office travel • Weekly coffee stipend UNITED STATES • 100% medical, dental & vision insurance coverage for you, with partial coverage for dependents • One Medical annual membership • 401(k), including employer match on contributions made while employed by Ramp • Fertility HRA (up to $10,000 per year) • Parental leave: up to 16 weeks (birthing + bonding) or 8 weeks (bonding only) at 100% pay • Pet insurance • In-office perks: lunch, snacks, drinks, and more • Relocation support to NYC or SF (as needed) CANADA • Group medical, dental, and vision coverage through Sun Life • Life, AD&D, and disability coverage • Fertility drug coverage (up to $4,000 lifetime) • Group Retirement Plan with employer match (RRSP + DPSP) • Parental leave: up to 16 weeks (birthing + bonding) or 8 weeks (bonding only) at 100% pay, with additional time available at reduced pay • Employee Assistance Program and virtual care through Lumino Health UNITED KINGDOM • Private medical insurance through Freedom Elite • Virtual GP and at-home care via eMed x Livi • Workplace pension through Penfold, with salary sacrifice option • Parental leave: up to 16 weeks (birthing + bonding) or 8 weeks (bonding only) at 100% pay with additional time available at reduced pay REFERRAL INSTRUCTIONS If you are being referred for the role, please contact that person to apply on your behalf.
Requirements
Top requirements
- WHAT YOU’LL DO - Full stack development, building models to consume, transform, and expose data to stakeholders and production systems - Drive a culture of experimental design, testing agenda, and best practices - Contribute to the culture of Ramp’s data team by influencing processes, tools, and systems that will allow us to make better decisions in a scalable way - Collaborate with P/E/D/D (product, engineering, data and design) teams to develop product roadmaps and measure success - Work closely with data engineering teams to capture, move, store, and transform raw data into highly actionable insights, and partner with business teams to turn those insights into action WHAT YOU NEED - Minimum of 4 years of industry experience as a Data Scientist - Strong knowledge of SQL (preferably Redshift, Snowflake, BigQuery) and how to write efficient SQL queries - Familiarity with BI tools (preferably Looker, Omni, Sigma, Hex or equivalent) and experience distributing data insights via reports and dashboards - Track record of shipping high quality products and features at scale - Ability to thrive in a fast-paced, constantly improving, start-up environment that focuses on solving problems with iterative technical solutions NICE-TO-HAVES - Experience with the modern data stack (Fivetran / Snowflake / dbt / Looker / Hightouch or equivalents) - Strong perspective on analytics engineering development cycle (data modeling, version control, documentation + testing, best practices for codebase development) - Experience within the payments and financial technology space - Familiarity with B2B enterprise sales cycle metrics and processes ABOUT OUR TEAMS - Product Data | Ramp’s Product Data team is responsible for delivering data products and insights that shape Ramp’s product direction and unlock business value.
Perks & setup
Benefits candidates care about
- BENEFITS AVAILABLE TO ALL FULL-TIME RAMP EMPLOYEES (GLOBAL) • Flexible PTO • Unlimited AI token usage • Centralized home-office equipment ordering • Health and wellness stipend • Budget for intra-office travel • Weekly coffee stipend UNITED STATES • 100% medical, dental & vision insurance coverage for you, with partial coverage for dependents • One Medical annual membership • 401(k), including employer match on contributions made while employed by Ramp • Fertility HRA (up to $10,000 per year) • Parental leave: up to 16 weeks (birthing + bonding) or 8 weeks (bonding only) at 100% pay • Pet insurance • In-office perks: lunch, snacks, drinks, and more • Relocation support to NYC or SF (as needed) CANADA • Group medical, dental, and vision coverage through Sun Life • Life, AD&D, and disability coverage • Fertility drug coverage (up to $4,000 lifetime) • Group Retirement Plan with employer match (RRSP + DPSP) • Parental leave: up to 16 weeks (birthing + bonding) or 8 weeks (bonding only) at 100% pay, with additional time available at reduced pay • Employee Assistance Program and virtual care through Lumino Health UNITED KINGDOM • Private medical insurance through Freedom Elite • Virtual GP and at-home care via eMed x Livi • Workplace pension through Penfold, with salary sacrifice option • Parental leave: up to 16 weeks (birthing + bonding) or 8 weeks (bonding only) at 100% pay with additional time available at reduced pay REFERRAL INSTRUCTIONS If you are being referred for the role, please contact that person to apply on your behalf.
Why candidates care
Benefits & perks
- BENEFITS AVAILABLE TO ALL FULL-TIME RAMP EMPLOYEES (GLOBAL) • Flexible PTO • Unlimited AI token usage • Centralized home-office equipment ordering • Health and wellness stipend • Budget for intra-office travel • Weekly coffee stipend UNITED STATES • 100% medical, dental & vision insurance coverage for you, with partial coverage for dependents • One Medical annual membership • 401(k), including employer match on contributions made while employed by Ramp • Fertility HRA (up to $10,000 per year) • Parental leave: up to 16 weeks (birthing + bonding) or 8 weeks (bonding only) at 100% pay • Pet insurance • In-office perks: lunch, snacks, drinks, and more • Relocation support to NYC or SF (as needed) CANADA • Group medical, dental, and vision coverage through Sun Life • Life, AD&D, and disability coverage • Fertility drug coverage (up to $4,000 lifetime) • Group Retirement Plan with employer match (RRSP + DPSP) • Parental leave: up to 16 weeks (birthing + bonding) or 8 weeks (bonding only) at 100% pay, with additional time available at reduced pay • Employee Assistance Program and virtual care through Lumino Health UNITED KINGDOM • Private medical insurance through Freedom Elite • Virtual GP and at-home care via eMed x Livi • Workplace pension through Penfold, with salary sacrifice option • Parental leave: up to 16 weeks (birthing + bonding) or 8 weeks (bonding only) at 100% pay with additional time available at reduced pay REFERRAL INSTRUCTIONS If you are being referred for the role, please contact that person to apply on your behalf.
Start here
Requirements
- WHAT YOU’LL DO - Full stack development, building models to consume, transform, and expose data to stakeholders and production systems - Drive a culture of experimental design, testing agenda, and best practices - Contribute to the culture of Ramp’s data team by influencing processes, tools, and systems that will allow us to make better decisions in a scalable way - Collaborate with P/E/D/D (product, engineering, data and design) teams to develop product roadmaps and measure success - Work closely with data engineering teams to capture, move, store, and transform raw data into highly actionable insights, and partner with business teams to turn those insights into action WHAT YOU NEED - Minimum of 4 years of industry experience as a Data Scientist - Strong knowledge of SQL (preferably Redshift, Snowflake, BigQuery) and how to write efficient SQL queries - Familiarity with BI tools (preferably Looker, Omni, Sigma, Hex or equivalent) and experience distributing data insights via reports and dashboards - Track record of shipping high quality products and features at scale - Ability to thrive in a fast-paced, constantly improving, start-up environment that focuses on solving problems with iterative technical solutions NICE-TO-HAVES - Experience with the modern data stack (Fivetran / Snowflake / dbt / Looker / Hightouch or equivalents) - Strong perspective on analytics engineering development cycle (data modeling, version control, documentation + testing, best practices for codebase development) - Experience within the payments and financial technology space - Familiarity with B2B enterprise sales cycle metrics and processes ABOUT OUR TEAMS - Product Data | Ramp’s Product Data team is responsible for delivering data products and insights that shape Ramp’s product direction and unlock business value.
Responsibilities
What you'll do
- If you want to build systems that directly shape how companies move and manage billions, Ramp is the place to do it.
- ABOUT THE ROLE We’re looking for someone to help lead the future of analytics at Ramp.
- They will partner closely with business stakeholders and product, engineering, and design counterparts to prioritize and execute on work, improve reporting, as well as drive results and process improvements.
- WHAT YOU’LL DO - Full stack development, building models to consume, transform, and expose data to stakeholders and production systems - Drive a culture of experimental design, testing agenda, and best practices - Contribute to the culture of Ramp’s data team by influencing processes, tools, and systems that will allow us to make better decisions in a scalable way - Collaborate with P/E/D/D (product, engineering, data and design) teams to develop product roadmaps and measure success - Work closely with data engineering teams to capture, move, store, and transform raw data into highly actionable insights, and partner with business teams to turn those insights into action WHAT YOU NEED - Minimum of 4 years of industry experience as a Data Scientist - Strong knowledge of SQL (preferably Redshift, Snowflake, BigQuery) and how to write efficient SQL queries - Familiarity with BI tools (preferably Looker, Omni, Sigma, Hex or equivalent) and experience distributing data insights via reports and dashboards - Track record of shipping high quality products and features at scale - Ability to thrive in a fast-paced, constantly improving, start-up environment that focuses on solving problems with iterative technical solutions NICE-TO-HAVES - Experience with the modern data stack (Fivetran / Snowflake / dbt / Looker / Hightouch or equivalents) - Strong perspective on analytics engineering development cycle (data modeling, version control, documentation + testing, best practices for codebase development) - Experience within the payments and financial technology space - Familiarity with B2B enterprise sales cycle metrics and processes ABOUT OUR TEAMS - Product Data | Ramp’s Product Data team is responsible for delivering data products and insights that shape Ramp’s product direction and unlock business value.
- The Product Analytics team is also responsible for building out the platform through which new products are launched, instrumented, tested, and QA’d.
- The team embeds deeply as a partner to engineering, product, and design. - Risk & Capital Markets Data | Ramp’s Risk Data team is responsible for how risk is evaluated, and building the risk infrastructure to scale to millions of businesses in the United States.
Role snapshot
About the role
ABOUT RAMP
Ramp is building the smart infrastructure for finance teams, embedded in the transaction flow of every dollar a business spends. We automate how over $100B in annualized spend flows in and out of 50,000+ companies: authorizing payments, flagging risk, categorizing spend, and closing books.
The problems are high-stakes, data-dense, and unforgiving.
We hire people with high agency and high urgency. We look for slope over intercept. We care less about where you trained and more about what you’ve built. At Ramp, everyone is a builder who owns problems end to end and makes consequential decisions that shape the outcome.
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