Data Engineer, Machine Learning & Data

Data Engineer, Machine Learning & Data

This job is no longer open
Build the world's fastest Identity and Checkout products

Company Mission

Our mission is to make buying online faster, safer and easier for everyone. Fast Login and Fast Checkout enable a one-click sign-in and purchasing experience that makes it easier for people to buy and merchants to sell. The company’s products work on any browser, device or platform to deliver a consistent, stress-free purchasing experience. Fast is entirely consumer-focused and invests heavily in its users’ privacy and data security. Headquartered in San Francisco but open to a globally remote workforce, we are a founders-led, privately held company funded by Stripe, Index Ventures, Susa Ventures and other world-class investors.

Summary

As a Data Engineer at Fast, you will write data solutions, transform, and optimize large sets of raw and processed data, and implement data architectures used at Fast to support our product features. You would optimize data flow and representation to be consumed by distributed systems, reporting, analytics and machine learning, and will work closely with the engineering teams to architect solutions that enable robust and scalable data access and analysis.

Role

    • Interface with engineers, product managers and machine learning scientists/engineers to understand data needs and implement robust and scalable solutions
    • Work directly with DS scientists/engineers to implement robust and reusable data models
    • Build out automated solutions for ML feature testing, validation, and release
    • Implement and maintain a data version control system
    • Enable automated data preparation for model training
    • Ensure data quality and accessibility for all types of data used at Fast
    • Design, build, enhance, and launch ETL processes for new and existing data sources
    • Augment existing data with output from machine learning analysis/algorithms
    • Systematically identify and rectify data quality issues (missing data, mislabeled, old, poor schema/model, etc)
    • Produce basic statistical analyses and visualizations to help guide product and business decisions
    • Implement and maintain A/B experimentation platform

Requirements

    • Bachelor’s degree in a technical field (computer science, engineering, mathematics, informatics); advanced degree preferred (or equivalent experience)
    • 4+ years of industry data engineering experience, including experience in ETL design, implementation and maintenance
    • Proven experience in the data warehouse space, as well as schema design and dimensional data modeling
    • Profound knowledge of SQL and python
    • Practical application of basic statistical methods
    • Basic experience working on machine learning projects

Nice to have

    • Prior working experience with FinTech, Payments and Identity
    • Data visualization skills (R, python, Tableau)
    • Familiarity with tools for analysis of very large datasets
    • Full-stack engineers who can work across the backend and frontend
#LI-Remote


Benefits and Perks - Because People Matter

We are committed to diversity and inclusion, and demonstrate our values through equitable pay, fantastic benefits, and access to all reasonable accommodations. 

See what Fast can offer you:

Comprehensive Medical, Dental and Vision insurance (99% paid by Fast)
Globally remote with flexible work schedules and commuter benefits to fit your needs
Generous maternity & paternity leave for all family caregivers
401k match up to 4%
Competitive Salary & Equity
People-focused, unlimited & flexible paid time off
Inclusive events & programs to allow everyone to express their voice (or dance skills)
Monthly exercise, internet & office equipment stipends (and great snack perks)
#LI-remote
This job is no longer open
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