The Data Science team builds production machine learning models that are the core of Signifyd's product.
We help businesses of all sizes minimize their fraud exposure and grow their sales. We also improve the e-commerce shopping experience for individuals by reducing the number of folks' orders that are incorrectly declined and by making account hijacking less profitable for criminals.
The team has end-to-end ownership of our decisioning engine, from research and development to online performance and risk management.
We value collaboration and team ownership -- no one should feel they're solving a hard problem alone.
Together we help each other develop our skills through peer review of experiments and code, group paper study to deepen our ML and stats understanding, and frequent knowledge-sharing through live demos, write-ups, and special cross-team projects.
The Data Science and Engineering teams at Signifyd have always had a strong contingent of remote folks, individual contributors and team leads. The challenges of working remotely aren't new to us and we strive to iteratively improve our remote culture.
How you'll have an impact:
Build production machine learning models that identify fraud
Write production and offline analytical code in Python
Work with distributed data pipelines
Communicate complex ideas to a variety of audiences
Collaborate with engineering teams to strengthen our machine learning platform
Past experience you'll need:
A degree in computer science or a comparable analytical field
6+ years of post-undergrad work experience required
Building production ML models
Using visualizations to communicate analytical results to members outside your team
Hands-on statistical analysis with a solid fundamental understanding
Writing code and reviewing others' in a shared codebase, preferably in Python
Practical SQL knowledge
Designing experiments and collecting data
Familiarity with the Linux command line
Bonus points if you have:
Previous work in fraud, payments, or e-commerce
Data analysis in a distributed environment
Passion for writing well-tested production-grade code
A Master's Degree or PhD
Check out how Data Science is powering the new era of Ecommerce
Check out our Director of Data Science featured in Built In
#LI-Hybrid
Benefits:
Stock Options
Annual Performance Bonus or Commissions
Pension matched up to 3%
‘Day one’ access to great health insurance scheme
Enhanced maternity and paternity leave (12 weeks full-pay for mums & dads)
Paid team social events
Headspace Benefits
Dedicated learning budget through Learnerbly
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