Helping families elevate the next generation through sports. A part of the DICK’S Sporting Goods family.
Senior Applied Machine Learning Engineer
Location
New York
Posted
17 days ago
Salary
$180K - $200K / year
Job Description
Job Requirements
- 6+ years of software engineering experience, with 4+ years working on ML systems.
- Experience working on production ML systems. Our team uses Python and PyTorch, Docker for containerization, and deploys on AWS.
- Experience with data-intensive distributed systems, including optimizing I/O, GPU utilization, and parallel processing.
- Experience working directly with researchers or research teams to take their prototypes and deliver production systems that are performant, reliable, and maintainable.
- Experience building internal libraries, tools, or platforms that other engineers depend on.
Benefits
- Work remotely throughout the US* or from our well-furnished, modern office in Manhattan, NY.
- Unlimited vacation policy.
- Paid volunteer opportunities.
- Technology stipend - $4,000 every 2 years after your start to make sure you have the latest and greatest technology.
- WFH stipend - $500 annually to make your WFH situation comfortable.
- Monthly physical, mental, wellness & learning stipend offered through Holisticly.
- Monthly lifestyle stipend offered through Fringe.
- Full health benefits - medical, dental, vision, prescription, FSA, HRA, HSA, and coverage for family/dependents.
- Retirement savings - Traditional and Roth 401K plans are offered through Vanguard, with an immediate company match.
- Life insurance - basic life, supplemental life, and dependent life.
- Disability leave - short-term disability and long-term disability.
- Company paid parental leave - up to 20 weeks for birthing parents and up to 12 weeks for non-birthing parents.
- Family building benefits offered through Progyny.
- DICK'S Sporting Goods and their family of brands teammate discount.
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