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We are the first public safety operating system empowering over 2500 cities to eliminate crime.
Senior ML Engineer, Computer Vision
Location
United States
Posted
71 days ago
Salary
$160K - $175K / year
Seniority
Senior
Job Description
Senior ML Engineer, Computer Vision
Flock Safety
• Frame open-ended, real-world problems into well defined ML problems • Make use of and improve on existing data acquisition and model training/evaluation pipelines to create appropriate datasets and obtain model feedback • Leverage cutting-edge research and technology to create custom solutions • Design and run experiments to test new ideas or improvements to existing models • Build visualization and monitoring tools to evaluate the quality of our data and models • Collaborate across teams and product to deliver solutions that fit within business and organizational requirements • Review code of other Machine Learning Engineers
Job Requirements
- 6+ years of experience
- BS/MS in Computer Science, Mathematics, Physics, Engineering, or proof of equivalent software engineering experience (PhD’s welcome)
- Experience solving problems using Machine Learning frameworks (Tensorflow, PyTorch, scikit-learn, etc.)
- Good understanding of Deep Learning and Traditional ML (supervised and unsupervised) algorithms
- Experience writing Python in a team environment
- Able to take on complex problems, learn quickly, iterate, and persist towards a good solution
- Effectively communicate, at the level of your audience, and seek to understand and be understood
- Basic SQL knowledge
- Basic Git knowledge
- Experience with linear algebra, probability, and statistics preferred
Benefits
- Flexible PTO: We offer non-accrual PTO, plus 11 company holidays.
- Fully-paid health benefits plan for employees: including Medical, Dental, and Vision and an HSA match.
- Family Leave: All employees receive 12 weeks of 100% paid parental leave. Birthing parents are eligible for an additional 6-8 weeks of physical recovery time.
- Fertility & Family Benefits: We have partnered with Maven, a complete digital health benefit for starting and raising a family. Flock will provide a $50,000-lifetime maximum benefit related to eligible adoption, surrogacy, or fertility expenses.
- Spring Health: Spring Health offers a variety of mental health benefits, including therapy, coaching, medication management, and digital tools, all tailored to each individual's needs.
- Caregiver Support: We have partnered with Cariloop to provide our employees with caregiver support
- Carta Tax Advisor: Employees receive 1:1 sessions with Equity Tax Advisors who can address individual grants, model tax scenarios, and answer general questions.
- ERGs: We want all employees to thrive and feel like they belong at Flock. We offer four ERGs today - Women of Flock, Flock Proud, LEOs and Melanin Motion. If you are interested in talking to a representative from one of these, please let your recruiter know.
- WFH Stipend: $150 per month to cover the costs of working from home.
- Productivity Stipend: $300 per year to use on Audible, Calm, Masterclass, Duolingo and so much more.
- Home Office Stipend: A one-time $750 to help you create your dream office.
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