TL;DR
Data Scientist (AI): Explore data, create data models, and use advanced analytics to build predictive tools driving business decisions with an accent on data science standard patterns and processes. Focus on SQL data models and python science model development.
Location: Remote - USA
Salary: $150,000-$170,000
Company
hirify.global is the leading safety technology platform, helping communities thrive by taking a proactive approach to crime prevention and security.
What you will do
- Explore and analyze data to drive critical business decisions.
- Create data models using advanced analytical techniques.
- Build and deploy predictive and prescriptive tools.
- Develop new Data Science projects from the ground up, including roadmap development with business stakeholders, science methodology proposal, and architecture design.
- Implement automated monitoring and testing for models.
Requirements
- BS/MS in Analytics, Data Science, Computer Science, or related field.
- 3+ years experience as a data/decision scientist or AI/ML engineer.
- Strong experience using Python and its core AI/ML/OR packages.
- Strong SQL and data processing skills.
- Experience developing data models, with exposure/experience with dbt.
- Experience building predictive, simulation, or optimization models.
Nice to have
- Experience in data visualization tools (ex. Sigma, Tableau).
- Exposure to cloud infrastructure platforms and deployment patterns.
- Ability to communicate with business partners and drive for solutions to complex and abstract problems.
- Effectively communicate, and seek to understand and be understood.
Culture & Benefits
- Flexible PTO and 11 company holidays.
- Fully-paid health benefits plan for employees, including Medical, Dental, and Vision and an HSA match.
- 12 weeks of 100% paid parental leave.
- $150 per month WFH Stipend.
- $250 per year Productivity Stipend.
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