TL;DR
Data Engineer, Security (AI/ML, Cybersecurity): Building and optimizing a data platform across the Cyber Security value chain with an accent on designing robust data models, building scalable ELT pipelines, and ensuring data quality and observability. Focus on scaling Medallion Architecture on Snowflake, integrating AI/ML applications for risk scoring, and enhancing data security.
Location: Remote within Canada
Salary: $103,800.00–$144,100.00/year (CAD)
Company
hirify.global is the world's first Active Insurance provider, combining comprehensive insurance coverage and innovative cybersecurity tools to prevent digital risk.
What you will do
- Design and implement robust Star Schema models within a Medallion Architecture to support complex Cyber Insurance and Cyber Security analytics.
- Build scalable ELT pipelines using Snowflake and dbt, ensuring high data quality and observability.
- Define and implement critical SLIs (data freshness, volume, schema integrity) and build automated alerting.
- Develop and maintain the LookML semantic layer for business stakeholders.
- Implement data masking, RBAC, and secure data handling practices.
- Build feature stores and data foundations for AI-driven risk scoring and automated underwriting.
Requirements
- Experience with Looker (LookML).
- Active user of Cursor or other AI-assisted coding environments.
- Prior experience in Cybersecurity or Cyber Insurance.
- Experience building data foundations for AI Agents.
Culture & Benefits
- 100% medical, dental, and vision coverage.
- Flexible PTO and annual home office stipend with WeWork access.
- Mental & physical health wellness programs like Headspace and Lumino.
- Competitive compensation and opportunity for advancement.
- Remote-first, highly inclusive culture welcoming diverse backgrounds.
Будьте осторожны: если работодатель просит войти в их систему, используя iCloud/Google, прислать код/пароль, запустить код/ПО, не делайте этого - это мошенники. Обязательно жмите "Пожаловаться" или пишите в поддержку. Подробнее в гайде →