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Staff Software Engineer – AI Marketing

AI EngineerMachine Learning EngineerFull TimeRemoteLeadTeam 201-500H1B SponsorCompany SiteLinkedIn

Location

Canada

Posted

5 hours ago

Salary

0

Seniority

Lead

Job Description

Staff Software Engineer – AI Marketing

Luxury Presence

• Drive large-scale technical initiatives • Ship AI-native product experiences • Lead system design in an AI-native codebase • Define how we build, not just what we build • Mentor and elevate engineers across the org

Job Requirements

  • 8+ years of professional software engineering experience, with meaningful time in senior or staff-level roles
  • Deep expertise in TypeScript, Node.js, and React
  • Experience designing and operating scalable microservice architectures in cloud-native environments (AWS preferred)
  • Strong understanding of GraphQL, event-driven systems (Kafka, SQS), and distributed databases (PostgreSQL, DynamoDB, Elasticsearch)
  • Proven track record leading high-impact initiatives from concept through production in a SaaS environment
  • Expert-level grasp of software design principles and experience with multi-tenant platform architectures.

Benefits

  • Equal Opportunity Employer
  • Remote work options

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