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Aequilibrium

We craft remarkable experiences.

Technical Lead, Full-Stack, AI Platforms

AI EngineerMachine Learning EngineerContractRemoteSeniorTeam 51-200H1B No SponsorCompany SiteLinkedIn

Location

Canada

Posted

4 days ago

Salary

0

Seniority

Senior

Job Description

Technical Lead, Full-Stack, AI Platforms

Aequilibrium

• Own the technical architecture of the XR Training Academy platform • Define and maintain architecture standards across frontend, backend, AI, cloud, and Unity integrations • Create technical roadmaps aligned with product goals • Lead technical planning and solution design sessions • Review technical approaches and ensure alignment with business requirements • Prevent over-engineering and unnecessary technical complexity • Design scalable cloud-native architectures • Define APIs, integration patterns, and service boundaries • Ensure performance, security, maintainability, and scalability considerations are built into solutions • Guide AI architecture and integration decisions • Evaluate and recommend technology choices • Translate product requirements into technical implementation plans • Break epics and features into technical workstreams • Define acceptance criteria and technical success metrics • Identify technical risks and mitigation strategies • Support estimation and sprint planning activities • Guide the implementation of AI-powered experiences • Evaluate and integrate LLMs, AI services, and agent-based workflows • Establish best practices for AI architecture, prompting, evaluation, and governance • Coach team members on the effective use of AI-assisted development • Contribute production-quality code • Build backend services, APIs, integrations, and cloud infrastructure • Support frontend and platform development as required • Review pull requests and mentor developers • Troubleshoot technical issues and support delivery teams • Foster strong communication and accountability

Job Requirements

  • 8+ years of software development experience
  • 3+ years in a Technical Lead, Lead Developer, or Solution Architect role
  • Strong full-stack development experience
  • Experience designing and building cloud-native applications
  • Experience with: TypeScript / JavaScript, React or modern frontend frameworks, Node.js or equivalent backend technologies, REST APIs and integrations, Cloud platforms (Azure preferred), CI/CD pipelines
  • Experience building applications that leverage Large Language Models (LLMs)
  • Familiarity with: OpenAI, Azure OpenAI, Agentic workflows, RAG architectures, Prompt engineering, AI evaluation and governance

Benefits

  • Health insurance
  • 401(k) matching
  • Flexible work hours
  • Paid time off
  • Remote work options

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