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Asurion

We don’t just fix your tech—we fix your frustration

Staff Software Engineer – Generative AI Engineering

LLM EngineerMachine Learning EngineerFull TimeRemoteLeadTeam 10,001+Since 1994H1B SponsorCompany SiteLinkedIn

Location

Tennessee + 1 moreAll locations: Tennessee | Virginia

Posted

1 day ago

Salary

0

Seniority

Lead

Bachelor Degree3 yrs expEnglishCloudDistributed SystemsJavaScriptTypeScript

Job Description

Staff Software Engineer – Generative AI Engineering

Asurion

• Build and own core platform capabilities, user-facing experiences and backend services— delivering end-to-end features from requirements to production. • Drive architecture and technical direction for integration-heavy systems, helping the team make durable decisions around scalability, reliability, maintainability, and operational safety. • Own reliability and production-grade behavior, including safe shutdown and edge-case handling, and proactively debug issues across distributed systems. • Build secure, compliant integrations and user experiences, including stronger validation, security hardening, and privacy-minded product changes. • Deliver user-facing UX improvements that reduce friction and increase clarity, ensuring internal and external tools are fast, intuitive, and accessible. • Collaborate cross-functionally and drive projects to completion, partnering with Product, QA, Design, and other engineering teams to deliver roadmap items and high-severity fixes. • Raise engineering standards through code review and technical mentorship, setting patterns for maintainability, observability, and robust integration design.

Job Requirements

  • 3+ years of experience as a Full Stack or Backend Developer preferably with JavaScript/TypeScript focus.
  • 3+ years of experience building web applications deployed to a cloud environment
  • Bachelor's degree in Computer Science or related field

Benefits

  • Health insurance
  • Retirement plans
  • Paid time off
  • Flexible working arrangements
  • Professional development
  • Bonuses

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