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Eleven Eleven

AI-first. Human led. Outcome driven talent partner for scaling teams in AI, gaming & emerging tech.

Senior AI Engineer

AI EngineerMachine Learning EngineerFull TimeRemoteSeniorTeam 11-50Since 2016H1B No SponsorCompany SiteLinkedIn

Location

United States

Posted

68 days ago

Salary

$160K - $185K / year

Seniority

Senior

Bachelor Degree8 yrs expEnglishAWSCloudDynamoDBMS SQL ServerNoSQLSQL

Job Description

Senior AI Engineer

Eleven Eleven

• This role is a dual-focus technical leadership position within our Engineering organization: leading company-wide AI productivity initiatives and contributing as a senior software engineer to our core product. • You will design, build, and maintain AI-powered workflows and tools that accelerate delivery and raise quality across engineering and other departments. • You will develop and execute training strategies that bring all employees along in adopting AI effectively and securely. • This role contributes to a globally distributed SaaS platform used around the world to effortlessly and securely connect guests and residents (and all their devices) to the internet with an at-home Wi-Fi experience. • As a Senior AI Engineer, you will stay at the cutting edge of AI technology, evaluate and introduce new tools and patterns to the organization, and champion security-first practices in a rapidly evolving AI landscape. • Reporting Relationships: This role reports to a Senior Engineering Manager and has no direct reports. Provides AI and technical leadership across all engineering teams and partners with other departments on AI adoption initiatives.

Job Requirements

  • 8+ years of professional software engineering experience
  • 3+ with demonstrated leadership in AI adoption and tooling
  • Proven hands-on experience building AI-powered workflows, developer tools, or automation systems that delivered measurable productivity gains across teams or organizations
  • Deep understanding of the current AI/ML landscape—foundation models, agentic AI patterns, LLM orchestration, tool use, and multi-step reasoning—with the ability to translate rapidly evolving capabilities into practical, secure solutions
  • Experience developing and delivering AI/technical training programs, workshops, or enablement initiatives for technical and non-technical audiences
  • Strong security awareness in the context of AI—understanding risks around data leakage, prompt injection, model misuse, and compliance implications of AI tool adoption
  • Deep expertise in AWS cloud services with hands-on experience designing and operating complex serverless and event-driven architectures
  • Strong proficiency in two or more object-oriented programming languages
  • Experience with both relational and NoSQL databases, such as MS SQL Server, DynamoDB, and OpenSearch
  • Proven experience building and operating high-transaction, low-latency backend systems at scale
  • Demonstrated experience handling sensitive data in multi-tenant SaaS environments with a security-first mindset (encryption, access control, data isolation, compliance)
  • Track record of end-to-end ownership of large-scale solutions—not just contributing to a piece, but driving the full architecture from design through production
  • Experience with RESTful API design and event-driven integration patterns
  • Proven experience shipping product as part of an Agile team
  • Strong desire to help a successful company scale existing cloud-based services while also being a significant contributor to the development of new products
  • Excellent communication skills with the ability to translate complex technical concepts for diverse audiences
  • A collaborative, energetic team player with a genuine willingness to help others, a proactive attitude, and a natural curiosity for learning and adopting new technologies.

Benefits

  • medical, dental and vision coverage
  • 401(k) plan
  • attractive paid time off policy

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