Machine Learning Ops Engineer III

American Express Global Business Travel (GBT)
City of London
3 months ago
Applications closed

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Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer - Bristol

Amex GBT is a place where colleagues find inspiration in travel as a force for good and - through their work - can make an impact on our industry. We’re here to help our colleagues achieve success and offer an inclusive and collaborative culture where your voice is valued. Amex GBT Egencia is at the center of revolutionizing business travel with our cutting‑edge technology and the most desirable products in the industry. We have grown from a small start‑up to become the 4th largest corporate travel management company in the world and are getting acquired by the 1st. How often do you get the opportunity to work in what feels like a startup environment but has funding of our parent company? That’s what you would be doing if you were joining Amex GBT. The team’s responsibilities span data integration supporting customers and internal business area and ML platform development.


What You’ll Do :

  • Partner with technologists across the business to collaboratively solve problems.
  • Demonstrate active mentorship and rising talent identification.
  • Develop the north star vision for the domain in which they are focused.
  • Demonstrate positive impact and leadership across the scope of the organization.
  • Serve as a specialist in architecting design solution patterns for any use case. Consider business needs, application needs and articulate to interested teams and partners.
  • Demonstrate mastery of software design, shaping coding methodologies that are scalable, resilient and stable.
  • Possess a deep knowledge of the entire system and be able to jump into code in any component, fight bugs and contribute.
  • Expertise in professional software engineering practices for the full software development life cycle, including coding standards, code reviews, source control management, build processes, testing, and operations.
  • Lead collaboration with key partners and contribute subject matter expertise to develop unique solutions to complex issues.
  • Have good infrastructure knowledge (AWS, Kubernetes).
  • Have some experience with Data (BI, Reporting, Analytics, Machine Learning and so on) would be a plus.

What We’re Looking For :

  • 2 to 3 years for Bachelor's or equivalent / for Master’s.
  • Development background, infrastructure (AWS) knowledge, Data awareness.
  • Proven experience in data modeling, schema design patterns and modern data access patterns (including API, streaming, data lake) and AWS.
  • Demonstrate familiarity with various cloud technologies and building data products to support batch and real‑time DS, ML and Deep learning applications.
  • Independently design, communicate and execute on architecture for moderately sophisticated data products.
  • Has a strong understanding of testing and monitoring tools and technologies.
  • Guide others in design of software that is easily testable and observable.
  • Influence and contribute to product vision for the team.
  • Proficiency in platform development using Java/Python and SQL.
  • Have some experience with SageMaker or equivalent, feature store, dashboards and so on.
  • Have some basics around LLM, guardrails, observability, RAG.

Location

London, United Kingdom


The #TeamGBT Experience

  • Flexible benefits are tailored to each country and start the day you do. These include health and welfare insurance plans, retirement programs, parental leave, adoption assistance, and wellbeing resources to support you and your immediate family.
  • Travel perks: get a choice of deals each week from major travel providers on everything from flights to hotels to cruises and car rentals.
  • Develop the skills you want when the time is right for you, with access to over 20,000 courses on our learning platform, leadership courses, and new job openings available to internal candidates first.
  • We strive to champion Inclusion in every aspect of our business at Amex GBT. You can connect with colleagues through our global INclusion Groups, centered around common identities or initiatives, to discuss challenges, obstacles, achievements, and drive company awareness and action.
  • And much more!

All applicants will receive equal consideration for employment without regard to age, sex, gender (and characteristics related to sex and gender), pregnancy (and related medical conditions), race, color, citizenship, religion, disability, or any other class or characteristic protected by law.


Click Here for Additional Disclosures in Accordance with the LA County Fair Chance Ordinance.


Furthermore, we are committed to providing reasonable accommodation to qualified individuals with disabilities. Please let your recruiter know if you need an accommodation at any point during the hiring process. For details regarding how we protect your data, please consult the Amex GBT Recruitment Privacy Statement.


What if I don’t meet every requirement? If you’re passionate about our mission and believe you’d be a phenomenal addition to our team, don’t worry about “checking every box;” please apply anyway. You may be exactly the person we’re looking for!


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