AB InBev
Food & Beverage
IntermediateMachineLearningEngineer
Neural analysis suggests this role is
optimal for Mid candidates.
“Intermediate Machine Learning Engineer at AB InBev. Skills: Machine Learning, MLOps, Data Engineering. Implement ML platform capabilities. Extend ML platform capabilities”
What You'll Achieve.
Meet cost targets; Meet quality targets; Meet SLA targets
Industry & Context.
Troubleshoot pipeline issues; Troubleshoot serving issues
What They're Looking For.
Must Have
Bachelor's degree in computer science, Bachelor's degree in engineering, Bachelor's degree in mathematics, Practical experience with ML platform components, Solid software engineering fundamentals, Python, PySpark, SQL
Nice to Have
Exposure to Java is a plus, Experience with Kubernetes, Experience with Databricks, Experience with Terraform, Experience with Azure DevOps (Git), Experience with Azure Cloud, Experience with ML frameworks/libraries, Experience with serving tools
What You'll Do.
Implement ML platform capabilities
Extend ML platform capabilities
Develop ML model workflow components
Maintain ML model workflow components
Build model observability
Operate model observability
Support optimized model deployments
Troubleshoot pipeline issues
Troubleshoot serving issues
Share learnings with team
How You'll Work.
Team & Collaboration
Collaborating across teams; Communicating technical tradeoffs; Learning from senior engineers
Communication Scope
Communicating technical tradeoffs
Full Job Description
About us AB InBev is the leading global brewer and one of the world’s top 5 consumer product companies. With over 500 beer brands, we’re number one or two in many of the world’s top beer markets, including North America, Latin America, Europe, Asia, and Africa. About AB InBev Growth Group Created in 2022, the Growth Group unifies our business-to-business (B2B), direct-to-consumer (DTC), Sales & Distribution, and Marketing teams. By bringing together global tech and commercial functions, the Growth Group allows us to fully leverage data and drive digital transformation and organic growth for AB InBev around the world. In addition to supporting well known global beer brands like Corona, Budweiser and Michelob Ultra, the Growth Group is home to a robust suite of digital products including our B2B digital commerce platform BEES, on-demand delivery services Ze Delivery and TaDa Delivery, and table top beer keg PerfectDraft. We are an exceptional team, focused on understanding and supporting consumer and customer needs, harnessing new technology, and scaling growth opportunities. What you'll do: Implement and extend ML platform capabilities (training jobs, inference services, batch and online serving) following team architecture, standards, and best practices. Develop and maintain components of the ML model development workflow (project structure, experimentation, versioning, reproducibility) to improve consistency and reuse across teams. Build and operate observability for models in training and production—monitoring, logging, and alerting for performance, quality, and drift—in collaboration with platform and SRE partners. Support optimized model deployments (scaling, resource allocation, inference tuning) to meet cost, quality, and SLA targets. Troubleshoot pipeline and serving issues, document solutions, and share learnings with the team. What you'll need: Bachelor’s degree in computer science, engineering, mathematics, or another quantitative field. Practical experien
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