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In this role, you will be part of the analytics team, playing a critical role in the industrialization of data science to drive significant business impact. As an MLOps Engineer, you will lead the large-scale deployment and maintenance of complex machine learning pipelines. You will build and manage the underlying infrastructure that allows AI models to move seamlessly from research to production, ensuring that these systems are not only high-performing but also safe, observable, and robust. You will be responsible for architecting operational workflows that bridge the gap between data science development and enterprise-grade IT operations, ensuring that every model is backed by rigorous automation and monitoring.
Your responsibilities will include designing and implementing automated CI/CD pipelines using Tekton to orchestrate the end-to-end lifecycle of ML models. You will be a champion of operational excellence, implementing advanced observability and traceability frameworks to monitor model health and system performance in real-time. You will utilize Dynatrace and centralized logging solutions to build comprehensive monitoring pipelines that track latency, resource utilization, and system errors. Additionally, you will be responsible for maintaining the stability of large-scale deployments, ensuring that all AI assets integrate seamlessly with the internal ecosystem via standardized protocols. Development and deployment will occur exclusively within the GCP ecosystem, utilizing Vertex AI, Cloud Run, GKE, and BigQuery.
3+ years of professional experience in MLOps, DevOps, or Software Engineering, with a specific focus on the industrialization of machine learning models.
Bachelor's or Master's degree in a quantitative field (e.g., Computer Science, Engineering, Statistics, or Mathematics).
Proven track record of building and maintaining complex, automated pipelines using Tekton or similar orchestration tools.
Demonstrated experience implementing enterprise-grade monitoring, logging, and distributed tracing in a professional environment.
Deep understanding of the GCP stack, particularly services related to model hosting, orchestration, and data management.
Ford Motor Company (commonly known as Ford) is an American multinational automobile manufacturer headquartered in Dearborn, Michigan, United States. It was founded by Henry Ford and incorporated on June 16, 1903. The company sells automobiles and commercial vehicles under the Ford brand, and luxury cars under its Lincoln luxury brand. Ford also owns Brazilian SUV manufacturer Troller, an 8% stake in Aston Martin of the United Kingdom and a 32% stake in China’s Jiangling Motors. It also has joint ventures in China (Changan Ford), Taiwan (Ford Lio Ho), Thailand (AutoAlliance Thailand), Turkey (Ford Otosan), and Russia (Ford Sollers). The company is listed on the New York Stock Exchange and is controlled by the Ford family; they have minority ownership but the majority of the voting power.
Job ID: 146089907