Descripción breve We are looking for someone to help us keep our machine learning models running smoothly in production. Your job will be to monitor for issues like model drift and data drift, ensure models stay accurate, and integrate tools like WhyLabs, Splunk, and Datadog What You Will Do Monitor machine learning models for issues like data/model drift Set up tools like WhyLabs, Splunk, and Datadog to track model performance Work on the full lifecycle of models, including deployment, monitoring, and retraining Help improve how we manage and monitor data pipelines Collaborate with the team to make sure models stay accurate and useful What We are Looking For Experience monitoring machine learning models in production Knowledge of tools like WhyLabs, Splunk, and Datadog Familiarity with AKS and Databricks Understanding of how data moves through systems and how to keep it reliable Comfortable with Python or SQL for debugging and building workflows Understanding of MLOps best practices. Experience with cloud tools like Azure Cosmos DB Familiarity with integrating models into BI tools for reporting. ABOUT CAPGEMINI At Capgemini Engineering, the world leader in engineering services, we bring together a global team of engineers, scientists, and architects to help the world’s most innovative companies unleash their potential. From autonomous cars to lifesaving robots, our digital and software technology experts think outside the box as they provide unique R&D and engineering services across all industries. Join us for a career full of opportunities. Where you can make a difference. Where no two days are the same. #LI-Hybrid #LI-LG6 Calificaciones Responsabilidades del puesto