Participate in the framing, MVP and release phases of AI-oriented products, services and APIs;
Argue the architecture choices of projects and the AI platform on GCP;
Contribute to the business value of AI-driven products based on the Data Lake, by setting up end-to-end data processing chains, from ingestion to API exposure and visualization of data and AI/ML solutions;
Be responsible for the quality of the data transformed in the Datalake, the proper functioning of processing chains and the optimization of the use of cloud resource resources;
Define and develop the components necessary to orchestrate a machine learning system in production according to MLOPS best practices (data validation, preprocessing, training, model analysis, deployment, monitoring, etc.)
Propose architecture and development standards;
To be a force of proposal, innovative and benevolent.