This high-impact role combines infrastructure expertise with applied MLOps knowledge, requiring proficiency in software engineering, distributed systems, and machine learning operations.
Design and implement scalable ML infrastructure for training, deployment, and serving in batch and real-time environments. Build and maintain efficient data pipelines for large-scale processing and feature engineering. Optimize compute resources and improve model serving performance across ML systems. Implement robust monitoring, logging, and alerting systems, and contribute to ML Ops practices including CI / CD pipelines. Collaborate closely with Data scientists to streamline the model development-to-production workflow. Research and integrate new technologies, mentor junior engineers, and communicate technical solutions to diverse stakeholders.
Bachelor's or Master's degree in Computer Science, Software Engineering, or a related technical field. ~4-6 years of experience in Software, Data, or ML engineering roles (preferred). ~ Strong problem-solving skills, proficiency in Java, Kotlin or Scala and desirable Python. ~ Exposure to cloud platforms (e.G., AWS), containerization (Docker), and scalable data systems (e.G., Spark, Kafka). ~ GitHub Actions), ML model serving technologies (e.G., This role is well-suited to someone with a solid foundation in at least one of the following areas : software engineering, data engineering, distributed systems, or applied machine learning and a readiness to grow into others as the work requires.
Backend Developer • Madrid, Kingdom Of Spain, España