Backend Engineer (ML Platform)
As a Backend Engineer (ML Platform), you will design, implement, and maintain scalable machine learning platforms and data pipelines that enable seamless deployment, scaling, and monitoring of models in production. You will set up monitoring for deployed models and track key metrics to ensure reliability and performance. You will apply software engineering best practices within the context of machine learning and collaborate with ML engineers to maintain model performance in production while integrating ML systems into the broader application stack. You will accelerate ML development, evaluation, and integration by automating workflows, tools, and processes to enhance collaboration and efficiency. Proficiency in Python and backend API design (e.g., FastAPI, Django) and hands-on experience with Docker, Kubernetes, and cloud platforms are essential. Nice-to-have skills include cloud platforms, ML frameworks (PyTorch, TensorFlow), MLOps tools (Kubeflow, MLflow, TFX), monitoring and logging tools (Prometheus, Grafana), and data engineering concepts (ETL pipelines, data lakes, data warehouses).
Find here the full details of the responsibilities for this role: daily tasks, projects to lead, goals to achieve and scope of work within the team. Everything you need to picture yourself in the role and know exactly what to expect from day one.
Access the technical and interpersonal skills expected by the recruiter, the required experience level, valued qualifications and personal qualities sought. Check at a glance whether your profile matches this opportunity before applying.
Discover what the company offers its employees: remote work policy, health coverage, bonuses, continuous training, work environment and growth opportunities. All the information you need to compare this offer with your expectations and make the right choice.
