Unsere Geschichte
Swissquote ist keine typische Schweizer Bank. Unsere Geschichte, unsere Ziele und unsere Philosophie entspringen dem Spannungsverhältnis zwischen Kreativität, Software-Entwicklung und Anleger-Empowerment. Auch heute noch bilden diese Werte den Kern der Tätigkeit von Swissquote.
Unsere Geschichte
Swissquote ist keine typische Schweizer Bank. Unsere Geschichte, unsere Ziele und unsere Philosophie entspringen dem Spannungsverhältnis zwischen Kreativität, Software-Entwicklung und Anleger-Empowerment. Auch heute noch bilden diese Werte den Kern der Tätigkeit von Swissquote.
We are the Swiss Leader in Online Banking and we provide trading, investing and banking services to +650’000 clients through our performant and secured digital platforms
Humans of Swissquote
We are all in at Swissquote. As an equal opportunity employer, we welcome candidates from all backgrounds, experiences and perspectives to join our team and contribute to our shared success
As our portfolio of production AI systems continues to grow, so does the need for engineering excellence around reliability, scalability, and governance. To sustain this momentum, we are strengthening the team that ensures our models run seamlessly in production—delivering value every day while meeting the highest standards of compliance and observability
The Data Science team is looking for a to help improve and streamline the lifecycle of our AI models, from development to production. This role is particularly exciting because you will not be limited to a single domain; you will work across a diverse array of topics surrounding production-deployed models, gaining deep hands-on experience with the entire lifecycle of an AI product
Junior MLOps Engineer
By joining the team, you will contribute to building the backbone that supports the bank's AI capabilities, ensuring efficiency and governance across the board
Develop systems to automate the evaluation of deployed AI applications. You will work on improving observability for both classical Machine Learning models and Generative Models, ensuring we have real-time insights into performance and health
Contribute to the development of an internal platform based on MLflow. You will help streamline the developer experience by creating tools for model and agent versioning, packaging, and seamless deployment onto our internal infrastructure
Design, optimize, and orchestrate complex data and training pipelines using Argo Workflows, ensuring that our model training processes are reproducible and efficient
Help build a governance platform that acts as a central control plane, ensuring that all deployed AI applications strictly adhere to company regulations and compliance standards
Qualifications
Degree in Computer Science, Data Science, Engineering, or a related field
Strong command of Python; you write clean, maintainable code and care about engineering best practices
Understanding of DevOps concepts such as CI/CD (GitHub Actions) and containerization (Docker, Kubernetes). Prior hands-on experience is a strong plus
You are motivated by what happens after the model is trained—specifically how models are deployed, scaled, and monitored in production environments
Familiarity with frontend development is a plus (for building internal tools and dashboards)
Web Development Awareness:
You are organized, self-motivated, and comfortable ramping up quickly on new technologies and tools
Fluent in English and able to collaborate effectively within a technical team