Software Research & Development Engineer

EPFL
Lausanne Il y a 29 jours Enseignement

Description du poste

EPFL, the Swiss Federal Institute of Technology in Lausanne, is one of the most dynamic university campuses in Europe and ranks among the top 20 universities worldwide. The EPFL employs more than 6,500 people supporting the three main

MISSIONS

of the institution: education, research and innovation. The EPFL campus offers an exceptional working environment at the heart of a community of more than 17,000 people, including over 12,500 students and 4,000 researchers from more than 120 different countries. Software Research & Development Engineer

  • About the Swiss Data Science Center (SDSC) The Swiss Data Science Center (SDSC) is a national research infrastructure in data science and artificial intelligence (AI), founded by EPFL and ETH Zurich. Its

MISSIONS

  • to enable data-driven science and innovation for societal impact - drives its initiatives in research projects, knowledge and technology transfer, and education. With a large multidisciplinary team of professionals in Lausanne, Zurich and Villigen, the SDSC provides expertise and services to various domains, such as health and biomedical sciences, energy and sustainability, climate and environment, and large-scale scientific infrastructures. The SDSC also contributes to initial and executive education programs at EPFL and ETH Zurich. For more information please visit:www. datascience. About the role
  • You will work on one of the SDSC's innovation partnerships in the French part of Switzerland. In this role, you will meet partners (companies) to understand their needs and help them define a high-impact project with the SDSC. You will be responsible for successfully carrying out the project thanks to your machine learning expertise with the help and support of the SDSC team. The Swiss Data Science Center (SDSC) is hiring a Software Research & Development Engineer to join its project-based engineering team in Geneva, Lausanne, or Zürich. This team focuses on transforming research outcomes into production-ready data science infrastructure. It operates in a complementary role to platform teams: exploring, building, and validating solutions before they are adopted as sustainable services. You will work at the intersection of research and engineering, taking early-stage ideas, prototypes, and emerging solutions, and turning them into reusable systems ready for real-world deployment. This includes aligning with FAIR principles while going further: ensuring that what is FAIR is also usable, scalable, and sustainable in practice. Projects are driven by concrete needs across domains such as health and biomedical sciences, climate and environment, energy and sustainability, digital society, and large-scale data ecosystems. Your

TASKS

You will contribute to projects that evolve through two complementary modes. In early phases, you will engage in focused exploration and prototyping, shaping solution spaces, testing approaches, and making technical choices. As projects mature, you will contribute to Minimum Viable Product (MVP) development, building operational, reusable components that can transition into production environments. You will collaborate with engineers across the stack to build end-to-end solutions, contributing primarily to backend, data, and infrastructure components, while occasionally supporting lightweight user-facing elements where needed. A key part of the role is to ensure continuity beyond the project lifecycle. You will work closely with internal platform teams and partner IT units to transition successful MVPs into production, ensuring they are maintainable, transferable, and ready for operational use. Across all phases, you will co-design solutions with users and domain experts, participate in collaborative workshops, and iteratively refine

REQUIREMENTS

into robust implementations. Our work follows established engineering and data best practices, with a strong focus on reproducibility, maintainability, interoperability, and production readiness:https://swissdatasciencecenter. io/best-practice-documentation/

YOUR PROFILE

We are open to candidates across different levels of background. You may be early in your career or already experienced; what matters most is your approach to problem-solving and collaboration. You enjoy building systems that work in practice, not just in theory. You are comfortable navigating ambiguity, engaging with stakeholders, and iterating towards solutions. You care about quality, clarity, long-term usability, and building systems that are secure by design and aligned with best practices. You likely have a background in software engineering, data engineering, or a related field, and an interest in data-intensive systems. You bring a solid foundation in software or data engineering, typically developed through a Master's degree or higher (e. PhD) in Computer Science or a related field, or equivalent professional experience. Experience in one of the

APPLICATION

domains is a plus, but not required. Importantly, you are comfortable working at the interface between teams, helping bridge research, engineering, and operations, and ensuring that what is built can be successfully adopted and sustained. You may have experience with modern software and data engineering practices such as version control, testing, APIs, data pipelines, containerisation, reproducible workflows (e. Docker, CI/CD, Nix), and programming in languages such as Python, Go, Rust, or similar. Exposure to data modelling or semantic interoperability (e. ontologies, common data models) is a plus. We do not expect you to know every technology we use. We value attitude, curiosity, and a drive to learn, technical skills can be developed on the job.

WE OFFER

A stimulating, collaborative, cross-disciplinary environment in a world-class research institution;Flexible work arrangements, including remote working, flexible time, condensed week

  • Exciting challenges, varied projects, and plenty of room to learn and grow;An opportunity to follow your passion and use your skills to make an impact on research communities and society;A possibility to spark your creativity by experimenting and learning new technologies;Informations
  • Contract Start Date : 01/06/2026Activity Rate : 80-100%Contract Type: CDDDuration: 1 year, renewable
  • Reference: 2166

CONTACT

We look forward to receiving your onloine

APPLICATION

including a letter, CV and diploma(s).

APPLICATION

s via email or postal services will not be considered. For further information about the Swiss Data Science Center please visit our website: www. ch

  • Questions regarding the position should be directed to
  • Write an emailwith the job n° reference. Remark:Only candidates who applied through EPFL website or our partner Jobup's website will be considered. Files sent by agencies without a mandate will not be taken into account.
📋 Votre CV est-il optimisé pour ce poste ? Analyse gratuite par un recruteur · Réponse sous 72h
Faire analyser mon CV
Questions sur ce poste
Cliquez sur le bouton « Postuler maintenant » pour accéder directement au formulaire de recrutement de EPFL. Préparez votre CV à jour et une lettre de motivation ciblant le secteur Enseignement avant de commencer.
Le salaire n'est pas précisé dans cette offre. En Suisse, les salaires dans le secteur Enseignement varient selon l'expérience, le canton et la taille de l'entreprise. Utilisez notre simulateur de salaire pour comparer.
Le type de contrat est précisé dans la description ci-dessus. En Suisse, les contrats à durée indéterminée (CDI) sont la norme dans le secteur Enseignement. Vérifiez les conditions spécifiques auprès de EPFL.
En Suisse, les processus de recrutement durent généralement 2 à 6 semaines selon les entreprises. Chez EPFL à Lausanne, postulez rapidement : les offres dans le secteur Enseignement reçoivent de nombreuses candidatures dès leur publication.
Les qualifications spécifiques requises sont détaillées dans la description du poste ci-dessus. Assurez-vous de correspondre aux critères essentiels avant de candidater. Notre service d'analyse CV gratuit peut vous aider à évaluer votre profil.

CV Professionnel

Optimisé ATS et format suisse. Livraison 24-72h.

Découvrir →

Guide Suisse

Tout savoir sur le marché du travail suisse.

En savoir plus →

Simulateurs

Salaire, coût de vie, immobilier...

Accéder →