Machine Learning for Science - starting with Quantum Technologies
Backend Developer – AI, Quantum Computing
Location
Germany
Posted
2 days ago
Salary
0
Seniority
Senior
Job Description
Backend Developer – AI, Quantum Computing
Qruise
• Take co-ownership of the core library of our QruiseOS product and its integration with control electronics APIs and our QruiseML product. • Work on QruiseOS, an integrated environment allowing developers of Quantum Computers to characterize, calibrate and monitor their quantum devices. • Contribute to our hybrid deployment tools developed for cloud-native setups.
Job Requirements
- At least 3-5 years of experience in backend/server-side development, preferably in Python is required.
- Experience in building cloud native tech stacks, preferably for AI/ML applications is preferred.
- Experience in docker, microservices and AWS is preferred.
- Comfortable and proficient in using modern agentic AI based development processes (claude code / codex / opencode).
- Experience in accelerated computing on CPU/GPU clusters is an added bonus.
- Experience in developing ML workflows and data lakes is useful but not required.
- A good intuition about automatic differentiation, optimization, numerical modelling and integration (esp. ODEs) is useful but not required.
- Strong communication skills and regular knowledge sharing are a must.
- Must reside or be willing to relocate near EU time-zones (CET±1).
Benefits
- 30 days of paid vacation a year
- Remote work by default
- Choose your own work computer
- Budget for home office equipment
- Flexible working hours
- Travel / Co-working space cost reimbursement
- Regular company-paid team-events
Related Guides
Related Job Pages
More Backend Engineer Jobs
Senior Backend Developer
Forza FootballWe want to make the world of football a better place, and available for everyone
• You will work in a small group of skilled developers and designers dedicated to building top-tier products for users all over the world with access to a former Elixir Core team member. • You will be working on the services that power our mobile apps—from the API that serves millions of clients to the push notification system that keeps our users up-to-date on their favourite football teams and competitions.
Go Full Stack Developer
CompleroAktuelle Kundendaten und verbesserte Datenqualität – jederzeit, automatisiert, kosteneffizient, DSGVO-konform. 👍🏼
• Du entwickelst neue Funktionen zum einfachen Umgang mit unserem System • Du führst Datenbankmigrationen durch und verantwortest die Sicherheit unseres Systems • Du stimmst neue Produktideen und Prioritäten mit unserem Customer Success Team ab und bringst diese auf den Weg • Du kümmerst dich um die reibungslose Verknüpfung unserer Kunden mit unserem System • Du gestaltest die Architektur unserer Lösungen • Du dokumentierst unsere Designentscheidungen und verschriftlichst die Kommunikation im Team und Wiki
• Own the Full Lifecycle: Build, scale, and maintain modern web applications where the heavy lifting sits in our Go backend, with the willingness to ship in React/TypeScript on the frontend whenever a feature calls for it. • Bridge the Gap: Design and implement clean APIs in Go while ensuring they are seamlessly integrated into a performant, accessible React frontend. • Architect for Scale: Maintain high standards for code quality and performance across the entire stack, from backend microservices to frontend component libraries. • Collaborate Broadly: Work closely with Product and Design to turn ambiguous requirements into polished features. • Agentic Engineering Mindset: You treat AI coding agents (Claude Code, Codex, and the like) as real collaborators, not autocomplete. You own every line that ships under your name, whether you typed it or an agent did. You're motivated to deep-dive into agent workflows and bring the judgment that turns agent output into production-grade code.
AI Engineer – Ruby on Rails
OnTheGoSystemsFully-remote team, building innovative localization and translation tools.
• Designing and building AI/LLM-assisted product features • Integrating LLM APIs into Ruby on Rails systems • Combining AI approaches with business logic, tests, fallbacks, and production safeguards • Owning features from technical design to production • Improving reliability, accuracy, consistency, latency, cost, security, and maintainability • Writing and maintaining automated tests, including unit, integration, and E2E tests • Debugging production issues and improving system behavior over time




