I
AI

Senior Machine Learning Engineer - Forecasting Platform

INAIT · Lausanne, VD, CH

Actively hiring Posted about 1 month ago

Responsibilities

  • Owning and evolving our forecasting libraries — the production Python codebase that runs simulations, time-series models, and probabilistic forecasts at scale.
  • Designing for scale. Caching strategies, multi-threading, asynchronous pipelines, and memory-efficient simulations to ensure the platform performs reliably as load grows significantly.
  • Building on Azure Machine Learning. Pipelines, compute, model registry, and deployment — Azure Machine Learning is the production platform our forecasting workloads run on.
  • Working across the stack. Primarily backend, with frontend contributions when product requirements call for it.
  • Partnering with our data scientists to translate research-grade models into reliable, production-ready components.
  • Setting the technical bar for engineers we will hire as we scale — through code review, design, and the standards you establish.
  • Contributing to the technical roadmap. As our product evolves, priorities will shift. We expect strong technical judgment and a willingness to adjust direction when the data supports it.

Basic qualifications

  • 5+ years of software or ML engineering experience, including significant time maintaining a large production library or codebase.
  • Bachelor's or Master's degree in Computer Science, Engineering, Mathematics, Physics, or a related technical field — or equivalent practical experience.
  • Strong Python engineering skills, with a focus on code quality, testing, and maintainability.
  • Experience designing and running simulations at scale.
  • Solid understanding of caching and performance optimization, including practical experience debugging memory and performance issues.
  • Working knowledge of Azure Machine Learning, or willingness to ramp on Azure ML quickly from a comparable cloud ML environment.
  • Strong backend fundamentals: APIs, data pipelines, testing, and CI/CD.
  • Sufficient frontend proficiency to ship small UI features independently.
  • Effective use of AI development tools (e.g. Claude) as part of your daily workflow to accelerate development, review, and debugging.
  • Strong communication skills in English, with the ability to explain complex technical concepts to both technical and non-technical stakeholders within the team.
  • Accountability. Ownership of outcomes, not only of tasks.
  • End-to-end thinking. Awareness of how technical decisions affect the full product experience.
  • Adaptability. Comfort operating in a product-market-fit phase where priorities evolve.
  • Collaboration. A constructive, low-ego working style in a small senior team.
  • Drive. A consistent willingness to go beyond the minimum requirement of the role.

Preferred qualifications

  • Hands-on experience with forecasting and time-series models (classical, machine-learning-based, or both).
  • Experience with multi-threading and concurrency, including debugging race conditions at scale.
  • Experience in finance, energy, retail, or another domain where forecasting drives material business decisions.
  • Open-source contributions to the scientific Python ecosystem (pandas, scikit-learn, statsmodels, etc.).

Benefits

  • Competitive compensation plus a performance bonus tied to the commercial outcomes we deliver as a company.
  • Eligibility to our long-term incentive plan (phantom stock program) in a company at an inflection point.
  • Hybrid working model for our Lausanne-based team (2 days per week in the office), or fully remote within Europe.
  • Relocation package for candidates moving to Switzerland.
  • Senior scope. Ownership of systems and decisions, not isolated tickets.
  • A cohesive team. Engineering, infrastructure, and data science working as one group, with direct access to founders.
  • Product-market fit phase and a clear scaling plan. The foundational work is done; the next phase is growth.
  • Fresh fruit, snacks, and drinks at the office.

Tags & focus areas

Used for matching and alerts on DevFound
Fulltime Remote Ai Machine Learning
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