ML Engineer - Scaling

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📍 Luxembourg, Luxembourg, LuxembourgFull time

About this role

Helical is building the in-silico labs for biology

Drug discovery still relies on wet labs: slow, expensive, and constrained by physical trial-and-error. Helical is changing that.

We build the application layer that makes Bio Foundation Models usable in real-world drug discovery, enabling pharma and biotech teams to run millions of virtual experiments in days, not years. Today, leading global pharma companies already use Helical, and we’re at the start of a highly ambitious growth journey.

We’re a founder-led, talent-dense team building a category-defining company from Europe. We care deeply about the quality of our work, move fast, and expect ownership. If you’re excited by complexity, real responsibility, and shaping how a company actually operates as it scales, you’ll feel at home here.

Our github: https://github.com/helicalAI/helical/

Our Website: https://www.helical-ai.com/

Your Role

As a Machine Learning Engineer - Scaling at Helical, you’ll build, optimize, and scale real-world applications of bio foundation models

You’ll work closely with researchers and product engineers to productionize model training, inference, and deployment workflows. You’ll also help push the limits of foundation models by prototyping new methods, contributing to our core ML infrastructure, and translating research into fast, iterative code.

This is a deeply technical role with high ownership — ideal for engineers who want to operate at the bleeding edge of AI infrastructure, model development, and system design.

What You’ll Do

  • Build and maintain scalable training/inference pipelines for foundation models (e.g. Transformers, SSMs).
  • Optimize model performance, latency, and throughput across environments.
  • Design modular, reusable ML components for internal and open-source use.
  • Collaborate with researchers to scale notebooks into production-grade systems.
  • Own ML infrastructure components (data loading, distributed compute, experiment tracking, etc.).

Essentials

  • MSc or PhD in Machine Learning, Computer Science, Applied Math, or similar.
  • Strong Python programming skills, with deep knowledge of PyTorch, JAX, or TensorFlow.
  • Hands-on experience building and scaling ML pipelines in real-world settings.
  • Comfort with MLOps tools and practices (e.g. Weights & Biases, Ray, Docker, etc.).
  • Experience with modern ML architectures — Transformers, Diffusion Models, SSMs, etc.
  • High agency, fast iteration speed, and comfort with ambiguity in early-stage environments

Bonus Points

  • Contributions to open-source ML libraries or tooling.
  • Experience with distributed training, model compression, or serving at scale.
  • Scaling AI Systems For Large Post-Training Runs.
  • Knowledge of how to integrate ML systems into user-facing applications or APIs.
  • Interest in the biology/pharma space (not required, but you’ll pick it up fast here!).

Frequently Asked Questions

Is the salary disclosed for the ML Engineer - Scaling position at Helical?
The salary for this ML Engineer - Scaling role at Helical is not publicly listed. Click "Apply Now" to learn more about the compensation package on their official careers page.
Where is the ML Engineer - Scaling position at Helical located?
This ML Engineer - Scaling role at Helical is based in Luxembourg, Luxembourg, Luxembourg. The position is listed as on-site or hybrid. Check the full job description or apply directly to confirm the work arrangement.
Is the ML Engineer - Scaling role at Helical full-time or part-time?
This is listed as a Full time position. It is posted as a ML Engineer - Scaling role at Helical.
How do I apply for the ML Engineer - Scaling position at Helical?
Click the "Apply Now" button on this page. You will be redirected to Helical's official application portal hosted on workable where you can submit your application directly.
When was the ML Engineer - Scaling job at Helical posted?
This ML Engineer - Scaling position at Helical was posted on Jan 8, 2026. Apply as soon as possible — early applications are often reviewed first.
ML Engineer - Scaling
Helical
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