Jobs
My ads
My job alerts
Sign in
Find a job Career Tips Companies
Find

Applied research engineer

London
Helical
Research engineer
Posted: 19 January
Offer description

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.

At Helical, we're focused on leveraging research to transform the future of drug discovery. We are seeking an Applied Research Engineer - Post-Training to join our team, focusing on maximizing the performance of cutting-edge foundation models in real-world applications.


Your Role

You will own the full post-training lifecycle for biological foundation models—from alignment strategy to production deployment. This means designing and running pipelines that transform general-purpose models into therapeutic-specific tools for our pharma clients. You'll work directly with real drug discovery problems: adapting models to disease areas, cell types, and perturbation contexts that matter for target identification, hit discovery, and beyond.

This isn't a support role. You'll make core technical decisions about how we extract value from foundation models—what to fine-tune, how to validate it biologically, and how to ship it to customers who are running experiments that inform real clinical programs. You'll collaborate closely with our ML infrastructure and biology teams, but you'll be the person responsible for whether our post-training actually works.


What You'll Do

* Design and implement post-training pipelines that align biological foundation models to specific therapeutic contexts and client use cases.
* Build validation frameworks that connect model improvements to biological ground truth—working with embeddings, perturbation data, and external resources like OpenTargets.
* Own experiments end-to-end: from hypothesis through training runs on distributed GPU infrastructure to analysis and client delivery.
* Collaborate with ML engineers on training infrastructure and with biologists on ensuring outputs are scientifically meaningful.
* Contribute to our open-source tooling (helical-package) and help shape the technical direction of our post-training capabilities as we scale.
* Stay at the frontier of post-training research and bring relevant advances into production.

Requirements

Essentials

* MSc or PhD in Machine Learning, Computational Biology, or a related field—or equivalent depth gained through industry experience.
* Hands-on experience with post-training techniques: fine-tuning, LoRA, DPO, RLHF, or similar alignment methods.
* Strong proficiency in Python and PyTorch. You should be comfortable writing training loops, debugging distributed runs, and working directly with model internals.
* Familiarity with transformer architectures and how they behave in practice—not just theory.
* Experience designing and running experiments rigorously: tracking metrics, iterating systematically, and drawing valid conclusions from results.
* Ability to work autonomously and make decisions with incomplete information. We're a small team; you'll own problems end-to-end.
* Clear communication skills—you'll need to explain technical trade-offs to colleagues across ML, biology, and product.

Bonus Points

* Experience with biological foundation models (Geneformer, scGPT, ESM, or similar) or computational biology more broadly.
* Familiarity with drug discovery workflows, target identification, or perturbation biology.
* Track record of shipping post-training improvements into production systems.
* Experience with distributed training infrastructure (multi-GPU, multi-node, NCCL, DeepSpeed, FSDP).
* Publications at ML or computational biology venues (NeurIPS, ICML, ICLR, Nature Methods, etc.).
* Contributions to open-source ML tooling.

Apply
Create E-mail Alert
Job alert activated
Saved
Save
Similar job
Machine learning research engineer - speech/audio/gen-ai - 6 month fixed term contract
Staines
Permanent
Temporary
SAMSUNG
Research engineer
€55,000 a year
Similar job
Ml research engineer
London
Permanent
Symbolica
Research engineer
€80,000 a year
Similar job
Senior ai research engineer - industrial ai prototyper (hybrid)
London
Permanent
AVEVA Denmark
Research engineer
€90,000 a year
See more jobs
Similar jobs
Engineering jobs in London
jobs London
jobs Greater London
jobs England
Home > Jobs > Engineering jobs > Research engineer jobs > Research engineer jobs in London > Applied Research Engineer

About Jobijoba

  • Career Advice
  • Company Reviews

Search for jobs

  • Jobs by Job Title
  • Jobs by Industry
  • Jobs by Company
  • Jobs by Location
  • Jobs by Keywords

Contact / Partnership

  • Contact
  • Publish your job offers on Jobijoba

Legal notice - Terms of Service - Privacy Policy - Manage my cookies - Accessibility: Not compliant

© 2026 Jobijoba - All Rights Reserved

Apply
Create E-mail Alert
Job alert activated
Saved
Save