Machine Learning Research Engineer | Generative Models | Protein Design | Deep Learning | Python | H

Enigma
London
3 days ago
Create job alert

Machine Learning Research Engineer | Generative Models | Protein Design | Deep Learning | Python | Hybrid, LDN

Apply (by clicking the relevant button) after checking through all the related job information below.

​We are looking for multiple highly skilled machine learning research engineers with strong expertise in generative modeling is sought to join an interdisciplinary team of machine learning experts, protein engineers, and biologists. The team collaborates to transform how biology is controlled and diseases are cured. The role involves architecting innovative generative models aimed at designing new proteins that demonstrate functionality in wet lab assays.

This company specializes in developing generative AI models for synthetic biology, focusing on designing and reprogramming biological systems, including gene editing technologies to enable treatments for complex genetic diseases. Operating at the intersection of AI and biology, the team is driven by innovation, curiosity, and a commitment to creating significant positive global impact.

Requirements
Expertise in generative modeling:

The ideal candidate has a proven track record in machine learning, with experience leading or contributing to high-profile projects, as evidenced by widely used open-source libraries, major product launches, or impactful publications (e.g., NeurIPS, ICML, ICLR, or Nature).

Skilled in ML development:

They write robust, maintainable ML code, have proficiency in version control and code review systems, and are capable of producing high-quality prototypes and production code. They have experience running models on cloud hardware and parallelizing data and models across accelerators.

Data engineering capabilities:

The candidate is experienced in building ML data pipelines for training and evaluating deep learning models, including raw data analysis, dataset management, and scalable pipeline construction.

Passion for optimization:

They possess in-depth knowledge of ML libraries, hardware interactions, and optimization techniques for model training, inference speed, and validation metrics performance.

Mission-driven and curious:

Motivated by the opportunity to make a positive global impact, they approach problems with relentless curiosity and adaptability.

Adaptability in dynamic environments:

They thrive in fast-paced settings, achieving goals efficiently and effectively.

Desired Qualifications
Experience in computational biology or protein design:

Experience with ML-driven projects in biology is advantageous.

Natural science background:

Academic training in fields like physics, biology, or chemistry is a plus.

Key responsibilities

Develop machine learning models with real-world applications (~90%):
Curate and manage training and evaluation data.
Design and implement ML evaluation metrics aligned with organizational goals.
Rapidly prototype generative models and perform detailed analyses of their performance.
Collaborate with researchers, engineers, and designers, maintaining a high-quality codebase.
Support the maintenance of compute and ML infrastructure.
Coordinate with biology teams for wet lab testing campaigns and conduct model inferences for biological target testing.
Incorporate feedback from wet lab results to refine and improve models.

Engage in self-development (~10%):
Stay updated on the latest ML research and advancements.
Develop a strong understanding of protein and cell biology.
Share knowledge by organizing and presenting in reading groups or at conferences.

Excellent compensation - six figures+ & equity
Hybrid Working – 3 days p/w onsite. Central London
Permanent position

If you are interested in finding out more about this hire please reach out to for immediate consideration.

Machine Learning Research Engineer | Generative Models | Protein Design | Deep Learning | Python | Hybrid, LDN

Remote working/work at home options are available for this role.

Related Jobs

View all jobs

Machine Learning Engineer (Greater London)

Lead Data Scientist - Reigate

Machine Learning Engineer (London)

Machine Learning Engineer, GenRecs, Personalization (London)

Machine Learning Engineer

Data Science Manager

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Top 10 Best UK Universities for Machine Learning Degrees (2025 Guide)

Explore ten UK universities that deliver world-class machine-learning degrees in 2025. Compare entry requirements, course content, research strength and industry links to find the programme that fits your goals. Machine learning (ML) has shifted from academic curiosity to the engine powering everything from personalised medicine to autonomous vehicles. UK universities have long been pioneers in the field, and their programmes now blend rigorous theory with hands-on practice on industrial-scale datasets. Below, we highlight ten institutions whose undergraduate or postgraduate pathways focus squarely on machine learning. League tables move each year, but these universities consistently excel in teaching, research and collaboration with industry.

How to Write a Winning Cover Letter for Machine Learning Jobs: Proven 4-Paragraph Structure

Learn how to craft the perfect cover letter for machine learning jobs with this proven 4-paragraph structure. Ideal for entry-level candidates, career switchers, and professionals looking to advance in the machine learning sector. When applying for a machine learning job, your cover letter is a vital part of your application. Machine learning is an exciting and rapidly evolving field, and your cover letter offers the chance to demonstrate your technical expertise, passion for AI, and your ability to apply machine learning techniques to solve real-world problems. Writing a cover letter for machine learning roles may feel intimidating, but by following a clear structure, you can showcase your strengths effectively. Whether you're just entering the field, transitioning from another role, or looking to advance your career in machine learning, this article will guide you through a proven four-paragraph structure. We’ll provide practical tips and sample lines to help you create a compelling cover letter that catches the attention of hiring managers in the machine learning job market.

Veterans in Machine Learning: A Military‑to‑Civilian Pathway into AI Careers

Introduction Artificial intelligence is no longer relegated to sci‑fi films—it underpins battlefield decision‑support, fraud detection, and even supermarket logistics. The UK Government’s 2025 AI Sector Deal forecasts an additional £200 billion in GDP by 2030, with machine‑learning (ML) engineers cited as the nation’s second most in‑demand tech role (Tech Nation 2024). The Ministry of Defence’s Defence AI Strategy echoes that urgency, earmarking £1.6 billion for FY 2025–28 to embed ML into planning, logistics, and autonomous systems. If you have ever tuned a radar filter, plotted artillery trajectories, or sifted sensor data for actionable intel, you have already worked with statistical modelling—the backbone of machine learning. This guide shows UK veterans how to reframe military experience for ML roles, leverage MoD transition funding, and land high‑impact positions building the models shaping tomorrow’s defence and commercial landscapes. Quick Win: Bookmark our live board for Machine‑Learning Engineer roles to see who’s hiring today.