Principal Deep Learning Researcher

Posted 2 Days Ago
Be an Early Applicant
Whittlesford, South Cambridgeshire, Cambridgeshire, England, GBR
Hybrid
Senior level
Healthtech • Biotech
The Role
Develop and deliver production-ready deep learning models for antibody sequence understanding, binding prediction, and generative sequence optimisation. Define ML strategy, design benchmarks, collaborate with software, DevOps and experimental teams, contribute to publications and patents, and mentor colleagues to translate models into experimentally testable hypotheses and deployed capabilities.
Summary Generated by Built In

The Company 

Alchemab has developed a highly differentiated platform which enables the identification of novel drug targets and therapeutics by analysis of patient antibody repertoires. The platform uses well-defined patient samples, deep B cell sequencing, and computational analysis to identify convergent protective antibody responses among individuals that are susceptible but resilient to specific diseases.


Alchemab is building a broad pipeline of protective therapeutics for hard-to-treat diseases, with an initial focus on neurodegenerative conditions and oncology. The highly specialized patient samples that power Alchemab’s platform are made available through valued partnerships and collaborations with patient representative groups, biobanks, industry partners, and academic institutions.


At the platform’s core is one of the largest and most clinically meaningful antibody datasets in existence: half a billion antibody sequences drawn from thousands of patients and growing. The depth and breadth of proprietary data has enabled Alchemab to develop AntiBERTa and FAbCon, two of the leading foundation models for antibody sequences. These assets - unique data at scale, combined with state-of-the-art models – create the foundation for Alchemab’s drug discovery pipeline.

The Role

Reporting in to the ML Director, this individual contributor role has real influence over technical direction and will operate and thrive at the interface of research and impact. The Principal Deep Learning (DP) Researcher will develop deep learning models and apply them across Alchemab’s antibody discovery pipeline - from representation learning on B-cell receptor repertoires and antigen binding prediction, to generative models for sequence optimisation. You will work closely with software developers, computational biologists, experimental scientists, and antibody engineers to turn Alchemab’s high-dimensional data into actionable model outputs and testable hypotheses, while helping set the ML strategy and supporting the development of colleagues across the organisation. Ultimately, the purpose of this role is to deliver innovative, production‑ready deep learning solutions that materially advance Alchemab’s antibody discovery and optimisation platform.


Responsibilities

  • Develops deep learning architectures for antibody sequence understanding, generation, and binding prediction
  • Partners with the Director of ML to define and deliver Alchemab's ML strategy
  • Collaborates with software and DevOps teams to democratize ML capabilities
  • Communicates conclusions (not just observations) to both domain experts and non-experts
  • Designs rigorous benchmarks to evaluate model performance against experimental ground truth
  • Contributes to patent filings and publications arising from novel methodologies
  • Stays current with the ML literature; identify and evaluate approaches worth integrating

Ways of Working

  • Contributes to a culture of continuous learning through knowledge sharing, mentoring and supporting the development of colleagues
  • Takes ownership and accountability for delivering high-quality work, balancing scientific curiosity with practical impact
  • Communicates complex ideas clearly and constructively, adapting style and approach for both technical and non-technical audiences
  • Builds scalable and enduring solutions, with a focus on creating approaches, tools and ways of working that deliver long-term value

Requirements


Essential

  • MSc or PhD in Computer Science, Mathematics, Physics, or equivalent quantitative field
  • 5+ years of experience in designing and training deep learning models, with a record of matching architecture to challenging problems
  • Evidence of delivering measurable impact through deep learning – for example, peer‑reviewed publications adopted by others, deployed systems in production, experimentally validated methods, or patented approaches.
  • Strong software engineering fundamentals, proficiency in JAX, PyTorch, or TensorFlow
  • Comfort across the scientific Python stack (e.g. NumPy, SciPy, pandas, JAX/PyTorch) to analyse large, complex datasets
  • Experience using AI coding tools and agentic workflows to prototype, refactor and maintain ML codebases, with appropriate review and quality controls.
  • Demonstrates curiosity about biology and operates effectively in multidisciplinary environments

Desirable 

  • Successes in applying sequence or structure models to biological data - antibodies, TCR, proteins, or DNA/RNA
  • Industry experience in (bio)tech or pharma
  • Experience working across scientific disciplines
  • Experience deploying ML models in production, including cloud infrastructure (e.g., AWS)

NOTE: This job description is not intended to be all inclusive.  Employees may perform other related duties as negotiated to meet the ongoing needs of the organisation.

Note to recruitment agencies: we are not looking for assistance at this stage so please contact the HR department only at [email protected] if you think you can help in the future.

Skills Required

  • MSc or PhD in Computer Science, Mathematics, Physics, or equivalent quantitative field
  • 5+ years designing and training deep learning models
  • Evidence of delivering measurable impact through deep learning (publications, deployed systems, experimental validation, or patents)
  • Strong software engineering fundamentals and proficiency in JAX, PyTorch, or TensorFlow
  • Proficiency with the scientific Python stack (NumPy, SciPy, pandas, JAX/PyTorch) for analyzing large complex datasets
  • Experience using AI coding tools and agentic workflows to prototype, refactor and maintain ML codebases with appropriate review and quality controls
  • Demonstrates curiosity about biology and effectiveness in multidisciplinary environments
  • Successes applying sequence or structure models to biological data (antibodies, TCR, proteins, DNA/RNA)
  • Industry experience in biotech or pharma
  • Experience working across scientific disciplines
  • Experience deploying ML models in production, including cloud infrastructure (e.g., AWS)
Am I A Good Fit?
beta
Get Personalized Job Insights.
Our AI-powered fit analysis compares your resume with a job listing so you know if your skills & experience align.

The Company
HQ: London
67 Employees
Year Founded: 2019

What We Do

Alchemab is harnessing the naturally protective power of patient antibodies to keep people free of hard-to-treat disease in a unique and transformative approach to drug discovery and development. Alchemab takes an unbiased and function-first approach using three complementary processes and cutting-edge technologies to identify naturally protective antibodies. Alchemab’s engine is enabled through collaborations with patient representative groups and biobanks around the world with whom we partner to further our understanding of disease.

Similar Jobs

Boeing Logo Boeing

Service Desk Analyst

Aerospace • Information Technology • Software • Cybersecurity • Design • Defense • Manufacturing
Hybrid
Milton Keynes, Buckinghamshire, England, GBR
170000 Employees

Boeing Logo Boeing

Quality Inspector - Night Shift

Aerospace • Information Technology • Software • Cybersecurity • Design • Defense • Manufacturing
In-Office
Sheffield, South Yorkshire, England, GBR
170000 Employees

Boeing Logo Boeing

Senior Finance Analyst

Aerospace • Information Technology • Software • Cybersecurity • Design • Defense • Manufacturing
Hybrid
Gosport, Hampshire, England, GBR
170000 Employees

Boeing Logo Boeing

Support Engineering Data Specialist (Support Engineering Data)

Aerospace • Information Technology • Software • Cybersecurity • Design • Defense • Manufacturing
Hybrid
Welwyn Garden City, Welwyn Hatfield, Hertfordshire, England, GBR
170000 Employees

Similar Companies Hiring

Camber Thumbnail
Fintech • Healthtech • Social Impact
New York, New York
90 Employees
Sailor Health Thumbnail
Healthtech • Social Impact • Telehealth
New York City, NY
20 Employees
Granted Thumbnail
Mobile • Insurance • Healthtech • Financial Services • Artificial Intelligence
New York, New York
23 Employees

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account