Scientist, Computational Chemistry in London
Scientist, Computational Chemistry

Scientist, Computational Chemistry in London

London Full-Time 60000 - 80000 ÂŁ / year (est.) No home office possible
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At a Glance

  • Tasks: Lead innovative simulations and analyse protein-ligand structures for therapeutic discovery.
  • Company: Join Deep Origin, a pioneering company transforming life sciences with cutting-edge technology.
  • Benefits: Competitive salary, health benefits, and opportunities for professional growth.
  • Other info: Dynamic team environment focused on impactful scientific advancements.
  • Why this job: Be at the forefront of science, shaping the future of healthcare and longevity.
  • Qualifications: Ph.D. in computational chemistry or related field, with strong simulation and machine learning skills.

The predicted salary is between 60000 - 80000 ÂŁ per year.

Led by Michael Antonov, a co-founder of Oculus, and well‑funded by Formic Ventures, Deep Origin is poised to reinvent the way scientists work and life science innovations come to life. We see a future largely free of disease, with a 150‑year lifespan being the norm. To get there, we are building an operating system for science, enabling scientists to be more productive and to bring tomorrow's ideas to life quickly and at a reasonable cost.

About the role

Deep Origin is seeking a Scientist with strong expertise in small‑molecule docking and benchmarking, molecular dynamics (MD) simulations, and free energy perturbation (FEP), machine learning, to support a transformative ARPA‑H initiative. You'll lead the design of robust simulation workflows and analyze protein‑ligand structures across a large target panel to support predictive modeling for therapeutic discovery.

Applicants must be authorized to work for any employer in the U.S. We are unable to sponsor or take over sponsorship of an employment Visa at this time.

Requirements

  • Ph.D. in computational chemistry, structural biology, biophysics, or a related field
  • 2+ years of postdoctoral or industry experience in structure‑based modeling
  • Hands‑on expertise with FEP (RBFE/ABFE), including best practices around setup, sampling, and analysis
  • Proficiency with one or more simulation platforms (e.g., OpenFE, GROMACS, AMBER, NAMD)
  • Hands‑on experience with RDKit and related cheminformatics tools, and with machine learning methods (RF, gradient boosting, SVM, linear models, Chemprop) for molecular property modeling
  • Strong understanding of protein‑ligand binding, structure selection, and conformational variability
  • Programming experience in Python, and familiarity with tools like MDAnalysis, PyMOL APIs, or MDTraj

Responsibilities

  • Analyze tens to hundreds of protein targets relevant to ADMET and off‑targets, focusing on conformations, binding site flexibility, and ligand‑bound states to guide structure preparation and ensemble design
  • Run and refine small‑molecule docking, MD, and FEP (RBFE and ABFE) simulations using state‑of‑the‑art tools
  • Apply alchemical transformations and advanced sampling strategies to build robust, well‑converged, and reproducible FEP workflows for accurate binding free energy predictions
  • Apply cheminformatics tools (e.g., RDKit, scikit‑learn) for molecular representation and descriptor generation, and with machine learning methods, including random forests, gradient‑boosted trees, SVM, linear/regularized regression, and Chemprop, for molecular property prediction and model validation
  • Collaborate with ML and experimental teams to integrate structure‑based insights across discovery pipelines
  • Communicate progress, technical findings, and challenges across internal and external teams
  • Stay current with advances in structure‑based binding affinity prediction methods and best practices, and integrate relevant developments into ongoing work

Nice to have

  • Experience benchmarking across multiple PDB entries or conformational states
  • Prior work integrating structural modeling into machine learning pipelines
  • Familiarity with MM/GBSA, docking scoring functions, or clustering methods
  • Experience using Unix‑based HPC environments, workload managers (e.g., SLURM, etc.), and optionally AWS
  • Comfort managing large‑scale simulation data for modeling or analysis

Why Join Deep Origin?

Deep Origin builds modern infrastructure for computational science at the interface of biology, chemistry, and AI. As part of our ARPA‑H program, you'll shape the future of structure‑based modeling for therapeutics.

Scientist, Computational Chemistry in London employer: Deep Origin

Deep Origin is an exceptional employer that fosters a collaborative and innovative work culture, where scientists are empowered to push the boundaries of computational chemistry and life science. With a strong focus on employee growth and development, team members have access to cutting-edge resources and the opportunity to contribute to transformative initiatives aimed at revolutionising therapeutic discovery. Located in a vibrant environment, Deep Origin offers a unique chance to be part of a forward-thinking team dedicated to making a significant impact on global health.
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Contact Detail:

Deep Origin Recruiting Team

StudySmarter Expert Advice 🤫

We think this is how you could land Scientist, Computational Chemistry in London

✨Tip Number 1

Network like a pro! Reach out to professionals in computational chemistry on LinkedIn or at conferences. A friendly chat can lead to opportunities that aren’t even advertised yet.

✨Tip Number 2

Show off your skills! Create a portfolio showcasing your projects, especially those involving small-molecule docking and molecular dynamics. This gives potential employers a taste of what you can do.

✨Tip Number 3

Prepare for interviews by brushing up on your technical knowledge and problem-solving skills. Be ready to discuss your experience with FEP and machine learning methods in detail.

✨Tip Number 4

Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, we love seeing candidates who are proactive!

We think you need these skills to ace Scientist, Computational Chemistry in London

Small-Molecule Docking
Molecular Dynamics (MD) Simulations
Free Energy Perturbation (FEP)
Machine Learning
Simulation Platforms (OpenFE, GROMACS, AMBER, NAMD)
Cheminformatics Tools (RDKit)
Programming in Python
Protein-Ligand Binding Analysis
Structure Selection
Conformational Variability
Alchemical Transformations
Advanced Sampling Strategies
Molecular Property Prediction
Model Validation
Unix-based HPC Environments

Some tips for your application 🫡

Tailor Your CV: Make sure your CV highlights your relevant experience in computational chemistry, especially with small-molecule docking and molecular dynamics. We want to see how your skills align with what we're looking for, so don’t be shy about showcasing your expertise!

Craft a Compelling Cover Letter: Your cover letter is your chance to shine! Use it to explain why you're excited about the role at Deep Origin and how your background makes you a perfect fit. We love seeing passion and personality, so let us know what drives you in this field.

Showcase Your Projects: If you've worked on any relevant projects or research, make sure to mention them! Whether it's FEP workflows or machine learning applications in cheminformatics, we want to hear about your hands-on experience and the impact of your work.

Apply Through Our Website: We encourage you to apply directly through our website. It’s the best way to ensure your application gets into the right hands. Plus, it shows us that you’re genuinely interested in joining our team at Deep Origin!

How to prepare for a job interview at Deep Origin

✨Know Your Stuff

Make sure you brush up on your knowledge of small-molecule docking, molecular dynamics simulations, and free energy perturbation. Be ready to discuss specific projects where you've applied these techniques, as well as any challenges you faced and how you overcame them.

✨Showcase Your Tools

Familiarise yourself with the simulation platforms mentioned in the job description, like GROMACS or AMBER. If you've used RDKit or machine learning methods in your previous work, be prepared to share examples of how you implemented these tools effectively.

✨Collaboration is Key

Deep Origin values teamwork, so think of examples where you've collaborated with others, especially in integrating structure-based insights into discovery pipelines. Highlight your communication skills and how you’ve navigated challenges in a team setting.

✨Stay Current

Keep up with the latest advancements in structure-based binding affinity prediction methods. During the interview, mention any recent developments you've integrated into your work, showing that you're proactive about staying informed and improving your skills.

Scientist, Computational Chemistry in London
Deep Origin
Location: London

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