At a Glance
- Tasks: Lead innovative ML projects to revolutionise drug discovery with cutting-edge algorithms.
- Company: Join a pioneering team at Isomorphic Labs, transforming healthcare through technology.
- Benefits: Competitive salary, mentorship opportunities, and a collaborative work environment.
- Other info: Dynamic, inclusive culture with excellent career growth and interdisciplinary collaboration.
- Why this job: Make a real-world impact in drug discovery while working with top scientists and engineers.
- Qualifications: PhD or equivalent experience in machine learning; passion for solving complex problems.
The predicted salary is between 60000 - 80000 £ per year.
Your impact
As a Research Scientist in machine learning (ML), you will play an exciting role in building greenfield machine learning based models and algorithms that will power our platform to transform the drug discovery world as we know it. Working in a highly creative, fast‑paced and interdisciplinary environment, you will be partnering with leading engineers and scientists to conceive, design, and develop cutting edge machine learning algorithms to unlock new modelling and predictive power which will be critical to the organisation’s success. You will draw upon your existing deep research experience whilst learning from those around you, to apply novel techniques and ideas to newly encountered computational biology and chemistry problems.
Depending on your experience:
- You will create and lead projects, bringing together a variety of disciplined scientists and engineers to pursue some of the most ambitious modelling problems with deep learning - as well as providing technical mentorship and people management for others in the ML community at Isomorphic Labs.
- You will be instrumental in leading greenfield machine learning based research projects, building the models, and algorithms that will power our platform to transform the drug discovery world as we know it.
What you will do
- Contribute to our research directions in machine learning by using your extensive knowledge of the field to apply world-leading ML algorithms to drug discovery.
- Identify and create novel ML techniques and the required data to train.
- Develop the architectures and training algorithms of machine learning models.
- Analyse and tune experimental results to inform future experimental directions.
- Implement and scale training and inference engineering frameworks.
- Report and present research findings and developments clearly and efficiently, to both other ML scientists and scientists of different disciplines.
- Iterate collaboratively with scientists and domain experts, sharing your own domain experience.
- Suggest and engage in team collaborations to meet ambitious research goals.
Depending on your experience:
- Provide technical mentorship and guidance to the ML research community, advising on projects, and shaping our research roadmap based on your deep technical expertise.
- Provide developmental support to other ML research scientists.
- Create, lead, and run ML research projects, fostering collaborative and diverse teams to solve high priority modelling problems.
- Cultivate a diverse and inclusive research culture.
Skills and qualifications
Essential
- PhD or equivalent practical experience in a technical field.
- A proven track record in machine learning using deep learning techniques, including designing new architectures, hands‑on experimentation, analysis, and visualisation.
- Strong knowledge of linear algebra, calculus and statistics.
- Experience using ML frameworks such as JAX, PyTorch, or TensorFlow, and scientific software such as NumPy, SciPy, or Pandas.
- A passion for applying ML research to real world problems.
- Depending on your experience: project supervision, leadership, or management.
Nice to have
- PhD in machine learning or computer science.
- Relevant research experience to the position such as post doctoral roles, a proven track record of publications, or contributions to machine learning codebases.
- Experience working in a scientific environment across disciplines (particularly biology, chemistry, physics).
- Experience working with biological or chemical data and biological or chemistry software.
- Experience working with real‑world datasets.
- Experience with ML on accelerators.
- Experience in any of: large scale deep learning, generative models, graph neural networks, deep learning for drug discovery, deep learning for computer vision, 3D graphics/robotics, real-world applied RL.
Research Scientist (Machine Learning) in London employer: Gravity Engineering Services Pvt Ltd.
At Isomorphic Labs, we pride ourselves on being an exceptional employer, offering a dynamic and collaborative work environment where creativity thrives. As a Research Scientist in machine learning, you will have the opportunity to lead groundbreaking projects that directly impact drug discovery, while benefiting from a culture that values diversity, mentorship, and continuous learning. Our commitment to employee growth is matched by our innovative approach to science, making this an ideal place for those looking to make a meaningful contribution in a fast-paced, interdisciplinary setting.
Contact Details:
Gravity Engineering Services Pvt Ltd. Recruitment Team
StudySmarter Expert Advice🤫
We think this is how you could land Research Scientist (Machine Learning) in London
✨Tip Number 1
Network like a pro! Reach out to professionals in the machine learning and drug discovery fields on platforms like LinkedIn. Join relevant groups, attend webinars, and don’t be shy about asking for informational interviews. You never know who might have the inside scoop on job openings!
✨Tip Number 2
Show off your skills! Create a portfolio showcasing your machine learning projects, especially those related to drug discovery. Use GitHub to share your code and document your thought process. This not only demonstrates your expertise but also gives potential employers a glimpse of what you can bring to the table.
✨Tip Number 3
Prepare for interviews by brushing up on your technical knowledge and soft skills. Practice explaining complex ML concepts in simple terms, as you'll need to communicate effectively with scientists from various disciplines. Mock interviews with friends or mentors can help you gain confidence and refine your answers.
✨Tip Number 4
Don’t forget to apply through our website! We’re always on the lookout for passionate individuals like you. Tailor your application to highlight your experience in machine learning and how it relates to drug discovery. A personal touch can make all the difference!
We think you need these skills to ace Research Scientist (Machine Learning) in London
Some tips for your application 🫡
Show Off Your Passion:When you're writing your application, let your enthusiasm for machine learning and drug discovery shine through. We want to see how your passion aligns with our mission at StudySmarter, so don’t hold back!
Tailor Your Experience:Make sure to highlight your relevant experience in ML and any projects you've led or contributed to. We love seeing how your background fits into the role, so be specific about your achievements and skills.
Be Clear and Concise:Keep your application clear and to the point. Use straightforward language to explain your research and technical expertise. We appreciate clarity, especially when it comes to complex topics like ML algorithms!
Apply Through Our Website:Don’t forget to submit your application through our website! It’s the best way for us to receive your details and ensures you’re considered for the Research Scientist position. We can’t wait to hear from you!
How to prepare for a job interview at Gravity Engineering Services Pvt Ltd.
✨Know Your ML Stuff
Make sure you brush up on your machine learning knowledge, especially deep learning techniques. Be ready to discuss your past projects and how you've applied ML algorithms in real-world scenarios, particularly in drug discovery or related fields.
✨Showcase Your Collaboration Skills
Since the role involves working with a diverse team of scientists and engineers, be prepared to share examples of how you've successfully collaborated in interdisciplinary environments. Highlight any experiences where you’ve led projects or mentored others.
✨Prepare for Technical Questions
Expect to dive deep into technical discussions during the interview. Brush up on linear algebra, calculus, and statistics, as well as your experience with ML frameworks like JAX, PyTorch, or TensorFlow. Be ready to solve problems on the spot!
✨Communicate Clearly
You'll need to present your research findings clearly to both ML scientists and those from other disciplines. Practice explaining complex concepts in simple terms, and prepare to discuss how you would report and present your work effectively.