At a Glance
- Tasks: Develop cutting-edge machine learning models for protein design and collaborate with a dynamic team.
- Company: Join a pioneering company at the intersection of AI and biology, transforming healthcare through innovation.
- Benefits: Enjoy excellent compensation, equity options, and a hybrid working model in vibrant Central London.
- Why this job: Make a real-world impact in healthcare while working in a fast-paced, innovative environment.
- Qualifications: Expertise in generative modeling and machine learning; experience in computational biology is a plus.
- Other info: Stay ahead in your field with opportunities for self-development and collaboration.
The predicted salary is between 43200 - 72000 £ per year.
We are looking for multiple highly skilled machine learning research engineers with strong expertise in generative modeling 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.
- 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.
- 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 tom@enigma-rec.ai for immediate consideration.
Machine Learning Research Engineer | Generative Models | Protein Design | Deep Learning | Python ... employer: Enigma
Contact Detail:
Enigma Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Machine Learning Research Engineer | Generative Models | Protein Design | Deep Learning | Python ...
✨Tip Number 1
Network with professionals in the field of machine learning and synthetic biology. Attend relevant conferences or workshops where you can meet experts and learn about the latest advancements. This can help you gain insights into the industry and potentially lead to referrals.
✨Tip Number 2
Engage with open-source projects related to generative models and protein design. Contributing to these projects not only enhances your skills but also showcases your expertise to potential employers, including us at StudySmarter.
✨Tip Number 3
Stay updated on the latest research in machine learning and computational biology. Follow key publications and authors in the field, as this knowledge can be a great conversation starter during interviews and demonstrate your passion for the subject.
✨Tip Number 4
Prepare to discuss your previous projects in detail, especially those involving generative models and deep learning. Be ready to explain your thought process, challenges faced, and how you overcame them, as this will highlight your problem-solving skills and adaptability.
We think you need these skills to ace Machine Learning Research Engineer | Generative Models | Protein Design | Deep Learning | Python ...
Some tips for your application 🫡
Tailor Your CV: Make sure your CV highlights your expertise in generative modeling and machine learning. Include specific projects or publications that demonstrate your skills, especially those relevant to protein design and deep learning.
Craft a Compelling Cover Letter: Write a cover letter that showcases your passion for the intersection of AI and biology. Discuss how your background aligns with the company's mission and how you can contribute to their innovative projects.
Highlight Relevant Experience: In your application, emphasise any experience you have with ML development, data engineering, and optimization techniques. Mention any collaborative projects with biologists or engineers to show your interdisciplinary skills.
Showcase Continuous Learning: Demonstrate your commitment to staying updated on the latest ML research and advancements. Mention any recent courses, workshops, or conferences you've attended that are relevant to the role.
How to prepare for a job interview at Enigma
✨Showcase Your Generative Modelling Expertise
Be prepared to discuss your previous projects involving generative models. Highlight any open-source contributions or publications, especially those in renowned conferences like NeurIPS or ICML, as this will demonstrate your credibility and expertise in the field.
✨Demonstrate Your Coding Skills
Since the role requires robust ML code development, be ready to showcase your coding abilities. Bring examples of your work that illustrate your proficiency in Python, version control, and how you ensure code quality through reviews and testing.
✨Discuss Data Engineering Experience
Prepare to talk about your experience with building ML data pipelines. Be specific about the tools and techniques you've used for data management and analysis, as well as how you've handled large datasets in cloud environments.
✨Express Your Passion for Optimisation
Convey your enthusiasm for optimisation techniques in machine learning. Discuss any specific strategies you've employed to enhance model training and inference speed, and how you measure performance metrics effectively.