Sr. Scientist, Computational Biology
Sr. Scientist, Computational Biology

Sr. Scientist, Computational Biology

Cambridge Full-Time 75000 - 117500 £ / year (est.) No home office possible
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At a Glance

  • Tasks: Join us to model cellular processes using AI and contribute to groundbreaking biological research.
  • Company: Altos Labs is dedicated to restoring cell health and resilience through innovative scientific approaches.
  • Benefits: Enjoy a collaborative environment, competitive salary, and opportunities for professional growth.
  • Why this job: Be part of a mission-driven team that values diversity and aims to improve human lives through science.
  • Qualifications: PhD in a relevant field with strong AI and biological modeling experience required.
  • Other info: Flexible working options available; ideal for those passionate about scientific discovery.

The predicted salary is between 75000 - 117500 £ per year.

Our mission is to restore cell health and resilience through cell rejuvenation to reverse disease, injury, and the disabilities that can occur throughout life.

Our Single Altos Value: Everyone Owns Achieving Our Inspiring Mission. We believe that diverse perspectives are foundational to scientific innovation and inquiry. At Altos, exceptional scientists and industry leaders from around the world work together to advance a shared mission. Our intentional focus is on Belonging, so that all employees know that they are valued for their unique perspectives. We are all accountable for sustaining a diverse and inclusive environment.

The Altos Labs Institute of Computation (IoC) is seeking an independent and highly motivated Computational Biology Scientist to build, maintain, and support our hybrid AI initiative to model cellular processes. The position will work in a multi-disciplinary research environment to assist investigators in algorithm development and implementation, and will work across the software development life cycle, including software design, coding, testing, deployment, and maintenance.

The ideal candidate will be a good communicator and have a growth mindset with an enthusiasm for scientific discovery and strong interest in applying a combination of AI methods and mathematical models toward understanding mechanistic aspects of cellular processes with all experimental labs at Altos Labs. The ideal candidate is particularly interested in multi-scale (systems) biochemistry and molecular biology of reprogramming, a dynamic field that seeks to understand complex biological systems by integrating data about biochemical components and help design interventions that direct cellular states along desired trajectories. This includes working with quantitative “big data” and building predictive models to develop novel theories. Our ultimate goal is to contribute to improving human lives through better-informed treatments.

Responsibilities:

  • Contribute to modeling, simulation, and analysis of mechanistic or data-driven models of biological processes through software development in a highly collaborative environment.
  • Explore and develop ML algorithms to solve complex problems and draw conclusions.
  • Apply state of the art AI tools to infer and model cellular dynamics from large data sets.
  • Apply strong coding experience to model development using existing languages(s) and framework(s).
  • Use AI as a tool to answer a scientific question, involved in the research and development aspects.
  • Design and implement pipelines to mechanistically model cellular processes from model instantiation to simulation, calibration, and analysis.
  • Collaborate with other scientists to characterize model behaviors, predictions, refinements, and accelerate the biological knowledge discovery.
  • Develop research programs on partial cellular reprogramming, with the intent of closing the feedback loop between experimental and theoretical work, at multiple scales, from molecules to cells, tissues and even whole organisms.
  • Work at the interface between mathematical and computational models, and AI methods, with the aim of establishing design principles of rejuvenated cells.
  • Collaborate with both experimental and computational scientists across Altos.
  • Influence best practices in areas such as Bayesian optimization, causal inference, building and assessing predictive models, analyzing biological networks, and analysis and visualization of -omics data.
  • Maintain documentation and keep up-to-date as needed.
  • Contribute to software releases (e.g. via GitHub, PyPI, Anaconda, Docker Hub).

Who You Are:

The ideal candidate will be a strong collaborator with a background in dynamical systems and mathematical modeling of biological systems. Be able to demonstrate significant AI experience/application in conjunction with a working understanding of cell biology and/or biophysics. The level of the position will depend on the qualifications of the selected candidate.

Minimum Qualifications:

  • PhD in Biology, Computational Biology, Computer Science, or closely related field with strong emphasis in biological modeling.
  • Relevant industry and/or academic experience.
  • Expertise and a track record of using methods from artificial intelligence for biological design.
  • Record of applications of dynamical systems to problems of synthetic biology.
  • Record of applications of data driven modeling methods and AI to synthetic biology.
  • Demonstrable experience of developing new statistical and machine learning-based methods for analyzing biological data to produce biological insights about cell health and rejuvenation.
  • Experience working with mechanistic models (PDE/ODE, SDE, dynamical systems).
  • Experience working with state of the art ML tools (transformers, GNN, etc.).
  • Experience working with hybrid AI models (e.g., SINDy).
  • Working knowledge of cell biology.
  • Experience with Python, C, R or related scientific computing languages.

Preferred Qualifications:

  • Experience working with causal representation learning.
  • Experience with RAG (retrieval-augmented generation) and GraphRAG a big plus.
  • Experience with building and deploying software on GitHub, PyPI, Anaconda Cloud, and Docker Hub, as well as use of Pytorch lightning, Git, test-driven design.
  • Knowledge of parallel computing technologies, such as NVIDIA’s CUDA platform, OpenCL, and OpenMPI.

The salary range for Cambridge, UK:

  • Senior Scientist I, Computational Biology: £75,000 - £117,500
  • Senior Scientist II, Computational Biology: £94,000 - £152,500

Exact compensation may vary based on skills, experience, and location.

Sr. Scientist, Computational Biology employer: Second Renaissance

At Altos Labs, we are committed to fostering a collaborative and inclusive work environment where every employee's unique perspective is valued. Our focus on scientific innovation, combined with opportunities for professional growth and development, makes us an exceptional employer in the field of computational biology. Located in Cambridge, UK, our state-of-the-art facilities and access to leading experts provide a dynamic setting for those passionate about advancing cell health and rejuvenation.
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Contact Detail:

Second Renaissance Recruiting Team

StudySmarter Expert Advice 🤫

We think this is how you could land Sr. Scientist, Computational Biology

Tip Number 1

Familiarise yourself with the latest advancements in AI and computational biology. Being well-versed in current trends and technologies will not only boost your confidence but also help you engage in meaningful conversations during interviews.

Tip Number 2

Network with professionals in the field by attending relevant conferences, webinars, or workshops. This can provide you with insights into the industry and may even lead to referrals or recommendations for the position.

Tip Number 3

Prepare to discuss specific projects where you've applied AI methods to biological problems. Highlighting your hands-on experience with real-world applications will demonstrate your capability and enthusiasm for the role.

Tip Number 4

Showcase your collaborative skills by sharing examples of successful teamwork in interdisciplinary settings. Altos values collaboration, so illustrating your ability to work effectively with diverse teams will set you apart.

We think you need these skills to ace Sr. Scientist, Computational Biology

PhD in Biology, Computational Biology, Computer Science, or related field
Expertise in biological modeling
Experience with artificial intelligence methods for biological design
Knowledge of dynamical systems and mathematical modeling
Proficiency in data-driven modelling methods and AI applications in synthetic biology
Experience with mechanistic models (PDE/ODE, SDE)
Familiarity with state-of-the-art ML tools (transformers, GNN)
Experience with hybrid AI models (e.g., SINDy)
Strong coding skills in Python, C, R, or related scientific computing languages
Ability to develop statistical and machine learning-based methods for biological data analysis
Experience with causal representation learning
Familiarity with software deployment on platforms like GitHub, PyPI, Anaconda Cloud, and Docker Hub
Knowledge of parallel computing technologies (NVIDIA’s CUDA, OpenCL, OpenMPI)
Strong collaboration and communication skills
Growth mindset and enthusiasm for scientific discovery

Some tips for your application 🫡

Tailor Your CV: Make sure your CV highlights relevant experience in computational biology, AI methods, and mathematical modelling. Use specific examples that demonstrate your expertise in these areas, particularly any projects related to cellular processes.

Craft a Compelling Cover Letter: In your cover letter, express your enthusiasm for Altos Labs' mission and how your background aligns with their goals. Mention your collaborative experiences and how you can contribute to their multi-disciplinary research environment.

Showcase Your Technical Skills: Clearly outline your technical skills, especially in programming languages like Python, C, or R. Include any experience with machine learning tools and frameworks, as well as your familiarity with software development practices.

Highlight Your Research Experience: Detail your research experience, particularly any work involving dynamical systems, biological modelling, or AI applications in biology. Be specific about the methodologies you used and the outcomes of your research.

How to prepare for a job interview at Second Renaissance

Showcase Your Collaborative Spirit

Since the role involves working in a multi-disciplinary environment, be prepared to discuss your experiences collaborating with other scientists. Highlight specific projects where teamwork led to successful outcomes, and demonstrate your ability to communicate complex ideas clearly.

Demonstrate Your Technical Expertise

Be ready to talk about your experience with AI methods and mathematical modelling in biological systems. Prepare examples of how you've applied machine learning algorithms or developed predictive models, especially in relation to cellular processes, as this will be crucial for the role.

Emphasise Your Growth Mindset

The ideal candidate should have a growth mindset and enthusiasm for scientific discovery. Share instances where you embraced challenges, learned from failures, or adapted to new technologies or methodologies in your research.

Prepare Questions About Their Mission

Research Altos Labs' mission and values thoroughly. Prepare thoughtful questions that show your genuine interest in their work on cell health and rejuvenation. This not only demonstrates your enthusiasm but also aligns your values with theirs, which is important for cultural fit.

Sr. Scientist, Computational Biology
Second Renaissance
Location: Cambridge
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