At a Glance
- Tasks: Design and scale experimental datasets for ML models in biomolecular research.
- Company: Join Microsoft Research AI for Science, a leader in innovative tech.
- Benefits: Competitive salary, collaborative environment, and opportunities for impactful research.
- Other info: Collaborate with top researchers and contribute to groundbreaking projects.
- Why this job: Make a real difference in drug discovery and biomedical applications.
- Qualifications: PhD or equivalent experience in science/engineering; strong Python skills required.
The predicted salary is between 40000 - 50000 £ per year.
At Microsoft Research AI for Science, we seek highly motivated Postdoctoral Researchers for experimental data integration into the next Biomolecular Emulator (BioEmu) model. Microsoft Research AI for Science focuses on the development of machine learning and artificial intelligence methods for transforming molecular simulation and discovery of novel materials, drugs, and chemical reactions. The BioEmu project aims to model the dynamics and function of proteins, how they change shape, bind to each other, and bind small molecules. This approach will help us to understand biological function and dysfunction on a structural level and lead to more effective and targeted drug discovery.
The successful candidate will have the opportunity to work on the following:
- Bridging Models with Real‑World Experimental Signals
- Develop methods to connect ML models with experimental observables, such as cryo‑em density maps, binding affinity/kinetics assays, and proteomics/sequencing data.
- Enable model inference conditioned on or steered by experimental data.
- Interpret discrepancies between model predictions and experimental outcomes to guide iteration.
- Integrate heterogeneous datasets into coherent representations for modeling.
- Experimental Data Strategy & Dataset Development
- Design high‑quality, ML‑ready experimental datasets (e.g., protein interactions, conformational dynamics, binding measurements, cryo‑em density).
- Translate research questions into scalable experimental campaigns with clear success criteria.
- Define dataset standards, metadata, and quality metrics for downstream modeling.
- Identify gaps in existing datasets and propose novel data generation strategies.
- Model‑Aware Experimental Design
- Establish closed‑loop workflows where experimental results refine models and vice versa.
- Define evaluation metrics that reflect real‑world biological utility, not just benchmarks.
- Scalable Data Processing & Automation
- Build automated, reproducible pipelines for data ingestion, processing, and analysis (Python‑based).
- Develop systems for data curation, QC, and uncertainty estimation on noisy experimental data.
- Leverage modern tooling (databases, distributed compute, LLM‑assisted workflows) to scale beyond manual analysis.
- Collaboration & External Coordination
- Partner with ML researchers and computational biologists.
- Provide technical guidance on experimental design, data quality, and iteration cycles.
- Translate between disciplines to ensure alignment between model needs and experimental outputs.
- Contribute to novel methods at the model–experiment interface.
- Publish research, release datasets/software, and shape internal research direction.
- Drive projects from ambiguous ideas to high‑impact, usable artifacts.
Required Qualifications
- Completed or nearly complete PhD or equivalent experience in a science or engineering discipline.
- Deep expertise in at least one relevant area, such as machine learning for biomolecular systems, molecular modeling and simulation, structural biology, experimental protein assays, or statistical mechanics.
- Strong Python skills and experience building data analysis, modeling, or machine learning pipelines.
- Experience working with real‑world biological, structural, experimental, or molecular datasets.
- Ability to work across disciplines and communicate complex ideas clearly.
- Track record of independently owning and delivering research projects.
Preferred Qualifications
- Experience connecting computational models to experimental data, such as cryo‑EM, X‑ray, NMR, SPR, mass spectrometry, NGS, or other assay readouts.
- Background in generative models, diffusion models, representation learning, molecular dynamics, or statistical mechanics for biomolecular systems.
- Experience with large‑scale dataset generation, curation, or automated analysis workflows.
- Familiarity with experimental workflows such as protein expression, purification, interaction assays, or high‑throughput systems.
- Interest in closing the loop between modeling and experiment.
- Experience or interest in drug discovery, therapeutics, or real‑world biomedical applications.
- Ability to collaborate with external partners and align research goals with practical health challenges.
AI for Science Postdoctoral Researcher - Biomolecular AI & Experimental Data Integration - BioEmu in Cambridge employer: Instruct-ERIC
At Microsoft Research AI for Science, we pride ourselves on fostering a dynamic and collaborative work culture that empowers our researchers to tackle groundbreaking challenges in biomolecular AI. Located in the vibrant city of Cambridge, our team enjoys access to cutting-edge resources and a network of leading experts, providing unparalleled opportunities for professional growth and impactful contributions to biomedical research. Join us to be part of a mission-driven environment where your work can lead to significant advancements in drug discovery and molecular understanding.
StudySmarter Expert Advice🤫
We think this is how you could land AI for Science Postdoctoral Researcher - Biomolecular AI & Experimental Data Integration - BioEmu in Cambridge
✨Tip Number 1
Network like a pro! Reach out to people in your field 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 or GitHub repository showcasing your projects, especially those related to biomolecular AI and experimental data integration. This gives potential employers a taste of what you can do.
✨Tip Number 3
Prepare for interviews by practising common questions in your field. Think about how your experience aligns with the role at BioEmu and be ready to discuss your past projects and their impact.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen. Plus, we love seeing candidates who are proactive about their job search.
We think you need these skills to ace AI for Science Postdoctoral Researcher - Biomolecular AI & Experimental Data Integration - BioEmu in Cambridge
Some tips for your application 🫡
Tailor Your Application:Make sure to customise your CV and cover letter for the AI for Science Postdoctoral Researcher role. Highlight your relevant experience in machine learning, biomolecular systems, and any specific projects that align with the BioEmu project. We want to see how your skills fit into our mission!
Showcase Your Skills:Don’t just list your qualifications; demonstrate them! Include examples of your Python skills, data analysis pipelines, and any hands-on experience with experimental datasets. We love seeing how you’ve tackled real-world problems in your previous work.
Be Clear and Concise:When writing your application, keep it straightforward. Use clear language and avoid jargon where possible. We appreciate a well-structured application that gets straight to the point while still showcasing your passion for the role.
Apply Through Our Website:We encourage you to submit your application through our official website. It’s the best way to ensure your application gets seen by the right people. Plus, you’ll find all the details you need about the role and our team there!
How to prepare for a job interview at Instruct-ERIC
✨Know Your Stuff
Make sure you brush up on your knowledge of machine learning and biomolecular systems. Be ready to discuss specific techniques you've used in your research, especially those related to experimental data integration and model development.
✨Showcase Your Projects
Prepare to talk about your past research projects in detail. Highlight how you've tackled challenges, particularly in connecting computational models with experimental data. Use examples that demonstrate your ability to bridge the gap between theory and practice.
✨Ask Insightful Questions
Come prepared with questions that show your interest in the BioEmu project and its goals. Inquire about their current challenges in integrating experimental data or how they envision the future of biomolecular AI. This shows you're engaged and thinking critically about the role.
✨Collaborative Mindset
Emphasise your ability to work across disciplines and collaborate effectively. Share experiences where you've partnered with others, whether in academia or industry, to achieve a common goal. This is crucial for a role that involves coordination with ML researchers and biologists.