At a Glance
- Tasks: Lead AI projects to revolutionise drug development and target discovery.
- Company: Innovative biotech firm based near Cambridge, fostering collaboration and creativity.
- Benefits: Hybrid work options, competitive salary, and opportunities for professional growth.
- Why this job: Join a passionate team to make a real difference in healthcare through AI.
- Qualifications: PhD in relevant field and 3-7 years of industry experience in AI/ML.
- Other info: Dynamic environment with a focus on innovation and teamwork.
The predicted salary is between 72000 - 108000 £ per year.
We are seeking a lead AI scientist to invent and productionize computational capabilities that power target identification, validation, and drug development. The candidate is experienced and excited to operate in a deeply collaborative way with peers in data infrastructure, assay development, biology validation, and drug discovery. They bring enthusiasm, intellectual curiosity, scientific rigor, and a deep-rooted desire to innovate. The candidate will have Director level seniority and report to the head of assay development and data science. This role is based in the vicinity of Cambridge UK and hybrid work arrangements will be considered, but all applicants will require permission to work in UK.
Key Responsibilities
- Collaborate with key stakeholders to set the technical strategy and roadmap for AI across the platform and drug discovery, then define execution plans and deliver against them.
- Lead, mentor, and grow the AI/ML team, fostering a focus on collaboration and delivery, while maintaining standards for quality and reproducibility.
- Partner with Data Infrastructure to optimize data schemas, metadata, versioning, and access controls for ML training and inference.
- Develop and deploy methods leveraging next-generation sequencing for target discovery and validation.
- Develop and deploy methods leveraging imaging AI of histology images, such as segmentation/detection/classification, weak/self-supervised learning, and rigorous model evaluation tied to biological goals.
- Develop and deploy methods to accelerate the validation of targets using standardised assays and accelerate drug development.
- Communicate results and decisions clearly to technical and non-technical stakeholders.
Requirements
- PhD or equivalent experience in genomics, computational biology, computer science, or similar discipline is required.
- 3–7 years of industry experience delivering AI/ML systems for target discovery and/or drug development, with end‑to‑end ownership from method development to production.
- Strong leadership and collaboration skills in a matrix environment with a low‑ego, high‑ownership working style.
- High proficiency in Python and modern ML tooling, cloud computing environments (e.g., AWS), as well as solid software engineering habits (testing, CI/CD, containers, etc.).
- Priority domain experience: Genomics/NGS: development of methods to leveraging sequencing technologies. Imaging AI: microscopy/histology, WSI pipelines, dataset curation/labeling strategies, scalable training and evaluation. Validation and drug discovery: development or application of AI tools to target validation using in‑vitro models and/or drug discovery in any modality.
- A high degree of energy, accuracy and attention to detail, and a passion for creating transformative medicines for patients with serious diseases.
Lead AI Scientist employer: Flagship Pioneering
Contact Detail:
Flagship Pioneering Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Lead AI Scientist
✨Tip Number 1
Network like a pro! Reach out to your connections in the industry, attend relevant meetups, and engage with professionals on platforms like LinkedIn. We all know that sometimes it’s not just what you know, but who you know that can help you land that dream job.
✨Tip Number 2
Prepare for those interviews! Research the company and its projects, especially in AI and drug development. We recommend practising common interview questions and even some technical challenges related to your field. Show them you’re not just a fit on paper, but also in person!
✨Tip Number 3
Don’t underestimate the power of follow-ups! After an interview, drop a quick thank-you email to express your appreciation and reiterate your interest in the role. It keeps you fresh in their minds and shows your enthusiasm for the position.
✨Tip Number 4
Apply through our website! We’ve got a streamlined process that makes it easy for you to showcase your skills. Plus, it helps us keep track of your application better. So, don’t hesitate – hit that apply button and let’s get you on board!
We think you need these skills to ace Lead AI Scientist
Some tips for your application 🫡
Tailor Your CV: Make sure your CV reflects the skills and experiences that align with the Lead AI Scientist role. Highlight your experience in AI/ML systems, especially in drug development and target discovery, to catch our eye!
Craft a Compelling Cover Letter: Your cover letter is your chance to show us your enthusiasm and intellectual curiosity. Share specific examples of your collaborative projects and how you've driven innovation in your previous roles.
Showcase Your Technical Skills: We want to see your proficiency in Python and modern ML tooling! Include any relevant projects or achievements that demonstrate your expertise in genomics, imaging AI, and software engineering practices.
Apply Through Our Website: To make sure your application gets the attention it deserves, apply directly through our website. It’s the best way for us to keep track of your application and get back to you quickly!
How to prepare for a job interview at Flagship Pioneering
✨Know Your Stuff
Make sure you brush up on the latest trends in AI and drug development. Be ready to discuss your past projects, especially those involving target discovery and validation. This shows you’re not just knowledgeable but also passionate about the field.
✨Show Your Collaborative Spirit
Since this role involves working closely with various teams, be prepared to share examples of how you've successfully collaborated in the past. Highlight your leadership style and how you foster a collaborative environment, as this is key for the position.
✨Demonstrate Technical Proficiency
Be ready to dive into technical discussions about Python, ML tooling, and cloud computing. You might be asked to solve a problem on the spot, so practice coding challenges or case studies relevant to genomics and imaging AI beforehand.
✨Communicate Clearly
You’ll need to explain complex concepts to both technical and non-technical stakeholders. Practice summarising your work in simple terms and be prepared to discuss how you would communicate results effectively in a team setting.