At a Glance
- Tasks: Develop transformative AI Scientist agents for groundbreaking scientific discoveries.
- Company: Join Inherent, a fast-growing AI lab on a mission to revolutionise science.
- Benefits: Competitive salary, collaborative culture, and delicious meals in a vibrant office.
- Other info: Diverse team with a passion for innovation and societal benefit.
- Why this job: Shape the future of AI in science and make a real impact on humanity.
- Qualifications: 5+ years in hard science or AI, plus software engineering experience.
The predicted salary is between 80000 - 100000 £ per year.
At Inherent, we are on a mission to build AI that recursively self-improves to discover new knowledge. Scientific advances are the backbone of our economic, technological and societal prosperity, but ideas are getting harder to find and breakthroughs are becoming more expensive. We are building a new frontier lab dedicated to developing AI that explores “unknown unknowns” to uncover paradigm-shifting research contributions. Science is a social endeavour, and so our mission is inextricably a human-machine teaming problem. We’re starting by reinventing the AI research factory so that our own agents accelerate their own creation. Inherent is a well-funded, fast-growing neo-lab backed by Tier 1 VCs who believe in our ethical stance. We are a team of operators with backgrounds at frontier labs who have done foundational work in recursive self-improvement, AI Scientists, world modelling, meta-RL and human-machine cooperation. Working in-person every day at our high-intensity London headquarters, we believe that Europe will lead the way in the coming paradigm of AI-enabled science, unlocking human potential across the globe.
About the role: We’re looking for Members of Technical Staff to develop transformative AI Scientist agents that make meaningful contributions to in silico and in situ discoveries in specific scientific domains. Your work will leverage our state-of-the-art proprietary foundation models, adapting their capabilities to a particular scientific vertical. You will be involved in every level of the AI for Science lifecycle: judiciously selecting research problems, creating evaluations and training data, post-training and harnessing Inherent’s models, building interfaces to infrastructure for scientific experiments (e.g., scientific software, simulators, cloud labs), driving experimental iteration on agent behaviour, and collaborating with external scientists to validate and deploy our systems. You will work closely with an experienced technical team of humans, and increasingly alongside the AI scientist collaborators we dogfood.
What you'd do:
- Devise and hone AI for Science research settings in your area of expertise that are amenable to open-ended exploration by AI Scientist agents (either in silico or in situ).
- Benchmark Inherent’s proprietary agents in your AI for Science environments, gathering data to improve agent performance via post-training and harness iteration.
- Contribute data, evaluations, feedback and expert opinion to Inherent’s post-training team, in service of improving our core foundation models.
- Close recursive loops wherever possible, for example by enabling our agents to automatically deploy, debug and repair themselves.
- Work closely with scientific partners and customers, which may include forward deployment.
What we're looking for:
- 5+ years of experience in hard science research, AI for science, data science or industry R&D.
- Experience applying ML to drive scientific progress in silico or in situ on in-lab or real-world datasets.
- Demonstrated track record of success in research, whether papers, product releases, open-source contributions, or other artifacts.
- 3+ years of software engineering experience, including familiarity with Python and at least one deep learning framework.
- Experience using the latest coding agents, and opinions about optimal workflow.
- Enthusiasm for experimental organizational design.
- AI-pilled: adopting agents, keen to build a company where agents are front and centre.
Strong candidates may also have:
- PhD in a scientific discipline.
- Contribution to a well-cited work in AI for Science writ large (e.g., ML to predict protein structure, neural weather forecasting systems, reinforcement learning for materials discovery, or causal models for financial risk prediction).
- Hands-on experience using AI agents to automate parts of the scientific workflow in a particular scientific vertical.
- Familiarity with post-training and harnessing foundation models.
- An interest in AI Scientist agents, open-endedness, meta-learning, or recursive self-improvement.
- Strong relationships with leading scientists in a field of scientific research amenable to low-latency and high-throughput experiments.
- Experience building or operating autonomous labs.
Why this is interesting: You’ll shape the core research of a frontier AI lab from the beginning. You’ll work on genuine scientific discovery — training AI scientists that empower humans to flourish — not incremental benchmark-chasing. Small team, high trust, no bureaucracy, and a genuinely technical culture. Our products will be used by the world’s best scientists to power breakthrough research of huge benefit to humanity, while preserving human agency.
Culture: We only select people with low ego, spiky skill profiles, commitment to societal benefit, unusual viewpoints, and a passion for “living in the experiment”. We'll win because we're willing to try things that no incumbent would even think to do, let alone action. We have really good lunch and dinner. Seriously. You've got to try it. We're based in King's Cross, London and believe in the pace and energy of working in person. We’re committed to having the most tasteful, and the weirdest, office of any AI lab: the environment shapes the agents within it. If you believe in our mission and culture, and are qualified and motivated, we encourage you to apply, even if you don’t meet every one of the criteria above. We know that many of the most creative and talented people have had unusual career paths and backgrounds. Building a team with a diversity of thought is mission-critical, for plurality spurs curiosity, invention and collective experimentation.
Member of Technical Staff (AI for Science) employer: Inherent
At Inherent, we pride ourselves on being an exceptional employer, fostering a high-intensity work culture that thrives on collaboration and innovation. Our London headquarters offers a unique environment where employees can engage in groundbreaking AI research while enjoying excellent benefits, including gourmet meals and a commitment to personal growth. We value diverse perspectives and encourage our team members to explore unconventional ideas, making every day an opportunity for meaningful contributions to the future of science.
StudySmarter Expert Advice🤫
We think this is how you could land Member of Technical Staff (AI for Science)
✨Tip Number 1
Network like a pro! Get out there and connect with folks in the AI and science communities. Attend meetups, conferences, or even online webinars. You never know who might have a lead on your dream job at Inherent!
✨Tip Number 2
Show off your skills! Create a portfolio showcasing your projects, research, or any cool experiments you've done. This is your chance to demonstrate how you can contribute to the transformative AI Scientist agents we’re developing.
✨Tip Number 3
Prepare for interviews by diving deep into our mission and values. Understand the challenges we face in AI for Science and think about how your experience aligns with our goals. We love candidates who are genuinely excited about what we do!
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re serious about joining our team at Inherent!
We think you need these skills to ace Member of Technical Staff (AI for Science)
Some tips for your application 🫡
Show Your Passion for AI and Science:When writing your application, let your enthusiasm for AI and science shine through! Share specific examples of how you've contributed to scientific advancements or used AI in your work. We want to see that you're genuinely excited about the role and our mission.
Tailor Your CV and Cover Letter:Make sure to customise your CV and cover letter for this position. Highlight relevant experience, especially in AI for science and software engineering. We love seeing how your unique background aligns with what we're doing at Inherent!
Be Clear and Concise:Keep your application clear and to the point. Use straightforward language and avoid jargon unless it's necessary. We appreciate a well-structured application that makes it easy for us to see your qualifications and fit for the role.
Apply Through Our Website:Don't forget to apply through our website! It’s the best way for us to receive your application and ensures you’re considered for the role. Plus, it shows you’re keen on joining our team at Inherent!
How to prepare for a job interview at Inherent
✨Know Your Stuff
Make sure you brush up on the latest advancements in AI for science and be ready to discuss your past research experiences. Highlight specific projects where you've applied machine learning to drive scientific progress, as this will show your expertise and passion for the field.
✨Show Your Collaborative Spirit
Inherent values teamwork and collaboration, so be prepared to share examples of how you've worked with others in a scientific or technical setting. Discuss any partnerships with external scientists or teams, and how those experiences have shaped your approach to problem-solving.
✨Demonstrate Your Technical Skills
Since the role requires software engineering experience, be ready to talk about your proficiency in Python and any deep learning frameworks you've used. You might even want to bring along a portfolio of your work or contributions to open-source projects to showcase your coding skills.
✨Embrace the Experimental Mindset
Inherent is all about innovation and experimentation, so convey your enthusiasm for trying new things. Share instances where you've taken risks in your research or engineering projects, and how those experiences led to breakthroughs or valuable lessons learned.