Research Scientist/Engineer (Science of Scheming)

Research Scientist/Engineer (Science of Scheming)

Full-Time 80000 - 120000 £ / year (est.) No working from home possible
COL Limited

At a Glance

  • Tasks: Join us to build the 'Science of Scheming' in AI research and development.
  • Company: Apollo Research, a leader in AI risk management and innovative research.
  • Benefits: Competitive salary, unlimited vacation, flexible hours, and professional development budget.
  • Other info: Diverse backgrounds welcomed; no formal experience required.
  • Why this job: Make a real impact on AI safety while collaborating with top experts in the field.
  • Qualifications: Passion for AI, strong analytical skills, and experience in reinforcement learning.

The predicted salary is between 80000 - 120000 £ per year.

Application deadline: We are conducting interviews actively and aim to fill this role as soon as we find someone suitable.

ABOUT THE OPPORTUNITY

We want to develop a “Science of Scheming”. The goal is ambitious and we’re looking for Research Scientists and Research Engineers who are excited to build a new hard science from the ground up.

YOU WILL HAVE THE OPPORTUNITY TO:

  • Collaborate with leading AI developers. We partner with multiple labs, giving you access to a breadth of models that no single AI lab could offer. Through long‑term research collaborations, your work directly impacts how the most capable AI systems are built and deployed.
  • Deeply study the RL dynamics that lead to the emergence of reward‑seeking, evaluation awareness or misaligned preferences. Design and train model organisms, and scale your insights to frontier systems.
  • Work towards “Scaling laws of scheming”. Build the empirical foundations to predict how scheming risks evolve as models scale in capability.
  • Develop novel and ambitious evaluation techniques that have a chance of scaling to highly evaluation aware models.
  • Deep dive into AI cognition. Discover patterns in the reasoning processes of frontier AI systems that no one else has ever observed before.

KEY REQUIREMENTS

A diverse range of skill sets will be required to drive our research agenda forward and we don’t expect any single candidate to fulfill all the characteristics below. That being said, a successful candidate likely displays excellence at one or several of the following:

  • Fast‑paced empirical research: You can design and execute experiments. You always strive to speed up iteration cycles and relentlessly drive progress towards the next empirical milestone.
  • Conceptual insights about scheming: You have deeply thought about the problem of AI scheming and are familiar with all the relevant literature. You are able to turn vague and undefined concepts into concrete and insightful experiment proposals.
  • Software engineering skills: Strong software engineering skills correlate highly with effective execution, even in an era of AI agents. Our entire stack uses Python.
  • Intense interest in AI progress: You always stay up to date on the latest model releases, and continuously tinker with new and creative AI workflows to speed up your work. You are fascinated by AI cognition and actively spend time trying to understand how they think.
  • Experience RL‑training LLMs: You have hands‑on experience in training LLMs via reinforcement learning. You have encountered and resolved countless painful issues from GPU failures to debugging learning instabilities.
  • Strong analytical skills: You bring rigorous quantitative chops from working on fields such as scaling laws in LLMs, statistical physics, dynamical systems, applied statistics etc. You’re comfortable building mathematical models of empirical phenomena and know how to extract signal from noisy data.

We want to emphasize that people who feel they don’t fulfil all of these characteristics but think they would be a good fit for the position, nonetheless, are strongly encouraged to apply. We believe that excellent candidates can come from a variety of backgrounds and are excited to give you opportunities to shine. We don’t require a formal background or industry experience and welcome self‑taught candidates.

BENEFITS

This role offers market competitive salary, equity, and competitive benefits.

  • Salary: 100k - 200k GBP (~135k - 270k USD)
  • Flexible work hours and schedule
  • Unlimited vacation
  • Unlimited sick leave
  • Lunch, dinner, and snacks are provided for all employees on workdays
  • Paid work trips, including staff retreats, business trips, and relevant conferences
  • A yearly $1,000 (USD) professional development budget

LOGISTICS

Time Allocation: Full‑time

Location: The office is in London, and the building is shared with the London Initiative for Safe AI (LISA) offices. This is an in‑person role. In rare situations, we may consider partially remote arrangements on a case‑by‑case basis.

Work Visas: We can sponsor UK visas.

ABOUT APOLLO RESEARCH

The rapid rise in AI capabilities offers tremendous opportunities, but also presents significant risks. Apollo Research is primarily concerned with risks from Loss of Control, i.e. risks coming from the model itself rather than humans misusing the AI. We’re particularly concerned with deceptive alignment / scheming, a phenomenon where a model appears to be aligned but is, in fact, misaligned and capable of evading human oversight.

We work on the detection of scheming (e.g., building evaluations and novel evaluation techniques), the science of scheming (e.g., model organisms and the study of scaling trends), and scheming mitigations (e.g., control). We closely work with multiple frontier AI companies, e.g., to test their models before deployment and collaborate on fundamental research.

At Apollo, we aim for a culture that emphasizes truth‑seeking, being goal‑oriented, giving and receiving constructive feedback, and being friendly and helpful.

ABOUT THE TEAM

The current evals team consists of Jérémy Scheurer, Alex Meinke, Bronson Schoen, Felix Hofstätter, Axel Højmark, Teun van der Weij, Alex Lloyd and Mia Hopman. Alex Meinke coordinates the research agenda with guidance from Marius Hobbhahn, though team members lead individual projects. You will mostly work with the evals team as well as our team of software engineers, but you will likely sometimes interact with the governance team to translate technical knowledge into concrete recommendations.

Equality Statement: Apollo Research is an Equal Opportunity Employer. We value diversity and are committed to providing equal opportunities to all, regardless of age, disability, gender reassignment, marriage and civil partnership, pregnancy and maternity, race, religion or belief, sex, or sexual orientation.

How to apply: Please complete the application form with your CV. The provision of a cover letter is optional but not necessary. Please also feel free to share links to relevant work samples.

About the interview process: Our multi‑stage process includes a screening interview, a take‑home test (approx. 2.5 hours), 3 technical interviews, and a final interview with Marius (CEO). The technical interviews will be closely related to tasks the candidate would do on the job. There are no LeetCode‑style general coding interviews. If you want to prepare for the interviews, we suggest working on hands‑on LLM evals projects (e.g. as suggested in our starter guide); such as building LM agent evaluations in Inspect.

Research Scientist/Engineer (Science of Scheming) employer: COL Limited

Apollo Research is an exceptional employer, offering a dynamic work environment in London where innovation meets collaboration. With competitive salaries, unlimited vacation, and a strong emphasis on professional development, employees are encouraged to grow and thrive while working on groundbreaking AI research. The culture prioritises truth-seeking and constructive feedback, making it a rewarding place for those passionate about advancing the science of scheming in AI.

COL Limited

Contact Details:

COL Limited Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Research Scientist/Engineer (Science of Scheming)

Tip Number 1

Get to know the team! Before your interview, check out the profiles of the people you'll be meeting. Understanding their backgrounds and interests can help you connect during the conversation.

Tip Number 2

Show off your passion for AI! Be ready to discuss the latest trends and breakthroughs in AI. This shows you're not just knowledgeable but genuinely excited about the field.

Tip Number 3

Prepare for hands-on discussions. Since the role involves practical work, think about specific projects you've done that relate to the job. Be ready to dive deep into your experiences!

Tip Number 4

Apply through our website! It’s the best way to ensure your application gets seen. Plus, it shows you’re serious about joining our team at Apollo Research.

We think you need these skills to ace Research Scientist/Engineer (Science of Scheming)

Empirical Research Design
Experiment Execution
Conceptual Insight in AI Scheming
Software Engineering (Python)
Reinforcement Learning (RL) Training of LLMs
Analytical Skills
Quantitative Analysis

Some tips for your application 🫡

Show Your Passion for AI:Let us see your excitement for AI in your application! Share any projects or experiences that highlight your interest in AI progress and scheming. We want to know what makes you tick!

Tailor Your CV:Make sure your CV reflects the skills and experiences that align with our needs. Highlight your empirical research experience, software engineering skills, and any relevant work with reinforcement learning. We love seeing how you fit into our vision!

Be Clear and Concise:When filling out the application form, keep your answers clear and to the point. We appreciate straightforwardness, so avoid jargon unless it’s necessary. Let’s get to the good stuff quickly!

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. We can’t wait to hear from you!

How to prepare for a job interview at COL Limited

Know Your Stuff

Make sure you’re well-versed in the latest research and developments in AI, especially around scheming and reinforcement learning. Brush up on relevant literature and be ready to discuss your insights and how they can contribute to the role.

Show Off Your Skills

Prepare to demonstrate your software engineering skills, particularly in Python. Have examples ready of past projects where you designed experiments or tackled complex problems, as this will showcase your hands-on experience and analytical abilities.

Be Ready for Technical Challenges

Expect technical interviews that focus on real tasks you’d encounter in the role. Practise with hands-on LLM evaluation projects, as suggested in their starter guide, to get comfortable with the types of challenges you might face.

Engage and Collaborate

Since collaboration is key in this role, be prepared to discuss how you’ve worked with others in the past. Highlight your ability to give and receive constructive feedback, and show enthusiasm for working within a team to drive research forward.