Member of Technical Staff (Post Training)

Member of Technical Staff (Post Training)

Full-Time 60000 - 80000 £ / year (est.) No working from home possible
Inherent

At a Glance

  • Tasks: Lead cutting-edge AI research and develop innovative algorithms for scientific breakthroughs.
  • Company: Join a fast-growing AI lab with a mission to revolutionise scientific discovery.
  • Benefits: Competitive salary, collaborative culture, and delicious meals in a vibrant office.
  • Other info: Diverse team culture that values creativity and unconventional career paths.
  • Why this job: Shape the future of AI while working alongside passionate experts in a dynamic environment.
  • Qualifications: 3+ years in deep learning and software engineering; Python proficiency required.

The predicted salary is between 60000 - 80000 £ 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 lead work on post‑training state‑of‑the‑art foundation models for open‑ended agentic capabilities in scientific research. You’ll be involved at every level of the post‑training pipeline: sourcing and creating data, building autocurricula, devising and implementing SFT and RL algorithms, constructing tools and harnesses for foundation model self‑improvement, analysing research results, and using information gained to devise future hypotheses. You will work closely with an experienced technical team of humans, and increasingly alongside the AI scientist collaborators we dogfood.

What you'd do:

  • Design, implement, and tune SFT and RL algorithms to post‑train models that autonomously perform state‑of‑the‑art research.
  • Build the autocurricula, judges, harnesses and eval pipelines that turn open‑ended research tasks into reliable reward signal.
  • Run large‑scale experiments on state‑of‑the‑art hardware and analyse experiments to determine the next hypotheses to test, in collaboration with our AI agents.
  • Close recursive loops so that AI agents drive their own post‑training research.
  • Work closely with colleagues in the Infrastructure and AI for Science teams to optimise hardware and deliver remarkable performance in real scientific domains.

What we’re looking for:

  • 3+ years of deep learning research experience.
  • Experience post‑training large language, vision, video or multi‑modal models.
  • Demonstrated track record of success in deep learning research, whether papers, model releases, open‑source contributions, or other artifacts.
  • 5+ years of software engineering experience, including deep familiarity with Python and at least one deep learning framework (e.g., PyTorch, JAX).
  • Experience using the latest coding agents, and opinions about optimal workflow.
  • Enthusiasm for experimental organisational design.
  • AI‑pilled: adopting agents, keen to build a company where agents are front and centre.

Strong candidates may also have:

  • PhD in mathematics, computer science or hard science discipline.
  • Hands‑on experience training LLMs with RL at scale (GRPO/PPO, DPO, distillation, and variants).
  • Familiarity with distributed and long‑context training infrastructure.
  • A background in autocurricula, open‑endedness, meta‑learning, or recursive self‑improvement.
  • Experience post‑training frontier models at an industry lab (scale, infra, and iteration speed).

Why this is interesting:

  • You’ll shape the core research of a frontier AI lab from the beginning.
  • You’ll work on genuine recursive self‑improvement — training AI scientists that improve the very pipeline that trains them — not incremental benchmark‑chasing.
  • You’ll dogfood your own work: the agents you post‑train accelerate the research that creates them.
  • Small team, high trust, no bureaucracy, and a genuinely technical culture.

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 (Post Training) employer: Inherent

At Inherent, we pride ourselves on being an exceptional employer, fostering a high-intensity work culture that thrives on collaboration and innovation in the heart of London. Our commitment to employee growth is evident through our focus on cutting-edge AI research, where team members are empowered to shape the future of science while enjoying unique benefits like gourmet meals and a vibrant office environment. Join us to be part of a small, dynamic team that values diverse perspectives and encourages experimentation, all while working towards a mission that has a meaningful societal impact.

Inherent

Contact Details:

Inherent Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Member of Technical Staff (Post Training)

Tip Number 1

Network like a pro! Reach out to folks in the AI and tech community, especially those who work at Inherent or similar companies. Attend meetups, webinars, or even just grab a coffee with someone in the field. You never know who might have the inside scoop on job openings!

Tip Number 2

Show off your skills! Create a portfolio or GitHub repository showcasing your projects, especially those related to deep learning and AI. This is your chance to demonstrate your expertise and passion for the field, making you stand out to potential employers.

Tip Number 3

Prepare for interviews by diving deep into the latest trends in AI and deep learning. Brush up on your knowledge of SFT and RL algorithms, and be ready to discuss your past experiences and how they relate to the role. Confidence and preparation go hand in hand!

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 genuinely interested in being part of our mission at Inherent. Let’s make some AI magic happen together!

We think you need these skills to ace Member of Technical Staff (Post Training)

Deep Learning Research
Post-Training Algorithms
SFT and RL Algorithms
Python Programming
PyTorch
JAX
Large-Scale Experimentation

Some tips for your application 🫡

Show Your Passion:When writing your application, let your enthusiasm for AI and scientific research shine through. We want to see that you’re genuinely excited about the work we do at Inherent and how you can contribute to our mission.

Tailor Your CV:Make sure your CV highlights relevant experience in deep learning and software engineering. We’re looking for specific skills, so don’t be shy about showcasing your projects, papers, or any cool contributions you've made in the field.

Be Clear and Concise:Keep your application straightforward and to the point. We appreciate clarity, so avoid jargon unless it’s necessary. Make it easy for us to see why you’re a great fit for the role!

Apply Through Our Website:We encourage you to apply directly 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!

How to prepare for a job interview at Inherent

Know Your Stuff

Make sure you brush up on your deep learning research experience and be ready to discuss specific projects you've worked on. Highlight your familiarity with SFT and RL algorithms, as well as any hands-on experience with large language models. This will show that you're not just a theoretical candidate but someone who can contribute right away.

Show Your Passion for AI

Inherent is all about pushing the boundaries of AI, so let your enthusiasm shine through! Talk about why you’re excited about recursive self-improvement and how you envision AI transforming scientific research. This will help you connect with the team’s mission and demonstrate that you’re a good cultural fit.

Prepare for Technical Questions

Expect some challenging technical questions during the interview. Brush up on your Python skills and be prepared to discuss your experience with deep learning frameworks like PyTorch or JAX. You might even be asked to solve a problem on the spot, so practice coding under pressure to keep your cool.

Ask Insightful Questions

Interviews are a two-way street, so come prepared with thoughtful questions about the role and the company. Ask about the team dynamics, the types of projects you'll be working on, or how they approach experimental organisational design. This shows that you’re genuinely interested and have done your homework.