At a Glance
- Tasks: Join our team to enhance AI models using cutting-edge machine learning techniques.
- Company: AISI focuses on optimising AI systems for various risk domains with a talented team.
- Benefits: Competitive salaries, mentorship from industry leaders, and opportunities for growth in a dynamic environment.
- Why this job: Work on impactful projects with world-class researchers and develop your skills in a supportive culture.
- Qualifications: PhD or relevant experience in machine learning; strong coding skills in Python are essential.
- Other info: Roles available at all seniority levels, with flexible responsibilities between research and engineering.
The predicted salary is between 65000 - 75000 £ per year.
About the Team The Post-Training Team is dedicated to optimising AI systems to achieve state-of-the-art performance across the various risk domains that AISI focuses on. This is accomplished through a combination of scaffolding, prompting, supervised and RL fine-tuning of the AI models which AISI has access to. One of the main focuses of our evaluation teams is estimating how new models might affect the capabilities of AI systems in specific domains. To improve confidence in our assessments, we make significant effort to enhance the model\’s performance in the domains of interest. For many of our evaluations, this means taking a model we have been given access to and embedding it as part of a wider AI system—for example, in our cybersecurity evaluations, we provide models with access to tools for interacting with the underlying operating system and repeatedly call models to act in such environment. In our evaluations which do not require agentic capabilities, we may use elicitation techniques like fine-tuning and prompt engineering to ensure assessing the model at its full capacity / our assessment does not miss capabilities that might be present in the model. About the Role As a member of this team, you will use cutting-edge machine learning techniques to improve model performance in our domains of interest. The work is split into two sub-teams: Agents and Finetuning. Our Agents sub-team focuses on developing the LLM tools and scaffolding to create highly capable LLM-based agents, while our Finetuning Team builds out finetuning pipelines to improve models on our domains of interest. The Post-Training Team is seeking strong Research Scientists to join the team. The priorities of the team include both research-oriented tasks—such as designing new techniques for scaling inference-time computation or developing methodologies for in-depth analysis of agent behaviour—and engineering-oriented tasks—like implementing new tools for our LLM agents or creating pipelines for supporting and fine-tuning large open-source models. We recognise that some technical staff may prefer to span or alternate between engineering and research responsibilities, and this versatility is something we actively look for in our hires. You’ll receive mentorship and coaching from your manager and the technical leads on your team, and regularly interact with world-class researchers and other exceptional staff, including alumni from Anthropic, DeepMind and OpenAI. In addition to junior roles, we offer Senior, Staff, and Principal Research Engineer positions for candidates with the requisite seniority and experience. Person Specification You may be a good fit if you have some of the following skills, experience and attitudes: Experience conducting empirical machine learning research (e.g. PhD in a technical field and/or papers at top ML conferences), particularly on LLMs. Experience with machine learning engineering, or extensive experience as a software engineer with a strong demonstration of relevant skills/knowledge in the machine learning. An ability to work autonomously and in a self-directed way with high agency, thriving in a constantly changing environment and a steadily growing team, while figuring out the best and most efficient ways to solve a particular problem. Particularly strong candidates also have the following experience: Building LLM agents in industry or open-source collectives, particularly in areas adjacent to the main interests of one of our workstreams e.g. in-IDE coding assistants, research assistants etc. (for our Agents subteam) Leading research on improving and measuring the capabilities of LLM agents (for our Agents sub-team) Building pipelines for fine-tuning (or pretraining LLMs). Finetuning with RL techniques is particularly relevant (for our finetuning subteam). Finetuning or pretraining LLMs in a research context, particularly to achieve increased performance in specific domains (for our finetuning subteam). Salary & Benefits We are hiring individuals at all ranges of seniority and experience within the research unit, and this advert allows you to apply for any of the roles within this range. We will discuss and calibrate with you as part of the process. The full range of salaries available is as follows: L3: £65,000 – £75,000 L4: £85,000 – £95,000 L5: £105,000 – £115,000 L6: £125,000 – £135,000 L7: £145,000 There are a range of pension options available which can be found through the Civil Service website. Selection Process In accordance with the Civil Service Commission rules, the following list contains all selection criteria for the interview process. Required Experience We select based on skills and experience regarding the following areas: Research problem selection Research Engineering Writing code efficiently Python Frontier model architecture knowledge Frontier model training knowledge Model evaluations knowledge AI safety research knowledge Written communication Verbal communication Teamwork Interpersonal skills Tackle challenging problems Learn through coaching Desired Experience We additionally may factor in experience with any of the areas that our work-streams specialise in: Cyber security Chemistry or Biology Safeguards Safety Cases Societal Impacts #J-18808-Ljbffr
Contact Detail:
AI Safety Institute Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Research Scientist - Post-Training
✨Tip Number 1
Familiarise yourself with the latest advancements in machine learning, particularly in LLMs. Being well-versed in current research and methodologies will not only boost your confidence but also demonstrate your passion for the field during discussions.
✨Tip Number 2
Engage with the AI community by attending conferences or webinars related to machine learning and AI safety. Networking with professionals in the industry can provide valuable insights and potentially lead to referrals.
✨Tip Number 3
Showcase your versatility by preparing to discuss both research and engineering projects you've worked on. Highlighting your ability to switch between these roles can make you a more attractive candidate for the diverse responsibilities of the Post-Training Team.
✨Tip Number 4
Be ready to discuss specific examples of how you've tackled complex problems in your previous work. This will help illustrate your problem-solving skills and adaptability, which are crucial for thriving in a constantly changing environment.
We think you need these skills to ace Research Scientist - Post-Training
Some tips for your application 🫡
Tailor Your CV: Make sure your CV highlights relevant experience in empirical machine learning research, particularly with LLMs. Include any publications or projects that demonstrate your expertise in the field.
Craft a Strong Cover Letter: In your cover letter, express your passion for AI and machine learning. Discuss specific experiences that align with the role's requirements, such as developing LLM agents or building fine-tuning pipelines.
Showcase Technical Skills: Clearly outline your technical skills related to Python, model architecture, and evaluations. Mention any experience with RL techniques or AI safety research, as these are highly relevant to the position.
Demonstrate Problem-Solving Ability: Provide examples of how you've tackled challenging problems in your previous roles. Highlight your ability to work autonomously and adapt to changing environments, as this is crucial for the team.
How to prepare for a job interview at AI Safety Institute
✨Showcase Your Research Experience
Be prepared to discuss your previous research projects in detail, especially those related to machine learning and LLMs. Highlight any publications or presentations at top ML conferences, as this will demonstrate your expertise and commitment to the field.
✨Demonstrate Technical Proficiency
Make sure you can talk confidently about your coding skills, particularly in Python. Be ready to discuss your experience with model evaluations and any engineering tasks you've undertaken, as these are crucial for the role.
✨Emphasise Adaptability
The team values versatility, so be prepared to explain how you've successfully navigated between research and engineering tasks in the past. Share examples of how you've thrived in dynamic environments and tackled complex problems.
✨Prepare for Team Dynamics
Since teamwork is a key selection criterion, think of examples that showcase your interpersonal skills and ability to collaborate effectively. Be ready to discuss how you've contributed to team success and learned from others in your previous roles.