Research Assistant in Dexterous Robot Learning
Research Assistant in Dexterous Robot Learning

Research Assistant in Dexterous Robot Learning

London Full-Time 36000 - 60000 £ / year (est.) No home office possible
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At a Glance

  • Tasks: Join a team to develop innovative robot designs and control algorithms.
  • Company: Imperial College London is a top-ranked global university known for cutting-edge research.
  • Benefits: Enjoy a competitive salary, 38 days off, and extensive training opportunities.
  • Why this job: Be part of groundbreaking research in robotics with real-world impact and co-author papers.
  • Qualifications: Master's degree in robotics or machine learning and strong Python programming skills required.
  • Other info: Fully funded position until March 2028 with hands-on experience in a dynamic environment.

The predicted salary is between 36000 - 60000 £ per year.

The Robot Learning Lab in the Department of Computing at Imperial College London is seeking a talented Research Assistant (pre-doc) for an ambitious new project on dexterous robot learning. In this project, we will be studying co-design of robot hardware and control for robot manipulation. Co-design aims to simultaneously optimise the robot hand design (the number of fingers, the shapes of the fingers, and the positions of tactile sensors), and the control policy for that hand, when given a particular task or set of tasks. Through this, we aim to develop a framework that can automatically generate creative new robot hands with dexterous control policies, for human-level or even super-human performance on real-world tasks.

You will be collaborating with a small team at Imperial College led by Dr Edward Johns, as well as a larger team across the UK as part of the ARIA-funded Robot Dexterity programme. This position will be fully funded until March 2028.

You will be assisting PhD students and a post-doc in developing both the algorithms for robot co-design, and the real-world evaluation of the designs that emerge, as well as providing your own research contributions. Your specific role will vary depending on project needs, such as assisting the team with evaluating evolutionary algorithms for exploring creative new hand designs, or reinforcement learning for policy optimisation, all within a huge GPU-based simulation with thousands of robots learning synchronously in parallel.

In particular, you will take a leading role in creating the simulation environment, 3D printing promising robot hand designs, and setting up a robot "arm farm" at Imperial College for evaluating these designs and fine-tuning policies in the real world. You will also help to manage the project’s codebase and assist with the delivery of project milestones. We expect novel algorithms and results to come from this project, and so you will have opportunities to co-author papers with the other team members.

You must have a master’s degree in a relevant area, with content covering robotics and machine learning, and excellent programming skills in Python. You should have research experience in either robotics or machine learning. You should also have either hands-on experience working with physical robots, or strong enthusiasm to gain this experience.

You will have the opportunity to continue your career at a world-leading institution. Imperial College is consistently in the top 10 world university rankings with the Department of Computing ranked top of the 2021 UK REF assessment. You will receive a sector-leading salary and remuneration package (including 38 days off a year) and a comprehensive early career development support package including 10 training and development days.

Research Assistant in Dexterous Robot Learning employer: Imperial College London

Imperial College London is an exceptional employer, offering a vibrant work culture that fosters innovation and collaboration in the field of robotics. As a Research Assistant in Dexterous Robot Learning, you will benefit from a sector-leading salary, generous leave entitlements, and extensive professional development opportunities, all while contributing to groundbreaking research at a globally renowned institution located in the heart of London.
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Contact Detail:

Imperial College London Recruiting Team

StudySmarter Expert Advice 🤫

We think this is how you could land Research Assistant in Dexterous Robot Learning

✨Tip Number 1

Familiarise yourself with the latest advancements in dexterous robot learning and co-design methodologies. This will not only help you understand the project better but also allow you to engage in meaningful conversations during interviews.

✨Tip Number 2

Connect with current or former members of the Robot Learning Lab at Imperial College London through professional networking platforms like LinkedIn. They can provide insights into the team dynamics and expectations, which can be invaluable for your application.

✨Tip Number 3

Showcase any relevant projects or research you've done in robotics or machine learning on your online portfolio or GitHub. Highlighting your practical experience with algorithms or physical robots can set you apart from other candidates.

✨Tip Number 4

Prepare to discuss your programming skills in Python and any specific libraries or frameworks you've used in your previous work. Being able to articulate your technical expertise clearly will demonstrate your readiness for the role.

We think you need these skills to ace Research Assistant in Dexterous Robot Learning

Robotics
Machine Learning
Programming in Python
Algorithm Development
3D Printing
Simulation Environment Creation
Reinforcement Learning
Evolutionary Algorithms
Project Management
Team Collaboration
Hands-on Experience with Physical Robots
Data Analysis
Technical Writing
Problem-Solving Skills
Adaptability

Some tips for your application 🫡

Understand the Role: Read the job description thoroughly to grasp the specific requirements and responsibilities of the Research Assistant position. Highlight key skills such as programming in Python, robotics, and machine learning in your application.

Tailor Your CV: Customise your CV to reflect your relevant experience and skills that align with the job. Emphasise any research experience in robotics or machine learning, and include specific projects or achievements that demonstrate your capabilities.

Craft a Compelling Cover Letter: Write a cover letter that showcases your passion for robotics and machine learning. Mention why you are interested in this specific project at Imperial College London and how your background makes you a suitable candidate.

Highlight Collaborative Skills: Since the role involves working with a team, emphasise your ability to collaborate effectively. Provide examples of past teamwork experiences, especially in research settings, to demonstrate your interpersonal skills.

How to prepare for a job interview at Imperial College London

✨Showcase Your Technical Skills

Make sure to highlight your programming skills in Python and any relevant experience you have with robotics or machine learning. Be prepared to discuss specific projects or algorithms you've worked on, as this will demonstrate your technical competence.

✨Understand the Project Goals

Familiarise yourself with the concept of co-design in robot hardware and control. Being able to articulate how you can contribute to the project’s aim of developing creative new robot hands will impress the interviewers.

✨Demonstrate Team Collaboration

Since you'll be working closely with PhD students and post-docs, emphasise your ability to collaborate effectively in a team setting. Share examples of past teamwork experiences, especially in research environments.

✨Prepare Questions for the Interviewers

Have thoughtful questions ready about the research being conducted by Dr Edward Johns and the overall goals of the Robot Learning Lab. This shows your genuine interest in the position and helps you assess if it's the right fit for you.

Research Assistant in Dexterous Robot Learning
Imperial College London
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