Doctoral (PhD) Student Positions in control and learning theory
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Doctoral (PhD) Student Positions in control and learning theory

Doctoral (PhD) Student Positions in control and learning theory

Zürich Vollzeit 36000 - 60000 € / Jahr (geschätzt) Kein Home Office möglich
Jetzt bewerben
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Auf einen Blick

  • Aufgaben: Join our team to explore control theory and machine learning in automation research.
  • Arbeitgeber: ETH Zurich is a top-tier university known for innovation in science and technology.
  • Mitarbeitervorteile: Enjoy a modern research environment with excellent infrastructure and an inclusive culture.
  • Warum dieser Job: Contribute to impactful projects that address global challenges in energy, transportation, and industry.
  • Gewünschte Qualifikationen: Must have a Master’s degree in control theory, engineering, or applied mathematics; programming skills required.
  • Andere Informationen: Positions open until filled; apply by March 31, 2025, for full consideration.

Das voraussichtliche Gehalt liegt zwischen 36000 - 60000 € pro Jahr.

Doctoral (PhD) Student Positions in Control and Learning Theory

The Automatic Control Laboratory (IfA) in the Department of Information Technology and Electrical Engineering of ETH Zurich is a community of approximately 50 researchers from more than 20 countries working on the development of methods and computational tools for automation, exploring their potential for promoting our social well-being in areas such as energy systems, transportation, and industrial processes. We are looking for two doctoral students to join our international team and contribute to our research efforts in the area of control and automation and their connections to learning methods. The doctoral students will be supervised by Professor John Lygeros in collaboration with Dr. Efe Balta from Inspire AG and Professors Giancarlo Ferrari-Trecate and Daniel Kuhn from EPFL, under the auspices of the NCCR Automation.

Project Background

Control theory is arguably the technological foundation of the unprecedented drive towards automation we have been experiencing over the past decades. As the systems we are interested in automating become larger and more complex, control methods that can deal with uncertainty and partial information have become increasingly important. This has led to a rapprochement between control theory and methods traditionally associated with machine learning. The two doctoral student positions we are looking to fill aim to explore the interplay between these two areas. They will be integrated into the wider team of the Automatic Control Laboratory and the NCCR Automation ecosystem.

We are looking for two motivated doctoral students to contribute to this effort. The envisioned research will address:

  1. Distributionally Robust Markov Decision Processes (MDP): Distributional robustness has been studied for finite state and action MDP, where uncertainty can be encoded by constraints on the entries on the stochastic transition matrix. Compared to a standard MDP, robustification typically gives rise to additional regularization terms. The aim is to extend this approach to different types of uncertainty descriptions, structural properties of the underlying chains, and infinite state-action MDP. (In collaboration with Giancarlo Ferrari-Trecate and Daniel Kuhn at EPFL.)
  2. Policy Gradient for Control Parametrisations: Policy gradient methods are often associated with deep reinforcement learning and policies parametrised by neural networks. The aim is to extend this approach to the design of policies based on control architectures. (In collaboration with Efe Balta from Inspire AG.)

In addition to methodology development, in both cases we envision testing the methods on benchmark problems, robotic testbeds available at the Automatic Control Laboratory, and real-world applications we cater to in our lab, including energy systems, industrial processes, and mobility.

Profile

You are highly motivated and dedicated with a Master’s degree in a field addressing control theory, including electrical or mechanical engineering, or applied mathematics. Programming, modelling, and data analysis skills in Python and machine learning/optimization libraries/toolboxes support you in contributing to our ongoing software development efforts. Your spoken and written English skills help you navigate our international environment.

We Offer

We are offering a multifaceted and challenging position in a modern research environment with excellent infrastructure. The ideal starting date is July 2025 with a planned duration of 4 years.

In line with our values, ETH Zurich encourages an inclusive culture. We promote equality of opportunity, value diversity, and nurture a working and learning environment in which the rights and dignity of all our staff and students are respected. Visit our Equal Opportunities and Diversity website to find out how we ensure a fair and open environment that allows everyone to grow and flourish.

Curious? So are we.

We look forward to receiving your application, including the following documents:

  1. A short statement of research interests and objectives, indicating which project (1-2 above) you are interested in.
  2. A CV including past research work and projects.
  3. One publication/thesis.
  4. Transcripts of all degrees in English.

Please note that we only accept applications submitted through the online application portal. Applications sent via email or postal services will not be considered.

Please submit all information as a single merged PDF file, titled as last name, the number of the project (1 or 2 above) you are primarily interested in, and the date of application. For example, lastname_2_20250228.PDF.

The positions will remain open until filled. Applications received by 31 March 2025 will receive full attention.

Further information about the Automatic Control Lab can be found on our website.

ETH Zurich is one of the world’s leading universities specializing in science and technology. We are renowned for our excellent education, cutting-edge fundamental research, and direct transfer of new knowledge into society. Over 30,000 people from more than 120 countries find our university to be a place that promotes independent thinking and an environment that inspires excellence. Located in the heart of Europe, yet forging connections all over the world, we work together to develop solutions for the global challenges of today and tomorrow.

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Doctoral (PhD) Student Positions in control and learning theory Arbeitgeber: ETH get hired

ETH Zurich is an exceptional employer, offering a vibrant and inclusive research environment where innovation thrives. As part of the Automatic Control Laboratory, doctoral students will benefit from collaboration with leading experts and access to state-of-the-art facilities, fostering both personal and professional growth. With a commitment to diversity and equality, ETH Zurich ensures that every team member can contribute meaningfully while enjoying a supportive community in one of the world's most prestigious universities.
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Kontaktperson:

ETH get hired HR Team

StudySmarter Bewerbungstipps 🤫

So bekommst du den Job: Doctoral (PhD) Student Positions in control and learning theory

Tip Number 1

Familiarize yourself with the latest research in control theory and machine learning. This will not only help you understand the projects better but also allow you to engage in meaningful discussions during interviews.

Tip Number 2

Connect with current or former doctoral students from the Automatic Control Laboratory. They can provide insights into the application process and what it's like to work in the lab, which can be invaluable for your preparation.

Tip Number 3

Showcase your programming skills in Python by working on relevant projects or contributing to open-source initiatives. Highlighting practical experience with machine learning and optimization libraries will make you stand out.

Tip Number 4

Prepare a clear statement of your research interests that aligns with the specific projects mentioned in the job description. Tailoring your interests to the lab's focus areas will demonstrate your commitment and fit for the role.

Diese Fähigkeiten machen dich zur top Bewerber*in für die Stelle: Doctoral (PhD) Student Positions in control and learning theory

Master's degree in Control Theory, Electrical or Mechanical Engineering, or Applied Mathematics
Strong programming skills in Python
Experience with machine learning and optimization libraries/toolboxes
Data analysis skills
Knowledge of control theory and automation methods
Familiarity with Markov Decision Processes (MDP)
Understanding of policy gradient methods and reinforcement learning
Ability to work collaboratively in an international research team
Excellent spoken and written English skills
Problem-solving skills
Research methodology development
Experience with robotic testbeds and real-world applications

Tipps für deine Bewerbung 🫡

Understand the Research Focus: Familiarize yourself with the specific research areas mentioned in the job description, such as Distributionally Robust Markov Decision Processes and Policy Gradient for Control Parametrisations. This will help you tailor your application to show how your interests align with their projects.

Craft a Strong Statement of Research Interests: Write a concise statement that clearly outlines your research interests and objectives. Be sure to specify which project (1 or 2) you are most interested in and explain why it resonates with your background and aspirations.

Prepare Your CV: Ensure your CV highlights relevant past research work, projects, and skills, particularly in control theory, programming, and data analysis. Make it easy to read and focused on your qualifications for the doctoral positions.

Follow Submission Guidelines: When submitting your application, merge all required documents into a single PDF file. Name the file according to the specified format: last name, project number, and date of application. Double-check that everything is included before submission.

Wie du dich auf ein Vorstellungsgespräch bei ETH get hired vorbereitest

Show Your Passion for Control and Learning Theory

Make sure to express your enthusiasm for the fields of control theory and machine learning during the interview. Discuss any relevant projects or research you've been involved in, and how they relate to the work being done at the Automatic Control Laboratory.

Demonstrate Your Technical Skills

Be prepared to discuss your programming and data analysis skills, particularly in Python and any machine learning or optimization libraries you have experience with. You might be asked to solve a technical problem or explain your approach to a specific project.

Prepare Thoughtful Questions

Have a list of insightful questions ready about the research projects, team dynamics, and the overall vision of the Automatic Control Laboratory. This shows your genuine interest in the position and helps you assess if it's the right fit for you.

Highlight Your Collaborative Spirit

Since the positions involve collaboration with various professors and researchers, emphasize your ability to work in a team. Share examples of past collaborative experiences and how you contributed to achieving common goals.

Doctoral (PhD) Student Positions in control and learning theory
ETH get hired
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  • Doctoral (PhD) Student Positions in control and learning theory

    Zürich
    Vollzeit
    36000 - 60000 € / Jahr (geschätzt)
    Jetzt bewerben

    Bewerbungsfrist: 2027-03-21

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    ETH get hired

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