Job
opportunities
Having been recently
awarded an ERC Starting grant, I will be hiring several PhD students
and postdocs in the next few years. The currently active calls are
listed below.
1 PhD student (fall 2025)
I am seeking one PhD
student to work on various areas of learning theory starting from
October
2025. These are fully funded full-time research positions involving limited
teaching duties and no coursework, with an expected length of 4 years (3
years + 1 year of optional extension that is typically required for a
good thesis). The successful candidates will work under my direct
supervision at the AI and ML research group at UPF, with the
possibility to collaborate with other researchers in the group and more
broadly at UPF.
The
research project broadly considers topics in learning
theory, where "theory" is to be understood from the perspective of
computer science and statistics.
Some typical goals of theoretical work are designing learning
algorithms and proving formal guarantees about their performance, or
characterizing the hardness of learning problems. The present project
aims to develop new tools for statistical analysis of modern machine
learning systems from the perspective of information
theory, convex analysis, and regret analysis. The
project is a natural continuation of my recent research on
generalization bounds, so glancing at my recent
papers on this topic should give an idea of the nature of the work
that you would be involved in.
Ideal candidates should have a strong background in mathematics in that
they should be able to formalize problems and reason rigorously in a
mathematical framework. Some familiarity with machine learning is
expected and knowledge of theory in any related
domain is a big advantage, but all of these are less important than
having a good affinity for mathematics. It's important to note that
formal training in math is not required, but, to put it somewhat
bluntly, you are not going to have a great time if you haven't ever
enjoyed proving a theorem. Good communication skills in both written
and spoken English are also important. Coding skills are not essential,
but some background in computer science or other engineering
disciplines is
useful.
This year, I will be mainly recruiting via the ELLIS PhD program,
so in case you are interested in applying, please submit your materials
through the ELLIS portal linked above and mark me as a potential
advisor. Additionally, if you want to make sure that I'm not losing
sight of your application, please feel free to write me an email at gergely.neu+phd@gmail.com
with the subject line [PhD application - YOUR LAST NAME], including a
brief motivation letter that explains why you would be especially
interested in working with me. Ideally, such a letter would explain how
your interests fit
into the theme of this project and my research in general. Not sending
an email will of course not disqualify you from the position (as the
main tool I'll be using is the ELLIS portal), but will help me
understand your motivations and the relevance of your background more
clearly.
There
are also some formal requirements that are required for enrolling in
the PhD program at the department. Having these ready is not necessary
at the time of application, but they should be available by the
starting date:
- MSc. degree in Mathematics, Computer Science,
Electrical Engineering, Physics, or any related discipline.
- English language certificate (e.g., TOEFL).
The deadline for application is November 15, 2024.
About the environment: Universitat
Pompeu Fabra is a public university
in Barcelona, Spain. It is frequently listed as one of the best
universities in the country and the best young universities in the
world, and is often praised for its excellent research culture and
international appeal. The AI
and ML group is part of the Department
of
Information and Communication Technologies, which is located in the
pleasant Poble Nou district of Barcelona. We also maintain strong ties
with the Statistics
group at the Department of
Economics and Business.
Please do not hesitate to reach out to me at the address gergely.neu+phd@gmail.com
in case you have any questions.
1 postdoc (fall 2023) - closed
I am seeking one postdoctoral research fellow to work on various areas of learning theory starting from
October
2023. These are fully funded full-time research positions involving no
mandatory
teaching duties or coursework, with an expected length of 2 years (1
initial year + possibility of extension for 1 additional year). The successful candidates will work under my direct
supervision at the AI and ML research group at UPF, with the
possibility to collaborate with other researchers in the group and more
broadly at UPF.
The
research project broadly considers topics in learning
theory, where "theory" is to be understood from the perspective of
computer science and statistics.
Some typical goals of theoretical work are designing learning
algorithms and proving formal guarantees about their performance, or
characterizing the hardness of learning problems. The present project
aims to gain a deeper understanding of the challenges posed by
large-scale reinforcement learning by identifying and exploiting
structural properties of Markov decision processes that make
large-scale learning statistically and computationally feasible. The
project is a natural continuation of my recent research on
reinforcement learning, so glancing at my recent
papers should give an idea of the nature of the work that you would
be involved in.
Ideal candidates should have a track record in performing
top-quality research in machine learning theory, compatible with the
standards of venues like COLT, ALT, ICML, NeurIPS, ICLR, or AISTATS.
Specifically, demonstrated past experience with reinforcement learning
theory, bandit problems, and online learning theory will be evaluated
very positively. Good communication skills in both written
and spoken English are also important.
Candidates should send the following material to the email address gergely.neu+postdoc@gmail.com
with the subject line [Postdoc application - YOUR LAST NAME]:
- An up-to-date CV, including list of publications.
- Contact details of at least two references.
- A motivation letter explaining your research
interests. (Hint: It is a good idea to explain how your interests fit
into the theme of this project and my research in general.)
- Links to 1-2 papers that you are most proud of from your previous work.
- Any other documents you feel are relevant for your
application.
For full consideration, please apply before July 20, 2023.
Don't be discouraged though if you are seeing this ad later than that,
I might very well be interested in your application if you are some (or
several) days late. I expect to be able to sort through the
applications and start interviewing shortlisted candidates in late July.
About the environment: Universitat
Pompeu Fabra is a public university
in Barcelona, Spain. It is frequently listed as one of the best
universities in the country and the best young universities in the
world, and is often praised for its excellent research culture and
international appeal. The AI
and ML group is part of the Department
of
Information and Communication Technologies, which is located in the
pleasant Poble Nou district of Barcelona. We also maintain strong ties
with the Statistics
group at the Department of
Economics and Business.
Please do not hesitate to reach out to me at the address gergely.neu+phd@gmail.com
in case you have any questions.
1 PhD student (fall 2023) - closed
I am seeking one PhD
student to work on various areas of learning theory starting from
October
2023. These are fully funded full-time research positions involving no
mandatory
teaching duties or coursework, with an expected length of 4 years (3
years + 1 year of optional extension that is typically required for a
good thesis). The successful candidates will work under my direct
supervision at the AI and ML research group at UPF, with the
possibility to collaborate with other researchers in the group and more
broadly at UPF.
The
research project broadly considers topics in learning
theory, where "theory" is to be understood from the perspective of
computer science and statistics.
Some typical goals of theoretical work are designing learning
algorithms and proving formal guarantees about their performance, or
characterizing the hardness of learning problems. The present project
aims to gain a deeper understanding of the generalization error of
statistical learning algorithms from the perspective of information
theory, convex analysis, and regret analysis. The
project is a natural continuation of my recent research on
generalization bounds, so glancing at my recent
papers on this topic should give an idea of the nature of the work
that you would be involved in.
Ideal candidates should have a strong background in mathematics in that
they should be able to formalize problems and reason rigorously in a
mathematical framework. Some familiarity with machine learning is
expected and knowledge of theory in any related
domain is a big advantage, but all of these are less important than
having a good affinity for mathematics. It's important to note that
formal training in math is not required, but, to put it somewhat
bluntly, you are not going to have a great time if you haven't ever
enjoyed proving a theorem. Good communication skills in both written
and spoken English are also important. Coding skills are not essential,
but some background in computer science or other engineering
disciplines is
useful.
Candidates should send the following material to the email address gergely.neu+phd@gmail.com
with the subject line [PhD application - YOUR LAST NAME]:
- An up-to-date CV.
- Transcripts from previous studies.
- Contact details of at least two references.
- A motivation letter explaining your research
interests. (Hint: It is a good idea to explain how your interests fit
into the theme of this project and my research in general.)
- A sample of your technical writing. (E.g., BSc. or
MSc. thesis, a preprint, or a published paper.)
- Any other documents you feel are relevant for your
application.
There
are also some formal requirements that are required for enrolling in
the PhD program at the department. Having these ready is not necessary
at the time of application, but they should be available by the
starting date:
- MSc. degree in Mathematics, Computer Science,
Electrical Engineering, Physics, or any related discipline.
- English language certificate (e.g., TOEFL).
The deadline for application is May
26 June 9, 2023. I expect to be able to sort through the
applications and start interviewing shortlisted candidates by mid-June.
About the environment: Universitat
Pompeu Fabra is a public university
in Barcelona, Spain. It is frequently listed as one of the best
universities in the country and the best young universities in the
world, and is often praised for its excellent research culture and
international appeal. The AI
and ML group is part of the Department
of
Information and Communication Technologies, which is located in the
pleasant Poble Nou district of Barcelona. We also maintain strong ties
with the Statistics
group at the Department of
Economics and Business.
Please do not hesitate to reach out to me at the address gergely.neu+phd@gmail.com
in case you have any questions.
2 PhD students (fall 2021) - closed
I am seeking two PhD
students to work on reinforcement learning theory starting from October
2021. These are fully funded full-time research positions involving no
mandatory
teaching duties or coursework, with an expected length of 4 years (3
years + 1 year of optional extension that is typically required for a
good thesis). The successful candidates will work under my direct
supervision at the AI and ML research group at UPF, with the
possibility to collaborate with other researchers in the group and more
broadly at UPF.
The research project broadly considers topics in reinforcement learning
theory, where "theory" is to be understood from the perspective of
computer science and statistics.
Some typical goals of theoretical work are designing learning
algorithms and proving formal guarantees about their performance, or
characterizing the hardness of learning problems. The present project
aims to gain a deeper understanding of the challenges posed by
large-scale reinforcement learning by identifying and exploiting
structural properties of Markov decision processes that make
large-scale learning statistically and computationally feasible. The
project is a natural continuation of my recent research on
reinforcement learning, so glancing at my recent
papers should give an idea of the nature of the work that you would
be involved in.
Ideal candidates should have a strong background in mathematics in that
they should be able to formalize problems and reason rigorously in a
mathematical framework. Some familiarity with machine learning and
reinforcement learning is expected and knowledge of theory in these
domains is a big advantage, but all of these are less important than
having a good affinity for mathematics. It's important to note that
formal training in math is not required, but, to put it somewhat
bluntly, you are not going to have a great time if you haven't ever
enjoyed proving a theorem. Good communication skills in both written
and spoken English are also important. Coding skills are not essential,
but some background in computer science or other engineering
disciplines is
useful.
Candidates should send the following material to the email address gergely.neu+phd@gmail.com
with the subject line [PhD application - YOUR LAST NAME]:
- An up-to-date CV.
- Transcripts from previous studies.
- Contact details of at least two references.
- A motivation letter explaining your research
interests. (Hint: It is a good idea to explain how your interests fit
into the theme of this project and my research in general.)
- A sample of your technical writing. (E.g., BSc. or
MSc. thesis, a preprint, or a published paper.)
- Any other documents you feel are relevant for your
application.
There
are also some formal requirements that are required for enrolling in
the PhD program at the department. Having these ready is not necessary
at the time of application, but they should be available by the
starting date:
- MSc. degree in Mathematics, Computer Science,
Electrical Engineering, Physics, or any related discipline.
- English language certificate (e.g., TOEFL).
The deadline for application is February
12, 2021. I expect to be able to sort through the applications
and start interviewing shortlisted candidates by mid-March.
Please let me know ASAP in case you have already applied to the ELLIS PhD program—I
have recently been appointed as an ELLIS Scholar and will be
considering applications as an advisor from this program as well.
About the environment: Universitat
Pompeu Fabra is a public university
in Barcelona, Spain. It is frequently listed as one of the best
universities in the country and the best young universities in the
world, and is often praised for its excellent research culture and
international appeal. The AI
and ML group is part of the Department
of
Information and Communication Technologies, which is located in the
pleasant Poble Nou district of Barcelona. We also maintain strong ties
with the Statistics
group at the Department of
Economics and Business.
Please do not hesitate to reach out to me at the address gergely.neu+phd@gmail.com
in case you have any questions.
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