Publisher
source

University of Toronto

Postdoctoral Fellowship in World Models and Reinforcement Learning for Traffic Control at University of Toronto University of Toronto in Canada

Degree Level

Postdoc

Field of study

Computer Science

Funding

The position is a postdoctoral fellowship. No explicit details on stipend amount, tuition, or funding type are provided.

Deadline

Feb 1, 2026

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Country

Canada

University

University of Toronto

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Keywords

Computer Science
Information Technology
Artificial Intelligence
Reinforcement Learning
Traffic Control
Machinelearning
World Models
Postdoctoral Fellowship

About this position

A postdoctoral fellowship is available at the University of Toronto, focusing on world models and reinforcement learning (RL) for traffic signal control. This opportunity is ideal for candidates with a strong publication record in top-tier machine learning and RL venues, and with experience in traffic systems. The research will involve developing and applying advanced AI and machine learning techniques to optimize traffic control, with the goal of improving urban mobility and efficiency.

Responsibilities include publishing research in leading venues, producing high-quality code for research partners, and providing research supervision. The successful candidate will join a vibrant research environment at the University of Toronto, collaborating with experts in machine learning, artificial intelligence, and traffic systems. The position is supervised by Professor Scott Sanner, a recognized leader in the field.

The application deadline is early February 2026, with the fellowship expected to commence no later than September 2026. To apply, candidates should email Professor Sanner with a CV, a link to their public GitHub account, and a brief statement of interest. While the post does not specify funding details, it is a postdoctoral fellowship at a leading Canadian institution, offering an excellent platform for research and career development in AI, RL, and traffic control systems.

Keywords: reinforcement learning, world models, traffic signal control, machine learning, artificial intelligence, postdoctoral fellowship, University of Toronto.

Funding details

The position is a postdoctoral fellowship. No explicit details on stipend amount, tuition, or funding type are provided.

What's required

Applicants must have a strong publication record in top-tier machine learning and reinforcement learning venues, with ideal experience in traffic systems. Candidates should be able to publish in leading research venues, produce high-quality code for research partners, and provide research supervision. No specific degree or language requirements are mentioned, but a PhD in a relevant field is implied.

How to apply

Email [email protected] with your CV, a link to your public GitHub account, and a brief statement of interest.

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