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Job 1926b04746921252

Post-DocApplications Closed

Prof. Massimiliano Pontil

Unknown Organization
IIT
Apply by Nov 10, 2025

Application deadline

Nov 10, 2025

Job location

Job location

Prof. Massimiliano Pontil

Geocoding

IIT

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Source: legacy

Quick Information

Application Deadline

Nov 10, 2025

Start Date

Flexible

Education Required

See description

Experience Level

Not specified

Job location

Job location

Prof. Massimiliano Pontil

Geocoding

IIT

Geocoding is still running and results will appear soon.

Source: legacy

World Wide map

Job Description

We are seeking a talented and motivated Postdoc to join the Computational Statistics and Machine Learning Research Units at IIT, led by Prof. Massimiliano Pontil. The successful candidate will be engaged in designing novel learning algorithms for numerical simulations of physical systems, with a focus on machine learning for dynamical systems. CSML’s core focus is on ML theory and algorithms, while significant multidisciplinary interactions with other IIT groups apply our research outputs in areas ranging from Atomistic Simulations to Neuroscience and Robotics. We have also recently started international collaboration on Climate Modelling. The group hosts applied mathematicians, computer scientists, physicists, and computer engineers, working together on theory, algorithms and applications. ML techniques, coupled with numerical simulations of physical systems have the potential to revolutionize the way in which science is conducted. Meeting this challenge requires a multi-disciplinary approach in which experts from different disciplines work together.

Requirements

  • Candidates with a strong background in at least one of the following areas will be given priority in hiring: 1) ML for dynamical systems and partial differential equations
  • 2) Computational tools for numerical simulations
  • and a working knowledge of ML tools
  • 3) Numerical optimization and its application to machine learning and deep learning.
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