TopicMachine Learning

Engineering

Content Overview
2Total items
1Position
1Seminar

Latest

PositionMachine Learning

Carl Rasmussen, Bernhard Schölkopf

University of Cambridge, Max Planck Institute for Intelligent Systems
University of Cambridge, Max Planck Institute for Intelligent Systems
Feb 9, 2026

The University of Cambridge Machine Learning Group and the Max Planck Institute for Intelligent Systems Empirical Inference Department in Tübingen are two of the world’s leading centres for machine learning research. In 2014, we launched a new and exciting initiative whereby a small group of select PhD candidates are jointly supervised at both institutions. The principal supervisors are Carl Rasmussen, Neil Lawrence, Ferenc Huszar, Jose Miguel Hernandez-Lobato, David Krueger, Adrian Weller and Rika Antonova at Cambridge University, and Bernhard Schölkopf and other research group leaders at the Max Planck Institute in Tübingen. This program is specific for candidates whose research interests are well-matched to both the principal supervisors in Cambridge and the MPI for Intelligent Systems in Tuebingen. The overall duration of the PhD will be four years, with roughly three years spent at one location, and one year spent at the other location, including initial coursework at the University of Cambridge. Successful PhDs will be officially granted by the University of Cambridge.

SeminarMachine LearningRecording

From Sensors to Health Data Analysis

LifeQ
Nov 19, 2021

Talks and panel discussions around the LifeQ process of moving from the embedded engineering of sensors on edge devices to big health data analysis in the cloud.

Engineering coverage

2 items

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Seminar1

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