Age, Biography and Wiki
Bernhard Schölkopf was born on 1 February, 1968, is a German computer scientist. Discover Bernhard Schölkopf's Biography, Age, Height, Physical Stats, Dating/Affairs, Family and career updates. Learn How rich is he in this year and how he spends money? Also learn how he earned most of networth at the age of 56 years old?
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He is a member of famous Computer with the age 56 years old group.
Bernhard Schölkopf Height, Weight & Measurements
At 56 years old, Bernhard Schölkopf height not available right now. We will update Bernhard Schölkopf's Height, weight, Body Measurements, Eye Color, Hair Color, Shoe & Dress size soon as possible.
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He is currently single. He is not dating anyone. We don't have much information about He's past relationship and any previous engaged. According to our Database, He has no children.
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Bernhard Schölkopf Net Worth
His net worth has been growing significantly in 2023-2024. So, how much is Bernhard Schölkopf worth at the age of 56 years old? Bernhard Schölkopf’s income source is mostly from being a successful Computer. He is from . We have estimated Bernhard Schölkopf's net worth, money, salary, income, and assets.
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$1 Million - $5 Million |
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Timeline
Bernhard Schölkopf (born 20 February 1968) is a German computer scientist known for his work in machine learning, especially on kernel methods and causality.
He is a director at the Max Planck Institute for Intelligent Systems in Tübingen, Germany, where he heads the Department of Empirical Inference.
He is also an affiliated professor at ETH Zürich, honorary professor at the University of Tübingen and the Technical University Berlin, and chairman of the European Laboratory for Learning and Intelligent Systems (ELLIS).
Schölkopf developed SVM methods achieving world record performance on the MNIST pattern recognition benchmark at the time.
With the introduction of kernel PCA, Schölkopf and coauthors argued that SVMs are a special case of a much larger class of methods, and all algorithms that can be expressed in terms of dot products can be generalized to a nonlinear setting by means of what is known as reproducing kernels.
Another significant observation was that the data on which the kernel is defined need not be vectorial, as long as the kernel Gram matrix is positive definite.
Both insights together led to the foundation of the field of kernel methods, encompassing SVMs and many other algorithms.
Kernel methods are now textbook knowledge and one of the major machine learning paradigms in research and applications.
Developing kernel PCA, Schölkopf extended it to extract invariant features and to design invariant kernels and showed how to view other major dimensionality reduction methods such as LLE and Isomap as special cases.
In further work with Alex Smola and others, he extended the SVM method to regression and classification with pre-specified sparsity and quantile/support estimation.
He proved a representer theorem implying that SVMs, kernel PCA, and most other kernel algorithms, regularized by a norm in a reproducing kernel Hilbert space, have solutions taking the form of kernel expansions on the training data, thus reducing an infinite dimensional optimization problem to a finite dimensional one.
He co-developed kernel embeddings of distributions methods to represent probability distributions in Hilbert Spaces, with links to Fraunhofer diffraction as well as applications to independence testing.
His thesis, defended in 1997, won the annual award of the German Informatics Association.
In 2001, following positions in Berlin, Cambridge and New York, he founded the Department for Empirical Inference at the Max Planck Institute for Biological Cybernetics, which grew into a leading center for research in machine learning.
Starting in 2005, Schölkopf turned his attention to causal inference.
Causal mechanisms in the world give rise to statistical dependencies as epiphenomena, but only the latter are exploited by popular machine learning algorithms.
Knowledge about causal structures and mechanisms is useful by letting us predict not only future data coming from the same source, but also the effect of interventions in a system, and by facilitating transfer of detected regularities to new situations.
Schölkopf and co-workers addressed (and in certain settings solved) the problem of causal discovery for the two-variable setting and connected causality to Kolmogorov complexity.
Around 2010, Schölkopf began to explore how to use causality for machine learning, exploiting assumptions of independence of mechanisms and invariance.
His early work on causal learning was exposed to a wider machine learning audience during his Posner lecture at NeurIPS 2011, as well as in a keynote talk at ICML 2017.
He assayed how to exploit underlying causal structures in order to make machine learning methods more robust with respect to distribution shifts and systematic errors, the latter leading to the discovery of a number of new exoplanets including K2-18b, which was subsequently found to contain water vapour in its atmosphere, a first for an exoplanet in the habitable zone.
Schölkopf studied mathematics, physics, and philosophy in Tübingen and London.
He was supported by the Studienstiftung and won the Lionel Cooper Memorial Prize for the best M.Sc.
in Mathematics at the University of London.
He completed a Diplom in Physics, and then moved to Bell Labs in New Jersey, where he worked with Vladimir Vapnik, who became co-adviser of his PhD thesis at the TU Berlin (with Stefan Jähnichen).
In 2011, he became founding director at the Max Planck Institute for Intelligent Systems.
With Alex Smola, Schölkopf co-founded the series of Machine Learning Summer Schools.
He also co-founded a Cambridge-Tübingen PhD Programme and the Max Planck-ETH Center for Learning Systems.
In 2016, he co-founded the Cyber Valley research consortium.
He participated in the IEEE Global Initiative on "Ethically Aligned Design".
Schölkopf is co-editor-in-Chief of the Journal of Machine Learning Research, a journal he helped found, being part of a mass resignation of the editorial board of Machine Learning (journal).
He is among the world’s most cited computer scientists.
Alumni of his lab include Ulrike von Luxburg, Carl Rasmussen, Matthias Hein, Arthur Gretton, Gunnar Rätsch, Matthias Bethge, Stefanie Jegelka, Jason Weston, Olivier Bousquet, Olivier Chapelle, Joaquin Quinonero-Candela, and Sebastian Nowozin.
Schölkopf’s awards include the Royal Society Milner Award and, shared with Isabelle Guyon and Vladimir Vapnik, the BBVA Foundation Frontiers of Knowledge Award in the Information and Communication Technologies category.
He was the first scientist working in Europe to receive this award.