Search by speaker

Filter institution








Filter content






Mon, 10. Mar at 13:30
WIAS 405-406
First Optimize, Then Discretize for Scientific Machine Learning
Abstract. This talk provides an infinite-dimensional viewpoint on optimization problems encountered in scientific machine learning and discusses the paradigm first optimize, then discretize for their solution. This amounts to first choosing an appropriate infinite-dimensional algorithm which is subsequently discretized in the tangent space of the neural network ansatz. To illustrate this point, we show that recently proposed state-of-the-art algorithms for scientific machine learning applications can be derived within this framework. Finally, we discuss the crucial aspect of scalability of the resulting algorithms.
Tue, 11. Mar
WIAS HVP5-7 R411 ...
Multi-objective optimization with linear hyperbolic PDE constraints: generalized Nash equilibrium problems and gas market applications
Abstract. The concept of Nash equilibrium is fundamental to a wide range of applications, spanning fields from particle mechanics to micro and macroeconomics. However, much of the existing literature focuses on finite-dimensional settings. In this seminar, we draw on energy markets coupled with transport dynamics to motivate the study of multi-objective optimization problems with hyperbolic PDE constraints. We will explore the core ideas and challenges posed by generalized Nash equilibrium problems, particularly those related to dimensionality and regularity. Finally, we present some recent results on the existence and characterization of equilibria, emphasizing optimality conditions as a framework for understanding such solutions.
Wed, 12. Mar at 13:00
ZIB, Room 2006 (S...
Bounding geometric penalties in Riemannian optimization
Abstract. Riemannian optimization refers to the optimization of functions defined over Riemannian manifolds. Such problems arise when the constraints of Euclidean optimization problems can be viewed as Riemannian manifolds, such as the symmetric positive-definite cone, the sphere, or the set of orthogonal linear layers for a neural network. This Riemannian formulation enables us to leverage the geometric structure of such problems by viewing them as unconstrained problems on a manifold. The convergence rates of Riemannian optimization algorithms often rely on geometric quantities depending on the sectional curvature and the distance between iterates and an optimizer. Numerous previous works bound the latter only by assumption, resulting in incomplete analysis and unquantified rates. In this talk, I will discuss how to remove this limitation for multiple algorithms and as a result quantify their rates of convergence.
Wed, 12. Mar at 16:30
EN 058
How to stab a polytope
Abstract. In this talk, I will present a method for constructing defining inequalities for the set of linear subspaces of fixed dimension that intersect a given polytope. This set can be described as a union of cells in the complement of a Schubert arrangement associated with the polytope, within the Grassmannian. In particular, I will provide a detailed description of the subspaces that intersect a simplicial polytope and explore its connections to other well-studied semialgebraic subsets of the Grassmannian. Based on joint work with Sebastian Seemann.
Tue, 18. Mar at 08:00
online
xSchNet: A self-explainable AI-model for quantum chemistry at orbital level
Wed, 19. Mar at 13:00
ZIB, Room 2006 (S...
Entanglement detection via Frank-Wolfe algorithms
Abstract. Entanglement is the core feature in the quantum world, which plays an important role in many quantum information processes. For low-dimensional and small systems, quantum entanglement can be detected by the positive partial transpose (PPT) criterion sufficiently and necessarily. However, it is tricky to detect entanglement for high-dimensional and/or large multipartite quantum systems, both theoretically and numerically. In this work, with the help of the Frank-Wolfe algorithms, or named conditional gradient algorithms, and their progress in recent years, we develop a high-precision numerical tool that can certify quantum entanglement and quantum separability at the same time. Our method can detect the entanglement of bipartite systems with local dimensions higher than 20. For multipartite systems, our method can characterize entanglement within not only a specific partition, but also the more general k-separability structure, which includes the genuine multipartite entanglement (GME) problem (i.e., 2-separability), up to 10 qubits. Moreover, the overall design of the tool is oriented towards experimentation, which can access the raw data and achieve an operational entanglement witness. Last but not least, our method supports the analysis of noise robustness for arbitrary noise types, not limited to conventional white noise.
Wed, 26. Mar at 13:00
ZIB, Room 2006 (S...
Advancing Climate Strategies - High-Resolution Canopy Height Estimation from Space
Abstract. Reliable and detailed information on forest canopy height is essential for understanding the health and carbon dynamics of forests, which play a pivotal role in climate adaptation and mitigation strategies. Traditional methods of forest monitoring, while foundational, lack the global coverage and are often costly, hindering effective policymaking. Jan Pauls and colleagues have developed a novel framework using satellite data to estimate canopy height on a global scale. The approach combines cutting-edge data preprocessing techniques, a unique loss function to mitigate geolocation inaccuracies, and data filtering from the Shuttle Radar Topography Mission to enhance prediction reliability in mountainous areas. The framework significantly improves upon existing global-scale canopy height maps. By offering a high-resolution (10 m) global canopy height map, the produced map provides critical insights into forest dynamics, aiding in more effective forest management and climate change mitigation efforts. This talk will explore the methods and implications of this work, demonstrating how advancements in Earth observation and machine learning can revolutionize global forest assessments and ecological studies.
Wed, 02. Apr at 16:30
EN 058
When alcoved polytopes add
Abstract. Alcoved polytopes are characterized by the property that all facet normal directions are parallel to the roots e_i - e_j. This fundamental class of polytopes appears in several applications such as optimization, tropical geometry or physics.<br>This talk focuses on the type fan of alcoved polytopes which is the subdivision of the metric cone by combinatorial types of alcoved polytopes. The type fan governs when the Minkowski sum of alcoved polytopes is again alcoved. We prove that the structure of the type fan is governed by its two-dimensional faces and give criteria to study the rays of alcoved simplices.<br>This talk is based on joint work with Nick Early and Leonid Monin.
Wed, 09. Apr at 13:00
ZIB, Room 2006 (S...
Koopman von Neumann mechanics
Wed, 16. Apr at 15:15
WIAS, Erhard-Schm...
Wed, 16. Apr at 16:30
EN 058
D-Finite Functions
Abstract. A function is called D-finite if it satisfies a linear differential equations with polynomial coefficients. Such functions play a role in many different areas, including combinatorics, number theory, and mathematical physics. Computer algebra provides many algorithms for dealing with D-finite functions. Of particular importance are operations that preserve D-finiteness. In the talk, we will give an overview over some of these techniques.
Tue, 22. Apr at 13:00
2.417
Wed, 23. Apr at 11:30
online
Entanglement Detection via Frank-Wolfe Algorithms
Abstract
Wed, 23. Apr at 13:00
ZIB, Room 2006 (S...
Multi-node quantum circuit simulation with decision diagram in HPC
Tue, 29. Apr at 11:15
1.023 (BMS Room, ...
Wed, 30. Apr at 15:15
WIAS, Erhard-Schm...
Wed, 07. May at 11:30
online
A New Approach to Metastability in Multi-Agent Systems
Abstract
Wed, 07. May at 15:15
WIAS, Erhard-Schm...
Tue, 13. May at 11:15
1.023 (BMS Room, ...
Wed, 14. May at 14:00
WIAS, Erhard-Schm...
Wed, 14. May at 15:30
WIAS, Erhard-Schm...
Wed, 21. May at 11:30
online
Demand Strip Packing
Wed, 04. Jun at 11:30
online
On the Expressivity of Neural Networks
Abstract
Wed, 18. Jun at 11:30
online
Convolutional Brenier Generative Networks
Abstract
Wed, 02. Jul at 11:30
online
Informing Opinion Dynamics Models with Online Social Network Data
Abstract
Wed, 02. Jul at 15:15
WIAS, Erhard-Schm...
Wed, 16. Jul at 11:30
online
Data-Adaptive Discretization of Inverse Problems
Abstract