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Fashionable Modelling with Flux

Fashionable Modelling with Flux

1 November 2018
Mike Innes
Elliot Saba
Keno Fischer
Dhairya Gandhi
Marco Concetto Rudilosso
Neethu Mariya Joy
Tejan Karmali
Avik Pal
Viral B. Shah
    AI4CE
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Papers citing "Fashionable Modelling with Flux"

50 / 59 papers shown
Title
What You See is Not What You Get: Neural Partial Differential Equations
  and The Illusion of Learning
What You See is Not What You Get: Neural Partial Differential Equations and The Illusion of Learning
Arvind Mohan
Ashesh Chattopadhyay
Jonah Miller
92
0
0
22 Nov 2024
Dirac--Bianconi Graph Neural Networks -- Enabling Non-Diffusive
  Long-Range Graph Predictions
Dirac--Bianconi Graph Neural Networks -- Enabling Non-Diffusive Long-Range Graph Predictions
Christian Nauck
R. Gorantla
M. Lindner
Konstantin Schurholt
Antonia S. J. S. Mey
Frank Hellmann
AI4CE
42
2
0
17 Jul 2024
ProDAG: Projection-Induced Variational Inference for Directed Acyclic Graphs
ProDAG: Projection-Induced Variational Inference for Directed Acyclic Graphs
Ryan Thompson
Edwin V. Bonilla
Robert Kohn
40
0
0
24 May 2024
Dual Lagrangian Learning for Conic Optimization
Dual Lagrangian Learning for Conic Optimization
Mathieu Tanneau
Pascal Van Hentenryck
19
4
0
05 Feb 2024
Deep Learning for Koopman-based Dynamic Movement Primitives
Deep Learning for Koopman-based Dynamic Movement Primitives
Tyler Han
Carl Glen Henshaw
28
0
0
06 Dec 2023
Taming Waves: A Physically-Interpretable Machine Learning Framework for
  Realizable Control of Wave Dynamics
Taming Waves: A Physically-Interpretable Machine Learning Framework for Realizable Control of Wave Dynamics
Tristan A. Shah
Feruza A. Amirkulova
Stas Tiomkin
AI4CE
17
0
0
27 Nov 2023
Learning Optimal Power Flow Value Functions with Input-Convex Neural
  Networks
Learning Optimal Power Flow Value Functions with Input-Convex Neural Networks
Andrew Rosemberg
Mathieu Tanneau
Bruno Fanzeres
Joaquim Garcia
Pascal Van Hentenryck
15
3
0
06 Oct 2023
Endogenous Macrodynamics in Algorithmic Recourse
Endogenous Macrodynamics in Algorithmic Recourse
Patrick Altmeyer
Giovan Angela
Aleksander Buszydlik
Karol Dobiczek
A. V. Deursen
Cynthia C. S. Liem
19
7
0
16 Aug 2023
Kernelised Normalising Flows
Kernelised Normalising Flows
Eshant English
Matthias Kirchler
C. Lippert
TPM
31
0
0
27 Jul 2023
Effective Latent Differential Equation Models via Attention and Multiple
  Shooting
Effective Latent Differential Equation Models via Attention and Multiple Shooting
German Abrevaya
Mahta Ramezanian-Panahi
Jean-Christophe Gagnon-Audet
Pablo Polosecki
Irina Rish
S. Dawson
Guillermo Cecchi
G. Dumas
MedIm
18
1
0
11 Jul 2023
Stabilized Neural Differential Equations for Learning Dynamics with
  Explicit Constraints
Stabilized Neural Differential Equations for Learning Dynamics with Explicit Constraints
Alistair J R White
Niki Kilbertus
Maximilian Gelbrecht
Niklas Boers
20
6
0
16 Jun 2023
Chemellia: An Ecosystem for Atomistic Scientific Machine Learning
Chemellia: An Ecosystem for Atomistic Scientific Machine Learning
Anant Thazhemadam
Dhairya Gandhi
V. Viswanathan
Rachel C. Kurchin
13
0
0
19 May 2023
Random Function Descent
Random Function Descent
Felix Benning
L. Döring
11
0
0
02 May 2023
Learned multiphysics inversion with differentiable programming and
  machine learning
Learned multiphysics inversion with differentiable programming and machine learning
M. Louboutin
Ziyi Yin
Rafael Orozco
Thomas J. Grady
Ali Siahkoohi
G. Rizzuti
Philipp A. Witte
O. Møyner
Gerard Gorman
Felix J. Herrmann
AI4CE
26
10
0
12 Apr 2023
A Physics-Informed Machine Learning for Electricity Markets: A NYISO
  Case Study
A Physics-Informed Machine Learning for Electricity Markets: A NYISO Case Study
Robert Ferrando
Laurent Pagnier
R. Mieth
Zhirui Liang
Y. Dvorkin
D. Bienstock
Michael Chertkov
24
7
0
31 Mar 2023
Kernel interpolation of acoustic transfer functions with adaptive kernel
  for directed and residual reverberations
Kernel interpolation of acoustic transfer functions with adaptive kernel for directed and residual reverberations
Juliano G. C. Ribeiro
Shoichi Koyama
Hiroshi Saruwatari
12
12
0
07 Mar 2023
Analyzing the Performance of Deep Encoder-Decoder Networks as Surrogates
  for a Diffusion Equation
Analyzing the Performance of Deep Encoder-Decoder Networks as Surrogates for a Diffusion Equation
J. Q. Toledo-Marín
J. Glazier
Geoffrey C. Fox
14
4
0
07 Feb 2023
The Contextual Lasso: Sparse Linear Models via Deep Neural Networks
The Contextual Lasso: Sparse Linear Models via Deep Neural Networks
Ryan Thompson
Amir Dezfouli
Robert Kohn
29
4
0
02 Feb 2023
MLPGradientFlow: going with the flow of multilayer perceptrons (and
  finding minima fast and accurately)
MLPGradientFlow: going with the flow of multilayer perceptrons (and finding minima fast and accurately)
Johanni Brea
Flavio Martinelli
Berfin Simsek
W. Gerstner
21
3
0
25 Jan 2023
Global Performance Guarantees for Neural Network Models of AC Power Flow
Global Performance Guarantees for Neural Network Models of AC Power Flow
Samuel C. Chevalier
Spyros Chatzivasileiadis
8
6
0
14 Nov 2022
Bridging HPC Communities through the Julia Programming Language
Bridging HPC Communities through the Julia Programming Language
Valentin Churavy
William F. Godoy
Carsten Bauer
Hendrik Ranocha
Michael Schlottke-Lakemper
...
Mosè Giordano
E. Schnetter
Samuel Omlin
Jeffrey S. Vetter
Alan Edelman
23
10
0
04 Nov 2022
Learning Modular Simulations for Homogeneous Systems
Learning Modular Simulations for Homogeneous Systems
Jayesh K. Gupta
Sai H. Vemprala
Ashish Kapoor
14
6
0
28 Oct 2022
Calibration tests beyond classification
Calibration tests beyond classification
David Widmann
Fredrik Lindsten
Dave Zachariah
25
17
0
21 Oct 2022
Training neural network ensembles via trajectory sampling
Training neural network ensembles via trajectory sampling
Jamie F. Mair
Dominic C. Rose
J. P. Garrahan
11
2
0
22 Sep 2022
Recursive Neural Programs: Variational Learning of Image Grammars and
  Part-Whole Hierarchies
Recursive Neural Programs: Variational Learning of Image Grammars and Part-Whole Hierarchies
Ares Fisher
Rajesh P. N. Rao
GAN
DRL
13
2
0
16 Jun 2022
Fast Conditional Network Compression Using Bayesian HyperNetworks
Fast Conditional Network Compression Using Bayesian HyperNetworks
Phuoc Nguyen
T. Tran
Ky Le
Sunil R. Gupta
Santu Rana
Dang Nguyen
Trong Nguyen
S. Ryan
Svetha Venkatesh
BDL
28
6
0
13 May 2022
Machines of finite depth: towards a formalization of neural networks
Machines of finite depth: towards a formalization of neural networks
Pietro Vertechi
M. Bergomi
PINN
16
2
0
27 Apr 2022
Machine Learning and Deep Learning -- A review for Ecologists
Machine Learning and Deep Learning -- A review for Ecologists
Maximilian Pichler
F. Hartig
30
124
0
11 Apr 2022
STEADY: Simultaneous State Estimation and Dynamics Learning from
  Indirect Observations
STEADY: Simultaneous State Estimation and Dynamics Learning from Indirect Observations
Jiayi Wei
Jarrett Holtz
Işıl Dillig
Joydeep Biswas
24
4
0
02 Mar 2022
Deep learning and differential equations for modeling changes in
  individual-level latent dynamics between observation periods
Deep learning and differential equations for modeling changes in individual-level latent dynamics between observation periods
G. Köber
R. Kalisch
Lara Puhlmann
A. Chmitorz
Anita Schick
Harald Binder
16
1
0
15 Feb 2022
SAFE-OCC: A Novelty Detection Framework for Convolutional Neural Network
  Sensors and its Application in Process Control
SAFE-OCC: A Novelty Detection Framework for Convolutional Neural Network Sensors and its Application in Process Control
J. Pulsipher
Luke D. J. Coutinho
Tyler A. Soderstrom
Victor M. Zavala
HAI
12
7
0
03 Feb 2022
Machine Learning Kreuzer--Skarke Calabi--Yau Threefolds
Machine Learning Kreuzer--Skarke Calabi--Yau Threefolds
Per Berglund
Ben Campbell
Vishnu Jejjala
42
20
0
16 Dec 2021
Multicriteria interpretability driven Deep Learning
Multicriteria interpretability driven Deep Learning
M. Repetto
16
13
0
28 Nov 2021
Equinox: neural networks in JAX via callable PyTrees and filtered
  transformations
Equinox: neural networks in JAX via callable PyTrees and filtered transformations
Patrick Kidger
Cristian Garcia
11
115
0
30 Oct 2021
Physics informed machine learning with Smoothed Particle Hydrodynamics:
  Hierarchy of reduced Lagrangian models of turbulence
Physics informed machine learning with Smoothed Particle Hydrodynamics: Hierarchy of reduced Lagrangian models of turbulence
M. Woodward
Yifeng Tian
Criston Hyett
Chris L. Fryer
Daniel Livescu
Mikhail Stepanov
Michael Chertkov
AI4CE
11
7
0
25 Oct 2021
Multiple shooting for training neural differential equations on time
  series
Multiple shooting for training neural differential equations on time series
Evren Mert Turan
J. Jäschke
AI4TS
32
23
0
14 Sep 2021
Low-memory stochastic backpropagation with multi-channel randomized
  trace estimation
Low-memory stochastic backpropagation with multi-channel randomized trace estimation
M. Louboutin
Ali Siahkoohi
Rongrong Wang
Felix J. Herrmann
14
0
0
13 Jun 2021
Parameter Inference with Bifurcation Diagrams
Parameter Inference with Bifurcation Diagrams
Gregory Szép
Neil Dalchau
A. Csikász-Nagy
11
4
0
08 Jun 2021
Optimal Transport Based Refinement of Physics-Informed Neural Networks
Optimal Transport Based Refinement of Physics-Informed Neural Networks
Vaishnav Tadiparthi
R. Bhattacharya
OT
8
2
0
26 May 2021
Chameleon: A Semi-AutoML framework targeting quick and scalable
  development and deployment of production-ready ML systems for SMEs
Chameleon: A Semi-AutoML framework targeting quick and scalable development and deployment of production-ready ML systems for SMEs
Johannes Otterbach
Thomas Wollmann
11
1
0
08 May 2021
EBIC.JL -- an Efficient Implementation of Evolutionary Biclustering
  Algorithm in Julia
EBIC.JL -- an Efficient Implementation of Evolutionary Biclustering Algorithm in Julia
Pawel Renc
Patryk Orzechowski
A. Byrski
Jarosław Wąs
J. Moore
22
4
0
03 May 2021
Mapping the Internet: Modelling Entity Interactions in Complex
  Heterogeneous Networks
Mapping the Internet: Modelling Entity Interactions in Complex Heterogeneous Networks
Šimon Mandlík
Tomás Pevný
11
5
0
19 Apr 2021
SeaPearl: A Constraint Programming Solver guided by Reinforcement
  Learning
SeaPearl: A Constraint Programming Solver guided by Reinforcement Learning
Félix Chalumeau
Ilan Coulon
Quentin Cappart
Louis-Martin Rousseau
36
21
0
18 Feb 2021
Deep learning approaches to surrogates for solving the diffusion
  equation for mechanistic real-world simulations
Deep learning approaches to surrogates for solving the diffusion equation for mechanistic real-world simulations
J. Q. Toledo-Marín
Geoffrey C. Fox
J. Sluka
J. Glazier
MedIm
AI4CE
16
8
0
10 Feb 2021
Optimal Energy Shaping via Neural Approximators
Optimal Energy Shaping via Neural Approximators
Stefano Massaroli
Michael Poli
Federico Califano
Jinkyoo Park
Atsushi Yamashita
Hajime Asama
11
12
0
14 Jan 2021
Using Differentiable Programming for Flexible Statistical Modeling
Using Differentiable Programming for Flexible Statistical Modeling
Maren Hackenberg
M. Grodd
Clemens Kreutz
Martina Fischer
J. Esins
L. Grabenhenrich
C. Karagiannidis
Harald Binder
11
4
0
07 Dec 2020
Discovery of the Hidden State in Ionic Models Using a Domain-Specific
  Recurrent Neural Network
Discovery of the Hidden State in Ionic Models Using a Domain-Specific Recurrent Neural Network
Shahriar Iravanian
16
0
0
14 Nov 2020
Kohn-Sham equations as regularizer: building prior knowledge into
  machine-learned physics
Kohn-Sham equations as regularizer: building prior knowledge into machine-learned physics
Li Li
Stephan Hoyer
Ryan Pederson
Ruoxi Sun
E. D. Cubuk
Patrick F. Riley
K. Burke
AI4CE
19
120
0
17 Sep 2020
Augmenting Neural Differential Equations to Model Unknown Dynamical
  Systems with Incomplete State Information
Augmenting Neural Differential Equations to Model Unknown Dynamical Systems with Incomplete State Information
Robert Strauss
14
3
0
19 Aug 2020
Supervised Whole DAG Causal Discovery
Supervised Whole DAG Causal Discovery
Hebi Li
Qi Xiao
Jin Tian
CML
17
16
0
08 Jun 2020
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