Since the last Nuit Blanche in Review (May 2017) we've had three implementations related to Deep Neural Networks, a few in-depth post ranging from training nets to compressive sensing, a dataset, two Paris Machine Learning meetups, one meeting announcement, several videos of talks and four job announcements. Enjoy !
Implementations
In depth
- Learning to Learn without Gradient Descent by Gradient Descent
- CATERPILLAR: Coarse Grain Reconfigurable Architecture for Accelerating the Training of Deep Neural Networks
- Learning Deep ResNet Blocks Sequentially using Boosting Theory
- Hyperparameter Optimization: A Spectral Approach
- Kronecker Recurrent Units
- Training Quantized Nets: A Deeper Understanding
- Coreset Construction via Randomized Matrix Multiplication
- Inexact Gradient Projection and Fast Data Driven Compressed Sensing
- Compressive Statistical Learning with Random Feature Moments
- Compressive optical interferometry
- Coherent inverse scattering via transmission matrices: Efficient phase retrieval algorithms and a public dataset - Dataset -
Book
Dataset
Paris Machine Learning meetup
- Paris Machine Learning #10 Ending Season 4 : Large-Scale Video Classification, Community Detection, Code Mining, Maps, Load Monitoring and Cognitive.
- Paris Machine Learning meetup "Hors Série" #13: Automatic Machine Learning
Meeting
slides
Videos
- Saturday Morning Videos: The Changing Landscape of Education and The Awesome Siraj Raval
- Saturday Morning Videos: "Structured Regularization for High-Dimensional Data Analysis" @IHP Regularization Methods for Large Scale Machine Learning
- Videos: Structured Regularization for High-Dimensional Data Analysis: Submodular Functions,computing the Non-computable via sparsity, the SDP approach to graph clustering, the hidden clique problem, robust deconvolution
- Videos: Structured Regularization for High-Dimensional Data Analysis: Compressed Sensing: Structure and Imaging & Matrix and graph estimation
- Saturday Morning Videos: "Structured Regularization for High-Dimensional Data Analysis" Majorization-Minimization Subspace Algorithms for Large Scale Data Processing, Regularization Methods for Large Scale Machine Learning
- Saturday Morning Videos: Seminars of the Data Science Colloquium of the ENS: Beyond SGD, Functional brain mapping, What physics can tell us about inference?, Can Big Data cure Cancer?
- Sunday Morning Videos: NIPS 2016 workshop on nonconvex optimizations.
- Saturday Morning Video: Deep Learning Meets Sparse Coding, Chandra Sekhar Seelamantula
Job:
- Job; Postdoc Opening in Statistical Learning and Optimization, USC
- Job: Lecturer / Senior Lecturer in Machine Learning and Computational Intelligence, University of Surrey, UK
- CSjob: Postdoc, Optimisation for Matrix Factorisation, Toulouse, France
- CSJob: PhD position “Tensors for System Identification” at ELEC, Vrije Universiteit Brussel (VUB)
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