Hora: Des de 09:30h a 14:30h
Lloc: Seminar Room
COURSE: Machine Learning for Microscopy
The trainers will start by introducing basic dense neural networks and backpropagation to progressively move toward deep learning using the standard neural network packages such as TensorFlow/Keras and PyTorch.
They will describe several advanced deep-learning architectures for different tasks, with applications to real case studies.
Target group: ICFO researchers
Available places: 12
Training content:
- Day 1: Neural Networks for Classification
- Day 2: Neural Networks for Regression
- Day 3: Convolutional Neural Networks
- Day 4: Encoders-Decoders
- Day 5: U-Net
Trainers:
Prof. Giovanni Volpe
Giovanni Volpe is a Full Professor at the Physics Department of the University of Gothenburg University, where he leads the Soft Matter Lab (http://softmatterlab.org) — and an ICFO alumnus. His research interests include soft matter, optical trapping and manipulation, statistical mechanics, brain connectivity, and machine learning. He has authored more than 100 articles and reviews on soft matter, statistical physics, optics, physics of complex systems, brain network analysis, and machine learning. He co-authored the books "Optical Tweezers: Principles and Applications" (Cambridge University Press, 2015) and “Simulation of Complex Systems” (IOP Press, 2021). He has developed several software packages for optical tweezers (OTS — Optical Tweezers Software), brain connectivity (BRAPH—Brain Analysis Using Graph Theory), and microscopy enhanced by deep learning (DeepTrack).
Prof. Carlo Manzo
Carlo Manzo is an Associate Professor at the Universitat de Vic (UVic-UCC), where he leads the Quantitative BioImaging lab (https://mon.uvic.cat/qubilab/). His research aims at providing a quantitative view of biophysical processes through the combination of single-molecule microscopy, machine learning, and statistical mechanics. He authored more than 50 articles in optics, biophysics, machine learning, and cell biology. He is the organizer of the Anomalous Diffusion challenge (AnDi, www.andi-challenge.org).
Hora: Des de 09:30h a 14:30h
Lloc: Seminar Room
COURSE: Machine Learning for Microscopy
The trainers will start by introducing basic dense neural networks and backpropagation to progressively move toward deep learning using the standard neural network packages such as TensorFlow/Keras and PyTorch.
They will describe several advanced deep-learning architectures for different tasks, with applications to real case studies.
Target group: ICFO researchers
Available places: 12
Training content:
- Day 1: Neural Networks for Classification
- Day 2: Neural Networks for Regression
- Day 3: Convolutional Neural Networks
- Day 4: Encoders-Decoders
- Day 5: U-Net
Trainers:
Prof. Giovanni Volpe
Giovanni Volpe is a Full Professor at the Physics Department of the University of Gothenburg University, where he leads the Soft Matter Lab (http://softmatterlab.org) — and an ICFO alumnus. His research interests include soft matter, optical trapping and manipulation, statistical mechanics, brain connectivity, and machine learning. He has authored more than 100 articles and reviews on soft matter, statistical physics, optics, physics of complex systems, brain network analysis, and machine learning. He co-authored the books "Optical Tweezers: Principles and Applications" (Cambridge University Press, 2015) and “Simulation of Complex Systems” (IOP Press, 2021). He has developed several software packages for optical tweezers (OTS — Optical Tweezers Software), brain connectivity (BRAPH—Brain Analysis Using Graph Theory), and microscopy enhanced by deep learning (DeepTrack).
Prof. Carlo Manzo
Carlo Manzo is an Associate Professor at the Universitat de Vic (UVic-UCC), where he leads the Quantitative BioImaging lab (https://mon.uvic.cat/qubilab/). His research aims at providing a quantitative view of biophysical processes through the combination of single-molecule microscopy, machine learning, and statistical mechanics. He authored more than 50 articles in optics, biophysics, machine learning, and cell biology. He is the organizer of the Anomalous Diffusion challenge (AnDi, www.andi-challenge.org).