COURSE REGISTRATION OPEN
Course in English
Course description :
Introduction:
- Course objectives
- Structure of the course
- AI, Machine Learning, Deep Learning
- Supervised, Unsupervised Learning, Semi-supervised Learning
- Classification and Regression
- Generative Models
- Examples of applications
Data Preparation, Data Formats, Feature Engineering:
- Setting up a data analysis project
- Project Goal Definition & Data Collection/Generation
- Real data versus simulated data
- Synthetic samples
- Data representations
- Data formats
- Data preparation
- Visualize data to gain insights
- Handling of missing values
- Data labelling
- Manual feature engineering
- Look at the distributions of features
- Curse of dimensionality
- Imbalanced Datasets
- Ensemble Methods
- Training, Validation and Test sets
- Cross-validation
Classic Supervised Learning:
- Use cases
- Frame the problem
- Prepare Data Vectors
- Training Models:
- Decision Trees, Random Forests
- Ensemble Learning: Bagging, Boosting, Stacking
- Artificial Neural Networks (ANNs)
- Undefitting and Overfitting
- Scikit-Learn and Keras
- Fine-tune your model
Unsupervised Learning:
- Unlabelled data & Unsupervised Learning
- Data Inspection & Clustering
- Using clustering for:
- Preprocessing
- Semi-supervised Learning
- Anomaly detection
Convolutional Neural Networks (CNNs):
- The Convolution operation
- The Max pooling operation
- Building your network
- Data Augmentation
- Visualizing what CNNs learn
Deep Learning for sequences:
- Recurrent Neural networks
- LSTM and GRU layers
- Forecasting
Generative Models:
- Feature Representation Learning
- Density Estimation
SCHEDULE:
18-22 November 2024. Details in this document
Email (contact pédagogique) : yvonne.becherini@apc.in2p3.fr
2 points
REGISTRATION: OPEN
For doctoral school STEPUP : please register through the usual google sheet with code: ED-SPU30-STE30
For UPC students only , please also register through AMETHIS