chagaz / ml-notebooks
Some machine learning notebooks
☆11Updated 3 years ago
Related projects ⓘ
Alternatives and complementary repositories for ml-notebooks
- RetaiL: A Simulation Framework for Monitoring and Reducing Food Waste in Grocery Stores☆16Updated 9 months ago
- PyData San Luis 2017 Tutorial: An Introduction to Gaussian Processes in PyMC3☆15Updated 6 years ago
- A few baselines with a standard tabular model☆38Updated 4 years ago
- Visual Clustering: Clustering Plotted Data by Image Segmentation☆24Updated 9 months ago
- ☆25Updated last year
- Fast Factorization Machines☆9Updated 6 years ago
- Curated materials for different machine learning related summer schools☆19Updated 3 years ago
- Collection of notebooks exploring conv nets in detail.☆10Updated 7 years ago
- Wining solution and its further development for MICCAI 2017 Endoscopic Vision Challenge Angiodysplasia Detection and Localization☆16Updated 5 years ago
- Model explanation provides the ability to interpret the effect of the predictors on the composition of an individual score.☆13Updated 3 years ago
- Introduction to Machine Learning at CentraleSupelec (Fall 2017)☆9Updated 6 years ago
- A library of techniques for local interpretation of machine learning models☆9Updated last year
- machine learning model performance metrics & charts with confidence intervals, optimized with numba to be fast☆16Updated 2 years ago
- Stats 479 Project☆22Updated 5 years ago
- Machine Learning vs Statistical Methods for Time Series Forecasting: Size Matters☆39Updated 5 years ago
- VW, Liblinear and StreamSVM compared on webspam☆14Updated 10 years ago
- ☆11Updated 6 years ago
- ☆29Updated 6 months ago
- multimodal anomaly detection☆13Updated 3 years ago
- ☆29Updated 4 years ago
- Deploy Pytorch models to production via panini☆10Updated 5 years ago
- LaTeX source code for the slides☆21Updated 3 years ago
- Deep Learning and Natural Language Processing using PyTorch (O'Reilly AI - NYC, 2019)☆11Updated 5 years ago
- Credici: Credal Inference for Causal Inference☆16Updated 3 weeks ago
- Process, visualize and use data easily.☆20Updated last year
- Shows how to do parameter ensembling using differential evolution.☆10Updated 2 years ago
- ☆15Updated 6 years ago
- Resources for deep learning: papers, articles, courses☆11Updated 5 years ago