• Stars
    star
    2,008
  • Rank 22,220 (Top 0.5 %)
  • Language
    Jupyter Notebook
  • License
    MIT License
  • Created about 5 years ago
  • Updated 5 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Repository containing notebooks of my posts on Medium

MEDIUM_NoteBook

Repository containing notebooks of my posts on MEDIUM.

To be notified every time a new post is published, SUBSCRIBE HERE.

"Buy Me A Coffee"

Posts ordered by most recent publishing date

  • Hitting Time Forecasting: The Other Way for Time Series Probabilistic Forecasting [post]|[code]
  • Forecasting with Granger Causality: Checking for Time Series Spurious Correlations [post]|[code]
  • Hacking Causal Inference: Synthetic Control with ML approaches [post]|[code]
  • Model Selection with Imbalance Data: Only AUC may Not Save you [post]|[code]
  • PCA for Multivariate Time Series: Forecasting Dynamic High-Dimensional Data [post]|[code]
  • Hacking Statistical Significance: Hypothesis Testing with ML Approaches [post]|[code]
  • Time Series Forecasting with Conformal Prediction Intervals: Scikit-Learn is All you Need [post]|[code]
  • Rethinking Survival Analysis: How to Make your Model Produce Survival Curves [post]|[code]
  • Extreme Churn Prediction: Forecasting Without Features [post]|[code]
  • Forecast Time Series with Missing Values: Beyond Linear Interpolation [post]|[code]
  • Forecasting Uncertainty with Linear Models like in Deep Learning [post]|[code]
  • Time Series Forecasting with Feature Selection: Why you may need it [post]|[code]
  • Anomaly Detection in Multivariate Time Series with Network Graphs [post]|[code]
  • How to Improve Recursive Time Series Forecasting [post]|[code]
  • Retrain, or not Retrain? Online Machine Learning with Gradient Boosting [post]|[code]
  • Data Drift Explainability: Interpretable Shift Detection with NannyML [post]|[code]
  • Word2Vec with Time Series: A Transfer Learning Approach [post]|[code]
  • SHAP for Drift Detection: Effective Data Shift Monitoring [post]|[code]
  • Forecasting with Trees: Hybrid Classifiers for Time Series [post]|[code]
  • Boruta SHAP for Temporal Feature Selection [post]|[code]
  • Forecasting with Trees: Hybrid Modeling for Time Series [post]|[code]
  • Recursive Feature Selection: Addition or Elimination? [post]|[code]
  • Improve Random Forest with Linear Models [post]|[code]
  • Is Gradient Boosting good as Prophet for Time Series Forecasting? [post]|[code]
  • Linear Boosting with Automated Features Engineering [post]|[code]
  • Improve Linear Regression for Time Series Forecasting [post]|[code]
  • Boruta and SHAP for better Feature Selection [post]|[code]
  • Explainable AI with Linear Trees [post]|[code]
  • SHAP for Feature Selection and HyperParameter Tuning [post]|[code]
  • Model Tree: handle Data Shifts mixing Linear Model and Decision Tree [post]|[code]
  • Add Prediction Intervals to your Forecasting Model [post]|[code]
  • Linear Tree: the perfect mix of Linear Model and Decision Tree [post]
  • ARIMA for Classification with Soft Labels [post]|[code]
  • Advanced Permutation Importance to Explain Predictions [post]|[code]
  • Time Series Bootstrap in the age of Deep Learning [post]|[code]
  • Anomaly Detection with Extreme Value Analysis [post]|[code]
  • Time Series generation with VAE LSTM [post]|[code]
  • Extreme Event Time Series Preprocessing [post]|[code]
  • One-Class Neural Network in Keras [post]|[code]
  • Real-Time Time Series Anomaly Detection [post]|[code]
  • Entropy Application in the Stock Market [post]|[code]
  • Time Series Smoothing for better Forecasting [post]|[code]
  • Time Series Smoothing for better Clustering [post]|[code]
  • Predictive Maintenance with ResNet [post]|[code]
  • Neural Networks Ensemble [post]|[code]
  • Anomaly Detection in Multivariate Time Series with VAR [post]|[code]
  • Corr2Vec: a WaveNet architecture for Feature Engineering in Financial Market [post]|[code]
  • Siamese and Dual BERT for Multi Text Classification [post]|[code]
  • Time Series Forecasting with Graph Convolutional Neural Network [post]|[code]
  • Neural Network Calibration with Keras [post]|[code]
  • Combine LSTM and VAR for Multivariate Time Series Forecasting [post]|[code]
  • Feature Importance with Time Series and Recurrent Neural Network [post]|[code]
  • Group2Vec for Advance Categorical Encoding [post]|[code]
  • Survival Analysis with Deep Learning in Keras [post]|[code]
  • Survival Analysis with LightGBM plus Poisson Regression [post]|[code]
  • Predictive Maintenance: detect Faults from Sensors with CRNN and Spectrograms [post]|[code]
  • Multi-Sample Dropout in Keras [post]|[code]
  • When your Neural Net doesnโ€™t know: a bayesian approach with Keras [post]|[code]
  • Dynamic Meta Embeddings in Keras [post]|[code]
  • Predictive Maintenance with LSTM Siamese Network [post]|[code]
  • Text Data Augmentation makes your model stronger [post]|[code]
  • Anomaly Detection with Permutation Undersampling and Time Dependency [post]|[code]
  • Time2Vec for Time Series features encoding [post]|[code]
  • Automate Data Cleaning with Unsupervised Learning [post]|[code]
  • People Tracking with Machine Learning [post]|[code]
  • Time Series Clustering and Dimensionality Reduction [post]|[code]
  • Anomaly Detection in Images [post]|[code]
  • Feature Importance with Neural Network [post]|[code]
  • Anomaly Detection with LSTM in Keras [post]|[code]
  • Dress Segmentation with Autoencoder in Keras [post]|[code]
  • Extreme Event Forecasting with LSTM Autoencoders [post]|[code]
  • Zalando Dress Recommendation and Tagging [post]|[code]
  • Remaining Life Estimation with Keras [post]|[code]
  • Quality Control with Machine Learning [post]|[code]
  • Predictive Maintenance: detect Faults from Sensors with CNN [post]|[code]