Why R? 2019 Presentations

This repository consist of presentations prepared by the authors.

Session Author Title
Opening Marcin Kosiński, Michał Burdukiewicz, Piotr Wójcik Why R? 2019 Opening Session
Closing Marcin Kosiński, Michał Burdukiewicz, Piotr Wójcik Why R? 2019 Closing Session
Keynotes Jakub Nowosad The landscape of spatial data analysis in R
Keynotes Marvin N. Wright Random forests: The first-choice method for every data analysis?
Keynotes Paula Brito Modelling and Analysing Interval Data in R
Keynotes Sigrid Keydana tfprobably correct - adding uncertainty to deep learning with TensorFlow Probability
Keynotes Steph Locke Is data science experimenting on people?
Keynotes Wit Jakuczun Always Be Deploying. How to make R great for machine learning in (not only) Enterprise
API Piotrek Ciurus Automating Google Slides creation
API Florent Bourgeois Bringing interactivity into engineering courses with BERT-based Excel-R applications
API Leszek Sieminski Google PageSpeed with R
BIO Jaroslaw Chilimoniuk AmyloGram: the R package and a Shiny server for amyloid prediction
BIO Olga Kaminska Machine Learning usage for prediction of state change in bipolar disorder
BIO Leon Eyrich Jessen Tidysq for Working with Biological Sequence Data in ML Driven Epitope Prediction in Cancer Immunotherapy
BIO Jagoda Glowacka Multicenter study, 33 TB of data and the goal: predicting epilepsy
BIO Weronika Puchala R for experimentalists: HDX-MS example
BIO Piotr Nowosielski R in Ministry of Health
Business Artur Suchwałko How R helps us with delivering Machine Learning projects
Business Richard Louden Integrating R and Python for reproducible business analytics
Business Francois Jacquet R for Entrepreneurs : supply chain automation case
EDA Lidia Kolakowska How to deal with nested lists in R? Using the purrr, furrr and future packages in practice
EDA Tomasz Żółtak MasteR of Tables
EDA Mateusz Staniak R Tools for Automated Exploratory Data Analysis
GEO Krystian Andruszek Features of districts of Warsaw visible from space
GEO Çizmeli Servet Ahmet Geospatial data analysis and visualization in R
GEO Maria Mikos Spatial econometrics with self-made weighting matrixes - uncovering similarity of sample with machine learning results and categorical variables
Lightnings Anne Bras Crazy Sequential Representations - The 10958 Problem
Lightnings Hubert Baniecki D3 + DALEX = Interactive Studio with Explanations for ML Predictive Models in R
Lightnings Dawid Kaledkowski Don't walk, run! runner package for rolling window functions
Lightnings Ioan Gabriel Bucur RUcausal: An R package for Representing Uncertainty in causal discovery
Lightnings Mateusz Kobylka RME: interpretable explainations for sequence models
Lightnings Kamil Sijko Selling solutions based on R (which is GPL licensed). Is this possible?
Lightnings Patrik Drhlik Using R6 classes to communicate with a REST API
Lightnings Dominik Rafacz AmyloGram 2.0: MBO in the prediction of amyloid proteins
Lightnings Krzysztof Kania bdl: interface and tools to Local Data Bank API
Lightnings Katarzyna Sidorczuk PepBay: Implementation of Bayesian inference in the analysis of peptide arrays
Lightnings Agnieszka Otreba-Szklarczyk R in marketing surveys - how to speed up the analysis of open ended questions
Lightnings Łukasz Wawrowski Testing artificial intelligence algorithms in games with Shiny
Lightnings Anna Kozak vivo: Is it Victoria In Variable impOrtance detection?
Lightnings Rafal Wozniak What we don't have but need. Some missing R functions in teaching econometrics
Modelling Bartosz Kolasa, Patryk Wielopolski Custom loss functions for binary classifications problem with highly imbalanced dataset using Extremely Gradient Boosted Trees
Modelling Michał Podsiadło Investment Portfolio Optimization
Modelling Barbara Jancewicz Multidimensional Scaling with the smacof package
Modelling Ken Benoit, Damian Rodziewicz NLP models for the masses with the Quanteda package and a Shiny interface
Modelling Adam Bień Detecting topics in civil service job offers using Latent Dirichlet Allocation model
Modelling Matteo Fasiolo Generalized additive models for short-term electricity demand forecasting
Modelling Tamas Burghard Using categorical embeddings (deep learning) in boosting models
Philosophy Colin Gillespie Hacking R as a script kiddie
Philosophy Colin Fay R & MicroService
Philosophy Olga Mierzwa-Sulima Traits of a world-class data scientist
Scoring Michal Rudko Experiment management using mlflow and R
Scoring Jacek Wolak, Mateusz Jałocha Forecasting rental prices of flats in Krakow
Scoring Karol Klimas Predict, vote and elect with R
Shiny Pawel Sakowski A Shiny Real-time Application for Backtesting Investment Strategies on Regulated and Crypto Markets
Shiny Jakub Małecki, Jakub Stepniak Challenges of Shiny application development at scale
Shiny Theo Roe Improving the communication of environmental data using Shiny
Shiny Tomasz Koc, Piotr Wójcik A Case Study for Image Classification using Transfer Learning
Vision Michel Voss Detection of solar panels based on aerial images using deep learning
Vision Lubomir Stepanek Facial landmarking made (possible and) easy with R!
Vision Pablo Maldonado DeepSport: A Shiny app for sports video analysis
Vision Michal Maj Semantic segmentation using U-Net with R
XAI Szymon Maksymiuk Compare predictive models created in different languages with DALEX and friends
XAI Blazej Kochanski Benefits of better credit scoring
XAI Aleksandra Grudziaz survxai: how to explain predictions for survival models?