ParamHelpers Next Generation
☆28Mar 4, 2026Updated 3 weeks ago
Alternatives and similar repositories for paradox
Users that are interested in paradox are comparing it to the libraries listed below. We may earn a commission when you buy through links labeled 'Ad' on this page.
Sorting:
- Filter-based feature selection for mlr3☆20Updated this week
- Flexible Bayesian Optimization in R☆26Mar 18, 2026Updated last week
- Hyperparameter optimization package of the mlr3 ecosystem☆59Updated this week
- a faster arff parser☆13May 10, 2021Updated 4 years ago
- Miscellaneous helper functions for mlr3☆13Updated this week
- DigitalOcean Gradient AI Platform • AdBuild production-ready AI agents using customizable tools or access multiple LLMs through a single endpoint. Create custom knowledge bases or connect external data.
- Performance measures used in mlr3☆13Feb 18, 2026Updated last month
- Successive Halving and Hyperband in the mlr3 ecosystem☆18Updated this week
- Deep Reinforcement Learning in R (Deep Q Learning, Policy Gradient, Actor-Critic Method, etc)☆26Sep 9, 2019Updated 6 years ago
- Collection of search spaces for hyperparameter optimization in the mlr3 ecosystem☆14Aug 16, 2025Updated 7 months ago
- C++ implementation and R API for componentwise boosting☆23Mar 29, 2023Updated 2 years ago
- Black-box optimization framework for R.☆26Updated this week
- allowing R users to work with dlib through Rcpp☆13Apr 11, 2018Updated 7 years ago
- Dataflow Programming for Machine Learning in R☆148Mar 1, 2026Updated 3 weeks ago
- Feature Extraction from Grouped Data. Tutorial:☆23Jun 5, 2020Updated 5 years ago
- GPU virtual machines on DigitalOcean Gradient AI • AdGet to production fast with high-performance AMD and NVIDIA GPUs you can spin up in seconds. The definition of operational simplicity.
- Data Backends to let mlr3 work transparently with (remote) data bases☆23Updated this week
- Visualizations for mlr3☆45Feb 22, 2026Updated last month
- Forecasting for mlr3☆22Aug 16, 2024Updated last year
- Recommended learners for mlr3☆97Updated this week
- ☆14Jun 11, 2018Updated 7 years ago
- Case studies using mlr3☆22Nov 8, 2022Updated 3 years ago
- ☆13Dec 28, 2018Updated 7 years ago
- Track machine learning experiments☆19Aug 2, 2023Updated 2 years ago
- secretbase - Cryptographic Hash, Extendable-Output and Binary/Text Encoding Functions☆17Feb 5, 2026Updated last month
- Managed Kubernetes at scale on DigitalOcean • AdDigitalOcean Kubernetes includes the control plane, bandwidth allowance, container registry, automatic updates, and more for free.
- mlr3 extension for Fairness in Machine Learning☆15Jun 24, 2025Updated 9 months ago
- Standardized Conditions for R☆13Apr 23, 2019Updated 6 years ago
- Write events for TensorBoard☆11Jun 27, 2024Updated last year
- R Package for Reinforcement Learning☆33Nov 15, 2022Updated 3 years ago
- Boosting Functional Regression Models. The current release version can be found on CRAN (http://cran.r-project.org/package=FDboost).☆21Aug 12, 2025Updated 7 months ago
- Dev repository for R package lazyarray: A lightning tool to lazy load Giga-Byte-level data into memory☆19Jun 21, 2023Updated 2 years ago
- ☆20Jan 21, 2026Updated 2 months ago
- Feature selection package of the mlr3 ecosystem.☆38Updated this week
- Easy Hyper Parameter Optimization with mlr and mlrMBO.☆31Jan 5, 2022Updated 4 years ago
- End-to-end encrypted email - Proton Mail • AdSpecial offer: 40% Off Yearly / 80% Off First Month. All Proton services are open source and independently audited for security.
- Flexible Mixed Integer Evolutionary Strategies☆16Mar 19, 2025Updated last year
- Cluster analysis for mlr3☆25Mar 14, 2026Updated last week
- Composable Preprocessing Operators for MLR☆37Jun 17, 2025Updated 9 months ago
- shiny-mlr: Integration of the mlr package into shiny☆94Aug 19, 2018Updated 7 years ago
- [EXPERIMENTAL] R package: future.mapreduce - Utility Functions for Future Map-Reduce API Packages☆12Jan 26, 2026Updated 2 months ago
- Tools for computation on batch systems☆183Jan 12, 2026Updated 2 months ago
- Online version of Bischl, B., Sonabend, R., Kotthoff, L., & Lang, M. (Eds.). (2024). "Applied Machine Learning Using mlr3 in R". CRC Pres…☆278Updated this week