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Top 23 R Machine Learning Projects
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InfluxDB
Power Real-Time Data Analytics at Scale. Get real-time insights from all types of time series data with InfluxDB. Ingest, query, and analyze billions of data points in real-time with unbounded cardinality.
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WorkOS
The modern identity platform for B2B SaaS. The APIs are flexible and easy-to-use, supporting authentication, user identity, and complex enterprise features like SSO and SCIM provisioning.
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Algo-Trading
This is my github repository where I post trading strategies, tutorials and research on quantitative finance with R, C++ and Python. Some of the topics explored include: machine learning, high frequency trading, NLP, technical analysis and more. Hope you enjoy it!
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copent
R package for estimating copula entropy (mutual information), transfer entropy (conditional mutual information), and the statistic for multivariate normality test and two-sample test
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modeltime.h2o
Forecasting with H2O AutoML. Use the H2O Automatic Machine Learning algorithm as a backend for Modeltime Time Series Forecasting.
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causalglm
Interpretable and model-robust causal inference for heterogeneous treatment effects using generalized linear working models with targeted machine-learning
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tmle3mopttx
🎯 💯 Targeted Learning and Variable Importance for the Causal Effect of an Optimal Individualized Treatment Intervention
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SaaSHub
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Project mention: How do you store interest-based content? Do I store that content in separate filetype folders or a single folder with sub-directories for each media type? | /r/datacurator | 2023-12-05If you want ideas for categories, have a look at the DMOZ category tree; looking for "electronics" plus some editing gave me this tree:
Project mention: How Do I Perform Hyperparameter Optimization for a Non-Toy Dataset in R Using mlr3hyperband? | /r/rprogramming | 2023-05-07that I want to use to train an XGBoost predictive model. Now under the example given by the mlr3hyperband documentation, the steps to perform hyperparameter optimization are as follows:
R Machine Learning related posts
- Good package or tidy way of sliding time series forecasting windows for backtesting?
- Algo-Trading: NEW Extended Research - star count:60.0
- Algo-Trading: NEW Extended Research - star count:60.0
- Algo-Trading: NEW Extended Research - star count:60.0
- Algo-Trading: NEW Extended Research - star count:60.0
- Algo-Trading: NEW Extended Research - star count:60.0
- Algo-Trading: NEW Extended Research - star count:60.0
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A note from our sponsor - SaaSHub
www.saashub.com | 24 Apr 2024
Index
What are some of the best open-source Machine Learning projects in R? This list will help you:
Project | Stars | |
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1 | mlr3 | 879 |
2 | timetk | 596 |
3 | modeltime | 498 |
4 | tweetbotornot | 385 |
5 | voice-gender | 331 |
6 | vip | 186 |
7 | textfeatures | 167 |
8 | ggshakeR | 108 |
9 | Algo-Trading | 100 |
10 | ParBayesianOptimization | 99 |
11 | tweetbotornot2 | 89 |
12 | mlr3learners | 87 |
13 | miceRanger | 61 |
14 | lmtp | 53 |
15 | rdomains | 53 |
16 | copent | 38 |
17 | modeltime.h2o | 38 |
18 | vimp | 21 |
19 | mlr3hyperband | 18 |
20 | healthyR.ts | 17 |
21 | causalglm | 17 |
22 | healthyR.ai | 13 |
23 | tmle3mopttx | 10 |
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